Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I've found the standard hashing function on VS2005 is painfully slow when trying to achieve high performance look ups. What are some good examples of fast and efficient hashing algorithms that should void most collisions?

share|improve this question
The following has a good set of general purpose hash functions, you should try them against your data set, some may outperform others based on collisions: partow.net/programming/hashfunctions/index.html –  Matthieu N. Oct 24 '09 at 9:00

10 Answers 10

I worked with Paul Larson of Microsoft Research on some hashtable implementations. He investigated a number of string hashing functions on a variety of datasets and found that a simple multiply by 101 and add loop worked surprisingly well.

unsigned int
    const char* s,
    unsigned int seed = 0)
    unsigned int hash = seed;
    while (*s)
        hash = hash * 101  +  *s++;
    return hash;
share|improve this answer
Hey George. I tried the code in the hash-benchmark I've postet in my answer. Nice find. It does not excel in performance or collisions, but it always gives consistent results. Seems like it's a good and cheap candidate for general purpose string-hashing. –  Nils Pipenbrinck Sep 23 '08 at 1:10
But this works only for small length strings. For large cases, it overflows majority of the time. –  Soumajyoti Jan 3 '13 at 14:13
Soumajyoti, the overflow doesn't matter. Most hash functions overflow. The point is that you get a decent mix of bits in the low-order 32-bits. –  George V. Reilly Jan 4 '13 at 23:12
That resembles the Java implementation, but it uses 31 instead of 101. –  Jorge Galvão Mar 12 '14 at 10:25

From some old code of mine:

/* magic numbers from http://www.isthe.com/chongo/tech/comp/fnv/ */
static const size_t InitialFNV = 2166136261U;
static const size_t FNVMultiple = 16777619;

/* Fowler / Noll / Vo (FNV) Hash */
size_t myhash(const string &s)
    size_t hash = InitialFNV;
    for(size_t i = 0; i < s.length(); i++)
        hash = hash ^ (s[i]);       /* xor  the low 8 bits */
        hash = hash * FNVMultiple;  /* multiply by the magic number */
    return hash;

Its fast. Really freaking fast.

share|improve this answer
it may be fast, but its probably one of the WORST hash functions ever invented. –  Matthieu N. Mar 1 '10 at 23:08
@Matthieu: Why? Many duplicates? Do you have any references where I can read more about it? –  Albert Oct 17 '12 at 15:12
@Albert: ^ is transitive, which is bad. FNVMultiple is not prime, which is bad. InitialFNV isn't prime either, which may or may not be bad, I'm uncertain. –  Mooing Duck Jun 8 at 15:35

Boost has an boost::hash library which can provides some basic hash functions for most common types.

share|improve this answer

That always depends on your data-set.

I for one had surprisingly good results by using the CRC32 of the string. Works very good with a wide range of different input sets.

Lots of good CRC32 implementations are easy to find on the net.

Edit: Almost forgot: This page has a nice hash-function shootout with performance numbers and test-data:

http://smallcode.weblogs.us/ <-- further down the page.

share|improve this answer

I've use the Jenkins hash to write a Bloom filter library, it has great performance.

Details and code are available here: http://burtleburtle.net/bob/c/lookup3.c

This is what Perl uses for its hashing operation, fwiw.

share|improve this answer

If you are hashing a fixed set of words, the best hash function is often a perfect hash function. However, they generally require that the set of words you are trying to hash is known at compile time. Detection of keywords in a lexer (and translation of keywords to tokens) is a common usage of perfect hash functions generated with tools such as gperf. A perfect hash also lets you replace hash_map with a simple array or vector.

If you're not hashing a fixed set of words, then obviously this doesn't apply.

share|improve this answer

One classic suggestion for a string hash is to step through the letters one by one adding their ascii/unicode values to an accumulator, each time multiplying the accumulator by a prime number. (allowing overflow on the hash value)

  template <> struct myhash{};

  template <> struct myhash<string>
    size_t operator()(string &to_hash) const
      const char * in = to_hash.c_str();
      size_t out=0;
      while(NULL != *in)
        out*= 53; //just a prime number
        out+= *in;
      return out;

  hash_map<string, int, myhash<string> > my_hash_map;

It's hard to get faster than that without throwing out data. If you know your strings can be differentiated by only a few characters and not their whole content, you can do faster.

You might try caching the hash value better by creating a new subclass of basic_string that remembers its hash value, if the value gets calculated too often. hash_map should be doing that internally, though.

share|improve this answer
Yoda condition alert! Apart from that this is similar to the Larson algorithm (I noticed this was posted earlier!). –  Helge Klein Aug 17 '14 at 11:51

Python 3.4 includes a new hash algorithm based on SipHash. PEP 456 is very informative.

share|improve this answer
I run some benchmarks and SipHash looks very good –  David Soroko Apr 24 at 20:53

If your strings are on average longer than a single cache line, but their length+prefix are reasonably unique, consider hasing just the length+first 8/16 characters. (The length is contained in the std::string object itself and therefore cheap to read)

share|improve this answer

I did a little searching, and funny thing, Paul Larson's little algorithm showed up here http://www.strchr.com/hash_functions as having the least collisions of any tested in a number of conditions, and it's very fast for one that it's unrolled or table driven.

Larson's being the simple multiply by 101 and add loop above.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.