Engineering Fast Indexes for Big Data Applications: Spark Summit East talk by Daniel Lemire
Contemporary computing hardware offers massive new performance opportunities. Yet high-performance programming remains a daunting challenge.
We present some of the lessons learned while designing faster indexes, with a particular emphasis on compressed bitmap indexes. Compressed bitmap indexes accelerate queries in popular systems such as Apache Spark, Git, Elastic, Druid and Apache Kylin.
Видео Engineering Fast Indexes for Big Data Applications: Spark Summit East talk by Daniel Lemire канала Spark Summit
We present some of the lessons learned while designing faster indexes, with a particular emphasis on compressed bitmap indexes. Compressed bitmap indexes accelerate queries in popular systems such as Apache Spark, Git, Elastic, Druid and Apache Kylin.
Видео Engineering Fast Indexes for Big Data Applications: Spark Summit East talk by Daniel Lemire канала Spark Summit
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Glint: An Asynchronous Parameter Server for Spark (Rolf Jagerman)IoT and the Autonomous Vehicle in the Clouds: Spark Summit East talk by Jay White BearAnalysis Andromeda Galaxy Data Using Spark: Spark Summit East talk by Jose NandezThe Fast Path to Building Operational Applications with Spark: talk by Nikita ShamgunovNew Directions for Spark in 2015- Matei Zaharia (Databricks)Software Above the Level of a Single Device The Implications - Tim O'Reilly (O'Reilly Media)Keynote - Arun Murthy (Hortonworks)Scalable Deep Learning Platform On Spark In BaiduExtending Word2Vec for Performance and Semi Supervised Learning - Michael Malak (Oracle)5 Reasons Enterprise Adoption Of Spark Is UnstoppableSpark Summit 2013 - Big Data Research in the AMPLab - Mike FranklinDelivering Insights from 5PB of Product Logs at Pure Storage: Spark Summit East talk by Brian GoldPedal to the Metal: Accelerating Apache Spark with Innovations in Silicon TechnologyProduction Spark and Tachyon use CasesSpark as a Platform to Support Multi-Tenancy and Many Kinds of Data Applications - Kelvin Chu (Uber)Perspectives on Big Data & Analytics - Doug Wolfe (Central Intelligence Agency)Spark'ing an Anti Money Laundering Revolution- Katie Levans; Koert Kuipers (Tresata)Towards Modularizing Spark Machine Learning Jobs- Lance Co Ting Keh (Box)Distributed Heterogeneous Mixture Learning On SparkA More Scalable Way of Making Recommendations with MLlib - Xiangrui Meng (Databricks)Fireside Chat -Justin Langseth (Zoomdata)