plyxp
The package provides `rlang` data masks for the SummarizedExperiment class. The enables the evaluation of unquoted expression in different contexts of the SummarizedExperiment object with optional access to other contexts. The goal for `plyxp` is for evaluation to feel like a data.frame object without ever needing to unwind to a rectangular data.frame.
- Repository
- github.com/jtlandis/plyxp
Source attribution
- Bioconductor — plyxp
Related resources
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