A growing number of commercial and enterprise systems are increasingly relying on compute-intensive machine learning algorithms. While the demand for these apaplications is growing, the performance benefits from general-purpose platforms is diminishing. This challenge has coincided with the explosion of data where the rate of data generation has reached an overwhelming level that is beyond the capabilities of current computing systems. Therefore, applications such as machine learning and robotics can benefit from hardware acceleration. Traditionally, to accelerate a set of workloads, we pro- file the code optimized for CPUs and offload the hot functions on hardware compute units designed specially for that particular function, hence providi...
The constant growth of datacenters and cloud computing comes with an increase of power consumption. ...
Advances in high-performance computer architecture design have been a major driver for the rapid evo...
Yearly increases in computer performance have diminished as of late, mostly due to the inability of ...
Over the last decades, general-purpose computing stack and its abstractions have provided both perfo...
A growing number of commercial and enterprise systems rely on compute and power intensive tasks. Whi...
Machine learning enables the extraction of knowledge from data and decision-making without explicit ...
Machine learning applications are computationally expensive, but they can benefit from hardware acce...
Optimizing computational power is critical in the age of data-intensive applications and Artificial ...
Machine learning has risen to prominence in recent years thanks to advancements in computer technolo...
Heterogeneous parallel architectures like those comprised of CPUs and GPUs are a tantalizing compute...
Research areas: Heterogeneous Computing, Statistical Machine Learning, Accelerator DesignA growing n...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
This paper documents the investigation and implementation of the mathematics behind artificial intel...
The needs of entertainment industry in the field of personal computers always require more realistic...
The adoption of hardware accelerators, such as Field-Programmable Gate Arrays, into general-purpose ...
The constant growth of datacenters and cloud computing comes with an increase of power consumption. ...
Advances in high-performance computer architecture design have been a major driver for the rapid evo...
Yearly increases in computer performance have diminished as of late, mostly due to the inability of ...
Over the last decades, general-purpose computing stack and its abstractions have provided both perfo...
A growing number of commercial and enterprise systems rely on compute and power intensive tasks. Whi...
Machine learning enables the extraction of knowledge from data and decision-making without explicit ...
Machine learning applications are computationally expensive, but they can benefit from hardware acce...
Optimizing computational power is critical in the age of data-intensive applications and Artificial ...
Machine learning has risen to prominence in recent years thanks to advancements in computer technolo...
Heterogeneous parallel architectures like those comprised of CPUs and GPUs are a tantalizing compute...
Research areas: Heterogeneous Computing, Statistical Machine Learning, Accelerator DesignA growing n...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
This paper documents the investigation and implementation of the mathematics behind artificial intel...
The needs of entertainment industry in the field of personal computers always require more realistic...
The adoption of hardware accelerators, such as Field-Programmable Gate Arrays, into general-purpose ...
The constant growth of datacenters and cloud computing comes with an increase of power consumption. ...
Advances in high-performance computer architecture design have been a major driver for the rapid evo...
Yearly increases in computer performance have diminished as of late, mostly due to the inability of ...