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antigravity-skills-reference/skills/ai-ml/SKILL.md
sck_0 aa71e76eb9 chore: release 6.5.0 - Community & Experience
- Add date_added to all 950+ skills for complete tracking
- Update version to 6.5.0 in package.json and README
- Regenerate all indexes and catalog
- Sync all generated files

Features from merged PR #150:
- Stars/Upvotes system for community-driven discovery
- Auto-update mechanism via START_APP.bat
- Interactive Prompt Builder
- Date tracking badges
- Smart auto-categorization

All skills validated and indexed.

Made-with: Cursor
2026-02-27 09:19:41 +01:00

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---
name: ai-ml
description: "AI and machine learning workflow covering LLM application development, RAG implementation, agent architecture, ML pipelines, and AI-powered features."
category: workflow-bundle
risk: safe
source: personal
date_added: "2026-02-27"
---
# AI/ML Workflow Bundle
## Overview
Comprehensive AI/ML workflow for building LLM applications, implementing RAG systems, creating AI agents, and developing machine learning pipelines. This bundle orchestrates skills for production AI development.
## When to Use This Workflow
Use this workflow when:
- Building LLM-powered applications
- Implementing RAG (Retrieval-Augmented Generation)
- Creating AI agents
- Developing ML pipelines
- Adding AI features to applications
- Setting up AI observability
## Workflow Phases
### Phase 1: AI Application Design
#### Skills to Invoke
- `ai-product` - AI product development
- `ai-engineer` - AI engineering
- `ai-agents-architect` - Agent architecture
- `llm-app-patterns` - LLM patterns
#### Actions
1. Define AI use cases
2. Choose appropriate models
3. Design system architecture
4. Plan data flows
5. Define success metrics
#### Copy-Paste Prompts
```
Use @ai-product to design AI-powered features
```
```
Use @ai-agents-architect to design multi-agent system
```
### Phase 2: LLM Integration
#### Skills to Invoke
- `llm-application-dev-ai-assistant` - AI assistant development
- `llm-application-dev-langchain-agent` - LangChain agents
- `llm-application-dev-prompt-optimize` - Prompt engineering
- `gemini-api-dev` - Gemini API
#### Actions
1. Select LLM provider
2. Set up API access
3. Implement prompt templates
4. Configure model parameters
5. Add streaming support
6. Implement error handling
#### Copy-Paste Prompts
```
Use @llm-application-dev-ai-assistant to build conversational AI
```
```
Use @llm-application-dev-langchain-agent to create LangChain agents
```
```
Use @llm-application-dev-prompt-optimize to optimize prompts
```
### Phase 3: RAG Implementation
#### Skills to Invoke
- `rag-engineer` - RAG engineering
- `rag-implementation` - RAG implementation
- `embedding-strategies` - Embedding selection
- `vector-database-engineer` - Vector databases
- `similarity-search-patterns` - Similarity search
- `hybrid-search-implementation` - Hybrid search
#### Actions
1. Design data pipeline
2. Choose embedding model
3. Set up vector database
4. Implement chunking strategy
5. Configure retrieval
6. Add reranking
7. Implement caching
#### Copy-Paste Prompts
```
Use @rag-engineer to design RAG pipeline
```
```
Use @vector-database-engineer to set up vector search
```
```
Use @embedding-strategies to select optimal embeddings
```
### Phase 4: AI Agent Development
#### Skills to Invoke
- `autonomous-agents` - Autonomous agent patterns
- `autonomous-agent-patterns` - Agent patterns
- `crewai` - CrewAI framework
- `langgraph` - LangGraph
- `multi-agent-patterns` - Multi-agent systems
- `computer-use-agents` - Computer use agents
#### Actions
1. Design agent architecture
2. Define agent roles
3. Implement tool integration
4. Set up memory systems
5. Configure orchestration
6. Add human-in-the-loop
#### Copy-Paste Prompts
```
Use @crewai to build role-based multi-agent system
```
```
Use @langgraph to create stateful AI workflows
```
```
Use @autonomous-agents to design autonomous agent
```
### Phase 5: ML Pipeline Development
#### Skills to Invoke
- `ml-engineer` - ML engineering
- `mlops-engineer` - MLOps
- `machine-learning-ops-ml-pipeline` - ML pipelines
- `ml-pipeline-workflow` - ML workflows
- `data-engineer` - Data engineering
#### Actions
1. Design ML pipeline
2. Set up data processing
3. Implement model training
4. Configure evaluation
5. Set up model registry
6. Deploy models
#### Copy-Paste Prompts
```
Use @ml-engineer to build machine learning pipeline
```
```
Use @mlops-engineer to set up MLOps infrastructure
```
### Phase 6: AI Observability
#### Skills to Invoke
- `langfuse` - Langfuse observability
- `manifest` - Manifest telemetry
- `evaluation` - AI evaluation
- `llm-evaluation` - LLM evaluation
#### Actions
1. Set up tracing
2. Configure logging
3. Implement evaluation
4. Monitor performance
5. Track costs
6. Set up alerts
#### Copy-Paste Prompts
```
Use @langfuse to set up LLM observability
```
```
Use @evaluation to create evaluation framework
```
### Phase 7: AI Security
#### Skills to Invoke
- `prompt-engineering` - Prompt security
- `security-scanning-security-sast` - Security scanning
#### Actions
1. Implement input validation
2. Add output filtering
3. Configure rate limiting
4. Set up access controls
5. Monitor for abuse
6. Implement audit logging
## AI Development Checklist
### LLM Integration
- [ ] API keys secured
- [ ] Rate limiting configured
- [ ] Error handling implemented
- [ ] Streaming enabled
- [ ] Token usage tracked
### RAG System
- [ ] Data pipeline working
- [ ] Embeddings generated
- [ ] Vector search optimized
- [ ] Retrieval accuracy tested
- [ ] Caching implemented
### AI Agents
- [ ] Agent roles defined
- [ ] Tools integrated
- [ ] Memory working
- [ ] Orchestration tested
- [ ] Error handling robust
### Observability
- [ ] Tracing enabled
- [ ] Metrics collected
- [ ] Evaluation running
- [ ] Alerts configured
- [ ] Dashboards created
## Quality Gates
- [ ] All AI features tested
- [ ] Performance benchmarks met
- [ ] Security measures in place
- [ ] Observability configured
- [ ] Documentation complete
## Related Workflow Bundles
- `development` - Application development
- `database` - Data management
- `cloud-devops` - Infrastructure
- `testing-qa` - AI testing