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On this page
  • Using the Time Selector
  • Typing Custom Ranges
  • Timezone Support

Was this helpful?

  1. Observe
  2. Tracing
  3. Query traces
  4. Filter Traces

Time Filtering

Last updated 1 month ago

Was this helpful?

Using the Time Selector

Our updated time selector makes it faster and more flexible to filter your data to the exact time window you care about. You can still select from quick presets like "Last 15 minutes" or use the calendar picker — but now you can also type in custom shorthand or specific date/time formats directly.

Typing Custom Ranges

You can enter custom time ranges using any of the following formats:

Date Formats

Format
Example

MMMM d

March 23

MMM d

Mar 23

M/d

3/24

MM/dd

03/24

M/d/yyyy

3/24/2025

MM/dd/yyyy

03/24/2025

Date & Time Formats

Format
Example

MMMM d h:mm a

March 23 3:00 am

MMM d h:mm a

Mar 23 3:00 am

M/d h:mm a

3/24 3:00 am

MM/dd h:mm a

03/24 3:00 am

M/d/yyyy h:mm a

3/24/2025 3:00 am

MM/dd/yyyy h:mm a

03/24/2025 3:00 am

You can also enter ranges like: 4/1 - 4/6 or 4/1 3:00 am - 4/6 5:00 pm

Relative Time Shortcuts

Quickly jump to a relative window by typing:

Shorthand
Description

15m, 15min, 15minutes

Last 15 minutes

1h, 1hr, 1hour, 1hours

Last hour

1d, 1day, 1days

Last day

You can enter other values too, like 10d for the last 10 days.

Timezone Support

You can also customize your timezone, and your selection will persist across the platform, so you're always seeing the data in your preferred context.

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