Numerical Python Numerical Python

Numerical Python

A Practical Techniques Approach for Industry

    • $39.99
    • $39.99

Publisher Description

Numerical Python by Robert Johansson shows you how to leverage the numerical and mathematical capabilities in Python, its standard library, and the extensive ecosystem of computationally oriented Python libraries, including popular packages such as NumPy, SciPy, SymPy, Matplotlib, Pandas, and more, and how to apply these software tools in computational problem solving.Python has gained widespread popularity as a computing language: It is nowadays employed for computing by practitioners in such diverse fields as for example scientific research, engineering, finance, and data analytics. One reason for the popularity of Python is its high-level and easy-to-work-with syntax, which enables the rapid development and exploratory computing that is required in modern computational work.            After reading and using this book, you will have seen examples and case studies from many areas of computing, and gained familiarity with basic computing techniques such as array-based and symbolic computing, all-around practical skills such as visualisation and numerical file I/O, general computational methods such as equation solving, optimization, interpolation and integration, and domain-specific computational problems, such as differential equation solving, data analysis, statistical modeling and machine learning. Specific topics that are covered include: How to work with vectors and matrices using NumPyHow to work with symbolic computing using SymPy
How to plot and visualize data with Matplotlib
How to solve linear and nonlinear equations with SymPy and SciPy
How to solve solve optimization, interpolation, and integration problems using SciPy
How to solve ordinary and partial differential equations with SciPy and FEniCS
How to perform data analysis tasks and solve statistical problems with Pandas and SciPy
How to work with statistical modeling and machine learning with statsmodels and scikit-learn
How to handle file I/O using HDF5 and other common file formats for numerical data
How to optimize Python code using Numba and Cython

GENRE
Computers & Internet
RELEASED
2015
October 7
LANGUAGE
EN
English
LENGTH
509
Pages
PUBLISHER
Apress
SELLER
Springer Nature B.V.
SIZE
10.4
MB
Applying Math with Python Applying Math with Python
2022
Modern Optimization with R Modern Optimization with R
2021
Recent Advances in Algorithmic Differentiation Recent Advances in Algorithmic Differentiation
2012
Algebraic Modeling Systems Algebraic Modeling Systems
2012
Algorithm Engineering Algorithm Engineering
2010
Compiler Construction Compiler Construction
2011
Numerical Python Numerical Python
2018
Numerical Python Numerical Python
2024
Matematyczny Python. Obliczenia naukowe i analiza danych z użyciem NumPy, SciPy i Matplotlib Matematyczny Python. Obliczenia naukowe i analiza danych z użyciem NumPy, SciPy i Matplotlib
2021