Self Organizing Maps for Earth Systems Science

Representation of Self Organizing Map
Representation of nodes in a Self Organizing Map.

A self-organizing map (SOM), sometimes known as a Kohonen map after its originator the Finnish professor Teuvo Kohonen, is an unsupervised machine learning technique used to produce a low-dimensional representation of a higher dimensional data set. SOMs are a specific type of artificial neural network, but use a different training strategy compared to more traditional artificial neural networks (ANNs). SOMs can be used for clustering, dimensionality reduction, feature extraction, and classification — all of which suggest that they can be important tools for understanding large Earth Systems Science (ESS) datasets.

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Two Earth Systems Science Professor positions, University of California Irvine

University of California, Irvine logo

The Department of Earth System Science (ESS) within the School of Physical Sciences at The University of California, Irvine (UCI), is seeking candidates for two positions.

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Unidata Update: November 2023

In case you missed it — here's a recap of news from the Unidata Program Center for the month of November, 2023.

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