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#!/usr/bin/env python | |
# coding: utf-8 | |
# In[1]: | |
""" | |
A series of helper functions used throughout the course. | |
If a function gets defined once and could be used over and over, it'll go in here. | |
""" | |
import torch | |
import matplotlib.pyplot as plt | |
import numpy as np | |
from torch import nn | |
import os | |
import zipfile | |
from pathlib import Path | |
import requests | |
import os | |
# In[2]: | |
# Plot linear data or training and test and predictions (optional) | |
def plot_predictions( | |
train_data, train_labels, test_data, test_labels, predictions=None | |
): | |
""" | |
Plots linear training data and test data and compares predictions. | |
""" | |
plt.figure(figsize=(10, 7)) | |
# Plot training data in blue | |
plt.scatter(train_data, train_labels, c="b", s=4, label="Training data") | |
# Plot test data in green | |
plt.scatter(test_data, test_labels, c="g", s=4, label="Testing data") | |
if predictions is not None: | |
# Plot the predictions in red (predictions were made on the test data) | |
plt.scatter(test_data, predictions, c="r", s=4, label="Predictions") | |
# Show the legend | |
plt.legend(prop={"size": 14}) | |
# In[3]: | |
# Calculate accuracy (a classification metric) | |
def accuracy_fn(y_true, y_pred): | |
"""Calculates accuracy between truth labels and predictions. | |
Args: | |
y_true (torch.Tensor): Truth labels for predictions. | |
y_pred (torch.Tensor): Predictions to be compared to predictions. | |
Returns: | |
[torch.float]: Accuracy value between y_true and y_pred, e.g. 78.45 | |
""" | |
correct = torch.eq(y_true, y_pred).sum().item() | |
acc = (correct / len(y_pred)) * 100 | |
return acc | |
# In[4]: | |
def print_train_time(start, end, device=None): | |
"""Prints difference between start and end time. | |
Args: | |
start (float): Start time of computation (preferred in timeit format). | |
end (float): End time of computation. | |
device ([type], optional): Device that compute is running on. Defaults to None. | |
Returns: | |
float: time between start and end in seconds (higher is longer). | |
""" | |
total_time = end - start | |
print(f"\nTrain time on {device}: {total_time:.3f} seconds") | |
return total_time | |
# In[5]: | |
# Plot loss curves of a model | |
def plot_loss_curves(results): | |
"""Plots training curves of a results dictionary. | |
Args: | |
results (dict): dictionary containing list of values, e.g. | |
{"train_loss": [...], | |
"train_acc": [...], | |
"test_loss": [...], | |
"test_acc": [...]} | |
""" | |
loss = results["train_loss"] | |
test_loss = results["test_loss"] | |
accuracy = results["train_acc"] | |
test_accuracy = results["test_acc"] | |
epochs = range(len(results["train_loss"])) | |
plt.figure(figsize=(15, 7)) | |
# Plot loss | |
plt.subplot(1, 2, 1) | |
plt.plot(epochs, loss, label="train_loss") | |
plt.plot(epochs, test_loss, label="test_loss") | |
plt.title("Loss") | |
plt.xlabel("Epochs") | |
plt.legend() | |
# Plot accuracy | |
plt.subplot(1, 2, 2) | |
plt.plot(epochs, accuracy, label="train_accuracy") | |
plt.plot(epochs, test_accuracy, label="test_accuracy") | |
plt.title("Accuracy") | |
plt.xlabel("Epochs") | |
plt.legend() | |
# In[6]: | |
# Pred and plot image function from notebook 04 | |
# See creation: https://www.learnpytorch.io/04_pytorch_custom_datasets/#113-putting-custom-image-prediction-together-building-a-function | |
from typing import List | |
import torchvision | |
def pred_and_plot_image( | |
model: torch.nn.Module, | |
image_path: str, | |
class_names: List[str] = None, | |
transform=None, | |
device: torch.device = "cuda" if torch.cuda.is_available() else "cpu", | |
): | |
"""Makes a prediction on a target image with a trained model and plots the image. | |
Args: | |
model (torch.nn.Module): trained PyTorch image classification model. | |
image_path (str): filepath to target image. | |
class_names (List[str], optional): different class names for target image. Defaults to None. | |
transform (_type_, optional): transform of target image. Defaults to None. | |
device (torch.device, optional): target device to compute on. Defaults to "cuda" if torch.cuda.is_available() else "cpu". | |
Returns: | |
Matplotlib plot of target image and model prediction as title. | |
Example usage: | |
pred_and_plot_image(model=model, | |
image="some_image.jpeg", | |
class_names=["class_1", "class_2", "class_3"], | |
transform=torchvision.transforms.ToTensor(), | |
device=device) | |
""" | |
# 1. Load in image and convert the tensor values to float32 | |
target_image = torchvision.io.read_image(str(image_path)).type(torch.float32) | |
# 2. Divide the image pixel values by 255 to get them between [0, 1] | |
target_image = target_image / 255.0 | |
# 3. Transform if necessary | |
if transform: | |
target_image = transform(target_image) | |
# 4. Make sure the model is on the target device | |
model.to(device) | |
# 5. Turn on model evaluation mode and inference mode | |
model.eval() | |
with torch.inference_mode(): | |
# Add an extra dimension to the image | |
target_image = target_image.unsqueeze(dim=0) | |
# Make a prediction on image with an extra dimension and send it to the target device | |
target_image_pred = model(target_image.to(device)) | |
# 6. Convert logits -> prediction probabilities (using torch.softmax() for multi-class classification) | |
target_image_pred_probs = torch.softmax(target_image_pred, dim=1) | |
# 7. Convert prediction probabilities -> prediction labels | |
target_image_pred_label = torch.argmax(target_image_pred_probs, dim=1) | |
# 8. Plot the image alongside the prediction and prediction probability | |
plt.imshow( | |
target_image.squeeze().permute(1, 2, 0) | |
) # make sure it's the right size for matplotlib | |
if class_names: | |
title = f"Pred: {class_names[target_image_pred_label.cpu()]} | Prob: {target_image_pred_probs.max().cpu():.3f}" | |
else: | |
title = f"Pred: {target_image_pred_label} | Prob: {target_image_pred_probs.max().cpu():.3f}" | |
plt.title(title) | |
plt.axis(False) | |
# In[ ]: | |
def set_seeds(seed: int=42): | |
"""Sets random sets for torch operations. | |
Args: | |
seed (int, optional): Random seed to set. Defaults to 42. | |
""" | |
# Set the seed for general torch operations | |
torch.manual_seed(seed) | |
# Set the seed for CUDA torch operations (ones that happen on the GPU) | |
torch.cuda.manual_seed(seed) | |
# In[ ]: | |