Deep Reinforcement Learning in Optimizing Kubernetes Workload Controllers

Organisatsiooni nimi
Mobile & Cloud Computing Laboratory
Kokkuvõte
This thesis delves into the complex dynamics of cloud computing clusters leveraging container technologies, particularly focusing on the Kubernetes tool and underlined container engine, containerd/Docker. As modern cloud infrastructures gravitate towards container orchestration, Kubernetes and its components, including the cluster autoscaler and workload controller, have gained paramount importance. While the existing system provides a foundational structure, this thesis focuses on the integration of Deep Reinforcement Learning (DRL) to enhance the adaptability and efficiency of Kubernetes workload controllers. By applying DRL, we aim to achieve an intelligent, self-adjusting system that can autonomously optimize container resource allocation and workload distribution, ensuring cost-effective scalability and heightened system performance.
Lõputöö kaitsmise aasta
2023-2024
Juhendaja
Chinmaya Dehury
Suhtlemiskeel(ed)
inglise keel
Nõuded kandideerijale
Tase
Magister
Märksõnad

Kandideerimise kontakt

 
Nimi
Chinmaya Kumar Dehury
Tel
E-mail
chinmaya.dehury@ut.ee
Vaata lähemalt
https://docs.google.com/document/d/14SPgOTF6f8nw8bpxl-3RMbDxwELranK1_bYBK2jzoy8/edit?usp=sharing