- 2. Print the numpy version and the configuration
4
- 3. Create a null vector of size 10
5
- 4. How to get the memory size of any array
6
- 5. How to get documentation of the numpy add function from the command line
7
- 6. Create a null vector of size 10 but the fifth value which is 1
8
- 7. Create a vector with values ranging from 10 to 49
9
- 8. Reverse a vector first number becomes last
10
- 9. Create a 3x3 Matrix with values ranging from 0 to 8
11
- 10. Find indices of non-zero elements from array
12
- 11. Create a 3x3 identity matrix
13
- 12. Create a 3x3x3 array with random values.
14
- 13. Create a 10x10 array with random values and find min/max values
15
- 14. Create a random vector of size 30 and find the mean value
16
- 15. Create a 2d array with 1 on the border and 0 inside
17
- 16. How to add a border filled with 0’s around an existing array? np.pad
18
- 17. Evaluate some np.nan expressions
19
- 18. Create a 5x5 matrix with values 1,2,3,4 just below the diagonal
20
- 19. Create an 8x8 matrix and fill it with a checkerboard pattern
21
- 20. Get the 100th element from a 6,7,8 shape array
22
- 21. Create a checkerboard pattern 8x8 matrix using np.tile function
23
- 22. Normalize a random 5x5 matrix
24
- 23. Create a custom dtype that describes a color as four unsigned bytes RGBA
25
- 24. Multiply a 5x3 matrix by a 3x2 matrix real matrix product
26
- 25. Given a 1D array, negate all elements which are between 3 and 8, in place
27
- 26. Default “range” function vs numpy “range” function
28
- 27. Evaluate whether expressions are legal or not
29
- 28. Evaluate divide by zero expressions / np.nan type casting
30
- 29. How to round away from zero a float array?
31
- 30. How to find common values between two arrays?
32
- 31. How to ignore all numpy warnings?
33
- 32. Is np.sqrt-1 == np.emath.sqrt-1 ??
34
- 33. Get the dates of yesterday, today, and tomorrow with numpy
35
- 34. How to get all the dates corresponding to the month of July 2016?
36
- 35. How to compute A+B*-A/2 in place without copy?
37
- 36. Extract the integer part of a random array of positive numbers using 4 different methods
38
- 37. Create a 5x5 matrix with row values ranging from 0 to 4
39
- 38. Use generator function that generates 10 integers and use it to build an array
40
- 39. Create a vector of size 10 with values ranging from 0 to 1, both excluded.
41
- 40. Create a random vector of size 10 and sort it.
42
- 41. How to sum a small array faster than np.sum?
43
- 42. Check if two random arrays A & B are equal
44
- 43. Make an array immutable read-only
45
- Puppies are great
46
- 44. Convert cartesian coordinates to polar coordinates
47
- 45. Create a random vector of size 10 and replace the maximum value by 0
48
- 46. Create a structured array with x and y coordinates covering the [0,1]x[0,1] area
49
- 47. Given two arrays, X and Y, construct the Cauchy matrix C Cij = 1/xi-yj
50
- 48. Print the min/max values for each numpy scalar type
51
- 49. How to print all the values of an array?
52
- 50. How to find the closest value to a given scalar in a vector?
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Grab it
Learn NumPy fundamentals through a hands-on video tutorial featuring 50 practical coding exercises ranging from basic array operations to advanced mathematical computations. Master essential skills including array creation and manipulation, random number generation, mathematical operations, date handling, and custom data types. Work through progressively challenging problems covering topics like matrix operations, array indexing, memory management, type casting, and specialized NumPy functions. Practice implementing solutions for real-world scenarios such as creating checkerboard patterns, normalizing matrices, converting coordinate systems, and constructing Cauchy matrices. Follow along with detailed explanations and step-by-step solutions while building a strong foundation in scientific computing with Python's NumPy library.
Solving 50 Python NumPy Problems - From Easy to Difficult