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Securing cloud data exchange related to IoT devices: key challenges and its machine learning solutions

  • Jatin Arora , Saravjeet Singh , Monika Sethi , Gaganpreet Kaur und G. S. Pradeep Ghantasala
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Hybrid Information Systems
Ein Kapitel aus dem Buch Hybrid Information Systems

Abstract

The new trend of technology of the Internet of things (IoT), cloud computing, and smart economy is reaching the top of their adoption. The data created by these smart devices are continuously increasing pressure on the development of mass data handling techniques. The current need is managed by storing the data on cloud storage devices and becomes an integrated part of IoT data storage. This results in an increase in data loss, unauthorized data access, leakage of data, and private information loss that require adequate security measures. In this research work, a systematic review of potential security and privacy concerns of cloud data storage is discussed. Specifically, the architecture of the IoT infrastructure and its potential risks is followed by the security challenges. The machine learning approaches of automatic threat detection and management are summarized and suggested the tools as per the requirement of the user. The advantage of using ML tools for cloud data storage is better threat detection and notification, enhanced real-time response, better accuracy, and security compliance.

Abstract

The new trend of technology of the Internet of things (IoT), cloud computing, and smart economy is reaching the top of their adoption. The data created by these smart devices are continuously increasing pressure on the development of mass data handling techniques. The current need is managed by storing the data on cloud storage devices and becomes an integrated part of IoT data storage. This results in an increase in data loss, unauthorized data access, leakage of data, and private information loss that require adequate security measures. In this research work, a systematic review of potential security and privacy concerns of cloud data storage is discussed. Specifically, the architecture of the IoT infrastructure and its potential risks is followed by the security challenges. The machine learning approaches of automatic threat detection and management are summarized and suggested the tools as per the requirement of the user. The advantage of using ML tools for cloud data storage is better threat detection and notification, enhanced real-time response, better accuracy, and security compliance.

Kapitel in diesem Buch

  1. Frontmatter I
  2. Contents V
  3. Contributing authors IX
  4. Synchronizing neural networks, machine learning for medical diagnosis, and patient representation: looping advanced optimization strategies assisting experts for complex mechanisms behind health and disease detection 1
  5. The future of predictive health: evaluating the role of neural network based hybrid models in healthcare 19
  6. An overview of new trends on deep learning models for diabetes risk prediction 47
  7. A study on the detection and diagnosis of cervical cancer using machine and deep learning models 57
  8. Sentiments and opinions shared on social media during the COVID-19 pandemic using machine learning techniques 71
  9. Combining decision tree and Bayesian networks for improved predictive analytics 91
  10. Emerging trends in hybrid information systems modeling in artificial intelligence 115
  11. Hybrid approaches for improving cybersecurity and network intrusion system 153
  12. IoT security enhancement through blockchain solutions 167
  13. Securing cloud data exchange related to IoT devices: key challenges and its machine learning solutions 177
  14. Hybrid information systems for modeling traffic management and control 201
  15. Integrative hybrid information systems for enhanced traffic maintenance and control in Bangalore: a synchronized approach 223
  16. A comprehensive study for weapon detection technologies for surveillance under different YoloV8 models on primary data 241
  17. Strategic design of asymmetric graphene and ReS2 field-effect transistors using nonlinear optimization and machine learning 269
  18. Recent advancements in perfect difference networks for image recognition: a survey and analysis 307
  19. Image to text to speech: a web-based application using optical character recognition and speech synthesis 329
  20. Biomimicry and nature-inspired solutions for environmental sustainability 343
  21. Intelligent analysis of flowers and knowledge generation: an empirical study for agriculture 4.0 355
  22. Harnessing the power of hybrid models for supply chain management and optimization 407
  23. Optimizing long short-term memory networks for univariate time series forecasting: a comprehensive guide 427
  24. Optimizing bidirectional long short-term memory networks for univariate time series forecasting: a comprehensive guide 443
  25. Optimizing convolutional neural networks for univariate time series forecasting: a comprehensive guide 459
  26. Optimizing gated recurrent unit networks for univariate time series forecasting: a comprehensive guide 473
  27. Artificial intelligence-based diagnosis and treatment of childhood bronchial allergies 491
  28. Index 501
Heruntergeladen am 8.9.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783111331133-010/html
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