Files
deer-flow/backend
Willem Jiang a087fe7bcc fix(LLM): fixing Gemini thinking + tool calls via OpenAI gateway (#1180) (#1205)
* fix(LLM): fixing Gemini thinking + tool calls via OpenAI gateway (#1180)

When using Gemini with thinking enabled through an OpenAI-compatible gateway,
the API requires that  fields on thinking content blocks are
preserved and echoed back verbatim in subsequent requests. Standard
 silently drops these signatures when serializing
messages, causing HTTP 400 errors:

Changes:
- Add PatchedChatOpenAI adapter that re-injects signed thinking blocks into
  request payloads, preserving the signature chain across multi-turn
  conversations with tool calls.
- Support two LangChain storage patterns: additional_kwargs.thinking_blocks
  and content list.
- Add 11 unit tests covering signed/unsigned blocks, storage patterns, edge
  cases, and precedence rules.
- Update config.example.yaml with Gemini + thinking gateway example.
- Update CONFIGURATION.md with detailed guidance and error explanation.

Fixes: #1180

* Updated the patched_openai.py with thought_signature of function call

* Apply suggestions from code review

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* docs: fix inaccurate thought_signature description in CONFIGURATION.md (#1220)

* Initial plan

* docs: fix CONFIGURATION.md wording for thought_signature - tool-call objects, not thinking blocks

Co-authored-by: WillemJiang <219644+WillemJiang@users.noreply.github.com>
Agent-Logs-Url: https://github.com/bytedance/deer-flow/sessions/360f5226-4631-48a7-a050-189094af8ffe

---------

Co-authored-by: copilot-swe-agent[bot] <198982749+Copilot@users.noreply.github.com>
Co-authored-by: WillemJiang <219644+WillemJiang@users.noreply.github.com>

---------

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
Co-authored-by: Copilot <198982749+Copilot@users.noreply.github.com>
2026-03-26 15:07:05 +08:00
..
2026-01-14 09:57:52 +08:00

DeerFlow Backend

DeerFlow is a LangGraph-based AI super agent with sandbox execution, persistent memory, and extensible tool integration. The backend enables AI agents to execute code, browse the web, manage files, delegate tasks to subagents, and retain context across conversations - all in isolated, per-thread environments.


Architecture

                        ┌──────────────────────────────────────┐
                        │          Nginx (Port 2026)           │
                        │      Unified reverse proxy           │
                        └───────┬──────────────────┬───────────┘
                                │                  │
              /api/langgraph/*  │                  │  /api/* (other)
                                ▼                  ▼
               ┌────────────────────┐  ┌────────────────────────┐
               │ LangGraph Server   │  │   Gateway API (8001)   │
               │    (Port 2024)     │  │   FastAPI REST         │
               │                    │  │                        │
               │ ┌────────────────┐ │  │ Models, MCP, Skills,   │
               │ │  Lead Agent    │ │  │ Memory, Uploads,       │
               │ │  ┌──────────┐  │ │  │ Artifacts              │
               │ │  │Middleware│  │ │  └────────────────────────┘
               │ │  │  Chain   │  │ │
               │ │  └──────────┘  │ │
               │ │  ┌──────────┐  │ │
               │ │  │  Tools   │  │ │
               │ │  └──────────┘  │ │
               │ │  ┌──────────┐  │ │
               │ │  │Subagents │  │ │
               │ │  └──────────┘  │ │
               │ └────────────────┘ │
               └────────────────────┘

Request Routing (via Nginx):

  • /api/langgraph/* → LangGraph Server - agent interactions, threads, streaming
  • /api/* (other) → Gateway API - models, MCP, skills, memory, artifacts, uploads, thread-local cleanup
  • / (non-API) → Frontend - Next.js web interface

Core Components

Lead Agent

The single LangGraph agent (lead_agent) is the runtime entry point, created via make_lead_agent(config). It combines:

  • Dynamic model selection with thinking and vision support
  • Middleware chain for cross-cutting concerns (9 middlewares)
  • Tool system with sandbox, MCP, community, and built-in tools
  • Subagent delegation for parallel task execution
  • System prompt with skills injection, memory context, and working directory guidance

Middleware Chain

Middlewares execute in strict order, each handling a specific concern:

# Middleware Purpose
1 ThreadDataMiddleware Creates per-thread isolated directories (workspace, uploads, outputs)
2 UploadsMiddleware Injects newly uploaded files into conversation context
3 SandboxMiddleware Acquires sandbox environment for code execution
4 SummarizationMiddleware Reduces context when approaching token limits (optional)
5 TodoListMiddleware Tracks multi-step tasks in plan mode (optional)
6 TitleMiddleware Auto-generates conversation titles after first exchange
7 MemoryMiddleware Queues conversations for async memory extraction
8 ViewImageMiddleware Injects image data for vision-capable models (conditional)
9 ClarificationMiddleware Intercepts clarification requests and interrupts execution (must be last)

Sandbox System

Per-thread isolated execution with virtual path translation:

  • Abstract interface: execute_command, read_file, write_file, list_dir
  • Providers: LocalSandboxProvider (filesystem) and AioSandboxProvider (Docker, in community/)
  • Virtual paths: /mnt/user-data/{workspace,uploads,outputs} → thread-specific physical directories
  • Skills path: /mnt/skillsdeer-flow/skills/ directory
  • Skills loading: Recursively discovers nested SKILL.md files under skills/{public,custom} and preserves nested container paths
  • Tools: bash, ls, read_file, write_file, str_replace

Subagent System

Async task delegation with concurrent execution:

  • Built-in agents: general-purpose (full toolset) and bash (command specialist)
  • Concurrency: Max 3 subagents per turn, 15-minute timeout
  • Execution: Background thread pools with status tracking and SSE events
  • Flow: Agent calls task() tool → executor runs subagent in background → polls for completion → returns result

Memory System

LLM-powered persistent context retention across conversations:

  • Automatic extraction: Analyzes conversations for user context, facts, and preferences
  • Structured storage: User context (work, personal, top-of-mind), history, and confidence-scored facts
  • Debounced updates: Batches updates to minimize LLM calls (configurable wait time)
  • System prompt injection: Top facts + context injected into agent prompts
  • Storage: JSON file with mtime-based cache invalidation

Tool Ecosystem

Category Tools
Sandbox bash, ls, read_file, write_file, str_replace
Built-in present_files, ask_clarification, view_image, task (subagent)
Community Tavily (web search), Jina AI (web fetch), Firecrawl (scraping), DuckDuckGo (image search)
MCP Any Model Context Protocol server (stdio, SSE, HTTP transports)
Skills Domain-specific workflows injected via system prompt

Gateway API

FastAPI application providing REST endpoints for frontend integration:

Route Purpose
GET /api/models List available LLM models
GET/PUT /api/mcp/config Manage MCP server configurations
GET/PUT /api/skills List and manage skills
POST /api/skills/install Install skill from .skill archive
GET /api/memory Retrieve memory data
POST /api/memory/reload Force memory reload
GET /api/memory/config Memory configuration
GET /api/memory/status Combined config + data
POST /api/threads/{id}/uploads Upload files (auto-converts PDF/PPT/Excel/Word to Markdown, rejects directory paths)
GET /api/threads/{id}/uploads/list List uploaded files
DELETE /api/threads/{id} Delete DeerFlow-managed local thread data after LangGraph thread deletion; unexpected failures are logged server-side and return a generic 500 detail
GET /api/threads/{id}/artifacts/{path} Serve generated artifacts

IM Channels

The IM bridge supports Feishu, Slack, and Telegram. Slack and Telegram still use the final runs.wait() response path, while Feishu now streams through runs.stream(["messages-tuple", "values"]) and updates a single in-thread card in place.

For Feishu card updates, DeerFlow stores the running card's message_id per inbound message and patches that same card until the run finishes, preserving the existing OK / DONE reaction flow.


Quick Start

Prerequisites

  • Python 3.12+
  • uv package manager
  • API keys for your chosen LLM provider

Installation

cd deer-flow

# Copy configuration files
cp config.example.yaml config.yaml

# Install backend dependencies
cd backend
make install

Configuration

Edit config.yaml in the project root:

models:
  - name: gpt-4o
    display_name: GPT-4o
    use: langchain_openai:ChatOpenAI
    model: gpt-4o
    api_key: $OPENAI_API_KEY
    supports_thinking: false
    supports_vision: true

  - name: gpt-5-responses
    display_name: GPT-5 (Responses API)
    use: langchain_openai:ChatOpenAI
    model: gpt-5
    api_key: $OPENAI_API_KEY
    use_responses_api: true
    output_version: responses/v1
    supports_vision: true

Set your API keys:

export OPENAI_API_KEY="your-api-key-here"

Running

Full Application (from project root):

make dev  # Starts LangGraph + Gateway + Frontend + Nginx

Access at: http://localhost:2026

Backend Only (from backend directory):

# Terminal 1: LangGraph server
make dev

# Terminal 2: Gateway API
make gateway

Direct access: LangGraph at http://localhost:2024, Gateway at http://localhost:8001


Project Structure

backend/
├── src/
│   ├── agents/                  # Agent system
│   │   ├── lead_agent/         # Main agent (factory, prompts)
│   │   ├── middlewares/        # 9 middleware components
│   │   ├── memory/             # Memory extraction & storage
│   │   └── thread_state.py    # ThreadState schema
│   ├── gateway/                # FastAPI Gateway API
│   │   ├── app.py             # Application setup
│   │   └── routers/           # 6 route modules
│   ├── sandbox/                # Sandbox execution
│   │   ├── local/             # Local filesystem provider
│   │   ├── sandbox.py         # Abstract interface
│   │   ├── tools.py           # bash, ls, read/write/str_replace
│   │   └── middleware.py      # Sandbox lifecycle
│   ├── subagents/              # Subagent delegation
│   │   ├── builtins/          # general-purpose, bash agents
│   │   ├── executor.py        # Background execution engine
│   │   └── registry.py        # Agent registry
│   ├── tools/builtins/         # Built-in tools
│   ├── mcp/                    # MCP protocol integration
│   ├── models/                 # Model factory
│   ├── skills/                 # Skill discovery & loading
│   ├── config/                 # Configuration system
│   ├── community/              # Community tools & providers
│   ├── reflection/             # Dynamic module loading
│   └── utils/                  # Utilities
├── docs/                       # Documentation
├── tests/                      # Test suite
├── langgraph.json              # LangGraph server configuration
├── pyproject.toml              # Python dependencies
├── Makefile                    # Development commands
└── Dockerfile                  # Container build

Configuration

Main Configuration (config.yaml)

Place in project root. Config values starting with $ resolve as environment variables.

Key sections:

  • models - LLM configurations with class paths, API keys, thinking/vision flags
  • tools - Tool definitions with module paths and groups
  • tool_groups - Logical tool groupings
  • sandbox - Execution environment provider
  • skills - Skills directory paths
  • title - Auto-title generation settings
  • summarization - Context summarization settings
  • subagents - Subagent system (enabled/disabled)
  • memory - Memory system settings (enabled, storage, debounce, facts limits)

Provider note:

  • models[*].use references provider classes by module path (for example langchain_openai:ChatOpenAI).
  • If a provider module is missing, DeerFlow now returns an actionable error with install guidance (for example uv add langchain-google-genai).

Extensions Configuration (extensions_config.json)

MCP servers and skill states in a single file:

{
  "mcpServers": {
    "github": {
      "enabled": true,
      "type": "stdio",
      "command": "npx",
      "args": ["-y", "@modelcontextprotocol/server-github"],
      "env": {"GITHUB_TOKEN": "$GITHUB_TOKEN"}
    },
    "secure-http": {
      "enabled": true,
      "type": "http",
      "url": "https://api.example.com/mcp",
      "oauth": {
        "enabled": true,
        "token_url": "https://auth.example.com/oauth/token",
        "grant_type": "client_credentials",
        "client_id": "$MCP_OAUTH_CLIENT_ID",
        "client_secret": "$MCP_OAUTH_CLIENT_SECRET"
      }
    }
  },
  "skills": {
    "pdf-processing": {"enabled": true}
  }
}

Environment Variables

  • DEER_FLOW_CONFIG_PATH - Override config.yaml location
  • DEER_FLOW_EXTENSIONS_CONFIG_PATH - Override extensions_config.json location
  • Model API keys: OPENAI_API_KEY, ANTHROPIC_API_KEY, DEEPSEEK_API_KEY, etc.
  • Tool API keys: TAVILY_API_KEY, GITHUB_TOKEN, etc.

Development

Commands

make install    # Install dependencies
make dev        # Run LangGraph server (port 2024)
make gateway    # Run Gateway API (port 8001)
make lint       # Run linter (ruff)
make format     # Format code (ruff)

Code Style

  • Linter/Formatter: ruff
  • Line length: 240 characters
  • Python: 3.12+ with type hints
  • Quotes: Double quotes
  • Indentation: 4 spaces

Testing

uv run pytest

Technology Stack

  • LangGraph (1.0.6+) - Agent framework and multi-agent orchestration
  • LangChain (1.2.3+) - LLM abstractions and tool system
  • FastAPI (0.115.0+) - Gateway REST API
  • langchain-mcp-adapters - Model Context Protocol support
  • agent-sandbox - Sandboxed code execution
  • markitdown - Multi-format document conversion
  • tavily-python / firecrawl-py - Web search and scraping

Documentation


License

See the LICENSE file in the project root.

Contributing

See CONTRIBUTING.md for contribution guidelines.