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Created comprehensive skill collection covering all aspects of modern software development with production-ready patterns, best practices, and detailed documentation. ## Skills Organized by Domain ### Code Quality & Architecture (2 skills) - advanced-code-refactoring: SOLID principles, design patterns, refactoring patterns - code-review: Automated/manual review, security, performance, maintainability ### API & Integration (2 skills) - api-integration-expert: REST/GraphQL/WebSocket with auth, retry, caching - graphql-schema-design: Schema design, resolvers, optimization, subscriptions ### Database & Data (3 skills) - database-optimization: SQL/NoSQL tuning, indexing, query optimization - data-pipeline: ETL/ELT with Airflow, Spark, dbt - caching-strategies: Redis, Memcached, CDN, invalidation patterns ### Security & Authentication (2 skills) - security-audit: OWASP Top 10, vulnerability scanning, security hardening - auth-implementation: OAuth2, JWT, session management, SSO ### Testing & Quality (2 skills) - test-automation: Unit/integration/E2E tests, TDD/BDD, coverage - performance-profiling: CPU/memory profiling, Core Web Vitals optimization ### DevOps & Infrastructure (3 skills) - docker-kubernetes: Containerization, orchestration, production deployments - ci-cd-pipeline: GitHub Actions, automated testing, deployment strategies - logging-monitoring: Observability with Datadog, Prometheus, Grafana, ELK ### Frontend Development (3 skills) - frontend-accessibility: WCAG 2.1 compliance, ARIA, keyboard navigation - ui-component-library: Design systems with React/Vue, Storybook - mobile-responsive: Responsive design, mobile-first, PWAs ### Backend & Scaling (2 skills) - backend-scaling: Load balancing, sharding, microservices, horizontal scaling - real-time-systems: WebSockets, SSE, WebRTC for real-time features ### ML & AI (1 skill) - ml-model-integration: Model serving, inference optimization, monitoring ### Development Tools (2 skills) - git-workflow-optimizer: Git workflows, branching strategies, conflict resolution - dependency-management: Package updates, security patches, version conflicts ### Code Maintenance (3 skills) - error-handling: Robust error patterns, logging, graceful degradation - documentation-generator: API docs, README, technical specifications - migration-tools: Database/framework migrations with zero downtime ## Key Features Each skill includes: - YAML frontmatter with name, description, allowed tools - Clear purpose and when to use - Comprehensive capabilities overview - Production-ready code examples - Best practices and patterns - Success criteria - Tool-specific configurations ## Highlights - 25 comprehensive skills covering full development lifecycle - Production-ready patterns and examples - Security-first approach throughout - Performance optimization built-in - Comprehensive testing strategies - DevOps automation and infrastructure as code - Modern frontend with accessibility focus - Scalable backend architectures - Data engineering and ML integration - Advanced Git workflows ## File Structure claude_skills/ ├── README.md (comprehensive documentation) ├── advanced-code-refactoring/ │ ├── SKILL.md (main skill definition) │ ├── reference.md (design patterns, SOLID principles) │ └── examples.md (refactoring examples) ├── api-integration-expert/ │ └── SKILL.md (REST/GraphQL/WebSocket integration) ├── [23 more skills...] Total: 25 skills + comprehensive README + supporting documentation ## Usage Personal skills: cp -r claude_skills/* ~/.claude/skills/ Project skills: cp -r claude_skills/* .claude/skills/ Skills automatically activate based on context and description triggers.
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| name | description | allowed-tools |
|---|---|---|
| ml-model-integration | Expert in integrating AI/ML models into applications including model serving, API design, inference optimization, and monitoring. Use when deploying ML models, building AI features, or optimizing model performance in production. | Read, Write, Edit, Grep, Glob, Bash |
ML Model Integration Expert
Purpose
Deploy and integrate machine learning models into production applications.
Capabilities
- Model serving (FastAPI, TensorFlow Serving)
- Inference optimization
- A/B testing models
- Model versioning
- Monitoring and drift detection
- Batch and real-time inference
- Feature stores
FastAPI Model Serving
from fastapi import FastAPI
from pydantic import BaseModel
import joblib
import numpy as np
app = FastAPI()
# Load model at startup
model = joblib.load('model.pkl')
class PredictionRequest(BaseModel):
features: list[float]
class PredictionResponse(BaseModel):
prediction: float
confidence: float
@app.post('/predict', response_model=PredictionResponse)
async def predict(request: PredictionRequest):
features = np.array([request.features])
prediction = model.predict(features)[0]
confidence = model.predict_proba(features).max()
return PredictionResponse(
prediction=float(prediction),
confidence=float(confidence)
)
@app.get('/health')
async def health():
return {'status': 'healthy', 'model_version': '1.0.0'}
Model Monitoring
import mlflow
# Log model performance
with mlflow.start_run():
mlflow.log_metric('accuracy', accuracy)
mlflow.log_metric('precision', precision)
mlflow.log_metric('recall', recall)
mlflow.log_param('model_type', 'random_forest')
mlflow.sklearn.log_model(model, 'model')
# Monitor drift
from evidently import ColumnMapping
from evidently.report import Report
from evidently.metric_preset import DataDriftPreset
report = Report(metrics=[DataDriftPreset()])
report.run(reference_data=train_data, current_data=prod_data)
report.save_html('drift_report.html')
Success Criteria
- ✓ Inference latency < 100ms
- ✓ Model accuracy monitored
- ✓ A/B testing framework
- ✓ Rollback capability
- ✓ Feature drift detected