Connan, JamesYi, LongDept. of Computer ScienceFaculty of Science2013-10-112024-10-302009/08/032009/08/032013-10-112024-10-302006https://hdl.handle.net/10566/16945Magister Scientiae - MScSelf-tuning has been an elusive goal for operating systems and is becoming a pressing issue for modern operating systems. Well-trained system administrators are able to tune an operating system to achieve better system performance for a specific system class. Unfortunately, the system class can change when the running applications change. The model for self-tuning operating system is based on a monitor-classify-adjust loop. The idea of this loop is to continuously monitor certain performance metrics, and whenever these change, the system determines the new system class and dynamically adjusts tuning parameters for this new class. This thesis described KernTune, a prototype tool that identifies the system class and improves system performance automatically. A key aspect of KernTune is the notion of Artificial Intelligence oriented performance tuning. Its uses a support vector machine to identify the system class, and tunes the operating system for that specific system class. This thesis presented design and implementation details for KernTune. It showed how KernTune identifies a system class and tunes the operating system for improved performance.enLinuxOperating systems (Computers)High performance computingSystem analysisData processingKernTune: self-tuning Linux kernel performance using support vector machinesThesisUniversity of the Western Cape