mirror of
https://github.com/Mintplex-Labs/anything-llm.git
synced 2024-11-19 12:40:09 +01:00
61e214aa8c
* Add support for Groq /models endpoint * linting
406 lines
11 KiB
JavaScript
406 lines
11 KiB
JavaScript
const { fetchOpenRouterModels } = require("../AiProviders/openRouter");
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const { perplexityModels } = require("../AiProviders/perplexity");
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const { togetherAiModels } = require("../AiProviders/togetherAi");
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const { ElevenLabsTTS } = require("../TextToSpeech/elevenLabs");
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const SUPPORT_CUSTOM_MODELS = [
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"openai",
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"localai",
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"ollama",
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"native-llm",
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"togetherai",
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"mistral",
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"perplexity",
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"openrouter",
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"lmstudio",
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"koboldcpp",
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"litellm",
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"elevenlabs-tts",
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"groq",
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];
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async function getCustomModels(provider = "", apiKey = null, basePath = null) {
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if (!SUPPORT_CUSTOM_MODELS.includes(provider))
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return { models: [], error: "Invalid provider for custom models" };
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switch (provider) {
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case "openai":
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return await openAiModels(apiKey);
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case "localai":
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return await localAIModels(basePath, apiKey);
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case "ollama":
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return await ollamaAIModels(basePath);
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case "togetherai":
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return await getTogetherAiModels();
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case "mistral":
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return await getMistralModels(apiKey);
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case "native-llm":
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return nativeLLMModels();
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case "perplexity":
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return await getPerplexityModels();
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case "openrouter":
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return await getOpenRouterModels();
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case "lmstudio":
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return await getLMStudioModels(basePath);
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case "koboldcpp":
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return await getKoboldCPPModels(basePath);
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case "litellm":
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return await liteLLMModels(basePath, apiKey);
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case "elevenlabs-tts":
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return await getElevenLabsModels(apiKey);
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case "groq":
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return await getGroqAiModels(apiKey);
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default:
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return { models: [], error: "Invalid provider for custom models" };
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}
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}
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async function openAiModels(apiKey = null) {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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apiKey: apiKey || process.env.OPEN_AI_KEY,
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});
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const allModels = await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`OpenAI:listModels`, e.message);
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return [
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{
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name: "gpt-3.5-turbo",
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id: "gpt-3.5-turbo",
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object: "model",
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created: 1677610602,
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owned_by: "openai",
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organization: "OpenAi",
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},
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{
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name: "gpt-4o",
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id: "gpt-4o",
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object: "model",
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created: 1677610602,
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owned_by: "openai",
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organization: "OpenAi",
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},
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{
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name: "gpt-4",
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id: "gpt-4",
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object: "model",
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created: 1687882411,
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owned_by: "openai",
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organization: "OpenAi",
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},
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{
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name: "gpt-4-turbo",
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id: "gpt-4-turbo",
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object: "model",
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created: 1712361441,
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owned_by: "system",
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organization: "OpenAi",
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},
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{
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name: "gpt-4-32k",
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id: "gpt-4-32k",
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object: "model",
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created: 1687979321,
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owned_by: "openai",
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organization: "OpenAi",
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},
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{
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name: "gpt-3.5-turbo-16k",
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id: "gpt-3.5-turbo-16k",
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object: "model",
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created: 1683758102,
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owned_by: "openai-internal",
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organization: "OpenAi",
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},
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];
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});
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const gpts = allModels
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.filter((model) => model.id.startsWith("gpt"))
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.filter(
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(model) => !model.id.includes("vision") && !model.id.includes("instruct")
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)
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.map((model) => {
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return {
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...model,
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name: model.id,
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organization: "OpenAi",
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};
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});
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const customModels = allModels
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.filter(
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(model) =>
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!model.owned_by.includes("openai") && model.owned_by !== "system"
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)
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.map((model) => {
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return {
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...model,
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name: model.id,
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organization: "Your Fine-Tunes",
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};
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});
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// Api Key was successful so lets save it for future uses
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if ((gpts.length > 0 || customModels.length > 0) && !!apiKey)
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process.env.OPEN_AI_KEY = apiKey;
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return { models: [...gpts, ...customModels], error: null };
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}
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async function localAIModels(basePath = null, apiKey = null) {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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baseURL: basePath || process.env.LOCAL_AI_BASE_PATH,
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apiKey: apiKey || process.env.LOCAL_AI_API_KEY || null,
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});
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const models = await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`LocalAI:listModels`, e.message);
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return [];
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});
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// Api Key was successful so lets save it for future uses
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if (models.length > 0 && !!apiKey) process.env.LOCAL_AI_API_KEY = apiKey;
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return { models, error: null };
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}
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async function getGroqAiModels(_apiKey = null) {
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const { OpenAI: OpenAIApi } = require("openai");
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const apiKey =
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_apiKey === true
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? process.env.GROQ_API_KEY
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: _apiKey || process.env.GROQ_API_KEY || null;
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const openai = new OpenAIApi({
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baseURL: "https://api.groq.com/openai/v1",
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apiKey,
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});
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const models = (
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await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`GroqAi:listModels`, e.message);
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return [];
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})
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).filter(
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(model) => !model.id.includes("whisper") && !model.id.includes("tool-use")
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);
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// Api Key was successful so lets save it for future uses
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if (models.length > 0 && !!apiKey) process.env.GROQ_API_KEY = apiKey;
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return { models, error: null };
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}
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async function liteLLMModels(basePath = null, apiKey = null) {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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baseURL: basePath || process.env.LITE_LLM_BASE_PATH,
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apiKey: apiKey || process.env.LITE_LLM_API_KEY || null,
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});
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const models = await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`LiteLLM:listModels`, e.message);
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return [];
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});
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// Api Key was successful so lets save it for future uses
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if (models.length > 0 && !!apiKey) process.env.LITE_LLM_API_KEY = apiKey;
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return { models, error: null };
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}
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async function getLMStudioModels(basePath = null) {
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try {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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baseURL: basePath || process.env.LMSTUDIO_BASE_PATH,
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apiKey: null,
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});
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const models = await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`LMStudio:listModels`, e.message);
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return [];
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});
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return { models, error: null };
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} catch (e) {
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console.error(`LMStudio:getLMStudioModels`, e.message);
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return { models: [], error: "Could not fetch LMStudio Models" };
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}
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}
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async function getKoboldCPPModels(basePath = null) {
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try {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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baseURL: basePath || process.env.KOBOLD_CPP_BASE_PATH,
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apiKey: null,
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});
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const models = await openai.models
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.list()
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.then((results) => results.data)
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.catch((e) => {
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console.error(`KoboldCPP:listModels`, e.message);
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return [];
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});
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return { models, error: null };
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} catch (e) {
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console.error(`KoboldCPP:getKoboldCPPModels`, e.message);
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return { models: [], error: "Could not fetch KoboldCPP Models" };
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}
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}
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async function ollamaAIModels(basePath = null) {
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let url;
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try {
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let urlPath = basePath ?? process.env.OLLAMA_BASE_PATH;
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new URL(urlPath);
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if (urlPath.split("").slice(-1)?.[0] === "/")
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throw new Error("BasePath Cannot end in /!");
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url = urlPath;
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} catch {
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return { models: [], error: "Not a valid URL." };
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}
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const models = await fetch(`${url}/api/tags`)
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.then((res) => {
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if (!res.ok)
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throw new Error(`Could not reach Ollama server! ${res.status}`);
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return res.json();
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})
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.then((data) => data?.models || [])
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.then((models) =>
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models.map((model) => {
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return { id: model.name };
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})
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)
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.catch((e) => {
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console.error(e);
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return [];
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});
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return { models, error: null };
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}
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async function getTogetherAiModels() {
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const knownModels = togetherAiModels();
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if (!Object.keys(knownModels).length === 0)
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return { models: [], error: null };
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const models = Object.values(knownModels).map((model) => {
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return {
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id: model.id,
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organization: model.organization,
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name: model.name,
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};
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});
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return { models, error: null };
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}
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async function getPerplexityModels() {
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const knownModels = perplexityModels();
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if (!Object.keys(knownModels).length === 0)
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return { models: [], error: null };
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const models = Object.values(knownModels).map((model) => {
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return {
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id: model.id,
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name: model.name,
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};
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});
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return { models, error: null };
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}
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async function getOpenRouterModels() {
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const knownModels = await fetchOpenRouterModels();
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if (!Object.keys(knownModels).length === 0)
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return { models: [], error: null };
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const models = Object.values(knownModels).map((model) => {
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return {
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id: model.id,
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organization: model.organization,
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name: model.name,
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};
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});
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return { models, error: null };
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}
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async function getMistralModels(apiKey = null) {
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const { OpenAI: OpenAIApi } = require("openai");
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const openai = new OpenAIApi({
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apiKey: apiKey || process.env.MISTRAL_API_KEY || null,
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baseURL: "https://api.mistral.ai/v1",
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});
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const models = await openai.models
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.list()
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.then((results) =>
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results.data.filter((model) => !model.id.includes("embed"))
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)
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.catch((e) => {
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console.error(`Mistral:listModels`, e.message);
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return [];
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});
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// Api Key was successful so lets save it for future uses
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if (models.length > 0 && !!apiKey) process.env.MISTRAL_API_KEY = apiKey;
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return { models, error: null };
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}
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function nativeLLMModels() {
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const fs = require("fs");
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const path = require("path");
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const storageDir = path.resolve(
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process.env.STORAGE_DIR
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? path.resolve(process.env.STORAGE_DIR, "models", "downloaded")
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: path.resolve(__dirname, `../../storage/models/downloaded`)
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);
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if (!fs.existsSync(storageDir))
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return { models: [], error: "No model/downloaded storage folder found." };
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const files = fs
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.readdirSync(storageDir)
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.filter((file) => file.toLowerCase().includes(".gguf"))
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.map((file) => {
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return { id: file, name: file };
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});
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return { models: files, error: null };
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}
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async function getElevenLabsModels(apiKey = null) {
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const models = (await ElevenLabsTTS.voices(apiKey)).map((model) => {
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return {
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id: model.voice_id,
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organization: model.category,
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name: model.name,
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};
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});
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if (models.length === 0) {
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return {
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models: [
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{
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id: "21m00Tcm4TlvDq8ikWAM",
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organization: "premade",
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name: "Rachel (default)",
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},
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],
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error: null,
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};
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}
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if (models.length > 0 && !!apiKey) process.env.TTS_ELEVEN_LABS_KEY = apiKey;
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return { models, error: null };
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}
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module.exports = {
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getCustomModels,
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};
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