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autoresearch-plugin

autoresearch-plugin에는 Dev-Jahn에서 수집한 skills 2개가 있으며, 저장소 수준 직업 범위와 사이트 내 skill 상세 페이지를 제공합니다.

수집된 skills
2
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0
업데이트
2026-04-24
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0
직업 범위
직업 카테고리 1개 · 100% 분류됨
저장소 탐색

이 저장소의 skills

autoresearch-run
데이터 과학자

This skill should be used when the user asks to "start the autoresearch loop", "kick off overnight iteration", "begin autonomous experiment runs", "run /autoresearch:run", "run the autoresearch expr <slug>", "continue the autoresearch loop", "resume autoresearch", "chain through follow-up experiments", or otherwise hand off an ML experiment to the autonomous runner. Drives the self-propelling train.py iteration loop on a configured `.autoresearch/{expr}/` experiment — one-line edit, `ar run`, read `result.json`, decide next edit, repeat — for hours or days until a termination condition fires. Context-minimized so thousands of iterations fit in a single session. Invoke immediately without asking clarifying questions beyond the structured interview; the skill itself is self-driving and must never stop mid-loop to ask the user "continue?" — Ctrl+C is the only authorized interrupt.

2026-04-24
autoresearch-setup
데이터 과학자

Scaffolds a new autonomous-research experiment directory (`.autoresearch/{YYMMDD}-{slug}/`) inside a deep-learning project so Claude can run a long train.py-mutation loop without blowing context. This skill should be used when the user asks to "start an autoresearch experiment", "set up autonomous research loop on this project", "create a new .autoresearch run", "scaffold autoresearch", "initialize autoresearch for this repo", "kick off an autonomous training loop", "set up Karpathy-style autoresearch here", or otherwise indicates they want Claude to begin autonomous iteration on their ML research code. The skill performs a venv preflight, analyzes the project's editable-install Python packages, surfaces primary-metric candidates from whichever tracker the host uses (wandb / tensorboard / plain stdout logs), introspects the host's training entrypoint (argparse-CLI script vs importable main() function vs hydra app), infers the distributed framework (accelerate / torchrun / FSDP / DDP / pytorch-lightning / none

2026-04-24