Workshop - XAI Astro
Explainable AI for Astrophysics
Transparent and physically meaningful AI systems for scientific discovery
Workshop Description
Modern astrophysics increasingly relies on deep learning systems to process large, high-dimensional datasets. However, the inherent black-box nature of many AI models presents a significant barrier to scientific trust. Astrophysicists require more than accurate predictions: they need interpretable insights that are consistent with physical laws and scientific reasoning.
This workshop addresses this bottleneck by exploring Explainable AI (XAI) methods tailored to astrophysical research. Its focus is on the design, evaluation, and implementation of AI architectures engineered for rigorous scientific environments and large-scale astronomical data pipelines.
While the main AIMLSystems conference tracks typically address generalized AI infrastructure or broad algorithmic performance, this workshop focuses on the unique constraints of applying AI to the physical sciences. It aims to bring together machine learning researchers, astrophysicists, and data scientists to discuss how transparent and physically meaningful AI systems can support scientific discovery.
Impact: The novelty of the workshop lies in its interdisciplinary approach. Its expected impact is to provide a roadmap for shifting astrophysics research from using AI as a statistical tool to using it as a validated, interpretable, and transparent engine for theoretical discovery.
Submission Details
- Abstract Length: Maximum 1000 words
- Submission Platform: OpenReview (select the Workshop Track)
- Abstract Deadline: June 8, 2026 (11:59 PM AoE)
- Notification: July 15, 2026
Tentative Schedule
Format & Invited Speakers
Workshop Format
- Three 30-minute invited talks from researchers in AI and astrophysics
- Six 15-minute oral presentations of accepted peer-reviewed papers
- A 45-minute interactive panel discussion
Invited Institutions
The workshop plans to invite prominent researchers from institutions such as:
- Italian National Institute for Astrophysics (INAF)
- Harvard-Smithsonian Center for Astrophysics
- Other international groups working at the intersection of AI, astrophysics, and scientific machine learning
Workshop Organizers
Nicolò Oreste Pinciroli Vago
Politecnico di Milano
Mario Pasquato
INAF (Istituto Nazionale di Astrofisica)