Elegant Scipy: The art of scientific python
Material type:
TextPublisher number: Allied Informatics, Jaipur | 2019-20Publication details: Mumbai Shroff Publishers & Distributors Pvt. Ltd. 2019Description: 251ISBN: - 978-93-5213-605-6
- 005.133 NUN
| Item type | Current library | Call number | Status | Barcode | |
|---|---|---|---|---|---|
Books
|
BSDU Knowledge Resource Center, Jaipur General Stacks | 005.133 NUN (Browse shelf(Opens below)) | Available | 017987 |
Browsing BSDU Knowledge Resource Center, Jaipur shelves, Shelving location: General Stacks Close shelf browser (Hides shelf browser)
| No cover image available |
|
|
|
|
|
|
||
| 005.133 LUT Python Pocket Reference | 005.133 LUT Oreily' Learning Python : Powerful Object-Oriented Programming | 005.133 MIT Web Scraping with Python:Collecting more data from the modern web | 005.133 NUN Elegant Scipy: The art of scientific python | 005.133 PHI Creating Apps in Kivy | 005.133 PIM Computer Programming with C++ | 005.133 ROS An Introduction to Python: A python manual |
All Indian Reprints of O'Reilly are printed in Grayscale.
Welcome to Scientific Python and its community. If youre a scientist who programs with Python, this practical guide not only teaches you the fundamental parts of SciPy and libraries related to it, but also gives you a taste for beautiful, easy-to-read code that you can use in practice. Youll learn how to write elegant code thats clear, concise, and efficient at executing the task at hand.
Throughout the book, youll work with examples from the wider scientific Python ecosystem, using code that illustrates principles outlined in the book. Using actual scientific data, youll work on real-world problems with SciPy, NumPy, Pandas, scikit-image, and other Python libraries.
Explore the NumPy array, the data structure that underlies numerical scientific computation
Use quantile normalization to ensure that measurements fit a specific distribution
Represent separate regions in an image with a Region Adjacency Graph
Convert temporal or spatial data into frequency domain data with the Fast Fourier Transform
Solve sparse matrix problems, including image segmentations, with SciPys sparse module
Perform linear algebra by using SciPy packages
Explore image alignment (registration) with SciPys optimize module
Process large datasets with Python data streaming primitives and the Toolz library
There are no comments on this title.

