Edge computing brings artificial intelligence algorithms and graphics processing units closer to data sources, making autonomy and energy-efficient processing vital for their design. Approximate computing has emerged as a popular strategy for energy-efficient circuit design, where the challenge is to achieve the best tradeoff between design efficiency and accuracy. The essential operation in artificial intelligence algorithms is the general matrix multiplication (GEMM) operation comprised of matrix multiplication and accumulation. This paper presents an approximate general matrix multiplication (AGEMM) unit that employs approximate multipliers to perform matrix–matrix operations on four-by-four matrices given in sixteen-bit signed fixed-poi...
With the explosion of AI in recent years, there has been an exponential rise in the demand for compu...
This paper investigates about the possibility to reduce power consumption in Neural Network using ap...
Efficient implementation of deep neural networks (DNNs) on CPU-based systems is critical owing to th...
The generic matrix multiply (GEMM) function is the core element of high-performance linear algebra l...
© 2022 ACM.The convolution layer is the key building block in many neural network designs. Most high...
© 2016 IEEE. Recently convolutional neural networks (ConvNets) have come up as state-of-the-art clas...
The reduced benefits offered by technology scaling in the nanoscale era call for innovative design a...
"The need to support various digital signal processing (DSP) and classification applications on...
The remarkable positive impact of Deep Neural Networks on many Artificial Intelligence (AI) tasks ha...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
The need to support various machine learning (ML) algorithms on energy-constrained computing devices...
Approximate computing is a promising approach for reducing power consumption and design complexity i...
The increasing interest in TinyML, i.e., near-sensor machine learning on power budgets of a few tens...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
With the explosion of AI in recent years, there has been an exponential rise in the demand for compu...
This paper investigates about the possibility to reduce power consumption in Neural Network using ap...
Efficient implementation of deep neural networks (DNNs) on CPU-based systems is critical owing to th...
The generic matrix multiply (GEMM) function is the core element of high-performance linear algebra l...
© 2022 ACM.The convolution layer is the key building block in many neural network designs. Most high...
© 2016 IEEE. Recently convolutional neural networks (ConvNets) have come up as state-of-the-art clas...
The reduced benefits offered by technology scaling in the nanoscale era call for innovative design a...
"The need to support various digital signal processing (DSP) and classification applications on...
The remarkable positive impact of Deep Neural Networks on many Artificial Intelligence (AI) tasks ha...
Embedding Machine Learning enables integrating intelligence in recent application domains such as In...
The need to support various machine learning (ML) algorithms on energy-constrained computing devices...
Approximate computing is a promising approach for reducing power consumption and design complexity i...
The increasing interest in TinyML, i.e., near-sensor machine learning on power budgets of a few tens...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
Increasing the energy efficiency of deep learning systems is critical for improving the cognitive ca...
With the explosion of AI in recent years, there has been an exponential rise in the demand for compu...
This paper investigates about the possibility to reduce power consumption in Neural Network using ap...
Efficient implementation of deep neural networks (DNNs) on CPU-based systems is critical owing to th...