Build a Scraping Job Scheduler: Task Queue System
A scraping job scheduler manages the lifecycle of scraping tasks — queuing URLs, distributing work across workers, handling retries, and ensuring rate limits are respected. Using Celery with Redis provides a battle-tested foundation for distributed scraping at any scale.
Celery + Redis Setup
# tasks.py
from celery import Celery
import requests
import time
from bs4 import BeautifulSoup
app = Celery('scraper', broker='redis://localhost:6379/0', backend='redis://localhost:6379/1')
app.conf.update(
task_serializer='json',
result_serializer='json',
accept_content=['json'],
task_acks_late=True,
worker_prefetch_multiplier=1,
task_default_rate_limit='10/m',
task_time_limit=60,
task_soft_time_limit=45,
)
PROXY_URL = "http://user:pass@proxy.example.com:8080"
@app.task(bind=True, max_retries=3, default_retry_delay=30)
def scrape_page(self, url: str, selectors: dict = None):
try:
proxies = {"http": PROXY_URL, "https": PROXY_URL}
response = requests.get(url, proxies=proxies, timeout=15,
headers={"User-Agent": "Mozilla/5.0"})
if response.status_code == 429:
raise self.retry(countdown=60)
if response.status_code == 403:
raise self.retry(countdown=30)
response.raise_for_status()
soup = BeautifulSoup(response.text, "lxml")
result = {"url": url, "title": soup.title.string if soup.title else ""}
if selectors:
for key, sel in selectors.items():
result[key] = [el.text.strip() for el in soup.select(sel)]
return result
except requests.exceptions.ProxyError:
raise self.retry(countdown=10)
except Exception as exc:
raise self.retry(exc=exc)
@app.task
def scrape_batch(urls: list, selectors: dict = None):
from celery import group
job = group(scrape_page.s(url, selectors) for url in urls)
result = job.apply_async()
return result.idEnqueuing Jobs
from tasks import scrape_page, scrape_batch
# Single page
result = scrape_page.delay("https://example.com")
print(result.get(timeout=30))
# Batch of URLs
urls = [f"https://example.com/page/{i}" for i in range(100)]
batch_id = scrape_batch.delay(urls, {"headings": "h2", "links": "a"})
# Priority queue
scrape_page.apply_async(
args=["https://important-page.com"],
queue="high_priority",
priority=9,
)Running Workers
# Start workers
celery -A tasks worker --concurrency=10 --loglevel=info
# Start with multiple queues
celery -A tasks worker -Q default,high_priority --concurrency=20
# Monitor with Flower
celery -A tasks flower --port=5555FAQ
How many Celery workers should I run?
Match worker concurrency to your proxy pool capacity. If you have 100 residential proxies each handling 5 requests per minute, you can run 500 concurrent workers (though 100-200 is more practical to avoid overwhelming targets).
How do I handle rate limiting per domain?
Use Celery’s rate_limit parameter per task or implement domain-specific rate limiting with Redis. Create separate queues for different target domains with different rate limits.
Can I use this with Airflow?
Yes. Use Airflow to schedule when batches are enqueued, and Celery workers to execute individual scraping tasks. Airflow handles the “when and what” while Celery handles the “how” of distributed execution.
Implementation Best Practices
Error Handling and Retry Logic
Production scraping tools must handle failures gracefully. Implement exponential backoff with jitter:
import random
import time
def retry_with_backoff(func, max_retries=3, base_delay=1):
for attempt in range(max_retries):
try:
return func()
except Exception as e:
if attempt == max_retries - 1:
raise
delay = base_delay * (2 ** attempt) + random.uniform(0, 1)
print(f"Attempt {attempt + 1} failed: {e}. Retrying in {delay:.1f}s")
time.sleep(delay)Logging Configuration
Set up structured logging for debugging and monitoring:
import logging
import json
from datetime import datetime
class JSONFormatter(logging.Formatter):
def format(self, record):
log_entry = {
"timestamp": datetime.utcnow().isoformat(),
"level": record.levelname,
"message": record.getMessage(),
"module": record.module,
"function": record.funcName,
}
if record.exc_info:
log_entry["exception"] = self.formatException(record.exc_info)
return json.dumps(log_entry)
# Setup
handler = logging.StreamHandler()
handler.setFormatter(JSONFormatter())
logger = logging.getLogger("scraper")
logger.addHandler(handler)
logger.setLevel(logging.INFO)Configuration Management
Use environment variables and config files for flexibility:
import os
from dataclasses import dataclass
@dataclass
class ScraperConfig:
proxy_url: str = os.getenv("PROXY_URL", "")
concurrent_workers: int = int(os.getenv("CONCURRENT_WORKERS", "10"))
request_timeout: int = int(os.getenv("REQUEST_TIMEOUT", "15"))
max_retries: int = int(os.getenv("MAX_RETRIES", "3"))
rate_limit_per_second: float = float(os.getenv("RATE_LIMIT", "5"))
output_format: str = os.getenv("OUTPUT_FORMAT", "json")
database_url: str = os.getenv("DATABASE_URL", "sqlite:///results.db")
log_level: str = os.getenv("LOG_LEVEL", "INFO")
@classmethod
def from_yaml(cls, filepath: str):
import yaml
with open(filepath) as f:
config = yaml.safe_load(f)
return cls(**{k: v for k, v in config.items() if hasattr(cls, k)})Rate Limiting
Implement token bucket rate limiting to respect target sites:
import asyncio
import time
class RateLimiter:
def __init__(self, rate: float, burst: int = 1):
self.rate = rate # requests per second
self.burst = burst
self.tokens = burst
self.last_refill = time.time()
self._lock = asyncio.Lock()
async def acquire(self):
async with self._lock:
now = time.time()
elapsed = now - self.last_refill
self.tokens = min(self.burst, self.tokens + elapsed * self.rate)
self.last_refill = now
if self.tokens >= 1:
self.tokens -= 1
return
else:
wait_time = (1 - self.tokens) / self.rate
await asyncio.sleep(wait_time)
self.tokens = 0Data Validation
Validate scraped data before storage:
from typing import Optional, List
import re
class DataValidator:
@staticmethod
def validate_url(url: str) -> bool:
pattern = re.compile(
r'^https?://'
r'(?:(?:[A-Z0-9](?:[A-Z0-9-]{0,61}[A-Z0-9])?\.)+[A-Z]{2,6}\.?|'
r'localhost|'
r'\d{1,3}\.\d{1,3}\.\d{1,3}\.\d{1,3})'
r'(?::\d+)?'
r'(?:/?|[/?]\S+)$', re.IGNORECASE)
return bool(pattern.match(url))
@staticmethod
def validate_price(price: Optional[float]) -> bool:
if price is None:
return True
return 0 < price < 1_000_000
@staticmethod
def validate_text(text: str, min_length: int = 1, max_length: int = 10000) -> bool:
return min_length <= len(text.strip()) <= max_length
def validate_record(self, record: dict) -> tuple:
errors = []
if "url" in record and not self.validate_url(record["url"]):
errors.append("invalid URL")
if "price" in record and not self.validate_price(record.get("price")):
errors.append("invalid price")
if "title" in record and not self.validate_text(record.get("title", ""), 1, 500):
errors.append("invalid title length")
return len(errors) == 0, errorsDeployment
Running as a Service
# Using systemd
sudo cat > /etc/systemd/system/scraper.service << EOF
[Unit]
Description=Web Scraping Service
After=network.target
[Service]
Type=simple
User=scraper
WorkingDir=/opt/scraper
ExecStart=/opt/scraper/venv/bin/python main.py
Restart=always
RestartSec=10
Environment=PROXY_URL=http://user:pass@proxy:8080
Environment=LOG_LEVEL=INFO
[Install]
WantedBy=multi-user.target
EOF
sudo systemctl enable scraper
sudo systemctl start scraperDocker Deployment
FROM python:3.12-slim
WORKDIR /app
COPY requirements.txt .
RUN pip install --no-cache-dir -r requirements.txt
COPY . .
HEALTHCHECK --interval=30s --timeout=10s CMD python -c "import requests; requests.get('http://localhost:8000/health')"
CMD ["python", "main.py"]Testing
Write tests for your scraping tools:
import pytest
import asyncio
class TestProxyIntegration:
def test_proxy_connectivity(self):
import requests
proxy = {"http": "http://user:pass@proxy:8080", "https": "http://user:pass@proxy:8080"}
response = requests.get("https://httpbin.org/ip", proxies=proxy, timeout=10)
assert response.status_code == 200
assert "origin" in response.json()
def test_proxy_rotation(self):
ips = set()
for _ in range(5):
import requests
proxy = {"http": "http://user:pass@rotating-proxy:8080"}
response = requests.get("https://httpbin.org/ip", proxies=proxy, timeout=10)
ips.add(response.json()["origin"])
assert len(ips) > 1, "Proxy should rotate IPs"
def test_data_validation(self):
validator = DataValidator()
valid, errors = validator.validate_record({
"url": "https://example.com",
"title": "Test Product",
"price": 29.99,
})
assert valid
assert len(errors) == 0For proxy infrastructure guidance, see our proxy pool management guide and web scraping proxy overview.
- Build an Anti-Detection Test Suite: Verify Browser Stealth
- Build a Proxy Rotator in Python: Complete Tutorial
- AJAX Request Interception: Scraping API Calls Directly
- Bandwidth Optimization for Proxies: Reduce Costs & Increase Speed
- How to Configure Proxies on iPhone and Android
- How to Use Proxies in Node.js (Axios, Fetch, Puppeteer)
- Build an Anti-Detection Test Suite: Verify Browser Stealth
- Build a News Crawler in Python: Step-by-Step Tutorial
- AJAX Request Interception: Scraping API Calls Directly
- Azure Functions for Serverless Web Scraping: the Complete Guide
- How to Configure Proxies on iPhone and Android
- How to Use Proxies in Node.js (Axios, Fetch, Puppeteer)
Related Reading
- Build an Anti-Detection Test Suite: Verify Browser Stealth
- Build a News Crawler in Python: Step-by-Step Tutorial
- AJAX Request Interception: Scraping API Calls Directly
- Azure Functions for Serverless Web Scraping: the Complete Guide
- How to Configure Proxies on iPhone and Android
- How to Use Proxies in Node.js (Axios, Fetch, Puppeteer)