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Governance and sustainability of distributed continuum systems: a big data approach

TLDR
In this paper , a general governance and sustainable architecture for distributed computing continuum systems (DCCS) is proposed, which reflects the human body's self-healing model, and the proposed model has three stages: first, it analyzes system data to acquire knowledge; second it can leverage the knowledge to monitor and predict future conditions; and third it takes further actions to autonomously solve any issue or to alert administrators.
Abstract
Abstract Distributed computing continuum systems (DCCS) make use of a vast number of computing devices to process data generated by edge devices such as the Internet of Things and sensor nodes. Besides performing computations, these devices also produce data including, for example, event logs, configuration files, network management information. When these data are analyzed, we can learn more about the devices, such as their capabilities, processing efficiency, resource usage, and failure prediction. However, these data are available in different forms and have different attributes due to the highly heterogeneous nature of DCCS. The diversity of data poses various challenges which we discuss by relating them to big data, so that we can utilize the advantages of big data analytical tools. We enumerate several existing tools that can perform the monitoring task and also summarize their characteristics. Further, we provide a general governance and sustainable architecture for DCCS, which reflects the human body’s self-healing model. The proposed model has three stages: first, it analyzes system data to acquire knowledge; second, it can leverage the knowledge to monitor and predict future conditions; and third, it takes further actions to autonomously solve any issue or to alert administrators. Thus, the DCCS model is designed to minimize the system’s downtime while optimizing resource usage. A small set of data is used to illustrate the monitoring and prediction of the performance of a system through Bayesian network structure learning. Finally, we discuss the limitations of the governance and sustainability model, and we provide possible solutions to overcome them and make the system more efficient.

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Journal ArticleDOI

Federated Domain Generalization: A Survey

TL;DR: A survey of recent advances in federated domain generalization (FDG) can be found in this paper , where the authors discuss the development process from traditional machine learning to domain adaptation and domain generalisation, leading to FDG as well as provide the corresponding formal definition.

Towards Intelligent Data Protocols for the Edge

TL;DR: In this article , the limitations of popular data protocols used in edge networks, the need for intelligent data protocols, and their implications are discussed, and possible ways to simplify learning for edge devices and discuss how intelligent protocols can mitigate challenges such as congestion, message filtering, message expiration, prioritization, and resource handling.

Controlling Data Gravity and Data Friction: From Metrics to Multidimensional Elasticity Strategies

TL;DR: In this paper , the authors introduce Markov SLO Configurations (MSCs) as a novel approach to organize performance metrics and elasticity strategies, enabling the evaluation of SLOs, the context-based selection of elasticity strategy (i.e., corrective measures), and the execution of strategies directly on edge devices.
References
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Human-level control through deep reinforcement learning

TL;DR: This work bridges the divide between high-dimensional sensory inputs and actions, resulting in the first artificial agent that is capable of learning to excel at a diverse array of challenging tasks.
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Representation Learning: A Review and New Perspectives

TL;DR: Recent work in the area of unsupervised feature learning and deep learning is reviewed, covering advances in probabilistic models, autoencoders, manifold learning, and deep networks.
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An introduction to computing with neural nets

TL;DR: This paper provides an introduction to the field of artificial neural nets by reviewing six important neural net models that can be used for pattern classification and exploring how some existing classification and clustering algorithms can be performed using simple neuron-like components.
Journal ArticleDOI

Factors Affecting Wound Healing

TL;DR: The factors discussed include oxygenation, infection, age and sex hormones, stress, diabetes, obesity, medications, alcoholism, smoking, and nutrition, which may lead to therapeutics that improve wound healing and resolve impaired wounds.
Journal ArticleDOI

A few useful things to know about machine learning

TL;DR: Tapping into the "folk knowledge" needed to advance machine learning applications is a natural next step in the development of artificial intelligence systems.
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How does the governance of data impact the sustainability of organizations and society as a whole?

The provided paper does not directly address the impact of data governance on the sustainability of organizations and society as a whole.