Achieving 100,000,000 database inserts per second using Accumulo and D4M
2014 IEEE high performance extreme computing conference (HPEC), 2014•ieeexplore.ieee.org
The Apache Accumulo database is an open source relaxed consistency database that is
widely used for government applications. Accumulo is designed to deliver high performance
on unstructured data such as graphs of network data. This paper tests the performance of
Accumulo using data from the Graph500 benchmark. The Dynamic Distributed Dimensional
Data Model (D4M) software is used to implement the benchmark on a 216-node cluster
running the MIT SuperCloud software stack. A peak performance of over 100,000,000 …
widely used for government applications. Accumulo is designed to deliver high performance
on unstructured data such as graphs of network data. This paper tests the performance of
Accumulo using data from the Graph500 benchmark. The Dynamic Distributed Dimensional
Data Model (D4M) software is used to implement the benchmark on a 216-node cluster
running the MIT SuperCloud software stack. A peak performance of over 100,000,000 …
The Apache Accumulo database is an open source relaxed consistency database that is widely used for government applications. Accumulo is designed to deliver high performance on unstructured data such as graphs of network data. This paper tests the performance of Accumulo using data from the Graph500 benchmark. The Dynamic Distributed Dimensional Data Model (D4M) software is used to implement the benchmark on a 216-node cluster running the MIT SuperCloud software stack. A peak performance of over 100,000,000 database inserts per second was achieved which is 100× larger than the highest previously published value for any other database. The performance scales linearly with the number of ingest clients, number of database servers, and data size. The performance was achieved by adapting several supercomputing techniques to this application: distributed arrays, domain decomposition, adaptive load balancing, and single-program-multiple-data programming.
ieeexplore.ieee.org
以上显示的是最相近的搜索结果。 查看全部搜索结果