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Repositório GitHub

training-agents

training-agents contém 6 skills coletadas de burtenshaw, com cobertura ocupacional por repositório e páginas de detalhe dentro do site.

skills coletadas
6
Stars
61
atualizado
2026-06-15
Forks
16
Cobertura ocupacional
1 categorias ocupacionais · 100% classificado
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Skills neste repositório

agentic-self-distillation
Desenvolvedores de software

Use when designing or reviewing self-distillation workflows for agentic models, including trace collection, teacher or judge feedback, rejection sampling, critique, conversion to SFT or preference data, iterative TRL training loops, and safeguards against self-reinforcing errors.

2026-06-15
hugging-face-cli-workflows
Desenvolvedores de software

Use when working with Hugging Face CLI or Hub workflows for TRL training, including auth, repositories, uploads, downloads, Jobs, buckets, model persistence, dataset checks, Space links, and remote artifact movement.

2026-06-15
openenv-agentic-rl
Desenvolvedores de software

Use when designing, reviewing, or implementing OpenEnv-style environment interfaces for agentic RL with TRL, including reset/step/state contracts, tasksets, Docker or HTTP/WebSocket serving, MCP compatibility, reward separation, and GRPO environment rollouts.

2026-06-15
trackio-observability
Desenvolvedores de software

Use when instrumenting or inspecting TRL training runs with Trackio, run names, metric schemas, dashboards, logs, grep or ripgrep, SFTP, Hugging Face Job logs, remote artifacts, or experiment result summaries.

2026-06-15
trl-post-training
Desenvolvedores de software

Use when building, reviewing, or editing TRL post-training workflows for agentic applications, including SFT, DPO, GRPO, RLOO, reward modeling, dataset formats, chat templates, assistant/completion-only losses, tool-calling data, reward functions, and challenge progression from SFT to environment-based RL.

2026-06-15
trl-sft
Desenvolvedores de software

Use when designing, implementing, reviewing, or debugging supervised fine-tuning with TRL SFTTrainer or `trl sft`, especially for agentic models trained on chat messages, prompt/completion data, tool-calling examples, assistant-only loss, completion-only loss, LoRA/PEFT adapters, Trackio logging, or agent trace datasets such as `julien-c/synthtraces`.

2026-06-15