Files
deer-flow/backend/docs/CONFIGURATION.md
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

350 lines
12 KiB
Markdown

# Configuration Guide
This guide explains how to configure DeerFlow for your environment.
## Config Versioning
`config.example.yaml` contains a `config_version` field that tracks schema changes. When the example version is higher than your local `config.yaml`, the application emits a startup warning:
```
WARNING - Your config.yaml (version 0) is outdated — the latest version is 1.
Run `make config-upgrade` to merge new fields into your config.
```
- **Missing `config_version`** in your config is treated as version 0.
- Run `make config-upgrade` to auto-merge missing fields (your existing values are preserved, a `.bak` backup is created).
- When changing the config schema, bump `config_version` in `config.example.yaml`.
## Configuration Sections
### Models
Configure the LLM models available to the agent:
```yaml
models:
- name: gpt-4 # Internal identifier
display_name: GPT-4 # Human-readable name
use: langchain_openai:ChatOpenAI # LangChain class path
model: gpt-4 # Model identifier for API
api_key: $OPENAI_API_KEY # API key (use env var)
max_tokens: 4096 # Max tokens per request
temperature: 0.7 # Sampling temperature
```
**Supported Providers**:
- OpenAI (`langchain_openai:ChatOpenAI`)
- Anthropic (`langchain_anthropic:ChatAnthropic`)
- DeepSeek (`langchain_deepseek:ChatDeepSeek`)
- Claude Code OAuth (`deerflow.models.claude_provider:ClaudeChatModel`)
- Codex CLI (`deerflow.models.openai_codex_provider:CodexChatModel`)
- Any LangChain-compatible provider
CLI-backed provider examples:
```yaml
models:
- name: gpt-5.4
display_name: GPT-5.4 (Codex CLI)
use: deerflow.models.openai_codex_provider:CodexChatModel
model: gpt-5.4
supports_thinking: true
supports_reasoning_effort: true
- name: claude-sonnet-4.6
display_name: Claude Sonnet 4.6 (Claude Code OAuth)
use: deerflow.models.claude_provider:ClaudeChatModel
model: claude-sonnet-4-6
max_tokens: 4096
supports_thinking: true
```
**Auth behavior for CLI-backed providers**:
- `CodexChatModel` loads Codex CLI auth from `~/.codex/auth.json`
- The Codex Responses endpoint currently rejects `max_tokens` and `max_output_tokens`, so `CodexChatModel` does not expose a request-level token cap
- `ClaudeChatModel` accepts `CLAUDE_CODE_OAUTH_TOKEN`, `ANTHROPIC_AUTH_TOKEN`, `CLAUDE_CODE_OAUTH_TOKEN_FILE_DESCRIPTOR`, `CLAUDE_CODE_CREDENTIALS_PATH`, or plaintext `~/.claude/.credentials.json`
- On macOS, DeerFlow does not probe Keychain automatically. Use `scripts/export_claude_code_oauth.py` to export Claude Code auth explicitly when needed
To use OpenAI's `/v1/responses` endpoint with LangChain, keep using `langchain_openai:ChatOpenAI` and set:
```yaml
models:
- 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
```
For OpenAI-compatible gateways (for example Novita or OpenRouter), keep using `langchain_openai:ChatOpenAI` and set `base_url`:
```yaml
models:
- name: novita-deepseek-v3.2
display_name: Novita DeepSeek V3.2
use: langchain_openai:ChatOpenAI
model: deepseek/deepseek-v3.2
api_key: $NOVITA_API_KEY
base_url: https://api.novita.ai/openai
supports_thinking: true
when_thinking_enabled:
extra_body:
thinking:
type: enabled
- name: minimax-m2.5
display_name: MiniMax M2.5
use: langchain_openai:ChatOpenAI
model: MiniMax-M2.5
api_key: $MINIMAX_API_KEY
base_url: https://api.minimax.io/v1
max_tokens: 4096
temperature: 1.0 # MiniMax requires temperature in (0.0, 1.0]
supports_vision: true
- name: minimax-m2.5-highspeed
display_name: MiniMax M2.5 Highspeed
use: langchain_openai:ChatOpenAI
model: MiniMax-M2.5-highspeed
api_key: $MINIMAX_API_KEY
base_url: https://api.minimax.io/v1
max_tokens: 4096
temperature: 1.0 # MiniMax requires temperature in (0.0, 1.0]
supports_vision: true
- name: openrouter-gemini-2.5-flash
display_name: Gemini 2.5 Flash (OpenRouter)
use: langchain_openai:ChatOpenAI
model: google/gemini-2.5-flash-preview
api_key: $OPENAI_API_KEY
base_url: https://openrouter.ai/api/v1
```
If your OpenRouter key lives in a different environment variable name, point `api_key` at that variable explicitly (for example `api_key: $OPENROUTER_API_KEY`).
**Thinking Models**:
Some models support "thinking" mode for complex reasoning:
```yaml
models:
- name: deepseek-v3
supports_thinking: true
when_thinking_enabled:
extra_body:
thinking:
type: enabled
```
**Gemini with thinking via OpenAI-compatible gateway**:
When routing Gemini through an OpenAI-compatible proxy (Vertex AI OpenAI compat endpoint, AI Studio, or third-party gateways) with thinking enabled, the API attaches a `thought_signature` to each tool-call object returned in the response. Every subsequent request that replays those assistant messages **must** echo those signatures back on the tool-call entries or the API returns:
```
HTTP 400 INVALID_ARGUMENT: function call `<tool>` in the N. content block is
missing a `thought_signature`.
```
Standard `langchain_openai:ChatOpenAI` silently drops `thought_signature` when serialising messages. Use `deerflow.models.patched_openai:PatchedChatOpenAI` instead — it re-injects the tool-call signatures (sourced from `AIMessage.additional_kwargs["tool_calls"]`) into every outgoing payload:
```yaml
models:
- name: gemini-2.5-pro-thinking
display_name: Gemini 2.5 Pro (Thinking)
use: deerflow.models.patched_openai:PatchedChatOpenAI
model: google/gemini-2.5-pro-preview # model name as expected by your gateway
api_key: $GEMINI_API_KEY
base_url: https://<your-openai-compat-gateway>/v1
max_tokens: 16384
supports_thinking: true
supports_vision: true
when_thinking_enabled:
extra_body:
thinking:
type: enabled
```
For Gemini accessed **without** thinking (e.g. via OpenRouter where thinking is not activated), the plain `langchain_openai:ChatOpenAI` with `supports_thinking: false` is sufficient and no patch is needed.
### Tool Groups
Organize tools into logical groups:
```yaml
tool_groups:
- name: web # Web browsing and search
- name: file:read # Read-only file operations
- name: file:write # Write file operations
- name: bash # Shell command execution
```
### Tools
Configure specific tools available to the agent:
```yaml
tools:
- name: web_search
group: web
use: deerflow.community.tavily.tools:web_search_tool
max_results: 5
# api_key: $TAVILY_API_KEY # Optional
```
**Built-in Tools**:
- `web_search` - Search the web (Tavily)
- `web_fetch` - Fetch web pages (Jina AI)
- `ls` - List directory contents
- `read_file` - Read file contents
- `write_file` - Write file contents
- `str_replace` - String replacement in files
- `bash` - Execute bash commands
### Sandbox
DeerFlow supports multiple sandbox execution modes. Configure your preferred mode in `config.yaml`:
**Local Execution** (runs sandbox code directly on the host machine):
```yaml
sandbox:
use: deerflow.sandbox.local:LocalSandboxProvider # Local execution
```
**Docker Execution** (runs sandbox code in isolated Docker containers):
```yaml
sandbox:
use: deerflow.community.aio_sandbox:AioSandboxProvider # Docker-based sandbox
```
**Docker Execution with Kubernetes** (runs sandbox code in Kubernetes pods via provisioner service):
This mode runs each sandbox in an isolated Kubernetes Pod on your **host machine's cluster**. Requires Docker Desktop K8s, OrbStack, or similar local K8s setup.
```yaml
sandbox:
use: deerflow.community.aio_sandbox:AioSandboxProvider
provisioner_url: http://provisioner:8002
```
When using Docker development (`make docker-start`), DeerFlow starts the `provisioner` service only if this provisioner mode is configured. In local or plain Docker sandbox modes, `provisioner` is skipped.
See [Provisioner Setup Guide](docker/provisioner/README.md) for detailed configuration, prerequisites, and troubleshooting.
Choose between local execution or Docker-based isolation:
**Option 1: Local Sandbox** (default, simpler setup):
```yaml
sandbox:
use: deerflow.sandbox.local:LocalSandboxProvider
```
**Option 2: Docker Sandbox** (isolated, more secure):
```yaml
sandbox:
use: deerflow.community.aio_sandbox:AioSandboxProvider
port: 8080
auto_start: true
container_prefix: deer-flow-sandbox
# Optional: Additional mounts
mounts:
- host_path: /path/on/host
container_path: /path/in/container
read_only: false
```
### Skills
Configure the skills directory for specialized workflows:
```yaml
skills:
# Host path (optional, default: ../skills)
path: /custom/path/to/skills
# Container mount path (default: /mnt/skills)
container_path: /mnt/skills
```
**How Skills Work**:
- Skills are stored in `deer-flow/skills/{public,custom}/`
- Each skill has a `SKILL.md` file with metadata
- Skills are automatically discovered and loaded
- Available in both local and Docker sandbox via path mapping
### Title Generation
Automatic conversation title generation:
```yaml
title:
enabled: true
max_words: 6
max_chars: 60
model_name: null # Use first model in list
```
## Environment Variables
DeerFlow supports environment variable substitution using the `$` prefix:
```yaml
models:
- api_key: $OPENAI_API_KEY # Reads from environment
```
**Common Environment Variables**:
- `OPENAI_API_KEY` - OpenAI API key
- `ANTHROPIC_API_KEY` - Anthropic API key
- `DEEPSEEK_API_KEY` - DeepSeek API key
- `NOVITA_API_KEY` - Novita API key (OpenAI-compatible endpoint)
- `TAVILY_API_KEY` - Tavily search API key
- `DEER_FLOW_CONFIG_PATH` - Custom config file path
## Configuration Location
The configuration file should be placed in the **project root directory** (`deer-flow/config.yaml`), not in the backend directory.
## Configuration Priority
DeerFlow searches for configuration in this order:
1. Path specified in code via `config_path` argument
2. Path from `DEER_FLOW_CONFIG_PATH` environment variable
3. `config.yaml` in current working directory (typically `backend/` when running)
4. `config.yaml` in parent directory (project root: `deer-flow/`)
## Best Practices
1. **Place `config.yaml` in project root** - Not in `backend/` directory
2. **Never commit `config.yaml`** - It's already in `.gitignore`
3. **Use environment variables for secrets** - Don't hardcode API keys
4. **Keep `config.example.yaml` updated** - Document all new options
5. **Test configuration changes locally** - Before deploying
6. **Use Docker sandbox for production** - Better isolation and security
## Troubleshooting
### "Config file not found"
- Ensure `config.yaml` exists in the **project root** directory (`deer-flow/config.yaml`)
- The backend searches parent directory by default, so root location is preferred
- Alternatively, set `DEER_FLOW_CONFIG_PATH` environment variable to custom location
### "Invalid API key"
- Verify environment variables are set correctly
- Check that `$` prefix is used for env var references
### "Skills not loading"
- Check that `deer-flow/skills/` directory exists
- Verify skills have valid `SKILL.md` files
- Check `skills.path` configuration if using custom path
### "Docker sandbox fails to start"
- Ensure Docker is running
- Check port 8080 (or configured port) is available
- Verify Docker image is accessible
## Examples
See `config.example.yaml` for complete examples of all configuration options.