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Simulation and Analysis of Mathematical Methods in Real-Time Engineering Applications


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Approaches in Cybersecurity and Digital Forensics 8.1 Introduction 8.2 Digital Forensics 8.3 Biometric Analysis of Crime Scene Traces of Forensic Investigation 8.4 Forensic Data Analytics (FDA) for Risk Management 8.5 Forensic Data Subsets and Open-Source Intelligence for Cybersecurity 8.6 Recent Detection and Prevention Mechanisms for Ensuring Privacy and Security in Forensic Investigation 8.7 Adversarial Deep Learning in Cybersecurity and Privacy 8.8 Efficient Control of System-Environment Interactions Against Cyber Threats 8.9 Incident Response Applications of Digital Forensics 8.10 Deep Learning for Modeling Secure Interactions Between Systems 8.11 Recent Advancements in Internet of Things Forensics References

      14  9 Mathematical Models for Computer Vision in Cardiovascular Image Segmentation 9.1 Introduction 9.2 Cardiac Image Segmentation Using Deep Learning 9.3 Proposed Method 9.4 Algorithm Behaviors and Characteristics 9.5 Computed Tomography Cardiovascular Data 9.6 Performance Evaluation 9.7 Conclusion References

      15  10 Modeling of Diabetic Retinopathy Grading Using Deep Learning 10.1 Introduction 10.2 Related Works 10.3 Methodology 10.4 Dataset 10.5 Results and Discussion 10.6 Conclusion References

      16  11 Novel Deep-Learning Approaches for Future Computing Applications and Services 11.1 Introduction 11.2 Architecture 11.3 Multiple Applications of Deep Learning 11.4 Challenges 11.5 Conclusion and Future Aspects References

      17  12 Effects of Radiation Absorption and Aligned Magnetic Field on MHD Cassion Fluid Past an Inclined Vertical Porous Plate in Porous Media 12.1 Introduction 12.2 Physical Configuration and Mathematical Formulation 12.3 Discussion of Result 12.4 Conclusion References

      18  13 Integrated Mathematical Modelling and Analysis of Paddy Crop Pest Detection Framework Using Convolutional Classifiers 13.1 Introduction 13.2 Literature Survey 13.3 Proposed System Model 13.4 Paddy Pest Database Model 13.5 Implementation and Results 13.6 Conclusion References

      19  14 A Novel Machine Learning Approach in Edge Analytics with Mathematical Modeling for IoT Test Optimization 14.1 Introduction: Background and Driving Forces 14.2 Objectives 14.3 Mathematical Model for IoT Test Optimization 14.4 Introduction to Internet of Things (IoT) 14.5 IoT Analytics 14.6 Survey on IoT Testing 14.7 Optimization of End-User Application Testing in IoT 14.8 Machine Learning in Edge Analytics for IoT Testing 14.9 Proposed IoT Operations Framework Using Machine Learning on the Edge 14.10 Expected Advantages and Challenges in Applying Machine Learning Techniques in End-User Application Testing on the Edge 14.11 Conclusion References

      20  Index

      21  End User License Agreement

      Guide

      1  Cover

      2  Table of Contents

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