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uhashring 0.7

Consistent hashing implementation compatible with the ketama hash ring.

uhashring implements consistent hashing in pure python and is fully compatible with ketama.

Consistent hashing is mostly used on distributed systems/caches/databases as this avoid the total reshuffling of your key-node mappings when adding or removing a node in your ring (called continuum on libketama). More information and details about this can be found in the literature section.

This full featured implementation offers:

  • a lot of convenient methods to use your consistent hash ring in real world applications.
  • simple integration with other libs such as memcache through monkey patching.
  • all the missing functions in the libketama C python binding (which is not even available on pypi).
  • possibility to use your own weight and hash functions if you don’t care about the ketama compatibility.
  • instance-oriented usage so you can use your consistent hash ring object directly in your code (see advanced usage).
  • native pypy support.
  • tests of implementation, key distribution and ketama compatibility.

uhashring default is to be compatible with the ketama implementation so you get 40 vnodes and 4 replicas = 160 points per node in the ring. Per node weight is also supported and will affect the nodes distribution on the ring.


Basic usage

uhashring is very simple and efficient to use:

from uhashring import HashRing

# create a consistent hash ring of 3 nodes of weight 1
hr = HashRing(nodes=['node1', 'node2', 'node3'])

# get the node name for the 'coconut' key
target_node = hr.get_node('coconut')

Advanced usage

from uhashring import HashRing

# Mapping of dict configs
# Ommited config keys will get a default value, so
# you only need to worry about the ones you need
nodes = {
    'node1': {
            'hostname': 'node1.fqdn',
            'instance': redis.StrictRedis(host='node1.fqdn'),
            'port': 11211,
            'vnodes': 40,
            'weight': 1
    'node2': {
            'hostname': 'node2.fqdn',
            'instance': redis.StrictRedis(host='node2.fqdn'),
            'port': 11211,
            'vnodes': 40
    'node3': {
            'hostname': 'node3.fqdn',
            'instance': redis.StrictRedis(host='node3.fqdn'),
            'port': 11211

# create a new consistent hash ring with the nodes
hr = HashRing(nodes)

# set the 'coconut' key/value on the right host's redis instance
hr['coconut'].set('coconut', 'my_value')

# get the 'coconut' key from the right host's redis instance

# delete the 'coconut' key on the right host's redis instance

# get the node config for the 'coconut' key
conf = hr.get('coconut')

Default node configuration

uhashring offers advanced node configuration for real applications, this is the default you get for every added node:

    'hostname': nodename,
    'instance': None,
    'port': None,
    'vnodes': 40,
    'weight': 1

Adding / removing nodes

You can add and remove nodes from your consistent hash ring at any time.

from uhashring import HashRing

# this is a 3 nodes consistent hash ring
hr = HashRing(nodes=['node1', 'node2', 'node3'])

# this becomes a 2 nodes consistent hash ring

# add back node2

# add node4 with a weight of 10
hr.add_node('node4', {'weight': 10})

Customizable node weight calculation

from uhashring import HashRing

def weight_fn(**conf):
    """Returns the last digit of the node name as its weight.

    :param conf: node configuration in the ring, example:
         'hostname': 'node3',
         'instance': None,
         'nodename': 'node3',
         'port': None,
         'vnodes': 40,
         'weight': 1
    return int(conf['nodename'][-1])

# this is a 3 nodes consistent hash ring with user defined weight function
hr = HashRing(nodes=['node1', 'node2', 'node3'], weight_fn=weight_fn)

# distribution with custom weight assignment

# >>> Counter({'node3': 240, 'node2': 160, 'node1': 80})

Customizable hash function

from uhashring import HashRing

# import your own hash function (must be a callable)
# in this example, MurmurHash v3
from mmh3 import hash as m3h

# this is a 3 nodes consistent hash ring with user defined hash function
hr = HashRing(nodes=['node1', 'node2', 'node3'], hash_fn=m3h)

# now all lookup operations will use the m3h hash function
print(hr.get_node('my key hashed by your function'))

HashRing options

  • nodes: nodes used to create the continuum (see doc for format).
  • replicas: number of replicas per node (forced to 4 in compatibility mode).
  • vnodes: default number of vnodes per node.
  • compat: use a ketama compatible hash calculation (default True).
  • weight_fn: user provided function to calculate the node’s weight, gets the node conf dict as kwargs.

Available methods

  • add_node(nodename, conf): add (or overwrite) the node in the ring with the given config.
  • get(key): returns the node object dict matching the hashed key.
  • get_key(key): alias of ketama hashi method, returns the hash of the given key.
  • get_instances(): returns a list of the instances of all the configured nodes.
  • get_node(key): returns the node name of the node matching the hashed key.
  • get_node_hostname(key): returns the hostname of the node matching the hashed key.
  • get_node_instance(key): returns the instance of the node matching the hashed key.
  • get_node_port(key): returns the port of the node matching the hashed key.
  • get_node_pos(key): returns the index position of the node matching the hashed key.
  • get_node_weight(key): returns the weight of the node matching the hashed key.
  • get_nodes(): returns a list of the names of all the configured nodes.
  • get_points(): returns a ketama compatible list of (position, nodename) tuples.
  • get_server(key): returns a ketama compatible (position, nodename) tuple.
  • hashi(key): returns the hash of the given key (on compat mode, this is the same as libketama).
  • iterate_nodes(key, distinct): hash_ring compatibility implementation, same as range but returns tuples as a generator.
  • print_continuum(): prints a ketama compatible continuum report.
  • range(key, size, unique): returns a (unique) list of max (size) nodes’ configuration available in the consistent hash ring.
  • regenerate: regenerate the ring from the current nodes configuration, useful only when using weight_fn.
  • remove_node(nodename): remove the given node from the ring

Available properties

  • conf: dict of all the nodes and their configuration.
  • continuum: same as ring.
  • distribution: counter of the nodes distribution in the consistent hash ring.
  • nodes: same as conf.
  • ring: hash key/node mapping of the consistent hash ring.
  • size: size of the consistent hash ring.

Integration (monkey patching)

You can benefit from a consistent hash ring using uhashring monkey patching on the following libraries:


import memcache

from uhashring import monkey

mc = memcache.Client(['node1:11211', 'node2:11211'])



Using pip:

$ pip install uhashring

Gentoo Linux

Using emerge:

$ sudo emerge -a uhashring


Usage of the ketama compatible hash (default) has some performance impacts. Contributions are welcome as to ways of improving this !

There is a big performance gap in the hash calculation between the ketama C binding and its pure python counterpart.

Python 3 is doing way better than python 2 thanks to its native bytes/int representation.

Quick benchmark, for 1 million generated ketama compatible keys:
  • python_ketama C binding: 0.8427069187164307 s
  • python 2: 5.462762832641602 s
  • python 3: 3.570068597793579 s
  • pypy: 1.6146340370178223 s

When using python 2 and ketama compatibility is not important, you can get a better hashing speed using the other provided hashing.

hr = HashRing(nodes=[], compat=False)

Quick benchmark, for 1 million generated hash keys:
  • python 2: 3.7595579624176025 s
  • python 3: 3.268343687057495 s
  • pypy: 1.9193649291992188 s



File Type Py Version Uploaded on Size
uhashring-0.7.tar.gz (md5) Source 2017-07-17 10KB