AbstractEmbedded CPUs typically use much less power than desktop or server CPUs but provide limited or no support for floating-point arithmetic. Hybrid reconfigurable CPUs combine fixed and reconfigurable computing fabrics to balance better execution performance and power consumption. We show how a Stretch S6 hybrid reconfigurable CPU (S6) can be extended to natively support double precision floating-point arithmetic. For lower precision number formats, multiple parallel arithmetic units can be implemented. We evaluate if the superlinear performance improvement of floating-point multiplication on reconfigurable fabrics can be exploited in the framework of a hybrid reconfigurable CPU. We provide an in-depth investigation of data paths to and...
We see that in most computers and applications the CPU is taxed, first and foremost, before other pi...
The crisis of Moore's law and new dominant Machine Learning workloads require a paradigm shift towar...
Abstract—This paper proposes Hybrid Floating-Point Modules (HFPMs) as a method to improve software f...
AbstractEmbedded CPUs typically use much less power than desktop or server CPUs but provide limited ...
UnrestrictedWith recent technological advances, it has become possible to use reconfigurable hardwar...
Ultra-low power computing is a key enabler of deeply embedded platforms used in domains such as dist...
In modern low-power embedded platforms, floating-point (FP) operations emerge as a major contributor...
Hybrid floating-point (FP) implementations improve software FP performance without incurring the are...
We disclose hardware (HW) intrinsic CPU or DSP instructions architecture and microarchitecture that ...
Reconfigurable computing offers the promise of performing computations in hardware to increase perfo...
Abstract—Energy-efficient computation is critical if we are going to continue to scale performance i...
Data-parallel applications, such as data analytics, machine learning, and scientific computing, are ...
Data-parallel applications, such as data analytics, machine learning, and scientific computing, are ...
The slowdown of Moore's law and the power wall necessitates a shift toward finely tunable precision ...
Reconfigurable architectures that tightly integrate a standard CPU core with a field-programmable ha...
We see that in most computers and applications the CPU is taxed, first and foremost, before other pi...
The crisis of Moore's law and new dominant Machine Learning workloads require a paradigm shift towar...
Abstract—This paper proposes Hybrid Floating-Point Modules (HFPMs) as a method to improve software f...
AbstractEmbedded CPUs typically use much less power than desktop or server CPUs but provide limited ...
UnrestrictedWith recent technological advances, it has become possible to use reconfigurable hardwar...
Ultra-low power computing is a key enabler of deeply embedded platforms used in domains such as dist...
In modern low-power embedded platforms, floating-point (FP) operations emerge as a major contributor...
Hybrid floating-point (FP) implementations improve software FP performance without incurring the are...
We disclose hardware (HW) intrinsic CPU or DSP instructions architecture and microarchitecture that ...
Reconfigurable computing offers the promise of performing computations in hardware to increase perfo...
Abstract—Energy-efficient computation is critical if we are going to continue to scale performance i...
Data-parallel applications, such as data analytics, machine learning, and scientific computing, are ...
Data-parallel applications, such as data analytics, machine learning, and scientific computing, are ...
The slowdown of Moore's law and the power wall necessitates a shift toward finely tunable precision ...
Reconfigurable architectures that tightly integrate a standard CPU core with a field-programmable ha...
We see that in most computers and applications the CPU is taxed, first and foremost, before other pi...
The crisis of Moore's law and new dominant Machine Learning workloads require a paradigm shift towar...
Abstract—This paper proposes Hybrid Floating-Point Modules (HFPMs) as a method to improve software f...