Architecture of a data analytics service in hybrid cloud environments

被引:2
作者
Beier F. [1 ]
Stolze K. [1 ]
机构
[1] IBM Deutschland Research and Development GmbH, Schönaicher Str. 220, Böblingen
来源
IT - Information Technology | 2017年 / 59卷 / 03期
关键词
Analytics; Cloud; SQL acceleration;
D O I
10.1515/itit-2016-0050
中图分类号
学科分类号
摘要
DB2 for z/OS is the backbone of many transactional systems in the world. IBM DB2 Analytics Accelerator (IDAA) is IBM's approach to enhance DB2 for z/OS with very fast processing of OLAP and analytical SQL workload. While IDAA was originally designed as an appliance to be connected directly to System z, the trend in the IT industry is towards cloud environments. That offers a broad range of tools for analytical data processing tasks. This article presents the architecture for offering a hybrid IDAA, which continues the seamless integration with DB2 for z/OS and now also runs as a specialty engine in cloud environments. Both approaches have their merit and will remain important for customers in the next years. The specific challenges for accelerating query processing for relational data in the cloud are highlighted. Specialized hardware options are not readily available, and that has a direct impact on the system architecture, the offered functionality and its implementation. © 2017 De Gruyter Oldenbourg. All rights reserved.
引用
收藏
页码:151 / 158
页数:7
相关论文
共 23 条
[1]  
Assuncao M.D., Calheiros R.N., Bianchi S., Netto M.A., Buyya R., Big data computing and clouds: Trends and future directions, Journal of Parallel and Distributed Computing, 79-80, pp. 3-15, (2015)
[2]  
Barber R., Lohman G., Raman V., Sidle R., Lightstone S., Schiefer B., In-memory BLU Acceleration in IBM's DB2 and dashDB: Optimized for modern workloads and hardware architectures, ICDE'15, pp. 1246-1252, (2015)
[3]  
Beaton A., Noor A., Parkes J., Shubin B., Ballard C., Ketchie M., Ketelaars F., Rangarao D., Tichelen W., Smarter business: Dynamic information with IBM infosphere data replication CDC, IBM Redbooks, (2012)
[4]  
Beier F., Stolze K., Martin D., Extending database accelerators for data transformations and predictive analytics, EDBT '16, pp. 706-707, (2016)
[5]  
Bruni P., Arnold J., Favero W., Cruz L., Feinsmith J., Griner A., Guo J., Harlander C., Kern J., Kumar R., Li R., Perkins A., Sloan J., Speller S., Tonelli D., Reliability and performance with IBM DB2 analytics accelerator v4.1, IBM Redbooks, (2014)
[6]  
Carter P.A., Migrating to the Cloud, pp. 961-991, (2015)
[7]  
Docker - Build, Ship, and Run Any App, Anywhere, (2016)
[8]  
Farber F., Cha S.K., Primsch J., Bornhovd C., Sigg S., Lehner W., SAP HANA database: Data management for modern business applications, SIGMOD Rec, 40, 4, (2012)
[9]  
Graefe G., Nica A., Stolze K., Neumann T., Eavis T., Petrov I., Pourabbas E., Fekete D., Elasticity in cloud databases and their query processing, IJDWM, 9, 2, pp. 1-20, (2013)
[10]  
Apache Spark - Lightning-Fast Cluster Computing, (2016)