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Plugin Scope Improvements: - Remove language-specialists plugin (not task-focused) - Split specialized-domains into 5 focused plugins: * blockchain-web3 - Smart contract development only * quantitative-trading - Financial modeling and trading only * payment-processing - Payment gateway integration only * game-development - Unity and Minecraft only * accessibility-compliance - WCAG auditing only - Split business-operations into 3 focused plugins: * business-analytics - Metrics and reporting only * hr-legal-compliance - HR and legal docs only * customer-sales-automation - Support and sales workflows only - Fix infrastructure-devops scope: * Remove database concerns (db-migrate, database-admin) * Remove observability concerns (observability-engineer) * Move slo-implement to incident-response * Focus purely on container orchestration (K8s, Docker, Terraform) - Fix customer-sales-automation scope: * Remove content-marketer (unrelated to customer/sales workflows) Marketplace Statistics: - Total plugins: 27 (was 22) - Tool coverage: 100% (42/42 tools referenced) - Fat plugins removed: 3 (language-specialists, specialized-domains, business-operations) - All plugins now have clear, focused tasks Model Migration: - Migrate all 42 tools from claude-sonnet-4-0/opus-4-1 to model: sonnet - Migrate all 15 workflows from claude-opus-4-1 to model: sonnet - Use short model syntax consistent with agent files Documentation Updates: - Update README.md with refined plugin structure - Update plugin descriptions to be task-focused - Remove anthropomorphic and marketing language - Improve category organization (now 16 distinct categories) Ready for October 9, 2025 @ 9am PST launch
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1.1 KiB
model
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| sonnet |
Machine Learning Pipeline
Design and implement a complete ML pipeline for: $ARGUMENTS
Create a production-ready pipeline including:
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Data Ingestion:
- Multiple data source connectors
- Schema validation with Pydantic
- Data versioning strategy
- Incremental loading capabilities
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Feature Engineering:
- Feature transformation pipeline
- Feature store integration
- Statistical validation
- Handling missing data and outliers
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Model Training:
- Experiment tracking (MLflow/W&B)
- Hyperparameter optimization
- Cross-validation strategy
- Model versioning
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Model Evaluation:
- Comprehensive metrics
- A/B testing framework
- Bias detection
- Performance monitoring
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Deployment:
- Model serving API
- Batch/stream prediction
- Model registry
- Rollback capabilities
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Monitoring:
- Data drift detection
- Model performance tracking
- Alert system
- Retraining triggers
Include error handling, logging, and make it cloud-agnostic. Use modern tools like DVC, MLflow, or similar. Ensure reproducibility and scalability.