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I'm starting to learn Spark and am having a difficult time understanding the rationality behind Structured Streaming in Spark. Structured streaming treats all the data arriving as an unbounded input table, wherein every new item in the data stream is treated as new row in the table. I have the following piece of code to read in incoming files to the csvFolder.

val spark = SparkSession.builder.appName("SimpleApp").getOrCreate()

val csvSchema = new StructType().add("street", "string").add("city", "string")
.add("zip", "string").add("state", "string").add("beds", "string")
.add("baths", "string").add("sq__ft", "string").add("type", "string")
.add("sale_date", "string").add("price", "string").add("latitude", "string")
.add("longitude", "string")

val streamingDF = spark.readStream.schema(csvSchema).csv("./csvFolder/")

val query = streamingDF.writeStream
  .format("console")
  .start()

What happens if I dump a 1GB file to the folder. As per the specs, the streaming job is triggered every few milliseconds. If Spark encounters such a huge file in the next instant, won't it run out of memory while trying to load the file. Or does it automatically batch it? If yes, is this batching parameter configurable?

1 Answer 1

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See the example

The key idea is to treat any data stream as an unbounded table: new records added to the stream are like rows being appended to the table. enter image description here This allows us to treat both batch and streaming data as tables. Since tables and DataFrames/Datasets are semantically synonymous, the same batch-like DataFrame/Dataset queries can be applied to both batch and streaming data.

In Structured Streaming Model, this is how the execution of this query is performed. enter image description here

Question : If Spark encounters such a huge file in the next instant, won't it run out of memory while trying to load the file. Or does it automatically batch it? If yes, is this batching parameter configurable?

Answer : There is no point of OOM since it is RDD(DF/DS)lazily initialized. of course you need to re-partition before processing to ensure equal number of partitions and data spread across executors uniformly...

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  • file data (RDD ) will spread across the nodes of the cluster, not in one place. Commented May 23, 2017 at 13:09
  • @Ram - the similarity between tables and DataFrames is understandable. But the DataFrame is essentially immutable like an RDD. With continuously streaming data, the DataFrame/DataSets would require to accomodate the newly arriving data and hence warrant a "change" to the DataFrame thus violating its basic nature. Can you shed some light on this? Commented May 15, 2019 at 17:13
  • new arrived is appeded not modified orignal.. "new records added to the stream are like rows being appended to the table. " Commented May 15, 2019 at 18:07

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