# ensurer v1.1

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## Ensure Values at Runtime

Add simple runtime contracts to R values. These ensure that values fulfil certain conditions and will raise appropriate errors if they do not.

# The ensurer R package

### Ensure values at runtime.

ensurer is a utility package for R that provides a simple and light-weight mechanism for ensuring certain aspects of values at runtime.

R does not provide any mechanism for type-safety and since it is not a compiled language, the risk of having unexpected results is there at runtime. R functions often accept different types for the same input and/or have different return types for different situations.

As an example, a query to a database or the scraping of a website might not return valid data, where "validity" can refer to a number of conditions. It might be a positive or certain number of records; that all cases are complete; that some column is weekly increasing; or simply that the result is a data.frame.

If one does not deal with these ambiguities and risks appropriately, some resulting errors may be hard to track down and may propagate in unexpected ways. It is desirable to get an error immediately when a value does not have the correct type or does not satisfy certain criteria.

"Ensuring values" is here meant as a "contract", or a set of conditions, such that if a value does not comply an error is raised instantly (unless special behavior is specified for the failure). An ensuring contract (a function) is created with the ensures_that function (ideal for multiple use or readability with complex contracts).

It is also possible to ensure properties on the fly using ensure_that (ideal for simple, one-time contracts).

Using the magrittr pipe %>% greatly improves semantics of the functionality provided by this package, but it is not necessary.

This package is not meant as a substitute for unit testing, and great packages for this already exist, e.g. testthat by Hadley Wickham. The ensurer package is ideal for scripts or programs where runtime conditions may break the functionality, and where errors should be raised as soon and clear as possible. Although a side-effect, It is my experience that it also promotes better design decisions at outset, and helps catch coding errors early on.

# Installation

Using CRAN:

install.packages("ensurer")


Using GitHub and the devtools package (for the development version):

devtools::install_github("smbache/ensurer")


# Basic Examples

The following example shows how to define a contract ensuring that its input is square, and how to use it.

library(magrittr) # for the pipe -> cleaner semantics
library(ensurer)

# To reference the value being evaluated, use the . placeholder.
ensure_square <- ensures_that(NCOL(.) == NROW(.))

# try it out:
diag(5) %>%
ensure_square  # passes, so returns the diagonal matrix

# This won't work, and an error is raised.
matrix(1:20, 4, 5) %>%
ensure_square

# On the fly contracts:
matrix(1:4, 2, 2) %>%
ensure_that(is.matrix(.), all(is.numeric(.)))


One can specify several conditions, each separated with a comma. Simple predicate functions can be used in abbreviated symbolic form, e.g as in the example below.

ensure_square <- ensures_that(is.matrix,
NCOL(.) == NROW(.))


Note that all conditions are tested to provide the most feedback upon failure. If "short-circuits" are desired, one can add more (separate) ensuring contracts.

Special features include

• Customizing error behavior
• Easily combining several contracts
• Customizing error description
• Customizing individual conditions' error messages

## Functions in ensurer

 Name Description ensurer ensurer - Ensure Values at Runtime check_that Ensure Certain Conditions for a Value at Runtime. print.ensurer Print method for ensurer contracts No Results!