Selector announced a $32 million funding round, doubling the company’s valuation to $375 million.
The new round was led by AVP alongside Ansa Capital, Two Bear Capital, Sinewave Ventures, Singtel Innov8 and other existing investors.
The investment will be used to accelerate AI innovation, product development, global go-to-market expansion, and customer success.
“Selector’s ability to deliver consistent strong growth while serving the world’s most complex Fortune 20 networks is a testament to the team’s execution and the mission-critical nature of the platform,” said Alex Scherbakovsky, general partner at AVP. “By providing one platform and one shared operational view, Selector helps enterprises understand and troubleshoot complex infrastructure challenges in real time. We are excited to partner with Selector to support the company’s international expansion and continued product innovation.”
“The increased adoption by Fortune 20 and Fortune 1000 organizations underscores the trust customers are placing in Selector,” said Kannan Kothandaraman, CEO of Selector. “Enterprises are moving away from fragmented monitoring tools toward platforms that deliver intelligence, context, and automation at scale, and our rapid customer expansion validates our efforts to help them navigate this transition and modernize their operations.”
Selector also announced plans to release its next generation ChatOps capabilities providing a more powerful Agentic ChatOps, designed to support multi-turn reasoning, iterative investigation, and deeper operational context.
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