
Customer Success Manager
SonatypeSonatype is privileged to work with customers who rely on us to improve the quality, security, and speed of their software development lifecycle. Customer Success at Sonatype is outcomes-driven, technically credible, and growth-oriented.
As a Customer Success Manager, you will engage a portfolio of customers through a scaled engagement model, using structured lifecycle motions and data signals to prioritize the right outreach at the right time. Your goal is to accelerate time-to-value, drive adoption and measurable outcomes, increase renewal confidence, and surface growth opportunities in partnership with the broader account team.
This role is not intended to be reactive “shadow support.” You will be expected to deliver proactive, outcomes-driven guidance—knowing when to pull in deeper subject-matter expertise—while maintaining disciplined execution and consistent customer leadership.
A defining expectation of this role is the use of GenAI reflexively. You are expected to use GenAI tools as a thought partner to improve the quality, clarity, and strategic rigor of your analysis, planning, and communication—while validating outputs and applying sound judgment.
Customer Outcomes and Value Realization
- Lead structured customer motions to accelerate onboarding success, adoption, and time-to-value.
- Help customers connect Sonatype capabilities to their desired outcomes and success criteria, translating intent into clear next steps and measurable progress.
- Provide proactive guidance on best practices, common pitfalls, and practical steps to improve customer success with Sonatype solutions.
- Maintain a clear view of customer health and progress, identifying risk signals early and driving mitigation actions in partnership with internal teams as needed.
- Bring strong product and
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