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claude-skills-reference/engineering-team/CLAUDE.md
Claude 6fa92054bd release(v2.2.0): 223 skills, security suite, self-eval, full docs update
- Add 8 new skills: 6 security (adversarial-reviewer, ai-security, cloud-security, incident-response, red-team, threat-detection), self-eval, snowflake-development
- Update all counts: 223 skills, 298 tools, 416 references, 23 agents, 22 commands
- Update CHANGELOG.md with v2.2.0 entry
- Update all plugin.json versions to 2.2.0
- Update CLAUDE.md, README.md, docs/index.md, docs/getting-started.md, mkdocs.yml
- Verify MkDocs build (301 pages), Codex/Gemini sync, all new scripts pass --help

https://claude.ai/code/session_011CHSDjqWBPRcEJ3oJrAUHS
2026-03-31 05:55:51 +00:00

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# Engineering Team Skills - Claude Code Guidance
This guide covers the 36 production-ready engineering skills and their Python automation tools.
## Engineering Skills Overview
**Core Engineering (16 skills):**
- senior-architect, senior-frontend, senior-backend, senior-fullstack
- senior-qa, senior-devops, senior-secops
- code-reviewer, senior-security
- aws-solution-architect, ms365-tenant-manager, google-workspace-cli, tdd-guide, tech-stack-evaluator, epic-design
- **a11y-audit** — WCAG 2.2 accessibility audit and fix (a11y_scanner.py, contrast_checker.py)
- **azure-cloud-architect** — Azure infrastructure design, ARM/Bicep templates, landing zones
- **gcp-cloud-architect** — GCP infrastructure design, Terraform modules, cloud-native patterns
- **security-pen-testing** — Penetration testing methodology, vulnerability assessment, exploit analysis
- **snowflake-development** — Snowflake data warehouse development, SQL optimization, data pipeline patterns
**Security (5 skills):**
- **adversarial-reviewer** — Adversarial code review with 3 hostile personas (Saboteur, New Hire, Security Auditor)
- **threat-detection** — Hypothesis-driven threat hunting, IOC sweep generation, z-score anomaly detection
- **incident-response** — SEV1-SEV4 triage, 14-type incident taxonomy, NIST SP 800-61 forensics
- **cloud-security** — IAM privilege escalation paths, S3 public access checks, security group detection
- **red-team** — MITRE ATT&CK kill-chain planning, effort scoring, choke point identification
- **ai-security** — ATLAS-mapped prompt injection detection, model inversion & data poisoning risk scoring
**AI/ML/Data (5 skills):**
- senior-data-scientist, senior-data-engineer, senior-ml-engineer
- senior-prompt-engineer, senior-computer-vision
**Total Tools:** 39+ Python automation tools
## Core Engineering Tools
### 1. Project Scaffolder (`senior-fullstack/scripts/project_scaffolder.py`)
**Purpose:** Production-ready project scaffolding for modern stacks
**Supported Stacks:**
- Next.js + GraphQL + PostgreSQL
- React + REST + MongoDB
- Vue + GraphQL + MySQL
- Express + TypeScript + PostgreSQL
**Features:**
- Docker Compose configuration
- CI/CD pipeline (GitHub Actions)
- Testing infrastructure (Jest, Cypress)
- TypeScript + ESLint + Prettier
- Database migrations
**Usage:**
```bash
# Create new project
python senior-fullstack/scripts/project_scaffolder.py my-project --type nextjs-graphql
# Start services
cd my-project && docker-compose up -d
```
### 2. Code Quality Analyzer (`senior-fullstack/scripts/code_quality_analyzer.py`)
**Purpose:** Comprehensive code quality analysis and metrics
**Features:**
- Security vulnerability scanning
- Performance issue detection
- Test coverage assessment
- Documentation quality
- Dependency analysis
- Actionable recommendations
**Usage:**
```bash
# Analyze project
python senior-fullstack/scripts/code_quality_analyzer.py /path/to/project
# JSON output
python senior-fullstack/scripts/code_quality_analyzer.py /path/to/project --json
```
**Output:**
```
Code Quality Report:
- Overall Score: 85/100
- Security: 90/100 (2 medium issues)
- Performance: 80/100 (3 optimization opportunities)
- Test Coverage: 75% (target: 80%)
- Documentation: 88/100
Recommendations:
1. Update lodash to 4.17.21 (CVE-2020-8203)
2. Optimize database queries in UserService
3. Add integration tests for payment flow
```
### 3. Fullstack Scaffolder (`senior-fullstack/scripts/fullstack_scaffolder.py`)
**Purpose:** Rapid fullstack application generation
**Usage:**
```bash
python senior-fullstack/scripts/fullstack_scaffolder.py my-app --stack nextjs-graphql
```
## AI/ML/Data Tools
### Data Science Tools
**Experiment Designer** (`senior-data-scientist/scripts/experiment_designer.py`)
- A/B test design
- Statistical power analysis
- Sample size calculation
**Feature Engineering Pipeline** (`senior-data-scientist/scripts/feature_engineering_pipeline.py`)
- Automated feature generation
- Correlation analysis
- Feature selection
**Statistical Analyzer** (`senior-data-scientist/scripts/statistical_analyzer.py`)
- Hypothesis testing
- Causal inference
- Regression analysis
### Data Engineering Tools
**Pipeline Orchestrator** (`senior-data-engineer/scripts/pipeline_orchestrator.py`)
- Airflow DAG generation
- Spark job templates
- Data quality checks
**Data Quality Validator** (`senior-data-engineer/scripts/data_quality_validator.py`)
- Schema validation
- Null check enforcement
- Anomaly detection
**ETL Generator** (`senior-data-engineer/scripts/etl_generator.py`)
- Extract-Transform-Load workflows
- CDC (Change Data Capture) patterns
- Incremental loading
### ML Engineering Tools
**Model Deployment Pipeline** (`senior-ml-engineer/scripts/model_deployment_pipeline.py`)
- Containerized model serving
- REST API generation
- Load balancing config
**MLOps Setup Tool** (`senior-ml-engineer/scripts/mlops_setup_tool.py`)
- MLflow configuration
- Model versioning
- Drift monitoring
**LLM Integration Builder** (`senior-ml-engineer/scripts/llm_integration_builder.py`)
- OpenAI API integration
- Prompt templates
- Response parsing
### Prompt Engineering Tools
**Prompt Optimizer** (`senior-prompt-engineer/scripts/prompt_optimizer.py`)
- Prompt A/B testing
- Token optimization
- Few-shot example generation
**RAG System Builder** (`senior-prompt-engineer/scripts/rag_system_builder.py`)
- Vector database setup
- Embedding generation
- Retrieval strategies
**Agent Orchestrator** (`senior-prompt-engineer/scripts/agent_orchestrator.py`)
- Multi-agent workflows
- Tool calling patterns
- State management
### Computer Vision Tools
**Vision Model Trainer** (`senior-computer-vision/scripts/vision_model_trainer.py`)
- Object detection (YOLO, Faster R-CNN)
- Semantic segmentation
- Transfer learning
**Inference Optimizer** (`senior-computer-vision/scripts/inference_optimizer.py`)
- Model quantization
- TensorRT optimization
- ONNX export
**Video Processor** (`senior-computer-vision/scripts/video_processor.py`)
- Frame extraction
- Object tracking
- Scene detection
## Tech Stack Patterns
### Frontend (React/Next.js)
- TypeScript strict mode
- Component-driven architecture
- Atomic design patterns
- State management (Zustand/Jotai)
- Testing (Jest + React Testing Library)
### Backend (Node.js/Express)
- Clean architecture
- Dependency injection
- Repository pattern
- Domain-driven design
- Testing (Jest + Supertest)
### Fullstack Integration
- GraphQL for API layer
- REST for external services
- WebSocket for real-time
- Redis for caching
- PostgreSQL for persistence
## Development Workflows
### Workflow 1: New Project Setup
```bash
# 1. Scaffold project
python senior-fullstack/scripts/project_scaffolder.py my-app --type nextjs-graphql
# 2. Start services
cd my-app && docker-compose up -d
# 3. Run migrations
npm run migrate
# 4. Start development
npm run dev
```
### Workflow 2: Code Quality Check
```bash
# 1. Analyze codebase
python senior-fullstack/scripts/code_quality_analyzer.py ./
# 2. Fix security issues
npm audit fix
# 3. Run tests
npm test
# 4. Build production
npm run build
```
### Workflow 3: ML Model Deployment
```bash
# 1. Setup MLOps infrastructure
python senior-ml-engineer/scripts/mlops_setup_tool.py
# 2. Deploy model
python senior-ml-engineer/scripts/model_deployment_pipeline.py model.pkl
# 3. Monitor performance
# Check MLflow dashboard
```
## Quality Standards
**All engineering tools must:**
- Support modern tech stacks (Next.js, React, Vue, Express)
- Generate production-ready code
- Include testing infrastructure
- Provide Docker configurations
- Support CI/CD integration
## Integration Patterns
### GitHub Actions CI/CD
All scaffolders generate GitHub Actions workflows:
```yaml
.github/workflows/
├── test.yml # Run tests on PR
├── build.yml # Build and lint
└── deploy.yml # Deploy to production
```
### Docker Compose
Multi-service development environment:
```yaml
services:
- app (Next.js)
- api (GraphQL)
- db (PostgreSQL)
- redis (Cache)
```
## Additional Resources
- **Quick Start:** `START_HERE.md`
- **Team Structure:** `TEAM_STRUCTURE_GUIDE.md`
- **Engineering Roadmap:** `engineering_skills_roadmap.md` (if exists)
- **Main Documentation:** `../CLAUDE.md`
---
**Last Updated:** March 31, 2026
**Skills Deployed:** 36 engineering skills production-ready
**Total Tools:** 39+ Python automation tools across core + AI/ML/Data + epic-design + a11y
---
## epic-design
Build cinematic 2.5D interactive websites with scroll storytelling, parallax depth, and premium animations. Includes asset inspection pipeline, 45+ techniques across 8 categories, and accessibility built-in.
**Key features:**
- 6-layer depth system with automatic parallax
- 13 text animation techniques, 9 scroll patterns
- Asset inspection with background judgment rules
- Python tool for automated image analysis
- WCAG 2.1 AA compliant (reduced-motion)
**Use for:** Product launches, portfolio sites, SaaS marketing pages, event sites, Apple-style animations
**Live demo:** [epic-design-showcase.vercel.app](https://epic-design-showcase.vercel.app/)