10-22-2024 09:36 AM - edited 10-22-2024 09:39 AM
Hello!
I'm trying to use the foreachBatch method of a Spark Streaming DataFrame with databricks-connect. Given that spark connect supported was added to `foreachBatch` in 3.5.0, I was expecting this to work.
Configuration:
- DBR 15.4 (Spark 3.5.0)
- databricks-connect 15.4.2
Code:
import os
from databricks.connect import DatabricksSession
# Setup
spark = DatabricksSession.builder.clusterId("0501-011833-vcux5w7j").getOrCreate()
# Execute
df = spark.readStream.table("brz_stock_prices_job")
def update_metrics(batch_df, batch_id):
size = batch_df.count()
print(f"Batch size: {size}")
Error:
File "/Users/osoucy/miniconda3/envs/lac/lib/python3.10/site-packages/pyspark/sql/connect/client/core.py", line 2149, in _handle_rpc_error
raise convert_exception(
pyspark.errors.exceptions.connect.SparkConnectGrpcException: (java.io.IOException)
Connection reset by peer
JVM stacktrace:
java.io.IOException
at sun.nio.ch.FileDispatcherImpl.read0(FileDispatcherImpl.java:-2)
at sun.nio.ch.SocketDispatcher.read(SocketDispatcher.java:39)
at sun.nio.ch.IOUtil.readIntoNativeBuffer(IOUtil.java:223)
at sun.nio.ch.IOUtil.read(IOUtil.java:197)
at sun.nio.ch.SocketChannelImpl.read(SocketChannelImpl.java:379)
at sun.nio.ch.SocketAdaptor$SocketInputStream.read(SocketAdaptor.java:208)
at sun.nio.ch.ChannelInputStream.read(ChannelInputStream.java:103)
at java.io.BufferedInputStream.fill(BufferedInputStream.java:246)
at java.io.BufferedInputStream.read(BufferedInputStream.java:265)
at java.io.DataInputStream.readInt(DataInputStream.java:387)
at org.apache.spark.api.python.StreamingPythonRunner.init(StreamingPythonRunner.scala:206)
at org.apache.spark.sql.connect.planner.StreamingForeachBatchHelper$.$anonfun$pythonForeachBatchWrapper$3(StreamingForeachBatchHelper.scala:146)
[...]
at org.apache.spark.sql.connect.execution.ExecuteThreadRunner$ExecutionThread.run(ExecuteThreadRunner.scala:561)
Any help would be appreciated!
3 weeks ago
It turned out that my local machine had a different python version when compared to the workers. Updating python solved this issue. I simply had to look into the driver log, the error message was very obvious:
pyspark.errors.exceptions.base.PySparkRuntimeError: [PYTHON_VERSION_MISMATCH] Python in worker has different version: 3.11 than that in driver: 3.10, PySpark cannot run with different minor versions.
Please check environment variables PYSPARK_PYTHON and PYSPARK_DRIVER_PYTHON are correctly set.
3 weeks ago
Is this by any chance submitted to an UC enabled assigned cluster?
3 weeks ago
It's a single user UC enabled cluster.
3 weeks ago
It turned out that my local machine had a different python version when compared to the workers. Updating python solved this issue. I simply had to look into the driver log, the error message was very obvious:
pyspark.errors.exceptions.base.PySparkRuntimeError: [PYTHON_VERSION_MISMATCH] Python in worker has different version: 3.11 than that in driver: 3.10, PySpark cannot run with different minor versions.
Please check environment variables PYSPARK_PYTHON and PYSPARK_DRIVER_PYTHON are correctly set.
3 weeks ago
Thanks for sharing the solution! Just curious, was the original error message reported in this post in the Driver log as well?
3 weeks ago
From I can remember, I think it was!
Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.
If there isn’t a group near you, start one and help create a community that brings people together.
Request a New Group