


How Can You Handle All Possible Exceptions When Using Python's Requests Module?
Nov 15, 2024 am 06:08 AMHandling Exceptions with Python's Requests Module
Catching exceptions when making HTTP requests is crucial for robust error handling. While the provided code snippet can handle some connection-related errors, it misses other potential issues.
According to the Requests documentation, different exception types are raised for:
- Connection errors (including DNS failures and refused connections): ConnectionError
- Invalid HTTP responses: HTTPError
- Timeouts: Timeout
- Excessive redirects: TooManyRedirects
All these exceptions inherit from requests.exceptions.RequestException.
To cover all bases, you can:
- Catch the Base-Class Exception:
try: r = requests.get(url, params={'s': thing}) except requests.exceptions.RequestException as e: # Handle all cases raise SystemExit(e)
- Catch Exceptions Separately:
try: r = requests.get(url, params={'s': thing}) except requests.exceptions.Timeout: # Implement a retry strategy except requests.exceptions.TooManyRedirects: # Notify user of incorrect URL except requests.exceptions.RequestException as e: # Catastrophic error, terminate raise SystemExit(e)
Handling HTTP Errors:
If you need to raise exceptions for HTTP status codes (e.g., 401 Unauthorized), call Response.raise_for_status after making the request.
try: r = requests.get('http://www.google.com/nothere') r.raise_for_status() except requests.exceptions.HTTPError as err: raise SystemExit(err)
By considering all possible exception types and tailoring your error handling strategy, you can ensure your application gracefully handles network issues and provides appropriate responses to users.
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