Simple yet flexible natural sorting in Python.

Overview

natsort

Simple yet flexible natural sorting in Python.

NOTE: Please see the Deprecation Schedule section for changes in natsort version 7.0.0.

Quick Description

When you try to sort a list of strings that contain numbers, the normal python sort algorithm sorts lexicographically, so you might not get the results that you expect:

>>> a = ['2 ft 7 in', '1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '7 ft 6 in']
>>> sorted(a)
['1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '2 ft 7 in', '7 ft 6 in']

Notice that it has the order ('1', '10', '2') - this is because the list is being sorted in lexicographical order, which sorts numbers like you would letters (i.e. 'b', 'ba', 'c').

natsort provides a function natsorted that helps sort lists "naturally" ("naturally" is rather ill-defined, but in general it means sorting based on meaning and not computer code point). Using natsorted is simple:

>>> from natsort import natsorted
>>> a = ['2 ft 7 in', '1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '7 ft 6 in']
>>> natsorted(a)
['1 ft 5 in', '2 ft 7 in', '2 ft 11 in', '7 ft 6 in', '10 ft 2 in']

natsorted identifies numbers anywhere in a string and sorts them naturally. Below are some other things you can do with natsort (also see the examples for a quick start guide, or the api for complete details).

Note: natsorted is designed to be a drop-in replacement for the built-in sorted function. Like sorted, natsorted does not sort in-place. To sort a list and assign the output to the same variable, you must explicitly assign the output to a variable:

>>> a = ['2 ft 7 in', '1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '7 ft 6 in']
>>> natsorted(a)
['1 ft 5 in', '2 ft 7 in', '2 ft 11 in', '7 ft 6 in', '10 ft 2 in']
>>> print(a)  # 'a' was not sorted; "natsorted" simply returned a sorted list
['2 ft 7 in', '1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '7 ft 6 in']
>>> a = natsorted(a)  # Now 'a' will be sorted because the sorted list was assigned to 'a'
>>> print(a)
['1 ft 5 in', '2 ft 7 in', '2 ft 11 in', '7 ft 6 in', '10 ft 2 in']

Please see Generating a Reusable Sorting Key and Sorting In-Place for an alternate way to sort in-place naturally.

Quick Examples

Sorting Versions

natsort does not actually comprehend version numbers. It just so happens that the most common versioning schemes are designed to work with standard natural sorting techniques; these schemes include MAJOR.MINOR, MAJOR.MINOR.PATCH, YEAR.MONTH.DAY. If your data conforms to a scheme like this, then it will work out-of-the-box with natsorted (as of natsort version >= 4.0.0):

>>> a = ['version-1.9', 'version-2.0', 'version-1.11', 'version-1.10']
>>> natsorted(a)
['version-1.9', 'version-1.10', 'version-1.11', 'version-2.0']

If you need to versions that use a more complicated scheme, please see these examples.

Sort Paths Like My File Browser (e.g. Windows Explorer on Windows)

Prior to natsort version 7.1.0, it was a common request to be able to sort paths like Windows Explorer. As of natsort 7.1.0, the function os_sorted has been added to provide users the ability to sort in the order that their file browser might sort (e.g Windows Explorer on Windows, Finder on MacOS, Dolphin/Nautilus/Thunar/etc. on Linux).

import os
from natsort import os_sorted
print(os_sorted(os.listdir()))
# The directory sorted like your file browser might show

Output will be different depending on the operating system you are on.

For users not on Windows (e.g. MacOS/Linux) it is strongly recommended to also install PyICU, which will help natsort give results that match most file browsers. If this is not installed, it will fall back on Python's built-in locale module and will give good results for most input, but will give poor restuls for special characters.

Sorting by Real Numbers (i.e. Signed Floats)

This is useful in scientific data analysis (and was the default behavior of natsorted for natsort version < 4.0.0). Use the realsorted function:

>>> from natsort import realsorted, ns
>>> # Note that when interpreting as signed floats, the below numbers are
>>> #            +5.10,                -3.00,            +5.30,              +2.00
>>> a = ['position5.10.data', 'position-3.data', 'position5.3.data', 'position2.data']
>>> natsorted(a)
['position2.data', 'position5.3.data', 'position5.10.data', 'position-3.data']
>>> natsorted(a, alg=ns.REAL)
['position-3.data', 'position2.data', 'position5.10.data', 'position5.3.data']
>>> realsorted(a)  # shortcut for natsorted with alg=ns.REAL
['position-3.data', 'position2.data', 'position5.10.data', 'position5.3.data']

Locale-Aware Sorting (or "Human Sorting")

This is where the non-numeric characters are also ordered based on their meaning, not on their ordinal value, and a locale-dependent thousands separator and decimal separator is accounted for in the number. This can be achieved with the humansorted function:

>>> a = ['Apple', 'apple15', 'Banana', 'apple14,689', 'banana']
>>> natsorted(a)
['Apple', 'Banana', 'apple14,689', 'apple15', 'banana']
>>> import locale
>>> locale.setlocale(locale.LC_ALL, 'en_US.UTF-8')
'en_US.UTF-8'
>>> natsorted(a, alg=ns.LOCALE)
['apple15', 'apple14,689', 'Apple', 'banana', 'Banana']
>>> from natsort import humansorted
>>> humansorted(a)  # shortcut for natsorted with alg=ns.LOCALE
['apple15', 'apple14,689', 'Apple', 'banana', 'Banana']

You may find you need to explicitly set the locale to get this to work (as shown in the example). Please see locale issues and the Optional Dependencies section below before using the humansorted function.

Further Customizing Natsort

If you need to combine multiple algorithm modifiers (such as ns.REAL, ns.LOCALE, and ns.IGNORECASE), you can combine the options using the bitwise OR operator (|). For example,

>>> a = ['Apple', 'apple15', 'Banana', 'apple14,689', 'banana']
>>> natsorted(a, alg=ns.REAL | ns.LOCALE | ns.IGNORECASE)
['Apple', 'apple15', 'apple14,689', 'Banana', 'banana']
>>> # The ns enum provides long and short forms for each option.
>>> ns.LOCALE == ns.L
True
>>> # You can also customize the convenience functions, too.
>>> natsorted(a, alg=ns.REAL | ns.LOCALE | ns.IGNORECASE) == realsorted(a, alg=ns.L | ns.IC)
True
>>> natsorted(a, alg=ns.REAL | ns.LOCALE | ns.IGNORECASE) == humansorted(a, alg=ns.R | ns.IC)
True

All of the available customizations can be found in the documentation for the ns enum.

You can also add your own custom transformation functions with the key argument. These can be used with alg if you wish.

>>> a = ['apple2.50', '2.3apple']
>>> natsorted(a, key=lambda x: x.replace('apple', ''), alg=ns.REAL)
['2.3apple', 'apple2.50']

Sorting Mixed Types

You can mix and match int, float, and str (or unicode) types when you sort:

>>> a = ['4.5', 6, 2.0, '5', 'a']
>>> natsorted(a)
[2.0, '4.5', '5', 6, 'a']
>>> # On Python 2, sorted(a) would return [2.0, 6, '4.5', '5', 'a']
>>> # On Python 3, sorted(a) would raise an "unorderable types" TypeError

Handling Bytes on Python 3

natsort does not officially support the bytes type on Python 3, but convenience functions are provided that help you decode to str first:

>>> from natsort import as_utf8
>>> a = [b'a', 14.0, 'b']
>>> # On Python 2, natsorted(a) would would work as expected.
>>> # On Python 3, natsorted(a) would raise a TypeError (bytes() < str())
>>> natsorted(a, key=as_utf8) == [14.0, b'a', 'b']
True
>>> a = [b'a56', b'a5', b'a6', b'a40']
>>> # On Python 2, natsorted(a) would would work as expected.
>>> # On Python 3, natsorted(a) would return the same results as sorted(a)
>>> natsorted(a, key=as_utf8) == [b'a5', b'a6', b'a40', b'a56']
True

Generating a Reusable Sorting Key and Sorting In-Place

Under the hood, natsorted works by generating a custom sorting key using natsort_keygen and then passes that to the built-in sorted. You can use the natsort_keygen function yourself to generate a custom sorting key to sort in-place using the list.sort method.

>>> from natsort import natsort_keygen
>>> natsort_key = natsort_keygen()
>>> a = ['2 ft 7 in', '1 ft 5 in', '10 ft 2 in', '2 ft 11 in', '7 ft 6 in']
>>> natsorted(a) == sorted(a, key=natsort_key)
True
>>> a.sort(key=natsort_key)
>>> a
['1 ft 5 in', '2 ft 7 in', '2 ft 11 in', '7 ft 6 in', '10 ft 2 in']

All of the algorithm customizations mentioned in the Further Customizing Natsort section can also be applied to natsort_keygen through the alg keyword option.

Other Useful Things

FAQ

How do I debug natsort.natsorted()?

The best way to debug natsorted() is to generate a key using natsort_keygen() with the same options being passed to natsorted. One can take a look at exactly what is being done with their input using this key - it is highly recommended to look at this issue describing how to debug for how to debug, and also to review the How Does Natsort Work? page for why natsort is doing that to your data.

If you are trying to sort custom classes and running into trouble, please take a look at https://github.com/SethMMorton/natsort/issues/60. In short, custom classes are not likely to be sorted correctly if one relies on the behavior of __lt__ and the other rich comparison operators in their custom class - it is better to use a key function with natsort, or use the natsort key as part of your rich comparison operator definition.

natsort gave me results I didn't expect, and it's a terrible library!
Did you try to debug using the above advice? If so, and you still cannot figure out the error, then please file an issue.
How does natsort work?

If you don't want to read How Does Natsort Work?, here is a quick primer.

natsort provides a key function that can be passed to list.sort() or sorted() in order to modify the default sorting behavior. This key is generated on-demand with the key generator natsort.natsort_keygen(). natsort.natsorted() is essentially a wrapper for the following code:

>>> from natsort import natsort_keygen
>>> natsort_key = natsort_keygen()
>>> sorted(['1', '10', '2'], key=natsort_key)
['1', '2', '10']

Users can further customize natsort sorting behavior with the key and/or alg options (see details in the Further Customizing Natsort section).

The key generated by natsort_keygen always returns a tuple. It does so in the following way (some details omitted for clarity):

  1. Assume the input is a string, and attempt to split it into numbers and non-numbers using regular expressions. Numbers are then converted into either int or float.
  2. If the above fails because the input is not a string, assume the input is some other sequence (e.g. list or tuple), and recursively apply the key to each element of the sequence.
  3. If the above fails because the input is not iterable, assume the input is an int or float, and just return the input in a tuple.

Because a tuple is always returned, a TypeError should not be common unless one tries to do something odd like sort an int against a list.

Shell script

natsort comes with a shell script called natsort, or can also be called from the command line with python -m natsort.

Requirements

natsort requires Python 3.5 or greater. Python 3.4 is unofficially supported, meaning that support has not been removed, but it is no longer tested.

Optional Dependencies

fastnumbers

The most efficient sorting can occur if you install the fastnumbers package (version >=2.0.0); it helps with the string to number conversions. natsort will still run (efficiently) without the package, but if you need to squeeze out that extra juice it is recommended you include this as a dependency. natsort will not require (or check) that fastnumbers is installed at installation.

PyICU

It is recommended that you install PyICU if you wish to sort in a locale-dependent manner, see https://natsort.readthedocs.io/en/master/locale_issues.html for an explanation why.

Installation

Use pip!

$ pip install natsort

If you want to install the Optional Dependencies, you can use the "extras" notation at installation time to install those dependencies as well - use fast for fastnumbers and icu for PyICU.

# Install both optional dependencies.
$ pip install natsort[fast,icu]
# Install just fastnumbers
$ pip install natsort[fast]

How to Run Tests

Please note that natsort is NOT set-up to support python setup.py test.

The recommended way to run tests is with tox. After installing tox, running tests is as simple as executing the following in the natsort directory:

$ tox

tox will create virtual a virtual environment for your tests and install all the needed testing requirements for you. You can specify a particular python version with the -e flag, e.g. tox -e py36. Static analysis is done with tox -e flake8. You can see all available testing environments with tox --listenvs.

If you do not wish to use tox, you can install the testing dependencies with the dev/requirements.txt file and then run the tests manually using pytest.

$ pip install -r dev/requirements.txt
$ python -m pytest

Note that above I invoked python -m pytest instead of just pytest - this is because the former puts the CWD on sys.path.

How to Build Documentation

If you want to build the documentation for natsort, it is recommended to use tox:

$ tox -e docs

This will place the documentation in build/sphinx/html. If you do not which to use tox, you can do the following:

$ pip install sphinx sphinx_rtd_theme
$ python setup.py build_sphinx

Deprecation Schedule

Dropped Python 2.7 Support

natsort version 7.0.0 dropped support for Python 2.7.

The version 6.X branch will remain as a "long term support" branch where bug fixes are applied so that users who cannot update from Python 2.7 will not be forced to use a buggy natsort version (bug fixes will need to be requested; by default only the 7.X branch will be updated). New features would not be added to version 6.X, only bug fixes.

Dropped Deprecated APIs

In natsort version 6.0.0, the following APIs and functions were removed

  • number_type keyword argument (deprecated since 3.4.0)
  • signed keyword argument (deprecated since 3.4.0)
  • exp keyword argument (deprecated since 3.4.0)
  • as_path keyword argument (deprecated since 3.4.0)
  • py3_safe keyword argument (deprecated since 3.4.0)
  • ns.TYPESAFE (deprecated since version 5.0.0)
  • ns.DIGIT (deprecated since version 5.0.0)
  • ns.VERSION (deprecated since version 5.0.0)
  • versorted() (discouraged since version 4.0.0, officially deprecated since version 5.5.0)
  • index_versorted() (discouraged since version 4.0.0, officially deprecated since version 5.5.0)

In general, if you want to determine if you are using deprecated APIs you can run your code with the following flag

$ python -Wdefault::DeprecationWarning my-code.py

By default DeprecationWarnings are not shown, but this will cause them to be shown. Alternatively, you can just set the environment variable PYTHONWARNINGS to "default::DeprecationWarning" and then run your code.

Author

Seth M. Morton

History

Please visit the changelog on GitHub or in the documentation.

A python package containing all the basic functions and classes for python. From simple addition to advanced file encryption.

A python package containing all the basic functions and classes for python. From simple addition to advanced file encryption.

PyBash 11 May 22, 2022
Build capture utility for Linux

CX-BUILD Compilation Database alternative Build Prerequisite the CXBUILD uses linux system call trace utility called strace which was customized. So I

GLaDOS (G? L? Automatic Debug Operation System) 3 Nov 03, 2022
Easy compression and extraction for any compression or archival format.

Tzar: Tar, Zip, Anything Really Easy compression and extraction for any compression or archival format. Usage/Examples tzar compress large-dir compres

DanielVZ 37 Nov 02, 2022
Install, run, and update apps without root and only in your home directory

Qube Apps Install, run, and update apps in the private storage of a Qube. Build and install in Qubes Get the code: git clone https://github.com/micahf

Micah Lee 26 Dec 27, 2022
A small python library that helps you to generate localization strings for your mobile projects.

LocalizationUtiltiy A small python library that helps you to generate localization strings for your mobile projects. This small script aims to help yo

1 Nov 12, 2021
An OData v4 query parser and transpiler for Python

odata-query is a library that parses OData v4 filter strings, and can convert them to other forms such as Django Queries, SQLAlchemy Queries, or just plain SQL.

Gorilla 39 Jan 05, 2023
Stubmaker is an easy-to-use tool for generating python stubs.

Stubmaker is an easy-to-use tool for generating python stubs. Requirements Stubmaker is to be run under Python 3.7.4+ No side effects during

Toloka 24 Aug 28, 2022
Python module and its web equivalent, to hide text within text by manipulating bits

cacherdutexte.github.io This project contains : Python modules (binary and decimal system 6) with a dedicated tkinter program to use it. A web version

2 Sep 04, 2022
Here, I find the Fibonacci Series using python

Fibonacci-Series-using-python Here, I find the Fibonacci Series using python Requirements No Special Requirements Contribution I have strong belief on

Sachin Vinayak Dabhade 4 Sep 24, 2021
Tool to produce system call tables from Linux source code.

Syscalls Tool to generate system call tables from the linux source tree. Example The following will produce a markdown (.md) file containing the table

7 Jul 30, 2022
More routines for operating on iterables, beyond itertools

More Itertools Python's itertools library is a gem - you can compose elegant solutions for a variety of problems with the functions it provides. In mo

2.9k Jan 06, 2023
Helpful functions for use alongside the rich Python library.

🔧 Rich Tools A python package with helpful functions for use alongside with the rich python library. 󠀠󠀠 The current features are: Convert a Pandas

Avi Perl 14 Oct 14, 2022
Standard implementations of FedLab and its provided benchmarks.

FedLab-benchmarks This repo contains standard implementations of FedLab and its provided benchmarks. Currently, following algorithms or benchrmarks ar

SMILELab-FL 104 Dec 05, 2022
Python Classes Without Boilerplate

attrs is the Python package that will bring back the joy of writing classes by relieving you from the drudgery of implementing object protocols (aka d

The attrs Cabal 4.6k Jan 06, 2023
Find dependent python scripts of a python script in a project directory.

Find dependent python scripts of a python script in a project directory.

2 Dec 05, 2021
A collection of utility functions to prototype geometry processing research in python

gpytoolbox This repo is a work in progress and contains general utility functions I have needed to code while trying to work on geometry process resea

Silvia Sellán 73 Jan 06, 2023
A simple, console based nHentai Code Generator

nHentai Code Generator A simple, console based nHentai Code Generator. How to run? Windows Android Windows Make sure you have python and git installed

5 Jun 02, 2022
Aggregating gridded data (xarray) to polygons

A package to aggregate gridded data in xarray to polygons in geopandas using area-weighting from the relative area overlaps between pixels and polygons.

Kevin Schwarzwald 42 Nov 09, 2022
Dependency injection lib for Python 3.8+

PyDI Dependency injection lib for python How to use To define the classes that should be injected and stored as bean use decorator @component @compone

Nikita Antropov 2 Nov 09, 2021
Aurin - A quick AUR installer for Arch Linux. Install packages from AUR website in a click.

Aurin - A quick AUR installer for Arch Linux. Install packages from AUR website in a click.

Suleman 51 Nov 04, 2022