Docsity
Docsity

Prepara tus exámenes
Prepara tus exámenes

Prepara tus exámenes y mejora tus resultados gracias a la gran cantidad de recursos disponibles en Docsity


Consigue puntos base para descargar
Consigue puntos base para descargar

Gana puntos ayudando a otros estudiantes o consíguelos activando un Plan Premium


Orientación Universidad
Orientación Universidad


Cheat sheet Numpy basic, Resúmenes de Programación Informática

Cheat sheet Numpy Python Basic

Tipo: Resúmenes

2019/2020
En oferta
30 Puntos
Discount

Oferta a tiempo limitado


Subido el 22/09/2020

johnny-osorio-gallego
johnny-osorio-gallego 🇨🇴

5

(1)

2 documentos

1 / 1

Toggle sidebar

Esta página no es visible en la vista previa

¡No te pierdas las partes importantes!

bg1
2
Python For Data Science Cheat Sheet
NumPy Basics
Learn Python for Data Science Interactively at www.DataCamp.com
NumPy
DataCamp
Learn Python for Data Science Interactively
The NumPy library is the core library for scientific computing in
Python. It provides a high-performance multidimensional array
object, and tools for working with these arrays.
>>> import numpy as np
Use the following import convention:
Creating Arrays
>>> np.zeros((3,4)) Create an array of zeros
>>> np.ones((2,3,4),dtype=np.int16) Create an array of ones
>>> d = np.arange(10,25,5) Create an array of evenly
spaced values (step value)
>>> np.linspace(0,2,9) Create an array of evenly
spaced values (number of samples)
>>> e = np.full((2,2),7) Create a constant array
>>> f = np.eye(2) Create a 2X2 identity matrix
>>> np.random.random((2,2)) Create an array with random values
>>> np.empty((3,2)) Create an empty array
Array Mathematics
>>> g = a - b Subtraction
array([[-0.5, 0. , 0. ],
[-3. , -3. , -3. ]])
>>> np.subtract(a,b) Subtraction
>>> b + a Addition
array([[ 2.5, 4. , 6. ],
[ 5. , 7. , 9. ]])
>>> np.add(b,a) Addition
>>> a / b Division
array([[ 0.66666667, 1. , 1. ],
[ 0.25 , 0.4 , 0.5 ]])
>>> np.divide(a,b) Division
>>> a * b Multiplication
array([[ 1.5, 4. , 9. ],
[ 4. , 10. , 18. ]])
>>> np.multiply(a,b) Multiplication
>>> np.exp(b) Exponentiation
>>> np.sqrt(b) Square root
>>> np.sin(a) Print sines of an array
>>> np.cos(b) Element-wise cosine
>>> np.log(a) Element-wise natural logarithm
>>> e.dot(f) Dot product
array([[ 7., 7.],
[ 7., 7.]])
Subsetting, Slicing, Indexing
>>> a.sum() Array-wise sum
>>> a.min() Array-wise minimum value
>>> b.max(axis=0) Maximum value of an array row
>>> b.cumsum(axis=1) Cumulative sum of the elements
>>> a.mean() Mean
>>> b.median() Median
>>> a.corrcoef() Correlation coefficient
>>> np.std(b) Standard deviation
Comparison
>>> a == b Element-wise comparison
array([[False, True, True],
[False, False, False]], dtype=bool)
>>> a < 2 Element-wise comparison
array([True, False, False], dtype=bool)
>>> np.array_equal(a, b) Array-wise comparison
1 23
1D array 2D array 3D array
1.5 23
4 56
Array Manipulation
NumPy Arrays
axis 0
axis 1
axis 0
axis 1
axis 2
Arithmetic Operations
Transposing Array
>>> i = np.transpose(b) Permute array dimensions
>>> i.T Permute array dimensions
Changing Array Shape
>>> b.ravel() Flatten the array
>>> g.reshape(3,-2) Reshape, but don’t change data
Adding/Removing Elements
>>> h.resize((2,6)) Return a new array with shape (2,6)
>>> np.append(h,g) Append items to an array
>>> np.insert(a, 1, 5) Insert items in an array
>>> np.delete(a,[1]) Delete items from an array
Combining Arrays
>>> np.concatenate((a,d),axis=0) Concatenate arrays
array([ 1, 2, 3, 10, 15, 20])
>>> np.vstack((a,b)) Stack arrays vertically (row-wise)
array([[ 1. , 2. , 3. ],
[ 1.5, 2. , 3. ],
[ 4. , 5. , 6. ]])
>>> np.r_[e,f] Stack arrays vertically (row-wise)
>>> np.hstack((e,f)) Stack arrays horizontally (column-wise)
array([[ 7., 7., 1., 0.],
[ 7., 7., 0., 1.]])
>>> np.column_stack((a,d)) Create stacked column-wise arrays
array([[ 1, 10],
[ 2, 15],
[ 3, 20]])
>>> np.c_[a,d] Create stacked column-wise arrays
Splitting Arrays
>>> np.hsplit(a,3) Split the array horizontally at the 3rd
[array([1]),array([2]),array([3])] index
>>> np.vsplit(c,2) Split the array vertically at the 2nd index
[array([[[ 1.5, 2. , 1. ],
[ 4. , 5. , 6. ]]]),
array([[[ 3., 2., 3.],
[ 4., 5., 6.]]])]
Also see Lists
Subsetting
>>> a[2] Select the element at the 2nd index
3
>>> b[1,2] Select the element at row 1 column 2
6.0 (equivalent to b[1][2])
Slicing
>>> a[0:2] Select items at index 0 and 1
array([1, 2])
>>> b[0:2,1] Select items at rows 0 and 1 in column 1
array([ 2., 5.])
>>> b[:1] Select all items at row 0
ar ra y( [[1.5, 2., 3.]]) (equivalent to b[0:1, :])
>>> c[1,...] Same as [1,:,:]
ar ra y( [[[ 3., 2., 1.],
[ 4., 5., 6.]]])
>>> a[ : :-1] Reversed array a
array([3, 2, 1])
Boolean Indexing
>>> a[a<2] Select elements from a less than 2
array([1])
Fancy Indexing
>> > b [[1, 0, 1, 0],[0, 1, 2, 0]] Select elements (1,0),(0,1),(1,2) and (0,0)
ar ra y( [ 4. , 2. , 6. , 1.5])
>> > b [[1, 0, 1, 0]][:,[0,1,2,0]] Select a subset of the matrix’s rows
ar ra y( [[ 4. ,5. , 6. , 4. ], and columns
[ 1.5, 2. , 3. , 1.5],
[ 4. , 5. , 6. , 4. ],
[ 1.5, 2. , 3. , 1.5]])
>>> a = np.array([1,2,3])
>>> b = np.array([(1.5,2,3), (4,5,6)], dtype = float)
>>> c = np.array([[(1.5,2,3), (4,5,6)], [(3,2,1), (4,5,6)]],
dtype = float)
Initial Placeholders
Aggregate Functions
>>> np.loadtxt("myfile.txt")
>>> np.genfromtxt("my_file.csv", delimiter=',')
>>> np.savetxt("myarray.txt", a, delimiter=" ")
I/O
123
1.5 23
4 56
Copying Arrays
>>> h = a.view() Create a view of the array with the same data
>>> np.copy(a) Create a copy of the array
>>> h = a.copy() Create a deep copy of the array
Saving & Loading Text Files
Saving & Loading On Disk
>>> np.save('my_array', a)
>>> np.savez('array.npz', a, b)
>>> np.load('my_array.npy')
>>> a.shape Array dimensions
>>> len(a) Length of array
>>> b.ndim Number of array dimensions
>>> e.size Number of array elements
>>> b.dtype Data type of array elements
>>> b.dtype.name Name of data type
>>> b.astype(int) Convert an array to a different type
Inspecting Your Array
>>> np.info(np.ndarray.dtype)
Asking For Help
Sorting Arrays
>>> a.sort() Sort an array
>>> c.sort(axis=0) Sort the elements of an array's axis
Data Types
>>> np.int64 Signed 64-bit integer types
>>> np.float32 Standard double-precision floating point
>>> np.complex Complex numbers represented by 128 floats
>>> np.bool Boolean type storing TRUE and FALSE values
>>> np.object Python object type
>>> np.string_ Fixed-length string type
>>> np.unicode_ Fixed-length unicode type
123
1.5 23
4 56
1.5 23
4 56
123
Discount

En oferta

Vista previa parcial del texto

¡Descarga Cheat sheet Numpy basic y más Resúmenes en PDF de Programación Informática solo en Docsity!

Python For Data Science Cheat Sheet

NumPy Basics

Learn Python for Data Science Interactively at www.DataCamp.com

NumPy

DataCamp

Learn Python for Data Science Interactively

The NumPy library is the core library for scientific computing in

Python. It provides a high-performance multidimensional array

object, and tools for working with these arrays.

>>> import numpy as np

Use the following import convention:

Creating Arrays

>>> np.zeros((3,4)) Create an array of zeros

>>> np.ones((2,3,4),dtype=np.int16) Create an array of ones

>>> d = np.arange(10,25,5) Create an array of evenly

spaced values (step value)

>>> np.linspace(0,2,9) Create an array of evenly

spaced values (number of samples)

>>> e = np.full((2,2),7) Create a constant array

>>> f = np.eye(2) Create a 2X2 identity matrix

>>> np.random.random((2,2)) Create an array with random values

>>> np.empty((3,2)) Create an empty array

Array Mathematics

g = a - b Subtraction array([[-0.5, 0. , 0. ], [-3. , -3. , -3. ]]) np.subtract(a,b) Subtraction b + a Addition array([[ 2.5, 4. , 6. ], [ 5. , 7. , 9. ]]) np.add(b,a) Addition a / b Division array([[ 0.66666667, 1. , 1. ], [ 0.25 , 0.4 , 0.5 ]]) np.divide(a,b) Division a * b Multiplication array([[ 1.5, 4. , 9. ], [ 4. , 10. , 18. ]]) np.multiply(a,b) Multiplication np.exp(b) Exponentiation np.sqrt(b) Square root np.sin(a) Print sines of an array np.cos(b) Element-wise cosine np.log(a) Element-wise natural logarithm e.dot(f) Dot product

array([[ 7., 7.], [ 7., 7.]])

Subsetting, Slicing, Indexing

>>> a.sum() Array-wise sum

>>> a.min() Array-wise minimum value

>>> b.max(axis=0) Maximum value of an array row

>>> b.cumsum(axis=1) Cumulative sum of the elements

>>> a.mean() Mean

>>> b.median() Median

>>> a.corrcoef() Correlation coefficient

>>> np.std(b) Standard deviation

Comparison

>>> a == b Element-wise comparison

array([[False, True, True], [False, False, False]], dtype=bool)

>>> a < 2 Element-wise comparison

array([True, False, False], dtype=bool)

>>> np.array_equal(a, b) Array-wise comparison

1D array 2D array 3D array

Array Manipulation

NumPy Arrays

axis 0

axis 1

axis 0

axis 1

axis 2

Arithmetic Operations

Transposing Array

>>> i = np.transpose(b) Permute array dimensions

>>> i.T Permute array dimensions

Changing Array Shape

>>> b.ravel() Flatten the array

>>> g.reshape(3,-2) Reshape, but don’t change data

Adding/Removing Elements

>>> h.resize((2,6)) Return a new array with shape (2,6)

>>> np.append(h,g) Append items to an array

>>> np.insert(a, 1, 5) Insert items in an array

>>> np.delete(a,[1]) Delete items from an array

Combining Arrays

>>> np.concatenate((a,d),axis=0) Concatenate arrays

array([ 1, 2, 3, 10, 15, 20])

>>> np.vstack((a,b)) Stack arrays vertically (row-wise)

array([[ 1. , 2. , 3. ], [ 1.5, 2. , 3. ], [ 4. , 5. , 6. ]])

>>> np.r_[e,f] Stack arrays vertically (row-wise)

>>> np.hstack((e,f)) Stack arrays horizontally (column-wise)

array([[ 7., 7., 1., 0.], [ 7., 7., 0., 1.]])

>>> np.column_stack((a,d)) Create stacked column-wise arrays

array([[ 1, 10], [ 2, 15], [ 3, 20]])

>>> np.c_[a,d] Create stacked column-wise arrays

Splitting Arrays

>>> np.hsplit(a,3) Split the array horizontally at the 3rd

[array([1]),array([2]),array([3])] index

>>> np.vsplit(c,2) Split the array vertically at the 2nd index

[array([[[ 1.5, 2. , 1. ], [ 4. , 5. , 6. ]]]), array([[[ 3., 2., 3.], [ 4., 5., 6.]]])]

Also see Lists

Subsetting

>>> a[2] Select the element at the 2nd index

3

>>> b[1,2] Select the element at row 1 column 2

6.0 (equivalent to b[1][2])

Slicing

>>> a[0:2] Select items at index 0 and 1

array([1, 2])

>>> b[0:2,1] Select items at rows 0 and 1 in column 1

array([ 2., 5.])

>>> b[:1] Select all items at row 0

array([[1.5, 2., 3.]]) (equivalent to b[0:1, :])

>>> c[1,...] Same as [1,:,:]

array([[[ 3., 2., 1.], [ 4., 5., 6.]]])

>>> a[ : :-1] Reversed array a

array([3, 2, 1]) Boolean Indexing

>>> a[a<2] Select elements from a less than 2

array([1]) Fancy Indexing

>>> b[[1, 0, 1, 0],[0, 1, 2, 0]] Select elements (1,0),(0,1),(1,2) and (0,0)

array([ 4. , 2. , 6. , 1.5])

>>> b[[1, 0, 1, 0]][:,[0,1,2,0]] Select a subset of the matrix’s rows

array([[ 4. ,5. , 6. , 4. ], [ 1.5, 2. , 3. , 1.5], and columns

[ 4. , 5. , 6. , 4. ], [ 1.5, 2. , 3. , 1.5]])

a = np.array([1,2,3]) b = np.array([(1.5,2,3), (4,5,6)], dtype = float) c = np.array([[(1.5,2,3), (4,5,6)], [(3,2,1), (4,5,6)]], dtype = float)

Initial Placeholders

Aggregate Functions

np.loadtxt("myfile.txt") np.genfromtxt("my_file.csv", delimiter=',') np.savetxt("myarray.txt", a, delimiter=" ")

I/O

1 2 3 1.5 2 3 4 5 6

Copying Arrays

>>> h = a.view() Create a view of the array with the same data

>>> np.copy(a) Create a copy of the array

>>> h = a.copy() Create a deep copy of the array

Saving & Loading Text Files

Saving & Loading On Disk

np.save('my_array', a) np.savez('array.npz', a, b) np.load('my_array.npy')

>>> a.shape Array dimensions

>>> len(a) Length of array

>>> b.ndim Number of array dimensions

>>> e.size Number of array elements

>>> b.dtype Data type of array elements

>>> b.dtype.name Name of data type

>>> b.astype(int) Convert an array to a different type

Inspecting Your Array

np.info(np.ndarray.dtype)

Asking For Help

Sorting Arrays

>>> a.sort() Sort an array

>>> c.sort(axis=0) Sort the elements of an array's axis

Data Types

>>> np.int64 Signed 64-bit integer types

>>> np.float32 Standard double-precision floating point

>>> np.complex Complex numbers represented by 128 floats

>>> np.bool Boolean type storing TRUE and FALSE values

>>> np.object Python object type

>>> np.string_ Fixed-length string type

>>> np.unicode_ Fixed-length unicode type

1 2 3 1.5 2 3 4 5 6 1.5 2 3 4 5 6 1 2 3