Chef-Agent
A streaming AI cooking assistant that uses MCP tools and Neo4j knowledge graph to answer queries, manage recipes, and remember user preferences.
README
Chef‑Agent Knowledge‑Graph Cooking Assistant
A streaming AI “Chef” agent that uses LangGraph workflows, MCP tools, and a Neo4j‑backed recipe knowledge graph to answer cooking queries, update or ingest recipes, and remember user preferences.
Agent Graph Architecture Image

🚀 Features
- Interactive streaming conversation via FastMCP + FastAPI
- Graph‑driven recipe storage & updates (Neo4j +
langchain_neo4j+LLMGraphTransformer) - Tool support for:
web_search(Tavily/DuckDuckGo)web_scraper(FireCrawl + BeautifulSoup fallback)execute_pythonsandboxed codegraph_query(natural‑language → Cypher)ingest_url_to_graph(scrape & ingest new recipes)
- Memory via in‑process store (or Redis) to personalize sessions
- Auto‑summarization of long chats with a short‑term summarizer
📦 Prerequisites
- Python 3.10+
- Neo4j 4.4+ (standalone or Docker)
- Redis Stack (if using RedisStore/checkpointer)
Environment Variables
Create a .env file at project root and set all of the following:
# Multi‑provider LLM keys
GOOGLE_API_KEY=
GROQ_API_KEY=
CEREBRAS_API_KEY=
# Search & scraping
TAVILY_API_KEY=
E2B_API_KEY=
FIRECRAWL_API_KEY=
# Langfuse observability
LANGFUSE_PUBLIC_KEY=
LANGFUSE_SECRET_KEY=
LANGFUSE_HOST=
# Neo4j connection
NEO4J_URI=
NEO4J_USERNAME=
NEO4J_PASSWORD=
NEO4J_DATABASE=
# Redis (optional)
DB_URI=redis://localhost:6379/0
🔧 Installation
-
Clone repo
git clone https://github.com/your-org/chef-agent.git cd chef-agent -
Create & activate a virtual env
python -m venv .venv source .venv/bin/activate pip install -r requirements.txt -
Set your
.envas above.
⚙️ Running the MCP Server
python mcp_server.py
- Exposes MCP tools at
http://127.0.0.1:8000/mcp - Health check:
GET /health
⚙️ Running the Agent
python agent.py
-
Connects to MCP server
-
Builds a LangGraph
StateGraphworkflow:- assistant: generates initial answer, sets
has_finalonce[FinalAnswer]:appears - tools: invokes any needed tools (web_search, graph_query, etc.)
- update_graph → graph_update_tool_calling: decides & applies graph updates
- finalize_answer: produces final user‑facing recipe plan
- write_memory → summarization_node: saves memory & summarizes
- assistant: generates initial answer, sets
-
Streaming output: prints incremental responses
📂 Code Structure
.
├── agent.py # Main agent orchestration & graph workflow
├── mcp_server.py # FastAPI + FastMCP tool definitions
├── graphDB.py # GraphDB wrapper (Neo4j + LLMGraphTransformer)
├── schemas.py # Pydantic models: Recipe, Profile, UpdateGraphDecision
├── scrapper.py # Web scraper & Markdown converter
├── prompts/
│ ├── SYSTEM_PROMPT.txt
│ ├── decision_prompt.txt
│ ├── decision_prompt_2.txt
│ ├── conversation_prompt.txt
│ └── summarization_prompt.txt
├── requirements.txt
├── .env
└── README.md
🛠️ Customization
- Switch LLM: in
agent.pychangeprovider="google"to"groq"or another supported model. - Enable Redis for persistence: swap
InMemoryStore/SaverwithAsyncRedisStore/Saverand setDB_URI. - Extend tools: add new
@mcp.tool()functions inmcp_server.py.
🐞 Troubleshooting
- Graph connectivity: confirm Neo4j credentials & network reachability.
Future Work
- Multi-agent: multiple agents can be run in parallel & share memory.
- Distributed: multiple instances of the agent can be run on different machines.
- Multilingual: Support for multiple languages.
- Multimodal: Support for video/image based analysis for clear instructions.
- Multi-modal: Support for voice based analysis for clear instructions.
- Security: Add authentication & authorization.
- Voice: Support for voice based analysis for clear instructions.
Contributing
Contributions are welcome! To contribute:
- Fork the repository.
- Create a new branch.
- Submit a pull request with your changes.
Contact
For any questions or suggestions, feel free to contact on below Contact details:
- Om Nagvekar Portfolio Website, Email: https://omnagvekar.github.io/ , omnagvekar29@gmail.com
- GitHub Profile:
- Om Nagvekar: https://github.com/OmNagvekar
📜 License
This project is licensed under the GPL-3.0 license.
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