Tonic Security Raises $7M for AI Cyber Risk Management

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Tonic Security Raises $7M for AI Cyber Risk Management

Tonic Security, a Tel Aviv-based cybersecurity startup, launched from stealth today with $7 million in seed funding. Hetz Ventures led this round. Vesey Ventures and prominent angel investors also participated.

The company developed an AI-powered Agentic Exposure Management Platform. This platform helps security teams cut through complexity. It expedites the prioritization and remediation of vulnerabilities and threats.

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Tonic Security's Platform Enhances Cyber Defense

Tonic Security's platform aligns and interprets data from fragmented IT and security tools. It adds context to every finding, consequently enabling faster remediation. The system addresses the challenge of overwhelming alerts from expanding attack surfaces, a common issue for many organizations using tools from providers like CrowdStrike or Palo Alto Networks.

Powered by its domain-specific AI agents and proprietary Data Fabric, Tonic harmonizes data from threat intelligence and unstructured organizational knowledge. This includes tickets, documents, and emails. Thus, users quickly understand potential business impact, operational dependencies, and remediation feasibility. This advanced artificial intelligence capability enhances overall cybersecurity posture.

Customers report a 50% decrease in Mean Time to Remediate for business-critical exposures.

Furthermore, the platform reduces time spent per employee per week contextualizing findings and triaging alerts by 20%. It also achieves a 90% reduction in exposures requiring remediation, streamlining vulnerability management. Sharon Isaaci (CEO), David Warshavski (CPO), and Greg Ainbinder (CTO) lead Tonic Security, bringing extensive experience in incident response and intelligence.

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