The Physics of Quantum 2.0: Challenges in understanding Quantum Matter
- URL: http://arxiv.org/abs/2501.00447v1
- Date: Tue, 31 Dec 2024 13:57:05 GMT
- Title: The Physics of Quantum 2.0: Challenges in understanding Quantum Matter
- Authors: Siddhartha Lal, Mayank Shreshtha,
- Abstract summary: It is imperative for us to face the challenges in understanding the phenomenology of various emergent forms of quantum matter.
We outline and discuss several outstanding challenges, including the need to explore and identify the organisational principles that can guide the development of theories.
These efforts will enable the prediction of new quantum materials whose properties facilitate the creation of next generation technologies.
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- Abstract: Almost a century on from the culmination of the first revolution in quantum physics, we are poised for another. Even as we engage in the creation of impactful quantum technologies, it is imperative for us to face the challenges in understanding the phenomenology of various emergent forms of quantum matter. This will involve building on decades of progress in quantum condensed matter physics, and going beyond the well-established Ginzburg-Landau-Wilson paradigm for quantum matter. We outline and discuss several outstanding challenges, including the need to explore and identify the organisational principles that can guide the development of theories, key experimental phenomenologies that continue to confound, and the formulation of methods that enable progress. These efforts will enable the prediction of new quantum materials whose properties facilitate the creation of next generation technologies.
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