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Retriever#

Concept#

Retrievers are responsible for fetching the most relevant context given a user query (or chat message).

It can be built on top of indexes, but can also be defined independently. It is used as a key building block in query engines (and Chat Engines) for retrieving relevant context.

Tip

Confused about where retriever fits in the RAG workflow? Read about high-level concepts

Usage Pattern#

Get started with:

retriever = index.as_retriever()
nodes = retriever.retrieve("Who is Paul Graham?")

Get Started#

Get a retriever from index:

retriever = index.as_retriever()

Retrieve relevant context for a question:

nodes = retriever.retrieve("Who is Paul Graham?")

Note: To learn how to build an index, see Indexing

High-Level API#

Selecting a Retriever#

You can select the index-specific retriever class via retriever_mode. For example, with a SummaryIndex:

retriever = summary_index.as_retriever(
    retriever_mode="llm",
)

This creates a SummaryIndexLLMRetriever on top of the summary index.

See Retriever Modes for a full list of (index-specific) retriever modes and the retriever classes they map to.

Configuring a Retriever#

In the same way, you can pass kwargs to configure the selected retriever.

Note: take a look at the API reference for the selected retriever class' constructor parameters for a list of valid kwargs.

For example, if we selected the "llm" retriever mode, we might do the following:

retriever = summary_index.as_retriever(
    retriever_mode="llm",
    choice_batch_size=5,
)

Low-Level Composition API#

You can use the low-level composition API if you need more granular control.

To achieve the same outcome as above, you can directly import and construct the desired retriever class:

from llama_index.core.retrievers import SummaryIndexLLMRetriever

retriever = SummaryIndexLLMRetriever(
    index=summary_index,
    choice_batch_size=5,
)

Examples#

See more examples in the retrievers guide.