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Don't miss these 2 books of 100-pages. Both are #FREE to read.
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Stanford's "Design and Analysis of Algorithms" Winter 2025
Lecture Notes & Slides: https://stanford-cs161.github.io/winter2025/lectures/
Lecture Notes & Slides: https://stanford-cs161.github.io/winter2025/lectures/
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One of the best books on #Probability. Available FREE.
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@Codeprogrammer Cheat Sheet Numpy.pdf
213.7 KB
This checklist covers the essentials of NumPy in one place, helping you:
- Create and initialize arrays
- Perform element-wise computations
- Stack and split arrays
- Apply linear algebra functions
- Efficiently index, slice, and manipulate arrays
β¦and much more!
Feel free to share if you found this useful, and let me know in the comments if I missed anything!
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- Create and initialize arrays
- Perform element-wise computations
- Stack and split arrays
- Apply linear algebra functions
- Efficiently index, slice, and manipulate arrays
β¦and much more!
Feel free to share if you found this useful, and let me know in the comments if I missed anything!
#NumPy #Python #DataScience #MachineLearning #Automation #DeepLearning #Programming #Tech #DataAnalysis #SoftwareDevelopment #Coding #TechTips #PythonForDataScience
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Loading CSV files into a database using Python.
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from SQL to pandas.pdf
1.3 MB
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Numpy from basics to advanced.pdf
2.4 MB
NumPy is an essential library in the world of data science, widely recognized for its efficiency in numerical computations and data manipulation. This powerful tool simplifies complex operations with arrays, offering a faster and cleaner alternative to traditional Python lists and loops.
The "Mastering NumPy" booklet provides a comprehensive walkthroughβfrom array creation and indexing to mathematical/statistical operations and advanced topics like reshaping and stacking. All concepts are illustrated with clear, beginner-friendly examples, making it ideal for anyone aiming to boost their data handling skills.
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Polars.pdf
391.5 KB
β
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New to Pandas?
Here's a cheat sheet you can download (2025)
Here's a cheat sheet you can download (2025)
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Forwarded from Python Data Science Jobs & Interviews
In Python, NumPy is the cornerstone of scientific computing, offering high-performance multidimensional arrays and tools for working with themβcritical for data science interviews and real-world applications! π
By: @DataScienceQ π
#Python #NumPy #DataScience #CodingInterview #MachineLearning #ScientificComputing #DataAnalysis #Programming #TechJobs #DeveloperTips
import numpy as np
# Array Creation - The foundation of NumPy
arr = np.array([1, 2, 3])
zeros = np.zeros((2, 3)) # 2x3 matrix of zeros
ones = np.ones((2, 2), dtype=int) # Integer matrix
arange = np.arange(0, 10, 2) # [0 2 4 6 8]
linspace = np.linspace(0, 1, 5) # [0. 0.25 0.5 0.75 1. ]
print(linspace)
# Array Attributes - Master your data's structure
matrix = np.array([[1, 2, 3], [4, 5, 6]])
print(matrix.shape) # Output: (2, 3)
print(matrix.ndim) # Output: 2
print(matrix.dtype) # Output: int64
print(matrix.size) # Output: 6
# Indexing & Slicing - Precision data access
data = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
print(data[1, 2]) # Output: 6 (row 1, col 2)
print(data[0:2, 1:3]) # Output: [[2 3], [5 6]]
print(data[:, -1]) # Output: [3 6 9] (last column)
# Reshaping Arrays - Transform dimensions effortlessly
flat = np.arange(6)
reshaped = flat.reshape(2, 3)
raveled = reshaped.ravel()
print(reshaped)
# Output: [[0 1 2], [3 4 5]]
print(raveled) # Output: [0 1 2 3 4 5]
# Stacking Arrays - Combine datasets vertically/horizontally
a = np.array([1, 2, 3])
b = np.array([4, 5, 6])
print(np.vstack((a, b))) # Vertical stack
# Output: [[1 2 3], [4 5 6]]
print(np.hstack((a, b))) # Horizontal stack
# Output: [1 2 3 4 5 6]
# Mathematical Operations - Vectorized calculations
x = np.array([1, 2, 3])
y = np.array([4, 5, 6])
print(x + y) # Output: [5 7 9]
print(x * 2) # Output: [2 4 6]
print(np.dot(x, y)) # Output: 32 (1*4 + 2*5 + 3*6)
# Broadcasting Magic - Operate on mismatched shapes
matrix = np.array([[1, 2, 3], [4, 5, 6]])
scalar = 10
print(matrix + scalar)
# Output: [[11 12 13], [14 15 16]]
# Aggregation Functions - Statistical power in one line
values = np.array([1, 5, 3, 9, 7])
print(np.sum(values)) # Output: 25
print(np.mean(values)) # Output: 5.0
print(np.max(values)) # Output: 9
print(np.std(values)) # Output: 2.8284271247461903
# Boolean Masking - Filter data like a pro
temperatures = np.array([18, 25, 12, 30, 22])
hot_days = temperatures > 24
print(temperatures[hot_days]) # Output: [25 30]
# Random Number Generation - Simulate real-world data
print(np.random.rand(2, 2)) # Uniform distribution
print(np.random.randn(3)) # Normal distribution
print(np.random.randint(0, 10, (2, 3))) # Random integers
# Linear Algebra Essentials - Solve equations like a physicist
A = np.array([[3, 1], [1, 2]])
b = np.array([9, 8])
x = np.linalg.solve(A, b)
print(x) # Output: [2. 3.] (Solution to 3x+y=9 and x+2y=8)
# Matrix inverse and determinant
print(np.linalg.inv(A)) # Output: [[ 0.4 -0.2], [-0.2 0.6]]
print(np.linalg.det(A)) # Output: 5.0
# File Operations - Save/load your computational work
data = np.array([[1, 2], [3, 4]])
np.save('array.npy', data)
loaded = np.load('array.npy')
print(np.array_equal(data, loaded)) # Output: True
# Interview Power Move: Vectorization vs Loops
# 10x faster than native Python loops!
def square_sum(n):
arr = np.arange(n)
return np.sum(arr ** 2)
print(square_sum(5)) # Output: 30 (0Β²+1Β²+2Β²+3Β²+4Β²)
# Pro Tip: Memory-efficient data processing
# Process 1GB array without loading entire dataset
large_array = np.memmap('large_data.bin', dtype='float32', mode='r', shape=(1000000, 100))
print(large_array[0:5, 0:3]) # Process small slice
By: @DataScienceQ π
#Python #NumPy #DataScience #CodingInterview #MachineLearning #ScientificComputing #DataAnalysis #Programming #TechJobs #DeveloperTips
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