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Apache Spark

Collect metrics from Apache Spark with Elastic Agent.

Version
1.0.3 (View all)
Compatible Kibana version(s)
8.8.0 or higher
Supported Serverless project types

Security
Observability
Subscription level
Basic
Level of support
Elastic

Overview

Apache Spark is an open-source, distributed computing system that provides a fast and general-purpose cluster-computing framework. It offers in-memory data processing capabilities, which significantly enhances the performance of big data analytics applications. Spark provides support for a variety of programming languages including Scala, Python, Java, and R, and comes with built-in modules for SQL, streaming, machine learning, and graph processing. This makes it a versatile tool for a wide range of data processing and analysis tasks.

Use the Apache Spark integration to:

  • Collect metrics related to the application, driver, executor and node.
  • Create visualizations to monitor, measure, and analyze usage trends and key data, deriving business insights.
  • Create alerts to reduce the MTTD and MTTR by referencing relevant logs when troubleshooting an issue.

Data streams

The Apache Spark integration collects metrics data.

Metrics provide insight into the statistics of Apache Spark. The Metric data streams collected by the Apache Spark integration include application, driver, executor, and node, allowing users to monitor and troubleshoot the performance of their Apache Spark instance.

Data streams:

  • application: Collects information related to the number of cores used, application name, runtime in milliseconds and current status of the application.
  • driver: Collects information related to the driver details, job durations, task execution, memory usage, executor status and JVM metrics.
  • executor: Collects information related to the operations, memory usage, garbage collection, file handling, and threadpool activity.
  • node: Collects information related to the application count, waiting applications, worker metrics, executor count, core usage and memory usage.

Note:

  • Users can monitor and view the metrics inside the ingested documents for Apache Spark under the metrics-* index pattern in Discover.

Compatibility

This integration has been tested against Apache Spark version 3.5.0.

Requirements

You need Elasticsearch for storing and searching your data and Kibana for visualizing and managing it. You can use our hosted Elasticsearch Service on Elastic Cloud, which is recommended, or self-manage the Elastic Stack on your own hardware.

In order to ingest data from Apache Spark, you must know the full hosts for the Main and Worker nodes.

To proceed with the Jolokia setup, Apache Spark should be installed as a standalone setup. Make sure that the spark folder is installed in the /usr/local path. If not, then specify the path of spark folder in the further steps. You can install the standalone setup from the official download page of Apache Spark.

In order to gather Spark statistics, we need to download and enable Jolokia JVM Agent.

cd /usr/share/java/
wget -O jolokia-agent.jar http://search.maven.org/remotecontent?filepath=org/jolokia/jolokia-jvm/1.3.6/jolokia-jvm-1.3.6-agent.jar

As far, as Jolokia JVM Agent is downloaded, we should configure Apache Spark, to use it as JavaAgent and expose metrics via HTTP/JSON. Edit spark-env.sh. It should be in /usr/local/spark/conf and add following parameters (Assuming that spark install folder is /usr/local/spark, if not change the path to one on which Spark is installed):

export SPARK_MASTER_OPTS="$SPARK_MASTER_OPTS -javaagent:/usr/share/java/jolokia-agent.jar=config=/usr/local/spark/conf/jolokia-master.properties"

Now, create /usr/local/spark/conf/jolokia-master.properties file with following content:

host=0.0.0.0
port=7777
agentContext=/jolokia
backlog=100

policyLocation=file:///usr/local/spark/conf/jolokia.policy
historyMaxEntries=10
debug=false
debugMaxEntries=100
maxDepth=15
maxCollectionSize=1000
maxObjects=0

Now we need to create /usr/local/spark/conf/jolokia.policy with following content:

<?xml version="1.0" encoding="utf-8"?>
<restrict>
  <http>
    <method>get</method>
    <method>post</method>
  </http>
  <commands>
    <command>read</command>
  </commands>
</restrict>

Configure Agent with following in conf/bigdata.ini file:

[Spark-Master]
stats: http://127.0.0.1:7777/jolokia/read

Restart Spark master.

Follow the same set of steps for Spark Worker, Driver and Executor.

Setup

For step-by-step instructions on how to set up an integration, see the Getting Started guide.

Validation

After the integration is successfully configured, click on the Assets tab of the Apache Spark Integration to display the available dashboards. Select the dashboard for your configured data stream, which should be populated with the required data.

Troubleshooting

If host.ip appears conflicted under the metrics-* data view, this issue can be resolved by reindexing the Application, Driver, Executor and Node data stream.

Metrics

Application

The application data stream collects metrics related to the number of cores used, application name, runtime in milliseconds, and current status of the application.

An example event for application looks as following:

{
    "@timestamp": "2023-09-28T09:24:33.812Z",
    "agent": {
        "ephemeral_id": "20d060ec-da41-4f14-a187-d020b9fbec7d",
        "id": "a6bdbb4a-4bac-4243-83cb-dba157f24987",
        "name": "docker-fleet-agent",
        "type": "metricbeat",
        "version": "8.8.0"
    },
    "apache_spark": {
        "application": {
            "cores": 8,
            "mbean": "metrics:name=application.PythonWordCount.1695893057562.cores,type=gauges",
            "name": "PythonWordCount.1695893057562"
        }
    },
    "data_stream": {
        "dataset": "apache_spark.application",
        "namespace": "ep",
        "type": "metrics"
    },
    "ecs": {
        "version": "8.5.1"
    },
    "elastic_agent": {
        "id": "a6bdbb4a-4bac-4243-83cb-dba157f24987",
        "snapshot": false,
        "version": "8.8.0"
    },
    "event": {
        "agent_id_status": "verified",
        "dataset": "apache_spark.application",
        "duration": 23828342,
        "ingested": "2023-09-28T09:24:37Z",
        "kind": "metric",
        "module": "apache_spark",
        "type": [
            "info"
        ]
    },
    "host": {
        "architecture": "x86_64",
        "containerized": true,
        "hostname": "docker-fleet-agent",
        "id": "e8978f2086c14e13b7a0af9ed0011d19",
        "ip": [
            "172.20.0.7"
        ],
        "mac": "02-42-AC-14-00-07",
        "name": "docker-fleet-agent",
        "os": {
            "codename": "focal",
            "family": "debian",
            "kernel": "3.10.0-1160.90.1.el7.x86_64",
            "name": "Ubuntu",
            "platform": "ubuntu",
            "type": "linux",
            "version": "20.04.6 LTS (Focal Fossa)"
        }
    },
    "metricset": {
        "name": "jmx",
        "period": 60000
    },
    "service": {
        "address": "http://apache-spark-main:7777/jolokia/%3FignoreErrors=true\u0026canonicalNaming=false",
        "type": "jolokia"
    }
}

Exported fields

FieldDescriptionTypeMetric Type
@timestamp
Event timestamp.
date
agent.id
Unique identifier of this agent (if one exists). Example: For Beats this would be beat.id.
keyword
apache_spark.application.cores
Number of cores.
long
gauge
apache_spark.application.mbean
The name of the jolokia mbean.
keyword
apache_spark.application.name
Name of the application.
keyword
apache_spark.application.runtime.ms
Time taken to run the application (ms).
long
gauge
apache_spark.application.status
Current status of the application.
keyword
cloud.account.id
The cloud account or organization id used to identify different entities in a multi-tenant environment. Examples: AWS account id, Google Cloud ORG Id, or other unique identifier.
keyword
cloud.availability_zone
Availability zone in which this host, resource, or service is located.
keyword
cloud.instance.id
Instance ID of the host machine.
keyword
cloud.provider
Name of the cloud provider. Example values are aws, azure, gcp, or digitalocean.
keyword
cloud.region
Region in which this host, resource, or service is located.
keyword
container.id
Unique container id.
keyword
data_stream.dataset
Data stream dataset.
constant_keyword
data_stream.namespace
Data stream namespace.
constant_keyword
data_stream.type
Data stream type.
constant_keyword
ecs.version
ECS version this event conforms to. ecs.version is a required field and must exist in all events. When querying across multiple indices -- which may conform to slightly different ECS versions -- this field lets integrations adjust to the schema version of the events.
keyword
error.message
Error message.
match_only_text
event.dataset
Name of the dataset. If an event source publishes more than one type of log or events (e.g. access log, error log), the dataset is used to specify which one the event comes from. It's recommended but not required to start the dataset name with the module name, followed by a dot, then the dataset name.
keyword
event.kind
This is one of four ECS Categorization Fields, and indicates the highest level in the ECS category hierarchy. event.kind gives high-level information about what type of information the event contains, without being specific to the contents of the event. For example, values of this field distinguish alert events from metric events. The value of this field can be used to inform how these kinds of events should be handled. They may warrant different retention, different access control, it may also help understand whether the data coming in at a regular interval or not.
keyword
event.module
Name of the module this data is coming from. If your monitoring agent supports the concept of modules or plugins to process events of a given source (e.g. Apache logs), event.module should contain the name of this module.
keyword
event.type
This is one of four ECS Categorization Fields, and indicates the third level in the ECS category hierarchy. event.type represents a categorization "sub-bucket" that, when used along with the event.category field values, enables filtering events down to a level appropriate for single visualization. This field is an array. This will allow proper categorization of some events that fall in multiple event types.
keyword
host.ip
Host ip addresses.
ip
host.name
Name of the host. It can contain what hostname returns on Unix systems, the fully qualified domain name, or a name specified by the user. The sender decides which value to use.
keyword
service.address
Address where data about this service was collected from. This should be a URI, network address (ipv4:port or [ipv6]:port) or a resource path (sockets).
keyword
service.type
The type of the service data is collected from. The type can be used to group and correlate logs and metrics from one service type. Example: If logs or metrics are collected from Elasticsearch, service.type would be elasticsearch.
keyword
tags
List of keywords used to tag each event.
keyword

Driver

The driver data stream collects metrics related to the driver details, job durations, task execution, memory usage, executor status, and JVM metrics.

An example event for driver looks as following:

{
    "@timestamp": "2023-09-29T12:04:40.050Z",
    "agent": {
        "ephemeral_id": "e3534e18-b92f-4b1b-bd39-43ff9c8849d4",
        "id": "a76f5e50-2a98-4b96-80f6-026ad822e3e8",
        "name": "docker-fleet-agent",
        "type": "metricbeat",
        "version": "8.8.0"
    },
    "apache_spark": {
        "driver": {
            "application_name": "app-20230929120427-0000",
            "jvm": {
                "cpu": {
                    "time": 25730000000
                }
            },
            "mbean": "metrics:name=app-20230929120427-0000.driver.JVMCPU.jvmCpuTime,type=gauges"
        }
    },
    "data_stream": {
        "dataset": "apache_spark.driver",
        "namespace": "ep",
        "type": "metrics"
    },
    "ecs": {
        "version": "8.5.1"
    },
    "elastic_agent": {
        "id": "a76f5e50-2a98-4b96-80f6-026ad822e3e8",
        "snapshot": false,
        "version": "8.8.0"
    },
    "event": {
        "agent_id_status": "verified",
        "dataset": "apache_spark.driver",
        "duration": 177706950,
        "ingested": "2023-09-29T12:04:41Z",
        "kind": "metric",
        "module": "apache_spark",
        "type": [
            "info"
        ]
    },
    "host": {
        "architecture": "x86_64",
        "containerized": true,
        "hostname": "docker-fleet-agent",
        "id": "e8978f2086c14e13b7a0af9ed0011d19",
        "ip": [
            "172.26.0.7"
        ],
        "mac": "02-42-AC-1A-00-07",
        "name": "docker-fleet-agent",
        "os": {
            "codename": "focal",
            "family": "debian",
            "kernel": "3.10.0-1160.90.1.el7.x86_64",
            "name": "Ubuntu",
            "platform": "ubuntu",
            "type": "linux",
            "version": "20.04.6 LTS (Focal Fossa)"
        }
    },
    "metricset": {
        "name": "jmx",
        "period": 60000
    },
    "service": {
        "address": "http://apache-spark-main:7779/jolokia/%3FignoreErrors=true\u0026canonicalNaming=false",
        "type": "jolokia"
    }
}

Exported fields

FieldDescriptionTypeMetric Type
@timestamp
Event timestamp.
date
agent.id
Unique identifier of this agent (if one exists). Example: For Beats this would be beat.id.
keyword
apache_spark.driver.application_name
Name of the application.
keyword
apache_spark.driver.dag_scheduler.job.active
Number of active jobs.
long
gauge
apache_spark.driver.dag_scheduler.job.all
Total number of jobs.
long
gauge
apache_spark.driver.dag_scheduler.stages.failed
Number of failed stages.
long
gauge
apache_spark.driver.dag_scheduler.stages.running
Number of running stages.
long
gauge
apache_spark.driver.dag_scheduler.stages.waiting
Number of waiting stages
long
gauge
apache_spark.driver.disk.space_used
Amount of the disk space utilized in MB.
long
gauge
apache_spark.driver.executor_metrics.gc.major.count
Total major GC count. For example, the garbage collector is one of MarkSweepCompact, PS MarkSweep, ConcurrentMarkSweep, G1 Old Generation and so on.
long
gauge
apache_spark.driver.executor_metrics.gc.major.time
Elapsed total major GC time. The value is expressed in milliseconds.
long
gauge
apache_spark.driver.executor_metrics.gc.minor.count
Total minor GC count. For example, the garbage collector is one of Copy, PS Scavenge, ParNew, G1 Young Generation and so on.
long
gauge
apache_spark.driver.executor_metrics.gc.minor.time
Elapsed total minor GC time. The value is expressed in milliseconds.
long
gauge
apache_spark.driver.executor_metrics.heap_memory.off.execution
Peak off heap execution memory in use, in bytes.
long
gauge
apache_spark.driver.executor_metrics.heap_memory.off.storage
Peak off heap storage memory in use, in bytes.
long
gauge
apache_spark.driver.executor_metrics.heap_memory.off.unified
Peak off heap memory (execution and storage).
long
gauge
apache_spark.driver.executor_metrics.heap_memory.on.execution
Peak on heap execution memory in use, in bytes.
long
gauge
apache_spark.driver.executor_metrics.heap_memory.on.storage
Peak on heap storage memory in use, in bytes.
long
gauge
apache_spark.driver.executor_metrics.heap_memory.on.unified
Peak on heap memory (execution and storage).
long
gauge
apache_spark.driver.executor_metrics.memory.direct_pool
Peak memory that the JVM is using for direct buffer pool.
long
gauge
apache_spark.driver.executor_metrics.memory.jvm.heap
Peak memory usage of the heap that is used for object allocation.
long
counter
apache_spark.driver.executor_metrics.memory.jvm.off_heap
Peak memory usage of non-heap memory that is used by the Java virtual machine.
long
counter
apache_spark.driver.executor_metrics.memory.mapped_pool
Peak memory that the JVM is using for mapped buffer pool
long
gauge
apache_spark.driver.executor_metrics.process_tree.jvm.rss_memory
Resident Set Size: number of pages the process has in real memory. This is just the pages which count toward text, data, or stack space. This does not include pages which have not been demand-loaded in, or which are swapped out.
long
gauge
apache_spark.driver.executor_metrics.process_tree.jvm.v_memory
Virtual memory size in bytes.
long
gauge
apache_spark.driver.executor_metrics.process_tree.other.rss_memory
long
gauge
apache_spark.driver.executor_metrics.process_tree.other.v_memory
long
gauge
apache_spark.driver.executor_metrics.process_tree.python.rss_memory
long
gauge
apache_spark.driver.executor_metrics.process_tree.python.v_memory
long
gauge
apache_spark.driver.executors.all
Total number of executors.
long
gauge
apache_spark.driver.executors.decommission_unfinished
Total number of decommissioned unfinished executors.
long
counter
apache_spark.driver.executors.exited_unexpectedly
Total number of executors exited unexpectedly.
long
counter
apache_spark.driver.executors.gracefully_decommissioned
Total number of executors gracefully decommissioned.
long
counter
apache_spark.driver.executors.killed_by_driver
Total number of executors killed by driver.
long
counter
apache_spark.driver.executors.max_needed
Maximum number of executors needed.
long
gauge
apache_spark.driver.executors.pending_to_remove
Total number of executors pending to be removed.
long
gauge
apache_spark.driver.executors.target
Total number of target executors.
long
gauge
apache_spark.driver.executors.to_add
Total number of executors to be added.
long
gauge
apache_spark.driver.hive_external_catalog.file_cache_hits
Total number of file cache hits.
long
counter
apache_spark.driver.hive_external_catalog.files_discovered
Total number of files discovered.
long
counter
apache_spark.driver.hive_external_catalog.hive_client_calls
Total number of Hive Client calls.
long
counter
apache_spark.driver.hive_external_catalog.parallel_listing_job.count
Number of jobs running parallely.
long
counter
apache_spark.driver.hive_external_catalog.partitions_fetched
Number of partitions fetched.
long
counter
apache_spark.driver.job_duration
Duration of the job.
long
gauge
apache_spark.driver.jobs.failed
Number of failed jobs.
long
counter
apache_spark.driver.jobs.succeeded
Number of successful jobs.
long
counter
apache_spark.driver.jvm.cpu.time
Elapsed CPU time the JVM spent.
long
gauge
apache_spark.driver.mbean
The name of the jolokia mbean.
keyword
apache_spark.driver.memory.max_mem
Maximum amount of memory available for storage, in MB.
long
gauge
apache_spark.driver.memory.off_heap.max
Maximum amount of off heap memory available, in MB.
long
gauge
apache_spark.driver.memory.off_heap.remaining
Remaining amount of off heap memory, in MB.
long
gauge
apache_spark.driver.memory.off_heap.used
Total amount of off heap memory used, in MB.
long
gauge
apache_spark.driver.memory.on_heap.max
Maximum amount of on heap memory available, in MB.
long
gauge
apache_spark.driver.memory.on_heap.remaining
Remaining amount of on heap memory, in MB.
long
gauge
apache_spark.driver.memory.on_heap.used
Total amount of on heap memory used, in MB.
long
gauge
apache_spark.driver.memory.remaining
Remaining amount of storage memory, in MB.
long
gauge
apache_spark.driver.memory.used
Total amount of memory used for storage, in MB.
long
gauge
apache_spark.driver.spark.streaming.event_time.watermark
long
gauge
apache_spark.driver.spark.streaming.input_rate.total
Total rate of the input.
double
gauge
apache_spark.driver.spark.streaming.latency
long
gauge
apache_spark.driver.spark.streaming.processing_rate.total
Total rate of processing.
double
gauge
apache_spark.driver.spark.streaming.states.rows.total
Total number of rows.
long
gauge
apache_spark.driver.spark.streaming.states.used_bytes
Total number of bytes utilized.
long
gauge
apache_spark.driver.stages.completed_count
Total number of completed stages.
long
counter
apache_spark.driver.stages.failed_count
Total number of failed stages.
long
counter
apache_spark.driver.stages.skipped_count
Total number of skipped stages.
long
counter
apache_spark.driver.tasks.completed
Number of completed tasks.
long
counter
apache_spark.driver.tasks.executors.black_listed
Number of blacklisted executors for the tasks.
long
counter
apache_spark.driver.tasks.executors.excluded
Number of excluded executors for the tasks.
long
counter
apache_spark.driver.tasks.executors.unblack_listed
Number of unblacklisted executors for the tasks.
long
counter
apache_spark.driver.tasks.executors.unexcluded
Number of unexcluded executors for the tasks.
long
counter
apache_spark.driver.tasks.failed
Number of failed tasks.
long
counter
apache_spark.driver.tasks.killed
Number of killed tasks.
long
counter
apache_spark.driver.tasks.skipped
Number of skipped tasks.
long
counter
cloud.account.id
The cloud account or organization id used to identify different entities in a multi-tenant environment. Examples: AWS account id, Google Cloud ORG Id, or other unique identifier.
keyword
cloud.availability_zone
Availability zone in which this host, resource, or service is located.
keyword
cloud.instance.id
Instance ID of the host machine.
keyword
cloud.provider
Name of the cloud provider. Example values are aws, azure, gcp, or digitalocean.
keyword
cloud.region
Region in which this host, resource, or service is located.
keyword
container.id
Unique container id.
keyword
data_stream.dataset
Data stream dataset.
constant_keyword
data_stream.namespace
Data stream namespace.
constant_keyword
data_stream.type
Data stream type.
constant_keyword
ecs.version
ECS version this event conforms to. ecs.version is a required field and must exist in all events. When querying across multiple indices -- which may conform to slightly different ECS versions -- this field lets integrations adjust to the schema version of the events.
keyword
error.message
Error message.
match_only_text
event.dataset
Name of the dataset. If an event source publishes more than one type of log or events (e.g. access log, error log), the dataset is used to specify which one the event comes from. It's recommended but not required to start the dataset name with the module name, followed by a dot, then the dataset name.
keyword
event.kind
This is one of four ECS Categorization Fields, and indicates the highest level in the ECS category hierarchy. event.kind gives high-level information about what type of information the event contains, without being specific to the contents of the event. For example, values of this field distinguish alert events from metric events. The value of this field can be used to inform how these kinds of events should be handled. They may warrant different retention, different access control, it may also help understand whether the data coming in at a regular interval or not.
keyword
event.module
Name of the module this data is coming from. If your monitoring agent supports the concept of modules or plugins to process events of a given source (e.g. Apache logs), event.module should contain the name of this module.
keyword
event.type
This is one of four ECS Categorization Fields, and indicates the third level in the ECS category hierarchy. event.type represents a categorization "sub-bucket" that, when used along with the event.category field values, enables filtering events down to a level appropriate for single visualization. This field is an array. This will allow proper categorization of some events that fall in multiple event types.
keyword
host.ip
Host ip addresses.
ip
host.name
Name of the host. It can contain what hostname returns on Unix systems, the fully qualified domain name, or a name specified by the user. The sender decides which value to use.
keyword
service.address
Address where data about this service was collected from. This should be a URI, network address (ipv4:port or [ipv6]:port) or a resource path (sockets).
keyword
service.type
The type of the service data is collected from. The type can be used to group and correlate logs and metrics from one service type. Example: If logs or metrics are collected from Elasticsearch, service.type would be elasticsearch.
keyword
tags
List of keywords used to tag each event.
keyword

Executor

The executor data stream collects metrics related to the operations, memory usage, garbage collection, file handling, and threadpool activity.

An example event for executor looks as following:

{
    "@timestamp": "2023-09-28T09:26:45.771Z",
    "agent": {
        "ephemeral_id": "3a3db920-eb4b-4045-b351-33526910ae8a",
        "id": "a6bdbb4a-4bac-4243-83cb-dba157f24987",
        "name": "docker-fleet-agent",
        "type": "metricbeat",
        "version": "8.8.0"
    },
    "apache_spark": {
        "executor": {
            "application_name": "app-20230928092630-0000",
            "id": "0",
            "jvm": {
                "cpu_time": 20010000000
            },
            "mbean": "metrics:name=app-20230928092630-0000.0.JVMCPU.jvmCpuTime,type=gauges"
        }
    },
    "data_stream": {
        "dataset": "apache_spark.executor",
        "namespace": "ep",
        "type": "metrics"
    },
    "ecs": {
        "version": "8.5.1"
    },
    "elastic_agent": {
        "id": "a6bdbb4a-4bac-4243-83cb-dba157f24987",
        "snapshot": false,
        "version": "8.8.0"
    },
    "event": {
        "agent_id_status": "verified",
        "dataset": "apache_spark.executor",
        "duration": 2849184715,
        "ingested": "2023-09-28T09:26:49Z",
        "kind": "metric",
        "module": "apache_spark",
        "type": [
            "info"
        ]
    },
    "host": {
        "architecture": "x86_64",
        "containerized": true,
        "hostname": "docker-fleet-agent",
        "id": "e8978f2086c14e13b7a0af9ed0011d19",
        "ip": [
            "172.20.0.7"
        ],
        "mac": "02-42-AC-14-00-07",
        "name": "docker-fleet-agent",
        "os": {
            "codename": "focal",
            "family": "debian",
            "kernel": "3.10.0-1160.90.1.el7.x86_64",
            "name": "Ubuntu",
            "platform": "ubuntu",
            "type": "linux",
            "version": "20.04.6 LTS (Focal Fossa)"
        }
    },
    "metricset": {
        "name": "jmx",
        "period": 60000
    },
    "service": {
        "address": "http://apache-spark-main:7780/jolokia/%3FignoreErrors=true\u0026canonicalNaming=false",
        "type": "jolokia"
    }
}

Exported fields

FieldDescriptionTypeMetric Type
@timestamp
Event timestamp.
date
agent.id
Unique identifier of this agent (if one exists). Example: For Beats this would be beat.id.
keyword
apache_spark.executor.application_name
Name of application.
keyword
apache_spark.executor.bytes.read
Total number of bytes read.
long
counter
apache_spark.executor.bytes.written
Total number of bytes written.
long
counter
apache_spark.executor.disk_bytes_spilled
Total number of disk bytes spilled.
long
counter
apache_spark.executor.file_cache_hits
Total number of file cache hits.
long
counter
apache_spark.executor.files_discovered
Total number of files discovered.
long
counter
apache_spark.executor.filesystem.file.large_read_ops
Total number of large read operations from the files.
long
gauge
apache_spark.executor.filesystem.file.read_bytes
Total number of bytes read from the files.
long
gauge
apache_spark.executor.filesystem.file.read_ops
Total number of read operations from the files.
long
gauge
apache_spark.executor.filesystem.file.write_bytes
Total number of bytes written from the files.
long
gauge
apache_spark.executor.filesystem.file.write_ops
Total number of write operations from the files.
long
gauge
apache_spark.executor.filesystem.hdfs.large_read_ops
Total number of large read operations from HDFS.
long
gauge
apache_spark.executor.filesystem.hdfs.read_bytes
Total number of read bytes from HDFS.
long
gauge
apache_spark.executor.filesystem.hdfs.read_ops
Total number of read operations from HDFS.
long
gauge
apache_spark.executor.filesystem.hdfs.write_bytes
Total number of write bytes from HDFS.
long
gauge
apache_spark.executor.filesystem.hdfs.write_ops
Total number of write operations from HDFS.
long
gauge
apache_spark.executor.gc.major.count
Total major GC count. For example, the garbage collector is one of MarkSweepCompact, PS MarkSweep, ConcurrentMarkSweep, G1 Old Generation and so on.
long
gauge
apache_spark.executor.gc.major.time
Elapsed total major GC time. The value is expressed in milliseconds.
long
gauge
apache_spark.executor.gc.minor.count
Total minor GC count. For example, the garbage collector is one of Copy, PS Scavenge, ParNew, G1 Young Generation and so on.
long
gauge
apache_spark.executor.gc.minor.time
Elapsed total minor GC time. The value is expressed in milliseconds.
long
gauge
apache_spark.executor.heap_memory.off.execution
Peak off heap execution memory in use, in bytes.
long
gauge
apache_spark.executor.heap_memory.off.storage
Peak off heap storage memory in use, in bytes.
long
gauge
apache_spark.executor.heap_memory.off.unified
Peak off heap memory (execution and storage).
long
gauge
apache_spark.executor.heap_memory.on.execution
Peak on heap execution memory in use, in bytes.
long
gauge
apache_spark.executor.heap_memory.on.storage
Peak on heap storage memory in use, in bytes.
long
gauge
apache_spark.executor.heap_memory.on.unified
Peak on heap memory (execution and storage).
long
gauge
apache_spark.executor.hive_client_calls
Total number of Hive Client calls.
long
counter
apache_spark.executor.id
ID of executor.
keyword
apache_spark.executor.jvm.cpu_time
Elapsed CPU time the JVM spent.
long
gauge
apache_spark.executor.jvm.gc_time
Elapsed time the JVM spent in garbage collection while executing this task.
long
counter
apache_spark.executor.mbean
The name of the jolokia mbean.
keyword
apache_spark.executor.memory.direct_pool
Peak memory that the JVM is using for direct buffer pool.
long
gauge
apache_spark.executor.memory.jvm.heap
Peak memory usage of the heap that is used for object allocation.
long
gauge
apache_spark.executor.memory.jvm.off_heap
Peak memory usage of non-heap memory that is used by the Java virtual machine.
long
gauge
apache_spark.executor.memory.mapped_pool
Peak memory that the JVM is using for mapped buffer pool
long
gauge
apache_spark.executor.memory_bytes_spilled
The number of in-memory bytes spilled by this task.
long
counter
apache_spark.executor.parallel_listing_job_count
Number of jobs running parallely.
long
counter
apache_spark.executor.partitions_fetched
Number of partitions fetched.
long
counter
apache_spark.executor.process_tree.jvm.rss_memory
Resident Set Size: number of pages the process has in real memory. This is just the pages which count toward text, data, or stack space. This does not include pages which have not been demand-loaded in, or which are swapped out.
long
gauge
apache_spark.executor.process_tree.jvm.v_memory
Virtual memory size in bytes.
long
gauge
apache_spark.executor.process_tree.other.rss_memory
Resident Set Size for other kind of process.
long
gauge
apache_spark.executor.process_tree.other.v_memory
Virtual memory size for other kind of process in bytes.
long
gauge
apache_spark.executor.process_tree.python.rss_memory
Resident Set Size for Python.
long
gauge
apache_spark.executor.process_tree.python.v_memory
Virtual memory size for Python in bytes.
long
gauge
apache_spark.executor.records.read
Total number of records read.
long
counter
apache_spark.executor.records.written
Total number of records written.
long
counter
apache_spark.executor.result.serialization_time
Elapsed time spent serializing the task result. The value is expressed in milliseconds.
long
counter
apache_spark.executor.result.size
The number of bytes this task transmitted back to the driver as the TaskResult.
long
counter
apache_spark.executor.run_time
Elapsed time in the running this task
long
counter
apache_spark.executor.shuffle.bytes_written
Number of bytes written in shuffle operations.
long
counter
apache_spark.executor.shuffle.client.used.direct_memory
Amount of direct memory used by the shuffle client.
long
gauge
apache_spark.executor.shuffle.client.used.heap_memory
Amount of heap memory used by the shuffle client.
long
gauge
apache_spark.executor.shuffle.fetch_wait_time
Time the task spent waiting for remote shuffle blocks.
long
counter
apache_spark.executor.shuffle.local.blocks_fetched
Number of local (as opposed to read from a remote executor) blocks fetched in shuffle operations.
long
counter
apache_spark.executor.shuffle.local.bytes_read
Number of bytes read in shuffle operations from local disk (as opposed to read from a remote executor).
long
counter
apache_spark.executor.shuffle.records.read
Number of records read in shuffle operations.
long
counter
apache_spark.executor.shuffle.records.written
Number of records written in shuffle operations.
long
counter
apache_spark.executor.shuffle.remote.blocks_fetched
Number of remote blocks fetched in shuffle operations.
long
counter
apache_spark.executor.shuffle.remote.bytes_read
Number of remote bytes read in shuffle operations.
long
counter
apache_spark.executor.shuffle.remote.bytes_read_to_disk
Number of remote bytes read to disk in shuffle operations. Large blocks are fetched to disk in shuffle read operations, as opposed to being read into memory, which is the default behavior.
long
counter
apache_spark.executor.shuffle.server.used.direct_memory
Amount of direct memory used by the shuffle server.
long
gauge
apache_spark.executor.shuffle.server.used.heap_memory
Amount of heap memory used by the shuffle server.
long
counter
apache_spark.executor.shuffle.total.bytes_read
Number of bytes read in shuffle operations (both local and remote)
long
counter
apache_spark.executor.shuffle.write.time
Time spent blocking on writes to disk or buffer cache. The value is expressed in nanoseconds.
long
counter
apache_spark.executor.succeeded_tasks
The number of tasks succeeded.
long
counter
apache_spark.executor.threadpool.active_tasks
Number of tasks currently executing.
long
gauge
apache_spark.executor.threadpool.complete_tasks
Number of tasks that have completed in this executor.
long
gauge
apache_spark.executor.threadpool.current_pool_size
The size of the current thread pool of the executor.
long
gauge
apache_spark.executor.threadpool.max_pool_size
The maximum size of the thread pool of the executor.
long
counter
apache_spark.executor.threadpool.started_tasks
The number of tasks started in the thread pool of the executor.
long
counter
cloud.account.id
The cloud account or organization id used to identify different entities in a multi-tenant environment. Examples: AWS account id, Google Cloud ORG Id, or other unique identifier.
keyword
cloud.availability_zone
Availability zone in which this host, resource, or service is located.
keyword
cloud.instance.id
Instance ID of the host machine.
keyword
cloud.provider
Name of the cloud provider. Example values are aws, azure, gcp, or digitalocean.
keyword
cloud.region
Region in which this host, resource, or service is located.
keyword
container.id
Unique container id.
keyword
data_stream.dataset
Data stream dataset.
constant_keyword
data_stream.namespace
Data stream namespace.
constant_keyword
data_stream.type
Data stream type.
constant_keyword
ecs.version
ECS version this event conforms to. ecs.version is a required field and must exist in all events. When querying across multiple indices -- which may conform to slightly different ECS versions -- this field lets integrations adjust to the schema version of the events.
keyword
error.message
Error message.
match_only_text
event.dataset
Name of the dataset. If an event source publishes more than one type of log or events (e.g. access log, error log), the dataset is used to specify which one the event comes from. It's recommended but not required to start the dataset name with the module name, followed by a dot, then the dataset name.
keyword
event.kind
This is one of four ECS Categorization Fields, and indicates the highest level in the ECS category hierarchy. event.kind gives high-level information about what type of information the event contains, without being specific to the contents of the event. For example, values of this field distinguish alert events from metric events. The value of this field can be used to inform how these kinds of events should be handled. They may warrant different retention, different access control, it may also help understand whether the data coming in at a regular interval or not.
keyword
event.module
Name of the module this data is coming from. If your monitoring agent supports the concept of modules or plugins to process events of a given source (e.g. Apache logs), event.module should contain the name of this module.
keyword
event.type
This is one of four ECS Categorization Fields, and indicates the third level in the ECS category hierarchy. event.type represents a categorization "sub-bucket" that, when used along with the event.category field values, enables filtering events down to a level appropriate for single visualization. This field is an array. This will allow proper categorization of some events that fall in multiple event types.
keyword
host.ip
Host ip addresses.
ip
host.name
Name of the host. It can contain what hostname returns on Unix systems, the fully qualified domain name, or a name specified by the user. The sender decides which value to use.
keyword
service.address
Address where data about this service was collected from. This should be a URI, network address (ipv4:port or [ipv6]:port) or a resource path (sockets).
keyword
service.type
The type of the service data is collected from. The type can be used to group and correlate logs and metrics from one service type. Example: If logs or metrics are collected from Elasticsearch, service.type would be elasticsearch.
keyword
tags
List of keywords used to tag each event.
keyword

Node

The node data stream collects metrics related to the application count, waiting applications, worker metrics, executor count, core usage, and memory usage.

An example event for node looks as following:

{
    "@timestamp": "2022-04-12T04:42:49.581Z",
    "agent": {
        "ephemeral_id": "ae57925e-eeca-4bf4-ae20-38f82db1378b",
        "id": "f051059f-86be-46d5-896d-ff1b2cdab179",
        "name": "docker-fleet-agent",
        "type": "metricbeat",
        "version": "8.1.0"
    },
    "apache_spark": {
        "node": {
            "main": {
                "applications": {
                    "count": 0,
                    "waiting": 0
                },
                "workers": {
                    "alive": 0,
                    "count": 0
                }
            }
        }
    },
    "data_stream": {
        "dataset": "apache_spark.node",
        "namespace": "ep",
        "type": "metrics"
    },
    "ecs": {
        "version": "8.5.1"
    },
    "elastic_agent": {
        "id": "f051059f-86be-46d5-896d-ff1b2cdab179",
        "snapshot": false,
        "version": "8.1.0"
    },
    "event": {
        "agent_id_status": "verified",
        "dataset": "apache_spark.node",
        "duration": 8321835,
        "ingested": "2022-04-12T04:42:53Z",
        "kind": "metric",
        "module": "apache_spark",
        "type": [
            "info"
        ]
    },
    "host": {
        "architecture": "x86_64",
        "containerized": true,
        "hostname": "docker-fleet-agent",
        "ip": [
            "192.168.32.5"
        ],
        "mac": [
            "02:42:c0:a8:20:05"
        ],
        "name": "docker-fleet-agent",
        "os": {
            "codename": "focal",
            "family": "debian",
            "kernel": "5.4.0-107-generic",
            "name": "Ubuntu",
            "platform": "ubuntu",
            "type": "linux",
            "version": "20.04.3 LTS (Focal Fossa)"
        }
    },
    "metricset": {
        "name": "jmx",
        "period": 60000
    },
    "service": {
        "address": "http://apache-spark-main:7777/jolokia/%3FignoreErrors=true\u0026canonicalNaming=false",
        "type": "jolokia"
    }
}

Exported fields

FieldDescriptionTypeMetric Type
@timestamp
Event timestamp.
date
agent.id
Unique identifier of this agent (if one exists). Example: For Beats this would be beat.id.
keyword
apache_spark.node.main.applications.count
Total number of apps.
long
gauge
apache_spark.node.main.applications.waiting
Number of apps waiting.
long
gauge
apache_spark.node.main.workers.alive
Number of alive workers.
long
gauge
apache_spark.node.main.workers.count
Total number of workers.
long
gauge
apache_spark.node.worker.cores.free
Number of cores free.
long
gauge
apache_spark.node.worker.cores.used
Number of cores used.
long
gauge
apache_spark.node.worker.executors
Number of executors.
long
gauge
apache_spark.node.worker.memory.free
Number of cores free.
long
gauge
apache_spark.node.worker.memory.used
Amount of memory utilized in MB.
long
gauge
cloud.account.id
The cloud account or organization id used to identify different entities in a multi-tenant environment. Examples: AWS account id, Google Cloud ORG Id, or other unique identifier.
keyword
cloud.availability_zone
Availability zone in which this host, resource, or service is located.
keyword
cloud.instance.id
Instance ID of the host machine.
keyword
cloud.provider
Name of the cloud provider. Example values are aws, azure, gcp, or digitalocean.
keyword
cloud.region
Region in which this host, resource, or service is located.
keyword
container.id
Unique container id.
keyword
data_stream.dataset
Data stream dataset.
constant_keyword
data_stream.namespace
Data stream namespace.
constant_keyword
data_stream.type
Data stream type.
constant_keyword
ecs.version
ECS version this event conforms to. ecs.version is a required field and must exist in all events. When querying across multiple indices -- which may conform to slightly different ECS versions -- this field lets integrations adjust to the schema version of the events.
keyword
error.message
Error message.
match_only_text
event.dataset
Name of the dataset. If an event source publishes more than one type of log or events (e.g. access log, error log), the dataset is used to specify which one the event comes from. It's recommended but not required to start the dataset name with the module name, followed by a dot, then the dataset name.
keyword
event.kind
This is one of four ECS Categorization Fields, and indicates the highest level in the ECS category hierarchy. event.kind gives high-level information about what type of information the event contains, without being specific to the contents of the event. For example, values of this field distinguish alert events from metric events. The value of this field can be used to inform how these kinds of events should be handled. They may warrant different retention, different access control, it may also help understand whether the data coming in at a regular interval or not.
keyword
event.module
Name of the module this data is coming from. If your monitoring agent supports the concept of modules or plugins to process events of a given source (e.g. Apache logs), event.module should contain the name of this module.
keyword
event.type
This is one of four ECS Categorization Fields, and indicates the third level in the ECS category hierarchy. event.type represents a categorization "sub-bucket" that, when used along with the event.category field values, enables filtering events down to a level appropriate for single visualization. This field is an array. This will allow proper categorization of some events that fall in multiple event types.
keyword
host.ip
Host ip addresses.
ip
host.name
Name of the host. It can contain what hostname returns on Unix systems, the fully qualified domain name, or a name specified by the user. The sender decides which value to use.
keyword
service.address
Address where data about this service was collected from. This should be a URI, network address (ipv4:port or [ipv6]:port) or a resource path (sockets).
keyword
service.type
The type of the service data is collected from. The type can be used to group and correlate logs and metrics from one service type. Example: If logs or metrics are collected from Elasticsearch, service.type would be elasticsearch.
keyword
tags
List of keywords used to tag each event.
keyword

Changelog

VersionDetailsKibana version(s)

1.0.3

Enhancement View pull request
Update README to follow documentation guidelines.

8.8.0 or higher

1.0.2

Enhancement View pull request
Inline "by reference" visualizations

8.8.0 or higher

1.0.1

Bug fix View pull request
Update the link to the correct reindexing procedure.

8.8.0 or higher

1.0.0

Enhancement View pull request
Make Apache Spark GA.

8.8.0 or higher

0.8.0

Enhancement View pull request
Update the package format_version to 3.0.0.

0.7.9

Bug fix View pull request
Add filters in visualizations.

0.7.8

Enhancement View pull request
Enable time series data streams for the metrics datasets. This dramatically reduces storage for metrics and is expected to progressively improve query performance. For more details, see https://www.elastic.co/guide/en/elasticsearch/reference/current/tsds.html.

0.7.7

Enhancement View pull request
Add metric_type for node data stream.

0.7.6

Enhancement View pull request
Added dimension mapping for Node datastream.

0.7.5

Enhancement View pull request
Add metric_type mappings for executor data stream.

0.7.4

Enhancement View pull request
Added dimension mapping for Executor datastream.

0.7.3

Enhancement View pull request
Add metric_type mapping for driver datastream.

0.7.2

Enhancement View pull request
Added dimension mapping for driver datastream.

0.7.1

Enhancement View pull request
Add metric type for application data stream.

0.7.0

Enhancement View pull request
Added dimension mapping for Application datastream.

0.6.4

Bug fix View pull request
Fix the metric type of input_rate field for driver datastream.

0.6.3

Enhancement View pull request
Update Apache Spark logo.

0.6.2

Bug fix View pull request
Resolve the conflicts in host.ip field

0.6.1

Bug fix View pull request
Remove incorrect filter from the visualizations

0.6.0

Enhancement View pull request
Rename ownership from obs-service-integrations to obs-infraobs-integrations

0.5.0

Enhancement View pull request
Migrate visualizations to lens.

0.4.1

Enhancement View pull request
Added categories and/or subcategories.

0.4.0

Enhancement View pull request
Update ECS version to 8.5.1

0.3.0

Enhancement View pull request
Update readme

0.2.1

Bug fix View pull request
Remove unnecessary fields from fields.yml

0.2.0

Enhancement View pull request
Add dashboards and visualizations

0.1.1

Enhancement View pull request
Refactor the "nodes" data stream to adjust its name to "node" (singular)

0.1.0

Enhancement View pull request
Implement "executor" data stream

Enhancement View pull request
Implement "driver" data stream

Enhancement View pull request
Implement "application" data stream

Enhancement View pull request
Implement "nodes" data stream

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