The Spline agent for Apache Spark is a complementary module to the Spline project that captures runtime lineage information from the Apache Spark jobs.
The agent is a Scala library that is embedded into the Spark driver, listening to Spark events, and capturing logical execution plans. The collected metadata is then handed over to the lineage dispatcher, from where it can either be sent to the Spline server (e.g. via REST API or Kafka), or used in another way, depending on selected dispatcher type (see Lineage Dispatchers).
The agent can be used with or without a Spline server, depending on your use case. See References.
- Versioning
- Usage
- Configuration
- Spark features coverage
- Developer documentation
- References and Examples
The Spline Spark Agent follows the Semantic Versioning principles.
The Public API is defined as a set of entry-point classes (SparkLineageInitializer
, SplineSparkSessionWrapper
),
extension APIs (Plugin API, filters, dispatchers), configuration properties and a set of supported Spark versions.
In other words, the Spline Spark Agent Public API in terms of SemVer covers all entities and abstractions that are designed
to be used or extended by client applications.
The version number does not directly reflect the relation of the Agent to the Spline Producer API (the Spline server). Both the Spline Server and the Agent are designed to be as much mutually compatible as possible, assuming long-term operation and a possibly significant gap in the server and the agent release dates. Such requirement is dictated by the nature of the Agent that could be embedded into some Spark jobs and only rarely if ever updated without posing a risk to stop working because of eventual Spline server update. Likewise, it should be possible to update the Agent anytime (e.g. to fix a bug or support a newer Spark version or a feature that earlier agent version didn't support) without requiring a Spline server upgrade.
Although not required by the above statement, for minimizing user astonishment when the compatibility between too distant Agent and Server versions is dropped, we'll increment the Major version component.
Scala 2.11 | Scala 2.12 | |
---|---|---|
Spark 2.2 | (no SQL; no codeless init) | — |
Spark 2.3 | (no Delta support) | — |
Spark 2.4 | Yes | Yes |
Spark 3.0 | — | Yes |
Spark 3.1 | — | Yes |
There are two main agent artifacts:
-
agent-core
is a Java library that you can use with any compatible Spark version. Use this one if you want to include Spline agent into your custom Spark application, and you want to manage all transitive dependencies yourself. -
spark-spline-agent-bundle
is a fat jar that is designed to be embedded into the Spark driver, either by manually copying it to the Spark's/jars
directory, or by using--jars
or--packages
argument for thespark-submit
,spark-shell
orpyspark
commands. This artifact is self-sufficient and is aimed to be used by most users.
Because the bundle is pre-built with all necessary dependencies, it is important to select a proper version of it that matches the minor Spark and Scala versions of your target Spark installation.
spark-A.B-spline-agent-bundle_X.Y.jar
here A.B
is the first two Spark version numbers and X.Y
is the first two Scala version numbers.
For example, if you have Spark 2.4.4 pre-built with Scala 2.12.10 then select the following agent bundle:
spark-2.4-spline-agent-bundle_2.12.jar
Spline agent is basically a Spark query listener that needs to be registered in a Spark session before is can be used. Depending on if you are using it as a library in your custom Spark application, or as a standalone bundle you can choose one of the following initialization approaches.
This way is the most convenient one, can be used in majority use-cases.
Simply include the Spline listener into the spark.sql.queryExecutionListeners
config property
(see Static SQL Configuration)
Example:
pyspark \
--packages za.co.absa.spline.agent.spark:spark-2.4-spline-agent-bundle_2.12:<VERSION> \
--conf "spark.sql.queryExecutionListeners=za.co.absa.spline.harvester.listener.SplineQueryExecutionListener" \
--conf "spark.spline.lineageDispatcher.http.producer.url=http://localhost:9090/producer"
The same approach works for spark-submit
and spark-shell
commands.
Note: all Spline properties set via Spark conf should be prefixed with spark.
prefix in order to be visible to the Spline agent.
See Configuration section for details.
Note: starting from Spline 0.6 most agent components can be configured or even replaced in a declarative manner either using Configuration or Plugin API. So normally there should be no need to use a programmatic initialization method. We recommend to use Codeless Initialization instead.
But if for some reason, Codeless Initialization doesn't fit your needs, or you want to do more customization on Spark agent, you can use programmatic initialization method.
// given a Spark session ...
val sparkSession: SparkSession = ???
// ... enable data lineage tracking with Spline
import za.co.absa.spline.harvester.SparkLineageInitializer._
sparkSession.enableLineageTracking()
// ... then run some Dataset computations as usual.
// The lineage will be captured and sent to the configured Spline Producer endpoint.
or in Java syntax:
import za.co.absa.spline.harvester.SparkLineageInitializer;
// ...
SparkLineageInitializer.enableLineageTracking(session);
The method enableLineageTracking()
accepts optional AgentConfig
object that can be used to customize Spline behavior.
This is an alternative way to configure Spline. The other one if via the property based configuration.
The instance of AgentConfig
can be created by using a builder or one of the factory methods.
// from a sequence of key-value pairs
val config = AgentConfig.from(???: Iterable[(String, Any)])
// from a Common Configuration
val config = AgentConfig.from(???: org.apache.commons.configuration.Configuration)
// using a builder
val config = AgentConfig.builder()
// call some builder methods here...
.build()
sparkSession.enableLineageTracking(config)
Note: AgentConfig
object doesn't override the standard configuration stack. Instead, it serves as an additional configuration mean
with the precedence set between the spline.properties
and spline.default.properties
files (see below).
The agent looks for configuration in the following sources (listed in order of precedence):
- Hadoop configuration (
core-site.xml
) - Spark configuration
- JVM system properties
spline.properties
file on classpathAgentConfig
objectspline.default.properties
file on classpath
The file spline.default.properties contains default values for all Spline properties along with additional documentation. It's a good idea to look in the file to see what properties are available.
The order of precedence might look counter-intuitive, as one would expect that explicitly provided config (AgentConfig
instance) should
override ones defined in the outer scope. However, prioritizing global config to local one makes it easier to manage Spline settings centrally
on clusters, while still allowing room for customization by job developers.
For example, a company could require lineage metadata from jobs executed on a particular cluster to be sanitized, enhanced with some metrics
and credentials and stored in a certain metadata store (a database, file, Spline server etc). The Spline configuration needs to be set globally
and applied to all Spark jobs automatically. However, some jobs might contain hardcoded properties that the developers used locally or on
a testing environment, and forgot to remove them before submitting jobs into a production.
In such situation we want cluster settings to have precedence over the job settings.
Assuming that hardcoded settings would most likely be defined in the AgentConfig
object, a property file or a JVM properties,
on the cluster we could define them in the Spark config or Hadoop config.
In case of multiple definitions of property the first occurrence wins, but spline.lineageDispatcher
and spline.postProcessingFilter
properties
are composed instead. E.g. if a LineageDispatcher is set to be Kafka in one config source and 'Http' in another, they would be implicitly
wrapped by a composite dispatcher, so both would be called in the order corresponding the config source precedence.
See CompositeLineageDispatcher
and CompositePostProcessingFilter
.
Every config property is resolved independently. So, for instance, if a DataSourcePasswordReplacingFilter
is used some of its properties might be
taken from one config source and the other ones form another, according to the conflict resolution rules described above.
This allows administrators to tweak settings of individual Spline components (filters, dispatchers or plugins) without having to redefine and override
the whole piece of configuration for a given component.
-
REQUIRED
[default]If Spline fails to initialize itself (e.g., wrong configuration, no db connection) the Spark application aborts with an error. (Note: it only concerns Spline initialization routine. If the error happens during lineage capturing, or in the Spline dispatcher, then the target Spark job have already been finished by that time, and the resulted data have been persisted, regardless of the
spline.mode
settings. The Spline agent doesn't do any automated rollbacks). -
BEST_EFFORT
Spline will try to initialize itself, but if it fails it switches to DISABLED mode allowing the Spark application to proceed normally without Lineage tracking.
-
DISABLED
Lineage tracking is completely disabled and Spline is unhooked from Spark.
Note: The default value for spline.mode
has changed in Spline 1.0.0. It used to be BEST_EFFORT
for Spline 0.x version series.
The logical name of the root lineage dispatcher. See Lineage Dispatchers chapter.
The logical name of the root post-processing filter. See Post Processing Filters chapter.
The LineageDispatcher
trait is responsible for sending out the captured lineage information.
By default, the HttpLineageDispatcher
is used, that sends the lineage data to the Spline REST endpoint (see Spline Producer API).
Available dispatchers:
HttpLineageDispatcher
- sends the lineage via httpKafkaLineageDispatcher
- sends the lineage via kafkaConsoleLineageDispatcher
- write the lineage to consoleLoggingLineageDispatcher
- logs the lineahge using loggerCompositeLineageDispatcher
- allows combining multiple dispatchers
Each dispatcher can have different configuration parameters. To make the configs clearly separated each dispatcher has its own namespace in which all it's parameters are defined. I will explain it on an kafka examples.
Defining dispatcher
spline.lineageDispatcher=kafka
Once you defined the dispatcher all other parameters will have a namespace spline.lineageDispatcher.{{dipatcher-name}}.
as a prefix.
In this case it is spline.lineageDispatcher.kafka.
.
To find out which parameters you can use look into spline.default.properties
. For kafka I would have to define at least these two properties:
spline.lineageDispatcher.kafka.topic=foo
spline.lineageDispatcher.kafka.producer.bootstrap.servers=localhost:9092
There is also a possibility to create your own dispatcher. It must implement LineageDispatcher
trait and have a constructor
with a single parameter of type org.apache.commons.configuration.Configuration
.
To use it you must define name and class and also all other parameters you need. For example:
spline.lineageDispatcher=my-dispatcher
spline.lineageDispatcher.my-dispatcher.className=org.example.spline.MyDispatcherImpl
spline.lineageDispatcher.my-dispatcher.prop1=value1
spline.lineageDispatcher.my-dispatcher.prop2=value2
Filters can be used to enrich the lineage with your own custom data or to remove unwanted data like passwords. All filters are applied after the Spark plan is converted to Spline DTOs, but before the dispatcher is called.
The procedure how filters are registered and configured is similar to the LineageDispatcher
registration and configuration procedure.
A custom filter class must implement za.co.absa.spline.harvester.postprocessing.PostProcessingFilter
trait and declare a constructor
with a single parameter of type org.apache.commons.configuration.Configuration
.
Then register and configure it like this:
spline.postProcessingFilter=my-filter
spline.postProcessingFilter.my-filter.className=my.awesome.CustomFilter
spline.postProcessingFilter.my-filter.prop1=value1
spline.postProcessingFilter.my-filter.prop2=value2
Use pre-registered CompositePostProcessingFilter
to chain up multiple filters:
spline.postProcessingFilter=composite
spline.postProcessingFilter.composite.filters=myFilter1,myFilter2
(see spline.default.properties
for details and examples)
Dataset operations are fully supported
RDD transformations aren't supported due to Spark internal architecture specifics, but they might be supported semi-automatically in the future Spline versions (see #33)
SQL dialect is mostly supported.
DDL operations are not supported, excepts for CREATE TABLE ... AS SELECT ...
which is supported.
Note: the lineage is only captured on persistent (write) actions.
In-memory only actions like collect()
or printSchema()
are ignored.
The following data formats and providers are supported out of the box:
- Avro
- Cassandra
- COBOL
- Delta
- ElasticSearch
- Excel
- HDFS
- Hive
- JDBC
- Kafka
- MongoDB
- XML
Although Spark being an extensible piece of software can support much more, it doesn't provide any universal API that Spline can utilize to capture reads and write from/to everything that Spark supports. Support for most of different data sources and formats has to be added to Spline one by one. Fortunately starting with Spline 0.5.4 the auto discoverable Plugin API has been introduced to make this process easier.
Below is the break down of the read/write command list that we have come through.
Some commands are implemented, others have yet to be implemented,
and finally there are such that bear no lineage information and hence are ignored.
All commands inherit from org.apache.spark.sql.catalyst.plans.logical.Command
.
You can see how to produce unimplemented commands in za.co.absa.spline.harvester.SparkUnimplementedCommandsSpec
.
CreateDataSourceTableAsSelectCommand
(org.apache.spark.sql.execution.command)CreateHiveTableAsSelectCommand
(org.apache.spark.sql.hive.execution)CreateTableCommand
(org.apache.spark.sql.execution.command)DropTableCommand
(org.apache.spark.sql.execution.command)InsertIntoDataSourceDirCommand
(org.apache.spark.sql.execution.command)InsertIntoHadoopFsRelationCommand
(org.apache.spark.sql.execution.datasources)InsertIntoHiveDirCommand
(org.apache.spark.sql.hive.execution)InsertIntoHiveTable
(org.apache.spark.sql.hive.execution)SaveIntoDataSourceCommand
(org.apache.spark.sql.execution.datasources)
AlterTableAddColumnsCommand
(org.apache.spark.sql.execution.command)AlterTableChangeColumnCommand
(org.apache.spark.sql.execution.command)AlterTableRenameCommand
(org.apache.spark.sql.execution.command)AlterTableSetLocationCommand
(org.apache.spark.sql.execution.command)CreateDataSourceTableCommand
(org.apache.spark.sql.execution.command)CreateDatabaseCommand
(org.apache.spark.sql.execution.command)CreateTableLikeCommand
(org.apache.spark.sql.execution.command)DropDatabaseCommand
(org.apache.spark.sql.execution.command)LoadDataCommand
(org.apache.spark.sql.execution.command)TruncateTableCommand
(org.apache.spark.sql.execution.command)
When one of these commands occurs spline will let you know by logging a warning.
AddFileCommand
(org.apache.spark.sql.execution.command)AddJarCommand
(org.apache.spark.sql.execution.command)AlterDatabasePropertiesCommand
(org.apache.spark.sql.execution.command)AlterTableAddPartitionCommand
(org.apache.spark.sql.execution.command)AlterTableDropPartitionCommand
(org.apache.spark.sql.execution.command)AlterTableRecoverPartitionsCommand
(org.apache.spark.sql.execution.command)AlterTableRenamePartitionCommand
(org.apache.spark.sql.execution.command)AlterTableSerDePropertiesCommand
(org.apache.spark.sql.execution.command)AlterTableSetPropertiesCommand
(org.apache.spark.sql.execution.command)AlterTableUnsetPropertiesCommand
(org.apache.spark.sql.execution.command)AlterViewAsCommand
(org.apache.spark.sql.execution.command)AnalyzeColumnCommand
(org.apache.spark.sql.execution.command)AnalyzePartitionCommand
(org.apache.spark.sql.execution.command)AnalyzeTableCommand
(org.apache.spark.sql.execution.command)CacheTableCommand
(org.apache.spark.sql.execution.command)ClearCacheCommand
(org.apache.spark.sql.execution.command)CreateFunctionCommand
(org.apache.spark.sql.execution.command)CreateTempViewUsing
(org.apache.spark.sql.execution.datasources)CreateViewCommand
(org.apache.spark.sql.execution.command)DescribeColumnCommand
(org.apache.spark.sql.execution.command)DescribeDatabaseCommand
(org.apache.spark.sql.execution.command)DescribeFunctionCommand
(org.apache.spark.sql.execution.command)DescribeTableCommand
(org.apache.spark.sql.execution.command)DropFunctionCommand
(org.apache.spark.sql.execution.command)ExplainCommand
(org.apache.spark.sql.execution.command)InsertIntoDataSourceCommand
(org.apache.spark.sql.execution.datasources) *ListFilesCommand
(org.apache.spark.sql.execution.command)ListJarsCommand
(org.apache.spark.sql.execution.command)RefreshResource
(org.apache.spark.sql.execution.datasources)RefreshTable
(org.apache.spark.sql.execution.datasources)ResetCommand$
(org.apache.spark.sql.execution.command)SetCommand
(org.apache.spark.sql.execution.command)SetDatabaseCommand
(org.apache.spark.sql.execution.command)ShowColumnsCommand
(org.apache.spark.sql.execution.command)ShowCreateTableCommand
(org.apache.spark.sql.execution.command)ShowDatabasesCommand
(org.apache.spark.sql.execution.command)ShowFunctionsCommand
(org.apache.spark.sql.execution.command)ShowPartitionsCommand
(org.apache.spark.sql.execution.command)ShowTablePropertiesCommand
(org.apache.spark.sql.execution.command)ShowTablesCommand
(org.apache.spark.sql.execution.command)StreamingExplainCommand
(org.apache.spark.sql.execution.command)UncacheTableCommand
(org.apache.spark.sql.execution.command)
Using a plugin API you can capture lineage from a 3rd party data source provider.
Spline discover plugins automatically by scanning a classpath, so no special steps required to register and configure a plugin.
All you need is to create a class extending the za.co.absa.spline.harvester.plugin.Plugin
marker trait
mixed with one or more *Processing
traits, depending on your intention.
There are three general processing traits:
DataSourceFormatNameResolving
- returns a name of a data provider/format in use.ReadNodeProcessing
- detects a read-command and gather meta information.WriteNodeProcessing
- detects a write-command and gather meta information.
There are also two additional trait that handle common cases of reading and writing:
BaseRelationProcessing
- similar toReadNodeProcessing
, but instead of capturing all logical plan nodes it only reacts onLogicalRelation
(seeLogicalRelationPlugin
)RelationProviderProcessing
- similar toWriteNodeProcessing
, but it only capturesSaveIntoDataSourceCommand
(seeSaveIntoDataSourceCommandPlugin
)
The best way to illustrate how plugins work is to look at the real working example,
e.g. za.co.absa.spline.harvester.plugin.embedded.JDBCPlugin
The most common simplified pattern looks like this:
package my.spline.plugin
import javax.annotation.Priority
import za.co.absa.spline.harvester.builder._
import za.co.absa.spline.harvester.plugin.Plugin._
import za.co.absa.spline.harvester.plugin._
@Priority(Precedence.User) // not required, but can be used to control your plugin precedence in the plugin chain. Default value is `User`.
class FooBarPlugin
extends Plugin
with BaseRelationProcessing
with RelationProviderProcessing {
override def baseRelationProcessor: PartialFunction[(BaseRelation, LogicalRelation), ReadNodeInfo] = {
case (FooBarRelation(a, b, c, d), lr) if /*more conditions*/ =>
val dataFormat: Option[AnyRef] = ??? // data format being read (will be resolved by the `DataSourceFormatResolver` later)
val dataSourceURI: String = ??? // a unique URI for the data source
val params: Map[String, Any] = ??? // additional parameters characterizing the read-command. E.g. (connection protocol, access mode, driver options etc)
(SourceIdentifier(dataFormat, dataSourceURI), params)
}
override def relationProviderProcessor: PartialFunction[(AnyRef, SaveIntoDataSourceCommand), WriteNodeInfo] = {
case (provider, cmd) if provider == "foobar" || provider.isInstanceOf[FooBarProvider] =>
val dataFormat: Option[AnyRef] = ??? // data format being written (will be resolved by the `DataSourceFormatResolver` later)
val dataSourceURI: String = ??? // a unique URI for the data source
val writeMode: SaveMode = ??? // was it Append or Overwrite?
val query: LogicalPlan = ??? // the logical plan to get the rest of the lineage from
val params: Map[String, Any] = ??? // additional parameters characterizing the write-command
(SourceIdentifier(dataFormat, dataSourceURI), writeMode, query, params)
}
}
Note: to avoid unwanted possible shadowing the other plugins (including the future ones), make sure that the pattern-matching criteria are as much selective as possible for your plugin needs.
A plugin class is expected to only have a single constructor. The constructor can have no arguments, or one or more of the following types (the values will be autowired):
SparkSession
PathQualifier
PluginRegistry
Compile you plugin and drop it into the Spline/Spark classpath. Spline will pick it up automatically.
Note: The project requires Java version 1.8 (strictly) and Apache Maven for building.
Check the build environment:
mvn --version
Verify that Maven is configured to run on Java 1.8. For example:
Apache Maven 3.6.3 (Red Hat 3.6.3-8)
Maven home: /usr/share/maven
Java version: 1.8.0_302, vendor: Red Hat, Inc., runtime: /usr/lib/jvm/java-1.8.0-openjdk-1.8.0.302.b08-2.fc34.x86_64/jre
There are several maven profiles that makes it easy to build the project with different versions of Spark and Scala.
- Scala profiles:
scala-2.11
,scala-2.12
- Spark profiles:
spark-2.2
,spark-2.3
,spark-2.4
,spark-3.0
,spark-3.1
For example, to build an agent for Spark 2.4 and Scala 2.12:
# Change Scala version in pom.xml.
mvn scala-cross-build:change-version -Pscala-2.12
# now you can build for Scala 2.12
mvn clean install -Pscala-2.12,spark-2.4
The agent docker image is mainly used to run example jobs and pre-fill the database with the sample lineage data.
(Spline docker images are available on the DockerHub repo - https://hub.docker.com/u/absaoss)
mvn install -Ddocker -Ddockerfile.repositoryUrl=my
See How to build Spline Docker images for details.
Although the primary goal of Spline agent is to be used in combination with the Spline server, it is flexible enough to be used in isolation or integration with other data lineage tracking solutions including custom ones.
Below is a couple of examples of such integration:
Copyright 2019 ABSA Group Limited
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.