You're pledging to donate if the project hits its minimum goal and gets approved. If not, your funds will be returned.
Project description
Lisa Intel is building a governed AI research and discovery platform that enables autonomous, cross-domain scientific innovation while maintaining safety, auditability, and control.
Recent MIT research shows that scientific foundation models converge across domains, enabling transferable representations between chemistry, materials science, biology, and beyond.
📄 MIT article: https://www.alphaxiv.org/abs/2512.03750
Our project focuses on operationalizing this insight into a real system:
What we are building
A modular AI research platform coordinating multiple domain-specific models
Autonomous cross-domain discovery loops (hypothesis → validation → iteration)
A built-in governance layer for safety, auditability, and policy alignment
Structured outputs suitable for validated research artifacts and IP generation
Unlike existing tools, Lisa Intel focuses not on a single model or domain, but on the control plane that governs how advanced AI research systems operate safely at scale.
https://lisaintel.com
This project develops a governed, autonomous AI research platform that turns cross-domain foundation model capabilities into safe, auditable scientific discovery. The goal is to create infrastructure that enables innovation without sacrificing control or safety.
Goals
Build a reference implementation of a governed AI research system
Demonstrate safe, autonomous cross-domain discovery workflows
Establish a foundation for future standardization and policy alignment
How
Design and implement a modular orchestration architecture
Integrate governance mechanisms (audit logs, control policies, fail-safes)
Validate the system through simulated and pilot research tasks
Funding will support:
Core system architecture and orchestration development
Governance and safety mechanism design
Validation through simulated research pipelines
Legal and technical work related to patent hardening and documentation
With $75k (minimum):
Deliver a functional architecture + governance prototype
With $200k (full funding):
Build a robust reference system
Run cross-domain validation experiments
Prepare the platform for external pilots and collaborations
Pedro Bentancour Garin – Founder & Lead Architect
Background spanning:
AI governance and safety systems
Multidisciplinary research coordination
Prior work on large-scale, system-level technology concepts
Alexis Podolny - Strategic Advisor
Previously at startup "TheyDo", raised €54M in two years.
The project is supported by ongoing dialogue with researchers, policy actors, and AI governance initiatives in the US and EU.
Likely causes
Insufficient funding to fully validate system-level assumptions
Slower-than-expected integration across domains
Outcomes
Even partial success yields valuable governance frameworks
Architecture and insights remain reusable for future AI safety and research infrastructure efforts
Downside risk is limited; upside impact is high.
$15000 raised to date from family and friends
$50000 from loans
Project currently founder-funded and pre-seed