1st Edition

Multilingual Artificial Intelligence

By Peng Wang, Pete Smith Copyright 2025
178 Pages 11 B/W Illustrations
by Routledge

178 Pages 11 B/W Illustrations
by Routledge

178 Pages 11 B/W Illustrations
by Routledge

Multilingual Artificial Intelligence is a guide for non-computer science specialists and learners looking to explore the implementation of AI technologies to solve real-life problems involving language data. Focusing on multilingual, multicultural, pre-trained large language models and their practical use through fine-tuning and prompt engineering, Wang and Smith demonstrate how to apply this... Read more

List of Figures

List of Tables

Preface

Part One: Fundamentals of multilingual artificial intelligence

Chapter 1: Multilingual AI in a mathematical theory of communication

Chapter 2: Data landscape for multilingual AI

Chapter 3: Basic techniques to achieve artificial intelligence

Chapter 4: Symbolic meaning and vector semantics

Part Two: Large Language models: theories and applications

Chapter 5: Multilingual large language models, fine-tuning, and prompt engineering

Chapter 6: Multilingual and cross-lingual information retrieval

Chapter 7: Augmenting LLM performance with human knowledge

Part Three: Culture and multicultual AI

Chapter 8: Multilingual AI in practice

Chapter 9: Multicultural AI

Chapter 10: Multilingual and multicultural AI—pedagogy, proficiency, policy, and predictions

References

Index

Biography

Peng Wang is an IT analyst and the chair of the Multilingual AI Track. She is the co-author of Machine Learning in Translation.

Pete Smith is Professor of Modern Languages at the University of Texas Arlington, where he also serves as Chief Analytics and Data Officer.