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langchain/tests/integration_tests/chains/test_graph_database.py

255 lines
7.5 KiB
Python

"""Test Graph Database Chain."""
import os
from langchain.chains.graph_qa.cypher import GraphCypherQAChain
from langchain.chains.loading import load_chain
from langchain.graphs import Neo4jGraph
from langchain.graphs.neo4j_graph import (
node_properties_query,
rel_properties_query,
rel_query,
)
from langchain.llms.openai import OpenAI
def test_connect_neo4j() -> None:
"""Test that Neo4j database is correctly instantiated and connected."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
output = graph.query(
"""
RETURN "test" AS output
"""
)
expected_output = [{"output": "test"}]
assert output == expected_output
def test_cypher_generating_run() -> None:
"""Test that Cypher statement is correctly generated and executed."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
# Delete all nodes in the graph
graph.query("MATCH (n) DETACH DELETE n")
# Create two nodes and a relationship
graph.query(
"CREATE (a:Actor {name:'Bruce Willis'})"
"-[:ACTED_IN]->(:Movie {title: 'Pulp Fiction'})"
)
# Refresh schema information
graph.refresh_schema()
chain = GraphCypherQAChain.from_llm(OpenAI(temperature=0), graph=graph)
output = chain.run("Who played in Pulp Fiction?")
expected_output = " Bruce Willis played in Pulp Fiction."
assert output == expected_output
def test_cypher_top_k() -> None:
"""Test top_k parameter correctly limits the number of results in the context."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
TOP_K = 1
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
# Delete all nodes in the graph
graph.query("MATCH (n) DETACH DELETE n")
# Create two nodes and a relationship
graph.query(
"CREATE (a:Actor {name:'Bruce Willis'})"
"-[:ACTED_IN]->(:Movie {title: 'Pulp Fiction'})"
"<-[:ACTED_IN]-(:Actor {name:'Foo'})"
)
# Refresh schema information
graph.refresh_schema()
chain = GraphCypherQAChain.from_llm(
OpenAI(temperature=0), graph=graph, return_direct=True, top_k=TOP_K
)
output = chain.run("Who played in Pulp Fiction?")
assert len(output) == TOP_K
def test_cypher_intermediate_steps() -> None:
"""Test the returning of the intermediate steps."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
# Delete all nodes in the graph
graph.query("MATCH (n) DETACH DELETE n")
# Create two nodes and a relationship
graph.query(
"CREATE (a:Actor {name:'Bruce Willis'})"
"-[:ACTED_IN]->(:Movie {title: 'Pulp Fiction'})"
)
# Refresh schema information
graph.refresh_schema()
chain = GraphCypherQAChain.from_llm(
OpenAI(temperature=0), graph=graph, return_intermediate_steps=True
)
output = chain("Who played in Pulp Fiction?")
expected_output = " Bruce Willis played in Pulp Fiction."
assert output["result"] == expected_output
query = output["intermediate_steps"][0]["query"]
expected_query = (
"\n\nMATCH (a:Actor)-[:ACTED_IN]->"
"(m:Movie {title: 'Pulp Fiction'}) RETURN a.name"
)
assert query == expected_query
context = output["intermediate_steps"][1]["context"]
expected_context = [{"a.name": "Bruce Willis"}]
assert context == expected_context
def test_cypher_return_direct() -> None:
"""Test that chain returns direct results."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
# Delete all nodes in the graph
graph.query("MATCH (n) DETACH DELETE n")
# Create two nodes and a relationship
graph.query(
"CREATE (a:Actor {name:'Bruce Willis'})"
"-[:ACTED_IN]->(:Movie {title: 'Pulp Fiction'})"
)
# Refresh schema information
graph.refresh_schema()
chain = GraphCypherQAChain.from_llm(
OpenAI(temperature=0), graph=graph, return_direct=True
)
output = chain.run("Who played in Pulp Fiction?")
expected_output = [{"a.name": "Bruce Willis"}]
assert output == expected_output
def test_cypher_return_correct_schema() -> None:
"""Test that chain returns direct results."""
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
# Delete all nodes in the graph
graph.query("MATCH (n) DETACH DELETE n")
# Create two nodes and a relationship
graph.query(
"""
CREATE (la:LabelA {property_a: 'a'})
CREATE (lb:LabelB)
CREATE (lc:LabelC)
MERGE (la)-[:REL_TYPE]-> (lb)
MERGE (la)-[:REL_TYPE {rel_prop: 'abc'}]-> (lc)
"""
)
# Refresh schema information
graph.refresh_schema()
node_properties = graph.query(node_properties_query)
relationships_properties = graph.query(rel_properties_query)
relationships = graph.query(rel_query)
expected_node_properties = [
{
"properties": [{"property": "property_a", "type": "STRING"}],
"labels": "LabelA",
}
]
expected_relationships_properties = [
{"type": "REL_TYPE", "properties": [{"property": "rel_prop", "type": "STRING"}]}
]
expected_relationships = [
"(:LabelA)-[:REL_TYPE]->(:LabelB)",
"(:LabelA)-[:REL_TYPE]->(:LabelC)",
]
assert node_properties == expected_node_properties
assert relationships_properties == expected_relationships_properties
assert relationships == expected_relationships
def test_cypher_save_load() -> None:
"""Test saving and loading."""
FILE_PATH = "cypher.yaml"
url = os.environ.get("NEO4J_URL")
username = os.environ.get("NEO4J_USERNAME")
password = os.environ.get("NEO4J_PASSWORD")
assert url is not None
assert username is not None
assert password is not None
graph = Neo4jGraph(
url=url,
username=username,
password=password,
)
chain = GraphCypherQAChain.from_llm(
OpenAI(temperature=0), graph=graph, return_direct=True
)
chain.save(file_path=FILE_PATH)
qa_loaded = load_chain(FILE_PATH, graph=graph)
assert qa_loaded == chain