27

My current Java/Spark Unit Test approach works (detailed here) by instantiating a SparkContext using "local" and running unit tests using JUnit.

The code has to be organized to do I/O in one function and then call another with multiple RDDs.

This works great. I have a highly tested data transformation written in Java + Spark.

Can I do the same with Python?

How would I run Spark unit tests with Python?

23

I'd recommend using py.test as well. py.test makes it easy to create re-usable SparkContext test fixtures and use it to write concise test functions. You can also specialize fixtures (to create a StreamingContext for example) and use one or more of them in your tests.

I wrote a blog post on Medium on this topic:

https://engblog.nextdoor.com/unit-testing-apache-spark-with-py-test-3b8970dc013b

Here is a snippet from the post:

pytestmark = pytest.mark.usefixtures("spark_context")
def test_do_word_counts(spark_context):
    """ test word couting
    Args:
       spark_context: test fixture SparkContext
    """
    test_input = [
        ' hello spark ',
        ' hello again spark spark'
    ]

    input_rdd = spark_context.parallelize(test_input, 1)
    results = wordcount.do_word_counts(input_rdd)

    expected_results = {'hello':2, 'spark':3, 'again':1}  
    assert results == expected_results
  • 3
    Welcome to SO! Primarily link answers are frowned on. (That is to say, answers which, were the link to disappear, would have no enduring worth.) It is recommended to add a bit of useful text summarizing or highlighting key points from the linked resource. – sclv Mar 18 '16 at 5:08
  • @Vikas Kawadia could you please have a look at https://stackoverflow.com/questions/49420660/unit-test-pyspark-code-using-python – Question_bank Mar 22 '18 at 5:16
14

Here's a solution with pytest if you're using Spark 2.x and SparkSession. I'm also importing a third party package.

import logging

import pytest
from pyspark.sql import SparkSession

def quiet_py4j():
    """Suppress spark logging for the test context."""
    logger = logging.getLogger('py4j')
    logger.setLevel(logging.WARN)


@pytest.fixture(scope="session")
def spark_session(request):
    """Fixture for creating a spark context."""

    spark = (SparkSession
             .builder
             .master('local[2]')
             .config('spark.jars.packages', 'com.databricks:spark-avro_2.11:3.0.1')
             .appName('pytest-pyspark-local-testing')
             .enableHiveSupport()
             .getOrCreate())
    request.addfinalizer(lambda: spark.stop())

    quiet_py4j()
    return spark


def test_my_app(spark_session):
   ...

Note if using Python 3, I had to specify that as a PYSPARK_PYTHON environment variable:

import os
import sys

IS_PY2 = sys.version_info < (3,)

if not IS_PY2:
    os.environ['PYSPARK_PYTHON'] = 'python3'

Otherwise you get the error:

Exception: Python in worker has different version 2.7 than that in driver 3.5, PySpark cannot run with different minor versions.Please check environment variables PYSPARK_PYTHON and PYSPARK_DRIVER_PYTHON are correctly set.

  • The avro plugin doesn't work when I use this code on Spark 2.0.2 – clay Mar 17 '17 at 18:59
  • 1
    The Avro plugin can be loaded like that with Spark 2.1, but not Spark 2.0.2. You won't get an error until you try to use the Avro format. I've tested this myself. – clay Mar 17 '17 at 21:48
  • 4
    A slightly easier way of setting the right value of PYSPARK_PYTHON: os.environ['PYSPARK_PYTHON'] = sys.executable -- this will set to what ever the current running python is, and will cope with venvs a bit better too hopefully – Ash Berlin-Taylor Feb 1 '18 at 10:44
  • @ksindi could you please have a look at https://stackoverflow.com/questions/49420660/unit-test-pyspark-code-using-python – Question_bank Mar 22 '18 at 5:20
  • @user9367133 answered your question – ksindi Mar 22 '18 at 13:46
8

I use pytest, which allows test fixtures so you can instantiate a pyspark context and inject it into all of your tests that require it. Something along the lines of

@pytest.fixture(scope="session",
                params=[pytest.mark.spark_local('local'),
                        pytest.mark.spark_yarn('yarn')])
def spark_context(request):
    if request.param == 'local':
        conf = (SparkConf()
                .setMaster("local[2]")
                .setAppName("pytest-pyspark-local-testing")
                )
    elif request.param == 'yarn':
        conf = (SparkConf()
                .setMaster("yarn-client")
                .setAppName("pytest-pyspark-yarn-testing")
                .set("spark.executor.memory", "1g")
                .set("spark.executor.instances", 2)
                )
    request.addfinalizer(lambda: sc.stop())

    sc = SparkContext(conf=conf)
    return sc

def my_test_that_requires_sc(spark_context):
    assert spark_context.textFile('/path/to/a/file').count() == 10

Then you can run the tests in local mode by calling py.test -m spark_local or in YARN with py.test -m spark_yarn. This has worked pretty well for me.

  • could you please have a look at https://stackoverflow.com/questions/49420660/unit-test-pyspark-code-using-python – Question_bank Mar 22 '18 at 5:19
8

Assuming you have pyspark installed, you can use the class below for unitTest it in unittest:

import unittest
import pyspark


class PySparkTestCase(unittest.TestCase):

    @classmethod
    def setUpClass(cls):
        conf = pyspark.SparkConf().setMaster("local[2]").setAppName("testing")
        cls.sc = pyspark.SparkContext(conf=conf)
        cls.spark = pyspark.SQLContext(cls.sc)

    @classmethod
    def tearDownClass(cls):
        cls.sc.stop()

Example:

class SimpleTestCase(PySparkTestCase):

    def test_with_rdd(self):
        test_input = [
            ' hello spark ',
            ' hello again spark spark'
        ]

        input_rdd = self.sc.parallelize(test_input, 1)

        from operator import add

        results = input_rdd.flatMap(lambda x: x.split()).map(lambda x: (x, 1)).reduceByKey(add).collect()
        self.assertEqual(results, [('hello', 2), ('spark', 3), ('again', 1)])

    def test_with_df(self):
        df = self.spark.createDataFrame(data=[[1, 'a'], [2, 'b']], 
                                        schema=['c1', 'c2'])
        self.assertEqual(df.count(), 2)

Note that this creates a context per class. Use setUp instead of setUpClass to get a context per test. This typically adds a lot of overhead time on the execution of the tests, as creating a new spark context is currently expensive.

1

Sometime ago I've also faced the same issue and after reading through several articles, forums and some StackOverflow answers I've ended with writing a small plugin for pytest: pytest-spark

I am already using it for few months and the general workflow looks good on Linux:

  1. Install Apache Spark (setup JVM + unpack Spark's distribution to some directory)
  2. Install "pytest" + plugin "pytest-spark"
  3. Create "pytest.ini" in your project directory and specify Spark location there.
  4. Run your tests by pytest as usual.
  5. Optionally you can use fixture "spark_context" in your tests which is provided by plugin - it tries to minimize Spark's logs in the output.

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