Thanks to all who gave feedback so far, there is now a version of the package on Github, it can be installed by
remotes::install_github("SebKrantz/collapse") further feedback is still very welcome! On Wed, 27 Feb 2019 at 12:48, Duncan Murdoch <murdoch.dun...@gmail.com> wrote: > On 26/02/2019 8:25 a.m., Sebastian Martin Krantz wrote: > > Dear Developers, > > > > Having spent time developing and thinking about how data aggregation and > > summary statistics can be enhanced in R, I would like to present my > > ideas/efforts in the form of two commands: > > > > The first, which for now I called 'collap', is an upgrade of aggregate > that > > accommodates and extends the functionality of aggregate in various > > respects, most importantly to work with multilevel and multi-type data, > > multiple function calls, highly customized aggregation tasks, a much > > greater flexibility in the passing of inputs and tidy output. > > > > The second function, 'qsu', is an advanced and flexible summary command > for > > cross-sectional and multilevel (panel) data (i.e. it can provide overall, > > between and within entities statistics, and allows for grouping, custom > > functions and transformations). It also provides a quick method to > compute > > and output within-transformed data. > > > > Both commands are efficiently built from core R, but provide for optional > > integration with data.table, which renders them extremely fast on large > > datasets. An explanation of the syntax, a demonstration and benchmark > > results are provided in the attached vignette. > > > > Since both commands accommodate existing functionality while adding > > significant basic functionality, I though that their addition to the > stats > > package would be a worthwhile consideration. I am happy for your > feedback. > > Generally the R Core group is reluctant to incorporate new functions > into the base packages. Each function that is added adds to their work, > and they already have too much to do. (I am no longer a member of R > Core, but I don't think things have changed since I retired.) > > It is much easier for them if volunteers publish functions themselves, > via contributed packages. > > Nowadays Github provides a very convenient platform on which you can > develop a package containing your functions. If other users find bugs > or have suggested improvements, it's very easy for them to send those to > you, and you can make the fixes available immediately. Once you are > satisfied that it is stable, you can submit it to CRAN, and anyone using > R can easily install it. > > If you find the prospect of writing a package daunting, you shouldn't. > It's actually quite easy, especially if you are using RStudio or ESS (or > some other helpful front-end.) Hadley Wickham's book > <http://r-pkgs.had.co.nz/> is a pretty accessible description of a > development strategy. (It's not the only strategy, but lots of people > use it.) > > Duncan Murdoch > [[alternative HTML version deleted]] ______________________________________________ R-devel@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-devel