This repository contains my implementations of Deep Neural Network based architectures for specific usecases using PyTorch. Each implementation comes with a detailed problem specification and a link to the solution.
- Given the sp500 stock market tickers dataset
- Modelling the time series using LSTM, and perform various experiments involving techniques like Normalization, Feature Engineering
- Assessing the profitability of the algorithmic trading module under various conditions like buy-ask spread, commissions .etc
- Detailed problem specification can be found here
- My solution for the same can be found here
Facial Similarity Metric Learning and Face Generation using Deep Convolutional Generative Adversarial Networks (DCGAN)
- Given the Labeled Faces in the Wild dataset
- Using a Transfer Learned ResNet based Siamese Network for Similarity Metric Learning for Identification
- Performing experiments using techniques like Regularization, Learning Rate Scheduling, Dropout, Variation of Optimizers to identify best performing model
- Training a DCGAN to generate new faces from input gaussian noise
- Modifying the DCGAN to become a Conditional GAN, by using the Siamese Network trained earlier, i.e, given an input image generate an unseen image of the same person
- Detailed problem specification can be found here
- My solution for the same can be found here
Input Image | Conditionally Generated Image |
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