A series of articles that teaches you how to make the best use of the core Python features. The Pydon'ts are available as an e-book that you can read for free below.
This Pydon't will teach you how to use the
frozenset Python built-in types.
In this Pydon't you'll learn how to make the best use possible of the Python REPL.
In this Pydon't you will learn the Python string methods
In this Pydon't you'll learn the importance of using good names and I'll give some tips to help you.
In this Pydon't I talk about Python style and I go over some tools you can use to help you remain within a consistent style.
In this Pydon't I show you why refactoring is important and show you how to do it in little steps, so that it doesn't become too overwhelming.
Does elegance matter when writing computer programs..?
This Pydon't walks you through the usages of the
__name__ dunder method and how to use it effectively.
The purpose of this Pydon't is to show you what underscores are used for in Python, and to show you how to write more idiomatic code with them.
In this Pydon't we will take a look at the
which used to be a built-in function and is currently
In this Pydon't we explore what Boolean short-circuiting
or operators is, and how to use this
functionality to write more expressive code.
In this Pydon't we conclude the slicing trilogy and
take a look at the inner workings of Python slicing,
from the built-in
slice type to the dunder method
__getitem__ and its siblings.
In this Pydon't we cover advanced topics related to sequence slicing, like (negative) steps, more idiomatic sequence slicing, slice assignment, and slice deletion.
This article covers the basics of sequence slicing in Python and teaches you some idiomatic slicing patterns to write more elegant code.
A short article with all you need to know about sequence indexing in Python – and a bit more.
If you need to access the items of an iterable but also keep
track of their indices, have you considered using
Let's talk about another of Python's amazing tools to work
for loops are the bread and butter of imperative programming
and Python has some really nice tools to work with them.
If you want to traverse several structures in parallel,
have you considered using
Structural pattern matching is coming in Python 3.10 and
the previous Pydon't explored some interesting use cases
for the new
This article explores situations for which
match isn't the answer.
Structural pattern matching is coming in Python 3.10 and this article
explores how to use it to write Pythonic code,
showing the best use cases for the
Python's comparisons operators can be chained to shorten common comparison expressions. Learn the ins and outs of comparison operator chaining and especially the cases you should avoid, namely those where you chain comparison operators that aren't aligned.
Deep unpacking (or nested unpacking) provides a more powerful way for you to write assignments in your code. Deep unpacking can be used to improve the readability of your code and help protect you against unexpected bugs. Learning about deep unpacking will also be very important in order to make the most out of the structural matching feature that is to be introduced in Python 3.10.
Recursion is a technique that you should have in your programming arsenal, but that doesn't mean you should always use recursion when writing Python code. Sometimes you should convert the recursion to another programming style or come up with a different algorithm altogether.
All Python objects can be used in expressions that should
return a boolean value, like in an
Python's built-in objects are usually Falsy (interpreted as
when they are “empty” or have “no value” and otherwise they
are Truthy (interpreted as
You can define this behaviour explicitly for your own
objects if you define the
__bool__ dunder method.
repr built-in methods are similar, but not the same.
str to print nice-looking strings for end users and use
repr for debugging
Similarly, in your classes you should implement the
dunder methods with these two use cases in mind.
The walrus operator
:= can be really helpful, but if you use it in convoluted
ways it will make your code worse instead of better.
:= to flatten a sequence of nested
ifs or to reuse partial computations.
In Python, if you are doing something that may throw an error, there are many
cases in which it is better to "apologise than to ask for permission".
This means you should prefer using a
try block to catch the error,
instead of an
if statement to prevent the error.
How should you unpack a list or a tuple into the first element and then the rest? Or into the last element and everything else? Pydon't unpack with slices, prefer starred assignment instead.
The "Zen of Python" is the set of guidelines that show up in your screen if you
import this. If you have never read them before, read them now and again from time to time.
If you are looking to write Pythonic code, write code that abides by the Zen of Python.
"Pydon'ts" are short, to-the-point, meaningful Python programming tips. A Pydon't is something you should not do when programming in Python. In general, following a Pydon't will make you write more Pythonic code.