I'm applying a function to a Spark RDD, like so:
data_2 = sqlContext.createDataFrame(pandas_df,data_schema)
data_3 = data_2.rdd.map(lambda x: parallelized_func(x, **args*)).collect()
Now, the function parallelized_func looks something like this:
def parallelized_func(a,b,c):
####FUNCTION BODY#####
print("unique identifier for each row in pandas_df")
return {'df1':df1,'df2':df2}
The issue I'm facing is this: When I run the "data_3 = ..." statement above in a Databricks notebook, I want the to get the unique identifier that I'm printing inside parallelized_func to show up somewhere, on some console, because that would make it easier to debug when there's an issue with any row in the pandas_df dataframe.
I tried checking the std_out and std_err consoles for every executor that's running the jobs, but there's always a whole load of other statements that occupy most of the console (all Spark statements related to various tasks being executed, I assume). I can sometimes find my print statement in this vast sea of other statements, but it's a really inefficient and ineffective way of debugging.
Is there a better way I can go about printing a statement like this? Or a better way of finding it? Can I for instance suppress all other execution-related statements that Spark keeps throwing up on the console?
Attaching a snapshot of the other statements that get printed on the console.