
LogDNA announced the private beta of Log Data Restoration on LogDNA.
This feature allows you to restore archived log data back into LogDNA so that you can quickly view and search it. The early access program is open to current LogDNA users on an enterprise plan who want to try out this feature and provide feedback.
Flexibility when it comes to controlling log data is extremely important. That’s why LogDNA has added 4 new APIs to help you programmatically configure your LogDNA accounts. Now you can use APIs to:
- Start/stop ingestion
- Query usage
- Configure Archiving
- Set Exclusion Rules
The APIs are currently available to all users.
LogDNA Streaming lets you ingest all of your log data into a single platform and then route it for a variety of enterprise use cases. With it, you can get vital log data in real time, regardless of source, destination, use case, or scale.
Variable Retention allows you to retain specific logs only for the amount of time that they’re valuable, ensuring that you can give teams access to the data they need without incurring hefty overage bills.
With every new feature release, LogDNA ensures complete control over your data while making it easier to process, route, ingest, store, and analyze.
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