I use pytest with coverage and I want to see the files that have no coverage.

It appears that pytest and pytest-cov will not list someof the files that are under namespace packages, while it will work fine for files in regular packages (see PEP 420 on the topic of implicit namespace packages).

To fix this problem, one solution is to add __init__.py files in all of your directories in order to create regular packages.

If you are using PyCharm Professional, you can simply run your test with coverage. This will allow you to identify all the files that have currently no coverage as they will appear with coverage = 0%.

26 Feb 2020

Accelerate slow pytests

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Problems Python

My pytests take a while to complete, how can I speed up the process?

A fairly cheap solution is to use parallelization to run your tests on multiple CPUs instead of the 1 cpu used by default. To do so, you can install pytest-xdist. Once the extension is specified, all you need to do is add -n auto when you call pytest.

Another thing you should do that requires more effort is to investigate which of your tests are consuming a lot of CPU time to execute. To do so, use the --durations=0 flag when you call pytest. A report will be generated after your tests have run that lists how long setting up, running and tearing down each specific test took. The list is ordered from longest to shortest durations, meaning that the tests that have the most potential for being optimized will be at the top. You should focus on these tests because the longest one will determine how long it would take to run your tests even if you had an infinite amount of CPU cores.

Investigate why certain tests take a while to execute.

  • Are some tests computing something that takes a while and is computed exactly the same way by multiple tests? Precompute this result once and share it between the different tests (think of it as a fixture).
  • Are calls to a slow external API done? If you are not testing that the remote API is changing, store example responses and emulate receiving them.
  • Is there a loop in the test that runs hundreds of thousands iterations while the same test could be executed with only a thousand iterations?

I want to include mypy as part of my CI pipeline but my existing code contains a lot (> 100, but < 500) of issues. How can I get started?

Create a minimalist configuration of mypy such that it will list issues that need to be fixed and return a non-zero exit code. Based on the problem definition, we assume that at this step you have more than 100 issues that are listed and that fixing those issues will take many hours you'd rather invest in improving the code than to fix typing issues.

Add a step in your CI pipeline that runs mypy and list all those issues. Verify that it indeed breaks the build.

Once you've satisfied yourself that CI fails, we will "fix" the mypy issues by adding the #type: ignore and/or # noqa comment after the offending lines with issues. This will have the effect of resolving all the currently found mypy issues, such that mypy should now return a zero exit code. With this, any future code that fails to pass the mypy check will break the build. This will allow you to use mypy from this point forward to check your types.

I suggest adding an additional comment such as # FIXME: TICKET-ID, where TICKET-ID refers to the id of a ticket in your issue tracking system that explains that you need to take care of this technical debt.

Always prefer to fix the issues instead of ignoring them. However, also consider whether fixing those issues is an appropriate use of your time when you want to introduce mypy (which should be as soon as possible in my opinion).

10 Feb 2020

AST in python

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Problems Software development Python

I want to analyze a python script to extract something from it. How do I do that?

Python has an abstract syntax tree like most programming language.

You can use the ast module to parse a string that contains the code you want to analyze.

A simple example is as follow. It will read a file defined in the file variable, use ast to parse it, returning a tree that can then be traversed using the visitor pattern. Defining visitors lets you separate the responsibility of each of them, making the code that analyzes code easier to understand.

import ast

class ClassVisitor(ast.NodeVisitor):
    def visit_ClassDef(self, node):
        # Do some logic specific to classes
        self.generic_visit(node)

class FunctionVisitor(ast.NodeVisitor):
    def visit_FunctionDef(self, node):
        # Do some logic specific to functions
        self.generic_visit(node)

visitors = [
    ClassVisitor(),
    FunctionVisitor()
]

with open(file, "r") as f:
    code = f.read()

    tree = ast.parse(code)

    for visitor in visitors:
        visitor.visit(tree)

20 Dec 2019

Python profiling

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Programming Python Processes

Run your program with python -m cProfile -o profile.cprofile my-script.py

Install snakeviz (pip install snakeviz) to visualize the generated profile.

snakeviz profile.cprofile

Alternative approach

Install pyprof2calltree to convert the cprofile to a kcachegrind compatible profile.

pyprof2calltree -i profile.cprofile -o callgrind.profile.cprofile