openclaw-trakt
تایید شدهTrack and recommend TV shows and movies using Trakt.tv. Use when the user asks for show/movie recommendations, wants to track what they're watching, check their watchlist, or get personalized suggestions based on their viewing history. Requires Trakt.tv account with Pro subscription for full functionality.
(0)
۱.۰k
۱
۲
نصب مهارت
مهارتها کدهای شخص ثالث از مخازن عمومی GitHub هستند. SkillHub الگوهای مخرب شناختهشده را اسکن میکند اما نمیتواند امنیت را تضمین کند. قبل از نصب، کد منبع را بررسی کنید.
نصب سراسری (سطح کاربر):
npx skillhub install openclaw/skills/openclaw-traktنصب در پروژه فعلی:
npx skillhub install openclaw/skills/openclaw-trakt --projectمسیر پیشنهادی: ~/.claude/skills/openclaw-trakt/
محتوای SKILL.md
---
name: openclaw-trakt
description: Track and recommend TV shows and movies using Trakt.tv. Use when the user asks for show/movie recommendations, wants to track what they're watching, check their watchlist, or get personalized suggestions based on their viewing history. Requires Trakt.tv account with Pro subscription for full functionality.
---
# Trakt.tv Integration for OpenClaw
Integrate with Trakt.tv to track watch history and provide personalized show/movie recommendations.
**📚 Trakt API Documentation:** <https://trakt.docs.apiary.io/>
## First-Time Setup Required
**Before using this skill, run the interactive setup:**
### Automated Setup (Recommended)
```bash
python3 scripts/setup.py
```
This will guide you through:
1. Installing dependencies
2. Creating a Trakt application
3. Configuring credentials
4. Authenticating with PIN
5. Testing the integration
### Manual Setup
If automated setup doesn't work, follow the manual steps in the Setup section below.
### Interactive Setup for OpenClaw
When a user asks to "install Trakt" or "set up Trakt integration," OpenClaw should:
1. Read `INSTALL.md` for detailed interactive flow
2. Or run `python3 scripts/setup.py` and guide user through prompts
---
## Features
- Track watch history (automatically synced by Trakt from streaming services)
- Get personalized recommendations based on viewing habits
- Access user watchlists and collections
- Search for shows and movies
- View trending content
## Prerequisites
1. **Python dependencies:**
```bash
# Install via pip (with --break-system-packages if needed)
pip3 install requests
# OR use a virtual environment (recommended)
python3 -m venv ~/.openclaw-venv
source ~/.openclaw-venv/bin/activate
pip install requests
```
Alternatively, install via Homebrew if available:
```bash
brew install python-requests
```
2. **Trakt.tv account** with Pro subscription (required for automatic watch tracking)
3. **Trakt API application** - Create at <https://trakt.tv/oauth/applications>
4. **Configuration file:** `~/.openclaw/trakt_config.json` (see setup below)
## Setup
### 1. Create Trakt Application
1. Visit <https://trakt.tv/oauth/applications>
2. Click "New Application"
3. Fill in the form:
- Name: "OpenClaw Assistant"
- Description: "Personal AI assistant integration"
- Redirect URI: `urn:ietf:wg:oauth:2.0:oob` (for PIN auth)
- Permissions: Check all that apply
4. Save and note your Client ID and Client Secret
### 2. Create Configuration File
Create `~/.openclaw/trakt_config.json` with your credentials:
```json
{
"client_id": "YOUR_CLIENT_ID_HERE",
"client_secret": "YOUR_CLIENT_SECRET_HERE",
"access_token": "",
"refresh_token": ""
}
```
Replace `YOUR_CLIENT_ID_HERE` and `YOUR_CLIENT_SECRET_HERE` with your actual values from step 1.
**Note:** Leave `access_token` and `refresh_token` empty - they'll be filled automatically after authentication.
### 3. Authenticate
Run the authentication script:
```bash
python3 scripts/trakt_client.py auth
```
This will output a PIN URL. Visit it, authorize the app, and run:
```bash
python3 scripts/trakt_client.py auth <PIN>
```
Authentication tokens are saved to `~/.openclaw/trakt_config.json`
## Usage
### Get Recommendations
When a user asks for show/movie recommendations:
```bash
python3 scripts/trakt_client.py recommend
```
This returns personalized recommendations based on the user's watch history and ratings.
### Check Watch History
```bash
python3 scripts/trakt_client.py history
```
Returns the user's recent watch history.
### View Watchlist
```bash
python3 scripts/trakt_client.py watchlist
```
Shows content the user has saved to watch later.
### Search
```bash
python3 scripts/trakt_client.py search "Breaking Bad"
```
Search for specific shows or movies.
### Trending Content
```bash
python3 scripts/trakt_client.py trending
```
Get currently trending shows and movies.
## Recommendation Workflow
When a user asks "What should I watch?" or similar:
1. **Get personalized recommendations:**
```bash
python3 scripts/trakt_client.py recommend
```
2. **Parse the results** and present them naturally:
- Show title, year, rating
- Brief description/genre
- Why it's recommended (if available)
3. **Optionally check watchlist** to avoid suggesting shows they already plan to watch
4. **Consider recent history** to avoid re-suggesting recently watched content
## API Reference
See `references/api.md` for detailed Trakt API endpoint documentation.
## Common Use Cases
**"What should I watch tonight?"**
- Get recommendations, filter by mood/genre if specified
- Check trending if user wants something popular
**"Add [show] to my watchlist"**
- Search for the show
- Add to Trakt watchlist (requires additional endpoint implementation)
**"What have I been watching lately?"**
- Get watch history
- Summarize recent shows/movies
**"Is [show] trending?"**
- Get trending list
- Search for specific show
## Limitations
- Trakt Pro subscription required for automatic watch tracking from streaming services
- Recommendations improve over time as watch history grows
- API rate limits apply: 1000 requests per 5 minutes (authenticated)
- Full API documentation: <https://trakt.docs.apiary.io/>
## Troubleshooting
**"Authentication failed"**
- Verify CLIENT_ID and CLIENT_SECRET are set correctly in `~/.openclaw/trakt_config.json`
- Ensure PIN is copied accurately (case-sensitive)
- Check that your Trakt application has proper permissions
**"No recommendations returned"**
- User may not have enough watch history yet
- Try falling back to trending content
- Ensure user has rated some content on Trakt
**"API request failed"**
- Check authentication token hasn't expired
- Verify network connectivity
- Check Trakt API status: https://status.trakt.tv