Apply Distributed CNN on Genomics to accelerate Transcription-Factor TAL1 Motif Prediction

Tasnim Assali, Zayneb Trabelsi Ayoub, Sofiane Ouni
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Abstract

Big Data works perfectly along with Deep learning to extract knowledge from a huge amount of data. However, this processing could take a lot of training time. Genomics is a Big Data science with high dimensionality. It relies on deep learning to solve complicated problems in certain diseases like cancer by using different DNA information such as the transcription factor. TAL1 is a transcription factor that is essential for the development of hematopoiesis and of the vascular system. In this paper, we highlight the potential of deep learning in the field of genomics and its challenges such as the training time that takes hours, weeks, and in some cases months. Therefore, we propose to apply a distributed deep learning implementation based on Convolutional Neural Networks (CNN) that showed good results in decreasing the training time and enhancing the accuracy performance with 95% by using multiple GPU and TPU as accelerators. We proved the efficiency of using a distributed strategy based on data-parallelism in predicting the transcription-factor TAL1 motif faster.
在基因组学上应用分布式CNN加速转录因子TAL1基序预测
大数据与深度学习完美结合,从海量数据中提取知识。然而,这种处理可能需要大量的训练时间。基因组学是一门高维的大数据科学。它依靠深度学习来解决某些疾病(如癌症)的复杂问题,通过使用转录因子等不同的DNA信息。TAL1是一种转录因子,对造血和血管系统的发育至关重要。在本文中,我们强调了深度学习在基因组学领域的潜力及其挑战,例如需要数小时、数周甚至数月的训练时间。因此,我们提出了一种基于卷积神经网络(CNN)的分布式深度学习实现,通过使用多个GPU和TPU作为加速器,在减少训练时间和提高准确率95%方面取得了良好的效果。我们证明了使用基于数据并行性的分布式策略可以更快地预测转录因子TAL1基序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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