Thanks, Harish.

Mike – this would be a cleaner version for your use case:
df.filter(df("filter_field") === "value").select("field1").show()

Mohammed

From: Harish Butani [mailto:rhbutani.sp...@gmail.com]
Sent: Monday, July 20, 2015 5:37 PM
To: Mohammed Guller
Cc: Michael Armbrust; Mike Trienis; user@spark.apache.org
Subject: Re: Data frames select and where clause dependency

Yes via:  org.apache.spark.sql.catalyst.optimizer.ColumnPruning
See DefaultOptimizer.batches for list of logical rewrites.

You can see the optimized plan by printing: df.queryExecution.optimizedPlan

On Mon, Jul 20, 2015 at 5:22 PM, Mohammed Guller 
<moham...@glassbeam.com<mailto:moham...@glassbeam.com>> wrote:
Michael,
How would the Catalyst optimizer optimize this version?
df.filter(df("filter_field") === "value").select("field1").show()
Would it still read all the columns in df or would it read only “filter_field” 
and “field1” since only two columns are used (assuming other columns from df 
are not used anywhere else)?

Mohammed

From: Michael Armbrust 
[mailto:mich...@databricks.com<mailto:mich...@databricks.com>]
Sent: Friday, July 17, 2015 1:39 PM
To: Mike Trienis
Cc: user@spark.apache.org<mailto:user@spark.apache.org>
Subject: Re: Data frames select and where clause dependency

Each operation on a dataframe is completely independent and doesn't know what 
operations happened before it.  When you do a selection, you are removing other 
columns from the dataframe and so the filter has nothing to operate on.

On Fri, Jul 17, 2015 at 11:55 AM, Mike Trienis 
<mike.trie...@orcsol.com<mailto:mike.trie...@orcsol.com>> wrote:
I'd like to understand why the where field must exist in the select clause.

For example, the following select statement works fine

  *   df.select("field1", "filter_field").filter(df("filter_field") === 
"value").show()
However, the next one fails with the error "in operator !Filter 
(filter_field#60 = value);"

  *   df.select("field1").filter(df("filter_field") === "value").show()
As a work-around, it seems that I can do the following

  *   df.select("field1", "filter_field").filter(df("filter_field") === 
"value").drop("filter_field").show()

Thanks, Mike.


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