Our PhD Julia Rieder presented her research at ForestSat

Our PhD Julia Rieder presented her research at ForestSat

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September 13, 2024

Our PhD candidate Julia Rieder’s presented at the ForestSat conference in Rotorua, New Zealand, where she introduced her innovative tool, TreeCompR. The presentation, titled “Simplified Tree Competition Analysis: Introducing TreeCompR for Inventory Data and 3D Point Clouds”. Her presentation captured the attention of ecologists and foresters alike.
The audience showed significant interest in TreeCompR, eager to explore its capabilities and integrate it into their own work. With the positive reception, we anticipate exciting future developments for TreeCompR that will further benefit the ecological and forestry research communities
check out her package here:
juliarieder.github.io/TreeCompR
Stay tuned as Julia Rieder continues to advance this essential tool, pushing the boundaries of how we assess tree competition and forest structure!

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