Skip to content

alexbrasetvik/python-bloomfilter

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

25 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

pybloom is a module that includes a Bloom Filter data structure along with
an implmentation of Scalable Bloom Filters as discussed in:

P. Almeida, C.Baquero, N. Preguiça, D. Hutchison, Scalable Bloom Filters,
(GLOBECOM 2007), IEEE, 2007.

Bloom filters are great if you understand what amount of bits you need to set
aside early to store your entire set. Scalable Bloom Filters allow your bloom
filter bits to grow as a function of false positive probability and size.

A filter is "full" when at capacity: M * ((ln 2 ^ 2) / abs(ln p)), where M
is the number of bits and p is the false positive probability. When capacity
is reached a new filter is then created exponentially larger than the last
with a tighter probability of false positives and a larger number of hash
functions.

>>> from pybloom import BloomFilter
>>> f = BloomFilter(capacity=1000, error_rate=0.001)
>>> [f.add(x) for x in range(10)]
[False, False, False, False, False, False, False, False, False, False]
>>> all([(x in f) for x in range(10)])
True
>>> 10 in f
False
>>> 5 in f
True
>>> f = BloomFilter(capacity=1000, error_rate=0.001)
>>> for i in xrange(0, f.capacity):
...     _ = f.add(i)
>>> abs((len(f) / float(f.capacity)) - 1.0) <= f.error_rate
True

>>> from pybloom import ScalableBloomFilter
>>> sbf = ScalableBloomFilter(mode=ScalableBloomFilter.SMALL_SET_GROWTH)
>>> count = 10000
>>> for i in xrange(0, count):
...     _ = sbf.add(i)
...
>>> abs((len(sbf) / float(count)) - 1.0) <= sbf.error_rate
True

# len(sbf) may not equal the entire input length. 0.006% error is well
# below the default 0.1% error threshold

About

Scalable Bloom Filter implemented in Python

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%