使用分布式事务和通知的大规模增量处理

Daniel Peng, F. Dabek
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引用次数: 511

摘要

在抓取文档时更新web索引需要在新文档到来时不断转换现有文档的大型存储库。此任务是一类数据处理任务的一个示例,这些任务通过小的、独立的突变来转换大型数据存储库。这些任务存在于现有基础设施的能力之间的差距。数据库不能满足这些任务的存储或吞吐量要求:谷歌的索引系统存储了数十pb的数据,每天在数千台机器上处理数十亿次更新。MapReduce和其他批处理系统不能单独处理小的更新,因为它们依赖于创建大量的批量来提高效率。我们已经建立了Percolator,一个用于增量处理大型数据集更新的系统,并将其部署到创建Google网络搜索索引中。通过使用Percolator将基于批处理的索引系统替换为基于增量处理的索引系统,我们每天处理相同数量的文档,同时将Google搜索结果中文档的平均年龄减少了50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-scale Incremental Processing Using Distributed Transactions and Notifications
Updating an index of the web as documents are crawled requires continuously transforming a large repository of existing documents as new documents arrive. This task is one example of a class of data processing tasks that transform a large repository of data via small, independent mutations. These tasks lie in a gap between the capabilities of existing infrastructure. Databases do not meet the storage or throughput requirements of these tasks: Google's indexing system stores tens of petabytes of data and processes billions of updates per day on thousands of machines. MapReduce and other batch-processing systems cannot process small updates individually as they rely on creating large batches for efficiency.We have built Percolator, a system for incrementally processing updates to a large data set, and deployed it to create the Google web search index. By replacing a batch-based indexing system with an indexing system based on incremental processing using Percolator, we process the same number of documents per day, while reducing the average age of documents in Google search results by 50%.
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