datahub-agent-context/README.md
DataHub Agent Context provides a collection of tools and utilities for building AI agents that interact with DataHub metadata. This package contains MCP (Model Context Protocol) tools that enable AI agents to search, retrieve, and manipulate metadata in DataHub. These can be used directly to create an agent, or be included in an MCP server such as Datahub's open source MCP server.
python3 -m pip install --upgrade pip wheel setuptools
python3 -m pip install --upgrade datahub-agent-context
For building LangChain agents with pre-built tools:
python3 -m pip install --upgrade "datahub-agent-context[langchain]"
This package requires:
acryl-datahub packageThese tools are designed to be used with an AI agent and have the responses passed directly to an LLM, so the return schema is a simple dict, but they can be used independently if desired.
from datahub.ingestion.graph.client import DataHubGraph
from datahub_agent_context.mcp_tools.search import search
from datahub_agent_context.mcp_tools.entities import get_entities
# Initialize DataHub graph client
client = DataHubClient.from_env()
# Search for datasets
with client as client:
results = search(
query="user_data",
filters={"entity_type": ["dataset"]},
num_results=10
)
# Get detailed entity information
with client as client:
entities = get_entities(
urns=[result["entity"]["urn"] for result in results["searchResults"]]
)
Build AI agents with pre-built LangChain tools:
from datahub.sdk.main_client import DataHubClient
from datahub_agent_context.langchain_tools import build_langchain_tools
from langchain.agents import create_agent
# Initialize DataHub client
client = DataHubClient.from_env()
# Build all tools (read-only by default)
tools = build_langchain_tools(client, include_mutations=False)
# Or include mutation tools for tagging, descriptions, etc.
tools = build_langchain_tools(client, include_mutations=True)
# Create agent
agent = create_agent(model, tools=tools, system_prompt="...")
See examples/langchain/ for complete LangChain agent examples including:
search() - Search across all entity types with filters and sortingsearch_documents() - Search specifically for Document entitiesgrep_documents() - Grep for patterns in document contentget_entities() - Get detailed information about entities by URNlist_schema_fields() - List and filter schema fields for datasetsget_lineage() - Get upstream or downstream lineageget_lineage_paths_between() - Get detailed paths between two entitiesget_dataset_queries() - Get SQL queries for datasets or columnsadd_tags(), remove_tags() - Manage tagsupdate_description() - Update entity descriptionsset_domains(), remove_domains() - Manage domainsadd_owners(), remove_owners() - Manage ownersadd_glossary_terms(), remove_glossary_terms() - Manage glossary termsadd_structured_properties(), remove_structured_properties() - Manage structured propertiessave_document() - Save or update a Document.get_me() - Get information about the authenticated userThe package is organized into the following modules:
mcp_tools/ - Core MCP tool implementations
base.py - Base GraphQL execution and response cleaningsearch.py - Search functionalitydocuments.py - Document search and grepentities.py - Entity retrievallineage.py - Lineage queryingqueries.py - Query retrievaltags.py, descriptions.py, domains.py, etc. - Mutation toolshelpers.py - Shared utility functionsgql/ - GraphQL query definitions# Clone the repository
git clone https://github.com/datahub-project/datahub.git
cd datahub/datahub-agent-context
# Set up development environment
./gradlew :datahub-agent-context:installDev
# Run tests
./gradlew :datahub-agent-context:testFull
# Run linting
./gradlew :datahub-agent-context:lintFix
The package includes comprehensive unit tests for all tools:
# Run full test suite
./gradlew :datahub-agent-context:testFull