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Kumo Runs Deep Learning Securely in the Snowflake Data Cloud with New Snowpark Container Services

Kumo Runs Deep Learning Securely in the Snowflake Data Cloud with New Snowpark Container Services
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Kumo Runs Deep Learning Securely in the Snowflake Data Cloud with New Snowpark Container Services

/PRNewswire/ Kumo, a leading deep learning platform for relational data, today announced at Snowflake s annual user conference, Snowflake Summit 2023, that.

JABSOM researchers build on Human Genome Project advances | University of Hawaiʻi System News

JABSOM Scientists Advance Human Genome Project

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Minimum Entropy Principle Guided Graph Neural Networks by Zhenyu Yang, Ge Zhang et al

Graph neural networks (GNNs) are now the mainstream method for mining graph-structured data and learning low-dimensional node- and graph-level embeddings to serve downstream tasks. However, limited by the bottleneck of interpretability that deep neural networks present, existing GNNs have ignored the issue of estimating the appropriate number of dimensions for the embeddings. Hence, we propose a novel framework called Minimum Graph Entropy principle-guided Dimension Estimation, i.e. MGEDE, that learns the appropriate embedding dimensions for both node and graph representations. In terms of node-level estimation, a minimum entropy function that counts both structure and attribute entropy, appraises the appropriate number of dimensions. In terms of graph-level estimation, each graph is assigned a customized embedding dimension from a candidate set based on the number of dimensions estimated for the node-level embeddings. Comprehensive experiments with node and graph classification tasks

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