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An experimental evaluation of extreme learning machines on several hardware devices

机译:几种硬件设备上极限学习机的实验评价

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As an important learning algorithm, extreme learning machine (ELM) is known for its excellent learning speed. With the expansion of ELM's applications in the field of classification and regression, the need for its real-time performance is increasing. Although the use of hardware acceleration is an obvious solution, how to select the appropriate acceleration hardware for ELM-based applications is a topic worthy of further discussion. For this purpose, we designed and evaluated the optimized ELM algorithms on three kinds of state-of-the-art acceleration hardware, i.e., multi-core CPU, Graphics Processing Unit (GPU), and Field-Programmable Gate Array (FPGA) which are all suitable for matrix multiplication optimization. The experimental results showed that the speedup ratio of these optimized algorithms on acceleration hardware achieved 10-800. Therefore, we suggest that (1) use GPU to accelerate ELM algorithms for large dataset, and (2) use FPGA for small dataset because of its lower power, especially for some embedded applications. We also opened our source code.
机译:作为一个重要的学习算法,极端学习机(ELM)以其出色的学习速度而闻名。随着ELM在分类和回归领域的扩展,对其实时性能的需求正在增加。虽然使用硬件加速是一个明显的解决方案,但如何选择基于ELM的应用程序的适当加速硬件是一个值得进一步讨论的主题。为此目的,我们在三种最先进的加速硬件上设计和评估了优化的ELM算法,即多核CPU,图形处理单元(GPU)和现场可编程门阵列(FPGA)都适用于矩阵乘法优化。实验结果表明,这些优化算法的加速比在10-800上实现了加速硬件。因此,我们建议(1)使用GPU加速大型数据集的ELM算法,(2)由于其较低的功率,特别是对于某些嵌入式应用而使用FPGA进行小型数据集。我们还打开了我们的源代码。

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