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Networking Research Lab
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Efficient AI

The Three Pillars of Practical Machine Learning

Hasan Abed Al Kader Hammoud, Ph.D. Student, Electrical and Computer Engineering
Jun 16, 14:00 - 16:00

Zoom Meeting 98734301189

AI Trustworthy AI trustworthy machine learning Efficient AI adaptive methods

This thesis establishes methods, evaluation protocols, and insights toward machine learning systems that are practical, adaptive, efficient, and trustworthy paving path for practical machine learning that rests on key three pillars: adaptation, efficiency, and trustworthiness.

Kuilian Yang

Ph.D. Student, Electrical and Computer Engineering

High Performance Low Power Circuits noise-shaping differential SAR capacitance-digital converter neuromorphic computing Hardware acceleration Efficient AI edge computing low-latency architecture

Hasan Abed Al Kader Hammoud

Ph.D. Student, Electrical and Computer Engineering

Trustworthy AI Efficient AI AI Deep learning machine learning Computer Vision efficient adaptation LLM

Charalampos Antoniadis

Research Scientist, Electrical and Computer Engineering

Efficient AI Generative AI and LLMs Electronic Design Automation Smart Cities

Networking Research Lab (NETLAB)

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