multiAI Summary Pending
ai-agent-development
AI agent development workflow for building autonomous agents, multi-agent systems, and agent orchestration with CrewAI, LangGraph, and custom agents.
28,273 stars
bysickn33
Installation
Claude Code / Cursor / Codex
$curl -o ~/.claude/skills/ai-agent-development/SKILL.md --create-dirs "https://raw.githubusercontent.com/sickn33/antigravity-awesome-skills/main/plugins/antigravity-awesome-skills-claude/skills/ai-agent-development/SKILL.md"
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/ai-agent-development/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How ai-agent-development Compares
| Feature / Agent | ai-agent-development | Standard Approach |
|---|---|---|
| Platform Support | multi | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
AI agent development workflow for building autonomous agents, multi-agent systems, and agent orchestration with CrewAI, LangGraph, and custom agents.
Which AI agents support this skill?
This skill is compatible with multi.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# AI Agent Development Workflow
## Overview
Specialized workflow for building AI agents including single autonomous agents, multi-agent systems, agent orchestration, tool integration, and human-in-the-loop patterns.
## When to Use This Workflow
Use this workflow when:
- Building autonomous AI agents
- Creating multi-agent systems
- Implementing agent orchestration
- Adding tool integration to agents
- Setting up agent memory
## Workflow Phases
### Phase 1: Agent Design
#### Skills to Invoke
- `ai-agents-architect` - Agent architecture
- `autonomous-agents` - Autonomous patterns
#### Actions
1. Define agent purpose
2. Design agent capabilities
3. Plan tool integration
4. Design memory system
5. Define success metrics
#### Copy-Paste Prompts
```
Use @ai-agents-architect to design AI agent architecture
```
### Phase 2: Single Agent Implementation
#### Skills to Invoke
- `autonomous-agent-patterns` - Agent patterns
- `autonomous-agents` - Autonomous agents
#### Actions
1. Choose agent framework
2. Implement agent logic
3. Add tool integration
4. Configure memory
5. Test agent behavior
#### Copy-Paste Prompts
```
Use @autonomous-agent-patterns to implement single agent
```
### Phase 3: Multi-Agent System
#### Skills to Invoke
- `crewai` - CrewAI framework
- `multi-agent-patterns` - Multi-agent patterns
#### Actions
1. Define agent roles
2. Set up agent communication
3. Configure orchestration
4. Implement task delegation
5. Test coordination
#### Copy-Paste Prompts
```
Use @crewai to build multi-agent system with roles
```
### Phase 4: Agent Orchestration
#### Skills to Invoke
- `langgraph` - LangGraph orchestration
- `workflow-orchestration-patterns` - Orchestration
#### Actions
1. Design workflow graph
2. Implement state management
3. Add conditional branches
4. Configure persistence
5. Test workflows
#### Copy-Paste Prompts
```
Use @langgraph to create stateful agent workflows
```
### Phase 5: Tool Integration
#### Skills to Invoke
- `agent-tool-builder` - Tool building
- `tool-design` - Tool design
#### Actions
1. Identify tool needs
2. Design tool interfaces
3. Implement tools
4. Add error handling
5. Test tool usage
#### Copy-Paste Prompts
```
Use @agent-tool-builder to create agent tools
```
### Phase 6: Memory Systems
#### Skills to Invoke
- `agent-memory-systems` - Memory architecture
- `conversation-memory` - Conversation memory
#### Actions
1. Design memory structure
2. Implement short-term memory
3. Set up long-term memory
4. Add entity memory
5. Test memory retrieval
#### Copy-Paste Prompts
```
Use @agent-memory-systems to implement agent memory
```
### Phase 7: Evaluation
#### Skills to Invoke
- `agent-evaluation` - Agent evaluation
- `evaluation` - AI evaluation
#### Actions
1. Define evaluation criteria
2. Create test scenarios
3. Measure agent performance
4. Test edge cases
5. Iterate improvements
#### Copy-Paste Prompts
```
Use @agent-evaluation to evaluate agent performance
```
## Agent Architecture
```
User Input -> Planner -> Agent -> Tools -> Memory -> Response
| | | |
Decompose LLM Core Actions Short/Long-term
```
## Quality Gates
- [ ] Agent logic working
- [ ] Tools integrated
- [ ] Memory functional
- [ ] Orchestration tested
- [ ] Evaluation passing
## Related Workflow Bundles
- `ai-ml` - AI/ML development
- `rag-implementation` - RAG systems
- `workflow-automation` - Workflow patterns