Integration: Voyage AI
A component for computing embeddings using Voyage AI embedding models - built for Haystack 2.0.
Table of Contents
Custom component for Haystack (2.x) for creating embeddings using the VoyageAI Embedding Models.
Voyage’s embedding models, voyage-01
and voyage-lite-01
, are state-of-the-art in retrieval accuracy. These models outperform top performing embedding models like BAAI-bge
and OpenAI text-embedding-ada-002
on the
MTEB Benchmark.
Installation
pip install voyage-embedders-haystack
Usage
You can use Voyage Embedding models with two components: VoyageTextEmbedder and VoyageDocumentEmbedder.
To create semantic embeddings for documents, use VoyageDocumentEmbedder
in your indexing pipeline. For generating embeddings for queries, use VoyageTextEmbedder
. Once you’ve selected the suitable component for your specific use case, initialize the component with the model name and Voyage AI API key. You can also
set the environment variable “VOYAGE_API_KEY” instead of passing the api key as an argument.
Information about the supported models, can be found on the Embeddings Documentation.
To get an API key, please see the Voyage AI website.
Example
Below is the example Semantic Search pipeline that uses the
Simple Wikipedia Dataset from HuggingFace. You can find more examples in the
examples
folder.
Load the dataset:
# Install HuggingFace Datasets using "pip install datasets"
from datasets import load_dataset
from haystack import Pipeline
from haystack.components.retrievers.in_memory import InMemoryEmbeddingRetriever
from haystack.components.writers import DocumentWriter
from haystack.dataclasses import Document
from haystack.document_stores.in_memory import InMemoryDocumentStore
# Import Voyage Embedders
from voyage_embedders.voyage_document_embedder import VoyageDocumentEmbedder
from voyage_embedders.voyage_text_embedder import VoyageTextEmbedder
# Load first 100 rows of the Simple Wikipedia Dataset from HuggingFace
dataset = load_dataset("pszemraj/simple_wikipedia", split="validation[:100]")
docs = [
Document(
content=doc["text"],
meta={
"title": doc["title"],
"url": doc["url"],
},
)
for doc in dataset
]
Index the documents to the InMemoryDocumentStore
using the VoyageDocumentEmbedder
and DocumentWriter
:
doc_store = InMemoryDocumentStore(embedding_similarity_function="cosine")
doc_embedder = VoyageDocumentEmbedder(
model_name="voyage-01",
input_type="document",
batch_size=8,
api_key="VOYAGE_API_KEY",
)
# Indexing Pipeline
indexing_pipeline = Pipeline()
indexing_pipeline.add_component(instance=doc_embedder, name="DocEmbedder")
indexing_pipeline.add_component(instance=DocumentWriter(document_store=doc_store), name="DocWriter")
indexing_pipeline.connect("DocEmbedder", "DocWriter")
indexing_pipeline.run({"DocEmbedder": {"documents": docs}})
print(f"Number of documents in Document Store: {len(doc_store.filter_documents())}")
print(f"First Document: {doc_store.filter_documents()[0]}")
print(f"Embedding of first Document: {doc_store.filter_documents()[0].embedding}")
Query the Semantic Search Pipeline using the InMemoryEmbeddingRetriever
and VoyageTextEmbedder
:
text_embedder = VoyageTextEmbedder(model_name="voyage-01", input_type="query", api_key="VOYAGE_API_KEY")
# Query Pipeline
query_pipeline = Pipeline()
query_pipeline.add_component("TextEmbedder", text_embedder)
query_pipeline.add_component("Retriever", InMemoryEmbeddingRetriever(document_store=doc_store))
query_pipeline.connect("TextEmbedder", "Retriever")
# Search
results = query_pipeline.run({"TextEmbedder": {"text": "Which year did the Joker movie release?"}})
# Print text from top result
top_result = results["Retriever"]["documents"][0].content
print("The top search result is:")
print(top_result)
License
voyage-embedders-haystack
is distributed under the terms of the
Apache-2.0 license.