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Faster deep neural network image processing by using vectorized posit operations on a RISC-V processor

机译:通过在RISC-V处理器上使用矢量化的分发操作更快的深度神经网络图像处理

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Real-time processing of images and videos is becoming considerably crucial in modern applications of machine learning (ML) and deep neural networks. Having a faster and compressed floating point arithmetic can significantly increase the performance of such applications optimizing memory occupation and transfer of information. In this field, the novel posit number system is very promising. In this paper we exploit posit numbers to evaluate the performance of several machine learning algorithms in real-time image and video processing applications. Future steps will involve further hardware accelerations for native posit operations.
机译:图像和视频的实时处理在机器学习(ML)和深神经网络的现代应用方面变得巨大至关重要。 具有更快和压缩的浮点算术可以显着提高优化存储器占用和信息传输的应用的性能。 在这个领域,新颖的个体号码系统非常有前途。 在本文中,我们利用了在实时图像和视频处理应用中的多种机器学习算法的性能来评估多个机器学习算法的性能。 未来的步骤将涉及用于本机分发操作的其他硬件加速度。

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