ml-pipeline-workflow▌
sickn33/antigravity-awesome-skills · updated Apr 8, 2026
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Complete end-to-end MLOps pipeline orchestration from data preparation through model deployment.
ML Pipeline Workflow
Complete end-to-end MLOps pipeline orchestration from data preparation through model deployment.
Do not use this skill when
- The task is unrelated to ml pipeline workflow
- You need a different domain or tool outside this scope
Instructions
- Clarify goals, constraints, and required inputs.
- Apply relevant best practices and validate outcomes.
- Provide actionable steps and verification.
- If detailed examples are required, open
resources/implementation-playbook.md.
Overview
This skill provides comprehensive guidance for building production ML pipelines that handle the full lifecycle: data ingestion → preparation → training → validation → deployment → monitoring.
Use this skill when
- 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
-
Pipeline Architecture
- End-to-end workflow design
- DAG orchestration patterns (Airflow, Dagster, Kubeflow)
- Component dependencies and data flow
- Error handling and retry strategies
-
Data Preparation
- Data validation and quality checks
- Feature engineering pipelines
- Data versioning and lineage
- Train/validation/test splitting strategies
-
Model Training
- Training job orchestration
- Hyperparameter management
- Experiment tracking integration
- Distributed training patterns
-
Model Validation
- Validation frameworks and metrics
- A/B testing infrastructure
- Performance regression detection
- Model comparison workflows
-
Deployment Automation
- Model serving patterns
- Canary deployments
- Blue-green deployment strategies
- Rollback mechanisms
Reference Documentation
See the references/ directory for detailed guides:
- data-preparation.md - Data cleaning, validation, and feature engineering
- model-training.md - Training workflows and best practices
- model-validation.md - Validation strategies and metrics
- model-deployment.md - Deployment patterns and serving architectures
Assets and Templates
The assets/ directory contains:
- pipeline-dag.yaml.template - DAG template for workflow orchestration
- training-config.yaml - Training configuration template
- validation-checklist.md - Pre-deployment validation checklist
Usage Patterns
Basic Pipeline Setup
# 1. Define pipeline stages
stages = [
"data_ingestion",
"data_validation",
"feature_engineering",
"model_training",
"model_validation",
"model_deployment"
]
# 2. Configure dependencies
# See assets/pipeline-dag.yaml.template for full example
Production Workflow
-
Data Preparation Phase
- Ingest raw data from sources
- Run data quality checks
- Apply feature transformations
- Version processed datasets
-
Training Phase
- Load versioned training data
- Execute training jobs
- Track experiments and metrics
- Save trained models
-
Validation Phase
- Run validation test suite
- Compare against baseline
- Generate performance reports
- Approve for deployment
-
Deployment Phase
- Package model artifacts
- Deploy to serving infrastructure
- Configure monitoring
- Validate production traffic
Best Practices
Pipeline Design
- Modularity: Each stage should be independently testable
- Idempotency: Re-running stages should be safe
- Observability: Log metrics at every stage
- Versioning: Track data, code, and model versions
- Failure Handling: Implement retry logic and alerting
Data Management
- Use data validation libraries (Great Expectations, TFX)
- Version datasets with DVC or similar tools
- Document feature engineering transformations
- Maintain data lineage tracking
Model Operations
- Separate training and serving infrastructure
- Use model registries (MLflow, Weights & Biases)
- Implement gradual rollouts for new models
- Monitor model performance drift
- Maintain rollback capabilities
Deployment Strategies
- Start with shadow deployments
- Use canary releases for validation
- Implement A/B testing infrastructure
- Set up automated rollback triggers
- Monitor latency and throughput
Integration Points
Orchestration Tools
- Apache Airflow: DAG-based workflow orchestration
- Dagster: Asset-based pipeline orchestration
- Kubeflow Pipelines: Kubernetes-native ML workflows
- Prefect: Modern dataflow automation
Experiment Tracking
- MLflow for experiment tracking and model registry
- Weights & Biases for visualization and collaboration
- TensorBoard for training metrics
Deployment Platforms
- AWS SageMaker for managed ML infrastructure
- Google Vertex AI for GCP deployments
- Azure ML for Azure cloud
- Kubernetes + KServe for cloud-agnostic serving
Progressive Disclosure
Start with the basics and gradually add complexity:
- Level 1: Simple linear pipeline (data → train → deploy)
- Level 2: Add validation and monitoring stages
- Level 3: Implement hyperparameter tuning
- Level 4: Add A/B testing and gradual rollouts
- Level 5: Multi-model pipelines with ensemble strategies
Common Patterns
Batch Training Pipeline
# See assets/pipeline-dag.yaml.template
stages:
- name: data_preparation
dependencies: []
- name: model_training
dependencies: [data_preparation]
- name: model_evaluation
dependencies: [model_training]
- name: model_deployment
dependencies: [model_evaluation]
Real-time Feature Pipeline
# Stream processing for real-time features
# Combined with batch training
# See references/data-preparation.md
Continuous Training
# Automated retraining on schedule
# Triggered by data drift detection
# See references/model-training.md
Troubleshooting
Common Issues
- Pipeline failures: Check dependencies and data availability
- Training instability: Review hyperparameters and data quality
- Deployment issues: Validate model artifacts and serving config
- Performance degradation: Monitor data drift and model metrics
Debugging Steps
- Check pipeline logs for each stage
- Validate input/output data at boundaries
- Test components in isolation
- Review experiment tracking metrics
- Inspect model artifacts and metadata
Next Steps
After setting up your pipeline:
- Explore hyperparameter-tuning skill for optimization
- Learn experiment-tracking-setup for MLflow/W&B
- Review model-deployment-patterns for serving strategies
- Implement monitoring with observability tools
Related Skills
- experiment-tracking-setup: MLflow and Weights & Biases integration
- hyperparameter-tuning: Automated hyperparameter optimization
- model-deployment-patterns: Advanced deployment strategies
How to use ml-pipeline-workflow on Cursor
AI-first code editor with Composer
Prerequisites
Before installing skills in Cursor, ensure your development environment meets these requirements:
- ›Cursor installed and configured on your development machine
- ›Node.js version 16.0+ with npm package manager (verify with
node --version) - ›Active project directory or workspace where you want to add ml-pipeline-workflow
Execute installation command
Execute the skills CLI command in your project's root directory to begin installation:
The skills CLI fetches ml-pipeline-workflow from GitHub repository sickn33/antigravity-awesome-skills and configures it for Cursor.
Select Cursor when prompted
The CLI will show a list of available agents. Use arrow keys to navigate and space to select Cursor:
Verify installation
Confirm successful installation by checking the skill directory location:
Reload or restart Cursor to activate ml-pipeline-workflow. Access the skill through slash commands (e.g., /ml-pipeline-workflow) or your agent's skill management interface.
Security & Verification Notice
We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.
Skills execute code in your development environment. Always verify the publisher's identity, review recent commits, and test in isolated environments before production deployment.
List & Monetize Your Skill
Submit your Claude Code skill and start earning
Use Cases▌
Task Automation & Efficiency
Automate repetitive workflows and reduce manual effort
Example
Generate reports, summarize documents, draft communications
Save 3-5 hours per week on routine tasks
Knowledge Enhancement
Learn new skills, understand complex topics, get expert guidance
Example
Explain concepts, provide examples, suggest learning resources
Accelerate learning and skill development by 2x
Quality Improvement
Enhance output quality through reviews, suggestions, and refinements
Example
Review drafts, suggest improvements, catch errors
Improve work quality by 30-40% with less effort
Implementation Guide▌
Prerequisites
- ›Claude Desktop or compatible AI client with skill support
- ›Clear understanding of task or problem to solve
- ›Willingness to iterate and refine outputs
Time Estimate
15-45 minutes depending on use case complexity
Installation Steps
- 1.Install skill using provided installation command
- 2.Test with simple use case relevant to your work
- 3.Evaluate output quality and relevance
- 4.Iterate on prompts to improve results
- 5.Integrate into regular workflow if valuable
Common Pitfalls
- ⚠Expecting perfect results without iteration
- ⚠Not providing enough context in prompts
- ⚠Using skill for tasks outside its intended scope
- ⚠Accepting outputs without review and validation
Best Practices▌
✓ Do
- +Start with clear, specific prompts
- +Provide relevant context and constraints
- +Review and refine all outputs before using
- +Iterate to improve output quality
- +Document successful prompt patterns
✗ Don't
- −Don't use without understanding skill limitations
- −Don't skip validation of outputs
- −Don't share sensitive information in prompts
- −Don't expect skill to replace human judgment
💡 Pro Tips
- ★Be specific about desired format and style
- ★Ask for multiple options to choose from
- ★Request explanations to understand reasoning
- ★Combine AI efficiency with human expertise
When to Use This▌
✓ Use When
Use when skill capabilities match your task, clear ROI on time saved, and you can validate outputs. Best for repetitive tasks, learning, and quality improvement.
✗ Avoid When
Avoid when task requires deep expertise you can't validate, involves sensitive decisions, or when learning process is more valuable than speed of completion.
Learning Path▌
- 1Familiarize yourself with skill capabilities and limitations
- 2Start with low-risk, non-critical tasks
- 3Progress to more complex and valuable use cases
- 4Build expertise through regular use and experimentation
Discussion
Product Hunt–style comments (not star reviews)- No comments yet — start the thread.
Ratings
4.5★★★★★61 reviews- ★★★★★Advait Haddad· Dec 28, 2024
ml-pipeline-workflow is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.
- ★★★★★Naina Johnson· Dec 20, 2024
Solid pick for teams standardizing on skills: ml-pipeline-workflow is focused, and the summary matches what you get after install.
- ★★★★★Lucas Ndlovu· Dec 12, 2024
I recommend ml-pipeline-workflow for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.
- ★★★★★Meera Khan· Dec 8, 2024
ml-pipeline-workflow fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.
- ★★★★★Pratham Ware· Dec 4, 2024
Solid pick for teams standardizing on skills: ml-pipeline-workflow is focused, and the summary matches what you get after install.
- ★★★★★Naina Mehta· Nov 27, 2024
ml-pipeline-workflow has been reliable in day-to-day use. Documentation quality is above average for community skills.
- ★★★★★Sakshi Patil· Nov 23, 2024
We added ml-pipeline-workflow from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.
- ★★★★★Advait Garcia· Nov 15, 2024
ml-pipeline-workflow reduced setup friction for our internal harness; good balance of opinion and flexibility.
- ★★★★★Kwame Martin· Nov 11, 2024
We added ml-pipeline-workflow from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.
- ★★★★★Anaya Patel· Oct 18, 2024
Solid pick for teams standardizing on skills: ml-pipeline-workflow is focused, and the summary matches what you get after install.
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