In-memory database systems are among the technological drivers of big data processing. In this paper we apply analytical modeling to enable efficient sizing of in-memory databases. We present novel response time approximations under online analytical processing workloads to model thread-level forkjoin and per-class memory occupation.We combine these approximations with a non-linear optimization program to minimize memory swapping in in-memory database clusters. We compare our approach with state-of-the-art response time approximations and trace-driven simulation using real data from an SAP HANA in-memory system and show that our optimization model is significantly more accurate than existing approaches at similar computational costs
During the last two decades, computer hardware has experienced remarkable developments. Especially C...
Database and big data analytics systems such as Hadoop and Spark have a large number of configuratio...
<p>Modern industrial, government, and academic organizations are collecting massive amounts of data ...
Big data processing is driven by new types of in-memory database systems. In this paper we apply per...
In this thesis, we set focus on in-memory database systems and combine queueing network modeling wit...
Predicting memory occupancy during the execution of large-scale analytical workloads becomes critica...
© 2015 IFIP.The recent growth of interest for in-memory databases poses the question on whether esta...
Systems for processing large scale analytical work- loads are increasingly moving from on-premise se...
In this paper we explore the problem of automatically adjusting DBMS multiprogramming levels and mem...
With the rapid advances in technology and data volume, having efficient and scalable data management...
Hadoop provides a scalable solution on traditional cluster-based Big Data platforms but imposes per...
The significant cost and time are essential to obtain a comprehensive response, the response time to...
Accurate prediction of operator execution time is a prerequisite fordatabase query optimization. Alt...
The performance of modern data-intensive applications is closely related to the speed of data access...
Accurate prediction of operator execution time is a prerequisite for database query optimization. Al...
During the last two decades, computer hardware has experienced remarkable developments. Especially C...
Database and big data analytics systems such as Hadoop and Spark have a large number of configuratio...
<p>Modern industrial, government, and academic organizations are collecting massive amounts of data ...
Big data processing is driven by new types of in-memory database systems. In this paper we apply per...
In this thesis, we set focus on in-memory database systems and combine queueing network modeling wit...
Predicting memory occupancy during the execution of large-scale analytical workloads becomes critica...
© 2015 IFIP.The recent growth of interest for in-memory databases poses the question on whether esta...
Systems for processing large scale analytical work- loads are increasingly moving from on-premise se...
In this paper we explore the problem of automatically adjusting DBMS multiprogramming levels and mem...
With the rapid advances in technology and data volume, having efficient and scalable data management...
Hadoop provides a scalable solution on traditional cluster-based Big Data platforms but imposes per...
The significant cost and time are essential to obtain a comprehensive response, the response time to...
Accurate prediction of operator execution time is a prerequisite fordatabase query optimization. Alt...
The performance of modern data-intensive applications is closely related to the speed of data access...
Accurate prediction of operator execution time is a prerequisite for database query optimization. Al...
During the last two decades, computer hardware has experienced remarkable developments. Especially C...
Database and big data analytics systems such as Hadoop and Spark have a large number of configuratio...
<p>Modern industrial, government, and academic organizations are collecting massive amounts of data ...