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postcss-modules-parser
Advanced tools
A CSS Modules parser to extract tokens from the css file. Provides opportunity to process multiple files. Supports both synchronous and asynchronous file loaders.
In order to use it you should provide a fetch
function which should load contents of files and process it with the PostCSS instance. fetch
function should return tokens or promise object which will resolve into tokens.
var Parser = require('postcss-modules-parser');
/**
* @param {string} to Path to the new file. Could be any.
* @param {string} from Path to the source file. Should be absolute.
* @return {object} Tokens
*/
function fetch(to, from) {
// load content
return instance.process(css, {from: filename}).root.tokens;
}
new Parser({fetch: fetch});
See the examples:
FAQs
A CSS Modules parser to extract tokens from the css file
The npm package postcss-modules-parser receives a total of 24,272 weekly downloads. As such, postcss-modules-parser popularity was classified as popular.
We found that postcss-modules-parser demonstrated a not healthy version release cadence and project activity because the last version was released a year ago. It has 1 open source maintainer collaborating on the project.
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