Modifying or Reraising Python error in C API - python

I have a bit of code that tries to parse an object as an integer:
long val = PyLong_AsLong(obj);
if(val == -1 && PyErr_Occurred()) {
return -1;
}
Here obj is a vanilla PyObject *, and PyLong_AsLong raises a very generic TypeError if obj is not an integer.
I would like to transform the error message into something a bit more informative, so I would like to either modify the existing error object, or to reraise it.
My current solution is to do this:
long val = PyLong_AsLong(obj);
if(val == -1 && PyErr_Occurred()) {
PyErr_Clear();
PyErr_Format(PyExc_TypeError, "Parameter must be an integer type, but got %s", Py_TYPE(obj)->tp_name);
return -1;
}
Is this the proper way to reraise an error? Specifically,
Do I need to call PyErr_Clear at all? I suspect that it properly decrefs the existing exception object, but I'm not sure.
Can I modify the message of the error that has already been thrown at that point without re-raising it?
Is there an option to do the equivalent of raise new_err from old_err?
I am not sure how to use PyErr_SetExcInfo for this situation, although my gut tells me it may be relevant somehow.

Your existing code is fine, but if you want to do the equivalent of exception chaining, you can. If you want to skip to how to do that, jump to point 3 near the end of the answer.
To explain how to do things like modify a propagating exception or perform the equivalent of raise Something() from existing_exception, first, we'll have to explain how exception state works at C level.
A propagating exception is represented by a per-thread error indicator consisting of a type, value, and traceback. That sounds a lot like sys.exc_info(), but it's not the same. sys.exc_info() is for exceptions that have been caught by Python-level code, not exceptions that are still propagating.
The error indicator may be unnormalized, which basically means that the work of constructing an exception object hasn't been performed, and the value in the error indicator isn't an instance of the exception type. This state exists for efficiency; if the error indicator is cleared by PyErr_Clear before normalization is needed, Python gets to skip much of the work of raising an exception. Exception normalization is performed by PyErr_NormalizeException, with a bit of extra work in PyException_SetTraceback to set the exception object's __traceback__ attribute.
PyErr_Clear is sort of like the C equivalent of an except block, but it just clears the error indicator, without letting you inspect much of the exception information. To catch an exception and inspect it, you'd want PyErr_Fetch. PyErr_Fetch is like catching an exception and examining sys.exc_info(), but it doesn't set sys.exc_info() or normalize the exception. It clears the error indicator and gives you the raw contents of the error indicator directly.
Explicit exception chaining (raise Something() from existing_exception) works by going through PyException_SetCause to set the new exception's __cause__ to the existing exception. This requires exception objects for both exceptions, so if you want to do the equivalent from C, you'll have to normalize the exceptions and call PyException_SetCause yourself.
Implicit exception chaining (raise Something() in an except block) works by going through PyException_SetContext to set the new exception's __context__ to the existing exception. Similar to PyException_SetCause, this requires exception objects and exception normalization. raise Something() from existing_exception inside an except block actually sets both __cause__ and __context__, and if you want to perform explicit exception chaining at C level, you should usually do the same.
Technically not necessary, as far as I can tell, but it's probably a good idea to do it anyway. It looks like PyErr_Format and other functions that set the error indicator will clear the error indicator first if it's already set, but this isn't documented for most of them.
Sort of, but it's probably a bad idea. You can normalize the error indicator and set the exception object's message attribute, but this won't affect args or anything else the exception class might do with its arguments, and that could lead to weird problems. Alternatively, you could fetch the error indicator with PyErr_Fetch and restore it with a new string for the value with PyErr_Restore, but that will throw away an existing exception object if there is one, and it makes assumptions about the exception class's signature.
Yeah, that's possible, but doing it through public C API functions is pretty awkward and manual. You'd have to manually do a lot of normalization, unraising, and raising exceptions.
There are efforts to make C-level exception chaining more convenient, but so far, the more convenient functions are all considered internal. For example, _PyErr_FormatFromCause is like PyErr_Format, but it chains the new exception off of an existing, propagating exception (through both __context__ and __cause__.
I wouldn't recommend calling it directly for now; it's very new (3.6+), and it's very likely to change (specifically, I would be unsurprised to see it lose its leading underscore in a new Python version). Instead, copying the implementation of _PyErr_FormatFromCause/_PyErr_FormatVFromCause (and respecting the license) is a good way to make sure you have the fiddly bits of normalization and chaining right.
It's also a useful reference to work from if you want to perform implicit (__context__-only) exception chaining at C level - just remove the part that handles __cause__.

Related

What is the best practice with regards to type consistency for returning a result, error, or warning in Python? [duplicate]

From time to time in Python, I see the block:
try:
try_this(whatever)
except SomeException as exception:
#Handle exception
else:
return something
What is the reason for the try-except-else to exist?
I do not like that kind of programming, as it is using exceptions to perform flow control. However, if it is included in the language, there must be a good reason for it, isn't it?
It is my understanding that exceptions are not errors, and that they should only be used for exceptional conditions (e.g. I try to write a file into disk and there is no more space, or maybe I do not have permission), and not for flow control.
Normally I handle exceptions as:
something = some_default_value
try:
something = try_this(whatever)
except SomeException as exception:
#Handle exception
finally:
return something
Or if I really do not want to return anything if an exception happens, then:
try:
something = try_this(whatever)
return something
except SomeException as exception:
#Handle exception
"I do not know if it is out of ignorance, but I do not like that
kind of programming, as it is using exceptions to perform flow control."
In the Python world, using exceptions for flow control is common and normal.
Even the Python core developers use exceptions for flow-control and that style is heavily baked into the language (i.e. the iterator protocol uses StopIteration to signal loop termination).
In addition, the try-except-style is used to prevent the race-conditions inherent in some of the "look-before-you-leap" constructs. For example, testing os.path.exists results in information that may be out-of-date by the time you use it. Likewise, Queue.full returns information that may be stale. The try-except-else style will produce more reliable code in these cases.
"It my understanding that exceptions are not errors, they should only
be used for exceptional conditions"
In some other languages, that rule reflects their cultural norms as reflected in their libraries. The "rule" is also based in-part on performance considerations for those languages.
The Python cultural norm is somewhat different. In many cases, you must use exceptions for control-flow. Also, the use of exceptions in Python does not slow the surrounding code and calling code as it does in some compiled languages (i.e. CPython already implements code for exception checking at every step, regardless of whether you actually use exceptions or not).
In other words, your understanding that "exceptions are for the exceptional" is a rule that makes sense in some other languages, but not for Python.
"However, if it is included in the language itself, there must be a
good reason for it, isn't it?"
Besides helping to avoid race-conditions, exceptions are also very useful for pulling error-handling outside loops. This is a necessary optimization in interpreted languages which do not tend to have automatic loop invariant code motion.
Also, exceptions can simplify code quite a bit in common situations where the ability to handle an issue is far removed from where the issue arose. For example, it is common to have top level user-interface code calling code for business logic which in turn calls low-level routines. Situations arising in the low-level routines (such as duplicate records for unique keys in database accesses) can only be handled in top-level code (such as asking the user for a new key that doesn't conflict with existing keys). The use of exceptions for this kind of control-flow allows the mid-level routines to completely ignore the issue and be nicely decoupled from that aspect of flow-control.
There is a nice blog post on the indispensibility of exceptions here.
Also, see this Stack Overflow answer: Are exceptions really for exceptional errors?
"What is the reason for the try-except-else to exist?"
The else-clause itself is interesting. It runs when there is no exception but before the finally-clause. That is its primary purpose.
Without the else-clause, the only option to run additional code before finalization would be the clumsy practice of adding the code to the try-clause. That is clumsy because it risks
raising exceptions in code that wasn't intended to be protected by the try-block.
The use-case of running additional unprotected code prior to finalization doesn't arise very often. So, don't expect to see many examples in published code. It is somewhat rare.
Another use-case for the else-clause is to perform actions that must occur when no exception occurs and that do not occur when exceptions are handled. For example:
recip = float('Inf')
try:
recip = 1 / f(x)
except ZeroDivisionError:
logging.info('Infinite result')
else:
logging.info('Finite result')
Another example occurs in unittest runners:
try:
tests_run += 1
run_testcase(case)
except Exception:
tests_failed += 1
logging.exception('Failing test case: %r', case)
print('F', end='')
else:
logging.info('Successful test case: %r', case)
print('.', end='')
Lastly, the most common use of an else-clause in a try-block is for a bit of beautification (aligning the exceptional outcomes and non-exceptional outcomes at the same level of indentation). This use is always optional and isn't strictly necessary.
What is the reason for the try-except-else to exist?
A try block allows you to handle an expected error. The except block should only catch exceptions you are prepared to handle. If you handle an unexpected error, your code may do the wrong thing and hide bugs.
An else clause will execute if there were no errors, and by not executing that code in the try block, you avoid catching an unexpected error. Again, catching an unexpected error can hide bugs.
Example
For example:
try:
try_this(whatever)
except SomeException as the_exception:
handle(the_exception)
else:
return something
The "try, except" suite has two optional clauses, else and finally. So it's actually try-except-else-finally.
else will evaluate only if there is no exception from the try block. It allows us to simplify the more complicated code below:
no_error = None
try:
try_this(whatever)
no_error = True
except SomeException as the_exception:
handle(the_exception)
if no_error:
return something
so if we compare an else to the alternative (which might create bugs) we see that it reduces the lines of code and we can have a more readable, maintainable, and less buggy code-base.
finally
finally will execute no matter what, even if another line is being evaluated with a return statement.
Broken down with pseudo-code
It might help to break this down, in the smallest possible form that demonstrates all features, with comments. Assume this syntactically correct (but not runnable unless the names are defined) pseudo-code is in a function.
For example:
try:
try_this(whatever)
except SomeException as the_exception:
handle_SomeException(the_exception)
# Handle a instance of SomeException or a subclass of it.
except Exception as the_exception:
generic_handle(the_exception)
# Handle any other exception that inherits from Exception
# - doesn't include GeneratorExit, KeyboardInterrupt, SystemExit
# Avoid bare `except:`
else: # there was no exception whatsoever
return something()
# if no exception, the "something()" gets evaluated,
# but the return will not be executed due to the return in the
# finally block below.
finally:
# this block will execute no matter what, even if no exception,
# after "something" is eval'd but before that value is returned
# but even if there is an exception.
# a return here will hijack the return functionality. e.g.:
return True # hijacks the return in the else clause above
It is true that we could include the code in the else block in the try block instead, where it would run if there were no exceptions, but what if that code itself raises an exception of the kind we're catching? Leaving it in the try block would hide that bug.
We want to minimize lines of code in the try block to avoid catching exceptions we did not expect, under the principle that if our code fails, we want it to fail loudly. This is a best practice.
It is my understanding that exceptions are not errors
In Python, most exceptions are errors.
We can view the exception hierarchy by using pydoc. For example, in Python 2:
$ python -m pydoc exceptions
or Python 3:
$ python -m pydoc builtins
Will give us the hierarchy. We can see that most kinds of Exception are errors, although Python uses some of them for things like ending for loops (StopIteration). This is Python 3's hierarchy:
BaseException
Exception
ArithmeticError
FloatingPointError
OverflowError
ZeroDivisionError
AssertionError
AttributeError
BufferError
EOFError
ImportError
ModuleNotFoundError
LookupError
IndexError
KeyError
MemoryError
NameError
UnboundLocalError
OSError
BlockingIOError
ChildProcessError
ConnectionError
BrokenPipeError
ConnectionAbortedError
ConnectionRefusedError
ConnectionResetError
FileExistsError
FileNotFoundError
InterruptedError
IsADirectoryError
NotADirectoryError
PermissionError
ProcessLookupError
TimeoutError
ReferenceError
RuntimeError
NotImplementedError
RecursionError
StopAsyncIteration
StopIteration
SyntaxError
IndentationError
TabError
SystemError
TypeError
ValueError
UnicodeError
UnicodeDecodeError
UnicodeEncodeError
UnicodeTranslateError
Warning
BytesWarning
DeprecationWarning
FutureWarning
ImportWarning
PendingDeprecationWarning
ResourceWarning
RuntimeWarning
SyntaxWarning
UnicodeWarning
UserWarning
GeneratorExit
KeyboardInterrupt
SystemExit
A commenter asked:
Say you have a method which pings an external API and you want to handle the exception at a class outside the API wrapper, do you simply return e from the method under the except clause where e is the exception object?
No, you don't return the exception, just reraise it with a bare raise to preserve the stacktrace.
try:
try_this(whatever)
except SomeException as the_exception:
handle(the_exception)
raise
Or, in Python 3, you can raise a new exception and preserve the backtrace with exception chaining:
try:
try_this(whatever)
except SomeException as the_exception:
handle(the_exception)
raise DifferentException from the_exception
I elaborate in my answer here.
Python doesn't subscribe to the idea that exceptions should only be used for exceptional cases, in fact the idiom is 'ask for forgiveness, not permission'. This means that using exceptions as a routine part of your flow control is perfectly acceptable, and in fact, encouraged.
This is generally a good thing, as working this way helps avoid some issues (as an obvious example, race conditions are often avoided), and it tends to make code a little more readable.
Imagine you have a situation where you take some user input which needs to be processed, but have a default which is already processed. The try: ... except: ... else: ... structure makes for very readable code:
try:
raw_value = int(input())
except ValueError:
value = some_processed_value
else: # no error occured
value = process_value(raw_value)
Compare to how it might work in other languages:
raw_value = input()
if valid_number(raw_value):
value = process_value(int(raw_value))
else:
value = some_processed_value
Note the advantages. There is no need to check the value is valid and parse it separately, they are done once. The code also follows a more logical progression, the main code path is first, followed by 'if it doesn't work, do this'.
The example is naturally a little contrived, but it shows there are cases for this structure.
See the following example which illustrate everything about try-except-else-finally:
for i in range(3):
try:
y = 1 / i
except ZeroDivisionError:
print(f"\ti = {i}")
print("\tError report: ZeroDivisionError")
else:
print(f"\ti = {i}")
print(f"\tNo error report and y equals {y}")
finally:
print("Try block is run.")
Implement it and come by:
i = 0
Error report: ZeroDivisionError
Try block is run.
i = 1
No error report and y equals 1.0
Try block is run.
i = 2
No error report and y equals 0.5
Try block is run.
Is it a good practice to use try-except-else in python?
The answer to this is that it is context dependent. If you do this:
d = dict()
try:
item = d['item']
except KeyError:
item = 'default'
It demonstrates that you don't know Python very well. This functionality is encapsulated in the dict.get method:
item = d.get('item', 'default')
The try/except block is a much more visually cluttered and verbose way of writing what can be efficiently executing in a single line with an atomic method. There are other cases where this is true.
However, that does not mean that we should avoid all exception handling. In some cases it is preferred to avoid race conditions. Don't check if a file exists, just attempt to open it, and catch the appropriate IOError. For the sake of simplicity and readability, try to encapsulate this or factor it out as apropos.
Read the Zen of Python, understanding that there are principles that are in tension, and be wary of dogma that relies too heavily on any one of the statements in it.
You should be careful about using the finally block, as it is not the same thing as using an else block in the try, except. The finally block will be run regardless of the outcome of the try except.
In [10]: dict_ = {"a": 1}
In [11]: try:
....: dict_["b"]
....: except KeyError:
....: pass
....: finally:
....: print "something"
....:
something
As everyone has noted using the else block causes your code to be more readable, and only runs when an exception is not thrown
In [14]: try:
dict_["b"]
except KeyError:
pass
else:
print "something"
....:
Just because no-one else has posted this opinion, I would say
avoid else clauses in try/excepts because they're unfamiliar to most people
Unlike the keywords try, except, and finally, the meaning of the else clause isn't self-evident; it's less readable. Because it's not used very often, it'll cause people that read your code to want to double-check the docs to be sure they understand what's going on.
(I'm writing this answer precisely because I found a try/except/else in my codebase and it caused a wtf moment and forced me to do some googling).
So, wherever I see code like the OP example:
try:
try_this(whatever)
except SomeException as the_exception:
handle(the_exception)
else:
# do some more processing in non-exception case
return something
I would prefer to refactor to
try:
try_this(whatever)
except SomeException as the_exception:
handle(the_exception)
return # <1>
# do some more processing in non-exception case <2>
return something
<1> explicit return, clearly shows that, in the exception case, we are finished working
<2> as a nice minor side-effect, the code that used to be in the else block is dedented by one level.
Whenever you see this:
try:
y = 1 / x
except ZeroDivisionError:
pass
else:
return y
Or even this:
try:
return 1 / x
except ZeroDivisionError:
return None
Consider this instead:
import contextlib
with contextlib.suppress(ZeroDivisionError):
return 1 / x
This is my simple snippet on howto understand try-except-else-finally block in Python:
def div(a, b):
try:
a/b
except ZeroDivisionError:
print("Zero Division Error detected")
else:
print("No Zero Division Error")
finally:
print("Finally the division of %d/%d is done" % (a, b))
Let's try div 1/1:
div(1, 1)
No Zero Division Error
Finally the division of 1/1 is done
Let's try div 1/0
div(1, 0)
Zero Division Error detected
Finally the division of 1/0 is done
I'm attempting to answer this question in a slightly different angle.
There were 2 parts of the OP's question, and I add the 3rd one, too.
What is the reason for the try-except-else to exist?
Does the try-except-else pattern, or the Python in general, encourage using exceptions for flow control?
When to use exceptions, anyway?
Question 1: What is the reason for the try-except-else to exist?
It can be answered from a tactical standpoint. There is of course reason for try...except... to exist. The only new addition here is the else... clause, whose usefulness boils down to its uniqueness:
It runs an extra code block ONLY WHEN there was no exception happened in the try... block.
It runs that extra code block, OUTSIDE of the try... block (meaning any potential exceptions happen inside the else... block would NOT be caught).
It runs that extra code block BEFORE the final... finalization.
db = open(...)
try:
db.insert(something)
except Exception:
db.rollback()
logging.exception('Failing: %s, db is ROLLED BACK', something)
else:
db.commit()
logging.info(
'Successful: %d', # <-- For the sake of demonstration,
# there is a typo %d here to trigger an exception.
# If you move this section into the try... block,
# the flow would unnecessarily go to the rollback path.
something)
finally:
db.close()
In the example above, you can't move that successful log line into behind the finally... block. You can't quite move it into inside the try... block, either, due to the potential exception inside the else... block.
Question 2: does Python encourage using exceptions for flow control?
I found no official written documentation to support that claim. (To readers who would disagree: please leave comments with links to evidences you found.) The only vaguely-relevant paragraph that I found, is this EAFP term:
EAFP
Easier to ask for forgiveness than permission. This common Python coding style assumes the existence of valid keys or attributes and catches exceptions if the assumption proves false. This clean and fast style is characterized by the presence of many try and except statements. The technique contrasts with the LBYL style common to many other languages such as C.
Such paragraph merely described that, rather than doing this:
def make_some_noise(speaker):
if hasattr(speaker, "quack"):
speaker.quack()
we would prefer this:
def make_some_noise(speaker):
try:
speaker.quack()
except AttributeError:
logger.warning("This speaker is not a duck")
make_some_noise(DonaldDuck()) # This would work
make_some_noise(DonaldTrump()) # This would trigger exception
or potentially even omitting the try...except:
def make_some_noise(duck):
duck.quack()
So, the EAFP encourages duck-typing. But it does not encourage using exceptions for flow control.
Question 3: In what situation you should design your program to emit exceptions?
It is a moot conversation on whether it is anti-pattern to use exception as control flow. Because, once a design decision is made for a given function, its usage pattern would also be determined, and then the caller would have no choice but to use it that way.
So, let's go back to the fundamentals to see when a function would better produce its outcome via returning a value or via emitting exception(s).
What is the difference between the return value and the exception?
Their "blast radius" are different. Return value is only available to the immediate caller; exception can be automatically relayed for unlimited distance until it is caught.
Their distribution patterns are different. Return value is by definition one piece of data (even though you could return a compound data type such as a dictionary or a container object, it is still technically one value).
The exception mechanism, on the contrary, allows multiple values (one at a time) to be returned via their respective dedicate channel. Here, each except FooError: ... and except BarError: ... block is considered as its own dedicate channel.
Therefore, it is up to each different scenario to use one mechanism that fits well.
All normal cases should better be returned via return value, because the callers would most likely need to use that return value immediately. The return-value approach also allows nesting layers of callers in a functional programming style. The exception mechanism's long blast radius and multiple channels do not help here.
For example, it would be unintuitive if any function named get_something(...) produces its happy path result as an exception. (This is not really a contrived example. There is one practice to implement BinaryTree.Search(value) to use exception to ship the value back in the middle of a deep recursion.)
If the caller would likely forget to handle the error sentinel from the return value, it is probably a good idea to use exception's characterist #2 to save caller from its hidden bug. A typical non-example would be the position = find_string(haystack, needle), unfortunately its return value of -1 or null would tend to cause a bug in the caller.
If the error sentinel would collide with a normal value in the result namespace, it is almost certain to use an exception, because you'd have to use a different channel to convey that error.
If the normal channel i.e. the return value is already used in the happy-path, AND the happy-path does NOT have sophisicated flow control, you have no choice but to use exception for flow control. People keep talking about how Python uses StopIteration exception for iteration termination, and use it to kind of justify "using exception for flow control". But IMHO this is only a practical choice in a particular situation, it does not generalize and glorify "using exception for flow control".
At this point, if you already make a sound decision on whether your function get_stock_price() would produce only return-value or also raise exceptions, or if that function is provided by an existing library so that its behavior has long be decided, you do not have much choice in writing its caller calculate_market_trend(). Whether to use get_stock_price()'s exception to control the flow in your calculate_market_trend() is merely a matter of whether your business logic requires you to do so. If yes, do it; otherwise, let the exception bubble up to a higher level (this utilizes the characteristic #1 "long blast radius" of exception).
In particular, if you are implementing a middle-layer library Foo and you happen to be making a dependency on lower-level library Bar, you would probably want to hide your implementation detail, by catching all Bar.ThisError, Bar.ThatError, ..., and map them into Foo.GenericError. In this case, the long blast radius is actually working against us, so you might hope "only if library Bar were returning its errors via return values". But then again, that decision has long been made in Bar, so you can just live with it.
All in all, I think whether to use exception as control flow is a moot point.
OP, YOU ARE CORRECT. The else after try/except in Python is ugly. it leads to another flow-control object where none is needed:
try:
x = blah()
except:
print "failed at blah()"
else:
print "just succeeded with blah"
A totally clear equivalent is:
try:
x = blah()
print "just succeeded with blah"
except:
print "failed at blah()"
This is far clearer than an else clause. The else after try/except is not frequently written, so it takes a moment to figure what the implications are.
Just because you CAN do a thing, doesn't mean you SHOULD do a thing.
Lots of features have been added to languages because someone thought it might come in handy. Trouble is, the more features, the less clear and obvious things are because people don't usually use those bells and whistles.
Just my 5 cents here. I have to come along behind and clean up a lot of code written by 1st-year out of college developers who think they're smart and want to write code in some uber-tight, uber-efficient way when that just makes it a mess to try and read / modify later. I vote for readability every day and twice on Sundays.

Using except to mean "and if that doesn't work"

I fully get the general principle of not catching all exception, as explained in this question, for instance (Why is "except: pass" a bad programming practice?). Yet I have found myself writing this sequence to get the source of a file like object:
try:
self.doc.source = source.geturl()
except:
try:
self.doc.source = pathlib.Path(os.path.abspath(source.name)).as_uri()
except:
self.doc.source = None
Clearly with some spelunking I could figure out which specific errors to catch with a reasonable degree of confidence. But at is explained in this question (Python: How can I know which exceptions might be thrown from a method call) you can't ever be quite certain.
So is there a better way to do what I am doing here, which is essentially to say: try this and if it doesn't work try this and if that doesn't work do this. Since this is all about setting a single variable, and there is a fallback of setting it to None, it is not obvious to me wherein the peril lies in this construct.
Maybe it'd be better to put it into a dedicated function ?
def func(source):
try:
return source.geturl()
except Exception:
try:
return pathlib.Path(os.path.abspath(source.name)).as_uri()
except Exception:
pass
Notes on swallowing exceptions
Ignoring any kind of exception is not the best pattern : it'd be better to know what call can raise what kind of exception.
Even if except ...: pass is bad, that's already what you were doing in your example, and here it's clear that we try another way if it fails.
The bad programming practice is basing the error handling on the ability to catch any kind of error. In itself, except: pass is better than except: <lots_of_things_that_wont_raise_again>.
However, the first answer in the post you referred to says something very sensible : pass semantically indicates that you won't do ANYTHING with the exception, and as you do not store in a variable, it also shows that you'll never be able to access it again (well you could, but still..). As /u/Aprillion/, you'll want to at least log these errors, because otherwise, you may be swallowing very useful debugging information, which could make your life (or others) much more difficult at some point.
For example, what happens if there's a bug hidden in geturl, that makes it raises exception in normal cases ? It may stay hidden for long, because this exception will be swallowed and never shown anywhere. Good luck to the debugger to find it !
Ways to improve this
replace except Exception with the exceptions that could be raised
check before an attempt if it is going to fail, so that you don't have to catch an exception
Additionally, you probably want to use a logger to save/show these exceptions somewhere, at least in DEBUG mode.
Clearly with some spelunking I could figure out which specific errors to catch with a reasonable degree of confidence. But at is explained in this question (Python: How can I know which exceptions might be thrown from a method call) you can't ever be quite certain.
Why would that change anything ? If geturl returns specific exception types, you'd only catch these, and you'd want other unexpected errors to bubble up to the interpreter.
The big problem with the givn approach is that if geturl is undefined, or not callable, or take more arguments, this error would not make the interpreter crash, even though it is a clear programming error. That's because except: or except Exception: will catch a lof of Python errors, should it be AttributeError, NameError, ImportError or even SyntaxError.
To conclude, I really think you'd prefer to replace Exception with the list of exceptions you can catch (and at least send the exceptions to a logger). Note that you can write it as such :
try:
return source.geturl()
except (ExceptionA, ExceptionB, ExceptionC):
pass

What exception to raise for python function arguments

I'm creating a function right now that takes in two lists. I want these two lists to be of equal size. I'm trying to figure out what kind of exception I should throw (or If I should throw an exception at all) if they aren't the same size. I kind of want to say ValueError but this is a check that doesn't actually pertain to any single value.
For clarities sake, here's my function stub.
def create_form(field_types, field_discriptions):
pass
I would just use assert and raise an AssertionError:
assert len(field_types) == len(field_descriptions), "Helpful message"
Otherwise, ValueError with a message seems like the best choice.
You can create your own subclass of exception called ArraysNotEqualSizeException. Might be a bit overkill, but it gets the point across.
throw an exception as the first thing in the function. A function-critical error should not do anything without making sure it can do what it wants or it could have bad effects
This isn't a giant error; you should use an assert
Places to consider putting assertions:
checking parameter types, classes, or values
checking data structure invariants
checking "can't happen" situations (duplicates in a list, contradictory state variables.)
after calling a function, to make sure that its return is reasonable
-Python wiki
assert len(listone) == len(listtwo),
"the function cannot continue because\
the two arguments passed are of invalid length"
a ValueError as suggested by Blender would be the right type if you want to use a generic exception, however that's usually reserved for larger issues and would be less helpful.
for quick reference:
"ValueError
Raised when a built-in operation or function receives an argument that
has the right type but an inappropriate value, and the situation is
not described by a more precise exception such as IndexError." -Python docs

In Python, how to tell if being called by exception handling code?

I would like to write a function in Python (2.6) that can determine if it is being called from exception handling code somewhere up the stack.
This is for a specialized logging use. In python's logging module, the caller has to explicitly specify that exception information should be logged (either by calling logger.exception() or by using the exc_info keyword). I would like my logger to do this automatically, based on whether it is being called from within exception handling code.
I thought that checking sys.exc_info() might be the answer, but it also returns exception information from an already-handled exception. (From the docs: "This function returns a tuple of three values that give information about the exception that is currently being handled... If the current stack frame is not handling an exception, the information is taken from the calling stack frame, or its caller, and so on until a stack frame is found that is handling an exception. Here, 'handling an exception' is defined as 'executing or having executed an except clause.'")
Also, since I want this to be transparent to the caller, I do not want to have to use exc_clear() or anything else in the except clause.
What's the right way to do this?
If you clear the exception using sys.exc_clear in your exception handlers, then sys.exc_info should work for you. For example: If you run the following script:
import sys
try:
1 / 0
except:
print sys.exc_info()
sys.exc_clear()
print sys.exc_info()
You should see this output:
(, ZeroDivisionError('integer division or modulo by zero',), )
(None, None, None)
Update: I don't believe there is a simple ("transparent") way of answering the question "Is an exception handler running?" without going to some trouble, and in my opinion it's not worth taking the trouble just for logging. It is of course easy to answer the question "Has an exception been raised (in this thread)?", even on a per-stack-frame basis (see the documentation for frame objects).
Like everything in Python, an exception is an object. Therefore, you could keep a (weak!) reference to the last exception handled and then use sys.exc_info().
Note: in case of multithreading code, you may have issues with this approach. And there could be other corner cases as well.
However, explicit is better than implicit; are you really sure that handling exception logging in the same way as normal one is a good feature to add to your system?
In my humble opinion, not.

Is it OK to raise a built-in exception, but with a different message, in Python?

Is it OK to raise a built-in exception with a custom text? or to raise a built-in warning also with custom text?
The documentation reads:
exception ValueError: Raised when a built-in operation or function receives an argument (…)
Is it implied that only built-in operations should raise a ValueError exception?
In practice, I understand that it is safe to create an exception class that inherits from ValueError or Exception. But is it OK not to do that, and directly raise a ValueError("custom text")?
Since ValueError is built-in, raising a ValueError (with a custom text) allows users to quickly see what kind of problem is involved, compared to a custom exception type (something like "ValueErrorSpecificModule", which is not standard).
There's nothing operationally wrong with doing something like:
raise ValueError("invalid input encoding")
In fact, I do that quite often when I'm writing the first pass of some code. The main problem with doing it that way is that clients of your code have a hard time being precise in their exception handling; in order to catch that specific exception, they would have to do string matching on the exception object they caught, which is obviously fragile and tedious. Thus, it would be better to introduce a ValueError subclass of your own; this could still be caught as ValueError, but also as the more specific exception class.
A general rule of thumb is that whenever you have code like:
raise ValueError('some problem: %s' % value)
You should probably replace it with something like:
class SomeProblem(ValueError):
"""
Raised to signal a problem with the specified value.
"""
# ...
raise SomeProblem(value)
You might say that the exception type specifies what went wrong, whereas the message / attributes specify how it went wrong.
It's perfectly ok.
However you may want to create your own subclass to help distinguish from the builtin exceptions
For example if you have something that works like a dict, you can raise a KeyError for the usual reasons, but what if the KeyError is really coming from an underlying dict you are using in the implementation.
Raising a subclass of KeyError makes it easier to see that there is a bug in the implementation, and not that the key just isn't in your object
It's OK and I do it all the time. I find it less surprising to see TypeError than MySpecialTypeError in many situations.
On the page you linked, I don't see the phrase "built-in":
exception TypeError: Raised when an operation or function is applied to an object of inappropriate type. The associated value is a string giving details about the type mismatch.
Perhaps someone saw your question and fixed the documentation already.
EDIT: It looks like you may have inserted the documentation for ValueError instead of TypeError

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