* fix(docker-api): migrate to modern datetime library API
Signed-off-by: Emmanuel Ferdman <emmanuelferdman@gmail.com>
* Fix examples in README.md
* feat(docker): add user-provided hooks support to Docker API
Implements comprehensive hooks functionality allowing users to provide custom Python
functions as strings that execute at specific points in the crawling pipeline.
Key Features:
- Support for all 8 crawl4ai hook points:
• on_browser_created: Initialize browser settings
• on_page_context_created: Configure page context
• before_goto: Pre-navigation setup
• after_goto: Post-navigation processing
• on_user_agent_updated: User agent modification handling
• on_execution_started: Crawl execution initialization
• before_retrieve_html: Pre-extraction processing
• before_return_html: Final HTML processing
Implementation Details:
- Created UserHookManager for validation, compilation, and safe execution
- Added IsolatedHookWrapper for error isolation and timeout protection
- AST-based validation ensures code structure correctness
- Sandboxed execution with restricted builtins for security
- Configurable timeout (1-120 seconds) prevents infinite loops
- Comprehensive error handling ensures hooks don't crash main process
- Execution tracking with detailed statistics and logging
API Changes:
- Added HookConfig schema with code and timeout fields
- Extended CrawlRequest with optional hooks parameter
- Added /hooks/info endpoint for hook discovery
- Updated /crawl and /crawl/stream endpoints to support hooks
Safety Features:
- Malformed hooks return clear validation errors
- Hook errors are isolated and reported without stopping crawl
- Execution statistics track success/failure/timeout rates
- All hook results are JSON-serializable
Testing:
- Comprehensive test suite covering all 8 hooks
- Error handling and timeout scenarios validated
- Authentication, performance, and content extraction examples
- 100% success rate in production testing
Documentation:
- Added extensive hooks section to docker-deployment.md
- Security warnings about user-provided code risks
- Real-world examples using httpbin.org, GitHub, BBC
- Best practices and troubleshooting guide
ref #1377
* fix(deep-crawl): BestFirst priority inversion; remove pre-scoring truncation. ref #1253
Use negative scores in PQ to visit high-score URLs first and drop link cap prior to scoring; add test for ordering.
* docs: Update URL seeding examples to use proper async context managers
- Wrap all AsyncUrlSeeder usage with async context managers
- Update URL seeding adventure example to use "sitemap+cc" source, focus on course posts, and add stream=True parameter to fix runtime error
* fix(crawler): Removed the incorrect reference in browser_config variable #1310
* docs: update Docker instructions to use the latest release tag
* fix(docker): Fix LLM API key handling for multi-provider support
Previously, the system incorrectly used OPENAI_API_KEY for all LLM providers
due to a hardcoded api_key_env fallback in config.yml. This caused authentication
errors when using non-OpenAI providers like Gemini.
Changes:
- Remove api_key_env from config.yml to let litellm handle provider-specific env vars
- Simplify get_llm_api_key() to return None, allowing litellm to auto-detect keys
- Update validate_llm_provider() to trust litellm's built-in key detection
- Update documentation to reflect the new automatic key handling
The fix leverages litellm's existing capability to automatically find the correct
environment variable for each provider (OPENAI_API_KEY, GEMINI_API_TOKEN, etc.)
without manual configuration.
ref #1291
* docs: update adaptive crawler docs and cache defaults; remove deprecated examples (#1330)
- Replace BaseStrategy with CrawlStrategy in custom strategy examples (DomainSpecificStrategy, HybridStrategy)
- Remove “Custom Link Scoring” and “Caching Strategy” sections no longer aligned with current library
- Revise memory pruning example to use adaptive.get_relevant_content and index-based retention of top 500 docs
- Correct Quickstart note: default cache mode is CacheMode.BYPASS; instruct enabling with CacheMode.ENABLED
* fix(utils): Improve URL normalization by avoiding quote/unquote to preserve '+' signs. ref #1332
* feat: Add comprehensive website to API example with frontend
This commit adds a complete, web scraping API example that demonstrates how to get structured data from any website and use it like an API using the crawl4ai library with a minimalist frontend interface.
Core Functionality
- AI-powered web scraping with plain English queries
- Dual scraping approaches: Schema-based (faster) and LLM-based (flexible)
- Intelligent schema caching for improved performance
- Custom LLM model support with API key management
- Automatic duplicate request prevention
Modern Frontend Interface
- Minimalist black-and-white design inspired by modern web apps
- Responsive layout with smooth animations and transitions
- Three main pages: Scrape Data, Models Management, API Request History
- Real-time results display with JSON formatting
- Copy-to-clipboard functionality for extracted data
- Toast notifications for user feedback
- Auto-scroll to results when scraping starts
Model Management System
- Web-based model configuration interface
- Support for any LLM provider (OpenAI, Gemini, Anthropic, etc.)
- Simplified configuration requiring only provider and API token
- Add, list, and delete model configurations
- Secure storage of API keys in local JSON files
API Request History
- Automatic saving of all API requests and responses
- Display of request history with URL, query, and cURL commands
- Duplicate prevention (same URL + query combinations)
- Request deletion functionality
- Clean, simplified display focusing on essential information
Technical Implementation
Backend (FastAPI)
- RESTful API with comprehensive endpoints
- Pydantic models for request/response validation
- Async web scraping with crawl4ai library
- Error handling with detailed error messages
- File-based storage for models and request history
Frontend (Vanilla JS/CSS/HTML)
- No framework dependencies - pure HTML, CSS, JavaScript
- Modern CSS Grid and Flexbox layouts
- Custom dropdown styling with SVG arrows
- Responsive design for mobile and desktop
- Smooth scrolling and animations
Core Library Integration
- WebScraperAgent class for orchestration
- ModelConfig class for LLM configuration management
- Schema generation and caching system
- LLM extraction strategy support
- Browser configuration with headless mode
* fix(dependencies): add cssselect to project dependencies
Fixes bug reported in issue #1405
[Bug]: Excluded selector (excluded_selector) doesn't work
This commit reintroduces the cssselect library which was removed by PR (https://github.com/unclecode/crawl4ai/pull/1368) and merged via (437395e490).
Integration tested against 0.7.4 Docker container. Reintroducing cssselector package eliminated errors seen in logs and excluded_selector functionality was restored.
Refs: #1405
* fix(docker): resolve filter serialization and JSON encoding errors in deep crawl strategy (ref #1419)
- Fix URLPatternFilter serialization by preventing private __slots__ from being serialized as constructor params
- Add public attributes to URLPatternFilter to store original constructor parameters for proper serialization
- Handle property descriptors in CrawlResult.model_dump() to prevent JSON serialization errors
- Ensure filter chains work correctly with Docker client and REST API
The issue occurred because:
1. Private implementation details (_simple_suffixes, etc.) were being serialized and passed as constructor arguments during deserialization
2. Property descriptors were being included in the serialized output, causing "Object of type property is not JSON serializable" errors
Changes:
- async_configs.py: Comment out __slots__ serialization logic (lines 100-109)
- filters.py: Add patterns, use_glob, reverse to URLPatternFilter __slots__ and store as public attributes
- models.py: Convert property descriptors to strings in model_dump() instead of including them directly
* fix(logger): ensure logger is a Logger instance in crawling strategies. ref #1437
* feat(docker): Add temperature and base_url parameters for LLM configuration. ref #1035
Implement hierarchical configuration for LLM parameters with support for:
- Temperature control (0.0-2.0) to adjust response creativity
- Custom base_url for proxy servers and alternative endpoints
- 4-tier priority: request params > provider env > global env > defaults
Add helper functions in utils.py, update API schemas and handlers,
support environment variables (LLM_TEMPERATURE, OPENAI_TEMPERATURE, etc.),
and provide comprehensive documentation with examples.
* feat(docker): improve docker error handling
- Return comprehensive error messages along with status codes for api internal errors.
- Fix fit_html property serialization issue in both /crawl and /crawl/stream endpoints
- Add sanitization to ensure fit_html is always JSON-serializable (string or None)
- Add comprehensive error handling test suite.
* #1375 : refactor(proxy) Deprecate 'proxy' parameter in BrowserConfig and enhance proxy string parsing
- Updated ProxyConfig.from_string to support multiple proxy formats, including URLs with credentials.
- Deprecated the 'proxy' parameter in BrowserConfig, replacing it with 'proxy_config' for better flexibility.
- Added warnings for deprecated usage and clarified behavior when both parameters are provided.
- Updated documentation and tests to reflect changes in proxy configuration handling.
* Remove deprecated test for 'proxy' parameter in BrowserConfig and update .gitignore to include test_scripts directory.
* feat: add preserve_https_for_internal_links flag to maintain HTTPS during crawling. Ref #1410
Added a new `preserve_https_for_internal_links` configuration flag that preserves the original HTTPS scheme for same-domain links even when the server redirects to HTTP.
* feat: update documentation for preserve_https_for_internal_links. ref #1410
* fix: drop Python 3.9 support and require Python >=3.10.
The library no longer supports Python 3.9 and so it was important to drop all references to python 3.9.
Following changes have been made:
- pyproject.toml: set requires-python to ">=3.10"; remove 3.9 classifier
- setup.py: set python_requires to ">=3.10"; remove 3.9 classifier
- docs: update Python version mentions
- deploy/docker/c4ai-doc-context.md: options -> 3.10, 3.11, 3.12, 3.13
* issue #1329 refactor(crawler): move unwanted properties to CrawlerRunConfig class
* fix(auth): fixed Docker JWT authentication. ref #1442
* remove: delete unused yoyo snapshot subproject
* fix: raise error on last attempt failure in perform_completion_with_backoff. ref #989
* Commit without API
* fix: update option labels in request builder for clarity
* fix: allow custom LLM providers for adaptive crawler embedding config. ref: #1291
- Change embedding_llm_config from Dict to Union[LLMConfig, Dict] for type safety
- Add backward-compatible conversion property _embedding_llm_config_dict
- Replace all hardcoded OpenAI embedding configs with configurable options
- Fix LLMConfig object attribute access in query expansion logic
- Add comprehensive example demonstrating multiple provider configurations
- Update documentation with both LLMConfig object and dictionary usage patterns
Users can now specify any LLM provider for query expansion in embedding strategy:
- New: embedding_llm_config=LLMConfig(provider='anthropic/claude-3', api_token='key')
- Old: embedding_llm_config={'provider': 'openai/gpt-4', 'api_token': 'key'} (still works)
* refactor(BrowserConfig): change deprecation warning for 'proxy' parameter to UserWarning
* feat(StealthAdapter): fix stealth features for Playwright integration. ref #1481
* #1505 fix(api): update config handling to only set base config if not provided by user
* fix(docker-deployment): replace console.log with print for metadata extraction
* Release v0.7.5: The Update
- Updated version to 0.7.5
- Added comprehensive demo and release notes
- Updated documentation
* refactor(release): remove memory management section for cleaner documentation. ref #1443
* feat(docs): add brand book and page copy functionality
- Add comprehensive brand book with color system, typography, components
- Add page copy dropdown with markdown copy/view functionality
- Update mkdocs.yml with new assets and branding navigation
- Use terminal-style ASCII icons and condensed menu design
* Update gitignore add local scripts folder
* fix: remove this import as it causes python to treat "json" as a variable in the except block
* fix: always return a list, even if we catch an exception
* feat(marketplace): Add Crawl4AI marketplace with secure configuration
- Implement marketplace frontend and admin dashboard
- Add FastAPI backend with environment-based configuration
- Use .env file for secrets management
- Include data generation scripts
- Add proper CORS configuration
- Remove hardcoded password from admin login
- Update gitignore for security
* fix(marketplace): Update URLs to use /marketplace path and relative API endpoints
- Change API_BASE to relative '/api' for production
- Move marketplace to /marketplace instead of /marketplace/frontend
- Update MkDocs navigation
- Fix logo path in marketplace index
* fix(docs): hide copy menu on non-markdown pages
* feat(marketplace): add sponsor logo uploads
Co-authored-by: factory-droid[bot] <138933559+factory-droid[bot]@users.noreply.github.com>
* feat(docs): add chatgpt quick link to page actions
* fix(marketplace): align admin api with backend endpoints
* fix(marketplace): isolate api under marketplace prefix
* fix(marketplace): resolve app detail page routing and styling issues
- Fixed JavaScript errors from missing HTML elements (install-code, usage-code, integration-code)
- Added missing CSS classes for tabs, overview layout, sidebar, and integration content
- Fixed tab navigation to display horizontally in single line
- Added proper padding to tab content sections (removed from container, added to content)
- Fixed tab selector from .nav-tab to .tab-btn to match HTML structure
- Added sidebar styling with stats grid and metadata display
- Improved responsive design with mobile-friendly tab scrolling
- Fixed code block positioning for copy buttons
- Removed margin from first headings to prevent extra spacing
- Added null checks for DOM elements in JavaScript to prevent errors
These changes resolve the routing issue where clicking on apps caused page redirects,
and fix the broken layout where CSS was not properly applied to the app detail page.
* fix(marketplace): prevent hero image overflow and secondary card stretching
- Fixed hero image to 200px height with min/max constraints
- Added object-fit: cover to hero-image img elements
- Changed secondary-featured align-items from stretch to flex-start
- Fixed secondary-card height to 118px (no flex: 1 stretching)
- Updated responsive grid layouts for wider screens
- Added flex: 1 to hero-content for better content distribution
These changes ensure a rigid, predictable layout that prevents:
1. Large images from pushing text content down
2. Single secondary cards from stretching to fill entire height
* feat: Add hooks utility for function-based hooks with Docker client integration. ref #1377
Add hooks_to_string() utility function that converts Python function objects
to string representations for the Docker API, enabling developers to write hooks
as regular Python functions instead of strings.
Core Changes:
- New hooks_to_string() utility in crawl4ai/utils.py using inspect.getsource()
- Docker client now accepts both function objects and strings for hooks
- Automatic detection and conversion in Crawl4aiDockerClient._prepare_request()
- New hooks and hooks_timeout parameters in client.crawl() method
Documentation:
- Docker client examples with function-based hooks (docs/examples/docker_client_hooks_example.py)
- Updated main Docker deployment guide with comprehensive hooks section
- Added unit tests for hooks utility (tests/docker/test_hooks_utility.py)
* feat: Add hooks utility for function-based hooks with Docker client integration. ref #1377
Add hooks_to_string() utility function that converts Python function objects
to string representations for the Docker API, enabling developers to write hooks
as regular Python functions instead of strings.
Core Changes:
- New hooks_to_string() utility in crawl4ai/utils.py using inspect.getsource()
- Docker client now accepts both function objects and strings for hooks
- Automatic detection and conversion in Crawl4aiDockerClient._prepare_request()
- New hooks and hooks_timeout parameters in client.crawl() method
Documentation:
- Docker client examples with function-based hooks (docs/examples/docker_client_hooks_example.py)
- Updated main Docker deployment guide with comprehensive hooks section
- Added unit tests for hooks utility (tests/docker/test_hooks_utility.py)
* fix(docs): clarify Docker Hooks System with function-based API in README
* docs: Add demonstration files for v0.7.5 release, showcasing the new Docker Hooks System and all other features.
* docs: Update 0.7.5 video walkthrough
* docs: add complete SDK reference documentation
Add comprehensive single-page SDK reference combining:
- Installation & Setup
- Quick Start
- Core API (AsyncWebCrawler, arun, arun_many, CrawlResult)
- Configuration (BrowserConfig, CrawlerConfig, Parameters)
- Crawling Patterns
- Content Processing (Markdown, Fit Markdown, Selection, Interaction, Link & Media)
- Extraction Strategies (LLM and No-LLM)
- Advanced Features (Session Management, Hooks & Auth)
Generated using scripts/generate_sdk_docs.py in ultra-dense mode
optimized for AI assistant consumption.
Stats: 23K words, 185 code blocks, 220KB
* feat: add AI assistant skill package for Crawl4AI
- Create comprehensive skill package for AI coding assistants
- Include complete SDK reference (23K words, v0.7.4)
- Add three extraction scripts (basic, batch, pipeline)
- Implement version tracking in skill and scripts
- Add prominent download section on homepage
- Place skill in docs/assets for web distribution
The skill enables AI assistants like Claude, Cursor, and Windsurf
to effectively use Crawl4AI with optimized workflows for markdown
generation and data extraction.
* fix: remove non-existent wiki link and clarify skill usage instructions
* fix: update Crawl4AI skill with corrected parameters and examples
- Fixed CrawlerConfig → CrawlerRunConfig throughout
- Fixed parameter names (timeout → page_timeout, store_html removed)
- Fixed schema format (selector → baseSelector)
- Corrected proxy configuration (in BrowserConfig, not CrawlerRunConfig)
- Fixed fit_markdown usage with content filters
- Added comprehensive references to docs/examples/ directory
- Created safe packaging script to avoid root directory pollution
- All scripts tested and verified working
* fix: thoroughly verify and fix all Crawl4AI skill examples
- Cross-checked every section against actual docs
- Fixed BM25ContentFilter parameters (user_query, bm25_threshold)
- Removed incorrect wait_for selector from basic example
- Added comprehensive test suite (4 test files)
- All examples now tested and verified working
- Tests validate: basic crawling, markdown generation, data extraction, advanced patterns
- Package size: 76.6 KB (includes tests for future validation)
* feat(ci): split release pipeline and add Docker caching
- Split release.yml into PyPI/GitHub release and Docker workflows
- Add GitHub Actions cache for Docker builds (10-15x faster rebuilds)
- Implement dual-trigger for docker-release.yml (auto + manual)
- Add comprehensive workflow documentation in .github/workflows/docs/
- Backup original workflow as release.yml.backup
* feat: add webhook notifications for crawl job completion
Implements webhook support for the crawl job API to eliminate polling requirements.
Changes:
- Added WebhookConfig and WebhookPayload schemas to schemas.py
- Created webhook.py with WebhookDeliveryService class
- Integrated webhook notifications in api.py handle_crawl_job
- Updated job.py CrawlJobPayload to accept webhook_config
- Added webhook configuration section to config.yml
- Included comprehensive usage examples in WEBHOOK_EXAMPLES.md
Features:
- Webhook notifications on job completion (success/failure)
- Configurable data inclusion in webhook payload
- Custom webhook headers support
- Global default webhook URL configuration
- Exponential backoff retry logic (5 attempts: 1s, 2s, 4s, 8s, 16s)
- 30-second timeout per webhook call
Usage:
POST /crawl/job with optional webhook_config:
- webhook_url: URL to receive notifications
- webhook_data_in_payload: include full results (default: false)
- webhook_headers: custom headers for authentication
Generated with Claude Code https://claude.com/claude-code
Co-Authored-By: Claude <noreply@anthropic.com>
* docs: add webhook documentation to Docker README
Added comprehensive webhook section to README.md including:
- Overview of asynchronous job queue with webhooks
- Benefits and use cases
- Quick start examples
- Webhook authentication
- Global webhook configuration
- Job status polling alternative
Updated table of contents and summary to include webhook feature.
Maintains consistent tone and style with rest of README.
Generated with Claude Code https://claude.com/claude-code
Co-Authored-By: Claude <noreply@anthropic.com>
* docs: add webhook example for Docker deployment
Added docker_webhook_example.py demonstrating:
- Submitting crawl jobs with webhook configuration
- Flask-based webhook receiver implementation
- Three usage patterns:
1. Webhook notification only (fetch data separately)
2. Webhook with full data in payload
3. Traditional polling approach for comparison
Includes comprehensive comments explaining:
- Webhook payload structure
- Authentication headers setup
- Error handling
- Production deployment tips
Example is fully functional and ready to run with Flask installed.
Generated with Claude Code https://claude.com/claude-code
Co-Authored-By: Claude <noreply@anthropic.com>
* test: add webhook implementation validation tests
Added comprehensive test suite to validate webhook implementation:
- Module import verification
- WebhookDeliveryService initialization
- Pydantic model validation (WebhookConfig)
- Payload construction logic
- Exponential backoff calculation
- API integration checks
All tests pass (6/6), confirming implementation is correct.
Generated with Claude Code https://claude.com/claude-code
Co-Authored-By: Claude <noreply@anthropic.com>
* test: add comprehensive webhook feature test script
Added end-to-end test script that automates webhook feature testing:
Script Features (test_webhook_feature.sh):
- Automatic branch switching and dependency installation
- Redis and server startup/shutdown management
- Webhook receiver implementation
- Integration test for webhook notifications
- Comprehensive cleanup and error handling
- Returns to original branch after completion
Test Flow:
1. Fetch and checkout webhook feature branch
2. Activate venv and install dependencies
3. Start Redis and Crawl4AI server
4. Submit crawl job with webhook config
5. Verify webhook delivery and payload
6. Clean up all processes and return to original branch
Documentation:
- WEBHOOK_TEST_README.md with usage instructions
- Troubleshooting guide
- Exit codes and safety features
Usage: ./tests/test_webhook_feature.sh
Generated with Claude Code https://claude.com/claude-code
Co-Authored-By: Claude <noreply@anthropic.com>
* fix: properly serialize Pydantic HttpUrl in webhook config
Use model_dump(mode='json') instead of deprecated dict() method to ensure
Pydantic special types (HttpUrl, UUID, etc.) are properly serialized to
JSON-compatible native Python types.
This fixes webhook delivery failures caused by HttpUrl objects remaining
as Pydantic types in the webhook_config dict, which caused JSON
serialization errors and httpx request failures.
Also update mcp requirement to >=1.18.0 for compatibility.
* feat: add webhook support for /llm/job endpoint
Add comprehensive webhook notification support for the /llm/job endpoint,
following the same pattern as the existing /crawl/job implementation.
Changes:
- Add webhook_config field to LlmJobPayload model (job.py)
- Implement webhook notifications in process_llm_extraction() with 4
notification points: success, provider validation failure, extraction
failure, and general exceptions (api.py)
- Store webhook_config in Redis task data for job tracking
- Initialize WebhookDeliveryService with exponential backoff retry logic
Documentation:
- Add Example 6 to WEBHOOK_EXAMPLES.md showing LLM extraction with webhooks
- Update Flask webhook handler to support both crawl and llm_extraction tasks
- Add TypeScript client examples for LLM jobs
- Add comprehensive examples to docker_webhook_example.py with schema support
- Clarify data structure differences between webhook and API responses
Testing:
- Add test_llm_webhook_feature.py with 7 validation tests (all passing)
- Verify pattern consistency with /crawl/job implementation
- Add implementation guide (WEBHOOK_LLM_JOB_IMPLEMENTATION.md)
* fix: remove duplicate comma in webhook_config parameter
* fix: update Crawl4AI Docker container port from 11234 to 11235
* docs: enhance README and docker-deployment documentation with Job Queue and Webhook API details
* docs: update docker_hooks_examples.py with comprehensive examples and improved structure
---------
Signed-off-by: Emmanuel Ferdman <emmanuelferdman@gmail.com>
Co-authored-by: Emmanuel Ferdman <emmanuelferdman@gmail.com>
Co-authored-by: Nezar Ali <abu5sohaib@gmail.com>
Co-authored-by: Soham Kukreti <kukretisoham@gmail.com>
Co-authored-by: James T. Wood <jamesthomaswood@gmail.com>
Co-authored-by: AHMET YILMAZ <tawfik@kidocode.com>
Co-authored-by: nafeqq-1306 <nafiquee@yahoo.com>
Co-authored-by: unclecode <unclecode@kidocode.com>
Co-authored-by: Martin Sjöborg <martin.sjoborg@quartr.se>
Co-authored-by: Martin Sjöborg <martin@sjoborg.org>
Co-authored-by: factory-droid[bot] <138933559+factory-droid[bot]@users.noreply.github.com>
Co-authored-by: Claude <noreply@anthropic.com>
33 KiB
Crawl4AI Docker Guide 🐳
Table of Contents
- Prerequisites
- Installation
- Dockerfile Parameters
- Using the API
- Additional API Endpoints
- MCP (Model Context Protocol) Support
- Metrics & Monitoring
- Deployment Scenarios
- Complete Examples
- Server Configuration
- Getting Help
- Summary
Prerequisites
Before we dive in, make sure you have:
- Docker installed and running (version 20.10.0 or higher), including
docker compose(usually bundled with Docker Desktop). gitfor cloning the repository.- At least 4GB of RAM available for the container (more recommended for heavy use).
- Python 3.10+ (if using the Python SDK).
- Node.js 16+ (if using the Node.js examples).
💡 Pro tip: Run
docker infoto check your Docker installation and available resources.
Installation
We offer several ways to get the Crawl4AI server running. The quickest way is to use our pre-built Docker Hub images.
Option 1: Using Pre-built Docker Hub Images (Recommended)
Pull and run images directly from Docker Hub without building locally.
1. Pull the Image
Our latest stable release is 0.7.6. Images are built with multi-arch manifests, so Docker automatically pulls the correct version for your system.
# Pull the latest stable version (0.7.6)
docker pull unclecode/crawl4ai:0.7.6
# Or use the latest tag (points to 0.7.6)
docker pull unclecode/crawl4ai:latest
2. Setup Environment (API Keys)
If you plan to use LLMs, create a .llm.env file in your working directory:
# Create a .llm.env file with your API keys
cat > .llm.env << EOL
# OpenAI
OPENAI_API_KEY=sk-your-key
# Anthropic
ANTHROPIC_API_KEY=your-anthropic-key
# Other providers as needed
# DEEPSEEK_API_KEY=your-deepseek-key
# GROQ_API_KEY=your-groq-key
# TOGETHER_API_KEY=your-together-key
# MISTRAL_API_KEY=your-mistral-key
# GEMINI_API_TOKEN=your-gemini-token
EOL
🔑 Note: Keep your API keys secure! Never commit
.llm.envto version control.
3. Run the Container
-
Basic run:
docker run -d \ -p 11235:11235 \ --name crawl4ai \ --shm-size=1g \ unclecode/crawl4ai:0.7.6 -
With LLM support:
# Make sure .llm.env is in the current directory docker run -d \ -p 11235:11235 \ --name crawl4ai \ --env-file .llm.env \ --shm-size=1g \ unclecode/crawl4ai:0.7.6
The server will be available at
http://localhost:11235. Visit/playgroundto access the interactive testing interface.
4. Stopping the Container
docker stop crawl4ai && docker rm crawl4ai
Docker Hub Versioning Explained
- Image Name:
unclecode/crawl4ai - Tag Format:
LIBRARY_VERSION[-SUFFIX](e.g.,0.7.0-r1)LIBRARY_VERSION: The semantic version of the corecrawl4aiPython librarySUFFIX: Optional tag for release candidates (``) and revisions (r1)
latestTag: Points to the most recent stable version- Multi-Architecture Support: All images support both
linux/amd64andlinux/arm64architectures through a single tag
Option 2: Using Docker Compose
Docker Compose simplifies building and running the service, especially for local development and testing.
1. Clone Repository
git clone https://github.com/unclecode/crawl4ai.git
cd crawl4ai
2. Environment Setup (API Keys)
If you plan to use LLMs, copy the example environment file and add your API keys. This file should be in the project root directory.
# Make sure you are in the 'crawl4ai' root directory
cp deploy/docker/.llm.env.example .llm.env
# Now edit .llm.env and add your API keys
Flexible LLM Provider Configuration:
The Docker setup now supports flexible LLM provider configuration through three methods:
-
Environment Variable (Highest Priority): Set
LLM_PROVIDERto override the defaultexport LLM_PROVIDER="anthropic/claude-3-opus" # Or in your .llm.env file: # LLM_PROVIDER=anthropic/claude-3-opus -
API Request Parameter: Specify provider per request
{ "url": "https://example.com", "provider": "groq/mixtral-8x7b" } -
Config File Default: Falls back to
config.yml(default:openai/gpt-4o-mini)
The system automatically selects the appropriate API key based on the provider.
3. Build and Run with Compose
The docker-compose.yml file in the project root provides a simplified approach that automatically handles architecture detection using buildx.
-
Run Pre-built Image from Docker Hub:
# Pulls and runs the release candidate from Docker Hub # Automatically selects the correct architecture IMAGE=unclecode/crawl4ai:0.7.6 docker compose up -d -
Build and Run Locally:
# Builds the image locally using Dockerfile and runs it # Automatically uses the correct architecture for your machine docker compose up --build -d -
Customize the Build:
# Build with all features (includes torch and transformers) INSTALL_TYPE=all docker compose up --build -d # Build with GPU support (for AMD64 platforms) ENABLE_GPU=true docker compose up --build -d
The server will be available at
http://localhost:11235.
4. Stopping the Service
# Stop the service
docker compose down
Option 3: Manual Local Build & Run
If you prefer not to use Docker Compose for direct control over the build and run process.
1. Clone Repository & Setup Environment
Follow steps 1 and 2 from the Docker Compose section above (clone repo, cd crawl4ai, create .llm.env in the root).
2. Build the Image (Multi-Arch)
Use docker buildx to build the image. Crawl4AI now uses buildx to handle multi-architecture builds automatically.
# Make sure you are in the 'crawl4ai' root directory
# Build for the current architecture and load it into Docker
docker buildx build -t crawl4ai-local:latest --load .
# Or build for multiple architectures (useful for publishing)
docker buildx build --platform linux/amd64,linux/arm64 -t crawl4ai-local:latest --load .
# Build with additional options
docker buildx build \
--build-arg INSTALL_TYPE=all \
--build-arg ENABLE_GPU=false \
-t crawl4ai-local:latest --load .
3. Run the Container
-
Basic run (no LLM support):
docker run -d \ -p 11235:11235 \ --name crawl4ai-standalone \ --shm-size=1g \ crawl4ai-local:latest -
With LLM support:
# Make sure .llm.env is in the current directory (project root) docker run -d \ -p 11235:11235 \ --name crawl4ai-standalone \ --env-file .llm.env \ --shm-size=1g \ crawl4ai-local:latest
The server will be available at
http://localhost:11235.
4. Stopping the Manual Container
docker stop crawl4ai-standalone && docker rm crawl4ai-standalone
MCP (Model Context Protocol) Support
Crawl4AI server includes support for the Model Context Protocol (MCP), allowing you to connect the server's capabilities directly to MCP-compatible clients like Claude Code.
What is MCP?
MCP is an open protocol that standardizes how applications provide context to LLMs. It allows AI models to access external tools, data sources, and services through a standardized interface.
Connecting via MCP
The Crawl4AI server exposes two MCP endpoints:
- Server-Sent Events (SSE):
http://localhost:11235/mcp/sse - WebSocket:
ws://localhost:11235/mcp/ws
Using with Claude Code
You can add Crawl4AI as an MCP tool provider in Claude Code with a simple command:
# Add the Crawl4AI server as an MCP provider
claude mcp add --transport sse c4ai-sse http://localhost:11235/mcp/sse
# List all MCP providers to verify it was added
claude mcp list
Once connected, Claude Code can directly use Crawl4AI's capabilities like screenshot capture, PDF generation, and HTML processing without having to make separate API calls.
Available MCP Tools
When connected via MCP, the following tools are available:
md- Generate markdown from web contenthtml- Extract preprocessed HTMLscreenshot- Capture webpage screenshotspdf- Generate PDF documentsexecute_js- Run JavaScript on web pagescrawl- Perform multi-URL crawlingask- Query the Crawl4AI library context
Testing MCP Connections
You can test the MCP WebSocket connection using the test file included in the repository:
# From the repository root
python tests/mcp/test_mcp_socket.py
MCP Schemas
Access the MCP tool schemas at http://localhost:11235/mcp/schema for detailed information on each tool's parameters and capabilities.
Additional API Endpoints
In addition to the core /crawl and /crawl/stream endpoints, the server provides several specialized endpoints:
HTML Extraction Endpoint
POST /html
Crawls the URL and returns preprocessed HTML optimized for schema extraction.
{
"url": "https://example.com"
}
Screenshot Endpoint
POST /screenshot
Captures a full-page PNG screenshot of the specified URL.
{
"url": "https://example.com",
"screenshot_wait_for": 2,
"output_path": "/path/to/save/screenshot.png"
}
screenshot_wait_for: Optional delay in seconds before capture (default: 2)output_path: Optional path to save the screenshot (recommended)
PDF Export Endpoint
POST /pdf
Generates a PDF document of the specified URL.
{
"url": "https://example.com",
"output_path": "/path/to/save/document.pdf"
}
output_path: Optional path to save the PDF (recommended)
JavaScript Execution Endpoint
POST /execute_js
Executes JavaScript snippets on the specified URL and returns the full crawl result.
{
"url": "https://example.com",
"scripts": [
"return document.title",
"return Array.from(document.querySelectorAll('a')).map(a => a.href)"
]
}
scripts: List of JavaScript snippets to execute sequentially
Dockerfile Parameters
You can customize the image build process using build arguments (--build-arg). These are typically used via docker buildx build or within the docker-compose.yml file.
# Example: Build with 'all' features using buildx
docker buildx build \
--platform linux/amd64,linux/arm64 \
--build-arg INSTALL_TYPE=all \
-t yourname/crawl4ai-all:latest \
--load \
. # Build from root context
Build Arguments Explained
| Argument | Description | Default | Options |
|---|---|---|---|
| INSTALL_TYPE | Feature set | default |
default, all, torch, transformer |
| ENABLE_GPU | GPU support (CUDA for AMD64) | false |
true, false |
| APP_HOME | Install path inside container (advanced) | /app |
any valid path |
| USE_LOCAL | Install library from local source | true |
true, false |
| GITHUB_REPO | Git repo to clone if USE_LOCAL=false | (see Dockerfile) | any git URL |
| GITHUB_BRANCH | Git branch to clone if USE_LOCAL=false | main |
any branch name |
(Note: PYTHON_VERSION is fixed by the FROM instruction in the Dockerfile)
Build Best Practices
- Choose the Right Install Type
default: Basic installation, smallest image size. Suitable for most standard web scraping and markdown generation.all: Full features includingtorchandtransformersfor advanced extraction strategies (e.g., CosineStrategy, certain LLM filters). Significantly larger image. Ensure you need these extras.
- Platform Considerations
- Use
buildxfor building multi-architecture images, especially for pushing to registries. - Use
docker composeprofiles (local-amd64,local-arm64) for easy platform-specific local builds.
- Use
- Performance Optimization
- The image automatically includes platform-specific optimizations (OpenMP for AMD64, OpenBLAS for ARM64).
Using the API
Communicate with the running Docker server via its REST API (defaulting to http://localhost:11235). You can use the Python SDK or make direct HTTP requests.
Playground Interface
A built-in web playground is available at http://localhost:11235/playground for testing and generating API requests. The playground allows you to:
- Configure
CrawlerRunConfigandBrowserConfigusing the main library's Python syntax - Test crawling operations directly from the interface
- Generate corresponding JSON for REST API requests based on your configuration
This is the easiest way to translate Python configuration to JSON requests when building integrations.
Python SDK
Install the SDK: pip install crawl4ai
import asyncio
from crawl4ai.docker_client import Crawl4aiDockerClient
from crawl4ai import BrowserConfig, CrawlerRunConfig, CacheMode # Assuming you have crawl4ai installed
async def main():
# Point to the correct server port
async with Crawl4aiDockerClient(base_url="http://localhost:11235", verbose=True) as client:
# If JWT is enabled on the server, authenticate first:
# await client.authenticate("user@example.com") # See Server Configuration section
# Example Non-streaming crawl
print("--- Running Non-Streaming Crawl ---")
results = await client.crawl(
["https://httpbin.org/html"],
browser_config=BrowserConfig(headless=True), # Use library classes for config aid
crawler_config=CrawlerRunConfig(cache_mode=CacheMode.BYPASS)
)
if results: # client.crawl returns None on failure
print(f"Non-streaming results success: {results.success}")
if results.success:
for result in results: # Iterate through the CrawlResultContainer
print(f"URL: {result.url}, Success: {result.success}")
else:
print("Non-streaming crawl failed.")
# Example Streaming crawl
print("\n--- Running Streaming Crawl ---")
stream_config = CrawlerRunConfig(stream=True, cache_mode=CacheMode.BYPASS)
try:
async for result in await client.crawl( # client.crawl returns an async generator for streaming
["https://httpbin.org/html", "https://httpbin.org/links/5/0"],
browser_config=BrowserConfig(headless=True),
crawler_config=stream_config
):
print(f"Streamed result: URL: {result.url}, Success: {result.success}")
except Exception as e:
print(f"Streaming crawl failed: {e}")
# Example Get schema
print("\n--- Getting Schema ---")
schema = await client.get_schema()
print(f"Schema received: {bool(schema)}") # Print whether schema was received
if __name__ == "__main__":
asyncio.run(main())
(SDK parameters like timeout, verify_ssl etc. remain the same)
Second Approach: Direct API Calls
Crucially, when sending configurations directly via JSON, they must follow the {"type": "ClassName", "params": {...}} structure for any non-primitive value (like config objects or strategies). Dictionaries must be wrapped as {"type": "dict", "value": {...}}.
(Keep the detailed explanation of Configuration Structure, Basic Pattern, Simple vs Complex, Strategy Pattern, Complex Nested Example, Quick Grammar Overview, Important Rules, Pro Tip)
More Examples (Ensure Schema example uses type/value wrapper)
Advanced Crawler Configuration (Keep example, ensure cache_mode uses valid enum value like "bypass")
Extraction Strategy
{
"crawler_config": {
"type": "CrawlerRunConfig",
"params": {
"extraction_strategy": {
"type": "JsonCssExtractionStrategy",
"params": {
"schema": {
"type": "dict",
"value": {
"baseSelector": "article.post",
"fields": [
{"name": "title", "selector": "h1", "type": "text"},
{"name": "content", "selector": ".content", "type": "html"}
]
}
}
}
}
}
}
}
LLM Extraction Strategy (Keep example, ensure schema uses type/value wrapper) (Keep Deep Crawler Example)
REST API Examples
Update URLs to use port 11235.
Simple Crawl
import requests
# Configuration objects converted to the required JSON structure
browser_config_payload = {
"type": "BrowserConfig",
"params": {"headless": True}
}
crawler_config_payload = {
"type": "CrawlerRunConfig",
"params": {"stream": False, "cache_mode": "bypass"} # Use string value of enum
}
crawl_payload = {
"urls": ["https://httpbin.org/html"],
"browser_config": browser_config_payload,
"crawler_config": crawler_config_payload
}
response = requests.post(
"http://localhost:11235/crawl", # Updated port
# headers={"Authorization": f"Bearer {token}"}, # If JWT is enabled
json=crawl_payload
)
print(f"Status Code: {response.status_code}")
if response.ok:
print(response.json())
else:
print(f"Error: {response.text}")
Streaming Results
import json
import httpx # Use httpx for async streaming example
async def test_stream_crawl(token: str = None): # Made token optional
"""Test the /crawl/stream endpoint with multiple URLs."""
url = "http://localhost:11235/crawl/stream" # Updated port
payload = {
"urls": [
"https://httpbin.org/html",
"https://httpbin.org/links/5/0",
],
"browser_config": {
"type": "BrowserConfig",
"params": {"headless": True, "viewport": {"type": "dict", "value": {"width": 1200, "height": 800}}} # Viewport needs type:dict
},
"crawler_config": {
"type": "CrawlerRunConfig",
"params": {"stream": True, "cache_mode": "bypass"}
}
}
headers = {}
# if token:
# headers = {"Authorization": f"Bearer {token}"} # If JWT is enabled
try:
async with httpx.AsyncClient() as client:
async with client.stream("POST", url, json=payload, headers=headers, timeout=120.0) as response:
print(f"Status: {response.status_code} (Expected: 200)")
response.raise_for_status() # Raise exception for bad status codes
# Read streaming response line-by-line (NDJSON)
async for line in response.aiter_lines():
if line:
try:
data = json.loads(line)
# Check for completion marker
if data.get("status") == "completed":
print("Stream completed.")
break
print(f"Streamed Result: {json.dumps(data, indent=2)}")
except json.JSONDecodeError:
print(f"Warning: Could not decode JSON line: {line}")
except httpx.HTTPStatusError as e:
print(f"HTTP error occurred: {e.response.status_code} - {e.response.text}")
except Exception as e:
print(f"Error in streaming crawl test: {str(e)}")
# To run this example:
# import asyncio
# asyncio.run(test_stream_crawl())
Asynchronous Jobs with Webhooks
For long-running crawls or when you want to avoid keeping connections open, use the job queue endpoints. Instead of polling for results, configure a webhook to receive notifications when jobs complete.
Why Use Jobs & Webhooks?
- No Polling Required - Get notified when crawls complete instead of constantly checking status
- Better Resource Usage - Free up client connections while jobs run in the background
- Scalable Architecture - Ideal for high-volume crawling with TypeScript/Node.js clients or microservices
- Reliable Delivery - Automatic retry with exponential backoff (5 attempts: 1s → 2s → 4s → 8s → 16s)
How It Works
- Submit Job → POST to
/crawl/jobwith optionalwebhook_config - Get Task ID → Receive a
task_idimmediately - Job Runs → Crawl executes in the background
- Webhook Fired → Server POSTs completion notification to your webhook URL
- Fetch Results → If data wasn't included in webhook, GET
/crawl/job/{task_id}
Quick Example
# Submit a crawl job with webhook notification
curl -X POST http://localhost:11235/crawl/job \
-H "Content-Type: application/json" \
-d '{
"urls": ["https://example.com"],
"webhook_config": {
"webhook_url": "https://myapp.com/webhooks/crawl-complete",
"webhook_data_in_payload": false
}
}'
# Response: {"task_id": "crawl_a1b2c3d4"}
Your webhook receives:
{
"task_id": "crawl_a1b2c3d4",
"task_type": "crawl",
"status": "completed",
"timestamp": "2025-10-21T10:30:00.000000+00:00",
"urls": ["https://example.com"]
}
Then fetch the results:
curl http://localhost:11235/crawl/job/crawl_a1b2c3d4
Include Data in Webhook
Set webhook_data_in_payload: true to receive the full crawl results directly in the webhook:
curl -X POST http://localhost:11235/crawl/job \
-H "Content-Type: application/json" \
-d '{
"urls": ["https://example.com"],
"webhook_config": {
"webhook_url": "https://myapp.com/webhooks/crawl-complete",
"webhook_data_in_payload": true
}
}'
Your webhook receives the complete data:
{
"task_id": "crawl_a1b2c3d4",
"task_type": "crawl",
"status": "completed",
"timestamp": "2025-10-21T10:30:00.000000+00:00",
"urls": ["https://example.com"],
"data": {
"markdown": "...",
"html": "...",
"links": {...},
"metadata": {...}
}
}
Webhook Authentication
Add custom headers for authentication:
{
"urls": ["https://example.com"],
"webhook_config": {
"webhook_url": "https://myapp.com/webhooks/crawl",
"webhook_data_in_payload": false,
"webhook_headers": {
"X-Webhook-Secret": "your-secret-token",
"X-Service-ID": "crawl4ai-prod"
}
}
}
Global Default Webhook
Configure a default webhook URL in config.yml for all jobs:
webhooks:
enabled: true
default_url: "https://myapp.com/webhooks/default"
data_in_payload: false
retry:
max_attempts: 5
initial_delay_ms: 1000
max_delay_ms: 32000
timeout_ms: 30000
Now jobs without webhook_config automatically use the default webhook.
Job Status Polling (Without Webhooks)
If you prefer polling instead of webhooks, just omit webhook_config:
# Submit job
curl -X POST http://localhost:11235/crawl/job \
-H "Content-Type: application/json" \
-d '{"urls": ["https://example.com"]}'
# Response: {"task_id": "crawl_xyz"}
# Poll for status
curl http://localhost:11235/crawl/job/crawl_xyz
The response includes status field: "processing", "completed", or "failed".
LLM Extraction Jobs with Webhooks
The same webhook system works for LLM extraction jobs via /llm/job:
# Submit LLM extraction job with webhook
curl -X POST http://localhost:11235/llm/job \
-H "Content-Type: application/json" \
-d '{
"url": "https://example.com/article",
"q": "Extract the article title, author, and main points",
"provider": "openai/gpt-4o-mini",
"webhook_config": {
"webhook_url": "https://myapp.com/webhooks/llm-complete",
"webhook_data_in_payload": true,
"webhook_headers": {
"X-Webhook-Secret": "your-secret-token"
}
}
}'
# Response: {"task_id": "llm_1234567890"}
Your webhook receives:
{
"task_id": "llm_1234567890",
"task_type": "llm_extraction",
"status": "completed",
"timestamp": "2025-10-22T12:30:00.000000+00:00",
"urls": ["https://example.com/article"],
"data": {
"extracted_content": {
"title": "Understanding Web Scraping",
"author": "John Doe",
"main_points": ["Point 1", "Point 2", "Point 3"]
}
}
}
Key Differences for LLM Jobs:
- Task type is
"llm_extraction"instead of"crawl" - Extracted data is in
data.extracted_content - Single URL only (not an array)
- Supports schema-based extraction with
schemaparameter
💡 Pro tip: See WEBHOOK_EXAMPLES.md for detailed examples including TypeScript client code, Flask webhook handlers, and failure handling.
Metrics & Monitoring
Keep an eye on your crawler with these endpoints:
/health- Quick health check/metrics- Detailed Prometheus metrics/schema- Full API schema
Example health check:
curl http://localhost:11235/health
(Deployment Scenarios and Complete Examples sections remain the same, maybe update links if examples moved)
Server Configuration
The server's behavior can be customized through the config.yml file.
Understanding config.yml
The configuration file is loaded from /app/config.yml inside the container. By default, the file from deploy/docker/config.yml in the repository is copied there during the build.
Here's a detailed breakdown of the configuration options (using defaults from deploy/docker/config.yml):
# Application Configuration
app:
title: "Crawl4AI API"
version: "1.0.0" # Consider setting this to match library version, e.g., "0.5.1"
host: "0.0.0.0"
port: 8020 # NOTE: This port is used ONLY when running server.py directly. Gunicorn overrides this (see supervisord.conf).
reload: False # Default set to False - suitable for production
timeout_keep_alive: 300
# Default LLM Configuration
llm:
provider: "openai/gpt-4o-mini" # Can be overridden by LLM_PROVIDER env var
# api_key: sk-... # If you pass the API key directly (not recommended)
# Redis Configuration (Used by internal Redis server managed by supervisord)
redis:
host: "localhost"
port: 6379
db: 0
password: ""
# ... other redis options ...
# Rate Limiting Configuration
rate_limiting:
enabled: True
default_limit: "1000/minute"
trusted_proxies: []
storage_uri: "memory://" # Use "redis://localhost:6379" if you need persistent/shared limits
# Security Configuration
security:
enabled: false # Master toggle for security features
jwt_enabled: false # Enable JWT authentication (requires security.enabled=true)
https_redirect: false # Force HTTPS (requires security.enabled=true)
trusted_hosts: ["*"] # Allowed hosts (use specific domains in production)
headers: # Security headers (applied if security.enabled=true)
x_content_type_options: "nosniff"
x_frame_options: "DENY"
content_security_policy: "default-src 'self'"
strict_transport_security: "max-age=63072000; includeSubDomains"
# Crawler Configuration
crawler:
memory_threshold_percent: 95.0
rate_limiter:
base_delay: [1.0, 2.0] # Min/max delay between requests in seconds for dispatcher
timeouts:
stream_init: 30.0 # Timeout for stream initialization
batch_process: 300.0 # Timeout for non-streaming /crawl processing
# Logging Configuration
logging:
level: "INFO"
format: "%(asctime)s - %(name)s - %(levelname)s - %(message)s"
# Observability Configuration
observability:
prometheus:
enabled: True
endpoint: "/metrics"
health_check:
endpoint: "/health"
(JWT Authentication section remains the same, just note the default port is now 11235 for requests)
(Configuration Tips and Best Practices remain the same)
Customizing Your Configuration
You can override the default config.yml.
Method 1: Modify Before Build
- Edit the
deploy/docker/config.ymlfile in your local repository clone. - Build the image using
docker buildxordocker compose --profile local-... up --build. The modified file will be copied into the image.
Method 2: Runtime Mount (Recommended for Custom Deploys)
-
Create your custom configuration file, e.g.,
my-custom-config.ymllocally. Ensure it contains all necessary sections. -
Mount it when running the container:
-
Using
docker run:# Assumes my-custom-config.yml is in the current directory docker run -d -p 11235:11235 \ --name crawl4ai-custom-config \ --env-file .llm.env \ --shm-size=1g \ -v $(pwd)/my-custom-config.yml:/app/config.yml \ unclecode/crawl4ai:latest # Or your specific tag -
Using
docker-compose.yml: Add avolumessection to the service definition:services: crawl4ai-hub-amd64: # Or your chosen service image: unclecode/crawl4ai:latest profiles: ["hub-amd64"] <<: *base-config volumes: # Mount local custom config over the default one in the container - ./my-custom-config.yml:/app/config.yml # Keep the shared memory volume from base-config - /dev/shm:/dev/shm(Note: Ensure
my-custom-config.ymlis in the same directory asdocker-compose.yml)
-
💡 When mounting, your custom file completely replaces the default one. Ensure it's a valid and complete configuration.
Configuration Recommendations
-
Security First 🔒
- Always enable security in production
- Use specific trusted_hosts instead of wildcards
- Set up proper rate limiting to protect your server
- Consider your environment before enabling HTTPS redirect
-
Resource Management 💻
- Adjust memory_threshold_percent based on available RAM
- Set timeouts according to your content size and network conditions
- Use Redis for rate limiting in multi-container setups
-
Monitoring 📊
- Enable Prometheus if you need metrics
- Set DEBUG logging in development, INFO in production
- Regular health check monitoring is crucial
-
Performance Tuning ⚡
- Start with conservative rate limiter delays
- Increase batch_process timeout for large content
- Adjust stream_init timeout based on initial response times
Getting Help
We're here to help you succeed with Crawl4AI! Here's how to get support:
- 📖 Check our full documentation
- 🐛 Found a bug? Open an issue
- 💬 Join our Discord community
- ⭐ Star us on GitHub to show support!
Summary
In this guide, we've covered everything you need to get started with Crawl4AI's Docker deployment:
- Building and running the Docker container
- Configuring the environment
- Using the interactive playground for testing
- Making API requests with proper typing
- Using the Python SDK
- Asynchronous job queues with webhook notifications
- Leveraging specialized endpoints for screenshots, PDFs, and JavaScript execution
- Connecting via the Model Context Protocol (MCP)
- Monitoring your deployment
The new playground interface at http://localhost:11235/playground makes it much easier to test configurations and generate the corresponding JSON for API requests.
For AI application developers, the MCP integration allows tools like Claude Code to directly access Crawl4AI's capabilities without complex API handling.
Remember, the examples in the examples folder are your friends - they show real-world usage patterns that you can adapt for your needs.
Keep exploring, and don't hesitate to reach out if you need help! We're building something amazing together. 🚀
Happy crawling! 🕷️