Faegheh Hasibi
fhasibi.bsky.social
Faegheh Hasibi
@fhasibi.bsky.social
Assistant Professor at Radboud University
Information Retrieval- Natural Language Processing
Reposted by Faegheh Hasibi
The organization of #ECIR2026 has started! We just had our first call with all track chairs. With the calls now finalized, online and distributed across mailing lists, we’re moving on to the rest of the conference preparation!

@ecir2026.eu
📍 Delft, 30 Mar – 2 Apr 2026
👉 ecir2026.eu
September 1, 2025 at 12:21 PM
Reposted by Faegheh Hasibi
Our paper "Large physics models: towards a collaborative approach with large language models and foundation models" is now published online! @philsci.bsky.social
@epsaphilsci.bsky.social @hoposjournal.bsky.social @ishpssb.bsky.social @henkderegt.bsky.social @lglopez.bsky.social
Large physics models: towards a collaborative approach with large language models and foundation models - The European Physical Journal C
This paper explores the development and evaluation of physics-specific large-scale AI models, which we refer to as large physics models (LPMs). These models, based on foundation models such as large language models (LLMs) are tailored to address the unique demands of physics research. LPMs can function independently or as part of an integrated framework. This framework can incorporate specialized tools, including symbolic reasoning modules for mathematical manipulations, frameworks to analyse specific experimental and simulated data, and mechanisms for synthesizing insights from physical theories and scientific literature. We begin by examining whether the physics community should actively develop and refine dedicated models, rather than relying solely on commercial LLMs. We then outline how LPMs can be realized through interdisciplinary collaboration among experts in physics, computer science, and philosophy of science. To integrate these models effectively, we identify three key pillars: Development, Evaluation, and Philosophical Reflection. Development focuses on constructing models capable of processing physics texts, mathematical formulations, and diverse physical data. Evaluation assesses accuracy and reliability through testing and benchmarking. Finally, Philosophical Reflection encompasses the analysis of broader implications of LLMs in physics, including their potential to generate new scientific understanding and what novel collaboration dynamics might arise in research. Inspired by the organizational structure of experimental collaborations in particle physics, we propose a similarly interdisciplinary and collaborative approach to building and refining large physics models. This roadmap provides specific objectives, defines pathways to achieve them, and identifies challenges that must be addressed to realise physics-specific large scale AI models.
link.springer.com
September 25, 2025 at 7:04 PM