tinyML Talks: Analog TinyML for health management using intelligent wearables

As medical wearables become more widely adopted for at-home/early diagnosis/health surveillance, the volume of data produced by these devices are expected to reach thousands of petabytes/month. Transmitting this large volume of data over the cloud for processing will potentially emerge as a communication bottleneck and increase latency of decisions. Transmitting naively all data generated by a wearable medical device is also costly in terms of power/energy- transmitter is usually the highest consumer of energy in a sensor (at least 10~20x more energy than sensing). Key to addressing this data deluge is to increase capabilities of the wearable devices to process information locally and have on-device inference capabilities, such as through embedding AI capabilities into the wearable device that will allow extraction of key information from the sensor data. There needs to be balance between what can be processed locally on-device with low power/energy and how to optimally decide the volume of data communication from the device (to cloud as an example). The barriers to this approach lie in the computational complexity of AI algorithms that makes it challenging to fit AI models on wearables with limited resources. Some of the answers might lie in going back to early days of signal processing in silicon – developing analog circuit techniques for AI development which will require collaborative innovations in both AI model development and analog circuit design techniques. In this talk, I will present our research on developing analog AI circuits and their demonstrations with patient data with use cases from cardiovascular health monitoring and sepsis onset detection.

Date

November 22, 2022

Location

Virtual

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Schedule

Timezone: PDT

Analog TinyML for health management using intelligent wearables

Arindam SANYAL, Assistant Professor

School of Electrical, Computer and Energy Engineering, Arizona State University

Arindam SANYAL, Assistant Professor

School of Electrical, Computer and Energy Engineering, Arizona State University

Arindam Sanyal is currently an assistant professor in the School of Electrical, Computer and Energy Engineering at Arizona State University. Prior to this, he was an analog design engineer with Silicon Laboratories and assistant professor in State University of New York. He received his PhD in Electrical and Computer Engineering from the University of Texas at Austin in 2015, his M.Tech from The Indian Institute of Technology, Kharagpur in 2009 and B.E from Jadavpur University, India in 2007.  Dr. Sanyal’s research expertise includes analog/mixed signal design, bio-medical sensor design, hardware security and neuromorphic computing.

Schedule subject to change without notice.