How to use ElasticSearch as storage from Hive in cloudera

.In the Using ElasticSearch as external data store with apache hive entry i talked about how you can create a table in Hive so that actual data is stored in ElasticSearch. Problem with that approach was that i had to pass the full path to elasticsearch-hadoop-hive-<eshadoopversion>.jar as parameter every time.

hive -hiveconf hive.aux.jars.path=/opt/elastic/elasticsearch-hadoop-2.4.3/dist/elasticsearch-hadoop-hive-2.4.3.jar;
Other option for doing same thing is to open hive session and then calling following command as first thing

ADD JAR /opt/elastic/elasticsearch-hadoop-2.4.3/dist/elasticsearch-hadoop-hive-2.4.3.jar;
Problem with both these approaches is that you will have to keep letting hive know the full path to elasticsearch jars every single time. Instead you can take care of this issue by copying elasticsearch-hadoop-hive-<eshadoopversion>.jar into same directory on every node in your local machine. In my case i copied it to /usr/lib/hive/lib directory by executing following command

sudo cp /opt/elastic/elasticsearch-hadoop-2.4.3/dist/elasticsearch-hadoop-hive-2.4.3.jar /usr/lib/hive/lib/.
Then set the value of Hive Auxiliary JARs Directory hive.aux.jars.path property to /usr/lib/hive/lib directory like this.
Then restart the hive service and now you should be able to access any elastic search backed table without adding the elasticsearch hadoop jar explicitly

Installing ElasticSearch on existing docker container

I was using a Cloudera Quickstart docker image for one experiment and wanted to install ElasticSearch on it but i had trouble in accessing from my host, but i found workaround by following these steps
  • First i installed ElasticSearch by downloading and unzipping ElasticSearch version 2.4.3 and unzipping it in /opt/elastic folder
  • Then i started elasticsearch by executing /bin/elasticsearch, and it started ok. When i ran curl -XGET "http://localhost:9200/ from inside docker images i was able to access ElasticSearch, but when i tried to access it from my host machine, i could not access it. But where as i was able to access other services running on my docker image. So first i tried running netstat on my docker image to see why i was able to access other services but not elasticsearch (Also to make sure if elasticsearch was actually listening on port 9200 and i got output like this
  • Looking at the port mapping i could see that other services were mapped to 0.0.0.0 but elasticsearch was only mapped to 127.0.0.1, so i opene <ELASTICSEARCH_HOME>/config/elasticsearch.yml and added two more lines to it like this
    
    http.host: 0.0.0.0
    transport.host: 127.0.0.1
    
  • Then i restarted elasticsearch server and i checked the netstat again and i could see this mapping, and when i tried accessing elasticsearch from host machine it worked

Sending and Receiving JSON messages in Kafka

Sometime back i wrote couple of articles for Java World about Kafka Big data messaging with Kafka, Part 1 and Big data messaging with Kafka, Part 2, you can find basic Producer and Consumer for Kafka along with some basic samples.
I wanted to figure out how do i pass JSON message using Kafka. It looks like Kafak Connect provides a simple JSON Serializer org.apache.kafka.connect.json.JsonSerializer and Desrializer org.apache.kafka.connect.json.JsonDeserializer that uses Jackson JSON parser. I wanted to figure out how to use it, so i built following sample
  • First i did create a Contact Object, which is a simple Pojo that has 3 fields contactId, firstName and lastName. Take a look at main() method, in which i create simple object of Contact and then convert it to JSON and write to console.
  • Next i created Producer.java, which reads values in CSV format like 1,Sunil,Patil from command line and parse it to Contact object first. Then i convert Contact object into JSONNode and pass it as value to Kafka, The JSONSerializer converts the JsonNode into byte[]
    The producer code is mostly same as one required for passing String, with difference that on line 35, i am creating object of com.fasterxml.jackson.databind.ObjectMapper and then on line 41 i am converting Contact object into JSONNode by calling objectMapper.valueToTree(contact)
  • Since i am using org.apache.kafka.connect.json.JsonSerializer on the producer i have to use org.apache.kafka.connect.json.JsonDeserializer on the Consumer, Then while creating KafkaConsumer object i declare that i will get String key and JSONNode as value. Then once i get messages from Kafka i am calling mapper.treeToValue(jsonNode,Contact.class) to read the message and convert it back to Contact object.
Now you can run the producer and consumer with same topic name and it should work

Importing data from RDBMS into Hive using Sqoop and oozie (hive-import)

In the How to run Sqoop command from oozie entry i talked about how you can use Oozie and Sqoop to import data into HDFS. I wanted to change it to use sqoop's hive-import option, which in addition to importing data into HDFS also creats Hive table on top of the data. These are the steps that i followed
  • First i changed the workflow.xml to take out as-avrodatafile and added hive-import option and i re-ran the workflow that looks like this When i did that the oozie workflow failed with following error
    
    7936 [uber-SubtaskRunner] WARN  org.apache.sqoop.mapreduce.JobBase  - SQOOP_HOME is unset. May not be able to find all job dependencies.
    9202 [uber-SubtaskRunner] DEBUG org.apache.sqoop.mapreduce.db.DBConfiguration  - Fetching password from job credentials store
    9207 [uber-SubtaskRunner] INFO  org.apache.sqoop.mapreduce.db.DBInputFormat  - Using read commited transaction isolation
    9210 [uber-SubtaskRunner] DEBUG org.apache.sqoop.mapreduce.db.DataDrivenDBInputFormat  - Creating input split with lower bound '1=1' and upper bound '1=1'
    25643 [uber-SubtaskRunner] INFO  org.apache.sqoop.mapreduce.ImportJobBase  - Transferred 931.1768 KB in 17.6994 seconds (52.6107 KB/sec)
    25649 [uber-SubtaskRunner] INFO  org.apache.sqoop.mapreduce.ImportJobBase  - Retrieved 12435 records.
    25649 [uber-SubtaskRunner] DEBUG org.apache.sqoop.hive.HiveImport  - Hive.inputTable: customers
    25650 [uber-SubtaskRunner] DEBUG org.apache.sqoop.hive.HiveImport  - Hive.outputTable: customers
    25653 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Execute getColumnInfoRawQuery : SELECT t.* FROM `customers` AS t LIMIT 1
    25653 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - No connection paramenters specified. Using regular API for making connection.
    25658 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Using fetchSize for next query: -2147483648
    25658 [uber-SubtaskRunner] INFO  org.apache.sqoop.manager.SqlManager  - Executing SQL statement: SELECT t.* FROM `customers` AS t LIMIT 1
    25659 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_id of type [4, 11, 0]
    25659 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_fname of type [12, 45, 0]
    25659 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_lname of type [12, 45, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_email of type [12, 45, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_password of type [12, 45, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_street of type [12, 255, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_city of type [12, 45, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_state of type [12, 45, 0]
    25660 [uber-SubtaskRunner] DEBUG org.apache.sqoop.manager.SqlManager  - Found column customer_zipcode of type [12, 45, 0]
    25663 [uber-SubtaskRunner] DEBUG org.apache.sqoop.hive.TableDefWriter  - Create statement: CREATE TABLE IF NOT EXISTS `customers` ( `customer_id` INT, `customer_fname` STRING, `customer_lname` STRING, `customer_email` STRING, `customer_password` STRING, `customer_street` STRING, `customer_city` STRING, `customer_state` STRING, `customer_zipcode` STRING) COMMENT 'Imported by sqoop on 2016/12/22 21:18:39' ROW FORMAT DELIMITED FIELDS TERMINATED BY '\001' LINES TERMINATED BY '\012' STORED AS TEXTFILE
    25664 [uber-SubtaskRunner] DEBUG org.apache.sqoop.hive.TableDefWriter  - Load statement: LOAD DATA INPATH 'hdfs://quickstart.cloudera:8020/user/cloudera/customers' INTO TABLE `customers`
    25667 [uber-SubtaskRunner] INFO  org.apache.sqoop.hive.HiveImport  - Loading uploaded data into Hive
    25680 [uber-SubtaskRunner] DEBUG org.apache.sqoop.hive.HiveImport  - Using in-process Hive instance.
    25683 [uber-SubtaskRunner] DEBUG org.apache.sqoop.util.SubprocessSecurityManager  - Installing subprocess security manager
    Intercepting System.exit(1)
    
    <<< Invocation of Main class completed <<<
    
    Failing Oozie Launcher, Main class [org.apache.oozie.action.hadoop.SqoopMain], exit code [1]
    
    Oozie Launcher failed, finishing Hadoop job gracefully
    
    Oozie Launcher, uploading action data to HDFS sequence file: hdfs://quickstart.cloudera:8020/user/cloudera/oozie-oozi/0000007-161222163830473-oozie-oozi-W/sqoop-52c0--sqoop/action-data.seq
    
    Oozie Launcher ends
    
    
  • As you can see from the log the Sqoop job was able to import data into HDFS in /user/cloudera/customers directory and i could actually see the data in the directory. But when Sqoop tried to create the table in hive it failed and the table did not get created in hive, this is the log statement that i am referring to CREATE TABLE IF NOT EXISTS `customers` ( `customer_id` INT, `customer_fname` STRING, `customer_lname` STRING, `customer_email` STRING, `customer_password` STRING, `customer_street` STRING, `customer_city` STRING, `customer_state` STRING, `customer_zipcode` STRING) COMMENT 'Imported by sqoop on 2016/12/22 21:18:39' ROW FORMAT DELIMITED FIELDS TERMINATED BY '\001' LINES TERMINATED BY '\012' STORED AS TEXTFILE
  • So it seems the problem is Sqoop needs hive-site.xml so that it knows how to talk to hive service, for that first i search my sandbox to figure out where hive-site.xml is located, i executed following command to first find the hive-site.xml and then uploading it to HDFS sudo find / -name hive-site.xml hdfs dfs -put /etc/hive/conf.dist/hive-site.xml
  • After that i went back to the workflow.xml and modified it to look like this
Now when i ran the oozie workflow it was successful and i could query customer data

How to run Sqoop command from oozie

In the Importing data from Sqoop into Hive External Table with Avro encoding updated i blogged about how you can use sqoop to import data from RDBMS into Hadoop. I wanted to test if i can use Oozie for invoking Sqoop command and i followed these steps for doing that.
  1. First i tried executing this command from my command line on Hadoop cluster to make sure that i can actually run sqoop without any problem
    
    sqoop import --connect jdbc:mysql://localhost/test 
    --username root 
    --password cloudera 
    --table CUSTOMER 
    --as-avrodatafile
    
  2. Once the sqoop command was successfully executed i went back and deleted the CUSTOMER directory from HDFS to make sure that i could re-import data using following command
    
    hdfs dfs -rm -R CUSTOMER
    
  3. Next i went to Hue to create oozie workflow with single sqoop command that i had executed before
    But if your not using the Hue console you can create workflow.xml manually like this Also make sure to create job.properties file like this Take a look at Enabling Oozie console on Cloudera VM 4.4.0 and executing examples for information on how to run oozie job from command line
  4. Next when i ran the Oozie workflow, the job failed with following error, which indicates that Oozie does not have the MySQL JDBC driver.
    
    java.lang.RuntimeException: Could not load db driver class: com.mysql.jdbc.Driver
     at org.apache.sqoop.manager.SqlManager.makeConnection(SqlManager.java:875)
     at org.apache.sqoop.manager.GenericJdbcManager.getConnection(GenericJdbcManager.java:52)
     at org.apache.sqoop.manager.SqlManager.execute(SqlManager.java:763)
     at org.apache.sqoop.manager.SqlManager.execute(SqlManager.java:786)
     at org.apache.sqoop.manager.SqlManager.getColumnInfoForRawQuery(SqlManager.java:289)
     at org.apache.sqoop.manager.SqlManager.getColumnTypesForRawQuery(SqlManager.java:260)
     at org.apache.sqoop.manager.SqlManager.getColumnTypes(SqlManager.java:246)
     at org.apache.sqoop.manager.ConnManager.getColumnTypes(ConnManager.java:327)
     at org.apache.sqoop.orm.ClassWriter.getColumnTypes(ClassWriter.java:1846)
     at org.apache.sqoop.orm.ClassWriter.generate(ClassWriter.java:1646)
     at org.apache.sqoop.tool.CodeGenTool.generateORM(CodeGenTool.java:107)
     at org.apache.sqoop.tool.ImportTool.importTable(ImportTool.java:478)
     at org.apache.sqoop.tool.ImportTool.run(ImportTool.java:605)
     at org.apache.sqoop.Sqoop.run(Sqoop.java:143)
     at org.apache.hadoop.util.ToolRunner.run(ToolRunner.java:70)
     at org.apache.sqoop.Sqoop.runSqoop(Sqoop.java:179)
     at org.apache.sqoop.Sqoop.runTool(Sqoop.java:218)
     at org.apache.sqoop.Sqoop.runTool(Sqoop.java:227)
     at org.apache.sqoop.Sqoop.main(Sqoop.java:236)
     at org.apache.oozie.action.hadoop.SqoopMain.runSqoopJob(SqoopMain.java:197)
     at org.apache.oozie.action.hadoop.SqoopMain.run(SqoopMain.java:177)
     at org.apache.oozie.action.hadoop.LauncherMain.run(LauncherMain.java:49)
    
  5. So first thing i did was to check if mysql driver is there in the oozie shared lib by executing following commands
    
    export OOZIE_URL=http://localhost:11000/oozie
    oozie admin -shareliblist sqoop
    
    I noticed that the mysql-connector-java.jar was not there in the list of shared libs for Oozie + sqoop
  6. Next step was to find the mysql-connector-java.jar in my sandbox that i could do by finding it like this
    
    sudo find / -name mysql*
    
    I found mysql-connector-java.jar on my local machine at /var/lib/sqoop/mysql-connector-java.jar
  7. I wanted to update the Oozie shared lib to include the mysql driver jar. So i executed following command to figure out the directory where the oozie sqoop shared lib is
    
    oozie admin -sharelibupdate
    
    From this output i got HDFS directory location for Oozie shared lib which is /user/oozie/share/lib/lib_20160406022812
  8. Then i used following two commands to first copy the db driver into the oozie shared lib and making sure it is accessible to other users hdfs -copyFromLocal /var/lib/sqoop/mysql-connector-java.jar /user/oozie/share/lib/sqoop/. hdfs dfs -chmod 777 /user/oozie/share/lib/sqoop/mysql-connector-java.jar
  9. Now the last step was to let Oozie know that it should reload the sharedlib and i did that by executing following two commands
    
    oozie admin -sharedlibupdate
    oozie admin -shareliblist sqoop | grep mysql*
    
    The second command queries oozie to get current list of shared jars and i could see mysql-connector-java.jar listed in it like this
When i re-executed the ooize job again this time it ran successfully.

Importing data from Sqoop into Hive External Table with Avro encoding updated

In the Importing data from Sqoop into Hive External Table with Avro encoding i had details on how you can import a table from RDBMS into Hive using Sqoop in Avro format. In that blog i went through few steps to get the avsc file, but i realized there is easier way to do it following these steps
  1. First execute the sqoop import command like this, make sure that you pass --outdir schema as parameters to the sqoop import command, what that does is it generates the CUSTOMER.avsc and CUSTOMER.java in the schema directory on your local machine
    
    sqoop import --connect jdbc:mysql://localhost/test 
    --username root 
    --password cloudera 
    --table CUSTOMER 
    --as-avrodatafile 
    --outdir schema
    
  2. You can verify that CUSTOMER.avsc file got created as you expected by executing ls -ltrA schema
  3. Next create schema directory in HDFS by executing hdfs mkdir command like this
    
    hdfs dfs -mkdir /user/cloudera/schema
    
  4. Copy the CUSTOMER.avsc from your local schema directory to HDFS in schema directory by executing following command
    
    hdfs dfs -copyFromLocal schema/CUSTOMER.avsc /user/cloudera/schema/.
    
  5. Last step is to create Hive table with CUSTOMER.avsc as schema using following command
    
    CREATE EXTERNAL TABLE CUSTOMER
    ROW FORMAT SERDE 'org.apache.hadoop.hive.serde2.avro.AvroSerDe'
    STORED AS INPUTFORMAT 'org.apache.hadoop.hive.ql.io.avro.AvroContainerInputFormat'
    OUTPUTFORMAT 'org.apache.hadoop.hive.ql.io.avro.AvroContainerOutputFormat'
    LOCATION '/user/cloudera/CUSTOMER'
    TBLPROPERTIES ('avro.schema.url'='/user/cloudera/schema/CUSTOMER.avsc');
    
Now if you go to hive and execute "SELECT * FROM CUSTOMER;" query then you should see 1 record in it like this

Writing data from Spark to ElasticSearch

ElasticSearch for Apache Hadoop project has introduced a way to directly write to ElasticSearch without going through Elastic Search OutputFormat. I wanted to try that out so i built simple application that saves output of word count into Elastic Search, you can download this project from github First thing that i had to do was to build maven pom.xml that includes org.elasticsearch.elasticsearch-hadoop version 5.0 jar. I could not find it in the regular maven repository so i had to include elasticsearch repository in my pom.xml Then this is how my Spark program looks like, the main part is line 42 where i create Map of all the properties that i need for saving this RDD into ElasticSearch and then line 43, where i am calling wordCountJson.saveToEs(esMap), which actually takes care of writing data into elasticsearch

How to use KafkaLog4jAppender for sending Log4j logs to kafka

Apache Kafka has a KafkaLog4jAppender that you can use for redirecting your Log4j log to Kafka topic. I wanted to try it out so i used following steps, you can download sample project from here First i created a simple standalone java program that use Log4j like this. As you can see this is like any other normal Java program that uses Log4j. Then in the log4j.properties file i added line 12 to 17 for using KafkaLog4jAppender, on line 13, value of brokerList property points to the Kafka server and line 14 value of topic points to the Kafka topic name to which logs should go. Now before running this program make sure that you actually have topic named kafkalogger, if not you can create using this command

bin/kafka-topics.sh --create --zookeeper localhost:2181 --replication-factor 1 --partitions 1 --topic kafkalogger
You can verify if you have topic named kafkalogger by executing following command

bin/kafka-topics.sh --list --zookeeper localhost:2181
Also you can run kafka console consumer that reads messages from Kafka and prints them to console, using following command

bin/kafka-console-consumer.sh --zookeeper localhost:2181 --topic kafkalogger
Now when you run your java program you should see messages on console like this

WordCount program using Spark DataFrame

I wanted to figure out how to write Word Count Program using Spark DataFrame API, so i followed these steps. Import org.apache.spark.sql.functions._, it includes UDF's that i need to use import org.apache.spark.sql.functions._ Create a data frame by reading README.md. When you read the file, spark will create a data frame with single column value, the content of the value column would be the line in the file

val df = sqlContext.read.text("README.md")
df.show(10,truncate=false)
Next split each of the line into words using split function. This will create a new DataFrame with words column, each words column would have array of words for that line

val wordsDF = df.select(split(df("value")," ").alias("words"))
wordsDF.show(10,truncate=false)
Next use explode transformation to convert the words array into a dataframe with word column. This is equivalent of using flatMap() method on RDD

val wordDF = wordsDF.select(explode(wordsDF("words")).alias("word"))
wordsDF.show(10,truncate=false)
Now you have data frame with each line containing single word in the file. So group the data frame based on word and count the occurrence of each word

val wordCountDF = wordDF.groupBy("word").count
wordCountDF.show(truncate=false)
This is the code you need if you want to figure out 20 top most words in the file

wordCountDF.orderBy(desc("count")).show(truncate=false)

How to use built in spark UDF's

In the i talked about how to create a custom UDF in scala for spark. But before you do that always check Spark UDF's that are available with Spark already. I have this sample Spark data frame with list of users I wanted to sort the list of users in descending order of age so i used following 2 lines, first is to import functions that are available with Spark already and then i used desc function to order age in descending order

import org.apache.spark.sql.functions._
display(userDF.orderBy(desc("age")))
Now if i wanted to sort the data frame records using age in ascending order

display(userDF.orderBy(asc("age")))
This is sample of how to use the sum() function

userDF.select(sum("age")).show

How to use built in spark UDF's

In the i talked about how to create a custom UDF in scala for spark. But before you do that always check Spark UDF's that are available with Spark already. I have this sample Spark data frame with list of users I wanted to sort the list of users in descending order of age so i used following 2 lines, first is to import functions that are available with Spark already and then i used desc function to order age in descending order

import org.apache.spark.sql.functions._
display(userDF.orderBy(desc("age")))
Now if i wanted to sort the data frame records using age in ascending order

display(userDF.orderBy(asc("age")))
This is sample of how to use the sum() function

userDF.select(sum("age")).show

How to access Hive table from Spark in MapR sandbox

I was trying to figure out how to query a hive table from spark in MapR 5.1 sandbox . So i started spark-shell and tried to query the sample_08 table and i got error saying no such table exists

scala> val sample08 = sqlContext.sql("select * from sample_08")
org.apache.spark.sql.AnalysisException: no such table sample_08; line 1 pos 14
 at org.apache.spark.sql.catalyst.analysis.package$AnalysisErrorAt.failAnalysis(package.scala:42)
 at org.apache.spark.sql.catalyst.analysis.Analyzer$ResolveRelations$.getTable(Analyzer.scala:260)
 at org.apache.spark.sql.catalyst.analysis.Analyzer$ResolveRelations$$anonfun$apply$7.applyOrElse(Analyzer.scala:268)
 at org.apache.spark.sql.catalyst.analysis.Analyzer$ResolveRelations$$anonfun$apply$7.applyOrElse(Analyzer.scala:264)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan$$anonfun$resolveOperators$1.apply(LogicalPlan.scala:57)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan$$anonfun$resolveOperators$1.apply(LogicalPlan.scala:57)
 at org.apache.spark.sql.catalyst.trees.CurrentOrigin$.withOrigin(TreeNode.scala:51)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan.resolveOperators(LogicalPlan.scala:56)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan$$anonfun$1.apply(LogicalPlan.scala:54)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan$$anonfun$1.apply(LogicalPlan.scala:54)
 at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$4.apply(TreeNode.scala:249)
 at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
 at scala.collection.Iterator$class.foreach(Iterator.scala:727)
 at scala.collection.AbstractIterator.foreach(Iterator.scala:1157)
 at scala.collection.generic.Growable$class.$plus$plus$eq(Growable.scala:48)
 at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:103)
 at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:47)
 at scala.collection.TraversableOnce$class.to(TraversableOnce.scala:273)
 at scala.collection.AbstractIterator.to(Iterator.scala:1157)
 at scala.collection.TraversableOnce$class.toBuffer(TraversableOnce.scala:265)
 at scala.collection.AbstractIterator.toBuffer(Iterator.scala:1157)
 at scala.collection.TraversableOnce$class.toArray(TraversableOnce.scala:252)
 at scala.collection.AbstractIterator.toArray(Iterator.scala:1157)
 at org.apache.spark.sql.catalyst.trees.TreeNode.transformChildren(TreeNode.scala:279)
 at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan.resolveOperators(LogicalPlan.scala:54)
 at org.apache.spark.sql.catalyst.analysis.Analyzer$ResolveRelations$.apply(Analyzer.scala:264)
 at org.apache.spark.sql.catalyst.analysis.Analyzer$ResolveRelations$.apply(Analyzer.scala:254)
 at org.apache.spark.sql.catalyst.rules.RuleExecutor$$anonfun$execute$1$$anonfun$apply$1.apply(RuleExecutor.scala:83)
 at org.apache.spark.sql.catalyst.rules.RuleExecutor$$anonfun$execute$1$$anonfun$apply$1.apply(RuleExecutor.scala:80)
 at scala.collection.LinearSeqOptimized$class.foldLeft(LinearSeqOptimized.scala:111)
 at scala.collection.immutable.List.foldLeft(List.scala:84)
 at org.apache.spark.sql.catalyst.rules.RuleExecutor$$anonfun$execute$1.apply(RuleExecutor.scala:80)
 at org.apache.spark.sql.catalyst.rules.RuleExecutor$$anonfun$execute$1.apply(RuleExecutor.scala:72)
 at scala.collection.immutable.List.foreach(List.scala:318)
 at org.apache.spark.sql.catalyst.rules.RuleExecutor.execute(RuleExecutor.scala:72)
 at org.apache.spark.sql.SQLContext$QueryExecution.analyzed$lzycompute(SQLContext.scala:932)
 at org.apache.spark.sql.SQLContext$QueryExecution.analyzed(SQLContext.scala:932)
 at org.apache.spark.sql.SQLContext$QueryExecution.assertAnalyzed(SQLContext.scala:930)
 at org.apache.spark.sql.DataFrame.(DataFrame.scala:132)
 at org.apache.spark.sql.DataFrame$.apply(DataFrame.scala:51)
 at org.apache.spark.sql.SQLContext.sql(SQLContext.scala:741)
 at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:19)
 at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:24)
 at $iwC$$iwC$$iwC$$iwC$$iwC$$iwC.(:26)
 at $iwC$$iwC$$iwC$$iwC$$iwC.(:28)
 at $iwC$$iwC$$iwC$$iwC.(:30)
 at $iwC$$iwC$$iwC.(:32)
 at $iwC$$iwC.(:34)
 at $iwC.(:36)
 at (:38)
 at .(:42)
 at .()
 at .(:7)
 at .()
 at $print()
 at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
 at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:57)
 at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
 at java.lang.reflect.Method.invoke(Method.java:606)
 at org.apache.spark.repl.SparkIMain$ReadEvalPrint.call(SparkIMain.scala:1065)
 at org.apache.spark.repl.SparkIMain$Request.loadAndRun(SparkIMain.scala:1340)
 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$1(SparkILoop.scala:665)
 at org.apache.spark.repl.SparkILoop.org$apache$spark$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$$process$1.apply(SparkILoop.scala:945)
 at scala.tools.nsc.util.ScalaClassLoader$.savingContextLoader(ScalaClassLoader.scala:135)
 at org.apache.spark.repl.SparkILoop.org$apache$spark$repl$SparkILoop$$process(SparkILoop.scala:945)
 at org.apache.spark.repl.SparkILoop.process(SparkILoop.scala:1059)
 at org.apache.spark.repl.Main$.main(Main.scala:31)
 at org.apache.spark.repl.Main.main(Main.scala)
 at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
 at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:57)
 at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
 at java.lang.reflect.Method.invoke(Method.java:606)
 at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy$SparkSubmit$$runMain(SparkSubmit.scala:674)
 at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit.scala:180)
 at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scala:205)
 at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:120)
 at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala)
When i checked the <SPARK_HOME>/conf directory i noticed that hive-site.xml was missing so i searched for hive-site.xml on the cluster i found 2 hive-site.xml but the /opt/mapr/hive/hive-1.2/conf/hive-site.xml had hive.metastore.uris property pointing to thrift://localhost:9083, so i copied it in the hive-site.xml and restarted the shell. When i execute the same query i can see the results.

scala> val sample08 = sqlContext.sql("select * from sample_08")
sample08: org.apache.spark.sql.DataFrame = [code: string, description: string, total_emp: int, salary: int]

How to use custom delimiter character while reading file in Spark

I wanted to figure out how to get spark to read text file and break it based on custom delimiter instead of '\n'. These are my notes on how to do that The Spark Input/Output is based on Mapreduce's InputFormat and OutputFormat. For example when you call SparkContext.textFile() it actually uses TextInputFormat for reading the file. Advantage of this approach is that you do everything that TextInputFormat does. For example by default when you use TextInputFormat to read file it will break the file into records based on \n character. But sometimes you might want to read the file using some other logic. Example i wanted to parse a book based on sentences instead of \n characters, so i looked into TextInputFormat code and i noticed that it takes textinputformat.record.delimiter configuration property that i could set with value equal to '.' and the TextInputFormat returns sentences instead of lines. This sample code shows how to do that Only change in this code is sparkContext.hadoopConfiguration.set("textinputformat.record.delimiter",".") that is setting up hadoop configuration property. When i used this code to parse 2city10.txt i noticed that it has 16104 lines of text but 6554 sentences.

Difference between reduce() and fold() method on Spark RDD

When you can call fold() method on the RDD it returns a different result than you normally expect, so i wanted to figure out how fold() method actually works so i built this simple application First thing that i do in the application is create a simple RDD with 8 values from 1 to 8 and divide it into 3 partitions sparkContext.parallelize(List(1,2,3,4,5,6,7,8),3). Then i am calling input.mapPartitions(mapPartition) to iterate through all the partitions in the RDD and printing records in them one by one. This shows that the RDD has 3 partitions and 1 and 2 are in first partitions 3,4,5 are in second partions and record 6,7,8 are in the third partitions. Then next step is to call input.reduce((x,y)=> add(x,y))) method that will invoke add reduce function on the RDD, as you can see the output. The reduce function simply starts calling add method first for first 2 records then it starts calling it with running count for rest of the elements in the RDD The last part is fold() method which i am calling with initial value of 10. As you can see from the output of fold() method, it first takes 10 as initial value and adds all the elements in single partitions to it. But then it also takes running counts across the RDDs adds 10 to it sums them up. Because of this, the result of fold() = (initial value * num of partitions +1) + sum of reduce

********************** mapPartitions *******************
[Stage 0:>(0 + 0) / 3]2016-02-17 10:22:13 DEBUG HelloSparkPartitions:63 - Inside mapPartition 
1
2
2016-02-17 10:22:13 DEBUG HelloSparkPartitions:63 - Inside mapPartition 
3
4
5
2016-02-17 10:22:13 DEBUG HelloSparkPartitions:63 - Inside mapPartition 
6
7
8
********************** reduce *******************
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 1, 2
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 3, 4
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 7, 5
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 3, 12
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 6, 7
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 13, 8
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 15, 21
input.reduce 36
********************** fold *******************
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 10, 1
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 11, 2
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 10, 13
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 10, 3
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 13, 4
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 17, 5
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 23, 22
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 10, 6
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 16, 7
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 23, 8
2016-02-17 10:22:13 ERROR HelloSparkPartitions:75 - Inside add -> 45, 31
input.fold 76

How to parse fillable PDF form in Java

I wanted to figure out how to parse a fillable PDF form in Java, so that i could do some processing on it. So i built this sample PDFFormParsingPOC project that uses Apache PDFBox library. This is simple java class that i built, in which i read the PDF file first and then parse it into PDDocument. Then i can get all the fields in the PDF form by calling PDDocument.getDocumentCatalog().getAcroForm().getFields() and start iterating through it. For every field that i find, first i try to figure out what is the type of the field and then use it to print the field with its name and value to console You can download the Apache PDFBox project and execute it by passing fully qualified name of the fillable PDF form and it will print out field name value pairs to console. If you dont have a pdf form already you can download Sample Fillable PDF Form

Invoking Python from Spark Scala project

When your developing your Spark code, you have option of developing it using either Scala, Java or Python. In some cases you might want to mix the languages that you want to use. I wanted to try that out so i built this simple Spark program that passes control to Python for performing transformation (All that it does it append word "python " in front of every line). You can download source code for sample project from here First thing that i did was to develop this simple python script that reads one line at a time from console, appends "Python " to the line and writes it back to standard console Now this is how the driver looks like, most of the spark code is same only difference is lines.pipe("python echo.py") which says that pass every line in the RDD to python echo.py. and collect the output. Now there is nothing specific to python here, instead you could use any executable. When you run this code in cluster you should copy the python file on your machine say in spark directory then you can execute

bin/spark-submit 
    --files echo.py  
    ScalaPython-1.0-SNAPSHOT-jar-with-dependencies.jar helloworld.txt

How to use HBase sink with Flume

I wanted to figure out how to use HBase as target for flume, so i created this sample configuration which reads events from netcat and writes them to HBase.
  1. First step is to create test table in HBase with CF1 as column family. Everytime Flume gets a event it will write to HBase in test table in CF1 column family
    
    create 'test','CF1'
    
  2. Create Flume configuration file that looks like this, I am using HBase sink with SimpleHbaseEventSerializer as Event Serializer. Note that i am assuming that this is unsecured cluster (Sandbox), but if you have secured cluster you should follow steps mentioned in Configure a Secure HBase Sink
  3. Start the Flume server with the following command
    
    bin/flume-ng agent --conf conf --conf-file conf/netcat-hbase.properties --name agent1 -Dflume.root.logger=DEBUG,console
    
  4. Now open the netcat client on port 44444 and send some messages to flume
  5. If you query HBase test table, you should see the messages that were published to netcat

Reading content of file into String in scala

One of the common requirements is to read content of a file into String, You would want to read content of config file at particular path in your program at runtime but during testing you would wan to read content of a file on class path. I built this simple class that takes has following 2 methods
  1. getFilePathContent(): This method takes full path of file and reads its content into string
  2. getResourceContent(): THis method takes relative path of a file already available on classpath and converts it into String

Hello Apache Tika

Apache Tika is nice framework that lets you extract content of file. Example you can extract content of PDF or word document or excel as string. It also lets you extract metadata about the file. For example things like when it was created, author,.. etc. I built this sample application to play with Tika You can try using it by giving it full path of the file that you want to extract.

Flume to Spark Streaming - Pull model

In this post i will demonstrate how to stream data from flume into Spark using Streaming. When it comes to Streaming data from Flume to Spark you have 2 options.
  1. Push Model: Spark listens on particular port for Avro event and flume connects to that port and publishes event
  2. Pull Model: You use special Spark Sink in flume that keeps collecting published data and Spark pulls that data at certain frequency
I built this simple configuration in which i could send event to flume on netcat, flume would take those events and send them to Spark as well as print to console.
  • First download spark-streaming-flume-sink_2.10-1.6.0.jar and copy it to flume/lib directory
  • Next create flume configuration that looks like this, as you can see, Flume is listening for netcat event on port 44444 and it is taking every event and replicating it to both logger and Spark sink. Spark sink would listen on port 9999 for Spark program to connect
  • This is how your Spark driver will look like. The Spark Flume listener gets event in avro format so you will have to call event.getBody().array() to get the event.
Once your spark and flume agents are started open netcat on port 44444 and send messages, those messages should appear in your Spark Console

Setting up local repository for maven

Before couple of days i was working with my colleague on setting up a cluster in AWS for Spark Lab. One problem we ran into is every time you start a spark build it download bunch of this dependencies(In our case around 200 MB mostly because of complexity of our dependencies). We thought if every student has to download all the dependencies it would take lot of time and cost money for network bandwidth consumption. So the way we ended up solving this issue is first we ran the maven build for first user say user1. Once that script worked we copied the /user/user01/.m2/repository folder to /opt/mavenrepo directory. Then everytime some other user ran the maven script they pointed to the existing directory on that machine and use the dependencies that are already downloaded.

mvn package -Dmaven.repo.local=/opt/mavenrepo/repository

Monitoring HDFS directory for new files using Spark Streaming

I wanted to build this simple Spark Streaming application that monitors a particular directory in HDFS and whenever a new file shows up, i want to print its content to Console. I built this HDFSFileStream.scala. In this program after creating a SparkStreamContext. I am calling sparkStreamingContext.textFileStream(<directoryName>) on it. Once a new file appears in the directory the value of fileRDD.count() would return more than 0 and then i invoke processNewFile(). The processNewFile() method takes a RDD[String], iterates through the file content and prints it to console Next start the program by executing following code bin/spark-submit ~/HelloSparkStreaming-1.0-SNAPSHOT-jar-with-dependencies.jar /user/mapr/stream 3 Once the streaming started it starts monitoring /user/mapr/stream directory, for new content. I copied a file with few lines in it and i got the following output, which is content of the file

Problem with scala version mismatch in Spark application

I was developing a spark program on my machine and it worked ok. But when i tried to deploy it in Spark running in my Hadoop sandbox i started getting this error

java.lang.NoSuchMethodError: scala.runtime.IntRef.create(I)Lscala/runtime/IntRef;
 at com.spnotes.enrich.CSVFieldEnricher.enrich(CSVFieldEnricher.scala:31)
 at com.spnotes.PMDriver$$anonfun$1$$anonfun$apply$2.apply(PMDriver.scala:59)
 at com.spnotes.PMDriver$$anonfun$1$$anonfun$apply$2.apply(PMDriver.scala:58)
 at scala.collection.immutable.List.foreach(List.scala:318)
 at scala.collection.generic.TraversableForwarder$class.foreach(TraversableForwarder.scala:32)
 at scala.collection.mutable.ListBuffer.foreach(ListBuffer.scala:45)
 at com.spnotes.PMDriver$$anonfun$1.apply(PMDriver.scala:58)
 at com.spnotes.PMDriver$$anonfun$1.apply(PMDriver.scala:56)
 at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
 at org.apache.spark.util.Utils$.getIteratorSize(Utils.scala:1469)
 at org.apache.spark.rdd.RDD$$anonfun$count$1.apply(RDD.scala:1006)
 at org.apache.spark.rdd.RDD$$anonfun$count$1.apply(RDD.scala:1006)
 at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1498)
 at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1498)
 at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:61)
 at org.apache.spark.scheduler.Task.run(Task.scala:64)
 at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:203)
 at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1145)
 at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:615)
 at java.lang.Thread.run(Thread.java:745)
16/01/05 13:03:53 ERROR SparkUncaughtExceptionHandler: Uncaught exception in thread Thread[Executor task launch worker-0,5,main]
java.lang.NoSuchMethodError: scala.runtime.IntRef.create(I)Lscala/runtime/IntRef;
 at com.spnotes.enrich.CSVFieldEnricher.enrich(CSVFieldEnricher.scala:31)
 at com.spnotes.PMDriver$$anonfun$1$$anonfun$apply$2.apply(PMDriver.scala:59)
 at com.spnotes.PMDriver$$anonfun$1$$anonfun$apply$2.apply(PMDriver.scala:58)
 at scala.collection.immutable.List.foreach(List.scala:318)
 at scala.collection.generic.TraversableForwarder$class.foreach(TraversableForwarder.scala:32)
 at scala.collection.mutable.ListBuffer.foreach(ListBuffer.scala:45)
 at com.spnotes.PMDriver$$anonfun$1.apply(PMDriver.scala:58)
 at com.spnotes.PMDriver$$anonfun$1.apply(PMDriver.scala:56)
 at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
 at org.apache.spark.util.Utils$.getIteratorSize(Utils.scala:1469)
 at org.apache.spark.rdd.RDD$$anonfun$count$1.apply(RDD.scala:1006)
 at org.apache.spark.rdd.RDD$$anonfun$count$1.apply(RDD.scala:1006)
 at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1498)
 at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1498)
 at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:61)
 at org.apache.spark.scheduler.Task.run(Task.scala:64)
 at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:203)
 at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1145)
 at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:615)
 at java.lang.Thread.run(Thread.java:745)
So it seems the problem is you need to use same version of Scala for compiling your code as the Scala used by Spark. In my case i was using scala 2.11 for compiling my code and Spark 1.3.1 uses Scala 2.10.4. So i changed the build file and then rebuilt the code and deployed it. That fixed the issue

Spark error class "javax.servlet.FilterRegistration"'s signer information does not match signer information of other classes in the same package

I had this Spark Program that was working from both IDE and when i built a .jar file and deployed it in Spark. But it suddenly stopped working in IDE, whenever i tried executing in IDE, i was following error

16/01/05 14:34:50 INFO SparkEnv: Registering OutputCommitCoordinator
Exception in thread "main" java.lang.SecurityException: class "javax.servlet.FilterRegistration"'s signer information does not match signer information of other classes in the same package
 at java.lang.ClassLoader.checkCerts(ClassLoader.java:895)
 at java.lang.ClassLoader.preDefineClass(ClassLoader.java:665)
 at java.lang.ClassLoader.defineClass(ClassLoader.java:758)
 at java.security.SecureClassLoader.defineClass(SecureClassLoader.java:142)
 at java.net.URLClassLoader.defineClass(URLClassLoader.java:467)
 at java.net.URLClassLoader.access$100(URLClassLoader.java:73)
 at java.net.URLClassLoader$1.run(URLClassLoader.java:368)
 at java.net.URLClassLoader$1.run(URLClassLoader.java:362)
 at java.security.AccessController.doPrivileged(Native Method)
 at java.net.URLClassLoader.findClass(URLClassLoader.java:361)
 at java.lang.ClassLoader.loadClass(ClassLoader.java:424)
 at sun.misc.Launcher$AppClassLoader.loadClass(Launcher.java:331)
 at java.lang.ClassLoader.loadClass(ClassLoader.java:357)
 at org.spark-project.jetty.servlet.ServletContextHandler.(ServletContextHandler.java:136)
 at org.spark-project.jetty.servlet.ServletContextHandler.(ServletContextHandler.java:129)
 at org.spark-project.jetty.servlet.ServletContextHandler.(ServletContextHandler.java:98)
 at org.apache.spark.ui.JettyUtils$.createServletHandler(JettyUtils.scala:101)
 at org.apache.spark.ui.JettyUtils$.createServletHandler(JettyUtils.scala:92)
 at org.apache.spark.ui.WebUI.attachPage(WebUI.scala:78)
 at org.apache.spark.ui.WebUI$$anonfun$attachTab$1.apply(WebUI.scala:62)
 at org.apache.spark.ui.WebUI$$anonfun$attachTab$1.apply(WebUI.scala:62)
 at scala.collection.mutable.ResizableArray$class.foreach(ResizableArray.scala:59)
 at scala.collection.mutable.ArrayBuffer.foreach(ArrayBuffer.scala:48)
 at org.apache.spark.ui.WebUI.attachTab(WebUI.scala:62)
 at org.apache.spark.ui.SparkUI.initialize(SparkUI.scala:50)
 at org.apache.spark.ui.SparkUI.(SparkUI.scala:61)
 at org.apache.spark.ui.SparkUI$.create(SparkUI.scala:151)
 at org.apache.spark.ui.SparkUI$.createLiveUI(SparkUI.scala:106)
 at org.apache.spark.SparkContext.(SparkContext.scala:300)
 at com.mapr.QS.PMDriver$.main(PMDriver.scala:32)
 at com.mapr.QS.PMDriver.main(PMDriver.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:497)
 at com.intellij.rt.execution.application.AppMain.main(AppMain.java:144)

Process finished with exit code 1
So the problem it seems is that order of javax.servlet:servlet-api.jar was wrong. I opened the Project setting and moved the dependency jar to the end of the list and it started working. This is the screen shot of Intellij settings
This is screen shot of how to achieve same thing in Eclipse

How to use Hadoop's InputFormat and OutputFormat in Spark

One of the things that i like about Spark is, that it allows you to use you MapReduce based InputFormat and OutputFormats for reading from and writing to. I wanted to try this i built the InputFormatOutputDriver class, that uses TextInputFormat for reading a file. Then uses that input to perform word count and finally uses TextOutputFormat for storing output As you can see most of the code is similar to WordCount program built using Apache Spark in Java , with difference that this is written in scala and following 2 lines When you want to use Hadoop API for reading data you should use sparkContext.newAPIHadoopFile() method, i am using version of the method that takes 4 parameters. First is path of input file, second parameter is the InputFormat class you want to use (I want to read file as Key - Value pair so i am using KeyValueTextInputFormat), then the next parameters is type of Key and Type of value, its Text for both key and value in my example and the last. Spark will read the file into a PairRDD[Text,Text], since i am only interested in the content of the file i am iterating through the keys and converting them from Text to String

val lines = sparkContext.newAPIHadoopFile(inputFile,classOf[KeyValueTextInputFormat], 
classOf[Text],classOf[Text]).keys.map(lineText => lineText.toString)
Once i have RDD[String] i can perform wordcount with it. But once the results are ready i am calling wordCountRDD.saveAsNewAPIHadoopFile() for storing data in Hadoop using TextOutputFormat.

wordCountRDD.saveAsNewAPIHadoopFile(outputFile,classOf[Text],classOf[IntWritable],
classOf[TextOutputFormat[Text,IntWritable]])

How to use ZooInsepector

The Zookeeper has a ZooInspector GUI that you can use for inspecting your zNode structure, you can use it with these steps
  1. First go to the ZooInsepector directory (I am assuming that you already have ZooKeeper on your machine, if not download it from Zookeeper home page)
    
    cd <ZOOKEEPER_HOME>/contrib/ZooInspector
    
  2. You can start the ZooInspector by using following command which makes sure that the necessary jars are on the classpath
    
    java -cp ../../lib/*:lib/*:zookeeper-3.4.7-ZooInspector.jar:../../zookeeper-3.4.7.jar org.apache.zookeeper.inspector.ZooInspector
    
  3. Once the ZooInspector started enter URL of the Zookeeper that you want to inspect
  4. Once ZooInspector will show you the zNode hierarchy on that server