const { PineconeClient } = require("@pinecone-database/pinecone"); const { PineconeStore } = require("langchain/vectorstores/pinecone"); const { OpenAI } = require("langchain/llms/openai"); const { ChatOpenAI } = require('langchain/chat_models/openai'); const { VectorDBQAChain, LLMChain, RetrievalQAChain, ConversationalRetrievalQAChain } = require("langchain/chains"); const { OpenAIEmbeddings } = require("langchain/embeddings/openai"); const { VectorStoreRetrieverMemory, BufferMemory } = require("langchain/memory"); const { PromptTemplate } = require("langchain/prompts"); const { RecursiveCharacterTextSplitter } = require("langchain/text_splitter"); const { storeVectorResult, cachedVectorInformation } = require('../files'); const { Configuration, OpenAIApi } = require('openai') const { v4: uuidv4 } = require('uuid'); const toChunks = (arr, size) => { return Array.from({ length: Math.ceil(arr.length / size) }, (_v, i) => arr.slice(i * size, i * size + size) ); } function curateSources(sources = []) { const knownDocs = []; const documents = [] for (const source of sources) { const { metadata = {} } = source if (Object.keys(metadata).length > 0 && !knownDocs.includes(metadata.title)) { documents.push({ ...metadata }) knownDocs.push(metadata.title) } } return documents; } const Pinecone = { connect: async function () { const client = new PineconeClient(); await client.init({ apiKey: process.env.PINECONE_API_KEY, environment: process.env.PINECONE_ENVIRONMENT, }); const pineconeIndex = client.Index(process.env.PINECONE_INDEX); const { status } = await client.describeIndex({ indexName: process.env.PINECONE_INDEX }); if (!status.ready) throw new Error("Pinecode::Index not ready.") return { client, pineconeIndex, indexName: process.env.PINECONE_INDEX }; }, embedder: function () { return new OpenAIEmbeddings({ openAIApiKey: process.env.OPEN_AI_KEY }); }, openai: function () { const config = new Configuration({ apiKey: process.env.OPEN_AI_KEY }) const openai = new OpenAIApi(config); return openai }, embedChunk: async function (openai, textChunk) { const { data: { data } } = await openai.createEmbedding({ model: 'text-embedding-ada-002', input: textChunk }) return data.length > 0 && data[0].hasOwnProperty('embedding') ? data[0].embedding : null }, llm: function () { const model = process.env.OPEN_MODEL_PREF || 'gpt-3.5-turbo' return new OpenAI({ openAIApiKey: process.env.OPEN_AI_KEY, temperature: 0.7, modelName: model }); }, chatLLM: function () { const model = process.env.OPEN_MODEL_PREF || 'gpt-3.5-turbo' return new ChatOpenAI({ openAIApiKey: process.env.OPEN_AI_KEY, temperature: 0.7, modelName: model }); }, totalIndicies: async function () { const { pineconeIndex } = await this.connect(); const { namespaces } = await pineconeIndex.describeIndexStats1(); return Object.values(namespaces).reduce((a, b) => a + (b?.vectorCount || 0), 0) }, namespace: async function (index, namespace = null) { if (!namespace) throw new Error("No namespace value provided."); const { namespaces } = await index.describeIndexStats1(); return namespaces.hasOwnProperty(namespace) ? namespaces[namespace] : null }, hasNamespace: async function (namespace = null) { if (!namespace) return false; const { pineconeIndex } = await this.connect(); return await this.namespaceExists(pineconeIndex, namespace) }, namespaceExists: async function (index, namespace = null) { if (!namespace) throw new Error("No namespace value provided."); const { namespaces } = await index.describeIndexStats1(); return namespaces.hasOwnProperty(namespace) }, deleteVectorsInNamespace: async function (index, namespace = null) { await index.delete1({ namespace, deleteAll: true }) return true }, addDocumentToNamespace: async function (namespace, documentData = {}, fullFilePath = null) { const { DocumentVectors } = require("../../models/vectors"); try { const { pageContent, docId, ...metadata } = documentData if (!pageContent || pageContent.length == 0) return false; console.log("Adding new vectorized document into namespace", namespace); const cacheResult = await cachedVectorInformation(fullFilePath) if (cacheResult.exists) { const { pineconeIndex } = await this.connect(); const { chunks } = cacheResult const documentVectors = [] for (const chunk of chunks) { // Before sending to Pinecone and saving the records to our db // we need to assign the id of each chunk that is stored in the cached file. const newChunks = chunk.map((chunk) => { const id = uuidv4() documentVectors.push({ docId, vectorId: id }); return { ...chunk, id } }) // Push chunks with new ids to pinecone. await pineconeIndex.upsert({ upsertRequest: { vectors: [...newChunks], namespace, } }) } await DocumentVectors.bulkInsert(documentVectors) return true } // If we are here then we are going to embed and store a novel document. // We have to do this manually as opposed to using LangChains `PineconeStore.fromDocuments` // because we then cannot atomically control our namespace to granularly find/remove documents // from vectordb. // https://github.com/hwchase17/langchainjs/blob/2def486af734c0ca87285a48f1a04c057ab74bdf/langchain/src/vectorstores/pinecone.ts#L167 const textSplitter = new RecursiveCharacterTextSplitter({ chunkSize: 1000, chunkOverlap: 20 }); const textChunks = await textSplitter.splitText(pageContent) console.log('Chunks created from document:', textChunks.length) const documentVectors = [] const vectors = [] const openai = this.openai() for (const textChunk of textChunks) { const vectorValues = await this.embedChunk(openai, textChunk); if (!!vectorValues) { const vectorRecord = { id: uuidv4(), values: vectorValues, // [DO NOT REMOVE] // LangChain will be unable to find your text if you embed manually and dont include the `text` key. // https://github.com/hwchase17/langchainjs/blob/2def486af734c0ca87285a48f1a04c057ab74bdf/langchain/src/vectorstores/pinecone.ts#L64 metadata: { ...metadata, text: textChunk }, } vectors.push(vectorRecord); documentVectors.push({ docId, vectorId: vectorRecord.id }); } else { console.error('Could not use OpenAI to embed document chunk! This document will not be recorded.') } } if (vectors.length > 0) { const chunks = [] const { pineconeIndex } = await this.connect(); console.log('Inserting vectorized chunks into Pinecone.') for (const chunk of toChunks(vectors, 100)) { chunks.push(chunk) await pineconeIndex.upsert({ upsertRequest: { vectors: [...chunk], namespace, } }) } await storeVectorResult(chunks, fullFilePath) } await DocumentVectors.bulkInsert(documentVectors) return true; } catch (e) { console.error('addDocumentToNamespace', e.message) return false; } }, deleteDocumentFromNamespace: async function (namespace, docId) { const { DocumentVectors } = require("../../models/vectors"); const { pineconeIndex } = await this.connect(); if (!await this.namespaceExists(pineconeIndex, namespace)) return; const knownDocuments = await DocumentVectors.where(`docId = '${docId}'`) if (knownDocuments.length === 0) return; const vectorIds = knownDocuments.map((doc) => doc.vectorId); await pineconeIndex.delete1({ ids: vectorIds, namespace, }) const indexes = knownDocuments.map((doc) => doc.id); await DocumentVectors.deleteIds(indexes) return true; }, 'namespace-stats': async function (reqBody = {}) { const { namespace = null } = reqBody if (!namespace) throw new Error("namespace required"); const { pineconeIndex } = await this.connect(); if (!await this.namespaceExists(pineconeIndex, namespace)) throw new Error('Namespace by that name does not exist.'); const stats = await this.namespace(pineconeIndex, namespace) return stats ? stats : { message: 'No stats were able to be fetched from DB' } }, 'delete-namespace': async function (reqBody = {}) { const { namespace = null } = reqBody const { pineconeIndex } = await this.connect(); if (!await this.namespaceExists(pineconeIndex, namespace)) throw new Error('Namespace by that name does not exist.'); const details = await this.namespace(pineconeIndex, namespace); await this.deleteVectorsInNamespace(pineconeIndex, namespace); return { message: `Namespace ${namespace} was deleted along with ${details.vectorCount} vectors.` } }, query: async function (reqBody = {}) { const { namespace = null, input } = reqBody; if (!namespace || !input) throw new Error("Invalid request body"); const { pineconeIndex } = await this.connect(); if (!await this.namespaceExists(pineconeIndex, namespace)) { return { response: null, sources: [], message: 'Invalid query - no documents found for workspace!' } } const vectorStore = await PineconeStore.fromExistingIndex( this.embedder(), { pineconeIndex, namespace } ); const model = this.llm(); const chain = VectorDBQAChain.fromLLM(model, vectorStore, { k: 5, returnSourceDocuments: true, }); const response = await chain.call({ query: input }); return { response: response.text, sources: curateSources(response.sourceDocuments), message: false } }, // This implementation of chat also expands the memory of the chat itself // and adds more tokens to the PineconeDB instance namespace chat: async function (reqBody = {}) { const { namespace = null, input } = reqBody; if (!namespace || !input) throw new Error("Invalid request body"); const { pineconeIndex } = await this.connect(); if (!await this.namespaceExists(pineconeIndex, namespace)) throw new Error("Invalid namespace - has it been collected and seeded yet?"); const vectorStore = await PineconeStore.fromExistingIndex( this.embedder(), { pineconeIndex, namespace } ); const memory = new VectorStoreRetrieverMemory({ vectorStoreRetriever: vectorStore.asRetriever(1), memoryKey: "history", }); const model = this.llm(); const prompt = PromptTemplate.fromTemplate(`The following is a friendly conversation between a human and an AI. The AI is very casual and talkative and responds with a friendly tone. If the AI does not know the answer to a question, it truthfully says it does not know. Relevant pieces of previous conversation: {history} Current conversation: Human: {input} AI:`); const chain = new LLMChain({ llm: model, prompt, memory }); const response = await chain.call({ input }); return { response: response.text, sources: [], message: false } }, } module.exports = { Pinecone }