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Using Pyspark, I'm getting an error when attempting to a load a high number of json files from S3 into a dataframe. The error seems to dependent on the driver memory used by my spark session. The error message reads "java.lang.OutOfMemoryError: GC overhead limit exceeded". I spent a significant time doing online research but I haven't been able to find anything that points me to the exact cause of this error. Please find full error msg and code below.

I'd appreciate any help on this!


Driver environment
I'm using pyspark in a jupyter notebook running within jupyterlab, which itself is running on an EC2 instance with 30GB available ram.

Sparksession resources
spark.executor.memory: 3GB
spark.executor.cores: 2
spark.driver.memory: 5GB
spark.cores.max: 300

Data
I'm trying to read about 500k json files stored in S3, with a total data size of 100+GB. Each file is a single record. I read the files as json using spark.read.json(), without predefined schema. I realize that this way of storing + reading the data is far from ideal - parquet would be preferable - but it is the status quo at my company atm.

Error inspection

  • When calling on the read operation, spark first does a step where it lists all underlying files in S3, which is executed successfully. After this it does an initial load of all the data to construct a composite json schema for all files. It is during this last step that the error occurs.
  • I tried increase/decreasing number of cores, executors, executor memory. I.e. even with more than enough total executor memory the error persists
  • The only thing that resolves the error is increasing driver memory of spark session, to e.g. 10GB+ memory. This however breaks again as soon as I attempt to take on a higher data load. I found that the amount of data I can load seems to be directly correlated with the amount of driver ram used.
  • I'm clueless about the latter pattern. In certain cases I need 25GB of driver ram in order to do the load. Why does spark require so much driver memory? If indeed the error comes from schema construction, why/what does spark.read.json return to the driver that seems to eat up ram?

Code

import findspark
findspark.init()
import pyspark

spark = (
    pyspark.sql.SparkSession.builder
    .config('spark.executor.memory', '3g')
    .config('spark.executor.cores', '2')
    .config('spark.driver.memory','5g')
    .config('spark.cores.max', '300')
    .getOrCreate()
)

data = spark.read.json('s3a://some-bucket/some-prefix/year=2020/month=01/')
            .select('field1', 'field2', 'field3')

Full error

/opt/spark/python/pyspark/sql/readwriter.py in json(self, path, schema, primitivesAsString, prefersDecimal, allowComments, allowUnquotedFieldNames, allowSingleQuotes, allowNumericLeadingZero, allowBackslashEscapingAnyCharacter, mode, columnNameOfCorruptRecord, dateFormat, timestampFormat, multiLine, allowUnquotedControlChars, lineSep, samplingRatio, dropFieldIfAllNull, encoding)
    272             path = [path]
    273         if type(path) == list:
--> 274             return self._df(self._jreader.json(self._spark._sc._jvm.PythonUtils.toSeq(path)))
    275         elif isinstance(path, RDD):
    276             def func(iterator):

/opt/spark/python/lib/py4j-0.10.7-src.zip/py4j/java_gateway.py in __call__(self, *args)
   1255         answer = self.gateway_client.send_command(command)
   1256         return_value = get_return_value(
-> 1257             answer, self.gateway_client, self.target_id, self.name)
   1258 
   1259         for temp_arg in temp_args:

/opt/spark/python/pyspark/sql/utils.py in deco(*a, **kw)
     61     def deco(*a, **kw):
     62         try:
---> 63             return f(*a, **kw)
     64         except py4j.protocol.Py4JJavaError as e:
     65             s = e.java_exception.toString()

/opt/spark/python/lib/py4j-0.10.7-src.zip/py4j/protocol.py in get_return_value(answer, gateway_client, target_id, name)
    326                 raise Py4JJavaError(
    327                     "An error occurred while calling {0}{1}{2}.\n".
--> 328                     format(target_id, ".", name), value)
    329             else:
    330                 raise Py4JError(

Py4JJavaError: An error occurred while calling o57.json.
: java.lang.OutOfMemoryError: GC overhead limit exceeded
    at java.util.Arrays.copyOfRange(Arrays.java:3664)
    at java.lang.String.<init>(String.java:207)
    at java.lang.String.substring(String.java:1969)
    at org.apache.hadoop.fs.Path.<init>(Path.java:219)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex$$anonfun$bulkListLeafFiles$3.apply(InMemoryFileIndex.scala:254)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex$$anonfun$bulkListLeafFiles$3.apply(InMemoryFileIndex.scala:243)
    at scala.collection.TraversableLike$$anonfun$map$1.apply(TraversableLike.scala:234)
    at scala.collection.TraversableLike$$anonfun$map$1.apply(TraversableLike.scala:234)
    at scala.collection.IndexedSeqOptimized$class.foreach(IndexedSeqOptimized.scala:33)
    at scala.collection.mutable.ArrayOps$ofRef.foreach(ArrayOps.scala:186)
    at scala.collection.TraversableLike$class.map(TraversableLike.scala:234)
    at scala.collection.mutable.ArrayOps$ofRef.map(ArrayOps.scala:186)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex$.bulkListLeafFiles(InMemoryFileIndex.scala:243)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex.listLeafFiles(InMemoryFileIndex.scala:126)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex.refresh0(InMemoryFileIndex.scala:91)
    at org.apache.spark.sql.execution.datasources.InMemoryFileIndex.<init>(InMemoryFileIndex.scala:67)
    at org.apache.spark.sql.execution.datasources.DataSource.org$apache$spark$sql$execution$datasources$DataSource$$createInMemoryFileIndex(DataSource.scala:533)
    at org.apache.spark.sql.execution.datasources.DataSource.resolveRelation(DataSource.scala:371)
    at org.apache.spark.sql.execution.datasources.json.TextInputJsonDataSource$.createBaseDataset(JsonDataSource.scala:123)
    at org.apache.spark.sql.execution.datasources.json.TextInputJsonDataSource$.infer(JsonDataSource.scala:96)
    at org.apache.spark.sql.execution.datasources.json.JsonDataSource.inferSchema(JsonDataSource.scala:64)
    at org.apache.spark.sql.execution.datasources.json.JsonFileFormat.inferSchema(JsonFileFormat.scala:59)
    at org.apache.spark.sql.execution.datasources.DataSource$$anonfun$6.apply(DataSource.scala:180)
    at org.apache.spark.sql.execution.datasources.DataSource$$anonfun$6.apply(DataSource.scala:180)
    at scala.Option.orElse(Option.scala:289)
    at org.apache.spark.sql.execution.datasources.DataSource.getOrInferFileFormatSchema(DataSource.scala:179)
    at org.apache.spark.sql.execution.datasources.DataSource.resolveRelation(DataSource.scala:373)
    at org.apache.spark.sql.DataFrameReader.loadV1Source(DataFrameReader.scala:223)
    at org.apache.spark.sql.DataFrameReader.load(DataFrameReader.scala:211)
    at org.apache.spark.sql.DataFrameReader.json(DataFrameReader.scala:391)
    at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
    at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
2

When we read json files the read operation is performed two times i.e. first loading and constructing schema second loading into executors.

Now to avoid this, try getting the schema from single file or create a sample file with all the columns that your json consists

df = spark.read.json('/path/to/single.json')
schema = df.schema
df2 = spark.read.json('path/to/all/files/', schema=schema)
1

I don't have an answer for you but I was running into same error in PySpark while reading 20k-40k JSON files from HDFS. These files had 100s-1000s of rows each in them but overall size of all data in a folder was still < 10GB. I think your post lead me to try to increase my driver memory since increasing my executor memory did not help. Clearly the driver is trying to keep track of which executors are doing which tasks and I guess for an extreme number of files to be read in then the driver needs more memory. I'm doing any collect() on my dataframes, just read and write. Basically transferring from .json to .orc file types. Changing the driver memory from 1G to 4G seems to have solved my problem. I don't know if there is another answer for you other than you will be limited by driver memory for extreme number of input files.

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