const { NativeEmbedder } = require("../../EmbeddingEngines/native"); const { LLMPerformanceMonitor, } = require("../../helpers/chat/LLMPerformanceMonitor"); const { v4: uuidv4 } = require("uuid"); const { writeResponseChunk, clientAbortedHandler, } = require("../../helpers/chat/responses"); const { MODEL_MAP } = require("../modelMap"); class SambaNovaLLM { constructor(embedder = null, modelPreference = null) { if (!process.env.SAMBANOVA_LLM_API_KEY) throw new Error("No SambaNova API key was set."); this.className = "SambaNovaLLM"; const { OpenAI: OpenAIApi } = require("openai"); this.openai = new OpenAIApi({ baseURL: "https://api.sambanova.ai/v1", apiKey: process.env.SAMBANOVA_LLM_API_KEY, }); this.model = modelPreference || process.env.SAMBANOVA_LLM_MODEL_PREF; this.limits = { history: this.promptWindowLimit() * 0.15, system: this.promptWindowLimit() * 0.15, user: this.promptWindowLimit() * 0.7, }; this.embedder = embedder ?? new NativeEmbedder(); this.defaultTemp = 0.7; this.log( `Initialized ${this.model} with context window ${this.promptWindowLimit()}` ); } log(text, ...args) { console.log(`\x1b[36m[${this.className}]\x1b[0m ${text}`, ...args); } #appendContext(contextTexts = []) { if (!contextTexts || !contextTexts.length) return ""; return ( "\nContext:\n" + contextTexts .map((text, i) => { return `[CONTEXT ${i}]:\n${text}\n[END CONTEXT ${i}]\n\n`; }) .join("") ); } streamingEnabled() { return "streamGetChatCompletion" in this; } static promptWindowLimit(modelName) { return MODEL_MAP.get("sambanova", modelName) ?? 131072; } promptWindowLimit() { return MODEL_MAP.get("sambanova", this.model) ?? 131072; } async isValidChatCompletionModel(modelName = "") { return !!modelName; // name just needs to exist } /** * Generates appropriate content array for a message + attachments. * @param {{userPrompt:string, attachments: import("../../helpers").Attachment[]}} * @returns {string|object[]} */ #generateContent({ userPrompt, attachments = [] }) { if (!attachments.length) return userPrompt; const content = [{ type: "text", text: userPrompt }]; for (let attachment of attachments) { content.push({ type: "image_url", image_url: { url: attachment.contentString, }, }); } return content.flat(); } /** * Construct the user prompt for this model. * @param {{attachments: import("../../helpers").Attachment[]}} param0 * @returns */ constructPrompt({ systemPrompt = "", contextTexts = [], chatHistory = [], userPrompt = "", attachments = [], }) { const prompt = { role: "system", content: `${systemPrompt}${this.#appendContext(contextTexts)}`, }; return [ prompt, ...chatHistory, { role: "user", content: this.#generateContent({ userPrompt, attachments }), }, ]; } async getChatCompletion(messages = null, { temperature = 0.7 }) { const result = await LLMPerformanceMonitor.measureAsyncFunction( this.openai.chat.completions .create({ model: this.model, messages, temperature, }) .catch((e) => { throw new Error(e.message); }) ); if ( !result.output.hasOwnProperty("choices") || result.output.choices.length === 0 ) return null; return { textResponse: result.output.choices[0].message.content, metrics: { prompt_tokens: result.output.usage?.prompt_tokens || 0, completion_tokens: result.output.usage?.completion_tokens || 0, total_tokens: result.output.usage?.total_tokens || 0, outputTps: result.output.usage?.total_tokens_per_sec || 0, duration: result.duration, model: this.model, provider: this.className, timestamp: new Date(), }, }; } async streamGetChatCompletion(messages = null, { temperature = 0.7 }) { const measuredStreamRequest = await LLMPerformanceMonitor.measureStream({ func: this.openai.chat.completions.create({ model: this.model, stream: true, messages, temperature, stream_options: { include_usage: true, }, }), messages, runPromptTokenCalculation: false, modelTag: this.model, provider: this.className, }); return measuredStreamRequest; } handleStream(response, stream, responseProps) { const { uuid = uuidv4(), sources = [] } = responseProps; let hasUsageMetrics = false; let usage = { prompt_tokens: 0, total_tokens: 0, outputTps: 0, completion_tokens: 0, }; return new Promise(async (resolve) => { let fullText = ""; const handleAbort = () => { stream?.endMeasurement(usage); clientAbortedHandler(resolve, fullText); }; response.on("close", handleAbort); try { for await (const chunk of stream) { const message = chunk?.choices?.[0]; const token = message?.delta?.content; if ( chunk.hasOwnProperty("usage") && // exists !!chunk.usage && Object.values(chunk.usage).length > 0 ) { if (chunk.usage.hasOwnProperty("prompt_tokens")) usage.prompt_tokens = Number(chunk.usage.prompt_tokens); if (chunk.usage.hasOwnProperty("completion_tokens")) usage.completion_tokens = Number(chunk.usage.completion_tokens); if (chunk.usage.hasOwnProperty("total_tokens")) usage.total_tokens = Number(chunk.usage.total_tokens); if (chunk.usage.hasOwnProperty("total_tokens_per_sec")) usage.outputTps = Number(chunk.usage.total_tokens_per_sec); hasUsageMetrics = true; } if (token) { fullText += token; if (!hasUsageMetrics) usage.completion_tokens++; writeResponseChunk(response, { uuid, sources: [], type: "textResponseChunk", textResponse: token, close: false, error: false, }); } if ( message?.hasOwnProperty("finish_reason") && message.finish_reason !== "" && message.finish_reason !== null ) { writeResponseChunk(response, { uuid, sources, type: "textResponseChunk", textResponse: "", close: true, error: false, }); } } response.removeListener("close", handleAbort); stream?.endMeasurement(usage); resolve(fullText); } catch (e) { this.log(`\x1b[43m\x1b[34m[STREAMING ERROR]\x1b[0m ${e.message}`); writeResponseChunk(response, { uuid, type: "abort", textResponse: null, sources: [], close: true, error: e.message, }); stream?.endMeasurement(usage); resolve(fullText); } }); } // Simple wrapper for dynamic embedder & normalize interface for all LLM implementations async embedTextInput(textInput) { return await this.embedder.embedTextInput(textInput); } async embedChunks(textChunks = []) { return await this.embedder.embedChunks(textChunks); } async compressMessages(promptArgs = {}, rawHistory = []) { const { messageArrayCompressor } = require("../../helpers/chat"); const messageArray = this.constructPrompt(promptArgs); return await messageArrayCompressor(this, messageArray, rawHistory); } } module.exports = { SambaNovaLLM, };