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AI Agent Training via Simulations

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.
Active Founders
Abhinav Sinha
Abhinav Sinha
Founder
Hi, I’m Abhinav the founder and CEO for Lucidic AI! I’m from Stanford where I studied Computer Science with an AI specialization (both bachelor's and master's) and did research at Stanford's AI Lab. I’ve worked at Apple as a software engineer and at Citadel Securities and Susquehanna International Group as a quant. In my free time, I like to play basketball, pickleball, lift, and rewatch Christopher Nolan movies! Feel free to reach out, would love to chat -- abhinav@lucidic.ai
Andy Liang
Andy Liang
Founder
Founder/CTO at Lucidic AI, working on an analytics, testing, and simulations framework for AI agent devs. Stanford BS/MS Computer Science (AI specialization). Ex Citadel, AppLovin. Previously built GrocerCheck, a COVID-19 web app helping shoppers social distance effectively, with over 200,000 users and endorsed by the Government of Canada. Reach me at andy@lucidic.ai
Jeremy Tian
Jeremy Tian
Founder
Hi! I'm Jeremy Tian, one of the founders and the Chief Scientist at Lucidic AI, working to explain your AI models' decisions. I have a BS/MS in Computer Science with an AI specialization from Stanford University. Ex. Quantitative Trader at DRW and software engineering/machine learning engineering at Steel Dynamics. Contact me at jeremy@lucidic.ai!
Company Launches
Lucidic – Analytics and testing platform for rapid agent iteration
See original launch post

TL;DR: Lucidic is an AI agent analytics platform that maps every step of your agent's workflow and simulates their performance at scale, cutting iteration time from weeks to minutes. Instead of sifting through logs, you get a visual breakdown—searchable workflow replays, decision nodes with outcome probabilities, step-by-step agent action trajectories, and side-by-side simulation comparisons.

https://youtu.be/UI_Y9R_8XHo

The Problem: Building Good Agents is Hard

When we started building agents, it seemed trivial: Call GPT a few times, string together some logic, and it works—until it doesn’t.

The moment you become complex, it’s a disaster. One day, your agent is working fine; the next, it’s breaking for no reason. With misaligned reasoning, brittle logic chains, unclear failure cases, or silent performance degradation, you end up spending hours rerunning prompts, tweaking edge cases, and wondering why something that should work just doesn’t.

And don’t even get me started on debugging. Running the same prompt over and over again, hoping this time it’ll behave the way you want? That’s not a strategy—it’s a nightmare.

Our Solution

Lucidic changes the game. No more late nights staring at a terminal, guessing what went wrong. See exactly how your agent’s brain works—replay actions step by step, inspect decision trees, and visualize internal reasoning in real time. Modify prompts and logic with instant, structured feedback so you’re never debugging in the dark again.

No more trial-and-error fixes—just clear, interactive breakdowns of why your agent fails and how to fix it. Test at scale, compare behaviors side by side and optimize performance before deployment. Intelligently visualize thousands of complete workflow trajectories at once, showing success rates, failure points, and decision paths for faster debugging.

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Get Started

🧠Stop watching agents run. Start seeing how they think.

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The Team

Abhinav, Andy, and Jeremy met while playing Super Smash Bros freshman year at Stanford. Since then, they’ve worked on multiple deep learning research projects together. Abhinav (CEO) has worked as a researcher at the Stanford AI Lab, a quant at Citadel and SIG, and a software engineer at Apple. Andy (CTO) qualified to represent Stanford (one of three) at the North American Championship for the largest collegiate programming competition in the world (ICPC). Jeremy (Chief Scientist) is a dedicated machine learning researcher with years of experience working on state-of-the-art models at Steel Dynamics (F500) and DRW.

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Lucidic AI
Founded:2025
Batch:Winter 2025
Team Size:4
Status:
Active
Location:San Francisco
Primary Partner:Brad Flora