Implementing embedded neural network processing at the edge requires efficient hardware acceleration that combines high computational throughput with low power consumption. Driven by the rapid evolution of network architectures and their algorithmic features, accelerator designs are constantly being adapted to support the improved functionalities. Hardware designers can refer to a myriad of accelerator implementations in the literature to evaluate and compare hardware design choices. However, the sheer number of publications and their diverse optimization directions hinder an effective assessment. Existing surveys provide an overview of these works but are often limited to system-level and benchmark-specific performance metrics, making it d...
Deep Neural Networks (DNNs) are widely used in various application domains and achieve remarkable re...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...
In this paper we propose using machine learning to improve the design of deep neural network hardwar...
Implementing embedded neural network processing at the edge requires efficient hardware acceleration...
Over the last ten years, the rise of deep learning has redefined the state-of-the-art in many comput...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Current applications that require processing of large amounts of data, such as in healthcare, trans...
Contemporary advances in neural networks (NNs) have demonstrated their potential in different appli...
Deep learning is a rising topic at the edge of technology, with applications in many areas of our li...
The design of a Convolutional Neural Network suitable for efficient execution on embedded edge-proce...
ML is vastly utilized in a variety of applications such as voice recognition, computer vision, image...
The development of computing systems based on the conventional von Neumann architecture has slowed d...
Edge TPUs are a domain of accelerators for low-power, edge devices and are widely used in various Go...
Recently, automated co-design of machine learning (ML) models and accelerator architectures has attr...
Recent success of machine learning in a broad spectrum of fields has awakened a new era of artificia...
Deep Neural Networks (DNNs) are widely used in various application domains and achieve remarkable re...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...
In this paper we propose using machine learning to improve the design of deep neural network hardwar...
Implementing embedded neural network processing at the edge requires efficient hardware acceleration...
Over the last ten years, the rise of deep learning has redefined the state-of-the-art in many comput...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Current applications that require processing of large amounts of data, such as in healthcare, trans...
Contemporary advances in neural networks (NNs) have demonstrated their potential in different appli...
Deep learning is a rising topic at the edge of technology, with applications in many areas of our li...
The design of a Convolutional Neural Network suitable for efficient execution on embedded edge-proce...
ML is vastly utilized in a variety of applications such as voice recognition, computer vision, image...
The development of computing systems based on the conventional von Neumann architecture has slowed d...
Edge TPUs are a domain of accelerators for low-power, edge devices and are widely used in various Go...
Recently, automated co-design of machine learning (ML) models and accelerator architectures has attr...
Recent success of machine learning in a broad spectrum of fields has awakened a new era of artificia...
Deep Neural Networks (DNNs) are widely used in various application domains and achieve remarkable re...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...
In this paper we propose using machine learning to improve the design of deep neural network hardwar...