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aira:start [2022/03/28 08:30] – [Schedule] sbkaira:start [2024/03/25 14:32] (current) – [2024-03-28] sbk
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 ====== Artificial Intelligence in Research and Applications Seminar (AIRA) ====== ====== Artificial Intelligence in Research and Applications Seminar (AIRA) ======
 +
 GEIST is happy to announce, the launch of an open, online seminar on Artificial Intelligence in Research and Applications (AIRA). GEIST is happy to announce, the launch of an open, online seminar on Artificial Intelligence in Research and Applications (AIRA).
 AIRA is a weekly event (with some breaks between semesters and holidays) devoted to recent results in AI research presented by invited guests from many AI-related fields as well as applications of AI methods and tools in areas of science, industry and business. AIRA is a weekly event (with some breaks between semesters and holidays) devoted to recent results in AI research presented by invited guests from many AI-related fields as well as applications of AI methods and tools in areas of science, industry and business.
  
-Please save your Thursdays between 3:30-5:00 PM Warsaw Time+**Please save your Thursdays between 3:15-4:45 PM Warsaw Time**
  
 The program will be published at [[https://aira.geist.re]] in advance The program will be published at [[https://aira.geist.re]] in advance
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 Scientific coordination: [[https://gjn.re|Grzegorz J. Nalepa]] Scientific coordination: [[https://gjn.re|Grzegorz J. Nalepa]]
  
 +===== Schedule Summer 2024 =====
 +  * **[RESEARCH TRACK] 2024.03.28**: Jarosław Wąs [[#20240328| Complex Collective Systems]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1711361594803?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{|Download}}
 +  * **[DOCTORAL TRACK] 2024.03.21**: Maciej Szelążek [[#20240321| Using ML and XAI for decision support in Business Intelligence analysis]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1710834494210?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EXnHujEGfFNBv8fKxFovZWsB6_EgZ-9OpaaaMWxzuSTW8g?e=rQ9U09&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20240321-maciej-szelazek.pdf |Download}}
 +  * **[RESEARCH TRACK] 2024.03.14**: Mateusz Ślażyński [[#20240314| Formal Representation and Synthesis of Local Search Neighborhoods]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1710282318235?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EXsLL583hYNFqhXT7dulv3cBXdQCU_wWgMbyIH2Hnm93cA?e=pAL2NG&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20240314-mateusz-slazynski.pdf |Download}}
 +===== Schedule Winter 2023 =====
 +  * **[RESEARCH TRACK] 2024.02.01**: Piotr Fudalej [[#20240201| Artificial intelligence at the dentist - patient or assistant?]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1706517969034?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EXh23IFS_PVOqhLmFmDgxK0Bl0rv3Fhz7Zb0YXjh9E_gjA?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=CAO7EL|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ |Download}}
 +  * **[RESEARCH TRACK] 2024.01.25**: Rita P. Ribeiro [[#20240125| Online Anomaly Explanations - case study of Metro do Porto]]
 +    * **LOCATION: C-2-10 (This meeting will be in hybrid mode: on-site and online)**
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1705678609907?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ESnVSy6-EVZFiIlG-8j8kqgBQOBMuO5PhUKrGqj5SJA9iw?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=vleBh7|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20240125-rita-ribeiro.pdf  |Download}}
 +  * **[RESEARCH TRACK] 2024.01.18**: Jakub Gomułka [[#20240118| The Wittgenstein Ontology Project]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1705392485911?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EVB1chK_sUNOmSoJwJaFibwBekR5kpf79fnNeQYgmeskWA?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=WwbynX|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20240118-jakub-gomulka.pdf |Download}}
 +  * **[RESEARCH TRACK] 2024.01.11**: Arkadiusz Tomczyk[[#20240111| Interpretable components and graph neural networks]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1704183973615?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EeG9IccE31hBpu4unD7ho80BWEVLWbqlnCPoje3NsQukbg?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=QSqfgP|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{:aira:slides-20240111-arkadiusz-tomczyk.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.12.21**: Tomasz Stebel [[#20231221| Sampling states in statistical physics with neural networks]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1702890998904?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EV8IV28AQs5MtP94h3iuOYEBOj4eiBk0K7CoF5KKsEgANg?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=rFaTdp|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231221-tomasz-stebel.pdf|Download}}
 +  * **[DOCTORAL TRACK] 2023.12.14**: Bartłomiej Nawara [[#20231214| Evolution of Science in the AI and Big Data Era: Modeling, Replication, Expertise]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1702287929191?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EdJjEUq6t45BtgmCdZ4TUPEBH1OWSU2KxhNzS9_OmJX4ag?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=Dqe8ML|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231214-bartlomiej-nawara.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.12.07**: Jeremi Ochab [[#20231207| Fractal and multifractal organisation of neuroimaging signals in cognitive tasks and in disease]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1701258706009?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EUzbHKjlkw9DuZqUwdeEH7gBxWmsbJgESB0i4POPfA8t9w?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=1ldEbU|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231207-jeremi-ochab.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.11.30**: Andrzej Siódmok [[#20231130| Towards a deep learning model for hadronization - an example of the application of the ML generative models in high-energy physics]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1701084886392?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ERdX-kNLgtlAq-FIV8E7MscBfAM-aQCSYQzAMATgFbMWeg?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D&e=sJOs9n|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231130-andrzej-siodmok.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.11.23**: Joanna Jaworek-Korjakowska [[#20231123| The Impact of Artifacts on the Effectiveness of Deep Learning]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1699877695761?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EbKNxxoO3P1PrbrUf788qjkBKf-uSc7-MR5Ge5CUI53R7A?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1FbWFpbCIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19&e=NK3vhR|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: TBA
 +  * **[RESEARCH TRACK] 2023.11.09**: Jan Argasiński [[#20231109| Neuroscientific Inspirations in AI: Spiking Neural Networks ]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1698753655054?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EfmgG-90BqRDkZ6MeGtQo00B7O_Ob4LVhTWH35Ybnicp0w?e=jDOWQh&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZy1MaW5rIiwicmVmZXJyYWxBcHBQbGF0Zm9ybSI6IldlYiIsInJlZmVycmFsTW9kZSI6InZpZXcifX0%3D|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: [[https://ujchmura-my.sharepoint.com/:b:/g/personal/szymon_bobek_uj_edu_pl/ETeLeVJ-nhdOhNXFok7MwBsBMpUtU2yQr1PMZDBXvauKLg?e=fyfYGR|Download]]
 +  * **[DOCTORAL TRACK] 2023.10.26**: Jakub Jakubowski[[#20231026| Synthetic Data Generator for Predictive Maintenance in Steel Manufacturing ]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1697801210427?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ERQNsbo0SxxDpRL7S3heIgsB4XbUnLmb0wQnnU8ZrlVRcA?nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19&e=crc7i5|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231026-jakub-jakubowski.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.10.19**: Raquel Espinosa [[#20231019| Multi-objective evolutionary feature selection with deep learning applied to air quality spatio-temporal forecasting]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1697178828960?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWt4Q1yQADRLtDcwbmEMv2YBSaUGDdpyl0qpGLk9MZYSLw?e=VxUVdQ&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: {{ :aira:slides-20231019-raquel-espinosa.pdf |Download}}
 +  * **[RESEARCH TRACK] 2023.10.12**: Przemysław Witaszczyk [[#20231012| Reflections after Digital Dragons 2023]]
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1696854820875?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EZFB9Z-fb0dCvNhSf-ZbcLABCKK362iZsshBJzb5372JgQ?e=CpI2ku&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
 +    * Presentation slides: [[https://ujchmura-my.sharepoint.com/:b:/g/personal/szymon_bobek_uj_edu_pl/EYTTVuSVo4VEnlTpORt1TiEBzlBK1u42zp9GPoxsIO7h7A?e=7Ua8Nn|Download]]
  
-===== Schedule===== +===== Schedule Summer 2023 ===== 
-  * **[DOCTORAL TRACK] 2022.03.31** Bartłomiej Nawara: [[#20220331|On open problems of theory of knowledge, based on Luciano Floridi’s theory of semantic information.]] + 
-    * Meeting link: [[|MS Teams]] +  * **[RESEARCH TRACK] 2023.06.29**: Sepideh Pashami [[#20230629Domain Adaptation for Predictive Maintenance]] 
-    * Recording: [[|View]] (if you are not UJ empoyee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)+    * **LOCATION: C-2-10** (This meeting will be in hybrid mode: on-site and online) 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1687248545347?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWq81Fq6gW9Pq49RKHA99_0BAzdBFtCX5SKzUM0LoP-ULQ?e=1NzMwJ&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access) 
     * Presentation slides: TBA     * Presentation slides: TBA
-  * **[RESEARCH TRACK2022.03.24** Michał Araszkiewicz: [[#20220324|Artificial Intelligence and (Human Rights) Law]] +  * **[TUTORIAL2023.06.26**: Sepideh Pashami [[#20230626Causal Inference and its Connection to Machine Learning]] 
-    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1647590767570?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] +    * **LOCATION: A2-02** (This meeting will be in hybrid mode: on-site and online) 
-    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWK0eGMZh_pFhfMEf9tOfUQBcVKqhEY-3mW_80d2VQ82YQ?e=7TgckL|View]] (if you are not UJ empoyee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)+    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1687174755583?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Presentation slides: TBA     * Presentation slides: TBA
-  * **[DOCTORAL TRACK] 2022.03.17** Radosław Pałosz: [[#20220317|Explaining the Artificial Intelligence Act]]+  * **[DOCTORAL TRACK] 2023.06.22**: Michał Kuk [[#20230622| Time-Series Complexity into Understandable Prototypes: A Generic Approach to Machine Learning Explanations in Industrial Processes]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1687177218502?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Efo_-lqip_hAmna_WWF0Xk4BkIYRknKwrfqDftzGYv9-YA?e=0u1o0e&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230622-michal-kuk.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.06.15**: Usman Akhtar [[#20230615| Unlocking Insights for Health and Wellness: Exploring the Data Curation Framework for Big Data]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1686555965880?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWGEt_FJpA1Iqv229hN3YuYB8J_FtYo7GPeIquON9XQjAg?e=tSGFnz&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230615-usman-akhart.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2023.06.01**: Michał Bujak [[#20230601| Graph neural networks for community detection and clustering problems with application to urban mobility studies]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1685334059643?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EbcC4WT-FlJLlupKfh1V35wBFGwKqzNGHlGCQ0bzM6sjWA?e=EaKCk3&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230615-michal-bujak.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.05.25**: Przemysław Stanisz [[#20230525|Modeling of advanced nuclear systems]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1684745977109?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ERsHECwV-dRMqqHwSl-hPVkB5g8LBw20_R53kpj0QDEkBQ?e=Kiy9lf&nav=eyJyZWZlcnJhbEluZm8iOnsicmVmZXJyYWxBcHAiOiJTdHJlYW1XZWJBcHAiLCJyZWZlcnJhbFZpZXciOiJTaGFyZURpYWxvZyIsInJlZmVycmFsQXBwUGxhdGZvcm0iOiJXZWIiLCJyZWZlcnJhbE1vZGUiOiJ2aWV3In19|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230525-przemyslaw-stanisz.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.05.18**: Artur Miroszewski [[#20230518|Use of quantum computation in satellite data analysis]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1683878837685?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EXl1m5mFysRGnsCtoB_wu4ABiCBOZ0_Fhr9g_RFj7r8PpQ?e=dcAyfn|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-2023-05-18-artur-miroszewski.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.05.11**: Joao Gama [[#20230511|Current Trends in Learning from Data Streams]] 
 +    * **LOCATION**: **WFAIS,  room: C-2-10** (This meeting will be in hybrid mode: on-site and online) 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1683554659065?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EU9MRBm_wD1ElXtGc3wpM98BfFW4WMf5vx1l8jn97UQOVg?e=yYr8z5|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: TBA 
 +  * **[DOCTORAL TRACK] 2023.04.20**: Mateusz Bułat [[#20230420|Syntactic Pattern Recognition in Medical Applications]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1681708238859?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Ec-5lXechUhJkGNxaXYRxO4Bg0u2kFPp_TOt9LGnsHXitw?e=TOCQMq|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230420-mateusz-bulat.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2023.04.13**: Edyta Kuk [[#20230413|Machine Learning-based industrial process control with explainable decision support]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1680887771431?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ER93jxzOOpZOkHRTyynVik4BILCKnaPcH15zjobekv-PMg?e=Z9zrDc|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230413-edyta-kuk.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.03.30**: Marcin Grzegorzek [[#20230330|Profiling Humans Using Pattern Recognition Algorithms]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1679738491348?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Ed0UfP1DQNhLh6SFWftow3UBPZbp-OqZzL8OWm8FD35aIA?e=xBHeKn|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: TBA 
 +  * **[RESEARCH TRACK] 2023.03.23**: Amira Soliman, Awais Ashfaq, Atiye Sadat Hashemi [[#20230323|Using AI in healthcare -- from outcome prediction through targeted interventions to EHR anonymisation]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1679297838369?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/r/teams/Section_495645_1/Shared%20Documents/General/Recordings/(AIRA)%20Using%20AI%20in%20healthcare%20--%20from%20outcome%20prediction%20through%20targeted%20interventions%20to%20EHR%20anonymisation-20230323_154014-Meeting%20Recording.mp4?csf=1&web=1&e=CIMMW6|View Part I]],  [[https://ujchmura.sharepoint.com/:v:/r/teams/Section_495645_1/Shared%20Documents/General/Recordings/(AIRA)%20Using%20AI%20in%20healthcare%20--%20from%20outcome%20prediction%20through%20targeted%20interventions%20to%20EHR%20anonymisation-20230323_161704-Meeting%20Recording.mp4?csf=1&web=1&e=i2aGCY|View Part II]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: TBA 
 +  * **[RESEARCH TRACK] 2023.03.16**: Bartosz Zieliński [[#20230316|Interpretable Deep Learning with Prototypical Parts]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1678708229214?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EaprG786QclAjqeuzjbU3yABDQif8PRY-zDJhOmsUbaSCw?e=kzBviZ|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230316-bartosz-zielinski.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.03.02**: Antonio Martinez-Sanchez [[#20230302|Computational methods for Cryo-Electron Tomography: current challenges]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1676889700127?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EcvKPqV44O5MiiaQP73GimkBNvwr3FsSRDZBWdXWRi9FXQ?e=8uvcJj|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230302-antonio-martinez-sanches.pdf |Download}}  
 + 
 +===== Schedule Winter 2022 ===== 
 + 
 +  * **[RESEARCH TRACK] 2023.01.26**: Stella Heras [[#20230126|Automatic Analysis of Argumentative Discourse and Argumentation-based Human Persuasion]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1674119491359?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Ee5IyKVTCo1Er4XxFRRPpiABQ7ae-4jolZ6-mgaPkmxfow?e=NWiLSi|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230126-stella-heras.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2023.01.19**: Bartosz Soból [[#20230119|Improving batch job scheduling with AI]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1673869869636?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EdUtUEbdgt5DtYw4qaG01q4BzULJKk9JyXd5i245VYuDbw?e=3hGkEU|View]] (if you are not UJ employee, ask Szymon Bobek for access)  
 +    * Presentation slides: {{ :aira:slides-20230119-bartosz-sobol.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2023.01.12**: Candela Hernández [[#20230112|​Machine learning applications in Biological Anthropology]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1672831021996?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EdDhSiFiXY1Ai1H-7-nTNUIBXk643PITQja8iR8LkKGJcQ?e=INare5|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: TBA 
 +  * **[RESEARCH TRACK] 2022.12.15**: Przemysław Spurek [[#20221215|​Hypernetwork approach to few-shot learning]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1670842392314?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Ee0bvUVdVKxEvCMUxmOXw-ABRv34l6j4ouB_M3jlInjQZA?e=iyx6fI|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221215-spurek.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.12.08**: Roman Sosnowski, Piotr Tylus, Jadwiga Kita-Huber, Remigiusz Sapa, Grzegorz J. Nalepa, Krzysztof Kutt​ [[#20221208|Digitalization of library handwriting resources and opportunities for Artificial Intelligence. The case of Autographa Sammlung in the Jagiellonian Library​]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1670239403654?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ETmThe6VPkVJt13EPq8xnqoBNuXeIlg8eMpIPaETL7H15Q?e=37mSwz|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221208-sosnowski.pdf | Download}} 
 +  * **[DOCTORAL TRACK] 2022.12.01**: Marcin Tutajewski [[#20221201|Detection of multiple sclerosis from EEG signals using machine learning methods]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1669377594808?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EaImgH8Oe2VFjDWWZWjRa34BMhT3VawMC8u25yQtFbJA4Q?e=9dNpBc|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221201-tutajewski.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.11.24**: Bartłomiej Małkus [[#20221124|Physics guided neural networks with application to financial modeling]] (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1668792639847?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ETBrPMKIf95Cnfvyz_-c2LcBeBtOk2XpZfXkx8H15R7v-g?e=12ocOR|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221124-malkus.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.11.17**: Jarosław Duda [[#20221117|Hierarchical correlation reconstruction - between statistics and machine learning]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1668071250665?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQTDEBSPCQ1AvOWuM2KyBNMBlo5LYggSlTQpeCbqmrTsfA?e=I5AgSt|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221117-duda.pdf | Download}} 
 +  * **[DOCTORAL TRACK] 2022.11.10**: Paweł Matyszok [[#20221110|Action Rules induction by Sequential Covering]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1666957781890?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ESyOHBk5K6lNmVzJkw-tuCUB0tn_ZkObgWdukxY7UEyu8Q?e=GfnFj0|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221110-matyszok.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.10.27**: Jerzy Stefanowski [[#20221027|Learning classifiers from concept drifting and imbalanced data streams]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1666356340442?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[|View]] (if you are not UJ empoyee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: TBA 
 +  * **[DOCTORAL TRACK] 2022.10.20**: Maciej Mozolewski [[#20221020|Human-in-the-loop approaches to XAI]] (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1666007765036?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/Ed_mPywg63tJhddeUwrvejwBs_ywi0D3ZwsDGlZPJj128w?e=PFQGPm|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221020-mtm.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.10.13**: Iwona Grabska-Gradzińska [[#20221013|Plot generation of computer narrative game with graph transformations]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1665473682749?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQCxMAzatyNKqgEbdaHa9M4BolU3X9y0oEXgrMBb847Y7g?e=ORWads|View]] (if you are not UJ employee, ask [[szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20221013-igg.pdf |Download}} 
 + 
 +===== Schedule Summer 2022 ===== 
 + 
 +  * **[DOCTORAL TRACK] 2022.06.23** : Bartosz Soból [[#20220623|AI inference acceleration on FPGA]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1655812380995?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWRxdvEvHzNIrSo3m9McwfcB9pE0_i6GNbUnW2JiqC_h8w?e=0S2sRE|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220623-sobol.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.06.02** : Michał Klincewicz, Ph.D. [[#20220602|Moral Improvement with Video Games]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1653645498354?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +  * **[RESEARCH TRACK] 2022.05.26** dr hab. inż. Marcin Hernes, prof. UEW & dr inż. Krzysztof Lutosławski assistant professor @ UEW & Agata Kozina, Ph.D. candidate @ UEW: [[#20220526|Artificial intelligence for support business processes]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1653297579842?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/teams/Section_495645_1/Shared%20Documents/General/Recordings/General-20220526_153752-Meeting%20Recording.mp4?web=1|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220526-hernes.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.05.19** dr hab. Mateusz  Hohol, prof. UJ: [[#20220519|Investigating and facilitating human geometric cognition through VR/AR technologies]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1652448763089?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/teams/Section_495645_1/Shared%20Documents/General/Recordings/(AIRA)%20Investigating%20and%20facilitating%20human%20geometric%20cognition%20through%20VR_AR%20technologies-20220519_153811-Meeting%20Recording.mp4?web=1|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220519-hohol.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.05.12** Michał Zwierzyński: [[#20220512|AI methods in computer modeling and recognition of emotions and humanization of computer systems]] (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1652079623908?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EYWedcCeadNCr8HTF4t9xdwBGoygmgPFhBC2TQZfJ_S2Kw?e=Rw84hW|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220512-zwierzynski.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.05.05** Magdalena Wiercioch: [[#20220505|Machine Learning in Drug Discovery: Applications and Techniques]]  
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1651301947387?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/r/teams/Section_495645_1/Shared%20Documents/General/Recordings/(AIRA)%20Machine%20Learning%20in%20Drug%20Discovery_%20Applications%20and%20Techniques-20220505_153632-Meeting%20Recording.mp4?csf=1&web=1&e=wmov0R|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220505-wiercioch.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.04.14** Maciej Szelążek: [[#20220414|Semantic Data Mining Based Decision Support for Quality Assessment in Steel Industry]] (//Project CHIST-ERA Pacmel//) (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1649660839642?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EcRZWwEiiCFNtkQMVvIzV0gB_9XB8_UD3DQret6yhH9Ztg?e=By06bN|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220424-szelazek.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.04.07** Przemysław Kazienko & Jan Kocoń: [[#20220407|Personalized NLP]] 
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1649059390974?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EcFQrFSIOSlGnRF5qPc3hkkBEO2iVK73dlG0dpduGepMeg?e=gIItaz|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220407-kazienko.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.03.31** Bartłomiej Nawara: [[#20220331|On open problems of theory of knowledge, based on Luciano Floridi’s theory of semantic information]] (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1648241179429?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ETHhdiWKuvhBkAQYQzvn34gBbFmmu-NIpCLlJ_Hs6GXuAw?e=3aescA|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220331-bnawara.pdf |Download}} 
 +  * **[RESEARCH TRACK] 2022.03.24** Michał Araszkiewicz: [[#20220324|Artificial Intelligence and (Human Rights) Law]] (//Project CHIST-ERA XPM//) (//GEIST//
 +    * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1647590767570?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]] 
 +    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EWK0eGMZh_pFhfMEf9tOfUQBcVKqhEY-3mW_80d2VQ82YQ?e=7TgckL|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access) 
 +    * Presentation slides: {{ :aira:slides-20220324-araszkiewicz.pdf |Download}} 
 +  * **[DOCTORAL TRACK] 2022.03.17** Radosław Pałosz: [[#20220317|Explaining the Artificial Intelligence Act]] (//Project CHIST-ERA XPM//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1646987072828?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1646987072828?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
-    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EbLUDvaqa-1KnRNq5ftDzEUB6SA3zOFmj20XbAMNsR9HMQ?e=gG2yt5|View]] (if you are not UJ empoyee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)+    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EbLUDvaqa-1KnRNq5ftDzEUB6SA3zOFmj20XbAMNsR9HMQ?e=gG2yt5|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
     * Presentation slides: {{ :aira:slides-20220317-rpalosz.pdf |Download}}     * Presentation slides: {{ :aira:slides-20220317-rpalosz.pdf |Download}}
-  * **[DOCTORAL TRACK] 2022.03.10** Maciej Mozolewski: [[#20220310|Demonstration of InXAI framework on ensemble classifier ML model]]+  * **[DOCTORAL TRACK] 2022.03.10** Maciej Mozolewski: [[#20220310|Demonstration of InXAI framework on ensemble classifier ML model]] (//Project CHIST-ERA XPM//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1646650399222?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1646650399222?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
-    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ES3fkdE9Cr1BoY_qRg3e_HMBlWUo4PifYV9_5lcwWDIORA?e=WPcSnm|View]] (if you are not UJ empoyee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)+    * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ES3fkdE9Cr1BoY_qRg3e_HMBlWUo4PifYV9_5lcwWDIORA?e=WPcSnm|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
     * Presentation slides: {{ :aira:slides-20220310-mtm.pdf |Download}}       * Presentation slides: {{ :aira:slides-20220310-mtm.pdf |Download}}  
-  * **[DOCTORAL TRACK] 2022.03.03** Michał Kuk: [[#20220303|Enhancing cluster analysis with explainable AI and multidimensional cluster prototypes]]+  * **[DOCTORAL TRACK] 2022.03.03** Michał Kuk: [[#20220303|Enhancing cluster analysis with explainable AI and multidimensional cluster prototypes]] (//Project CHIST-ERA Pacmel//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1645781217347?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1645781217347?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQw3f1L7uHlLt9WJzu4ahCYBnq8zFvUxriQ5TzYBqRICzg?e=CZ9Sxc|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQw3f1L7uHlLt9WJzu4ahCYBnq8zFvUxriQ5TzYBqRICzg?e=CZ9Sxc|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
     * Presentation slides: {{ :aira:slides-20220303-mkk.pdf |Download}}     * Presentation slides: {{ :aira:slides-20220303-mkk.pdf |Download}}
-  * **[RESEARCH TRACK] 2022.01.27** Victor Rodriguez-Fernandez, PhD  : [[#20220127|Modern deep learning approaches for time series]]+ 
 +===== Schedule Winter 2021 ===== 
 +  * **[RESEARCH TRACK] 2022.01.27** Victor Rodriguez-Fernandez, PhD  : [[#20220127|Modern deep learning approaches for time series]] (//Project CHIST-ERA Pacmel//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1642761107576?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1642761107576?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ETxScnCjvk9OvgmlRDnNaJMB_RXr4MzfuEUFDM0gAtwtAw?e=JFaFKZ|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ETxScnCjvk9OvgmlRDnNaJMB_RXr4MzfuEUFDM0gAtwtAw?e=JFaFKZ|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
     * Presentation slides: {{ :aira:slides-20220127-vrf.pdf |Download}}     * Presentation slides: {{ :aira:slides-20220127-vrf.pdf |Download}}
-  * **[DOCTORAL TRACK] 2022.01.20** Jakub Jakubowski: [[#20220120|Explainable anomaly detection in hot-rolling process]]+  * **[DOCTORAL TRACK] 2022.01.20** Jakub Jakubowski: [[#20220120|Explainable anomaly detection in hot-rolling process]] (//Project CHIST-ERA XPM//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1642420965057?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1642420965057?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EdtR9gQjnFZCnWnoQPRCpNEBLjue0zo3ibioJNLmgHi3jw?e=YdJo02|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EdtR9gQjnFZCnWnoQPRCpNEBLjue0zo3ibioJNLmgHi3jw?e=YdJo02|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
     * Presentation slides: {{ :aira:slides-20220120-jakub-jakubowski.pdf |Download}}     * Presentation slides: {{ :aira:slides-20220120-jakub-jakubowski.pdf |Download}}
-  * **[RESEARCH TRACK] 2022.01.13** dr inż. Szymon Bobek: [[#20220113|Challenges in Explainable Artificial Intelligence for Industry 4.0]]+  * **[RESEARCH TRACK] 2022.01.13** dr inż. Szymon Bobek: [[#20220113|Challenges in Explainable Artificial Intelligence for Industry 4.0]] (//Project CHIST-ERA XPM//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1641815971712?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1641815971712?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQ4JO-rqfqJGmzyi61B3w0gBV3OmhBGx0AmQqJl_09DD9Q?e=y7z45C|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EQ4JO-rqfqJGmzyi61B3w0gBV3OmhBGx0AmQqJl_09DD9Q?e=y7z45C|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
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     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638877298431?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638877298431?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ERKsmnfS089LluyJFajIbAkBSlbASIci7LPQce0jpirdQw?e=JPd2wr|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/ERKsmnfS089LluyJFajIbAkBSlbASIci7LPQce0jpirdQw?e=JPd2wr|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
-    * Presentation slides: TBA 
   * **[DOCTORAL TRACK] 2021.12.09** Bartosz Soból: [[#20211209|Recent developments of machine learning in experimental particle physics]]   * **[DOCTORAL TRACK] 2021.12.09** Bartosz Soból: [[#20211209|Recent developments of machine learning in experimental particle physics]]
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638520308592?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638520308592?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
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     * Presentation slides: {{ :aira:slides-20211209-bartosz-sobol.pdf |Download}}     * Presentation slides: {{ :aira:slides-20211209-bartosz-sobol.pdf |Download}}
   * **[RESEARCH TRACK] 2021.12.02** prof. dr hab. inż. Grzegorz J. Nalepa: [[#20211202|   * **[RESEARCH TRACK] 2021.12.02** prof. dr hab. inż. Grzegorz J. Nalepa: [[#20211202|
-Artificial Intelligence in Industry 4.0: Data, Models, and Knowledge]]+Artificial Intelligence in Industry 4.0: Data, Models, and Knowledge]] (//Project CHIST-ERA Pacmel//) (//GEIST//)
     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638196001252?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]     * Meeting link: [[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1638196001252?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]
     * Presentation slides: {{ :aira:slides-20211202-gjn.pdf |Download}}     * Presentation slides: {{ :aira:slides-20211202-gjn.pdf |Download}}
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     * Presentation slides: {{ :aira:slides-20211125-marcin-tutajewski.pdf |Download}}     * Presentation slides: {{ :aira:slides-20211125-marcin-tutajewski.pdf |Download}}
     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EeiXBf5qcYlFrZ6in7tw3zYBHAOK_T-_ldklBIR-j_rxSA?e=x2d2Td|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording: [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EeiXBf5qcYlFrZ6in7tw3zYBHAOK_T-_ldklBIR-j_rxSA?e=x2d2Td|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
-  * **[RESEARCH TRACK] 2021.11.18** dr inż. Krzysztof Kutt: [[#20211118|AI with psychology -- a few words on affective adaptation and personalisation of intelligent systems]]+  * **[RESEARCH TRACK] 2021.11.18** dr inż. Krzysztof Kutt: [[#20211118|AI with psychology -- a few words on affective adaptation and personalisation of intelligent systems]] (//GEIST//)
     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1637005463167?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1637005463167?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**
     * Presentation slides: [[https://afcai.re/aira2021pres.pdf|Download]]     * Presentation slides: [[https://afcai.re/aira2021pres.pdf|Download]]
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     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1635150200684?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1635150200684?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**
     * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EaFU_lxc-25FhtfcyAAXgf0BU_vsBabGWEnTxuifZeLtwQ?e=kIt0PJ|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)     * Recording [[https://ujchmura.sharepoint.com/:v:/t/Section_495645_1/EaFU_lxc-25FhtfcyAAXgf0BU_vsBabGWEnTxuifZeLtwQ?e=kIt0PJ|View]] (if you are not UJ employee, ask [[mailto:szymon.bobek@uj.edu.pl|Szymon Bobek]] for access)
-  * **[DOCTORAL TRACK] 2021.10.21** Bartłomiej Małkus: [[#section20211021|Financial modeling with applications of machine learning and explainable AI.]] +  * **[DOCTORAL TRACK] 2021.10.21** Bartłomiej Małkus: [[#section20211021|Financial modeling with applications of machine learning and explainable AI]]  (//GEIST//)
     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1634551635999?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**     * Meeting link: **[[https://teams.microsoft.com/l/meetup-join/19%3aJF1L0935A7eV6s8R9brG5MMYONrqy4XmxPSYLeRMCGM1%40thread.tacv2/1634551635999?context=%7b%22Tid%22%3a%22eb0e26eb-bfbe-47d2-9e90-ebd2426dbceb%22%2c%22Oid%22%3a%22c96e4eee-96f3-4b0f-88ef-fe65310f5f55%22%7d|MS Teams]]**
     * Presentation slides: {{ :aira:slides-20211021-bartlomiej-malkus.pdf | Download}}     * Presentation slides: {{ :aira:slides-20211021-bartlomiej-malkus.pdf | Download}}
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   * **2021.10.14** [[http://acai2021.org|Challenges and Opportunities for human-centred AI]]: A dialog between Yoshua Bengio (Turing Award) and Ben Shneiderman, moderated by Virginia Dignum.    * **2021.10.14** [[http://acai2021.org|Challenges and Opportunities for human-centred AI]]: A dialog between Yoshua Bengio (Turing Award) and Ben Shneiderman, moderated by Virginia Dignum. 
     * Meeting link: **[[https://hertie-school-org.zoom.us/j/94694805550?pwd=eTZXbHNMdngvajUwanZpZDBTTDRqUT09|Zoom link]]**     * Meeting link: **[[https://hertie-school-org.zoom.us/j/94694805550?pwd=eTZXbHNMdngvajUwanZpZDBTTDRqUT09|Zoom link]]**
 +
 +===== Presentation details =====
 +
 +==== 2024-03-28 ====
 +<WRAP column 15%>
 +{{ :aira:jaroslaw-was-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Jarosław Wąs, Full Professor @ AGH University of Krakow
 +
 +**Title**: Complex Collective Systems
 +
 +**Abstract**:
 +The topic of the presentation will be collective aspects of
 +complex systems.  Some specifics models of complex systems wwill be
 +presented such as: crowds, skiers, vehicle traffic in an urban
 +environment and autonomous vehicle traffic. These models are applied and
 +developed within our international projects and cover practical aspects
 +of collective intelligence. The projects used methods such as: agent
 +technologies, cellular automata, rough and fuzzy sets, etc.
 +
 +
 +
 +**Biogram**: 
 +Professor of technical sciences in the discipline of computer
 +science - specialization: artificial intelligence and computational
 +intelligence. He's working at the Applied Computer Science department of
 +AGH. He is interested in modeling and simulation of complex systems. In
 +particular, his area of interest is data-driven modeling and the use of
 +the agent-based modeling paradigm. He is interested in the applications
 +of advanced algorithms and artificial intelligence in engineering, as
 +well as in areas such as IoT, ambient intelligence and computational
 +intelligence. To date, he has supervised 5 PhDs in Computer Science and
 +AI.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2024-03-21 ====
 +<WRAP column 15%>
 +{{ :aira:maciej-szelazek-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Maciej Szelążek, PhD Candidate @ AGH University of Krakow
 +
 +**Title**: Using ML and XAI for decision support in Business Intelligence analysis.
 +
 +**Abstract**:
 +The presentation will provide an overview of the author’s doctorate research on practical use of ML and explainability techniques as a support of the decision-making chain. 
 +Real life applications require compliance with established standards. These include both good practices developed within the company as well as quality certifications like ISO. 
 +The author will present different perspectives  on issues related to quality control analysis of production processes, or in wider terms - Business Intelligence. 
 +Subjects covered include techniques for developing key process indicators to address analytical challenges, in relation to XAI scores and external sources of knowledge. 
 +
 +
 +
 +**Biogram**: 
 +Maciej Szelążek, MSc (maciej.szelazek@agh.edu.pl) is a PhD student at the AGH UST in Krakow, Poland, Department of Applied Computer Science. He received his MSc degree in Automation and Metrology from AGH UST in 2010. He worked as an data analyst in the Office of Statistical Process Control (SPC) Arcelor Mittal Poland. Participate in creation and development of an analytical system based on a central database integrating distributed data sources, reporting system and Statistica data mining software. He conducted big data multidimensional analyses related to searching for bottlenecks, logistics, cost optimization and limiting the variability of industry processes. He was involved in Process-aware Analytics Support based on Conceptual Models for Event Logs - PACMEL project.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2024-03-14 ====
 +<WRAP column 15%>
 +{{ :aira:mateusz-slazynski-foto.jpeg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Mateusz Ślażyński, Research Assistant @ AGH University of Krakow
 +
 +**Title**: Formal Representation and Synthesis of Local Search Neighborhoods
 +
 +**Abstract**:
 +Local Search algorithms are a popular approach to solving difficult optimization problems. Their performance, however, depends strongly on the so-called fitness landscape, as defined by a cost function and the chosen neighborhood operators. The presentation will provide an overview of the author’s doctorate research on finding well-formed fitness landscapes automatically based on declarative models of discrete optimization problems. After introducing the necessary context, the author will propose a formal representation of the neighborhood operators and an evolutionary algorithm designed to synthesize operators satisfying given fitness criteria. 
 +
 +
 +
 +**Biogram**: 
 +Mateusz Ślażyński has recently obtained his doctorate in Computer Science from the AGH University of Krakow; trying to bridge the gap between declarative models and meta-heuristic methods. He specializes in Operational Research, extending classical solutions with Reinforcement Learning and Automated Algorithm Design techniques. Having a background in philosophy, his interests also include probabilistic argumentation, philosophy of mind and artificial intelligence. Outside the academia, he is working as a consultant, implementing solvers for vehicle routing and warehouse management problems.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2024-02-01 ====
 +<WRAP column 15%>
 +{{ :aira:piotr-fudalej-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Piotr Fudalej, Professor @  Medical College of Jagiellonian University
 +
 +**Title**: Artificial intelligence at the dentist - patient or assistant?
 +
 +**Abstract**:
 +This presentation will be inspirational. I will demonstrate what the process of planning and delivering orthodontic treatment looks like. Then I will describe where, from the point of view of a clinician treating orthodontic patients, there is a need to use machine learning algorithms to improve treatment planning, speed up therapy, or reduce the risk of adverse effects associated with dental (orthodontic) treatment.
 +
 +
 +
 +**Biogram**: 
 +Piotr Fudalej completed his studies of dentistry at Warsaw Medical University (Poland) and pursued biology at the University of Warsaw. Specializing in orthodontics, he earned degrees from the University of Washington in Seattle and obtained two doctorates: one in Poland in 1999 and another in the Netherlands in 2011 at Radboud University Nijmegen. Presently, he holds the position of professor and heads the Department of Orthodontics at Jagiellonian University in Kraków (Poland). Additionally, he serves as an adjunct professor at the University of Bern in Switzerland.
 +
 +Having supervised/co-supervised 15 doctoral students from the Netherlands, Switzerland, Poland, and the Czech Republic, Piotr Fudalej has contributed significantly to orthodontic research. His research output includes over 90 articles published in peer-reviewed international scientific journals. As the President-Elect of the European Orthodontic Society, he will organize the 100th EOS Congress in Krakow in 2025.
 +
 +In 2010, he was honored with the "2010 Samuel Berkowitz Long-Term Outcomes Study Award" for the article "Dental arch relationship in children with complete unilateral cleft lip and palate following Warsaw (one-stage repair) and Oslo protocols." In 2022, he received "The 2022 Dewell Award for Best Clinical Research" for the article "A comparative assessment of failures and periodontal health between 2 mandibular lingual retainers in orthodontic patients. A 2-year follow-up, single practice-based randomized trial."
 +
 +For over 20 years, he has maintained a specialized orthodontic practice in Poland.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +==== 2024-01-25 ====
 +<WRAP column 15%>
 +{{ :aira:rita-ribeiro-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Rita P. Ribeiro, Assistant Professor @  University of Porto 
 +
 +**Title**: Online Anomaly Explanations - case study of Metro do Porto
 +
 +**Abstract**:
 +Data-driven Predictive Maintenance is becoming increasingly important in many industries. This approach involves using machine learning algorithms on historical and real-time data from various system parts to detect anomalies and possible defects in equipment before they lead to failure. Black-box models based on deep-learning techniques are popular due to their high predictive accuracy. However, as these systems become more complex with many interacting components, it's crucial to ensure the trustworthiness of these models through explainability.
 +
 +In this talk, we will present a two-layer data-driven predictive maintenance framework. The first layer uses autoencoders for fault detection, while the second employs an online rule-learning algorithm to explain anomalies. We will showcase this framework in a case study on a train from Metro do Porto, Portugal, demonstrating how it fulfils the requirements for early detection of failures and provides explanations for those anomalies.
 +
 +
 +
 +**Biogram**: 
 +Rita P. Ribeiro is an Assistant Professor at the Department of Computer Science at the Faculty of Sciences of the University of Porto (FCUP) and a Senior Researcher at the Laboratory of Artificial Intelligence and Decision Support (LIAAD) at the Institute of Systems Engineering and Computing, Technology and Science (INESCTEC). Her main research interests focus on learning problems in imbalanced domains, anomaly detection, evaluation issues in learning tasks and application problems related to social good and environmental impact. She has been involved in several research projects concerning ecological problems, fraud detection and predictive maintenance applications. She is a member of the program committee of several international conferences, also serves as an editor and reviewer for several international journals and has been involved in the organization of various scientific events.
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +==== 2024-01-18 ====
 +<WRAP column 15%>
 +{{ :aira:jakub-gomulka-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Jakub Gomułka, Professor @ Faculty of Humanities of AGH University of Krakow,
 +
 +**Title**: The Wittgenstein Ontology Project
 +
 +**Abstract**:
 +The present paper concerns the Wittgenstein ontology project: an attempt to create a Semantic Web representation of Ludwig Wittgenstein’s philosophy. The project has been in development since 2006, and its current state enables users to search for information about Wittgenstein-related documents and the documents themselves. However, the developers have much more ambitious goals: they attempt to provide a philosophical subject matter knowledge base that would comprise the claims and concepts formulated by the philosopher. The current knowledge representation technology is not well-suited for this task, and a non-standard approach is required. The creators of the Wittgenstein ontology project are aware of this fact; recently, they have been discussing conceptual devices adjusting the technology to their needs.
 +
 +
 +
 +**Biogram**: 
 +Jakub Gomułka, PhD (hab), Prof. AGH at the Faculty of Humanities of AGH University of Krakow, is interested in the philosophy of Ludwig Wittgenstein and Stanisław Lem, as well as the application of AI technology in the humanities. His recent publication include the following papers: "Tractatus 6 Reconsidered: An Algorithmic Alternative to Wittgenstein’s Trade-Off" (2023, co-authored with Adam Roman), "Towards a Computational Ontology for the Philosophy of Wittgenstein: Representing Aspects of the Tractarian Philosophy of Mathematics" (2023), and "Artificial Intelligence applied to philosophy : a contribution to the Wittgenstein Ontology project" (2023).
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +==== 2024-01-11 ====
 +<WRAP column 15%>
 +{{ :aira:arkadiusz-tomczyk-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Arkadiusz Tomczyk, Assistant Professor @ Lodz University of Technology
 +
 +**Title**: Interpretable components and graph neural networks
 +
 +**Abstract**:
 +In the presentation graph neural networks will be discussed. They will be compared both to classic and deep learning techniques (including convolutional neural networks and transformers). Their possible areas of applications will be illustrated by prediction of chemical molecules' properties and structured image analysis. In both cases the explainability aspects will be emphasized. In particular, when it comes to images, it will be argued that proper representation of their content with interpretable components may lead to additional benefits (better communication with domain experts).
 +
 +
 +
 +**Biogram**: 
 +Arkadiusz Tomczyk received the MSc degree in computer science in 2002 and the PhD with honours in computer science in 2011 from the Faculty of Technical Physics, Information Technology and Applied Mathematics of the Lodz University of Technology, Poland. Since 2002 he has been employed in the Institute of Information Technology of the Lodz University of Technology. His research experience covers image processing and analysis, especially active contour methods, as well as pattern recognition and machine learning techniques. From 2013 to 2017 he was a principal investigator in research grant focused on Cognitive Hierarchical Active Partitions, a method combining active contour approach with structural representation of image content. This project was supported by National Science Centre, project no. 2012/05/D/ST6/03091. Currently he actively participates in projects supported by National Centre for Research and Development and his scientific interests focus on machine learning techniques (convolution neural networks, transformers, graph neural networks) applied to analysis of images and graphs. He is an author and co-author of around 50 journal papers, book chapters and conference contributions.
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-12-21 ====
 +<WRAP column 15%>
 +{{ :aira:tomasz-stebel-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Tomasz Stebel, Assistant Professor @ Jagiellonian University
 +
 +**Title**: Sampling states in statistical physics with neural networks
 +
 +**Abstract**:
 +It was recently proposed that neural networks could be used to approximate many-dimensional probability distributions that appear in physics. Subsequently they can be used as variational approximators to obtain extensive properties of statistical systems, like entropy, and also as neural samplers used in Monte Carlo simulations. In this talk I will discuss two algorithms suitable for these purposes: Variational Autoregressive Networks and Normalizing Flows and present recent improvements.
 +
 +
 +
 +**Biogram**: 
 +Tomasz Stebel obtained his doctorate in theoretical physics from the Jagiellonian University. He was a postdoctoral researcher in Institute of Nuclear Physics in Krakow and Brookhaven National Laboratory in USA. Currently is a adjunct at the Faculty of Physics, Astronomy and Applied Computer Science, Jagiellonian University. He is working on theoretical particle physics, in particular high-energy Quantum Chromodynamics and on applications of Machine Learning in statistical and particle physics.
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-12-14 ====
 +<WRAP column 15%>
 +{{ :aira:bartlomiej-nawara-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Barłomiej Nawara, PhD Candidate @ Jagiellonian University
 +
 +**Title**: Evolution of Science in the AI and Big Data Era: Modeling, Replication, Expertise
 +
 +**Abstract**:
 +This seminar talk presents an integrative analysis of the transformative effects of Artificial Intelligence (AI) and Big Data (BD) on scientific methodologies, with a particular focus on the emergence of Software-Ladent (SL) science. Central to this investigation is the philosophical exploration of Big Data Science, drawing from seminal works by Boyd & Crawford, Kitchin and others, which position Big Data Science at the intersection of data-driven and software-intensive scientific approaches. This convergence is encapsulated in the concept of Software-Ladent (SL) science, where software is integral to scientific inquiry, underpinning automated inferences and algorithm-driven analyses.
 +
 +The presentation delves into the methodological changes recently brought about by Large Language Models (LLMs), marking a shift from classical methods to a software-intensive approach. This shift is contextualized within the broader philosophical debate of data-centric versus theory-centric approaches and the iterative nature of discovery in the Big Data era. The transformative impact of AI and Big Data on scientific methodologies, raised the new challenges, particularly in the replicability and the explainability of scientific results, suggesting the need for reevaluation of research methodologies in light of SL science.
 +
 +
 +
 +**Biogram**: 
 +Bartłomiej Nawara. Data Scientist, philosopher and Phd candidate at Jagiellonian University. Area of interest: Information and knowledge theories, philosophy of data science and NLP.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +==== 2023-12-07 ====
 +<WRAP column 15%>
 +{{ :aira:jeremi-ochab-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Jeremi Ochab, Assistant Professor @ Jagiellonian University
 +
 +**Title**: Fractal and multifractal organisation of neuroimaging signals in cognitive tasks and in disease
 +
 +**Abstract**:
 +In this talk I will present A) a detrended fluctuation analysis of functional magnetic resonance imaging (fMRI) data from a working memory experiment, B) a machine-learning approach to the same data, and C) a multifractal analysis of the electroencephalography (EEG) data obtained from patients with multiple sclerosis (MS). fMRI and EEG signals are notoriously challenging to analyse due to their very low temporal and spatial resolution, respectively, and a non-trivial auto-correlation and cross-correlation structure.
 +In A), we applied fractal analysis to investigate how a person is memorising and retrieving information in four types of experimental tasks: two visual-verbal (based on lists of semantically or phonetically associated words) and two non-verbal (pictures of similar objects). The regional brain activity was quantified with the Hurst exponent and Detrended Cross-Correlation Analysis (DCCA).
 +Among others, we uncover regionally coordinated changes by analysing eigensystems of detrended correlation matrices.
 +In B), we applied several linear and non-linear classification methods (among others QDA, Random Forests, hyperparameter tuned Light Gradient Boosting Machine, and ResNets) to the abovementioned fMRI signals in several multiclass settings. Our tests showed that information crucial for producing good classification results (aka explanations) is localised in a small number of ROIs. I will also show how important it is for such explanations to scrutinise neural time series for cross-correlations.
 +In C), we compared the complexity of the EEG time series, paying particular attention to analysing the correlations between the degree of multifractality, disease duration, and level of disease progression quantified by the Expanded Disability Status Scale (EDSS). We used Multifractal Detrended Fluctuation Analysis, a generalisation of the DFA which is a robust tool for multilevel characterisation of time series. Based on the generalised Hurst exponents, we obtained the multifractal spectrum. To quantify the coupling between the brain regions we again used the DCCA.
 +
 +
 +
 +**Biogram**: 
 +Jeremi Ochab is an Assistant Professor at the Institute of Theoretical Physics, Jagiellonian University (JU), Cracow, Poland, a member of the Mark Kac Center for Complex Systems Research at JU and of the Computational Stylistics Group, and serves on the Scientific Board of Jagiellonian Centre for Digital Humanities. He graduated in theoretical physics and English studies (translation). He conducts research on methods of data analysis, neuroscience, as well as stylometry. Currently, he is interested in interdisciplinary applications of physics-based and machine-learning tools.
 +He was a Principal Investigator of two Polish National Science Centre grants (about clustering complex networks and methods of analysing neurophysiological signals), an R&D Director in Stribog Games (in a project about managing user emotions in gameplay), and has been a researcher in several other grants (concerned with applications of the theory of random matrices, automatic translation into a sign language, in CLARIN-PL, and most recently in bio-inspired artificial neural networks http://bionn.matinf.uj.edu.pl/). In the meantime, he has translated several popular-science books into Polish (including Richard Feynman's and Neil deGrasse Tyson's).
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2023-11-30 ====
 +<WRAP column 15%>
 +{{ :aira:andrzej-siodmok-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Andrzej Siódmok, Professor @ Jagiellonian University
 +
 +**Title**: Towards a deep learning model for hadronization - an example of the application of the ML generative models in high-energy physics. 
 +
 +**Abstract**:
 +The Large Hadron Collider (LHC) is the highest-energy particle collider and the largest and most complex machine ever built by mankind. At the LHC, particles (protons) are accelerated to speeds close to the speed of light, and when they reach sufficiently high energies, the protons collide with each other. These collisions, of which there are a billion per second, produce hundreds or even thousands of particles that need to be analysed. That is why LHC produces very large amounts of high-quality data that can be used for applications of machine learning methods and this is why over past years, modern machine learning has been quietly revolutionizing particle physics.  
 +
 +One of the greatest challenges for obtaining accurate theoretical predictions that can be used for discovery in LHC comes from the fact that there is a huge gap between a one-line formula of a fundamental theory, like the equation of Standard Model (SM), and the experimental reality that it implies. General Purpose Monte Carlo (GPMC) event generators are computer programs (often exceeding 500,000 lines of code) which are constructed to bridge that gap. One can think of a GPMC as a “Virtual Collider” that produces simulated collisions similar those that are produced in the actual LHC experiments, and therefore its results can be directly compared to the experimental data. One of the least understood components of these virtual colliders is the so-called hadronization. Hadronization is a complex quantum process whereby quarks and gluons become hadrons. The widely used models of hadronization in GPMC are based on physically inspired phenomenological models with many free parameters. We propose an alternative approach whereby neural networks are used instead. Deep generative models are highly flexible, differentiable, and compatible with graphical processing units. We also make the first step towards a data-driven machine learning-based hadronization model.  
 +
 +Talk is based on two papers: 
 +
 +  * “Fitting a Deep Generative Hadronization Model”, J. Chan, X. Ju, A. Kania, B. Nachman, V. Sangli and A. Siodmok JHEP 09 (2023) 084 [https://inspirehep.net/literature/2663239] 
 +  * “Towards a Deep Learning Model for Hadronization”, A. Ghosh, X. Ju, B. Nachman and A. Siodmok, Phys. Rev. D, [arXiv:hep-ph/2203.12660] (2022). [https://inspirehep.net/literature/2057978] 
 +
 +
 +**Biogram**: 
 +Andrzej Siodmok obtained his doctorate in physics with honours from both the Pierre and Marie Curie University in Paris (currently Sorbonne University) and the Jagiellonian University. He subsequently worked at a number of research centres including CERN in Switzerland, Niels Bohr Institute in Copenhagen, LPNHE in Paris, Paul Scherrer Institute in Switzerland, The University of Manchester in the UK, KIT in Germany and is currently a university Professor at the Jagiellonian University. His recent interests include applications of Machine Learning techniques in High Energy Physics.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2023-11-23 ====
 +<WRAP column 15%>
 +{{ :aira:joanna-korjakowska-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Joanna Jaworek-Korjakowska, Professor @ AGH UST
 +
 +**Title**: The Impact of Artifacts on the Effectiveness of Deep Learning
 +
 +**Abstract**:
 +Dermoscopy, a non-invasive diagnostic technique for skin cancer detection, relies on detailed imaging of skin lesions. However, the presence of artifacts in dermoscopic images can significantly impact the accuracy of computer-aided diagnosis using deep learning algorithms. The presentation will explore various types of artifacts such as air bubbles, gel remnants, and uneven illumination and investigate challenges these artifacts pose to deep learning solutions and discusses strategies for artifact detection and mitigation.
 +
 +Understanding the influence of artifacts on deep learning models is crucial for enhancing the reliability of such systems. The presentation will highlight recent advancements in preprocessing techniques and model architectures designed to address the impact of artifacts as well as present datasets and workflows to mitigate the bias. Additionally, it emphasizes the importance of curated datasets with diverse artifact representations for training robust and generalizable deep learning solutions in dermoscopy.
 +
 +
 +**Biogram**: 
 +Joanna Jaworek-Korjakowska, Univ. Professor, Director of the Centre of Excellence in Artificial Intelligence and Deputy Head of the Department of Automatic Control and Robotics at the AGH University in Kracow, Poland. In 2019 she obtained Habilitation in the field of technical sciences with emphasis in artificial intelligence. She is an expert at the Confederation of Laboratories for Artificial Intelligence Research in Europe (CLAIRE), member of IEEE, Polish Artificial Intelligence Society as well as an alumnus of the TOP 500 Innovator programme at Stanford University, USA.  Her main research interests focus on computer vision, data mining, artificial intelligence especially deep learning methods, anomaly detection as well as clustering. J. Jaworek has been awarded Honorable Mention Award during the CVPR'19 conference (ISIC workshop) and Bekker Fellowship’22 to conduct research at the Stanford University, USA.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2023-11-09 ====
 +<WRAP column 15%>
 +{{ :aira:jan-argasinski-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Jan K. Argasiński, PhD - Institute of Applied Computer Science, Jagiellonian University in Krakow
 +
 +**Title**: Neuroscientific Inspirations in AI: Spiking Neural Networks
 +
 +**Abstract**:
 +This presentation explores the intersection of neuroscience and artificial intelligence (AI), emphasizing the role of Spiking Neural Networks (SNNs) in bridging the gap between biological and artificial computation. The talk traces the evolution of neural network models and underscores how SNNs, inspired by the brain's efficient and dynamic communication via spikes, offer potential advancements in energy efficiency and real-time processing. By delving into the architecture and applications of SNNs, the presentation highlights their promise in bringing AI closer to human-like cognitive capabilities while also acknowledging existing challenges and future research avenues.
 +
 +**Biogram**: 
 +Jan K. Argasiński holds a doctorate degree in studies on arts from the Jegiellonian University and has also a background in philosophy and neurobiology. He is interested in the fields of virtual reality (VR) and augmented reality (AR), affective computing, and in selected problems of computational neuroscience.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +==== 2023-10-26 ====
 +<WRAP column 15%>
 +{{ :aira:jakub-jakubowski-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Jakub Jakubowski, PhD Candidate @ AGH University of Science and Technology
 +
 +**Title**: Synthetic Data Generator for Predictive Maintenance in Steel Manufacturing 
 +
 +**Abstract**:
 +In the era of Industry 4.0, where automation, data, and connectivity converge to revolutionize manufacturing and industrial processes, the need to identify and address irregularities is more critical than ever. Anomaly detection, a fundamental component of data-driven decision-making in this context, is the key to ensuring smooth operations, maintaining product quality, and preventing costly disruptions. Developing machine learning-based anomaly detection systems presents significant challenges. Trustworthy labels are often scarce, making model training difficult, and noisy data can lead to false alarms. Moreover, the low number of actual faults, particularly in infrequent anomaly scenarios, complicates the model's ability to detect rare anomalies accurately. These factors often hinders the development of ML models for PdM, as they undermine the evaluation process. To address this challenges, we present a synthetic data generator, which is based on physics-based model from a steel manufacturing process. In the dataset we generate the different types of anomalies and deteriorations, which might occur in the real-world process. The data generator can be used in areas such as Anomaly Detection, Remaining Useful Life prediction and Explainable AI.
 +
 +**Biogram**: 
 + has received Bachelor (2016) and Master (2017) degrees in Energy Engineering from AGH University of Science and Technology, Faculty of Fuels and Energy. Since 2018 he is working in ArcelorMittal, world’s largest steel producer, as modelling specialist/data scientists. Responsible for development and implementation of mathematical models in areas like product optimization and production planning. In addition he helps engineers in analysis of big data from industrial processes and development of business intelligence tools. In 2020 he has completed postgraduate studies in Data Science at AGH UST, Faculty of Computer Science, Electronic and Telecommunications. From 2020 he has been a PhD candidate at AGH UST taking part in Implementation Doctorate Programme, combining research and work in industry. His main field of interest is application of AI techniques in industry i.e. in predictive maintenance solutions.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +==== 2023-10-19 ====
 +<WRAP column 15%>
 +{{ :aira:raquel-espinosa-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Raquel Espinosa, University of Murcia
 +
 +**Title**: Multi-objective evolutionary feature selection with deep learning applied to air quality spatio-temporal forecasting
 +
 +**Abstract**:
 +This work formalizes feature selection as a multi-objective optimization problem and employs multi-objective evolutionary algorithms, along with surrogate-assisted models to enhance computational efficiency. These techniques have been applied mainly in air quality time series forecasting.
 +
 +**Biogram**: 
 +Raquel Espinosa received her PhD in Computer Science from the University of Murcia (Spain) in 2023. Her research is focused on computational optimization techniques through evolutionary algorithms. She has been working as a data scientist at CENTIC since 2021, developing several R&D projects in the field of artificial intelligence. Her research interests include Big Data, Deep Learning, Machine Learning, Evolutionary Computation and Data Mining.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +==== 2023-10-12 ====
 +<WRAP column 15%>
 +{{ :aira:przemyslaw-witaszczyk-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Przemysław Witaszczyk,  Assistant Professor @ Jagiellonian University
 +
 +**Title**: Reflections after Digital Dragons 2023
 +
 +**Abstract**:
 +During the talk I will share some perspective given by video games companies on the generative AI, which is taking gamedev industry by force.
 +
 +
 +**Biogram**: 
 +Przemysłw Witaszczyk is an assistant professor at the Jagiellonian University. He obtained his PhD in physical sciences in 2017 at the Faculty of Physics, Astronomy and Applied Computer Science of the Jagiellonian University.
 +
 +He conducts research in the field of AdS/CFT correspondence. He is an onrganizer of EAG and ZTG computer laboratories. 
 +He is a founder of the Gamedev Students Association scientific club. 
 +He is involved in research on emotional and biometric interfaces in games and more recently in research on artificial intelligence and machine learning.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-06-29 ====
 +<WRAP column 15%>
 +{{ :aira:sepideh-pashami-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Sepideh Pashami,  Senior researcher @ RISE research institutes of Sweden
 +
 +**Title**: Domain Adaptation for Predictive Maintenance
 +
 +**Abstract**:
 +There are several hindrances when it comes to applying ML in real-world settings. Despite the success of supervised ML, collecting a large amount of labeled data from constantly evolving systems slows down the progress of these techniques in industrial settings. Transfer Learning can encourage reuse of knowledge instead of training models from scratch. This talk showcases the use of domain adaptation in predictive maintenance of electric vehicles. 
 +
 +
 +**Biogram**: 
 +Sepideh Pashami is a senior researcher at RISE research institutes of Sweden and Senior lecturer at the Center for Applied Intelligent Systems Research, Halmstad University. She received her PhD from AASS Research Centre, Örebro University, Sweden, in 2016. Sepideh has served as the Technology Area Leader for Aware Intelligent Systems, part of the Intelligent Systems and Digital Design department, since 2020. My research interests include equipping machine learning methods with transferability, causality, explainability and robustness properties to expand their impact in today’s industry and society. She has been involved as a researcher and research leader in several projects (e.g. EVE, In4Uptime, ARISE and HEALTH) in collaboration with Volvo Group AB, applying machine learning techniques for predictive maintenance of heavy-duty vehicles. She served on the organising committee of SAIS 2022, the workshop ECML/PKDD 2019,2020,2022, Special session on explainable predictive maintenance, DSAA 2021, IDM-WSDM 2019 workshop, industry days at IJCAI-ECAI 2018, RoboCup in IranOpen2008 and IranOpen2009.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2023-06-26 ====
 +<WRAP column 15%>
 +{{ :aira:sepideh-pashami-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Sepideh Pashami,  Senior researcher @ RISE research institutes of Sweden
 +
 +**Title**: Causal Inference and its Connection to Machine Learning
 +
 +**Abstract**:
 +Machine learning can go beyond its predictive capability by better considering the underlying mechanisms of a system and understand the reasoning behind the decisions. The talk starts by motivating the need for using causal inference research. It covers the definition of cause and effect, randomized experiments, do-calculus, and graphical models. It further explains the potential outcome calculation and a causal discovery algorithm.  Finally, it shows how to use causal inference concepts in machine-learning contexts.
 +
 +
 +**Biogram**: 
 +Sepideh Pashami is a senior researcher at RISE research institutes of Sweden and Senior lecturer at the Center for Applied Intelligent Systems Research, Halmstad University. She received her PhD from AASS Research Centre, Örebro University, Sweden, in 2016. Sepideh has served as the Technology Area Leader for Aware Intelligent Systems, part of the Intelligent Systems and Digital Design department, since 2020. My research interests include equipping machine learning methods with transferability, causality, explainability and robustness properties to expand their impact in today’s industry and society. She has been involved as a researcher and research leader in several projects (e.g. EVE, In4Uptime, ARISE and HEALTH) in collaboration with Volvo Group AB, applying machine learning techniques for predictive maintenance of heavy-duty vehicles. She served on the organising committee of SAIS 2022, the workshop ECML/PKDD 2019,2020,2022, Special session on explainable predictive maintenance, DSAA 2021, IDM-WSDM 2019 workshop, industry days at IJCAI-ECAI 2018, RoboCup in IranOpen2008 and IranOpen2009.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +==== 2023-06-22 ====
 +<WRAP column 15%>
 +{{ :aira:mkk-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Michał Kuk,  PhD Candidate @ AGH University of Science and Technology
 +
 +**Title**: Time-Series Complexity into Understandable Prototypes: A Generic Approach to Machine Learning Explanations in Industrial Processes
 +
 +
 +**Abstract**:
 +Machine Learning (ML) algorithms have become integral tools in modern industrial processes due to their ability to learn complex patterns, make predictions, and facilitate decision making. However, a crucial challenge persists - their lack of explainability. This often leads to difficulties in conveying their working principles in an understandable manner, particularly when applied to time-series data.To enhance the explainability of ML models in industrial contexts, explanations should be formulated more generically, taking into account periods characterized by particular ranges of data, rather than focusing solely on specific instances. We propose a novel approach to ML model explanation that creates prototypical sets - defined as representative data segments with characteristic behaviors. This method allows simplicity and a better understanding of the complex time-series data.
 +
 +**Biogram**:
 +Michał Kuk is a graduate of the Drilling, Oil, and Gas Faculty at the AGH University of Science and Technology. He completed his master's thesis in 2017, developing an algorithm to optimize the location of new wells. In 2018, he began his Ph.D. studies at the same faculty, specializing in mining and geology. His research primarily involves optimizing oil and gas production, employing machine learning algorithms to enhance output from reservoirs. His innovative approach earned him second place in the Ph.D. division of the SPE student paper contest.
 +
 +Since November 2020, Kuk has been a valued member of the GEIST team. His contributions include his involvement in the Process-aware Analytics Support based on Conceptual Models for Event Logs (PACMEL) project. Currently, he is participating in the XPM project, focusing on explainable predictive maintenance. His proffessional work is building machine learning algorithms to predict failures in heavy industrial processes.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2023-06-15 ====
 +<WRAP column 15%>
 +{{ :aira:usman-akhtar-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Usman Akhtar,  Postdoc researcher @ Jagiellonian University
 +
 +**Title**: Unlocking Insights for Health and Wellness: Exploring the Data Curation Framework for Big Data
 +
 + 
 +
 +**Abstract**: 
 +The seminar presentation will delve into two significant research areas: MiningMinds (Data Curation Framework) and Querying Linked Open Data Cloud (LOD). Data Curation Framework is a research initiative that aims to provide a comprehensive solution for multimodal data processing and persistence. The primary focus of this framework is to explore the challenges and methodologies involved in managing and integrating diverse sensory data sources to facilitate effective health monitoring and wellness applications. The integration and curation of these data sources are essential to gain comprehensive insights into an individual's health and well-being. This framework aims to address key issues such as data heterogeneity, data quality, interoperability, and privacy concerns. By leveraging advanced techniques from data management, data fusion, and machine learning, the framework enables efficient processing, integration, and analysis of multimodal sensory data. Additionally, the seminar will explore in-depth working on this framework and highlights some projects such as MiningMinds, IMP, LeanUX and IMSTein. Secondly, I will briefly present the thesis work related to the query performance of the Linked Open Data (LODF) cloud. Overall, this seminar paper introduces a cache-based method as a solution to improve the query performance of the Linked Open Data cloud. The method's implementation details, caching strategies, and experimental results provide valuable insights into optimizing query responses and optimizing the utilization of LOD cloud resources.
 +
 + 
 +
 +**Biogram**: 
 +Usman Akhar, Ph.D., is a Postdoctoral researcher at Jagiellonian University in Krakow, Poland. He completed his Ph.D. in 2021 at KyungHee University in South Korea, focusing on Querying Evolving Linked Open Data. His research interests lie in the application aspects of distributed systems, Cloud-centric Data Acquisition, and Linked Open Data (LOD). His primary focus has been on enabling clouds for data acquisition, synchronization, and persistence.
 +
 +One of the major outcomes of his research is the development of an open-source Data Curation Framework (DCF) for multimodal data processing and persistence. This platform extends the core technologies and infrastructure of existing clinical decision support systems (CDSS) and fusion technology (AI+BigData+Cloud+Medical). Its purpose is to facilitate the Fourth Industrial Revolution by providing a comprehensive solution for ICT medical fusion and the training of human resources in this field.
 +
 +He has been recognized through his publications in good journals and his patents, showcasing the uniqueness and potential of his research.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +==== 2023-06-01 ====
 +<WRAP column 15%>
 +{{ :aira:michal-bujak-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Michał Bujak,  PhD candidate @ Jagiellonian University
 +
 +**Title**: Graph neural networks for community detection and clustering problems with application to urban mobility studies.
 +
 + 
 +
 +**Abstract**: 
 +Graphs are the natural representation of data in various fields, such as social science, physical systems, protein interaction. In the presentation, I will introduce the general idea behind GNNs and then focus on the specific applications, i.e. community detection and clustering (node pooling). Following the proposed methods, I would like to present our recently started research project: application in the urban mobility specifically, ride-pooling. The underlying problem can be compressed into the following. Given the (increasing) function defined on a graph, propose a partition into clusters of a similar size, such that the value of the function on the partitioned graph is close to the value on the unpartitioned one.
 +
 + 
 +
 +**Biogram**: 
 +Michał Bujak is a PhD student in the Technical Computer Science at the Jagiellonian University. He holds a BSc and MS in Applied Mathematics with the focus on the probability theory and statistics. After working as a quantitative analyst, he renewed the academic education to focus on the application of network science and probability theory in the urban mobility studies.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2023-05-25 ====
 +<WRAP column 15%>
 +{{ :aira:przemyslaw-stanisz-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Przemysław Stanisz,  PhD, ArcelorMittal Poland
 +
 +**Title:** Modeling of advanced nuclear systems
 +
 + 
 +
 +**Abstract: **
 +The reliability and safety of the nuclear systems are estimated in a series of numerical simulations performed using various numerical tools. The tools should provide a high confidence level of confidence in the estimated system description. One of the approaches dedicated to nuclear reactor full-core analyses that meet these requirements is the Monte Carlo methods for neutron transport. The Monte Carlo neutron transport codes are widely used in various reactor physics applications, traditionally related to criticality safety analyses, radiation shielding problems, detector modeling and validation of deterministic transport codes. The main advantage of the method is the ability to model geometry and interaction physics without large approximations. The importance of Monte Carlo calculations is increasing, along with the development of computer capacities and parallel computing, making it an efficient used solver for physical problems.
 +During the presentation I will try to give an intuition how Monte Carlo neutron transport codes can assess the neutron distribution of the reactor core. In the second part I will present how the obtained distribution can be used for the evolution of the nuclide composition with time, and what are the main drawbacks for this approach. Finally, I will present the concept of the trajectory period folding method, which I developed during my PhD. studies.
 +
 + 
 +
 +**Biogram:**
 +Przemysław Stanisz received his MSc degree (2009) in Energy at AGH UST.
 +He continue his interest in mathematical modeling of nuclear reactors (Monte Carlo methods) at AGH. He defended his dissertation in 2016. He have worked as Research and Teaching Assistant for 5 years. He participate in EU LEADER project (https://cordis.europa.eu/project/rcn/96603/en). He took annual internship at JRC's Institute for Energy and Transport of the European Commission.
 +
 +Finally, he decided to look for new challenges in commercial business. He finished postgraduate studies in Financial Mathematics (2018). Now he is working for ArcelorMittal Poland as a software developer, building software for mathematical modeling and simulation in the field of Optimization Models, Machine Learning and Decision Making in order to improve the production process.
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +==== 2023-05-18 ====
 +<WRAP column 15%>
 +{{ :aira:artur-miroszewski-foto.jpeg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Artur Miroszewski,  Postdoctoral researcher @ Jagiellonian University 
 +
 +**Title:** Use of quantum computation in satellite data analysis
 +
 + 
 +
 +**Abstract: **
 +In the presentation, I consider extending classical Support Vector Machines (SVMs) with quantum kernels and applying them to satellite data analysis. The basic idea behind quantum computation and particular use cases for application of quantum computers in the field of remote sensing will be introduced.
 +The design and implementation of hybrid SVMs with quantum kernels is then discussed. Here, the pixels are mapped to the Hilbert space using parameterized quantum feature maps associated with quantum kernels. The parameters are optimized to maximize the kernel target alignment.
 +The quantum kernels are selected such that they enable analysis of numerous relevant properties while being able to simulate them with classical computers on a real-life large-scale dataset. Specifically, I approach the problem of cloud detection in the multispectral satellite imagery, which is one of the pivotal steps in both on-the-ground and on-board satellite image analysis processing chains. The experiments performed over the benchmark Landsat-8 multispectral dataset reveal that the simulated hybrid SVM successfully classifies satellite images with accuracy comparable to the classical SVM with the RBF kernel for large datasets. Interestingly, the high accuracy was also observed for the simple quantum kernels, lacking quantum entanglement.
 +
 + 
 +
 +**Biogram:**
 +Artur Miroszewski is a postdoctoral researcher at the Jagiellonian University and a data science consultant at Fremint. He obtained his PhD from the National Centre for Nuclear Research in 2021 in the field of theoretical physics. Currently, he is involved in the European Space Agency project exploring the opportunities of quantum machine learning for satellite data analysis. He focuses on using kernel methods for classification tasks. 
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-05-11 ====
 +<WRAP column 15%>
 +{{ :aira:joao-gama-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Joao Gama, Full Professor @ School of Economics, University of Porto, Portugal
 +
 +**Title:** Current Trends in Learning from Data Streams
 +
 + 
 +
 +**Abstract: **
 +Learning from data streams is a hot topic in machine learning and data mining. In this talk, we present two different problems and discuss streaming techniques to solve them.  In the first problem, we propose an architecture to explain black-box models for predictive maintenance. The explanations are oriented toward equipment anomalies in Metro do Porto trains. For the second problem, we present one of the first algorithms for online hyper-parameter tuning for streaming data. The Self hyper-Parameter Tunning (SPT) algorithm is an optimization algorithm for online hyper-parameter tuning from non-stationary data streams. SPT works as a wrapper over any streaming algorithm and can be used for classification, regression, and recommendation.
 +
 + 
 +
 +**Biogram:**
 +João Gama is a Full Professor at the School of Economics, University of Porto, Portugal. He received his Ph.D. in Computer Science from the University of Porto in 2000. He is EurIA Fellow, IEEE Fellow, Fellow of the Asia-Pacific AI Association, and member of the board of directors of LIAAD, a research group belonging to INESC Tec.
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-04-20 ====
 +<WRAP column 15%>
 +{{ :aira:mateusz-bulat-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Mateusz Bułat, PhD Candidate @ Jagiellonian University
 +
 +**Title**: Syntactic Pattern Recognition in Medical Applications
 +
 +**Abstract**: Syntactic Pattern Recognition is data analysis approach steming from formal grammars, formal languages and syntax analyser developement. It’s particularly effective in analysing structures, both those found in natural world and in human-made artifacts. To this day many studies used SPR methods in diagnosis of medical subjects, like hearing impairments in neonates or in commercial field, like for electricity consumption forecast.
 +
 +Current PHD candidate’s research focuses on medical image analysis for patients with oligodendroglioma brain cancer. Goal of the whole endeavour is to support medics job in detecting and contouring cancer changes in brain. We are currently focused on finding irregularities in human brain structure and then discerning which ones are oligodendroglioma cases.
 +
 +**Biogram**: After working for a short time supporting eCRF (electronic Case Report Form) for various medical trials, Mateusz continues education as a first year PhD student at Technical Computer Science, Jagiellonian University. He holds both Bachelor's and Master's degrees in Computer Science, Jagiellonian University.
 +
 +He professionaly worked on 3D medical image presentation, medical protocole analysis, Clinical Trial information flow and Adverse Event report forms. His current interests include medical image analysis, efficient webside building and workflow planning.
 +
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2023-04-13 ====
 +<WRAP column 15%>
 +{{ :aira:edyta-kuk-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Edyta Kuk, PhD Candidate @ AGH UST
 +
 +**Title**: Machine Learning-based industrial process control with explainable decision support
 +
 +**Abstract**: Real industrial processes carry significant consequences with every decision made. The idea is to develop a decision support system that can be easily understood by operators to make optimal process control decisions in real-time. The proposed method aims to define proactive control and as a result, prevent potential issues before they occur by using simulations and virtual sensors. The algorithm uses machine learning techniques to combine physical and virtual sensor data obtained from a simulation model to identify the process stage. Appropriate control actions are determined based on a control scheme directly dependent on this stage. In the proposed approach the control scheme is created by an expert human, based on the best industrial practices, making the whole process fully interpretable. To obtain optimal process control the decision scheme proposed by a human expert is parametrized and optimized using an AI-based optimization method. Since the structure of this parameterized decision tree is suggested by the human expert, the decision-making process that is entirely automated remains straightforward to interpret. To make defined control more reliable for the operator, the Explainable Artificial Intelligence (XAI) techniques, which introduce transparency and intelligibility into the decision-making process of AI-based systems are applied. They help to replace the decisions suggested by AI-based system with human-understandable decision rules that exactly tell not only which action should be taken but also why relating the answer to the current process stage. The proposed methodology is illustrated on a case study of gas production from an underground reservoir, showing that it increases process reliability and improves performance by providing proactive process control.
 +
 +**Biogram**: Edyta Kuk is a Research Assistant and PhD student at the AGH University of Science and Technology, with a strong research interest in applying machine learning methods to optimal control of industrial processes. In 2016, she completed her BSc in Oil and Gas Engineering, followed by an MSc in Mining and Geology in 2017, and an MSc in Computer Science in 2018, all from the AGH University of Science and Technology. Currently, she works as a Data Scientist at Hitachi Energy. Edyta Kuk's work on optimizing hydrocarbon production from underground reservoirs has been recognized with several awards, including 1st place in the Ph.D. division at the SPE European Regional Student Paper Contest. She represented Europe at the SPE International Student Paper Contest in Calgary. Her research activities have earned her the Scholarships of the Minister of Science and Higher Education for outstanding young scientists. She can be contacted at email: kuk@agh.edu.pl
 +
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2023-03-30 ====
 +<WRAP column 15%>
 +{{ :aira:marcin-grzegorzek-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**:  Marcin Grzegorzek,  full professor of medical informatics @ University of Lübeck,
 +
 +**Title**: Profiling Humans Using Pattern Recognition Algorithms
 +
 +**Abstract:**
 +Marcin Grzegorzek will present sensor-based machine learning systems
 +capable of not only recognising but also explaining the activities and
 +states of the human body. The aim is to shift attention from recognition
 +to understanding, from conscious physical activities to unconscious body
 +and mind states, from external motor activities to internal biomedical
 +processes. New explainable artificial intelligence approaches are
 +helping to discover the relationship between the internal biomedical
 +processes of the human body and the vast amount of heterogeneous data
 +that can be collected from humans (visual data, sensor signals,
 +phenotype, genotype, microbiome, medical history, family situation,
 +daily routine, any kind of other contextual information). From an
 +application perspective, Marcin's talk will focus on human activity
 +monitoring, personalised nutrition, pain monitoring and sleep analysis.
 +
 +
 +**Biogram:**
 +Marcin Grzegorzek (born in 1977) obtained his master degree in computer
 +science from the Silesian University of Technology in Gliwice in 2002,
 +his doctor of engineering degree with distinction from the University of
 +Erlangen-Nürnberg in 2007 and his habilitation degree from the AGH
 +University of Science and Technology in Kraków in 2014. In October 2018,
 +Marcin received his nomination as full professor in Germany. In October
 +2019, he obtained a professor title conferred by the President of the
 +Republic of Poland. With regard to his academic employment history,
 +Marcin Grzegorzek worked in the past for the University of
 +Erlangen-Nürnberg (2002-2006), Queen Mary University of London
 +(2006-2008), University of Koblenz-Landau (2008-2010) and University of
 +Siegen (2010-2018). Since October 2018, Marcin Grzegorzek has been full
 +professor of medical informatics at the University of Lübeck leading the
 +Medical Data Science Lab [1] and, since February 2022, full professor at
 +the Department of Knowledge Engineering of the University of Economics
 +in Katowice. In addition, he is head of the Innovation Incubator Pattern
 +Recognition at Fraunhofer IMTE in Lübeck, member of the scientific board
 +at Perfood GmbH in Lübeck and associate editor of Elsevier Pattern
 +Recognition and Springer Visual Computer journals. Marcin's research
 +areas include pattern recognition, machine learning, data science and
 +knowledge engineering for health-related applications. He and his team
 +conceptualise, implement and evaluate new algorithms for automated
 +analysis of human-related data (e.g., wearable sensor data) and
 +demonstrate their applicability in real-world scenarios. Prof.
 +Grzegorzek has published more than 100 scientific peer-reviewed articles
 +and acted as supervisor in 12 completed doctoral procedures. Moreover,
 +Marcin has been project leader in 18 third-party funded research projects.
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +==== 2023-03-23 ====
 +<WRAP column 15%>
 +{{ :aira:amira-soliman-foto.jpg?width=200| }}
 +{{ :aira:awais-ashfaq-foto.jpg?width=200| }}
 +{{ :aira:atiye-hashemi-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speakers**: 
 +  * Amira Soliman, assistant professor @ Halmstad University,
 +  * Awais Ashfaq, research scientist @ Region Halland and post-doc @ Halmstad University
 +  * Atiye Sadat Hashemi, postdoctoral researcher @ Halmstad University
 +
 +
 +**Title**: Using AI in healthcare -- from outcome prediction through targeted interventions to EHR anonymisation
 +
 +**Abstract:**
 +In this talk we will present three aspects of AI research in healthcare pursued at Center for Applied Intelligent Systems Research at Halmstad university, Sweden.
 +
 +Heart failure readmission prediction aims to lower the burden of unscheduled readmissions on healthcare, in terms of increased cost and a negative impact on quality of care. Being able to predict such a risk following a discharge is very helpful to initiate relevant interventions to optimize care and improve clinical and health outcomes. In recent study, a 30-day readmission prediction method was developed using a mixture of electronic health record (EHR) and data available at discharge. The study demonstrated a high enough accuracy for the tool to be of clinical relevance as a clinical decision support system (CDSS).
 +
 +AI-based Targeted interventions at primary care level can significantly improve health quality. Primary care is often the first line of care that a person seeks for a medical concern. Several important decisions related to care management and planning are made, such as ordering diagnostic tests, writing referrals to specialised care etc., that influence the patient's overall health journey. AI is used to identify and understand factors responsible for all-cause hospitalisations, in particular support and learn from the different primary units based on their current practices and specific population characteristics.
 +
 +GANs are becoming a popular tool for Electronic Health Records anonymisation. Data anonymisation has been used as a fundamental tool in various domains, e.g., healthcare, to alter personal data such that individuals can no longer be identified directly or indirectly in a way to enable broader sharing of data. Recently, the use of GANs for anonymising different data types such as EHRs has been showing particularly promising results.
 +
 +
 +**Biograms:**
 +
 +**Amira Soliman** received her PhD from EECS school at KTH in March 2018. The PhD was an awarded fellowship by Marie Curie Initial Training Networks, European Union. During the PhD, she developed multiple algorithms that allow decentralised analytics to effectively work on top of fully decentralised topology when the data is fully distributed and participating nodes have access only to their local resources. She is currently working at Halmstad University as an assistant professor in information-driven healthcare. Her research experience spans distributed systems, data analysis, and machine learning with a focus on interlinked data analysis using graph theory for complex and large systems. The research is directed towards the exploration of new algorithms for supporting the design and implementation of robust and large-scale decentralised learning algorithms.
 +
 +**Awais Ashfaq** is a research scientist at Region Halland and post-doc at Halmstad University, Sweden under the supervision of Markus Lingman and Slawomir Nowaczyk. He works on scientific machine learning, especially focusing on intelligible self-supervised learning algorithms for representing Electronic Health Records (EHRs) to build prediction models. Simply put, the objective is to transform patient health data at a given time from raw EHR format to meaningful information (embeddings or representations) that can further be understood clinically by humans and algorithmically by prediction models. Being able to predict or forecast risk of adverse outcomes or disease onsets on individual and societal level can trigger early interventions to avoid, or at least prepare, for medical complications and seasonal or regional epidemics.
 +
 +**Atiye Sadat** Hashemi has received her BSc, MSc, and PhD in Electronic Engineering from Semnan University in Iran. She was a visiting researcher at the Chair of Signal Processing and Machine Learning of the Institute for Communications Technology, Technische Universität Braunschweig, Germany in 2020 and 2021. Currently, she is a Postdoctoral fellow in Center for Applied Intelligent Systems Research at Halmstad university, Sweden. Her research interests include artificial intelligence, computer vision, adversarial attacks and defenses in machine learning, and data anonymisation.
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +==== 2023-03-16 ====
 +<WRAP column 15%>
 +{{ :aira:bartosz-zielinski-foto.jpeg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Bartosz Zieliński, Associate Professor @ Jagiellonian University
 +
 +
 +**Title**: Interpretable Deep Learning with Prototypical Parts
 +
 +**Abstract**: The broad application of deep learning in fields like medical diagnosis and autonomous driving enforces models to explain the rationale behind their decisions. That is why explainers and self-explainable models are developed to justify neural network predictions. Some of them are inspired by mechanisms used by humans to explain their decisions, like matching image parts with memorized prototypical features that an object can possess. Recently, a self-explainable model called Prototypical Part Network (ProtoPNet) was introduced, employing feature matching learning theory. It focuses on crucial image parts and compares them with reference patterns (prototypical parts) assigned to classes. In this presentation, we will present our papers concerning this topic published on the main track of three recent conferences (SIGKDD 2021, ECML PKDD 2022, ECCV 2022, and WACV 2023).
 +
 +**Biogram**: Bartosz Zieliński is an Associate Professor at the Jagiellonian University in Kraków, Team Leader at IDEAS NCBR, and Computer Vision Expert at Ardigen. He received M.Sc. degree from Jagiellonian University in 2007, Ph.D. from the Polish Academy of Science in 2012, and Habilitation from the Wrocław University of Science and Technology in 2022, all in Computer Science. He is an ELLIS member, and he frequently serves as a reviewer in major computer science conferences (CVPR, AAAI, ECCV, WACV, ECML PKDD) and journals (TIP, AIR, NAT COMMUN, CSBJ, CBM, T-BME, TRENDS MICROBIOL, PloS one). His research interests include computer vision, deep learning, interpretable machine learning, and weakly supervised learning.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +==== 2023-03-02 ====
 +<WRAP column 15%>
 +{{ :aira:antonio-martinez-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Antonio Martinez-Sanchez, Tenure-track Professor @ University of Murcia, Spain.
 +
 +**Title**: Computational methods for Cryo-Electron Tomography: current challenges
 +
 +**Abstract**: The cellular environment is characterized by the presence of many different molecular species, where macromolecular complexes, stable or transient, underlie critical cellular functions. Cryo-Electron Tomography (cryo-ET) is an extension of the technique that was Nobel awarded in Chemistry in 2017, cryo-Electron Microscopy (cryo-EM). With faithful sample preservation and direct imaging of fully hydrated biological material, cryo-ET enables an accurate three-dimensional (3D) visualization and analysis of the subcellular architecture at unprecedented resolution and in situ, i.e. under native conditions and preserving functional interactions.
 +
 +Cryo-ET relies greatly on computing as cellular structures are highly heterogeneous and the interpretation of volumes (also known as cryo-tomograms) is severely hampered by several factors like noise, low contrast, and anisotropic distortions. Consequently, the development of specific computer methods is required to analyze data within cryo-tomograms. In addition, recent advances in hardware have brought cryo-electron tomography to a new era by incrementing dramatically data quantity and quality, but at the same time has converted data analysis in a major bottleneck of this technique.
 +
 +In this talk we are going to introduce the challenges in the development of image analysis methods to automatically interpret the reconstructed cryo-tomograms and derive quantitative information about cellular processes at macromolecular level.
 +
 +**Biogram**: Antonio Martinez-Sanchez is a Tenure-track Professor in Computer Sciences at the University of Murcia (Spain). He holds a PhD in Computer Sciences by the University of Almeria (Spain) through an FPI grant from the Spanish State Agency of Research (AEI). In 2014, he started a postdoc at Prof. Baumeister lab in Max Planck Institute of Biochemistry (Germany), initially founded by Fundación Seneca, and finished at the University Medical Center of Göttingen. After two years of holding an Assistant Professor position at the University of Oviedo, 2020-2022, he got a Ramon y Cajal grant in 2023 (Spanish excellence program for Tenure-track positions) and moved to the Department of Information and Communications Engineering at the University of Murcia. He has published scientific papers in journals such as Nature Methods, Science Advances, Cell, Bioinformatics and Computer Methods and Programs for Biomedicine among others, and leads technology transference projects with private companies.
 +
 +He has a solid background in algorithms development, applied mathematics, and a knowledge in cell biology and optics wide enough to identify which questions can be solved by applied computer sciences. Currently, he is working on the development of computational methods to overcome limitations of Cryo-Electron Tomography technology.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +==== 2023-01-26 ====
 +<WRAP column 15%>
 +{{ :aira:stella-heras-foto.jpeg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Stella Heras, Assistant Professor @ Universitat Politècnica de València (UPV) Spain.
 +
 +**Title**: Automatic Analysis of Argumentative Discourse and Argumentation-based Human Persuasion
 +
 +**Abstract**: The talk focuses on automatic analysis of argumentative discourse and computational persuasion. We will talk about how we have applied AI techniques to detect different relationships between arguments in a text. We will introduce how we have created the VivesDebate dataset, the largest publicly available dataset on professional debate and how it can be used for different argument mining and NLP tasks. In addition, we will introduce our current work in the area of computational persuasion and the identification of how different types of arguments can be more or less persuasive for certain profiles of people, as well as the synergies between affective state (emotions) and argumentative discourse.
 +
 +**Biogram**: Stella M. Heras Barberá holds a PhD in Computer Science from the Universitat Politècnica de València (UPV, Spain). She is currently Assistant Professor at the Department of Computer Languages and Systems of the UPV, where she has taught since 2007 in different degrees and masters. She holds an Executive Master in Project Management from the University of Valencia (certified PMI PMP-1558995) and the title of University Specialist in University Pedagogy.
 +
 +She is a researcher in the GTI-IA group, currently belonging to the Valencian University Institute for Research in Artificial Intelligence (VRAIN). Her research focuses on the areas of computational argumentation, persuasive technologies and recommender systems in online education.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2023-01-19 ====
 +<WRAP column 15%>
 +{{ :aira:bartosz-sobol-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Bartosz Soból, PhD Candidate @ Jagiellonian University
 +
 +**Title**: Improving batch job scheduling with AI
 +
 +**Abstract**: Batch jobs and scripts are the primary way of describing and submitting computing tasks in virtually all major high-performance computing environments.
 +Scheduling of batch jobs is a non-trivial task that is crucial for the effective use of computing resources as well as for user experience. Existing schedulers usually use heuristics based on task description and users’ statistics to assign priority to each job.  
 +In recent years, AI-based solutions aimed to improve overall batch scheduling efficiency have been proposed. By leveraging reinforcement learning methods and including additional runtime factors into the scheduling process, they can in real-time adapt to changing cluster state and, in consequence, make better scheduling decisions.
 +In this talk, I will present the current state of the art on the topic and propose some ideas on how to improve existing solutions.
 +
 +**Biogram**: Bartosz Soból is a first-year Ph.D. student in Technical Computer Science at Jagiellonian University. He holds a BSc in Computer Mathematics and MSc in Computer Science from Jagiellonian University. Currently, he is a member of PANDA (FAIR, GSI) collaboration where he conducts research on particle tracking algorithms and heterogeneous online processing of experimental data. His professional interests include high-performance computing, software optimization for heterogeneous systems, and CPU-GPU-FPGA interoperability.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +==== 2023-01-12 ====
 +<WRAP column 15%>
 +{{ :aira:candela-hernandez-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Candela Hernández , PhD,  Assistant Professor @ Complutense University
 +
 +**Title**: Machine learning applications in Biological Anthropology
 +
 +**Abstract**: Artificial intelligence is revolutionizing all fields of human knowledge, from social sciences to medical and experimental disciplines. Machine learning methodologies are shedding light on different aspects of the evolutionary history and the biological diversity of humankind, based on the availability of big data in different areas of Biological Anthropology, from anthropometric measurements and skeletal virtual imaging to genomic information of past and extant human populations. Here, I will review several applications of ML in Paleoanthropology, Forensic Anthropology and Human Population Genetics, for instance, in sex and ancestry classification of skeletal remains and for testing new hypothesis regarding introgression events between hominin species and our ancestors. Finally, I will present some details on an ongoing project, in which we aim to integrate ML approaches in a massive genomic analysis (exome sequencing) of β-thalassemic patients from southern Spain. We want to model the relationship between genetic variants (genotype) and clinical outcomes (phenotype) for (i) identifying deleterious genetic variants, (ii) studying the possible association among these mutations and the clinical severity of the disease and (iii) assessing the role of population ancestry and different evolutionary phenomena (gene flow, natural selection) in the human deleterious genomic composition.
 +
 +**Biogram**: Candela Hernández is an Assistant Professor of Physical Anthropology at Complutense University. She holds a BSc and PhD in Biology, a BSc in Environmental Sciences and a MSc in Bioinformatics and Biostatistics. She have taught at several Spanish universities in the last ten years. Her research focuses on the study of human population diversity and evolutionary history by using biodemography and molecular markers. She is especially interested in omics approaches
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +==== 2022-12-15 ====
 +<WRAP column 15%>
 +{{ :aira:przemyslaw-spurek-foto.jpg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Przemysław Spurek, PhD,  Assistant Professor @ Jagiellonian University
 +
 +**Title**: Hypernetwork approach to few-shot learning
 +
 +
 +**Abstract**: The aim of Few-Shot learning methods is to train models which can easily adapt to previously unseen tasks, based on small amounts of data. One of the most popular and elegant Few-Shot learning approaches is Model-Agnostic Meta-Learning (MAML). The main idea behind this method is to learn the general weights of the meta-model, which are further adapted to specific problems in a small number of gradient steps. However, the model’s main limitation lies in the fact that the update procedure is realized by gradient-based optimization. In consequence, MAML cannot always modify weights to the essential level in one or even a few gradient iterations. On the other hand, using many gradient steps results in a complex and time-consuming optimization procedure, which is hard to train in practice, and may lead to overfitting. In the seminar, I describe a novel generalization of MAML which produces larger updates by using hypernetworks.
 +
 +**Biogram**: **Przemysław Spurek**  received the master's degree in mathematics and the PhD degree in computer science from the Jagiellonian University, Krakow, Poland, in 2009 and 2014, respectively.  He is currently an assistant professor with the Institute of Computer Science, Jagiellonian University. He was the co-author of a variable number of research papers published in significant journals and presented on the top ML conferences including NeurIPS, ICML, and IROS. His research interests include deep learning, especially generative models, and meta learning.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +==== 2022-12-08 ====
 +<WRAP column 15%>
 +{{ :aira:roman-sosnowski-foto.jpg?width=200| Roman Sosnowski }} 
 +{{ :aira:piotr-tylus-foto.jpg?width=200| Piotr Tylus}} 
 +{{ :aira:jadwiga-kita-huber-foto.png?width=200| Jadwiga Kita-Huber }} 
 +{{ :aira:remigiusz-sapa-foto.jpg?width=200| Remigiusz Sapa }} 
 +
 +{{ :aira:gjn-foto.jpg?width=200| Grzegorz J. Nalepa }} 
 +
 +{{ :pub:about_us:kkt.jpg?width=200| Krzysztof Kutt }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speakers**: Roman Sosnowski, Piotr Tylus, Jadwiga Kita-Huber, Remigiusz Sapa, Grzegorz Nalepa, Krzysztof Kutt (Jagiellonian University)
 +
 +**Title**: Digitalization of library handwriting resources and opportunities for Artificial Intelligence. The case of Autographa Sammlung in the Jagiellonian Library
 +
 +**Abstract**: The Jagiellonian Library preserves a real treasure: the Collection of the former Prussian State Library. It includes the collection of Autographs, i.e., letters and documents written by the hand of famous people: writers, scientists, politicians, and even rulers. This collection is currently being prepared for digitisation and further research. However, the details of the descriptions/metadata generated during the digitisation process for manuscripts with existing tools are insufficient for the needs of researchers: philologists, librarians, historians. Therefore, we see a need for a new structure that works closely with existing processes and allows for the creation of rich metadata.
 +During the seminar, we will provide an interesting history of the collections, their characteristics, and the main challenges faced by researchers working with manuscripts. Then, we will discuss the current infrastructure at the Jagiellonian Library and summarise the assumptions of the ongoing research project aimed at improving the research infrastructure using AI tools to maximize usefulness and provide the best mode of access to the collections. The seminar is also an invitation to AI researchers and research groups to collaborate on solving specific AI-related problems that arise in the project.
 +
 +**Biograms**:
 +**Roman Sosnowski** is a Professor at the Institute of Romance Philology, Jagiellonian University in Krakow. He received the Ph.D. and Habilitation degrees in Linguistics from this university, the professorship from the president of Poland in 2019. His research interests include History of Italian Language and Culture, Medieval and Early Modern Manuscripts, Digital Humanities (especially digital TEI editions). More information could be found at: https://jagiellonian.academia.edu/RomanSosnowski
 +
 +**Piotr Tylus** is a Professor at the Institute of Romance Philology, Jagiellonian University in Krakow. He received the Ph.D. and Habilitation degrees in Literature from this university, the professorship from the president of Poland in 2018. His research interests include Medieval French Literature (especially hagiographic literature), Republic of Letters from the 17th to 19th century, networks of scientific exchange in the Early Modern and in 19th century. More information could be found at: https://jagiellonian.academia.edu/PiotrTylus
 +
 +**Jadwiga Kita-Huber** is an associate professor at the Department of Modern German Literature, Institute of German Philology, Jagiellonian University in Krakow. She received the Ph.D. and Habilitation degrees in literary studies from this university. She is a member of, among others, Polish Academy of Arts and Sciences, Internationale Vereinigung für Germanistik, German Studies Association (GSA). Her current research focuses on letter networks since 1800, cultural techniques of the archive, edition philology and Digital Humanities, and translation.
 +
 +**Remigiusz Sapa** is an associate professor in the Institute of Information Studies of the Jagiellonian University in Kraków (Poland) and the director of the Jagiellonian Library. He holds a PhD in book science and the habilitation in book and information sciences. His research areas cover personal and group information management, information behavior, scholarly communication, and academic librarianship, as well as the theory and methodology of information research. His research has been published by Polish and international journals, including //Library and Information Science Research, Aslib Journal of Information Management, Information Research, Libri: International Journal of Libraries and Information Studies//, and //Scientometrics//. He has also authored two books and edited one (in Polish).
 +
 +**Grzegorz J. Nalepa** ([[https://gjn.ere|GJN.re]]) is a full professor at the Jagiellonian University, formerly at the AGH University of Science and Technology, in Krakow, Poland. He is an engineer with degrees in computer science - artificial intelligence, and philosophy. He also works as an independent expert and consultant in the area of AI (KnowAI.eu). He co-authored over two hundred research papers in international conferences and journals. He has been involved in tens of projects, including R+D projects with number of companies. He authored a book “Modeling with Rules using Semantic Knowledge Engineering” (Springer 2018). In 2012 he received the scientific award of POLITYKA weekly for the most promising scientific achievements in technical sciences in Poland. In 2018 he received a prize for the outstanding monograph in computer science from the Committee of Computer Science of the Polish Academy of Sciences. In 2020 he founded to Jagiellonian Human-Centered AI Laboratory (JAHCAI). His recent interests include applications of AI in Industry 4.0 and business, explainable AI, affective computing, context awareness, as well as intersection of AI with law.
 +
 +**Krzysztof Kutt**, PhD, is an assistant professor at the Jagiellonian University. He received BSc and MSc degrees in Computer Science at AGH-UST. In 2018 he defended his PhD thesis on methods and tools for collaborative knowledge engineering at AGH-UST. He also received MA degree in Psychology from Jagiellonian University. Currently, as a computer scientist and a psychologist, he is trying to combine these two disciplines together to create something new and better. His research activities focus on the knowledge engineering (knowledge graphs, data semantization), affective computing (collecting and processing sensory and contextual data related to emotions) and ways of user interaction with information systems (including BCI and Neurofeedback systems).
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +==== 2022-12-01 ====
 +<WRAP column 15%>
 +{{ :aira:marcin-tutajewski-foto.png?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**: Marcin Tutajewski – PhD candidate @ Jagiellonian University
 +
 +**Title**: Detection of multiple sclerosis from EEG signals using machine learning methods
 +
 +
 +**Abstract**: Multiple Sclerosis (MS) is a lifelong central nervous system disease. It is estimated that over 2.8 million people suffer from the MS. Although Multiple Sclerosis can lead to a range of symptoms including vision, sensation, and movement disabilities, early detection and treatment can improve patient’s quality of life and slow the progression of the symptoms. Unfortunately, there is no standardized testing for detecting early stage Multiple Sclerosis. Medical professionals use a variety of methods such as MRI scans or blood tests. These are not often reliable for early stage patients and can lead to the lack of proper treatment. In our work we review recent advancements, but also propose a fully automated and cost-effective method of MS detection based on the EEG signals
 +
 +
 +**Biogram**: **Marcin Tutajewski** is a PhD candidate at the Jagiellonian University. He is a 2nd year student of the Technical Computer Science. Marcin received MSc degree in Data Science from Lancaster University. His scientific interests include forecasting, medical data processing, and interpretability of machine learning models.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2022-11-24 ====
 +<WRAP column 15%>
 +{{ :aira:bartlmiej-malkus-foto.jpeg?width=200| }}
 +</WRAP>
 +
 +<WRAP column 75%>
 +
 +**Speaker**:  Bartłomiej Małkus -- PhD candidate @ Jagiellonian University
 +
 +**Title**:
 +Physics guided neural networks with application to financial modeling
 +
 +**Abstract**:
 +The success of current wave of machine learning methods that we observe in recent years can be partially attributed to deep neural networks. They represent data driven approach to modeling, so they can learn both known and unknown physics directly from data without prior knowledge of any physical laws, achieving good performance while maintaining computational efficiency. Despite advantages, there remain some challenges: they are typically data inefficient, sensitive to hyperparameters and may not generalize well. Physics-based modelling performs better in these aspects, but its main limitation is that it is limited to known and understood physics of described phenomena and it tend to be computationally inefficient. There are multiple ways to merge these two approaches and physics guided neural networks (PGNN) is one of them - it attempts to embed physics inside neural networks to benefit from advantages of both. In financial modeling, physics that are used to model dynamics of markets do or could benefit from such a hybrid approach. In this presentation I will talk about PGNN and their applications to modeling physics and phenomena utilized or originating in financial modeling.
 +
 +**Biogram**:
 +**Bartłomiej Małkus** is a PhD candidate at the Jagiellonian University in Technical Computer Science since 2021. He received BSc and MSc degrees in Computer Science on AGH University of Science and Technology and is currently pursuing MSc in Financial Markets on Cracow University of Economics. His field of interest is application of AI techniques to financial modelling. Commercially, he works in IBM on on-premises data warehouse analytics solutions.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +==== 2022-11-17 ====
 +<WRAP column 15%>
 +{{ :aira:jaroslaw-duda-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**:  Jarosław Duda, Assistant Professor @ Jagiellonian University
 +
 +**Title**: Hierarchical correlation reconstruction - between statistics and
 +machine learning
 +
 +
 +**Abstract**: While machine learning techniques are very powerful, they have
 +some weaknesses, like iterative optimization with many local minimums,
 +large freedom of parameters, lack of interpretability and accuracy
 +control. From the other side we have classical statistics based on
 +moments not having these issues, but providing only a rough description.
 +I will introduce and show on various applications (e.g. financial,
 +medical) HCR family of methods combining their advantages: with
 +MSE-optimal moment-like coefficients, but designed such that we can
 +reconstruct (joint) probability distributions from them, also modeled in
 +adaptive/evolving way, or predicted from other information
 +
 +**Biogram**:  Jarosław Duda received the M.Sc. degree in mathematics, the
 +Ph.D. degree in computer science, and the Ph.D. degree in physics. He is
 +currently an Assistant Professor with Jagiellonian University. He is
 +mainly focused on information theory and statistical analysis.
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-11-10 ====
 +<WRAP column 15%>
 +{{ :aira:pawel-matyszok-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**:  Paweł Matyszok, PhD Candidate @ Silesian University of Technology
 +
 +**Title**: Action Rules induction by Sequential Covering
 +
 +
 +**Abstract**: Decision rules have been widely used as a Knowledge Discovery tool during the past 30 years. This method excels especially when the clarity and comprehensibility of the model is required. Based on the notion and algorithms used for decision rules induction, a new category of rules called Action Rules has been created. An action rule is a special type of rule representing a dependency showing a possible way to move examples from the so-called source decision class to another one called a target decision class. Action rules were first described by Raś in year 2000, and since then many algorithms that discover action rules have been published. During the seminar I will describe the Action Rules and results of my thesis titled "Action rules Induction by Sequential Covering". The thesis introduces new algorithms for Action Rules discovery based on the sequential covering paradigm, that is widely used in decision rule induction but was not yet employed in action rules discovery.
 +Also a method to discover recommendations - specialized action rules, that are created for a specific example - and a testing workflow will be presented.
 +
 +**Biogram**: Paweł Matyszok has been PhD candidate at the Silesian University of Technology since 2016. He holds B.SC and M.Sc in Computer Science. His scientific interests include machine learning and rule-based systems, particularly - action rules. On a daily basis he works as a software development project manager in the area of Cyber Security.
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-10-27 ====
 +<WRAP column 15%>
 +{{ :aira:jerzy-stefanowski-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**:  prof. dr hab. inż. Jerzy Stefanowski, Poznan University of Technology
 +
 +**Title**: Learning classifiers from concept drifting and imbalanced data streams
 +
 +
 +**Abstract**: Stream classification is a challenging field in which machine learning algorithms are required to process data online, use minimal resources, and react to concept drifts, where the data distribution and target concepts (class) can change over time. In the first part of this talk, we discuss the use of the adaptive ensemble OAUE in such non-stationary streams. The task becomes even more demanding when the online classifier is required to cope with imbalanced data — situations when one of the target classes is represented by much less instances than other classes. Most existing work focuses on designing new algorithms for dealing with the global imbalance ratio in the data stream and does not consider other data complexities/factors. Despite often being present in real-world data, the interactions between concept drifts and local data difficulty factors have not been investigated in concept drifting data streams yet. In this part of the talk we put forward a new categorization of concept drifts for class imbalanced problems. Then, we summarize results of our two recent papers, where through comprehensive experiments with synthetic and real data streams, we examine the their influence on predictions of representative online classifiers and discuss the directions of future research.
 +
 +**Biogram**: Jerzy Stefanowski is a Professor at the Institute of Computing Science, Poznan University of Technology. He received the Ph.D. and Habilitation degrees in computer science from this university. He is also a corresponding member of Polish Academy of Sciences and a vice-president of Polish AI Society. His research interests include machine learning, data mining and intelligent decision support, in particular ensemble classifiers, class imbalance,  rule induction, and explainable Artificial Intelligence. More information could be found at https://www.cs.put.poznan.pl/jstefanowski/
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-10-20 ====
 +<WRAP column 15%>
 +{{ :aira:maciej-mozolewski-foto.png?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Maciej Mozolewski, PhD Candidate @ Jagiellonian University
 +
 +**Title**: Human-in-the-loop approaches to XAI
 +
 +
 +**Abstract**: At the seminar, I will deliver a paper “Explain your clusters with words. The role of metadata in interactive clustering”, which I presented at the IJCAI-ECAI 2022 conference in Vienna. I will tell about the distinction between objective data and meta-data. Objective data is difficult to interpret but is closer to the physical aspects of the phenomena under study, e.g., it is sensor data. Metadata is data that describes other data, acquired subjectively, also often in a collaborative effort in the form of text, e.g., product descriptions on an eCommerce site. With metadata, it is possible to express what the ML model has learned in a human-legible language. I want to validate this approach as a way for a more personalised AI system. With this distinction about data in mind, I will bring forward for discussion a narrative-inspired approach for interactive clustering. The narrative approach to cooperation between humans and AI was taken from the concept of Data storytelling, a type of narrative in which ML models provide explanations about cause-and-effect relationships in the data. I applied this approach to the Human-In-The-Loop regime. In the end, I will briefly present what I am currently working on and what I anticipate as possible further research directions.
 +
 +**Biogram**: Maciej Mozolewski has been a PhD candidate at the Jagiellonian University in Technical Computer Science since 2021. At the GEIST group, he works on eXplainable Artificial Intelligence algorithms in the Human-In-The-Loop approach. On a daily basis, he works full-time at Edrone, on a research project for the National Center for Research and Development. He creates a Machine Learning and Deep Learning solution for voice search of products in online stores.
 +He has a very diverse background. He studied Physics and Psychology at Jagiellonian University and Statistical Methods In Business at the Faculty of Economics of the University of Warsaw. For nearly 10 years, he has worked as an Econometrician, Data Scientist, and Software Engineer. Thanks to his work, he gained comprehensive programming and DevOps skills, confirmed, among others, by three AWS certificates.
 +Last, he teaches students the Java language and enjoys it. He is driven by a passion for exploring the world, which pushes him to various regions: philosophy, psychology, cosmology and computer science. He enjoys dogs, music, swimming, dancing, biking and SF.
 +
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-10-13 ====
 +<WRAP column 15%>
 +{{ :aira:iwona-grabska-gradzinska-foto.png?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Iwona Grabska-Gradzińska, PhD Candidate @ Jagiellonian University
 +
 +**Title**: Plot generation of computer narrative game with graph transformations
 +
 +
 +**Abstract**: The formalization of plot structures both in literature and game design is a big challenge for researchers and different formal models were proposed since the beginning of 20 century. The introduction of a formal model of adventure game plot description –  based on graph representation and the graph generation procedure –  and its application in computer-aided adventure game design is a goal of this presentation. 
 +Starting from Vladimir Propp theory, which inspired many researchers of literary structures in the field of information science, some theoretical concepts will be introduced: an n-layer graph, a sheaf graph (a graph structure created for modeling adventure games) and generic matching as a tool that determines the possible scope of modification and generic production as a direct representation of the player's actions. The entire game graph can be considered a forest of sheaf subgraphs embedded into a location layer subgraph through roots-locations. All paths from a given location branch to form a sheaf graph. This leads to the definition of a multisheaf graph. Typical modifications of the world resulting from game mechanics most often operate on one or more sheaves.
 +Based on the theoretical graph model, the specification of the StoryGraph implementation standard was proposed, currently available as StoryGraph 1.2, which includes data validation, testing plot lines (game simulation), modeling the world, visualization of the world, production, and production hierarchy tree.
 +The process of collaborative game design based on the presented model will be also described. 
 +
 +**Biogram**: Iwona Grabska-Gradzińska, MSc, MA (iwona.grabska@uj.edu.pl) is a PhD Candidate at the Jagiellonian University. She received her M.Sc. degrees in Computer Science and M.A. in Polish philology. She works as a research and teaching assistant at the Institute of Applied Computer Science at Jagiellonian University. Her research interests embrace both computer science and humanities – linguistics, game narrative structures analysis, visual perception (especially eye tracking), recognition, and reasoning.
 +
 +
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-06-23 ====
 +<WRAP column 15%>
 +{{ :aira:bartosz-sobol-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Bartosz Soból,  PhD Candidate @ Jagiellonian University
 +
 +**Title**: AI inference acceleration on FPGA
 +
 +
 +**Abstract**:
 +Artificial intelligence and neural networks are constantly applied in all sorts of tasks involving data processing. Emerging models are deployed on different kinds of computing platforms: from edge computing, through the cloud, and ending with HPC.
 +Modern FPGA-based accelerators and SoCs aim to fulfill different needs in all of the above levels such as high throughput, low latency, high energy efficiency, and flexibility.
 +New software stacks are developed to expose high-level interfaces for preparing, optimizing, and deploying existing or custom, implemented in standard machine learning frameworks such as PyTorch or TensorFlow, models on FPGA devices.
 +In this talk, I will present modern solutions for accelerating the inference of neural network models on FPGAs as well as examples of usage done by us at the JU and from others.
 +
 +
 +**Biograms**:
 +**Bartosz Soból** is a first-year Ph.D. student in Technical Computer Science at Jagiellonian University. He holds a BSc in Computer Mathematics and MSc in Computer Science from Jagiellonian University.
 +Currently, he is a member of PANDA (FAIR, GSI) collaboration where he conducts research on particle tracking algorithms and heterogeneous online processing of experimental data. His professional interests include high-performance computing, software optimization for heterogeneous systems, and CPU-GPU-FPGA interoperability.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-06-02 ====
 +<WRAP column 15%>
 +{{ :aira:michal-klincewicz-foto.png?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Dr Michał Klincewicz, Assistant Professor @ Tilburg University and Jagiellonian University
 +
 +**Title**: Moral Improvement with Video Games
 +
 +**Abstract**:
 +In this talk I will report on a series of experiments with video games that involve moral decision-making and that showcase how explainable machine learning and artificial intelligence methods, so ones that involve relatively simple models, can be used to validate hypotheses about cognitive and affective processes involved in those decisions. What binds this empirical work together is a larger agenda that has been the focus of my research for a number of years and which seeks to find ways to improve moral decision-making mechanisms (both cognitive and affective) by non-invasive means. This larger project will frame the presentation of experimental results.
 +
 +**Biograms**:
 +**Michał Klincewicz**, Ph.D.,  is an assistant professor in Tilburg University in the Department of Cognitive Science and Artificial Intelligence and an assistant professor (part-time) in Jagiellonian University in the Department of Cognitive Science, in the Institute of Philosophy. He was a post-doctoral researcher at the Berlin School of Mind and Brain and received a Ph.D. in philosophy in 2013 at City University of New York, Graduate Center, with David Rosenthal as the supervisor. Michał's research focuses on the temporal dimension of cognition, including conscious experience, personal change over time, perception, and dreams. Most recently he is publishing on problematic consequences of emerging technologies, such as autonomous weapon systems and moral enhancement and realizing two related research projects: (1) "Modelling Expert Decisions in Complex Environments" as a part of MindLabs and in cooperation with the Port of Rotterdam and (2) "Moral Improvement with Artificial Intelligence," which is a series of articles on the ways that AI can be used to improve moral decision-making. 
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-05-26 ====
 +<WRAP column 15%>
 +{{ :aira:marcin-hernes-foto.png?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speakers**: dr hab. inż. Marcin Hernes, prof. UEW & dr inż. Krzysztof Lutosławski assistant professor @ UEW & Agata Kozina, Ph.D. candidate @ UEW
 +
 +**Title**: Artificial intelligence for support business processes
 +
 +**Abstract**:
 +Artificial intelligence plays currently a very important role in supporting business processes. It allows for the improvement of these processes and, in turn, may lead to an increase in the effectiveness of decisions making. The presented research is related to following areas: the default of leasing contracts prediction using machine learning, analysing of customers' opinions about products and services using cognitive technology, food demand prediction using the Nonlinear Autoregressive Exogenous Neural Network. The research has been conducted at the Center for Intelligent Management Systems at the Wrocław University of Economics and Business. The results of the research are implemented in the management information systems functioning in business organizations.
 +
 +**Biograms**:
 +
 +**Marcin Hernes** is an associate professor at the head of the Department of Process Management and chair of the Center for Intelligent Management Systems at Wroclaw University of Economics and Business. His research has focused on artificial intelligence, knowledge management, decision support systems, management systems, and cognitive architectures. He has authored over 180 peer-reviewed publications in international journals and conferences. He is a member of IEEE, the Polish Artificial Intelligence Society, the Polish Information Processing Society and the Scientific Association of Business Informatics. He was awarded the Rector of Wroclaw University of Economics and Business Award for scientific achievements several times. Marcin Hernes is also a practitioner in the scope of management systems, coordination and automation of production processes and multi-agent decision support systems, and the author of dozen computer applications in industrial companies and public administration entities
 +
 +
 +**Krzysztof Lutosławski** is an assistant professor at the Department of Process Management at the Faculty of Management at Wroclaw University of Economics and Business. He has authored peer-reviewed publications in international indexed journals and has authored conference reports. He has conducted research on food quality, process optimisation, and machine learning applications. He is a member of the Polish Information Processing Society.
 +
 +
 +**Agata Kozina** is a Ph.D. student in the Department of Process Management at the Faculty of Management at Wroclaw University of Economics and Business. She is the author of publications in prestigious magazines, which actively presents research results at international conferences. Her research concerns artificial intelligence, decision support systems, management systems, deep learning, data augmentation, and transformation in machine learning, cognitive architectures. She is a member of the Polish Information Processing Society.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-05-19 ====
 +<WRAP column 15%>
 +{{ :aira:mateusz-hohol-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Mateusz Hohol, Associate Professor @ Jagiellonian University
 +
 +**Title**: Investigating and facilitating human geometric cognition through VR/AR technologies
 +
 +**Abstract**:
 +Learning the principles of geometry, similarly to numerical knowledge, plays a pivotal role in the acquisition of mathematical competencies that are useful in everyday life. What is more, many surveys (e.g., by OECD) suggest the prominent role of the level of abstract geometric competencies in developing individuals' well-being and societies at large. According to the mainstream cognitive science approach, these competencies are deeply hardwired in spatial navigation and object recognition, based upon, respectively, the core system of layout geometry (hippocampus and entorhinal cortex) and the core system of object geometry (lateral occipital complex). These core systems – being responsible for the processing of different geometric properties – are shared with non-human animals, and appear in the early stages of human ontogeny. However, they cannot fully explain a uniquely human form of Euclidean cognition and, even more so, individual differences in its level. Many empirical findings suggest that spatial language and artifacts use (maps, scale objects, etc.) mediate productive combinations of cognitive representations delivered by the core geometric systems. Again, the mainstream approach - grounded in various methodologies - emphasizes that facilitating these productive combinations in children leads to a deeper understanding of Euclidean geometry principles and the general development of abstract thinking. In this talk, I will focus on the contribution of virtual reality-based research to the understanding foundations of geometric cognition and the efficiency of VR-based cognitive trainings serving as STEM assistances. Considering the issue of ecological validity of experiments/interventions, I will also review (indeed scarce) contributions employing augmented reality-based methodologies. In both cases, I will outline perspectives of further studies and interventions.
 +
 +**Biogram**:
 +Mateusz Hohol is associate professor at the Jagiellonian University, who is affiliated within the Copernicus Center for Interdisciplinary Studies; he holds Habil. in psychology, Ph.D. in philosophy. His research focuses mainly on experimental psychology of mathematics (numerical and geometric cognition), and on conceptual issues in cognitive (neuro)science. Recently, he has been interested in facilitating cognition through cognitive artifact use. He published “Foundations of geometric cognition” (Routledge 2020). More information at www.hohol.pl/en
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-05-12 ====
 +<WRAP column 15%>
 +{{ :aira:michal-zwierzynski-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Michał Zwierzyński, PhD Candidate @ AGH UST
 +
 +**Title**: AI methods in computer modeling and recognition of emotions and humanization of computer systems
 +
 +**Abstract:** Emotions are temporary shakes of mind with somatic reactions in meantime. They are crucial in human communication, and they let people understand each other with their state of mind. Non-verbal information is the main information shared with another person. Emotion recognition is a crucial element of Affective Computing related to the interdisciplinary field of science including devices and sensors, machine learning, signal processing and psychology. With this knowledge it is possible to create task sequences to automatically recognize emotion. 
 +Nowadays with fast growth of intelligent technologies and industry growth, we observe increased demand for technologies that are capable of satisfying clients and finding the right solution. Automatic emotion recognition has its appliance in robotics: in case of projecting intelligent robots that can help humans and communicate with him, in marketing: letting creation personalized advertise in according to emotional state of client, in education: to help improve efficiency of learning process, and knowledge transform, in games to adjust gameplay to player feeling.
 +Current results of paperwork showing that accuracy isn’t satisfying if we assume that models should be universal. Major number of works do not include facts used in emotion recognition problems – personalization. First published works showing increased accuracy of models by using information about psychological features of users like personality to create personalized models. Result is to develop a collection of methods used to create mechanisms and personalization tools of emotional intelligent systems. Every work will be attached to the chosen use-case.
 +
 +
 +**Biogram:**
 +Michał Zwierzyński, MSc (mzwierzy@agh.edu.pl) is a PhD candidate at AGH University of Science and Technology. He received his MSc in Computer Science from Kielce University of Technology in 2020. He works as a Front-end developer. His interest is software development, machine learning, especially artificial neural networks and applications in areas where AI can replace humans.
 +
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +
 +==== 2022-05-05 ====
 +<WRAP column 15%>
 +{{ :aira:magdalena-wiercioch-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Magdalena Wiercioch, PhD Candidate @ UJ
 +
 +**Title**: Machine Learning in Drug Discovery: Applications and Techniques
 +
 +**Abstract:** Machine Learning has been widely applied in drug discovery. The accurate prediction of molecular
 +properties is a critical ingredient toward the societal and technological progress since it could speed
 +up much research progress, such as drug designing and substance discovery. Also, it would cause
 +more initiatives towards a personalized medicine. However, complete exploring "chemical
 +universes" that potentially include infinite sets of compounds seems to be computationally
 +intractable. In recent years, advances in the development of deep learning models have spawned a
 +mass of promising methods to address the molecular property prediction task. During our
 +presentation we will introduce the related background and share the experiences connected with the
 +developed models that learn and predict molecular properties on unseen data.
 +
 +
 +**Biograms:**
 +Magdalena Wiercioch, MSc (magdalena.wiercioch@uj.edu.pl) is a PhD Candidate at the
 +Jagiellonian University. She received her B.Sc. and M.Sc. degrees in Computer Science. She works
 +as a research and teaching assistant at the Institute of Applied Computer Science at the Jagiellonian
 +University. Also she works as a software developer. Her research interests include data
 +representation and supervised learning. In her work she develops and applies machine learning
 +techniques to enhance drug discovery. Another field of her research concerns explainable machine
 +learning, and understanding the process of natural language learning, including embedding spaces
 +and how they relate to language concepts. She participates as a speaker in scientific events and
 +conferences, which are well-known in the IT industry.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
 +
 +
 +==== 2022-04-14 ====
 +<WRAP column 15%>
 +{{ :aira:maciej-szelazek-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speaker**: Maciej Szelążek, PhD Candidate @ AGH UST
 +
 +**Title**: Semantic Data Mining Based Decision Support for Quality
 +Assessment in Steel Industry
 +
 +**Abstract:** Smart Manufacturing approaches are most often based on the use of
 +machine learning models in tasks, where human cognitive abilities do
 +not allow for efficient processing of available data.
 +The talk is focused on quality management practices and our proposal
 +of the decision support application based on sensor data collected
 +during the steel products manufacturing. We have integrated domain
 +knowledge, Six Sigma principles, ISO 9001:2015 recommendations,
 +machine learning model, and XAI algorithms to create a semantic
 +connection between data stream and human specialists. The original
 +contribution of our research is the enhancement of current state of
 +the art decision support methods grounded on statistical control.
 +Instead of considering the relations between features based on
 +distribution variability, an appropriate design of the experiment
 +allowed us to identify defective products and compute the potential
 +causes of the defect in the automated procedure
 +
 +
 +**Biograms:**
 +Maciej Szelążek, MSc (maciej.szelazek@agh.edu.pl) is a PhD student at
 +the AGH UST in Krakow, Poland, Department of Applied Computer Science.
 +He received his MSc degree in Automation and Metrology from AGH UST in
 +2010.
 +He worked as an data analyst in the Office of Statistical Process
 +Control (SPC) Arcelor Mittal Poland. Participate in creation and
 +development of an analytical system based on a central database
 +integrating distributed data sources, reporting system and Statistica
 +data mining software. He conducted big data multidimensional analyses
 +related to searching for bottlenecks, logistics, cost optimization and
 +limiting the variability of industry processes. He was involved in
 +Process-aware Analytics Support based on Conceptual Models for Event
 +Logs - PACMEL project.
 +
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +==== 2022-04-07 ====
 +<WRAP column 15%>
 +{{ :aira:przemyslaw-kazienko-foto.jpg?width=200| }}
 +
 +</WRAP>
 +
 +<WRAP column 75%>
 +**Speakers**: 
 +  * Przemysław Kazienko, Full Professor @ Wroclaw University of Science and Technology
 +  * Jan Kocoń, Assistant Professor @ Wroclaw University of Science and Technology
 +
 +**Title**: Personalized NLP.
 +
 +**Abstract:** 
 +Many natural language processing tasks, such as classifying offensive, toxic, or emotional texts, are inherently subjective in nature. This is a major challenge, especially with regard to the annotation process. Humans tend to perceive textual content in their own individual way. Most current annotation procedures aim to achieve a high level of agreement in order to generate a high quality reference source. Existing machine learning methods commonly rely on agreed output values that are the same for all annotators. However, annotation guidelines for subjective content can limit annotators' decision-making freedom. Motivated by moderate annotation agreement on offensive and emotional content datasets, we hypothesize that a personalized approach should be introduced for such subjective tasks. We propose new deep learning architectures that take into account not only the content but also the characteristics of the individual. We consider different approaches for learning the representation and processing of data about text readers. Experiments were conducted on several datasets: Wikipedia discussion texts labeled with attack, aggression, and toxicity, opinions annotated with ten numerical emotional categories and humour data. All of our models based on human biases and their representations significantly improve prediction quality in subjective tasks evaluated from an individual's perspective. Additionally, we have developed requirements for annotation, personalization, content processing and validation procedures to make our solutions human-centric.
 +
 +**Biograms:**
 +
 +**Przemysław Kazienko**, Ph.D. is a full professor and leader of ENGINE - the European Centre for Data Science at Wroclaw University of Science and Technology, Poland. He received his M.Sc. and Ph.D. degrees in computer science with honours, from Wroclaw University of Technology, Poland, in 1991 and 2000, respectively, his habilitation degree from Silesian University of Technology, Poland, in 2009, and professorship from the President of Poland in 2016. He has authored over 300 scholarly and research articles, including 50 in journals with impact factor within a variety of topics related to personalization  and subjective tasks in NLP, affective computing and emotion recognition, social network analysis, complex networks, spread of influence, machine learning, incl. relational machine learning - collective classification and multilabel classification as well as sentiment analysis, DSS in medicine, finances and telecommunication, knowledge management, collaborative systems, data mining, recommender systems, information retrieval, and data security. He also initialized and led over 50 projects, including large European ones, chiefly in cooperation with companies with total local budget over €10M. He gave 20 keynote/invited speeches for international audience and served as a co-chair of over 20 and a member of over 60 programme committees of international scientific conferences and workshops as well as a guest editor of eight special issues in prestige journals. He is an IEEE Senior Member, a member of the Editorial Board of several journals including Social Network Analysis and Mining, International Journal of Knowledge Society Research, International Journal of Human Capital and Social Informatics. He is also on the board of Network Science Society.
 +
 +**Jan Kocoń**, Ph.D. is involved in the development of language technologies in projects carried out at the Wrocław University of Technology since 2011. His interests focus on NLP in the following areas: information extraction, sentiment analysis, classification of documents and applying deep language models. He is a co-author of methods for recognising proper names (PolDeepNER), and author of solutions for recognising temporal expressions and events in Polish texts. These tools are currently used by scientists in the field of humanities and social sciences in Poland and worldwide. he also managed the ML team on the Sentimenti project, aimed at analyzing emotions and sentiment in the text. In this project more than 20 thousand people were examined and over 18 million annotations about emotions were collected. He was responsible for creating a machine learning mechanism based on deep neural networks such as BiLSTM, BERT and LASER for automatic recognition of emotions in text based on collected data. He documented his experience in NLP with more than 35 scientific publications. Currently he deals with sentiment analysis tasks, cross-lingual transfer of knowledge and deep language models in personalized NLP methods. He is also a main co-ordinator of the task related to the recognition of emotions within the CLARIN-PL-Biz project worth over 130 million PLN.
 +</WRAP>
 +<WRAP clear></WRAP>
 +
 +
 +
 +
  
  
aira/start.1648456214.txt.gz · Last modified: 2022/03/28 08:30 by sbk
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