Home
Hasso-Plattner-Institut
Hasso-Plattner-Institut
Prof. Dr. h.c. mult. Hasso Plattner
schließen
schließen

Our team is giving a series of lectures and seminars with a focus on enterprise systems design and in-memory data management. Strong links to the industry ensure a close connection between theory and its implementation in the real world.

schließen
schließen
schließen

If you are having questions regarding one of our publications, please contact the authors.

schließen
  1. HOME

30.11.2022

Paper on Database Optimizations for Spatio-Temporal Data published in PVLDB

Our paper "Budget-Conscious Fine-Grained Configuration Optimization for Spatio-Temporal Applications" by Keven Richly, Martin Boissier, and Rainer Schlosser has been published in the latest issue 15(13) of the proceedings of the VLDB. In this paper, we introduce a linear-programming approach to determine optimal configurations consisting of multiple tuning decisions for spatio-temporal workloads.

Abstract:

Based on the performance requirements of modern spatio-temporal data mining applications, in-memory database systems are often used to store and process the data. To efficiently utilize the scarce DRAM capacities, modern database systems support various tuning possibilities to reduce the memory footprint (e.g., data compression) or increase performance (e.g., additional indexes). However, the selection of cost and performance balancing configurations is challenging due to the vast number of possible setups consisting of mutually dependent individual decisions.
In this paper, we introduce a novel approach to jointly optimize the compression, sorting, indexing, and tiering configuration for spatio-temporal workloads. Further, we consider horizontal data partitioning, which enables the independent application of different tuning options on a fine-grained level. We propose different linear programming (LP) models addressing cost dependencies at different levels of accuracy to compute optimized tuning configurations for a given workload and memory budgets. To yield maintainable and robust configurations, we extend our LP-based approach to incorporate reconfiguration costs as well as a worst-case optimization for potential workload scenarios. Further, we demonstrate on a real-world dataset that our models allow to significantly reduce the memory footprint with equal performance or increase the performance with equal memory size compared to existing tuning heuristics.

News

22.09.2023 | Trends and Concepts in the Softwareindustry Seminar offered in WiSe 2023/2024

Trends and Concepts in the Softwareindustry Seminar offered in WiSe 2023/2024 > Zum Artikel

22.05.2023 | Christopher Hagedorn Successfully Defended His PhD Thesis

Christopher Hagedorn Successfully Defended His PhD Thesis > Zum Artikel

03.03.2023 | Last Trends and Concepts course of Prof. Hasso Plattner

After more than 20 years of teaching, our founder and benefactor Prof. Hasso Plattner visited the HPI this week for his … > Zum Artikel

01.03.2023 | Jan Kossmann Successfully Defended His PhD Thesis

Last week, Jan Kossmann another PhD student of our EPIC group successfully defended his thesis on the topic of … > Zum Artikel

26.02.2023 | Paper on Data Tiering in Hyrise Published in BTW Proceedings

Our latest paper on data tiering in Hyrise "Workload-Driven Data Placement for Tierless In-Memory Database Systems" by … > Zum Artikel

24.02.2023 | Paper on EPIC Research Group Published in SIGMOD Record

Our report "Enterprise Platform and Integration Concepts Research at HPI" has been published in the December issue of … > Zum Artikel

30.11.2022 | Paper on Database Optimizations for Spatio-Temporal Data published in PVLDB

Our paper "Robust and Budget-Constrained Encoding Configurations for In-Memory Database Systems" has been published in … > Zum Artikel

04.10.2022 | Günter Hesse Successfully Defended His PhD Thesis

Last week, Günter Hesse another PhD student of our EPIC group successfully defended his thesis on the topic of "A … > Zum Artikel

08.07.2022 | Successful PhD Defense by Markus Dreseler

Markus Dreseler has successfully defended his PhD thesis on Automatic Tiering for In-Memory Database Systems. > Zum Artikel

Literature

"A Course in In-Memory Data Management" by Prof. Dr. h.c. Hasso Plattner. This book is the culmination of six years work of in-memory research. As such, it provides the technical foundation for combined transactional and analytical workloads inside one single database as well as examples of new applications that are now possible given the availability of the new technology. The book is available at Springer.

Contact

Dr. Michael Perscheid

Chair Representative

Tel.: +49 (331) 5509-566

E-Mail:


Office:

Room: V-2.12

Tel.: +49 (331) 5509-560

Fax: +49 (331) 5509-579

E-Mail:

Follow us on Twitter

Contact Details

AltStyle によって変換されたページ (->オリジナル) /