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PecanPy: a fast, efficient and parallelized Python implementation of <i>node2vec</i>

Renming Liu, Arjun Krishnan

2021Bioinformatics59 citationsDOIOpen Access PDF

Abstract

SUMMARY: Learning low-dimensional representations (embeddings) of nodes in large graphs is key to applying machine learning on massive biological networks. Node2vec is the most widely used method for node embedding. However, its original Python and C++ implementations scale poorly with network density, failing for dense biological networks with hundreds of millions of edges. We have developed PecanPy, a new Python implementation of node2vec that uses cache-optimized compact graph data structures and precomputing/parallelization to result in fast, high-quality node embeddings for biological networks of all sizes and densities. AVAILABILITYAND IMPLEMENTATION: PecanPy software is freely available at https://github.com/krishnanlab/PecanPy. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

Python (programming language)Computer scienceImplementationEmbeddingBiological networkTheoretical computer scienceSoftwareCacheGraph embeddingGraphParallel computingArtificial intelligenceBioinformaticsProgramming languageBiologyBioinformatics and Genomic NetworksAdvanced Graph Neural NetworksGraph Theory and Algorithms
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