Title :
Distance-Based Trace Diagnosis for Multimedia Applications: Help Me TED!
Author :
Kengne, Christiane Kamdem ; Ibrahim, Niko ; Rousset, Marie-Christine ; Tchuente, Maurice
Author_Institution :
Univ. of Grenoble, St. Martin d`Hères, France
Abstract :
Execution traces have become essential resources that many developers analyze to debug their applications. Ideally, a developer wants to quickly detect whether there are anomalies on his application or not. However, in practice, the size of multimedia applications trace can reach gigabytes, which makes their exploitation very complex. Usually, developers use visualization tools before stating a hypothesis. In this paper, we argue that this solution is not satisfactory and propose to automatically provide a diagnosis by comparing execution traces. We use distance-based models and conduct a user case to show how TED, our automatic trace diagnosis tool, provides semantic added-value information to the developer. Performance evaluation over real world data shows that our approach is scalable.
Keywords :
multimedia systems; program diagnostics; TED automatic trace diagnosis tool; application debugging; distance-based trace diagnosis; execution traces; multimedia applications; semantic added-value information; visualization tools; Decoding; Motion pictures; Multimedia communication; Scalability; Semantics; Streaming media; Audio/Video decoding; Diagnosis; Distance; Execution traces; Multimedia applications;
Conference_Titel :
Semantic Computing (ICSC), 2013 IEEE Seventh International Conference on
Conference_Location :
Irvine, CA
DOI :
10.1109/ICSC.2013.59