Machine learning (ML) algorithms are already transforming the way data are collected and processed in the data center, where some form of AI has permeated most areas of computing. The integration of AI algorithms at the edge is the next logical step which is already under investigation. However, harnessing such algorithms at the edge will require more computing power than what current platforms offer. In this paper, we present an FPGA system-on-chip-based architecture that supports the acceleration of ML algorithms in an edge environment. The system supports dynamic deployment of ML functions driven either locally or remotely, thus achieving a remarkable degree of flexibility . We demonstrate the efficacy of this architecture by executing a...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...
abstract: Machine learning is a powerful tool for processing and understanding the vast amounts of d...
The forum provides a comprehensive full-stack (hardware and software) view of ML acceleration from c...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
In Internet of Things (IoT) scenarios, it is challenging to deploy Machine Learning (ML) algorithms ...
Edge AI systems are increasingly being adopted in a wide range of application domains. These systems...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
Despite their resource- and power-constrained nature, edge devices also exhibit an increase in the a...
Today, Artificial Intelligence is one of the most important technologies, ubiquitous in our daily li...
This thesis introduces novel frameworks for automated customization of two classes of machine learni...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Modern machine learning (ML) applications are often deployed in the cloud environment to exploit the...
In recent years, with the development of high-performance computing devices, convolutional neural ne...
GPU servers have been responsible for the recent improvements in the accuracy and inference speed of...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...
abstract: Machine learning is a powerful tool for processing and understanding the vast amounts of d...
The forum provides a comprehensive full-stack (hardware and software) view of ML acceleration from c...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
In Internet of Things (IoT) scenarios, it is challenging to deploy Machine Learning (ML) algorithms ...
Edge AI systems are increasingly being adopted in a wide range of application domains. These systems...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
Despite their resource- and power-constrained nature, edge devices also exhibit an increase in the a...
Today, Artificial Intelligence is one of the most important technologies, ubiquitous in our daily li...
This thesis introduces novel frameworks for automated customization of two classes of machine learni...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
Modern machine learning (ML) applications are often deployed in the cloud environment to exploit the...
In recent years, with the development of high-performance computing devices, convolutional neural ne...
GPU servers have been responsible for the recent improvements in the accuracy and inference speed of...
Recent developments in Artificial Intelligence (AI) research enable new strategies for running Machi...
abstract: Machine learning is a powerful tool for processing and understanding the vast amounts of d...
The forum provides a comprehensive full-stack (hardware and software) view of ML acceleration from c...