DOAJ Open Access 2022

RLOps: Development Life-Cycle of Reinforcement Learning Aided Open RAN

Peizheng Li Jonathan Thomas Xiaoyang Wang Ahmed Khalil Abdelrahim Ahmad +6 lainnya

Abstrak

Radio access network (RAN) technologies continue to evolve, with Open RAN gaining the most recent momentum. In the O-RAN specifications, the RAN intelligent controllers (RICs) are software-defined orchestration and automation functions for the intelligent management of RAN. This article introduces principles for machine learning (ML), in particular, reinforcement learning (RL) applications in the O-RAN stack. Furthermore, we review the state-of-the-art research in wireless networks and cast it onto the RAN framework and the hierarchy of the O-RAN architecture. We provide a taxonomy for the challenges faced by ML/RL models throughout the development life-cycle: from the system specification to production deployment (data acquisition, model design, testing and management, etc.). To address the challenges, we integrate a set of existing MLOps principles with unique characteristics when RL agents are considered. This paper discusses a systematic model development, testing and validation life-cycle, termed: RLOps. We discuss fundamental parts of RLOps, which include: model specification, development, production environment serving, operations monitoring and safety/security. Based on these principles, we propose the best practices for RLOps to achieve an automated and reproducible model development process. At last, a holistic data analytics platform rooted in the O-RAN deployment is designed and implemented, aiming to embrace and fulfil the aforementioned principles and best practices of RLOps.

Penulis (11)

P

Peizheng Li

J

Jonathan Thomas

X

Xiaoyang Wang

A

Ahmed Khalil

A

Abdelrahim Ahmad

R

Rui Inacio

S

Shipra Kapoor

A

Arjun Parekh

A

Angela Doufexi

A

Arman Shojaeifard

R

Robert J. Piechocki

Format Sitasi

Li, P., Thomas, J., Wang, X., Khalil, A., Ahmad, A., Inacio, R. et al. (2022). RLOps: Development Life-Cycle of Reinforcement Learning Aided Open RAN. https://doi.org/10.1109/ACCESS.2022.3217511

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Informasi Jurnal
Tahun Terbit
2022
Sumber Database
DOAJ
DOI
10.1109/ACCESS.2022.3217511
Akses
Open Access ✓