Design-space exploration for low-power manycore design is a daunting and time-consuming task which requires some complex tools and frameworks to achieve. In the presence of process variation, the problem becomes even more challenging, especially the time associated with trial-and-error selection of the proper options in the tools to obtain the optimal power dissipation. The key contribution of this work is the novel use of machine learning to speed up the design process by embedding the tool expertise needed for low power design-space exploration for manycores into a trained neural network. To enable this, we first generate a large volume of data for 36000 benchmark applications by running them under all possible configurations to find the ...
The need for products that are more streamlined, more useful, and have longer battery lives is risin...
International audienceIn this paper, we present a new, simple, accurate and fast power estimation te...
In this dissertation, several machine learning strategies are presented to advance solution capabili...
Design-space exploration for low-power manycore design is a daunting and time-consuming task which r...
As multi-core processor architectures with tens or even hundreds of cores, not all of them necessari...
The complexity of many-core processors continues to grow as a larger number of heterogeneous cores a...
Designing new microprocessors is a time consuming task. Architects rely on slow simulators to evalua...
In this paper we propose using machine learning to improve the design of deep neural network hardwar...
Many emerging applications require hardware acceleration due to their growing computational intensit...
This master’s thesis is about the use of machine learning techniques in the field of nanoelectronic ...
The vast number of transistors available through modern fabrication technology gives architects an u...
Energy and power are the main design constraints for modern high-performance computing systems. Inde...
architectures are currently designed by using platform-based synthesis techniques. In these approach...
Abstract—The microarchitectural design space of a new processor is too large for an architect to eva...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
The need for products that are more streamlined, more useful, and have longer battery lives is risin...
International audienceIn this paper, we present a new, simple, accurate and fast power estimation te...
In this dissertation, several machine learning strategies are presented to advance solution capabili...
Design-space exploration for low-power manycore design is a daunting and time-consuming task which r...
As multi-core processor architectures with tens or even hundreds of cores, not all of them necessari...
The complexity of many-core processors continues to grow as a larger number of heterogeneous cores a...
Designing new microprocessors is a time consuming task. Architects rely on slow simulators to evalua...
In this paper we propose using machine learning to improve the design of deep neural network hardwar...
Many emerging applications require hardware acceleration due to their growing computational intensit...
This master’s thesis is about the use of machine learning techniques in the field of nanoelectronic ...
The vast number of transistors available through modern fabrication technology gives architects an u...
Energy and power are the main design constraints for modern high-performance computing systems. Inde...
architectures are currently designed by using platform-based synthesis techniques. In these approach...
Abstract—The microarchitectural design space of a new processor is too large for an architect to eva...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
The need for products that are more streamlined, more useful, and have longer battery lives is risin...
International audienceIn this paper, we present a new, simple, accurate and fast power estimation te...
In this dissertation, several machine learning strategies are presented to advance solution capabili...