此内容没有您所选择的语言版本。

Chapter 15. Cruise Control for cluster rebalancing


Important

Cruise Control for cluster rebalancing is a Technology Preview only. Technology Preview features are not supported with Red Hat production service-level agreements (SLAs) and might not be functionally complete. Red Hat does not recommend implementing any Technology Preview features in production environments. This Technology Preview feature provides early access to upcoming product innovations, enabling you to test functionality and provide feedback during the development process. For more information about the support scope of Red Hat Technology Preview features, see Technology Preview Features Support Scope.

You can deploy Cruise Control to your AMQ Streams cluster and use it to rebalance the load across the Kafka brokers.

Cruise Control is an open source system for automating Kafka operations, such as monitoring cluster workload, rebalancing a cluster based on predefined constraints, and detecting and fixing anomalies. It consists of four components (Load Monitor, Analyzer, Anomaly Detector, and Executor) and a REST API.

When AMQ Streams and Cruise Control are both deployed to Red Hat Enterprise Linux, you can access Cruise Control features through the Cruise Control REST API. The following features are supported:

  • Configuring optimization goals and capacity limits
  • Using the /rebalance endpoint to:

    • Generate optimization proposals, as dry runs, based on the configured optimization goals or user-provided goals supplied as request parameters
    • Initiate an optimization proposal to rebalance the Kafka cluster
  • Checking the progress of an active rebalance operation using the /user_tasks endpoint
  • Stopping an active rebalance operation using the /stop_proposal_execution endpoint

All other Cruise Control features are not currently supported, including anomaly detection, notifications, write-your-own goals, and changing the topic replication factor. The web UI component (Cruise Control Frontend) is not supported.

Cruise Control for AMQ Streams on Red Hat Enterprise Linux is provided as a separate zipped distribution. For more information, see Section 15.2, “Downloading a Cruise Control archive”.

15.1. Why use Cruise Control?

Cruise Control reduces the time and effort involved in running an efficient Kafka cluster, with a more evenly balanced workload across the brokers.

A typical cluster can become unevenly loaded over time. Partitions that handle large amounts of message traffic might be unevenly distributed across the available brokers. To rebalance the cluster, administrators must monitor the load on brokers and manually reassign busy partitions to brokers with spare capacity.

Cruise Control automates this cluster rebalancing process. It constructs a workload model of resource utilization, based on CPU, disk, and network load. Using a set of configurable optimization goals, you can instruct Cruise Control to generate dry run optimization proposals for more balanced partition assignments.

After you have reviewed a dry run optimization proposal, you can instruct Cruise Control to initiate a cluster rebalance based on that proposal, or generate a new proposal.

When a cluster rebalancing operation is complete, the brokers are used more effectively and the load on the Kafka cluster is more evenly balanced.

15.2. Downloading a Cruise Control archive

A zipped distribution of Cruise Control for AMQ Streams on Red Hat Enterprise Linux is available for download from the Red Hat Customer Portal.

Procedure

  1. Download the latest version of the Red Hat AMQ Streams Cruise Control archive from the Red Hat Customer Portal.
  2. Create the /opt/cruise-control directory:

    sudo mkdir /opt/cruise-control
  3. Extract the contents of the Cruise Control ZIP file to the new directory:

    unzip amq-streams-y.y.y-cruise-control-bin.zip -d /opt/cruise-control
  4. Change the ownership of the /opt/cruise-control directory to the kafka user:

    sudo chown -R kafka:kafka /opt/cruise-control

15.3. Deploying the Cruise Control Metrics Reporter

Before starting Cruise Control, you must configure the Kafka brokers to use the provided Cruise Control Metrics Reporter.

When loaded at runtime, the Metrics Reporter sends metrics to the __CruiseControlMetrics topic, one of three auto-created topics. Cruise Control uses these metrics to create and update the workload model and to calculate optimization proposals.

Prerequisites

Procedure

For each broker in the Kafka cluster and one at a time:

  1. Stop the Kafka broker:

    /opt/kafka/bin/kafka-server-stop.sh
  2. Copy the Cruise Control Metrics Reporter .jar file to the Kafka libraries directory:

    cp /opt/cruise-control/libs/cruise-control-metrics-reporter-y.y.yyy.redhat-0000x.jar /opt/kafka/libs
  3. In the Kafka configuration file (/opt/kafka/config/server.properties) configure the Cruise Control Metrics Reporter:

    1. Add the CruiseControlMetricsReporter class to the metric.reporters configuration option. Do not remove any existing Metrics Reporters.

      metric.reporters=com.linkedin.kafka.cruisecontrol.metricsreporter.CruiseControlMetricsReporter
    2. Add the following configuration options and values to the Kafka configuration file:

      cruise.control.metrics.topic.auto.create=true
      cruise.control.metrics.topic.num.partitions=1
      cruise.control.metrics.topic.replication.factor=1

      These options enable the Cruise Control Metrics Reporter to create the __CruiseControlMetrics topic with a log cleanup policy of DELETE. For more information, see Auto-created topics and Log cleanup policy for Cruise Control Metrics topic.

  4. Configure SSL, if required.

    1. In the Kafka configuration file (/opt/kafka/config/server.properties) configure SSL between the Cruise Control Metrics Reporter and the Kafka broker by setting the relevant client configuration properties.

      The Metrics Reporter accepts all standard producer-specific configuration properties with the cruise.control.metrics.reporter prefix. For example: cruise.control.metrics.reporter.ssl.truststore.password.

    2. In the Cruise Control properties file (/opt/cruise-control/config/cruisecontrol.properties) configure SSL between the Kafka broker and the Cruise Control server by setting the relevant client configuration properties.

      Cruise Control inherits SSL client property options from Kafka and uses those properties for all Cruise Control server clients.

  5. Restart the Kafka broker:

    /opt/kafka/bin/kafka-server-start.sh
  6. Repeat steps 1-5 for the remaining brokers.

15.4. Configuring and starting Cruise Control

Configure the properties used by Cruise Control and then start the Cruise Control server using the cruise-control-start.sh script. The server is hosted on a single machine for the whole Kafka cluster.

Three topics are auto-created when Cruise Control starts. For more information, see Auto-created topics.

Procedure

  1. Edit the Cruise Control properties file (/opt/cruise-control/config/cruisecontrol.properties).
  2. Configure the properties shown in the following example configuration:

    # The Kafka cluster to control.
    bootstrap.servers=localhost:9092 1
    
    # The replication factor of Kafka metric sample store topic
    sample.store.topic.replication.factor=2 2
    
    # The configuration for the BrokerCapacityConfigFileResolver (supports JBOD, non-JBOD, and heterogeneous CPU core capacities)
    #capacity.config.file=config/capacity.json
    #capacity.config.file=config/capacityCores.json
    capacity.config.file=config/capacityJBOD.json 3
    
    # The list of goals to optimize the Kafka cluster for with pre-computed proposals
    default.goals={List of default optimization goals} 4
    
    # The list of supported goals
    goals={list of master optimization goals} 5
    
    # The list of supported hard goals
    hard.goals={List of hard goals} 6
    
    # How often should the cached proposal be expired and recalculated if necessary
    proposal.expiration.ms=60000 7
    
    # The zookeeper connect of the Kafka cluster
    zookeeper.connect=localhost:2181 8
    1
    Host and port numbers of the Kafka broker (always port 9092).
    2
    Replication factor of the Kafka metric sample store topic. If you are evaluating Cruise Control in a single-node Kafka and ZooKeeper cluster, set this property to 1. For production use, set this property to 2 or more.
    3
    The configuration file that sets the maximum capacity limits for broker resources. Use the file that applies to your Kafka deployment configuration. For more information, see Capacity configuration.
    4
    Comma-separated list of default optimization goals, using fully-qualified domain names (FQDNs). Fifteen of the master optimization goals (see 5) are already set as default optimization goals; you can add or remove goals if desired. For more information, see Section 15.5, “Optimization goals overview”.
    5
    Comma-separated list of master optimization goals, using FQDNs. To completely exclude goals from being used to generate optimization proposals, remove them from the list. For more information, see Section 15.5, “Optimization goals overview”.
    6
    Comma-separated list of hard goals, using FQDNs. Six of the master optimization goals are already set as hard goals; you can add or remove goals if desired. For more information, see Section 15.5, “Optimization goals overview”.
    7
    The interval, in milliseconds, for refreshing the cached optimization proposal that is generated from the default optimization goals. For more information, see Section 15.6, “Optimization proposals overview”.
    8
    Host and port numbers of the ZooKeeper connection (always port 2181).
  3. Start the Cruise Control server. The server starts on port 9092 by default; optionally, specify a different port.

    cd /opt/cruise-control/
    ./bin/cruise-control-start.sh config/cruisecontrol.properties PORT
  4. To verify that Cruise Control is running, send a GET request to the /state endpoint of the Cruise Control server:

    curl 'http://HOST:PORT/kafkacruisecontrol/state'

Auto-created topics

The following table shows the three topics that are automatically created when Cruise Control starts. These topics are required for Cruise Control to work properly and must not be deleted or changed.

Table 15.1. Auto-created topics
Auto-created topicCreated byFunction

__CruiseControlMetrics

Cruise Control Metrics Reporter

Stores the raw metrics from the Metrics Reporter in each Kafka broker.

__KafkaCruiseControlPartitionMetricSamples

Cruise Control

Stores the derived metrics for each partition. These are created by the Metric Sample Aggregator.

__KafkaCruiseControlModelTrainingSamples

Cruise Control

Stores the metrics samples used to create the Cluster Workload Model.

To ensure that log compaction is disabled in the auto-created topics, make sure that you configure the Cruise Control Metrics Reporter as described in Section 15.3, “Deploying the Cruise Control Metrics Reporter”. Log compaction can remove records that are needed by Cruise Control and prevent it from working properly.

15.5. Optimization goals overview

To rebalance a Kafka cluster, Cruise Control uses optimization goals to generate optimization proposals. Optimization goals are constraints on workload redistribution and resource utilization across a Kafka cluster.

AMQ Streams on Red Hat Enterprise Linux supports all the optimization goals developed in the Cruise Control project. The supported goals, in the default descending order of priority, are as follows:

  1. Rack-awareness
  2. Replica capacity
  3. Capacity: Disk capacity, Network inbound capacity, Network outbound capacity
  4. CPU capacity
  5. Replica distribution
  6. Potential network output
  7. Resource distribution: Disk utilization distribution, Network inbound utilization distribution, Network outbound utilization distribution
  8. Leader bytes-in rate distribution
  9. Topic replica distribution
  10. CPU usage distribution
  11. Leader replica distribution
  12. Preferred leader election
  13. Kafka Assigner disk usage distribution
  14. Intra-broker disk capacity
  15. Intra-broker disk usage

For more information on each optimization goal, see Goals in the Cruise Control Wiki.

Goals configuration in the Cruise Control properties file

You configure optimization goals in the cruisecontrol.properties file in the cruise-control/config/ directory. There are configurations for hard optimization goals that must be satisfied, as well as master and default optimization goals.

Optional, user-provided optimization goals are set at runtime as parameters in requests to the /rebalance endpoint.

Optimization goals are subject to any capacity limits on broker resources.

The following sections describe each goal configuration in more detail.

Master optimization goals

The master optimization goals are available to all users. Goals that are not listed in the master optimization goals are not available for use in Cruise Control operations.

The following master optimization goals are preset in the cruisecontrol.properties file, in the goals property, in descending priority order:

RackAwareGoal; ReplicaCapacityGoal; DiskCapacityGoal; NetworkInboundCapacityGoal; NetworkOutboundCapacityGoal; ReplicaDistributionGoal; PotentialNwOutGoal; DiskUsageDistributionGoal; NetworkInboundUsageDistributionGoal; NetworkOutboundUsageDistributionGoal; CpuUsageDistributionGoal; TopicReplicaDistributionGoal; LeaderReplicaDistributionGoal; LeaderBytesInDistributionGoal; PreferredLeaderElectionGoal

For simplicity, we recommend that you do not change the preset master optimization goals, unless you need to completely exclude one or more goals from being used to generate optimization proposals. The priority order of the master optimization goals can be modified, if desired, in the configuration for default optimization goals.

If you need to modify the preset master optimization goals, specify a list of goals, in descending priority order, in the goals property. Use fully-qualified domain names as shown in the cruisecontrol.properties file.

You must specify at least one master goal, or Cruise Control will crash.

Note

If you change the preset master optimization goals, you must ensure that the configured hard.goals are a subset of the master optimization goals that you configured. Otherwise, errors will occur when generating optimization proposals.

Hard goals and soft goals

Hard goals are goals that must be satisfied in optimization proposals. Goals that are not configured as hard goals are known as soft goals. You can think of soft goals as best effort goals: they do not need to be satisfied in optimization proposals, but are included in optimization calculations.

Cruise Control will calculate optimization proposals that satisfy all the hard goals and as many soft goals as possible (in their priority order). An optimization proposal that does not satisfy all the hard goals is rejected by the Analyzer and is not sent to the user.

Note

For example, you might have a soft goal to distribute a topic’s replicas evenly across the cluster (the topic replica distribution goal). Cruise Control will ignore this goal if doing so enables all the configured hard goals to be met.

The following master optimization goals are preset as hard goals in the cruisecontrol.properties file, in the hard.goals property:

RackAwareGoal; ReplicaCapacityGoal; DiskCapacityGoal; NetworkInboundCapacityGoal; NetworkOutboundCapacityGoal; CpuCapacityGoal

To change the hard goals, edit the hard.goals property and specify the desired goals, using their fully-qualified domain names.

Increasing the number of hard goals reduces the likelihood that Cruise Control will calculate and generate valid optimization proposals.

Default optimization goals

Cruise Control uses the default optimization goals list to generate the cached optimization proposal. For more information, see Section 15.6, “Optimization proposals overview”.

You can override the default optimization goals at runtime by setting user-provided optimization goals.

The following default optimization goals are preset in the cruisecontrol.properties file, in the default.goals property, in descending priority order:

RackAwareGoal; ReplicaCapacityGoal; DiskCapacityGoal; NetworkInboundCapacityGoal; NetworkOutboundCapacityGoal; CpuCapacityGoal; ReplicaDistributionGoal; PotentialNwOutGoal; DiskUsageDistributionGoal; NetworkInboundUsageDistributionGoal; NetworkOutboundUsageDistributionGoal; CpuUsageDistributionGoal; TopicReplicaDistributionGoal; LeaderReplicaDistributionGoal; LeaderBytesInDistributionGoal

You must specify at least one default goal, or Cruise Control will crash.

To modify the default optimization goals, specify a list of goals, in descending priority order, in the default.goals property. Default goals must be a subset of the master optimization goals; use fully-qualified domain names.

User-provided optimization goals

User-provided optimization goals narrow down the configured default goals for a particular optimization proposal. You can set them, as required, as parameters in HTTP requests to the /rebalance endpoint. For more information, see Section 15.9, “Generating optimization proposals”.

User-provided optimization goals can generate optimization proposals for different scenarios. For example, you might want to optimize leader replica distribution across the Kafka cluster without considering disk capacity or disk utilization. So, you send a request to the /rebalance endpoint containing a single goal for leader replica distribution.

User-provided optimization goals must:

To ignore the configured hard goals in an optimization proposal, add the skip_hard_goals_check=true parameter to the request.

Additional resources

15.6. Optimization proposals overview

An optimization proposal is a summary of proposed changes that, if applied, will produce a more balanced Kafka cluster, with partition workloads distributed more evenly among the brokers. Each optimization proposal is based on the set of optimization goals that was used to generate it, subject to any configured capacity limits on broker resources.

When you make a POST request to the /rebalance endpoint, an optimization proposal is returned in response. Use the information in the proposal to decide whether to initiate a cluster rebalance based on the proposal. Alternatively, you can change the optimization goals and then generate another proposal.

By default, optimization proposals are generated as dry runs that must be initiated separately. There is no limit to the number of optimization proposals that can be generated.

Cached optimization proposal

Cruise Control maintains a cached optimization proposal based on the configured default optimization goals. Generated from the workload model, the cached optimization proposal is updated every 15 minutes to reflect the current state of the Kafka cluster.

The most recent cached optimization proposal is returned when the following goal configurations are used:

  • The default optimization goals
  • User-provided optimization goals that can be met by the current cached proposal

To change the cached optimization proposal refresh interval, edit the proposal.expiration.ms setting in the cruisecontrol.properties file. Consider a shorter interval for fast changing clusters, although this increases the load on the Cruise Control server.

Contents of optimization proposals

The following table describes the properties contained in an optimization proposal.

Table 15.2. Properties contained in an optimization proposal
PropertyDescription

n inter-broker replica (y MB) moves

n: The number of partition replicas that will be moved between separate brokers.

Performance impact during rebalance operation: Relatively high.

y MB: The sum of the size of each partition replica that will be moved to a separate broker.

Performance impact during rebalance operation: Variable. The larger the number of MBs, the longer the cluster rebalance will take to complete.

n intra-broker replica (y MB) moves

n: The total number of partition replicas that will be transferred between the disks of the cluster’s brokers.

Performance impact during rebalance operation: Relatively high, but less than inter-broker replica moves.

y MB: The sum of the size of each partition replica that will be moved between disks on the same broker.

Performance impact during rebalance operation: Variable. The larger the number, the longer the cluster rebalance will take to complete. Moving a large amount of data between disks on the same broker has less impact than between separate brokers (see inter-broker replica moves).

n excluded topics

The number of topics excluded from the calculation of partition replica/leader movements in the optimization proposal.

You can exclude topics in one of the following ways:

In the cruisecontrol.properties file, specify a regular expression in the topics.excluded.from.partition.movement property.

In a POST request to the /rebalance endpoint, specify a regular expression in the excluded_topics parameter.

Topics that match the regular expression are listed in the response and will be excluded from the cluster rebalance.

n leadership moves

n: The number of partitions whose leaders will be switched to different replicas. This involves a change to ZooKeeper configuration.

Performance impact during rebalance operation: Relatively low.

n recent windows

n: The number of metrics windows upon which the optimization proposal is based.

n% of the partitions covered

n%: The percentage of partitions in the Kafka cluster covered by the optimization proposal.

On-demand Balancedness Score Before (nn.yyy) After (nn.yyy)

Measurements of the overall balance of a Kafka Cluster.

Cruise Control assigns a Balancedness Score to every optimization goal based on several factors, including priority (the goal’s position in the list of default.goals or user-provided goals). The On-demand Balancedness Score is calculated by subtracting the sum of the Balancedness Score of each violated soft goal from 100.

The Before score is based on the current configuration of the Kafka cluster. The After score is based on the generated optimization proposal.

15.7. Rebalance performance tuning overview

You can adjust several performance tuning options for cluster rebalances. These options control how partition replica and leadership movements in a rebalance are executed, as well as the bandwidth that is allocated to a rebalance operation.

Partition reassignment commands

Optimization proposals are composed of separate partition reassignment commands. When you initiate a proposal, the Cruise Control server applies these commands to the Kafka cluster.

A partition reassignment command consists of either of the following types of operations:

  • Partition movement: Involves transferring the partition replica and its data to a new location. Partition movements can take one of two forms:

    • Inter-broker movement: The partition replica is moved to a log directory on a different broker.
    • Intra-broker movement: The partition replica is moved to a different log directory on the same broker.
  • Leadership movement: Involves switching the leader of the partition’s replicas.

Cruise Control issues partition reassignment commands to the Kafka cluster in batches. The performance of the cluster during the rebalance is affected by the number of each type of movement contained in each batch.

To configure partition reassignment commands, see Rebalance tuning options.

Replica movement strategies

Cluster rebalance performance is also influenced by the replica movement strategy that is applied to the batches of partition reassignment commands. By default, Cruise Control uses the BaseReplicaMovementStrategy, which applies the commands in the order in which they were generated. However, if there are some very large partition reassignments early in the proposal, this strategy can slow down the application of the other reassignments.

Cruise Control provides three alternative replica movement strategies that can be applied to optimization proposals:

  • PrioritizeSmallReplicaMovementStrategy: Order reassignments in ascending size.
  • PrioritizeLargeReplicaMovementStrategy: Order reassignments in descending size.
  • PostponeUrpReplicaMovementStrategy: Prioritize reassignments for replicas of partitions which have no out-of-sync replicas.

These strategies can be configured as a sequence. The first strategy attempts to compare two partition reassignments using its internal logic. If the reassignments are equivalent, then it passes them to the next strategy in the sequence to decide the order, and so on.

To configure replica movement strategies, see Rebalance tuning options.

Rebalance tuning options

Cruise Control provides several configuration options for tuning rebalance parameters. These options are set in the following ways:

  • As properties, in the default Cruise Control configuration, in the cruisecontrol.properties file
  • As parameters in POST requests to the /rebalance endpoint

The relevant configurations for both methods are summarized in the following table.

Table 15.3. Rebalance performance tuning configuration
Property and request parameter configurationsDescriptionDefault Value

num.concurrent.partition.movements.per.broker

The maximum number of inter-broker partition movements in each partition reassignment batch

5

concurrent_partition_movements_per_broker

num.concurrent.intra.broker.partition.movements

The maximum number of intra-broker partition movements in each partition reassignment batch

2

concurrent_intra_broker_partition_movements

num.concurrent.leader.movements

The maximum number of partition leadership changes in each partition reassignment batch

1000

concurrent_leader_movements

default.replication.throttle

The bandwidth (in bytes per second) to assign to partition reassignment

Null (no limit)

replication_throttle

default.replica.movement.strategies

The list of strategies (in priority order) used to determine the order in which partition reassignment commands are executed for generated proposals. There are three strategies: PrioritizeSmallReplicaMovementStrategy, PrioritizeLargeReplicaMovementStrategy, and PostponeUrpReplicaMovementStrategy.

For the property, use a comma-separated list of the fully qualified names of the strategy classes (add com.linkedin.kafka.cruisecontrol.executor.strategy. to the start of each class name).

For the parameter, use a comma-separated list of the class names of the replica movement strategies.

BaseReplicaMovementStrategy

replica_movement_strategies

Changing the default settings affects the length of time that the rebalance takes to complete, as well as the load placed on the Kafka cluster during the rebalance. Using lower values reduces the load but increases the amount of time taken, and vice versa.

Additional resources

15.8. Cruise Control configuration

The config/cruisecontrol.properties file contains the configuration for Cruise Control. The file consists of properties in one of the following types:

  • String
  • Number
  • Boolean

You can specify and configure all the properties listed in the Configurations section of the Cruise Control Wiki.

Capacity configuration

Cruise Control uses capacity limits to determine if certain resource-based optimization goals are being broken. An attempted optimization fails if one or more of these resource-based goals is set as a hard goal and then broken. This prevents the optimization from being used to generate an optimization proposal.

You specify capacity limits for Kafka broker resources in one of the following three .json files in cruise-control/config:

  • capacityJBOD.json: For use in JBOD Kafka deployments (the default file).
  • capacity.json: For use in non-JBOD Kafka deployments where each broker has the same number of CPU cores.
  • capacityCores.json: For use in non-JBOD Kafka deployments where each broker has varying numbers of CPU cores.

Set the file in the capacity.config.file property in cruisecontrol.properties. The selected file will be used for broker capacity resolution. For example:

capacity.config.file=config/capacityJBOD.json

Capacity limits can be set for the following broker resources in the described units:

  • DISK: Disk storage in MB
  • CPU: CPU utilization as a percentage (0-100) or as a number of cores
  • NW_IN: Inbound network throughput in KB per second
  • NW_OUT: Outbound network throughput in KB per second

To apply the same capacity limits to every broker monitored by Cruise Control, set capacity limits for broker ID -1. To set different capacity limits for individual brokers, specify each broker ID and its capacity configuration.

Example capacity limits configuration

{
  "brokerCapacities":[
    {
      "brokerId": "-1",
      "capacity": {
        "DISK": "100000",
        "CPU": "100",
        "NW_IN": "10000",
        "NW_OUT": "10000"
      },
      "doc": "This is the default capacity. Capacity unit used for disk is in MB, cpu is in percentage, network throughput is in KB."
    },
    {
      "brokerId": "0",
      "capacity": {
        "DISK": "500000",
        "CPU": "100",
        "NW_IN": "50000",
        "NW_OUT": "50000"
      },
      "doc": "This overrides the capacity for broker 0."
    }
  ]
}

For more information, see Populating the Capacity Configuration File in the Cruise Control Wiki.

Log cleanup policy for Cruise Control Metrics topic

It is important that the auto-created __CruiseControlMetrics topic (see auto-created topics) has a log cleanup policy of DELETE rather than COMPACT. Otherwise, records that are needed by Cruise Control might be removed.

As described in Section 15.3, “Deploying the Cruise Control Metrics Reporter”, setting the following options in the Kafka configuration file ensures that the COMPACT log cleanup policy is correctly set:

  • cruise.control.metrics.topic.auto.create=true
  • cruise.control.metrics.topic.num.partitions=1
  • cruise.control.metrics.topic.replication.factor=1

If topic auto-creation is disabled in the Cruise Control Metrics Reporter (cruise.control.metrics.topic.auto.create=false), but enabled in the Kafka cluster, then the __CruiseControlMetrics topic is still automatically created by the broker. In this case, you must change the log cleanup policy of the __CruiseControlMetrics topic to DELETE using the kafka-configs.sh tool.

  1. Get the current configuration of the __CruiseControlMetrics topic:

    bin/kafka-configs.sh --bootstrap-server <BrokerAddress> --entity-type topics --entity-name __CruiseControlMetrics --describe
  2. Change the log cleanup policy in the topic configuration:

    bin/kafka-configs.sh --bootstrap-server <BrokerAddress> --entity-type topics --entity-name __CruiseControlMetrics --alter --add-config cleanup.policy=delete

If topic auto-creation is disabled in both the Cruise Control Metrics Reporter and the Kafka cluster, you must create the __CruiseControlMetrics topic manually and then configure it to use the DELETE log cleanup policy using the kafka-configs.sh tool.

For more information, see Section 5.9, “Modifying a topic configuration”.

Logging configuration

Cruise Control uses log4j1 for all server logging. To change the default configuration, edit the log4j.properties file in /opt/cruise-control/config/log4j.properties.

You must restart the Cruise Control server before the changes take effect.

15.9. Generating optimization proposals

When you make a POST request to the /rebalance endpoint, Cruise Control generates an optimization proposal to rebalance the Kafka cluster, based on the provided optimization goals.

The optimization proposal is generated as a dry run, unless the dryrun parameter is supplied and set to false.

You can then analyze the information in the dry run optimization proposal and decide whether to initiate it.

Following are the key parameters that you can include in requests to the /rebalance endpoint. For information about all the available parameters, see REST APIs in the Cruise Control Wiki.

dryrun

type: boolean, default: true

Informs Cruise Control whether you want to generate an optimization proposal only (true), or generate an optimization proposal and perform a cluster rebalance (false).

excluded_topics

type: regex

A regular expression that matches the topics to exclude from the calculation of the optimization proposal.

goals

type: list of strings, default: the configured default.goals list

List of user-provided optimization goals to use to prepare the optimization proposal. If goals are not supplied, the configured default.goals list in the cruisecontrol.properties file is used.

skip_hard_goals_check

type: boolean, default: false

By default, Cruise Control checks that the user-provided optimization goals (in the goals parameter) contain all the configured hard goals (in hard.goals). A request fails if you supply goals that are not a subset of the configured hard.goals.

Set skip_hard_goals_check to true if you want to generate an optimization proposal with user-provided optimization goals that do not include all the configured hard.goals.

json

type: boolean, default: false

Controls the type of response returned by the Cruise Control server. If not supplied, or set to false, then Cruise Control returns text formatted for display on the command line. If you want to extract elements of the returned information programmatically, set json=true. This will return JSON formatted text that can be piped to tools such as jq, or parsed in scripts and programs.

verbose

type: boolean, default: false

Controls the level of detail in responses that are returned by the Cruise Control server.

Prerequisites

  • Kafka and ZooKeeper are running
  • Cruise Control is running

Procedure

  1. To generate an optimization proposal formatted for the console, send a POST request to the /rebalance endpoint.

    • To use the configured default.goals:

      curl -v -X POST 'cruise-control-server:9090/kafkacruisecontrol/rebalance'

      The cached optimization proposal is immediately returned.

      Note

      If NotEnoughValidWindows is returned, Cruise Control has not yet recorded enough metrics data to generate an optimization proposal. Wait a few minutes and then resend the request.

    • To specify user-provided optimization goals instead of the configured default.goals, supply one or more goals in the goals parameter:

      curl -v -X POST 'cruise-control-server:9090/kafkacruisecontrol/rebalance?goals=RackAwareGoal,ReplicaCapacityGoal'

      If it satisfies the supplied goals, the cached optimization proposal is immediately returned. Otherwise, a new optimization proposal is generated using the supplied goals; this takes longer to calculate. You can enforce this behavior by adding the ignore_proposal_cache=true parameter to the request.

    • To specify user-provided optimization goals that do not include all the configured hard goals, add the skip_hard_goal_check=true parameter to the request:

      curl -v -X POST 'cruise-control-server:9090/kafkacruisecontrol/rebalance?goals=RackAwareGoal,ReplicaCapacityGoal,ReplicaDistributionGoal&skip_hard_goal_check=true'
  2. Review the optimization proposal contained in the response. The properties describe the pending cluster rebalance operation.

    The proposal contains a high level summary of the proposed optimization, followed by summaries for each default optimization goal, and the expected cluster state after the proposal has executed.

    Pay particular attention to the following information:

    • The Cluster load after rebalance summary. If it meets your requirements, you should assess the impact of the proposed changes using the high level summary.
    • n inter-broker replica (y MB) moves indicates how much data will be moved across the network between brokers. The higher the value, the greater the potential performance impact on the Kafka cluster during the rebalance.
    • n intra-broker replica (y MB) moves indicates how much data will be moved within the brokers themselves (between disks). The higher the value, the greater the potential performance impact on individual brokers (although less than that of n inter-broker replica (y MB) moves).
    • The number of leadership moves. This has a negligible impact on the performance of the cluster during the rebalance.

Asynchronous responses

The Cruise Control REST API endpoints timeout after 10 seconds by default, although proposal generation continues on the server. A timeout might occur if the most recent cached optimization proposal is not ready, or if user-provided optimization goals were specified with ignore_proposal_cache=true.

To allow you to retrieve the optimization proposal at a later time, take note of the request’s unique identifier, which is given in the header of responses from the /rebalance endpoint.

To obtain the response using curl, specify the verbose (-v) option:

curl -v -X POST 'cruise-control-server:9090/kafkacruisecontrol/rebalance'

Here is an example header:

* Connected to cruise-control-server (::1) port 9090 (#0)
> POST /kafkacruisecontrol/rebalance HTTP/1.1
> Host: cc-host:9090
> User-Agent: curl/7.70.0
> Accept: /
>
* Mark bundle as not supporting multiuse
< HTTP/1.1 200 OK
< Date: Mon, 01 Jun 2020 15:19:26 GMT
< Set-Cookie: JSESSIONID=node01wk6vjzjj12go13m81o7no5p7h9.node0; Path=/
< Expires: Thu, 01 Jan 1970 00:00:00 GMT
< User-Task-ID: 274b8095-d739-4840-85b9-f4cfaaf5c201
< Content-Type: text/plain;charset=utf-8
< Cruise-Control-Version: 2.0.103.redhat-00002
< Cruise-Control-Commit_Id: 58975c9d5d0a78dd33cd67d4bcb497c9fd42ae7c
< Content-Length: 12368
< Server: Jetty(9.4.26.v20200117-redhat-00001)

If an optimization proposal is not ready within the timeout, you can re-submit the POST request, this time including the User-Task-ID of the original request in the header:

curl -v -X POST -H 'User-Task-ID: 274b8095-d739-4840-85b9-f4cfaaf5c201' 'cruise-control-server:9090/kafkacruisecontrol/rebalance'

15.10. Initiating a cluster rebalance

If you are satisfied with an optimization proposal, you can instruct Cruise Control to initiate the cluster rebalance and begin reassigning partitions, as summarized in the proposal.

Leave as little time as possible between generating an optimization proposal and initiating the cluster rebalance. If some time has passed since you generated the original optimization proposal, the cluster state might have changed. Therefore, the cluster rebalance that is initiated might be different to the one you reviewed. If in doubt, first generate a new optimization proposal.

Only one cluster rebalance, with a status of "Active", can be in progress at a time.

Prerequisites

Procedure

  1. To execute the most recently generated optimization proposal, send a POST request to the /rebalance endpoint, with the dryrun=false parameter:

    curl -X POST 'cruise-control-server:9090/kafkacruisecontrol/rebalance?dryrun=false'

    Cruise Control initiates the cluster rebalance and returns the optimization proposal.

  2. Check the changes that are summarized in the optimization proposal. If the changes are not what you expect, you can stop the rebalance.
  3. Check the progress of the cluster rebalance using the /user_tasks endpoint. The cluster rebalance in progress has a status of "Active".

    To view all cluster rebalance tasks executed on the Cruise Control server:

    curl 'cruise-control-server:9090/kafkacruisecontrol/user_tasks'
    
    USER TASK ID      CLIENT ADDRESS  START TIME     STATUS  REQUEST URL
    c459316f-9eb5-482f-9d2d-97b5a4cd294d  0:0:0:0:0:0:0:1       2020-06-01_16:10:29 UTC  Active      POST /kafkacruisecontrol/rebalance?dryrun=false
    445e2fc3-6531-4243-b0a6-36ef7c5059b4  0:0:0:0:0:0:0:1       2020-06-01_14:21:26 UTC  Completed   GET /kafkacruisecontrol/state?json=true
    05c37737-16d1-4e33-8e2b-800dee9f1b01  0:0:0:0:0:0:0:1       2020-06-01_14:36:11 UTC  Completed   GET /kafkacruisecontrol/state?json=true
    aebae987-985d-4871-8cfb-6134ecd504ab  0:0:0:0:0:0:0:1       2020-06-01_16:10:04 UTC
  4. To view the status of a particular cluster rebalance task, supply the user-task-ids parameter and the task ID:

    curl 'cruise-control-server:9090/kafkacruisecontrol/user_tasks?user_task_ids=c459316f-9eb5-482f-9d2d-97b5a4cd294d'

15.11. Stopping an active cluster rebalance

You can stop the cluster rebalance that is currently in progress.

This instructs Cruise Control to finish the current batch of partition reassignments and then stop the rebalance. When the rebalance has stopped, completed partition reassignments have already been applied; therefore, the state of the Kafka cluster is different when compared to before the start of the rebalance operation. If further rebalancing is required, you should generate a new optimization proposal.

Note

The performance of the Kafka cluster in the intermediate (stopped) state might be worse than in the initial state.

Prerequisites

  • A cluster rebalance is in progress (indicated by a status of "Active").

Procedure

  • Send a POST request to the /stop_proposal_execution endpoint:

    curl -X POST 'cruise-control-server:9090/kafkacruisecontrol/stop_proposal_execution'
Red Hat logoGithubRedditYoutubeTwitter

学习

尝试、购买和销售

社区

关于红帽文档

通过我们的产品和服务,以及可以信赖的内容,帮助红帽用户创新并实现他们的目标。

让开源更具包容性

红帽致力于替换我们的代码、文档和 Web 属性中存在问题的语言。欲了解更多详情,请参阅红帽博客.

關於紅帽

我们提供强化的解决方案,使企业能够更轻松地跨平台和环境(从核心数据中心到网络边缘)工作。

© 2024 Red Hat, Inc.