Documentation

Optimize queries

Optimize SQL and InfluxQL queries to improve performance and reduce their memory and compute (CPU) requirements. Learn how to use observability tools to analyze query execution and view metrics.

Custom partitioning not supported

InfluxDB Cloud Serverless doesn’t support custom partitioning.

Custom partitioning can benefit queries that look for a specific tag value in the WHERE clause. To use custom partitioning, consider InfluxDB Cloud Dedicated or InfluxDB Clustered.

Why is my query slow?

Query performance depends on factors like the time range and query complexity. If a query is slower than expected, consider the following potential causes:

  • The query spans a large time range, which increases the amount of data being processed.
  • The query performs intensive operations, such as:
    • Sorting or re-sorting large datasets with ORDER BY.
    • Querying many string values, which can be computationally expensive.

Strategies for improving query performance

The following design strategies generally improve query performance and resource usage:

Query only the data you need

Include a WHERE clause

InfluxDB 3 stores data in a Parquet file for each measurement and day, and retrieves files from the Object store to answer a query. To reduce the number of files that a query needs to retrieve from the Object store, include a WHERE clause that filters data by a time range.

SELECT only columns you need

Because InfluxDB 3 is a columnar database, it only processes the columns selected in a query, which can mitigate the query performance impact of wide schemas.

However, a non-specific query that retrieves a large number of columns from a wide schema can be slower and less efficient than a more targeted query–for example, consider the following queries:

  • SELECT time,a,b,c
  • SELECT *

If the table contains 10 columns, the difference in performance between the two queries is minimal. In a table with over 1000 columns, the SELECT * query is slower and less efficient.

Recognize and address bottlenecks

To identify performance bottlenecks, learn how to analyze a query plan. Query plans provide runtime metrics, such as the number of files scanned, that may reveal inefficiencies in query execution.

Request help to troubleshoot queries

Some bottlenecks may result from suboptimal query execution plans that are outside your control. Examples include:

  • Sorting (ORDER BY) data that is already sorted.
  • Retrieving numerous small Parquet files from the object store instead of fewer, larger files.
  • Querying many overlapped Parquet files.
  • Performing a high number of table scans.

If you’ve followed steps to optimize and troubleshoot a query, but it still doesn’t meet performance requirements, request help troubleshooting. Customers with an InfluxDB Cloud Serverless annual or support contract can contact InfluxData Support for assistance.

Query trace logging

Customers with an InfluxDB Cloud Serverless annual or support contract can contact InfluxData Support to enable tracing for queries. With tracing enabled, InfluxData Support can analyze system processes and logs for specific query instances.

The tracing system uses the OpenTelemetry traces model to provide observability into requests and identify performance bottlenecks.


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InfluxDB OSS 2.9.0: API tokens are hashed by default

Stronger token security in InfluxDB OSS 2.9.0 — tokens are hashed on disk by default. Existing tokens are hashed on first startup and can’t be recovered afterward. Capture any plaintext tokens you still need before you upgrade.

View InfluxDB OSS 2.9.0 release notes

Hashed tokens authenticate exactly like unhashed tokens — clients and integrations keep working.

Also new in 2.9.0:

  • Configurable backup compression
  • Restore support for backups containing hashed tokens
  • Tighter Edge Data Replication queue validation
  • Flux upgrade
  • Compaction reliability improvements

Key enhancements in Explorer 1.8

Explorer 1.8 is now available with streaming data subscriptions (beta), line protocol preview, and query history & saved queries.

View Explorer 1.8 release notes

Explorer 1.8 includes new features and improvements that make it easier to ingest, explore, and manage data.

Highlights:

  • Streaming data subscriptions (beta): Stream data into Explorer from MQTT, Kafka, and AMQP sources.
  • Line protocol preview: Preview line protocol, schema, and parse errors before data is written.
  • Custom sample data: Generate custom sample datasets with line protocol and schema preview.
  • Query history and saved queries: Browse query history and save/re-run named queries.
  • Retention period management: Set, update, or clear retention periods on databases and tables.

For more details, see Explorer 1.8 release notes

InfluxDB 3.9: Performance upgrade preview

InfluxDB 3 Enterprise 3.9 includes a beta of major performance upgrades with faster single-series queries, wide-and-sparse table support, and more.

InfluxDB 3 Enterprise 3.9 includes a beta of major performance and feature updates.

Key improvements:

  • Faster single-series queries
  • Consistent resource usage
  • Wide-and-sparse table support
  • Automatic distinct value caches for reduced latency with metadata queries

Preview features are subject to breaking changes.

For more information, see:

Telegraf Enterprise now in public beta

Get early access to the Telegraf Controller and provide feedback to help shape the future of Telegraf Enterprise.

See the Blog Post

The upcoming Telegraf Enterprise offering is for organizations running Telegraf at scale and is comprised of two key components:

  • Telegraf Controller: A control plane (UI + API) that centralizes Telegraf configuration management and agent health visibility.
  • Telegraf Enterprise Support: Official support for Telegraf Controller and Telegraf plugins.

Join the Telegraf Enterprise beta to get early access to the Telegraf Controller and provide feedback to help shape the future of Telegraf Enterprise.

For more information:

Telegraf Controller v0.0.7-beta now available

Telegraf Controller v0.0.7-beta is now available with new features, improvements, bug fixes, and an important breaking change.

View the release notes
Download Telegraf Controller v0.0.7-beta

InfluxDB Docker latest tag changing to InfluxDB 3 Core

On May 27, 2026, the latest tag for InfluxDB Docker images will point to InfluxDB 3 Core. To avoid unexpected upgrades, use specific version tags in your Docker deployments.

If using Docker to install and run InfluxDB, the latest tag will point to InfluxDB 3 Core. To avoid unexpected upgrades, use specific version tags in your Docker deployments. For example, if using Docker to run InfluxDB v2, replace the latest version tag with a specific version tag in your Docker pull command–for example:

docker pull influxdb:2

InfluxDB Cloud Serverless