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dpBottomUpJumpGame.js
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dpBottomUpJumpGame.js
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/**
* DYNAMIC PROGRAMMING BOTTOM-UP approach of solving Jump Game.
*
* This comes out as an optimisation of DYNAMIC PROGRAMMING TOP-DOWN approach.
*
* The observation to make here is that we only ever jump to the right.
* This means that if we start from the right of the array, every time we
* will query a position to our right, that position has already be
* determined as being GOOD or BAD. This means we don't need to recurse
* anymore, as we will always hit the memo table.
*
* We call a position in the array a "good" one if starting at that
* position, we can reach the last index. Otherwise, that index
* is called a "bad" one.
*
* @param {number[]} numbers - array of possible jump length.
* @return {boolean}
*/
export default function dpBottomUpJumpGame(numbers) {
// Init cells goodness table.
const cellsGoodness = Array(numbers.length).fill(undefined);
// Mark the last cell as "good" one since it is where we ultimately want to get.
cellsGoodness[cellsGoodness.length - 1] = true;
// Go throw all cells starting from the one before the last
// one (since the last one is "good" already) and fill cellsGoodness table.
for (let cellIndex = numbers.length - 2; cellIndex >= 0; cellIndex -= 1) {
const maxJumpLength = Math.min(
numbers[cellIndex],
numbers.length - 1 - cellIndex,
);
for (let jumpLength = maxJumpLength; jumpLength > 0; jumpLength -= 1) {
const nextIndex = cellIndex + jumpLength;
if (cellsGoodness[nextIndex] === true) {
cellsGoodness[cellIndex] = true;
// Once we detected that current cell is good one we don't need to
// do further cells checking.
break;
}
}
}
// Now, if the zero's cell is good one then we can jump from it to the end of the array.
return cellsGoodness[0] === true;
}