I have a dataframe and I want to insert it into hbase. I follow this documenation .

This is how my dataframe look like:

|id | name | address |
|23 |marry |france   |
|87 |zied  |italie   |

I create a hbase table using this code:

val tableName = "two"
val conf = HBaseConfiguration.create()
if(!admin.isTableAvailable(tableName)) {
          val tableDesc = new HTableDescriptor(tableName)
          tableDesc.addFamily(new HColumnDescriptor("z1".getBytes()))
          print("Table already exists!!--------------------------------------------------------------------------------------")

And now how may I insert this dataframe into hbase ?

In another example I succeed to insert into hbase using this code:

val myTable = new HTable(conf, tableName)
    for (i <- 0 to 1000) {
      var p = new Put(Bytes.toBytes(""+i))
      p.add("z1".getBytes(), "name".getBytes(), Bytes.toBytes(""+(i*5)))
      p.add("z1".getBytes(), "age".getBytes(), Bytes.toBytes("2017-04-20"))
      p.add("z2".getBytes(), "job".getBytes(), Bytes.toBytes(""+i))
      p.add("z2".getBytes(), "salary".getBytes(), Bytes.toBytes(""+i))

But now I am stuck, how to insert each record of my dataframe into my hbase table.

Thank you for your time and attention

  • The problem is not clear. You are doing something else. hbase.apache.org/book.html#_sparksql_dataframes tells you to define catalog and use in sc.parallelize(data).toDF.write.options to save DF to HBase. – Bambaleylo May 22 '17 at 11:48
  • yes and mention that i'm using that documentation. i am stuck here val data = (0 to 255).map { i => HBaseRecord(i, "extra")} how to insert foreach record of my dataframe not from 0 to 255 – Zied Hermi May 22 '17 at 11:53

using answer for code formatting purposes Doc tells:

 Map(HBaseTableCatalog.tableCatalog -> catalog, HBaseTableCatalog.newTable -> "5"))
 .format("org.apache.hadoop.hbase.spark ")

where sc.parallelize(data).toDF is your DataFrame. Doc example turns scala collection to dataframe using sc.parallelize(data).toDF

You already have your DataFrame, just try to call

     Map(HBaseTableCatalog.tableCatalog -> catalog, HBaseTableCatalog.newTable -> "5"))
     .format("org.apache.hadoop.hbase.spark ")

And it should work. Doc is pretty clear...


Given a DataFrame with specified schema, above will create an HBase table with 5 regions and save the DataFrame inside. Note that if HBaseTableCatalog.newTable is not specified, the table has to be pre-created.

It's about data partitioning. Each HBase table can have 1...X regions. You should carefully pick number of regions. Low regions number is bad. High region numbers is also bad.

  • thank you for your answer; may you explain this line: HBaseTableCatalog.newTable -> "5" – Zied Hermi May 22 '17 at 13:39
  • Updated answer, see above. 5, means create 5 regions for table in HBase – Bambaleylo May 22 '17 at 13:47
  • and where is the catalog defined ? case class HBaseRecord( col0: String, col1: String, col2: String ) object HBaseRecord{ def apply(i: Int, t: String): HBaseRecord = { val s = s"""row${"%03d".format(i)}""" HBaseRecord(s, s"String$i: $t", s"String$i: $t") } } what to do after? thank you – Zied Hermi May 22 '17 at 14:38
  • hbase.apache.org/book.html#_define_catalog. You should do similar things – Bambaleylo May 22 '17 at 20:33
  • after adding the script object HBaseRecord .i got this error error: too many arguments for method apply: (i: Int, t: String)HBaseRecord in object HBaseRecord <console>:1: error: ';' expected but 'for' found. may you explaine me this error – Zied Hermi Jun 6 '17 at 11:03

An alternate is to look at rdd.saveAsNewAPIHadoopDataset, to insert the data into the hbase table.

def main(args: Array[String]): Unit = {

    val spark = SparkSession.builder().appName("sparkToHive").enableHiveSupport().getOrCreate()
    import spark.implicits._

    val config = HBaseConfiguration.create()
    config.set("hbase.zookeeper.quorum", "ip's")
    config.set(TableInputFormat.INPUT_TABLE, "tableName")

    val newAPIJobConfiguration1 = Job.getInstance(config)
    newAPIJobConfiguration1.getConfiguration().set(TableOutputFormat.OUTPUT_TABLE, "tableName")

    val df: DataFrame  = Seq(("foo", "1", "foo1"), ("bar", "2", "bar1")).toDF("key", "value1", "value2")

    val hbasePuts= df.rdd.map((row: Row) => {
      val  put = new Put(Bytes.toBytes(row.getString(0)))
      put.addColumn(Bytes.toBytes("cf1"), Bytes.toBytes("value1"), Bytes.toBytes(row.getString(1)))
      put.addColumn(Bytes.toBytes("cf2"), Bytes.toBytes("value2"), Bytes.toBytes(row.getString(2)))
      (new ImmutableBytesWritable(), put)


Ref : https://sparkkb.wordpress.com/2015/05/04/save-javardd-to-hbase-using-saveasnewapihadoopdataset-spark-api-java-coding/

  • if you want to save to a table shouldn't it be config.set(TableInputFormat.OUPUT_TABLE, "tableName") – Kailegh May 21 '18 at 8:55
  • The TableOutputFormat here used is an HBase class file. hbase.apache.org/apidocs/org/apache/hadoop/hbase/mapreduce/… Because we would like to push data to HBase table , we are setting the TableOutputFormat. TableInputFormat would have INPUT_TABLE which could be used in case we are extracting the data out of HBase. – varun r May 28 '18 at 12:40

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