International audienceWith the growing complexity of applications, designers need to fit more and more computing kernels into a limited energy or area budget. Therefore, improving the quality of results of applications in electronic devices with a constraint on its cost is becoming a critical problem. Word Length Optimization (WLO) is the process of determining bit-width for variables or operations represented using fixed-point arithmetic to trade-off between quality and cost. State-of-the-art approaches mainly solve WLO given a quality (accuracy) constraint. In this paper, we first show that existing WLO procedures are not adapted to solve the problem of optimizing accuracy given a cost constraint. It is then interesting and challenging to...
Approximate computing is an emerging computation paradigm in the era of the Internet of things, big ...
This paper presents an approach to the wordlength allocation and optimization problem for linear dig...
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...
Energy consumption is one of the major issues in computing today, shared by all domains of computer ...
This thesis is concerned with the optimisation of Digital Signal Processing (DSP) algorithm impleme...
International audienceUsing just the right amount of numerical precision is an important aspect for ...
Automatic optimization of application-specific instruction-set processor (ASIP) architectures mostly...
The word-length of Functional Units (FU) has a great impact on design costs. This paper addresses th...
The slowdown of Moore's law, which has been the driving force of the electronics industry over the l...
Given the diffusion of Artificial Intelligence (AI) in numerous domains, experts and practitioners ...
This paper addresses the problem of choosing different word-lengths for each functional unit in fixe...
International audienceField programmable gate arrays (FPGAs) are now considered as a real alternativ...
International audienceImplementing image processing applications in embedded systems is a difficult ...
Approximate computing is a technique that exploits trade-offs between energy/performance and quality...
Approximate computing is an emerging computation paradigm in the era of the Internet of things, big ...
This paper presents an approach to the wordlength allocation and optimization problem for linear dig...
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...
Energy consumption is one of the major issues in computing today, shared by all domains of computer ...
This thesis is concerned with the optimisation of Digital Signal Processing (DSP) algorithm impleme...
International audienceUsing just the right amount of numerical precision is an important aspect for ...
Automatic optimization of application-specific instruction-set processor (ASIP) architectures mostly...
The word-length of Functional Units (FU) has a great impact on design costs. This paper addresses th...
The slowdown of Moore's law, which has been the driving force of the electronics industry over the l...
Given the diffusion of Artificial Intelligence (AI) in numerous domains, experts and practitioners ...
This paper addresses the problem of choosing different word-lengths for each functional unit in fixe...
International audienceField programmable gate arrays (FPGAs) are now considered as a real alternativ...
International audienceImplementing image processing applications in embedded systems is a difficult ...
Approximate computing is a technique that exploits trade-offs between energy/performance and quality...
Approximate computing is an emerging computation paradigm in the era of the Internet of things, big ...
This paper presents an approach to the wordlength allocation and optimization problem for linear dig...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...