Simple, high-performance transducers for JavaScript
npm install @timkendrick/transducers --save
Transducers provide an elegant, high-performance abstraction for manipulating collections. They allow you to compose complex, reusable transformations that can be applied to any kind of collection, and can produce different output formats depending on the choice of underlying reducer.
import { compose, map, filter, take, array } from '@timkendrick/transducers';
// Define a source iterator
const users = getUsers(10000);
// Compose a transducer that expresses a transformation
const transducer = compose(
filter((user) => user.admin === true)
map((user) => `${user.firstName} ${user.lastName}`),
take(10),
);
// Apply the transformation using the 'array' reducer (which outputs an array)
const results = transduce(transducer, array, users);
// Log an array containing the full names of the first ten admin users
console.log(results);
One of the primary advantages of transducers is their efficiency. See the performance benchmarks for more details.
Compose a series of transducers. The transformations expressed by the transducers will be processed in order from left-to-right.
The resulting transducer can be further composed for combining with other transducers.
Apply the transducer
to an iterable collection of items
, using the specified reducer
function and initialValue
argument to construct the output.
The reducer
can optionally refer to a transducer that defines an 'init' method (e.g. the bundled array
reducer), in which case the initialValue
is optional. In all other cases the initialValue
argument is required.
While not an exhaustive set by any means, various operators have been bundled for convenience:
distinct
: ignore repeated itemsempty
: ignore all itemsfilter(predicate)
: take only the items that conform to thepredicate
functionfirst
: take the first item onlyflatMap(project)
: for each item, map to a collection usingproject
, and merge the resultsflatten
: flatten a higher-order collection by one dimensionlast
: take the last item onlymap(transform)
: transform each item to the result of mapping it through theproject
functionmapAll(transform)
: transform the entire output set by mapping it through thetransform
functionscan(reducer, seed)
: for each item, return the result of calling thereducer
function with the previous result and the current itemskip(count)
: ignore the firstcount
itemsskipUntil(predicate)
: ignore items until one conforms to thepredicate
functionskipWhile(predicate)
: ignore items until one does not conform to thepredicate
functionslice(start, length)
: ignore items until thestart
index, and takelength
items from that pointsort(compare)
: sort the entire output set using thecompare
comparison functiontake(count)
: take only the firstcount
itemstakeUntil(predicate)
: take all items until one conforms to thepredicate
functiontakeWhile(predicate)
: take all items until one does not conform to thepredicate
function
See the tests for the bundled operators for more details.
The bundled operators can all be composed using the compose()
helper to produce more specific operators.
Transducers can be used with any type of reducer. Some of the most common ones are bundled for convenience:
Combines the transformed collection into a JavaScript array:
import { skip, transduce } from '@timkendrick/transducers';
transduce(skip(1), array, ['foo', 'bar', 'baz']); // ['bar', 'baz']
Combines the transformed collection into a sum total:
import { skip, sum } from '@timkendrick/transducers';
transduce(skip(1), sum, [1, 2, 3, 4, 5]); // 14
Joins the transformed collection into a string with items separated by newline characters:
import { take, log } from '@timkendrick/transducers';
transduce(skip(1), log, ['foo', 'bar', 'baz']); // "Foo\nBar\nBaz"
This package conforms to the Transducers spec, allowing for full interoperability with all packages that support transducers.
While the main @timkendrick/transducers
package comes with a set of bundled operators, you can choose to import the core functionality on its own and load any desired operators and reducers individually:
import { compose, transduce } from '@timkendrick/transducers/core';
import array from '@timkendrick/transducers/reducers/array';
import map from '@timkendrick/transducers/operators/map';
import filter from '@timkendrick/transducers/operators/filter';
import take from '@timkendrick/transducers/operators/take';
This allows you to generate a super-minimal application bundle (the core module is <1KB minified and gzipped), and can also be useful for avoiding overlap with other transducer libraries.