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single | AI-Fusion: Emergence Detection for Mixed MARL Systems. | acoustic anomaly-detection projects | Bringing together agents can be an inherent safety problem. Building the basis to mix and match. |
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In cooperation with Fraunhofer IKS this project aimed to investigate and detect emergent effects in multi-agent reinforcement learning scenarios, i.e., mixed-vendor autonomous systems (AI fusion).
Emergence in general refers to emerging dynamics of higher complexity (i.e., sum), which are fed by interacting entities (each other and the environment) of a specific complexity level (regarding their policies and capabilities).
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In this context, we developed a full-stack, high-performance environment in Python, following the gymnasium specification for the training of reinforcement learning algorithms.
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| GitHub Repo | Read-the-docs | | Install via PyPI | Read the Paper (TBA) |
The main differentiation from already established MARL environments is its ability to employ various scenarios as a combination of modules
and configurations
. As well as the option to define per-agent observations, including placeholder and combined observation slices (grid-world). Moreover, this environment can handle multi-agent scenarios as well as sequential actions for inter-step observations.
Furthermore, we designed and implemented a Unity demonstrator unit that can load and replay specific pre-recorded scenarios. This way, emerging unwanted and unsafe situations can be replayed and intuitively investigated.