The operational cost of a cloud computing platform is one of the most significant Quality of Service (QoS) criteria for schedulers, crucial to keep up with the growing computational demands. Several data-driven deep neural network (DNN)-based schedulers have been proposed in recent years that outperform alternative approaches by providing scalable and effective resource management for dynamic workloads. However, state-of-the-art schedulers rely on advanced DNNs with high computational requirements, implying high scheduling costs. In non-stationary contexts, the most sophisticated schedulers may not always be required, and it may be sufficient to rely on low-cost schedulers to temporarily save operational costs. In this work, we propose Meta...
Cloud Computing is the most powerful computing model of our time. While the major IT providers and c...
The ability to manage the distributed functionality of large multi-vendor networks will be an import...
Task scheduling is key to performance optimization and resource management in cloud computing system...
The operational cost of a cloud computing platform is one of the most significant Quality of Service...
Task scheduling is a well-studied problem in the context of optimizing the Quality of Service (QoS) ...
Thesis (Ph.D.)--University of Washington, 2019Today, Deep Neural Networks (DNNs) can recognize faces...
Cloud computing is a mainstay of modern technology, offering cost-effective and scalable solutions t...
With the rise of IoT devices and the necessity of intelligent applications, inference tasks are ofte...
Energy-related costs have become one of the major economic factors in IT data-centers, and companies...
Workflow Scheduling is a huge challenge in cloud paradigm as many number of workflows dynamically ge...
In recent decades, cloud computing has gained popularity due to the extensive collection of autonomo...
With energy shortages and global climate change leading our concerns these days, the power consumpti...
As artificial intelligence (AI) and machine learning (ML) technologies disrupt a wide range of indus...
© 2021 IEEE.To meet surging demands for deep learning inference services, many cloud computing vendo...
Cloud Data Computing (CDC) is conducive to precise energy-saving management of user data centers bas...
Cloud Computing is the most powerful computing model of our time. While the major IT providers and c...
The ability to manage the distributed functionality of large multi-vendor networks will be an import...
Task scheduling is key to performance optimization and resource management in cloud computing system...
The operational cost of a cloud computing platform is one of the most significant Quality of Service...
Task scheduling is a well-studied problem in the context of optimizing the Quality of Service (QoS) ...
Thesis (Ph.D.)--University of Washington, 2019Today, Deep Neural Networks (DNNs) can recognize faces...
Cloud computing is a mainstay of modern technology, offering cost-effective and scalable solutions t...
With the rise of IoT devices and the necessity of intelligent applications, inference tasks are ofte...
Energy-related costs have become one of the major economic factors in IT data-centers, and companies...
Workflow Scheduling is a huge challenge in cloud paradigm as many number of workflows dynamically ge...
In recent decades, cloud computing has gained popularity due to the extensive collection of autonomo...
With energy shortages and global climate change leading our concerns these days, the power consumpti...
As artificial intelligence (AI) and machine learning (ML) technologies disrupt a wide range of indus...
© 2021 IEEE.To meet surging demands for deep learning inference services, many cloud computing vendo...
Cloud Data Computing (CDC) is conducive to precise energy-saving management of user data centers bas...
Cloud Computing is the most powerful computing model of our time. While the major IT providers and c...
The ability to manage the distributed functionality of large multi-vendor networks will be an import...
Task scheduling is key to performance optimization and resource management in cloud computing system...