Parse and construct Python representations for datasets stored in RDS files. rds2py
supports various base classes from R, and Bioconductor's SummarizedExperiment
and SingleCellExperiment
S4 classes. For more details, check out rds2cpp library.
Version 0.5.0 brings major changes to the package,
- Complete overhaul of the codebase using pybind11
- Streamlined readers for R data types
- Updated API for all classes and methods
Please refer to the documentation for the latest usage guidelines. Previous versions may have incompatible APIs.
Package is published to PyPI
pip install rds2py
# or install optional dependencies
pip install rds2py[optional]
By default, the package does not install packages to convert python representations to BiocPy classes. Please consider installing all optional dependencies.
If you do not have an RDS object handy, feel free to download one from single-cell-test-files.
from rds2py import read_rds
r_obj = read_rds("path/to/file.rds")
The returned r_obj
either returns an appropriate Python class if a parser is already implemented or returns the dictionary containing the data from the RDS file.
To just get the parsed dictionary representation of the RDS file,
from rds2py import parse_rds
robject_dict = parse_rds("path/to/file.rds")
print(robject_dict)
Reading RDS files as dictionary representations allows users to write their own custom readers into appropriate Python representations.
from rds2py import parse_rds
robject = parse_rds("path/to/file.rds")
print(robject)
if you know this RDS file contains an GenomicRanges
object, you can use the built-in reader or write your own reader to convert this dictionary.
from rds2py.read_granges import read_genomic_ranges
gr = read_genomic_ranges(robject)
print(gr)
R Type | Python/NumPy Type |
---|---|
numeric | numpy.ndarray (float64) |
integer | numpy.ndarray (int32) |
character | list of str |
logical | numpy.ndarray (bool) |
factor | list |
data.frame | BiocFrame |
matrix | numpy.ndarray or scipy.sparse matrix |
dgCMatrix | scipy.sparse.csc_matrix |
dgRMatrix | scipy.sparse.csr_matrix |
and integration with BiocPy ecosystem for Bioconductor classes
- SummarizedExperiment
- RangedSummarizedExperiment
- SingleCellExperiment
- GenomicRanges
- MultiAssayExperiment
This project uses pybind11 to provide bindings to the rds2cpp library. Please make sure necessary C++ compiler is installed on your system.
This project has been set up using PyScaffold 4.5. For details and usage information on PyScaffold see https://pyscaffold.org/.