Need smarter insights in your inbox? Join our weekly newsletters to get solely what issues to enterprise AI, knowledge, and safety leaders. Subscribe Now
San Francisco-based CTGT, a startup centered on making AI extra reliable by feature-level mannequin customization, gained the Greatest Presentation Model award at VB Remodel 2025 in San Francisco. Based by 23-year-old Cyril Gorlla, the corporate showcased how its expertise helps enterprises overcome AI belief boundaries by instantly modifying mannequin options as an alternative of utilizing conventional fine-tuning or immediate engineering strategies.
Throughout his presentation, Gorlla highlighted the “AI Doom Loop” confronted by many enterprises: 54% of companies cite AI as their highest tech threat based on Deloitte, whereas McKinsey studies 44% of organizations have skilled unfavourable penalties from AI implementation.
“A big a part of this convention has been concerning the AI doom loop” Gorlla defined throughout his presentation. “Sadly, a whole lot of these [AI investments] don’t pan out. J&J simply canceled lots of of AI pilots as a result of they didn’t actually ship ROI attributable to no basic belief in these methods.”
Breaking the AI compute wall
CTGT’s method represents a major departure from typical AI customization methods. The corporate was based on analysis Gorlla performed whereas holding an endowed chair on the College of California San Diego.
In 2023, Gorlla revealed a paper on the Worldwide Convention on Studying Representations (ICLR) describing a way for evaluating and coaching AI fashions that was as much as 500 occasions quicker than present approaches whereas reaching “three nines” (99.9%) of accuracy.
Slightly than counting on brute-force scaling or conventional deep studying strategies, CTGT has developed what it calls an “solely new AI stack” that basically reimagines how neural networks be taught. The corporate’s innovation focuses on understanding and intervening on the characteristic stage of AI fashions.
The corporate’s method differs basically from normal interpretability options that depend on secondary AI methods for monitoring. As a substitute, CTGT gives mathematically verifiable interpretability capabilities that get rid of the necessity for supplemental fashions, considerably reducing computational necessities within the course of.
The expertise works by figuring out particular latent variables (neurons or instructions within the characteristic house) that drive behaviors like censorship or hallucinations, then dynamically modifying these variables at inference time with out altering the mannequin’s weights. This method permits corporations to customise mannequin conduct on the fly with out taking methods offline for retraining.
Actual-world functions
Throughout his Remodel presentation, Gorlla demonstrated two enterprise functions already deployed at a Fortune 20 monetary establishment:
An e-mail compliance workflow that trains fashions to grasp company-specific acceptable content material, permitting analysts to examine their emails in opposition to compliance requirements in real-time. The system highlights probably problematic content material and supplies particular explanations.
A model alignment device that helps entrepreneurs develop copy per model values. The system can recommend customized recommendation on why sure phrases work nicely for a particular model and easy methods to enhance content material that doesn’t align.
“If an organization has 900 use instances, they now not must fine-tune 900 fashions,” Gorlla defined. “We’re model-agnostic, to allow them to simply plug us in.”
An actual-world instance of CTGT’s expertise in motion was its work with DeepSeek fashions, the place it efficiently recognized and modified the options chargeable for censorship behaviors. By isolating and adjusting these particular activation patterns, CTGT was capable of obtain a 100% response fee on delicate queries with out degrading the mannequin’s efficiency on impartial duties like reasoning, arithmetic and coding.
Photos: CTGT presentation at VB Remodel 2025


Demonstrated ROI
CTGT’s expertise seems to be delivering measurable outcomes. Through the Q&A session, Gorlla famous that within the first week of deployment with “one of many main AI-powered insurers, we saved $5 million of legal responsibility from them.”
One other early buyer, Ebrada Monetary, has used CTGT to enhance the factual accuracy of customer support chatbots. “Beforehand, hallucinations and different errors in chatbot responses drove a excessive quantity of requests for dwell assist brokers as clients sought to make clear responses,” mentioned Ley Ebrada, Founder and Tax Strategist. “CTGT has helped enhance chatbot accuracy tremendously, eliminating most of these agent requests.”
In one other case research, CTGT labored with an unnamed Fortune 10 firm to reinforce on-device AI capabilities in computationally constrained environments. The corporate additionally helped a number one laptop imaginative and prescient agency obtain 10x quicker mannequin efficiency whereas sustaining comparable accuracy.
The corporate claims its expertise can cut back hallucinations by 80-90% and allow AI deployments with 99.9% reliability, a vital issue for enterprises in regulated industries like healthcare and finance.
From Hyderabad to Silicon Valley
Gorlla’s journey is itself exceptional. Born in Hyderabad, India, he mastered coding at age 11 and was disassembling laptops in highschool to squeeze out extra efficiency for coaching AI fashions. He got here to the USA to check on the College of California, San Diego, the place he obtained the Endowed Chair’s Fellowship.
His analysis there centered on understanding the elemental mechanisms of how neural networks be taught, which led to his ICLR paper and ultimately CTGT. In late 2024, Gorlla and co-founder Trevor Tuttle, an knowledgeable in hyperscalable ML methods, have been chosen for Y Combinator’s Fall 2024 batch.
The startup has attracted notable traders past its institutional backers, together with Mark Cuban and different outstanding expertise leaders drawn to its imaginative and prescient of constructing AI extra environment friendly and reliable.
Funding and future
Based in mid-2024 by Gorlla and Tuttle, CTGT raised $7.2 million in February 2025 in an oversubscribed seed spherical led by Gradient, Google’s early-stage AI fund. Different traders embrace Basic Catalyst, Y Combinator, Liquid 2, Deepwater, and notable angels reminiscent of François Chollet (creator of Keras), Michael Seibel (Y Combinator, co-founder of Twitch), and Paul Graham (Y Combinator).
“CTGT’s launch is well timed because the trade struggles with easy methods to scale AI throughout the present confines of computing limits,” mentioned Darian Shirazi, Managing Companion at Gradient. “CTGT removes these limits, enabling corporations to quickly scale their AI deployments and run superior AI fashions on units like smartphones. This expertise is vital to the success of high-stakes AI deployments at massive enterprises.”
With AI mannequin measurement outpacing Moore’s Legislation and advances in AI coaching chips, CTGT goals to deal with a extra foundational understanding of AI that may deal with each inefficiency and more and more complicated mannequin choices. The corporate plans to make use of its seed funding to develop its engineering workforce and refine its platform.
Every finalist introduced to an viewers of 600 trade decision-makers and obtained suggestions from a panel of enterprise capital judges from Salesforce Ventures, Menlo Ventures, and Amex Ventures.
Learn concerning the different winners Catio and Solo.io. The opposite finalists have been Kumo, Superduper.io, Sutro and Qdrant.
Editor’s notice: As a thank-you to our readers, we’ve opened up early chicken registration for VB Remodel 2026 — simply $200. That is the place AI ambition meets operational actuality, and also you’re going to wish to be within the room. Reserve your spot now.