home <- "/usr/hdp/current/spark-client"
sc <- spark_connect(master = "yarn-client", spark_home = home, version = "1.6.2")
readFromSpark <- spark_read_csv(sc, name="test", path ="hdfs://hostname/user/test.csv",header=TRUE)

I already successfully access hdfs using sparklyr. But how to access hive table/command using sparklyr because I need to store this df into hive.

  • Try with this: df_tbl <- copy_to(sc, readFromSpark, "yourTableName") – Jaime Caffarel Apr 7 '17 at 16:58
  • @JaimeCaffarel i dont want to put that df as df_tbl. I want to save readFromSpark into hive table, i need to create database,table then i can put readFromSpark into hive. – FlyingTurtle Apr 8 '17 at 2:13

AFAIK, sparklyr doesn't have the function to create database/table directly. But you can use DBI to create database/table.

iris_preview <- dbExecute(sc, "CREATE EXTERNAL TABLE...")
  • Great, but how do you put a sdf that's been registered or a sdf that's been cached using tbl_cache into Hive as the EXTERNAL TABLE that you're suggesting here? I don't see any instructions for creating a table using a local object that sparklyr and dplyr can manipulate in memory. – quickreaction Jun 24 '17 at 4:58

You can try spark_write_table:

    '<database_name>.readFromSpark', mode = 'overwrite')

If you're also creating schema, you can use DBI package:

    dbSendQuery(sc,"CREATE SCHEMA IF NOT EXISTS xyz")

This is how I achieve this:

The setup:

cc <- RxSpark(nameNode = hdfs_host(myADL))

myXDFname <- 'something'
hivTbl <- RxHiveData(table = myXDFname)

sc <- spark_connect('yarn-client')

tbl_cache(sc, myXDFname)
mytbl <- tbl(sc, myXDFname)

Now do something with it

mytbl %>% head

mytbl %>% 
   filter(rlike(<txt col>, pattern)) %>%
   group_by(something) %>%
   tally() %>%
   collect() %>% #this is important
   ggplot(., aes(...)) %>%

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