I have two datasets one dataset size is 11 GB and another is 2 GB.

Here are two datasets:

Dataset 1: Which has IP ranges value with the domain.

Dataset 1

Dataset 2: Which has only IP addresses that need to check within these IP ranges.

Dataset 2

What I want to do is to join those two datasets and find out which IP ranges are matched from the dataset 1.

I have used the following configurations:

spark.conf.set("spark.sql.shuffle.partitions", 25)
spark.conf.set("spark.sql.autoBroadcastJoinThreshold", -1)
spark.conf.set("spark.sql.broadcastTimeout", 1000)

Here is the join I have used:

data = bldf.join(broadcast(ipdf), ((bldf.ip_number >=  ipdf.from_ip) & (bldf.ip_number <= ipdf.to_ip)))

So my problem is it showed join results. But when I am trying to query over a new data frame it took huge amount of time and all CPUs are high.

I am trying to count all records and count distinct column records from the new data frame. Also, I have tried to save this data frame into the Parque file, it also never end.

What I am doing wrong here? Is there any optimization that needs to take place here?


Before join:

Set shuffle partitions to 150, as for any data job under 20GB your probably fine with 200, but we are near 13gb so 150 will do. spark.conf.set("spark.sql.shuffle.partitions", 150)- shuffle partitions are used in joins as they are shuffle operations. And set autobroadcastjoin to over 2GB as with new spark 2.4, you can max to 8GB. This will broadcast your small table across the cluster cores, and the join will be better colocated with better partitions. The shuffle partitions not being 25, the join will not overload the partitions.

After join::

If your going to be using the joined data iteratively/interactively for etl, or actions(count,collect to driver). Then you can persist your data using df.persist(StorageLevel.MEMORY_AND_DISK) so that you dont have the read the data everytime for an action as you will already have it in memory.(read once)

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