Assessing FIFO and Round Robin Scheduling:Effects on Data Pipeline Performance and Energy Usage

Autor: Choudhury, Malobika Roy, Mehrotra, Akshat
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: In the case of compute-intensive machine learning, efficient operating system scheduling is crucial for performance and energy efficiency. This paper conducts a comparative study over FIFO(First-In-First-Out) and RR(Round-Robin) scheduling policies with the application of real-time machine learning training processes and data pipelines on Ubuntu-based systems. Knowing a few patterns of CPU usage and energy consumption, we identify which policy (the exclusive or the shared) provides higher performance and/or lower energy consumption for typical modern workloads. Results of this study would help in providing better operating system schedulers for modern systems like Ubuntu, working to improve performance and reducing energy consumption in compute intensive workloads.
Databáze: arXiv