Debugging
Introduction
By now, you will have encountered various bugs when programming for this class. Most often, you will try to run your code and see something like this:
Traceback (most recent call last):
File "<pyshell#29>", line 3 in <module>
result = buggy(5)
File <pyshell#29>", line 5 in buggy
return f + x
TypeError: unsupported operand type(s) for +: 'function' and 'int'
This is called a traceback message. It prints out the chain of function calls that led up to the error, with the most recent function call at the bottom. You can follow this chain to figure out which function(s) caused the problem.
Traceback Messages
Notice that the lines in the traceback appear to be paired together. The first line in such a pair has the following format:
File "<file name>", line <number>, in <function>
That line provides you with the following information:
- File name: the name of the file that contains the problem.
- Number: the line number in the file that cuased the problem, or the line number that contains the next function call
- Function: the name of the function in which the line can be found.
The second line in the pair (it's indented farther in than the first) displays the actual line of code that makes the next function call. This gives you a quick look at what arguments were passed into the function, in what context the function was being used, etc.
Finally, remember that the traceback is organized with the "most recent call last."
Error Messages
The very last line in the traceback message is the error statement. An error statement has the following format:
<error type>: <error message>
This line provides you with two pieces of information:
- Error type: the type of error that was caused (e.g.
SyntaxError
,TypeError
). These are usually descriptive enough to help you narrow down your search for the cause of error. - Error message: a more detailed description of exactly what caused the error. Different error types produce different error messages.
Debugging Process
Running doctests
Python has a great way to quickly write tests for your code. These are called doctests, and look like this:
def foo(x):
"""A random function.
>>> foo(4)
4
>>> foo(5)
5
"""
The lines in the docstring that look like interpreter outputs are the doctests. To run them, go to your terminal and type:
python3 -m doctest file.py
This effectively loads your file into the Python interpreter, and
checks to see if each doctest input (e.g. foo(4)
) is the same as the
specified output (e.g. 4
). If it isn't, a message will tell you
which doctests you failed.
The command line tool has a -v
option that stands for "verbose."
python3 -m doctest file.py -v
In addition to telling you which doctests you failed, it will also
tell you which doctests passed. I personally find that information
unnecessary, so I usually leave -v
out.
Usually, we will provide doctests for you in the starter files. Always run these doctests. Submitting an assignment without running doctests even once is practically throwing points away.
Also, do not manually type in doctests into the interpreter. The whole point of writing doctests is so you don't have to do that. Manually typing in doctests requires you to (1) open up a Python shell, (2) type in every doctest, (3) manually check if the output matches the doctest, (4) repeat. Running doctests from the command line requires you to (1) type in a single line, and (2) that's it!
Writing your own tests
In addition to doctests, you can write your own tests. There are two ways to do this: (1) write additional doctests, or (2) write testing functions.
Writing your own tests is good practice for the future. Remember, before the project deadlines, our autograder only runs sanity tests — a subset of all the tests we will eventually run. In other words, passing the autograder does not mean you get full credit. As such, it is a very good idea to write your own test cases.
To write more doctests, simply follow the style of existing doctests.
You can also write your own functions (much like the take_turn_test
function from Project 1).
Some advice in writing tests:
- Write some tests before you write code: this is called test-driven development. Writing down how you expect the function to behave first — this can guide you when writing the actual code.
- Write more tests after you write code: once you are sure your code passes the initial doctests, write some more tests to take care of edge cases.
- Test edge cases: make sure your code works for all special cases.
Using print
statements
Once the doctests tell you where the error is, you have to figure what went wrong. If the doctest gave you a traceback message, look at what type of error it is to help narrow your search. Also check that you aren't making any common mistakes.
When you first learn how to program, it can be hard to spot bugs in
your code. One common practice is to add print
statements. For
example, let's say the following function foo
keeps returning the
wrong thing:
def foo(x):
result = some_function(x)
return result // 5
We can add a print statement before the return to check what
some_function
is returning:
def foo(x):
result = some_function(x)
print('result is', result)
return other_function(result)
If it turns out result
is not what we expect it to be, we would go
look in some_function
to see if it works properly. Otherwise, we
might have to add a print statement before the return to check
other_function
:
def foo(x):
result = some_function(x)
print('result is', result)
tmp = other_function(result)
print('other_function returns', tmp)
return tmp
Some advice:
Don't just print out a variable — add some sort of message to make it easier for you to read:
print(tmp) # harder to keep track print('tmp was this:', tmp) # easier
- Use
print
statements to view the results of function calls (i.e. after function calls). Use
print
statements at the end of awhile
loop to view the state of the counter variables after each iteration:i = 0 while i < n: i += func(i) print('i is', i)
- Don't just put random
print
statements after lines that are obviously correct.
Long-term debugging
The print
statements described above are meant for quick debugging
of one-time errors — after figuring out the error, you would remove
all the print
statements.
However, sometimes we would like to leave the debugging code if we
need to periodically test our file. It can get kind of annoying if
every time we run our file, debugging messages pop up. One way to
avoid this is to use a global debug
variable:
debug = True
def foo(n):
i = 0
while i < n:
i += func(i)
if debug:
print('i is', i)
Now, whenever we want to do some debugging, we can set the global
debug
variable to True
, and when we don't want to see any
debugging input, we can turn it to False
(such a variable is called
a "flag").
Error Types
The following are common error types that Python programmers run into.
SyntaxError
- Cause: code syntax mistake
Example:
File "file name", line number def incorrect(f) ^ SyntaxError: invalid syntax
- Solution: the
^
symbol points to the code that contains invalid syntax. The error message doesn't tell you what is wrong, but it does tell you where. - Notes: Python will check for
SyntaxErrors
before executing any code. This is different from other errors, which are only raiased during runtime.
IndentationError
- Cause: improper indentation
Example:
File "file name", line number print('improper indentation') IndentationError: unindent does not match any outer indentation level
- Solution: The line that is improperly indented is displayed. Simply re-indent it.
- Notes: If you are inconsistent with tabs and spaces, Python will raise one of these. Make sure you use either spaces or tabs, not both!
TypeError
Cause 1:
- Invalid operand types for primitive operators. You are probably trying to add/subract/multiply/divide incompatible types.
Example:
TypeError: unsupported operand type(s) for +: 'function' and 'int'
Cause 2:
- Using non-function objects in function calls.
Example:
>>> square = 3 >>> square(3) Traceback (most recent call last): ... TypeError: 'int' object is not callable
Cause 3:
- Passing an incorrect number of arguments to a function.
Example:
>>> add(3) Traceback (most recent call last): ... TypeError: add expected 2 arguments, got 1
NameError
- Cause: variable not assigned to anything OR it doesn't exist. This includes function names.
Example:
File "file name", line number y = x + 3 NameError: global name 'x' is not defined
- Solution: Make sure you are initializing the variable (i.e. assigning the variable to a value) before you use it.
- Notes: The reason the error message says "global name" is because Python will start searching for the variable from a function's local frame. If the variable is not found there, Python will keep searching the parent frames until it reaches the global frame. If it still can't find the variable, Python raises the error.
IndexError
- Cause: trying to index a sequence (e.g. a tuple, list, string) with a number that exceeds the size of the sequence.
Example:
File "file name", line number x[100] IndexError: tuple index out of range
- Solution: Make sure the index is within the bounds of the
sequence. If you're using a variable as an index (e.g.
seq[x]
, make sure the variable is assigned to a proper index.
Common Bugs
Spelling
Python is case sensitive. The variable hello
is not the same as Hello
or
hello
or helo
. This will usually show up as a NameError
, but sometimes
misspelled variables will actually have been defined. In that case, it can be
difficult to find errors, and it is never gratifying to discover it's just a
spelling mistake.
Missing Parentheses
A common bug is to leave off the closing parenthesis. This will show up as a
SyntaxError
. Consider the following code:
def fun():
return foo(bar() # missing a parenthesis here
fun()
Python will raise a SyntaxError
, but will point to the line
after the missing parenthesis:
File "file name", line "number"
fun()
^
SyntaxError: invalid syntax
In general, if Python points a SyntaxError
to a seemingly correct
line, you are probably forgetting a parenthesis somewhere.
Missing close quotes
This is similar to the previous bug, but much easier to catch. Python will actually tell you the line that is missing the quote:
File "file name", line "number"
return 'hi
^
SyntaxError: EOL while scanning string literal
EOL
stands for "End of Line."
=
vs. ==
The single equal sign =
is used for assignment; the double equal sign ==
is used for testing equivalence. The most common error of this form is
something like:
if x = 3:
Infinite Loops
Infinite loops are often caused by while
loops whose conditions never change.
For example:
i = 0
while i < 10:
print(i)
Sometimes you might have incremented the wrong counter:
i, n = 0, 0
while i < 10:
print(i)
n += 1
Off-by-one errors
Sometimes a while
loop or recursive function might stop one iteration too
short. Here, it's best to walk through the iteration/recursion to see what
number the loop stops at.