dtamind-components
Version:
Apps integration for Dtamind. Contain Nodes and Credentials.
124 lines • 4.86 kB
JavaScript
;
Object.defineProperty(exports, "__esModule", { value: true });
const lodash_1 = require("lodash");
const documents_1 = require("@langchain/core/documents");
const faiss_1 = require("@langchain/community/vectorstores/faiss");
const utils_1 = require("../../../src/utils");
class Faiss_VectorStores {
constructor() {
//@ts-ignore
this.vectorStoreMethods = {
async upsert(nodeData) {
const docs = nodeData.inputs?.document;
const embeddings = nodeData.inputs?.embeddings;
const basePath = nodeData.inputs?.basePath;
const flattenDocs = docs && docs.length ? (0, lodash_1.flatten)(docs) : [];
const finalDocs = [];
for (let i = 0; i < flattenDocs.length; i += 1) {
if (flattenDocs[i] && flattenDocs[i].pageContent) {
finalDocs.push(new documents_1.Document(flattenDocs[i]));
}
}
try {
const vectorStore = await faiss_1.FaissStore.fromDocuments(finalDocs, embeddings);
await vectorStore.save(basePath);
// Avoid illegal invocation error
vectorStore.similaritySearchVectorWithScore = async (query, k) => {
return await similaritySearchVectorWithScore(query, k, vectorStore);
};
return { numAdded: finalDocs.length, addedDocs: finalDocs };
}
catch (e) {
throw new Error(e);
}
}
};
this.label = 'Faiss';
this.name = 'faiss';
this.version = 1.0;
this.type = 'Faiss';
this.icon = 'faiss.svg';
this.category = 'Vector Stores';
this.description = 'Upsert embedded data and perform similarity search upon query using Faiss library from Meta';
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: 'Base Path to load',
name: 'basePath',
description: 'Path to load faiss.index file',
placeholder: `C:\\Users\\User\\Desktop`,
type: 'string'
},
{
label: 'Top K',
name: 'topK',
description: 'Number of top results to fetch. Default to 4',
placeholder: '4',
type: 'number',
additionalParams: true,
optional: true
}
];
this.outputs = [
{
label: 'Faiss Retriever',
name: 'retriever',
baseClasses: this.baseClasses
},
{
label: 'Faiss Vector Store',
name: 'vectorStore',
baseClasses: [this.type, ...(0, utils_1.getBaseClasses)(faiss_1.FaissStore)]
}
];
}
async init(nodeData) {
const embeddings = nodeData.inputs?.embeddings;
const basePath = nodeData.inputs?.basePath;
const output = nodeData.outputs?.output;
const topK = nodeData.inputs?.topK;
const k = topK ? parseFloat(topK) : 4;
const vectorStore = await faiss_1.FaissStore.load(basePath, embeddings);
// Avoid illegal invocation error
vectorStore.similaritySearchVectorWithScore = async (query, k) => {
return await similaritySearchVectorWithScore(query, k, vectorStore);
};
if (output === 'retriever') {
const retriever = vectorStore.asRetriever(k);
return retriever;
}
else if (output === 'vectorStore') {
;
vectorStore.k = k;
return vectorStore;
}
return vectorStore;
}
}
const similaritySearchVectorWithScore = async (query, k, vectorStore) => {
const index = vectorStore.index;
if (k > index.ntotal()) {
const total = index.ntotal();
console.warn(`k (${k}) is greater than the number of elements in the index (${total}), setting k to ${total}`);
k = total;
}
const result = index.search(query, k);
return result.labels.map((id, index) => {
const uuid = vectorStore._mapping[id];
return [vectorStore.docstore.search(uuid), result.distances[index]];
});
};
module.exports = { nodeClass: Faiss_VectorStores };
//# sourceMappingURL=Faiss.js.map