In terms of digital assets a data analysis project can usually be divided into three parts:
input data: primarily tabular data (csv, sav, …), but not limited to it; can be e.g., raw text
code sources: R or Rmd scripts where the data processing happens
outputs: spreadsheets, plots, presentations derived from input data
It’s common to segregate the storage of code sources, input data, and outputs. Code sources are typically housed on platforms like GitHub, optimized for version control and collaboration.
Storing large input data on such platforms can be inefficient. Systems like git can become overwhelmed when tracking changes to sizable data files. Hence, cloud storage solutions like Amazon S3 are commonly chosen for their ability to handle vast datasets.
Outputs, being the results destined for sharing and review, are usually stored separately from the code. Platforms like Google Drive are preferred for this purpose. Their user-friendly interfaces and easy sharing options ensure stakeholders can readily access and review the results.
In this context, we won’t differentiate between assets being inputs or outputs. We’ll simply refer to both as artifacts, setting them apart from code.
The package includes functions for working with both S3 and Google Drive. In our operations, we use the term cloud root to denote the primary folder on either platform, which holds the project’s artifacts. Typically, the root folder contains subfolders like “plots”, “data”, and “results”, though the exact structure isn’t crucial. A project can have a root on S3, on Google Drive, or on both platforms simultaneously.
Consider a typical task: uploading a file to Amazon S3 using the
aws.s3
package as an illustrative example. Imagine you’re
attempting to upload an R model saved as an RDS file located at
models/glm.rds
. This file is destined for the
project-1
directory within the project-data
bucket on S3, representing the dedicated S3 root for this project:
::put_object(
aws.s3bucket = "project-data",
object = "project-1/models/glm.rds",
file = "models/glm.rds"
)
Note the following:
Location Redundancy: Given that our project’s primary interactions are with the “project-1” folder in the “project-data” bucket, we’re consistently faced with specifying this static location.
Path Duplication: Both our local system and S3
use matching paths: models/glm.rds
. This uniformity is
typically more practical than making exceptions.
Given the repetitive nature of this code, there’s room for a more
streamlined approach. This is where the cloudfs
package
comes in. Once set up, uploading becomes much easier and cleaner:
cloud_s3_upload("models/glm.rds")
To begin working with the cloudfs
package in your R
project, first set up a cloud root. For S3 use
cloud_s3_attach()
, for Google Drive, use the
cloud_drive_attach()
function. Let’s set up a Google Drive
root:
library(cloudfs)
cloud_drive_attach()
Upon execution, you’ll be prompted to input the URL of the intended
Google Drive folder to serve as the project’s root. This location is
then registered in the project’s DESCRIPTION file. To conveniently
access this directory in the future, execute
cloud_drive_browse()
.
Now let’s talk about actual interactions with the cloud storage. Data transfer actions can be categorized by two parameters:
direction – whether you’re uploading data to the cloud or retrieving data from it.
file or R object – using cloudfs
,
you can not only upload and download files from cloud storages but also
directly read from and write objects to the cloud.
cloudfs
functions for moving files use “upload” or
“download” in their names. Functions for direct reading or writing use
“read” or “write”. S3-specific functions contain “s3”, while Google
Drive ones use “drive”.
to cloud | from cloud | |
---|---|---|
file | cloud_s3_upload cloud_drive_upload |
cloud_s3_download cloud_drive_download |
R object | cloud_s3_write cloud_drive_write |
cloud_s3_read cloud_drive_read |
Here, we’ll demonstrate the hands-on application of
cloudfs
functions for data transfer.
Upon successfully completing the cloud_drive_attach()
process, your project will be associated with a designated Google Drive
root. As an initial step, we will create and save a ggplot scatterplot
as a local PNG file for the purpose of demonstration.
library(ggplot2)
<- ggplot(mtcars, aes(mpg, disp)) + geom_point()
p if (!dir.exists("plots")) dir.create("plots")
ggsave(plot = p, filename = "plots/scatterplot.png")
To upload this file to Google Drive, execute:
cloud_drive_upload("plots/scatterplot.png")
By invoking the cloud_drive_ls()
function, you can view
the automatically created “plots” folder in the console. To inspect the
contents of this folder, which currently contains a single PNG file, use
cloud_drive_ls("plots")
or
cloud_drive_ls(recursive = TRUE)
. To access the folder on
Google Drive, execute cloud_drive_browse("plots")
. To
directly view the scatterplot, use
cloud_drive_browse("plots/scatterplot.png")
.
With cloudfs
, you can directly write content to cloud
storage, bypassing the manual creation of local files. The file
generation process remains transparent to the user.
First, let’s compute a summary of the mtcars
dataframe:
library(dplyr, quietly = TRUE)
<-
summary_df %>%
mtcars group_by(cyl) %>%
summarise(across(disp, mean))
To export this summary to a spreadsheet, simply specify the desired file path with the appropriate extension. The method for writing is then inferred from this extension:
cloud_drive_write(summary_df, "results/mtcars_summary.xlsx")
To view the resulting spreadsheet in Google Drive, execute
cloud_drive_browse("results/mtcars_summary.xlsx")
.
Just as we wrote the summary to an xlsx file, we can also read from
it using
cloud_drive_read("results/mtcars_summary.xlsx")
.
It’s noteworthy that the writing and reading methods are determined
automatically based on the file extension. For instance, “.xlsx”
utilizes writexl::write_xlsx()
for reading, whereas “.csv”
employs readr::write_csv
. A comprehensive list of default
methods is available in the documentation of
cloud_drive_write()
and cloud_drive_read()
functions.
Additionally, cloudfs
offers flexibility by allowing
custom writing and reading methods. For instance, our earlier
scatterplot could have been written directly to Google Drive, bypassing
local file generation:
cloud_drive_write(
"plots/scatterplot.png",
p, fun = \(x, file)
ggsave(plot = x, filename = file)
)
Suppose multiple CSV files have been uploaded to the “data” folder
and we intend to download them locally. Instead of invoking
cloud_s3_download()
for each file, a more efficient
approach is available.
But first, let’s generate a few sample files for demonstration purposes.
cloud_drive_write(datasets::airquality, "data/airquality.csv")
cloud_drive_write(datasets::trees, "data/trees.csv")
cloud_drive_write(datasets::beaver1, "data/beaver1.csv")
Listing the contents of the “data” folder gives us the following:
cloud_drive_ls("data")
#> # A tibble: 3 × 5
#> name type last_modified size_b id
#> <chr> <chr> <dttm> <dbl> <drv_id>
#> 1 airquality.csv csv 2023-09-12 08:04:46 2890 1CXTi1A…
#> 2 beaver1.csv csv 2023-09-12 08:04:50 1901 1Fg4s1O…
#> 3 trees.csv csv 2023-09-12 08:04:48 400 1vDYBVt…
cloudfs
offers bulk
functions that simplify
the management of multiple files simultaneously. For instance, to
download all files listed above use
cloud_drive_download_bulk()
:
cloud_drive_ls("data") %>%
cloud_drive_download_bulk()
This action automatically downloads the datasets to a local “data” directory, replicating the same structure as on Google Drive.
To read several CSV files from the “data” folder on Google Drive into a consolidated list, execute:
<-
all_data cloud_drive_ls("data") %>%
cloud_drive_read_bulk()
To upload a collection of objects, such as ggplot visualizations, to
Google Drive, first group them in a named list. Then, utilize the
cloud_object_ls()
function to generate a dataframe akin to
the output of cloud_drive_ls()
. Finally, execute
cloud_drive_write_bulk()
to complete the upload.
library(ggplot2)
<- ggplot(mtcars, aes(mpg, disp)) + geom_point()
p1 <- ggplot(mtcars, aes(cyl)) + geom_bar()
p2
<-
plots_list list("plot_1" = p1, "plot_2" = p2) %>%
cloud_object_ls(path = "plots", extension = "png", suffix = "_newsletter")
%>%
plots_list cloud_drive_write_bulk(fun = \(x, file) ggsave(plot = x, filename = file))
For bulk uploads of local files to Google Drive, utilize the
cloud_local_ls()
function. For instance, to upload all PNG
files from the local “plots” directory to Google Drive:
cloud_local_ls("plots") %>%
filter(type == "png") %>%
cloud_drive_upload_bulk()
For Amazon S3 interactions, we offer a parallel set of functions
similar to those designed for Google Drive. These dedicated S3 functions
are easily identifiable, beginning with the prefix
cloud_s3_
.