# Python - Argparse

### Overview

Questions:
• How do I make a proper command line script

• How do I use argparse?

• What problems does it solve?

Objectives:
• Learn how sys.argv works

• Write a simple command line program that sums some numbers

• Use argparse to make it nicer.

Requirements:
Time estimation: 30 minutes
Level: Intermediate Intermediate
Last modification: Apr 25, 2022

argparse is an argument parsing library for Python that’s part of the stdlib. It lets you make command line tools significantly nicer to work with.

### Agenda

In this tutorial, we will cover:

Unlike previous modules, this lesson won’t use a Jupyter/CoCalc notebook, and that’s because we’ll be parsing command lines! You’ll need to open a code editor on your platform of choice (nano, vim, emacs, VSCode are all options) and use the following blocks of code to construct your command line tool.

## sys.argv

In the coding world, whenever you run a Python script on the command line, it has a special variable available to it named argv. This is a list of all of the arguments used when you run a command line program.

### hands_on Hands-on: Print out argv

1. Create / open the file run.py in your text editor of choice
2. There we’ll create a simple Python script that:
3. imports sys, the system module needed to access argv.
4. Prints out sys.argv

### solution Solution

import sys

print(sys.argv)

1. Run this with different command line arguments:

python run.py
python run.py 1 2 3 4
python run.py --help


### question Question

What did you notice about the output? There are two main points.

### solution Solution

1. The name of the script (run.py) is included as the first value every time.
2. All of the arguments are passed as strings, no numbers.

Let’s sum up all of the numbers passed on the command line. We’ll do this by hand, and then we’ll replace it with argparse to see how much effort that saves us.

### hands_on Hands-on

Update your script to sum up every number passed to it on the command line.

It should handle:

• 1 or more numbers
• nothing (and maybe print out a message?)
• invalid values (print out an error message that the value couldn’t be processed.)

Hints:

• Skip the program name
• Use try and except to try converting the string to a number.

### question Question

How does your updated script look?

### solution Solution

import sys

result = 0

if len(sys.argv) == 1:
print("no arguments were supplied")
else:
for arg in sys.argv[1:]:
try:
result += float(arg)
except:
print(f"Could not parse {arg}")

print(result)


## Argparse

Argparse saves us a lot of work, because it can handle a number of things for us!

• Ensures that the correct number of arguments are provided (and provide a nice error message otherwise)
• Ensure that the correct types of arguments are provided (no strings for a number field)
• Provide a help message describing your program

Argparse is used as follows. First we need to import it

import argparse


And then we can define a ‘parser’ which will parse our command line. Additionally we can provide a description field which tells people what our tool does:

parser = argparse.ArgumentParser(description='Process some integers.')


And finally we can define some arguments that are available. Just like we have arguments to functions, we have arguments to command lines. These come in two flavours:

• required (without a --)
• optional “flags” (prefixed with --)

Here we have an argument named ‘integers’, which validates that all input values are of the type int. nargs is the number of arguments, + means ‘1 or more’. And we have some help text as well:

parser.add_argument('integers', type=int, nargs='+',
help='an integer for the accumulator')


We can also define an optional flag, here it’s called --sum. Here it goes to a destination named ‘accumulate’, the name we’ll use to access the value of this argument. It has an action of ‘store_const’ which just tracks if the flag was supplied or not.

The const attribute is set to sum, which is actually the function sum(), this is what the value will be if we run the command with --sum. Otherwise it will default to the function max(). We again have some help text to tell us how it behaves

parser.add_argument('--sum', dest='accumulate', action='store_const',
const=sum, default=max,
help='sum the integers (default: find the max)')


Finally we parse the arguments, which reads sys.argv and processes it according to the above rules. The output is stored in args.

args = parser.parse_args()


We have two main variables we can use now:

args.integers # A list of integers.
args.accumulate # Actually a function!


## Using argparse

Let’s go back to our script, and replace sys with argparse.

### hands_on Hands-on: Replacing argv.

1. Given the following script, replace the use of argv with argparse.

import sys

result = 0

if len(sys.argv) == 1:
print("no arguments were supplied")
else:
for arg in sys.argv[1:]:
try:
result += float(arg)
except:
print(f"Could not parse {arg}")

print(result)


You should have one argument: numbers (type=float)

And print out the sum of those numbers.

### question Question

How does your final script look?

### solution Solution

import argparse

parser = argparse.ArgumentParser(description='Sum some numbers')
help='a number to sum up.')
args = parser.parse_args()

print(sum(args.integers))

1. Try running the script with various values

python run.py
python run.py 1 3 5
python run.py 2 4 O
python run.py --help


Wow that’s a lot simpler! We have to learn how argparse is invoked but it handles a lot of cases for us:

• No arguments provided
• Responding to --help
• Raising an error for invalid values

--help is even written for us, without us writing any special code to handle that case! This is why you need to use argparse:

• It handles a lot of cases and input validation for you
• It produces a nice --help text that can help you if you’ve forgotten what your tool does
• It’s nice for users of your scripts! They don’t have to read the code to know how it behaves if you document it well.

There is a lot of documentation in the argparse module for all sorts of use cases!

### Key points

• If you are writing a command line script, no matter how small, use argparse.

• --help is even written for us, without us writing any special code to handle that case

• It handles a lot of cases and input validation for you

• It produces a nice --help text that can help you if you’ve forgotten what your tool does

• It’s nice for users of your scripts! They don’t have to read the code to know how it behaves if you document it well.

Have questions about this tutorial? Check out the FAQ page for the Foundations of Data Science topic to see if your question is listed there. If not, please ask your question on the GTN Gitter Channel or the Galaxy Help Forum

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# Citing this Tutorial

1. Helena Rasche, Donny Vrins, Bazante Sanders, 2022 Python - Argparse (Galaxy Training Materials). https://training.galaxyproject.org/training-material/topics/data-science/tutorials/python-argparse/tutorial.html Online; accessed TODAY
2. Batut et al., 2018 Community-Driven Data Analysis Training for Biology Cell Systems 10.1016/j.cels.2018.05.012

### details BibTeX

@misc{data-science-python-argparse,
author = "Helena Rasche and Donny Vrins and Bazante Sanders",
title = "Python - Argparse (Galaxy Training Materials)",
year = "2022",
month = "04",
day = "25"
url = "\url{https://training.galaxyproject.org/training-material/topics/data-science/tutorials/python-argparse/tutorial.html}",
note = "[Online; accessed TODAY]"
}
@article{Batut_2018,
doi = {10.1016/j.cels.2018.05.012},
url = {https://doi.org/10.1016%2Fj.cels.2018.05.012},
year = 2018,
month = {jun},
publisher = {Elsevier {BV}},
volume = {6},
number = {6},
pages = {752--758.e1},
author = {B{\'{e}}r{\'{e}}nice Batut and Saskia Hiltemann and Andrea Bagnacani and Dannon Baker and Vivek Bhardwaj and Clemens Blank and Anthony Bretaudeau and Loraine Brillet-Gu{\'{e}}guen and Martin {\v{C}}ech and John Chilton and Dave Clements and Olivia Doppelt-Azeroual and Anika Erxleben and Mallory Ann Freeberg and Simon Gladman and Youri Hoogstrate and Hans-Rudolf Hotz and Torsten Houwaart and Pratik Jagtap and Delphine Larivi{\{e}}re and Gildas Le Corguill{\'{e}} and Thomas Manke and Fabien Mareuil and Fidel Ram{\'{\i}}rez and Devon Ryan and Florian Christoph Sigloch and Nicola Soranzo and Joachim Wolff and Pavankumar Videm and Markus Wolfien and Aisanjiang Wubuli and Dilmurat Yusuf and James Taylor and Rolf Backofen and Anton Nekrutenko and Björn Grüning},
title = {Community-Driven Data Analysis Training for Biology},
journal = {Cell Systems}
}
`