Apache Cassandra
This page provides a quickstart for using Apache Cassandra® as a Vector Store.
Cassandra is a NoSQL, row-oriented, highly scalable and highly available database.Starting with version 5.0, the database ships with vector search capabilities.
Note: in addition to access to the database, an OpenAI API Key is required to run the full example.
Setup and general dependencies
Use of the integration requires the following Python package.
%pip install --upgrade --quiet langchain-community "cassio>=0.1.4"
Note: depending on your LangChain setup, you may need to install/upgrade other dependencies needed for this demo
(specifically, recent versions of datasets
, openai
, pypdf
and tiktoken
are required, along with langchain-community
).
import os
from getpass import getpass
from datasets import (
load_dataset,
)
from langchain_community.document_loaders import PyPDFLoader
from langchain_core.documents import Document
from langchain_core.output_parsers import StrOutputParser
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.runnables import RunnablePassthrough
from langchain_openai import ChatOpenAI, OpenAIEmbeddings
from langchain_text_splitters import RecursiveCharacterTextSplitter
if "OPENAI_API_KEY" not in os.environ:
os.environ["OPENAI_API_KEY"] = getpass("OPENAI_API_KEY = ")
embe = OpenAIEmbeddings()
Import the Vector Store
from langchain_community.vectorstores import Cassandra
Connection parameters
The Vector Store integration shown in this page can be used with Cassandra as well as other derived databases, such as Astra DB, which use the CQL (Cassandra Query Language) protocol.
DataStax Astra DB is a managed serverless database built on Cassandra, offering the same interface and strengths.
Depending on whether you connect to a Cassandra cluster or to Astra DB through CQL, you will provide different parameters when creating the vector store object.
Connecting to a Cassandra cluster
You first need to create a cassandra.cluster.Session
object, as described in the Cassandra driver documentation. The details vary (e.g. with network settings and authentication), but this might be something like:
from cassandra.cluster import Cluster
cluster = Cluster(["127.0.0.1"])
session = cluster.connect()
You can now set the session, along with your desired keyspace name, as a global CassIO parameter:
import cassio
CASSANDRA_KEYSPACE = input("CASSANDRA_KEYSPACE = ")
cassio.init(session=session, keyspace=CASSANDRA_KEYSPACE)
Now you can create the vector store:
vstore = Cassandra(
embedding=embe,
table_name="cassandra_vector_demo",
# session=None, keyspace=None # Uncomment on older versions of LangChain
)
Note: you can also pass your session and keyspace directly as parameters when creating the vector store. Using the global cassio.init
setting, however, comes handy if your applications uses Cassandra in several ways (for instance, for vector store, chat memory and LLM response caching), as it allows to centralize credential and DB connection management in one place.
Connecting to Astra DB through CQL
In this case you initialize CassIO with the following connection parameters:
- the Database ID, e.g.
01234567-89ab-cdef-0123-456789abcdef
- the Token, e.g.
AstraCS:6gBhNmsk135....
(it must be a "Database Administrator" token) - Optionally a Keyspace name (if omitted, the default one for the database will be used)
ASTRA_DB_ID = input("ASTRA_DB_ID = ")
ASTRA_DB_APPLICATION_TOKEN = getpass("ASTRA_DB_APPLICATION_TOKEN = ")
desired_keyspace = input("ASTRA_DB_KEYSPACE (optional, can be left empty) = ")
if desired_keyspace:
ASTRA_DB_KEYSPACE = desired_keyspace
else:
ASTRA_DB_KEYSPACE = None
import cassio
cassio.init(
database_id=ASTRA_DB_ID,
token=ASTRA_DB_APPLICATION_TOKEN,
keyspace=ASTRA_DB_KEYSPACE,
)
Now you can create the vector store:
vstore = Cassandra(
embedding=embe,
table_name="cassandra_vector_demo",
# session=None, keyspace=None # Uncomment on older versions of LangChain
)
Load a dataset
Convert each entry in the source dataset into a Document
, then write them into the vector store:
philo_dataset = load_dataset("datastax/philosopher-quotes")["train"]
docs = []
for entry in philo_dataset:
metadata = {"author": entry["author"]}
doc = Document(page_content=entry["quote"], metadata=metadata)
docs.append(doc)
inserted_ids = vstore.add_documents(docs)
print(f"\nInserted {len(inserted_ids)} documents.")
In the above, metadata
dictionaries are created from the source data and are part of the Document
.
Add some more entries, this time with add_texts
:
texts = ["I think, therefore I am.", "To the things themselves!"]
metadatas = [{"author": "descartes"}, {"author": "husserl"}]
ids = ["desc_01", "huss_xy"]
inserted_ids_2 = vstore.add_texts(texts=texts, metadatas=metadatas, ids=ids)
print(f"\nInserted {len(inserted_ids_2)} documents.")
Note: you may want to speed up the execution of add_texts
and add_documents
by increasing the concurrency level for
these bulk operations - check out the methods' batch_size
parameter
for more details. Depending on the network and the client machine specifications, your best-performing choice of parameters may vary.
Run searches
This section demonstrates metadata filtering and getting the similarity scores back:
results = vstore.similarity_search("Our life is what we make of it", k=3)
for res in results:
print(f"* {res.page_content} [{res.metadata}]")
results_filtered = vstore.similarity_search(
"Our life is what we make of it",
k=3,
filter={"author": "plato"},
)
for res in results_filtered:
print(f"* {res.page_content} [{res.metadata}]")
results = vstore.similarity_search_with_score("Our life is what we make of it", k=3)
for res, score in results:
print(f"* [SIM={score:3f}] {res.page_content} [{res.metadata}]")
MMR (Maximal-marginal-relevance) search
results = vstore.max_marginal_relevance_search(
"Our life is what we make of it",
k=3,
filter={"author": "aristotle"},
)
for res in results:
print(f"* {res.page_content} [{res.metadata}]")
Deleting stored documents
delete_1 = vstore.delete(inserted_ids[:3])
print(f"all_succeed={delete_1}") # True, all documents deleted
delete_2 = vstore.delete(inserted_ids[2:5])
print(f"some_succeeds={delete_2}") # True, though some IDs were gone already
A minimal RAG chain
The next cells will implement a simple RAG pipeline:
- download a sample PDF file and load it onto the store;
- create a RAG chain with LCEL (LangChain Expression Language), with the vector store at its heart;
- run the question-answering chain.
!curl -L \
"https://github.com/awesome-astra/datasets/blob/main/demo-resources/what-is-philosophy/what-is-philosophy.pdf?raw=true" \
-o "what-is-philosophy.pdf"
pdf_loader = PyPDFLoader("what-is-philosophy.pdf")
splitter = RecursiveCharacterTextSplitter(chunk_size=512, chunk_overlap=64)
docs_from_pdf = pdf_loader.load_and_split(text_splitter=splitter)
print(f"Documents from PDF: {len(docs_from_pdf)}.")
inserted_ids_from_pdf = vstore.add_documents(docs_from_pdf)
print(f"Inserted {len(inserted_ids_from_pdf)} documents.")
retriever = vstore.as_retriever(search_kwargs={"k": 3})
philo_template = """
You are a philosopher that draws inspiration from great thinkers of the past
to craft well-thought answers to user questions. Use the provided context as the basis
for your answers and do not make up new reasoning paths - just mix-and-match what you are given.
Your answers must be concise and to the point, and refrain from answering about other topics than philosophy.
CONTEXT:
{context}
QUESTION: {question}
YOUR ANSWER:"""
philo_prompt = ChatPromptTemplate.from_template(philo_template)
llm = ChatOpenAI()
chain = (
{"context": retriever, "question": RunnablePassthrough()}
| philo_prompt
| llm
| StrOutputParser()
)
chain.invoke("How does Russel elaborate on Peirce's idea of the security blanket?")
For more, check out a complete RAG template using Astra DB through CQL here.
Cleanup
the following essentially retrieves the Session
object from CassIO and runs a CQL DROP TABLE
statement with it:
(You will lose the data you stored in it.)
cassio.config.resolve_session().execute(
f"DROP TABLE {cassio.config.resolve_keyspace()}.cassandra_vector_demo;"
)
Learn more
For more information, extended quickstarts and additional usage examples, please visit the CassIO documentation for more on using the LangChain Cassandra
vector store.