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Books in Computer science

The Computing collection presents a range of foundational and applied content across computer and data science, including fields such as Artificial Intelligence; Computational Modelling; Computer Networks, Computer Organization & Architecture, Computer Vision & Pattern Recognition, Data Management; Embedded Systems & Computer Engineering; HCI/User Interface Design; Information Security; Machine Learning; Network Security; Software Engineering.

201-210 of 2559 results in All results

A Practical Approach to Interdisciplinary Complex Rehabilitation

  • 1st Edition
  • February 1, 2022
  • Cara Pelser + 2 more
  • English
  • Paperback
    9 7 8 - 0 - 7 0 2 0 - 8 2 7 6 - 4
  • eBook
    9 7 8 - 0 - 7 0 2 0 - 8 2 7 7 - 1
An interdisciplinary team (IDT) approach is most effective in complex physical rehabilitation, but implementing a successful IDT can be challenging. This new book will help readers to understand more about the variety of professions that contribute to successful IDT working and how team members collaborate for the benefit of the rehabilitation patient and their personalised goals. This is a comprehensive, practical, evidence-based guide to complex rehabilitation from an IDT perspective, exploring the dynamic and diverse roles and challenges of the team. The fifteen chapters are written by clinicians who are highly experienced across a range of disciplines and settings, from early acute rehabilitation to community rehabilitation. A Practical Approach to Interdisciplinary Complex Rehabilitation will be an invaluable resource for all members of the team, including medical, nursing, dietetics, neuropsychiatry, occupational therapy, physiotherapy, psychology, rehabilitation coordination, speech and language therapy, and vocational rehabilitation therapy.

Meeting the Challenges of Data Quality Management

  • 1st Edition
  • January 25, 2022
  • Laura Sebastian-Coleman
  • English
  • Paperback
    9 7 8 - 0 - 1 2 - 8 2 1 7 3 7 - 5
  • eBook
    9 7 8 - 0 - 1 2 - 8 2 1 7 5 6 - 6
Meeting the Challenges of Data Quality Management outlines the foundational concepts of data quality management and its challenges. The book enables data management professionals to help their organizations get more value from data by addressing the five challenges of data quality management: the meaning challenge (recognizing how data represents reality), the process/quality challenge (creating high-quality data by design), the people challenge (building data literacy), the technical challenge (enabling organizational data to be accessed and used, as well as protected), and the accountability challenge (ensuring organizational leadership treats data as an asset). Organizations that fail to meet these challenges get less value from their data than organizations that address them directly.   The book describes core data quality management capabilities and introduces new and experienced DQ practitioners to practical techniques for getting value from activities such as data profiling, DQ monitoring and DQ reporting. It extends these ideas to the management of data quality within big data environments. This book will appeal to data quality and data management professionals, especially those involved with data governance, across a wide range of industries, as well as academic and government organizations. Readership extends to people higher up the organizational ladder (chief data officers, data strategists, analytics leaders) and in different parts of the organization (finance professionals, operations managers, IT leaders) who want to leverage their data and their organizational capabilities (people, processes, technology) to drive value and gain competitive advantage.   This will be a key reference for graduate students in computer science programs which normally have a limited focus on the data itself and where data quality management is an often-overlooked aspect of data management courses.

Classification Made Relevant

  • 1st Edition
  • January 25, 2022
  • Jules J. Berman
  • English
  • Paperback
    9 7 8 - 0 - 3 2 3 - 9 1 7 8 6 - 5
  • eBook
    9 7 8 - 0 - 3 2 3 - 9 7 2 5 8 - 1
Classification Made Relevant: How Scientists Build and Use Classifications and Ontologies explains how classifications and ontologies are designed and used to analyze scientific information. The book presents the fundamentals of classification, leading up to a description of how computer scientists use object-oriented programming languages to model classifications and ontologies. Numerous examples are chosen from the Classification of Life, the Periodic Table of the Elements, and the symmetry relationships contained within the Classification Theorem of Finite Simple Groups. When these three classifications are tied together, they provide a relational hierarchy connecting all of the natural sciences. The book's chapters introduce and describe general concepts that can be understood by any intelligent reader. With each new concept, they follow practical examples selected from various scientific disciplines. In these cases, technical points and specialized vocabulary are linked to glossary items where the item is clarified and expanded.

Cognitive and Soft Computing Techniques for the Analysis of Healthcare Data

  • 1st Edition
  • January 22, 2022
  • Akash Kumar Bhoi + 3 more
  • English
  • Paperback
    9 7 8 - 0 - 3 2 3 - 8 5 7 5 1 - 2
  • eBook
    9 7 8 - 0 - 3 2 3 - 9 0 3 4 8 - 6
Cognitive and Soft Computing Techniques for the Analysis of Healthcare Data discusses the insight of data processing applications in various domains through soft computing techniques and enormous advancements in the field. The book focuses on the cross-disciplinary mechanisms and ground-breaking research ideas on novel techniques and data processing approaches in handling structured and unstructured healthcare data. It also gives insight into various information-processing models and many memories associated with it while processing the information for forecasting future trends and decision making. This book is an excellent resource for researchers and professionals who work in the Healthcare Industry, Data Science, and Machine learning.  

Machine Learning for Biometrics

  • 1st Edition
  • January 21, 2022
  • Partha Pratim Sarangi + 4 more
  • English
  • Paperback
    9 7 8 - 0 - 3 2 3 - 8 5 2 0 9 - 8
  • eBook
    9 7 8 - 0 - 3 2 3 - 9 0 3 3 9 - 4
Machine Learning for Biometrics: Concepts, Algorithms and Applications highlights the fundamental concepts of machine learning, processing and analyzing data from biometrics and provides a review of intelligent and cognitive learning tools which can be adopted in this direction. Each chapter of the volume is supported by real-life case studies, illustrative examples and video demonstrations. The book elucidates various biometric concepts, algorithms and applications with machine intelligence solutions, providing guidance on best practices for new technologies such as e-health solutions, Data science, Cloud computing, and Internet of Things, etc. In each section, different machine learning concepts and algorithms are used, such as different object detection techniques, image enhancement techniques, both global and local feature extraction techniques, and classifiers those are commonly used data science techniques. These biometrics techniques can be used as tools in Cloud computing, Mobile computing, IOT based applications, and e-health care systems for secure login, device access control, personal recognition and surveillance.

Advanced Data Mining Tools and Methods for Social Computing

  • 1st Edition
  • January 14, 2022
  • Sourav De + 3 more
  • English
  • Paperback
    9 7 8 - 0 - 3 2 3 - 8 5 7 0 8 - 6
  • eBook
    9 7 8 - 0 - 3 2 3 - 8 5 7 0 9 - 3
Advanced Data Mining Tools and Methods for Social Computing explores advances in the latest data mining tools, methods, algorithms and the architectures being developed specifically for social computing and social network analysis. The book reviews major emerging trends in technology that are supporting current advancements in social networks, including data mining techniques and tools. It also aims to highlight the advancement of conventional approaches in the field of social networking. Chapter coverage includes reviews of novel techniques and state-of-the-art advances in the area of data mining, machine learning, soft computing techniques, and their applications in the field of social network analysis.

Artificial Intelligence for Healthcare Applications and Management

  • 1st Edition
  • January 13, 2022
  • Boris Galitsky + 1 more
  • English
  • Paperback
    9 7 8 - 0 - 1 2 - 8 2 4 5 2 1 - 7
  • eBook
    9 7 8 - 0 - 1 2 - 8 2 4 5 2 2 - 4
Artificial Intelligence for Healthcare Applications and Management introduces application domains of various AI algorithms across healthcare management. Instead of discussing AI first and then exploring its applications in healthcare afterward, the authors attack the problems in context directly, in order to accelerate the path of an interested reader toward building industrial-strength healthcare applications. Readers will be introduced to a wide spectrum of AI applications supporting all stages of patient flow in a healthcare facility. The authors explain how AI supports patients throughout a healthcare facility, including diagnosis and treatment recommendations needed to get patients from the point of admission to the point of discharge while maintaining quality, patient safety, and patient/provider satisfaction. AI methods are expected to decrease the burden on physicians, improve the quality of patient care, and decrease overall treatment costs. Current conditions affected by COVID-19 pose new challenges for healthcare management and learning how to apply AI will be important for a broad spectrum of students and mature professionals working in medical informatics. This book focuses on predictive analytics, health text processing, data aggregation, management of patients, and other fields which have all turned out to be bottlenecks for the efficient management of coronavirus patients.

Deep Learning for Sustainable Agriculture

  • 1st Edition
  • January 9, 2022
  • Ramesh Chandra Poonia + 2 more
  • English
  • Paperback
    9 7 8 - 0 - 3 2 3 - 8 5 2 1 4 - 2
  • eBook
    9 7 8 - 0 - 3 2 3 - 9 0 3 6 2 - 2
The evolution of deep learning models, combined with with advances in the Internet of Things and sensor technology, has gained more importance for weather forecasting, plant disease detection, underground water detection, soil quality, crop condition monitoring, and many other issues in the field of agriculture. agriculture. Deep Learning for Sustainable Agriculture discusses topics such as the impactful role of deep learning during the analysis of sustainable agriculture data and how deep learning can help farmers make better decisions. It also considers the latest deep learning techniques for effective agriculture data management, as well as the standards established by international organizations in related fields. The book provides advanced students and professionals in agricultural science and engineering, geography, and geospatial technology science with an in-depth explanation of the relationship between agricultural inference and the decision-support amenities offered by an advanced mathematical evolutionary algorithm.

Anomaly Detection and Complex Event Processing Over IoT Data Streams

  • 1st Edition
  • January 7, 2022
  • Patrick Schneider + 1 more
  • English
  • Paperback
    9 7 8 - 0 - 1 2 - 8 2 3 8 1 8 - 9
  • eBook
    9 7 8 - 0 - 1 2 - 8 2 3 8 1 9 - 6
Anomaly Detection and Complex Event Processing over IoT Data Streams: With Application to eHealth and Patient Data Monitoring presents advanced processing techniques for IoT data streams and the anomaly detection algorithms over them. The book brings new advances and generalized techniques for processing IoT data streams, semantic data enrichment with contextual information at Edge, Fog and Cloud as well as complex event processing in IoT applications. The book comprises fundamental models, concepts and algorithms, architectures and technological solutions as well as their application to eHealth. Case studies, such as the bio-metric signals stream processing are presented –the massive amount of raw ECG signals from the sensors are processed dynamically across the data pipeline and classified with modern machine learning approaches including the Hierarchical Temporal Memory and Deep Learning algorithms. The book discusses adaptive solutions to IoT stream processing that can be extended to different use cases from different fields of eHealth, to enable a complex analysis of patient data in a historical, predictive and even prescriptive application scenarios. The book ends with a discussion on ethics, emerging research trends, issues and challenges of IoT data stream processing.

Optimum-Path Forest

  • 1st Edition
  • January 6, 2022
  • Alexandre Xavier Falcao + 1 more
  • English
  • Paperback
    9 7 8 - 0 - 1 2 - 8 2 2 6 8 8 - 9
  • eBook
    9 7 8 - 0 - 1 2 - 8 2 2 6 8 9 - 6
The Optimum-Path Forest (OPF) classifier was first published in 2008 in its supervised and unsupervised versions with applications in medicine and image classification. Since then, it has expanded to a variety of other applications such as remote sensing, electrical and petroleum engineering, and biology. In recent years, multi-label and semi-supervised versions were also developed to handle video classification problems. The book presents the principles, algorithms and applications of Optimum-Path Forest, giving the theory and state-of-the-art as well as insights into future directions.