| name | scientific-llm-benchmarks |
| description | A comprehensive reference of benchmarks for evaluating large language models on scientific reasoning and discovery. |
| compatibility | > |
| allowed-tools | Bash Read Write Edit Glob Grep WebFetch |
| metadata | {"tags":"scientific-llm-benchmarks, llm-benchmarks, science-llms, evaluation, awesome-list, reasoning, discovery, stem","version":"1.0.0","source":"https://github.com/subinium/Awesome-Scientific-LLM-Benchmarks","license":"MIT"} |
Scientific LLM Benchmarks
This skill provides references to benchmarks used for evaluating large language models on scientific reasoning and discovery. The data comes from the Awesome-Scientific-LLM-Benchmarks repository.
Contents
The complete benchmark list is stored locally within this skill:
- References List:
references/benchmarks.md
- Data (YAML format):
data/benchmarks.yaml
Benchmark Domains Covered
- General / Multi-domain Science: Cross-disciplinary STEM reasoning benchmarks.
- Mathematics: Arithmetic, competition, olympiad, and frontier / formal-proof mathematics.
- Physics and Astronomy: Physics olympiad, graduate physics, computational physics, and astronomy.
- Chemistry: Molecular property, reaction, retrosynthesis, safety, and chemical knowledge.
- Materials Science: Crystals, materials property prediction, and materials-science knowledge.
- Biology and Life Sciences: Genomics, proteins, bioinformatics agents, protocols, and research biology.
- Agentic Science and AI Research: LLM agents that write research code, run data analyses, attempt autonomous discovery, and conduct ML/AI research.
Helper Scripts
Also included are python scripts inside scripts/:
generate_readme.py: Regenerates the markdown tables and list from data/benchmarks.yaml.
fetch_examples.py: Fetches real sample rows from HuggingFace dataset URLs specified in the dataset metadata.