The increasing adoption of smart systems in our daily life has led to the development of new applications with varying performance and energy constraints, and suitable computing architectures need to be developed for these new applications. In this article, we present gem5-X, a system-level simulation framework, based on gem-5, for architectural exploration of heterogeneous many-core systems. To demonstrate the capabilities of gem5-X, real-time video analytics is used as a case-study. It is composed of two kernels, namely, video encoding and image classification using convolutional neural networks (CNNs). First, we explore through gem5-X the benefits of latest 3D high bandwidth memory (HBM2) in different architectural configurations. Then, ...
Convolutional deep neural networks (CNNs) has been shown to perform well in difficult learning tasks...
International audienceThe success of Deep Learning (DL) algorithms in computer vision tasks have cre...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The increasing adoption of smart systems in our daily life has led to the development of new applica...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The expeditious proliferation of Internet connectivity and the growing adoption of digital products ...
Conference of 2015 Workshop on Rapid Simulation and Performance Evaluation: Methods and Tools, RAPID...
Analog in-memory computing (AIMC) cores offers significant performance and energy benefits for neura...
Current High Performance Embedded Architectures offer architectural improvements over previous gener...
High abstraction level models can be used within the system-level simulation to allow rapid evaluati...
There has been an explosion of growth in the field of Machine Learning (ML) enabled by the widesprea...
Accurate virtual platforms allow for crucial, early, and inexpensive assessments about the viability...
The open-source and community-supported gem5 simulator is one of the most popular tools for computer...
Convolutional deep neural networks (CNNs) has been shown to perform well in difficult learning tasks...
International audienceThe success of Deep Learning (DL) algorithms in computer vision tasks have cre...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The increasing adoption of smart systems in our daily life has led to the development of new applica...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The rapid expansion of online-based services requires novel energy and performance efficient archite...
The expeditious proliferation of Internet connectivity and the growing adoption of digital products ...
Conference of 2015 Workshop on Rapid Simulation and Performance Evaluation: Methods and Tools, RAPID...
Analog in-memory computing (AIMC) cores offers significant performance and energy benefits for neura...
Current High Performance Embedded Architectures offer architectural improvements over previous gener...
High abstraction level models can be used within the system-level simulation to allow rapid evaluati...
There has been an explosion of growth in the field of Machine Learning (ML) enabled by the widesprea...
Accurate virtual platforms allow for crucial, early, and inexpensive assessments about the viability...
The open-source and community-supported gem5 simulator is one of the most popular tools for computer...
Convolutional deep neural networks (CNNs) has been shown to perform well in difficult learning tasks...
International audienceThe success of Deep Learning (DL) algorithms in computer vision tasks have cre...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...