The hardware and bandwidth for this mirror is donated by METANET, the Webhosting and Full Service-Cloud Provider.
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[@]metanet.ch.
Version 0.2.0
Leoson Hoay
21 Nov 2023
This module was born out of my genuine frustration while constructing an extremely long CASE WHEN…THEN statement to re-label categorical variables. It is most helpful for folks who intend to work with SQL directly in the R environment, likely with a SQL connector such as RODBC or RSQLite.
Instead of manually inputting WHENs and THENs to replace/map values, this library does it for you if you provide it with a mapping CSV file that contains the original values in the first column, and the values to map to in the second column. This version only supports CSV files for now, but support for other file formats is planned.
Go from this:
Hotel/Motel | Living in Shelter/Hotel/Motel |
Homeless Shelter | Living in Shelter/Hotel/Motel |
Homeless Status Not Applicable | Not Homeless |
N/A | Not Homeless |
No | Not Homeless |
Homeless, Doubled-Up | Doubled Up |
To this:
CASE WHEN 'Hotel/Motel' THEN 'Living in Shelter/Hotel/Motel'
WHEN 'Homeless Shelter' THEN 'Living in Shelter/Hotel/Motel'
WHEN 'Homeless Status Not Applicable' THEN 'Not Homeless'
WHEN 'N/A' THEN 'Not Homeless'
WHEN 'No' THEN 'Not Homeless'
WHEN 'Homeless, Doubled-Up' THEN 'Doubled Up'
As of version 0.1.3, the package also supports the creation of long SQL IN() lists via the inlist() function. This was inspired by reading about Kevin Flerlage’s Excel implementation.
library(sqlcaser)
The package assumes that the user has a mapping CSV file or an R dataframe similar to the example below:
<- system.file("extdata", "sample.csv", package = "sqlcaser")
samp <- read.csv(samp)
mapping
mapping#> Homeless..Hotel.or.Motel Living.in.Shelter.Hotel.Motel
#> 1 Homeless, Hotel/Motel Living in Shelter/Hotel/Motel
#> 2 Homeless, Living in Shelter Living in Shelter/Hotel/Motel
#> 3 Homeless Shelters Living in Shelter/Hotel/Motel
#> 4 Hotel/motel Living in Shelter/Hotel/Motel
#> 5 Hotel/Motel Living in Shelter/Hotel/Motel
#> 6 Homeless Shelter Living in Shelter/Hotel/Motel
#> 7 Homeless Status Not Applicable Not Homeless
#> 8 N/A Not Homeless
#> 9 No Not Homeless
#> 10 Homeless, Doubled-Up Doubled Up
#> 11 Homeless, In Doubled-Up Residence Doubled Up
#> 12 Homeless, Unsheltered Unsheltered
The function casewhen() takes an R dataframe or the file path of the mapping file as input,and returns the CASE statement as a string, while printing it to the console as well.
<- casewhen(samp)
statement #>
#> CASE WHEN 'Homeless, Hotel or Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless, Hotel/Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless, Living in Shelter' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Shelters' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Hotel/motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Hotel/Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Shelter' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Status Not Applicable' THEN 'Not Homeless'
#> WHEN 'N/A' THEN 'Not Homeless'
#> WHEN 'No' THEN 'Not Homeless'
#> WHEN 'Homeless, Doubled-Up' THEN 'Doubled Up'
#> WHEN 'Homeless, In Doubled-Up Residence' THEN 'Doubled Up'
#> WHEN 'Homeless, Unsheltered' THEN 'Unsheltered'
The user can then easily include it as part of the SQL query:
<- paste("SELECT id, ", statement, " END AS status "," \nFROM table;")
query cat(query)
#> SELECT id,
#> CASE WHEN 'Homeless, Hotel or Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless, Hotel/Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless, Living in Shelter' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Shelters' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Hotel/motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Hotel/Motel' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Shelter' THEN 'Living in Shelter/Hotel/Motel'
#> WHEN 'Homeless Status Not Applicable' THEN 'Not Homeless'
#> WHEN 'N/A' THEN 'Not Homeless'
#> WHEN 'No' THEN 'Not Homeless'
#> WHEN 'Homeless, Doubled-Up' THEN 'Doubled Up'
#> WHEN 'Homeless, In Doubled-Up Residence' THEN 'Doubled Up'
#> WHEN 'Homeless, Unsheltered' THEN 'Unsheltered'
#> END AS status
#> FROM table;
A sample mapping file is provided in this package. The file path can be accessed as follows:
<- system.file("extdata", "sample.csv", package = "sqlcaser") samplepath
casewhen()
description
This function constructs a CASE WHEN THEN statement from a mapping CSV file or R dataframe. It assumes that the first column of the data contains the original WHEN values, and the second column contains the THEN values (the values to be mapped to.)
Usage
casewhen(inputfile=NULL, header=FALSE)
Arguments
inputfile R dataframe or path to the mapping file
header If reading a CSV file, specify TRUE if there is a header row, FALSE if there is no header row.
Value
A string that represents the constructed CASE statement.
inlist()
description
This function constructs a IN statement from a mapping CSV file or R dataframe. It assumes that the first column of the data contains the vector of values that the IN statement will check against.
Usage
inlist(inputfile=NULL, header=FALSE)
Arguments
inputfile R dataframe or path to the mapping file
header If reading a CSV file, specify TRUE if there is a header row, FALSE if there is no header row.
Value
A string that represents the constructed IN statement.
updatetable()
description
This function constructs an UPDATE statement from a mapping CSV file or R dataframe. It assumes that the first column of the data contains the key column and the keys to be checked against, and assumes that the rest of columns contain the columns and values to be updated into the table.
Usage
updatetable(inputfile=NULL, tablename=NULL)
Arguments
inputfile R dataframe or path to the mapping file
tablename Name of the SQL table to be updated.
Value
A string that represents the constructed UPDATE statement.
Install using:
devtools::install_github("leosonh/sqlcaseR")
Much thanks to a couple of my colleagues at Learning Collider - Nitya Raviprakash and Jasmin Dial - who provided healthy discussion around my misery of constructing long SQL queries. Credit is also due to Kevin Flerlage, whose efforts in automating this process in Excel should be commended and partially inspired this package.
If desired, cite the package using:
citation("sqlcaseR")
License: MIT License
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.