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Cylon

Cylon is a fast, scalable, distributed memory, parallel runtime with a Pandas like DataFrame.

Install / Use

/learn @cylondata/Cylon
About this skill

Quality Score

0/100

Supported Platforms

Universal

README

Cylon

Build Status License

Cylon is a fast, scalable distributed memory data parallel library for processing structured data. Cylon implements a set of relational operators to process data. While ”Core Cylon” is implemented using system level C/C++, multiple language interfaces (Python and Java ) are provided to seamlessly integrate with existing applications, enabling both data and AI/ML engineers to invoke data processing operators in a familiar programming language. By default it works with MPI for distributing the applications.

Internally Cylon uses Apache Arrow to represent the data in a column format.

The documentation can be found at https://cylondata.org

Email - cylondata@googlegroups.com

Mailing List - Join

Getting Started

We can use Conda to install PyCylon. At the moment Cylon only works on Linux Systems. The Conda binaries need Ubuntu 16.04 or higher.

conda create -n cylon-0.4.0 -c cylondata pycylon python=3.7
conda activate cylon-0.4.0

Now lets run our first Cylon application inside the Conda environment. The following code creates two DataFrames and joins them.

from pycylon import DataFrame, CylonEnv
from pycylon.net import MPIConfig

df1 = DataFrame([[1, 2, 3], [2, 3, 4]])
df2 = DataFrame([[1, 1, 1], [2, 3, 4]])

# local merge
df3 = df1.merge(right=df2, on=[0, 1])
print("Local Merge")
print(df3)

Now lets run a parallel version of this program. Here if we create n processes (parallelism), n instances of the program will run. They will each load two DataFrames in their memory and do a distributed join among the DataFrames. The results will be created in the parallel processes as well.

from pycylon import DataFrame, CylonEnv
from pycylon.net import MPIConfig
import random

# distributed join
env = CylonEnv(config=MPIConfig())

df1 = DataFrame([random.sample(range(10*env.rank, 15*(env.rank+1)), 5),
                 random.sample(range(10*env.rank, 15*(env.rank+1)), 5)])
df2 = DataFrame([random.sample(range(10*env.rank, 15*(env.rank+1)), 5),
                 random.sample(range(10*env.rank, 15*(env.rank+1)), 5)])
df2.set_index([0], inplace=True)
print("Distributed Join")
df3 = df1.join(other=df2, on=[0], env=env)
print(df3)

You can run the above program in the Conda environment by using the following command. It uses mpirun command with 2 parallel processes.

mpirun -np 2 python <name of your python file>

Compiling Cylon

Refer to the documentation on how to compile Cylon

Compiling on Linux

License

Cylon uses the Apache Lincense Version 2.0

View on GitHub
GitHub Stars303
CategoryEducation
Updated18d ago
Forks47

Languages

Jupyter Notebook

Security Score

100/100

Audited on Mar 19, 2026

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