/Digit-Classification-Pytorch

Simple MNIST Handwritten Digit Classification using Pytorch

Primary LanguageJupyter Notebook

MNIST Handwritten Digit Classification with PyTorch

This project demonstrates a simple implementation of a deep learning model for classifying handwritten digits from the MNIST dataset using the PyTorch library. The MNIST dataset is a widely-used benchmark dataset in the field of computer vision.

Project Overview

The goal of this project is to train a convolutional neural network (CNN) model to accurately classify handwritten digits from the MNIST dataset. The model is built using PyTorch, a popular deep learning framework, and trained using the Adam optimizer.

The project involves the following steps:

  • Loading and preprocessing the MNIST dataset
  • Designing and building a CNN model architecture
  • Training the model on the training data
  • Evaluating the model's performance on the test data
  • Saving and loading the trained model
  • Performing inference on new images

Requirements

  • Python (3.x)
  • PyTorch (1.x)
  • torchvision
  • PIL

Installation

  1. Clone the repository:
git clone https://github.com/your-username/mnist-classification-pytorch.git
  1. Install the required dependencies:
pip install -r requirements.txt

Usage

  1. Prepare the dataset:
  • The MNIST dataset will be automatically downloaded and preprocessed during the first run of the script. However, if you want to specify a different data directory or adjust any preprocessing parameters, you can modify the configuration in the script.
  1. Train the model:
  • Run the training script to train the model. You can adjust hyperparameters such as the number of epochs, learning rate, and batch size in the script.
  1. Evaluate the model:
  • After training, the model's performance on the test set will be evaluated automatically, and the accuracy score will be displayed.
  1. Perform inference:
  • You can use the trained model to make predictions on new images by running the inference script and providing the path to the image file.