Unleash

Unleash 6.7

Our latest release, Unleash 6.7, brings improvements to feature lifecycle management. This month, we’re also hosting a webinar to cover the latest updates, including new features, pay-as-you-go pricing, and best practices to enhance your feature management.

As always, you can find the complete release notes on GitHub.

Improved: Feature flag lifecycle stages

We’re refining feature flag lifecycle stages to better align with real-world development workflows. The first batch of updates includes new names, icons, and colors to enhance clarity and usability when working with lifecycle data.


Unleash lifecycle stages illustration

Updated: License policy for self-hosted Unleash Enterprise

We’re adjusting how license enforcement works for self-hosted Enterprise customers. Without a valid license, your instance will enter read-only mode. Check the release notes for more details.

Webinar: What’s new in Unleash?

Webinar registration details

Join us as we walk through the most exciting updates from the past year, including:

  • Release Templates – a new way to automate feature rollouts and standardize your release strategy
  • A more focused and personalized UI to help you stay productive and collaborate efficiently
  • The new getting started experience – set up a project and connect an SDK in seconds
  • Dashboards with insights into project health, feature delivery, and technical debt
  • Scheduling change requests and testing them in the playground
  • More powerful A/B testing for better control over feature rollouts
  • New pay-as-you-go pricing to make it easier to get all these features and more without a long-term commitment

Register now to secure your spot!

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