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ssw-r

R-CMD-check CRAN status

ssw-r offers an R interface for SSW, a fast implementation of the Smith-Waterman algorithm for sequence alignment using SIMD. ssw-r is currently built on the Python package ssw-py.

Installation

You can install ssw-r from CRAN once available:

install.packages("ssw")

Or try the development version on GitHub:

remotes::install_github("nanxstats/ssw-r")

Install ssw-py

A simple way to install the Python package ssw-py that ssw-r can discover easily, is to run the helper function ssw::install_ssw_py(). By default, it installs ssw-py into an virtual environment named r-ssw-py.

ssw::install_ssw_py()

This follows the best practices suggested by the reticulate vignette Managing an R Package’s Python Dependencies. There are also recommendations in the vignette on how to manage multiple R packages with different Python dependencies.

Usage

library("ssw")
"ACGT" |> align("TTTTACGTCCCCC")
CIGAR start index 4: 4M
optimal_score: 8
sub-optimal_score: 0
target_begin: 4 target_end: 7
query_begin: 0
query_end: 3

Target:        4    ACGT    7
                    ||||
Query:         0    ACGT    3
"ACGT" |> align("TTTTACTCCCCC", gap_open = 3)
CIGAR start index 4: 2M
optimal_score: 4
sub-optimal_score: 0
target_begin: 4 target_end: 5
query_begin: 0
query_end: 1

Target:        4    AC    5
                    ||
Query:         0    AC    1
"ACTG" |> force_align("TTTTCTGCCCCCACG") |> formatter(print = TRUE)
TTTTCTGCCCCCACG
   ACTG

For detailed usage, see the vignette.

Acknowledgements

ssw-r is built upon the work of two outstanding projects:

  1. SSW - Original C implementation. Author: Mengyao Zhao
  2. ssw-py - Python binding for SSW. Author: Nick Conway

We extend our sincere gratitude to Mengyao Zhao for developing the original SSW library and to Nick Conway for maintaining the ssw-py package. Their work forms the foundation of ssw-r. While ssw-r does not directly incorporate code from these projects, it serves as an R interface to their functionality. We encourage users to visit the original repositories for more information about the underlying implementation and to consider citing these works in publications that use ssw-r.

Code of Conduct

Please note that the ssw-r project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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