Sztuczna inteligencja

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EBOOK

AI w tłumaczeniach. Automatyzacja procesu przekładu w dobie sztucznej inteligencji

Łukasz Bogucki

Tłumaczenia technologicznie doładowane Branża tłumaczeniowa przeżywa w ostatnich kilku latach prawdziwą rewolucję. Jest ona związana z rozwojem technologii tłumaczeń wspomaganych komputerowo (CAT) i sztucznej inteligencji (AI). I choć wielu tłumaczy zerka z obawą szczególnie w stronę tej drugiej, obawiając się, że AI odbierze im pracę, znacznie lepiej (i efektywniej) jest potraktować oba narzędzia właśnie jako narzędzia - ułatwiające i usprawniające proces tłumaczenia tekstu. Jeśli chcesz się dowiedzieć, jak te dwie technologie mogą wspomóc lub zmienić Twoją pracę, sięgnij po tę książkę. Dowiesz się, na czym faktycznie polega rola tłumacza w pracy nad przekładem Poznasz historyczne początki tłumaczeń wspomaganych technologiami cyfrowymi Zrozumiesz zasadę działania narzędzi mogących przyspieszyć i usprawnić Twoją pracę Zastanowisz się nad tym, jaka przyszłość czeka branżę, którą właśnie opanowuje generatywna sztuczna inteligencja

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EBOOK

AI. Наддержави штучного інтелекту

Кай Фу Лі

Чесно про те, кому загрожує втрата роботи через штучний інтелект та які економічні наслідки тягнуть за собою технологічні прориви. Що буде з людиною, коли штучний інтелект робитиме геть усе? Штучний інтелект змінює світ. Чи буде суперкомпютер правити світом? Що ми можемо зробити для того, щоб не лишитися позаду прогресу?

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EBOOK

AI-Assisted Coding. Enhancing Programming with AI Tools and Techniques

Rheinwerk Publishing, Inc, Michael Kofler, Bernd Öggl,...

This book takes programmers through the process of enhancing their workflow using AI tools. It begins by introducing the basics of coding with AI assistants, such as GitHub Copilot and ChatGPT, and shows how these tools can assist in writing and optimizing code. The next section focuses on using AI in debugging, refactoring, and generating software documentation, helping readers master techniques for coding with AI support. Pair programming with AI is explored in detail, with practical examples demonstrating its real-world applications. The book also dives into advanced tools like Ollama and Aider, giving readers the knowledge to build local language models and integrate them into their development workflows. The final chapters highlight how AI can be incorporated into projects, enabling more efficient, innovative coding processes. By the end of the book, readers will have the necessary skills to use AI-powered tools seamlessly, ultimately improving their programming productivity and broadening their AI integration capabilities.

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EBOOK

AI-Native LLM Security. Threats, defenses, and best practices for building safe and trustworthy AI

Vaibhav Malik, Ken Huang, Ads Dawson

Adversarial AI attacks present a unique set of security challenges, exploiting the very foundation of how AI learns. This book explores these threats in depth, equipping cybersecurity professionals with the tools needed to secure generative AI and LLM applications. Rather than skimming the surface of emerging risks, it focuses on practical strategies, industry standards, and recent research to build a robust defense framework.Structured around actionable insights, the chapters introduce a secure-by-design methodology, integrating threat modeling and MLSecOps practices to fortify AI systems. You’ll discover how to leverage established taxonomies from OWASP, NIST, and MITRE to identify and mitigate vulnerabilities. Through real-world examples, the book highlights best practices for incorporating security controls into AI development life cycles, covering key areas such as CI/CD, MLOps, and open-access LLMs.Built on the expertise of its co-authors—pioneers in the OWASP Top 10 for LLM applications—this guide also addresses the ethical implications of AI security, contributing to the broader conversation on trustworthy AI. By the end of this book, you’ll be able to develop, deploy, and secure AI technologies with confidence and clarity.*Email sign-up and proof of purchase required

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EBOOK

Algorytmy sztucznej inteligencji. Ilustrowany przewodnik

Rishal Hurbans

Sztuczna inteligencja ma umożliwiać wykorzystywanie danych i algorytmów do podejmowania lepszych decyzji, rozwiązywania trudnych problemów i automatyzowania złożonych zadań. Ma też zwiększać produktywność człowieka. Obecnie sztuczna inteligencja z rozmachem wkracza do kolejnych dziedzin. Budzi zachwyt, ale też kontrowersje i obawy. Nowe narzędzia, choćby były tworzone z najlepszymi intencjami, zawsze mogą zostać wykorzystane w niewłaściwy czy szkodliwy sposób. Oznacza to, że każdy, kto rozwija nowe technologie, powinien to robić odpowiedzialnie. Aby to było możliwe, trzeba dobrze zrozumieć podstawy działania sztucznej inteligencji - algorytmy. To praktyczny przewodnik po algorytmach sztucznej inteligencji. Skorzystają z niego programiści i inżynierowie, którzy chcą zrozumieć zagadnienia i algorytmy związane ze sztuczną inteligencją na podstawie praktycznych przykładów i wizualnych wyjaśnień. Książka pokazuje, jak radzić sobie z takimi zadaniami programistycznymi jak wykrywanie oszustw bankowych czy sterowanie pojazdem autonomicznym. Pierwsze rozdziały dotyczą podstawowych koncepcji i algorytmów i stają się punktem wyjścia do bardziej złożonych tematów: wydajnych algorytmów przeszukiwania oraz poszukiwania rozwiązań w środowisku konkurencyjnym. Przedstawiono tu zagadnienia uczenia maszynowego, w tym proces przygotowania danych, modelowania i testowania. Omówiono też zasady uczenia przez wzmacnianie za pomocą algorytmu Q-learning. W książce: kategorie i znaczenie algorytmów sztucznej inteligencji. inteligentne przeszukiwanie w procesie podejmowania decyzji algorytmy genetyczne i inteligencja rozproszona uczenie maszynowe i sieci neuronowe uczenie przez wzmacnianie Zrozum algorytmy, a pojmiesz istotę sztucznej inteligencji!

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EBOOK

Analityka rozszerzona. Automatyzacja i sztuczna inteligencja w podejmowaniu decyzji

Willi Weber, Tobias Zwingmann

Niepowodzenia biznesowe można różnie tłumaczyć, jeśli jednak od szukania wymówek wolisz zapewnić sukces swojej firmie, przemyśl sposób, w jaki korzystasz z analizy danych. Poprzez rozszerzenie możliwości i poprawę jakości analiz otworzysz sobie drzwi do podejmowania najbardziej racjonalnych decyzji - decyzji opartych na wnioskach. W tej książce znajdziesz przejrzystą, praktyczną i kompletną ścieżkę, która doprowadzi Twoją firmę do analitycznej doskonałości! Dzięki lekturze zdobędziesz wiedzę potrzebną do skutecznego wykorzystywania informacji w realizacji celów biznesowych. Jeśli dostrzegasz ograniczenia tradycyjnych metod interpretacji danych, docenisz opisaną tu dynamiczną i realistyczną strategię zwiększania możliwości analitycznych. Dowiesz się, jak wprowadzić inteligentną automatyzację i nowoczesną sztuczną inteligencję, co umożliwi podejmowanie lepszych decyzji w Twoim zespole. Najważniejsze zagadnienia: rozszerzona analityka, jej zalety i potencjalne ograniczenia najlepsze praktyki w dziedzinie implementacji rozszerzonej analityki w firmie role analityczne, przepływy pracy, potrzebne narzędzia i umiejętności korzystanie z danych, a także budowanie zaufania i dostępności analiza przypadków posłużenia się rozszerzoną analityką jako czynnikiem wspierającym Oto drogowskaz dla organizacji, która chce bazować na danych w erze sztucznej inteligencji! Donald Farmer, właściciel firmy TreeHive Strategy

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EBOOK

Android: Game Programming. A Developer's Guide

Raul Portales, John Horton

Gaming has historically been a strong driver of technology, whether we’re talking about hardware or software performance, the variety of input methods, or graphics support and the Android game platform is no different. Android is a mature, yet still growing, platform that many game developers have embraced as it provides tools, APIs, and services to help bootstrap Android projects and ensure their success, many of which are specially designed to help game developers.Since Android uses one of the most popular programming languages, Java, as the primary language to build apps of all types, you will start this course by first obtaining a solid grasp of the Java language and its foundation APIs. This will improve your chances of succeeding as an Android app developer. We will show you how to get your Android development environment set up and you will soon have your first working game.The course covers all the aspects of game development through various engrossing and insightful game projects. You will learn all about frame-by-frame animations and resource animations using a space shooter game, create beautiful and responsive menus and dialogs, and explore the different options to play sound effects and music in Android. You will also learn the basics of creating a particle system and will see how to use the Leonids library. By the end of the course, you will be able to configure and use Google Play Services on the developer console and port your game to the big screen.This Learning Path combines some of the best that Packt has to offer in one complete, curated package. It includes content from the following Packt products:? Learning Java by Building Android Games by John Horton? Android Game Programming by Example by John Horton? Mastering Android Game Development by Raul Portales

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EBOOK

Angular and Deep Learning Pocket Primer. A Comprehensive Guide to AI and Expert Systems for Professionals

Mercury Learning and Information, Oswald Campesato

As part of the Pocket Primer series, this book introduces basic deep learning concepts and integrates them into Angular 10 applications. It offers a fast-paced introduction to deep learning features and popular classifiers. Covering Angular 10 functionality, deep learning concepts, and key classification algorithms, the book includes code samples and figures. Topics such as TensorFlow and Keras are also explored.The book begins with an introduction to AI and its applications, followed by state space search and heuristic search strategies. You will delve into expert systems, their development life cycle, knowledge acquisition, and representation. These topics lead to a deeper understanding of neural networks, the learning process, and fuzzy logic systems, ensuring a comprehensive grasp of AI and deep learning principles.Understanding these concepts is essential for developing sophisticated AI applications and enhancing Angular 10 projects. This book transitions you from a novice to a proficient developer, equipped with practical skills and knowledge. Advanced topics like fuzzy expert systems and logic programming are covered, culminating in advanced Prolog. Companion files with source code and color figures enhance the learning experience, making this book an invaluable resource for integrating deep learning with Angular 10.

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EBOOK

Applied Machine Learning Explainability Techniques. Make ML models explainable and trustworthy for practical applications using LIME, SHAP, and more

Aditya Bhattacharya

Explainable AI (XAI) is an emerging field that brings artificial intelligence (AI) closer to non-technical end users. XAI makes machine learning (ML) models transparent and trustworthy along with promoting AI adoption for industrial and research use cases.Applied Machine Learning Explainability Techniques comes with a unique blend of industrial and academic research perspectives to help you acquire practical XAI skills. You'll begin by gaining a conceptual understanding of XAI and why it's so important in AI. Next, you'll get the practical experience needed to utilize XAI in AI/ML problem-solving processes using state-of-the-art methods and frameworks. Finally, you'll get the essential guidelines needed to take your XAI journey to the next level and bridge the existing gaps between AI and end users.By the end of this ML book, you'll be equipped with best practices in the AI/ML life cycle and will be able to implement XAI methods and approaches using Python to solve industrial problems, successfully addressing key pain points encountered.

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EBOOK

Applied Machine Learning for Healthcare and Life Sciences using AWS. Transformational AI implementations for biotech, clinical, and healthcare organizations

Ujjwal Ratan

While machine learning is not new, it's only now that we are beginning to uncover its true potential in the healthcare and life sciences industry. The availability of real-world datasets and access to better compute resources have helped researchers invent applications that utilize known AI techniques in every segment of this industry, such as providers, payers, drug discovery, and genomics.This book starts by summarizing the introductory concepts of machine learning and AWS machine learning services. You’ll then go through chapters dedicated to each segment of the healthcare and life sciences industry. Each of these chapters has three key purposes -- First, to introduce each segment of the industry, its challenges, and the applications of machine learning relevant to that segment. Second, to help you get to grips with the features of the services available in the AWS machine learning stack like Amazon SageMaker and Amazon Comprehend Medical. Third, to enable you to apply your new skills to create an ML-driven solution to solve problems particular to that segment. The concluding chapters outline future industry trends and applications.By the end of this book, you’ll be aware of key challenges faced in applying AI to healthcare and life sciences industry and learn how to address those challenges with confidence.

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EBOOK

Applying Artificial Intelligence in Project Management. Harness the power of AI to transform project management practices

Mercury Learning and Information, Paul Boudreau

Artificial intelligence is reshaping the way projects are managed, offering unprecedented opportunities to improve efficiency, accuracy, and outcomes. This course begins with an introduction to AI’s role in project management, exploring how machine learning, natural language processing, and predictive algorithms can transform traditional approaches. You’ll learn about the key components of AI-driven projects and how to develop a strong business case for adopting these innovations.As you progress, the course delves into practical applications of AI in automating project tasks, analyzing data, and predicting results. Participants will gain hands-on experience with tools that leverage machine learning to forecast project success, improve productivity, and resolve potential failures. Additionally, you’ll discover how generative AI and large language models can enhance communication, planning, and decision-making throughout the project lifecycle.Finally, the course examines the broader implications of integrating AI into project management. You’ll explore strategies for acquiring AI solutions, implementing them within teams, and navigating the ethical challenges they present. By the end of the course, participants will have a clear understanding of how to leverage AI to optimize projects and stay competitive in a rapidly evolving technological landscape.

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EBOOK

Architecting AI Software Systems. Crafting robust and scalable AI systems for modern software development

Richard D Avila, Imran Ahmad

Architecting AI Software Systems provides a definitive guide to building AI-enabled systems, emphasizing the balance between AI’s capabilities and traditional software architecture principles.As AI technologies gain widespread acceptance and are increasingly expected in future applications, this book provides architects and developers with the essential knowledge to stay competitive. It introduces a structured approach to mastering the complexities of AI integration, covering key architectural concepts and processes critical to building scalable and robust AI systems while minimizing development and maintenance risks. The book guides readers on a progressive journey, using real-world examples and hands-on exercises to deepen comprehension. It also includes the architecture of a fictional AI-enabled system as a learning tool. You will engage with exercises designed to reinforce your understanding and apply practical insights, leading to the development of key architectural products that support AI systems. This is an essential resource for architects seeking to mitigate risks and master the complexities of AI-enabled system development.By the end of the book, readers will be equipped with patterns, strategies and concepts necessary to architect AI-enabled systems across various domains.

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EBOOK

Architecting AI Solutions on Salesforce. Design powerful and accurate AI-driven state-of-the-art solutions tailor-made for modern business demands

Lars Malmqvist

Written for Salesforce architects who want quickly implementable AI solutions for their business challenges, Architecting AI Solutions on Salesforce is a shortcut to understanding Salesforce Einstein’s full capabilities – and using them.To illustrate the full technical benefits of Salesforce’s own AI solutions and components, this book will take you through a case study of a fictional company beginning to adopt AI in its Salesforce ecosystem. As you progress, you'll learn how to configure and extend the out-of-the-box features on various Salesforce clouds, their pros, cons, and limitations. You'll also discover how to extend these features using on- and off-platform choices and how to make the best architectural choices when designing custom solutions. Later, you'll advance to integrating third-party AI services such as the Google Translation API, Microsoft Cognitive Services, and Amazon SageMaker on top of your existing solutions. This isn’t a beginners’ Salesforce book, but a comprehensive overview with practical examples that will also take you through key architectural decisions and trade-offs that may impact the design choices you make.By the end of this book, you'll be able to use Salesforce to design powerful tailor-made solutions for your customers with confidence.

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EBOOK

Artificial Intelligence and Expert Systems. Techniques and Applications for Problem Solving

Mercury Learning and Information, I. Gupta, G....

This book covers current AI applications and techniques for solving problems and accomplishing tasks. It introduces branches of AI such as formal logic, reasoning, knowledge engineering, expert systems, neural networks, and fuzzy logic. It emphasizes expert systems, with sections on state space search, knowledge engineering, neural networks, fuzzy logic, and Prolog.It begins with an introduction to AI and its applications, setting the stage for foundational concepts. Readers are guided through state space search and heuristic search strategies, crucial for problem-solving in AI. The focus shifts to expert systems, covering their development life cycle, knowledge acquisition, and representation, providing a deep dive into emulating human decision-making.Later chapters cover neural networks and the learning process, essential for creating adaptive systems. Sections on fuzzy logic and fuzzy systems introduce methods for handling uncertainty in AI. Final chapters on programming in logic and advanced Prolog offer practical techniques for AI solutions. This approach equips readers with the skills to apply AI in various domains, enhancing their problem-solving abilities and understanding of intelligent systems.

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EBOOK

Artificial Intelligence Basics. A Self-Teaching Introduction

Mercury Learning and Information, N. Gupta, R....

This book is designed as a self-teaching introduction to the fundamental concepts of artificial intelligence (AI). It begins with the history of AI, the Turing test, and early applications, providing a strong foundation. Later chapters cover the basics of searching, game playing, and knowledge representation. The journey continues with detailed explorations of expert systems and machine learning, equipping readers with essential AI techniques.As the course progresses, you will delve into separate programming chapters on Prolog and Python, learning how to implement AI concepts in these languages. These chapters offer practical coding experience, enhancing your understanding of AI programming. The book culminates with a comprehensive chapter on AI machines and robotics, showcasing numerous modern applications and providing a glimpse into the future of AI technology.Understanding these AI concepts is crucial as they form the basis of many modern technologies and applications. This book ensures a smooth transition from a beginner to a proficient AI practitioner, equipped with both theoretical knowledge and practical skills. By the end of the book, you will have a thorough understanding of AI's history, core principles, and practical implementations, ready to apply this knowledge to real-world problems and projects.

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EBOOK

Artificial Intelligence Engines. A Tutorial Introduction to the Mathematics of Deep Learning

James V Stone

This book is a comprehensive guide to the mathematics behind artificial intelligence engines, taking readers from foundational concepts to advanced applications. It begins with an introduction to artificial neural networks, exploring topics like perceptrons, linear associative networks, and gradient descent. Practical examples accompany each chapter, making complex mathematical principles accessible, even for those with limited prior knowledge.The book's detailed structure covers key algorithms like backpropagation, Hopfield networks, and Boltzmann machines, advancing to deep restricted Boltzmann machines, variational autoencoders, and convolutional neural networks. Modern topics such as generative adversarial networks, reinforcement learning, and capsule networks are explored in depth. Each section connects theory to real-world AI applications, helping readers understand how these techniques are used in practice.Ideal for students, researchers, and AI enthusiasts, the book balances theoretical depth with practical insights. Basic mathematical knowledge or foundation is recommended, allowing readers to fully engage with the content. This book serves as an accessible yet thorough resource for anyone eager to dive deeper into artificial intelligence and machine learning.

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EBOOK

Artificial Intelligence. Ethical, social, and security impacts for the present and the future

IT Governance Publishing, Dr. Julie E. Mehan

This book offers an in-depth exploration of Artificial Intelligence (AI), from its origins to the ethical and societal challenges it presents today. It provides a comprehensive understanding of AI’s impact on human interaction, collaboration, privacy, and security. Through analyzing both opportunities and risks, the book emphasizes the ethical concerns surrounding AI, such as bias, privacy violations, and security threats.Chapters explore AI’s transformative role in cybersecurity, misinformation, and human-machine collaboration, highlighting its implications for job markets and human relationships. Real-world examples illustrate how AI can drive progress or cause harm. The ethical dilemmas around AI, including its use in surveillance and decision-making, are thoroughly examined, presenting challenges central to modern technology.Looking ahead, the book offers a forward-thinking perspective on AI’s future, discussing emerging trends and the need for responsible policy-making. It concludes by addressing how society can prepare for AI’s continued growth, offering strategies for navigating the evolving landscape. With practical insights and deep analysis, this book helps readers grasp AI’s profound implications for our future.

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EBOOK

Artificial Intelligence in Electrical Tomography and Ultrasound Technologies Algorithms, Measurement Systems and Applications

Tomasz Rymarczyk

This monograph aims to synthesize methods, measurement architectures, and algorithms that advance approaches to electrical and ultrasonic tomography, with a particular focus on artificial intelligence in image reconstruction and decision support. The work places these techniques in modern, complex environmental, industrial, and medical diagnostic systems, where non-invasive measurements are required for reliable observation, control, and process optimization. The scope of this work encompasses forward and inverse problems, numerical modelling, and data-driven learning methods, and is based on practical prototypes and verified applications. Tomographic imaging is presented as a family of techniques that infer internal structure based on boundary or remote measurements, enabling inspection without physical intervention. The theoretical foundations are outlined along with historical context and standard formulations of inverse problems, which are ill-posed and sensitive to noise and modelling errors. Established numerical frameworks, such as the Finite Element Method, are used to regularize and solve forward and inverse problems for electric and acoustic fields. These pillars provide a coherent path from physics to computation, and ultimately to images interpreted in an operational context. Artificial intelligence methods were applied to improve reconstruction fidelity, noise immunity, and computational efficiency. The text discusses deterministic frameworks such as Tikhonov, Gauss-Newton, and Total Variation, followed by a discussion of machine learning and deep learning architectures such as LSTM and CNN, along with ResNet, DiffNet, and specifically developed differential models for tomographic signals. The proposed multi-branch and pixel-centric strategies were evaluated using quantitative metrics such as RMSE, SSIM, ICC, Pearson correlation, relative image error, MAE, MAPE, and related metrics that reflect both perceptual and task-specific quality. The combination of physics-based modeling and prior knowledge has been shown to reduce inference time and increase noise tolerance compared to classical iterative solvers. A significant portion of the monograph is devoted to the design and evolution of measurement devices. Electrical and hybrid tomographs, next-generation ultrasound tomographs, a beamforming platform, and specialized flaw detection solutions are designed and characterized. Portable and mobile configurations, along with body potential mapping, are used to extend tomographic detection capabilities to include outpatient and situational monitoring. The measurement layer is integrated with distributed acquisition, synchronization, and embedded processing, allowing the systems to operate within industrial and clinical constraints. Applications in process engineering and medicine are presented. Fermentation control, crystallization monitoring, and autonomous process supervision illustrate industrial utility, including connections to the Internet of Things and real-time data infrastructure. Medical research includes non-invasive lung monitoring, portable diagnostics, and ultrasound brain detection, as well as portable hybrid ultrasound impedance solutions for lower urinary tract assessment. Non-destructive testing is addressed using advanced ultrasound imaging on the DefectoVision platform, which describes 3D reconstruction and quantitative assessment. These cases demonstrate that tomographic sensing can reveal internal states, detect anomalies, and support inspection without disrupting production or compromising safety. The book is designed to guide the reader from fundamentals to implementations and verified use cases. Chapter 1 introduces tomographic imaging, the physical principles underlying electrical and ultrasound techniques, and the challenges of the inverse problem. Chapter 2 discusses reconstruction methods, from deterministic regularization to machine learning and deep learning, along with evaluation metrics. Chapter 3 documents the designed measurement devices along with their electronics, sensor geometry, and system characteristics. Chapter 4 develops reconstruction processes based on simulated and experimental datasets and discusses comparative performance, including hybrid and 3D approaches. Chapter 5 consolidates applications in industrial processes and medical diagnostics, presenting experimental setups, results, and discussions that link quantitative metrics to operational requirements. Chapter 6 concludes with a summary, conclusions, and perspectives for further development. This publication is aimed at researchers and PhD students in the fields of sensors, inverse problems, and computational imaging, as well as engineers and practitioners responsible for process control, non-destructive testing, and medical technology assessment. The material was developed autonomously, with theoretical assumptions, numerical methods, device descriptions, and application studies, so that knowledge can be transferred from laboratory prototypes to real systems. This work was developed thanks to the research community and collaboration at the Netrix S.A. Research and Development Centre and the Institute of Information Technology and Innovative Technologies at the WSEI University in Lublin. Appreciation is expressed to my colleagues who collaborated with me on research projects in the areas of device prototyping, data acquisition, and algorithm development, which translated concepts into working systems. We also extend our gratitude to the reviewers, whose insightful comments contributed to improved clarity and completeness, and to our family for their continued support. The presented projects were developed to demonstrate how intelligent tomographic measurement systems can be constructed and deployed as reliable imaging, monitoring, and control tools. This synthesis of physics-based modelling and learning-based reasoning will be useful to both academia and industry seeking to implement practical, large-scale tomography.

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EBOOK

Artificial Intelligence in the 21st Century. The Future of Technology and Human Innovation

Mercury Learning and Information, Stephen Lucci, Sarhan...

This third edition provides a comprehensive, accessible presentation of AI, including examples, applications, full-color images, and human interest boxes. New chapters on deep learning, AI security, and AI programming keep the content cutting-edge. Topics like neural networks, genetic algorithms, natural language processing, planning, and complex board games are covered.The course starts with an AI overview, moving through uninformed search, intelligent search methods, and game-based strategies. It delves into logic in AI, knowledge representation, production systems, uncertainty in AI, and expert systems. Middle chapters cover machine learning, neural networks, and deep learning. It continues with nature-inspired search methods, natural language processing, and automated planning, ending with robotics and advanced computer games.These AI concepts are crucial for developing sophisticated AI applications. This book transitions you from novice to proficient AI practitioner, equipped with practical skills and comprehensive knowledge. Companion files with resources, simulations, and figures enhance learning. By the end, you'll understand AI principles and applications, ready to tackle real-world challenges.

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EBOOK

Artificial Intelligence, Machine Learning, and Deep Learning. A Practical Guide to Advanced AI Techniques

Mercury Learning and Information, Oswald Campesato

This book introduces AI, then explores machine learning, deep learning, natural language processing (NLP), and reinforcement learning. Readers learn about classifiers like logistic regression, k-NN, decision trees, random forests, and SVMs. It delves into deep learning architectures such as CNNs, RNNs, LSTMs, and autoencoders, with Keras-based code samples supplementing the theory.Starting with a foundational AI overview, the course progresses into machine learning, explaining classifiers and their applications. It continues with deep learning, focusing on architectures like CNNs and RNNs. Advanced topics include LSTMs and autoencoders, essential for modern AI. The book also covers NLP and reinforcement learning, emphasizing their importance.Understanding these concepts is vital for developing advanced AI systems. This book transitions you from beginner to proficient AI practitioner, combining theoretical knowledge and practical skills. Appendices on Keras, TensorFlow 2, and Pandas enrich the learning experience. By the end, readers will understand AI principles and be ready to apply them in real-world scenarios.

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EBOOK

Augmented Reality for Android Application Development. As an Android developer, including Augmented Reality (AR) in your mobile apps could be a profitable new string to your bow. This tutorial takes you through every aspect of AR for Android with lots of hands-on exercises

Jens Grubert

Augmented Reality offers the magical effect of blending the physical world with the virtual world, which brings applications from your screen into your hands. AR redefines advertising and gaming, as well as education. It will soon become a technology that will have to be mastered as a necessity by mobile application developers.Augmented Reality for Android Application Development enables you to implement sensor-based and computer vision-based AR applications on Android devices. You will learn about the theoretical foundations and practical details of implemented AR applications, and you will be provided with hands-on examples that will enable you to quickly develop and deploy novel AR applications on your own.Augmented Reality for Android Application Development will help you learn the basics of developing mobile AR browsers, how to integrate and animate 3D objects easily with the JMonkeyEngine, how to unleash the power of computer vision-based AR using the Vuforia AR SDK, and will teach you about popular interaction metaphors. You will get comprehensive knowledge of how to implement a wide variety of AR apps using hands-on examples.This book will make you aware of how to use the AR engine, Android layout, and overlays, and how to use ARToolkit. Finally, you will be able to apply this knowledge to make a stunning AR application.

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EBOOK

Azure OpenAI Essentials. A practical guide to unlocking generative AI-powered innovation with Azure OpenAI

Amit Mukherjee, Adithya Saladi, Marco Casalaina

Find out what makes Azure OpenAI a robust platform for building AI-driven solutions that can transform how businesses operate. Written by seasoned experts from Microsoft, this book will guide you in understanding Azure OpenAI from fundamentals through to advanced concepts and best practices.The book begins with an introduction to large language models (LLMs) and the Azure OpenAI Service, detailing how to access, use, and optimize its models. You'll learn how to design and implement AI-driven solutions, such as question-answering systems, contact center analytics, and GPT-powered search applications. Additionally, the chapters walk you through advanced concepts, including embeddings, fine-tuning models, prompt engineering, and building custom AI applications using LangChain and Semantic Kernel. You'll explore real-world use cases such as QnA systems, document summarizers, and SQLGPT for database querying, as well as gain insights into securing and operationalizing these solutions in enterprises.By the end of this book, you'll be ready to design, develop, and deploy scalable AI solutions, ensuring business success through intelligent automation and data-driven insights.

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EBOOK

Azymut na AI. Jak obrać najlepszy kierunek?

Chris Badura

Rewolucja już tu jest Decyzja, by napisać tę książkę, wzięła się z przekonania jej autora, że w sercu każdej technologii powinien się znajdować człowiek: jego potrzeby, emocje i marzenia. Drugim powodem było pragnienie nakreślenia ogromu perspektyw, jakie otwiera przed nami sztuczna inteligencja. I nie chodzi tu tylko o możliwości techniczne. Także o to, że AI zaprasza ludzi do świata, w którym maszyny rozumieją ich lepiej niż kiedykolwiek przedtem. Rewolucja AI właśnie się rozpoczyna, dobrze jest się do niej zawczasu przygotować - zarówno mentalnie, jak i zawodowo. Zacznij czytać i przekonaj się, w jaki sposób sztuczna inteligencja kształtuje teraźniejszość i przyszłość w różnych aspektach życia: od rewolucyjnych zmian w edukacji, poprzez przełomowe zastosowania w medycynie, aż po wyjątkowe innowacje w sztuce i designie. Zrozum, jak działa sztuczna inteligencja Dowiedz się, w jakich dziedzinach życia wspomaga nas już dziś Naucz się z nią komunikować Poznaj zawody, w których współpraca z AI będzie wkrótce odgrywała kluczową rolę Zobacz, jak za przyczyną sztucznej inteligencji zmieni się świat

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Badanie i zarządzanie ryzykiem w transporcie drogowym z zastosowaniem algorytmów sztucznej inteligencji

Mariusz Izdebski

Praca dotyczy tematyki zarządzania ryzykiem w transporcie drogowym z wykorzystaniem algorytmów sztucznej inteligencji w procesach przewozowych do minimalizacji zdarzeń niebezpiecznych. Wartością poznawczą przeprowadzonych badań jest opracowanie autorskich, oryginalnych modeli zarządzania ryzykiem w transporcie drogowym wraz z ich algorytmizacją narzędziami sztucznej inteligencji. Opracowane modele zarządzania ryzykiem mogą mieć zastosowanie w różnych obszarach, np. budownictwie. Wykorzystanie algorytmów sztucznej inteligencji w zarządzaniu ryzykiem w transporcie drogowym pozwoliło na opracowanie oryginalnych metod oceny i zarządzania ryzykiem w procesach przewozowych. Do badania redukcji poziomu ryzyka zastosowano dwa zaawansowane algorytmy sztucznej inteligencji - mrówkowy i genetyczny. Sposób ich działania jest różny, co pozwoliło na porównanie jakości generowanych rozwiązań, a tym samym wyznaczenie efektywności tych algorytmów w zarządzaniu ryzykiem w transporcie drogowym. Monografia składa się z dziewięciu rozdziałów, które podzielono na trzy obszary tematyczne. W pierwszym obszarze (rozdz. 1-3) zdefiniowano najnowsze badania z zakresu tematyki ryzyka w transporcie drogowym, scharakteryzowano kluczowe zagrożenia w procesach przewozowych i przedstawiono procedurę zarządzania ryzykiem w transporcie drogowym. Kluczowym elementem tej części monografii jest opis algorytmów sztucznej inteligencji stosowanych w zarządzaniu ryzykiem w transporcie drogowym, ze szczególnym podkreśleniem dużej roli, jaką odgrywają użyte algorytmy. W drugim obszarze (rozdz. 4 i 5) opisano modele zarządzania ryzykiem w transporcie drogowym i przedstawiono ich formalny zapis. W trzecim obszarze (rozdz. 6-8) opisano proces algorytmizacji opracowanych modeli zarządzania ryzykiem wraz ze sposobem szacowania ryzyka na odcinkach sieci transportowej i przedstawiono weryfikację algorytmów zastosowanych w aplikacji do przykładów. W podsumowaniu monografii przedłożono rekomendacje dla decydentów zarządzających ryzykiem w transporcie drogowym, a także podkreślono oryginalność przedstawionych badań i ich dalszy kierunek.