Master NumPy in Python: Arrays, Matrix Operations, and Linear Algebra Explained
In this video, we explore NumPy, one of Python's most powerful libraries for numerical computing. NumPy is widely used for its ability to handle large arrays, matrices, and advanced mathematical operations efficiently. This tutorial is ideal for beginners looking to understand how to perform basic to advanced operations with NumPy in Python.
We'll cover:
Creating and manipulating 1D and 2D arrays using functions like np.array(), np.zeros(), np.ones(), and np.random.rand().
Performing arithmetic operations (addition, subtraction, multiplication, division) on arrays.
Utilizing element-wise functions such as np.sqrt(), and np.exp().
Slicing arrays and extracting rows, columns, and sub-arrays.
Reshaping, stacking, and splitting arrays with np.reshape().
Performing linear algebra operations such as matrix multiplication, matrix inversion.
We also include hands-on exercises for you to practice:
Creating an array and calculating its mean and standard deviation.
Generating a random matrix and calculating its determinant.
This tutorial will give you the solid foundation you need to use NumPy in your own projects, whether you're working in data science, engineering, or machine learning.
If this video helps you understand NumPy better, be sure to like and subscribe for more Python tutorials and practical exercises!
#NumPy #Python #PythonTutorial #DataScience #NumPyTutorial #LearnPython #PythonForBeginners #ArrayOperations #PythonCodeExamples #NumericalComputing
Видео Master NumPy in Python: Arrays, Matrix Operations, and Linear Algebra Explained канала 9 - 5 DATA
We'll cover:
Creating and manipulating 1D and 2D arrays using functions like np.array(), np.zeros(), np.ones(), and np.random.rand().
Performing arithmetic operations (addition, subtraction, multiplication, division) on arrays.
Utilizing element-wise functions such as np.sqrt(), and np.exp().
Slicing arrays and extracting rows, columns, and sub-arrays.
Reshaping, stacking, and splitting arrays with np.reshape().
Performing linear algebra operations such as matrix multiplication, matrix inversion.
We also include hands-on exercises for you to practice:
Creating an array and calculating its mean and standard deviation.
Generating a random matrix and calculating its determinant.
This tutorial will give you the solid foundation you need to use NumPy in your own projects, whether you're working in data science, engineering, or machine learning.
If this video helps you understand NumPy better, be sure to like and subscribe for more Python tutorials and practical exercises!
#NumPy #Python #PythonTutorial #DataScience #NumPyTutorial #LearnPython #PythonForBeginners #ArrayOperations #PythonCodeExamples #NumericalComputing
Видео Master NumPy in Python: Arrays, Matrix Operations, and Linear Algebra Explained канала 9 - 5 DATA
NumPy Python tutorial Python NumPy arrays NumPy for numerical computing Python array operations NumPy tutorial for beginners Python NumPy code examples Python NumPy library guide Python array manipulation NumPy linear algebra functions NumPy Python exercises Python matrix operations Python NumPy reshaping arrays Python arrays and matrices NumPy slicing arrays Python NumPy explained Python libraries for data science Using NumPy in Python Python numerical tools
Комментарии отсутствуют
Информация о видео
26 октября 2024 г. 5:38:57
00:25:54
Другие видео канала