sdf_rexp
Generate random samples from an exponential distribution
Description
Generator method for creating a single-column Spark dataframes comprised of i.i.d. samples from an exponential distribution.
Usage
sdf_rexp(sc, n, rate = 1, num_partitions = NULL, seed = NULL, output_col = "x")
Arguments
Argument | Description |
---|---|
sc | A Spark connection. |
n | Sample Size (default: 1000). |
rate | Rate of the exponential distribution (default: 1). The exponential |
distribution with rate lambda has mean 1 / lambda and density f(x) = lambda e^- lambda x. num_partitions | Number of partitions in the resulting Spark dataframe (default: default parallelism of the Spark cluster). seed | Random seed (default: a random long integer). output_col | Name of the output column containing sample values (default: “x”).
See Also
Other Spark statistical routines: sdf_rbeta()
, sdf_rbinom()
, sdf_rcauchy()
, sdf_rchisq()
, sdf_rgamma()
, sdf_rgeom()
, sdf_rhyper()
, sdf_rlnorm()
, sdf_rnorm()
, sdf_rpois()
, sdf_rt()
, sdf_runif()
, sdf_rweibull()