In Apache Spark, a Dataset is a distributed collection of data. The Dataset is a new interface added since Spark 1.6. It provides the benefits of RDDs with the benefits of Spark SQL's execution engine. A Dataset can be constructed from JVM objects and then manipulated using functional transformations (map, flatMap, filter, and so on). The Dataset API is available only for in Scala and Java. It is not available for Python or R.
A DataFrame is a dataset with named columns. It is equivalent to a table in a relational database or a data frame in R/Python, with richer optimizations. DataFrame is constructed from structured data files, tables in Hive, external databases, or existing RDDs. The DataFrame API is available in Scala, Python, Java, and R.
A Spark DataFrame needs the Spark session instantiated first:
import org.apache.spark.sql.SparkSession
val spark = SparkSession.builder().appName("Spark SQL").config("spark.some.config.option", "").getOrCreate()
import spark.implicits._
Next, we create a DataFrame from a Json file using the spark.read.json function:
scala> val df = spark.read.json("/home/ubuntu/work/ml-resources
/spark-ml/Chapter_01/data/example_one.json")
Note that Spark Implicits are being used to implicitly convert RDD to Data Frame types:
org.apache.spark.sql
Class SparkSession.implicits$
Object org.apache.spark.sql.SQLImplicits
Enclosing class: SparkSession
Implicit methods available in Scala for converting common Scala objects into DataFrames.
Output will be similar to the following listing:
df: org.apache.spark.sql.DataFrame = [address: struct<city:
string, state: string>, name: string]
Now we want to see how this is actually loaded in the DataFrame:
scala> df.show
+-----------------+-------+
| address| name|
+-----------------+-------+
| [Columbus,Ohio]| Yin|
|[null,California]|Michael|
+-----------------+-------+