A kilobit hidden SNFS discrete logarithm computation
October 10, 2016 Β· Declared Dead Β· π International Conference on the Theory and Application of Cryptographic Techniques
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Authors
Joshua Fried, Pierrick Gaudry, Nadia Heninger, Emmanuel ThomΓ©
arXiv ID
1610.02874
Category
cs.CR: Cryptography & Security
Citations
55
Venue
International Conference on the Theory and Application of Cryptographic Techniques
Last Checked
3 months ago
Abstract
We perform a special number field sieve discrete logarithm computation in a 1024-bit prime field. To our knowledge, this is the first kilobit-sized discrete logarithm computation ever reported for prime fields. This computation took a little over two months of calendar time on an academic cluster using the open-source CADO-NFS software. Our chosen prime $p$ looks random, and $p--1$ has a 160-bit prime factor, in line with recommended parameters for the Digital Signature Algorithm. However, our p has been trapdoored in such a way that the special number field sieve can be used to compute discrete logarithms in $\mathbb{F}\_p^*$ , yet detecting that p has this trapdoor seems out of reach. Twenty-five years ago, there was considerable controversy around the possibility of back-doored parameters for DSA. Our computations show that trapdoored primes are entirely feasible with current computing technology. We also describe special number field sieve discrete log computations carried out for multiple weak primes found in use in the wild. As can be expected from a trapdoor mechanism which we say is hard to detect, our research did not reveal any trapdoored prime in wide use. The only way for a user to defend against a hypothetical trapdoor of this kind is to require verifiably random primes.
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