Technical Perspective: Implicit Parallelism through Deep Language Embedding

Z. Ives
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Abstract

Modern “big data” analysis was motivated by the needs of the large Internet players, but it was enabled by two main technical developments: parallel data processing technologies that support reliable and scalable computation over unreliable shared-nothing clusters of computers, and continued advances in machine learning algorithms and techniques. Initial work on these two areas happened largely independently: MapReduce was developed for aggregate computations over large multitudes of records, with minimal control flow and no evident goal of supporting machine learning. Conversely, many of the advances in machine learning research targeted a single machine.
技术视角:通过深度语言嵌入的隐式并行
现代“大数据”分析是由大型互联网参与者的需求推动的,但它是由两项主要技术发展推动的:并行数据处理技术,它支持可靠和可扩展的计算,而不是不可靠的无共享的计算机集群,以及机器学习算法和技术的持续进步。这两个领域的最初工作在很大程度上是独立进行的:MapReduce是为大量记录的聚合计算而开发的,具有最小的控制流,并且没有明显的支持机器学习的目标。相反,机器学习研究的许多进展都是针对单个机器的。
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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