I will implement Fastai in each projects present in this repository.

Overview

DEEP LEARNING FOR CODERS WITH FASTAI AND PYTORCH

The repository contains a list of the projects which I have worked on while reading the book Deep Learning For Coders with Fastai and PyTorch.

📚 NOTEBOOKS:

1. INTRODUCTION

  • The Introduction notebook is a comprehensive notebook as it contains a list of projects such as Cat and Dog Classification, Semantic Segmentation, Sentiment Classification, Tabular Classification and Recommendation System.

2. MODEL PRODUCTION

  • The BearDetector notebook contains all the dependencies for a complete Image Classification project.

3. TRAINING A CLASSIFIER

  • The DigitClassifier notebook contains all the dependencies required for Image Classification project from scratch.

4. IMAGE CLASSIFICATION

  • The Image Classification notebook contains all the dependencies for Image Classification such as getting image data ready for modeling i.e presizing and data block summary and for fitting the model i.e learning rate finder, unfreezing, discriminative learning rates, setting the number of epochs and using deeper architectures. It has explanations of cross entropy loss function as well.

5. MULTILABEL CLASSIFICATION AND REGRESSION

  • The Multilabel Classification notebook contains all the dependencies required to understand Multilabel Classification. It contains the explanations of initializing DataBlock and DataLoaders. The Regression notebook contains all the dependencies required to understand Image Regression.

6. ADVANCED CLASSIFICATION

  • The Imagenette Classification notebook contains all the dependencies required to train a state of art machine learning model in computer vision whether from scratch or using transfer learning. It contains explanations and implementation of Normalization, Progressive Resizing, Test Time Augmentation, Mixup Augmentation and Label Smoothing.

7. COLLABORATIVE FILTERING

  • The Collaborative Filtering notebook contains all the dependencies required to build a Recommendation System. It presents how gradient descent can learn intrinsic factors or biases about items from a history of ratings which then gives information about the data.

8. TABULAR MODELING

  • The Tabular Model notebook contains all the dependencies required for Tabular Modeling. It presents the detailed explanations of two approaches to Tabular Modeling: Decision Tree Ensembles and Neural Networks.

9. NATURAL LANGUAGE PROCESSING

  • The NLP notebook contains all the dependencies required build Language Model that can generate texts and a Classifier Model that determines whether a review is positive or negative. It presents the state of art Classifier Model which is build using a pretrained language model and fine tuned it to the corpus of task. Then the Encoder model is used for classification.

10. DATA MUNGING

  • The DataMunging notebook contains all the dependencies required to implement mid level API of Fast.ai in Natural Language Processing and Computer Vision which provides greater flexibility to apply transformations on data items.

11. LANGUAGE MODEL FROM SCRATCH

  • The LanguageModel notebook contains all the dependencies that is inside AWD-LSTM architecture for Text Classification. It presents the implementation of Language Model using simple Linear Model, Recurrent Neural Network, Long Short Term Memory, Dropout Regularization and Activation Regularization.

12. CONVOLUTIONAL NEURAL NETWORK

  • The CNN notebook contains all the dependencies required to understand Convolutional Neural Networks. Convolutions are just a type of matrix multiplication with two constraints on the weight matrix: some elements are always zero and some elements are tied or forced to always have the same value.

13. RESIDUAL NETWORKS

  • The ResNets notebook contains all the dependencies required to understand the implementation of skip connections which allow deeper models to be trained. ResNet is the pretrained model when using Transfer Learning.

14. ARCHITECTURE DETAILS

  • The Architecture Details notebook contains all the dependencies required to create a complete state of art computer vision models. It presents some aspects of natural language processing as well.

15. TRAINING PROCESS

  • The Training notebook contains all the dependencies required to create a training loop and explored variants of Stochastic Gradient Descent.

16. NEURAL NETWORK FOUNDATIONS

  • The Neural Foundations notebook contains all the dependencies required to understand the foundations of deep learning, begining with matrix multiplication and moving on to implementing the forward and backward passes of a neural net from scratch.

17. CNN INTERPRETATION WITH CAM

  • The CNN Interpretation notebook presents the implementation of Class Activation Maps in model interpretation. Class activation maps give insights into why a model predicted a certain result by showing the areas of images that were most responsible for a given prediction.

18. FASTAI LEARNER FROM SCRATCH

  • The Fastai Learner notebook contains all the dependencies to understand the key concepts of Fastai.

19. CHEST X-RAYS CLASSIFICATION

20. TRANSFORMERS MODEL

Owner
Thinam Tamang
Machine Learning and Deep Learning
Thinam Tamang
Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models"

Introduction Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models". In this work, we demonstrate that existi

Wei-Cheng Tseng 7 Nov 01, 2022
Cmsc11 arcade - Final Project for CMSC11

cmsc11_arcade Final Project for CMSC11 Developers: Limson, Mark Vincent Peñafiel

Gregory 1 Jan 18, 2022
[CVPR 2022 Oral] MixFormer: End-to-End Tracking with Iterative Mixed Attention

MixFormer The official implementation of the CVPR 2022 paper MixFormer: End-to-End Tracking with Iterative Mixed Attention [Models and Raw results] (G

Multimedia Computing Group, Nanjing University 235 Jan 03, 2023
DECAF: Deep Extreme Classification with Label Features

DECAF DECAF: Deep Extreme Classification with Label Features @InProceedings{Mittal21, author = "Mittal, A. and Dahiya, K. and Agrawal, S. and Sain

46 Nov 06, 2022
Code for our TKDE paper "Understanding WeChat User Preferences and “Wow” Diffusion"

wechat-wow-analysis Understanding WeChat User Preferences and “Wow” Diffusion. Fanjin Zhang, Jie Tang, Xueyi Liu, Zhenyu Hou, Yuxiao Dong, Jing Zhang,

18 Sep 16, 2022
PyTorch implementation of "Dataset Knowledge Transfer for Class-Incremental Learning Without Memory" (WACV2022)

Dataset Knowledge Transfer for Class-Incremental Learning Without Memory [Paper] [Slides] Summary Introduction Installation Reproducing results Citati

Habib Slim 5 Dec 05, 2022
The repository contains source code and models to use PixelNet architecture used for various pixel-level tasks. More details can be accessed at .

PixelNet: Representation of the pixels, by the pixels, and for the pixels. We explore design principles for general pixel-level prediction problems, f

Aayush Bansal 196 Aug 10, 2022
This is an official implementation of "Polarized Self-Attention: Towards High-quality Pixel-wise Regression"

Polarized Self-Attention: Towards High-quality Pixel-wise Regression This is an official implementation of: Huajun Liu, Fuqiang Liu, Xinyi Fan and Don

DeLightCMU 212 Jan 08, 2023
UniLM AI - Large-scale Self-supervised Pre-training across Tasks, Languages, and Modalities

Pre-trained (foundation) models across tasks (understanding, generation and translation), languages (100+ languages), and modalities (language, image, audio, vision + language, audio + language, etc.

Microsoft 7.6k Jan 01, 2023
Unofficial PyTorch implementation of Attention Free Transformer (AFT) layers by Apple Inc.

aft-pytorch Unofficial PyTorch implementation of Attention Free Transformer's layers by Zhai, et al. [abs, pdf] from Apple Inc. Installation You can i

Rishabh Anand 184 Dec 12, 2022
Thermal Control of Laser Powder Bed Fusion using Deep Reinforcement Learning

This repository is the implementation of the paper "Thermal Control of Laser Powder Bed Fusion Using Deep Reinforcement Learning", linked here. The project makes use of the Deep Reinforcement Library

BaratiLab 11 Dec 27, 2022
Predict halo masses from simulations via graph neural networks

HaloGraphNet Predict halo masses from simulations via Graph Neural Networks. Given a dark matter halo and its galaxies, creates a graph with informati

Pablo Villanueva Domingo 20 Nov 15, 2022
Out-of-Town Recommendation with Travel Intention Modeling (AAAI2021)

TrainOR_AAAI21 This is the official implementation of our AAAI'21 paper: Haoran Xin, Xinjiang Lu, Tong Xu, Hao Liu, Jingjing Gu, Dejing Dou, Hui Xiong

Jack Xin 13 Oct 19, 2022
GrabGpu_py: a scripts for grab gpu when gpu is free

GrabGpu_py a scripts for grab gpu when gpu is free. WaitCondition: gpu_memory

tianyuluan 3 Jun 18, 2022
Randomizes the warps in a stock pokeemerald repo.

pokeemerald warp randomizer Randomizes the warps in a stock pokeemerald repo. Usage Instructions Install networkx and matplotlib via pip3 or similar.

Max Thomas 6 Mar 17, 2022
The codes reproduce the figures and statistics in the paper, "Controlling for multiple covariates," by Mark Tygert.

The accompanying codes reproduce all figures and statistics presented in "Controlling for multiple covariates" by Mark Tygert. This repository also pr

Meta Research 1 Dec 02, 2021
Rafael Project- Classifying rockets to different types using data science algorithms.

Rocket-Classify Rafael Project- Classifying rockets to different types using data science algorithms. In this project we received data base with data

Hadassah Engel 5 Sep 18, 2021
PyTorch implementation of our ICCV2021 paper: StructDepth: Leveraging the structural regularities for self-supervised indoor depth estimation

StructDepth PyTorch implementation of our ICCV2021 paper: StructDepth: Leveraging the structural regularities for self-supervised indoor depth estimat

SJTU-ViSYS 112 Nov 28, 2022
A novel pipeline framework for multi-hop complex KGQA task. About the paper title: Improving Multi-hop Embedded Knowledge Graph Question Answering by Introducing Relational Chain Reasoning

Rce-KGQA A novel pipeline framework for multi-hop complex KGQA task. This framework mainly contains two modules, answering_filtering_module and relati

金伟强 -上海大学人工智能小渣渣~ 16 Nov 18, 2022
Aspect-Sentiment-Multiple-Opinion Triplet Extraction (NLPCC 2021)

The code and data for the paper "Aspect-Sentiment-Multiple-Opinion Triplet Extraction" Requirements Python 3.6.8 torch==1.2.0 pytorch-transformers==1.

慢半拍 5 Jul 02, 2022