Authors
Rodrigo Bruno, Duarte Patricio, José Simão, Luis Veiga, Paulo Ferreira
Publication date
2019/3/25
Book
Proceedings of the Fourteenth EuroSys Conference 2019
Pages
1-16
Description
Latency sensitive services such as credit-card fraud detection and website targeted advertisement rely on Big Data platforms which run on top of memory managed runtimes, such as the Java Virtual Machine (JVM). These platforms, however, suffer from unpredictable and unacceptably high pause times due to inadequate memory management decisions (e.g., allocating objects with very different lifetimes next to each other, resulting in severe memory fragmentation). This leads to frequent and long application pause times, breaking Service Level Agreements (SLAs). This problem has been previously identified, and results show that current memory management techniques are ill-suited for applications that hold in memory massive amounts of long-lived objects (which is the case for a wide spectrum of Big Data applications).
Previous works reduce such application pauses by allocating objects in off-heap, in special …
Total citations
201920202021202220232024388665
Scholar articles
R Bruno, D Patricio, J Simão, L Veiga, P Ferreira - Proceedings of the Fourteenth EuroSys Conference …, 2019
R Bruno, D Patrício, J Simão, L Veiga, P Ferreira - arXiv preprint arXiv:1804.00702, 2018