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transducers-js

A high performance Transducers implementation for JavaScript.

Transducers are composable algorithmic transformations. They are independent from the context of their input and output sources and specify only the essence of the transformation in terms of an individual element. Because transducers are decoupled from input or output sources, they can be used in many different processes - collections, streams, channels, observables, etc. Transducers compose directly, without awareness of input or creation of intermediate aggregates.

For further details about Transducers see the following resources:

transducers-js is brought to you by Cognitect Labs.

Releases and Dependency Information

  • Latest release: 0.4.180

JavaScript

You can include either the release (2K gzipped) or development build of transducers-js on your webpage. We also provide Require.js compatible release and dev builds.

Node.js

transducers-js is released to npm. Add transducers-js to your package.json dependencies:

{...
  "dependencies": {
    "transducers-js": "0.4.180"
  }
 ...}

Bower

You can also include transducers-js in your bower.json dependencies:

{...
  "dependencies": {
    "transducers-js": "0.4.180"
  }
 ...}

Usage

Requiring

To import the library under Node.js you can just use require:

var t = require("transducers-js");

The browser release of the library simply exports a top level transducers object:

var t = transducers;

Basic Usage

With <=ES5:

var map    = t.map,
    filter = t.filter,
    comp   = t.comp,
    into   = t.into;

var inc = function(n) { return n + 1; };
var isEven = function(n) { return n % 2 == 0; };
var xf = comp(map(inc), filter(isEven));

console.log(into([], xf, [0,1,2,3,4])); // [2,4]

With ES6:

let {map, filter, comp, into} = t;

let inc = (n) => n + 1;
let isEven = (n) => n % 2 == 0;
let xf = comp(map(inc), filter(isEven));

console.log(into([], xf, [0,1,2,3,4])); // [2,4]

Documentation

Documentation can be found here

Integration

transducers-js can also easily be used in combination with existing reduce implementations, whether native or the shims provided by Underscore and Lodash. Doing so with native and Underscore can deliver significant performance benefits. Transducers may be easily converted from their object representation into the necessary two-arity function via toFn.

var arr   = [0,1,2,3,4,5,6,7,8,9,10],
    apush = function(arr, x) { arr.push(x); return arr; },
    xf    = comp(map(inc), filter(isEven)),
    toFn  = t.toFn;

arr.reduce(toFn(xf, apush), []); // native
_(arr).reduce(toFn(xf, apush), []); // underscore or lodash

Immutable-js

transducers-js can work with custom collection types and still deliver the same performance benefits, for example with Immutable-js:

var Immutable  = require("immutable"),
    t          = require("transducers-js"),
    comp       = t.comp,
    map        = t.map,
    filter     = t.filter,
    transduce  = t.transduce;

var inc = function(n) { return n + 1; };
var isEven = function(n) { return n % 2 == 0; };
var sum = function(a,b) { return a+b; };

var largeVector = Immutable.List();

for(var i = 0; i < 1000000; i++) {
    largeVector = largeVector.push(i);
}

// built in Immutable-js functionality
largeVector.map(inc).filter(isEven).reduce(sum);

// faster with transducers
var xf = comp(map(inc),filter(isEven));
transduce(xf, sum, 0, largeVector);

ES6 Collections

ES6 collections return iterators and therefore can be reduced/transduced. For example with transit-js collections which satisfy many of the proposed Map/Set methods:

var transit = require("transit-js"),
    t       = require("transducers-js"),
    m       = transit.map(["foo", "bar", "baz", "woz"]),
    vUC     = function(kv) { return [kv[0], kv[1].toUpperCase()]; },
    xf      = t.map(vUC);
    madd    = function(m, kv) { m.set(kv[0], kv[1]); return m; };

transduce(xf, madd, transit.map(), m.entries()); // Map ["foo", "BAR", "baz", "WOZ"]

The Transducer Protocol

It is a goal that all JavaScript transducer implementations interoperate regardless of the surface level API. Towards this end the following outlines the protocol all transducers must follow.

Transducer composition

Transducers are simply a function of one arity. The only argument is another transducer transformer (labeled xf in the code base). Note the distinction between the transducer which is a function of one argument and the transformer an object whose methods we'll describe in the following section.

For example the following simplified definition of map:

var map = function(f) {
    return function(xf) {
        return Map(f, xf);
    };
};

Since transducers are simply functions of one argument they can be composed easily via function composition to create transformer pipelines. Note that transducers return transformers when invoked.

Transformer protocol

Transformers are objects. They must implement 3 methods, @@transducer/init, @@transducer/result and @@transducer/step. If a transformer is intended to be composed with other transformers they should either close over the next transformer or store it in a field.

For example the Map transformer could look something like the following:

var Map = function(f, xf) {
    return {
       "@@transducer/init": function() { 
           return xf["@@transducer/init"](); 
       },
       "@@transducer/result": function(result) { 
           return xf["@@transducer/result"](result); 
       },
       "@@transducer/step": function(result, input) {
           return xf["@@transducer/step"](result, f(input)); 
       }
    };
};

Note how we take care to call the next transformer in the pipeline. We could have of course created Map as a proper JavaScript type with prototype methods - this is in fact how it is done in transducers-js.

Reduced

Detecting the reduced state is critical to short circuiting a reduction/transduction. A reduced value is denoted by any JavaScript object that has the property @@transducer/reduced set to true. The reduced value should be stored in the @@transducer/value property of this object.

Iteration

Anything which implements @@iterator which returns an ES6 compliant iterator is reducible/transducible. An ES6 iterator may also just be given directly to reduce or transduce.

Building

Fetch the dependencies:

bin/deps

To build for Node.js

bin/build_release_node

To build for the browser

bin/build_release_browser

Running the tests

Make sure you've first fetched the dependencies, then:

bin/test

Contributing

This library is open source, developed internally by Cognitect. Issues can be filed using GitHub Issues.

This project is provided without support or guarantee of continued development. Because transducers-js may be incorporated into products or client projects, we prefer to do development internally and do not accept pull requests or patches.

Copyright and License

Copyright © 2014-2015 Cognitect

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

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