Dynamic power management has become an imperative design factor to attain the energy efficiency in modern systems. Among various power management schemes, learning-based policies that are adaptive to different environments and applications have demonstrated superior performance to other approaches. However, they suffer the scalability problem for multiprocessors due to the increasing number of cores in a system. In this article, we propose a scalable and effective online policy called MultiLevel Reinforcement Learning (MLRL). By exploiting the hierarchical paradigm, the time complexity of MLRL is O(n lgn) for n cores and the convergence rate is greatly raised by compressing redundant searching space. Some advanced techniques, such as the fu...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
International audienceIntroducing Deep Learning in the Industrial Internet of Things (IIoT) brings m...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Power and energy is the first-class design constraint for multi-core processors and is a limiting fa...
MasterThis thesis presents a power management policy that exploits reinforcement learning to increas...
Multi/Many-core systems are prevalent in several application domains targeting different scales of c...
This paper suggests an optimisation approach in heterogeneous computing systems to balance energy po...
Embedded systems execute applications with different performance requirements. These applications ex...
In recent years, the focus of computing has moved away from performance-centric serial computation t...
With the computational systems of even embedded devices becoming ever more powerful, there is a need...
Energy consumption in large-scale distributed systems, such as computational grids and clouds gains ...
The computational burden and the time required to train a deep reinforcement learning (DRL) can be a...
Machine learning approaches have been widely adopted in recent years due to their capability of lear...
We describe an adaptive, mid-level approach to the wireless device power manage-ment problem. Our ap...
For energy management problems in smart grid, a hybrid intelligent hierarchical controller based on ...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
International audienceIntroducing Deep Learning in the Industrial Internet of Things (IIoT) brings m...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Power and energy is the first-class design constraint for multi-core processors and is a limiting fa...
MasterThis thesis presents a power management policy that exploits reinforcement learning to increas...
Multi/Many-core systems are prevalent in several application domains targeting different scales of c...
This paper suggests an optimisation approach in heterogeneous computing systems to balance energy po...
Embedded systems execute applications with different performance requirements. These applications ex...
In recent years, the focus of computing has moved away from performance-centric serial computation t...
With the computational systems of even embedded devices becoming ever more powerful, there is a need...
Energy consumption in large-scale distributed systems, such as computational grids and clouds gains ...
The computational burden and the time required to train a deep reinforcement learning (DRL) can be a...
Machine learning approaches have been widely adopted in recent years due to their capability of lear...
We describe an adaptive, mid-level approach to the wireless device power manage-ment problem. Our ap...
For energy management problems in smart grid, a hybrid intelligent hierarchical controller based on ...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
International audienceIntroducing Deep Learning in the Industrial Internet of Things (IIoT) brings m...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...