Automatically Leveraging MapReduce Frameworks for Data-Intensive Applications

January 30, 2018 ยท Declared Dead ยท ๐Ÿ› SIGMOD Conference

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Authors Maaz Bin Safeer Ahmad, Alvin Cheung arXiv ID 1801.09802 Category cs.DB: Databases Cross-listed cs.DC, cs.PL Citations 58 Venue SIGMOD Conference Last Checked 3 months ago
Abstract
MapReduce is a popular programming paradigm for developing large-scale, data-intensive computation. Many frameworks that implement this paradigm have recently been developed. To leverage these frameworks, however, developers must become familiar with their APIs and rewrite existing code. Casper is a new tool that automatically translates sequential Java programs into the MapReduce paradigm. Casper identifies potential code fragments to rewrite and translates them in two steps: (1) Casper uses program synthesis to search for a program summary (i.e., a functional specification) of each code fragment. The summary is expressed using a high-level intermediate language resembling the MapReduce paradigm and verified to be semantically equivalent to the original using a theorem prover. (2) Casper generates executable code from the summary, using either the Hadoop, Spark, or Flink API. We evaluated Casper by automatically converting real-world, sequential Java benchmarks to MapReduce. The resulting benchmarks perform up to 48.2x faster compared to the original.
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