Introduction to NumPy Arrays

NumPy is a fundamental library for scientific computing in Python, providing powerful tools for working with numerical data. At the core of NumPy is the ndarray object, a multidimensional array that is optimized for efficient numerical operations.

Understanding NumPy Arrays

  • Homogeneous Data: Unlike Python lists, NumPy arrays are homogeneous, meaning all elements must be of the same data type (e.g., integers, floats, strings).
  • Multidimensional Structure: NumPy arrays can have any number of dimensions, from 1D vectors to higher-dimensional matrices.
  • Efficient Storage: NumPy arrays are stored in contiguous memory blocks, allowing for efficient operations and faster execution times compared to Python lists.
  • Broadcasting: NumPy’s broadcasting mechanism enables operations between arrays of different shapes, providing flexibility in calculations.

Creating NumPy Arrays

Direct Initialization:

Python

import numpy as np

# Create a 1D array

arr1d = np.array([1, 2, 3])

# Create a 2D array

arr2d = np.array([[1, 2], [3, 4]])

Using Array Creation Functions:

Python

# Create an array of zeros

zeros = np.zeros((2, 3))

# Create an array of ones

ones = np.ones((3, 4))

# Create an array of random values

random = np.random.rand(2, 2)

Accessing and Modifying Array Elements

Indexing:

Python

# Access an element

element = arr1d[0]

# Access a slice

slice = arr2d[1:3, 0:2]

Boolean Indexing:

Python

# Create a boolean mask

mask = arr1d > 2

# Extract elements based on the mask

result = arr1d[mask]

Array Attributes

  • Shape: The dimensions of the array (e.g., (2, 3) for a 2×3 matrix).
  • dtype: The data type of the elements in the array (e.g., int32, float64).
  • ndim: The number of dimensions of the array.
  • size: The total number of elements in the array.

Basic Array Operations

Arithmetic Operations:

Python

result = arr1d + arr2d
result = arr1d * 2

Matrix Operations:

Python

Matrix multiplication

result = np.dot(arr2d, arr2d.T)

Aggregation Functions:

Python

sum = np.sum(arr1d)
mean = np.mean(arr2d)

By understanding the fundamentals of NumPy arrays, you can effectively work with numerical data and perform various computations efficiently in Python.

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NumPy Arrays and Data Types

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