Lukas Makor,
"Run-Time Data Analysis in Dynamic Runtimes"
: ACM Student Research Competition at SPLASH'21, ACM Digital, 10-2021
Original Titel:
Run-Time Data Analysis in Dynamic Runtimes
Sprache des Titels:
Englisch
Original Buchtitel:
ACM Student Research Competition at SPLASH'21
Original Kurzfassung:
Databases are typically faster in processing huge amounts of data than applications with hand-coded data access. Even though modern dynamic runtimes optimize applications intensively, they cannot perform certain optimizations that are traditionally used by database systems as they lack the required information. Thus, we propose to extend the capabilities of dynamic runtimes to allow them to collect fine-grained information of the processed data at run time and use it to perform database-like optimizations. By doing so, we want to enable dynamic runtimes to significantly boost the performance of data-processing workloads. Ideally, applications should be as fast as databases in data-processing workloads. To show the feasibility of our approach, we are implementing it in a polyglot dynamic runtime.