Sreerag Raghunathan is Manager of Solutions Development for Edge AI at Microchip Technology Inc., where he leads efforts to design and deploy real-time AI/ML solutions across embedded platforms ranging from ultra-low-power microcontrollers to high-performance microprocessors. His work focuses on TinyML, embedded vision, sensor fusion, and system-level optimization for safety-critical and mission-critical applications. He collaborates with customers and cross-functional teams to translate advanced AI concepts into production-ready solutions optimized for strict power, memory, and latency constraints.
Sreerag holds Bachelor’s and Master’s degrees in Electrical Engineering and a Master of Science in Business Analytics.
Medical device teams are under increasing pressure to add intelligent monitoring capabilities while maintaining or improving existing performance, mitigating patient data privacy risks, and enabling clinicians to make better informed diagnoses. Through examples like EMG and adaptive prosthetics, we will show how systems can flag deviations from baseline in real time - supporting preventative analytics, improving responsiveness, and preserving privacy. Real-time healthcare doesn’t have to rely on the cloud. On-device AI brings intelligence directly to the patient, reducing latency and improving reliability. This session explores how embedded, on-device AI enables time-series analysis for patient-specific monitoring, allowing systems to detect physiological anomalies while maintaining clinician oversight.