Intugle Mcp
@Intugle
About Intugle Mcp
Generate automated semantic models using data engineering agents and built data products on demand
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"data-tools": {
"command": "python",
"args": [
"-m",
"venv",
".venv"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Intugle Mcp?
Intugle Mcp is a GenAI-powered open-source Python library that builds a semantic data model over existing data systems. It profiles, classifies, and discovers links and relationships across data assets, enriches them with business glossaries, and enables semantic search and auto-generated queries for unified data products.
How to use Intugle Mcp?
Install the package with pip install intugle in a virtual environment. Configure an LLM provider via environment variables (LLM_PROVIDER, API_KEY) and optionally a Qdrant vector database for semantic search. Use the SemanticModel class to profile, link, and glossarize datasets, then use DataProduct to generate unified data products.
Key features of Intugle Mcp
- Semantic data model that transforms fragmented datasets into a connected graph.
- Auto-generated business glossary and semantic search across technical and business users.
- Data product generation with auto-joined SQL queries and reusable outputs.
Use cases of Intugle Mcp
- Data engineers automate profiling, classification, and linking of fragmented data assets.
- Data analysts and scientists accelerate data readiness with contextual intelligence and auto-generated SQL.
- Business analysts query data via natural language semantic search without technical dependencies.
- Organizations unify data from heterogeneous sources (CSV, Snowflake, Databricks) into consistent data products.
FAQ from Intugle Mcp
How do I configure an LLM for Intugle Mcp?
Set the LLM_PROVIDER environment variable (e.g., openai:gpt-3.5-turbo) and the corresponding API key (e.g., OPENAI_API_KEY).
What are the runtime requirements?
Python with a virtual environment. On macOS, you may need to install libomp via Homebrew and run SSL certificates command if using official Python installer.
Does Intugle Mcp work with Databricks or Snowflake?
Yes. Quickstart notebooks are provided for Databricks Unity Catalog, Snowflake Horizon Catalog, and native Snowflake with Cortex Analyst, as well as native Databricks with AI/BI Genie.
What license is Intugle Mcp released under?
Apache 2.0.
How do I enable semantic search?
You need a running Qdrant instance (Docker command provided) and set QDRANT_URL and optionally QDRANT_API_KEY. Only OpenAI embeddings are currently supported for semantic search.
More Data & Analytics MCP servers
Bright Data MCP
brightdataA powerful Model Context Protocol (MCP) server that provides an all-in-one solution for public web access.
HubSpot MCP Server
peakmojoA Model Context Protocol (MCP) server that enables AI assistants to interact with HubSpot CRM data, providing built-in vector storage and caching mechanisms help overcome HubSpot API limitations while improving response times.
PubMed MCP Server
cyanheadsSearch PubMed/Europe PMC, fetch articles and full text (PMC/EPMC/Unpaywall), citations, MeSH terms via MCP. STDIO or Streamable HTTP.
MCP Server for Data Exploration
reading-plus-aiGoogle Analytics MCP Server
surendranbGoogle Analytics 4 data to AI agents, agentic workflows, and MCP clients. Give agents analysis-ready access to website traffic, user behavior, and performance data with schema discovery, server-side aggregation, and safe defaults that reduce data wrangling.
Comments