In recent years, with the development of computer science, deep learning is held as competent enough to solve the problem of inference and learning in high dimensional space. Therefore, it has received unprecedented attention from both the academia and the business community. Compared with CPU/GPU, FPGA has attracted much attention for its high-energy efficiency, short development cycle and reconfigurability in the aspect of deep learning algorithm. However, because of the limited research on OpenCL optimization on FPGA of deep learning algorithms, OpenCL tools and models applied to CPU/GPU cannot be directly used on FPGA. This makes it difficult for software programmers to use FPGA when implementing deep learning algorithms for a rewarding...
This work explores the viability of end-to-end convolutional neural network inference using OpenCL H...
The application of accelerators in HPC applications has seen enormous growth in the last decade. In ...
Recent technological advances have proliferated the available computing power, memory, and speed of ...
This thesis describes the architecture and the enhancement process of an open-source soft-GPU for FP...
[EN] In the optimization of deep neural networks (DNNs) via evolutionary algorithms (EAs) and the im...
Many emerging applications require hardware acceleration due to their growing computational intensit...
OpenCL has been proposed as a means of accelerating functional computation using FPGA and GPU accele...
In recent years, deep convolutional neural networks (ConvNet) have shown their popularity in various...
This document presents an evaluation of OpenCL as a mechanism to exploit FPGA resources. To evaluate...
In our study, we present the results of the implementation of the SHA-512 algorithm in FPGAs. The di...
In our study, we present the results of the implementation of SHA-512 algorithm in FPGA. The disting...
International audienceThe work presented deals with the evaluation of F-PGAs resurgence for hardware...
The problem of automatically generating hardware modules from high level application representations...
International audience3D back-projector computation is a time-consuming task, and hardware accelerat...
Deep learning has significantly advanced the state of the art in artificial intelligence, gaining wi...
This work explores the viability of end-to-end convolutional neural network inference using OpenCL H...
The application of accelerators in HPC applications has seen enormous growth in the last decade. In ...
Recent technological advances have proliferated the available computing power, memory, and speed of ...
This thesis describes the architecture and the enhancement process of an open-source soft-GPU for FP...
[EN] In the optimization of deep neural networks (DNNs) via evolutionary algorithms (EAs) and the im...
Many emerging applications require hardware acceleration due to their growing computational intensit...
OpenCL has been proposed as a means of accelerating functional computation using FPGA and GPU accele...
In recent years, deep convolutional neural networks (ConvNet) have shown their popularity in various...
This document presents an evaluation of OpenCL as a mechanism to exploit FPGA resources. To evaluate...
In our study, we present the results of the implementation of the SHA-512 algorithm in FPGAs. The di...
In our study, we present the results of the implementation of SHA-512 algorithm in FPGA. The disting...
International audienceThe work presented deals with the evaluation of F-PGAs resurgence for hardware...
The problem of automatically generating hardware modules from high level application representations...
International audience3D back-projector computation is a time-consuming task, and hardware accelerat...
Deep learning has significantly advanced the state of the art in artificial intelligence, gaining wi...
This work explores the viability of end-to-end convolutional neural network inference using OpenCL H...
The application of accelerators in HPC applications has seen enormous growth in the last decade. In ...
Recent technological advances have proliferated the available computing power, memory, and speed of ...