NumPy array operations include creating, viewing properties, modifying shapes, and stitching and splitting. 1. The creation methods include list conversion and built-in functions such as zeros, ones, range, linspace, etc.; 2. When viewing attributes, you can understand the structure through shape, ndim, dtype, and size; 3. Modify the available reshape, ravel, flatten and index assignments, pay attention to the difference between the view and the copy; 4. Use hstack and vstack for splicing, and use hsplit and vsplit for splitting, which is suitable for multi-dataset processing. Mastering these commonly used operations can significantly improve scientific computing efficiency.
Processing NumPy arrays is the basis for scientific computing and data analysis in Python. If you are just starting to get involved in NumPy, you may feel that the creation and operation of arrays are a bit complicated, but in fact, you can get started quickly by mastering a few key methods.

Create NumPy array
Creating an array is one of the most basic operations. The most common way is to convert from a list or tuple in Python:
import numpy as np arr = np.array([1, 2, 3]) # 1D array matrix = np.array([[1, 2], [3, 4]]) # 2D array
In addition to this method, you can also use built-in functions to generate arrays of specific structures:

-
np.zeros((3, 2))
: Create a 3 rows, 2 columns, all zeros array -
np.ones((2, 2))
: Create a 2x2 all-one array -
np.arange(0, 10, 2)
: Similar to range, generating an array with steps of 2 from 0 to 10 (not included) from 2 -
np.linspace(0, 1, 5)
: generate 5 numbers equally between 0 and 1
These methods can meet most initialization needs and are much more efficient than using circular construction.
View the basic properties of the array
After just creating an array, you usually need to understand its basic structure, such as shape, data type, dimension, etc.:

arr = np.array([[1, 2, 3], [4, 5, 6]]) print(arr.shape) # Output (2, 3), representing 2 rows and 3 columns print(arr.ndim) # Output 2, representing a two-dimensional array print(arr.dtype) # Output int64, representing element type print(arr.size) # Output 6, representing a total of 6 elements
These properties are very useful when debugging or processing large datasets and can help you quickly determine whether the array is in line with expectations.
Modify the shape and content of the array
NumPy provides a variety of ways to change the shape and content of an array:
- Use
.reshape()
to change the array structure - Flatten arrays using
.ravel()
or.flatten()
- Modify partial values ??using indexes and tiles
For example:
arr = np.arange(6) reshapeed = arr.reshape(2, 3) # Modify the value of a certain position reshaped[0, 1] = 99
Note that .ravel()
returns the view of the original array, while .flatten()
returns a copy. This is easy to ignore when processing data, but it will affect whether the original data is modified after subsequent operations.
Splicing and splitting of arrays
When you work with multiple arrays, you may need to merge or tear them apart. NumPy provides several practical functions:
- Horizontal splicing:
np.hstack((a, b))
- Vertical splicing:
np.vstack((a, b))
- Split array:
np.hsplit()
andnp.vsplit()
For example:
a = np.array([[1, 2], [3, 4]]) b = np.array([[5, 6], [7, 8]]) combined = np.vstack((a, b)) # merge into an array of 4 rows and 2 columns
This kind of operation is particularly common when processing batch-loaded data, such as image processing or machine learning training data stitching.
Basically that's it. NumPy array creation and operation seem to be of many variety, but once you get familiar with common functions, you will find it very flexible and efficient. At the beginning, practice several creation methods and deformation operations, and it will be much easier to use later.
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