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An ML-Optimized DRRM Solution For IEEE 802.11 Enterprise WLAN Networks

The main idea of our solution relies on the fact that it does not depend on any coverage model representation approach (or any analytical calculus). It relies rather and solely on the environmental variables which influence the phenomena under study to build a prediction model. This model could be described as an Out of Path model approach in contrast with the classic In Path approaches encountered in dRRM and sRRM solutions.

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