FinRL-Podracer: High Performance and Scalable Deep Reinforcement Learning for Quantitative Finance
Zechu Li, Xiao-Yang Liu, Jiahao Zheng, Zhaoran Wang, Anwar, Walid, Jian Guo

TL;DR
This paper introduces FinRL-Podracer, a scalable cloud framework that accelerates deep reinforcement learning development for quantitative finance, significantly improving trading performance and training efficiency.
Contribution
It presents a novel RLOps paradigm and a high-performance, scalable framework for rapid development and deployment of DRL-based trading strategies in finance.
Findings
Achieved 12-35% improvement in annual return
Realized 0.1-0.6 increase in Sharpe ratio
Speed-up of 3-7 times in training time
Abstract
Machine learning techniques are playing more and more important roles in finance market investment. However, finance quantitative modeling with conventional supervised learning approaches has a number of limitations. The development of deep reinforcement learning techniques is partially addressing these issues. Unfortunately, the steep learning curve and the difficulty in quick modeling and agile development are impeding finance researchers from using deep reinforcement learning in quantitative trading. In this paper, we propose an RLOps in finance paradigm and present a FinRL-Podracer framework to accelerate the development pipeline of deep reinforcement learning (DRL)-driven trading strategy and to improve both trading performance and training efficiency. FinRL-Podracer is a cloud solution that features high performance and high scalability and promises continuous training, continuous…
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Taxonomy
TopicsStock Market Forecasting Methods · Financial Markets and Investment Strategies · Data Stream Mining Techniques
