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  • Intro to Python for Data Science Learning 7

    2D NumPy Arrays

    from:https://campus.datacamp.com/courses/intro-to-python-for-data-science/chapter-4-numpy?ex=9

    • Your First 2D NumPy Array

    # Create baseball, a list of lists
    baseball = [[180, 78.4],
    [215, 102.7],
    [210, 98.5],
    [188, 75.2]]

    # Import numpy
    import numpy as np

    # Create a 2D numpy array from baseball: np_baseball
    np_baseball = np.array(baseball)

    # Print out the type of np_baseball
    print(type(np_baseball))

    # Print out the shape of np_baseball. Use np_baseball.shape.
    print(np_baseball.shape)

    • Baseball data in 2D form

    Change list to 2D array, it will get a form with two columns.

    # baseball is available as a regular list of lists

    baseball = [[74, 180], [74, 215], [72, 210], [72, 210], [73, 188], [69, 176], [69, 209], [71, 200], [76, 231], [71, 180], [73, 188], [73, 180], [74, 185], [74, 160], [69, 180], [70, 185], [73, 189], [75, 185], [78, 219], [79, 230], [76, 205], [74, 230], [76, 195], [72, 180], [71, 192], [75, 225], [77, 203], [74, 195], [73, 182], [74, 188], [78, 200], [73, 180], [75, 200], [73, 200], [75, 245], [75, 240], [74, 215], [69, 185], [71, 175], [74, 199], [73, 200], [73, 215], [76, 200], [74, 205], [74, 206], [70, 186], [72, 188], [77, 220], [74, 210], [70, 195], [73, 200], [75, 200], [76, 212], [76, 224], [78, 210], [74, 205], [74, 220], [76, 195], [77, 200], [81, 260], [78, 228], [75, 270], [77, 200], [75, 210], [76, 190], [74, 220], [72, 180], [72, 205], [75, 210], [73, 220], [73, 211], [73, 200], [70, 180], [70, 190], [70, 170], [76, 230], [68, 155], [71, 185], [72, 185], [75, 200], [75, 225], [75, 225], [75, 220], [68, 160], [74, 205], [78, 235], [71, 250], [73, 210], [76, 190], [74, 160], [74, 200], [79, 205], [75, 222], [73, 195], [76, 205], [74, 220], [74, 220], [73, 170], [72, 185], [74, 195], [73, 220], [74, 230], [72, 180], [73, 220], [69, 180], [72, 180], [73, 170], [75, 210], [75, 215], [73, 200], [72, 213], [72, 180], [76, 192], [74, 235], [72, 185], [77, 235], [74, 210], [77, 222], [75, 210], [76, 230], [80, 220], [74, 180], [74, 190], [75, 200], [78, 210], [73, 194], [73, 180], [74, 190], [75, 240], [76, 200], [71, 198], [73, 200], [74, 195], [76, 210], [76, 220], [74, 190], [73, 210], [74, 225], [70, 180], [72, 185], [73, 170], [73, 185], [73, 185], [73, 180], [71, 178], [74, 175], [74, 200], [72, 204], [74, 211], [71, 190], [74, 210], [73, 190], [75, 190], [75, 185], [79, 290], [73, 175], [75, 185], [76, 200], [74, 220], [76, 170], [78, 220], [74, 190], [76, 220], [72, 205], [74, 200], [76, 250], [74, 225], [75, 215], [78, 210], [75, 215], [72, 195], [74, 200], [72, 194], [74, 220], [70, 180], [71, 180], [70, 170], [75, 195], [71, 180], [71, 170], [73, 206], [72, 205], [71, 200], [73, 225], [72, 201], [75, 225], [74, 233], [74, 180], [75, 225], [73, 180], [77, 220], [73, 180], [76, 237], [75, 215], [74, 190], [76, 235], [75, 190], [73, 180], [71, 165], [76, 195], [75, 200], [72, 190], [71, 190], [77, 185], [73, 185], [74, 205], [71, 190], [72, 205], [74, 206], [75, 220], [73, 208], [72, 170], [75, 195], [75, 210], [74, 190], [72, 211], [74, 230], [71, 170], [70, 185], [74, 185], [77, 241], [77, 225], [75, 210], [75, 175], [78, 230], [75, 200], [76, 215], [73, 198], [75, 226], [75, 278], [79, 215], [77, 230], [76, 240], [71, 184], [75, 219], [74, 170], [69, 218], [71, 190], [76, 225], [72, 220], [72, 176], [70, 190], [72, 197], [73, 204], [71, 167], [72, 180], [71, 195], [73, 220], [72, 215], [73, 185], [74, 190], [74, 205], [72, 205], [75, 200], [74, 210], [74, 215], [77, 200], [75, 205], [73, 211], [72, 190], [71, 208], [74, 200], [77, 210], [75, 232], [75, 230], [75, 210], [78, 220], [78, 210], [74, 202], [76, 212], [78, 225], [76, 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    # Import numpy package
    import numpy as np

    # Create a 2D numpy array from baseball: np_baseball
    np_baseball = np.array(baseball)

    # Print out the shape of np_baseball
    print(np_baseball.shape)

    • Subsetting 2D NumPy Arrays

    If your 2D numpy array has a regular structure, i.e. each row and column has a fixed number of values, complicated ways of subsetting become very easy. Have a look at the code below where the elements "a" and "c" are extracted from a list of lists.

    # regular list of lists
    x = [["a", "b"], ["c", "d"]]
    [x[0][0], x[1][0]]
    
    # numpy
    import numpy as np
    np_x = np.array(x)
    np_x[:,0]

    Remember that in Python, the first element is at index 0!

    # baseball is available as a regular list of lists

    # Import numpy package
    import numpy as np

    # Create np_baseball (2 cols)
    np_baseball = np.array(baseball)

    # Print out the 50th row of np_baseball
    print(np_baseball[49,:])

    # Select the entire second column of np_baseball: np_weight
    np_weight = np_baseball[:,1]

    # Print out height of 124th player
    print(np_baseball[123,0])

    • 2D Arithmetic

     You can combine matrices with single numbers, with vectors, and with other matrices.Execute the code below in the IPython shell and see if you understand:

    import numpy as np
    np_mat = np.array([[1, 2],
                       [3, 4],
                       [5, 6]])
    np_mat * 2
    np_mat + np.array([10, 10])
    np_mat + np_mat

    Output:

    print(np_mat * 2)
    [[ 2 4]
    [ 6 8]
    [10 12]]

    print(np_mat * 2)
    [[ 2 4]
    [ 6 8]
    [10 12]]

    print(np_mat * 2)
    [[ 2 4]
    [ 6 8]
    [10 12]]

    # baseball is available as a regular list of lists
    # updated is available as 2D numpy array

    # Import numpy package
    import numpy as np

    # Create np_baseball (3 cols)
    np_baseball = np.array(baseball)

    # Print out addition of np_baseball and updated
    print(np_baseball + updated)

    # Create numpy array: conversion. You want to convert the units of height and weight. As a first step, create a numpy array with three values: 0.0254, 0.453592 and 1. Name this array conversion.
    conversion = [0.0254,0.453592,1]

    # Print out product of np_baseball and conversion
    print(np_baseball * conversion)

     

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  • 原文地址:https://www.cnblogs.com/keepSmile/p/7794201.html
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