Amazon Neptune with Cypher
Amazon Neptune is a high-performance graph analytics and serverless database for superior scalability and availability.
This example shows the QA chain that queries the
Neptune
graph database usingopenCypher
and returns a human-readable response.Cypher is a declarative graph query language that allows for expressive and efficient data querying in a property graph.
openCypher is an open-source implementation of Cypher. # Neptune Open Cypher QA Chain This QA chain queries Amazon Neptune using openCypher and returns human readable response
LangChain supports both Neptune
Database
and Neptune
Analytics
with NeptuneOpenCypherQAChain
Neptune Database is a serverless graph database designed for optimal scalability and availability. It provides a solution for graph database workloads that need to scale to 100,000 queries per second, Multi-AZ high availability, and multi-Region deployments. You can use Neptune Database for social networking, fraud alerting, and Customer 360 applications.
Neptune Analytics is an analytics database engine that can quickly analyze large amounts of graph data in memory to get insights and find trends. Neptune Analytics is a solution for quickly analyzing existing graph databases or graph datasets stored in a data lake. It uses popular graph analytic algorithms and low-latency analytic queries.
Using Neptune Database
from langchain_community.graphs import NeptuneGraph
host = "<neptune-host>"
port = 8182
use_https = True
graph = NeptuneGraph(host=host, port=port, use_https=use_https)
API Reference:
Using Neptune Analytics
from langchain_community.graphs import NeptuneAnalyticsGraph
graph = NeptuneAnalyticsGraph(graph_identifier="<neptune-analytics-graph-id>")
API Reference:
Using NeptuneOpenCypherQAChain
This QA chain queries Neptune graph database using openCypher and returns human readable response.
from langchain.chains import NeptuneOpenCypherQAChain
from langchain_openai import ChatOpenAI
llm = ChatOpenAI(temperature=0, model="gpt-4")
chain = NeptuneOpenCypherQAChain.from_llm(llm=llm, graph=graph)
chain.invoke("how many outgoing routes does the Austin airport have?")
API Reference:
'The Austin airport has 98 outgoing routes.'