Self-logging exceptions
Source on GitHub <https://github.com/bernhard10/logging_exceptions>
_
Installation
Use setup.py :
.. code-block:: bash
python setup.py install
Warning
This module modifies sys.excepthook
when it is imported!
Usage
Self-logging exceptions
Attach a log message to an exception:
.. code-block:: python
import logging
import logging_exceptions as exlog
e = ValueError("Wrong value")
logger = logging.getLogger(__name__)
with exlog.log_to_exception(logger, e):
logger.critical("This is a %s log mressage", "long")
raise e # The exception can also be raised inside the with statement
If the error is not caught, the log message will be displayed upon program
termination.
Catch the error and display the log message at a costum log-level:
.. code-block:: python
import logging_exceptions as exlog
import logging
try:
e = ValueError("Wrong value")
logger = logging.getLogger(__name__)
with exlog.log_to_exception(logger, e):
logger.critical("This is a %s log mressage", "long")
raise e
except ValueError as err:
exlog.log(err, level=logging.DEBUG, with_stacktrace=False)
Here, `exlog.log` is a synonym for `exlog.log_exception`
Logging from a different function name and line number
The code in log_exception calls the _log
function of a Logger object.
To avoid recording the function name and line number of log_to_exception
,
logging_exception
calls logging.setLoggerClass(ExlogLogger)
to set the
class for all loggers created after import of logging_exception
to ExlogLogger
.
ExlogLogger
is a subclass of logging.Logger
defined by this module. It
overrides findCaller
to have more control over the recorded caller.
In addition to ignoring functions defined inside logging_exceptions
,
ExlogLogger
classes have the public attribute ignored_functions
.
By adding function names to ignored_functions
, it is possible to record
matching function's parents instead of matching functions as the caller.
In particular, the context manager logging_exceptions.log_at_caller
can be used
in helper functions to temporarily update a logger's ignored_functions
in order to record a function's caller instead of the function.
The following code will emit a log message with the function name set to
foo
, not helper_function
:
.. code-block:: python
import logging_exceptions as exlog
logger = logging.get_logger(__name__)
def helper_function():
with exlog.log_at_caller(logger):
logger.log("This is a log message")
def foo():
helper_function()
Commandline convenience functions
The following convenience functions are not directly related to exceptions,
but useful if you use argparse.
Add the '--verbose', '--debug' and '--quiet' options to an
argparse.Argumentparser instance.
.. code-block:: python
import argparse
import logging_exceptions as exlog
parser=argparse.ArgumentParser("Some help text")
exlog.update_parser(parser)
args = parser.parse_args()
logging.basicConfig()
# The following call updates the log levels of the root logger
# and potential some other loggers.
exlog.config_from_args(args)
Now the script can be used from the commandline like this:
.. code-block:: bash
# Set the log-level for the loggers with the names `path.to.module1`
# and `path.to.module2` to DEBUG.
python script.py --debug path.to.module1,path.to.module2
Examples
--------
See the file 'logging_exceptions_examples.py'
Comparison to logging.handlers.MemoryHandler
--------------------------------------------
The logging.handlers module contains a handler for a similar purpose: The MemoryHandler.
It buffers log messages and only emits them, if a log record of severity error or above is encountered.
I will quickly explain the differences between MemoryHandler and my module:
MemoryHandler is great if you know that an event of severity ERROR may occur
in the future (typically in the same function) and you want to prepare for
this potential exception. Typically, you know the scope for which the exceptions
have to be buffered and you know when the buffered exceptions are no longer needed and can be discarded.
While for MemoryHandler the error condition is rather unspecific, the scope in
which we have to decide between discarding and emitting the log messages is well
known.
The `log_to_exception` decorator, on the other hand, is useful if the exception
is well specified (it is already created/ caught), but the the scope in which
the exception may or may not be caught is unspecified. Examples would be
library functions that raise an error.
A typical example would be the following:
.. code-block:: python
import logging
from logging_exceptions import log_to_exception
# Whoever calls public_function may want to catch the ValueError and hide
# the log messages or change their level to logging.DEBUG
def public_function():
logger = logging.getLogger(__name__)
a = some_complex_calculation(12)
try:
some_function(a)
except ValueError as e:
with log_to_exception(logger, e):
log.error("While calling `some_function` with %s, "
"which is result of `some_complex_calculation`(%d),"
" an error occurred", a, 12)
raise
Compatibility
-------------
Compatible with python 2.7 and python 3