Awesome
If you’re a data scientist or data engineer, this might sound familiar while working on an ETL project:
- Switching between multiple projects is a hassle
- Debugging others’ code is a nightmare
- Spending a lot of time solving non-business-related issues
SETL (pronounced "settle") is a Scala ETL framework powered by Apache Spark that helps you structure your Spark ETL projects, modularize your data transformation logic and speed up your development.
Use SETL
In a new project
You can start working by cloning this template project.
In an existing project
<dependency>
<groupId>io.github.setl-framework</groupId>
<artifactId>setl_2.12</artifactId>
<version>1.0.0-RC2</version>
</dependency>
To use the SNAPSHOT version, add Sonatype snapshot repository to your pom.xml
<repositories>
<repository>
<id>ossrh-snapshots</id>
<url>https://s01.oss.sonatype.org/content/repositories/snapshots/</url>
</repository>
</repositories>
<dependencies>
<dependency>
<groupId>io.github.setl-framework</groupId>
<artifactId>setl_2.12</artifactId>
<version>1.0.0-SNAPSHOT</version>
</dependency>
</dependencies>
Quick Start
Basic concept
With SETL, an ETL application could be represented by a Pipeline
. A Pipeline
contains multiple Stages
. In each stage, we could find one or several Factories
.
The class Factory[T]
is an abstraction of a data transformation that will produce an object of type T
. It has 4 methods (read, process, write and get) that should be implemented by the developer.
The class SparkRepository[T]
is a data access layer abstraction. It could be used to read/write a Dataset[T]
from/to a datastore. It should be defined in a configuration file. You can have as many SparkRepositories as you want.
The entry point of a SETL project is the object io.github.setl.Setl
, which will handle the pipeline and spark repository instantiation.
Show me some code
You can find the following tutorial code in the starter template of SETL. Go and clone it :)
Here we show a simple example of creating and saving a Dataset[TestObject]. The case class TestObject is defined as follows:
case class TestObject(partition1: Int, partition2: String, clustering1: String, value: Long)
Context initialization
Suppose that we want to save our output into src/main/resources/test_csv
. We can create a configuration file local.conf in src/main/resources
with the following content that defines the target datastore to save our dataset:
testObjectRepository {
storage = "CSV"
path = "src/main/resources/test_csv"
inferSchema = "true"
delimiter = ";"
header = "true"
saveMode = "Append"
}
In our App.scala
file, we build Setl
and register this data store:
val setl: Setl = Setl.builder()
.withDefaultConfigLoader()
.getOrCreate()
// Register a SparkRepository to context
setl.setSparkRepository[TestObject]("testObjectRepository")
Implementation of Factory
We will create our Dataset[TestObject]
inside a Factory[Dataset[TestObject]]
. A Factory[A]
will always produce an object of type A
, and it contains 4 abstract methods that you need to implement:
- read
- process
- write
- get
class MyFactory() extends Factory[Dataset[TestObject]] with HasSparkSession {
import spark.implicits._
// A repository is needed for writing data. It will be delivered by the pipeline
@Delivery
private[this] val repo = SparkRepository[TestObject]
private[this] var output = spark.emptyDataset[TestObject]
override def read(): MyFactory.this.type = {
// in our demo we don't need to read any data
this
}
override def process(): MyFactory.this.type = {
output = Seq(
TestObject(1, "a", "A", 1L),
TestObject(2, "b", "B", 2L)
).toDS()
this
}
override def write(): MyFactory.this.type = {
repo.save(output) // use the repository to save the output
this
}
override def get(): Dataset[TestObject] = output
}
Define the pipeline
To execute the factory, we should add it into a pipeline.
When we call setl.newPipeline()
, Setl will instantiate a new Pipeline and configure all the registered repositories as inputs of the pipeline. Then we can call addStage
to add our factory into the pipeline.
val pipeline = setl
.newPipeline()
.addStage[MyFactory]()
Run our pipeline
pipeline.describe().run()
The dataset will be saved into src/main/resources/test_csv
What's more?
As our MyFactory
produces a Dataset[TestObject]
, it can be used by other factories of the same pipeline.
class AnotherFactory extends Factory[String] with HasSparkSession {
import spark.implicits._
@Delivery
private[this] val outputOfMyFactory = spark.emptyDataset[TestObject]
override def read(): AnotherFactory.this.type = this
override def process(): AnotherFactory.this.type = this
override def write(): AnotherFactory.this.type = {
outputOfMyFactory.show()
this
}
override def get(): String = "output"
}
Add this factory into the pipeline:
pipeline.addStage[AnotherFactory]()
Custom Connector
You can implement you own data source connector by implementing the ConnectorInterface
class CustomConnector extends ConnectorInterface with CanDrop {
override def setConf(conf: Conf): Unit = null
override def read(): DataFrame = {
import spark.implicits._
Seq(1, 2, 3).toDF("id")
}
override def write(t: DataFrame, suffix: Option[String]): Unit = logDebug("Write with suffix")
override def write(t: DataFrame): Unit = logDebug("Write")
/**
* Drop the entire table.
*/
override def drop(): Unit = logDebug("drop")
}
To use it, just set the storage to OTHER and provide the class reference of your connector:
myConnector {
storage = "OTHER"
class = "com.example.CustomConnector" // class reference of your connector
}
Generate pipeline diagram
You can generate a Mermaid diagram by doing:
pipeline.showDiagram()
You will have some log like this:
--------- MERMAID DIAGRAM ---------
classDiagram
class MyFactory {
<<Factory[Dataset[TestObject]]>>
+SparkRepository[TestObject]
}
class DatasetTestObject {
<<Dataset[TestObject]>>
>partition1: Int
>partition2: String
>clustering1: String
>value: Long
}
DatasetTestObject <|.. MyFactory : Output
class AnotherFactory {
<<Factory[String]>>
+Dataset[TestObject]
}
class StringFinal {
<<String>>
}
StringFinal <|.. AnotherFactory : Output
class SparkRepositoryTestObjectExternal {
<<SparkRepository[TestObject]>>
}
AnotherFactory <|-- DatasetTestObject : Input
MyFactory <|-- SparkRepositoryTestObjectExternal : Input
------- END OF MERMAID CODE -------
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App Configuration
The configuration system of SETL allows users to execute their Spark application in different execution environments, by using environment-specific configurations.
In src/main/resources
directory, you should have at least two configuration files named application.conf
and local.conf
(take a look at this example). These
are what you need if you only want to run your application in one single environment.
You can also create other configurations (for example dev.conf
and prod.conf
), in which environment-specific
parameters can be defined.
application.conf
This configuration file should contain universal configurations that could be used regardless the execution environment.
env.conf (e.g. local.conf, dev.conf)
These files should contain environment-specific parameters. By default, local.conf
will be used.
How to use the configuration
Imagine the case we have two environments, a local development environment and a remote production environment. Our application
needs a repository for saving and loading data. In this use case, let's prepare application.conf
, local.conf
, prod.conf
and storage.conf
# application.conf
setl.environment = ${app.environment}
setl.config {
spark.app.name = "my_application"
# and other general spark configurations
}
# local.conf
include "application.conf"
setl.config {
spark.default.parallelism = "200"
spark.sql.shuffle.partitions = "200"
# and other local spark configurations
}
app.root.dir = "/some/local/path"
include "storage.conf"
# prod.conf
setl.config {
spark.default.parallelism = "1000"
spark.sql.shuffle.partitions = "1000"
# and other production spark configurations
}
app.root.dir = "/some/remote/path"
include "storage.conf"
# storage.conf
myRepository {
storage = "CSV"
path = ${app.root.dir} // this path will depend on the execution environment
inferSchema = "true"
delimiter = ";"
header = "true"
saveMode = "Append"
}
To compile with local configuration, with maven, just run:
mvn compile
To compile with production configuration, pass the jvm property app.environment
.
mvn compile -Dapp.environment=prod
Make sure that your resources directory has filtering enabled:
<resources>
<resource>
<directory>src/main/resources</directory>
<filtering>true</filtering>
</resource>
</resources>
Dependencies
SETL currently supports the following data source. You won't need to provide these libraries in your project (except the JDBC driver):
- All file formats supported by Apache Spark (csv, json, parquet etc)
- Delta
- Excel (crealytics/spark-excel)
- Cassandra (datastax/spark-cassandra-connector)
- DynamoDB (audienceproject/spark-dynamodb)
- JDBC (you have to provide the jdbc driver)
To read/write data from/to AWS S3 (or other storage services), you should include the corresponding hadoop library in your project.
For example
<dependency>
<groupId>org.apache.hadoop</groupId>
<artifactId>hadoop-aws</artifactId>
<version>2.9.2</version>
</dependency>
You should also provide Scala and Spark in your pom file. SETL is tested against the following version of Spark:
Spark Version | Scala Version | Note |
---|---|---|
3.0 | 2.12 | :heavy_check_mark: Ok |
2.4 | 2.12 | :heavy_check_mark: Ok |
2.4 | 2.11 | :warning: see known issues |
2.3 | 2.11 | :warning: see known issues |
Known issues
Spark 2.4 with Scala 2.11
When using setl_2.11-1.x.x
with Spark 2.4 and Scala 2.11, you may need to include manually these following dependencies to override the default version:
<dependency>
<groupId>com.audienceproject</groupId>
<artifactId>spark-dynamodb_2.11</artifactId>
<version>1.0.4</version>
</dependency>
<dependency>
<groupId>io.delta</groupId>
<artifactId>delta-core_2.11</artifactId>
<version>0.7.0</version>
</dependency>
<dependency>
<groupId>com.datastax.spark</groupId>
<artifactId>spark-cassandra-connector_2.11</artifactId>
<version>2.5.1</version>
</dependency>
Spark 2.3 with Scala 2.11
DynamoDBConnector
doesn't work with Spark version 2.3Compress
annotation can only be used on Struct field or Array of Struct field with Spark 2.3
Test Coverage
Documentation
https://setl-framework.github.io/setl/