A dataframe library for Rubyists.
- RedAmber is a dataframe library written in ruby. It uses columnar memory format based on Apache Arrow.
- Our goal is to manipulate data frames in a Ruby-like writing style using blocks and collections.
- You can easily try RedAmber with Dev Container. See RedAmber Dev Container.
- We have rich document with many examples and Jupyter Notebook with 127 operation examples. See RedAmber Dev Container.
Supported Ruby version is >= 3.0.
gem 'red-arrow', '>= 12.0.0' # Requires Apache Arrow (see installation below).
gem 'red-arrow-numo-narray' # Optional, recommended if you use inputs from Numo::NArray,
# or use random sampling feature.
gem 'red-parquet', '>= 12.0.0' # Optional, if you use IO from/to parquet.
gem 'red-datasets-arrow' # Optional, if you use Red Datasets.
gem 'red-arrow-activerecord' # Optional, if you use Active Record.
gem 'rover-df' # Optional, if you use IO from/to Rover::DataFrame.
Install requirements before you install RedAmber.
- Apache Arrow (>= 12.0.0)
- Apache Arrow GLib (>= 12.0.0)
- Apache Parquet GLib (>= 12.0.0) # If you use IO from/to parquet
See Apache Arrow install document.
-
Minimum installation example for the latest Ubuntu:
sudo apt update sudo apt install -y -V ca-certificates lsb-release wget wget https://apache.jfrog.io/artifactory/arrow/$(lsb_release --id --short | tr 'A-Z' 'a-z')/apache-arrow-apt-source-latest-$(lsb_release --codename --short).deb sudo apt install -y -V ./apache-arrow-apt-source-latest-$(lsb_release --codename --short).deb sudo apt update sudo apt install -y -V libarrow-dev libarrow-glib-dev
-
On Fedora 39 (Rawhide):
sudo dnf update sudo dnf -y install gcc-c++ libarrow-devel libarrow-glib-devel ruby-devel libyaml-devel
-
On macOS, using Homebrew:
brew install apache-arrow apache-arrow-glib
If you prepared Apache Arrow, add these lines to your Gemfile:
gem 'red-arrow', '>= 12.0.0'
gem 'red_amber'
gem 'red-arrow-numo-narray' # Optional, recommended if you use inputs from Numo::NArray
# or use random sampling feature.
gem 'red-parquet', '>= 12.0.0' # Optional, if you use IO from/to parquet
gem 'red-datasets-arrow' # Optional, recommended if you use Red Datasets
gem 'red-arrow-activerecord' # Optional, if you use Active Record
gem 'rover-df', # Optional, if you use IO from/to Rover::DataFrame.
And then execute bundle install
or install them yourself such as gem install red_amber
.
This repository supports Dev Containers. You can create a container as a full-featured development environment for RedAmber. The environment includes Ruby, Apache Arrow, RedAmber with source tree, GitHub CLI, sample datasets and Jupyter Lab with IRuby kernel. And you don't need to worry about the change of your local environment.
.devcontainer
directory in this repository includes settings of Dev Container for RedAmber.
Please refer How to use Dev Containers in RedAmber to use it.
(Notice: This feature may be removed in the future. Try Dev Container above.)
Docker image is available from docker
folder. See readme for instruction. Integrated Jypyter notebook is in docker/notebook folder.
You can try the contents of this README interactively by Binder.
RubyData Docker Stacks is available as a ready-to-run Docker image containing Jupyter and useful data tools as well as RedAmber (Thanks to Kenta Murata).
Comparison of basic features of RedAmber with Python pandas, R Tidyverse and Julia Dataframes is in DataFrame_Comparison.md (Thanks to Benson Muite).
Class RedAmber::DataFrame
represents a set of data in 2D-shape.
Its entity is a Red Arrow's Table object.
Let's load the library and try some examples.
require 'red_amber' # require 'red-amber' is also OK.
include RedAmber
First do (if you do not installed) gem install red-datasets-arrow
then
require 'datasets-arrow' # to load sample data
dataset = Datasets::Diamonds.new
diamonds = DataFrame.new(dataset) # before v0.2.3, should be `dataset.to_arrow`
# =>
#<RedAmber::DataFrame : 53940 x 10 Vectors, 0x000000000000f668>
carat cut color clarity depth table price x ... z
<double> <string> <string> <string> <double> <double> <uint16> <double> ... <double>
0 0.23 Ideal E SI2 61.5 55.0 326 3.95 ... 2.43
1 0.21 Premium E SI1 59.8 61.0 326 3.89 ... 2.31
2 0.23 Good E VS1 56.9 65.0 327 4.05 ... 2.31
3 0.29 Premium I VS2 62.4 58.0 334 4.2 ... 2.63
4 0.31 Good J SI2 63.3 58.0 335 4.34 ... 2.75
: : : : : : : : : ... :
53937 0.7 Very Good D SI1 62.8 60.0 2757 5.66 ... 3.56
53938 0.86 Premium H SI2 61.0 58.0 2757 6.15 ... 3.74
53939 0.75 Ideal D SI2 62.2 55.0 2757 5.83 ... 3.64
For example, we can compute mean prices per cut for the data larger than 1 carat.
df = diamonds
.slice { carat > 1 } # or use #filter instead of #slice
.group(:cut)
.mean(:price) # `pick` prior to `group` is not required if `:price` is specified here.
.sort('-mean(price)')
# =>
#<RedAmber::DataFrame : 5 x 2 Vectors, 0x000000000000f67c>
cut mean(price)
<string> <double>
0 Ideal 8674.23
1 Premium 8487.25
2 Very Good 8340.55
3 Good 7753.6
4 Fair 7177.86
Arrow data is immutable, so these methods always return new objects. Next example will rename a column and create a new column by simple calcuration.
usdjpy = 110.0 # when the yen was stronger
df.rename('mean(price)': :mean_price_USD)
.assign(:mean_price_JPY) { mean_price_USD * usdjpy }
# =>
#<RedAmber::DataFrame : 5 x 3 Vectors, 0x000000000000f71c>
cut mean_price_USD mean_price_JPY
<string> <double> <double>
0 Ideal 8674.23 954164.93
1 Premium 8487.25 933597.34
2 Very Good 8340.55 917460.37
3 Good 7753.6 852896.11
4 Fair 7177.86 789564.12
Next example is starwars
dataset reading from the downloaded CSV file. Followed by minimum data cleaning.
uri = URI('https://vincentarelbundock.github.io/Rdatasets/csv/dplyr/starwars.csv')
starwars = DataFrame.load(uri)
starwars
.drop(0) # delete unnecessary index column
.remove { species == "NA" } # delete unnecessary rows
.group(:species) { [count(:species), mean(:height, :mass)] }
.slice { count > 1 } # or use #filter instead of slice
# =>
#<RedAmber::DataFrame : 8 x 4 Vectors, 0x000000000000f848>
species count mean(height) mean(mass)
<string> <int64> <double> <double>
0 Human 35 176.65 82.78
1 Droid 6 131.2 69.75
2 Wookiee 2 231.0 124.0
3 Gungan 3 208.67 74.0
4 Zabrak 2 173.0 80.0
5 Twi'lek 2 179.0 55.0
6 Mirialan 2 168.0 53.1
7 Kaminoan 2 221.0 88.0
See DataFrame.md for other examples and details.
Class RedAmber::Vector
represents a series of data in the DataFrame.
See Vector.md for details.
We are managing the source of Jupyter Notebook in qmd format by Quarto. You can easily create Notebooks and try it with Jupyter Lab in Dev Container.
The recommended way to develop RedAmber is to use Dev Container. Please refer How to use Dev Containers in RedAmber to use it.
Otherwise run below commands after install required libraries in your local system.
git clone https://github.com/red-data-tools/red_amber.git
cd red_amber
bundle install
bundle exec rake test
We need to pass rake test
in development of RedAmber, but not require to pass rake rubocop
when you make a contribution. In this project we respect your preferences in code style. However, we may unify the style during merging.
I will appreciate if you could help to improve this project. Here are a few ways you can help:
- Let's talk in the discussions.
- Browse Q and A, how to use, tips, etc.
- Ask questions you’re wondering about.
- Share ideas. The idea may be promoted to issues or pull requests.
- Report bugs or suggest new features
- Fix bugs and submit pull requests
- Write, clarify, or fix documentation
The gem is available as open source under the terms of the MIT License.