R benchmarking made easy. The package contains a number of benchmarks, heavily based on the benchmarks at https://mac.R-project.org/benchmarks/R-benchmark-25.R, for assessing the speed of your system.
The package is for R 3.5 and above. In previous versions R, detecting the effect of the byte compiler was tricky and produced unrealistic comparisons.
A straightforward way of speeding up your analysis is to buy a better computer. Modern desktops are relatively cheap, especially compared to user time. However, it isn’t clear if upgrading your computing is worth the cost. The benchmarkme package provides a set of benchmarks to help quantify your system. More importantly, it allows you to compare your timings with other systems.
The package is on CRAN and can be installed in the usual way
install.packages("benchmarkme")
There are two groups of benchmarks:
benchmark_std()
: this benchmarks numerical operations
such as loops and matrix operations. The benchmark comprises of three
separate benchmarks: prog
, matrix_fun
, and
matrix_cal
.benchmark_io()
: this benchmarks reading and writing a 5
/ 50, MB csv file.This benchmarks numerical operations such as loops and matrix
operations. This benchmark comprises of three separate benchmarks:
prog
, matrix_fun
, and matrix_cal
.
If you have less than 3GB of RAM (run get_ram()
to find out
how much is available on your system), then you should kill any memory
hungry applications, e.g. firefox, and set runs = 1
as an
argument.
To benchmark your system, use
library("benchmarkme")
## Increase runs if you have a higher spec machine
= benchmark_std(runs = 3) res
and upload your results
## You can control exactly what is uploaded. See details below.
upload_results(res)
You can compare your results to other users via
plot(res)
This function benchmarks reading and writing a 5MB or 50MB (if you
have less than 4GB of RAM, reduce the number of runs
to 1).
Run the benchmark using
= benchmark_io(runs = 3)
res_io upload_results(res_io)
plot(res_io)
By default the files are written to a temporary directory generated
tempdir()
which depends on the value of
Sys.getenv("TMPDIR")
You can alter this to via the tmpdir
argument. This is
useful for comparing hard drive access to a network drive.
= benchmark_io(tmpdir = "some_other_directory") res_io
The benchmark functions above have a parallel option - just simply specify the number of cores you want to test. For example to test using four cores
= benchmark_std(runs = 3, cores = 4)
res_io plot(res_io)
This package was started around 2015. However, multiple changes in the byte compiler over the last few years, has made it very difficult to use previous results. So we have to start from scratch.
The previous data can be obtained via
data(past_results, package = "benchmarkmeData")
The package has a few useful functions for extracting system specs:
get_ram()
get_cpu()
get_linear_algebra()
get_byte_compiler()
get_platform_info()
get_r_version()
The above functions have been tested on a number of systems. If they don’t work on your system, please raise GitHub issue.
A summary of the uploaded data sets is available in the benchmarkmeData package
data(past_results_v2, package = "benchmarkmeData")
A column of this data set, contains the unique identifier returned by
the upload_results()
function.
Two objects are uploaded:
benchmark_std
or
benchmark_io
;get_sys_details()
).The get_sys_details()
returns:
Sys.info()
;get_platform_info()
;get_r_version()
;get_ram()
;get_cpu()
;get_byte_compiler()
;get_linear_algebra()
;installed.packages()
;Sys.getlocale()
;benchmarkme
version number;The function Sys.info()
does include the user and
nodenames. In the public release of the data, this information will be
removed. If you don’t wish to upload certain information, just set the
corresponding argument, i.e.
upload_results(res, args = list(sys_info = FALSE))
Development of this package was supported by Jumping Rivers