ium_444354/pytorch/.ipynb_checkpoints/pytorch-checkpoint.ipynb

16 KiB

import torch
import jovian
import torchvision
import matplotlib
import torch.nn as nn
import pandas as pd
import matplotlib.pyplot as plt
import seaborn as sns
import torch.nn.functional as F
from torchvision.datasets.utils import download_url
from torch.utils.data import DataLoader, TensorDataset, random_split
import random
import os
import sys
dataframe_raw = pd.read_csv("winequality-red.csv")
dataframe_raw.head()
fixed acidity volatile acidity citric acid residual sugar chlorides free sulfur dioxide total sulfur dioxide density pH sulphates alcohol quality
0 7.4 0.70 0.00 1.9 0.076 11.0 34.0 0.9978 3.51 0.56 9.4 5
1 7.8 0.88 0.00 2.6 0.098 25.0 67.0 0.9968 3.20 0.68 9.8 5
2 7.8 0.76 0.04 2.3 0.092 15.0 54.0 0.9970 3.26 0.65 9.8 5
3 11.2 0.28 0.56 1.9 0.075 17.0 60.0 0.9980 3.16 0.58 9.8 6
4 7.4 0.70 0.00 1.9 0.076 11.0 34.0 0.9978 3.51 0.56 9.4 5
input_cols=list(dataframe_raw.columns)[:-1]
output_cols = ['quality']
input_cols,output_cols
(['fixed acidity',
  'volatile acidity',
  'citric acid',
  'residual sugar',
  'chlorides',
  'free sulfur dioxide',
  'total sulfur dioxide',
  'density',
  'pH',
  'sulphates',
  'alcohol'],
 ['quality'])
def dataframe_to_arrays(dataframe):
    dataframe1 = dataframe_raw.copy(deep=True)
    inputs_array = dataframe1[input_cols].to_numpy()
    targets_array = dataframe1[output_cols].to_numpy()
    return inputs_array, targets_array

inputs_array, targets_array = dataframe_to_arrays(dataframe_raw)
inputs_array, targets_array
(array([[ 7.4  ,  0.7  ,  0.   , ...,  3.51 ,  0.56 ,  9.4  ],
        [ 7.8  ,  0.88 ,  0.   , ...,  3.2  ,  0.68 ,  9.8  ],
        [ 7.8  ,  0.76 ,  0.04 , ...,  3.26 ,  0.65 ,  9.8  ],
        ...,
        [ 6.3  ,  0.51 ,  0.13 , ...,  3.42 ,  0.75 , 11.   ],
        [ 5.9  ,  0.645,  0.12 , ...,  3.57 ,  0.71 , 10.2  ],
        [ 6.   ,  0.31 ,  0.47 , ...,  3.39 ,  0.66 , 11.   ]]),
 array([[5],
        [5],
        [5],
        ...,
        [6],
        [5],
        [6]], dtype=int64))
inputs = torch.from_numpy(inputs_array).type(torch.float)
targets = torch.from_numpy(targets_array).type(torch.float)
inputs,targets
(tensor([[ 7.4000,  0.7000,  0.0000,  ...,  3.5100,  0.5600,  9.4000],
         [ 7.8000,  0.8800,  0.0000,  ...,  3.2000,  0.6800,  9.8000],
         [ 7.8000,  0.7600,  0.0400,  ...,  3.2600,  0.6500,  9.8000],
         ...,
         [ 6.3000,  0.5100,  0.1300,  ...,  3.4200,  0.7500, 11.0000],
         [ 5.9000,  0.6450,  0.1200,  ...,  3.5700,  0.7100, 10.2000],
         [ 6.0000,  0.3100,  0.4700,  ...,  3.3900,  0.6600, 11.0000]]),
 tensor([[5.],
         [5.],
         [5.],
         ...,
         [6.],
         [5.],
         [6.]]))
dataset = TensorDataset(inputs, targets)
dataset
<torch.utils.data.dataset.TensorDataset at 0x1f334183760>
train_ds, val_ds = random_split(dataset, [1300, 299])
batch_size=50
train_loader = DataLoader(train_ds, batch_size, shuffle=True)
val_loader = DataLoader(val_ds, batch_size)
class WineQuality(nn.Module):
    def __init__(self):
        super().__init__()
        self.linear = nn.Linear(input_size,output_size) 
        
    def forward(self, xb): 
        out = self.linear(xb)
        return out
    
    def training_step(self, batch):
        inputs, targets = batch 
        # Generate predictions
        out = self(inputs)          
        # Calcuate loss
        loss = F.l1_loss(out,targets) 
        return loss
    
    def validation_step(self, batch):
        inputs, targets = batch
        # Generate predictions
        out = self(inputs)
        # Calculate loss
        loss = F.l1_loss(out,targets)   
        return {'val_loss': loss.detach()}
        
    def validation_epoch_end(self, outputs):
        batch_losses = [x['val_loss'] for x in outputs]
        epoch_loss = torch.stack(batch_losses).mean() 
        return {'val_loss': epoch_loss.item()}
    
    def epoch_end(self, epoch, result, num_epochs):
        # Print result every 100th epoch
        if (epoch+1) % 100 == 0 or epoch == num_epochs-1:
            print("Epoch [{}], val_loss: {:.4f}".format(epoch+1, result['val_loss']))
input_size = len(input_cols)
output_size = len(output_cols)
model=WineQuality()
def evaluate(model, val_loader):
    outputs = [model.validation_step(batch) for batch in val_loader]
    return model.validation_epoch_end(outputs)

def fit(epochs, lr, model, train_loader, val_loader, opt_func=torch.optim.SGD):
    history = []
    optimizer = opt_func(model.parameters(), lr)
    for epoch in range(epochs):
        for batch in train_loader:
            loss = model.training_step(batch)
            loss.backward()
            optimizer.step()
            optimizer.zero_grad()
        result = evaluate(model, val_loader)
        model.epoch_end(epoch, result, epochs)
        history.append(result)
    return history
epochs = 1500
lr = 1e-6
history5 = fit(epochs, lr, model, train_loader, val_loader)
Epoch [100], val_loss: 4.1732
Epoch [200], val_loss: 1.6444
Epoch [300], val_loss: 1.4860
Epoch [400], val_loss: 1.4119
Epoch [500], val_loss: 1.3407
Epoch [600], val_loss: 1.2709
Epoch [700], val_loss: 1.2045
Epoch [800], val_loss: 1.1401
Epoch [900], val_loss: 1.0783
Epoch [1000], val_loss: 1.0213
Epoch [1100], val_loss: 0.9678
Epoch [1200], val_loss: 0.9186
Epoch [1300], val_loss: 0.8729
Epoch [1400], val_loss: 0.8320
Epoch [1500], val_loss: 0.7959
def predict_single(input, target, model):
    inputs = input.unsqueeze(0)
    predictions = model(inputs)
    prediction = predictions[0].detach()

    return "Target: "+str(target)+"-----   Prediction: "+str(prediction)+"\n"
#wylosuj 10 próbek predykcji
for i in random.sample(range(0, len(val_ds)), 10):
    input_, target = val_ds[i]
    print(predict_single(input_, target, model),end="")
    
Target: tensor([5.])-----   Prediction: tensor([4.9765])
Target: tensor([5.])-----   Prediction: tensor([6.6649])
Target: tensor([5.])-----   Prediction: tensor([5.2627])
Target: tensor([7.])-----   Prediction: tensor([5.7054])
Target: tensor([5.])-----   Prediction: tensor([5.1168])
Target: tensor([7.])-----   Prediction: tensor([5.3928])
Target: tensor([5.])-----   Prediction: tensor([4.8501])
Target: tensor([4.])-----   Prediction: tensor([5.4210])
Target: tensor([5.])-----   Prediction: tensor([4.6719])
Target: tensor([5.])-----   Prediction: tensor([7.8635])
with open("result.txt", "w+") as file:
    for i in range(0, len(val_ds), 1):
        input_, target = val_ds[i]
        file.write(str(predict_single(input_, target, model)))