zoukankan      html  css  js  c++  java
  • Python笔记 #06# NumPy Basis & Subsetting NumPy Arrays

    原始的 Python list 虽然很好用,但是不具备能够“整体”进行数学运算的性质,并且速度也不够快(按照视频上的说法),而 Numpy.array 恰好可以弥补这些缺陷。

    初步应用就是“整体数学运算”和“subset(取子集、随机访问)”。

     1、如何构造一个 Numpy array

    # Create list baseball
    baseball = [180, 215, 210, 210, 188, 176, 209, 200]
    
    # Import the numpy package as np
    import numpy as np
    
    # Create a numpy array from baseball: np_baseball
    np_baseball = np.array(baseball)
    
    # Print out type of np_baseball
    print(type(np_baseball))

    2、利用 Numpy 进行整体数学运算

    example - 1:

    # height is available as a regular list
    
    # Import numpy
    import numpy as np
    
    # Create a numpy array from height: np_height
    np_height = np.array(height)
    
    # Print out np_height
    print(np_height)
    
    # Convert np_height to m: np_height_m
    np_height_m = np_height * 0.0254
    
    # Print np_height_m
    print(np_height_m)

     example - 2: 

    # height and weight are available as a regular lists
    
    # Import numpy
    import numpy as np
    
    # Create array from height with correct units: np_height_m
    np_height_m = np.array(height) * 0.0254
    
    # Create array from weight with correct units: np_weight_kg
    np_weight_kg = np.array(weight) * 0.453592
    
    # Calculate the BMI: bmi
    bmi = np_weight_kg / np_height_m ** 2
    
    # Print out bmi
    print(bmi)

     3、Subset of Numpy array

    # height and weight are available as a regular lists
    
    # Import numpy
    import numpy as np
    
    # Calculate the BMI: bmi
    np_height_m = np.array(height) * 0.0254
    np_weight_kg = np.array(weight) * 0.453592
    bmi = np_weight_kg / np_height_m ** 2
    
    # Create the light array
    light = bmi < 21
    
    # Print out light
    print(light)
    
    # Print out BMIs of all baseball players whose BMI is below 21
    print(bmi[light])

    这种取子集的方式整体上看起来很自然,但是让我不解的是:为什么 bmi < 21 不直接返回一个子集呢?稍微思考了一下,bmi < 21 本身也是一个类似与 np_array1 < np_array2 的整体数学运算,返回值显然必须是一个布尔型的 np_array3

    另外,我发现直接把一个布尔数组放进“[ ]”中取子集本身也非常巧妙、自然。

    虽然 NumPy Array 很有“个性”,但是仍具备很多和 Python list 一样的共性:

    # height and weight are available as a regular lists
    
    # Import numpy
    import numpy as np
    
    # Store weight and height lists as numpy arrays
    np_weight = np.array(weight)
    np_height = np.array(height)
    
    # Print out the weight at index 50
    print(np_weight[50])
    
    # Print out sub-array of np_height: index 100 up to and including index 110
    print(np_height[100:111])

    4、Numpy 的副作用(NumPy Side Effects)

    First of all, numpy arrays cannot contain elements with different types. If you try to build such a list, some of the elements' types are changed to end up with a homogeneous list. This is known as type coercion.

    Second, the typical arithmetic operators, such as +-* and / have a different meaning for regular Python lists and numpy arrays.

  • 相关阅读:
    解决CollectionView TableView reloadData或者reloadSections时的刷新的闪烁问题
    HTTP请求头
    Fastlane 使用笔记
    python-函数式编程
    python-高级特性
    python基础使用
    python基础-函数02
    python基础-函数01
    python基础
    Linux基础
  • 原文地址:https://www.cnblogs.com/xkxf/p/8261482.html
Copyright © 2011-2022 走看看