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CSC 482/582: Computer Security

CSC 482/582: Computer Security. Applying Cryptography. Topics. Key Generation Randomness and Information Theory PRNGs Entropy Gathering Key Storage Cryptographic APIs. Key Generation. Goal : generate difficult to guess keys Given set of K potential keys, choose one randomly.

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CSC 482/582: Computer Security

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  1. CSC 482/582: Computer Security Applying Cryptography CSC 482/582: Computer Security

  2. Topics • Key Generation • Randomness and Information Theory • PRNGs • Entropy Gathering • Key Storage • Cryptographic APIs CSC 482/582: Computer Security

  3. Key Generation Goal: generate difficult to guess keys Given set of K potential keys, choose one randomly. • Equivalent to selecting a random number between 0 and K–1 inclusive. Difficulty: generating random numbers • Computer generated numbers are pseudo-random, that is, generated by an algorithm. • “Anyone who considers arithmetical methods of producing random digits is, of course, in a state of sin.” – John vonNeumann CSC 482/582: Computer Security

  4. How can be measure randomness? For a fair coin flip, our uncertainty is 2 results. It could be either heads or tails. • The uncertainty of 2 flips would be 2*2 = 4. Logarithmic measure of uncertainty. • We feel uncertainties should add, not multiply. • Measures uncertainties in bits, instead of raw #s. • Uncertainty is log2(M), where M is # results. U = log2 M CSC 482/582: Computer Security

  5. Information The amount of information in a message is the minimal number of bits needed to encode all possible meanings. Example: day of the week (7 possibilities) • Encode in 3 bits • 000 Sunday to 110 Saturday, with 111 unused • ASCII strings “Sunday” through “Saturday” use more bits, but don’t encode more information. CSC 482/582: Computer Security

  6. Information The amount of information in a message is the minimal number of bits needed to encode all possible meanings. Example: day of the week • Encode in <3 bits • 000 Sunday to 110 Saturday, with 111 unused • ASCII strings “Sunday” through “Saturday” use more bits, but don’t encode more information. In general, if N possible items, log2 N bits needed. I = log2 N which is the same formula as for uncertainty, so U = I. CSC 482/582: Computer Security

  7. Information and Probability If the probability of each of the N messages being sent is equal, then p = 1/N. I = log2 1/p What does 1/p really mean? Let's see: Message: "Coin comes up heads or tails"  Probability p=1  Information I = log21/1 = log21 = 0 Message: "Coin comes up heads"  Probability p=0.5  Information I = log21/0.5 = log22 = 1 CSC 482/582: Computer Security

  8. What if probabilities aren’t equal? Given a message of N symbols, such that each symbol occurs Ni times i=1..MNi = N Our average uncertainty for the string is i=1..MNi (-log2(Pi))/i=1..MNi which can be rewritten as -i=1..MNi/N log2(Pi) CSC 482/582: Computer Security

  9. Information I = -i=1..MPi log2(Pi) Reduces to original formula if all symbols equiprobable, i.e., Pi = 1/M: I = -i=1..M1/M log2(1/M) = 1/M log2(M) i=1..M1 = log2(M) CSC 482/582: Computer Security

  10. Information Content of English For random English letters, log2(26) @ 4.7 bits/letter For large samples of English text, 1.3 bits/letter For bzipped English text, 7.95+ bits/letter CSC 482/582: Computer Security

  11. Testing for Randomness A byte stream is random if • Iis approximately 8 bits/byte • Compression is a good randomizing function. • Cryptography is a good randomizing function. Statistical tests for randomness • Zerosoccur about as often as ones. • Pairs of zerosoccur about half as often as single zeros and as often as pairs of ones. CSC 482/582: Computer Security

  12. PRNGs • Determinism and Randomness • Seeding the PRNG • Linear Congruential • CSPNRGs • Blum-Blum-Shub • Tiny • Attacks on PNRGs CSC 482/582: Computer Security

  13. Determinism Computers are deterministic • Can’t produce true random numbers. Pseudo-random numbers appear to be random to certain statistical tests. • Tests can be derived from compression. • If you can compress sequence, it’s not random. Software generated pseudo-random sequences are periodic and predictable. CSC 482/582: Computer Security

  14. Seeds Input used to generate initial PR number. Should be computationally infeasible to predict • Generate seed from random, not PR, data. • Large seed: 32 bits too small; only 232 combinations. Sequence is still periodic, but starts from different point for each different seed. • Identical sequences produced for identical seeds. • Period needs to be large for security. CSC 482/582: Computer Security

  15. Linear Congruential Generator nk = (ank–1 + b) mod m m Modulus (a large prime integer), maximum period a Multiplier (integer from 2..m-1) bIncrement n0 Sequence initializer (seed) CSC 482/582: Computer Security

  16. LCG Example in Python #!/usr/bin/env python import sys def lcg(x): return a*x % 13 i = 0; li=[] a, x = map(int, sys.argv[1:3]) while(i < 10): x = lcg(x) li.append(str(x)) i += 1 print ", ".join(li) Modulus Multiplier Seed >./prng.py 5 2 11, 4, 8, 2, 11, 4, 8, 2, 11, 4 >./prng.py 6 2 0, 1, 7, 4, 12, 8, 10, 9, 3, 6 CSC 482/582: Computer Security

  17. Linear Congruential Generator Choice of a critical • Many choices of a do not produce a full period. • Sequence is permutation of integers 1..m-1 • Ex: 2, 6, 7, 11 for m=13 For production LCGs, m=232-1 common • a = 16807 is well studied full period multiplier LCGs are statistically random • but predictable, giving away LCG state with each number. LCGs are not cryptographically useful. CSC 482/582: Computer Security

  18. Secure PRNGs Cryptographically Secure PRNGs: • Statistically appear random. • Difficult to predict next member of sequence from previous members. • Difficult to extract internal state of PRNG from observing output. Similar to stream ciphers. May be re-seeded at runtime, unlike PRNGs. CSC 482/582: Computer Security

  19. Blum Blum Shub xn+1 = xn2 mod M Blum Number M • Product of two large primes, p and q • p mod 4 = 3, q mod 4 = 3 Seed • Choose random integer x, relatively prime to M. • x0 = x2 mod M CSC 482/582: Computer Security

  20. Blum Blum Shub Random Output: • LSB of xn+1 • Can safely use log2M bits. Provably secure • Distinguishing output bits from random bits is as difficult as factoring M for large M. Slow • Requires arbitrary precision software math libraries. CSC 482/582: Computer Security

  21. Strong Mixing Functions Strong mixing function: function of 2 or more inputs with each bit of output depending on some nonlinear function of all input bits. • Examples: AES, DES, SHA-1, SHA-2 • Use on UNIX-based systems: (date; psgaux) | md5 where “psgaux” lists all information about all processes on system. CSC 482/582: Computer Security

  22. Attacks on PNRGs Direct Cryptanalytic • Distinguish between PRNG output and random output with better than 50% accuracy. Input-Based • Use knowledge of PRNG input to predict output. • Insert input into PRNG to control output. State Compromise Extension • Extend previously successful attack that has recovered internal state to recover either or both. • past unknown PRNG outputs • future PRNG outputs after additional inputs given to PRNG CSC 482/582: Computer Security

  23. ASF On-line Gambling Re-seeded PRNG before each shuffle • always start with ordered deck. Shuffling • Fair: 52! @ 2226 combinations • 32-bit seed: 232 combinations • ms seed: 86,400,000 combinations • synchronize time: 200,000 combinations Predict deck based on 5 known cards. CSC 482/582: Computer Security

  24. ASF PRNG Flaws • PRNG algorithm used small seed (32 bits.) • Non-cryptographic PRNG used. • Seed generated by poor source of randomness. CSC 482/582: Computer Security

  25. Entropy Collection • Hardware Solutions • Software Solutions • Poor Entropy Collection • Entropy Estimation CSC 482/582: Computer Security

  26. Hardware Sources Radioactive Decay • Hotbits: 256 bits/s • http://www.fourmilab.ch/hotbits/ Thermal or Electrical Noise • ComscireQNG Model J1000KU, 1 Mbit/s • Via Padlock RNG on Via x86 CPUs 800-1600kbits/s LavaRnd • SGI used LavaLite; LavaRnd uses lenscappeddigicam • http://www.lavarnd.org/ • up to 200 kbits/s CSC 482/582: Computer Security

  27. Software Sources Less Secure, More Convenient • Software systems can be sufficiently complex to be almost impossible to predict. User Input: Push, don’t Pull • Record time stamp when keystroke or mouse event occurs. • Don’t poll most recent user input every .1s • Far fewer possible timestamps. CSC 482/582: Computer Security

  28. Software Sources: /dev/random Idea: use multiple random software sources. • Store randomness in pool for user requests. • Use hash functions (i.e., strong mixing functions) to distill data from multiple sources. /dev/random can use random sources such as • CPU load • disk seeks • kernel interrupts • keystrokes • network packet arrival times • /dev/audio sans microphone CSC 482/582: Computer Security

  29. Software Sources: /dev/random /dev/random • each bit is truly random. • blocks unless enough random bits are available. /dev/urandom • supplies requested number of bits immediately. • reuses current state of pool—lower quality randomness. CSC 482/582: Computer Security

  30. Poor Entropy: Netscape 1.1 SSL encryption • generates random 40- or 128-bit session key • Netscape 1.1 seeded PRNG with • time of day • PID and PPID • All visible to attacker on same machine. Remote attack broke keys in 30 seconds • guessed limited randomness in PID/PPID. • packet sniffing can determine time of day. CSC 482/582: Computer Security

  31. Random Number APIs Windows • rand()– insecure PRNG, uses LCG • CryptGenRandom()– CSRNG • CryptGenKey() – to securely generate keys Java • java.util.Random – insecure PRNG • java.security.SecureRandom– CSRNG • Relies on OS, so SecureRandom can fall back to insecure Random if OS does not provide /dev/random or similar CSC 482/582: Computer Security

  32. Key Storage Source Code • Can use strings to extract from binary. File on Disk • Attacker can search disk for files with high entropy, which are likely to contain keys. • Encryption of file adds another layer of difficulty, but there must be a key someplace. Registry • Attacker can access with regedit. External Device, e.g. smartcards, smartphones, etc. • Attacker can obtain PINs or use power analysis attackers to extract keys from device. CSC 482/582: Computer Security

  33. Key Points • Keys generated must be truly random. • Test for randomness by measuring information. • I = -i=1..MPi log2(Pi) • Secure PRNGs must have the following qualities: • Statistically appear random. • Difficult to predict next member of sequence from previous members. • Difficult to extract internal state of PRNG from observing output. • Algorithmic PRNG techniques: • Linear congruential generators: non-crypto. • Blum BlumShub cryptographic PRNG. • Computer RNGs: • Hardware RNGs: thermal noise, decays. • Software RNGs: disk seeks, interrupts. CSC 482/582: Computer Security

  34. References • Matt Bishop, Introduction to Computer Security, Addison-Wesley, 2005. • D. Eastlake, “Randomness Recommendations for Security,” RFC 1750, http://www.ietf.org/rfc/rfc1750.txt, 1994. • Ian Goldberg and David Wagner,“Randomness and the Netscape Browser,” Doctor Dobbs’ Journal, 1996. http://www.cs.berkeley.edu/~daw/papers/ddj-netscape.html • Michael Howard and David LeBlanc, Writing Secure Code, 2nd edition, Microsoft Press, 2003. • Alfred J. Menezes, Paul C. van Oorschot and Scott A. Vanstone, Handbook of Applied Cryptography, http://www.cacr.math.uwaterloo.ca/hac/, CRC Press, 1996. • S. K. Park, K. W. Miller, “Random number generators: good ones are hard to find,”  Communications of the ACM,  Volume 31 Issue 10 , October 1988. • Tom Schneider, “Information Theory Primer,” http://www.lecb.ncifcrf.gov/~toms/paper/primer/, 2000. • Bruce Schneier, Applied Cryptography, 2nd edition, Wiley, 1996. • John Viega and Gary McGraw, Building Secure Software, Addison-Wesley, 2002. • Joss Visser, “Kernel based random number generation in HP-UX 11.00,” http://www.josvisser.nl/hpux11-random/hpux11-random.html, 2003. • David Wheeler, Secure Programming for UNIX and Linux HOWTO, http://www.dwheeler.com/secure-programs/Secure-Programs-HOWTO/index.html, 2003. CSC 482/582: Computer Security

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