Madhusudhan H Optimizing Edge and Fog Computing Applications with AI...2026
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Madhusudhan H Optimizing Edge and Fog Computing Applications with AI...2026
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Last updated: 12 minutes ago (2025-09-13 14:57:47)
Description:
Textbook in PDF format
Fog and edge computing are two paradigms that have emerged to address the challenges associated with processing and managing data in the era of the Internet of Things (IoT). Both models involve moving computation and data storage closer to the source of data generation, but they have subtle differences in their architectures and scopes. These differences are one of the subjects covered in Optimizing Edge and Fog Computing Applications with AI and Metaheuristic Algorithms. Other subjects covered in the book include:
Designing Machine Learning (ML) algorithms that are aware of the resource constraints at the edge and fog layers ensures efficient use of computational resources
Resource-aware models using ML and deep leaning models that can adapt their complexity based on available resources and balancing the load, allowing for better scalability
Implementing secure ML algorithms and models to prevent adversarial attacks and ensure data privacy
Securing the communication channels between edge devices, fog nodes, and the cloud to protect model updates and inferences
Kubernetes container orchestration for fog computing
Federated learning that enables model training across multiple edge devices without the need to share raw data
The book discusses how resource optimization in fog and edge computing is crucial for achieving efficient and effective processing of data close to the source. It explains how both fog and edge computing aim to enhance system performance, reduce latency, and improve overall resource utilization. It examines the combination of intelligent algorithms, effective communication protocols, and dynamic management strategies required to adapt to changing conditions and workload demands. The book explains how security in fog and edge computing requires a combination of technological measures, advanced techniques, user awareness, and organizational policies to effectively protect data and systems from evolving security threats. Finally, it looks forward with coverage of ongoing research and development, which are essential for refining optimization techniques and ensuring the scalability and sustainability of fog and edge computing environments.
To achieve the simulation of edge server cloudlet offloading, this study reviews various possible scenarios to compare the algorithms proposed. It utilizes a Python-based framework to develop the algorithm rather than creating a new simulation architecture in the interest of time and computation necessary for testing. The simulation framework adopted for this study is EdgeSimPy. It is a Python-based edge server simulation framework architecture that allows the simulation to be aided with pre-existing simulation data sets consisting of base stations, network switches, edge servers, and users. The simulation aids in the monitoring of data flow, resource utilization, bandwidth of the edge servers, and other parameters for comparison of the placement algorithm. SimPy which is an abstract class over EdgeSimPy is a generic tool based on Python for simulation of different parameters. It is generally used for resource utilization simulation and EdgeSimPy is a specific use case of SimPy for edge server and cloudlet offloading scenarios.
Introduction to Resource Optimization in Fog and Edge Computing
Artificial Intelligence Inspired Scheduling in Edge Computing
Supervised Machine Learning for Load Balancing in Fog Environments
Blockchain-Based Secure Data Sharing System in Fog–Edge System
Securing IoT System Using ML Models
Federated Machine Learning Algorithm Aggregation Strategy for Collaborative Predictive Maintenance
Advance Machine Learning Algorithm Aggregation Strategy for Decentralized Collaborative Models
Artificial Intelligence and Machine Learning-Based Predictive Maintenance in Fog and Edge Computing Environment
Deep Reinforcement Learning-Based Task Scheduling in Edge Computing
Secure, Adaptable, and Collaborative AI: Federated Machine Learning Enhanced with Meta-Learning and Differential Privacy
EP-MPCHS: Edge Server-Based Cloudlet Offloading Using Multi-Core and Parallel Heap Structures