MemTo: A Memory Monitoring Tool for a Linux Cluster
Issue date
2001Suggested citation
Giné, Francesc;
Solsona Tehàs, Francesc;
Navarro, Xavi;
Hernandez, Porfidio;
Luque, Emilio;
.
(2001)
.
MemTo: A Memory Monitoring Tool for a Linux Cluster.
Lecture Notes in Computer Science, 2001, vol. 2131, p. 225-232.
https://doi.org/10.1007/3-540-45417-9_32.
Metadata
Show full item recordAbstract
Studies dealing with tuning, performance debugging and diagnosis
in cluster environments largely benefit from in-depth knowledge
of memory system information. In this paper a tool (called MemTo) for
monitoring the behavior of the memory system through a Linux cluster
is presented. MemTo has been designed to have as low intrusiveness
as possible while keeping a high detail of monitoring data. The good
behavior and usefulness of this tool are proved experimentally.
Is part of
Lecture Notes in Computer Science, 2001, vol. 2131, p. 225-232European research projects
Related items
Showing items related by title, author, creator and subject.
-
Dealing with Memory Constraints in a Non-Dedicated Linux Cluster
Giné, Francesc; Solsona Tehàs, Francesc; Hernandez, Porfidio; Luque, Emilio (SAGE, 2003)Our research is focused on keeping both local and parallel jobs together in a non-dedicated cluster and scheduling them efficiently. In such a system, memory becomes a critical resource for both kinds of job. Thus, the ... -
Monito: A Communication Monitoring Tool for a PVM-Linux Environment
Solsona Tehàs, Francesc; Giné, Francesc; Lérida Monsó, Josep Lluís; Hernandez, Porfidio; Luque, Emilio (Springer Verlag, 2000)In this paper a new tool for monitoring the different queues of messages in a PVM environment is presented. The main aim of implementing this facility is to provide a means of capturing the bottlenecks and overheads of ... -
Minimizing Paging Tradeoffs Applying Coscheduling Techniques in a Linux Cluster
Giné, Francesc; Solsona Tehàs, Francesc; Hernandez, Porfidio; Luque, Emilio (Springer Verlag, 2003)Our research is focused on keeping both local and parallel jobs together in a non-dedicated cluster or NOW (Network of Workstations) and efficiently scheduling them by means of coscheduling mechanisms. The performance ...