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Role of quantum computing in 6G.

Role of quantum computing in 6G.

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Although the fifth generation (5G) wireless networks are yet to be fully investigated, the visionaries of the 6th generation (6G) echo systems have already come into the discussion. Therefore, in order to consolidate and solidify the security and privacy in 6G networks, we survey how security may impact the envisioned 6G wireless systems, possible...

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... is applicable in the conventional key distribution schemes by providing quantum mechanics to establish a secret key between two legitimate parties. Figure 7 demonstrates the envisioned roles of quantum computing and quantum security in the 6G era. 1) Threat Landscape: Within the threat landscape in quantum-based attacks, the adversaries are also considered to have quantum powers. Although quantum computers are yet to be evolved in the long run, the threat it may generate on IoT devices needs to be carefully considered already. ...
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... is applicable in the conventional key distribution schemes by providing quantum mechanics to establish a secret key between two legitimate parties. Figure 7 demonstrates the envisioned roles of quantum computing and quantum security in the 6G era. ...

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