AnankeLabs

AnankeLabs is developing KAIROS Substrate, a real-time deterministic safety engine, to help organizations operating AI, cybersecurity, and autonomous systems solve structural exposure to novel, zero-day threats with a proactive physics engine that mathematically calculates exact breaking points before execution. We are tackling the fundamental failure of reactive, probabilistic defenses. Today, AI, cybersecurity, and robotics rely on known historical data—like threat signatures or mapped environments—to predict safety. This creates a permanent, widespread synchronization lag across modern infrastructure, leaving systems structurally exposed to novel, zero-day catastrophes and unpredictable "distribution shifts." This problem deeply affects operators across multiple high-stakes domains: AI Safety: Operators rely on post-generation statistical classifiers, forcing them to anticipate every adversarial path. This leaves systems highly exposed between vulnerability discovery and classifier updates. Cybersecurity: Current defenses depend on pattern-matching that requires a known signature. This creates a dangerous reality where defenders are forced to absorb the initial zero-day breach just to extract the signature needed to stop future attacks. Robotics: Systems use neural policies optimized for statistical averages. When encountering novel environments, they lack a physical safety substrate, resulting in hardware executing a "software hallucination at full mechanical torque" and causing kinetic collisions. AnankeLabs is creating an entirely new category of safety by shifting away from guessing if an action is safe based on past data, and moving toward a deterministic engine built on first principles. We built KAIROS Substrate, a real-time safety physics engine that acts as an automatic brake. Instead of relying on pattern-matching, it evaluates actions before execution, instantly detecting and blocking structurally unsound actions across AI, cyber, and robotics by calculating exact mathematical breaking points. Crucially, we made auditability a structural property of the engine itself. Because KAIROS is perfectly deterministic (identical inputs produce identical outputs at ε=10⁻⁶), it automatically generates an immutable, byte-identically replayable trace of every gate decision as a side effect. This eliminates subjective incident reporting and natively satisfies strict regulatory regimes like the EU AI Act, Machinery Regulation 2023/1230, DORA, and NIS2. The spark that fired our mission was the realization that relying on statistics to secure critical infrastructure is a dead-end. Watching security teams permanently synchronize their defenses to yesterday's attack surface highlighted an unacceptable structural flaw in modern technology. We saw the same unacceptable risks in autonomous systems, where a simple distribution shift could cause heavy machinery to hallucinate and collide with its environment. We realized that true safety couldn't be bolted on as an afterthought or solved with better guesswork; it had to be deterministic and mathematical. We set out to build AnankeLabs because organizations deserve a proactive safeguard that prevents failures from unseen threats from the ground up, rather than just mitigating the damage after the fact.
Location Sweden
Website anankelabs.io
Founded 2026
Employees 1-10
Industries IT & Software, SaaS, Robotics
Business model B2B
Funding state Bootstrapping

Working at
AnankeLabs

This job comes with several perks and benefits

Remote work allowed
Remote work allowed

Pet friendly
Pet friendly

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Team

Founder, Founder & CEO

Walter Greefkes