Crawl4AI / docs /md_v3 /tutorials /docker-quickstart.md
amaye15
test
03c0888
# Deploying with Docker (Quickstart)
> **⚠️ WARNING: Experimental & Legacy**
> Our current Docker solution for Crawl4AI is **not stable** and **will be discontinued** soon. A more robust Docker/Orchestration strategy is in development, with a planned stable release in **2025**. If you choose to use this Docker approach, please proceed cautiously and avoid production deployment without thorough testing.
Crawl4AI is **open-source** and under **active development**. We appreciate your interest, but strongly recommend you make **informed decisions** if you need a production environment. Expect breaking changes in future versions.
---
## 1. Installation & Environment Setup (Outside Docker)
Before we jump into Docker usage, here’s a quick reminder of how to install Crawl4AI locally (legacy doc). For **non-Docker** deployments or local dev:
```bash
# 1. Install the package
pip install crawl4ai
crawl4ai-setup
# 2. Install playwright dependencies (all browsers or specific ones)
playwright install --with-deps
# or
playwright install --with-deps chromium
# or
playwright install --with-deps chrome
```
**Testing** your installation:
```bash
# Visible browser test
python -c "from playwright.sync_api import sync_playwright; p = sync_playwright().start(); browser = p.chromium.launch(headless=False); page = browser.new_page(); page.goto('https://example.com'); input('Press Enter to close...')"
```
---
## 2. Docker Overview
This Docker approach allows you to run a **Crawl4AI** service via REST API. You can:
1. **POST** a request (e.g., URLs, extraction config)
2. **Retrieve** your results from a task-based endpoint
> **Note**: This Docker solution is **temporary**. We plan a more robust, stable Docker approach in the near future. For now, you can experiment, but do not rely on it for mission-critical production.
---
## 3. Pulling and Running the Image
### Basic Run
```bash
docker pull unclecode/crawl4ai:basic
docker run -p 11235:11235 unclecode/crawl4ai:basic
```
This starts a container on port `11235`. You can `POST` requests to `http://localhost:11235/crawl`.
### Using an API Token
```bash
docker run -p 11235:11235 \
-e CRAWL4AI_API_TOKEN=your_secret_token \
unclecode/crawl4ai:basic
```
If **`CRAWL4AI_API_TOKEN`** is set, you must include `Authorization: Bearer <token>` in your requests. Otherwise, the service is open to anyone.
---
## 4. Docker Compose for Multi-Container Workflows
You can also use **Docker Compose** to manage multiple services. Below is an **experimental** snippet:
```yaml
version: '3.8'
services:
crawl4ai:
image: unclecode/crawl4ai:basic
ports:
- "11235:11235"
environment:
- CRAWL4AI_API_TOKEN=${CRAWL4AI_API_TOKEN:-}
- OPENAI_API_KEY=${OPENAI_API_KEY:-}
# Additional env variables as needed
volumes:
- /dev/shm:/dev/shm
```
To run:
```bash
docker-compose up -d
```
And to stop:
```bash
docker-compose down
```
**Troubleshooting**:
- **Check logs**: `docker-compose logs -f crawl4ai`
- **Remove orphan containers**: `docker-compose down --remove-orphans`
- **Remove networks**: `docker network rm <network_name>`
---
## 5. Making Requests to the Container
**Base URL**: `http://localhost:11235`
### Example: Basic Crawl
```python
import requests
task_request = {
"urls": "https://example.com",
"priority": 10
}
response = requests.post("http://localhost:11235/crawl", json=task_request)
task_id = response.json()["task_id"]
# Poll for status
status_url = f"http://localhost:11235/task/{task_id}"
status = requests.get(status_url).json()
print(status)
```
If you used an API token, do:
```python
headers = {"Authorization": "Bearer your_secret_token"}
response = requests.post(
"http://localhost:11235/crawl",
headers=headers,
json=task_request
)
```
---
## 6. Docker + New Crawler Config Approach
### Using `BrowserConfig` & `CrawlerRunConfig` in Requests
The Docker-based solution can accept **crawler configurations** in the request JSON (legacy doc might show direct parameters, but we want to embed them in `crawler_params` or `extra` to align with the new approach). For example:
```python
import requests
request_data = {
"urls": "https://www.nbcnews.com/business",
"crawler_params": {
"headless": True,
"browser_type": "chromium",
"verbose": True,
"page_timeout": 30000,
# ... any other BrowserConfig-like fields
},
"extra": {
"word_count_threshold": 50,
"bypass_cache": True
}
}
response = requests.post("http://localhost:11235/crawl", json=request_data)
task_id = response.json()["task_id"]
```
This is the recommended style if you want to replicate `BrowserConfig` and `CrawlerRunConfig` settings in Docker mode.
---
## 7. Example: JSON Extraction in Docker
```python
import requests
import json
# Define a schema for CSS extraction
schema = {
"name": "Coinbase Crypto Prices",
"baseSelector": ".cds-tableRow-t45thuk",
"fields": [
{
"name": "crypto",
"selector": "td:nth-child(1) h2",
"type": "text"
},
{
"name": "symbol",
"selector": "td:nth-child(1) p",
"type": "text"
},
{
"name": "price",
"selector": "td:nth-child(2)",
"type": "text"
}
]
}
request_data = {
"urls": "https://www.coinbase.com/explore",
"extraction_config": {
"type": "json_css",
"params": {"schema": schema}
},
"crawler_params": {
"headless": True,
"verbose": True
}
}
resp = requests.post("http://localhost:11235/crawl", json=request_data)
task_id = resp.json()["task_id"]
# Poll for status
status = requests.get(f"http://localhost:11235/task/{task_id}").json()
if status["status"] == "completed":
extracted_content = status["result"]["extracted_content"]
data = json.loads(extracted_content)
print("Extracted:", len(data), "entries")
else:
print("Task still in progress or failed.")
```
---
## 8. Why This Docker Is Temporary
**We are building a new, stable approach**:
- The current Docker container is **experimental** and might break with future releases.
- We plan a stable release in **2025** with a more robust API, versioning, and orchestration.
- If you use this Docker in production, do so at your own risk and be prepared for **breaking changes**.
**Community**: Because Crawl4AI is open-source, you can track progress or contribute to the new Docker approach. Check the [GitHub repository](https://github.com/unclecode/crawl4ai) for roadmaps and updates.
---
## 9. Known Limitations & Next Steps
1. **Not Production-Ready**: This Docker approach lacks extensive security, logging, or advanced config for large-scale usage.
2. **Ongoing Changes**: Expect API changes. The official stable version is targeted for **2025**.
3. **LLM Integrations**: Docker images are big if you want GPU or multiple model providers. We might unify these in a future build.
4. **Performance**: For concurrency or large crawls, you may need to tune resources (memory, CPU) and watch out for ephemeral storage.
5. **Version Pinning**: If you must deploy, pin your Docker tag to a specific version (e.g., `:basic-0.3.7`) to avoid surprise updates.
### Next Steps
- **Watch the Repository**: For announcements on the new Docker architecture.
- **Experiment**: Use this Docker for test or dev environments, but keep an eye out for breakage.
- **Contribute**: If you have ideas or improvements, open a PR or discussion.
- **Check Roadmaps**: See our [GitHub issues](https://github.com/unclecode/crawl4ai/issues) or [Roadmap doc](https://github.com/unclecode/crawl4ai/blob/main/ROADMAP.md) to find upcoming releases.
---
## 10. Summary
**Deploying with Docker** can simplify running Crawl4AI as a service. However:
- **This Docker** approach is **legacy** and subject to removal/overhaul.
- For production, please weigh the risks carefully.
- Detailed “new Docker approach” is coming in **2025**.
We hope this guide helps you do a quick spin-up of Crawl4AI in Docker for **experimental** usage. Stay tuned for the fully-supported version!