Flowise/packages/components/nodes/retrievers/VoyageAIRetriever/VoyageAIRerankRetriever.ts

133 lines
4.8 KiB
TypeScript

import { BaseRetriever } from '@langchain/core/retrievers'
import { VectorStoreRetriever } from '@langchain/core/vectorstores'
import { ContextualCompressionRetriever } from 'langchain/retrievers/contextual_compression'
import { VoyageAIRerank } from './VoyageAIRerank'
import { getCredentialData, getCredentialParam, handleEscapeCharacters } from '../../../src'
import { ICommonObject, INode, INodeData, INodeOutputsValue, INodeParams } from '../../../src/Interface'
class VoyageAIRerankRetriever_Retrievers implements INode {
label: string
name: string
version: number
description: string
type: string
icon: string
category: string
baseClasses: string[]
inputs: INodeParams[]
credential: INodeParams
badge: string
outputs: INodeOutputsValue[]
constructor() {
this.label = 'Voyage AI Rerank Retriever'
this.name = 'voyageAIRerankRetriever'
this.version = 1.0
this.type = 'VoyageAIRerankRetriever'
this.icon = 'voyageai.png'
this.category = 'Retrievers'
this.description = 'Voyage AI Rerank indexes the documents from most to least semantically relevant to the query.'
this.baseClasses = [this.type, 'BaseRetriever']
this.credential = {
label: 'Connect Credential',
name: 'credential',
type: 'credential',
credentialNames: ['voyageAIApi']
}
this.inputs = [
{
label: 'Vector Store Retriever',
name: 'baseRetriever',
type: 'VectorStoreRetriever'
},
{
label: 'Model Name',
name: 'model',
type: 'options',
options: [
{
label: 'rerank-lite-1',
name: 'rerank-lite-1'
},
{
label: 'rerank-1',
name: 'rerank-1'
}
],
default: 'rerank-lite-1',
optional: true
},
{
label: 'Query',
name: 'query',
type: 'string',
description: 'Query to retrieve documents from retriever. If not specified, user question will be used',
optional: true,
acceptVariable: true
},
{
label: 'Top K',
name: 'topK',
description: 'Number of top results to fetch. Default to the TopK of the Base Retriever',
placeholder: '4',
type: 'number',
additionalParams: true,
optional: true
}
]
this.outputs = [
{
label: 'Voyage AI Rerank Retriever',
name: 'retriever',
baseClasses: this.baseClasses
},
{
label: 'Document',
name: 'document',
description: 'Array of document objects containing metadata and pageContent',
baseClasses: ['Document', 'json']
},
{
label: 'Text',
name: 'text',
description: 'Concatenated string from pageContent of documents',
baseClasses: ['string', 'json']
}
]
}
async init(nodeData: INodeData, input: string, options: ICommonObject): Promise<any> {
const baseRetriever = nodeData.inputs?.baseRetriever as BaseRetriever
const model = nodeData.inputs?.model as string
const query = nodeData.inputs?.query as string
const credentialData = await getCredentialData(nodeData.credential ?? '', options)
const voyageAiApiKey = getCredentialParam('apiKey', credentialData, nodeData)
const topK = nodeData.inputs?.topK as string
const k = topK ? parseFloat(topK) : (baseRetriever as VectorStoreRetriever).k ?? 4
const output = nodeData.outputs?.output as string
const voyageAICompressor = new VoyageAIRerank(voyageAiApiKey, model, k)
const retriever = new ContextualCompressionRetriever({
baseCompressor: voyageAICompressor,
baseRetriever: baseRetriever
})
if (output === 'retriever') return retriever
else if (output === 'document') return await retriever.getRelevantDocuments(query ? query : input)
else if (output === 'text') {
let finaltext = ''
const docs = await retriever.getRelevantDocuments(query ? query : input)
for (const doc of docs) finaltext += `${doc.pageContent}\n`
return handleEscapeCharacters(finaltext, false)
}
return retriever
}
}
module.exports = { nodeClass: VoyageAIRerankRetriever_Retrievers }