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Published August 2020 | Submitted + Published
Journal Article Open

Python's Lunch: geometric obstructions to decoding Hawking radiation

Abstract

According to Harlow and Hayden [arXiv:1301.4504] the task of distilling information out of Hawking radiation appears to be computationally hard despite the fact that the quantum state of the black hole and its radiation is relatively un-complex. We trace this computational difficulty to a geometric obstruction in the Einstein-Rosen bridge connecting the black hole and its radiation. Inspired by tensor network models, we conjecture a precise formula relating the computational hardness of distilling information to geometric properties of the wormhole — specifically to the exponential of the difference in generalized entropies between the two non-minimal quantum extremal surfaces that constitute the obstruction. Due to its shape, we call this obstruction the 'Python's Lunch', in analogy to the reptile's postprandial bulge.

Additional Information

© 2020 The Authors. This article is distributed under the terms of the Creative Commons Attribution License (CC-BY 4.0), which permits any use, distribution and reproduction in any medium, provided the original author(s) and source are credited. Article funded by SCOAP3. Received 27 February 2020; Accepted 21 July 2020; Published 25 August 2020. We thank Andras Gilyen, Patrick Hayden, John Preskill, Stephen Shenker for fruitful discussions. H.G. is supported by the Simons Foundation through the It from Qubit collaboration. G.P. is supported in part by AFOSR award FA9550-16-1-0082 and DOE award DE-SC0019380. L.S. is supported by NSF Award Number 1316699.

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Published - Brown2020_Article_ThePythonSLunchGeometricObstru.pdf

Submitted - 1912.00228.pdf

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August 19, 2023
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