The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.

replacer

replacer, a value replacement utility currently based on package data.table, is intended for outside-database update of data. It requires the preparation of a lookup file which is a list of replacement requests with and, in special circumstances, without an index column.

This utility is accessible to beginners to R and facilitates complex dataset updates with minimal prompt time by employing User-friendly functions which automatically follow a decision tree rooted in User’s input.

Data processing such as data cleanup, file format conversion and the appendage of new data to data files are outside the scope.

Installation

You can install the released version of replacer from CRAN with:

install.packages("replacer")

Example

Below is a basic example which shows the screen result of data replacement using a lookup file without index:

require(replacer)
#> Loading required package: replacer
## basic example code
dir = system.file('extdata', package = 'replacer')
## update the 'data' dataset with new replacement values
replaceVals(dir, save = FALSE) 
#> 
#> reading data from: C:/R/R-4.1.2/library/replacer/extdata...
#> data reading complete ...
#> checking standard columns in lookup ...
#> starting replacements ...
#> found duplicates and simple replacements but no index in lookup :
#> 
#>  would recommend User-made index
#> proceeding any way ...
#> subsetting lookup and creating index ...
#> found request for 1:1 replacements: proceeding ...
#> completed 1:1 replacements ...
#> rejoining columns uninvolved in simple replacements ...
#> searching for 1:many replacements ...
#> found request for multiple duplicated value replacments: creating index ...
#> replacing multiple duplicated values ...
#> found request for multiple missing value replacements: replacing ...
#> processed 1:many replacements ...
#> there are still missing values in some involved columns!
#> 
#> helper function has completed!
#> $` updated_data_using_lookup`
#>                a       b       c    d
#>  1:           aa   7.174   0.259   11
#>  2: NOT  PRESENT  17.572   0.478 5555
#>  3:  DUP VALUE_1   8.888   0.707   NA
#>  4:           dd   0.794   0.737 5555
#>  5:           UU -13.964 999.000 5555
#>  6:  DUP VALUE_1   0.127   0.737    8
#>  7:           ff   8.836   0.476 5555
#>  8: NOT  PRESENT   6.397  -0.001    8
#>  9:           hh  -4.979   0.121    9
#> 10: NOT  PRESENT  -2.755  -0.227    8
#> 11:           EE   1.111  -0.127    6
#> 12: NOT  PRESENT   1.121   0.333    7
#> 13: NOT  PRESENT  -4.979   0.737 5555
#> 14: NOT  PRESENT 999.000   0.476 5555
#> 15: NOT  PRESENT   1.111 999.000    8
#> 16:           JJ   1.121 999.000 5555
#> 
#> $` multiple_dups_repl_counts`
#>    vars oldVals     newVals  a  b  d
#> 1:    a      cc DUP VALUE_1  2 NA NA
#> 2:    b   2.142       1.111 NA  2 NA
#> 3:    d      15        5555 NA NA  7
#> 
#> $` NAs_remaining`
#> a b c d 
#> 0 0 0 1

Familiarity with basic R commands is necessary. Familiarity with data.table is not, yet strongly recommended!

Users are encouraged to start by reading the vignette.

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.
Health stats visible at Monitor.