Return-Path: X-Original-To: archive-asf-public-internal@cust-asf2.ponee.io Delivered-To: archive-asf-public-internal@cust-asf2.ponee.io Received: from cust-asf.ponee.io (cust-asf.ponee.io [163.172.22.183]) by cust-asf2.ponee.io (Postfix) with ESMTP id 89507200C8B for ; Mon, 22 May 2017 16:08:17 +0200 (CEST) Received: by cust-asf.ponee.io (Postfix) id 87D5D160BBF; Mon, 22 May 2017 14:08:17 +0000 (UTC) Delivered-To: archive-asf-public@cust-asf.ponee.io Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by cust-asf.ponee.io (Postfix) with SMTP id D6F46160BA5 for ; Mon, 22 May 2017 16:08:12 +0200 (CEST) Received: (qmail 96366 invoked by uid 500); 22 May 2017 14:08:11 -0000 Mailing-List: contact user-help@predictionio.incubator.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: user@predictionio.incubator.apache.org Delivered-To: mailing list user@predictionio.incubator.apache.org Received: (qmail 96356 invoked by uid 99); 22 May 2017 14:08:10 -0000 Received: from pnap-us-west-generic-nat.apache.org (HELO spamd3-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Mon, 22 May 2017 14:08:10 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd3-us-west.apache.org (ASF Mail Server at spamd3-us-west.apache.org) with ESMTP id C2F05190A20 for ; Mon, 22 May 2017 14:08:09 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd3-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 4.321 X-Spam-Level: **** X-Spam-Status: No, score=4.321 tagged_above=-999 required=6.31 tests=[DC_PNG_UNO_LARGO=0.001, DKIM_SIGNED=0.1, DKIM_VALID=-0.1, DKIM_VALID_AU=-0.1, HTML_MESSAGE=2, HTML_OBFUSCATE_20_30=2.441, RCVD_IN_DNSWL_NONE=-0.0001, RCVD_IN_MSPIKE_H3=-0.01, RCVD_IN_MSPIKE_WL=-0.01, SPF_PASS=-0.001] autolearn=disabled Authentication-Results: spamd3-us-west.apache.org (amavisd-new); dkim=pass (2048-bit key) header.d=gmail.com Received: from mx1-lw-eu.apache.org ([10.40.0.8]) by localhost (spamd3-us-west.apache.org [10.40.0.10]) (amavisd-new, port 10024) with ESMTP id iIux1AJVe8Ne for ; Mon, 22 May 2017 14:08:04 +0000 (UTC) Received: from mail-vk0-f50.google.com (mail-vk0-f50.google.com [209.85.213.50]) by mx1-lw-eu.apache.org (ASF Mail Server at mx1-lw-eu.apache.org) with ESMTPS id 7D9C560CCB for ; Mon, 22 May 2017 14:08:03 +0000 (UTC) Received: by mail-vk0-f50.google.com with SMTP id p85so40996359vkd.3 for ; Mon, 22 May 2017 07:08:03 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20161025; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=A+BL86rd/gvPRO2j+q0RCKx47UDee7XdXBZKvaZgdVA=; b=umFpfx6UFZSCQN/XPvRI5h2YMuvD/2pHi9d5MF51doAjYQ3s/YOj4GIVlP/zXSne28 WvFUZISmePH0dJKYh/rgkblQITKy041T9Jop7uhqcIaB47idfhfFJ4XYduomqg3WArSh Ref8pw6UYkky/PKhMfb3+8exXJgb8NuCBYp/EGfr5EeMoL5qEsj5De5Qxc1B/DbT5A/N vNWZrVz2N8H0+aAEhSBev+kfvjZAxsvD/32SZMqOibU2IKSZNOoljCU4H8sPAgkiRqQZ +ZOy3csxoBgapEux2nsWWSwQZlHwHvls5hPlDFocMrRenzI660xkHxuSZrMlAmSAbuG4 sXsA== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20161025; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=A+BL86rd/gvPRO2j+q0RCKx47UDee7XdXBZKvaZgdVA=; b=BHDwHBUlpkInqyHcBaFCNVbrx22uaEXFwmDFAvJiiT8TqY4td44xdJ86m52eCkDUKl G8OLzLudD6rKzQLEihtAAnf/HkPAFW/PyrwywjhDiYWJww70n6fnBKI5a5w0ICe4gz+C gBDSiU3Qw1SEygFg/Eb7pRI0aiFnI3tg3f5JhaQXwShGRMvSFBuhH2+3cUfefpCdEooN jtLBxR9hYKfd8c8FbIVhah3+47TNspk4zEfXd6eDciWDvhiFRaKzu2kBV9lml4HPOAdS DRI5FkzKbgOBWP46B1IUZkuatCojDIP/t6BOTDeqTi2K5tAwYIQQsU1P9L9MMwcm566n js3w== X-Gm-Message-State: AODbwcA93QpUtFxyH/3LUm/wQEcmsqFOo+u6wyD7m1HGdbzVgnz0XoDN CKK1JF4d8hGaepBJAH+J0Jpp57GmUOi0 X-Received: by 10.31.108.150 with SMTP id j22mr8472699vki.10.1495462082103; Mon, 22 May 2017 07:08:02 -0700 (PDT) MIME-Version: 1.0 Received: by 10.159.39.193 with HTTP; Mon, 22 May 2017 07:08:01 -0700 (PDT) In-Reply-To: References: From: Shane Johnson Date: Mon, 22 May 2017 08:08:01 -0600 Message-ID: Subject: Re: 32 ERROR Storage$: Error initializing storage client for source PGSQL To: user@predictionio.incubator.apache.org Content-Type: multipart/related; boundary="001a114790e22e1dd505501d66f8" archived-at: Mon, 22 May 2017 14:08:17 -0000 --001a114790e22e1dd505501d66f8 Content-Type: multipart/alternative; boundary="001a114790e22e1dc905501d66f7" --001a114790e22e1dc905501d66f7 Content-Type: text/plain; charset="UTF-8" Thanks Chan, I added `$SPARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR*:$JDBC_JAR *$@` but did not have success. You mentioned the $JDBC_JAR needs to be in $PIO_HOME/lib/spark/. Here is my current structure. It looks like the 'pio-data-jdbc-assembly-0.11.0-incubating.jar' is in $PIO_HOME/lib/spark/ when the package is installed. [image: Inline image 1] Can you expound on what you mean by `where $JDBC_JAR is in $PIO_HOME/lib/spark/` Does this need to be packaged up similar to what is happening here? echo "Starting the PIO shell with the Apache Spark Shell." # compute the $ASSEMPLY_JAR, the location of the assemply jar, with # bin/compute-classpath.sh . ${PIO_HOME}/bin/compute-classpath.sh Thanks for your help and support! *Shane Johnson | 801.360.3350* LinkedIn | Facebook On Mon, May 22, 2017 at 4:06 AM, Chan Lee wrote: > Hi Shane, > > You'd want to do `$SPARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR*:$JDBC_JAR > *$@`, > > where $JDBC_JAR is in $PIO_HOME/lib/spark/ > > Best, > Chan > > > > On Sat, May 20, 2017 at 4:33 PM, Shane Johnson < > shanewaldenjohnson@gmail.com> wrote: > >> Thanks Donald, >> >> I've tried a couple approaches. Each time I have exited and restarted >> `pio-shell`. Am I going down the right path by adding the PSQL_JAR after >> the ASSEMBLY_JAR or is it more extensive? >> >> Thank you for you help and support! >> >> Unsuccessful attempts: >> >> >> then >> echo "Starting the PIO shell with the Apache Spark Shell." >> # compute the $ASSEMPLY_JAR, the location of the assemply jar, with >> # bin/compute-classpath.sh >> . ${PIO_HOME}/bin/compute-classpath.sh >> shift >> $SPARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR $@ >> $POSTGRES_JDBC_DRIVER >> >> then >> echo "Starting the PIO shell with the Apache Spark Shell." >> # compute the $ASSEMPLY_JAR, the location of the assemply jar, with >> # bin/compute-classpath.sh >> . ${PIO_HOME}/bin/compute-classpath.sh >> shift >> $SPARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR $@ $PSQL_JAR >> >> >> *Shane Johnson | 801.360.3350 <(801)%20360-3350>* >> LinkedIn | Facebook >> >> >> On Sat, May 20, 2017 at 2:46 PM, Donald Szeto wrote: >> >>> Hey Shane, >>> >>> One quick workaround is to manually edit this line for now: >>> >>> https://github.com/apache/incubator-predictionio/blob/develo >>> p/bin/pio-shell#L62 >>> >>> and adding the JDBC assembly JAR after the main assembly JAR. >>> >>> Sorry for the brief reply as I'm traveling. I will follow up with more >>> details when I find a chance. >>> >>> Regards, >>> Donald >>> >>> On Sat, May 20, 2017 at 12:16 PM Shane Johnson < >>> shanewaldenjohnson@gmail.com> wrote: >>> >>>> Thank you for the quick reply Mars and for the issue creation. I really >>>> appreciate the support. Will this issue persist with MySql and Hbase as >>>> well in `pio-shell`? I'm trying to wrap my mind around $set, $unset events >>>> and run queries like this. Can you think of other ways to manually test the >>>> query, either using MySQL or Hbase with `pio-shell` or using something >>>> other than `pio-shell`. >>>> >>>> >>>> - PEventStore.aggregateProperties(appName=appName, >>>> entityType="user")(sc).collect() >>>> - PEventStore.aggregateProperties(appName=appName, >>>> entityType="user", untilTime=Some(new DateTime(2014, 9, 11, 0, >>>> 0)))(sc).collect() >>>> >>>> Thanks >>>> >>>> On Sat, May 20, 2017 at 11:13 AM Mars Hall wrote: >>>> >>>>> Hi Shane, >>>>> >>>>> Unfortunately `pio-shell` currently has class loading/classpath issues. >>>>> >>>>> Thanks for reminding me that an issue needed to be created. Here it is: >>>>> https://issues.apache.org/jira/browse/PIO-72 >>>>> >>>>> *Mars >>>>> >>>>> ( <> .. <> ) >>>>> >>>>> > On May 20, 2017, at 09:43, Shane Johnson < >>>>> shanewaldenjohnson@gmail.com> wrote: >>>>> > >>>>> > Team, >>>>> > >>>>> > I am trying to follow the event modeling "MyTestApp" tutorial and am >>>>> having issues querying the data from postegres. Has anyone run into this >>>>> error. Postgres is working fine when I run the models but I am having >>>>> issues connecting to it through the PIO Shell. >>>>> > >>>>> > >>>>> > >>>>> > java.lang.ClassNotFoundException: jdbc.StorageClient >>>>> > >>>>> > at java.net.URLClassLoader.findClass(URLClassLoader.java:381) >>>>> > >>>>> > at java.lang.ClassLoader.loadClass(ClassLoader.java:424) >>>>> > >>>>> > at java.lang.ClassLoader.loadClass(ClassLoader.java:357) >>>>> > >>>>> > at java.lang.Class.forName0(Native Method) >>>>> > >>>>> > at java.lang.Class.forName(Class.java:264) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getClient(Stor >>>>> age.scala:228) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.org$apache$pre >>>>> dictionio$data$storage$Storage$$updateS2CM(Storage.scala:254) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$$anonfun$source >>>>> sToClientMeta$1.apply(Storage.scala:215) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$$anonfun$source >>>>> sToClientMeta$1.apply(Storage.scala:215) >>>>> > >>>>> > at scala.collection.mutable.MapLike$class.getOrElseUpdate(MapLi >>>>> ke.scala:189) >>>>> > >>>>> > at scala.collection.mutable.AbstractMap.getOrElseUpdate(Map.sca >>>>> la:91) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.sourcesToClien >>>>> tMeta(Storage.scala:215) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getDataObject( >>>>> Storage.scala:284) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getDataObjectF >>>>> romRepo(Storage.scala:269) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getMetaDataApp >>>>> s(Storage.scala:387) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appsDb$lzycompute >>>>> (Common.scala:27) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appsDb(Common.sca >>>>> la:27) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appNameToId(Commo >>>>> n.scala:32) >>>>> > >>>>> > at org.apache.predictionio.data.store.PEventStore$.aggregatePro >>>>> perties(PEventStore.scala:108) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC. >>>>> (:31) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(>>>> sole>:36) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:38) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC.(:40) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC$$iwC.(:42) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC$$iwC.(:44) >>>>> > >>>>> > at $line20.$read$$iwC$$iwC.(:46) >>>>> > >>>>> > at $line20.$read$$iwC.(:48) >>>>> > >>>>> > at $line20.$read.(:50) >>>>> > >>>>> > at $line20.$read$.(:54) >>>>> > >>>>> > at $line20.$read$.() >>>>> > >>>>> > at $line20.$eval$.(:7) >>>>> > >>>>> > at $line20.$eval$.() >>>>> > >>>>> > at $line20.$eval.$print() >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAcce >>>>> ssorImpl.java:62) >>>>> > >>>>> > at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMe >>>>> thodAccessorImpl.java:43) >>>>> > >>>>> > at java.lang.reflect.Method.invoke(Method.java:498) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain$ReadEvalPrint.call(SparkIMa >>>>> in.scala:1065) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain$Request.loadAndRun(SparkIMa >>>>> in.scala:1346) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.loadAndRunReq$1(SparkIMain. >>>>> scala:840) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:871) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:819) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.reallyInterpret$1(SparkILoo >>>>> p.scala:857) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.interpretStartingWith(Spark >>>>> ILoop.scala:902) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.command(SparkILoop.scala:814) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.processLine$1(SparkILoop.sc >>>>> ala:657) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.innerLoop$1(SparkILoop.scal >>>>> a:665) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.org$apache$spark$repl$Spark >>>>> ILoop$$loop(SparkILoop.scala:670) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply$mcZ$sp(SparkILoop.scala:997) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply(SparkILoop.scala:945) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply(SparkILoop.scala:945) >>>>> > >>>>> > at scala.tools.nsc.util.ScalaClassLoader$.savingContextLoader(S >>>>> calaClassLoader.scala:135) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.org$apache$spark$repl$Spark >>>>> ILoop$$process(SparkILoop.scala:945) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.process(SparkILoop.scala:1059) >>>>> > >>>>> > at org.apache.spark.repl.Main$.main(Main.scala:31) >>>>> > >>>>> > at org.apache.spark.repl.Main.main(Main.scala) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAcce >>>>> ssorImpl.java:62) >>>>> > >>>>> > at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMe >>>>> thodAccessorImpl.java:43) >>>>> > >>>>> > at java.lang.reflect.Method.invoke(Method.java:498) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy >>>>> $SparkSubmit$$runMain(SparkSubmit.scala:731) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit >>>>> .scala:181) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scal >>>>> a:206) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:121) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala) >>>>> > >>>>> > org.apache.predictionio.data.storage.StorageClientException: Data >>>>> source PGSQL was not properly initialized. >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$$anonfun$10.app >>>>> ly(Storage.scala:285) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$$anonfun$10.app >>>>> ly(Storage.scala:285) >>>>> > >>>>> > at scala.Option.getOrElse(Option.scala:120) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getDataObject( >>>>> Storage.scala:284) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getDataObjectF >>>>> romRepo(Storage.scala:269) >>>>> > >>>>> > at org.apache.predictionio.data.storage.Storage$.getMetaDataApp >>>>> s(Storage.scala:387) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appsDb$lzycompute >>>>> (Common.scala:27) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appsDb(Common.sca >>>>> la:27) >>>>> > >>>>> > at org.apache.predictionio.data.store.Common$.appNameToId(Commo >>>>> n.scala:32) >>>>> > >>>>> > at org.apache.predictionio.data.store.PEventStore$.aggregatePro >>>>> perties(PEventStore.scala:108) >>>>> > >>>>> > at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:31) >>>>> > >>>>> > at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:36) >>>>> > >>>>> > at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:38) >>>>> > >>>>> > at $iwC$$iwC$$iwC$$iwC$$iwC.(:40) >>>>> > >>>>> > at $iwC$$iwC$$iwC$$iwC.(:42) >>>>> > >>>>> > at $iwC$$iwC$$iwC.(:44) >>>>> > >>>>> > at $iwC$$iwC.(:46) >>>>> > >>>>> > at $iwC.(:48) >>>>> > >>>>> > at (:50) >>>>> > >>>>> > at .(:54) >>>>> > >>>>> > at .() >>>>> > >>>>> > at .(:7) >>>>> > >>>>> > at .() >>>>> > >>>>> > at $print() >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAcce >>>>> ssorImpl.java:62) >>>>> > >>>>> > at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMe >>>>> thodAccessorImpl.java:43) >>>>> > >>>>> > at java.lang.reflect.Method.invoke(Method.java:498) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain$ReadEvalPrint.call(SparkIMa >>>>> in.scala:1065) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain$Request.loadAndRun(SparkIMa >>>>> in.scala:1346) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.loadAndRunReq$1(SparkIMain. >>>>> scala:840) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:871) >>>>> > >>>>> > at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:819) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.reallyInterpret$1(SparkILoo >>>>> p.scala:857) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.interpretStartingWith(Spark >>>>> ILoop.scala:902) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.command(SparkILoop.scala:814) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.processLine$1(SparkILoop.sc >>>>> ala:657) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.innerLoop$1(SparkILoop.scal >>>>> a:665) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.org$apache$spark$repl$Spark >>>>> ILoop$$loop(SparkILoop.scala:670) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply$mcZ$sp(SparkILoop.scala:997) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply(SparkILoop.scala:945) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$r >>>>> epl$SparkILoop$$process$1.apply(SparkILoop.scala:945) >>>>> > >>>>> > at scala.tools.nsc.util.ScalaClassLoader$.savingContextLoader(S >>>>> calaClassLoader.scala:135) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.org$apache$spark$repl$Spark >>>>> ILoop$$process(SparkILoop.scala:945) >>>>> > >>>>> > at org.apache.spark.repl.SparkILoop.process(SparkILoop.scala:1059) >>>>> > >>>>> > at org.apache.spark.repl.Main$.main(Main.scala:31) >>>>> > >>>>> > at org.apache.spark.repl.Main.main(Main.scala) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>>>> > >>>>> > at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAcce >>>>> ssorImpl.java:62) >>>>> > >>>>> > at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMe >>>>> thodAccessorImpl.java:43) >>>>> > >>>>> > at java.lang.reflect.Method.invoke(Method.java:498) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy >>>>> $SparkSubmit$$runMain(SparkSubmit.scala:731) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit >>>>> .scala:181) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scal >>>>> a:206) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:121) >>>>> > >>>>> > at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala) >>>>> > >>>>> > Shane Johnson | 801.360.3350 <(801)%20360-3350> >>>>> > >>>>> > LinkedIn | Facebook >>>>> >>>>> >> > --001a114790e22e1dc905501d66f7 Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable
Thanks Chan,

I added=C2=A0=C2=A0`$SPARK_HOME/bin/spark-= shell --jars $ASSEMBLY_JAR:$JDBC_JAR=C2=A0$@` but did not have success. You mentio= ned the $JDBC_JAR needs to be in $PIO_HOME/lib/spark/. Here is my current s= tructure. It looks like the 'pio-data-jdbc-assembly-0.11.0-incubating.j= ar' is in=C2=A0$PIO_HOME/lib/sp= ark/ when the package is installed.

3D"Inline

Can you expound on what you mean b= y `where $J= DBC_JAR is in $PIO_HOME/lib/spark/`=C2=A0

Does = this need to be packaged up similar to what is happening here?=C2=A0=


=C2=A0echo "Starting the PIO shell with the Apach= e Spark Shell."
=C2=A0 # compute the $ASSEMPLY_JAR, the location of the= assemply jar, with
=C2=A0 # bin/compute-classpath.sh
=C2=A0 . ${PIO_HOME}/bi= n/compute-classpath.sh

Thanks for your help and suppor= t!


Shane Johnson | 801.360= .3350

LinkedIn=C2=A0|=C2=A0Facebook

On Mon, May 22, 2017 at 4:06 AM, Chan Lee <chanlee514@gmail.com> wrote:
Hi Shane,

You'd want to do `$S= PARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR:$JDBC_JAR $@`,
<= div>
where $JDBC_JAR is in $PIO_HOME/lib/spark/
Best,
Chan


<= div class=3D"HOEnZb">

On Sat, May 20, 2017 at 4:33 PM, Shane Johnson <shanewaldenjohnson@gmail.com> wrote:
Thanks Donald,

I'v= e tried a couple approaches. Each time I have exited and restarted `pio-she= ll`. Am I going down the right path by adding the PSQL_JAR after the ASSEMB= LY_JAR or is it more extensive?

Thank you for you = help and support!

Unsuccessful attempts:


then
=C2=A0 echo "Starting the PIO shell with the = Apache Spark Shell."
=C2=A0 # compute the $ASSEMPLY_JAR, the location of the assem= ply jar, with
=C2=A0 # bin/compute-classpath.sh
=C2=A0 . ${PIO_HOME}/bin/compute-classpath.sh<= /div>
=C2=A0 shift=
=C2=A0 = $SPARK_HOME/bin/spark-shell --jars $ASSEMBLY_JAR $@ $POSTGRES_JDBC_DRIVER

=
then
=C2=A0 ech= o "Starting the PIO shell with the Apache Spark Shell."
=C2=A0 # compute the $ASSEMPLY_JAR, the l= ocation of the assemply jar, with
=C2=A0 # bin/compute-classpath.sh
=C2=A0 . ${PIO_HOME}/bin/compute-classpath.sh
=C2=A0 shift
=C2=A0 $SPARK_HOME/bin/spar= k-shell --jars $ASSEMBLY_JAR $@=C2=A0$PSQL_J= AR


<= div>

Shane Johnson | 801.360.3350

LinkedIn=C2=A0|=C2=A0Facebook

On Sat, May 20, 2017 at 2:46 PM, Donald Szeto <= ;donald@apache.org> wrote:
<= div>Hey Shane,



and adding the JDBC= assembly JAR after the main assembly JAR.

Sorry f= or the brief reply as I'm traveling. I will follow up with more details= when I find a chance.

Regards,
Donald

On Sat, May 20, 2017 at 12:16 PM Shane Johnson <shanewaldenjohnson@gmail.com> wrote:
Thank you for the quick reply Mars and for the issue creation. I rea= lly appreciate the support. Will this issue persist with MySql and Hbase as= well in `pio-shell`? I'm trying to wrap my mind around $set, $unset ev= ents and run queries like this. Can you think of other ways to manually tes= t the query, either using MySQL or Hbase with `pio-shell` or using somethin= g other than `pio-shell`.

  • PEv= entStore.aggregateProperties(appName=3DappName, entityType=3D"use= r")(sc).collect()
  • PEventStore.aggregateProperties(ap= pName=3DappName, entityType=3D"user", untilTime=3DSome(new DateTi= me(2014, 9, 11, 0, 0)))(sc).collect()
Thanks

Hi Shane,

Unfortunately `pio-shell` currently has class loading/classpath issues.

Thanks for reminding me that an issue needed to be created. Here it is:
=C2=A0 https://issues.apache.org/jira/browse/PIO-72=

*Mars

( <> .. <> )

> On May 20, 2017, at 09:43, Shane Johnson <shanewaldenjohnson@gmail.com&g= t; wrote:
>
> Team,
>
> I am trying to follow the event modeling "MyTestApp" tutoria= l and am having issues querying the data from postegres. Has anyone run int= o this error. Postgres is working fine when I run the models but I am havin= g issues connecting to it through the PIO Shell.
>
> <image.png>
>
> java.lang.ClassNotFoundException: jdbc.StorageClient
>
> at java.net.URLClassLoader.findClass(URLClassLoader.java:381)
>
> at java.lang.ClassLoader.loadClass(ClassLoader.java:424)
>
> at java.lang.ClassLoader.loadClass(ClassLoader.java:357)
>
> at java.lang.Class.forName0(Native Method)
>
> at java.lang.Class.forName(Class.java:264)
>
> at org.apache.predictionio.data.storage.Storage$.getClient(Storage.scala:228)
>
> at org.apache.predictionio.data.storage.Storage$.org$apache$predictionio$data$storage$Storage$$updateS2CM(Storage.scala:254)<= br> >
> at org.apache.predictionio.data.storage.Storage$$anonfun$sourcesToClientMeta$1.apply(Storage.scala:215)
>
> at org.apache.predictionio.data.storage.Storage$$anonfun$sourcesToClientMeta$1.apply(Storage.scala:215)
>
> at scala.collection.mutable.MapLike$class.getOrElseUpdate(MapLike.scala:189)
>
> at scala.collection.mutable.AbstractMap.getOrElseUpdate(Map.scala:91)
>
> at org.apache.predictionio.data.storage.Storage$.sourcesToClientMeta(Storage.scala:215)
>
> at org.apache.predictionio.data.storage.Storage$.getDataObject(Storage.scala:284)
>
> at org.apache.predictionio.data.storage.Storage$.getDataObjectFromRepo(Storage.scala:269)
>
> at org.apache.predictionio.data.storage.Storage$.getMetaDataApps(Storage.scala:387)
>
> at org.apache.predictionio.data.store.Common$.appsDb$lzycompute(Common.scala:27)
>
> at org.apache.predictionio.data.store.Common$.appsDb(Common.scala:27)
>
> at org.apache.predictionio.data.store.Common$.appNameToId(Common.scala:32)
>
> at org.apache.predictionio.data.store.PEventStore$.aggregateProperties(PEventStore.scala:108)
>
> at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init= >(<console>:31)
>
> at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(= <console>:36)
>
> at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(<c= onsole>:38)
>
> at $line20.$read$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(<consol= e>:40)
>
> at $line20.$read$$iwC$$iwC$$iwC$$iwC.<init>(<console>= :42)
>
> at $line20.$read$$iwC$$iwC$$iwC.<init>(<console>:44)<= br> >
> at $line20.$read$$iwC$$iwC.<init>(<console>:46)
>
> at $line20.$read$$iwC.<init>(<console>:48)
>
> at $line20.$read.<init>(<console>:50)
>
> at $line20.$read$.<init>(<console>:54)
>
> at $line20.$read$.<clinit>(<console>)
>
> at $line20.$eval$.<init>(<console>:7)
>
> at $line20.$eval$.<clinit>(<console>)
>
> at $line20.$eval.$print(<console>)
>
> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >
> at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
>
> at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
>
> at java.lang.reflect.Method.invoke(Method.java:498)
>
> at org.apache.spark.repl.SparkIMain$ReadEvalPrint.call(SparkIMain.scala:1065)
>
> at org.apache.spark.repl.SparkIMain$Request.loadAndRun(SparkIMain.scala:1346)
>
> at org.apache.spark.repl.SparkIMain.loadAndRunReq$1(SparkIMain.scala:840)
>
> at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:871)
>
> at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:819)
>
> at org.apache.spark.repl.SparkILoop.reallyInterpret$1(SparkILoop.scala:857)
>
> at org.apache.spark.repl.SparkILoop.interpretStartingWith(SparkILoop.scala:902)
>
> at org.apache.spark.repl.SparkILoop.command(SparkILoop.scala:814)
>
> at org.apache.spark.repl.SparkILoop.processLine$1(SparkILoop.scala:657)
>
> at org.apache.spark.repl.SparkILoop.innerLoop$1(SparkILoop.scala:665)
>
> at org.apache.spark.repl.SparkILoop.org$apa= che$spark$repl$SparkILoop$$loop(SparkILoop.scala:670)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply$mcZ$sp(SparkILoop.scala:997)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply(SparkILoop.scala:945)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply(SparkILoop.scala:945)
>
> at scala.tools.nsc.util.ScalaClassLoader$.savingContextLoader(ScalaClassLoader.scala:135)
>
> at org.apache.spark.repl.SparkILoop.org$apa= che$spark$repl$SparkILoop$$process(SparkILoop.scala:945)
>
> at org.apache.spark.repl.SparkILoop.process(SparkILoop.scala:1059)
>
> at org.apache.spark.repl.Main$.main(Main.scala:31)
>
> at org.apache.spark.repl.Main.main(Main.scala)
>
> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >
> at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
>
> at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
>
> at java.lang.reflect.Method.invoke(Method.java:498)
>
> at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy$SparkSubmit$$runMain(SparkSubmit.scala:731)
>
> at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit.scala:181)
>
> at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scala:206)
>
> at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:121)
>
> at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala) >
> org.apache.predictionio.data.storage.StorageClientException: Data= source PGSQL was not properly initialized.
>
> at org.apache.predictionio.data.storage.Storage$$anonfun$10.apply(Storage.scala:285)
>
> at org.apache.predictionio.data.storage.Storage$$anonfun$10.apply(Storage.scala:285)
>
> at scala.Option.getOrElse(Option.scala:120)
>
> at org.apache.predictionio.data.storage.Storage$.getDataObject(Storage.scala:284)
>
> at org.apache.predictionio.data.storage.Storage$.getDataObjectFromRepo(Storage.scala:269)
>
> at org.apache.predictionio.data.storage.Storage$.getMetaDataApps(Storage.scala:387)
>
> at org.apache.predictionio.data.store.Common$.appsDb$lzycompute(Common.scala:27)
>
> at org.apache.predictionio.data.store.Common$.appsDb(Common.scala:27)
>
> at org.apache.predictionio.data.store.Common$.appNameToId(Common.scala:32)
>
> at org.apache.predictionio.data.store.PEventStore$.aggregateProperties(PEventStore.scala:108)
>
> at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(<conso= le>:31)
>
> at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(<console>= ;:36)
>
> at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC.<init>(<console>:38)=
>
> at $iwC$$iwC$$iwC$$iwC$$iwC.<init>(<console>:40)
>
> at $iwC$$iwC$$iwC$$iwC.<init>(<console>:42)
>
> at $iwC$$iwC$$iwC.<init>(<console>:44)
>
> at $iwC$$iwC.<init>(<console>:46)
>
> at $iwC.<init>(<console>:48)
>
> at <init>(<console>:50)
>
> at .<init>(<console>:54)
>
> at .<clinit>(<console>)
>
> at .<init>(<console>:7)
>
> at .<clinit>(<console>)
>
> at $print(<console>)
>
> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >
> at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
>
> at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
>
> at java.lang.reflect.Method.invoke(Method.java:498)
>
> at org.apache.spark.repl.SparkIMain$ReadEvalPrint.call(SparkIMain.scala:1065)
>
> at org.apache.spark.repl.SparkIMain$Request.loadAndRun(SparkIMain.scala:1346)
>
> at org.apache.spark.repl.SparkIMain.loadAndRunReq$1(SparkIMain.scala:840)
>
> at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:871)
>
> at org.apache.spark.repl.SparkIMain.interpret(SparkIMain.scala:819)
>
> at org.apache.spark.repl.SparkILoop.reallyInterpret$1(SparkILoop.scala:857)
>
> at org.apache.spark.repl.SparkILoop.interpretStartingWith(SparkILoop.scala:902)
>
> at org.apache.spark.repl.SparkILoop.command(SparkILoop.scala:814)
>
> at org.apache.spark.repl.SparkILoop.processLine$1(SparkILoop.scala:657)
>
> at org.apache.spark.repl.SparkILoop.innerLoop$1(SparkILoop.scala:665)
>
> at org.apache.spark.repl.SparkILoop.org$apa= che$spark$repl$SparkILoop$$loop(SparkILoop.scala:670)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply$mcZ$sp(SparkILoop.scala:997)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply(SparkILoop.scala:945)
>
> at org.apache.spark.repl.SparkILoop$$anonfun$org$apache$spark$repl$SparkILoop$$process$1.apply(SparkILoop.scala:945)
>
> at scala.tools.nsc.util.ScalaClassLoader$.savingContextLoader(ScalaClassLoader.scala:135)
>
> at org.apache.spark.repl.SparkILoop.org$apa= che$spark$repl$SparkILoop$$process(SparkILoop.scala:945)
>
> at org.apache.spark.repl.SparkILoop.process(SparkILoop.scala:1059)
>
> at org.apache.spark.repl.Main$.main(Main.scala:31)
>
> at org.apache.spark.repl.Main.main(Main.scala)
>
> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >
> at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
>
> at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
>
> at java.lang.reflect.Method.invoke(Method.java:498)
>
> at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy$SparkSubmit$$runMain(SparkSubmit.scala:731)
>
> at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit.scala:181)
>
> at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scala:206)
>
> at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:121)
>
> at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala) >
> Shane Johnson | 801.360.3350
>
> LinkedIn | Facebook




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