Can you please remove me from this distribution list?
(Filling up my inbox too fast)
From: Michael Armbrust [mailto:mich...@databricks.com]
Sent: Monday, August 24, 2015 2:13 PM
To: Philip Weaver philip.wea...@gmail.com
Cc: Jerrick Hoang jerrickho...@gmail.com; Raghavendra Pandey
@Michael: would listStatus calls read the actual parquet footers within the
folders?
On Mon, Aug 24, 2015 at 11:36 AM, Sereday, Scott scott.sere...@nielsen.com
wrote:
Can you please remove me from this distribution list?
(Filling up my inbox too fast)
*From:* Michael Armbrust
No, starting with Spark 1.5 we should by default only be reading the
footers on the executor side (that is unless schema merging has been
explicitly turned on).
On Mon, Aug 24, 2015 at 12:20 PM, Jerrick Hoang jerrickho...@gmail.com
wrote:
@Michael: would listStatus calls read the actual parquet
Follow the directions here: http://spark.apache.org/community.html
On Mon, Aug 24, 2015 at 11:36 AM, Sereday, Scott scott.sere...@nielsen.com
wrote:
Can you please remove me from this distribution list?
(Filling up my inbox too fast)
*From:* Michael Armbrust
anybody has any suggestions?
On Fri, Aug 21, 2015 at 3:14 PM, Jerrick Hoang jerrickho...@gmail.com
wrote:
Is there a workaround without updating Hadoop? Would really appreciate if
someone can explain what spark is trying to do here and what is an easy way
to turn this off. Thanks all!
On
1 minute to discover 1000s of partitions -- yes, that is what I have
observed. And I would assert that is very slow.
On Sun, Aug 23, 2015 at 7:16 PM, Michael Armbrust mich...@databricks.com
wrote:
We should not be actually scanning all of the data of all of the
partitions, but we do need to at
We should not be actually scanning all of the data of all of the
partitions, but we do need to at least list all of the available
directories so that we can apply your predicates to the actual values that
are present when we are deciding which files need to be read in a given
spark job. While
@Cheng, Hao : Physical plans show that it got stuck on scanning S3!
(table is partitioned by date_prefix and hour)
explain select count(*) from test_table where date_prefix='20150819' and
hour='00';
TungstenAggregate(key=[], value=[(count(1),mode=Final,isDistinct=false)]
TungstenExchange
Did you try with hadoop version 2.7.1 .. It is known that s3a works really
well with parquet which is available in 2.7. They fixed lot of issues
related to metadata reading there...
On Aug 21, 2015 11:24 PM, Jerrick Hoang jerrickho...@gmail.com wrote:
@Cheng, Hao : Physical plans show that it
Is there a workaround without updating Hadoop? Would really appreciate if
someone can explain what spark is trying to do here and what is an easy way
to turn this off. Thanks all!
On Fri, Aug 21, 2015 at 11:09 AM, Raghavendra Pandey
raghavendra.pan...@gmail.com wrote:
Did you try with hadoop
Yes, you can try set the spark.sql.sources.partitionDiscovery.enabled to false.
BTW, which version are you using?
Hao
From: Jerrick Hoang [mailto:jerrickho...@gmail.com]
Sent: Thursday, August 20, 2015 12:16 PM
To: Philip Weaver
Cc: user
Subject: Re: Spark Sql behaves strangely with tables with
I cloned from TOT after 1.5.0 cut off. I noticed there were a couple of CLs
trying to speed up spark sql with tables with a huge number of partitions,
I've made sure that those CLs are included but it's still very slow
On Wed, Aug 19, 2015 at 10:43 PM, Cheng, Hao hao.ch...@intel.com wrote:
Yes,
Can you make some more profiling? I am wondering if the driver is busy with
scanning the HDFS / S3.
Like jstack pid of driver process
And also, it’s will be great if you can paste the physical plan for the simple
query.
From: Jerrick Hoang [mailto:jerrickho...@gmail.com]
Sent: Thursday, August
I guess the question is why does spark have to do partition discovery with
all partitions when the query only needs to look at one partition? Is there
a conf flag to turn this off?
On Wed, Aug 19, 2015 at 9:02 PM, Philip Weaver philip.wea...@gmail.com
wrote:
I've had the same problem. It turns
I've had the same problem. It turns out that Spark (specifically parquet)
is very slow at partition discovery. It got better in 1.5 (not yet
released), but was still unacceptably slow. Sadly, we ended up reading
parquet files manually in Python (via C++) and had to abandon Spark SQL
because of
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