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HBase RDD

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This project allows to connect Apache Spark to HBase. Currently it is compiled with Scala 2.10, using the versions of Spark and HBase available on CDH5.1. Version 0.2.2-SNAPSHOT of this project works on CDH5.0. Other combinations of versions will be made available in the future.

Table of contents

Installation

This guide assumes you are using SBT. Usage of similar tools like Maven or Leiningen should work with minor differences as well.

HBase RDD can be added as a dependency in sbt with:

dependencies += "eu.unicredit" %% "hbase-rdd" % "0.4.1"

Currently, the project depends on the following artifacts:

"org.apache.spark" %% "spark-core" % "1.2.0" % "provided",
"org.apache.hbase" % "hbase-common" % "0.98.6-cdh5.3.1" % "provided",
"org.apache.hbase" % "hbase-client" % "0.98.6-cdh5.3.1" % "provided",
"org.apache.hbase" % "hbase-server" % "0.98.6-cdh5.3.1" % "provided",
"org.json4s" %% "json4s-jackson" % "3.2.11" % "provided"

All dependencies appear with provided scope, so you will have to either have these dependencies in your project, or have the corresponding artifacts available locally in your cluster. Most of them are available in the Cloudera repositories, which you can add with the following line:

resolvers ++= Seq(
  "Cloudera repos" at "https://repository.cloudera.com/artifactory/cloudera-repos",
  "Cloudera releases" at "https://repository.cloudera.com/artifactory/libs-release"
)

Usage

Preliminary

First, add the following import to get the necessary implicits:

import unicredit.spark.hbase._

Then, you have to give configuration parameters to connect to HBase. This is done by providing an implicit instance of unicredit.spark.hbase.HBaseConfig. This can be done in a few ways, in increasing generality.

With hbase-site.xml

If you happen to have on the classpath hbase-site.xml with the right configuration parameters, you can just do

implicit val config = HBaseConfig()

Otherwise, you will have to configure HBase RDD programmatically.

With a case class

The easiest way is to have a case class having two string members quorum and rootdir. Then, something like the following will work

case class Config(
  quorum: String,
  rootdir: String,
  ... // Possibly other parameters
)
val c = Config(...)
implicit val config = HBaseConfig(c)

With a map

In order to customize more parameters, one can provide a sequence of (String, String), like

implicit val config = HBaseConfig(
  "hbase.rootdir" -> "...",
  "hbase.zookeeper.quorum" -> "...",
  ...
)

With a Hadoop configuration object

Finally, HBaseConfig can be instantiated from an existing org.apache.hadoop.conf.Configuration

val conf: Configuration = ...
implicit val config = HBaseConfig(conf)

A note on types

In HBase, every data, including tables and column names, is stored as an Array[Byte]. For simplicity, we assume that all table, column and column family names are actually strings.

The content of the cells, on the other hand, can have any type that can be converted to and from Array[Byte]. In order to do this, we have defined two traits under unicredit.spark.hbase:

trait Reads[A] { def read(data: Array[Byte]): A }
trait Writes[A] { def write(data: A): Array[Byte] }

Methods that read a type A from HBase will need an implicit Reads[A] in scope, and symmetrically methods that write to HBase require an implicit Writes[A].

By default, we provide implicit readers and writers for String, org.json4s.JValue and the quite trivial Array[Byte].

Reading from HBase

Some methods are added to SparkContext in order to read from HBase.

If you know which columns to read, then you can use sc.read(). Assuming the columns cf1:col1, cf1:col2 and cf2:col3 in table t1 are to be read, and that the content is serialized as an UTF-8 string, then one can do

val table = "t1"
val columns = Map(
  "cf1" -> Set("col1", "col2"),
  "cf2" -> Set("col3")
)
val rdd = sc.hbase[String](table, columns)

In general, sc.hbase[A] has a type parameter which represents the type of the content of the cells, and it returns a RDD[(String, Map[String, Map[String, A]])]. Each element of the resulting RDD is a key/value pair, where the key is the rowkey from HBase and the value is a nested map which associates column family and column to the value. Missing columns are omitted from the map, so for instance one can project the above on the col2 column doing something like

rdd.flatMap({ case (k, v) =>
  v("cf1") get "col2" map { col =>
    k -> col
  }
  // or equivalently
  // Try(k -> v("cf1")("col2")).toOption
})

A second possibility is to get the whole column families. This can be useful if you do not know in advance which will be the column names. You can do this with the method sc.hbaseFull[A], like

val table = "t1"
val families = Set("cf1", "cf2")
val rdd = sc.hbase[String](table, families)

The output, like sc.hbase[A], is a RDD[(String, Map[String, Map[String, A]])].

Finally, there is a lower level access to the raw org.apache.hadoop.hbase.client.Result instances. For this, just do

val table = "t1"
val rdd = sc.hbase(table)

The return value of sc.hbase (note that in this case there is no type parameter) is a RDD[(String, Result)]. The first element is the rowkey, while the second one is an instance of org.apache.hadoop.hbase.client.Result, so you can use the raw HBase API to query it.

Writing to HBase

In order to write to HBase, some methods are added on certain types of RDD.

The first one is parallel to the way you read from HBase. Assume you have an RDD[(String, Map[String, Map[String, A]])] and there is a Writes[A] in scope. Then you can write to HBase with the method tohbase, like

val table = "t1"
val rdd: RDD[(String, Map[String, Map[String, A]])] = ...
rdd.tohbase(table)

A simplified form is available in the case that one only needs to write on a single column family. Then a similar method is available on RDD[(String, Map[String, A])], which can be used as follows

val table = "t1"
val cf = "cf1"
val rdd: RDD[(String, Map[String, A])] = ...
rdd.tohbase(table, cf)

Bulk load to HBase, using HFiles

In case of massive writing to HBase, writing Put objects directly into the table can be inefficient and can cause HBase to be unresponsive (e.g. it can trigger region splitting). A better approach is to create HFiles instead, and than call LoadIncrementalHFiles job to move them to HBase's file system. Unfortunately this approach is quite cumbersome, as it implies the following steps:

  1. Make sure the table exists and has region splits so that rows are evenly distributed into regions (for better performance).

  2. Implement and execute a map (and reduce) job to write ordered Put or KeyValue objects to HFile files, using HFileOutputFormat2 output format. The reduce phase is configured behind the scenes with a call to HFileOutputFormat2.configureIncrementalLoad.

  3. Execute LoadIncrementalHFiles job to move HFile files to HBase's file system.

  4. Cleanup temporary files and folders

Now you can perform steps 2 to 4 with a call to loadToHBase, like

val table = "t1"
val cf = "cf1"
val rdd: RDD[(K, Map[C, V])] = ...
rdd.loadToHBase(table, cf)

or, if you have a fixed set of columns, like

val table = "t1"
val cf = "cf1"
val headers: Seq[String] = ...
val rdd: RDD[(K, Seq[V])] = ...
rdd.loadToHBase(table, cf, headers)

where headers are column names for Seq[V] values. The only limitation is that you can work with only one column family.

But what about step 1? For this, prepareTable comes to the rescue. If your input data is a tsv file on Hdfs, you can write

if (prepareTable(table, cf, input_path, region_size, header, takeSnapshot = false)) {

  ...

  rdd.loadToHBase(table, cf, headers)
}

where input_path is the path to the file, region_size is the desired size of regions, represented as a number followed by B, K, M, G ("10G" is a good value), header is the name of the row key field (for tsv with headers, it can be null otherwise), set takeSnapshot to true if you want to take a snapshot of the existing table before loading new data. More generally, you can use instead

if (prepareTable(table, cf, keys, splitsCount, takeSnapshot = false)) {

  ...

  rdd.loadToHBase(table, cf, headers)
}

where keys is an RDD[String] containing all the row keys and splitCount the number of splits that you want for a new table (that you must compute in some way) and it is not relevant if the table exists.

prepareTable verifies that, if the table exists, it contains the desired column family (returns false otherwise), and optionally takes a snapshot of the table. If table does not exist, it computes a list of split keys and creates a new table with these splits and the desired column family.

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Spark RDD to read and write from HBase

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