experimental.alignTime() function

experimental.alignTime() is subject to change at any time.

experimental.alignTime() shifts time values in input tables to all start at a common start time.

Function type signature
(<-tables: stream[B], ?alignTo: A) => stream[C] where B: Record, C: Record
For more information, see Function type signatures.



Time to align tables to. Default is 1970-01-01T00:00:00Z.


Input data. Default is piped-forward data (<-).


Compare month-over-month values

  1. Window data by calendar month creating two separate tables (one for January and one for February).
  2. Align tables to 2021-01-01T00:00:00Z.

Each output table represents data from a calendar month. When visualized, data is still grouped by month, but timestamps are aligned to a common start time and values can be compared by time.

import "experimental"

    |> window(every: 1mo)
    |> experimental.alignTime(alignTo: 2021-01-01T00:00:00Z)

View example input and output

Was this page helpful?

Thank you for your feedback!

Introducing InfluxDB Clustered

A highly available InfluxDB 3.0 cluster on your own infrastructure.

InfluxDB Clustered is a highly available InfluxDB 3.0 cluster built for high write and query workloads on your own infrastructure.

InfluxDB Clustered is currently in limited availability and is only available to a limited group of InfluxData customers. If interested in being part of the limited access group, please contact the InfluxData Sales team.

Learn more
Contact InfluxData Sales

The future of Flux

Flux is going into maintenance mode. You can continue using it as you currently are without any changes to your code.

Flux is going into maintenance mode and will not be supported in InfluxDB 3.0. This was a decision based on the broad demand for SQL and the continued growth and adoption of InfluxQL. We are continuing to support Flux for users in 1.x and 2.x so you can continue using it with no changes to your code. If you are interested in transitioning to InfluxDB 3.0 and want to future-proof your code, we suggest using InfluxQL.

For information about the future of Flux, see the following: