Skip to main content

llama-index vector_stores vespa integration

Project description

#Vespa

LlamaIndex Vector_Stores Integration: Vespa

Vespa.ai is an open-source big data serving engine. It is designed for low-latency and high-throughput serving of data and models. Vespa.ai is used by many companies to serve search results, recommendations, and rankings for billions of documents and users, expecting response times in the milliseconds.

This integration allows you to use Vespa.ai as a vector store for LlamaIndex. Vespa has integrated support for embedding inference, so you don't need to run a separate service for these tasks.

Huggingface 🤗 embedders are supported, as well as SPLADE and ColBERT.

Abstraction level of this integration

To make it really simple to get started, we provide a template Vespa application that will be deployed upon initializing the vector store. This removes some of the complexity of setting up Vespa for the first time, but for serious use cases, we strongly recommend that you read the Vespa documentation and tailor the application to your needs.

The template

The provided template Vespa application can be seen below:

from vespa.package import (
    ApplicationPackage,
    Field,
    Schema,
    Document,
    HNSW,
    RankProfile,
    Component,
    Parameter,
    FieldSet,
    GlobalPhaseRanking,
    Function,
)

hybrid_template = ApplicationPackage(
    name="hybridsearch",
    schema=[
        Schema(
            name="doc",
            document=Document(
                fields=[
                    Field(name="id", type="string", indexing=["summary"]),
                    Field(
                        name="metadata", type="string", indexing=["summary"]
                    ),
                    Field(
                        name="text",
                        type="string",
                        indexing=["index", "summary"],
                        index="enable-bm25",
                        bolding=True,
                    ),
                    Field(
                        name="embedding",
                        type="tensor<float>(x[384])",
                        indexing=[
                            "input text",
                            "embed",
                            "index",
                            "attribute",
                        ],
                        ann=HNSW(distance_metric="angular"),
                        is_document_field=False,
                    ),
                ]
            ),
            fieldsets=[FieldSet(name="default", fields=["text", "metadata"])],
            rank_profiles=[
                RankProfile(
                    name="bm25",
                    inputs=[("query(q)", "tensor<float>(x[384])")],
                    functions=[
                        Function(name="bm25sum", expression="bm25(text)")
                    ],
                    first_phase="bm25sum",
                ),
                RankProfile(
                    name="semantic",
                    inputs=[("query(q)", "tensor<float>(x[384])")],
                    first_phase="closeness(field, embedding)",
                ),
                RankProfile(
                    name="fusion",
                    inherits="bm25",
                    inputs=[("query(q)", "tensor<float>(x[384])")],
                    first_phase="closeness(field, embedding)",
                    global_phase=GlobalPhaseRanking(
                        expression="reciprocal_rank_fusion(bm25sum, closeness(field, embedding))",
                        rerank_count=1000,
                    ),
                ),
            ],
        )
    ],
    components=[
        Component(
            id="e5",
            type="hugging-face-embedder",
            parameters=[
                Parameter(
                    "transformer-model",
                    {
                        "url": "https://github.com/vespa-engine/sample-apps/raw/master/simple-semantic-search/model/e5-small-v2-int8.onnx"
                    },
                ),
                Parameter(
                    "tokenizer-model",
                    {
                        "url": "https://raw.githubusercontent.com/vespa-engine/sample-apps/master/simple-semantic-search/model/tokenizer.json"
                    },
                ),
            ],
        )
    ],
)

Note that the fields id, metadata, text, and embedding are required for the integration to work. The schema name must also be doc, and the rank profiles must be named bm25, semantic, and fusion.

Other than that you are free to modify as you see fit by switching out embedding models, adding more fields, or changing the ranking expressions.

For more details, check out this Pyvespa example notebook on hybrid search.

Going to production

If you are ready to graduate to a production setup, we highly recommend to check out the Vespa Cloud service, where we manage all infrastructure and operations for you. Free trials are available.

Next steps

There are many awesome features in Vespa, that are not exposed directly in this integration, check out Pyvespa examples for some inspiration on what you can do with Vespa.

Teasers:

  • Binary + Matryoshka embeddings.
  • ColBERT.
  • ONNX models.
  • XGBoost and lightGBM models for ranking.
  • Multivector indexing.
  • and much more.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

llama_index_vector_stores_vespa-0.2.0.tar.gz (9.8 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file llama_index_vector_stores_vespa-0.2.0.tar.gz.

File metadata

File hashes

Hashes for llama_index_vector_stores_vespa-0.2.0.tar.gz
Algorithm Hash digest
SHA256 148a6c5a41657687d68a86fc08b2f3738fdad5f87cde90c6aad157599567e673
MD5 2faa6eedcc76ba854902b5b9207d41e8
BLAKE2b-256 322c11b9499dc3ea25ef881e2e7d51a567efb821822f292df468789d5d3c1e94

See more details on using hashes here.

File details

Details for the file llama_index_vector_stores_vespa-0.2.0-py3-none-any.whl.

File metadata

File hashes

Hashes for llama_index_vector_stores_vespa-0.2.0-py3-none-any.whl
Algorithm Hash digest
SHA256 30cc1f2a2acdba94b94496839748c8905fec3d903510c69c935ac897ab011ef6
MD5 66157ce31bbcdfacfbb702211f52b6c8
BLAKE2b-256 4656d2e62d6ffa1dc88b15e1e7548fec17a044b5d0a90a5111b6b5a83f74bdf3

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page