bloomxx

0.1.2 • Public • Published

Yet another Bloom filter implementation for node.js. Everybody has to write one, as you know. Backed by Xxhash via node-xxhash. Xxhash is a fast general-purpose hash, which is all a bloom filter needs. Three variations are provided: a straight Bloom filter, a counting filter (from which items can be removed), and a straight Bloom filter backed by redis. The first two have synchronous APIs. The redis one perforce requires callbacks.

To install: npm install bloomxx

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Usage

BloomFilter

To create a filter, pass an options hash to the constructor:

var options =
{
    bits: 1024,
    hashes: 7,
    seeds: [1, 2, 3, 4, 5, 6, 7]
};
filter = new BloomFilter(options);

You can pass in seeds for the hash functions if you like, or they'll be randomly generated. Seeds must be integers.

You may also pass in a buffer as generated by filter.toBuffer().

createOptimal()

To create a filter optimized for the number of items you'll be storing and a desired error rate:

filter = BloomFilter.createOptimal(estimatedItemCount, errorRate);

The error rate parameter is optional. It defaults to 0.005, or a 0.5% rate.

add()

filter.add('cat');

Adds the given item to the filter. Can also accept buffers and arrays containing strings or buffers:

filter.add(['cat', 'dog', 'coati', 'red panda']);

has()

To test for membership:

filter.has('dog');

clear()

To clear the filter:

filter.clear();

toBuffer()

Returns a buffer with seeds and filter data.

fromBuffer()

Reconstitutes a filter from a freeze-dried buffer.

CountingFilter

Uses about 8 times as much space as the regular filter. Basic usage is exactly the same as the plain Bloom filter:

filter = new CountingFilter({ hashes: 8, bits: 1024 });`
filter2 = CountingFilter.createOptimal(estimatedItemCount, optionalErrorRate);

Add a list, test for membership, then remove:

filter.add(['cat', 'dog', 'coati', 'red panda']);
filter.has('cat'); // returns true
filter.remove('cat');
filter.has('cat'); // returns false most of the time

The counting filter tracks its overflow count in filter.overflow. Overflow will be non-zero if any bit has been set more than 255 times. Once the filter has overflowed, removing items is no longer reliable.

Check for overflow:

filter.hasOverflowed(); // returns boolean
filter.overflow; // integer count of number of times overflow occurred

RedisFilter

This is a plain vanilla bloom filter backed by redis. Its api is asychronous.

RedisFilter.createOrRead({
        key: 'cats', // the key used to store data in redis; will also set 'cats:meta'
        bits: 1024,  // filter size in bits
        hashes: 8,   // number of hash functions
        redis: redis.createClient(port, host)  // redis client to use
    }, function(err, filter)
    {
        filter.add(['cat', 'jaguar', 'lion', 'tiger', 'leopard'], function(err)
        {
            filter.has('caracal', function(err, result)
            {
                assert(result === false);
            });
        });
    });

The options hash can also specify host and port, which will be used to create a redis client. createOrRead() will attempt to find a filter saved at the given key and create one if it isn't found.

createOptimal(itemCount, errorRate, options)

Returns a filter sized for the given item count and desired error rate, with other options as specified in the options hash.

clear(function(err) {})

Clear all bits.

del(function(err) {})

Delete the filter from redis.

Licence

MIT.

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Install

npm i bloomxx

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Version

0.1.2

License

MIT

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