The De Gruyter Handbook of Artificial Intelligence, Identity and Technology Studies


Book Description

The De Gruyter Handbook of Artificial Intelligence, Identity and Technology Studies examines the relationship of the social sciences to artificial intelligence, surveying the various convergences and divergences between science and technology studies on the one hand and identity transformations on the other. It provides representative coverage of all aspects of the AI revolution, from employment to education to military warfare, impacts on public policy and governance and the future of ethics. How is AI currently transforming social, economic, cultural and psychological processes? This handbook answers these questions by looking at recent developments in supercomputing, deep learning and neural networks, including such topics as AI mobile technology, social robotics, big data and digital research. It focuses especially on mechanisms of identity by defining AI as a new context for self-exploration and social relations and analyzing phenomena such as race, ethnicity and gender politics in human-machine interfaces.




The De Gruyter Handbook of Robots in Society and Culture


Book Description

The De Gruyter Handbook of Robots in Society and Culture provides a comprehensive discussion of how social robots take form, function, and meaning for individuals, relationships, cultures, and societies. Through a path-breaking integration of perspectives coming from sociology, communication and media, psychology, cognitive neuroscience, anthropology, political science, and science and technology studies, it focuses on the critical and social meaning of present developments in social robotic technologies. This book looks at artificial agents – from voice-based assistants to humanoid robots— as their use transforms private and public contexts and gives rise to both new possibilities and new perils for human being and becoming, organizations as well as social structures and institutions. The handbook traces the consequences and key problems of social robotics across broad social contexts in both public and political as well as domestic and intimate spaces. Further, it attends carefully to the implications of social robotics for various human identity groups, including those based on gender, ethnicity, culture, class, ability, and age. Deep attention to interdisciplinarity, inclusivity, ethics, and socio-cultural futures serves as the guiding inspiration behind each contribution within this handbook.




The De Gruyter Handbook of Automated Futures


Book Description

How does automation affect us, our environment, and our imaginations? What actions should we take in response to automation? Beyond grand narratives and technology-driven visions of the future, what more can automation offer? With these questions in mind, The De Gruyter Handbook of Automated Futures provides a framework for thinking about and implementing automation differently. It consolidates automated futures as an inter- and transdisciplinary research field, embedding the imaginaries, interactions, and impacts of automation technology within their social, historical, societal, cultural, and political contexts. Promoting a critical yet constructive and engaging agenda, the handbook invites readers to collaborate with rather than resist automation agendas. It does so by pushing the agenda for social science, humanities and design beyond merely assessing and evaluating existing technologies. Instead, the handbook demonstrates how the humanities and social sciences are essential to the design and governance of sustainable sociotechnical systems. Methodologically, the handbook is underpinned by a pedagogical approach to staging co-learning and co-creation of automated futures with, rather than simply for, people. In this way, the handbook encourages readers to explore new and alternative modes of research, fostering a deeper engagement with the evolving landscape of automation.




Artificial Intelligence and Its Contexts


Book Description

This book offers a comprehensive approach to the question of how artificial intelligence (AI) impacts politics, economy, and the society today. In this view, it is quintessential for understanding the complex nature of AI and its role in today’s world. The book has been divided into three parts. Part one is devoted to the question of how AI will be used for security and defense purposes, including combat in war zones. Part two looks at the value added of AI and machine learning for decision-making in the fields of politics and business. Part three consists of case studies—covering the EU, the USA, Saudi Arabia, Portugal, and Poland—that discuss how AI is being used in the realms of politics, security and defense. The discussion in the book opens with the question of the nature of AI, as well as of ethics and the use of AI in combat. Subsequently, the argument covers issues as diverse as the militarization of AI, the use of AI in strategic studies and military strategy design. These topics are followed by an insight into AI and strategic communication (StratCom), including disinformation, as well as into AI and finance. The case-studies included in part 3 of the book offer a captivating overview of how AI is being employed to stimulate growth and development, to promote data- and evidence-driven policy-making, to enable efficient and inclusive digital transformation and other related issues. Written by academics and practitioners in an academically sound, yet approachable manner, this volume queries issues and topics that form the thrust of processes that transform world politics, economics and society. As such, this volume will serve as the primer for students, researchers, lectures and other professionals who seek to understand and engage with the variety of issues AI implicates.




Generative AI and LLMs


Book Description

Generative artificial intelligence (GAI) and large language models (LLM) are machine learning algorithms that operate in an unsupervised or semi-supervised manner. These algorithms leverage pre-existing content, such as text, photos, audio, video, and code, to generate novel content. The primary objective is to produce authentic and novel material. In addition, there exists an absence of constraints on the quantity of novel material that they are capable of generating. New material can be generated through the utilization of Application Programming Interfaces (APIs) or natural language interfaces, such as the ChatGPT developed by Open AI and Bard developed by Google. The field of generative artificial intelligence (AI) stands out due to its unique characteristic of undergoing development and maturation in a highly transparent manner, with its progress being observed by the public at large. The current era of artificial intelligence is being influenced by the imperative to effectively utilise its capabilities in order to enhance corporate operations. Specifically, the use of large language model (LLM) capabilities, which fall under the category of Generative AI, holds the potential to redefine the limits of innovation and productivity. However, as firms strive to include new technologies, there is a potential for compromising data privacy, long-term competitiveness, and environmental sustainability. This book delves into the exploration of generative artificial intelligence (GAI) and LLM. It examines the historical and evolutionary development of generative AI models, as well as the challenges and issues that have emerged from these models and LLM. This book also discusses the necessity of generative AI-based systems and explores the various training methods that have been developed for generative AI models, including LLM pretraining, LLM fine-tuning, and reinforcement learning from human feedback. Additionally, it explores the potential use cases, applications, and ethical considerations associated with these models. This book concludes by discussing future directions in generative AI and presenting various case studies that highlight the applications of generative AI and LLM.







Toward Artificial General Intelligence


Book Description




Handbook of Artificial Intelligence


Book Description

Artificial Intelligence (AI) is an interdisciplinary science with multiple approaches to solve a problem. Advancements in machine learning (ML) and deep learning are creating a paradigm shift in virtually every tech industry sector. This handbook provides a quick introduction to concepts in AI and ML. The sequence of the book contents has been set in a way to make it easy for students and teachers to understand relevant concepts with a practical orientation. This book starts with an introduction to AI/ML and its applications. Subsequent chapters cover predictions using ML, and focused information about AI/ML algorithms for different industries (health care, agriculture, autonomous driving, image classification and segmentation, SEO, smart gadgets and security). Each industry use-case demonstrates a specific aspect of AI/ML techniques that can be used to create pipelines for technical solutions such as data processing, object detection, classification and more. Additional features of the book include a summary and references in every chapter, and several full-color images to visualize concepts for easy understanding. It is an ideal handbook for both students and instructors in undergraduate level courses in artificial intelligence, data science, engineering and computer science who are required to understand AI/ML in a practical context. Audience Students and instructors in artificial intelligence, data science, engineering and computer science courses




Demystifying Artificial Intelligence


Book Description

Readable as a whole or by chapter, this book is intended for business practitioners that have a bachelor or master's degree outside of the field of computer science or AI but still want to go deeper in their understanding of the AI technologies, their applicability and limitations. Such reading can also be useful as a general introduction for students taking an MBA class, or similar. The reader will find in this book a solid overview of the different AI technologies supporting systems that search, plan, reason, learn, adapt, understand or interact. All these terms are demystified in the book. The book covers the two traditional paradigms in AI: on one side, data-driven AI systems, that learn and perform by ingesting millions of data points into machine learning algorithms, and on the other side the consciously modelled AI systems, known as "symbolic AI" systems, that explicitly use symbolic representations. Rather than opposing those two paradigms, the book also shows how those different fields can complement each other and can be combined for even richer applications. Chapters are all structured in a pragmatic way that answers common sense questions about the why, what, how and limitations. The theory is illustrated with 22 real-world examples from the industry, giving altogether a solid understanding of AI concepts, applicability, and limitations.




Digital Roots


Book Description

As media environments and communication practices evolve over time, so do theoretical concepts. This book analyzes some of the most well-known and fiercely discussed concepts of the digital age from a historical perspective, showing how many of them have pre-digital roots and how they have changed and still are constantly changing in the digital era. Written by leading authors in media and communication studies, the chapters historicize 16 concepts that have become central in the digital media literature, focusing on three main areas. The first part, Technologies and Connections, historicises concepts like network, media convergence, multimedia, interactivity and artificial intelligence. The second one is related to Agency and Politics and explores global governance, datafication, fake news, echo chambers, digital media activism. The last one, Users and Practices, is finally devoted to telepresence, digital loneliness, amateurism, user generated content, fandom and authenticity. The book aims to shed light on how concepts emerge and are co-shaped, circulated, used and reappropriated in different contexts. It argues for the need for a conceptual media and communication history that will reveal new developments without concealing continuities and it demonstrates how the analogue/digital dichotomy is often a misleading one.