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traceback-with-variables
Advanced tools
Adds variables to python traceback. Simple, lightweight, controllable. Debug reasons of exceptions by logging or pretty printing colorful variable contexts for each frame in a stacktrace, showing every value. Dump locals environments after errors to console, files, and loggers. Works with Jupyter and IPython.
Very simple to use, but versatile when needed. Try for debug and keep for production.
“It is useless work that darkens the heart.” – Ursula K. Le Guin
Tired of useless job of putting all your variables into debug exception messages? Just stop it. Automate it and clean your code. Once and for all.
Contents: Installation | 🚀 Quick Start | Colors | How does it save my time? | Examples and recipes | Reference | FAQ
:warning: I'm open to update this module to meet new use cases and to make using it easier and fun: so any proposal or advice or warning is very welcome and will be taken into account of course. When I started it I wanted to make a tool meeting all standard use cases. I think in this particular domain this is rather achievable, so I'll try. Note
next_version
branch also. Have fun!
pip install traceback-with-variables==2.1.1
conda install -c conda-forge traceback-with-variables
to use shorter tb
alias in interactive mode call this once:
python3 -c 'from traceback_with_variables.tb_alias import create_tb_alias as c; c()'
Using without code editing, running your script/command/module:
traceback-with-variables tested_script.py ...srcipt's args...
Simplest usage, for the whole program:
from traceback_with_variables import activate_by_import
or just (if you added an alias by the above command)
import tb.a
Decorator, for a single function:
@prints_exc
# def main(): or def some_func(...):
Context, for a single code block:
with printing_exc():
Work with traceback lines in a custom manner:
lines = list(iter_exc_lines(e))
No exception but you want to print the stack anyway?:
print_cur_tb()
Using a logger [with a decorator, with a context]:
with printing_exc(file_=LoggerAsFile(logger)):
# or
@prints_exc(file_=LoggerAsFile(logger)):
Print traceback in interactive mode after an exception:
>>> print_exc()
Customize any of the previous examples:
fmt.max_value_str_len = 10000
fmt.skip_files_except = 'my_project'
Turn a code totally covered by debug formatting from this:
def main():
sizes_str = sys.argv[1]
h1, w1, h2, w2 = map(int, sizes_str.split())
- try:
return get_avg_ratio([h1, w1], [h2, w2])
- except:
- logger.error(f'something happened :(, variables = {locals()[:1000]}')
- raise
- # or
- raise MyToolException(f'something happened :(, variables = {locals()[:1000]}')
def get_avg_ratio(size1, size2):
- try:
return mean(get_ratio(h, w) for h, w in [size1, size2])
- except:
- logger.error(f'something happened :(, size1 = {size1}, size2 = {size2}')
- raise
- # or
- raise MyToolException(f'something happened :(, size1 = {size1}, size2 = {size2}')
def get_ratio(height, width):
- try:
return height / width
- except:
- logger.error(f'something happened :(, width = {width}, height = {height}')
- raise
- # or
- raise MyToolException(f'something happened :(, width = {width}, height = {height}')
into this (zero debug code):
+ from traceback_with_variables import activate_by_import
def main():
sizes_str = sys.argv[1]
h1, w1, h2, w2 = map(int, sizes_str.split())
return get_avg_ratio([h1, w1], [h2, w2])
def get_avg_ratio(size1, size2):
return mean(get_ratio(h, w) for h, w in [size1, size2])
def get_ratio(height, width):
return height / width
And obtain total debug info spending 0 lines of code:
Traceback with variables (most recent call last):
File "./temp.py", line 7, in main
return get_avg_ratio([h1, w1], [h2, w2])
sizes_str = '300 200 300 0'
h1 = 300
w1 = 200
h2 = 300
w2 = 0
File "./temp.py", line 10, in get_avg_ratio
return mean([get_ratio(h, w) for h, w in [size1, size2]])
size1 = [300, 200]
size2 = [300, 0]
File "./temp.py", line 10, in <listcomp>
return mean([get_ratio(h, w) for h, w in [size1, size2]])
.0 = <tuple_iterator object at 0x7ff61e35b820>
h = 300
w = 0
File "./temp.py", line 13, in get_ratio
return height / width
height = 300
width = 0
builtins.ZeroDivisionError: division by zero
Automate your logging too:
logger = logging.getLogger('main')
def main():
...
with printing_exc(file_=LoggerAsFile(logger))
...
2020-03-30 18:24:31 main ERROR Traceback with variables (most recent call last):
2020-03-30 18:24:31 main ERROR File "./temp.py", line 7, in main
2020-03-30 18:24:31 main ERROR return get_avg_ratio([h1, w1], [h2, w2])
2020-03-30 18:24:31 main ERROR sizes_str = '300 200 300 0'
2020-03-30 18:24:31 main ERROR h1 = 300
2020-03-30 18:24:31 main ERROR w1 = 200
2020-03-30 18:24:31 main ERROR h2 = 300
2020-03-30 18:24:31 main ERROR w2 = 0
2020-03-30 18:24:31 main ERROR File "./temp.py", line 10, in get_avg_ratio
2020-03-30 18:24:31 main ERROR return mean([get_ratio(h, w) for h, w in [size1, size2]])
2020-03-30 18:24:31 main ERROR size1 = [300, 200]
2020-03-30 18:24:31 main ERROR size2 = [300, 0]
2020-03-30 18:24:31 main ERROR File "./temp.py", line 10, in <listcomp>
2020-03-30 18:24:31 main ERROR return mean([get_ratio(h, w) for h, w in [size1, size2]])
2020-03-30 18:24:31 main ERROR .0 = <tuple_iterator object at 0x7ff412acb820>
2020-03-30 18:24:31 main ERROR h = 300
2020-03-30 18:24:31 main ERROR w = 0
2020-03-30 18:24:31 main ERROR File "./temp.py", line 13, in get_ratio
2020-03-30 18:24:31 main ERROR return height / width
2020-03-30 18:24:31 main ERROR height = 300
2020-03-30 18:24:31 main ERROR width = 0
2020-03-30 18:24:31 main ERROR builtins.ZeroDivisionError: division by zero
Free your exceptions of unnecessary information load:
def make_a_cake(sugar, eggs, milk, flour, salt, water):
is_sweet = sugar > salt
is_vegan = not (eggs or milk)
is_huge = (sugar + eggs + milk + flour + salt + water > 10000)
if not (is_sweet or is_vegan or is_huge):
raise ValueError('This is unacceptable, look why!')
...
— Should I use it after debugging is over, i.e. in production?
Yes, of course! That way it might save you even more time (watch out for sensitive data
like passwords and tokens in you logs, use skip_files_except to hide code from libs AND custom_var_printers to hide own locals). Note: you can deploy more serious frameworks, e.g. Sentry
Stop this tedious practice in production:
step 1: Notice some exception in a production service.
step 2: Add more printouts, logging, and exception messages.
step 3: Rerun the service.
step 4: Wait till (hopefully) the bug repeats.
step 5: Examine the printouts and possibly add some more info (then go back to step 2).
step 6: Erase all recently added printouts, logging and exception messages.
step 7: Go back to step 1 once bugs appear.
flask
fmt=
argument, a Format
object with fields:max_value_str_len
max length of each variable string, -1 to disable, default=1000objects_details
depth of details of objects inspectionellipsis_rel_pos
when truncating long strings where to put the "...", from 0.0 to 1.0, default=0.7max_exc_str_len
max length of exception, should variable print fail, -1 to disable, default=10000before
number of code lines before the raising line, default=0after
number of code lines after the raising line, default=0ellipsis_
string to denote long strings truncation, default=...
skip_files_except
use to print only certain files; list of regexes, ignored if empty, default=Nonebrief_files_except
use to print variables only in certain files; list of regexes, ignored if empty, default=Nonecustom_var_printers
list of pairs of (filter, printer); filter is a name fragment, a type or a function or a list thereof; printer returns None
to skip a varcolor_scheme
is None
or one of ColorSchemes
: .none
, .common
, .nice
, .synthwave
. None
is for auto-detectactivate_by_import
Just import it. No arguments, for real quick use in regular Python.
from traceback_with_variables import activate_by_import
activate_in_ipython_by_import
Just import it. No arguments, for real quick use in Jupyter or IPython.
from traceback_with_variables import activate_in_ipython_by_import
global_print_exc
Call once in the beginning of your program, to change how traceback after an uncaught exception looks.
def main():
override_print_exc(...)
global_print_exc_in_ipython
Call once in the beginning of your program, to change how traceback after an uncaught exception looks.
def main():
override_print_exc(...)
print_exc
Prints traceback for a given/current/last (first being not None
in the priority list) exception to a file, default=sys.stderr
. Convenient for manual console or Jupyter sessions or custom try/except blocks. Note that it can be called with a given exception value or it can auto discover current exception in an except:
block or it can auto descover last exception value (long) after try/catch
block.
print_exc()
print_cur_tb
Prints current traceback when no exception is raised.
print_cur_tb()
prints_exc
Function decorator, used for logging or simple printing of scoped tracebacks with variables. I.e. traceback is shorter as it includes only frames inside the function call. Program exiting due to unhandled exception still prints a usual traceback.
@prints_exc
def f(...):
@prints_exc(...)
def f(...):
printing_exc
Context manager (i.e. with ...
), used for logging or simple printing of scoped tracebacks with variables. I.e. traceback is shorter as it includes only frames inside the with
scope. Program exiting due to unhandled exception still prints a usual traceback.
with printing_exc(...):
LoggerAsFile
A logger-to-file wrapper, to pass a logger to print tools as a file.
iter_exc_lines
Iterates the lines, which are usually printed one-by-one in terminal.
format_exc
Like iter_exc_lines
but returns a single string.
iter_cur_tb_lines
Like iter_exc_lines
but doesn't need an exception and prints upper frames..
format_cur_tb
Like iter_cur_tb_lines
but returns a single string.
In Windows console crash messages have no colors.
The default Windows console/terminal cannot print [so called ansi] colors, but this is
fixable
, especially with modern Windows versions. Therefore colors are disabled by default,
but you can enable them and check if it works in your case.
You can force enable colors by passing --color-scheme common
(for complete list of colors pass --help
) console argument.
Windows console prints junk symbols when colors are enabled.
The default Windows console/terminal cannot print [so called ansi] colors, but this is
fixable
, especially with modern Windows versions. If for some reason the colors are wrongly enabled by default,
you can force disable colors by passing --color-scheme none
console argument.
Bash tools like grep sometimes fail to digest the output when used with pipes (|
) because of colors.
Please disable colors by passing --color-scheme none
console argument.
The choice for keeping colors in piped output was made to allow convenient usage of head
, tail
, file redirection etc.
In cases like | grep
it might have issues, in which case you can disable colors.
Output redirected to a file in > output.txt
manner has no colors when I cat
it.
This is considered a rare use case, so colors are disabled by default when outputting to a file.
But you can force enable colors by passing --color-scheme common
(for complete list of colors pass --help
) console argument.
activate_by_import
or global_print_exc
don't work in Jupyter or IPython as if not called at all.
In Jupyter or IPython you should use activate_in_ipython_by_import
or global_print_exc_in_ipython
. IPython handles exceptions differently than regular Python.
The server framework (flask
, streamlit
etc.) still shows usual tracebacks.
In such frameworks tracebacks are printed not while exiting the program (the program continues running), hence you should override exception handling in a manner
proper for the given framework. Please address the flask
example.
How do I reduce output? I don't need all files or all variables.
Use skip_files_except
, brief_files_except
, custom_var_printers
to cut excess output.
I have ideas about good colors.
Please fork, add a new ColorScheme
to ColorSchemes
and create a Pull Request to next_version
branch. Choose the color codes and visually
test it like python3 -m traceback_with_variables.main --color-scheme {its name} examples/for_readme_image.py
.
My code doesn't work.
Please post your case. You are very welcome!
Other questions or requests to elaborate answers.
Please post your question or request. You are very welcome!
FAQs
Adds variables to python traceback. Simple, lightweight, controllable. Debug reasons of exceptions by logging or pretty printing colorful variable contexts for each frame in a stacktrace, showing every value. Dump locals environments after errors to console, files, and loggers. Works with Jupyter and IPython.
We found that traceback-with-variables demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
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