EuroPython 2017

Faster Python Programs - Measure, don't Guess

Speaker(s) Mike Müller

Optimization can often help to make Python programs faster or use less memory. Developing a strategy, establishing solid measuring and visualization techniques as well as knowing about algorithmic basics and datastructures are the foundation for a successful optimization. The tutorial will cover these topics. Examples will give you a hands-on experience on how to approach efficiently.

Python is a great language. But it can be slow compared to other languages for certain types of tasks. If applied appropriately, optimization may reduce program runtime or memory consumption considerably. But this often comes at a price. Optimization can be time consuming and the optimized program may be more complicated. This, in turn, means more maintenance effort. How do you find out if it is worthwhile to optimize your program? Where should you start? This tutorial will help you to answer these questions. You will learn how to find an optimization strategy based on quantitative and objective criteria. You will experience that one’s gut feeling what to optimize is often wrong.

The solution to this problem is: „Measure, Measure, and Measure!“. You will learn how to measure program run times as well as profile CPU and memory. There are great tools available. You will learn how to use some of them. Measuring is not easy because, by definition, as soon as you start to measure, you influence your system. Keeping this impact as small as possible is important. Therefore, we will cover different measuring techniques.

Furthermore, we will look at algorithmic improvements. You will see that the right data structure for the job can make a big difference. Finally, you will learn about different caching techniques.

Software Requirements

You will need Python 2.7 or 3.5 installed on your laptop. Python 2.6 or 3.3/3.4 should also work. Python 3.x is strongly preferred.

Jupyter Notebook

I will use a Jupyter Notebook for the tutorial because it makes a very good teaching tool. You are welcome to use the setup you prefer, i.e editor, IDE, REPL. If you also like to use a Jupyter Notebook, I recommend conda for easy installation. Similarly to virtualenv, conda allows creating isolated environments but allows binary installs for all platforms.

There are two ways to install Jupyter via conda:

  1. Use Minconda. This is a small install and (after you installed it) you can use the command conda to create an environment: conda create -n pycon2016 python=3.5 Now you can change into this environment: source activate pycon2016. The prompt should change to (pycon2017). Now you can install IPython: conda install Jupyter.

  2. Install Anaconda and you are ready to go if you don’t mind installing lots of packages from the scientific field.

Working witch conda environments

After creating a new environment, the system might still work with some stale settings. Even when the command which tells you that you are using an executable from your environment, this might actually not be the case. If you see strange behavior using a command line tool in your environment, use hash -r and try again.

Tools

You can install these with pip (in the active conda environment):

Linux

Using the package manager of your OS should be the best option.

Audience

Programmers with good basic Python knowledge. No previous knowledge in the field of optimization is required.

This tutorial will help you to get the most out of your optimization work. You will learn useful techniques for details combined with an overall strategy for the big picture.

The Python programming language is relatively easy to learn and allows to solve real-world problem with a just a few concepts.

But it also offers several advanced features that can help to greatly improve the programming experience. The course teaches how important advanced features work and provides details about meta-programming techniques.

EXTERNAL TRAINING: Advanced Python (5. - 7. July)

The Python programming language is relatively easy to learn and allows to solve real-world problem with a just a few concepts.

But it also offers several advanced features that can help to greatly improve the programming experience. The course teaches how important advanced features work and provides details about meta-programming techniques.

Please note: This training is in the week before EuroPython and not included in the conference ticket price.

To attend you need to register here

in on Monday 10 July at 14:00 See schedule

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