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I have seen this term "O(1) access time" used to mean "quickly" but I don't understand what it means. The other term that I see with it in the same context is "O(n) access time". Could someone please explain in a simple way what these terms mean?

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This might help: stackoverflow.com/questions/471199/… – Mehrdad Afshari Mar 30 at 16:24

11 Answers

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You're going to want to read up on Order of complexity.

http://en.wikipedia.org/wiki/Big_O_notation

In short, O(1) means that it takes a constant time, like 14 nanoseconds, or three minutes no matter the amount of data in the set.

O(n) means it takes am amount of time linear with the size of the set, so a set twice the size will take twice the time. You probably don't want to put a million objects into one of these.

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In essence, It means that it takes the same amount of time to look up a value in your collection whether you have a small number of items in your collection or very very many (within the constraints of your hardware)

O(n) would mean that the time it takes to look up an item is proportional to the number of items in the collection.

Typical examples of these are arrays, which can be accessed directly, regardless of their size, and linked lists, which must be traversed in order from the beginning to access a given item.

The other operation usually discussed is insert. A collection can be O(1) for access but O(n) for insert. In fact an array has exactly this behavior, because to insert an item in the middle, You would have to move each item to the right by copying it into the following slot.

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vote up 5 vote down

It's called the Big O notation, and describes the search time for various algorithms.

O(1) means that the search time is constant. For most situation it means that you dont acctually need to search the collection, you cand find what you are searching for right away.

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Replace "search time" with "worst-case run time" and I'm with you. – Jason Punyon Mar 30 at 16:29
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"Search"? WTF... man, it has nothing to do with search; its computation time: en.wikipedia.org/wiki/…. Different kind of searches have different complexities, but it's not a measure of search algorithms - any algorithm can be measured by this. – Seb Mar 30 at 16:29
@Seb: I think it was just a misnomer on his part, specifically because the OP asked about access time. – Hooked Jun 14 at 5:10
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O(1) means the time to access something is independent of the number of items in the collection.

O(N) would mean the time to access an item is a proportional to the number (N) of items in the collection.

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"Big O notation" is a way to express the speed of algorithms. n is the amount of data the algorithm is working with. O(1) means that, no matter how much data, it will execute in constant time. O(n) means that it is proportional to the amount of data.

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O(1) does not necessarily mean "quickly". It means that the time it takes is constant, and not based on the size of the input to the function. Constant could be fast or slow. O(n) means that the time the function takes will change in direct proportion to the size of the input to the function, denoted by n. Again, it could be fast or slow, but it will get slower as the size of n increases.

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It means that the access takes constant time i.e. does not depend on the size of the dataset. O(n) means that the access will depend on the size of the dataset linearly.

The O is also known as big-O.

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Basically, O(1) means its computation time is constant, while O(n) means it will depend lineally on the size of input - i.e. looping through an array has O(n) - just looping -, because it depends on the number of items, while calculating the maximum between to ordinary numbers has O(1).

Wikipedia might help as well: http://en.wikipedia.org/wiki/Computational_complexity_theory

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It means that access time is constant. Whether you're accessing from 100 or 100,000 records, the retrieval time will be the same.

In contrast, O(n) access time would indicate that the retrieval time is directly proportional to the number of records you're accessing from.

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The easiest way to differentiate O(1) and O(n) is comparing array and list.

For array, if you have the right index value, you can access the data instantly. (If you don't know the index and have to loop through the array, then it won't be O(1) anymore)

For list, you always need to loop through it whether you know the index or not.

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Introduction to Algorithms: Second Edition by Cormen, Leiserson, Rivest & Stein says on page 44 that

Since any constant is a degree-0 polynomial, we can express any constant function as Theta(n^0), or Theta(1). This latter notation is a minor abuse, however, because it is not clear what variable is tending to infinity. We shall often use the notation Theta(1) to mean either a constant or a constant function with respect to some variable. ... We denote by O(g(n))... the set of functions f(n) such that there exist positive constants c and n0 such that 0 <= f(n) <= c*g(n) for all n >= n0. ... Note that f(n) = Theta(g(n)) implies f(n) = O(g(n)), since Theta notation is stronger than O notation.

If an algorithm runs in O(1) time, it means that asymptotically doesn't depend upon any variable, meaning that there exists at least one positive constant that when multiplied by one is greater than the asymptotic complexity (~runtime) of the function for values of n above a certain amount. Technically, it's O(n^0) time.

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