May 26, 2019 16:17
But you do not mean the spark thrift server? Because the default HDP supplied edition of spark works just fine.
May 21, 2019 10:41
You are correct, reading from plain HDFS would work just fine, but I need to be able to read hive tables.
May 21, 2019 10:29
indeed. But I do not need to use a JDBC (spark-sql thrift server) interface for my usecase. I need the spark-shell (scala with SQL DSL) to work in YARN client mode.
May 21, 2019 10:16
But I do not want to run spark-sql / spark-thriftserver. A plain spark-shell would be enough.
May 21, 2019 10:14
That looks pretty similar to my spark-thrift-sparkconf.conf, but does not contain any information regarding hive
May 21, 2019 10:07
Even copying spark-defaults.conf spark-env.sh did not fix the issue, and even in /usr/hdp/2.6.5.0-xxx/spark2/conf there is no such file for me. However, I can find this file on a different cluster node. But even with this file it still fails to find the databases.
May 21, 2019 10:07
No, but this is also not in the original: ls /usr/hdp/current/spark2-client/conf path
May 21, 2019 10:07
/usr/hdp/current/hive-client is a softlink to the /usr/hdp/<<my_version>>/hive/conf/, but as mentioned above somehow the wrong configuration is loaded. My destination for the copy is: <<path/to>>/spark-2.4.3-bin-without-hadoop/conf
May 21, 2019 10:07
/usr/hdp/current/spark2-client/conf/hive-site.xmlwas already copied and did also not work. Now following your suggestion and using: /usr/hdp/current/hive-client/conf/hive-site.xml, it fails as mentioned above.
 
Jan 24, 2019 06:23
@thebluephantom gist.github.com/geoHeil/6cfa6c74476de68d3f47f8a0c91b5cf6 contains the settings
Jan 21, 2019 06:11
Correct. However anything > 1 will result in more than one file per customer and date
Jan 20, 2019 20:59
Exactly. So is there a way to stil get the desired result without repartition 1?
Jan 20, 2019 20:59
So no issue with repartition 1?
Jan 20, 2019 20:59
Second case is the desired one
Jan 20, 2019 20:59
Prior to aggregation about 1TB
Jan 20, 2019 20:59
On a large cluster not single node installation I get multiple files except using repartition 1
Jan 20, 2019 20:59
That is correct. But differentiate report_date and date. Partitioning os happending per customer_id and 'report_date' i.e. there should be a file per customer_id and report_date.
Jan 20, 2019 20:59
The data per customer is mall but there are many customers. I want to end up with one single file per customer. My initial strategy was to use spark partitions. However they would only work if repartition 1 is executed. But this will not work as there are too many customers. So is there a different option?
 

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Nov 4, 2017 08:56
Can I ask for some pandas help .... stackoverflow.com/questions/47108579/…
 
Jun 2, 2017 16:33
jap. Noticed that one ;)
Jun 2, 2017 16:12
thanks for the great explanation.
Jun 2, 2017 16:05
I tried your last suggestion already - could not get that to compile.
Jun 2, 2017 16:05
In the scala gitter I was told to try org.jaitools.numeric.Range.create(Integer.valueOf(1), true, Integer.valueOf(4), true) i.e. to use manual boxing. This works fine.
Jun 2, 2017 16:05
Which method are you referring to with int2Int ?
 
May 7, 2017 05:39
Please see the updated question. I hope my intentions are clearer now.
May 7, 2017 05:12
I do not need an transformer right now ( but will build one from the sped up code as well).What I wanted to state is, that simply building a single graph in Dask, would probably not be enough as some intermediate results would require to be stored {'colname:percentageWeight} and then joined later on. I will update the question.
May 7, 2017 05:09
Sorry for that. Indeed, that was missing: FACTOR_FIELDS = df_a.select_dtypes(include=['category']).columns
columnsToDrop = ['alotdifferent']
columnsToBias_keep = FACTOR_FIELDS[~FACTOR_FIELDS.isin(columnsToDrop)]
May 6, 2017 20:47
But then it is unclear to me how I can merge the data back together as the columns are processed in parallel.
May 6, 2017 20:45
Actually, maybe the best thing is to try to use dark.delayed on the for col in columns loop.
May 6, 2017 20:14
And this is painfully slow on the real / big dataset. Do you see any possibility to further speed things up / require less passes over the data?
May 6, 2017 20:14
which results in 100 loops, best of 3: 15.5 ms per loop for your suggested sample data / is even a bit quicker than yours.
May 6, 2017 20:13
def manual_quotients(df):
for colname in columnsToBias_keep.union(columnsToDrop):
original = df.copy()
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)
result = groupedOnly
mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
df= mergedThing
May 6, 2017 20:13
But your solution is not really quicker than what I already have:
May 6, 2017 19:16
a snippet which will calculate both columns (this is a fairly naive implementation as there are 2 passes through the data for each column. :(
May 6, 2017 19:15
original = df_a
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)
result = groupedOnly

mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
print(mergedThing)

original = mergedThing
grouped = original.groupby([colname, target]).size()
May 6, 2017 19:15
Here:
May 6, 2017 19:11
Yes target is either 0 or 1. I will update the code to actually calculate both values.
May 6, 2017 17:57
Thanks a lot for your support.
May 6, 2017 17:43
This is only for 1 of the two quotients though.
May 6, 2017 17:42
@andrew_ree: you are right,
there was a bug in the sample code. Below fixes the problem.

`
original = df_a
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)

result = groupedOnly

mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
mergedThing`
May 6, 2017 17:06
Actually, I calculate 2 percentages/ divisions: one, exactly as you mentioned, and another one as outlined above. Please find an example which is a bit more involved at the following link: github.com/geoHeil/pythonQuestions/blob/master/…
May 6, 2017 17:06
You might be right, and I need to think about this, but the main point is I want to parallelize / efficiently implement such a division (sort of percentage). And actually, target:0 is irrelevant. I am only interested in target:1, or pointed out differently: the proportion of target:1/allRecords per each group per each column. Maybe this is a better formulation.
May 6, 2017 17:06
Maybe a single pass is possible similar to the demo here: jcrist.github.io/dask-sklearn-part-3.html
 
Feb 9, 2017 12:59
and on esxi there is not eth0 device
Feb 9, 2017 12:59
I noticed that network --onboot yes --device eth0 --bootproto dhcp --noipv6 is set in the kickstart file
Feb 9, 2017 12:43
it should use dhcp
Feb 9, 2017 12:31
The openvmware tools are not yet installed (these would be installed later on by packer when the ssh session is established) could this be a problem? Should I put these better into the kickstart file?
Feb 9, 2017 12:31
The proxy is not configured so outbound connections (to the internet) will not work. On a manually installed VM a ping to the ESXi host works fine) on this specific packer created host a ping to the ESXi host fails with network unreachable
Feb 9, 2017 12:31
I can see the console waiting / prompting me for login. (in the VM) so it is unclear for me why packer is not establishing an SSH connection.