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faion-ai-agents

AI agents: autonomous agents, multi-agent systems, LangChain, LlamaIndex, MCP.

Packaged view

This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.

Stars
83
Hot score
93
Updated
March 20, 2026
Overall rating
C2.6
Composite score
2.6
Best-practice grade
B81.2

Install command

npx @skill-hub/cli install neversight-skills-feed-faion-ai-agents
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Repository

NeverSight/skills_feed

Skill path: data/skills-md/faionfaion/faion-network/faion-ai-agents

AI agents: autonomous agents, multi-agent systems, LangChain, LlamaIndex, MCP.

Open repository

Best for

Primary workflow: Analyze Data & AI.

Technical facets: Full Stack, Data / AI, Integration.

Target audience: everyone.

License: Unknown.

Original source

Catalog source: SkillHub Club.

Repository owner: NeverSight.

This is still a mirrored public skill entry. Review the repository before installing into production workflows.

What it helps with

  • Install faion-ai-agents into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
  • Review https://github.com/NeverSight/skills_feed before adding faion-ai-agents to shared team environments
  • Use faion-ai-agents for development workflows

Works across

Claude CodeCodex CLIGemini CLIOpenCode

Favorites: 0.

Sub-skills: 0.

Aggregator: No.

Original source / Raw SKILL.md

---
name: faion-ai-agents
description: "AI agents: autonomous agents, multi-agent systems, LangChain, LlamaIndex, MCP."
user-invocable: false
allowed-tools: Read, Write, Edit, Glob, Grep, Bash, Task, AskUserQuestion, TodoWrite
---
> **Entry point:** `/faion-net` — invoke this skill for automatic routing to the appropriate domain.

# AI Agents Skill

**Communication: User's language. Code: English.**

## Purpose

Specializes in AI agent development and orchestration. Covers autonomous agents, multi-agent systems, frameworks, and MCP.

## Scope

| Area | Coverage |
|------|----------|
| **Agent Patterns** | ReAct, plan-and-execute, reasoning-first |
| **Autonomous Agents** | Agent loops, memory, tool use |
| **Multi-Agent** | Coordination, communication, delegation |
| **Frameworks** | LangChain, LlamaIndex agent implementations |
| **MCP** | Model Context Protocol, Claude tools |
| **Governance** | EU AI Act compliance, safety |

## Quick Start

| Task | Files |
|------|-------|
| Basic agent | ai-agent-patterns.md → agent-patterns.md |
| Autonomous agent | autonomous-agents.md → agent-architectures.md |
| Multi-agent | multi-agent-basics.md → multi-agent-patterns.md |
| LangChain agents | langchain-agents-architectures.md |
| MCP integration | mcp-model-context-protocol.md → mcp-ecosystem-2026.md |

## Methodologies (26)

**Agent Fundamentals (4):**
- ai-agent-patterns: Core patterns, memory, planning
- agent-patterns: ReAct, chain-of-thought, reflection
- agent-architectures: System design, components
- autonomous-agents: Loops, decision-making, persistence

**Multi-Agent (4):**
- multi-agent-basics: Fundamentals, communication
- multi-agent-patterns: Delegation, collaboration
- multi-agent-design-patterns: Hierarchical, peer-to-peer

**LangChain (7):**
- langchain-basics: Setup, chains, components
- langchain-chains: LCEL, sequential, routing
- langchain-memory: Conversation, summary, entity
- langchain-workflows: Complex flows, branching
- langchain-agents-architectures: Agent types, tools
- langchain-agents-multi-agent: Multi-agent with LangChain
- langchain-patterns: Production patterns

**LlamaIndex (3):**
- llamaindex-basics: Data connectors, indexes
- llamaindex-indexes-queries: Query engines, retrievers
- llamaindex-agents-eval: Agent implementation, evaluation

**MCP & Tooling (4):**
- mcp-model-context-protocol: Protocol fundamentals
- model-context-protocol: Specification
- mcp-ecosystem: Available servers, tools
- mcp-ecosystem-2026: Latest developments

**Governance (2):**
- ai-governance-compliance: Frameworks, best practices
- eu-ai-act-compliance: Risk tiers, requirements
- eu-ai-act-compliance-2026: Latest updates

**Advanced (2):**
- agentic-rag: Agent-driven retrieval (duplicated in RAG)
- reasoning-first-architectures: Extended thinking patterns

## Agent Architectures

### ReAct Pattern

```
Input → Thought → Action → Observation → Thought → ... → Answer
```

### Plan-and-Execute

```
Input → Plan → Execute Step 1 → Execute Step 2 → ... → Synthesize
```

### Reasoning-First

```
Input → Extended Thinking → Plan → Execute → Answer
```

## Code Examples

### Basic ReAct Agent (LangChain)

```python
from langchain.agents import create_react_agent, AgentExecutor
from langchain_openai import ChatOpenAI
from langchain.tools import Tool

tools = [
    Tool(
        name="Calculator",
        func=lambda x: eval(x),
        description="Math calculator"
    )
]

llm = ChatOpenAI(model="gpt-4o")
agent = create_react_agent(llm, tools, prompt)
executor = AgentExecutor(agent=agent, tools=tools)

result = executor.invoke({"input": "What is 25 * 17?"})
```

### Multi-Agent System

```python
from langchain.agents import initialize_agent, Tool
from langchain_openai import ChatOpenAI

# Define specialized agents
researcher = ChatOpenAI(model="gpt-4o")
writer = ChatOpenAI(model="gpt-4o")

# Orchestrator delegates tasks
orchestrator = initialize_agent(
    tools=[
        Tool(name="research", func=research_agent),
        Tool(name="write", func=writer_agent)
    ],
    llm=ChatOpenAI(model="gpt-4o"),
    agent="zero-shot-react-description"
)

result = orchestrator.invoke("Research AI trends and write a summary")
```

### MCP Server Integration

```python
import anthropic

client = anthropic.Anthropic()

response = client.messages.create(
    model="claude-sonnet-4-20250514",
    max_tokens=1024,
    tools=[{
        "name": "get_weather",
        "description": "Get weather data",
        "input_schema": {
            "type": "object",
            "properties": {
                "location": {"type": "string"}
            }
        }
    }],
    messages=[{"role": "user", "content": "Weather in NYC?"}]
)
```

### LlamaIndex Agent

```python
from llama_index.agent import ReActAgent
from llama_index.llms import OpenAI
from llama_index.tools import QueryEngineTool

llm = OpenAI(model="gpt-4o")

tools = [
    QueryEngineTool.from_defaults(
        query_engine=query_engine,
        name="docs",
        description="Documentation search"
    )
]

agent = ReActAgent.from_tools(tools, llm=llm)
response = agent.chat("How do I use embeddings?")
```

## Multi-Agent Patterns

| Pattern | Use Case |
|---------|----------|
| **Hierarchical** | Manager delegates to specialists |
| **Peer-to-Peer** | Agents collaborate as equals |
| **Sequential** | Chain of agents, each refines |
| **Parallel** | Multiple agents work simultaneously |

## MCP Ecosystem (2026)

| Server | Purpose |
|---------|---------|
| **filesystem** | File operations |
| **postgres** | Database queries |
| **puppeteer** | Web automation |
| **github** | GitHub API access |
| **slack** | Slack integration |

## EU AI Act Compliance

| Risk Tier | Requirements |
|-----------|--------------|
| **Unacceptable** | Banned (social scoring, manipulation) |
| **High-risk** | Conformity assessment, documentation |
| **Limited-risk** | Transparency obligations |
| **Minimal-risk** | No obligations |

## Related Skills

| Skill | Relationship |
|-------|-------------|
| faion-llm-integration | Provides LLM APIs |
| faion-rag-engineer | Agentic RAG integration |
| faion-ml-ops | Agent evaluation |

---

*AI Agents v1.0 | 26 methodologies*
faion-ai-agents | SkillHub