Python Package Management

When you want to run your PySpark application on a cluster such as YARN, Kubernetes, Mesos, etc., you need to make sure that your code and all used libraries are available on the executors.

As an example let’s say you may want to run the Pandas UDF’s examples. As it uses pyarrow as an underlying implementation we need to make sure to have pyarrow installed on each executor on the cluster. Otherwise you may get errors such as ModuleNotFoundError: No module named 'pyarrow'.

Here is the script app.py from the previous example that will be executed on the cluster:

import pandas as pd
from pyspark.sql.functions import pandas_udf
from pyspark.sql import SparkSession

def main(spark):
    df = spark.createDataFrame(
        [(1, 1.0), (1, 2.0), (2, 3.0), (2, 5.0), (2, 10.0)],
        ("id", "v"))

    @pandas_udf("double")
    def mean_udf(v: pd.Series) -> float:
        return v.mean()

    print(df.groupby("id").agg(mean_udf(df['v'])).collect())


if __name__ == "__main__":
    main(SparkSession.builder.getOrCreate())

There are multiple ways to manage Python dependencies in the cluster:

  • Using PySpark Native Features

  • Using Conda

  • Using Virtualenv

  • Using PEX

Using PySpark Native Features

PySpark allows to upload Python files (.py), zipped Python packages (.zip), and Egg files (.egg) to the executors by:

  • Setting the configuration setting spark.submit.pyFiles

  • Setting --py-files option in Spark scripts

  • Directly calling pyspark.SparkContext.addPyFile() in applications

This is a straightforward method to ship additional custom Python code to the cluster. You can just add individual files or zip whole packages and upload them. Using pyspark.SparkContext.addPyFile() allows to upload code even after having started your job.

However, it does not allow to add packages built as Wheels and therefore does not allow to include dependencies with native code.

Using Conda

Conda is one of the most widely-used Python package management systems. PySpark users can directly use a Conda environment to ship their third-party Python packages by leveraging conda-pack which is a command line tool creating relocatable Conda environments.

The example below creates a Conda environment to use on both the driver and executor and packs it into an archive file. This archive file captures the Conda environment for Python and stores both Python interpreter and all its relevant dependencies.

conda create -y -n pyspark_conda_env -c conda-forge pyarrow pandas conda-pack
conda activate pyspark_conda_env
conda pack -f -o pyspark_conda_env.tar.gz

After that, you can ship it together with scripts or in the code by using the --archives option or spark.archives configuration (spark.yarn.dist.archives in YARN). It automatically unpacks the archive on executors.

In the case of a spark-submit script, you can use it as follows:

export PYSPARK_DRIVER_PYTHON=python # Do not set in cluster modes.
export PYSPARK_PYTHON=./environment/bin/python
spark-submit --archives pyspark_conda_env.tar.gz#environment app.py

Note that PYSPARK_DRIVER_PYTHON above should not be set for cluster modes in YARN or Kubernetes.

If you’re on a regular Python shell or notebook, you can try it as shown below:

import os
from pyspark.sql import SparkSession
from app import main

os.environ['PYSPARK_PYTHON'] = "./environment/bin/python"
spark = SparkSession.builder.config(
    "spark.archives",  # 'spark.yarn.dist.archives' in YARN.
    "pyspark_conda_env.tar.gz#environment").getOrCreate()
main(spark)

For a pyspark shell:

export PYSPARK_DRIVER_PYTHON=python
export PYSPARK_PYTHON=./environment/bin/python
pyspark --archives pyspark_conda_env.tar.gz#environment

Using Virtualenv

Virtualenv is a Python tool to create isolated Python environments. Since Python 3.3, a subset of its features has been integrated into Python as a standard library under the venv module. PySpark users can use virtualenv to manage Python dependencies in their clusters by using venv-pack in a similar way as conda-pack.

A virtual environment to use on both driver and executor can be created as demonstrated below. It packs the current virtual environment to an archive file, and it contains both Python interpreter and the dependencies. However, it requires all nodes in a cluster to have the same Python interpreter installed because venv-pack packs Python interpreter as a symbolic link.

python -m venv pyspark_venv
source pyspark_venv/bin/activate
pip install pyarrow pandas venv-pack
venv-pack -o pyspark_venv.tar.gz

You can directly pass/unpack the archive file and enable the environment on executors by leveraging the --archives option or spark.archives configuration (spark.yarn.dist.archives in YARN).

For spark-submit, you can use it by running the command as follows. Also, notice that PYSPARK_DRIVER_PYTHON has to be unset in Kubernetes or YARN cluster modes.

export PYSPARK_DRIVER_PYTHON=python # Do not set in cluster modes.
export PYSPARK_PYTHON=./environment/bin/python
spark-submit --archives pyspark_venv.tar.gz#environment app.py

For regular Python shells or notebooks:

import os
from pyspark.sql import SparkSession
from app import main

os.environ['PYSPARK_PYTHON'] = "./environment/bin/python"
spark = SparkSession.builder.config(
    "spark.archives",  # 'spark.yarn.dist.archives' in YARN.
    "pyspark_venv.tar.gz#environment").getOrCreate()
main(spark)

In the case of a pyspark shell:

export PYSPARK_DRIVER_PYTHON=python
export PYSPARK_PYTHON=./environment/bin/python
pyspark --archives pyspark_venv.tar.gz#environment

Using PEX

PySpark can also use PEX to ship the Python packages together. PEX is a tool that creates a self-contained Python environment. This is similar to Conda or virtualenv, but a .pex file is executable by itself.

The following example creates a .pex file for the driver and executor to use. The file contains the Python dependencies specified with the pex command.

pip install pyarrow pandas pex
pex pyspark pyarrow pandas -o pyspark_pex_env.pex

This file behaves similarly with a regular Python interpreter.

./pyspark_pex_env.pex -c "import pandas; print(pandas.__version__)"
1.1.5

However, .pex file does not include a Python interpreter itself under the hood so all nodes in a cluster should have the same Python interpreter installed.

In order to transfer and use the .pex file in a cluster, you should ship it via the spark.files configuration (spark.yarn.dist.files in YARN) or --files option because they are regular files instead of directories or archive files.

For application submission, you run the commands as shown below. Note that PYSPARK_DRIVER_PYTHON should not be set for cluster modes in YARN or Kubernetes.

export PYSPARK_DRIVER_PYTHON=python  # Do not set in cluster modes.
export PYSPARK_PYTHON=./pyspark_pex_env.pex
spark-submit --files pyspark_pex_env.pex app.py

For regular Python shells or notebooks:

import os
from pyspark.sql import SparkSession
from app import main

os.environ['PYSPARK_PYTHON'] = "./pyspark_pex_env.pex"
spark = SparkSession.builder.config(
    "spark.files",  # 'spark.yarn.dist.files' in YARN.
    "pyspark_pex_env.pex").getOrCreate()
main(spark)

For the interactive pyspark shell, the commands are almost the same:

export PYSPARK_DRIVER_PYTHON=python
export PYSPARK_PYTHON=./pyspark_pex_env.pex
pyspark --files pyspark_pex_env.pex

An end-to-end Docker example for deploying a standalone PySpark with SparkSession.builder and PEX can be found here - it uses cluster-pack, a library on top of PEX that automatizes the the intermediate step of having to create & upload the PEX manually.