International audienceFPGA devices have been proving to be good candidates to accelerate applications from different research topics. For instance, machine learning applications such as K-Means clustering usually relies on large amount of data to be processed, and, despite the performance offered by other architectures, FPGAs can offer better energy efficiency. With that in mind, Intel ® has launched a platform that integrates a multicore and an FPGA in the same package, enabling low latency and coherent fine-grained data offload. In this paper, we present a parallel implementation of the K-Means clustering algorithm, for this novel platform, using OpenCL language, and compared it against other platforms. We found that the CPU+FPGA platform...
open6siThe steeply growing performance demands for highly power- and energy-constrained processing s...
Nowadays, a new parallel paradigm for energy-efficient heterogeneous hardware infrastructures is req...
The recent upsurge in the available amount of health data and the advances in next-generation sequen...
International audienceFPGA devices have been proving to be good candidates to accelerate application...
Clustering is the task of assigning a set of objects into groups (clusters) so that objects in the s...
Nowadaysanenormousamountofdynamic,heterogeneous,complexandunboundeddatawasobtainedfromvarioussectors...
This paper presents and analyzes a heterogeneous implementation of an industrial use case based on K...
The design and implementation of the k-means clustering algorithm on an FPGA-accelerated computer cl...
The growing trend toward heterogeneous platforms is crucial to meet time and power consumption const...
In this paper, a configurable many-core hardware/ software architecture is proposed to efficiently ...
Field Programmable Gate Arrays (FPGAs) have been widely used for accelerating machine learning algor...
FPGAs have shown great promise for accelerating computationally intensive algorithms. However, FPGA-...
This paper presents a framework targeted to low-cost and low-power heterogeneous MultiProcessors tha...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
With the advent of big data and cloud computing, there is tremendous interest in optimised algorithm...
open6siThe steeply growing performance demands for highly power- and energy-constrained processing s...
Nowadays, a new parallel paradigm for energy-efficient heterogeneous hardware infrastructures is req...
The recent upsurge in the available amount of health data and the advances in next-generation sequen...
International audienceFPGA devices have been proving to be good candidates to accelerate application...
Clustering is the task of assigning a set of objects into groups (clusters) so that objects in the s...
Nowadaysanenormousamountofdynamic,heterogeneous,complexandunboundeddatawasobtainedfromvarioussectors...
This paper presents and analyzes a heterogeneous implementation of an industrial use case based on K...
The design and implementation of the k-means clustering algorithm on an FPGA-accelerated computer cl...
The growing trend toward heterogeneous platforms is crucial to meet time and power consumption const...
In this paper, a configurable many-core hardware/ software architecture is proposed to efficiently ...
Field Programmable Gate Arrays (FPGAs) have been widely used for accelerating machine learning algor...
FPGAs have shown great promise for accelerating computationally intensive algorithms. However, FPGA-...
This paper presents a framework targeted to low-cost and low-power heterogeneous MultiProcessors tha...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
With the advent of big data and cloud computing, there is tremendous interest in optimised algorithm...
open6siThe steeply growing performance demands for highly power- and energy-constrained processing s...
Nowadays, a new parallel paradigm for energy-efficient heterogeneous hardware infrastructures is req...
The recent upsurge in the available amount of health data and the advances in next-generation sequen...