
#98 - Quantum Machine Learning (QML): Racing Toward a Techno-Revolution
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About this listen
What happens when the mind-bending realm of quantum physics collides with the cutting-edge world of machine learning? Welcome to the high-stakes frontier of Quantum Machine Learning (QML) — a field promising to supercharge how we discover drugs, design materials, and forecast financial trends by processing complex data at unprecedented speeds.
But it’s not all quantum roses 🌹— we’re also facing real-world barriers: shaky hardware, noisy qubits, and a missing link known as QRAM. Not to mention the looming shadow of global cybersecurity threats as quantum computers inch closer to cracking today’s encryption.
In this episode, we unpack both the thrilling potential and existential risks of QML, while exploring how AI is stepping in to help quantum systems evolve smarter, faster, and more reliably. We also dive into the ethical and geopolitical questions behind this technological arms race. Who gets access? Who gets left behind? And how do we ensure this power isn't misused?
Tune in if you’re ready to explore the tech that could change everything.
From promises to perils — this is quantum like you’ve never heard it before.
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