Dados e análise
Preparar ambiente e ativos para reproduzir modelos
Planeja um ambiente conda conservador e organiza premissas de datasets, checkpoints e caches antes da execução do repositório.
Ver código no GitHub Instala diretamente do repositório-fonte.
O que esta skill faz
Use esta skill após a análise do repositório definir um alvo confiável de reprodução. Ela prepara ambiente e caminhos de ativos com base no README, mantendo explícitas as premissas necessárias para a primeira execução.
Quando usar
- Planejar um ambiente conda para o projeto
- Definir caminhos esperados de datasets
- Organizar checkpoints necessários
- Indicar locais de cache
- Documentar premissas de configuração
Como usar
- Revise o README e confirme o alvo de reprodução
- Informe o caminho do repositório e o objetivo selecionado
- Identifique dependências, datasets, checkpoints e caches
- Prepare o ambiente e os caminhos de forma conservadora
- Registre as premissas e pendências antes da execução
O que revisar antes de instalar
- Não seleciona o alvo de reprodução
- Não faz a análise inicial do repositório
- Não executa nem relata a rodada final
- Não atende dúvidas genéricas de gerenciamento de pacotes
SKILL.md
--- name: env-and-assets-bootstrap description: Rigor Setup skill for README-first deep learning repo reproduction. Use when the task is specifically to prepare a conservative conda-first environment, checkpoint and dataset path assumptions, cache location hints, and setup notes before any run on a README-documented repository. Do not use for repo scanning, full orchestration, paper interpretation, final run reporting, or generic environment setup that is not tied to a specific reproduction target. --- # env-and-assets-bootstrap Use this as the Rigor Setup skill. The installed slug remains `env-and-assets-bootstrap` for compatibility. Use the shared operating principles in `../../references/agent-operating-principles.md`; this skill should keep setup planning conservative while leaving environment-specific judgment to the model. ## When to apply - After repo intake identifies a credible reproduction target. - When environment creation or asset path preparation is needed before running commands. - When the repo depends on checkpoints, datasets, or cache directories. - When the user explicitly wants setup help before any run attempt. ## When not to apply - When the repository already ships a ready-to-run environment that does not need translation. - When the task is only to scan and plan. - When the task is only to report results from commands that already ran. - When the request is a generic conda or package-management question outside repo reproduction. ## Clear boundaries - This skill prepares environment and asset assumptions. - It does not own target selection. - It does not own final reporting. - It does not perform paper lookup except by forwarding gaps to the optional paper resolver. ## Input expectations - target repo path - selected reproduction goal - relevant README setup steps - any known OS or package constraints ## Output expectations - conservative environment setup notes - candidate conda commands - asset path plan - checkpoint and dataset source hints - unresolved dependency or asset risks ## Notes Use `references/env-policy.md`, `references/assets-policy.md`, `scripts/bootstrap_env.py`, `scripts/plan_setup.py`, and `scripts/prepare_assets.py`. Use `scripts/bootstrap_env.sh` only as a POSIX wrapper around the Python bootstrapper when a shell entrypoint is more convenient.