app | R Documentation |
Apply a function to the values of each cell of a SpatRaster. Similar to apply
– think of each layer in a SpatRaster as a column (or row) in a matrix.
This is generally used to summarize the values of multiple layers into one layer; but this is not required.
app
calls function fun
with the raster data as first argument. Depending on the function supplied, the raster data is represented as either a matrix in which each layer is a column, or a vector representing a cell. The function should return a vector or matrix that is divisible by ncell(x). Thus, both "sum" and "rowSums" can be used, but "colSums" cannot be used.
You can also apply a function fun
across datasets by layer of a SpatRasterDataset
. In that case, summarization is by layer across SpatRasters.
## S4 method for signature 'SpatRaster'
app(x, fun, ..., cores=1, filename="", overwrite=FALSE, wopt=list())
## S4 method for signature 'SpatRasterDataset'
app(x, fun, ..., cores=1, filename="", overwrite=FALSE, wopt=list())
x |
SpatRaster or SpatRasterDataset |
fun |
a function that operates on a vector or matrix. This can be a function that is defined in base-R or in a package, or a function you write yourself (see examples). Functions that return complex output (e.g. a list) may need to be wrapped in your own function to simplify the output to a vector or matrix. The following functions have been re-implemented in C++ for speed: "sum", "mean", "median", "modal", "which", "which.min", "which.max", "min", "max", "prod", "any", "all", "sd", "std", "first". To use the base-R function for say, "min", you could use something like |
... |
additional arguments for |
cores |
positive integer. If |
filename |
character. Output filename |
overwrite |
logical. If |
wopt |
list with named options for writing files as in |
To speed things up, parallelization is supported, but this is often not helpful, and it may actually be slower. There is only a speed gain if you have many cores (> 8) and/or a very complex (slow) function fun
. If you write fun
yourself, consider supplying a cppFunction
made with the Rcpp package instead (or go have a cup of tea while the computer works for you).
SpatRaster
lapp
, tapp
, Math-methods
, roll
r <- rast(ncols=10, nrows=10)
values(r) <- 1:ncell(r)
x <- c(r, sqrt(r), r+50)
s <- app(x, fun=sum)
s
# for a few generic functions like
# "sum", "mean", and "max" you can also do
sum(x)
## SpatRasterDataset
sd <- sds(x, x*2, x/3)
a <- app(sd, max)
a
# same as
max(x, x*2, x/3)
# and as (but slower)
b <- app(sd, function(i) max(i))
## also works for a single layer
f <- function(i) (i+1) * 2 * i + sqrt(i)
s <- app(r, f)
# same as above, but that is not memory-safe
# and has no filename argument
s <- f(r)
## Not run:
#### multiple cores
test0 <- app(x, sqrt)
test1 <- app(x, sqrt, cores=2)
testfun <- function(i) { 2 * sqrt(i) }
test2 <- app(x, fun=testfun, cores =2)
## this fails because testfun is not exported to the nodes
# test3 <- app(x, fun=function(i) testfun(i), cores=2)
## to export it, add it as argument to fun
test3 <- app(x, fun=function(i, ff) ff(i), cores =3, ff=testfun)
## End(Not run)
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