Python library of efficient and numerically-precise randomness extractors
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Updated
Jul 28, 2025 - Python
Python library of efficient and numerically-precise randomness extractors
Quantum keys can fail quietly—loss and noise can leave you with bits, but no secrecy. We model the cliff to expose silent breakage before it becomes a system risk.
Python implementation of LDPC-based information reconciliation and Toeplitz-hashing privacy amplification for Quantum Key Distribution (QKD).
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