
Coralogix raised $200 million in Series F funding.
The round was co-led by Advent, CPPIB, nd Greenfield, with participation from Brighton Park Capital, bringing total funding in Coralogix to $550M.
“AI is fundamentally changing the way enterprises operate, and observability is quickly evolving into a core layer of business intelligence,” said Alek Ferro of Advent. “Coralogix has consistently stayed ahead of that transformation, building a platform designed for the scale, speed and complexity of the agentic era. Since our initial investment, the company has continued to accelerate innovation and market adoption, reinforcing our belief that Coralogix is positioned to define the future of AI-powered observability.”
The company will use this funding to accelerate growth across three core areas:
- AI-Native Observability: accelerating development of agentic AI capabilities across Olly, MCP and CLI to help enterprises investigate, automate and operate at machine speed across increasingly complex AI-driven environments.
- Telemetry Data Infrastructure: expanding Coralogix’s schema-free telemetry data lake architecture to support real-time processing, long-term data retention and open-format analytics at enterprise and AI scale.
- Global Enterprise Expansion: scaling platform adoption among organizations modernizing beyond legacy observability tools as demand grows for AI-ready architectures, complete telemetry fidelity and customer-owned data infrastructure.
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