ai-ml — quality + safety report

In the Skillier index (antigravity__ai-ml) · scanned 2026-06-03 · engine: builtin+triage

A
Quality
98/100
Safety

✓ Clean — no heuristic safety flags surfaced.

Heuristic flags from the builtin scanner, which is known to over-flag (it trips on legitimate env-reading integrations, security skills, and library .eval calls). This is NOT an authoritative malicious verdict — re-scan with SkillSpector for the authoritative result. Run the authoritative scan →

Skillproof quality grade A

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Quality notes

No explicit trigger / 'when to use'
low · quality · body
→ Add a 'When to use' section or 'Use this when …' line listing trigger conditions.

About this skill

AI and machine learning workflow covering LLM application development, RAG implementation, agent architecture, ML pipelines, and AI-powered features.

📄 Read the SKILL.md
---
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

## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
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Graded independently by Skillproof — nothing to sell the author. Quality is mechanical + corpus-grounded; safety flags are heuristic (builtin+triage), not a malicious verdict.