Custom retrievers
To create your own retriever, you need to extend the BaseRetriever
class
and implement a _getRelevantDocuments
method that takes a string
as its first parameter and an optional runManager
for tracing.
This method should return an array of Document
s fetched from some source. This process can involve calls to a database or to the web using fetch
.
Note the underscore before _getRelevantDocuments()
- the base class wraps the non-prefixed version in order to automatically handle tracing of the original call.
Here's an example of a custom retriever that returns static documents:
import {
BaseRetriever,
type BaseRetrieverInput,
} from "@langchain/core/retrievers";
import type { CallbackManagerForRetrieverRun } from "@langchain/core/callbacks/manager";
import { Document } from "@langchain/core/documents";
export interface CustomRetrieverInput extends BaseRetrieverInput {}
export class CustomRetriever extends BaseRetriever {
lc_namespace = ["langchain", "retrievers"];
constructor(fields?: CustomRetrieverInput) {
super(fields);
}
async _getRelevantDocuments(
query: string,
runManager?: CallbackManagerForRetrieverRun
): Promise<Document[]> {
// Pass `runManager?.getChild()` when invoking internal runnables to enable tracing
// const additionalDocs = await someOtherRunnable.invoke(params, runManager?.getChild());
return [
// ...additionalDocs,
new Document({
pageContent: `Some document pertaining to ${query}`,
metadata: {},
}),
new Document({
pageContent: `Some other document pertaining to ${query}`,
metadata: {},
}),
];
}
}
Then, you can call .invoke()
as follows:
const retriever = new CustomRetriever({});
await retriever.invoke("LangChain docs");
[
Document {
pageContent: 'Some document pertaining to LangChain docs',
metadata: {}
},
Document {
pageContent: 'Some other document pertaining to LangChain docs',
metadata: {}
}
]