Files
microdao-daarion/docs/integrations/dify-integration.md
Ivan Tytar 3cacf67cf5 feat: Initial commit - DAGI Stack v0.2.0 (Phase 2 Complete)
- Router Core with rule-based routing (1530 lines)
- DevTools Backend (file ops, test execution) (393 lines)
- CrewAI Orchestrator (4 workflows, 12 agents) (358 lines)
- Bot Gateway (Telegram/Discord) (321 lines)
- RBAC Service (role resolution) (272 lines)
- Structured logging (utils/logger.py)
- Docker deployment (docker-compose.yml)
- Comprehensive documentation (57KB)
- Test suites (41 tests, 95% coverage)
- Phase 4 roadmap & ecosystem integration plans

Production-ready infrastructure for DAARION microDAOs.
2025-11-15 14:35:24 +01:00

470 lines
10 KiB
Markdown

# Dify Integration Guide
**Use DAGI Router as LLM backend for Dify**
**Status**: Planned
**Version**: 0.3.0 (planned)
**Last Updated**: 2024-11-15
---
## 🎯 Overview
DAGI Router can serve as a custom LLM backend for [Dify](https://dify.ai), enabling:
- **Multi-provider routing**: Route to Ollama, OpenAI, DeepSeek based on rules
- **DevTools integration**: File operations, test execution from Dify workflows
- **CrewAI workflows**: Multi-agent orchestration triggered from Dify
- **RBAC enforcement**: microDAO permissions in Dify apps
---
## 🏗️ Architecture
```
┌──────────────┐
│ Dify UI │
└──────┬───────┘
┌──────────────────┐
│ Dify Backend │
└──────┬───────────┘
│ HTTP POST /v1/chat/completions
┌─────────────────────────────────┐
│ DAGI Router (:9102) │
│ - Convert Dify → DAGI format │
│ - Route to LLM/DevTools/CrewAI │
│ - Convert DAGI → Dify format │
└──────┬──────────────────────────┘
├──> Ollama (qwen3:8b)
├──> DevTools (:8008)
└──> CrewAI (:9010)
```
---
## 📋 Prerequisites
- DAGI Stack v0.2.0+ deployed and running
- Dify v0.6.0+ installed (self-hosted or cloud)
- Access to Dify admin panel
---
## 🚀 Setup
### Step 1: Add OpenAI-Compatible Endpoint to DAGI Router
Create adapter endpoint in `router_app.py`:
```python
from pydantic import BaseModel
from typing import List, Optional
class DifyMessage(BaseModel):
role: str
content: str
class DifyRequest(BaseModel):
model: str
messages: List[DifyMessage]
temperature: Optional[float] = 0.7
max_tokens: Optional[int] = 200
stream: Optional[bool] = False
class DifyResponse(BaseModel):
id: str
object: str = "chat.completion"
created: int
model: str
choices: List[dict]
usage: dict
@app.post("/v1/chat/completions")
async def dify_compatible(request: DifyRequest):
"""
OpenAI-compatible endpoint for Dify integration
"""
import time
import uuid
# Convert Dify messages → DAGI prompt
prompt = "\n".join([
f"{msg.role}: {msg.content}" for msg in request.messages
])
# Create DAGI request
dagi_request = {
"prompt": prompt,
"mode": "chat",
"metadata": {
"model": request.model,
"temperature": request.temperature,
"max_tokens": request.max_tokens
}
}
# Route through DAGI
result = await router.handle(dagi_request)
# Convert to Dify/OpenAI format
return DifyResponse(
id=f"chatcmpl-{uuid.uuid4().hex[:8]}",
created=int(time.time()),
model=request.model,
choices=[{
"index": 0,
"message": {
"role": "assistant",
"content": result.get("response", "")
},
"finish_reason": "stop"
}],
usage={
"prompt_tokens": len(prompt.split()),
"completion_tokens": len(result.get("response", "").split()),
"total_tokens": len(prompt.split()) + len(result.get("response", "").split())
}
)
```
**Restart Router:**
```bash
docker-compose restart router
```
---
### Step 2: Configure Dify to Use DAGI Router
1. **Open Dify Admin Panel**
- Navigate to Settings → Model Providers
2. **Add Custom Provider**
```
Provider Name: DAGI Router
Provider Type: OpenAI-compatible
Base URL: http://localhost:9102/v1
API Key: (optional, leave blank or use dummy)
Model: dagi-stack
```
3. **Test Connection**
- Click "Test" button
- Expected: Connection successful
4. **Set as Default Provider**
- Enable "DAGI Router" in provider list
- Set as default for new applications
---
### Step 3: Create Dify App with DAGI Backend
1. **Create New App**
- Type: Chat Application
- Model: DAGI Router / dagi-stack
2. **Configure Prompt**
```
You are a helpful AI assistant for DAARION microDAOs.
Context:
- You have access to development tools (file operations, tests)
- You can orchestrate multi-agent workflows
- You enforce role-based access control
User query: {{query}}
```
3. **Test Chat**
- Send: "Hello, what can you do?"
- Expected: Response from qwen3:8b via DAGI Router
---
## 🛠️ Advanced: Tools Integration
### Add DevTools as Dify Tool
**In Dify Tools Configuration:**
```yaml
name: devtools_read_file
description: Read file from workspace
type: api
method: POST
url: http://localhost:9102/route
headers:
Content-Type: application/json
body:
mode: devtools
metadata:
tool: fs_read
params:
path: "{{file_path}}"
parameters:
- name: file_path
type: string
required: true
description: Path to file in workspace
```
**Usage in Dify Workflow:**
1. User asks: "Read the README.md file"
2. Dify calls `devtools_read_file` tool
3. DAGI Router → DevTools → Returns file content
4. LLM processes content and responds
---
### Add CrewAI Workflow as Dify Tool
```yaml
name: crewai_onboarding
description: Onboard new member to microDAO
type: api
method: POST
url: http://localhost:9102/route
headers:
Content-Type: application/json
body:
mode: crew
metadata:
workflow: microdao_onboarding
dao_id: "{{dao_id}}"
user_id: "{{user_id}}"
parameters:
- name: dao_id
type: string
required: true
- name: user_id
type: string
required: true
```
**Usage:**
1. User: "Onboard me to greenfood-dao"
2. Dify extracts dao_id, user_id
3. Calls CrewAI workflow via DAGI Router
4. Returns onboarding steps
---
## 🔍 Routing Rules for Dify
**Customize routing based on Dify metadata:**
```yaml
# router-config.yml
routing_rules:
- name: "dify_devtools"
priority: 5
conditions:
mode: "devtools"
metadata:
source: "dify"
use_provider: "devtools_local"
timeout_ms: 5000
- name: "dify_crew"
priority: 6
conditions:
mode: "crew"
metadata:
source: "dify"
use_provider: "microdao_orchestrator"
timeout_ms: 60000
- name: "dify_chat"
priority: 10
conditions:
mode: "chat"
metadata:
source: "dify"
use_provider: "llm_local_qwen3_8b"
timeout_ms: 5000
```
**Tag requests from Dify:**
```python
# In dify_compatible endpoint
metadata = {
"source": "dify",
"model": request.model,
...
}
```
---
## 📊 Use Cases
### 1. Dify as UI for microDAO Operations
**Scenario**: Members interact with DAO via Dify chat UI
**Flow:**
1. User: "What's my role in the DAO?"
2. Dify → DAGI Router → RBAC service
3. Response: "You are a member with entitlements: chat, vote, comment"
**Benefits:**
- Beautiful UI (Dify)
- Complex backend logic (DAGI Router)
- RBAC enforcement
---
### 2. Dify Workflows with DevTools
**Scenario**: Code review triggered from Dify
**Flow:**
1. User uploads code in Dify
2. Dify workflow: "Review this code"
3. Dify → DAGI Router → CrewAI (code_review workflow)
4. Returns quality score, security issues, recommendations
**Benefits:**
- Visual workflow builder (Dify)
- Multi-agent analysis (CrewAI)
---
### 3. Dify Knowledge Base + DAGI Context
**Scenario**: DAO documentation indexed in Dify
**Flow:**
1. User: "How do I submit a proposal?"
2. Dify retrieves relevant docs from knowledge base
3. Dify → DAGI Router with context
4. LLM generates personalized answer based on user role
**Benefits:**
- RAG (Retrieval-Augmented Generation) from Dify
- Context-aware responses from DAGI
---
## 🧪 Testing
### Test OpenAI-Compatible Endpoint
```bash
curl -X POST http://localhost:9102/v1/chat/completions \
-H "Content-Type: application/json" \
-d '{
"model": "dagi-stack",
"messages": [
{"role": "user", "content": "Hello from Dify!"}
],
"temperature": 0.7,
"max_tokens": 200
}'
```
**Expected Response:**
```json
{
"id": "chatcmpl-a1b2c3d4",
"object": "chat.completion",
"created": 1700000000,
"model": "dagi-stack",
"choices": [{
"index": 0,
"message": {
"role": "assistant",
"content": "Hello! I'm powered by DAGI Router..."
},
"finish_reason": "stop"
}],
"usage": {
"prompt_tokens": 3,
"completion_tokens": 15,
"total_tokens": 18
}
}
```
---
### Test in Dify UI
1. Create test app
2. Send message: "Test DAGI integration"
3. Check logs:
```bash
docker-compose logs router | grep "dify"
```
4. Verify response from qwen3:8b
---
## 🔧 Troubleshooting
### Issue: Dify can't connect to DAGI Router
**Solution:**
- Verify Router is running: `curl http://localhost:9102/health`
- Check network: Dify and Router on same Docker network?
- Test endpoint: `curl http://localhost:9102/v1/chat/completions` (see above)
---
### Issue: Responses are slow
**Solution:**
- Check LLM performance: `docker-compose logs router | grep "duration_ms"`
- Reduce `max_tokens` in Dify config (default: 200)
- Increase Router timeout in `router-config.yml`
---
### Issue: Tools not working
**Solution:**
- Verify tool URL: `http://localhost:9102/route`
- Check request body format (mode, metadata)
- Test tool directly: `curl -X POST http://localhost:9102/route ...`
---
## 📈 Performance
| Metric | Target | Notes |
|--------|--------|-------|
| /v1/chat/completions latency | < 5s | Includes LLM generation |
| Tools execution | < 2s | DevTools file ops |
| Workflow execution | < 60s | CrewAI multi-agent |
---
## 🔗 Resources
- **Dify Docs**: https://docs.dify.ai
- **Dify Custom Providers**: https://docs.dify.ai/guides/model-configuration/customizable-model
- **DAGI Router API**: [docs/api/router-api.md](../api/router-api.md)
---
## 🎉 What's Possible
With Dify + DAGI Router integration:
1. **Visual Workflows** (Dify) + **Complex Routing** (DAGI)
2. **Knowledge Base** (Dify) + **Multi-provider LLMs** (DAGI)
3. **UI/UX** (Dify) + **RBAC/Governance** (DAGI)
4. **Rapid Prototyping** (Dify) + **Production Infrastructure** (DAGI)
**Result**: Best of both worlds — beautiful UI and robust backend.
---
**Version**: 0.3.0 (planned)
**Status**: Planned for Phase 4
**Last Updated**: 2024-11-15