rigochat-node-3 / server.js
Z User
init: RigoChat-7B worker node 3
72be8d4
Raw
History Blame Contribute Delete
8.85 kB
/**
* RigoChat Worker β€” Distributed Inference Node
* ================================================
* Lightweight HF Space that loads RigoChat-7B-v2 and exposes
* an /inference endpoint. Multiple workers can be combined
* via Promise.any for faster responses.
*/
import http from 'http';
import { existsSync, mkdirSync, readdirSync } from 'fs';
import path from 'path';
// ── Config ──────────────────────────────────────────────────────────────────
const PORT = parseInt(process.env.PORT ?? '7860');
const MODEL_DIR = process.env.MODEL_DIR ?? './models';
const MODEL_REPO = process.env.MODEL_REPO ?? 'IIC/RigoChat-7b-v2-GGUF';
const MODEL_FILE = process.env.MODEL_FILE ?? 'rigochat-7b-v2-Q4_K_M.gguf';
const CTX_SIZE = parseInt(process.env.CTX_SIZE ?? '4096');
const WORKER_ID = process.env.SPACE_ID ?? `worker-${Math.random().toString(36).slice(2, 6)}`;
const AUTH_KEY = process.env.WORKER_KEY ?? 'zelin-cluster'; // Simple auth
// ── State ───────────────────────────────────────────────────────────────────
let _model = null;
let _ready = false;
let _loading = false;
let _stats = { requests: 0, totalMs: 0, errors: 0, avgMs: 0 };
// ── Load Model ──────────────────────────────────────────────────────────────
async function loadModel() {
if (_ready || _loading) return;
_loading = true;
const start = Date.now();
try {
console.log(`[Worker] Loading ${MODEL_FILE}...`);
mkdirSync(MODEL_DIR, { recursive: true });
const { getLlama } = await import('node-llama-cpp');
const llama = await getLlama();
const modelPath = path.join(MODEL_DIR, MODEL_FILE);
// Download if needed
if (!existsSync(modelPath)) {
// Check for HF-prefixed names
const files = readdirSync(MODEL_DIR).filter(f => f.endsWith('.gguf'));
const found = files.find(f => f.includes('rigochat') || f.includes('RigoChat'));
if (!found) {
console.log(`[Worker] Downloading ${MODEL_FILE} (~1GB)...`);
const { createModelDownloader } = await import('node-llama-cpp');
const dl = await createModelDownloader({
modelUri: `hf:${MODEL_REPO}/${MODEL_FILE}`,
dirPath: MODEL_DIR,
onProgress: ({ downloadedSize, totalSize }) => {
const pct = totalSize ? Math.round(downloadedSize / totalSize * 100) : '?';
process.stdout.write(`\r[Worker] Downloading... ${pct}%`);
},
});
await dl.download();
console.log('\n[Worker] Download complete βœ…');
}
}
// Find actual model file
let actualPath = modelPath;
if (!existsSync(modelPath)) {
const files = readdirSync(MODEL_DIR).filter(f => f.endsWith('.gguf'));
const found = files.find(f => f.includes('rigochat') || f.includes('RigoChat'));
if (found) actualPath = path.join(MODEL_DIR, found);
}
console.log('[Worker] Loading model into memory...');
_model = await llama.loadModel({ modelPath: actualPath, gpuLayers: 0 });
_ready = true;
_loading = false;
const elapsed = ((Date.now() - start) / 1000).toFixed(1);
console.log(`[Worker] βœ… Ready in ${elapsed}s β€” ${WORKER_ID}`);
} catch (err) {
_loading = false;
console.error('[Worker] Load error:', err.message);
}
}
// ── Inference ───────────────────────────────────────────────────────────────
async function infer(messages, maxTokens = 300, temperature = 0.7) {
if (!_model) throw new Error('Model not loaded');
const { LlamaChatSession } = await import('node-llama-cpp');
const ctx = await _model.createContext({ contextSize: CTX_SIZE });
const systemMsg = messages.find(m => m.role === 'system')?.content ?? '';
const stylePrefix = 'Responde en espaΓ±ol casual argentino. MΓ‘x 2 lΓ­neas. Sin mayΓΊsculas al inicio. Sin punto final.\n\n';
const sysFinal = systemMsg.includes('espaΓ±ol') ? systemMsg : stylePrefix + systemMsg;
const session = new LlamaChatSession({
contextSequence: ctx.getSequence(),
systemPrompt: sysFinal,
});
const userMsgs = messages.filter(m => m.role !== 'system');
const lastUser = userMsgs[userMsgs.length - 1];
// Feed history
for (const msg of userMsgs.slice(0, -1)) {
await session.prompt(msg.content ?? '', { maxTokens: 1 }).catch(() => {});
}
let result = '';
if (lastUser) {
result = await session.prompt(lastUser.content ?? '', {
maxTokens,
temperature,
topP: 0.9,
topK: 40,
minP: 0.05,
repeatPenalty: { penalty: 1.35, lastTokens: 96, frequencyPenalty: 0.1, presencePenalty: 0.05 },
});
}
session.dispose?.();
ctx.dispose?.();
return result.trim();
}
// ── HTTP Server ─────────────────────────────────────────────────────────────
const server = http.createServer(async (req, res) => {
// CORS
res.setHeader('Access-Control-Allow-Origin', '*');
res.setHeader('Access-Control-Allow-Methods', 'GET, POST, OPTIONS');
res.setHeader('Access-Control-Allow-Headers', 'Content-Type, Authorization');
if (req.method === 'OPTIONS') { res.writeHead(204); res.end(); return; }
const url = new URL(req.url, `http://localhost:${PORT}`);
// Health check
if (url.pathname === '/health') {
res.writeHead(200, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({
status: _ready ? 'ready' : (_loading ? 'loading' : 'error'),
worker: WORKER_ID,
model: MODEL_FILE,
uptime: process.uptime(),
memory: Math.round(process.memoryUsage().heapUsed / 1024 / 1024) + 'MB',
stats: _stats,
}));
return;
}
// Inference endpoint
if (url.pathname === '/inference' && req.method === 'POST') {
// Simple auth
const auth = req.headers['authorization'];
if (auth !== `Bearer ${AUTH_KEY}`) {
res.writeHead(401, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({ error: 'Unauthorized' }));
return;
}
if (!_ready) {
res.writeHead(503, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({ error: 'Model not ready', status: _loading ? 'loading' : 'error' }));
return;
}
try {
const body = await new Promise((resolve, reject) => {
let data = '';
req.on('data', c => data += c);
req.on('end', () => resolve(JSON.parse(data)));
req.on('error', reject);
setTimeout(() => reject(new Error('Timeout')), 30000);
});
const { messages, maxTokens = 300, temperature = 0.7 } = body;
if (!messages?.length) {
res.writeHead(400, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({ error: 'messages required' }));
return;
}
const start = Date.now();
const result = await infer(messages, maxTokens, temperature);
const ms = Date.now() - start;
_stats.requests++;
_stats.totalMs += ms;
_stats.avgMs = Math.round(_stats.totalMs / _stats.requests);
res.writeHead(200, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({
result,
worker: WORKER_ID,
latencyMs: ms,
tokens: result.split(/\s+/).length,
}));
} catch (err) {
_stats.errors++;
res.writeHead(500, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({ error: err.message, worker: WORKER_ID }));
}
return;
}
// Root
if (url.pathname === '/') {
res.writeHead(200, { 'Content-Type': 'application/json' });
res.end(JSON.stringify({
name: 'rigochat-worker',
version: '1.0.0',
status: _ready ? 'ready' : (_loading ? 'loading' : 'error'),
worker: WORKER_ID,
model: MODEL_FILE,
endpoints: ['/health', '/inference'],
}));
return;
}
res.writeHead(404);
res.end('Not found');
});
// ── Start ───────────────────────────────────────────────────────────────────
server.listen(PORT, '0.0.0.0', () => {
console.log(`[Worker] HTTP server on port ${PORT}`);
console.log(`[Worker] Worker ID: ${WORKER_ID}`);
console.log(`[Worker] Loading model in background...`);
loadModel();
});