# TigerGraph >[TigerGraph](https://www.tigergraph.com/tigergraph-db/) is a natively distributed and high-performance graph database. > The storage of data in a graph format of vertices and edges leads to rich relationships, > ideal for grouding LLM responses. A big example of the `TigerGraph` and `LangChain` integration [presented here](https://github.com/tigergraph/graph-ml-notebooks/blob/main/applications/large_language_models/TigerGraph_LangChain_Demo.ipynb). ## Installation and Setup Follow instructions [how to connect to the `TigerGraph` database](https://docs.tigergraph.com/pytigergraph/current/getting-started/connection). Install the Python SDK: ```bash pip install pyTigerGraph ``` ## Example To utilize the `TigerGraph InquiryAI` functionality, you can import `TigerGraph` from `langchain_community.graphs`. ```python import pyTigerGraph as tg conn = tg.TigerGraphConnection(host="DATABASE_HOST_HERE", graphname="GRAPH_NAME_HERE", username="USERNAME_HERE", password="PASSWORD_HERE") ### ==== CONFIGURE INQUIRYAI HOST ==== conn.ai.configureInquiryAIHost("INQUIRYAI_HOST_HERE") from langchain_community.graphs import TigerGraph graph = TigerGraph(conn) result = graph.query("How many servers are there?") print(result) ```