evals is aimed at collecting as much information as
possible while evaluating R code. It can evaluate a character vector of
R expressions, and it returns a list of information captured while
running them:
src holds the R expression,result contains the raw R object as-is,output represents how the R object is printed to the
standard output,type is the class of the returned R object,msg is a list of messages captured while evaluating the
R expression. Among other messages, warnings/errors will appear
here.stdout contains what, if anything, was written to the
standard output.Besides capturing evaluation information, evals is able
to automatically identify whether an R expression is returning anything
to a graphical device, and can save the resulting image in a variety of
file formats.
Another interesting evals feature is caching the results
of evaluated expressions. Read the caching
section for more details.
evals has a large number of options, which allow users
to customize the call exactly as needed. Here we will focus on the most
useful features, but the full list of options, with explanations, can be
viewed by calling ?evalsOptions. Also evals
support permanent options that will persist for all calls to
evals, this can be achieved by calling
evalsOptions.
Let’s start with a basic example by evaluating 1:10 and
collecting all information about it:
evals('1:10')
#> [[1]]
#> $src
#> [1] "1:10"
#>
#> $result
#> [1] 1 2 3 4 5 6 7 8 9 10
#>
#> $output
#> [1] " [1] 1 2 3 4 5 6 7 8 9 10"
#>
#> $type
#> [1] "integer"
#>
#> $msg
#> $msg$messages
#> NULL
#>
#> $msg$warnings
#> NULL
#>
#> $msg$errors
#> NULL
#>
#>
#> $stdout
#> NULL
#>
#> attr(,"class")
#> [1] "evals"Not all the information might be useful, so evals makes
it is possible to capture only some of the information, by specifying
the output parameter:
evals('1:10', output = c('result', 'output'))
#> [[1]]
#> $result
#> [1] 1 2 3 4 5 6 7 8 9 10
#>
#> $output
#> [1] " [1] 1 2 3 4 5 6 7 8 9 10"
#>
#> attr(,"class")
#> [1] "evals"One of the neat features of evals that it catches
errors/warnings without interrupting the evaluation and saves them.
evals('x')[[1]]$msg
#> $messages
#> NULL
#>
#> $warnings
#> NULL
#>
#> $errors
#> [1] "object 'x' not found"
evals('as.numeric("1.1a")')[[1]]$msg
#> $messages
#> NULL
#>
#> $warnings
#> [1] "NAs introduced by coercion"
#>
#> $errors
#> NULLAs mentioned before, evals captures the output to
graphical devices and saves it:
evals('plot(mtcars)')[[1]]$result
#> [1] "my_plots/test.jpeg"
#> attr(,"class")
#> [1] "image"You can specify the output directory using the graph.dir
parameter, and the output type using the graph.output
parameter. Currently, it could be any of grDevices:
png, bmp,jpeg,jpg,
tiff, svg, or pdf.
evals('plot(mtcars)', graph.dir = 'my_plots', graph.output = 'jpg')[[1]]$result
#> [1] "my_plots/test.jpeg"
#> attr(,"class")
#> [1] "image"Moreover, evals provides facilities to:
recordPlot to distinct files with
recodplot extensionlattice or
ggplot2) while generating the plot to distinct files with
RDS extensionevals provides very powerful facilities to unify the
styling of images produced by different packages, like
ggplot2 and lattice.
Let’s prepare the data for plotting:
## generating dataset
set.seed(1)
df <- mtcars[, c('hp', 'wt')]
df$factor <- sample(c('Foo', 'Bar', 'Foo bar'), size = nrow(df), replace = TRUE)
df$factor2 <- sample(c('Foo', 'Bar', 'Foo bar'), size = nrow(df), replace = TRUE)
df$time <- 1:nrow(df)Now let’s plot the histograms:
evalsOptions('graph.unify', TRUE)
evals('histogram(df$hp, main = "Histogram with lattice")')[[1]]$result
#> [1] "my_plots/test.jpeg"
#> attr(,"class")
#> [1] "image"
evals('ggplot(df) + geom_histogram(aes(x = hp), binwidth = 50) + ggtitle("Histogram with ggplot2")')[[1]]$result
#> [1] "my_plots/test.jpeg"
#> attr(,"class")
#> [1] "image"
evalsOptions('graph.unify', FALSE)
Options for unification can be set with panderOptions.
For example:
panderOptions('graph.fontfamily', "Comic Sans MS")
panderOptions('graph.fontsize', 18)
panderOptions('graph.fontcolor', 'blue')
panderOptions('graph.grid.color', 'blue')
panderOptions('graph.axis.angle', 3)
panderOptions('graph.boxes', T)
panderOptions('graph.legend.position', 'top')
panderOptions('graph.colors', rainbow(5))
panderOptions('graph.grid', FALSE)
panderOptions('graph.symbol', 22)More information and examples on style unification can be obtained by
Pandoc.brewing the tutorial available here.
To make execution and debugging easier to understand,
evals provides logging with the log parameter.
Logging in evals relies on the logger
package, which provides a logging API similar to log4j.
Basic example:
x <- evals('1:10', log = 'foo')logger’s thresholds range from most verbose to least
verbose: TRACE, DEBUG, INFO,
WARN, ERROR, FATAL. The threshold
defaults to INFO, which will hide some unessential
information. To permanently set the threshold for logger use
log_threshold:
evalsOptions('log', 'evals')
log_threshold(TRACE, namespace = 'evals')
x <- evals('1:10', cache.time = 0)logger also provides a very useful ability to write logs
to files instead of printing them to the prompt:
t <- tempfile()
log_appender(appender_file(t), namespace = 'evals')
x <- evals('1:10', log = 'evals')
readLines(t)
#> [1] "INFO [2022-03-18 09:57:16] Command run: 1:10"
#> [2] "TRACE [2022-03-18 09:57:16] Returning cached R object."
# revert back to console
log_appender(appender_stdout, namespace = 'evals')evals is uses a custom caching algorithm to cache the
results of evaluated R expressions.
evals is split into single
expressions and parsed.evals extracts symbols in a separate list in
getCallParts. This list describes the unique structure and
the content of the passed R expressionspander’s local environments. This is useful if you are
using large data frames; otherwise, the caching algorithm would have to
compute the hash for the same data frame each time it’s touched! This
way the hash is recomputed only if the R object with the given name is
changed.panderOptions and
evalsOptions, which all together is unique and there is no
real risk of collision.evals can find the cached results in the appropriate
environment (if cache.mode set to environment) or in a file
named to the computed hash (if cache.mode set to
disk), then it is returned on the spot. The objects
modified/created by the cached code are also updated.cache is active and if the evaluation
proc.time() > cache.time parameter). Cached
results are saved in cached.results in
pander’s namespace. evals also remembers if R
expressions change the evaluation environment (for example assignments)
and saves such changes in cached.environemnts in
pander’s namespace.We will set cache.time to 0, to cache all expressions
regardless of time they took to evaluate. We will also use the logging
facilites described above to simplify the understanding of how caching
works.
evalsOptions('cache.time', 0)
evalsOptions('log', 'evals')
log_threshold(TRACE, 'evals')Let’s start with small example.
system.time(evals('1:1e5'))
#> INFO [2022-03-18 09:57:16] Command run: 1:1e+05
#> TRACE [2022-03-18 09:57:16] Cached result
#> DEBUG [2022-03-18 09:57:16] Returned object: class = integer, length = 100000, dim = , size = 400048 bytes
#> user system elapsed
#> 0.532 0.017 0.549
system.time(evals('1:1e5'))
#> INFO [2022-03-18 09:57:16] Command run: 1:1e+05
#> TRACE [2022-03-18 09:57:16] Returning cached R object.
#> user system elapsed
#> 0.002 0.000 0.002Results cached by evals can be stored in an
environment in current R session or permanently on
disk by setting the cache.mode parameter appropriately.
res <- evals('1:1e5', cache.mode = 'disk', cache.dir = 'cachedir')
#> INFO [2022-03-18 09:57:16] Command run: 1:1e+05
#> TRACE [2022-03-18 09:57:17] Cached result
#> DEBUG [2022-03-18 09:57:17] Returned object: class = integer, length = 100000, dim = , size = 400048 bytes
list.files('cachedir')
#> [1] "6080a0cfa73b878c1c8d205c79a874b43100c428"Since the hash for caching is computed based on the
structure and content of the R commands, instead of
the variable names or R expressions, evals is able to
achieve great results:
x <- mtcars$hp
y <- 1e3
system.time(evals('sapply(rep(x, y), mean)'))
#> INFO [2022-03-18 09:57:17] Command run: sapply(rep(x, y), mean)
#> TRACE [2022-03-18 09:57:17] Cached result
#> DEBUG [2022-03-18 09:57:17] Returned object: class = numeric, length = 32000, dim = , size = 256048 bytes
#> user system elapsed
#> 0.171 0.000 0.172Let us create some custom functions and variables, which are not identical to the above call:
f <- sapply
g <- rep
h <- mean
X <- mtcars$hp * 1
Y <- 1000
system.time(evals('f(g(X, Y), h)'))
#> INFO [2022-03-18 09:57:17] Command run: f(g(X, Y), h)
#> TRACE [2022-03-18 09:57:17] Returning cached R object.
#> user system elapsed
#> 0.002 0.000 0.003Another important feature of evals is that it notes
changes in the evaluation environment. For example:
x <- 1
res <- evals('x <- 1:10;')
#> INFO [2022-03-18 09:57:17] Command run: x <- 1:10
#> TRACE [2022-03-18 09:57:17] Cached resultx <- 1:10 will be cached; if the same assignment
occurs again we won’t need to evaluate it. But what about the change of
x when we get the result from the cache? evals
takes care of that.
So in the following example we can see that x <- 1:10
is not evaluated, but retrieved from cache with the change to
x in the environment.
evals('x <- 1:10; x[3]')[[2]]$result
#> INFO [2022-03-18 09:57:17] Command run: x <- 1:10
#> TRACE [2022-03-18 09:57:17] Returning cached R object.
#> INFO [2022-03-18 09:57:17] Command run: x[3]
#> TRACE [2022-03-18 09:57:17] Cached result
#> DEBUG [2022-03-18 09:57:17] Returned object: class = integer, length = 1, dim = , size = 56 bytes
#> [1] 3Also evals is able to cache output to graphical devices
produced during evaluation:
system.time(evals('plot(mtcars)'))
#> INFO [2022-03-18 09:57:17] Command run: plot(mtcars)
#> TRACE [2022-03-18 09:57:18] Image file written: my_plots/test.jpeg
#> TRACE [2022-03-18 09:57:18] Cached result
#> user system elapsed
#> 0.132 0.000 0.132
system.time(evals('plot(mtcars)'))
#> INFO [2022-03-18 09:57:18] Command run: plot(mtcars)
#> TRACE [2022-03-18 09:57:18] Image found in cache: my_plots/test.jpeg
#> user system elapsed
#> 0.002 0.001 0.002