Difference between revisions of "Science Agents"

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(Autonomous Ideation)
(AI/ML Methods in Science)
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* 2025-02: [https://www.microsoft.com/en-us/research/blog/exploring-the-structural-changes-driving-protein-function-with-bioemu-1/ Exploring the structural changes driving protein function with BioEmu-1]
 
* 2025-02: [https://www.microsoft.com/en-us/research/blog/exploring-the-structural-changes-driving-protein-function-with-bioemu-1/ Exploring the structural changes driving protein function with BioEmu-1]
 
* 2025-02: [https://arxiv.org/pdf/2502.18449 Protein Large Language Models: A Comprehensive Survey]
 
* 2025-02: [https://arxiv.org/pdf/2502.18449 Protein Large Language Models: A Comprehensive Survey]
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===Successes===
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* 2025-02: [https://arxiv.org/abs/2502.11270 Site-Decorated Model for Unconventional Frustrated Magnets: Ultranarrow Phase Crossover and Spin Reversal Transition]
  
 
==AI/ML Methods co-opted for Science==
 
==AI/ML Methods co-opted for Science==

Revision as of 15:59, 5 March 2025

AI Use-cases for Science

Literature

LLM extract data from papers

AI finding links in literature

Explanation

Autonomous Ideation

Adapting LLMs to Science

AI/ML Methods tailored to Science

Regression (Data Fitting)

Tabular Classification/Regression

Symbolic Regression

Literature Discovery

Commercial

AI/ML Methods in Science

Chemistry

Biology

Successes

AI/ML Methods co-opted for Science

Mechanistic Interpretability

Train large model on science data. Then apply mechanistic interpretability (e.g. sparse autoencoders, SAE) to the feature/activation space.

Uncertainty

Science Benchmarks

Science Agents

Reviews

Specific

Science Multi-Agent Setups

AI Science Systems

Inorganic Materials Discovery

Chemistry

Impact of AI in Science

Related Tools

Literature Search

Data Visualization

See Also