HoloFoodR
github.com/ebi-metagenomics/holofoodrUtility package to facilitate integration and analysis of EBI HoloFood data in R. This package streamlines access to the resource, allowing for direct loading of data into formats optimized for downstream analytics.
Sourced from
- GitHub — github.com/ebi-metagenomics/holofoodr
- Bioconductor — HoloFoodR
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