With Super SDMs (Machine Learning, Open Access Big Data, and The Cloud) towards a more holistic and inclusive inference: Insights from progressing the marginalized case of the world’s squirrel hotspots and coldspots

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Abstract

Species-habitat associations are correlative, can be quantified, and used for powerful inference. Nowadays, Species Distribution Models (SDMs) play a big role, e.g. using Machine Learning and AI algorithms, but their best-available technical opportunities remain still not used for their potential e.g. in the policy sector. Here we present Super SDMs that invoke ML, OA Big Data, and the Cloud with a workflow for the best-possible inference for the 300+ global squirrel species. Such global Big Data models are especially important for the many marginalized squirrel species and the high number of endangered and data-deficient species in the world, specifically in tropical regions. While our work shows common issues with SDMs and the maxent algorithm (‘Shallow Learning'), here we present a multi-species Big Data SDM template for subsequent ensemble models and generic progress to tackle global species hotspots and cold spots for the best possible outcome.

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last seen: 2026-05-19T01:45:01.086888+00:00