grundprinzip commented on code in PR #38468:
URL: https://github.com/apache/spark/pull/38468#discussion_r1018699081


##########
connector/connect/src/main/scala/org/apache/spark/sql/connect/service/SparkConnectStreamHandler.scala:
##########
@@ -114,10 +123,97 @@ class SparkConnectStreamHandler(responseObserver: 
StreamObserver[Response]) exte
       responseObserver.onNext(response.build())
     }
 
-    responseObserver.onNext(sendMetricsToResponse(clientId, rows))
+    responseObserver.onNext(sendMetricsToResponse(clientId, dataframe))
     responseObserver.onCompleted()
   }
 
+  def processRowsAsArrowBatches(clientId: String, dataframe: DataFrame): Unit 
= {
+    val spark = dataframe.sparkSession
+    val schema = dataframe.schema
+    // TODO: control the batch size instead of max records

Review Comment:
   I don't think there is a throughput limit in GRPC itself. 
   
   The reason for the batching is that protobuf is not suited for this. 
Embedding large binary objects might require the reader to materialize them in 
memory. 
   
   Fixing this is an optimization for later. 



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