
Sumo Logic announced the launch of The Sumie Awards, its first public customer awards program.
The Sumie Awards will showcase Sumo Logic customers and partners, spotlighting their achievements in leveraging Sumo Logic’s solutions to promote application reliability and security, drive operational efficiency and deliver value at cloud scale. Customers will be recognized across four categories: The Innovator, The Defender, The Developer and The Collaborator.
The Sumie Awards will showcase customer and partner accomplishments across four distinct categories:
- The Innovator: Have you used Sumo Logic in a new and interesting way to solve problems? Maybe you’re using it to track green initiatives or office operations? Give us the details on how you’re making an impact.
- The Defender: Protecting against today’s ever-evolving threat landscape while modernizing your security operations is no easy task. Share how you leveraged Sumo Logic for SecOps, threat detection, PCI compliance and more to protect your organization.
- The Developer: Today’s customers demand exceptional, seamless digital experiences. Showcase how your DevOps and/or SRE teams ensure application reliability with Sumo Logic for log management, infrastructure monitoring and observability.
- The Collaborator: Are you partnering with Sumo Logic to deliver value and extend how organizations develop, operate and secure their applications at cloud scale? Tell us more and provide the data points that showcase the power of the partner ecosystem.
A panel of judges comprised of Sumo Logic team members and other industry professionals and experts will review the nominations. Winning customers will be announced and recognized in December 2024.
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