Skip to main content

AI Intervention Agent: MCP server enabling real-time user intervention in AI-assisted development workflows.

Project description

AI Intervention Agent

AI Intervention Agent

Real-time user intervention for MCP agents.

Tests OpenSSF Scorecard CodeQL PyPI Python Versions Open VSX Open VSX Downloads Open VSX Rating Ask DeepWiki License

English | 简体中文

When using AI CLIs/IDEs, agents can drift from your intent. This project gives you a simple way to intervene at key moments, review context in a Web UI, and send your latest instructions via interactive_feedback so the agent can continue on track.

Works with Cursor, VS Code, Claude Code, Augment, Windsurf, Trae, and more.

Quick start

Option 1: Using uvx (Recommended)

Install in Cursor Install in VS Code

Configure your AI tool to launch the MCP server directly via uvx (this automatically installs and runs the latest version):

{
  "mcpServers": {
    "ai-intervention-agent": {
      "command": "uvx",
      "args": ["ai-intervention-agent"],
      "timeout": 600,
      "autoApprove": ["interactive_feedback"]
    }
  }
}

Option 2: Using pip

  1. First, install the package manually (please remember to manually pip install --upgrade ai-intervention-agent periodically to get updates):
pip install ai-intervention-agent
  1. Configure your AI tool to launch the installed MCP server:
{
  "mcpServers": {
    "ai-intervention-agent": {
      "command": "ai-intervention-agent",
      "args": [],
      "timeout": 600,
      "autoApprove": ["interactive_feedback"]
    }
  }
}

[!NOTE] interactive_feedback is a long-running tool. Some clients have a hard request timeout, so the Web UI provides a countdown + auto re-submit option to keep sessions alive.

  • Default: feedback.frontend_countdown=240 seconds
  • Range: 0 (disabled) or [10, 3600] seconds. The default 240 stays under the common 300s session hard timeout; raise it intentionally when your client allows longer turns.
  1. (Optional) Customize your config:
  • On first run, config.toml will be created under your OS user config directory (see docs/configuration.md).
  • Example:
[web_ui]
port = 8080

[feedback]
frontend_countdown = 240
backend_max_wait = 600
Prompt snippet (copy/paste)
- Only ask me through the MCP `ai-intervention-agent` tool; do not ask directly in chat or ask for end-of-task confirmation in chat.
- If a tool call fails, keep asking again through `ai-intervention-agent` instead of making assumptions, until the tool call succeeds.

ai-intervention-agent usage details:

- If requirements are unclear, use `ai-intervention-agent` to ask for clarification with predefined options.
- If there are multiple approaches, use `ai-intervention-agent` to ask instead of deciding unilaterally.
- If a plan/strategy needs to change, use `ai-intervention-agent` to ask instead of deciding unilaterally.
- Before finishing a request, always ask for feedback via `ai-intervention-agent`.
- Do not end the conversation/request unless the user explicitly allows it via `ai-intervention-agent`.

Screenshots

Desktop - feedback page Mobile - feedback page

Feedback page (auto switches between dark/light)

More screenshots (empty state + settings)

Desktop - empty state Mobile - empty state

Empty state (auto switches between dark/light)

Desktop - settings Mobile - settings

Settings (dark)

Key features

  • Real-time intervention: the agent pauses and waits for your input via interactive_feedback
  • Web UI: Markdown, code highlighting, and math rendering
  • Multi-task: tab switching with independent countdown timers
  • Auto re-submit: keep sessions alive by auto-submitting at timeout
  • Notifications: web / sound / system / Bark
  • SSH-friendly: great with port forwarding
  • MCP-spec compliant (2025-11-25 protocol): tool annotations, server identity, and self-contained icons let ChatGPT Desktop / Claude Desktop / Cursor render the server natively without nagging "destructive operation" confirmations

How it works

  1. Your AI client calls the MCP tool interactive_feedback.
  2. The MCP server ensures the Web UI process is running, then creates a task via HTTP (POST /api/tasks).
  3. The browser (or VS Code Webview) renders tasks by polling the Web UI API.
  4. When you submit feedback, the Web UI completes the task in the task queue.
  5. The MCP server polls for completion (GET /api/tasks/{task_id}) and returns your feedback (text + images) back to the AI client.
  6. Optionally, the MCP server triggers notifications (Bark / system / sound / web hints) based on your config.

VS Code extension (optional)

Item Value
Purpose Embed the interaction panel into VS Code’s sidebar to avoid switching to a browser.
Install (Open VSX) Open VSX
Download VSIX (GitHub Release) GitHub Releases
Setting ai-intervention-agent.serverUrl (should match your Web UI URL, e.g. http://localhost:8080; you can change web_ui.port in config.toml.default)
Other settings ai-intervention-agent.logLevel (Output → AI Intervention Agent). macOS native notifications are enabled by default and can be toggled in the sidebar's Notification Settings panel. See packages/vscode/README.md for the full settings list and the AppleScript executor security model.

Configuration

Item Value
Docs (English) docs/configuration.md
Docs (简体中文) docs/configuration.zh-CN.md
Default template config.toml.default (on first run it will be copied to config.toml)
OS User config directory
Linux ~/.config/ai-intervention-agent/
macOS ~/Library/Application Support/ai-intervention-agent/
Windows %APPDATA%/ai-intervention-agent/

Architecture

flowchart TD
  subgraph CLIENTS["AI clients"]
    AI_CLIENT["AI CLI / IDE<br/>(Cursor, VS Code, Claude Code, ...)"]
  end

  subgraph MCP_PROC["MCP server process (Python)"]
    MCP_SRV["ai-intervention-agent<br/>(server.py / FastMCP)"]
    MCP_TOOL["MCP tool<br/>interactive_feedback"]
    SVC_MGR["Service manager<br/>(ServiceManager)"]
    CFG_MGR_MCP["Config manager<br/>(config_manager.py)"]
    NOTIF_MGR["Notification manager<br/>(notification_manager.py)"]
    NOTIF_PROVIDERS["Providers<br/>(notification_providers.py)"]
    MCP_SRV --> MCP_TOOL
    MCP_SRV --> CFG_MGR_MCP
    MCP_SRV --> NOTIF_MGR
    NOTIF_MGR --> NOTIF_PROVIDERS
  end

  subgraph WEB_PROC["Web UI process (Python / Flask)"]
    WEB_SRV["Web UI service<br/>(web_ui.py / Flask)"]
    WEB_CFG_MGR["Config manager<br/>(config_manager.py)"]
    HTTP_API["HTTP API<br/>(/api/*)"]
    TASK_Q["Task queue<br/>(task_queue.py)"]
    WEB_FRONTEND["Browser frontend<br/>(static/js/app.js + multi_task.js)"]
    WEB_SRV --> HTTP_API
    WEB_SRV --> TASK_Q
    WEB_SRV --> WEB_CFG_MGR
    WEB_FRONTEND <-->|poll /api/tasks| HTTP_API
    WEB_FRONTEND -->|submit feedback| HTTP_API
  end

  subgraph VSCODE_PROC["VS Code extension (Node)"]
    VSCODE_EXT["Extension host<br/>(packages/vscode/extension.js)"]
    VSCODE_WEBVIEW["Webview frontend<br/>(webview.js + webview-ui.js<br/>+ webview-notify-core.js + webview-settings-ui.js)"]
    VSCODE_EXT --> VSCODE_WEBVIEW
    VSCODE_WEBVIEW <-->|poll /api/tasks| HTTP_API
    VSCODE_WEBVIEW -->|submit feedback| HTTP_API
  end

  subgraph USER_UI["User interfaces"]
    BROWSER["Browser<br/>(desktop/mobile)"]
    VSCODE["VS Code<br/>(sidebar panel)"]
    USER["User"]
  end

  CFG_FILE["config.toml<br/>(user config directory)"]

  AI_CLIENT -->|MCP call| MCP_TOOL
  MCP_TOOL -->|start/check Web UI| SVC_MGR
  SVC_MGR -->|spawn/monitor| WEB_SRV

  USER -->|input / click| WEB_FRONTEND
  USER -->|input / click| VSCODE_WEBVIEW
  BROWSER -->|load UI| WEB_FRONTEND
  VSCODE -->|render UI| VSCODE_WEBVIEW

  MCP_TOOL -->|"HTTP POST /api/tasks"| HTTP_API
  MCP_TOOL -->|"HTTP GET /api/tasks/{task_id}"| HTTP_API

  WEB_CFG_MGR <-->|read/write + watcher| CFG_FILE
  CFG_MGR_MCP <-->|read/write + watcher| CFG_FILE

  MCP_TOOL -->|trigger notifications| NOTIF_MGR
  NOTIF_PROVIDERS -->|system / sound / Bark / web hints| USER

Documentation

Related projects

Acknowledgements

This project's heritage traces back to Fábio Ferreira (2024) and Pau Oliva (2025), whose original noopstudios/interactive-feedback-mcp and poliva/interactive-feedback-mcp seeded the MCP interactive_feedback tool surface. Their copyright notices are preserved in LICENSE per the MIT license terms. The v1.5.x line is a substantial rewrite — Web UI, VS Code extension, i18n, notification stack, CI/CD pipeline — owned and maintained by @xiadengma (PyPI / Open VSX / VS Code Marketplace publisher).

License

MIT License

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ai_intervention_agent-1.5.24.tar.gz (955.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ai_intervention_agent-1.5.24-py3-none-any.whl (3.6 MB view details)

Uploaded Python 3

File details

Details for the file ai_intervention_agent-1.5.24.tar.gz.

File metadata

  • Download URL: ai_intervention_agent-1.5.24.tar.gz
  • Upload date:
  • Size: 955.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.13

File hashes

Hashes for ai_intervention_agent-1.5.24.tar.gz
Algorithm Hash digest
SHA256 d3b675cf73c6f58cbc8b7520bbefcbd1170b42280c9c89d8739df16986fb13db
MD5 238d0be9d02d6bdc349860d2f5b35e57
BLAKE2b-256 88318c6bd9c483457546c0a0744fdc424ce389e06991cd0820118b0dbd9124fc

See more details on using hashes here.

Provenance

The following attestation bundles were made for ai_intervention_agent-1.5.24.tar.gz:

Publisher: release.yml on XIADENGMA/ai-intervention-agent

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file ai_intervention_agent-1.5.24-py3-none-any.whl.

File metadata

File hashes

Hashes for ai_intervention_agent-1.5.24-py3-none-any.whl
Algorithm Hash digest
SHA256 97ef4bc0e74dc2d0a45f357ec6cf35fc01ab0d82a0784763f05029a0b9aebea1
MD5 7f0d9750129128b0185860de53664d9d
BLAKE2b-256 b34b97c30955d72ace4152dce060876306002c8cf7330c46700731b543b972d6

See more details on using hashes here.

Provenance

The following attestation bundles were made for ai_intervention_agent-1.5.24-py3-none-any.whl:

Publisher: release.yml on XIADENGMA/ai-intervention-agent

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page