Jörg Schad
Saarland University
15 Papers
127 Citations
Jörg Schad is an academic researcher from Saarland University. The author has contributed to research in topics: Computer science & Cloud computing. The author has an hindex of 7, co-authored 15 publications. Previous affiliations of Jörg Schad include International University, Cambodia.
Chat about Author
Papers
Hadoop++: making a yellow elephant run like a cheetah (without it even noticing)
Jens Dittrich,Jorge-Arnulfo Quiané-Ruiz,Alekh Jindal,Yagiz Kargin,Vinay Setty,Jörg Schad +5 more
- 01 Sep 2010
TL;DR: This paper proposes a new type of system named Hadoop++: it boosts task performance without changing the Hadooper framework at all (Hadoop does not even 'notice it'), and shows the superiority of Hadoo++ over both Hadoops and HadoOPDB for tasks related to indexing and join processing.
747
Runtime measurements in the cloud: observing, analyzing, and reducing variance
Jörg Schad,Jens Dittrich,Jorge-Arnulfo Quiané-Ruiz +2 more
- 01 Sep 2010
TL;DR: A study of the performance variance of the most widely used Cloud infrastructure (Amazon EC2) from different perspectives using established microbenchmarks to measure performance variance in CPU, I/O, and network and a multi-node MapReduce application to quantify the impact on real dataintensive applications.
Only aggressive elephants are fast elephants
Jens Dittrich,Jorge-Arnulfo Quiané-Ruiz,Stefan Richter,Stefan Schuh,Alekh Jindal,Jörg Schad +5 more
- 01 Jul 2012
TL;DR: In this article, the authors propose HAIL (Hadoop Aggressive Indexing Library), an enhancement of HDFS and Hadoop MapReduce that dramatically improves the runtimes of several classes of MapR-Reduce jobs.
RAFTing MapReduce: Fast recovery on the RAFT
Jorge-Arnulfo Quiané-Ruiz,Christoph Pinkel,Jörg Schad,Jens Dittrich +3 more
- 11 Apr 2011
TL;DR: This paper proposes a family of Recovery Algorithms for Fast-Tracking (RAFT) MapReduce and implemented RAFT on top of Hadoop and evaluated it on a 45-node cluster using three common analytical tasks.
•Posted Content
Only Aggressive Elephants are Fast Elephants
TL;DR: This work proposes HAIL (Hadoop Aggressive Indexing Library), an enhancement of HDFS and Hadoop MapReduce that dramatically improves runtimes of several classes of Map Reduce jobs and demonstrates the superiority of HAIL.