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GPGPU based concurrent classification using trained model of handwritten digits

机译:使用经过训练的手写数字模型基于GPGPU的并发分类

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In this paper, General Purpose Graphical Processing Unit (GPGPU) based concurrent implementation of handwritten digit classifier is presented. Different styles of handwriting make it difficult to recognize a pattern but using neural network, it is not a difficult task to perform. Different softwares like torch and MATLAB provide the support of multiple training algorithms to train a network. By choosing an appropriate training algorithm for a specific application, speed of training can be increased. Furthermore, using computational power of GPUs, training and classification speed of neural network can be significantly improved. In this work, Modified National Institute of Standards and Technology (MNIST) database of handwritten digits is used to train the network. Accuracy and training time of digit classifier is evaluated for different algorithms and then concurrent training is performed by exploiting power of GPU. Trained parameters are imported and used for the concurrent classification with Compute Unified Device Architecture (CUDA) computing language which can be useful in numerous practical applications. Finally, the results of sequential and concurrent operations of training and classification are compared.
机译:本文提出了基于通用图形处理单元(GPGPU)的手写数字分类器的并发实现。不同风格的笔迹很难识别模式,但是使用神经网络执行起来并不困难。火炬和MATLAB等不同的软件提供了多种训练算法来训练网络的支持。通过为特定应用选择适当的训练算法,可以提高训练速度。此外,利用GPU的计算能力,可以显着提高神经网络的训练和分类速度。在这项工作中,使用改良的美国国家标准技术研究院手写数字数据库来训练网络。针对不同算法对数字分类器的准确性和训练时间进行评估,然后利用GPU的强大功能进行并发训练。导入训练后的参数,并使用Compute Unified Device Architecture(CUDA)计算语言进行并发分类,该语言可在许多实际应用中使用。最后,比较了训练和分类的顺序和并行操作的结果。

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