Approximate computing allows the introduction of inaccuracy in the computation for cost savings, such as energy consumption, chip-area, and latency. Targeting energy efficiency, approximate designs for multipliers, adders, and multiply-accumulate (MAC) have been extensively investigated in the past decade. However, accelerator designs for relatively bigger architectures have been of less attention yet. The Least Squares (LS) algorithm is widely used in digital signal processing applications, e.g., image reconstruction. This work proposes a novel LS accelerator design based on a heterogeneous architecture, where the heterogeneity is introduced using accurate and approximate processing cores. We have considered a case study of radio astronomy...
Approximate computing is a design paradigm considered for a range of applications that can tolerate ...
Modern radio telescopes require highly energy/power-efficient computing systems. Signal processing p...
The need to support various machine learning (ML) algorithms on energy-constrained computing devices...
Computing devices have been constantly challenged by resource-hungry applications such as scientific...
In the last decade, the need for efficiency in computing has motivated the coming forth of new devic...
Radio telescopes produce large volumes of data that need to be processed to obtain high-resolution s...
"The need to support various digital signal processing (DSP) and classification applications on...
The approximate and stochastic computing have been developed, on the one hand, to address the dimini...
Computation accuracy can be adequately tuned on the specific application requirements in order to re...
Approximate computing studies the quality-efficiency trade-off to attain a best-efficiency (e.g., ar...
Approximate computing strives to achieve the highest performance-, area-, and power-efficiency for a...
Abstract — Approximate computing has recently emerged as a promising approach to energy-efficient de...
Approximate computing has emerged as a design paradigm suitable for applications with inherent error...
As key building blocks for digital signal processing, image processing and deep learning etc, adders...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
Approximate computing is a design paradigm considered for a range of applications that can tolerate ...
Modern radio telescopes require highly energy/power-efficient computing systems. Signal processing p...
The need to support various machine learning (ML) algorithms on energy-constrained computing devices...
Computing devices have been constantly challenged by resource-hungry applications such as scientific...
In the last decade, the need for efficiency in computing has motivated the coming forth of new devic...
Radio telescopes produce large volumes of data that need to be processed to obtain high-resolution s...
"The need to support various digital signal processing (DSP) and classification applications on...
The approximate and stochastic computing have been developed, on the one hand, to address the dimini...
Computation accuracy can be adequately tuned on the specific application requirements in order to re...
Approximate computing studies the quality-efficiency trade-off to attain a best-efficiency (e.g., ar...
Approximate computing strives to achieve the highest performance-, area-, and power-efficiency for a...
Abstract — Approximate computing has recently emerged as a promising approach to energy-efficient de...
Approximate computing has emerged as a design paradigm suitable for applications with inherent error...
As key building blocks for digital signal processing, image processing and deep learning etc, adders...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
Approximate computing is a design paradigm considered for a range of applications that can tolerate ...
Modern radio telescopes require highly energy/power-efficient computing systems. Signal processing p...
The need to support various machine learning (ML) algorithms on energy-constrained computing devices...