tidyprint
github.com/tidyomics/tidyprintProvides customized print methods for 'SummarizedExperiment' objects to enhance readability and usability within a tidy workflow. It offers consistent, tidyverse-aligned console displays, including alternative tibble abstractions for large genomic data to improve discoverability and interpretation. The package also includes unified, contextual messaging utilities intended for the 'tidyomics' ecosystem.
Sourced from
- GitHub — github.com/tidyomics/tidyprint
- Bioconductor — tidyprint
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