Azure Cosmos DB for Apache Gremlin
Azure Cosmos DB for Apache Gremlin is a graph database service that can be used to store massive graphs with billions of vertices and edges. You can query the graphs with millisecond latency and evolve the graph structure easily.
Gremlin is a graph traversal language and virtual machine developed by
Apache TinkerPop
of theApache Software Foundation
.
This notebook shows how to use LLMs to provide a natural language
interface to a graph database you can query with the Gremlin
query
language.
Setting upβ
Install a library:
!pip3 install gremlinpython
You will need an Azure CosmosDB Graph database instance. One option is to create a free CosmosDB Graph database instance in Azure.
When you create your Cosmos DB account and Graph, use /type
as a
partition key.
cosmosdb_name = "mycosmosdb"
cosmosdb_db_id = "graphtesting"
cosmosdb_db_graph_id = "mygraph"
cosmosdb_access_Key = "longstring=="
import nest_asyncio
from langchain.chains.graph_qa.gremlin import GremlinQAChain
from langchain.schema import Document
from langchain_community.graphs import GremlinGraph
from langchain_community.graphs.graph_document import GraphDocument, Node, Relationship
from langchain_openai import AzureChatOpenAI
graph = GremlinGraph(
url=f"=wss://{cosmosdb_name}.gremlin.cosmos.azure.com:443/",
username=f"/dbs/{cosmosdb_db_id}/colls/{cosmosdb_db_graph_id}",
password=cosmosdb_access_Key,
)
Seeding the databaseβ
Assuming your database is empty, you can populate it using the GraphDocuments
For Gremlin, always add property called βlabelβ for each Node. If no label is set, Node.type is used as a label. For cosmos using natural idβs make sense, as they are visible in the graph explorer.
source_doc = Document(
page_content="Matrix is a movie where Keanu Reeves, Laurence Fishburne and Carrie-Anne Moss acted."
)
movie = Node(id="The Matrix", properties={"label": "movie", "title": "The Matrix"})
actor1 = Node(id="Keanu Reeves", properties={"label": "actor", "name": "Keanu Reeves"})
actor2 = Node(
id="Laurence Fishburne", properties={"label": "actor", "name": "Laurence Fishburne"}
)
actor3 = Node(
id="Carrie-Anne Moss", properties={"label": "actor", "name": "Carrie-Anne Moss"}
)
rel1 = Relationship(
id=5, type="ActedIn", source=actor1, target=movie, properties={"label": "ActedIn"}
)
rel2 = Relationship(
id=6, type="ActedIn", source=actor2, target=movie, properties={"label": "ActedIn"}
)
rel3 = Relationship(
id=7, type="ActedIn", source=actor3, target=movie, properties={"label": "ActedIn"}
)
rel4 = Relationship(
id=8,
type="Starring",
source=movie,
target=actor1,
properties={"label": "Strarring"},
)
rel5 = Relationship(
id=9,
type="Starring",
source=movie,
target=actor2,
properties={"label": "Strarring"},
)
rel6 = Relationship(
id=10,
type="Straring",
source=movie,
target=actor3,
properties={"label": "Strarring"},
)
graph_doc = GraphDocument(
nodes=[movie, actor1, actor2, actor3],
relationships=[rel1, rel2, rel3, rel4, rel5, rel6],
source=source_doc,
)
# The underlying python-gremlin has a problem when running in notebook
# The following line is a workaround to fix the problem
nest_asyncio.apply()
# Add the document to the CosmosDB graph.
graph.add_graph_documents([graph_doc])
Refresh graph schema informationβ
If the schema of database changes (after updates), you can refresh the schema information.
graph.refresh_schema()
print(graph.schema)
Querying the graphβ
We can now use the gremlin QA chain to ask question of the graph
chain = GremlinQAChain.from_llm(
AzureChatOpenAI(
temperature=0,
azure_deployment="gpt-4-turbo",
),
graph=graph,
verbose=True,
)
chain.invoke("Who played in The Matrix?")
chain.run("How many people played in The Matrix?")