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Tutorial and workshop on Explainable and Robust AI for Industry 4.0 & 5.0 (X-RAI)

The X-RAI tutorial & workshop convenes industrial AI professionals and explainability experts to explore XAI developments and applications in industrial settings. Participants engage with the latest research, best practices, and challenges, fostering collaboration between researchers and engineers. Integrating explainability into Industry 4.0 and 5.0 ensures AI system reliability, trustworthiness, and transparency. While focusing on industrial applications, X-RAI encourages submissions applying various XAI paradigms across domains like healthcare and decision-making.

The 1st edition of X-RAI will be at the ECML-PKDD 2024 conference.

Organizers

  • Sepideh Pashami, Halmstad University, Sweden, sepideh.pashami@hh.se
  • Joao Gama, University of Porto, Porto, Portugal, jgama@fep.up.pt
  • Bruno Veloso, University of Porto, Porto, Portugal, bveloso@gmail.com
  • Rita P. Ribeiro, University of Porto, Porto, Portugal, rpribeiro@fc.up.pt
  • Grzegorz J. Nalepa, Jagiellonian University, Krakow, Poland, gjn@gjn.re
  • Szymon Bobek, Jagiellonian University, Krakow, Poland, szymon.bobek@uj.edu.pl

Important Dates

  • Submission Deadline: 2024-06-15
  • Author Notification: 2024-07-15

Call for papers

TBA

Aims and Scope

The X-RAI tutorial & workshop aims to bring industrial AI professionals together with explainability experts to discuss the latest developments in XAI and their practical applications as well as theoretical works aiming at solving real-life problems in industrial settings. The tutorial & workshop will provide an opportunity for attendees to learn about the latest research, best practices, and challenges in this area. It is an opportunity to bridge researchers and engineers to discuss emerging topics and the newest trends. The integration of explainability in Industry 4.0 and 5.0 is crucial to ensure AI systems' reliability, trustworthiness, transparency and robustness. Although in X-RAI we focus mainly on Industrial applications, we are also encouraging to submit works that apply different paradigms of XAI as a means of solving particular problems in many different domains such as, healthcare, planning, decision making, etc. Each of these domains use different types of data, which require different techniques to display the model explanations properly. In this regard, it is common to find heatmaps on top of images highlighting the most important pixels for the model prediction, but the analogous for other types of data such as tabular data, time series or graphs is not so well studied. Thus, works that describe visual integrations of model explanations for other types of data rather than images and language will also be of interest in the session. We also focus on application of XAI methods in the machine learning/data mining pipeline in order to aid data scientists in building better AI systems. Such applications include, but are not limited to: feature engineering with XAI, feature and model selection with XAI, evaluation and visualization of ML/DM training process with XAI. Finally, we are also interested in the development of tools that integrate in a transparent and easy way the use of XAI methods, within the current popular machine & deep learning libraries.

Topics of interest

Overall, we are interested in receiving papers related to the following topics which include but are not limited to:

  • XAI in the context of Industry 4.0 & 5.0
  • Ethical considerations in industrial deployment of AI
  • AI transparency and accountability in smart factories
  • Explainable systems fusing various sources of industrial information
  • Exploring XAI in performance and efficiency of industrial systems
  • Industrial use cases for XAI
  • Challenges and future directions for XAI in the industry
  • Evaluating the robustness
  • Challenges of building robust and reliable AI
  • Novel methods to improve robustness both for adversarial and out of distribution
  • Robustness requirements in critical domains like health care
  • XAI for predictive maintenance
  • Forecasting of product and process quality
  • Explainable anomaly detection
  • Data and information fusion in the industrial XAI context
  • Automatic process optimisation
  • Industrial process monitoring and modeling
  • Visual analytics and interactive machine learning
  • Decision-making assistance and resource optimisation
  • Planning under uncertainty
  • Analysis of usage patterns

Real-world applications such as:

  • Manufacturing systems
  • Production processes and factories of the future
  • Energy and power systems and networks
  • Transport systems
  • Power generation and distribution systems
  • Intrusion detection and cyber security
  • Internet of Things
  • Big Data challenges in the digital transition
  • Healthcare equipment
  • Smart cities

Program Committee (tentative)

  • Javier, del Ser,Tecnalia, Spain
  • Ricardo, Aler,Universidad Carlos III de Madrid, Spain
  • Felix José Fuentes, Hurtado,Universidad Politécnica de Valencia, Spain
  • Juan, Pavón,Universidad Complutense de Madrid, Spain
  • Francesco, Piccialli,University of Naples Federico II, Italy
  • Salvatore, Cuomo,University of Naples Federico II, Italy
  • Edoardo, Prezioso,University of Naples Federico II, Italy
  • Federico, Gatta,University of Naples Federico II, Italy
  • Fabio, Giampaolo,University of Naples Federico II, Italy
  • Stefano, Izzo,University of Naples Federico II, Italy
  • Alejandro, Martin,Universidad Politécnica de Madrid, Spain
  • Angel, Panizo,Universidad Politécnica de Madrid, Spain
  • Javier, Huertas,Universidad Politécnica de Madrid, Spain
  • Martin, Atzmueller, Universitat Osnabruck, Germany
  • Kacper, Sokół, University of Bristol, UK
  • Sławomir, Nowaczyk, Halmstad University, Sweden
  • Jerzy, Stefanowski, Poznan University of Technology, Poland
  • Marek, Sikora, Silesian University of Technology, EMAG Institute
  • Jose, Palma, University of Murcia, Spain
  • Michal, Choras, UTP University of Science and Technology, Poland
  • Boguslaw ,Cyganek, AGH University of Science and Technology in Krakow, Poland
  • Michał, Araszkiewicz, Jagiellonian University, Poland
  • Timos, Kipouros, University of Cambridge, UK

Submission details

Please use the following link to submit your paper: ECMLPKDDWorkshops2024

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