Scipy Lecture Notes: One document to learn numerics, science, and data with Python

Scipy Lecture Notes: One document to learn numerics, science, and data with Python

A self-contained introduction to everything that is needed to use Python for science, from the language itself, to numerical computing or plotting.

Publication date: 31 Dec 2015

ISBN-10: n/a

ISBN-13: n/a

Paperback: 363 pages

Views: 9,691

Type: Lecture Notes

Publisher: n/a

License: Creative Commons Attribution 4.0 International

Post time: 29 May 2016 12:00:00

Scipy Lecture Notes: One document to learn numerics, science, and data with Python

Scipy Lecture Notes: One document to learn numerics, science, and data with Python A self-contained introduction to everything that is needed to use Python for science, from the language itself, to numerical computing or plotting.
Tag(s): Computer Aided Mathematics Python Statistics
Publication date: 31 Dec 2015
ISBN-10: n/a
ISBN-13: n/a
Paperback: 363 pages
Views: 9,691
Document Type: Lecture Notes
Publisher: n/a
License: Creative Commons Attribution 4.0 International
Post time: 29 May 2016 12:00:00
Summary/Excerpts of (and not a substitute for) the Creative Commons Attribution 4.0 International:
You are free to:

Share — copy and redistribute the material in any medium or format
Adapt — remix, transform, and build upon the material for any purpose, even commercially.

The licensor cannot revoke these freedoms as long as you follow the license terms.

Click here to read the full license.
About the Notes:

Tutorials on the scientific Python ecosystem: a quick introduction to central tools and techniques. The different chapters each correspond to a 1 to 2 hours course with increasing level of expertise, from beginner to expert.

Table of Contents:

Scientific computing with tools and workflow - The Python language - NumPy: creating and manipulating numerical data - Matplotlib: plotting - Scipy : high-level scientific computing - Getting help and finding documentation - Advanced Python Constructs - Advanced Numpy - Debugging code - Optimizing code - Sparse Matrices in SciPy - Image manipulation and processing using Numpy and Scipy - Mathematical optimization: finding minima of functions - Interfacing with C - Statistics in Python - Sympy : Symbolic Mathematics in Python - Scikit-image: image processing - Traits: building interactive dialogs - 3D plotting with Mayavi - scikit-learn: machine learning in Python.




About The Editor(s)


No information is available for this author.

Emmanuelle Gouillart

No information is available for this author.


No information is available for this author.

Olav Vahtras

No information is available for this author.


No information is available for this author.

Gaël Varoquaux

No information is available for this author.


Book Categories
Sponsors