Firebase Genkit provides abstractions that help you build retrieval-augmented generation (RAG) flows, as well as plugins that provide integrations with related tools.
What is RAG?
Retrieval-augmented generation is a technique used to incorporate external sources of information into an LLM’s responses. It's important to be able to do so because, while LLMs are typically trained on a broad body of material, practical use of LLMs often requires specific domain knowledge (for example, you might want to use an LLM to answer customers' questions about your company’s products).
One solution is to fine-tune the model using more specific data. However, this can be expensive both in terms of compute cost and in terms of the effort needed to prepare adequate training data.
In contrast, RAG works by incorporating external data sources into a prompt at the time it's passed to the model. For example, you could imagine the prompt, "What is Bart's relationship to Lisa?" might be expanded ("augmented") by prepending some relevant information, resulting in the prompt, "Homer and Marge's children are named Bart, Lisa, and Maggie. What is Bart's relationship to Lisa?"
This approach has several advantages:
- It can be more cost effective because you don't have to retrain the model.
- You can continuously update your data source and the LLM can immediately make use of the updated information.
- You now have the potential to cite references in your LLM's responses.
On the other hand, using RAG naturally means longer prompts, and some LLM API services charge for each input token you send. Ultimately, you must evaluate the cost tradeoffs for your applications.
RAG is a very broad area and there are many different techniques used to achieve the best quality RAG. The core Genkit framework offers two main abstractions to help you do RAG:
- Indexers: add documents to an "index".
- Embedders: transforms documents into a vector representation
- Retrievers: retrieve documents from an "index", given a query.
These definitions are broad on purpose because Genkit is un-opinionated about
what an "index" is or how exactly documents are retrieved from it. Genkit only
provides a Document
format and everything else is defined by the retriever or
indexer implementation provider.
Indexers
The index is responsible for keeping track of your documents in such a way that you can quickly retrieve relevant documents given a specific query. This is most often accomplished using a vector database, which indexes your documents using multidimensional vectors called embeddings. A text embedding (opaquely) represents the concepts expressed by a passage of text; these are generated using special-purpose ML models. By indexing text using its embedding, a vector database is able to cluster conceptually related text and retrieve documents related to a novel string of text (the query).
Before you can retrieve documents for the purpose of generation, you need to ingest them into your document index. A typical ingestion flow does the following:
Split up large documents into smaller documents so that only relevant portions are used to augment your prompts – "chunking". This is necessary because many LLMs have a limited context window, making it impractical to include entire documents with a prompt.
Genkit doesn't provide built-in chunking libraries; however, there are open source libraries available that are compatible with Genkit.
Generate embeddings for each chunk. Depending on the database you're using, you might explicitly do this with an embedding generation model, or you might use the embedding generator provided by the database.
Add the text chunk and its index to the database.
You might run your ingestion flow infrequently or only once if you are working with a stable source of data. On the other hand, if you are working with data that frequently changes, you might continuously run the ingestion flow (for example, in a Cloud Firestore trigger, whenever a document is updated).
Embedders
An embedder is a function that takes content (text, images, audio, etc.) and creates a numeric vector that encodes the semantic meaning of the original content. As mentioned above, embedders are leveraged as part of the process of indexing, however, they can also be used independently to create embeddings without an index.
Retrievers
A retriever is a concept that encapsulates logic related to any kind of document retrieval. The most popular retrieval cases typically include retrieval from vector stores, however, in Genkit a retriever can be any function that returns data.
To create a retriever, you can use one of the provided implementations or create your own.
Supported indexers, retrievers, and embedders
Genkit provides indexer and retriever support through its plugin system. The following plugins are officially supported:
- Pinecone cloud vector database
In addition, Genkit supports the following vector stores through predefined code templates, which you can customize for your database configuration and schema:
- PostgreSQL with
pgvector
Embedding model support is provided through the following plugins:
Plugin | Models |
---|---|
Google Generative AI | Gecko text embedding |
Google Vertex AI | Gecko text embedding |
Defining a RAG Flow
The following examples show how you could ingest a collection of restaurant menu PDF documents into a vector database and retrieve them for use in a flow that determines what food items are available.
Install dependencies
In this example, we will use the textsplitter
library from langchaingo
and
the ledongthuc/pdf
PDF parsing Library:
go get github.com/tmc/langchaingo/textsplitter
go get github.com/ledongthuc/pdf
Define an Indexer
The following example shows how to create an indexer to ingest a collection of PDF documents and store them in a local vector database.
It uses the local file-based vector similarity retriever that Genkit provides out-of-the box for simple testing and prototyping (do not use in production)
Create the indexer
// Import Genkit's file-based vector retriever, (Don't use in production.)
import "github.com/firebase/genkit/go/plugins/localvec"
// Vertex AI provides the text-embedding-004 embedder model.
import "github.com/firebase/genkit/go/plugins/vertexai"
ctx := context.Background()
err := vertexai.Init(ctx, &vertexai.Config{})
if err != nil {
log.Fatal(err)
}
err = localvec.Init()
if err != nil {
log.Fatal(err)
}
menuPDFIndexer, _, err := localvec.DefineIndexerAndRetriever(
"menuQA",
localvec.Config{
Embedder: vertexai.Embedder("text-embedding-004"),
},
)
if err != nil {
log.Fatal(err)
}
Create chunking config
This example uses the textsplitter
library which provides a simple text
splitter to break up documents into segments that can be vectorized.
The following definition configures the chunking function to return document segments of 200 characters, with an overlap between chunks of 20 characters.
splitter := textsplitter.NewRecursiveCharacter(
textsplitter.WithChunkSize(200),
textsplitter.WithChunkOverlap(20),
)
More chunking options for this library can be found in the
langchaingo
documentation.
Define your indexer flow
genkit.DefineFlow(
"indexMenu",
func(ctx context.Context, path string) (any, error) {
// Extract plain text from the PDF. Wrap the logic in Run so it
// appears as a step in your traces.
pdfText, err := genkit.Run(ctx, "extract", func() (string, error) {
return readPDF(path)
})
if err != nil {
return nil, err
}
// Split the text into chunks. Wrap the logic in Run so it
// appears as a step in your traces.
docs, err := genkit.Run(ctx, "chunk", func() ([]*ai.Document, error) {
chunks, err := splitter.SplitText(pdfText)
if err != nil {
return nil, err
}
var docs []*ai.Document
for _, chunk := range chunks {
docs = append(docs, ai.DocumentFromText(chunk, nil))
}
return docs, nil
})
if err != nil {
return nil, err
}
// Add chunks to the index.
err = ai.Index(ctx, menuPDFIndexer, ai.WithIndexerDocs(docs...))
return nil, err
},
)
// Helper function to extract plain text from a PDF. Excerpted from
// https://github.com/ledongthuc/pdf
func readPDF(path string) (string, error) {
f, r, err := pdf.Open(path)
if f != nil {
defer f.Close()
}
if err != nil {
return "", err
}
reader, err := r.GetPlainText()
if err != nil {
return "", err
}
bytes, err := io.ReadAll(reader)
if err != nil {
return "", err
}
return string(bytes), nil
}
Run the indexer flow
genkit flow:run indexMenu "'menu.pdf'"
After running the indexMenu
flow, the vector database will be seeded with
documents and ready to be used in Genkit flows with retrieval steps.
Define a flow with retrieval
The following example shows how you might use a retriever in a RAG flow. Like the indexer example, this example uses Genkit's file-based vector retriever, which you should not use in production.
ctx := context.Background()
err := vertexai.Init(ctx, &vertexai.Config{})
if err != nil {
log.Fatal(err)
}
err = localvec.Init()
if err != nil {
log.Fatal(err)
}
model := vertexai.Model("gemini-1.5-flash")
_, menuPdfRetriever, err := localvec.DefineIndexerAndRetriever(
"menuQA",
localvec.Config{
Embedder: vertexai.Embedder("text-embedding-004"),
},
)
if err != nil {
log.Fatal(err)
}
genkit.DefineFlow(
"menuQA",
func(ctx context.Context, question string) (string, error) {
// Retrieve text relevant to the user's question.
docs, err := menuPdfRetriever.Retrieve(ctx, &ai.RetrieverRequest{
Document: ai.DocumentFromText(question, nil),
})
if err != nil {
return "", err
}
// Construct a system message containing the menu excerpts you just
// retrieved.
menuInfo := ai.NewSystemTextMessage("Here's the menu context:")
for _, doc := range docs.Documents {
menuInfo.Content = append(menuInfo.Content, doc.Content...)
}
// Call Generate, including the menu information in your prompt.
return ai.GenerateText(ctx, model,
ai.WithMessages(
ai.NewSystemTextMessage(`
You are acting as a helpful AI assistant that can answer questions about the
food available on the menu at Genkit Grub Pub.
Use only the context provided to answer the question. If you don't know, do not
make up an answer. Do not add or change items on the menu.`),
menuInfo,
ai.NewUserTextMessage(question)))
})
Write your own indexers and retrievers
It's also possible to create your own retriever. This is useful if your documents are managed in a document store that is not supported in Genkit (eg: MySQL, Google Drive, etc.). The Genkit SDK provides flexible methods that let you provide custom code for fetching documents.
You can also define custom retrievers that build on top of existing retrievers in Genkit and apply advanced RAG techniques (such as reranking or prompt extension) on top.
For example, suppose you have a custom re-ranking function you want to use. The following example defines a custom retriever that applies your function to the menu retriever defined earlier:
type CustomMenuRetrieverOptions struct {
K int
PreRerankK int
}
advancedMenuRetriever := ai.DefineRetriever(
"custom",
"advancedMenuRetriever",
func(ctx context.Context, req *ai.RetrieverRequest) (*ai.RetrieverResponse, error) {
// Handle options passed using our custom type.
opts, _ := req.Options.(CustomMenuRetrieverOptions)
// Set fields to default values when either the field was undefined
// or when req.Options is not a CustomMenuRetrieverOptions.
if opts.K == 0 {
opts.K = 3
}
if opts.PreRerankK == 0 {
opts.PreRerankK = 10
}
// Call the retriever as in the simple case.
response, err := menuPDFRetriever.Retrieve(ctx, &ai.RetrieverRequest{
Document: req.Document,
Options: localvec.RetrieverOptions{K: opts.PreRerankK},
})
if err != nil {
return nil, err
}
// Re-rank the returned documents using your custom function.
rerankedDocs := rerank(response.Documents)
response.Documents = rerankedDocs[:opts.K]
return response, nil
},
)