عنوان مقاله به فارسی: بررسی چارچوب های یادگیری عمیق مقیاس پذیر
عنوان مقاله به لاتین: A Survey of Scalable Deep Learning Frameworks
تعداد صفحات: 20
زبان: لاتین
Abstract:
Machine learning models recently have seen a large increase in usage across different disciplines. Their ability to learn complex concepts from the data and perform sophisticated tasks combined with their ability to leverage vast computational infrastructures available today have made them a very attractive choice for many challenges in academia and industry. In this context, deep Learning as a sub-class of machine learning is specifically becoming an important tool in modern computing applications. It has been successfully used for a wide range of different use cases, from medical applications to playing games. Due to the nature of these systems and the fact that a considerable portion of their use-cases deal with large volumes of data, training them is a very time and resource consuming task and requires vast amounts of computing cycles. To overcome this issue, it is only natural to try to scale deep learning applications to be able to run them across in order to achieve fast and manageable training speeds while maintaining a high level of accuracy. In recent years, a number of frameworks have been proposed to scale up ML algorithms to overcome the scalability issue, with roots both in the academia and the industry. With most of them being open source and supported by the increasingly large community of AI specialists and data scientists, their capabilities, performance and compatibility with modern hardware have been honed and extended. Thus, it is not easy for the domain scientist to pick the tool/framework best suited for their needs. This research aims to provide an overview of the relevant, widely used scalable machine learning and deep learning frameworks currently available and to provide the grounds on which researchers can compare and choose the best set of tools for their ML pipeline.
a survey of scalable deep learning frameworks_1617869730_47291_4145_1997.zip0.06 MB |