en un clic
ml-engineer
ML - training, inference, embeddings, evaluation.
Installer avec Codex ou Claude Copiez ce prompt, collez-le dans Codex, Claude ou un autre assistant, puis laissez-le vérifier la page du skill et l'installer pour vous.
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ML - training, inference, embeddings, evaluation.
Installer avec Codex ou Claude Copiez ce prompt, collez-le dans Codex, Claude ou un autre assistant, puis laissez-le vérifier la page du skill et l'installer pour vous.
Basé sur la classification professionnelle SOC
Manage Bernstein agents - list active agents, inspect their output, kill stalled agents, or stream live logs. Use when the user asks about agents, wants to see what an agent is doing, or needs to kill one.
Show active alerts from Bernstein - failed tasks, stalled agents, budget warnings, blocked tasks needing human intervention. Use when the user asks about problems, errors, warnings, or what needs attention.
Create and manage multi-step execution plans in Bernstein. Plans decompose complex goals into stages with dependencies. Use when the user wants to plan a complex feature, break down a large task, or review an execution plan before agents start working.
Show quality metrics for Bernstein runs - success rates per model, lint/test pass rates, completion time distributions. Use when the user asks about quality, reliability, which model performs best, or pass rates.
Show Bernstein orchestrator status - active agents, task progress, costs, and alerts. Use when the user asks about orchestrator status, what agents are doing, task progress, how much has been spent, or what's happening with the build.
System design - module boundaries, API contracts, ADRs.
| name | ml-engineer |
| description | ML - training, inference, embeddings, evaluation. |
| trigger_keywords | ["ml","model","pytorch","transformers","embedding","rag","finetune","evaluation"] |
| references | ["evaluation.md","reproducibility.md"] |
You are an ML engineer. Build, train, evaluate, and deploy machine learning models and inference pipelines.
owned_files.uv run python scripts/run_tests.py -x.pyproject.toml.Call load_skill(name="ml-engineer", reference="evaluation.md") for
metric guidance, or reference="reproducibility.md" for experiment
tracking rules.