- matrix-gateway: POST /internal/matrix/presence/online endpoint - usePresenceHeartbeat hook with activity tracking - Auto away after 5 min inactivity - Offline on page close/visibility change - Integrated in MatrixChatRoom component
9.4 KiB
9.4 KiB
📊 Node #2 Current State — MacBook Pro M4 Max
Дата: 2025-11-22
Node ID: node-2-macbook-m4max
Статус: 🟡 Частково налаштовано (Development Services Running)
✅ Що вже працює
🤖 AI/LLM Services
1. Ollama (Подвійна інсталяція)
# Native Ollama (via Pieces OS)
curl http://localhost:11434/api/tags
# Status: ✅ Running
# PID: 1999
# Process: /Applications/Pieces OS.app/Contents/Resources/ollama-darwin serve
# Docker Ollama
curl http://localhost:11435/api/tags
# Container: ollama-ai
# Status: ✅ Running (20 hours uptime)
# Port: 0.0.0.0:11435->11434/tcp
Встановлені моделі (8 моделей, завантажено 2025-11-21):
mistral-nemo:12b(7.1 GB, Q4_0, 12.2B params) — завантажено 14 годин томуgemma2:27b(15 GB, Q4_0, 27.2B params) — завантажено 15 годин томуdeepseek-coder:33b(18 GB, Q4_0, 33B params) — завантажено 15 годин томуqwen2.5-coder:32b(19 GB, Q4_K_M, 32.8B params) — завантажено 15 годин томуdeepseek-r1:70b(42 GB, Q4_K_M, 70.6B params) — завантажено 15 годин томуstarcoder2:3b(1.7 GB, Q4_0, 3B params) — завантажено 15 годин томуphi3:latest(2.2 GB, Q4_0, 3.8B params) — завантажено 17 годин томуgpt-oss:latest(13 GB, MXFP4, 20.9B params) — завантажено 17 годин тому
Загальний розмір: ~118 GB моделей
Загальна кількість параметрів: ~201.5B параметрів
2. LobeChat (AI Chat Interface)
# Web UI: http://localhost:3210
curl http://localhost:3210
# Container: lobe-chat
# Status: ✅ Running (20 hours uptime)
# Image: lobehub/lobe-chat
🗄️ Database & Storage Services
3. Qdrant (Vector Database)
# API: http://localhost:6333
curl http://localhost:6333/healthz
# Container: qdrant-vector-db
# Status: ⚠️ Unhealthy (but API responds)
# Image: qdrant/qdrant:latest
# Ports: 0.0.0.0:6333-6335->6333-6335/tcp
# Volume: apple_qdrant_storage
Проблема: Docker показує unhealthy, але API працює. Потребує перевірки логів.
4. MeiliSearch (Full-text Search)
# API: http://localhost:7700
curl http://localhost:7700
# Container: meilisearch-search
# Status: ✅ Healthy (20 hours uptime)
# Image: getmeili/meilisearch:v1.11
📊 Development Tools
5. Jupyter Lab (Data Science Notebook)
# Web UI: http://localhost:8888
curl http://localhost:8888
# Container: jupyter-lab
# Status: ✅ Healthy (20 hours uptime)
# Image: jupyter/datascience-notebook:latest
6. NATS JetStream (Message Broker)
# NATS: nats://localhost:4222
# Management: http://localhost:8222
nc -zv localhost 4222
# Container: nats-jetstream
# Status: ✅ Running (3 hours uptime)
# Image: nats:latest
# Ports: 4222 (client), 6222 (routing), 8222 (monitoring)
📦 Docker Infrastructure
Volumes
docker volume ls | grep -E "(dagi|daarion|qdrant)"
apple_qdrant_storage— Qdrant vector embeddingsmicrodao-daarion_rag-model-cache— RAG model cache
Networks
daarion-network(bridge) — Custom Docker network
Data Directories
/Users/apple/github-projects/microdao-daarion/data/rbac/— RBAC database (empty, ready)
🔧 Configuration Files
✅ Present
.env— Environment variables (2.3 KB, configured).env.example— Template (4.6 KB)docker-compose.yml— Services definition (7.1 KB, updated 2025-01-17)router-config.yml— Router rules (7.4 KB, updated 2025-01-17)router-config.yml.backup— Config backup (4.5 KB)
🐍 Python Environment
Installed Packages
pip3 list | grep -E "(fastapi|uvicorn|httpx|pydantic|openai)"
- ✅
httpx 0.28.1— HTTP client for async requests - ✅
openai 2.8.0— OpenAI SDK - ✅
pydantic 2.12.4— Data validation - ✅
pydantic_core 2.41.5— Pydantic core - ❌
fastapi— MISSING (need for DAGI Router) - ❌
uvicorn— MISSING (need for FastAPI server)
Required Installation
pip3 install fastapi uvicorn python-multipart aiofiles
🚫 Що НЕ працює (потрібно запустити)
DAGI Stack Core Services
1. DAGI Router (Port 9102)
# Status: ❌ Not running
# Purpose: Main routing engine for AI requests
# Command to start:
python3 main_v2.py --config router-config.yml --port 9102
2. Memory Service (Port 8000)
# Status: ❌ Not running
# Purpose: Agent memory and context management
# Requires: PostgreSQL
# Command to start:
cd services/memory-service && python3 main.py
3. DevTools Backend (Port 8008)
# Status: ❌ Not running
# Purpose: File operations, test execution
# Command to start:
cd devtools-backend && python3 main.py
4. Bot Gateway (Port 9300)
# Status: ❌ Not running
# Purpose: Telegram/Discord bot integration
# Command to start:
cd gateway-bot && python3 main.py
5. RBAC Service (Port 9200)
# Status: ❌ Not running
# Purpose: Role-based access control
# Database: SQLite at data/rbac/rbac.db (empty)
# Command to start:
cd microdao && python3 main.py
6. RAG Service (Port 9500)
# Status: ❌ Not running
# Purpose: Document retrieval and Q&A
# Requires: PostgreSQL, embeddings
# Command to start:
cd services/rag-service && python3 main.py
7. Parser Service (Port 9400)
# Status: ❌ Not running
# Purpose: Document parsing and Q&A generation
# Command to start:
cd services/parser-service && python3 main.py
8. CrewAI Orchestrator (Port 9010)
# Status: ❌ Not running
# Purpose: Multi-agent workflow coordination
# Command to start:
cd orchestrator && python3 crewai_backend.py
Supporting Services
9. PostgreSQL (Port 5432)
# Status: ❌ Not running
# Purpose: Memory, RAG, and core data storage
# Database: daarion_memory
# Start via docker-compose:
docker-compose up -d postgres
10. Redis (Port 6379)
# Status: ❌ Not running
# Purpose: Cache and session management
# Start via docker-compose:
docker-compose up -d redis
11. Neo4j (Port 7474/7687)
# Status: ❌ Not running
# Purpose: Graph database for DAO relationships
# Start via docker-compose:
docker-compose up -d neo4j
📋 Action Plan (Priority Order)
Phase 1: Python Environment (5 min)
# Install missing dependencies
pip3 install fastapi uvicorn python-multipart aiofiles sqlalchemy asyncpg
# Verify installation
python3 -c "import fastapi, uvicorn; print('✅ Ready')"
Phase 2: Core Database (10 min)
# Start PostgreSQL
docker-compose up -d postgres
# Wait for ready
sleep 5
# Verify connection
docker exec dagi-postgres pg_isready
# Initialize DAARION memory database
docker exec -it dagi-postgres psql -U postgres -c "CREATE DATABASE daarion_memory;"
Phase 3: DAGI Router (15 min)
# Validate configuration
python3 config_loader.py
# Start router in background
nohup python3 main_v2.py --config router-config.yml --port 9102 > logs/router.log 2>&1 &
# Test health
curl http://localhost:9102/health
Phase 4: Supporting Services (20 min)
# Start Redis
docker-compose up -d redis
# Start Memory Service
cd services/memory-service
nohup python3 main.py > ../../logs/memory.log 2>&1 &
cd ../..
# Test Memory Service
curl http://localhost:8000/health
Phase 5: Optional Services (on-demand)
# DevTools (for development)
cd devtools-backend
python3 main.py
# RBAC (for microDAO features)
cd microdao
python3 main.py
# RAG Service (for document Q&A)
cd services/rag-service
python3 main.py
🔍 Diagnostics Commands
Check Running Services
# All Docker containers
docker ps -a
# All listening ports
lsof -i -P | grep LISTEN | grep -E "(9102|8000|8008|3210|6333|11434)"
# Python processes
ps aux | grep python | grep -E "(main|uvicorn)"
Check Logs
# Docker logs
docker logs qdrant-vector-db
docker logs lobe-chat
docker logs ollama-ai
# Application logs (when services start)
tail -f logs/router.log
tail -f logs/memory.log
Test Services
# Ollama native
curl http://localhost:11434/api/tags
# Ollama Docker
curl http://localhost:11435/api/tags
# LobeChat
curl http://localhost:3210
# Qdrant
curl http://localhost:6333/healthz
# MeiliSearch
curl http://localhost:7700/health
🔗 Related Documentation
- NODE-2-MACBOOK-SPECS.md — Complete hardware specs
- INFRASTRUCTURE.md — Network nodes overview
- WARP.md — Main developer guide
- docker-compose.yml — Service definitions
📊 Resource Usage (Current)
CPU & Memory
# Check current usage
top -l 1 | head -n 10
# Docker resource usage
docker stats --no-stream
Estimated current usage:
- CPU: ~10-15% (background services)
- RAM: ~8-10 GB (Ollama + containers)
- Disk: ~275 GB used / 2 TB total
Available for DAGI Stack:
- CPU: 16 cores (mostly free)
- RAM: ~54 GB free
- Disk: 1.72 TB free
Last Updated: 2025-01-17 by WARP AI
Status: 🟡 Partially Ready — Development services running, core DAGI services need to be started
Next Command: pip3 install fastapi uvicorn && docker-compose up -d postgres