Deep-Learning Model Exploration and Development for NLP
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Updated
Oct 13, 2023 - Python
Deep-Learning Model Exploration and Development for NLP
[CVPR 2020] When NAS Meets Robustness: In Search of Robust Architectures against Adversarial Attacks
DeepSpamReview: Detection of Fake Reviews on Online Review Platforms using Deep Learning Architectures. Summer Internship project at CoreView Systems.
Adaptive and Focusing Neural Layers for Multi-Speaker Separation Problem
Graph SuperResolution Network using geometric deep learning.
A general framework for cascade correlation architectures in Python with wrappers to keras, tensorflow and sklearn
Official Code for AdvRush: Searching for Adversarially Robust Neural Architectures (ICCV '21)
Deep Learning architectures in Tensorflow Keras, and PyTorch.
Deep learning architectures for in-air hand gesture recognition
Exploring RL ideas for deep neural network hyper-parameter search
Implementing and training/testing popular model architectures on the CIFAR10 dataset.
Deep Learning papers reading roadmap for anyone who is eager to learn this amazing tech!
Deep Learning architectures implemented in PyTorch Lightning
# Andoka-2 H.5 Andoka now TV
Code release for "Learning to Exploit Invariances in Clinical Time-Series Data Using Sequence Transformer Networks" (Oh, Wang, Wiens), MLHC 2018. https://arxiv.org/abs/1808.06725
Code release for "Relaxed Weight Sharing: Effectively Modeling Time-Varying Relationships in Clinical Time-Series" (Oh, Wang, Tang, Sjoding, Wiens), MLHC 2019. https://arxiv.org/abs/1906.02898
Notes on ML and DL with jupyter notebooks (python)
Tokenization is a way of separating a piece of text into smaller units called tokens. Here, tokens can be either words, characters, or subwords. Hence, tokenization can be broadly classified into 3 types – word, character, and subword (n-gram characters) tokenization.
My experimentations with Keras
Storybook is the industry standard workshop for building, documenting, and testing UI components in isolation
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