The datasets have been collected by benchmarking three algorithms for Transprecision Computing (Correlation, Convolution, Saxpy), on three different hardware platforms (pc, vm, g100). Transprecision Computing1 is a paradigm that allows users to trade the energy associated with computation in exchange for a reduction in the quality of the computation results. In this complex domain, a typical target are Floating-point (FP) operations: transprecision techniques allow to specify the number of bits used to represent FP variables, and using a smaller number of bits decreases the precision, thus saving energy. To analytically calculate the impact of varying the number of bits on the computation results for programs with more than a couple of ins...
Thesis (Ph.D.)--University of Washington, 2015Approximate computing is the idea that we are hinderin...
International audienceIn recent years, Coarse Grain Reconfigurable Architecture (CGRA) accelerators ...
International audienceA new design paradigm, Approximate Computing (AxC), has been established to in...
For many years, computing systems rely on guaranteed numerical precision of each step in complex com...
The growing demands of the worldwide IT infrastructure stress the need for reduced power consumption...
International audienceFull-precision Floating-Point Units (FPUs) can be a source of extensive hardwa...
Guaranteed numerical precision of each elementary step in a complex computation has been the mainsta...
In recent years approximate computing has been extensively explored as a paradigm to design hardware...
As scientific computation continues to scale, it is crucial to use floating-point arithmetic process...
Reduced-precision floating-point (FP) arithmetic is being widely adopted to reduce memory footprint ...
Presented at NiPS Summer School 2019, Perugia (Italy)This work presents results using transprecision...
In modern low-power embedded platforms, floating-point (FP) operations emerge as a major contributor...
Floating-point computations produce approximate results, which can lead to inaccuracy problems. Exis...
Time series analysis (TSA) comprises methods for extracting information in domains as diverse as med...
Thesis (Ph.D.)--University of Washington, 2015Approximate computing is the idea that we are hinderin...
International audienceIn recent years, Coarse Grain Reconfigurable Architecture (CGRA) accelerators ...
International audienceA new design paradigm, Approximate Computing (AxC), has been established to in...
For many years, computing systems rely on guaranteed numerical precision of each step in complex com...
The growing demands of the worldwide IT infrastructure stress the need for reduced power consumption...
International audienceFull-precision Floating-Point Units (FPUs) can be a source of extensive hardwa...
Guaranteed numerical precision of each elementary step in a complex computation has been the mainsta...
In recent years approximate computing has been extensively explored as a paradigm to design hardware...
As scientific computation continues to scale, it is crucial to use floating-point arithmetic process...
Reduced-precision floating-point (FP) arithmetic is being widely adopted to reduce memory footprint ...
Presented at NiPS Summer School 2019, Perugia (Italy)This work presents results using transprecision...
In modern low-power embedded platforms, floating-point (FP) operations emerge as a major contributor...
Floating-point computations produce approximate results, which can lead to inaccuracy problems. Exis...
Time series analysis (TSA) comprises methods for extracting information in domains as diverse as med...
Thesis (Ph.D.)--University of Washington, 2015Approximate computing is the idea that we are hinderin...
International audienceIn recent years, Coarse Grain Reconfigurable Architecture (CGRA) accelerators ...
International audienceA new design paradigm, Approximate Computing (AxC), has been established to in...