Quantum Cryptography - Stanford Computer Science
3. Quantum Cryptography in Theory Rather than depending on the complexity of factoring large numbers, quantum cryptography is based on the fundamental and unchanging principles of quantum mechanics. In fact, quantum cryptography …
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