Implementations of CNNs, RNNs, GANs, etc

Overview

Tensorflow Programs and Tutorials

This repository will contain Tensorflow tutorials on a lot of the most popular deep learning concepts. It'll also contain some experiments on cool papers that I read. Hopefully, the notebooks will be helpful to anyone reading!

  • CNN's with Noisy Labels - This notebook looks at a recent paper that discusses how convolutional neural networks that are trained on random labels (with some probability) are still able to acheive good accuracy on MNIST. I thought that the paper showed some eye-brow raising results, so I went ahead and tried it out for myself. It was pretty amazing to see that even when training a CNN with random labels 50% of the time, and the correct labels the other 50% of the time, the network was still able to get a 90+% accuracy.

  • Character Level RNN (Work in Progress) - This notebook shows you how to train a character level RNN in Tensorflow. The idea was inspired by Andrej Karpathy's famous blog post and was based on this Keras implementation. In this notebook, you'll learn more about what the model is doing, and how you can input your own dataset, and train a model to generate similar looking text.

  • Convolutional Neural Networks - This notebook goes through a simple convolutional neural network implementation in Tensorflow. The model is very similar to the own described in the Tensorflow docs. Hopefully this notebook can give you a better understanding of what is necessary to create and train your own CNNs. For a more conceptual view of CNNs, check out my introductory blog post on them.

  • Generative Adversarial Networks - This notebook goes through the creation of a generative adversarial network. GANs are one of the hottest topics in deep learning. From a high level, GANs are composed of two components, a generator and a discriminator. The discriminator has the task of determining whether a given image looks natural (ie, is an image from the dataset) or looks like it has been artificially created. The task of the generator is to create natural looking images that are similar to the original data distribution, images that look natural enough to fool the discriminator network.For more of a conceptual view of GANs, check out my blog post.

  • Linear and Logistic Regression - This notebook shows you how Tensorflow is not just a deep learning library, but is a library centered on numerical computation, which allows you to create classic machine learning models relatively easily. Linear regression and logistic regression are two of the most simple, yet useful models in all of machine learning.

  • Simple Neural Networks - This notebook shows you how to create simple 1 and 2 layer neural networks. We'll then see how these networks perform on MNIST, and look at the type of hyperparamters that affect a model's accuracy (network architecture, weight initialization, learning rate, etc)

  • Math in Tensorflow - This notebook introduces you to variables, constants, and placeholders in Tensorflow. It'll go into describing sessions, and showinng you how to perform typical mathematical operations and deal with large matrices.

  • Question Pair Classification with RNNs (Work in Progress) - This notebook looks at the newly released question pair dataset released by Quora a little earlier this year. It looks at the ways in which you can build a machine learning model to predict whether two sentences are duplicates of one another. Before running this notebook, it's very important to extract all the data. We'll run the following command to get our word vectors and training/testing matrices.

    tar -xvzf Data/Quora/QuoraData.tar.gz
  • SELU Nonlinearity - A recent paper titled "Self Normalizing Neural Networks" started getting a lot of buzz starting in June 2017. The main contribution of the paper was this new nonlinear activation function called a SELU (scaled exponential linear unit). We'll be looking at how this function performs in practice with simple neural nets and CNNs.

  • Sentiment Analysis with LSTMs - In this notebook, we'll be looking at how to apply deep learning techniques to the task of sentiment analysis. Sentiment analysis can be thought of as the exercise of taking a sentence, paragraph, document, or any piece of natural language, and determining whether that text's emotional tone is positive, negative or neutral. We'll look at why RNNs and LSTMs are the most popular choices for handling natural language processing tasks. Be sure to run the following commands to get our word vectors and training data.

    tar -xvzf Data/Sentiment/models.tar.gz
    tar -xvzf Data/Sentiment/training_data.tar.gz
  • Universal Approximation Theorem (Work in Progress) - The Universal Approximation Theorem states that any feed forward neural network with a single hidden layer can model any function. In this notebook, I'll go through a practical example of illustrating why this theorem works, and talk about what the implications are for when you're training your own neural networks. cough Overfitting cough

  • Learning to Model the XOR Function (Work in Progress) - XOR is one of the classic functions we see in machine learning theory textbooks. The significance is that we cannot fit a linear model to this function no matter how hard we try. In this notebook, you'll see proof of that, and you'll see how adding a simple hidden layer to the neural net can solve the problem.

Owner
Adit Deshpande
Engineering at Forward | UCLA CS '19
Adit Deshpande
wgan, wgan2(improved, gp), infogan, and dcgan implementation in lasagne, keras, pytorch

Generative Adversarial Notebooks Collection of my Generative Adversarial Network implementations Most codes are for python3, most notebooks works on C

tjwei 1.5k Dec 16, 2022
Official code for the paper "Self-Supervised Prototypical Transfer Learning for Few-Shot Classification"

Self-Supervised Prototypical Transfer Learning for Few-Shot Classification This repository contains the reference source code and pre-trained models (

EPFL INDY 44 Nov 04, 2022
A New Open-Source Off-road Environment for Benchmark Generalization of Autonomous Driving

A New Open-Source Off-road Environment for Benchmark Generalization of Autonomous Driving Isaac Han, Dong-Hyeok Park, and Kyung-Joong Kim IEEE Access

13 Dec 27, 2022
Identifying Stroke Indicators Using Rough Sets

Identifying Stroke Indicators Using Rough Sets With the spirit of reproducible research, this repository contains all the codes required to produce th

Muhammad Salman Pathan 0 Jun 09, 2022
PyTorch version repo for CSRNet: Dilated Convolutional Neural Networks for Understanding the Highly Congested Scenes

Study-CSRNet-pytorch This is the PyTorch version repo for CSRNet: Dilated Convolutional Neural Networks for Understanding the Highly Congested Scenes

0 Mar 01, 2022
Objective of the repository is to learn and build machine learning models using Pytorch. 30DaysofML Using Pytorch

30 Days Of Machine Learning Using Pytorch Objective of the repository is to learn and build machine learning models using Pytorch. List of Algorithms

Mayur 119 Nov 24, 2022
AdaDM: Enabling Normalization for Image Super-Resolution

AdaDM AdaDM: Enabling Normalization for Image Super-Resolution. You can apply BN, LN or GN in SR networks with our AdaDM. Pretrained models (EDSR*/RDN

58 Jan 08, 2023
A Python Package For System Identification Using NARMAX Models

SysIdentPy is a Python module for System Identification using NARMAX models built on top of numpy and is distributed under the 3-Clause BSD license. N

Wilson Rocha 175 Dec 25, 2022
Official Repo for ICCV2021 Paper: Learning to Regress Bodies from Images using Differentiable Semantic Rendering

[ICCV2021] Learning to Regress Bodies from Images using Differentiable Semantic Rendering Getting Started DSR has been implemented and tested on Ubunt

Sai Kumar Dwivedi 83 Nov 27, 2022
Official Implementation of 'UPDeT: Universal Multi-agent Reinforcement Learning via Policy Decoupling with Transformers' ICLR 2021(spotlight)

UPDeT Official Implementation of UPDeT: Universal Multi-agent Reinforcement Learning via Policy Decoupling with Transformers (ICLR 2021 spotlight) The

hhhusiyi 96 Dec 22, 2022
Specificity-preserving RGB-D Saliency Detection

Specificity-preserving RGB-D Saliency Detection Authors: Tao Zhou, Huazhu Fu, Geng Chen, Yi Zhou, Deng-Ping Fan, and Ling Shao. 1. Preface This reposi

Tao Zhou 35 Jan 08, 2023
Towards Understanding Quality Challenges of the Federated Learning: A First Look from the Lens of Robustness

FL Analysis This repository contains the code and results for the paper "Towards Understanding Quality Challenges of the Federated Learning: A First L

3 Oct 17, 2022
Official repository for: Continuous Control With Ensemble DeepDeterministic Policy Gradients

Continuous Control With Ensemble Deep Deterministic Policy Gradients This repository is the official implementation of Continuous Control With Ensembl

4 Dec 06, 2021
The easiest way to use deep metric learning in your application. Modular, flexible, and extensible. Written in PyTorch.

News December 27: v1.1.0 New loss functions: CentroidTripletLoss and VICRegLoss Mean reciprocal rank + per-class accuracies See the release notes Than

Kevin Musgrave 5k Jan 05, 2023
The offcial repository for 'CharacterBERT and Self-Teaching for Improving the Robustness of Dense Retrievers on Queries with Typos', SIGIR2022

CharacterBERT-DR The offcial repository for CharacterBERT and Self-Teaching for Improving the Robustness of Dense Retrievers on Queries with Typos, Sh

ielab 11 Nov 15, 2022
RefineMask (CVPR 2021)

RefineMask: Towards High-Quality Instance Segmentation with Fine-Grained Features (CVPR 2021) This repo is the official implementation of RefineMask:

Gang Zhang 191 Jan 07, 2023
SMD-Nets: Stereo Mixture Density Networks

SMD-Nets: Stereo Mixture Density Networks This repository contains a Pytorch implementation of "SMD-Nets: Stereo Mixture Density Networks" (CVPR 2021)

Fabio Tosi 115 Dec 26, 2022
DLFlow is a deep learning framework.

DLFlow是一套深度学习pipeline,它结合了Spark的大规模特征处理能力和Tensorflow模型构建能力。利用DLFlow可以快速处理原始特征、训练模型并进行大规模分布式预测,十分适合离线环境下的生产任务。利用DLFlow,用户只需专注于模型开发,而无需关心原始特征处理、pipeline构建、生产部署等工作。

DiDi 152 Oct 27, 2022
用opencv的dnn模块做yolov5目标检测,包含C++和Python两个版本的程序

yolov5-dnn-cpp-py yolov5s,yolov5l,yolov5m,yolov5x的onnx文件在百度云盘下载, 链接:https://pan.baidu.com/s/1d67LUlOoPFQy0MV39gpJiw 提取码:bayj python版本的主程序是main_yolov5.

365 Jan 04, 2023
A PaddlePaddle version of Neural Renderer, refer to its PyTorch version

Neural 3D Mesh Renderer in PadddlePaddle A PaddlePaddle version of Neural Renderer, refer to its PyTorch version Install Run: pip install neural-rende

AgentMaker 13 Jul 12, 2022