Skip to content
🐯 Timescale is now TigerData! Read the announcement from Ajay & Mike.
TimescaleDB - Timeseries database for PostgreSQL Docs
  • TigerData.com
  • Try for free
Get started
Try the key TigerData features
Start coding with TigerData
Create a Tiger Cloud service
About TigerData products
TigerData architecture for real-time analytics
Pricing plans and account management
Changelog
Use TigerData products
Hypertables
Hypercore
Continuous aggregates
Tiger Cloud regions
Tiger Cloud services
Control user access to Tiger Cloud projects
Write data
Query data
Time buckets
Schema management
Configuration
Import and ingest data
Alerting
Data retention
About data retention
About data retention with continuous aggregates
Create a retention policy
Manually drop chunks
Troubleshooting data retention
Tiered storage
Hyperfunctions
Metrics and logging
High availability and read scaling
Maintenance and upgrades
Tiger Cloud PostgreSQL extensions
Backup, restore, and PITR
Jobs
Security
Limitations
Troubleshoot TigerData products
Compression (Old API, replaced by hypercore)
Tutorials
Integrations
API Reference
Migrate and sync data to Tiger Cloud
AI and Vector: pgai on Tiger Cloud
Other deployment options
Find a docs page
Use TigerCloud products

Data retention

Tiger Cloud: Performance, Scale, Enterprise

Self-hosted products

MST

Data retention helps you save on storage costs by deleting old data. You can combine data retention with continuous aggregates to downsample your data.

In this section:

  • Learn about data retention before you start using it
  • Learn about data retention with continuous aggregates for downsampling data
  • Create a data retention policy
  • Manually drop chunks of data
  • Troubleshoot data retention

Keywords

continuous aggregatesdata retentiondownsample

Found an issue on this page?Report an issue or Edit this page in GitHub.

PreviousAlertingNextAbout data retention

Related Content

Troubleshooting jobs
Suggestions for troubleshooting common problems in jobs
Troubleshooting hypercore
Suggestions for troubleshooting common problems in hypercore
Troubleshooting compression
Suggestions for troubleshooting common problems in compression
Troubleshooting data retention
Suggestions for troubleshooting common problems in data retention
Troubleshooting continuous aggregates
Suggestions for troubleshooting common problems in continuous aggregates
About data retention with continuous aggregates
Combine continuous aggregates with data retention to save on raw data storage while keeping summarized data for historical analysis