* feat(tui): add Hermes-like terminal workbench backed by DeerFlowClient Implements the `deerflow` TUI from RFC #3540: a terminal-native, embedded workbench over the existing harness (no Gateway/frontend/nginx/Docker), built Python-native with Textual and learning UX patterns from tao-pi. Architecture — every layer except the Textual app is pure and unit-tested: - view_state.py: ViewState + reduce(state, action), the testable heart - runtime.py: StreamEvent -> reducer actions (pure translate + threaded driver) - message_format / command_registry / input_history / render / theme: pure - app.py: Textual App; runs the sync DeerFlowClient.stream() on a worker thread and marshals actions back to the UI thread. Slash command palette, model and thread modal pickers, ↑/↓ history, Ctrl+C interrupt, TTY-aware fallback. - cli.py: pure launch-mode planning + headless --print/--json + `deerflow` console script (textual is an optional [tui] extra; degrades to headless help) Web UI visibility (the RFC's key decision): persistence.py writes a threads_meta row under the local default user into the same DB the Gateway reads, so terminal sessions appear in the Web UI sidebar without running the Gateway. Best-effort, no-op on the memory backend; all DB work on one long-lived background loop. Tests: 95 TUI tests — pure layers via pytest, app/palette/overlays via Textual's pilot harness with a fake session, and a threads_meta read/write round-trip. ruff clean; respects the harness->app import boundary. Docs: backend/docs/TUI.md plus CLAUDE.md/README updates and preview screenshots. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): de-duplicate streamed assistant text and tool cards; keep Tab in composer Self-test surfaced three issues, all root-caused to consuming non-strict streaming from DeerFlowClient (proven by the client's own test_dedup_requires_messages_before_values_invariant, which shows the client can re-emit a message id's full content twice): - Assistant text was doubled (e.g. "answer answer") because the reducer blindly concatenated same-id deltas. Now merges by content: a re-send or cumulative snapshot replaces; only genuine increments append. - Tool activity showed duplicate and empty "gear" cards from partial/re-emitted tool-call chunks. ToolStarted now de-dupes by tool_call_id, drops id-less noise chunks, and fills the name on a later chunk; a tool result with no prior card still surfaces as a completed card. - Tab moved focus off the composer to the scroll region (felt like broken cursor logic). Tab is now consumed by the composer (completes a command when the palette is open, no-op otherwise). Adds reducer tests for each case plus a Tab-focus test; 102 TUI tests pass. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): make Esc interrupt an active run (matches the status hint) The status line advertised "esc interrupt" but Esc was only wired to close the slash palette, so it did nothing during a run. Esc now: closes the palette when open, interrupts the active run when streaming, and is a no-op when idle. The interrupt logic is shared with Ctrl+C via _interrupt_run(). Adds a regression test. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): stop prior answers duplicating on threads with history On a thread with history, DeerFlowClient re-emits every prior message on each new turn (its streamed_ids dedup is per-stream-call), and a re-emitted older message can arrive after a newer message has already started. The reducer only matched the *most recent* assistant row by id and otherwise appended, so each re-emitted older answer was duplicated verbatim at the end of the transcript. Match an assistant row by id anywhere in the transcript and merge in place. Tool cards already de-dupe by call id globally, so they were unaffected. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): correct CJK cursor drift in the composer Confirmed a Textual Input bug (latest 8.2.7): Input._cursor_offset adds an unconditional +1 at the end of the value, overshooting by one cell after double-width (CJK) characters. That misplaces the hardware/IME cursor — the drift seen when typing Chinese in iTerm2 (the on-screen block cursor, drawn separately in render_line, is fine; English doesn't use an IME so it looks correct). Reproduced with a bare Input, so it's upstream, not our layout. Add ComposerInput(Input) overriding _cursor_offset to the true cell position and use it for the composer. Numeric tests pin the CJK end/mid and ASCII cases. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * feat(tui): render finalized assistant messages as Markdown The transcript showed raw Markdown (literal **bold**, ## headings, - lists, links). Finalized assistant messages now render as Rich Markdown — headings, bold/italic, lists, inline code + code blocks, blockquotes, horizontal rules and links — with the ● speaker marker aligned to the top of the body. The actively-streaming message stays plain text so partial Markdown doesn't reflow/jump, then snaps to its rendered form when the run ends. Transcript re-renders are coalesced on a ~60ms timer (dirty flag) so per-token Markdown re-parsing stays smooth on long threads. Tests cover both the rendered and the streaming-plain paths. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * style(tui): apply ruff format CI lint runs `ruff format --check` via uvx (latest ruff); apply the formatter so the lint-backend job passes. No behavior change. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * chore(tui): address code-quality review comments From github-code-quality[bot] on #3760: - runtime.py: give the `_ClientLike` Protocol method a docstring body instead of a bare `...` (flagged as a no-effect statement), matching the harness convention for Protocol stubs (e.g. SafetyTerminationDetector). - test_tui_cli_main.py: drop the unnecessary `lambda: _FakeSession()` wrappers in monkeypatch.setattr; pass `_FakeSession` directly (same behavior). Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): keep history Markdown-rendered when a follow-up run starts Previously the transcript rendered "the last assistant row" as plain text while streaming. But when a follow-up turn starts, the last assistant row is the *previous, finalized* answer until the new message begins — and the client re-emits prior messages early in the turn — so sending a follow-up reverted the previous answer from rendered Markdown back to raw text. Track the actively-streaming message id in ViewState instead: it's reset on RunStarted, set only when an AssistantDelta actually adds new content (history re-emits are no-ops and don't mark it), and cleared on RunEnded. The renderer keeps only that one message plain; all history stays Markdown. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * docs(readme): add Terminal Workbench (TUI) section to root README Mention the new `deerflow` TUI alongside the Embedded Python Client in the root README.md and README_zh.md (install, launch/headless commands, feature summary, Web UI visibility), with a ToC entry and a preview screenshot. Links to backend/docs/TUI.md for the full guide. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> * fix(tui): address review feedback (willem-bd) Ten findings from the TUI code review: 1. /resume was dead-ended — registered + in /help + tested as a builtin, but no dispatch branch. Wired it to thread resolution / the switcher. 2. --resume <title> was forwarded raw into the checkpointer (blank thread). Added Session.resolve_ref() to resolve id-or-title via list_threads; used by --resume and /resume. 3. str(get("id","")) returned "None" for an explicit id:None (truthy), defeating the empty-id guard so unrelated null-id tool calls collapsed into one card. Coerce via a None-safe helper. 4. Headless --print/--json no longer spin up the persistence loop/engine/pool (open_session(persistence=False)). 5. _LoopThread + engine are now closed: Session.close() (dispose engine + stop loop) called from a try/finally around app.run(). 6. --cli --continue (and piped --cli) now run headless instead of erroring. 7. Cancelled runs no longer persist a truncated title (guard on _cancelled). 8. Palette highlight resets to the top when the filter set changes. 9. Dropped the never-populated tools count from the header. 10. Documented the `not row.error` merge guard. Adds regression tests for each; 126 TUI tests pass, ruff check + format clean. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> --------- Co-authored-by: Claude Opus 4.8 <noreply@anthropic.com> Co-authored-by: Willem Jiang <willem.jiang@gmail.com> |
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| AGENTS.md | ||
| CLAUDE.md | ||
| CONTRIBUTING.md | ||
| debug.py | ||
| Dockerfile | ||
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| Makefile | ||
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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)
rewritten to /api/* │
▼
┌────────────────────────────────────────┐
│ Gateway API (8001) │
│ FastAPI REST + agent runtime │
│ │
│ Models, MCP, Skills, Memory, Uploads, │
│ Artifacts, Threads, Runs, Streaming │
│ │
│ ┌────────────────────────────────────┐ │
│ │ Lead Agent │ │
│ │ Middleware Chain, Tools, Subagents │ │
│ └────────────────────────────────────┘ │
└────────────────────────────────────────┘
Request Routing (via Nginx):
/api/langgraph/*→ Gateway LangGraph-compatible API - 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) andAioSandboxProvider(Docker, in community/). Async runtime paths use async sandbox lifecycle hooks so startup, readiness polling, and release do not block the event loop.AioSandboxProvidervalidates active-cache and warm-pool containers during acquire/reuse, dropping definitively dead entries so a thread can provision a fresh sandbox after an unexpected container exit while keepingget()as an in-memory lookup. Backend health-check failures are treated as unknown, not dead, and a container that cannot be verified during discovery is simply not adopted (acquire falls through to create instead of failing). - Virtual paths:
/mnt/user-data/{workspace,uploads,outputs}→ thread-specific physical directories - Skills path:
/mnt/skills→deer-flow/skills/directory - Skills loading: Recursively discovers nested
SKILL.mdfiles underskills/{public,custom}and preserves nested container paths - File-write safety:
str_replaceserializes read-modify-write per(sandbox.id, path)so isolated sandboxes keep concurrency even when virtual paths match - Tools:
bash,ls,read_file,write_file,str_replace(write_fileoverwrites by default and exposesappendfor end-of-file writes;bashis disabled by default when usingLocalSandboxProvider; useAioSandboxProviderfor isolated shell access)
Subagent System
Async task delegation with concurrent execution:
- Built-in agents:
general-purpose(full toolset) andbash(command specialist, exposed only when shell access is available) - 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), fastCRW (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 |
POST /api/mcp/cache/reset |
Reset cached MCP tools so they reload on next use |
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, auto-renames duplicate filenames in one request) |
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 Gateway + Frontend + Nginx
Access at: http://localhost:2026
Backend Only (from backend directory):
# Gateway API + embedded agent runtime
make dev
Direct access: Gateway at http://localhost:8001
Terminal Workbench (TUI) — a terminal-native UI over the embedded harness, no services required:
uv pip install 'deerflow-harness[tui]' # optional 'textual' dependency
deerflow # launch the TUI
deerflow --print "summarize this repo" # headless one-shot
Sessions opened in the TUI appear in the Web UI sidebar (it writes the shared
threads_meta store under the local default user). See docs/TUI.md.
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 graph registry for tooling/Studio compatibility
├── pyproject.toml # Python dependencies
├── Makefile # Development commands
└── Dockerfile # Container build
langgraph.json is not the default service entrypoint. The scripts and Docker
deployments run the Gateway embedded runtime; the file is kept for LangGraph
tooling, Studio, or direct LangGraph Server compatibility.
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 flagstools- Tool definitions with module paths and groupstool_groups- Logical tool groupingssandbox- Execution environment providerskills- Skills directory pathstitle- Auto-title generation settingssummarization- Context summarization settingssubagents- Subagent system (enabled/disabled)memory- Memory system settings (enabled, storage, debounce, facts limits)
Provider note:
models[*].usereferences provider classes by module path (for examplelangchain_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 locationDEER_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.
LangSmith Tracing
DeerFlow has built-in LangSmith integration for observability. When enabled, all LLM calls, agent runs, tool executions, and middleware processing are traced and visible in the LangSmith dashboard.
Setup:
- Sign up at smith.langchain.com and create a project.
- Add the following to your
.envfile in the project root:
LANGSMITH_TRACING=true
LANGSMITH_ENDPOINT=https://api.smith.langchain.com
LANGSMITH_API_KEY=lsv2_pt_xxxxxxxxxxxxxxxx
LANGSMITH_PROJECT=xxx
Legacy variables: The LANGCHAIN_TRACING_V2, LANGCHAIN_API_KEY, LANGCHAIN_PROJECT, and LANGCHAIN_ENDPOINT variables are also supported for backward compatibility. LANGSMITH_* variables take precedence when both are set.
Langfuse Tracing
DeerFlow also supports Langfuse observability for LangChain-compatible runs.
Add the following to your .env file:
LANGFUSE_TRACING=true
LANGFUSE_PUBLIC_KEY=pk-lf-xxxxxxxxxxxxxxxx
LANGFUSE_SECRET_KEY=sk-lf-xxxxxxxxxxxxxxxx
LANGFUSE_BASE_URL=https://cloud.langfuse.com
If you are using a self-hosted Langfuse deployment, set LANGFUSE_BASE_URL to your Langfuse host.
Dual Provider Behavior
If both LangSmith and Langfuse are enabled, DeerFlow initializes and attaches both callbacks so the same run data is reported to both systems.
If a provider is explicitly enabled but required credentials are missing, or the provider callback cannot be initialized, DeerFlow raises an error when tracing is initialized during model creation instead of silently disabling tracing.
Docker: In docker-compose.yaml, tracing is disabled by default (LANGSMITH_TRACING=false). Set LANGSMITH_TRACING=true and/or LANGFUSE_TRACING=true in your .env, together with the required credentials, to enable tracing in containerized deployments.
Development
Commands
make install # Install dependencies
make dev # Run Gateway API + embedded agent runtime (port 8001)
make gateway # Run Gateway API without reload (port 8001)
make lint # Run linter (ruff)
make format # Format code (ruff)
make detect-blocking-io # Inventory blocking IO that may block the backend event loop
make migrate-rev MSG="..." # Autogenerate a new alembic revision against the live ORM models
Schema Migrations
DeerFlow's application tables (runs, threads_meta, feedback, users,
run_events, and the channel_* tables) are owned by alembic. The Gateway
runs alembic upgrade head automatically on startup via
bootstrap_schema(engine, backend=...), so operators do not run alembic
manually in production. Bootstrap is concurrency-safe (Postgres advisory lock
across processes; per-engine asyncio.Lock inside one SQLite process) and
idempotent against pre-existing schemas (empty / legacy / versioned).
When you add or change an ORM model, ship the change as a new revision under
packages/harness/deerflow/persistence/migrations/versions/:
make migrate-rev MSG="add foo column to runs"
The target invokes scripts/_autogen_revision.py, which builds a fresh temp
SQLite at head and diffs the live models against it — so a clean checkout
does not need a pre-existing ./data/deerflow.db. Review the generated file
and switch raw op.add_column / op.drop_column calls to the idempotent
helpers in migrations/_helpers.py before committing. There is no
make migrate / make migrate-stamp target on purpose — Gateway startup is
the only execution path, which keeps operational mistakes off the table. See
backend/CLAUDE.md (Schema Migrations) for the full design.
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
make detect-blocking-io statically scans backend business code for blocking
IO that may run on the backend event loop and is not test-coverage-bound. It
prints a concise summary for human review and writes complete JSON findings to
.deer-flow/blocking-io-findings.json at the repository root (regardless of
whether the target is invoked from the repo root or from backend/). JSON
findings include both broad IO category and review-oriented fields such as
priority, location, blocking_call, event_loop_exposure, reason, and
code. priority is a deterministic review ordering from the operation type,
not proof of a bug. Bare-name same-file calls are resolved by function name,
so duplicate helper names in one file can conservatively over-report async
reachability.
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
- Configuration Guide
- Architecture Details
- API Reference
- File Upload
- Path Examples
- Context Summarization
- Plan Mode
- Setup Guide
License
See the LICENSE file in the project root.
Contributing
See CONTRIBUTING.md for contribution guidelines.