I'm trying to get the path to spark.worker.dir for the current sparkcontext.

If I explicitly set it as a config param, I can read it back out of SparkConf, but is there anyway to access the complete config (including all defaults) using PySpark?

  • 1
    No - you can get the conf object but not the things you'd looking for. Defaults are not available through SparkConf (they're hardcoded in the sources). And spark.worker.dir sounds like a configuration for the Worker daemon, not something your app would see.
    – vanza
    Commented Jun 1, 2015 at 3:34
  • 2
    My answer directly addresses your question : please provide feedback Commented Jun 13, 2015 at 20:38
  • Landed here trying to find out the value for spark.default.parallelism. It is at sc.defaultParallelism. One can do dir(sc) in PySpark to see what's available in sc.
    – arun
    Commented Nov 14, 2019 at 21:29

14 Answers 14


Spark 2.1+

from pyspark.sql import SparkSession

spark = SparkSession.builder.getOrCreate()


In the above code, spark is your sparksession (gives you a dict with all configured settings)

  • 1
    @hhantyal no. When the question was asked there was no spark2.1. The top answer works for all versions of spark, especially old ones
    – wotanii
    Commented Aug 9, 2018 at 13:15
  • 5
    for spark 2.4.0, it returns a list of tuples instead of a dict
    – 8forty
    Commented Mar 30, 2019 at 21:37
  • @Kevad we are using a Spark 2.4, so can you please throw some light on the following code spark.sparkContext.getConf().getAll() spark - The SparkSession sparkContext - (As we already have the SparkSession from verion 2.0+ what does this sparkContext imply) Could you please help me get a deeper insight on this ? Commented Jun 7, 2019 at 6:40
  • 1
    returns tuples not dict
    – logan
    Commented Dec 28, 2019 at 19:34
  • 1
    I don't thinks this statement also return all the hadoop configuration. Commented Apr 29, 2020 at 15:09

Yes: sc.getConf().getAll()

Which uses the method:


as accessed by


See it in action:

    In [4]: sc.getConf().getAll()
    [(u'spark.master', u'local'),
     (u'spark.rdd.compress', u'True'),
     (u'spark.serializer.objectStreamReset', u'100'),
     (u'spark.app.name', u'PySparkShell')]
  • 8
    also, note that the underscore means that the package developers think that accessing this data element isn't a great idea. Commented Mar 17, 2016 at 9:27
  • 5
    "Note that only values explicitly specified through spark-defaults.conf, SparkConf, or the command line will appear. For all other configuration properties, you can assume the default value is used." (see spark.apache.org/docs/latest/…)
    – asmaier
    Commented Sep 14, 2017 at 8:33
  • @asmaier any idea how I can get these non-appearing ones to appear in python without having to go to a web page? E.g. how do I get the value of "spark.default.parallelism"? Commented Nov 23, 2018 at 10:04
  • error: variable _conf in class SparkContext cannot be accessed in org.apache.spark.SparkContext - that's what spark-shell answers in Spark 2.4. Has this variable gone private since the answer?
    – Cerberus
    Commented Sep 5, 2019 at 9:04
  • 4
    This answer was edited to use .getConf instead of ._conf, which makes the part about "Note the Underscore..." not make sense anymore.
    – shoover
    Commented Sep 25, 2020 at 5:00

update configuration in Spark 2.3.1

To change the default spark configurations you can follow these steps:

Import the required classes

from pyspark.conf import SparkConf
from pyspark.sql import SparkSession

Get the default configurations


Update the default configurations

conf = spark.sparkContext._conf.setAll([('spark.executor.memory', '4g'), ('spark.app.name', 'Spark Updated Conf'), ('spark.executor.cores', '4'), ('spark.cores.max', '4'), ('spark.driver.memory','4g')])

Stop the current Spark Session


Create a Spark Session

spark = SparkSession.builder.config(conf=conf).getOrCreate()
  • Hello Bob, I got a question about this. If you get the config via: spark.sparkContext._conf.getAll() How can you then use that result to update the config with including new settings. I think this would be a nice addition to your answer. Commented Mar 20, 2019 at 9:09
  • @PaulVelthuis: to include new settings you need to restart the spark context with your updated conf. its there in answer, after updating the conf, we stopped the context and started again with new conf.
    – Pawan B
    Commented Mar 28, 2019 at 10:12

Spark 1.6+

  • 2
    1.6.3: >>> sc.getConf.getAll.foreach(println) AttributeError: 'SparkContext' object has no attribute 'getConf'
    – dovka
    Commented Jan 17, 2017 at 11:53
  • @dovka - I used the same sc.getConf.getAll.foreach(println) as suggested by @ecesena and it worked fine for me (in Scala) - Perhaps the syntax is not for Python? Commented Feb 25, 2017 at 2:30
  • 1
    Not in pyspark 1.6.0 as you can see here: spark.apache.org/docs/1.6.0/api/python/… Commented Feb 15, 2018 at 18:16

For a complete overview of your Spark environment and configuration I found the following code snippets useful:


for item in sorted(sc._conf.getAll()): print(item)

Hadoop Configuration:

hadoopConf = {}
iterator = sc._jsc.hadoopConfiguration().iterator()
while iterator.hasNext():
    prop = iterator.next()
    hadoopConf[prop.getKey()] = prop.getValue()
for item in sorted(hadoopConf.items()): print(item)

Environment variables:

import os
for item in sorted(os.environ.items()): print(item)

Simply running


should give you a list with all settings.


Unfortunately, no, the Spark platform as of version 2.3.1 does not provide any way to programmatically access the value of every property at run time. It provides several methods to access the values of properties that were explicitly set through a configuration file (like spark-defaults.conf), set through the SparkConf object when you created the session, or set through the command line when you submitted the job, but none of these methods will show the default value for a property that was not explicitly set. For completeness, the best options are:

  • The Spark application’s web UI, usually at http://<driver>:4040, has an “Environment” tab with a property value table.
  • The SparkContext keeps a hidden reference to its configuration in PySpark, and the configuration provides a getAll method: spark.sparkContext._conf.getAll().
  • Spark SQL provides the SET command that will return a table of property values: spark.sql("SET").toPandas(). You can also use SET -v to include a column with the property’s description.

(These three methods all return the same data on my cluster.)


For Spark 2+ you can also use when using scala

spark.conf.getAll; //spark as spark session 

You can use:


For example, I often have the following at the top of my Spark programs:


Suppose I want to increase the driver memory in runtime using Spark Session:

s2 = SparkSession.builder.config("spark.driver.memory", "29g").getOrCreate()

Now I want to view the updated settings:


To get all the settings, you can make use of spark.sparkContext._conf.getAll()


Hope this helps


Just for the records the analogous java version:

Tuple2<String, String> sc[] = sparkConf.getAll();
for (int i = 0; i < sc.length; i++) {

Not sure if you can get all the default settings easily, but specifically for the worker dir, it's quite straigt-forward:

from pyspark import SparkFiles
print SparkFiles.getRootDirectory()

If you want to see the configuration in data bricks use the below command


I would suggest you try the method below in order to get the current spark context settings.


as accessed by


Get the default configurations specifically for Spark 2.1+


Stop the current Spark Session


Create a Spark Session

spark = SparkSession.builder.config(conf=conf).getOrCreate()

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.