During Kubecon 2025, Red Hat makes two product announcements. Konveyor AI helps developers modernize AI applications in cloud-native environments.
On the sidelines of KubeCon, Red Hat announces two new releases: Konveyor AI 0.1 and version 1.5 of the Red Hat Developer Hub. Both tools support companies in modernizing applications and increasing the efficiency of software development.
read also
Cloud Native More Popular Than Ever in Quest for Automation and Efficiency
Red Hat Developer Hub 1.5
The Red Hat Developer Hub is an internal development portal based on the open-source project Backstage. Version 1.5 introduces improvements aimed at faster adoption within organizations and better support for development teams. Companies focusing on building complex applications – including AI and edge applications – receive additional tools to streamline development processes.
The update includes a new analytics dashboard called Adoption Insights. This gives engineers insight into the use of the portal, allowing them to improve processes based on data. Additionally, there’s an extensive plugin catalog with over sixty extensions. This makes it possible to customize the portal without rebuilding. There’s also RHDH Local: a feature that allows developers to run a test version of the portal locally for faster iteration and debugging.
Konveyor AI
In addition to the Developer Hub, Red Hat has also launched Konveyor AI 0.1. We’re curious to see how long it will take before version 2 sees the light of day. This tool supports developers in modernizing applications for cloud-native environments.
Konveyor AI combines static code analysis with generative AI and integrates into developers’ existing IDEs. This allows code changes to be automatically suggested, accelerating migration to modern technologies.
The platform uses retrieval-augmented generation (RAG) to provide context-specific suggestions based on historical code changes. The tool further includes 2,400 predefined rules for migration, a history of resolved issues, and an extension for VS Code. Users can also add their own rules for specific situations. Moreover, Konveyor AI is model-agnostic, meaning organizations can choose which language model they use.