Codes crafted during the PyTorch Scholarship Challenge, from Facebook and Udacity
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Updated
Jan 10, 2019 - Jupyter Notebook
Codes crafted during the PyTorch Scholarship Challenge, from Facebook and Udacity
Final Project of Udacity's PyTorch Scholarship Challenge Nanodegree Program
Repository to archive and document work done for satisfying Capstone Project requirements at Praxis Business School.
Photo sharing and photo storage services like to have location data for each photo that is uploaded. With the location data, these services can build advanced features, such as automatic suggestion of relevant tags or automatic photo organization, which help provide a compelling user experience.
My personal AI projects. All of them are .ipnyb files which are pytorch-dependant.
A Binary Image Classifier in PyTorch that classifies images into Ship or Truck
This is a deep learning model that classifies shape images.
Solution to the final task of the Rucode 2022 competition
Pytorch and FastAI CNN classifer for plant disease
DogBreedSpotter is a Python-based image classification project designed to identify and classify dog breeds in images. This project utilizes deep learning models, including convolutional neural networks (CNNs) such as VGG, AlexNet, and ResNet, to accurately detect whether an image contains a dog and, if so, determine the breed.
Implemented fully-connected DNN of arbitrary depth with Batch Norm and Dropout, three-layer ConvNet with Spatial Batch Norm in NumPy. The update rules used for training are SGD, SGD+Momentum, RMSProp and Adam. Implemented three block ResNet in PyTorch, with 10 epochs of training achieves 73.60% accuracy on test set.
PyTorch Practice Notebooks
Convolutional Neural Network (CNN) for text classification implemented with PyTorch and TorchText
Training and evaluating state-of-the-art deep learning CNN architectures for plant disease classification task.
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