Please Enter ISBN, Title or Author’s Name
Compare Textbook Prices with Amazon
Compare Textbook Prices with Chegg
Compare Textbook Prices with AbeBooks
Compare Textbook Prices with Vitalsource
Compare Textbook Prices with Valorebooks
and more...

Transfer Learning for Natural Language Processing

Compare Textbook Prices for Transfer Learning for Natural Language Processing  ISBN 9781617297267 by Azunre, Paul
Author: Azunre, Paul
ISBN:1617297267
ISBN-13: 9781617297267
List Price: $36.73 (up to 41% savings)
Prices shown are the lowest from
the top textbook retailers.

View all Prices by Retailer

Details about Transfer Learning for Natural Language Processing:

Build custom NLP models in record time by adapting pre-trained machine learning models to solve specialized problems. Summary In Transfer Learning for Natural Language Processing you will learn:     Fine tuning pretrained models with new domain data     Picking the right model to reduce resource usage     Transfer learning for neural network architectures     Generating text with generative pretrained transformers     Cross-lingual transfer learning with BERT     Foundations for exploring NLP academic literature Training deep learning NLP models from scratch is costly, time-consuming, and requires massive amounts of data. In Transfer Learning for Natural Language Processing, DARPA researcher Paul Azunre reveals cutting-edge transfer learning techniques that apply customizable pretrained models to your own NLP architectures. You’ll learn how to use transfer learning to deliver state-of-the-art results for language comprehension, even when working with limited label data. Best of all, you’ll save on training time and computational costs. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the technology Build custom NLP models in record time, even with limited datasets! Transfer learning is a machine learning technique for adapting pretrained machine learning models to solve specialized problems. This powerful approach has revolutionized natural language processing, driving improvements in machine translation, business analytics, and natural language generation. About the book Transfer Learning for Natural Language Processing teaches you to create powerful NLP solutions quickly by building on existing pretrained models. This instantly useful book provides crystal-clear explanations of the concepts you need to grok transfer learning along with hands-on examples so you can practice your new skills immediately. As you go, you’ll apply state-of-the-art transfer learning methods to create a spam email classifier, a fact checker, and more real-world applications. What's inside     Fine tuning pretrained models with new domain data     Picking the right model to reduce resource use     Transfer learning for neural network architectures     Generating text with pretrained transformers About the reader For machine learning engineers and data scientists with some experience in NLP. About the author Paul Azunre holds a PhD in Computer Science from MIT and has served as a Principal Investigator on several DARPA research programs. Table of Contents PART 1 INTRODUCTION AND OVERVIEW 1 What is transfer learning? 2 Getting started with baselines: Data preprocessing 3 Getting started with baselines: Benchmarking and optimization PART 2 SHALLOW TRANSFER LEARNING AND DEEP TRANSFER LEARNING WITH RECURRENT NEURAL NETWORKS (RNNS) 4 Shallow transfer learning for NLP 5 Preprocessing data for recurrent neural network deep transfer learning experiments 6 Deep transfer learning for NLP with recurrent neural networks PART 3 DEEP TRANSFER LEARNING WITH TRANSFORMERS AND ADAPTATION STRATEGIES 7 Deep transfer learning for NLP with the transformer and GPT 8 Deep transfer learning for NLP with BERT and multilingual BERT 9 ULMFiT and knowledge distillation adaptation strategies 10 ALBERT, adapters, and multitask adaptation strategies 11 Conclusions

Need Unknown tutors? Start your search below:
Need Unknown course notes? Start your search below: