An R-focused pipeline toolkit for reproducibility and high-performance computing
dir <- tempfile()
dir.create(dir)
knitr::opts_knit$set(root.dir = dir)
knitr::opts_chunk$set(
collapse = TRUE,
comment = "#>",
fig.path = "man/figures/"
)
suppressMessages(suppressWarnings(library(drake)))
suppressMessages(suppressWarnings(library(dplyr)))
clean(destroy = TRUE)
invisible(drake_example("main", overwrite = TRUE))
invisible(file.copy("main/raw_data.xlsx", ".", overwrite = TRUE))
invisible(file.copy("main/report.Rmd", ".", overwrite = TRUE))
Usage | Release | Development |
---|---|---|
As of 2021-01-21, drake
is superseded. The targets
R package is the long-term successor of drake
, and it is more robust and easier to use. Please visit https://books.ropensci.org/targets/drake.html for full context and advice on transitioning.
Data analysis can be slow. A round of scientific computation can take several minutes, hours, or even days to complete. After it finishes, if you update your code or data, your hard-earned results may no longer be valid. How much of that valuable output can you keep, and how much do you need to update? How much runtime must you endure all over again?
For projects in R, the drake
package can help. It analyzes your workflow, skips steps with up-to-date results, and orchestrates the rest with optional distributed computing. At the end, drake
provides evidence that your results match the underlying code and data, which increases your ability to trust your research.
(By Miles McBain; venue,
resources)
Too many data science projects follow a Sisyphean loop:
For projects with long runtimes, this process gets tedious. But with drake
, you can automatically
To set up a project, load your packages,
library(drake)
library(dplyr)
library(ggplot2)
library(tidyr)
load your custom functions,
create_plot <- function(data) {
ggplot(data) +
geom_histogram(aes(x = Ozone)) +
theme_gray(24)
}
check any supporting files (optional),
# Get the files with drake_example("main").
file.exists("raw_data.xlsx")
file.exists("report.Rmd")
and plan what you are going to do.
plan <- drake_plan(
raw_data = readxl::read_excel(file_in("raw_data.xlsx")),
data = raw_data %>%
mutate(Ozone = replace_na(Ozone, mean(Ozone, na.rm = TRUE))),
hist = create_plot(data),
fit = lm(Ozone ~ Wind + Temp, data),
report = rmarkdown::render(
knitr_in("report.Rmd"),
output_file = file_out("report.html"),
quiet = TRUE
)
)
plan
So far, we have just been setting the stage. Use make()
or r_make()
to do the real work. Targets are built in the correct order regardless of the row order of plan
.
make(plan) # See also r_make().
Except for files like report.html
, your output is stored in a hidden .drake/
folder. Reading it back is easy.
readd(data) # See also loadd().
You may look back on your work and see room for improvement, but it’s all good! The whole point of drake
is to help you go back and change things quickly and painlessly. For example, we forgot to give our histogram a bin width.
readd(hist)
So let’s fix the plotting function.
create_plot <- function(data) {
ggplot(data) +
geom_histogram(aes(x = Ozone), binwidth = 10) +
theme_gray(24)
}
drake
knows which results are affected.
vis_drake_graph(plan) # See also r_vis_drake_graph().
The next make()
just builds hist
and report.html
. No point in wasting time on the data or model.
make(plan) # See also r_make().
loadd(hist)
hist
The R community emphasizes reproducibility. Traditional themes include scientific replicability, literate programming with knitr, and version control with git. But internal consistency is important too. Reproducibility carries the promise that your output matches the code and data you say you used. With the exception of non-default triggers and hasty mode, drake
strives to keep this promise.
Suppose you are reviewing someone else’s data analysis project for reproducibility. You scrutinize it carefully, checking that the datasets are available and the documentation is thorough. But could you re-create the results without the help of the original author? With drake
, it is quick and easy to find out.
make(plan) # See also r_make().
outdated(plan) # See also r_outdated().
With everything already up to date, you have tangible evidence of reproducibility. Even though you did not re-create the results, you know the results are recreatable. They faithfully show what the code is producing. Given the right package environment and system configuration, you have everything you need to reproduce all the output by yourself.
When it comes time to actually rerun the entire project, you have much more confidence. Starting over from scratch is trivially easy.
clean() # Remove the original author's results.
make(plan) # Independently re-create the results from the code and input data.
Select specialized data formats to increase speed and reduce memory consumption. In version 7.5.2.9000 and above, the available formats are “fst” for data frames (example below) and “keras” for Keras models (example here).
library(drake)
n <- 1e8 # Each target is 1.6 GB in memory.
plan <- drake_plan(
data_fst = target(
data.frame(x = runif(n), y = runif(n)),
format = "fst"
),
data_old = data.frame(x = runif(n), y = runif(n))
)
make(plan)
#> target data_fst
#> target data_old
build_times(type = "build")
#> # A tibble: 2 x 4
#> target elapsed user system
#> <chr> <Duration> <Duration> <Duration>
#> 1 data_fst 13.93s 37.562s 7.954s
#> 2 data_old 184s (~3.07 minutes) 177s (~2.95 minutes) 4.157s
As of version 7.5.2, drake
tracks the history and provenance of your targets:
what you built, when you built it, how you built it, the arguments you
used in your function calls, and how to get the data back. (Disable with make(history = FALSE)
)
history <- drake_history(analyze = TRUE)
history
Remarks:
quiet
column appears above because one of the drake_plan()
commands has knit(quiet = TRUE)
.hash
column identifies all the previous versions of your targets. As long as exists
is TRUE
, you can recover old data.make(cache_log_file = TRUE)
and put the cache log file under version control, you can match the hashes from drake_history()
with the git
commit history of your code.Let’s use the history to recover the oldest histogram.
hash <- history %>%
filter(target == "hist") %>%
pull(hash) %>%
head(n = 1)
cache <- drake_cache()
cache$get_value(hash)
With even more evidence and confidence, you can invest the time to independently replicate the original code base if necessary. Up until this point, you relied on basic drake
functions such as make()
, so you may not have needed to peek at any substantive author-defined code in advance. In that case, you can stay usefully ignorant as you reimplement the original author’s methodology. In other words, drake
could potentially improve the integrity of independent replication.
Ideally, independent observers should be able to read your code and understand it. drake
helps in several ways.
vis_drake_graph()
visualizes how those steps depend on each other.drake
takes care of the parallel scheduling and high-performance computing (HPC) for you. That means the HPC code is no longer tangled up with the code that actually expresses your ideas.Not every project can complete in a single R session on your laptop. Some projects need more speed or computing power. Some require a few local processor cores, and some need large high-performance computing systems. But parallel computing is hard. Your tables and figures depend on your analysis results, and your analyses depend on your datasets, so some tasks must finish before others even begin. drake
knows what to do. Parallelism is implicit and automatic. See the high-performance computing guide for all the details.
# Use the spare cores on your local machine.
make(plan, jobs = 4)
# Or scale up to a supercomputer.
drake_hpc_template_file("slurm_clustermq.tmpl") # https://slurm.schedmd.com/
options(
clustermq.scheduler = "clustermq",
clustermq.template = "slurm_clustermq.tmpl"
)
make(plan, parallelism = "clustermq", jobs = 4)
drake
and Docker are compatible and complementary. Here are some examples that run drake
inside a Docker image.
drake-gitlab-docker-example
: A small pedagogical example workflow that leverages drake
, Docker, GitLab, and continuous integration in a reproducible analysis pipeline. Created by Noam Ross.pleurosoriopsis
: The workflow that supports Ebihara et al. 2019. “Growth Dynamics of the Independent Gametophytes of Pleurorosiopsis makinoi (Polypodiaceae)” Bulletin of the National Science Museum Series B (Botany) 45:77-86.. Created by Joel Nitta.Alternatively, it is possible to run drake
outside Docker and use the future
package to send targets to a Docker image. drake
’s Docker-psock
example demonstrates how. Download the code with drake_example("Docker-psock")
.
You can choose among different versions of drake
. The CRAN release often lags behind the online manual but may have fewer bugs.
# Install the latest stable release from CRAN.
install.packages("drake")
# Alternatively, install the development version from GitHub.
install.packages("devtools")
library(devtools)
install_github("ropensci/drake")
The reference section lists all the available functions. Here are the most important ones.
drake_plan()
: create a workflow data frame (like my_plan
).make()
: build your project.drake_history()
: show what you built, when you built it, and the function arguments you used.r_make()
: launch a fresh callr::r()
process to build your project. Called from an interactive R session, r_make()
is more reproducible than make()
.loadd()
: load one or more built targets into your R session.readd()
: read and return a built target.vis_drake_graph()
: show an interactive visual network representation of your workflow.recoverable()
: Which targets can we salvage using make(recover = TRUE)
(experimental).outdated()
: see which targets will be built in the next make()
.deps_code()
: check the dependencies of a command or function.drake_failed()
: list the targets that failed to build in the last make()
.diagnose()
: return the full context of a build, including errors, warnings, and messages.The following resources explain what drake
can do and how it works. The workshop at https://github.com/wlandau/learndrake
workshop devotes particular attention to drake
’s mental model.
drakeplanner
, an R/Shiny app to help learn drake
and create new projects. Run locally with drakeplanner::drakeplanner()
or access it at https://wlandau.shinyapps.io/drakeplanner.https://github.com/wlandau/learndrake
, an R package for teaching an extended drake
workshop. It contains notebooks, slides, Shiny apps, the latter two of which are publicly deployed. See the README
at https://github.com/wlandau/learndrake/blob/main/README.md
for instructions and links.dflow
package generates the file structure for a boilerplate drake
project. It is a more thorough alternative to drake::use_drake()
.drake
is heavily function-oriented by design, and Miles’ fnmate
package automatically generates boilerplate code and docstrings for functions you mention in drake
plans.drake_example()
.The official rOpenSci use cases and associated discussion threads describe applications of drake
in the real world. Many of these use cases are linked from the drake
tag on the rOpenSci discussion forum.
Here are some additional applications of drake
in real-world projects.
drake
projects as R packagesSome folks like to structure their drake
workflows as R packages. Examples are below. In your own analysis packages, be sure to call drake::expose_imports(yourPackage)
so drake
can watch you package’s functions for changes and rebuild downstream targets accordingly.
The following resources document many known issues and challenges.
If you are still having trouble, please submit a new issue with a bug report or feature request, along with a minimal reproducible example where appropriate.
The GitHub issue tracker is mainly intended for bug reports and feature requests. While questions about usage etc. are also highly encouraged, you may alternatively wish to post to Stack Overflow and use the drake-r-package
tag.
Development is a community effort, and we encourage participation. Please read CONTRIBUTING.md for details.
drake
enhances reproducibility and high-performance computing, but not in all respects. Literate programming, local library managers, containerization, and strict session managers offer more robust solutions in their respective domains. And for the problems drake
does solve, it stands on the shoulders of the giants that came before.
The original idea of a time-saving reproducible build system extends back at least as far as GNU Make, which still aids the work of data scientists as well as the original user base of complied language programmers. In fact, the name “drake” stands for “Data Frames in R for Make”. Make is used widely in reproducible research. Below are some examples from Karl Broman’s website.
Makefile
at https://github.com/kbroman/ailProbPaper/blob/master/Makefile.Makefile
at https://github.com/kbroman/phyloQTLpaper/blob/master/Makefile.Whereas GNU Make is language-agnostic, drake
is fundamentally designed for R.
drake
supports an R-friendly domain-specific language for declaring targets.drake
are arbitrary variables in memory. (drake
does have opt-in support for files via file_out()
, file_in()
, and knitr_in()
.) drake
caches these objects in its own storage system so R users rarely have to think about output files.remake itself is no longer maintained, but its founding design goals and principles live on through drake. In fact, drake is a direct re-imagining of remake with enhanced scalability, reproducibility, high-performance computing, visualization, and documentation.
Factual’s Drake is similar in concept, but the development effort is completely unrelated to the drake R package.
There are countless other successful pipeline toolkits. The drake
package distinguishes itself with its R-focused approach, Tidyverse-friendly interface, and a thorough selection of parallel computing technologies and scheduling algorithms.
Memoization is the strategic caching of the return values of functions. It is a lightweight approach to the core problem that drake
and other pipeline tools are trying to solve. Every time a memoized function is called with a new set of arguments, the return value is saved for future use. Later, whenever the same function is called with the same arguments, the previous return value is salvaged, and the function call is skipped to save time. The memoise
package is the primary implementation of memoization in R.
Memoization saves time for small projects, but it arguably does not go far enough for large reproducible pipelines. In reality, the return value of a function depends not only on the function body and the arguments, but also on any nested functions and global variables, the dependencies of those dependencies, and so on upstream. drake
tracks this deeper context, while memoise does not.
Literate programming is the practice of narrating code in plain vernacular. The goal is to communicate the research process clearly, transparently, and reproducibly. Whereas commented code is still mostly code, literate knitr / R Markdown reports can become websites, presentation slides, lecture notes, serious scientific manuscripts, and even books.
drake
and knitr are symbiotic. drake
’s job is to manage large computation and orchestrate the demanding tasks of a complex data analysis pipeline. knitr’s job is to communicate those expensive results after drake
computes them. knitr / R Markdown reports are small pieces of an overarching drake
pipeline. They should focus on communication, and they should do as little computation as possible.
To insert a knitr report in a drake
pipeline, use the knitr_in()
function inside your drake
plan, and use loadd()
and readd()
to refer to targets in the report itself. See an example here.
drake
is not a version control tool. However, it is fully compatible with git
, svn
, and similar software. In fact, it is good practice to use git
alongside drake
for reproducible workflows.
However, data poses a challenge. The datasets created by make()
can get large and numerous, and it is not recommended to put the .drake/
cache or the .drake_history/
logs under version control. Instead, it is recommended to use a data storage solution such as DropBox or OSF.
drake
does not track R packages or system dependencies for changes. Instead, it defers to tools like Docker, Singularity, renv
, and packrat
, which create self-contained portable environments to reproducibly isolate and ship data analysis projects. drake
is fully compatible with these tools.
The workflowr
package is a project manager that focuses on literate programming, sharing over the web, file organization, and version control. Its brand of reproducibility is all about transparency, communication, and discoverability. For an example of workflowr
and drake
working together, see this machine learning project by Patrick Schratz.
citation("drake")
Special thanks to Jarad Niemi, my advisor from graduate school, for first introducing me to the idea of Makefiles for research. He originally set me down the path that led to drake
.
Many thanks to Julia Lowndes, Ben Marwick, and Peter Slaughter for reviewing drake for rOpenSci, and to Maëlle Salmon for such active involvement as the editor. Thanks also to the following people for contributing early in development.
Credit for images is attributed here.