Multi core systems are ubiquitous nowadays and their number is ever increasing. And while, limited by physical constraints, the computational power of the individual cores has been stagnating or even declining for years, a solution to effectively utilize the computational power that comes with the additional cores is yet to be found. Existing approaches to automatic parallelization are often highly specialized to exploit the parallelism of specific program patterns, and thus to parallelize a small subset of programs only. In addition, frequently used invasive runtime systems prohibit the combination of different approaches, which impedes the practicality of automatic parallelization. In the following thesis, we show that specializing to narrowly defined program patterns is not necessary to efficiently parallelize applications coming from different domains. We develop a generalizing approach to parallelization, which, driven by an underlying mathematical optimization problem, is able to make qualified parallelization decisions taking into account the involved runtime overhead. In combination with a specializing, adaptive runtime system the approach is able to match and even exceed the performance results achieved by specialized approaches.
2017-06-25
2026-07-13