← ClaudeAtlas

ml-pipeline-workflowlisted

Build end-to-end MLOps pipelines from data preparation through model training, validation, and production deployment. Use when creating ML pipelines, implementing MLOps practices, or automating model training and deployment workflows.
CodeWithBehnam/cc-docs · ★ 0 · AI & Automation · score 70
Install: claude install-skill CodeWithBehnam/cc-docs
# ML Pipeline Workflow Complete end-to-end MLOps pipeline orchestration from data preparation through model deployment. ## Overview This skill provides comprehensive guidance for building production ML pipelines that handle the full lifecycle: data ingestion → preparation → training → validation → deployment → monitoring. ## When to Use This Skill - Building new ML pipelines from scratch - Designing workflow orchestration for ML systems - Implementing data → model → deployment automation - Setting up reproducible training workflows - Creating DAG-based ML orchestration - Integrating ML components into production systems ## What This Skill Provides ### Core Capabilities 1. **Pipeline Architecture** - End-to-end workflow design - DAG orchestration patterns (Airflow, Dagster, Kubeflow) - Component dependencies and data flow - Error handling and retry strategies 2. **Data Preparation** - Data validation and quality checks - Feature engineering pipelines - Data versioning and lineage - Train/validation/test splitting strategies 3. **Model Training** - Training job orchestration - Hyperparameter management - Experiment tracking integration - Distributed training patterns 4. **Model Validation** - Validation frameworks and metrics - A/B testing infrastructure - Performance regression detection - Model comparison workflows 5. **Deployment Automation** - Model serving patterns - Canary deployments - Blue-green deploy