Wednesday Mar 19, 2025

Microsoft’s Majorana Chip, Topological Qubits & Quantum Machine Learning

In this episode, I sit down with Dr. Nathan Wiebe from the Department of Computer Science at the University of Toronto. Prof. Wiebe specializes in quantum simulation, machine learning, and quantum computing. We talk about the fundamentals of quantum computing, explore Microsoft’s new “Majorana” quantum chip, and discuss what the future holds for quantum machine learning, error correction, and more. Whether you’re a seasoned researcher or just curious about the world of qubits, this conversation offers insights into the rapidly evolving quantum landscape.


Video Chapters: 0:00 - Introduction and Episode Overview 0:27 - Quantum vs. Classical Computing 2:20 - Interference and Negative Probability Amplitudes 5:12 - The Microsoft “Majorana” Quantum Chip 14:15 - Topological Qubits vs. Google’s Surface Code 19:22 - “Transistor of the Quantum Age?”: Reliability and Error Correction 26:36 - Qubit Counts, Gate Overheads, and the Error-Correction Challenge 30:17 - Quantum Machine Learning: Hype vs. Reality 34:53 - AGI, Large Language Models, and Is Quantum Necessary? 37:01 - Real-World Applications: Chemistry and Materials Science 43:32 - Beyond Classical AI: Where Quantum Might Help 45:16 - Life Advice for Aspiring Scientists 52:00 - Final Thoughts and Outro

Thanks for listening, and enjoy the conversation!

Copyright 2025 All rights reserved.

Podcast Powered By Podbean

Version: 20241125