npm package discovery and stats viewer.

Discover Tips

  • General search

    [free text search, go nuts!]

  • Package details

    pkg:[package-name]

  • User packages

    @[username]

Sponsor

Optimize Toolset

I’ve always been into building performant and accessible sites, but lately I’ve been taking it extremely seriously. So much so that I’ve been building a tool to help me optimize and monitor the sites that I build to make sure that I’m making an attempt to offer the best experience to those who visit them. If you’re into performant, accessible and SEO friendly sites, you might like it too! You can check it out at Optimize Toolset.

About

Hi, 👋, I’m Ryan Hefner  and I built this site for me, and you! The goal of this site was to provide an easy way for me to check the stats on my npm packages, both for prioritizing issues and updates, and to give me a little kick in the pants to keep up on stuff.

As I was building it, I realized that I was actually using the tool to build the tool, and figured I might as well put this out there and hopefully others will find it to be a fast and useful way to search and browse npm packages as I have.

If you’re interested in other things I’m working on, follow me on Twitter or check out the open source projects I’ve been publishing on GitHub.

I am also working on a Twitter bot for this site to tweet the most popular, newest, random packages from npm. Please follow that account now and it will start sending out packages soon–ish.

Open Software & Tools

This site wouldn’t be possible without the immense generosity and tireless efforts from the people who make contributions to the world and share their work via open source initiatives. Thank you 🙏

© 2024 – Pkg Stats / Ryan Hefner

ibtree

v0.3.3

Published

A performant, in-memory, immutable B+ tree data structure

Downloads

13

Readme

ibtree

A performant, in-memory, immutable B+ tree data structure.

Features

  • Implements extended ES6 Map and Set interfaces (BTMap and BTSet)
  • No 3rd party dependencies
  • Insertion, deletion and bulk-loading
  • Batched mutations
  • Supports any key types with custom comparators and key functions
  • Range search
  • Iteration
  • Similar performance to Immutable.Map using Map operations, considerably faster range search due to the B+ tree data structure

Installation

NPM

npm install ibtree --save

Script tag (only latest version)

Normal

<script src="https://tommikaikkonen.github.io/ibtree/dist/ibtree.js"></script>

Minimized

<script src="https://tommikaikkonen.github.io/ibtree/dist/ibtree.min.js"></script>

Getting Started

Try it out in JSBin.

BTMap

import { BTMap } from 'ibtree';

let map = BTMap.from([
    [1, 'one'],
    [2, 'two'],
    [3, 'three'],
]);

map = map.set(4, 'four');

map.has(1)
// true
map.get(1)
// 'one'

Array.from(map.values())
// ['one', 'two', 'three', 'four']

// Range searches use the values/entries/keys API with
// arguments to specify boundaries.
Array.from(map.values(2, 3));
// ['two', 'three']
Array.from(map.values(3, 2));
// ['three', 'two']

map = map.withMutations(m => {
    m.set(5, 'five').set(6, 'six').set(7, 'seven');
});

Array.from(map.values())
// ['one', 'two', 'three', 'four', 'five', 'six', 'seven']

BTSet

import { BTSet } from 'ibtree';

let set = BTSet.from([1, 2, 3]);

set.has(1)
// true
set.has(0)
// false
set = set.add(0);
set.has(0)
// true

Array.from(set.values())
// [0, 1, 2, 3]

Array.from(map.values(2, 3));
// [2, 3]
 
// Reverse range search when first argument is larger than the second.
Array.from(map.values(2, -10));
// [2, 1, 0]

Benchmark

BTMap is similar in performance to Immutable.Map. The range search is much faster because of the difference in data structures.

The tradeoff between Immutable.Map and BTMap is that BTMap uses more memory to store updated trees.

When the tree is updated, each affected node's keys and children (Arrays of length between 32 and 64) are shallow copied. There's 1-5 affected nodes based on the height of your tree, therefore each update creates (1-5) * 2 new arrays of length between 32 and 64, whereas Immutable.js doesn't copy as much. However, if you don't keep references to many historical versions, they should get garbage collected and shouldn't be a problem.

Summary

  • On additions, ibtree fares better than Immutable.Map on small and large N (10 and 100000), Immutable.Map is faster on mid-size (1000).
  • On deletions, ibtree is ~50% slower than Immutable.Map.
  • On single key search, ibtree is slower on a mid-size N (1000) but faster on a larger N (100000) than Immutable.Map.
  • On range search, ibtree is considerably faster than Immutable.Map.

Detailed Results

These are relative, not absolute benchmarks. The benchmark implementation uses an adapter to interface with both Immutable and ibtree, which introduces a small overhead.

Add N entries to an empty structure
  N=10:
  1. ibtree              :          421 869,00 +/- 2.88% op/s,
  2. Immutable.Map       :          110 444,00 +/- 3.09% op/s, 73.8% slower than ibtree

  N=1000:
  1. ibtree              :            1 156,00 +/- 3.59% op/s,
  2. Immutable.Map       :            1 114,00 +/- 2.79% op/s, 3.6% slower than ibtree

  N=100000:
  1. ibtree              :                7,00 +/- 8.39% op/s,
  2. Immutable.Map       :                4,00 +/- 3.51% op/s, 42.9% slower than ibtree



Add N entries to a non-empty structure (transient)
  N=10:
  1. ibtree              :          466 782,00 +/- 0.76% op/s,
  2. Immutable.Map       :          155 428,00 +/- 1.24% op/s, 66.7% slower than ibtree

  N=1000:
  1. Immutable.Map       :            6 423,00 +/- 0.86% op/s,
  2. ibtree              :            1 578,00 +/- 3.13% op/s, 75.4% slower than Immutable.Map

  N=100000:
  1. ibtree              :               13,00 +/- 1.56% op/s,
  2. Immutable.Map       :               10,00 +/- 7.70% op/s, 23.1% slower than ibtree



Bulkload N entries from empty (transient)
  N=10:
  1. Immutable.Map       :          151 434,00 +/- 0.93% op/s,
  2. ibtree              :          150 663,00 +/- 6.91% op/s, 0.5% slower than Immutable.Map

  N=1000:
  1. Immutable.Map       :            6 208,00 +/- 0.97% op/s,
  2. ibtree              :            5 512,00 +/- 1.60% op/s, 11.2% slower than Immutable.Map

  N=100000:
  1. ibtree              :               45,00 +/- 0.82% op/s,
  2. Immutable.Map       :               10,00 +/- 7.43% op/s, 77.8% slower than ibtree



Get a random key from N entries
  N=10:
  1. Immutable.Map       :        5 081 087,00 +/- 1.88% op/s,
  2. ibtree              :        4 652 828,00 +/- 2.13% op/s, 8.4% slower than Immutable.Map

  N=1000:
  1. Immutable.Map       :        4 670 681,00 +/- 2.12% op/s,
  2. ibtree              :        2 909 412,00 +/- 1.62% op/s, 37.7% slower than Immutable.Map

  N=100000:
  1. ibtree              :        1 404 300,00 +/- 2.37% op/s,
  2. Immutable.Map       :        1 006 802,00 +/- 4.51% op/s, 28.3% slower than ibtree



Delete one entry from N entries
  N=10:
  1. Immutable.Map       :        1 620 353,00 +/- 1.77% op/s,
  2. ibtree              :          642 680,00 +/- 3.95% op/s, 60.3% slower than Immutable.Map

  N=1000:
  1. Immutable.Map       :          837 346,00 +/- 1.00% op/s,
  2. ibtree              :          420 102,00 +/- 2.67% op/s, 49.8% slower than Immutable.Map

  N=100000:
  1. Immutable.Map       :          418 477,00 +/- 1.68% op/s,
  2. ibtree              :          317 902,00 +/- 2.49% op/s, 24.0% slower than Immutable.Map



Delete All N Entries
  N=10:
  1. Immutable.Map       :        4 196 670,00 +/- 0.76% op/s,
  2. ibtree              :        2 420 761,00 +/- 1.72% op/s, 42.3% slower than Immutable.Map

  N=1000:
  1. Immutable.Map       :           45 432,00 +/- 0.93% op/s,
  2. ibtree              :           25 508,00 +/- 1.46% op/s, 43.9% slower than Immutable.Map

  N=100000:
  1. Immutable.Map       :              433,00 +/- 2.53% op/s,
  2. ibtree              :              254,00 +/- 0.96% op/s, 41.3% slower than Immutable.Map



Delete All N Entries (transient)
  N=10:
  1. Immutable.Map       :        4 951 169,00 +/- 4.10% op/s,
  2. ibtree              :        2 363 744,00 +/- 1.12% op/s, 52.3% slower than Immutable.Map

  N=1000:
  1. Immutable.Map       :           63 367,00 +/- 2.62% op/s,
  2. ibtree              :           27 575,00 +/- 4.21% op/s, 56.5% slower than Immutable.Map

  N=100000:
  1. Immutable.Map       :              564,00 +/- 0.93% op/s,
  2. ibtree              :              275,00 +/- 1.78% op/s, 51.2% slower than Immutable.Map



Get a random key range in order from N entries
  N=10:
  1. ibtree              :          314 549,00 +/- 6.00% op/s,
  2. Immutable.Map       :          172 788,00 +/- 5.14% op/s, 45.1% slower than ibtree

  N=1000:
  1. ibtree              :          288 446,00 +/- 5.25% op/s,
  2. Immutable.Map       :            7 632,00 +/- 2.30% op/s, 97.4% slower than ibtree

  N=100000:
  1. ibtree              :          239 099,00 +/- 5.02% op/s,
  2. Immutable.Map       :               60,00 +/- 2.99% op/s, 100.0% slower than ibtree

API

Two classes are exposed: BTMap and BTSet.

new BTMap(Object opts)

Returns a new, empty BTMap. Override defaults with opts object. Defaults are:

{
    // A function that extracts a key to use for comparisons.
    // If you're using `tree.set(key, value)`, the key is extracted
    // from `key`. If you're using `tree.add(value)`, it's
    // extracted from `value`.
    extractor: x => x,

    // a and b are the keys extracted with `extractor`.
    // This is close to the normal JavaScript comparison.
    comparator: (a, b) => a === b ? 0 : a < b ? -1 : 1,
}

BTMap.from(Array<Array<*>> entries[, Object opts])

Returns a new BTMap with data from a sorted array of [key, value] pairs. Uses a bulkloading algorithm internally, which is significantly faster than inserting values individually. opts works the same as to new BTMap(opts). entries must be an array of key-value pairs. Example:

const map = BTMap.from([
    ['key1', 'value1'],
    ['key2', 'value2'],
]);

map.get('key1');
// 'value1'

map.get('key2');
// 'value2'

BTMap Instance Methods

  • delete(key) and set(key, value) return a new, updated BTMap instance instead of mutating the current one.
  • clear returns an empty BTMap.
  • withMutations(fn) calls fn with a mutable version of the BTMap. Any methods called inside fn on the mutable version will be applied mutatively. Returns an immutable version of the tree.
  • asMutable returns a mutable version of the BTMap.
  • asImmutable returns an immutable version of the BTMap.

These work the same as native Map:

  • entries()
  • values()
  • keys()
  • get(key)
  • has(key)
  • [Symbol.iterator]()

BTMap instance properties

  • size: Returns number of values in the map

new BTSet(Object opts)

Works the same as new BTMap().

BTSet.from(Array<*> values[, Object opts])

Works the same as BTMap.from, except the first argument is a list of values instead of key-value pairs.

const btree = BTSet.from([
    'value1',
    'value2',
]);

btree.has('value1');
// true
btree.get('value1');
// 'value1'

btree.has('value2');
// true

BTSet instance methods

  • delete(value) and add(value) return a new, updated BTSet instance instead of mutating the current one.
  • clear returns an empty BTSet.
  • withMutations(fn) calls fn with a mutable version of the BTSet. Any methods called inside fn on the mutable version will be applied mutatively. Returns an immutable version of the tree.
  • asMutable returns a mutable version of the BTSet.
  • asImmutable returns an immutable version of the BTSet.

These work the same as native Set:

  • entries()
  • values()
  • keys()
  • has(value)
  • [Symbol.iterator]()

BTSet instance properties

  • size: Returns number of values in the set

Range Search Methods for BTSet and BTMap

The key benefit of B+ trees is the fast range search. Range searches extend the entries, values and keys instance methods to accept a specification for the range boundaries that specify the range boundaries.

There are two ways to specify the boundaries -- an object specification or to pass from and to keys as arguments.

The object specification looks like this:

tree.entries({
  from: 5, // required
  to: 10, // required
  fromInclusive: true, // optional, default: true
  toInclusive: false, // optional, default: true
});

The two-key specification looks like this:

tree.entries(20, 50);

and is equivalent to

tree.entries({
  from: 20, // required
  to: 50, // required
  // fromInclusive defaults to true
  // toInclusive defaults to true
});
  • entries([any fromKeyOrRangeSpec[, any toKey]]) (also alias entryRange)
  • values([any fromKeyOrRangeSpec[, any toKey]]) (also alias valueRange)
  • keys([any fromKeyOrRangeSpec[, any toKey]]) (also alias keyRange)

If these functions are called with zero arguments, they iterate through all the elements in order, just like the corresponding native Map and Set methods.

These additional methods are also supported:

  • range, which is an alias for entries in BTMap and values in BTSet.

The order of iteration is decided by comparing fromKey and toKey. If fromKey > toKey according to the instance's comparator, the iteration will be performed in reverse.

const entries = [
    [1, 'one'],
    [2, 'two'],
    [3, 'three'],
    [4, 'four'],
    [5, 'five'],
    [6, 'six'],
]

const map = BTMap.from(entries);

Array.from(map.values(2, 5));
// ['two', 'three', 'four', 'five']

// Reverse works by switching the argument position
Array.from(map.values(5, 2));
// ['five', 'four', 'three', 'two']

License

MIT. See LICENSE