Transformers for Machine Learning

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A01=Kenneth Graham
A01=Uday Kamath
A01=Wael Emara
Adjacency Matrix
advanced transformer architectures applications
Attention Layers
Attention Mechanism
Attention Weights
Author_Kenneth Graham
Author_Uday Kamath
Author_Wael Emara
Category=UM
Category=UYQM
computational linguistics
DBNs
Downstream Tasks
Embedding Layer
encoder decoder networks
eq_bestseller
eq_computing
eq_isMigrated=1
eq_nobargain
eq_non-fiction
Highest Logit
LSH
Machine Translation
Masked Tokens
natural language understanding
neural network models
NLP Problem
NLP Task
Parallel Corpora
POS Tag
Positional Encodings
Pre-trained Model
Pre-training Data
Query Matrix
RBMs
self-attention mechanism
Shapley Values
speech recognition systems
Standard Transformer
Temporal Attention
Transformer Block
Unsupervised Pre-training

Product details

  • ISBN 9780367767341
  • Weight: 400g
  • Dimensions: 156 x 234mm
  • Publication Date: 25 May 2022
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Transformers are becoming a core part of many neural network architectures, employed in a wide range of applications such as NLP, Speech Recognition, Time Series, and Computer Vision. Transformers have gone through many adaptations and alterations, resulting in newer techniques and methods. Transformers for Machine Learning: A Deep Dive is the first comprehensive book on transformers.

Key Features:

  • A comprehensive reference book for detailed explanations for every algorithm and techniques related to the transformers.
  • 60+ transformer architectures covered in a comprehensive manner.
  • A book for understanding how to apply the transformer techniques in speech, text, time series, and computer vision.
  • Practical tips and tricks for each architecture and how to use it in the real world.
  • Hands-on case studies and code snippets for theory and practical real-world analysis using the tools and libraries, all ready to run in Google Colab.

The theoretical explanations of the state-of-the-art transformer architectures will appeal to postgraduate students and researchers (academic and industry) as it will provide a single entry point with deep discussions of a quickly moving field. The practical hands-on case studies and code will appeal to undergraduate students, practitioners, and professionals as it allows for quick experimentation and lowers the barrier to entry into the field.

Uday Kamath has spent more than two decades developing analytics products and combines this experience with learning in statistics, optimization, machine learning, bioinformatics, and evolutionary computing. Uday has contributed to many journals, conferences, and books, is the author of books like XAI: An Introduction to Interpretable XAI, Deep Learning for NLP and Speech Recognition, Mastering Java Machine Learning, and Machine Learning: End-to-End guide for Java developers. He held many senior roles: Chief Analytics Officer for Digital Reasoning, Advisor for
Falkonry, and Chief Data Scientist for BAE Systems Applied Intelligence. Uday has many patents and has built commercial products using AI in domains such as compliance, cybersecurity, financial crime, and bioinformatics. Uday currently works as the Chief Analytics Officer for Smarsh. He is responsible for data science, research of analytical products employing deep learning, transformers, explainable AI, and modern techniques in speech and text for the financial domain and healthcare.

Wael Emara has two decades of experience in academia and industry. Wael has a PhD in Computer Engineering and Computer Science with emphasis on machine learning and artificial intelligence. His technical background and research spans signal and image processing, computer vision, medical imaging, social media analytics, machine learning, and natural language processing. Wael has 10 research publications in various machine learning topics and he is active in the technical community in the greater New York area. Wael currently works as a Senior Research Engineer for Digital Reasoning where he is doing research on state-of-the-art artificial intelligence NLP systems.

Kenneth L. Graham has two decades experience solving quantitative problems in multiple domains, including Monte Carlo simulation, NLP, anomaly detection, cybersecurity, and behavioral profiling. For the past nine years, he has focused on building scalable solutions in NLP for government and industry, including entity coreference resolution, text classification, active learning, and temporal normalization. Kenneth currently works at Smarsh as a Principal Research Engineer, researching how to move state-of the-art NLP methods out of research and into production. Kenneth has five patents for his work in natural language processing, seven research publications, and a Ph.D. in Condensed Matter Physics.

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