My solution for "Zalando's Fashion MNIST" challenge on dockerized Jupyter Notebook.
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Updated
Apr 5, 2019 - Jupyter Notebook
My solution for "Zalando's Fashion MNIST" challenge on dockerized Jupyter Notebook.
This notebook demonstrate the use of PyTorch to create a Multi-Layer Perceptron for Image Classification on Fashion Mnist Dataset.
This notebook investigates whether multiple CNN models can achieve higher classification accuracy than any individual model.
Collection of my Deep Learning and Machine Learning notebooks.
Record of all my notebooks and related work for DeepLearning.ai's Introduction to TensorFlow for Artificial Intelligence, Machine Learning, and Deep Learning course on coursera.org
This GitHub repo contains a collaborative Jupyter notebook showcasing a classification model for the Fashion-MNIST dataset. The notebook includes code snippets and visualizations demonstrating data preparation, model creation, and evaluation. The Fashion-MNIST dataset consists of 70,000 grayscale images of 10 different fashion categories.
Une série de notebooks qui expliquent en détail comment fonctionnent les modèles de diffusion
This GitHub laboratory contains PyTorch classification loss functions, Jupyter notebooks, and documentation for researchers and machine learning enthusiasts interested in deep learning and PyTorch.
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