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900.RLEIterator.py
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"""
Write an iterator that iterates through a run-length encoded sequence.
The iterator is initialized by RLEIterator(int[] A), where A is a run-length
encoding of some sequence. More specifically, for all even i, A[i] tells
us the number of times that the non-negative integer value A[i+1] is
repeated in the sequence.
The iterator supports one function: next(int n), which exhausts the next n
elements (n >= 1) and returns the last element exhausted in this way.
If there is no element left to exhaust, next returns -1 instead.
For example, we start with A = [3,8,0,9,2,5], which is a run-length encoding
of the sequence [8,8,8,5,5]. This is because the sequence can be read as
"three eights, zero nines, two fives".
Example:
Input: ["RLEIterator","next","next","next","next"], [[[3,8,0,9,2,5]],[2],[1],[1],[2]]
Output: [null,8,8,5,-1]
Explanation:
RLEIterator is initialized with RLEIterator([3,8,0,9,2,5]).
This maps to the sequence [8,8,8,5,5].
RLEIterator.next is then called 4 times:
.next(2) exhausts 2 terms of the sequence, returning 8.
The remaining sequence is now [8, 5, 5].
.next(1) exhausts 1 term of the sequence, returning 8.
The remaining sequence is now [5, 5].
.next(1) exhausts 1 term of the sequence, returning 5.
The remaining sequence is now [5].
.next(2) exhausts 2 terms, returning -1.
This is because the first term exhausted was 5,
but the second term did not exist. Since the
last term exhausted does not exist, we return -1.
Note:
1. 0 <= A.length <= 1000
2. A.length is an even integer.
3. 0 <= A[i] <= 10^9
4. There are at most 1000 calls to RLEIterator.next(int n) per test case.
5. Each call to RLEIterator.next(int n) will have 1 <= n <= 10^9.
"""
#Difficulty: Medium
#9 / 9 test cases passed.
#Runtime: 32 ms
#Memory Usage: 14.2 MB
#Runtime: 32 ms, faster than 95.25% of Python3 online submissions for RLE Iterator.
#Memory Usage: 14.2 MB, less than 82.35% of Python3 online submissions for RLE Iterator.
class RLEIterator:
def __init__(self, A: List[int]):
self.data = A
def next(self, n: int) -> int:
while self.data and n > self.data[0]:
n -= self.data[0]
self.data = self.data[2:]
if self.data and n <= self.data[0]:
self.data[0] -= n
return self.data[1]
return -1
# Your RLEIterator object will be instantiated and called as such:
# obj = RLEIterator(A)
# param_1 = obj.next(n)