
ScienceLogic and Carahsoft Technology Corp. announced a partnership.
Under the agreement, Carahsoft will serve as ScienceLogic’s Master Government Aggregator®, making the company’s ScienceLogic AI Platform and observability capabilities for full stack monitoring available to the Public Sector through Carahsoft’s reseller partners, National Association of State Procurement Officials (NASPO) ValuePoint, OMNIA Partners and E&I Cooperative Services Contract contracts.
The ScienceLogic AI Platform accelerates modern IT operations by consolidating legacy tools, providing comprehensive observability and actionable insights. Built to deliver situational awareness across an agency’s entire IT landscape, the platform’s broad visibility enhances Zero Trust architectures and enables business continuity while uncovering new efficiencies.
ScienceLogic’s core SL1 product is compliant with the Federal Information Processing Standards (FIPS) 140-2 and is listed on the Department of Defense Information Network (DoDIN) Approved Products List, ensuring secure data encryption and communication. The platform’s Federal offering, ScienceLogic Government Cloud, currently operates with a FedRAMP Moderate Authorized designation, meeting advanced compliance and security standards that make the platform a trusted choice for Government operations needing to protect sensitive digital assets.
“ScienceLogic’s platform enables Government agencies to seamlessly manage mission critical services,” said Nick Shuart, who leads the ScienceLogic Team at Carahsoft. “The platform enhances operational efficiency and security, providing a reliable solution to ensure mission readiness for agencies. We look forward to working with ScienceLogic and our reseller partners to bring these advanced AI solutions to the Public Sector.”
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