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