UNPKG

dtamind-components

Version:

Apps integration for Dtamind. Contain Nodes and Credentials.

109 lines 3.83 kB
"use strict"; Object.defineProperty(exports, "__esModule", { value: true }); const utils_1 = require("../../../src/utils"); const llamaindex_1 = require("llamaindex"); const modelLoader_1 = require("../../../src/modelLoader"); class ChatOpenAI_LlamaIndex_LLMs { constructor() { //@ts-ignore this.loadMethods = { async listModels() { return await (0, modelLoader_1.getModels)(modelLoader_1.MODEL_TYPE.CHAT, 'chatOpenAI_LlamaIndex'); } }; this.label = 'ChatOpenAI'; this.name = 'chatOpenAI_LlamaIndex'; this.version = 2.0; this.type = 'ChatOpenAI'; this.icon = 'openai.svg'; this.category = 'Chat Models'; this.description = 'Wrapper around OpenAI Chat LLM specific for LlamaIndex'; this.baseClasses = [this.type, 'BaseChatModel_LlamaIndex', ...(0, utils_1.getBaseClasses)(llamaindex_1.OpenAI)]; this.tags = ['LlamaIndex']; this.credential = { label: 'Connect Credential', name: 'credential', type: 'credential', credentialNames: ['openAIApi'] }; this.inputs = [ { label: 'Model Name', name: 'modelName', type: 'asyncOptions', loadMethod: 'listModels', default: 'gpt-3.5-turbo' }, { label: 'Temperature', name: 'temperature', type: 'number', step: 0.1, default: 0.9, optional: true }, { label: 'Max Tokens', name: 'maxTokens', type: 'number', step: 1, optional: true, additionalParams: true }, { label: 'Top Probability', name: 'topP', type: 'number', step: 0.1, optional: true, additionalParams: true }, { label: 'Timeout', name: 'timeout', type: 'number', step: 1, optional: true, additionalParams: true }, { label: 'BasePath', name: 'basepath', type: 'string', optional: true, additionalParams: true } ]; } async init(nodeData, _, options) { const temperature = nodeData.inputs?.temperature; const modelName = nodeData.inputs?.modelName; const maxTokens = nodeData.inputs?.maxTokens; const topP = nodeData.inputs?.topP; const timeout = nodeData.inputs?.timeout; const basePath = nodeData.inputs?.basepath; const credentialData = await (0, utils_1.getCredentialData)(nodeData.credential ?? '', options); const openAIApiKey = (0, utils_1.getCredentialParam)('openAIApiKey', credentialData, nodeData); const obj = { temperature: parseFloat(temperature), model: modelName, apiKey: openAIApiKey }; if (basePath) { obj.additionalSessionOptions = { baseURL: basePath }; } if (maxTokens) obj.maxTokens = parseInt(maxTokens, 10); if (topP) obj.topP = parseFloat(topP); if (timeout) obj.timeout = parseInt(timeout, 10); const openai = new llamaindex_1.OpenAISession(obj); const model = new llamaindex_1.OpenAI({ ...obj, session: openai }); return model; } } module.exports = { nodeClass: ChatOpenAI_LlamaIndex_LLMs }; //# sourceMappingURL=ChatOpenAI_LlamaIndex.js.map