posted by system || 2876 views || tracked by 9 users: [display]

DaMoN 2014 : Tenth International Workshop on Data Management on New Hardware

FacebookTwitterLinkedInGoogle


Conference Series : Data Management on New Hardware
 
Link: http://www-db.in.tum.de/damon2014
 
When Jun 23, 2014 - Jun 23, 2014
Where Snowbird, Utah, USA
Submission Deadline Mar 24, 2014
Categories    databases
 

Call For Papers

The aim of this one-day workshop is to bring together researchers who are interested in optimizing database performance on modern computing infrastructure by designing new data management techniques and tools.

Topics of Interest

The continued evolution of computing hardware and infrastructure imposes new challenges and bottlenecks to program performance. As a result, traditional database architectures that focus solely on I/O optimization increasingly fail to utilize hardware resources efficiently. Multi-core CPUs, GPUs, new memory and storage technologies (such as flash and phase change memory), and low-power hardware impose a great challenge to optimizing database performance. Consequently, exploiting the characteristics of modern hardware has become an important topic of database systems research.

The goal is to make database systems adapt automatically to the sophisticated hardware characteristics, thus passing maximum performance to applications in transparent fashion. To achieve this goal, the data management community needs interdisciplinary collaboration with computer architecture, compiler and operating systems researchers. This involves rethinking traditional data structures, query processing algorithms, and database software architectures to adapt to the advances in the underlying hardware infrastructure.

We seek submissions bridging the area of database systems to computer architecture, compilers, and operating systems. In particular, submissions covering topics from the following non-exclusive list are encouraged:

cost models and query optimization for novel hierarchical memory systems
hardware systems for query processing
data management using co-processors
query processing using computing power in storage systems
novel application of new storage technologies (flash, PCM, etc.) to data management
database architectures for low-power computing and embedded devices
database architectures on multi-threaded and chip multiprocessors
database performance analysis, algorithms, and data structures on modern hardware
databases and transactional memory systems
performance analysis of database workloads on modern hardware
compiler and operating systems advances to improve database performance
new benchmarks for microarchitectural evaluation of database workloads

Related Resources

ITAS--EI Compendex, Scopus 2021   2021 Information Technology & Applications Symposium (ITAS 2021)--EI Compendex, Scopus
DKMP 2021   9th International Conference on Data Mining & Knowledge Management Process
CCBD--Ei & Scopus 2021   2021 The 8th International Conference on Cloud Computing and Big Data (CCBD 2021)--Ei Compendex & Scopus
ICENT--EI, Scopus 2021   2021 3rd International Conference on Emerging Networks Technologies (ICENT 2021)--Ei Compendex, Scopus
ICENT--EI Compendex, Scopus 2021   2021 3rd International Conference on Emerging Networks Technologies (ICENT 2021)--Ei Compendex, Scopus
CCIOT--ACM, EI Compendex, Scopus 2021   ACM--2021 6th International Conference on Cloud Computing and Internet of Things (CCIOT 2021)--Ei Compendex, Scopus
ICICSP--IEEE, Ei and Scopus 2021   2021 4th IEEE International Conference on Information Communication and Signal Processing (ICICSP 2021)--Ei Compendex, Scopus
ACM--ICKIM--EI Compendex, Scopus 2021   ACM--2021 The 3rd International Conference on Knowledge and Information Management (ICKIM 2021)--EI Compendex, Scopus
ICKIM--ACM, EI Compendex, Scopus 2021   ACM--2021 The 3rd International Conference on Knowledge and Information Management (ICKIM 2021)--EI Compendex, Scopus
Sensors - CI and DM in Smart Sensors 2021   MDPI Sensors - Special Issue on Developing New Methods of Computational Intelligence and Data Mining in Smart Sensors Environment