renderCachedPlot {shiny} | R Documentation |
Plot output with cached images
Description
Renders a reactive plot, with plot images cached to disk. As of Shiny 1.6.0,
this is a shortcut for using bindCache()
with renderPlot()
.
Usage
renderCachedPlot(
expr,
cacheKeyExpr,
sizePolicy = sizeGrowthRatio(width = 400, height = 400, growthRate = 1.2),
res = 72,
cache = "app",
...,
alt = "Plot object",
outputArgs = list(),
width = NULL,
height = NULL
)
Arguments
expr |
An expression that generates a plot. |
cacheKeyExpr |
An expression that returns a cache key. This key should be a unique identifier for a plot: the assumption is that if the cache key is the same, then the plot will be the same. |
sizePolicy |
A function that takes two arguments, |
res |
The resolution of the PNG, in pixels per inch. |
cache |
The scope of the cache, or a cache object. This can be |
... |
Arguments to be passed through to |
alt |
Alternate text for the HTML |
outputArgs |
A list of arguments to be passed through to the implicit
call to |
width , height |
not used. They are specified via the argument
|
Details
expr
is an expression that generates a plot, similar to that in
renderPlot
. Unlike with renderPlot
, this expression does not
take reactive dependencies. It is re-executed only when the cache key
changes.
cacheKeyExpr
is an expression which, when evaluated, returns an object
which will be serialized and hashed using the rlang::hash()
function to generate a string that will be used as a cache key. This key is
used to identify the contents of the plot: if the cache key is the same as a
previous time, it assumes that the plot is the same and can be retrieved from
the cache.
This cacheKeyExpr
is reactive, and so it will be re-evaluated when any
upstream reactives are invalidated. This will also trigger re-execution of
the plotting expression, expr
.
The key should consist of "normal" R objects, like vectors and lists. Lists should in turn contain other normal R objects. If the key contains environments, external pointers, or reference objects — or even if it has such objects attached as attributes — then it is possible that it will change unpredictably even when you do not expect it to. Additionally, because the entire key is serialized and hashed, if it contains a very large object — a large data set, for example — there may be a noticeable performance penalty.
If you face these issues with the cache key, you can work around them by
extracting out the important parts of the objects, and/or by converting them
to normal R objects before returning them. Your expression could even
serialize and hash that information in an efficient way and return a string,
which will in turn be hashed (very quickly) by the
rlang::hash()
function.
Internally, the result from cacheKeyExpr
is combined with the name of
the output (if you assign it to output$plot1
, it will be combined
with "plot1"
) to form the actual key that is used. As a result, even
if there are multiple plots that have the same cacheKeyExpr
, they
will not have cache key collisions.
Interactive plots
renderCachedPlot
can be used to create interactive plots. See
plotOutput()
for more information and examples.
See Also
See renderPlot()
for the regular, non-cached version of this
function. It can be used with bindCache()
to get the same effect as
renderCachedPlot()
. For more about configuring caches, see
cachem::cache_mem()
and cachem::cache_disk()
.
Examples
## Only run examples in interactive R sessions
if (interactive()) {
# A basic example that uses the default app-scoped memory cache.
# The cache will be shared among all simultaneous users of the application.
shinyApp(
fluidPage(
sidebarLayout(
sidebarPanel(
sliderInput("n", "Number of points", 4, 32, value = 8, step = 4)
),
mainPanel(plotOutput("plot"))
)
),
function(input, output, session) {
output$plot <- renderCachedPlot({
Sys.sleep(2) # Add an artificial delay
seqn <- seq_len(input$n)
plot(mtcars$wt[seqn], mtcars$mpg[seqn],
xlim = range(mtcars$wt), ylim = range(mtcars$mpg))
},
cacheKeyExpr = { list(input$n) }
)
}
)
# An example uses a data object shared across sessions. mydata() is part of
# the cache key, so when its value changes, plots that were previously
# stored in the cache will no longer be used (unless mydata() changes back
# to its previous value).
mydata <- reactiveVal(data.frame(x = rnorm(400), y = rnorm(400)))
ui <- fluidPage(
sidebarLayout(
sidebarPanel(
sliderInput("n", "Number of points", 50, 400, 100, step = 50),
actionButton("newdata", "New data")
),
mainPanel(
plotOutput("plot")
)
)
)
server <- function(input, output, session) {
observeEvent(input$newdata, {
mydata(data.frame(x = rnorm(400), y = rnorm(400)))
})
output$plot <- renderCachedPlot(
{
Sys.sleep(2)
d <- mydata()
seqn <- seq_len(input$n)
plot(d$x[seqn], d$y[seqn], xlim = range(d$x), ylim = range(d$y))
},
cacheKeyExpr = { list(input$n, mydata()) },
)
}
shinyApp(ui, server)
# A basic application with two plots, where each plot in each session has
# a separate cache.
shinyApp(
fluidPage(
sidebarLayout(
sidebarPanel(
sliderInput("n", "Number of points", 4, 32, value = 8, step = 4)
),
mainPanel(
plotOutput("plot1"),
plotOutput("plot2")
)
)
),
function(input, output, session) {
output$plot1 <- renderCachedPlot({
Sys.sleep(2) # Add an artificial delay
seqn <- seq_len(input$n)
plot(mtcars$wt[seqn], mtcars$mpg[seqn],
xlim = range(mtcars$wt), ylim = range(mtcars$mpg))
},
cacheKeyExpr = { list(input$n) },
cache = cachem::cache_mem()
)
output$plot2 <- renderCachedPlot({
Sys.sleep(2) # Add an artificial delay
seqn <- seq_len(input$n)
plot(mtcars$wt[seqn], mtcars$mpg[seqn],
xlim = range(mtcars$wt), ylim = range(mtcars$mpg))
},
cacheKeyExpr = { list(input$n) },
cache = cachem::cache_mem()
)
}
)
}
## Not run:
# At the top of app.R, this set the application-scoped cache to be a memory
# cache that is 20 MB in size, and where cached objects expire after one
# hour.
shinyOptions(cache = cachem::cache_mem(max_size = 20e6, max_age = 3600))
# At the top of app.R, this set the application-scoped cache to be a disk
# cache that can be shared among multiple concurrent R processes, and is
# deleted when the system reboots.
shinyOptions(cache = cachem::cache_disk(file.path(dirname(tempdir()), "myapp-cache")))
# At the top of app.R, this set the application-scoped cache to be a disk
# cache that can be shared among multiple concurrent R processes, and
# persists on disk across reboots.
shinyOptions(cache = cachem::cache_disk("./myapp-cache"))
# At the top of the server function, this set the session-scoped cache to be
# a memory cache that is 5 MB in size.
server <- function(input, output, session) {
shinyOptions(cache = cachem::cache_mem(max_size = 5e6))
output$plot <- renderCachedPlot(
...,
cache = "session"
)
}
## End(Not run)