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PyTorch_2_Transforms.py
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55 lines (47 loc) · 1.62 KB
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import torch
from torch.utils.data import Dataset
#crate a subclass from Dataset
class toy_set(Dataset):
#contructor
def __init__(self,length = 50,transform = None):
self.len = length
# pylint: disable=E1101
self.x = torch.ones(length,2)
self.y = torch.ones(length,1)
# pylint: enable=E1101
self.transform = transform
#return data at a given index
def __getitem__(self,index):
sample = self.x[index],self.y[index]
if self.transform:
sample = self.transform(sample)
return sample
#return length
def __len__(self):
return self.len
#crate a transforms class
class add_mult(object):
#contructor
def __init__(self,addx = 1,muly = 2):
self.addx = addx
self.muly = muly
#executor
def __call__(self,sample):
return sample[0] + self.addx , sample[1] * self.muly
#create add_mult transforms object and toy_set Dataset object
a_m = add_mult()
data_set = toy_set()
#use loop to print first 3 elements
for idx in range(3):
x,y = data_set[idx]
print("i = {} Original x = {} Original y = {}".format(idx,x,y))
x_a_m,y_a_m = a_m(data_set[idx])
print("i = {} Transformed x = {} Transformed y = {}".format(idx,x_a_m,y_a_m))
#create a new data_set object with add_mult object as transform
cust_data_set = toy_set(transform = a_m)
#use loop to print first 3 elements
for idx in range(3):
x,y = data_set[idx]
print("i = {} Original x = {} Original y = {}".format(idx,x,y))
x_a_m,y_a_m = cust_data_set[idx]
print("i = {} Transformed x = {} Transformed y = {}".format(idx,x_a_m,y_a_m))