- NumPy Tutorial
- NumPy - Home
- NumPy - Introduction
- NumPy - Environment
- NumPy - Ndarray Object
- NumPy - Data Types
- NumPy - Array Attributes
- NumPy - Array Creation Routines
- NumPy - Array from Existing Data
- Array From Numerical Ranges
- NumPy - Indexing & Slicing
- NumPy - Advanced Indexing
- NumPy - Broadcasting
- NumPy - Iterating Over Array
- NumPy - Array Manipulation
- NumPy - Binary Operators
- NumPy - String Functions
- NumPy - Mathematical Functions
- NumPy - Arithmetic Operations
- NumPy - Statistical Functions
- Sort, Search & Counting Functions
- NumPy - Byte Swapping
- NumPy - Copies & Views
- NumPy - Matrix Library
- NumPy - Linear Algebra
- NumPy - Matplotlib
- NumPy - Histogram Using Matplotlib
- NumPy - I/O with NumPy
- NumPy Useful Resources
- NumPy Compiler
- NumPy - Quick Guide
- NumPy - Useful Resources
- NumPy - Discussion
NumPy - Array From Numerical Ranges
In this chapter, we will see how to create an array from numerical ranges.
numpy.arange
This function returns an ndarray object containing evenly spaced values within a given range. The format of the function is as follows −
numpy.arange(start, stop, step, dtype)
The constructor takes the following parameters.
Sr.No. | Parameter & Description |
---|---|
1 | start The start of an interval. If omitted, defaults to 0 |
2 | stop The end of an interval (not including this number) |
3 | step Spacing between values, default is 1 |
4 | dtype Data type of resulting ndarray. If not given, data type of input is used |
The following examples show how you can use this function.
Example 1
import numpy as np x = np.arange(5) print x
Its output would be as follows −
[0 1 2 3 4]
Example 2
import numpy as np # dtype set x = np.arange(5, dtype = float) print x
Here, the output would be −
[0. 1. 2. 3. 4.]
Example 3
# start and stop parameters set import numpy as np x = np.arange(10,20,2) print x
Its output is as follows −
[10 12 14 16 18]
numpy.linspace
This function is similar to arange() function. In this function, instead of step size, the number of evenly spaced values between the interval is specified. The usage of this function is as follows −
numpy.linspace(start, stop, num, endpoint, retstep, dtype)
The constructor takes the following parameters.
Sr.No. | Parameter & Description |
---|---|
1 | start The starting value of the sequence |
2 | stop The end value of the sequence, included in the sequence if endpoint set to true |
3 | num The number of evenly spaced samples to be generated. Default is 50 |
4 | endpoint True by default, hence the stop value is included in the sequence. If false, it is not included |
5 | retstep If true, returns samples and step between the consecutive numbers |
6 | dtype Data type of output ndarray |
The following examples demonstrate the use linspace function.
Example 1
import numpy as np x = np.linspace(10,20,5) print x
Its output would be −
[10. 12.5 15. 17.5 20.]
Example 2
# endpoint set to false import numpy as np x = np.linspace(10,20, 5, endpoint = False) print x
The output would be −
[10. 12. 14. 16. 18.]
Example 3
# find retstep value import numpy as np x = np.linspace(1,2,5, retstep = True) print x # retstep here is 0.25
Now, the output would be −
(array([ 1. , 1.25, 1.5 , 1.75, 2. ]), 0.25)
numpy.logspace
This function returns an ndarray object that contains the numbers that are evenly spaced on a log scale. Start and stop endpoints of the scale are indices of the base, usually 10.
numpy.logspace(start, stop, num, endpoint, base, dtype)
Following parameters determine the output of logspace function.
Sr.No. | Parameter & Description |
---|---|
1 | start The starting point of the sequence is basestart |
2 | stop The final value of sequence is basestop |
3 | num The number of values between the range. Default is 50 |
4 | endpoint If true, stop is the last value in the range |
5 | base Base of log space, default is 10 |
6 | dtype Data type of output array. If not given, it depends upon other input arguments |
The following examples will help you understand the logspace function.
Example 1
import numpy as np # default base is 10 a = np.logspace(1.0, 2.0, num = 10) print a
Its output would be as follows −
[ 10. 12.91549665 16.68100537 21.5443469 27.82559402 35.93813664 46.41588834 59.94842503 77.42636827 100. ]
Example 2
# set base of log space to 2 import numpy as np a = np.logspace(1,10,num = 10, base = 2) print a
Now, the output would be −
[ 2. 4. 8. 16. 32. 64. 128. 256. 512. 1024.]