Build reproducible, deployable, and monitorable production ML engineering workflows.
Copy the install command and let the AI configure it · recommended for beginners
Please install the "mle-workflow" skill from askskill: 1. Download https://raw.githubusercontent.com/affaan-m/ECC/main/skills/mle-workflow/SKILL.md 2. Save it as ~/.claude/skills/mle-workflow/SKILL.md 3. Reload skills and tell me it's ready
Design a production-grade engineering workflow for a churn prediction ML system, covering data contracts, feature processing, reproducible training, model evaluation, deployment, monitoring, and rollback strategy. Include ownership and key checkpoints for each stage.
A structured ML workflow plan describing stages, responsibilities, quality gates, and release safeguards.
Review our current model release process: data comes from multiple tables, training relies on manual scripts, evaluation only checks AUC, there is no drift monitoring, and rollback plans are missing. Identify risks and provide production-ready improvements with a prioritized roadmap.
A process review report with major risks, gap analysis, and prioritized improvement recommendations.
Create a monitoring and rollback plan for a deployed recommendation model, including input data quality, feature drift, prediction distribution, online performance metrics, alert thresholds, trigger conditions, and both automatic rollback and manual intervention procedures.
An actionable monitoring and rollback framework for reliably operating production models.
Use this skill to turn model work into a production ML system with clear data contracts, repeatable training, measurable quality gates, deployable artifacts, and operational monitoring.
Use only the lanes that fit the system in front of you. This skill is useful for ranking, search, recommendations, classifiers, forecasting, embeddings, LLM workflows, anomaly detection, and batch analytics, but it should not force one architecture onto all of them.
python-patterns and python-testing for Python implementation and pytest coveragepytorch-patterns for deep learning models, data loaders, device handling, and training loopseval-harness and ai-regression-testing for promotion gates and agent-assisted regression checksdatabase-migrations, postgres-patterns, and clickhouse-io for data storage and analytics surfacesdeployment-patterns, docker-patterns, and security-review for serving, secrets, containers, and production hardeningDo not treat MLE as separate from software engineering. Most ECC SWE workflows apply directly to ML systems, often with stricter failure modes:
The recommended minimal --with capability:machine-learning install keeps the core agent surface available alongside this skill. For skill-only or agent-limited harnesses, pair skill:mle-workflow with agent:mle-reviewer where the target supports agents.
| SWE surface | MLE use |
|---|---|
product-capability / architecture-decision-records | Turn model work into explicit product contracts and record irreversible data, model, and rollout choices |
repo-scan / codebase-onboarding / code-tour | Find existing training, feature, serving, eval, and monitoring paths before introducing a parallel ML stack |
plan / feature-dev | Scope model changes as product capabilities with data, eval, serving, and rollback phases |
tdd-workflow / python-testing | Test feature transforms, split logic, metric calculations, artifact loading, and inference schemas before implementation |
code-reviewer / mle-reviewer | Review code quality plus ML-specific leakage, reproducibility, promotion, and monitoring risks |
build-fix / pr-test-analyzer | Diagnose broken CI, flaky evals, missing fixtures, and environment-specific model or dependency failures |
quality-gate / test-coverage | Require automated evidence for transforms, metrics, inference contracts, promotion gates, and rollback behavior |
eval-harness / verification-loop | Turn offline metrics, slice checks, latency budgets, and rollback drills into repeatable gates |
…
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