We present dimensional circuit synthesis, a new method for generating digital logic circuits that improve the efficiency of training and inference of machine learning models from sensor data. The hardware accelerators that the method generates are compact enough (a few thousand gates) to allow integration within low-cost miniaturized sensor integrated circuits, right next to the sensor transducer. The method takes as input a description of physical properties of relevant signals in the sensor transduction process and generates as output a Verilog register transfer level (RTL) description for a circuit that computes low-level features that exploit the units of measure of the signals in the system. We implement dimensional circuit synthesis a...
This work presents and compare three realistic scenarios to perform near sensor decision making base...
Machine learning is fast becoming a cornerstone in many data analytic, image processing and scientif...
Neural networks running on FPGAs offer great potential for creative applications in realtime audio a...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
Machine learning methods are ubiquitous in particle physics and have proven to be very performant. O...
Best paper awardInternational audienceHigh level synthesis (HLS) refers to an automated process that...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
A method for synthesis of digital hardware classification circuits is presented in this paper. The m...
Machine learning is becoming increasingly important in this era of big data. It enables us to extrac...
Design automation in general, and in particular logic synthesis, can play a key role in enabling the...
International audienceThe wide landscape of memory-hungry and compute-intensive Convolutional Neural...
Traditionally, three metrics have been used to evaluate the quality of logic circuits -- size, speed...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
With the evolution of machine learning algorithms they are seeing a wider use in traditional signal ...
This paper is focused on the theoretical development and the hardware implementation of low-complexi...
This work presents and compare three realistic scenarios to perform near sensor decision making base...
Machine learning is fast becoming a cornerstone in many data analytic, image processing and scientif...
Neural networks running on FPGAs offer great potential for creative applications in realtime audio a...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
Machine learning methods are ubiquitous in particle physics and have proven to be very performant. O...
Best paper awardInternational audienceHigh level synthesis (HLS) refers to an automated process that...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
A method for synthesis of digital hardware classification circuits is presented in this paper. The m...
Machine learning is becoming increasingly important in this era of big data. It enables us to extrac...
Design automation in general, and in particular logic synthesis, can play a key role in enabling the...
International audienceThe wide landscape of memory-hungry and compute-intensive Convolutional Neural...
Traditionally, three metrics have been used to evaluate the quality of logic circuits -- size, speed...
There is an urgent need for compact, fast, and power-efficient hardware implementations of state-of-...
With the evolution of machine learning algorithms they are seeing a wider use in traditional signal ...
This paper is focused on the theoretical development and the hardware implementation of low-complexi...
This work presents and compare three realistic scenarios to perform near sensor decision making base...
Machine learning is fast becoming a cornerstone in many data analytic, image processing and scientif...
Neural networks running on FPGAs offer great potential for creative applications in realtime audio a...