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Progress Bar for Parallel Tasks
…and more

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A parabar is a package designed to provide a simple interface for executing tasks in parallel, while also providing functionality for tracking and displaying the progress of the tasks.

This package is aimed at two audiences: (1) end-users who want to execute a task in parallel in an interactive R session and track the execution progress, and (2) R package developers who want to use parabar as a solution for parallel processing in their packages.

Installation

You can install parabar directly from CRAN using the following command:

# Install the package from `CRAN`.
install.packages("parabar")

# Load the package.
library(parabar)

Alternatively, you can also install the latest development version from GitHub via:

# Install the package from `GitHub`.
remotes::install_github("mihaiconstantin/parabar")

# Load the package.
library(parabar)

Usage

Below you can find a few examples of how to use parabar in your R scripts, both for end-users, and for developers. All examples below assume that you have already installed and loaded the package.

Users

In general, the usage of parabar consists of the following steps:

  1. Start a backend for parallel processing.
  2. Execute a task in parallel.
  3. Stop the backend.

Optionally, you can also configure the progress bar if the backend created supports progress tracking, or perform additional operations on the backend.

Synchronous Backend

The simplest, and perhaps least interesting, way to use parabar is by requesting a synchronous backend.

# Start a synchronous backend.
backend <- start_backend(cores = 4, cluster_type = "psock", backend_type = "sync")

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

At this point you will notice the following warning message:

Warning message:
Progress tracking not supported for backend of type 'SyncBackend'.

The reason for this is because progress tracking only works for asynchronous backends, and parabar enables progress tracking by default at load time. We can disable this by option to get rid of the warning message.

# Disable progress tracking.
set_option("progress_track", FALSE)

We can verify that the warning message is gone by running the task again, reusing the backend we created earlier.

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

When we are done with this backend, we can stop it to free up the resources.

# Stop the backend.
stop_backend(backend)

Asynchronous Backend

The more interesting way to use parabar is by requesting an asynchronous backend. This is the default backend type, and highlights the strengths of the package.

First, let’s ensure progress tracking is enabled (i.e., we disabled it above).

# Enable progress tracking.
set_option("progress_track", TRUE)

Now, we can proceed with creating the backend and running the task.

# Start an asynchronous backend.
backend <- start_backend(cores = 4, cluster_type = "psock", backend_type = "async")

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

At this point, we can see that the progress bar is displayed, and that the progress is tracked. The progress bar is updated in real-time, after each task execution, e.g.:

 > completed 928 out of 1000 tasks [ 93%] [ 3s]

We can also configure the progress bar. For example, suppose we want to display an actual progress bar.

# Change the progress bar options.
configure_bar(type = "modern", format = "[:bar] :percent")

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

The progress bar will now look like this:

[====================>-------------------------------------------------]  30%

By default, parabar uses the progress package to display the progress bar. However, we can easily swap it with another progress bar engine. For example, suppose we want to use the built-in utils::txtProgressBar.

# Change to and adjust the style of the `basic` progress bar.
configure_bar(type = "basic", style = 3)

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

Check out ?configure_bar for more information on the possible ways of configuring the progress bar.

We can also disable the progress bar for asynchronous backends altogether, by adjusting the package options.

# Disable progress tracking.
set_option("progress_track", FALSE)

# Run a task in parallel.
results <- par_sapply(backend, 1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

We can stop the backend when we are done.

# Stop the backend.
stop_backend(backend)

No Backend

Finally, we can also the ?par_sapply function without a backend, which will resort to running the task sequentially by means of utils::sapply.

# Run the task sequentially using the `base::sapply`.
results <- par_sapply(backend = NULL, 1:300, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

Additional Operations

As indicated above, the general workflow consists of starting a backend, executing a task in parallel, and stopping the backend. However, there are additional operations that can be performed on a backend (i.e., see Developers section). The table below lists all available operations that can be performed on a backend.

Operation Description
start_backend(backend) Start a backend.
stop_backend(backend) Stop a backend.
clear(backend) Remove all objects from a backend.
peek(backend) List the names of the variables on a backend.
export(backend, variables, environment) Export objects to a backend.
evaluate(backend, expression) Evaluate expressions on a backend.
par_sapply(backend, x, fun) Run tasks in parallel on a backend.
par_lapply(backend, x, fun) Run tasks in parallel on a backend.
par_apply(backend, x, margin, fun) Run tasks in parallel on a backend.

Check the documentation corresponding to each operation for more information and examples.

Developers

parabar provides a rich API for developers who want to use the package in their own projects.

From a high-level perspective, the package consists of backends and contexts in which these backends are employed for executing tasks in parallel.

Backends

A backend represents a set of operations, defined by the ?Service interface. Backends can be synchronous (i.e., ?SyncBackend) or asynchronous (i.e., ?AsyncBackend). The former will block the execution of the current R session until the parallel task is completed, while the latter will return immediately and the task will be executed in a background R session.

The ?Service interface defines the following operations:

Check out the documentation for Service for more information on each method.

Contexts

A context represents the specific conditions in which a backend object operates. The default context class (i.e., ?Context) simply forwards the call to the corresponding backend method. However, a more complex context can augment the operation before forwarding the call to the backend. One example of a complex context is the ?ProgressTrackingContext class. This class extends the regular ?Context class and decorates, e.g., the backend sapply operation to log the progress after each task execution and display a progress bar.

Main Classes

The following are the main classes provided by parabar:

Additionally, parabar also provides several classes for creating and updating different progress bars, namely:

Examples

Below there is an example of how to use the package R6 class API.

We start by creating a ?Specification object instructing the ?Backend object how to create a cluster via the built-in function parallel::makeCluster.

# Create a specification object.
specification <- Specification$new()
specification$set_cores(4)
specification$set_type("psock")

We proceed by obtaining an asynchronous backend instance from the ?BackendFactory and starting the backend using the ?Specification instance above.

# Create a backend factory.
backend_factory <- BackendFactory$new()

# Get an asynchronous backend instance.
backend <- backend_factory$get("async")

# Start the backend.
backend$start(specification)

Finally, we can run a task in parallel by calling, e.g., the sapply method on the backend instance.

# Run a task in parallel.
backend$sapply(1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

At this point, the task was deployed in a background R session, and the caller process is free to do other things.

Calling backend$get_output immediately after the backend$sapply call will throw an error, indicating that the task is still running, i.e.:

Error: A task is currently running.

We can, however, block the caller process and wait for the task to complete before fetching the results.

results <- backend$get_output(wait = TRUE)

We can now introduce the context concept to decorate the backend instance and, in this example, track the progress of the task. First, we obtain an ?Context instance from the ?ContextFactory. Furthermore, since we are using an asynchronous backend, we can request a context that facilitates progress-tracking.

# Create a context factory.
context_factory <- ContextFactory$new()

# Get a progress-tracking context.
context <- context_factory$get("progress")

# Register the backend with the context.
context$set_backend(backend)

The ?Context class (i.e., and it’s subclasses) implements the ?Service interface, which means that we can use it to execute backend operations.

Since we are using the ?ProgressTrackingContext context, we also need to register a ?Bar instance with the context. First, let’s obtain a ?Bar instance from the ?BarFactory.

# Create a bar factory.
bar_factory <- BarFactory$new()

# Get a `modern` bar (i.e., via `progress::progress_bar`).
bar <- bar_factory$get("modern")

We can now register the bar instance with the context instance.

# Register the `bar` with the `context`.
context$set_bar(bar)

We may also configure the bar, or change its appearance. For instance, it may be a good idea is to show the progress bar right away.

# Configure the `bar`.
context$configure_bar(
    show_after = 0,
    format = " > completed :current out of :total tasks [:percent] [:elapsed]"
)

At this point, the backend$sapply operation is decorated with progress tracking. Finally, we can run the task in parallel and enjoy our progress bar using the context instance.

# Run a task in parallel with progress tracking.
context$sapply(1:1000, function(x) {
    # Sleep a bit.
    Sys.sleep(0.01)

    # Compute and return.
    x + 1
})

All there is left to do is to fetch the results and stop the backend.

# Get the results.
results <- context$get_output()

# Stop the backend.
context$stop()

Design

Check out the UML diagram below for a quick overview of the package design.

parabar Software Design

Note. For the sake of clarity, the diagram only displays the sapply operation for running tasks in parallel. However, other operations are supported as well (i.e., see table in the section Additional Operations).

Contributing

License