CleanStart Introduces Clean Libraries for Verified Open Source Dependencies

July 16, 2026
CleanStart has launched Clean Libraries, a tool that allows developers and AI coding assistants to use verified open source components by default while identifying risky dependencies and offering secure alternatives.

CleanStart has launched Clean Libraries, a system designed to help developers and AI coding assistants use verified open source components by default, according to a press release.

Clean Libraries identifies unsafe or unverified open source libraries during development and provides verified replacements before those dependencies are added to an application. The verified libraries are built from source or backed by attestations, continuously analyzed, and maintained with security patches for known vulnerabilities.

Unlike tools that only flag outdated or risky dependencies, Clean Libraries directly remediates software supply chain risks by offering secure alternatives. It integrates with existing development tools and workflows, enabling organizations to govern and verify software components without adding manual reviews or friction.

The product supports CleanStart’s broader aim of Software Supply Chain Posture Management by enabling secure and consistent dependency governance across the software lifecycle.

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