Apache Spark provides a suite of web user interfaces (UIs) that you can use to monitor the status and resource consumption of your Spark cluster.
Table of Contents
- Jobs Tab
- Stages Tab
- Storage Tab
- Environment Tab
- Executors Tab
- SQL Tab
- Structured Streaming Tab
- Streaming (DStreams) Tab
- JDBC/ODBC Server Tab
The Jobs tab displays a summary page of all jobs in the Spark application and a details page for each job. The summary page shows high-level information, such as the status, duration, and progress of all jobs and the overall event timeline. When you click on a job on the summary page, you see the details page for that job. The details page further shows the event timeline, DAG visualization, and all stages of the job.
The information that is displayed in this section is
- User: Current Spark user
- Total uptime: Time since Spark application started
- Scheduling mode: See job scheduling
- Number of jobs per status: Active, Completed, Failed
- Event timeline: Displays in chronological order the events related to the executors (added, removed) and the jobs
- Details of jobs grouped by status: Displays detailed information of the jobs including Job ID, description (with a link to detailed job page), submitted time, duration, stages summary and tasks progress bar
When you click on a specific job, you can see the detailed information of this job.
This page displays the details of a specific job identified by its job ID.
- Job Status: (running, succeeded, failed)
- Number of stages per status (active, pending, completed, skipped, failed)
- Associated SQL Query: Link to the sql tab for this job
- Event timeline: Displays in chronological order the events related to the executors (added, removed) and the stages of the job
- DAG visualization: Visual representation of the directed acyclic graph of this job where vertices represent the RDDs or DataFrames and the edges represent an operation to be applied on RDD.
- An example of DAG visualization for
sc.parallelize(1 to 100).toDF.count()
- List of stages (grouped by state active, pending, completed, skipped, and failed)
- Stage ID
- Description of the stage
- Submitted timestamp
- Duration of the stage
- Tasks progress bar
- Input: Bytes read from storage in this stage
- Output: Bytes written in storage in this stage
- Shuffle read: Total shuffle bytes and records read, includes both data read locally and data read from remote executors
- Shuffle write: Bytes and records written to disk in order to be read by a shuffle in a future stage
The Stages tab displays a summary page that shows the current state of all stages of all jobs in the Spark application.
At the beginning of the page is the summary with the count of all stages by status (active, pending, completed, skipped, and failed)
After that are the details of stages per status (active, pending, completed, skipped, failed). In active stages, it’s possible to kill the stage with the kill link. Only in failed stages, failure reason is shown. Task detail can be accessed by clicking on the description.
There is also a visual representation of the directed acyclic graph (DAG) of this stage, where vertices represent the RDDs or DataFrames and the edges represent an operation to be applied. Nodes are grouped by operation scope in the DAG visualization and labelled with the operation scope name (BatchScan, WholeStageCodegen, Exchange, etc). Notably, Whole Stage Code Generation operations are also annotated with the code generation id. For stages belonging to Spark DataFrame or SQL execution, this allows to cross-reference Stage execution details to the relevant details in the Web-UI SQL Tab page where SQL plan graphs and execution plans are reported.
Summary metrics for all task are represented in a table and in a timeline.
- Tasks deserialization time
- Duration of tasks.
- GC time is the total JVM garbage collection time.
- Result serialization time is the time spent serializing the task result on an executor before sending it back to the driver.
- Getting result time is the time that the driver spends fetching task results from workers.
- Scheduler delay is the time the task waits to be scheduled for execution.
- Peak execution memory is the maximum memory used by the internal data structures created during shuffles, aggregations and joins.
- Shuffle Read Size / Records. Total shuffle bytes read, includes both data read locally and data read from remote executors.
- Shuffle Read Blocked Time is the time that tasks spent blocked waiting for shuffle data to be read from remote machines.
- Shuffle Remote Reads is the total shuffle bytes read from remote executors.
- Shuffle spill (memory) is the size of the deserialized form of the shuffled data in memory.
- Shuffle spill (disk) is the size of the serialized form of the data on disk.
Aggregated metrics by executor show the same information aggregated by executor.
Accumulators are a type of shared variables. It provides a mutable variable that can be updated inside of a variety of transformations. It is possible to create accumulators with and without name, but only named accumulators are displayed.
Tasks details basically includes the same information as in the summary section but detailed by task. It also includes links to review the logs and the task attempt number if it fails for any reason. If there are named accumulators, here it is possible to see the accumulator value at the end of each task.
The Storage tab displays the persisted RDDs and DataFrames, if any, in the application. The summary page shows the storage levels, sizes and partitions of all RDDs, and the details page shows the sizes and using executors for all partitions in an RDD or DataFrame.
After running the above example, we can find two RDDs listed in the Storage tab. Basic information like storage level, number of partitions and memory overhead are provided. Note that the newly persisted RDDs or DataFrames are not shown in the tab before they are materialized. To monitor a specific RDD or DataFrame, make sure an action operation has been triggered.
You can click the RDD name ‘rdd’ for obtaining the details of data persistence, such as the data distribution on the cluster.
The Environment tab displays the values for the different environment and configuration variables, including JVM, Spark, and system properties.
This environment page has five parts. It is a useful place to check whether your properties have been set correctly. The first part ‘Runtime Information’ simply contains the runtime properties like versions of Java and Scala. The second part ‘Spark Properties’ lists the application properties like ‘spark.app.name’ and ‘spark.driver.memory’.
Clicking the ‘Hadoop Properties’ link displays properties relative to Hadoop and YARN. Note that properties like ‘spark.hadoop.*’ are shown not in this part but in ‘Spark Properties’.
‘System Properties’ shows more details about the JVM.
The last part ‘Classpath Entries’ lists the classes loaded from different sources, which is very useful to resolve class conflicts.
The Executors tab displays summary information about the executors that were created for the application, including memory and disk usage and task and shuffle information. The Storage Memory column shows the amount of memory used and reserved for caching data.
The Executors tab provides not only resource information (amount of memory, disk, and cores used by each executor) but also performance information (GC time and shuffle information).
Clicking the ‘stderr’ link of executor 0 displays detailed standard error log in its console.
Clicking the ‘Thread Dump’ link of executor 0 displays the thread dump of JVM on executor 0, which is pretty useful for performance analysis.
If the application executes Spark SQL queries, the SQL tab displays information, such as the duration, jobs, and physical and logical plans for the queries. Here we include a basic example to illustrate this tab:
Now the above three dataframe/SQL operators are shown in the list. If we click the ‘show at <console>: 24’ link of the last query, we will see the DAG and details of the query execution.
The query details page displays information about the query execution time, its duration, the list of associated jobs, and the query execution DAG. The first block ‘WholeStageCodegen (1)’ compiles multiple operators (‘LocalTableScan’ and ‘HashAggregate’) together into a single Java function to improve performance, and metrics like number of rows and spill size are listed in the block. The annotation ‘(1)’ in the block name is the code generation id. The second block ‘Exchange’ shows the metrics on the shuffle exchange, including number of written shuffle records, total data size, etc.
Clicking the ‘Details’ link on the bottom displays the logical plans and the physical plan, which illustrate how Spark parses, analyzes, optimizes and performs the query. Steps in the physical plan subject to whole stage code generation optimization, are prefixed by a star followed by the code generation id, for example: ‘*(1) LocalTableScan’
The metrics of SQL operators are shown in the block of physical operators. The SQL metrics can be useful when we want to dive into the execution details of each operator. For example, “number of output rows” can answer how many rows are output after a Filter operator, “shuffle bytes written total” in an Exchange operator shows the number of bytes written by a shuffle.
Here is the list of SQL metrics:
| ||the number of output rows of the operator||Aggregate operators, Join operators, Sample, Range, Scan operators, Filter, etc.|
| ||the size of broadcast/shuffled/collected data of the operator||BroadcastExchange, ShuffleExchange, Subquery|
| ||the time spent on collecting data||BroadcastExchange, Subquery|
| ||the time spent on scanning data||ColumnarBatchScan, FileSourceScan|
| ||the time spent on getting metadata like number of partitions, number of files||FileSourceScan|
| ||the number of bytes written||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of records written||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the time spent on shuffle writing||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of blocks read remotely||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of bytes read remotely||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of bytes read from remote to local disk||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of blocks read locally||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of bytes read locally||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the time spent on fetching data (local and remote)||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the number of read records||CollectLimit, TakeOrderedAndProject, ShuffleExchange|
| ||the time spent on sorting||Sort|
| ||the peak memory usage in the operator||Sort, HashAggregate|
| ||number of bytes spilled to disk from memory in the operator||Sort, HashAggregate|
| ||the time spent on aggregation||HashAggregate, ObjectHashAggregate|
| ||the average bucket list iterations per lookup during aggregation||HashAggregate|
| ||the size of built hash map||ShuffledHashJoin|
| ||the time spent on building hash map||ShuffledHashJoin|
Structured Streaming Tab
When running Structured Streaming jobs in micro-batch mode, a Structured Streaming tab will be available on the Web UI. The overview page displays some brief statistics for running and completed queries. Also, you can check the latest exception of a failed query. For detailed statistics, please click a “run id” in the tables.
The statistics page displays some useful metrics for insight into the status of your streaming queries. Currently, it contains the following metrics.
- Input Rate. The aggregate (across all sources) rate of data arriving.
- Process Rate. The aggregate (across all sources) rate at which Spark is processing data.
- Input Rows. The aggregate (across all sources) number of records processed in a trigger.
- Batch Duration. The process duration of each batch.
- Operation Duration. The amount of time taken to perform various operations in milliseconds.
The tracked operations are listed as follows.
- addBatch: Time taken to read the micro-batch’s input data from the sources, process it, and write the batch’s output to the sink. This should take the bulk of the micro-batch’s time.
- getBatch: Time taken to prepare the logical query to read the input of the current micro-batch from the sources.
- latestOffset & getOffset: Time taken to query the maximum available offset for this source.
- queryPlanning: Time taken to generates the execution plan.
- walCommit: Time taken to write the offsets to the metadata log.
As an early-release version, the statistics page is still under development and will be improved in future releases.
Streaming (DStreams) Tab
The web UI includes a Streaming tab if the application uses Spark Streaming with DStream API. This tab displays scheduling delay and processing time for each micro-batch in the data stream, which can be useful for troubleshooting the streaming application.
JDBC/ODBC Server Tab
We can see this tab when Spark is running as a distributed SQL engine. It shows information about sessions and submitted SQL operations.
The first section of the page displays general information about the JDBC/ODBC server: start time and uptime.
The second section contains information about active and finished sessions.
- User and IP of the connection.
- Session id link to access to session info.
- Start time, finish time and duration of the session.
- Total execute is the number of operations submitted in this session.
The third section has the SQL statistics of the submitted operations.
- User that submit the operation.
- Job id link to jobs tab.
- Group id of the query that group all jobs together. An application can cancel all running jobs using this group id.
- Start time of the operation.
- Finish time of the execution, before fetching the results.
- Close time of the operation after fetching the results.
- Execution time is the difference between finish time and start time.
- Duration time is the difference between close time and start time.
- Statement is the operation being executed.
- State of the process.
- Started, first state, when the process begins.
- Compiled, execution plan generated.
- Failed, final state when the execution failed or finished with error.
- Canceled, final state when the execution is canceled.
- Finished processing and waiting to fetch results.
- Closed, final state when client closed the statement.
- Detail of the execution plan with parsed logical plan, analyzed logical plan, optimized logical plan and physical plan or errors in the SQL statement.