NumPy - Array From Existing Data
In this chapter, we will discuss how to create an array from existing data.
numpy.asarray
This function is similar to numpy.array except for the fact that it has fewer parameters. This routine is useful for converting Python sequence into ndarray.
numpy.asarray[a, dtype = None, order = None]The constructor takes the following parameters.
1 | a Input data in any form such as list, list of tuples, tuples, tuple of tuples or tuple of lists |
2 | dtype By default, the data type of input data is applied to the resultant ndarray |
3 | order C [row major] or F [column major]. C is default |
The following examples show how you can use the asarray function.
Example 1
Its output would be as follows
[1 2 3]Example 2
Now, the output would be as follows
Example 3
Its output would be
[1 2 3]Example 4
Here, the output would be as follows
[[1, 2, 3] [4, 5]]numpy.frombuffer
This function interprets a buffer as one-dimensional array. Any object that exposes the buffer interface is used as parameter to return an ndarray.
numpy.frombuffer[buffer, dtype = float, count = -1, offset = 0]The constructor takes the following parameters.
1 | buffer Any object that exposes buffer interface |
2 | dtype Data type of returned ndarray. Defaults to float |
3 | count The number of items to read, default -1 means all data |
4 | offset The starting position to read from. Default is 0 |
Example
The following examples demonstrate the use of frombuffer function.
Here is its output
['H' 'e' 'l' 'l' 'o' ' ' 'W' 'o' 'r' 'l' 'd']numpy.fromiter
This function builds an ndarray object from any iterable object. A new one-dimensional array is returned by this function.
numpy.fromiter[iterable, dtype, count = -1]Here, the constructor takes the following parameters.
1 | iterable Any iterable object |
2 | dtype Data type of resultant array |
3 | count The number of items to be read from iterator. Default is -1 which means all data to be read |
The following examples show how to use the built-in range[] function to return a list object. An iterator of this list is used to form an ndarray object.
Example 1
Its output is as follows
Example 2
Now, the output would be as follows
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