I have different types of data. most of them are
int and sometimes
int is different in size so 8/ 16/ 32 bits are the sizes.
For this situation I'm creating a numerical type converter. therefore i check the type by using
isinstence(). This because I have read that
isinstance() is less worse than
The point is that a lot of data i get is numpy arrays. I use spyder as IDE and then i see by the variables also a type. but when i type
isinstance(var,'type i read') i get
I did some checks:
a = 2.17 b = 3 c = np.array(np.random.rand(2, 8)) d = np.array()
isinstance(var,type) i get:
isinstance(a, float) True isinstance(b, int) True isinstance(c, float) # or isinstance(c, np.float64) False isinstance(d, int) # or isinstance(c, np.int32) False
d are True when i ask
isinstance(c, np.ndarray) True isinstance(d, np.ndarray) True
i can check with step in the
isinstance(c[i][j], np.float64) True isinstance(d[i], np.int32) True
but this means that for every dimension i have to add a new index otherwise it is
I can check there type with
c.dtype == 'float64'...
Oke so for what i have find and tried... My questions are basicly:
- how is the
var.dtypemethod compared to
type()(worst/ better etc)?
var.dtypeis even worse as
isinstance()is there some method in the
isinstance()without all the manual indexing? (autoindexing etc)?