Towards A Domain-specific Modelling Environment For Reinforcement Learning
2024 Β· Natalie Sinani, Sahil Salma, Paul Boutot, et al.
Abstract
In recent years, machine learning technologies have gained immense popularity and are being used in a wide range of domains. However, due to the complexity associated with machine learning algorithms, it is a challenge to make it user-friendly, easy to understand and apply. Machine learning applications are especially challenging for users who do not have proficiency in this area. In this paper, we use model-driven engineering (MDE) methods and tools for developing a domain-specific modelling environment to contribute towards providing a solution for this problem. We targeted reinforcement learning from the machine learning domain, and evaluated the proposed language, reinforcement learning modelling language (RLML), with multiple applications. The tool supports syntax-directed editing, constraint checking, and automatic generation of code from RLML models. The environment also provides support for comparing results generated with multiple RL algorithms. With our proposed MDE approac
Authors
(none)
Tags
Stats
Related papers
- Discovering Minimal Reinforcement Learning Environments (2024)0.00
- Towards Model-based Reinforcement Learning For Industry-near Environments (2019)5.84
- A Survey On Enhancing Reinforcement Learning In Complex Environments: Insights From Human And LLM Feedback (2024)0.00
- Eden: A Unified Environment Framework For Booming Reinforcement Learning Algorithms (2021)0.00
- An Empirical Investigation Of The Challenges Of Real-world Reinforcement Learning (2020)0.00
- Evaluating The Progress Of Deep Reinforcement Learning In The Real World: Aligning Domain-agnostic And Domain-specific Research (2021)0.00
- Automated Reinforcement Learning: An Overview (2022)0.00
- Learning To Design Games: Strategic Environments In Reinforcement Learning (2017)0.00