Deep Learning Library
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Updated
Nov 21, 2018 - Python
Deep Learning Library
CS231n course assignment
Use NLP techniques to improve baseline model performance of a Question Answering problem
cifar10 classification based on alexnet and vgg16 using TensorFlow
CIFAR10 Dataset.
Investigating the Behaviour of Deep Neural Networks for Classification
Experimented with different architectures and kernels on MNIST dataset using Convolutional Neural Networks.
CS 182 Spring 2019 - Assignment 1
Implementation of Neural Network from scratch using Numpy. Contains implementation of foward & backward prop, Fully Connected Architectures, CNN, Batch Normalization, Activation functions, DataLoader, PatternProducingNetwork, multiple experiments with random parameter search, filter visualization, accuracy graph (on html), etc.
Training a model using CNN's to predict the emotion class of an Audio file in pytorch framework.
Building Deep Neural Network for Google Street View Dataset
Using DCGAN, detect and recognize house number from google street view
Denoising Diffusion Medical Model (DDMM) on PyTorch for generating datasets of Acute Lymphoblastic Leukemia 🩺💜
Deep learning models in Python
Why Batch Normalization Works so Well (best peer-reviewed project at MLDS, 2017 Spring)
PyTorch implementation of batch normalization from "Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift" by Sergey Ioffe, Christian Szegedy
Deep Learning Course | Home Works | Spring 2021 | Dr. MohammadReza Mohammadi
in this repo, you will find implementation of various classification models, data augmantation ,cnn designing and model reguralization
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