The growing demands of the worldwide IT infrastructure stress the need for reduced power consumption, which is addressed in so-called transprecision computing by improving energy efficiency at the expense of precision. For example, reducing the number of bits for some floating-point operations leads to higher efficiency, but also to a non-linear decrease of the computation accuracy. Depending on the application, small errors can be tolerated, thus allowing to fine-tune the precision of the computation. Finding the optimal precision for all variables in respect of an error bound is a complex task, which is tackled in the literature via heuristics. In this paper, we report on a first attempt to address the problem by combining a Mathematical ...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
International audienceWith the growing complexity of applications, designers need to fit more and mo...
Time series analysis (TSA) comprises methods for extracting information in domains as diverse as med...
The growing demands of the worldwide IT infrastructure stress the need for reduced power consumption...
The datasets have been collected by benchmarking three algorithms for Transprecision Computing (Corr...
International audienceFull-precision Floating-Point Units (FPUs) can be a source of extensive hardwa...
Traditional optimization methods rely on the use of single-precision floating point arithmetic, whic...
For many years, computing systems rely on guaranteed numerical precision of each step in complex com...
The precision used in an algorithm affects the error and performance of individual computations, the...
open3siIn recent years approximate computing has been extensively explored as a paradigm to design h...
ixed precision is an approximate computing technique that can be used to trade-off computation accur...
Full-precision Floating-Point Units (FPUs) can be a source of extensive hardware overhead in general...
Guaranteed numerical precision of each elementary step in a complex computation has been the mainsta...
International audienceThis short note considers an efficient variant of the trust-region algorithm w...
Reduced-precision floating-point (FP) arithmetic is being widely adopted to reduce memory footprint ...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
International audienceWith the growing complexity of applications, designers need to fit more and mo...
Time series analysis (TSA) comprises methods for extracting information in domains as diverse as med...
The growing demands of the worldwide IT infrastructure stress the need for reduced power consumption...
The datasets have been collected by benchmarking three algorithms for Transprecision Computing (Corr...
International audienceFull-precision Floating-Point Units (FPUs) can be a source of extensive hardwa...
Traditional optimization methods rely on the use of single-precision floating point arithmetic, whic...
For many years, computing systems rely on guaranteed numerical precision of each step in complex com...
The precision used in an algorithm affects the error and performance of individual computations, the...
open3siIn recent years approximate computing has been extensively explored as a paradigm to design h...
ixed precision is an approximate computing technique that can be used to trade-off computation accur...
Full-precision Floating-Point Units (FPUs) can be a source of extensive hardware overhead in general...
Guaranteed numerical precision of each elementary step in a complex computation has been the mainsta...
International audienceThis short note considers an efficient variant of the trust-region algorithm w...
Reduced-precision floating-point (FP) arithmetic is being widely adopted to reduce memory footprint ...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
International audienceWith the growing complexity of applications, designers need to fit more and mo...
Time series analysis (TSA) comprises methods for extracting information in domains as diverse as med...