
Ask: If you are building or using AI applications, let them take run-time compliance off your plate. Email the founders here or refer them to others who may need this.
Watch their demo here:
Founded by Shaun Ayrton & Raul Zablah
Shaun Ayrton (CEO) – A former McKinsey leader, Shaun drove $500M+ in revenue acceleration at leading global software and telecom clients. He witnessed firsthand how companies struggle to manage the risks of AI deployment.
Raul Zablah (CTO) - As a former senior staff engineer, Raul has built and scaled industry-leading enterprise platforms at Bridgewater, Morgan Stanley and Ridgeline and has published papers in the field. His specialization is SRE and making technology work securely and reliably at enterprise scale.
Shaun and Raul met on their first day at UPenn’s M&T program in 2011 and have been dear friends since.
Compliance and trust are major barriers to scaling AI, with one in two executives fearing reputational damage.
Ignoring the problem does not make it go away: A staggering 44% of organizations have reported negative consequences from using AI chatbots and assistants.
The cost of non-compliance is rising: Fines of 7% annual revenues (or 35M EUR) for non-compliance with EU AI Act; similar regulations are fast approaching in the US.
Companies are not ready: Only 6% feel ready to accommodate these changes, while 80% are committing 10%+ of their AI budgets to compliance.

Most customer- or employee-facing AI applications require guardrails:
No enterprise-grade guardrail solutions exist today. Companies incur $1-10M+ in costs annually and 6-12 months in delays building guardrails in-house.
Galini’s guardrails as-a-service enforces runtime compliance with four core modules:
1. Build custom guardrails based on your company’ policies

2. Evaluate your guardrails using Galini’s synthetic test generator and evaluation engine

3. Deploy into your app in seconds with their API

4. Monitor and improve performance by providing feedback to Galini’s agent
