Pipeline tools coordinate the pieces of computationally demanding
analysis projects. The targets
package is a
Make-like pipeline tool for
statistics and data science in R. The package skips costly runtime for
tasks that are already up to date, orchestrates the necessary
computation with implicit parallel computing, and abstracts files as R
objects. If all the current output matches the current upstream code and
data, then the whole pipeline is up to date, and the results are more
trustworthy than otherwise.
A pipeline is a computational workflow that does statistics, analytics,
or data science. Examples include forecasting customer behavior,
simulating a clinical trial, and detecting differential expression from
genomics data. A pipeline contains tasks to prepare datasets, run
models, and summarize results for a business deliverable or research
paper. The methods behind these tasks are user-defined R functions that
live in R scripts, ideally in a folder called "R/"
in the project. The
tasks themselves are called “targets”, and they run the functions and
return R objects. The targets
package orchestrates the targets and
stores the output objects to make your pipeline efficient, painless, and
reproducible.
- Familiarity with the R programming language, covered in R for Data Science.
- Data science workflow management techniques.
- How to write functions to prepare data, analyze data, and summarize results in a data analysis project.
If you are using targets
with crew
for distributed
computing, it is
recommended to use crew
version 0.4.0
or higher.
install.packages("crew")
There are multiple ways to install the targets
package itself, and
both the latest release and the development version are available.
Type | Source | Command |
---|---|---|
Release | CRAN | install.packages("targets") |
Development | GitHub | remotes::install_github("ropensci/targets") |
Development | rOpenSci | install.packages("targets", repos = "https://dev.ropensci.org") |
The 4-minute video at https://vimeo.com/700982360 demonstrates the example pipeline used in the walkthrough and functions chapters of the user manual. Visit https://github.com/wlandau/targets-four-minutes for the code and https://rstudio.cloud/project/3946303 to try out the code in a browser (no download or installation required).
To create a pipeline of your own:
- Write R
functions for a
pipeline and save them to R scripts (ideally in the
"R/"
folder of your project). - Call
use_targets()
to write key files, including the vital_targets.R
file which configures and defines the pipeline. - Follow the comments in
_targets.R
to fill in the details of your specific pipeline. - Check the pipeline with
tar_visnetwork()
, run it withtar_make()
, and read output withtar_read()
. More functions are available.
- User manual: in-depth
discussion about how to use
targets
. The most important chapters are the walkthrough, help guide, and debugging guide. - Reference website: formal documentation of all user-side functions, the statement of need, and multiple design documents of the internal architecture.
- Developer documentation:
software design documents for developers contributing to the deep
internal architecture of
targets
.
Please read the help
guide to learn how best
to ask for help using targets
.
- Get started with
targets
in 4 minutes (4:08) targets
in Action with Joel Nitta and Eric Scott. rOpenSci Community Call (1:09:56).targets
andcrew
for clinical trial simulation pipelines. R/Pharma 2023 (1:57:22).targets
andstantargets
for Bayesian model validation pipelines. R/Medicine 2021 (15:33)- Reproducible computation at scale in R with
targets
New York Open Statistical Programming Meetup, December 2020 (1:54:28). - ds-incubator series, 2021 by Mauro Lepore.
- Introducción a targets. Irene Cruz, R-Ladies Barcelona, 2021-05-25 (1:25:12).
- Four-minute example
- Minimal example
- Machine learning with Keras
- Validate a minimal Stan model
- Using Target Markdown and
stantargets
to validate a Bayesian longitudinal model for clinical trial data analysis - Shiny app that runs a pipeline
- Deploy a pipeline to RStudio Connect
tar_watch()
: a built-in Shiny app to visualize progress while a pipeline is running. Available as a Shiny module viatar_watch_ui()
andtar_watch_server()
.targetsketch
: a Shiny app to help sketch pipelines (app, source).
tar_github_actions()
sets up a pipeline to run on GitHub Actions. The minimal example demonstrates this approach.
- R Targetopia: a collection of
R packages that
extend
targets
. These packages simplify pipeline construction for specific fields of Statistics and data science. - Target factories: a programming technique to write specialized interfaces for custom pipelines. Posts here and here describe how.
Please note that this package is released with a Contributor Code of Conduct.
citation("targets")
To cite targets in publications use:
Landau, W. M., (2021). The targets R package: a dynamic Make-like
function-oriented pipeline toolkit for reproducibility and
high-performance computing. Journal of Open Source Software, 6(57),
2959, https://doi.org/10.21105/joss.02959
A BibTeX entry for LaTeX users is
@Article{,
title = {The targets R package: a dynamic Make-like function-oriented pipeline toolkit for reproducibility and high-performance computing},
author = {William Michael Landau},
journal = {Journal of Open Source Software},
year = {2021},
volume = {6},
number = {57},
pages = {2959},
url = {https://doi.org/10.21105/joss.02959},
}