NanoResearch
github.com/openraiser/nanoresearchEnd-to-end autonomous AI research engine that turns an idea into a complete LaTeX paper by dispatching real computational experiments to local GPUs or SLURM clusters, collecting actual results, generating figures/tables, and writing a data-grounded manuscript rather than LLM hallucinations (OpenRaiser, 1.5K+ stars, MIT License, 2026)
Sourced from
- Awesome AI for Science — github.com/openraiser/nanoresearch
- GitHub — github.com/openraiser/nanoresearch
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