Official repository of my book: "Deep Learning with PyTorch Step-by-Step: A Beginner's Guide"

Overview

Deep Learning with PyTorch Step-by-Step

This is the official repository of my book "Deep Learning with PyTorch Step-by-Step". Here you will find one Jupyter notebook for every chapter in the book.

Each notebook contains all the code shown in its corresponding chapter, and you should be able to run its cells in sequence to get the same outputs as shown in the book. I strongly believe that being able to reproduce the results brings confidence to the reader.

There are three options for you to run the Jupyter notebooks:

Google Colab

You can easily load the notebooks directly from GitHub using Colab and run them using a GPU provided by Google. You need to be logged in a Google Account of your own.

You can go through the chapters already using the links below:

Part I - Fundamentals

Part II - Computer Vision

Part III - Sequences

Part IV - Natural Language Processing

Binder

You can also load the notebooks directly from GitHub using Binder, but the process is slightly different. It will create an environment on the cloud and allow you to access Jupyter's Home Page in your browser, listing all available notebooks, just like in your own computer.

If you make changes to the notebooks, make sure to download them, since Binder does not keep the changes once you close it.

You can start your environment on the cloud right now using the button below:

Binder

Local Installation

This option will give you more flexibility, but it will require more effort to set up. I encourage you to try setting up your own environment. It may seem daunting at first, but you can surely accomplish it following seven easy steps:

1 - Anaconda

If you don’t have Anaconda’s Individual Edition installed yet, that would be a good time to do it - it is a very handy way to start - since it contains most of the Python libraries a data scientist will ever need to develop and train models.

Please follow the installation instructions for your OS:

Make sure you choose Python 3.X version since Python 2 was discontinued in January 2020.

2 - Conda (Virtual) Environments

Virtual environments are a convenient way to isolate Python installations associated with different projects.

First, you need to choose a name for your environment :-) Let’s call ours pytorchbook (or anything else you find easier to remember). Then, you need to open a terminal (in Ubuntu) or Anaconda Prompt (in Windows or macOS) and type the following command:

conda create -n pytorchbook anaconda

The command above creates a conda environment named pytorchbook and includes all anaconda packages in it (time to get a coffee, it will take a while...). If you want to learn more about creating and using conda environments, please check Anaconda’s Managing Environments user guide.

Did it finish creating the environment? Good! It is time to activate it, meaning, making that Python installation the one to be used now. In the same terminal (or Anaconda Prompt), just type:

conda activate pytorchbook

Your prompt should look like this (if you’re using Linux)...

(pytorchbook)$

or like this (if you’re using Windows):

(pytorchbook)C:\>

Done! You are using a brand new conda environment now. You’ll need to activate it every time you open a new terminal or, if you’re a Windows or macOS user, you can open the corresponding Anaconda Prompt (it will show up as Anaconda Prompt (pytorchbook), in our case), which will have it activated from start.

IMPORTANT: From now on, I am assuming you’ll activate the pytorchbook environment every time you open a terminal / Anaconda Prompt. Further installation steps must be executed inside the environment.

3 - PyTorch

It is time to install the star of the show :-) We can go straight to the Start Locally section of its website and it will automatically select the options that best suit your local environment and it will show you the command to run.

Your choices should look like:

  • PyTorch Build: "Stable"
  • Your OS: your operating system
  • Package: "Conda"
  • Language: "Python"
  • CUDA: "None" if you don't have a GPU, or the latest version (e.g. "10.1"), if you have a GPU.

The installation command will be shown right below your choices, so you can copy it. If you have a Windows computer and no GPU, you'd have to run the following command in your Anaconda Prompt (pytorchbook):

(pytorchbook) C:\> conda install pytorch torchvision cpuonly -c pytorch

4 - TensorBoard

TensorBoard is a powerful tool and we can use it even if we are developing models in PyTorch. Luckily, you don’t need to install the whole TensorFlow to get it, you can easily install TensorBoard alone using conda. You just need to run this command in your terminal or Anaconda Prompt (again, after activating the environment):

(pytorchbook)C:\> conda install -c conda-forge tensorboard

5 - GraphViz and TorchViz (optional)

This step is optional, mostly because the installation of GraphViz can be challenging sometimes (especially on Windows). If, for any reason, you do not succeed in installing it correctly, or if you decide to skip this installation step, you will still be able to execute the code in this book (except for a couple of cells that generate images of a model’s structure in the Dynamic Computation Graph section of Chapter 1).

We need to install GraphViz to be able to use TorchViz, a neat package that allows us to visualize a model’s structure. Please check the installation instructions for your OS.

If you are using Windows, please use the installer at GraphViz's Windows Package. You also need to add GraphViz to the PATH (environment variable) in Windows. Most likely, you can find GraphViz executable file at C:\ProgramFiles(x86)\Graphviz2.38\bin. Once you found it, you need to set or change the PATH accordingly, adding GraphViz's location to it. For more details on how to do that, please refer to How to Add to Windows PATH Environment Variable.

For additional information, you can also check the How to Install Graphviz Software guide.

If you installed GraphViz successfully, you can install the torchviz package. This package is not part of Anaconda Distribution Repository and is only available at PyPI , the Python Package Index, so we need to pip install it.

Once again, open a terminal or Anaconda Prompt and run this command (just once more: after activating the environment):

(pytorchbook)C:\> pip install torchviz

6 - Git

It is way beyond the scope of this guide to introduce you to version control and its most popular tool: git. If you are familiar with it already, great, you can skip this section altogether!

Otherwise, I’d recommend you to learn more about it, it will definitely be useful for you later down the line. In the meantime, I will show you the bare minimum, so you can use git to clone this repository containing all code used in this book - so you have your own, local copy of it and can modify and experiment with it as you please.

First, you need to install it. So, head to its downloads page and follow instructions for your OS. Once installation is complete, please open a new terminal or Anaconda Prompt (it's OK to close the previous one). In the new terminal or Anaconda Prompt, you should be able to run git commands. To clone this repository, you only need to run:

(pytorchbook)C:\> git clone https://github.com/dvgodoy/PyTorchStepByStep.git

The command above will create a PyTorchStepByStep folder which contains a local copy of everything available on this GitHub’s repository.

7 - Jupyter

After cloning the repository, navigate to the PyTorchStepByStep and, once inside it, you only need to start Jupyter on your terminal or Anaconda Prompt:

(pytorchbook)C:\> jupyter notebook

This will open your browser up and you will see Jupyter's Home Page containing this repository's notebooks and code.

Congratulations! You are ready to go through the chapters' notebooks!

Owner
Daniel Voigt Godoy
Data scientist, developer, teacher and writer. Author of "Deep Learning with PyTorch Step-by-Step: A Beginner's Guide".
Daniel Voigt Godoy
Deploy optimized transformer based models on Nvidia Triton server

Deploy optimized transformer based models on Nvidia Triton server

Lefebvre Sarrut Services 1.2k Jan 05, 2023
Config files for my GitHub profile.

Canalyst Candas Data Science Library Name Canalyst Candas Description Built by a former PM / analyst to give anyone with a little bit of Python knowle

Canalyst Candas 13 Jun 24, 2022
OntoProtein: Protein Pretraining With Ontology Embedding

OntoProtein This is the implement of the paper "OntoProtein: Protein Pretraining With Ontology Embedding". OntoProtein is an effective method that mak

ZJUNLP 80 Dec 14, 2022
A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation

Segnet is deep fully convolutional neural network architecture for semantic pixel-wise segmentation. This is implementation of http://arxiv.org/pdf/15

Pradyumna Reddy Chinthala 190 Dec 15, 2022
Learning to Segment Instances in Videos with Spatial Propagation Network

Learning to Segment Instances in Videos with Spatial Propagation Network This paper is available at the 2017 DAVIS Challenge website. Check our result

Jingchun Cheng 145 Sep 28, 2022
Styled Handwritten Text Generation with Transformers (ICCV 21)

⚡ Handwriting Transformers [PDF] Ankan Kumar Bhunia, Salman Khan, Hisham Cholakkal, Rao Muhammad Anwer, Fahad Shahbaz Khan & Mubarak Shah Abstract: We

Ankan Kumar Bhunia 85 Dec 22, 2022
RepMLP: Re-parameterizing Convolutions into Fully-connected Layers for Image Recognition

RepMLP: Re-parameterizing Convolutions into Fully-connected Layers for Image Recognition (PyTorch) Paper: https://arxiv.org/abs/2105.01883 Citation: @

260 Jan 03, 2023
Semi-Supervised Semantic Segmentation with Cross-Consistency Training (CCT)

Semi-Supervised Semantic Segmentation with Cross-Consistency Training (CCT) Paper, Project Page This repo contains the official implementation of CVPR

Yassine 344 Dec 29, 2022
CNN Based Meta-Learning for Noisy Image Classification and Template Matching

CNN Based Meta-Learning for Noisy Image Classification and Template Matching Introduction This master thesis used a few-shot meta learning approach to

Kumar Manas 2 Dec 09, 2021
Meta Self-learning for Multi-Source Domain Adaptation: A Benchmark

Meta Self-Learning for Multi-Source Domain Adaptation: A Benchmark Project | Arxiv | YouTube | | Abstract In recent years, deep learning-based methods

CVSM Group - email: <a href=[email protected]"> 188 Dec 12, 2022
Distributing Deep Learning Hyperparameter Tuning for 3D Medical Image Segmentation

DistMIS Distributing Deep Learning Hyperparameter Tuning for 3D Medical Image Segmentation. DistriMIS Distributing Deep Learning Hyperparameter Tuning

HiEST 2 Sep 09, 2022
Contextual Attention Network: Transformer Meets U-Net

Contextual Attention Network: Transformer Meets U-Net Contexual attention network for medical image segmentation with state of the art results on skin

Reza Azad 67 Nov 28, 2022
Nvdiffrast - Modular Primitives for High-Performance Differentiable Rendering

Nvdiffrast – Modular Primitives for High-Performance Differentiable Rendering Modular Primitives for High-Performance Differentiable Rendering Samuli

NVIDIA Research Projects 675 Jan 06, 2023
PyTorch implementation of paper “Unbiased Scene Graph Generation from Biased Training”

A new codebase for popular Scene Graph Generation methods (2020). Visualization & Scene Graph Extraction on custom images/datasets are provided. It's also a PyTorch implementation of paper “Unbiased

Kaihua Tang 824 Jan 03, 2023
A JAX-based research framework for writing differentiable numerical simulators with arbitrary discretizations

jaxdf - JAX-based Discretization Framework Overview | Example | Installation | Documentation ⚠️ This library is still in development. Breaking changes

UCL Biomedical Ultrasound Group 65 Dec 23, 2022
Deep Learning and Reinforcement Learning Library for Scientists and Engineers 🔥

TensorLayer is a novel TensorFlow-based deep learning and reinforcement learning library designed for researchers and engineers. It provides an extens

TensorLayer Community 7.1k Dec 27, 2022
Protect against subdomain takeover

domain-protect scans Amazon Route53 across an AWS Organization for domain records vulnerable to takeover deploy to security audit account scan your en

OVO Technology 0 Nov 17, 2022
Pytorch implementation of "Neural Wireframe Renderer: Learning Wireframe to Image Translations"

Neural Wireframe Renderer: Learning Wireframe to Image Translations Pytorch implementation of ideas from the paper Neural Wireframe Renderer: Learning

Yuan Xue 7 Nov 14, 2022
FID calculation with proper image resizing and quantization steps

clean-fid: Fixing Inconsistencies in FID Project | Paper The FID calculation involves many steps that can produce inconsistencies in the final metric.

Gaurav Parmar 606 Jan 06, 2023
GANfolk: Using AI to create portraits of fictional people to sell as NFTs

GANfolk are AI-generated renderings of fictional people. Each image in the collection was created by a pair of Generative Adversarial Networks (GANs) with names and backstories also created with AI.

Robert A. Gonsalves 32 Dec 02, 2022