UNPKG

dtamind-components

Version:

Apps integration for Dtamind. Contain Nodes and Credentials.

117 lines (106 loc) 4.17 kB
import { flatten } from 'lodash' import { MemoryVectorStore } from 'langchain/vectorstores/memory' import { Embeddings } from '@langchain/core/embeddings' import { Document } from '@langchain/core/documents' import { INode, INodeData, INodeOutputsValue, INodeParams, IndexingResult } from '../../../src/Interface' import { getBaseClasses } from '../../../src/utils' class InMemoryVectorStore_VectorStores implements INode { label: string name: string version: number description: string type: string icon: string category: string baseClasses: string[] inputs: INodeParams[] outputs: INodeOutputsValue[] constructor() { this.label = 'In-Memory Vector Store' this.name = 'memoryVectorStore' this.version = 1.0 this.type = 'Memory' this.icon = 'memory.svg' this.category = 'Vector Stores' this.description = 'In-memory vectorstore that stores embeddings and does an exact, linear search for the most similar embeddings.' this.baseClasses = [this.type, 'VectorStoreRetriever', 'BaseRetriever'] this.inputs = [ { label: 'Document', name: 'document', type: 'Document', list: true, optional: true }, { label: 'Embeddings', name: 'embeddings', type: 'Embeddings' }, { label: 'Top K', name: 'topK', description: 'Number of top results to fetch. Default to 4', placeholder: '4', type: 'number', optional: true } ] this.outputs = [ { label: 'Memory Retriever', name: 'retriever', baseClasses: this.baseClasses }, { label: 'Memory Vector Store', name: 'vectorStore', baseClasses: [this.type, ...getBaseClasses(MemoryVectorStore)] } ] } //@ts-ignore vectorStoreMethods = { async upsert(nodeData: INodeData): Promise<Partial<IndexingResult>> { const docs = nodeData.inputs?.document as Document[] const embeddings = nodeData.inputs?.embeddings as Embeddings const flattenDocs = docs && docs.length ? flatten(docs) : [] const finalDocs = [] for (let i = 0; i < flattenDocs.length; i += 1) { if (flattenDocs[i] && flattenDocs[i].pageContent) { finalDocs.push(new Document(flattenDocs[i])) } } try { await MemoryVectorStore.fromDocuments(finalDocs, embeddings) return { numAdded: finalDocs.length, addedDocs: finalDocs } } catch (e) { throw new Error(e) } } } async init(nodeData: INodeData): Promise<any> { const docs = nodeData.inputs?.document as Document[] const embeddings = nodeData.inputs?.embeddings as Embeddings const output = nodeData.outputs?.output as string const topK = nodeData.inputs?.topK as string const k = topK ? parseFloat(topK) : 4 const flattenDocs = docs && docs.length ? flatten(docs) : [] const finalDocs = [] for (let i = 0; i < flattenDocs.length; i += 1) { if (flattenDocs[i] && flattenDocs[i].pageContent) { finalDocs.push(new Document(flattenDocs[i])) } } const vectorStore = await MemoryVectorStore.fromDocuments(finalDocs, embeddings) if (output === 'retriever') { const retriever = vectorStore.asRetriever(k) return retriever } else if (output === 'vectorStore') { ;(vectorStore as any).k = k return vectorStore } return vectorStore } } module.exports = { nodeClass: InMemoryVectorStore_VectorStores }