A plethora of applications are using machine learning, the operations of which are becoming more complex and require additional computing power. At the same time, typical commodity system setups (including desktops, servers, and embedded devices) are now offering different processing devices, the most often of which are multi-core CPUs, integrated GPUs, and discrete GPUs. In this paper, we follow a data-driven approach, where we first show the performance of different processing devices when executing a diversified set of inference engines; some processing devices perform better for different performance metrics (e.g., throughput, latency, and power consumption), while at the same time, these metrics may also deviate significantly among di...
To accelerate the inference of machine-learning (ML) model serving, clusters of machines require the...
Taufer, MichelaHigh performance computing (HPC) is undergoing many changes at both the system and wo...
Over the last years, the ever-growing number of Machine Learning(ML) and Artificial Intelligence(AI)...
A plethora of applications are using machine learning, the operations of which are becoming more com...
DL has pervaded many areas of computing due to the confluence of the explosive growth of large-scale...
With the widespread using of GPU hardware facilities, more and more distributed machine learning app...
Our work seeks to improve and adapt computing systems and machine learning (ML) algorithms to match ...
As 5G is getting closer to being commercially available, base stations processing this traffic must ...
Heterogeneous computing machines consisting of a CPU and one or more GPUs are increasingly being use...
International audienceHeterogeneous architectures are currently widespread. With the advent of easy-...
Scientific applications often require massive amounts of compute time and power. With the constantly...
International audienceWhile heterogeneous architectures are increasing popular with High Performance...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
Heterogeneous architectures are currently widespread. With the advent of easy-to-program general pu...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
To accelerate the inference of machine-learning (ML) model serving, clusters of machines require the...
Taufer, MichelaHigh performance computing (HPC) is undergoing many changes at both the system and wo...
Over the last years, the ever-growing number of Machine Learning(ML) and Artificial Intelligence(AI)...
A plethora of applications are using machine learning, the operations of which are becoming more com...
DL has pervaded many areas of computing due to the confluence of the explosive growth of large-scale...
With the widespread using of GPU hardware facilities, more and more distributed machine learning app...
Our work seeks to improve and adapt computing systems and machine learning (ML) algorithms to match ...
As 5G is getting closer to being commercially available, base stations processing this traffic must ...
Heterogeneous computing machines consisting of a CPU and one or more GPUs are increasingly being use...
International audienceHeterogeneous architectures are currently widespread. With the advent of easy-...
Scientific applications often require massive amounts of compute time and power. With the constantly...
International audienceWhile heterogeneous architectures are increasing popular with High Performance...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
Heterogeneous architectures are currently widespread. With the advent of easy-to-program general pu...
The execution of multi-inference tasks on low-powered edge devices has become increasingly popular i...
To accelerate the inference of machine-learning (ML) model serving, clusters of machines require the...
Taufer, MichelaHigh performance computing (HPC) is undergoing many changes at both the system and wo...
Over the last years, the ever-growing number of Machine Learning(ML) and Artificial Intelligence(AI)...