Skip to content

oualidlamrini/HAX712X

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

85 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

HAX712X: Software development for data science

(Almost) everything you need to know as an applied mathematician / statistician concerning coding and system administration.

Teachers

This course material was improved with the help of some students including:

  • Amelie Vernay
  • Tanguy Lefort

Prerequisite

Students are expected to know basic notions of probabilities, optimization, linear algebra and statistics for this course. Some rudiments on coding is also expected (if, for, while, functions) but not mandatory.

Course description

This course focuses on discovering good coding practices (the language used being Python, but some element of bash and git will also be useful) for professional coding. A special focus on data processing and visualization will be at the heart of the course. We will mostly focus on basic programming concepts, as well as on discovering the Python scientific libraries, including numpy, scipy, pandas, matplotlib, seaborn. Beyond pandas ninja skills, we will also introduce modern practices for coders : (unitary) tests, version control, documentation generation, etc.

  1. BC : (09/09/2022) Introduction to linux essentials and command line tools: regexp, grep, find, rename

  2. BC : (16/09/2022) IDE: VScode, Python virtual env: Anaconda, Python virtual environment, terminal, etc.

  3. BC : (23/09/2022) Git: a first introduction, github, ssh key creation, various git commands, conflict, pull request; see also Bonus/, hands on git

  4. BC (quiz 1) + JS : (30/09/2022) Create a Python Module, classes (__init__, __call__, etc...), operator overloading, files handling,

  5. JS : (03/10/2022 + 07/10/2022) unit tests

  6. JS : (10/10/2022 + 14/10/2022) Pandas: first steps / missing data

  7. JS : (17/10/2022 + 21/10/2022) scipy, numpy: Images/channel

  8. JS (quiz 2) : (28/10/2022) Sparse matrices, graphs and memory

  9. BC : (18/11/2022) Documentation with Sphinx

  10. JS + BC : (09/12/2022) The end: Project presentations

Grading

Tests: 20 % of the final grade

Short quiz of 20 min each (on Moodle). This will be a personal work.

  • Quiz 1 BC (30/09/2022, 10%)
  • Quiz 2 JS (28/10/2022, 10%)

Project: 80% of the final grade

Warning: the precise details of the projects might evolve before the allocation phase, and a precise grid will be given in the project section.

Warning: the project repository must show a balanced contribution between group members and intra-group grades variation could be made to reflect issues on the intra-group workload balance.

Bonus

1 supplementary point on the final grade of the course can be obtained for contributions improving the course material (practicals, Readme, etc.). See the Bonus section for more details on how to proceed.

Books and other resources

The resources for the course are available on the present github repository. Additional elementary elements (in French) on Python are available in the course HLMA310 and the associated lectures notes IntroPython.pdf.

Additional resources

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%