Estimate and control costs

This page describes how to estimate cost and lists best practices for controlling costs in BigQuery. BigQuery offers two types of pricing models, on-demand and capacity-based pricing. For information about pricing, see BigQuery pricing.

With BigQuery, you can estimate the cost of running a query, calculate the byte processed by various queries, and get a monthly cost estimate based on your projected usage. To control cost, you must also follow the best practices for optimizing query computation and BigQuery storage. For cost-specific best practices, see Control query costs.

To monitor query costs and BigQuery usage, analyze BigQuery audit logs.

Estimate query costs

BigQuery provides various methods to estimate cost:

On-demand query size calculation

To calculate the number of bytes processed by the various types of query using the on-demand billing model, see the following sections:

Query columnar formats on Cloud Storage

If your external data is stored in ORC or Parquet, the number of bytes charged is limited to the columns that BigQuery reads. Because the data types from an external data source are converted to BigQuery data types by the query, the number of bytes read is computed based on the size of BigQuery data types. For information about data type conversions, see the following pages:

Use the Google Cloud Pricing Calculator

The Google Cloud Pricing Calculator can help you create an overall monthly cost estimate for BigQuery based on projected usage.

On-demand

To estimate costs in the Google Cloud Pricing Calculator when using the on-demand pricing model, follow these steps:

  1. Open the Google Cloud Pricing Calculator.
  2. Click BigQuery.
  3. Click the On-Demand tab.
  4. For Table Name, type the name of the table. For example, airports.
  5. For Storage Pricing, enter the estimated size of the table in the storage fields. You only need to estimate either physical storage or logical storage, depending on the dataset storage billing model.
  6. For Query Pricing, enter the estimated bytes read from your dry run or the query validator.
  7. Click Add To Estimate.
  8. The estimate appears to the right. Notice that you can save or email the estimate.

For more information, see on-demand pricing.

Editions

To estimate costs in the Google Cloud Pricing Calculator when using the capacity-based pricing model with BigQuery editions, follow these steps:

  1. Open the Google Cloud Pricing Calculator.
  2. Click BigQuery.
  3. Click the Editions tab.
  4. Choose the location where the slots are used.
  5. Choose your Edition.
  6. Choose the Maximum slots, Baseline slots, optional Commitment, and Estimated utilization of autoscaling.
  7. Choose the location where the data is stored.
  8. Enter your estimations of storage usage for Active storage, Long-term storage, Streaming inserts, and Streaming reads. You only need to estimate either physical storage or logical storage, depending on the dataset storage billing model.
  9. Click Add to Estimate.

For more information, see capacity-based pricing.

Control query costs

To optimize query costs, ensure that you have optimized storage and query computation. For additional methods to control the query cost, see the following sections:

Check the query cost before running them

Best practice: Before running queries, preview them to estimate costs.

Queries are billed according to the number of bytes read. To estimate costs before running a query:

Use the query validator

When you enter a query in the Google Cloud console, the query validator verifies the query syntax and provides an estimate of the number of bytes read. You can use this estimate to calculate query cost in the pricing calculator.

  • If your query is not valid, then the query validator displays an error message. For example:

    Not found: Table myProject:myDataset.myTable was not found in location US

  • If your query is valid, then the query validator provides an estimate of the number of bytes required to process the query. For example:

    This query will process 623.1 KiB when run.

Perform a dry run

To perform a dry run, do the following:

Console

  1. Go to the BigQuery page.

    Go to BigQuery

  2. Enter your query in the query editor.

    If the query is valid, then a check mark automatically appears along with the amount of data that the query will process. If the query is invalid, then an exclamation point appears along with an error message.

bq

Enter a query like the following using the --dry_run flag.

bq query \
--use_legacy_sql=false \
--dry_run \
'SELECT
   COUNTRY,
   AIRPORT,
   IATA
 FROM
   `project_id`.dataset.airports
 LIMIT
   1000'
 

For a valid query, the command produces the following response:

Query successfully validated. Assuming the tables are not modified,
running this query will process 10918 bytes of data.

API

To perform a dry run by using the API, submit a query job with dryRun set to true in the JobConfiguration type.

Go

Before trying this sample, follow the Go setup instructions in the BigQuery quickstart using client libraries. For more information, see the BigQuery Go API reference documentation.

To authenticate to BigQuery, set up Application Default Credentials. For more information, see Set up authentication for client libraries.

import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/bigquery"
)

// queryDryRun demonstrates issuing a dry run query to validate query structure and
// provide an estimate of the bytes scanned.
func queryDryRun(w io.Writer, projectID string) error {
	// projectID := "my-project-id"
	ctx := context.Background()
	client, err := bigquery.NewClient(ctx, projectID)
	if err != nil {
		return fmt.Errorf("bigquery.NewClient: %v", err)
	}
	defer client.Close()

	q := client.Query(`
	SELECT
		name,
		COUNT(*) as name_count
	FROM ` + "`bigquery-public-data.usa_names.usa_1910_2013`" + `
	WHERE state = 'WA'
	GROUP BY name`)
	q.DryRun = true
	// Location must match that of the dataset(s) referenced in the query.
	q.Location = "US"

	job, err := q.Run(ctx)
	if err != nil {
		return err
	}
	// Dry run is not asynchronous, so get the latest status and statistics.
	status := job.LastStatus()
	if err := status.Err(); err != nil {
		return err
	}
	fmt.Fprintf(w, "This query will process %d bytes\n", status.Statistics.TotalBytesProcessed)
	return nil
}

Java

Before trying this sample, follow the Java setup instructions in the BigQuery quickstart using client libraries. For more information, see the BigQuery Java API reference documentation.

To authenticate to BigQuery, set up Application Default Credentials. For more information, see Set up authentication for client libraries.

import com.google.cloud.bigquery.BigQuery;
import com.google.cloud.bigquery.BigQueryException;
import com.google.cloud.bigquery.BigQueryOptions;
import com.google.cloud.bigquery.Job;
import com.google.cloud.bigquery.JobInfo;
import com.google.cloud.bigquery.JobStatistics;
import com.google.cloud.bigquery.QueryJobConfiguration;

// Sample to run dry query on the table
public class QueryDryRun {

  public static void runQueryDryRun() {
    String query =
        "SELECT name, COUNT(*) as name_count "
            + "FROM `bigquery-public-data.usa_names.usa_1910_2013` "
            + "WHERE state = 'WA' "
            + "GROUP BY name";
    queryDryRun(query);
  }

  public static void queryDryRun(String query) {
    try {
      // Initialize client that will be used to send requests. This client only needs to be created
      // once, and can be reused for multiple requests.
      BigQuery bigquery = BigQueryOptions.getDefaultInstance().getService();

      QueryJobConfiguration queryConfig =
          QueryJobConfiguration.newBuilder(query).setDryRun(true).setUseQueryCache(false).build();

      Job job = bigquery.create(JobInfo.of(queryConfig));
      JobStatistics.QueryStatistics statistics = job.getStatistics();

      System.out.println(
          "Query dry run performed successfully." + statistics.getTotalBytesProcessed());
    } catch (BigQueryException e) {
      System.out.println("Query not performed \n" + e.toString());
    }
  }
}

Node.js

Before trying this sample, follow the Node.js setup instructions in the BigQuery quickstart using client libraries. For more information, see the BigQuery Node.js API reference documentation.

To authenticate to BigQuery, set up Application Default Credentials. For more information, see Set up authentication for client libraries.

// Import the Google Cloud client library
const {BigQuery} = require('@google-cloud/bigquery');
const bigquery = new BigQuery();

async function queryDryRun() {
  // Runs a dry query of the U.S. given names dataset for the state of Texas.

  const query = `SELECT name
    FROM \`bigquery-public-data.usa_names.usa_1910_2013\`
    WHERE state = 'TX'
    LIMIT 100`;

  // For all options, see https://cloud.google.com/bigquery/docs/reference/rest/v2/jobs/query
  const options = {
    query: query,
    // Location must match that of the dataset(s) referenced in the query.
    location: 'US',
    dryRun: true,
  };

  // Run the query as a job
  const [job] = await bigquery.createQueryJob(options);

  // Print the status and statistics
  console.log('Status:');
  console.log(job.metadata.status);
  console.log('\nJob Statistics:');
  console.log(job.metadata.statistics);
}

PHP

Before trying this sample, follow the PHP setup instructions in the BigQuery quickstart using client libraries. For more information, see the BigQuery PHP API reference documentation.

To authenticate to BigQuery, set up Application Default Credentials. For more information, see Set up authentication for client libraries.

use Google\Cloud\BigQuery\BigQueryClient;

/** Uncomment and populate these variables in your code */
// $projectId = 'The Google project ID';
// $query = 'SELECT id, view_count FROM `bigquery-public-data.stackoverflow.posts_questions`';

// Construct a BigQuery client object.
$bigQuery = new BigQueryClient([
    'projectId' => $projectId,
]);

// Set job configs
$jobConfig = $bigQuery->query($query);
$jobConfig->useQueryCache(false);
$jobConfig->dryRun(true);

// Extract query results
$queryJob = $bigQuery->startJob($jobConfig);
$info = $queryJob->info();

printf('This query will process %s bytes' . PHP_EOL, $info['statistics']['totalBytesProcessed']);

Python

Set the QueryJobConfig.dry_run property to True. Client.query() always returns a completed QueryJob when provided a dry run query configuration.

Before trying this sample, follow the Python setup instructions in the BigQuery quickstart using client libraries. For more information, see the BigQuery Python API reference documentation.

To authenticate to BigQuery, set up Application Default Credentials. For more information, see Set up authentication for client libraries.

from google.cloud import bigquery

# Construct a BigQuery client object.
client = bigquery.Client()

job_config = bigquery.QueryJobConfig(dry_run=True, use_query_cache=False)

# Start the query, passing in the extra configuration.
query_job = client.query(
    (
        "SELECT name, COUNT(*) as name_count "
        "FROM `bigquery-public-data.usa_names.usa_1910_2013` "
        "WHERE state = 'WA' "
        "GROUP BY name"
    ),
    job_config=job_config,
)  # Make an API request.

# A dry run query completes immediately.
print("This query will process {} bytes.".format(query_job.total_bytes_processed))

Avoid running queries to explore table data

Best practice: Don't run queries to explore or preview table data.

If you are experimenting with or exploring your data, you can use table preview options to view data for free and without affecting quotas.

BigQuery supports the following data preview options:

  • In the Google Cloud console, on the table details page, click the Preview tab to sample the data.
  • In the bq command-line tool, use the bq head command and specify the number of rows to preview.
  • In the API, use tabledata.list to retrieve table data from a specified set of rows.

Restrict the number of bytes billed

Best practice: Use the maximum bytes billed setting to limit query costs.

You can limit the number of bytes billed for a query using the maximum bytes billed setting. When you set maximum bytes billed, the number of bytes that the query reads is estimated before the query execution. If the number of estimated bytes is beyond the limit, then the query fails without incurring a charge.

For clustered tables, the estimation of the number of bytes billed for a query is an upper bound, and can be higher than the actual number of bytes billed after running the query. So in some cases, if you set the maximum bytes billed, a query on a clustered table can fail, even though the actual bytes billed wouldn't exceed the maximum bytes billed setting.

If a query fails because of the maximum bytes billed setting, an error similar to following is returned:

Error: Query exceeded limit for bytes billed: 1000000. 10485760 or higher required.

To set the maximum bytes billed:

Console

  1. In the Query editor, click More > Query settings > Advanced options.
  2. In the Maximum bytes billed field, enter an integer.
  3. Click Save.

bq

Use the bq query command with the --maximum_bytes_billed flag.

  bq query --maximum_bytes_billed=1000000 \
  --use_legacy_sql=false \
  'SELECT
     word
   FROM
     `bigquery-public-data`.samples.shakespeare'

API

Set the maximumBytesBilled property in JobConfigurationQuery or QueryRequest.

Avoid using LIMIT in non-clustered tables

Best practice: For non-clustered tables, don't use a LIMIT clause as a method of cost control.

For non-clustered tables, applying a LIMIT clause to a query doesn't affect the amount of data that is read. You are billed for reading all bytes in the entire table as indicated by the query, even though the query returns only a subset. With a clustered table, a LIMIT clause can reduce the number of bytes scanned, because scanning stops when enough blocks are scanned to get the result. You are billed for only the bytes that are scanned.

View costs using a dashboard and query your audit logs

Best practice: Create a dashboard to view your billing data so you can make adjustments to your BigQuery usage. Also consider streaming your audit logs to BigQuery so you can analyze usage patterns.

You can export your billing data to BigQuery and visualize it in a tool such as Looker Studio. For a tutorial about creating a billing dashboard, see Visualize Google Cloud billing using BigQuery and Looker Studio.

You can also stream your audit logs to BigQuery and analyze the logs for usage patterns such as query costs by user.

Materialize query results in stages

Best practice: If possible, materialize your query results in stages.

If you create a large, multi-stage query, each time you run it, BigQuery reads all the data that is required by the query. You are billed for all the data that is read each time the query is run.

Instead, break your query into stages where each stage materializes the query results by writing them to a destination table. Querying the smaller destination table reduces the amount of data that is read and lowers costs. The cost of storing the materialized results is much less than the cost of processing large amounts of data.

Use table expiration for destination tables

Best practice: If you are writing large query results to a destination table, use the default table expiration time to remove the data when it's no longer needed.

Keeping large result sets in BigQuery storage has a cost. If you don't need permanent access to the results, use the default table expiration to automatically delete the data for you.

For more information, see storage pricing.

What's next