價格:免費
更新日期:2019-05-22
檔案大小:2.2M
目前版本:1.0
版本需求:Android 4.0.3 以上版本
官方網站:mailto:interviewquestions4you@gmail.com
NumPy Tutorial
NumPy, which stands for Numerical Python, is a library consisting of multidimensional array objects and a collection of routines for processing those arrays. Using NumPy, mathematical and logical operations on arrays can be performed. This tutorial explains the basics of NumPy such as its architecture and environment. It also discusses the various array functions, types of indexing, etc. An introduction to Matplotlib is also provided. All this is explained with the help of examples for better understanding.
Audience
This tutorial has been prepared for those who want to learn about the basics and various functions of NumPy. It is specifically useful for algorithm developers. After completing this tutorial, you will find yourself at a moderate level of expertise from where you can take yourself to higher levels of expertise.
Prerequisites
You should have a basic understanding of computer programming terminologies. A basic understanding of Python and any of the programming languages is a plus.
NumPy Quick Guide - Learn NumPy in simple and easy steps starting from basic to advanced concepts with examples including Introduction, Environment, Ndarray Object, Data Types, Array Attributes, Array Creation Routines, Array from Existing Data, Numerical Ranges, Indexing and Slicing, Advanced Indexing, Broadcasting, Iterating Over Array, Manipulation, Binary Operators, String Functions, Mathematical, Statistical, Sort, Search and Counting Functions, Arithmetic Operations, Byte Swapping, Copies and Views, Matrix Library, Linear Algebra, Matplotlib, Histogram Using Matplotlib, I/O with NumPy.
NumPy, Tutorial, Learning, Introduction, Environment, Ndarray Object, Data Types, Array Attributes, Array Creation Routines, Array from Existing Data, Numerical Ranges, Indexing and Slicing, Advanced Indexing, Broadcasting, Iterating Over Array, Manipulation, Binary Operators, String Functions, Mathematical, Statistical, Sort, Search and Counting Functions, Arithmetic Operations, Byte Swapping, Copies and Views, Matrix Library, Linear Algebra, Matplotlib, Histogram Using Matplotlib, I/O with NumPy.