Publications

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C. J. Cao, From Quantum Codes to Gravity: A Journey of Gravitizing Quantum Mechanics, 2021.
C. J. Cao, Chatwin-Davies, A., and Singh, A., How Low Can Vacuum Energy Go When Your Fields Are Finite-Dimensional?, 2019.
C. J. Cao and Lackey, B., Approximate Bacon-Shor Code and Holography, Journal of High Energy Physics, vol. 2021, 2021.
C. J. Cao, Q, X. - L., Swingle, B., and Tang, E., Building Bulk Geometry from the Tensor Radon Transform, Journal of High Energy Physics, vol. 2020, no. 12, pp. 1-50, 2020.
C. J. Cao and Lackey, B., Quantum Lego: Building Quantum Error Correction Codes from Tensor Networks, PRX Quantum, vol. 3, no. 2, p. 020332, 2022.
B. Cao, Grass, T., Gazzano, O., Patel, K. Ashokbhai, Hu, J., Müller, M., Huber, T., Anzi, L., Watanabe, K., Taniguchi, T., Newell, D., Gullans, M., Sordan, R., Hafezi, M., and Solomon, G., Chiral transport of hot carriers in graphene in the quantum Hall regime, 2021.
F. Caravelli, De Wit, G. Coulter-, García-Pintos, L. Pedro, and Hamma, A., Random Quantum Batteries, Phys. Rev. Research , vol. 2, no. 023095, 2020.
F. Caravelli, Yan, B., García-Pintos, L. Pedro, and Hamma, A., Energy storage and coherence in closed and open quantum batteries, Quantum, vol. 5, p. 505, 2021.
D. Carney, Müller, H., and Taylor, J. M., Using an Atom Interferometer to Infer Gravitational Entanglement Generation, PRX Quantum, vol. 2, no. 030330, 2021.
D. Carney, Müller, H., and Taylor, J. M., Comment on "Using an atom interferometer to infer gravitational entanglement generation'', 2021.
D. Carney and Taylor, J. M., Strongly incoherent gravity, 2023.
D. Carney, Hook, A., Liu, Z., Taylor, J. M., and Zhao, Y., Ultralight dark matter detection with mechanical quantum sensors, New Journal of Physics, vol. 23, no. 2, p. 023041, 2021.
D. Carney, Krnjaic, G., Moore, D. C., Regal, C. A., Afek, G., Bhave, S., Brubaker, B., Corbitt, T., Cripe, J., Crisosto, N., .Geraci, A., Ghosh, S., Harris, J. G. E., Hook, A., Kolb, E. W., Kunjummen, J., Lang, R. F., Li, T., Lin, T., Liu, Z., Lykken, J., Magrini, L., Manley, J., Matsumoto, N., Monte, A., Monteiro, F., Purdy, T., Riedel, C. J., Singh, R., Singh, S., Sinha, K., Taylor, J. M., Qin, J., Wilson, D. J., and Zhao, Y., Mechanical Quantum Sensing in the Search for Dark Matter, 2020.
D. Carney, Chaurette, L., Neuenfeld, D., and Semenoff, G., On the need for soft dressing, High Energ. Phys. , vol. 121, 2018.
D. Carney, Stamp, P. C. E., and Taylor, J. M., Tabletop experiments for quantum gravity: a user's manual, 2018.
D. Carney, Häffner, H., Moore, D. C., and Taylor, J. M., Trapped electrons and ions as particle detectors, Phys. Rev. Lett., vol. 127, no. 061804 , 2021.
D. Carney, Müller, H., and Taylor, J. M., Testing quantum gravity with interactive information sensing, 2021.
D. Carney, Chen, Y., Geraci, A., Müller, H., Panda, C. D., Stamp, P. C. E., and Taylor, J. M., Snowmass 2021 White Paper: Tabletop experiments for infrared quantum gravity, 2022.
D. Carney, Ghosh, S., Krnjaic, G., and Taylor, J. M., Proposal for gravitational direct detection of dark matter, Physical Review D, vol. 102, 2021.
D. Carney, Stamp, P. C. E., and Taylor, J. M., Tabletop experiments for quantum gravity: a user's manual, 2018.
D. Carney, Ghosh, S., Krnjaic, G., and Taylor, J. M., Gravitational Direct Detection of Dark Matter, Phys. Rev. D, vol. 102, no. 072003, 2020.
M. C. Caro, Huang, H. - Y., Cerezo, M., Sharma, K., Sornborger, A., Cincio, L., and Coles, P. J., Generalization in quantum machine learning from few training data, 2021.
J. Carolan and Poremba, A., Quantum One-Wayness of the Single-Round Sponge with Invertible Permutations, 2024.
A. L. Carter, O’Reilly, J., Toh, G., Saha, S., Shalaev, M., Goetting, I., and Monroe, C., Ion trap with in-vacuum high numerical aperture imaging for a dual-species modular quantum computer, Review of Scientific Instruments, vol. 95, 2024.
S. Chakrabarti, Huang, Y., Li, T., Feizi, S., and Wu, X., Quantum Wasserstein Generative Adversarial Networks, Advances in Neural Information Processing Systems (NIPS), vol. 32, 2019.