maestro
is a lightweight framework for creating and orchestrating data
pipelines in R. At its core, maestro is an R script scheduler that is
unique in two ways:
- Stateless: It does not need to be continuously running - it can be run in a serverless architecture
- Use of rounded scheduling: The timeliness of pipeline executions depends on how often you run your orchestrator
In maestro
you create pipelines (functions) and schedule them
using roxygen2
tags - these are special comments (decorators) above
each function. Then you create an orchestrator containing maestro
functions for scheduling and invoking the pipelines.
maestro
is available on CRAN and can be installed via:
install.packages("maestro")
Or, try out the development version via:
devtools::install_github("https://github.com/whipson/maestro")
A maestro
project needs at least two components:
- A collection of R pipelines (functions) that you want to schedule
- A single orchestrator script that kicks off the scripts when they’re scheduled to run
The project file structure will look like this:
sample_project
├── orchestrator.R
└── pipelines
├── my_etl.R
├── pipe1.R
└── pipe2.R
Let’s look at each of these in more detail.
A pipeline is task we want to run. This task may involve retrieving data
from a source, performing cleaning and computation on the data, then
sending it to a destination. maestro
is not concerned with what your
pipeline does, but rather when you want to run it. Here’s a simple
pipeline in maestro
:
#' Example ETL pipeline
#' @maestroFrequency 1 day
#' @maestroStartTime 2024-03-25 12:30:00
my_etl <- function() {
# Pretend we're getting data from a source
message("Get data")
extracted <- mtcars
# Transform
message("Transforming")
transformed <- extracted |>
dplyr::mutate(hp_deviation = hp - mean(hp))
# Load - write to a location
message("Writing")
write.csv(transformed, file = paste0("transformed_mtcars_", Sys.Date(), ".csv"))
}
What makes this a maestro
pipeline is the use of special
roxygen-style comments above the function definition:
-
#' @maestroFrequency 1 day
indicates that this function should execute at a daily frequency. -
#' @maestroStartTime 2024-03-25 12:30:00
denotes the first time it should run.
In other words, we’d expect it to run every day at 12:30 starting the
25th of March 2024. There are more maestro
tags than these ones and
all follow the camelCase convention established by roxygen2
.
The orchestrator is a script that checks the schedules of all the
pipelines in a maestro
project and executes them. The orchestrator
also handles global execution tasks such as collecting logs and managing
shared resources like global objects and custom functions.
You have the option of using Quarto, RMarkdown, or a straight-up R script for the orchestrator, but the former two have some advantages with respect to deployment on Posit Connect.
A simple orchestrator looks like this:
library(maestro)
# Look through the pipelines directory for maestro pipelines to create a schedule
schedule <- build_schedule(pipeline_dir = "pipelines")
# Checks which pipelines are due to run and then executes them
output <- run_schedule(
schedule,
orch_frequency = "1 day"
)
The function build_schedule()
scours through all the pipelines in the
project and builds a schedule. Then run_schedule()
checks each
pipeline’s scheduled time against the system time within some margin of
rounding and calls those pipelines to run.
If you have several pipelines and/or pipelines that take awhile to run, it can be more efficient to split computation across multiple CPU cores.
library(furrr)
plan(multisession)
run_schedule(
schedule,
cores = 4
)