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I am new to spark, i have gone through spark doc. From my little knowledge i infer we shall pass any file and traverse it line by line and filter with some criteria (like line contains key word "ERROR") One can find the total count of lines as well as the sub RDD which contains filtered content Also we can find word count, pagerank and etc.. They all handle only with one criteria

I want to use group-by & reduce to find the following from csv (one line by employed)

 Department, Designation, costToCompany, State
  Sales, Trainee, 12000, UP
  Sales, Lead, 32000, AP
  Sales, Lead, 32000, LA
  Sales, Lead, 32000, TN
  Sales, Lead, 32000, AP
  Sales, Lead, 32000, TN 
  Sales, Lead, 32000, LA
  Sales, Lead, 32000, LA
  Marketing, Associate, 18000, TN
  Marketing, Associate, 18000, TN
  HR, Manager, 58000, TN

I would like to simplify the about csv with group by Department,Designation,State with additional columns with sum(costToCompany) and TotalEmployeeCount

Should get result like

 Dept, Desg, state, empCount, totalCost
  Sales,Lead,AP,2,64000
  Sales,Lead,LA,3,96000  
  Sales,Lead,TN,2,64000

Is there anyway to achieve this using transformations and actions.. Or we should go for

https://spark.apache.org/docs/latest/sql-programming-guide.html#rdds

Any Help is much appreciated.

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could you please organize the CSV blocks (input and result) in order to separate clearly between the headers and each single line? It's not clear right now where a line starts or ends. –  emecas Aug 18 at 12:57
    
Made changes, any help is much appreciated! –  mithra Aug 18 at 13:28

3 Answers 3

up vote 3 down vote accepted

Procedure

  • Create a Class (Schema) to encapsulate your structure (it’s not required for the approach B, but it would make your code easier to read if you are using Java)

    public class Record implements Serializable {
      String department;
      String designation;
      long costToCompany;
      String state;
      // constructor , getters and setters  
    }
    
  • Loading CVS (JSON) file

    JavaSparkContext sc;
    JavaRDD<String> data = sc.textFile("path/input.csv");
    JavaSQLContext sqlContext = new JavaSQLContext(sc);
    
    JavaRDD<Record> rdd_records = sc.textFile(data).map(
      new Function<String, Record>() {
          public Record call(String line) throws Exception {
             // Here you can use JSON
             // Gson gson = new Gson();
             // gson.fromJson(line, Record.class);
             String[] fields = line.split(",");
             Record sd = new Record(fields[0], fields[1], fields[2].trim(), fields[3]);
             return sd;
          }
    });
    

At this point you have 2 approaches:

A. SparkSQL

  • Register a table (using the your defined Schema Class)

    JavaSchemaRDD table = sqlContext.applySchema(rdd_records, Record.class);
    table.registerAsTable("record_table");
    table.printSchema();
    
  • Query the table with your desired Query-group-by

    JavaSchemaRDD res = sqlContext.sql("
      select department,designation,state,sum(costToCompany),count(*) 
      from record_table 
      group by department,designation,state
    ");
    
  • Here you would also be able to do any other query you desire, using a SQL approach

B. Spark

  • Mapping using a composite key: Department,Designation,State

    JavaPairRDD<String, Tuple2<Long, Integer>> records_JPRDD = 
    rdd_records.mapToPair(new
      PairFunction<Record, String, Tuple2<Long, Integer>>(){
        public Tuple2<String, Tuple2<Long, Integer>> call(Record record){
          Tuple2<String, Tuple2<Long, Integer>> t2 = 
          new Tuple2<String, Tuple2<Long,Integer>>(
            record.Department + record.Designation + record.State,
            new Tuple2<Long, Integer>(record.costToCompany,1)
          );
          return t2;
    }
    

    });

  • reduceByKey using the composite key, summing costToCompany column, and accumulating the number of records by key

    JavaPairRDD<String, Tuple2<Long, Integer>> final_rdd_records = 
     records_JPRDD.reduceByKey(new Function2<Tuple2<Long, Integer>, Tuple2<Long,
     Integer>, Tuple2<Long, Integer>>() {
        public Tuple2<Long, Integer> call(Tuple2<Long, Integer> v1,
        Tuple2<Long, Integer> v2) throws Exception {
            return new Tuple2<Long, Integer>(v1._1 + v2._1, v1._2+ v2._2);
        }
    });
    
share|improve this answer
1  
Updated, I've included example codes for both approaches using Spark Java API. –  emecas Aug 19 at 11:43
1  
I can't believe how verbose the Java API is - it's almost hysterical :D –  jkgeyti Aug 19 at 18:36
    
That's JAVA, about 20 years ago people enjoy being more verbose, how frequent and small details gave entertainment to our lives lol. The new version 8 comes with some 'improvement' by including a functional approach. Be careful about the hysterical: D –  emecas Aug 20 at 1:53
    
The Record class is in the post. –  jkgeyti Aug 20 at 9:15
    
@emecas I tried sparkSQL it was successful, then i tried the other B methord i am getting error at final_rdd_records (line 149) org.apache.maven.lifecycle.LifecycleExecutionException: Failed to execute goal org.apache.maven.plugins:maven-compiler-plugin:2.5.1:compile (default-compile) on project simple-project: Compilation failure /Volumes/Official/spark-1.0.2-bin-hadoop2/try/simple-project/src/main/java/Simpl‌​‌​eApp.java:[149,96] error: cannot find symbol –  mithra Aug 21 at 10:20

The following might not be entirely correct, but it should give you some idea of how to juggle data. It's not pretty, should be replaced with case classes etc, but as a quick example of how to use the spark api, I hope it's enough :)

val rawlines = sc.textfile("hdfs://.../*.csv")
case class Employee(dep: String, des: String, cost: Double, state: String)
val employees = rawlines
  .map(_.split(",") /*or use a proper CSV parser*/
  .map( Employee(row(0), row(1), row(2), row(3) )

# the 1 is the amount of employees (which is obviously 1 per line)
val keyVals = employees.map( em => (em.dep, em.des, em.state), (1 , em.cost))

val results = keyVals.reduceByKey{ a,b =>
    (a._1 + b._1, b._1, b._2) # (a.count + b.count , a.cost + b.cost )
}

#debug output
results.take(100).foreach(println)

results
  .map( keyval => someThingToFormatAsCsvStringOrWhatever )
  .saveAsTextFile("hdfs://.../results")

Or you can use SparkSQL:

val sqlContext = new SQLContext(sparkContext)

# case classes can easily be registered as tables
employees.registerAsTable("employees")

val results = sqlContext.sql("""select dep, des, state, sum(cost), count(*) 
  from employees 
  group by dep,des,state"""
share|improve this answer
    
thanks for you swift response, i want a group by result, like for ex in mysql select Dept,designation,state,sum(costToCompany) from employeeTable group by Dept,Designation,state; not just for one dept like sales –  mithra Aug 19 at 5:12
    
Then simply skip the filter step. I've updated the code accordingly. The goal is to convert lines into key-value elements, where the key contains the identifier you want to group by, and the value contains the values you want to reduce. In this case, we group things by department,designation and state, and we want to sum up the count of employees, together with the cost, so those are the values. –  jkgeyti Aug 19 at 7:30
    
Thankyou Thanks a lot, i shall try it. You saved my day! –  mithra Aug 19 at 9:14

For JSON, if your text file contains one JSON object per line, you can use sqlContext.jsonFile(path) to let Spark SQL load it as a SchemaRDD (the schema will be automatically inferred). Then, you can register it as a table and query it with SQL. You can also manually load the text file as an RDD[Stirng] containing one JSON object per record and use sqlContext.jsonRDD(rdd) to turn it as a SchemaRDD. jsonRDD is useful when you need to do pre-process on your data.

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