AI & Healthcare Architect · SFDA

The next layer of Regulatory Intelligence

Building compliant AI systems for drug safety, regulatory affairs, and national-scale healthcare transformation.

Scroll to discover more
Dr. Mohammed Fouda

Dr. Mohammed Fouda

Director & AI Lead, SFDA

Leading national drug safety efforts while driving digital transformation with AI. Building production systems regulators use daily.

0+ AI Tools
0 Publications
0 Years

Compliance & Code

I wear two hats at SFDA: Director of the Medication Error Department, where I lead the national effort to prevent look-alike drug packaging from harming patients, and Head of the AI Team, where I drive digital transformation with a 15+ person multidisciplinary team.

Technology Stack

Python Flask FastAPI RAG LangChain FAISS Machine Learning Deep Learning CNNs SQLite

Recent Publications

Predicting Glaucoma Visual Field Progression
Vision AI · Deep Learning · 2025
Signal Detection at SFDA: Current Practices & Future Directions
Signal Detection · Strategy · 2025
Evaluating ML Models for Saudi Pharmacovigilance Risk Prediction
Machine Learning · Pharmacovigilance · 2024
View All on Google Scholar

Authority signals

Regulatory AI carries weight only when it survives real institutional, scientific, and patient-safety scrutiny — these are the rooms where the work has been tested.

Global AI Governance

Member, ICMRA AI Steering Committee · Chair, ISoP AI in Pharmacovigilance SIG

Medication Safety Leadership

Director, SFDA Medication Error Department — national evaluation of medication names, labeling, and packaging to reduce look-alike/sound-alike risk

Award-Winning Applied AI

SDAIA × Stanford Hackathon Champion (first-place ML model) · The Eye Hackathon Top 4 Finalist

Research & Peer Review

Distinguished project, SFDA Regulatory Research Day 2024 · Reviewer, Pharmacoepidemiology & Drug Safety and Vaccine

How we collaborate

Strategic Advisory

Guiding organizations through the adoption of AI in regulated healthcare environments.

System Architecture

Designing scalable, compliant regulatory tech stacks.

AI Implementation

From concept to deployment: building RAG pipelines, agents, and predictive models for health data.

ArtGuard medication safety

Using perceptual hashing + vision models to detect drug packaging that looks dangerously similar, protecting patients from medication errors.

ArtGuard cover slide
Cover

ArtGuard

AI-Powered Medication Safety

ArtGuard problem slide showing packaging error scale
Problem

1,500+

Packaging errors annually

ArtGuard stakeholders slide for patients regulators and pharma
Stakes

Patients · Regulators · Pharma

All at risk

ArtGuard challenge slide showing manual review time
Challenge

2-3 hours

Manual review per package

ArtGuard solution slide introducing dual engine AI
Solution

Dual-Engine AI

Hashing + Vision LLM

ArtGuard workflow slide showing upload analyze report process
Workflow

Upload → Analyze → Report

30 seconds

ArtGuard impact slide with packages scanned and review speed metrics
Impact

500+ scanned

47 flagged · 40% faster

Book your free 30-minute consultation

Schedule a focused conversation about your AI and regulatory challenges. No sales pitch—just strategic insights tailored to your needs.

Expert Analysis
Get actionable insights on your regulatory AI challenges
Custom Roadmap
Walk away with a clear next-step strategy
Zero Commitment
Free consultation with no obligations

Ready to modernize your regulatory strategy?

Warm introductions and direct outreach welcome. I respond within 24 hours.