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Creating custom workloads

OpenSearch Benchmark (OSB) includes a set of workloads that you can use to benchmark data from your cluster. Additionally, if you want to create a workload that is tailored to your own data, you can create a custom workload using one of the following options:

Creating a workload from an existing cluster

If you already have an OpenSearch cluster with indexed data, use the following steps to create a custom workload for your cluster.

Prerequisites

Before creating a custom OSB workload, make sure you have the following prerequisites in place:

  • An OpenSearch cluster with an index that contains 1000 or more documents. If your cluster’s index does not contain at least 1000 documents, the workload can still run tests, however, you cannot run workloads using --test-mode.
  • You must have the correct permissions to access your OpenSearch cluster. For more information about cluster permissions, see Permissions.

Customizing the workload

To begin creating a custom OSB workload, use the opensearch-benchmark create-workload command.

opensearch-benchmark create-workload \
--workload="<WORKLOAD NAME>" \
--target-hosts="<CLUSTER ENDPOINT>" \
--client-options="basic_auth_user:'<USERNAME>',basic_auth_password:'<PASSWORD>'" \
--indices="<INDEXES TO GENERATE WORKLOAD FROM>" \
--output-path="<LOCAL DIRECTORY PATH TO STORE WORKLOAD>"

Replace the following options in the preceding example with information specific to your existing cluster:

  • --workload: A custom name for your custom workload.
  • --target-hosts: A comma-separated list of host:port pairs from which the cluster extracts data.
  • --client-options: The basic authentication client options that OpenSearch Benchmark uses to access the cluster.
  • --indices: One or more indexes inside your OpenSearch cluster that contain data.
  • --output-path: The directory in which OpenSearch Benchmark creates the workload and its configuration files.

The following example response creates a workload named movies from a cluster with an index named movies-info. The movies-info index contains over 2,000 documents.

   ____                  _____                      __       ____                  __                         __
  / __ \____  ___  ____ / ___/___  ____ ___________/ /_     / __ )___  ____  _____/ /_  ____ ___  ____ ______/ /__
 / / / / __ \/ _ \/ __ \\__ \/ _ \/ __ `/ ___/ ___/ __ \   / __  / _ \/ __ \/ ___/ __ \/ __ `__ \/ __ `/ ___/ //_/
/ /_/ / /_/ /  __/ / / /__/ /  __/ /_/ / /  / /__/ / / /  / /_/ /  __/ / / / /__/ / / / / / / / / /_/ / /  / ,<
\____/ .___/\___/_/ /_/____/\___/\__,_/_/   \___/_/ /_/  /_____/\___/_/ /_/\___/_/ /_/_/ /_/ /_/\__,_/_/  /_/|_|
    /_/

[INFO] You did not provide an explicit timeout in the client options. Assuming default of 10 seconds.
[INFO] Connected to OpenSearch cluster [380d8fd64dd85b5f77c0ad81b0799e1e] version [1.1.0].

Extracting documents for index [movies] for test mode...      1000/1000 docs [100.0% done]
Extracting documents for index [movies]...                    2000/2000 docs [100.0% done]

[INFO] Workload movies has been created. Run it with: opensearch-benchmark --workload-path=/Users/hoangia/Desktop/workloads/movies

-------------------------------
[INFO] SUCCESS (took 2 seconds)
-------------------------------

As part of workload creation, OSB generates the following files. You can access them in the directory specified by the --output-path option.

  • workload.json: Contains general workload specifications.
  • <index>.json: Contains mappings and settings for the extracted indexes.
  • <index>-documents.json: Contains the sources of every document from the extracted indexes. Any sources suffixed with -1k encompass only a fraction of the document corpus of the workload and are only used when running the workload in test mode.

By default, OpenSearch Benchmark does not contain a reference to generate queries. Because you have the best understanding of your data, we recommend adding a query to workload.json that matches your index’s specifications. Use the following match_all query as an example of a query added to your workload:

{
      "operation": {
        "name": "query-match-all",
        "operation-type": "search",
        "body": {
          "query": {
            "match_all": {}
          }
        }
      },
      "clients": 8,
      "warmup-iterations": 1000,
      "iterations": 1000,
      "target-throughput": 100
    }

Creating a workload without an existing cluster

If you want to create a custom workload but do not have an existing OpenSearch cluster with indexed data, you can create the workload by building the workload source files directly. All you need is data that can be exported into a JSON format.

To build a workload with source files, create a directory for your workload and perform the following steps:

  1. Build a <index>-documents.json file that contains rows of documents that comprise the document corpora of the workload and houses all data to be ingested and queried into the cluster. The following example shows the first few rows of a movies-documents.json file that contains rows of documents about famous movies:

      # First few rows of movies-documents.json
      {"title": "Back to the Future", "director": "Robert Zemeckis", "revenue": "$212,259,762 USD", "rating": "8.5 out of 10",  "image_url": "https://imdb.com/images/32"}
      {"title": "Avengers: Endgame", "director": "Anthony and Joe Russo", "revenue": "$2,800,000,000 USD", "rating": "8.4 out   of 10", "image_url": "https://imdb.com/images/2"}
      {"title": "The Grand Budapest Hotel", "director": "Wes Anderson", "revenue": "$173,000,000 USD", "rating": "8.1 out of 10", "image_url": "https://imdb.com/images/65"}
      {"title": "The Godfather: Part II", "director": "Francis Ford Coppola", "revenue": "$48,000,000 USD", "rating": "9 out of 10", "image_url": "https://imdb.com/images/7"}
    
  2. In the same directory, build a index.json file. The workload uses this file as a reference for data mappings and index settings for the documents contained in <index>-documents.json. The following example creates mappings and settings specific to the movie-documents.json data from the previous step:

     {
     "settings": {
         "index.number_of_replicas": 0
     },
     "mappings": {
         "dynamic": "strict",
         "properties": {
         "title": {
             "type": "text"
         },
         "director": {
             "type": "text"
         },
         "revenue": {
             "type": "text"
         },
         "rating": {
             "type": "text"
         },
         "image_url": {
             "type": "text"
         }
         }
     }
     }
    
  3. Next, build a workload.json file that provides a high-level overview of your workload and determines how your workload runs benchmark tests. The workload.json file contains the following sections:

    • indices: Defines the name of the index to be created in your OpenSearch cluster using the mappings from the workload’s index.json file created in the previous step.
    • corpora: Defines the corpora and the source file, including the:
      • document-count: The number of documents in <index>-documents.json. To get an accurate number of documents, run wc -l <index>-documents.json.
      • uncompressed-bytes: The number of bytes inside the index. To get an accurate number of bytes, run stat -f %z <index>-documents.json on macOS or stat -c %s <index>-documents.json on GNU/Linux. Alternatively, run ls -lrt | grep <index>-documents.json.
    • schedule: Defines the sequence of operations and available test procedures for the workload.

The following example workload.json file provides the entry point for the movies workload. The indices section creates an index called movies. The corpora section refers to the source file created in step one, movie-documents.json, and provides the document count and the amount of uncompressed bytes. Lastly, the schedule section defines a few operations the workload performs when invoked, including:

  • Deleting any current index named movies.
  • Creating an index named movies based on data from movie-documents.json and the mappings from index.json.
  • Verifying that the cluster is in good health and can ingest the new index.
  • Ingesting the data corpora from workload.json into the cluster.
  • Querying the results.

      {
      "version": 2,
      "description": "Tutorial benchmark for OpenSearch Benchmark",
      "indices": [
          {
          "name": "movies",
          "body": "index.json"
          }
      ],
      "corpora": [
          {
          "name": "movies",
          "documents": [
              {
              "source-file": "movies-documents.json",
              "document-count": 11658903, # Fetch document count from command line
              "uncompressed-bytes": 1544799789 # Fetch uncompressed bytes from command line
              }
          ]
          }
      ],
      "schedule": [
          {
          "operation": {
              "operation-type": "delete-index"
          }
          },
          {
          "operation": {
              "operation-type": "create-index"
          }
          },
          {
          "operation": {
              "operation-type": "cluster-health",
              "request-params": {
              "wait_for_status": "green"
              },
              "retry-until-success": true
          }
          },
          {
          "operation": {
              "operation-type": "bulk",
              "bulk-size": 5000
          },
          "warmup-time-period": 120,
          "clients": 8
          },
          {
          "operation": {
              "operation-type": "force-merge"
          }
          },
          {
          "operation": {
              "name": "query-match-all",
              "operation-type": "search",
              "body": {
              "query": {
                  "match_all": {}
              }
              }
          },
          "clients": 8,
          "warmup-iterations": 1000,
          "iterations": 1000,
          "target-throughput": 100
          }
      ]
      }
    

The corpora section refers to the source file created in step one, movie-documents.json, and provides the document count and the amount of uncompressed bytes. Lastly, the schedule section defines a few operations the workload performs when invoked, including:

  • Deleting any current index named movies.
  • Creating an index named movies based on data from movie-documents.json and the mappings from index.json.
    • Verifying that the cluster is in good health and can ingest the new index.
    • Ingesting the data corpora from workload.json into the cluster.
    • Querying the results.

For all the workload files created, verify that the workload is functional by running a test. To verify the workload, run the following command, replacing --workload-path with a path to your workload directory:

opensearch-benchmark list workloads --workload-path=</path/to/workload/>

Invoking your custom workload

Use the opensearch-benchmark execute-test command to invoke your new workload and run a benchmark test against your OpenSearch cluster, as shown in the following example. Replace --workload-path with the path to your custom workload, --target-host with the host:port pairs for your cluster, and --client-options with any authorization options required to access the cluster.

opensearch-benchmark execute_test \
--pipeline="benchmark-only" \
--workload-path="<PATH OUTPUTTED IN THE OUTPUT OF THE CREATE-WORKLOAD COMMAND>" \
--target-host="<CLUSTER ENDPOINT>" \
--client-options="basic_auth_user:'<USERNAME>',basic_auth_password:'<PASSWORD>'"

Results from the test appear in the directory set by --output-path option in workloads.json.

Advanced options

You can enhance your custom workload’s functionality with the following advanced options.

Test mode

If you want run the test in test mode to make sure your workload operates as intended, add the --test-mode option to the execute-test command. Test mode ingests only the first 1000 documents from each index provided and runs query operations against them.

To use test mode, create a <index>-documents-1k.json file that contains the first 1000 documents from <index>-documents.json using the following command:

head -n 1000 <index>-documents.json > <index>-documents-1k.json

Then, run opensearch-benchmark execute-test with the option --test-mode. Test mode runs a quick version of the workload test.

opensearch-benchmark execute_test \
--pipeline="benchmark-only"  \
--workload-path="<PATH OUTPUTTED IN THE OUTPUT OF THE CREATE-WORKLOAD COMMAND>" \
--target-host="<CLUSTER ENDPOINT>" \
--client-options"basic_auth_user:'<USERNAME>',basic_auth_password:'<PASSWORD>'" \
--test-mode

Adding variance to test procedures

After using your custom workload several times, you might want to use the same workload but perform the workload’s operations in a different order. Instead of creating a new workload or reorganizing the procedures directly, you can provide test procedures to vary workload operations.

To add variance to your workload operations, go to your workload.json file and replace the schedule section with a test_procedures array, as shown in the following example. Each item in the array contains the following:

  • name: The name of the test procedure.
  • default: When set to true, OpenSearch Benchmark defaults to the test procedure specified as default in the workload if no other test procedures are specified.
  • schedule: All the operations the test procedure will run.
"test_procedures": [
    {
      "name": "index-and-query",
      "default": true,
      "schedule": [
        {
          "operation": {
            "operation-type": "delete-index"
          }
        },
        {
          "operation": {
            "operation-type": "create-index"
          }
        },
        {
          "operation": {
            "operation-type": "cluster-health",
            "request-params": {
              "wait_for_status": "green"
            },
            "retry-until-success": true
          }
        },
        {
          "operation": {
            "operation-type": "bulk",
            "bulk-size": 5000
          },
          "warmup-time-period": 120,
          "clients": 8
        },
        {
          "operation": {
            "operation-type": "force-merge"
          }
        },
        {
          "operation": {
            "name": "query-match-all",
            "operation-type": "search",
            "body": {
              "query": {
                "match_all": {}
              }
            }
          },
          "clients": 8,
          "warmup-iterations": 1000,
          "iterations": 1000,
          "target-throughput": 100
        }
      ]
    }
  ]
}

Separate operations and test procedures

If you want to make your workload.json file more readable, you can separate your operations and test procedures into different directories and reference the path to each in workload.json. To separate operations and procedures, perform the following steps:

  1. Add all test procedures to a single file. You can give the file any name. Because the movies workload in the preceding contains and index task and queries, this step names the test procedures file index-and-query.json.
  2. Add all operations to a file named operations.json.
  3. Reference the new files in workloads.json by adding the following syntax, replacing parts with the relative path to each file, as shown in the following example:

     "operations": [
         {{ benchmark.collect(parts="operations/*.json") }}
     ]
     # Reference test procedure files in workload.json
     "test_procedures": [
         {{ benchmark.collect(parts="test_procedures/*.json") }}
     ]
    

Next steps