GitHub
scholar-loop
#896 of 964 in the AI Agent Index
2 Score
Real usage —
Momentum —
Attention 7
About
read papers → find a gap → run real experiments → reflect → write & self-review
ScholarLoop runs the loop a PhD actually runs: it reads the literature, forms a grounded hypothesis, runs real ML experiments, scores them against a frozen ground-truth metric, learns from its failures, and drafts a peer-reviewed write-up — autonomously, with a deterministic harness that keeps the agents honest and impossible to reward-hack.
The LLM does only the open-ended reasoning. Everything checkable — search-space pruning, dedup, calibration, number-grounding, promotion gates — is deterministic, unit-tested code, and the metric is the only optimization target (no LLM-as-judge in the optimization loop).…
Across sources
461 Stars
- Stars 461
- Forks 36
- Commits 26
- Releases 0