Book Image

Deep Learning with PyTorch Lightning

By : Kunal Sawarkar
3.5 (2)
Book Image

Deep Learning with PyTorch Lightning

3.5 (2)
By: Kunal Sawarkar

Overview of this book

Building and implementing deep learning (DL) is becoming a key skill for those who want to be at the forefront of progress.But with so much information and complex study materials out there, getting started with DL can feel quite overwhelming. Written by an AI thought leader, Deep Learning with PyTorch Lightning helps researchers build their first DL models quickly and easily without getting stuck on the complexities. With its help, you’ll be able to maximize productivity for DL projects while ensuring full flexibility – from model formulation to implementation. Throughout this book, you’ll learn how to configure PyTorch Lightning on a cloud platform, understand the architectural components, and explore how they are configured to build various industry solutions. You’ll build a neural network architecture, deploy an application from scratch, and see how you can expand it based on your specific needs, beyond what the framework can provide. In the later chapters, you’ll also learn how to implement capabilities to build and train various models like Convolutional Neural Nets (CNN), Natural Language Processing (NLP), Time Series, Self-Supervised Learning, Semi-Supervised Learning, Generative Adversarial Network (GAN) using PyTorch Lightning. By the end of this book, you’ll be able to build and deploy DL models with confidence.
Table of Contents (15 chapters)
1
Section 1: Kickstarting with PyTorch Lightning
6
Section 2: Solving using PyTorch Lightning
11
Section 3: Advanced Topics

Chapter 9: Deploying and Scoring Models

Without knowing it, you may have already experienced some of the models we have covered so far in this book. Recall how your photos app can automatically detect faces in your picture collections or group all your pictures with a particular friend together. That is nothing more than an image recognition Deep Learning model in action (the likes of Convolutional Neural Networks (CNNs)), or you might be familiar with Alexa listening to your voice or Google autocompleting your text while searching for a query. Those are NLP-based Deep Learning models making things easier for us. Or you might have seen some e-shopping apps or social media sites suggesting captions for a product; that is semi-supervised learning in its full glory! But how do you take a model that you have built in a Python Jupyter notebook and make it consumable on devices, be it a speaker, a phone, an app, or a portal? Without application integration, a trained model remains a statistical...