Published: January 18, 2015
Author(s)
Meltem Sönmez Turan, John Kelsey, Kerry McKay
Conference
Name: Shmoocon 2015
Dates: January 16-18, 2015
Location: Washington, DC, United States
Announcement
Cryptographic primitives need random numbers to protect your data. Random numbers are used for generating secret keys, nonces, random paddings, initialization vectors, salts, etc. Deterministic pseudorandom number generators are useful, but they still need truly random seeds generated by entropy sources in order to produce random numbers. Researchers have shown examples of deployed systems that did not have enough randomness in their entropy sources, and as a result, crypto keys were compromised. So how do you know how much entropy is in your entropy source? Estimating entropy is a difficult (if not impossible) problem, and we've been working to create usable guidance that will give conservative estimates on the amount of entropy in an entropy source. We want to share some of the challenges and proposed methods. We will also talk about some new directions that we're investigating, and present results of our estimation methods on simulated entropy sources.
Cryptographic primitives need random numbers to protect your data. Random numbers are used for generating secret keys, nonces, random paddings, initialization vectors, salts, etc. Deterministic pseudorandom number generators are useful, but they still need truly random seeds generated by entropy...
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Cryptographic primitives need random numbers to protect your data. Random numbers are used for generating secret keys, nonces, random paddings, initialization vectors, salts, etc. Deterministic pseudorandom number generators are useful, but they still need truly random seeds generated by entropy sources in order to produce random numbers. Researchers have shown examples of deployed systems that did not have enough randomness in their entropy sources, and as a result, crypto keys were compromised. So how do you know how much entropy is in your entropy source? Estimating entropy is a difficult (if not impossible) problem, and we've been working to create usable guidance that will give conservative estimates on the amount of entropy in an entropy source. We want to share some of the challenges and proposed methods. We will also talk about some new directions that we're investigating, and present results of our estimation methods on simulated entropy sources.
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Keywords
entropy; random number generation; RNG; prediction
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