B2B

Adam

AI Agent Training via Simulations

YC Batch:

YC Batch:

Winter 2025

Andy Liang

Founder & CTO

Founders are Stanford CS graduates with AI research experience (Stanford AI Lab) and prior engineering/quant roles at firms including Apple Citadel Securities DRW and trading firms; strong background in AI/ML and systems.

Total Raised

$500K

Stage

Early

Latest Round

Pre-seed

Industry

B2B

About

As AI agents take on more consequential workflows the hard part isn’t just whether they work—it’s whether they behave consistently with your company’s knowledge policies and expectations. Lucidic AI turns that institutional knowledge into consistent agent behavior by continuously testing stress-simulating and auto-optimizing agents against your real production scenarios.

Lucidic ingests your real logs edge cases and operational rules then uses controlled simulations reinforcement learning and Bayesian optimization to automatically discover failure modes propose targeted fixes and verify improvements before anything reaches production. Instead of relying on manual prompt fiddling or guesswork your agents get a continuous improvement loop they’re tested corrected and optimized based on what your business actually requires—not what a generic model assumes.

The result is AI agents that reliably follow your domain logic adapt to changes and stay aligned across clients configurations and environments—without you needing to hand-engineer every prompt or behavior.

Key Investors

Y Combinator Vijay Krishnan

Company Snapshot

Employee Count

4

Status

Active

Tags

AIOps Developer Tools SaaS Automation AI

Get Access Now

Automatic workflows, data enrichment, to help you move forward faster.