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index: http://olivernn.github.com/augment.js/
Augment.js能给系统内建对象增加现代Javascript功能的支持,但并不会覆盖浏览器已有的实现,它只增加不支持的功能。
Array.prototype.every - Checks whether all elements in the array pass the test implemented by the provided function.
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Array.prototype.filter - Creates a new array with all elements that pass the test implemented by the provided function.
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Array.prototype.forEach - Executes a provided function once per array element.
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Array.prototype.indexOf - Returns the first index at which a given element can be found in the array, or -1 if it is not present.
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Array.isArray - Returns true if a variable is an array, false if it is not.
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Array.prototype.lastIndexOf - Returns the last index at which a given element can be found in the array, or -1 if it is not present. The array is searched backwards, starting at fromIndex.
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Array.prototype.map - Creates a new array with the result of calling the provided function on every element in this array.
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Array.prototype.reduce - Applies a function against an accumulator and each value of the array (from left-to-right) to reduce the array to a single value.
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Array.prototype.reduceRight - Applies a function against an accumulator and each value of the array (from right-to-left) to reduce the array to a single value.
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Array.prototype.some - Checks whether any element in the array passes the test implemented by the provided function.
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Date.now - Returns the number of milliseconds elapsed since 1 January 1970 00:00:00 UTC.
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Date.prototype.toJSON - Returns a JSON representation of the Date object.
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Date.prototype.toISOString - Converts a date to a string following the ISO 8601 Extended Format.
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Function.prototype.bind - Returns a new function that, when called, itself calls this function in the context of the provided this
value.
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Object.keys - Returns an array of all own enumerable properties found upon a given object, in the same order as that provided by a for-in loop (the difference being that a for-in loop enumerates properties in the prototype chain as well).
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Object.getPrototypeOf - Returns the prototype of the specified object.
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String.prototype.trim - Trims whitespace from the beginning and end of the string
.
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