I'm just wondering what is the difference between an
DataFrame (Spark 2.0.0 DataFrame is a mere type alias for
Dataset[Row]) in Apache Spark?
Can you convert one to the other?
DataFrame is defined well with a google search for "DataFrame definition":
A data frame is a table, or two-dimensional array-like structure, in which each column contains measurements on one variable, and each row contains one case.
DataFrame has additional metadata due to its tabular format, which allows Spark to run certain optimizations on the finalized query.
RDD, on the other hand, is merely a Resilient Distributed Dataset that is more of a blackbox of data that cannot be optimized as the operations that can be performed against it, are not as constrained.
However, you can go from a DataFrame to an
RDD via its
rdd method, and you can go from an
RDD to a
DataFrame (if the RDD is in a tabular format) via the
In general it is recommended to use a
DataFrame where possible due to the built in query optimization.
First thing is
DataFramewas evolved from
Yes.. conversion between
RDD is absolutely possible.
Below are some sample code snippets.
Below are some of options to create dataframe.
yourrddOffrow.toDF converts to
createDataFrame of sql context
val df = spark.createDataFrame(rddOfRow, schema)
where schema can be from some of below options as described by nice SO post..
From scala case class and scala reflection api
import org.apache.spark.sql.catalyst.ScalaReflection val schema = ScalaReflection.schemaFor[YourScalacaseClass].dataType.asInstanceOf[StructType]
import org.apache.spark.sql.Encoders val mySchema = Encoders.product[MyCaseClass].schema
as described by Schema can also be created using
val schema = new StructType() .add(StructField("id", StringType, true)) .add(StructField("col1", DoubleType, true)) .add(StructField("col2", DoubleType, true)) etc...
RDD(Resilient Distributed Dataset) API has been in Spark since the 1.0 release.
RDDAPI provides many transformation methods, such as
reduce() for performing computations on the data. Each of these methods results in a new
RDDrepresenting the transformed data. However, these methods are just defining the operations to be performed and the transformations are not performed until an action method is called. Examples of action methods are
rdd.filter(_.age > 21) // transformation .map(_.last)// transformation .saveAsObjectFile("under21.bin") // action
Example: Filter by attribute with RDD
rdd.filter(_.age > 21)
Spark 1.3 introduced a new
DataFrameAPI as part of the Project Tungsten initiative which seeks to improve the performance and scalability of Spark. The
DataFrameAPI introduces the concept of a schema to describe the data, allowing Spark to manage the schema and only pass data between nodes, in a much more efficient way than using Java serialization.
DataFrameAPI is radically different from the
RDDAPI because it is an API for building a relational query plan that Spark’s Catalyst optimizer can then execute. The API is natural for developers who are familiar with building query plans
Example SQL style :
df.filter("age > 21");
Limitations : Because the code is referring to data attributes by name, it is not possible for the compiler to catch any errors. If attribute names are incorrect then the error will only detected at runtime, when the query plan is created.
Another downside with the
DataFrame API is that it is very scala-centric and while it does support Java, the support is limited.
For example, when creating a
DataFrame from an existing
RDD of Java objects, Spark’s Catalyst optimizer cannot infer the schema and assumes that any objects in the DataFrame implement the
scala.Product interface. Scala
case class works out the box because they implement this interface.
DatasetAPI, released as an API preview in Spark 1.6, aims to provide the best of both worlds; the familiar object-oriented programming style and compile-time type-safety of the
RDDAPI but with the performance benefits of the Catalyst query optimizer. Datasets also use the same efficient off-heap storage mechanism as the
When it comes to serializing data, the
DatasetAPI has the concept of encoders which translate between JVM representations (objects) and Spark’s internal binary format. Spark has built-in encoders which are very advanced in that they generate byte code to interact with off-heap data and provide on-demand access to individual attributes without having to de-serialize an entire object. Spark does not yet provide an API for implementing custom encoders, but that is planned for a future release.
DatasetAPI is designed to work equally well with both Java and Scala. When working with Java objects, it is important that they are fully bean-compliant.
Dataset API SQL style :
dataset.filter(_.age < 21);
Further reading... databricks article - A Tale of Three Apache Spark APIs: RDDs vs DataFrames and Datasets
Apache Spark provide three type of APIs
Here is the APIs comparison between RDD, Dataframe and Dataset.
The main abstraction Spark provides is a resilient distributed dataset (RDD), which is a collection of elements partitioned across the nodes of the cluster that can be operated on in parallel.
RDD uses MapReduce operations which is widely adopted for processing and generating large datasets with a parallel, distributed algorithm on a cluster. It allows users to write parallel computations, using a set of high-level operators, without having to worry about work distribution and fault tolerance.
Immutable: RDDs composed of a collection of records which are partitioned. A partition is a basic unit of parallelism in an RDD, and each partition is one logical division of data which is immutable and created through some transformations on existing partitions.Immutability helps to achieve consistency in computations.
Fault tolerant: In a case of we lose some partition of RDD , we can replay the transformation on that partition in lineage to achieve the same computation, rather than doing data replication across multiple nodes.This characteristic is the biggest benefit of RDD because it saves a lot of efforts in data management and replication and thus achieves faster computations.
Lazy evaluations: All transformations in Spark are lazy, in that they do not compute their results right away. Instead, they just remember the transformations applied to some base dataset . The transformations are only computed when an action requires a result to be returned to the driver program.
Functional transformations: RDDs support two types of operations: transformations, which create a new dataset from an existing one, and actions, which return a value to the driver program after running a computation on the dataset.
Data processing formats:
It can easily and efficiently process data which is structured as well as unstructured data.
Programming Languages supported:
RDD API is available in Java, Scala, Python and R.
No inbuilt optimization engine: When working with structured data, RDDs cannot take advantages of Spark’s advanced optimizers including catalyst optimizer and Tungsten execution engine. Developers need to optimize each RDD based on its attributes.
Handling structured data: Unlike Dataframe and datasets, RDDs don’t infer the schema of the ingested data and requires the user to specify it.
Spark introduced Dataframes in Spark 1.3 release. Dataframe overcomes the key challenges that RDDs had.
A DataFrame is a distributed collection of data organized into named columns. It is conceptually equivalent to a table in a relational database or a R/Python Dataframe. Along with Dataframe, Spark also introduced catalyst optimizer, which leverages advanced programming features to build an extensible query optimizer.
Distributed collection of Row Object: A DataFrame is a distributed collection of data organized into named columns. It is conceptually equivalent to a table in a relational database, but with richer optimizations under the hood.
Data Processing: Processing structured and unstructured data formats (Avro, CSV, elastic search, and Cassandra) and storage systems (HDFS, HIVE tables, MySQL, etc). It can read and write from all these various datasources.
Optimization using catalyst optimizer: It powers both SQL queries and the DataFrame API. Dataframe use catalyst tree transformation framework in four phases,
1.Analyzing a logical plan to resolve references 2.Logical plan optimization 3.Physical planning 4.Code generation to compile parts of the query to Java bytecode.
Hive Compatibility: Using Spark SQL, you can run unmodified Hive queries on your existing Hive warehouses. It reuses Hive frontend and MetaStore and gives you full compatibility with existing Hive data, queries, and UDFs.
Tungsten: Tungsten provides a physical execution backend whichexplicitly manages memory and dynamically generates bytecode for expression evaluation.
Programming Languages supported:
Dataframe API is available in Java, Scala, Python, and R.
case class Person(name : String , age : Int) val dataframe = sqlContext.read.json("people.json") dataframe.filter("salary > 10000").show => throws Exception : cannot resolve 'salary' given input age , name
This is challenging specially when you are working with several transformation and aggregation steps.
case class Person(name : String , age : Int) val personRDD = sc.makeRDD(Seq(Person("A",10),Person("B",20))) val personDF = sqlContext.createDataframe(personRDD) personDF.rdd // returns RDD[Row] , does not returns RDD[Person]
Dataset API is an extension to DataFrames that provides a type-safe, object-oriented programming interface. It is a strongly-typed, immutable collection of objects that are mapped to a relational schema.
At the core of the Dataset, API is a new concept called an encoder, which is responsible for converting between JVM objects and tabular representation. The tabular representation is stored using Spark internal Tungsten binary format, allowing for operations on serialized data and improved memory utilization. Spark 1.6 comes with support for automatically generating encoders for a wide variety of types, including primitive types (e.g. String, Integer, Long), Scala case classes, and Java Beans.
Provides best of both RDD and Dataframe: RDD(functional programming, type safe), DataFrame (relational model, Query optimazation , Tungsten execution, sorting and shuffling)
Encoders: With the use of Encoders, it is easy to convert any JVM object into a Dataset, allowing users to work with both structured and unstructured data unlike Dataframe.
Programming Languages supported: Datasets API is currently only available in Scala and Java. Python and R are currently not supported in version 1.6. Python support is slated for version 2.0.
Type Safety: Datasets API provides compile time safety which was not available in Dataframes. In the example below, we can see how Dataset can operate on domain objects with compile lambda functions.
case class Person(name : String , age : Int) val personRDD = sc.makeRDD(Seq(Person("A",10),Person("B",20))) val personDF = sqlContext.createDataframe(personRDD) val ds:Dataset[Person] = personDF.as[Person] ds.filter(p => p.age > 25) ds.filter(p => p.salary > 25) // error : value salary is not a member of person ds.rdd // returns RDD[Person]
No support for Python and R: As of release 1.6, Datasets only support Scala and Java. Python support will be introduced in Spark 2.0.
The Datasets API brings in several advantages over the existing RDD and Dataframe API with better type safety and functional programming.With the challenge of type casting requirements in the API, you would still not the required type safety and will make your code brittle.
RDDis a fault-tolerant collection of elements that can be operated on in parallel.
DataFrameis a Dataset organised into named columns. It is conceptually equivalent to a table in a relational database or a data frame in R/Python, but with richer optimisations under the hood.
Datasetis a distributed collection of data. Dataset is a new interface added in Spark 1.6 that provides the benefits of RDDs (strong typing, ability to use powerful lambda functions) with the benefits of Spark SQL’s optimized execution engine.
Dataset of Rows (
Dataset[Row]) in Scala/Java will often refer as DataFrames.
Nice comparison of all of them with a code snippet.
Q: Can you convert one to the other like RDD to DataFrame or vice-versa?
val rowsRdd: RDD[Row] = sc.parallelize( Seq( Row("first", 2.0, 7.0), Row("second", 3.5, 2.5), Row("third", 7.0, 5.9) ) ) val df = spark.createDataFrame(rowsRdd).toDF("id", "val1", "val2") df.show() +------+----+----+ | id|val1|val2| +------+----+----+ | first| 2.0| 7.0| |second| 3.5| 2.5| | third| 7.0| 5.9| +------+----+----+
more ways: Convert an RDD object to Dataframe in Spark
val rowsRdd: RDD[Row] = df.rdd() // DataFrame to RDD
RDD is core component, but
DataFrame is an API introduced in spark 1.30.
Collection of data partitions called
RDD must follow few properties such is:
RDD is either structured or unstructured.
DataFrame is an API available in Scala, Java, Python and R. It allows to process any type of Structured and semi structured data. To define
DataFrame, a collection of distributed data organized into named columns called
DataFrame. You can easily optimize the
RDDs in the
You can process JSON data, parquet data, HiveQL data at a time by using
val sampleRDD = sqlContext.jsonFile("hdfs://localhost:9000/jsondata.json") val sample_DF = sampleRDD.toDF()
Here Sample_DF consider as
sampleRDD is (raw data) called
DataFrame is weakly typed and developers aren't getting the benefits of the type system. For example, lets say you want to read something from SQL and run some aggregation on it:
val people = sqlContext.read.parquet("...") val department = sqlContext.read.parquet("...") people.filter("age > 30") .join(department, people("deptId") === department("id")) .groupBy(department("name"), "gender") .agg(avg(people("salary")), max(people("age")))
When you say
people("deptId"), you're not getting back an
Int, or a
Long, you're getting back a
Column object which you need to operate on. In languages with a rich type systems such as Scala, you end up losing all the type safety which increases the number of run-time errors for things that could be discovered at compile time.
On the contrary,
DataSet[T] is typed. when you do:
val people: People = val people = sqlContext.read.parquet("...").as[People]
You're actually getting back a
People object, where
deptId is an actual integral type and not a column type, thus taking advantage of the type system.
As of Spark 2.0, the DataFrame and DataSet APIs will be unified, where
DataFrame will be a type alias for
Most of answers are correct only want to add one point here
In Spark 2.0 the two APIs (DataFrame +DataSet) will be unified together into a single API.
"Unifying DataFrame and Dataset: In Scala and Java, DataFrame and Dataset have been unified, i.e. DataFrame is just a type alias for Dataset of Row. In Python and R, given the lack of type safety, DataFrame is the main programming interface."
Datasets are similar to RDDs, however, instead of using Java serialization or Kryo they use a specialized Encoder to serialize the objects for processing or transmitting over the network.
Spark SQL supports two different methods for converting existing RDDs into Datasets. The first method uses reflection to infer the schema of an RDD that contains specific types of objects. This reflection based approach leads to more concise code and works well when you already know the schema while writing your Spark application.
The second method for creating Datasets is through a programmatic interface that allows you to construct a schema and then apply it to an existing RDD. While this method is more verbose, it allows you to construct Datasets when the columns and their types are not known until runtime.
Here you can find RDD tof Data frame conversation answer
A DataFrame is equivalent to a table in RDBMS and can also be manipulated in similar ways to the "native" distributed collections in RDDs. Unlike RDDs, Dataframes keep track of the schema and support various relational operations that lead to more optimized execution. Each DataFrame object represents a logical plan but because of their "lazy" nature no execution occurs until the user calls a specific "output operation".
A Dataframe is an RDD of Row objects, each representing a record. A Dataframe also knows the schema (i.e., data fields) of its rows. While Dataframes look like regular RDDs, internally they store data in a more efficient manner, taking advantage of their schema. In addition, they provide new operations not available on RDDs, such as the ability to run SQL queries. Dataframes can be created from external data sources, from the results of queries, or from regular RDDs.
Reference: Zaharia M., et al. Learning Spark (O'Reilly, 2015)
I hope it helps!
Spark RDD (resilient distributed dataset) :
RDD is the core data abstraction API and is available since very first release of Spark (Spark 1.0). It is a lower-level API for manipulating distributed collection of data. The RDD APIs exposes some extremely useful methods which can be used to get very tight control over underlying physical data structure. It is an immutable (read only) collection of partitioned data distributed on different machines. RDD enables in-memory computation on large clusters to speed up big data processing in a fault tolerant manner. To enable fault tolerance, RDD uses DAG (Directed Acyclic Graph) which consists of a set of vertices and edges. The vertices and edges in DAG represent the RDD and the operation to be applied on that RDD respectively. The transformations defined on RDD are lazy and executes only when an action is called
Spark DataFrame :
Spark 1.3 introduced two new data abstraction APIs – DataFrame and DataSet. The DataFrame APIs organizes the data into named columns like a table in relational database. It enables programmers to define schema on a distributed collection of data. Each row in a DataFrame is of object type row. Like an SQL table, each column must have same number of rows in a DataFrame. In short, DataFrame is lazily evaluated plan which specifies the operations needs to be performed on the distributed collection of the data. DataFrame is also an immutable collection.
Spark DataSet :
As an extension to the DataFrame APIs, Spark 1.3 also introduced DataSet APIs which provides strictly typed and object-oriented programming interface in Spark. It is immutable, type-safe collection of distributed data. Like DataFrame, DataSet APIs also uses Catalyst engine in order to enable execution optimization. DataSet is an extension to the DataFrame APIs.
Other Differences -
You can use RDD's with Structured and unstructured where as Dataframe/Dataset can only process Structured and Semi Structured Data (It is having proper schema)
Spark RDD –
An RDD stands for Resilient Distributed Datasets. It is Read-only partition collection of records. RDD is the fundamental data structure of Spark. It allows a programmer to perform in-memory computations on large clusters in a fault-tolerant manner. Thus, speed up the task.
Spark Dataframe –
Unlike an RDD, data organized into named columns. For example a table in a relational database. It is an immutable distributed collection of data. DataFrame in Spark allows developers to impose a structure onto a distributed collection of data, allowing higher-level abstraction.
Spark Dataset –
Datasets in Apache Spark are an extension of DataFrame API which provides type-safe, object-oriented programming interface. Dataset takes advantage of Spark’s Catalyst optimizer by exposing expressions and data fields to a query planner.
A DataFrame is an RDD that has a schema. You can think of it as a relational database table, in that each column has a name and a known type. The power of DataFrames comes from the fact that, when you create a DataFrame from a structured dataset (Json, Parquet..), Spark is able to infer a schema by making a pass over the entire (Json, Parquet..) dataset that's being loaded. Then, when calculating the execution plan, Spark, can use the schema and do substantially better computation optimizations. Note that DataFrame was called SchemaRDD before Spark v1.3.0
All great answer and using each API has some trade off. Dataset is built to be super API to solve lot of problem but many times RDD still works best if you understand your data and if processing algorithm is optimized to do lot of things in Single pass to large data then RDD seems to best option.
Aggregation using dataset API still consume memory and will get better over time.