Big O notation
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Big O notation is a mathematical notation that describes the limiting behavior of a function when the argument tends towards a particular value or infinity. Big O is a member of a family of notations invented by Paul Bachmann,^{ [1]} Edmund Landau,^{ [2]} and others, collectively called Bachmann–Landau notation or asymptotic notation.
In computer science, big O notation is used to classify algorithms according to how their run time or space requirements grow as the input size grows.^{ [3]} In analytic number theory, big O notation is often used to express a bound on the difference between an arithmetical function and a better understood approximation; a famous example of such a difference is the remainder term in the prime number theorem. Big O notation is also used in many other fields to provide similar estimates.
Big O notation characterizes functions according to their growth rates: different functions with the same growth rate may be represented using the same O notation. The letter O is used because the growth rate of a function is also referred to as the order of the function. A description of a function in terms of big O notation usually only provides an upper bound on the growth rate of the function.
Associated with big O notation are several related notations, using the symbols o, Ω, ω, and Θ, to describe other kinds of bounds on asymptotic growth rates.
Formal definition
Let f be a real or complex valued function and g a real valued function. Let both functions be defined on some unbounded subset of the positive real numbers, and be strictly positive for all large enough values of x.^{ [4]} One writes
if the absolute value of is at most a positive constant multiple of for all sufficiently large values of x. That is, if there exists a positive real number M and a real number x_{0} such that
In many contexts, the assumption that we are interested in the growth rate as the variable x goes to infinity is left unstated, and one writes more simply that
The notation can also be used to describe the behavior of f near some real number a (often, a = 0): we say
if there exist positive numbers and M such that for all x with ,
As g(x) is chosen to be nonzero for values of x sufficiently close to a, both of these definitions can be unified using the limit superior:
if
In computer science, a slightly more restrictive definition is common: and are both required to be functions from the positive integers to the nonnegative real numbers; if there exist positive integer numbers M and n_{0} such that for all .^{ [5]} Where necessary, finite ranges are (tacitly) excluded from 's and 's domain by choosing n_{0} sufficiently large. (For example, is undefined at .)
Example
In typical usage the O notation is asymptotical, that is, it refers to very large x. In this setting, the contribution of the terms that grow "most quickly" will eventually make the other ones irrelevant. As a result, the following simplification rules can be applied:
 If f(x) is a sum of several terms, if there is one with largest growth rate, it can be kept, and all others omitted.
 If f(x) is a product of several factors, any constants (terms in the product that do not depend on x) can be omitted.
For example, let f(x) = 6x^{4} − 2x^{3} + 5, and suppose we wish to simplify this function, using O notation, to describe its growth rate as x approaches infinity. This function is the sum of three terms: 6x^{4}, −2x^{3}, and 5. Of these three terms, the one with the highest growth rate is the one with the largest exponent as a function of x, namely 6x^{4}. Now one may apply the second rule: 6x^{4} is a product of 6 and x^{4} in which the first factor does not depend on x. Omitting this factor results in the simplified form x^{4}. Thus, we say that f(x) is a "big O" of x^{4}. Mathematically, we can write f(x) = O(x^{4}). One may confirm this calculation using the formal definition: let f(x) = 6x^{4} − 2x^{3} + 5 and g(x) = x^{4}. Applying the formal definition from above, the statement that f(x) = O(x^{4}) is equivalent to its expansion,
for some suitable choice of x_{0} and M and for all x > x_{0}. To prove this, let x_{0} = 1 and M = 13. Then, for all x > x_{0}:
so
Usage
Big O notation has two main areas of application:
 In mathematics, it is commonly used to describe how closely a finite series approximates a given function, especially in the case of a truncated Taylor series or asymptotic expansion
 In computer science, it is useful in the analysis of algorithms
In both applications, the function g(x) appearing within the O(...) is typically chosen to be as simple as possible, omitting constant factors and lower order terms.
There are two formally close, but noticeably different, usages of this notation:^{[ citation needed]}
 infinite asymptotics
 infinitesimal asymptotics.
This distinction is only in application and not in principle, however—the formal definition for the "big O" is the same for both cases, only with different limits for the function argument.^{[ original research?]}
Infinite asymptotics
Big O notation is useful when analyzing algorithms for efficiency. For example, the time (or the number of steps) it takes to complete a problem of size n might be found to be T(n) = 4n^{2} − 2n + 2. As n grows large, the n^{2} term will come to dominate, so that all other terms can be neglected—for instance when n = 500, the term 4n^{2} is 1000 times as large as the 2n term. Ignoring the latter would have negligible effect on the expression's value for most purposes. Further, the coefficients become irrelevant if we compare to any other order of expression, such as an expression containing a term n^{3} or n^{4}. Even if T(n) = 1,000,000n^{2}, if U(n) = n^{3}, the latter will always exceed the former once n grows larger than 1,000,000 (T(1,000,000) = 1,000,000^{3} = U(1,000,000)). Additionally, the number of steps depends on the details of the machine model on which the algorithm runs, but different types of machines typically vary by only a constant factor in the number of steps needed to execute an algorithm. So the big O notation captures what remains: we write either
or
and say that the algorithm has order of n^{2} time complexity. The sign "=" is not meant to express "is equal to" in its normal mathematical sense, but rather a more colloquial "is", so the second expression is sometimes considered more accurate (see the " Equals sign" discussion below) while the first is considered by some as an abuse of notation.^{ [6]}
Infinitesimal asymptotics
Big O can also be used to describe the error term in an approximation to a mathematical function. The most significant terms are written explicitly, and then the leastsignificant terms are summarized in a single big O term. Consider, for example, the exponential series and two expressions of it that are valid when x is small:
The second expression (the one with O(x^{3})) means the absolutevalue of the error e^{x} − (1 + x + x^{2}/2) is at most some constant times x^{3} when x is close enough to 0.
Properties
If the function f can be written as a finite sum of other functions, then the fastest growing one determines the order of f(n). For example,
In particular, if a function may be bounded by a polynomial in n, then as n tends to infinity, one may disregard lowerorder terms of the polynomial. The sets O(n^{c}) and O(c^{n}) are very different. If c is greater than one, then the latter grows much faster. A function that grows faster than n^{c} for any c is called superpolynomial. One that grows more slowly than any exponential function of the form c^{n} is called subexponential. An algorithm can require time that is both superpolynomial and subexponential; examples of this include the fastest known algorithms for integer factorization and the function n^{log n}.
We may ignore any powers of n inside of the logarithms. The set O(log n) is exactly the same as O(log(n^{c})). The logarithms differ only by a constant factor (since log(n^{c}) = c log n) and thus the big O notation ignores that. Similarly, logs with different constant bases are equivalent. On the other hand, exponentials with different bases are not of the same order. For example, 2^{n} and 3^{n} are not of the same order.
Changing units may or may not affect the order of the resulting algorithm. Changing units is equivalent to multiplying the appropriate variable by a constant wherever it appears. For example, if an algorithm runs in the order of n^{2}, replacing n by cn means the algorithm runs in the order of c^{2}n^{2}, and the big O notation ignores the constant c^{2}. This can be written as c^{2}n^{2} = O(n^{2}). If, however, an algorithm runs in the order of 2^{n}, replacing n with cn gives 2^{cn} = (2^{c})^{n}. This is not equivalent to 2^{n} in general. Changing variables may also affect the order of the resulting algorithm. For example, if an algorithm's run time is O(n) when measured in terms of the number n of digits of an input number x, then its run time is O(log x) when measured as a function of the input number x itself, because n = O(log x).
Product
Sum
This implies , which means that is a convex cone.
Multiplication by a constant
 Let k be constant. Then:
 if k is nonzero.
Multiple variables
Big O (and little o, Ω, etc.) can also be used with multiple variables. To define big O formally for multiple variables, suppose and are two functions defined on some subset of . We say
if and only if^{ [7]}
Equivalently, the condition that for some can be replaced with the condition that , where denotes the Chebyshev norm. For example, the statement
asserts that there exist constants C and M such that
where g(n,m) is defined by
This definition allows all of the coordinates of to increase to infinity. In particular, the statement
(i.e., ) is quite different from
(i.e., ).
Under this definition, the subset on which a function is defined is significant when generalizing statements from the univariate setting to the multivariate setting. For example, if and , then if we restrict and to , but not if they are defined on .
This is not the only generalization of big O to multivariate functions, and in practice, there is some inconsistency in the choice of definition.^{ [8]}
Matters of notation
Equals sign
The statement "f(x) is O(g(x))" as defined above is usually written as f(x) = O(g(x)). Some consider this to be an abuse of notation, since the use of the equals sign could be misleading as it suggests a symmetry that this statement does not have. As de Bruijn says, O(x) = O(x^{2}) is true but O(x^{2}) = O(x) is not.^{ [9]} Knuth describes such statements as "oneway equalities", since if the sides could be reversed, "we could deduce ridiculous things like n = n^{2} from the identities n = O(n^{2}) and n^{2} = O(n^{2})."^{ [10]}
For these reasons, it would be more precise to use set notation and write f(x) ∈ O(g(x)), thinking of O(g(x)) as the class of all functions h(x) such that h(x) ≤ Cg(x) for some constant C.^{ [10]} However, the use of the equals sign is customary. Knuth pointed out that "mathematicians customarily use the = sign as they use the word 'is' in English: Aristotle is a man, but a man isn't necessarily Aristotle."^{ [11]}
Other arithmetic operators
Big O notation can also be used in conjunction with other arithmetic operators in more complicated equations. For example, h(x) + O(f(x)) denotes the collection of functions having the growth of h(x) plus a part whose growth is limited to that of f(x). Thus,
expresses the same as
Example
Suppose an algorithm is being developed to operate on a set of n elements. Its developers are interested in finding a function T(n) that will express how long the algorithm will take to run (in some arbitrary measurement of time) in terms of the number of elements in the input set. The algorithm works by first calling a subroutine to sort the elements in the set and then perform its own operations. The sort has a known time complexity of O(n^{2}), and after the subroutine runs the algorithm must take an additional 55n^{3} + 2n + 10 steps before it terminates. Thus the overall time complexity of the algorithm can be expressed as T(n) = 55n^{3} + O(n^{2}). Here the terms 2n + 10 are subsumed within the fastergrowing O(n^{2}). Again, this usage disregards some of the formal meaning of the "=" symbol, but it does allow one to use the big O notation as a kind of convenient placeholder.
Multiple uses
In more complicated usage, O(...) can appear in different places in an equation, even several times on each side. For example, the following are true for
The meaning of such statements is as follows: for any functions which satisfy each O(...) on the left side, there are some functions satisfying each O(...) on the right side, such that substituting all these functions into the equation makes the two sides equal. For example, the third equation above means: "For any function f(n) = O(1), there is some function g(n) = O(e^{n}) such that n^{f(n)} = g(n)." In terms of the "set notation" above, the meaning is that the class of functions represented by the left side is a subset of the class of functions represented by the right side. In this use the "=" is a formal symbol that unlike the usual use of "=" is not a symmetric relation. Thus for example n^{O(1)} = O(e^{n}) does not imply the false statement O(e^{n}) = n^{O(1)}
Typesetting
Big O is typeset as an italicized uppercase "O", as in the following example: .^{ [12]}^{ [13]} In TeX, it is produced by simply typing O inside math mode. Unlike Greeknamed Bachmann–Landau notations, it needs no special symbol. Yet, some authors use the calligraphic variant instead.^{ [14]}^{ [15]}
Orders of common functions
Here is a list of classes of functions that are commonly encountered when analyzing the running time of an algorithm. In each case, c is a positive constant and n increases without bound. The slowergrowing functions are generally listed first.
Notation  Name  Example 

constant  Determining if a binary number is even or odd; Calculating ; Using a constantsize lookup table  
double logarithmic  Number of comparisons spent finding an item using interpolation search in a sorted array of uniformly distributed values  
logarithmic  Finding an item in a sorted array with a binary search or a balanced search tree as well as all operations in a Binomial heap  
polylogarithmic  Matrix chain ordering can be solved in polylogarithmic time on a parallel randomaccess machine.  
fractional power  Searching in a kd tree  
linear  Finding an item in an unsorted list or in an unsorted array; adding two nbit integers by ripple carry  
n logstar n  Performing triangulation of a simple polygon using Seidel's algorithm, or the union–find algorithm. Note that  
linearithmic, loglinear, quasilinear, or "n log n"  Performing a fast Fourier transform; Fastest possible comparison sort; heapsort and merge sort  
quadratic  Multiplying two ndigit numbers by a simple algorithm; simple sorting algorithms, such as bubble sort, selection sort and insertion sort; (worst case) bound on some usually faster sorting algorithms such as quicksort, Shellsort, and tree sort  
polynomial or algebraic  Treeadjoining grammar parsing; maximum matching for bipartite graphs; finding the determinant with LU decomposition  
Lnotation or subexponential  Factoring a number using the quadratic sieve or number field sieve  
exponential  Finding the (exact) solution to the travelling salesman problem using dynamic programming; determining if two logical statements are equivalent using bruteforce search  
factorial  Solving the travelling salesman problem via bruteforce search; generating all unrestricted permutations of a poset; finding the determinant with Laplace expansion; enumerating all partitions of a set 
The statement is sometimes weakened to to derive simpler formulas for asymptotic complexity. For any and , is a subset of for any , so may be considered as a polynomial with some bigger order.
Related asymptotic notations
Big O is widely used in computer science. Together with some other related notations it forms the family of Bachmann–Landau notations.^{[ citation needed]}
Littleo notation
Intuitively, the assertion "f(x) is o(g(x))" (read "f(x) is littleo of g(x)") means that g(x) grows much faster than f(x). Let as before f be a real or complex valued function and g a real valued function, both defined on some unbounded subset of the positive real numbers, such that g(x) is strictly positive for all large enough values of x. One writes
if for every positive constant ε there exists a constant N such that
 ^{ [16]}
For example, one has
 and
The difference between the earlier definition for the bigO notation and the present definition of littleo is that while the former has to be true for at least one constant M, the latter must hold for every positive constant ε, however small.^{ [17]} In this way, littleo notation makes a stronger statement than the corresponding bigO notation: every function that is littleo of g is also bigO of g, but not every function that is bigO of g is also littleo of g. For example, but .
As g(x) is nonzero, or at least becomes nonzero beyond a certain point, the relation is equivalent to
 (and this is in fact how Landau^{ [16]} originally defined the littleo notation).
Littleo respects a number of arithmetic operations. For example,
 if c is a nonzero constant and then , and
 if and then
It also satisfies a transitivity relation:
 if and then
Big Omega notation
Another asymptotic notation is , read "big omega".^{ [18]} Unfortunately, there are two widespread and incompatible definitions of the statement
 as ,
where a is some real number, ∞, or −∞, where f and g are real functions defined in a neighbourhood of a, and where g is positive in this neighbourhood.
The first one (chronologically) is used in analytic number theory, and the other one in computational complexity theory. When the two subjects meet, this situation is bound to generate confusion.
The Hardy–Littlewood definition
In 1914 Godfrey Harold Hardy and John Edensor Littlewood introduced the new symbol ,^{ [19]} which is defined as follows:
 as if
Thus is the negation of .
In 1916 the same authors introduced the two new symbols and , defined as:^{ [20]}
 as if ;
 as if
These symbols were used by Edmund Landau, with the same meanings, in 1924.^{ [21]} After Landau, the notations were never used again exactly thus; became and became .^{[ citation needed]}
These three symbols , as well as (meaning that and are both satisfied), are now currently used in analytic number theory.^{ [22]}^{ [23]}
Simple examples
This section does not
cite any
sources. (April 2021) (
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We have
 as
and more precisely
 as
We have
 as
and more precisely
 as
however
 as
The Knuth definition
In 1976 Donald Knuth published a paper to justify his use of the symbol to describe a stronger property.^{ [24]} Knuth wrote: "For all the applications I have seen so far in computer science, a stronger requirement ... is much more appropriate". He defined
with the comment: "Although I have changed Hardy and Littlewood's definition of , I feel justified in doing so because their definition is by no means in wide use, and because there are other ways to say what they want to say in the comparatively rare cases when their definition applies."^{ [24]}
Family of Bachmann–Landau notations
Notation  Name^{ [24]}  Description  Formal Definition  Limit Definition^{ [25]}^{ [26]}^{ [27]}^{ [24]}^{ [19]} 

Big O; Big Oh; Big Omicron  is bounded above by g (up to constant factor) asymptotically  
Big Theta  f is bounded both above and below by g asymptotically  and (Knuth version)  
Big Omega in complexity theory (Knuth)  f is bounded below by g asymptotically  
Small O; Small Oh  f is dominated by g asymptotically  
On the order of  f is equal to g asymptotically  
Small Omega  f dominates g asymptotically  
Big Omega in number theory (Hardy–Littlewood)  is not dominated by g asymptotically 
The limit definitions assume for sufficiently large . The table is (partly) sorted from smallest to largest, in the sense that (Knuth's version of) on functions correspond to on the real line^{ [27]} (the HardyLittlewood version of , however, doesn't correspond to any such description).
Computer science uses the big , big Theta , little , little omega and Knuth's big Omega notations.^{ [28]} Analytic number theory often uses the big , small , Hardy–Littlewood's big Omega (with or without the +, − or ± subscripts) and notations.^{ [22]} The small omega notation is not used as often in analysis.^{ [29]}
Use in computer science
Informally, especially in computer science, the big O notation often can be used somewhat differently to describe an asymptotic tight bound where using big Theta Θ notation might be more factually appropriate in a given context.^{[ citation needed]} For example, when considering a function T(n) = 73n^{3} + 22n^{2} + 58, all of the following are generally acceptable, but tighter bounds (such as numbers 2 and 3 below) are usually strongly preferred over looser bounds (such as number 1 below).
 T(n) = O(n^{100})
 T(n) = O(n^{3})
 T(n) = Θ(n^{3})
The equivalent English statements are respectively:
 T(n) grows asymptotically no faster than n^{100}
 T(n) grows asymptotically no faster than n^{3}
 T(n) grows asymptotically as fast as n^{3}.
So while all three statements are true, progressively more information is contained in each. In some fields, however, the big O notation (number 2 in the lists above) would be used more commonly than the big Theta notation (items numbered 3 in the lists above). For example, if T(n) represents the running time of a newly developed algorithm for input size n, the inventors and users of the algorithm might be more inclined to put an upper asymptotic bound on how long it will take to run without making an explicit statement about the lower asymptotic bound.
Other notation
In their book Introduction to Algorithms, Cormen, Leiserson, Rivest and Stein consider the set of functions f which satisfy
In a correct notation this set can, for instance, be called O(g), where
 .^{ [30]}
The authors state that the use of equality operator (=) to denote set membership rather than the set membership operator (∈) is an abuse of notation, but that doing so has advantages.^{ [6]} Inside an equation or inequality, the use of asymptotic notation stands for an anonymous function in the set O(g), which eliminates lowerorder terms, and helps to reduce inessential clutter in equations, for example:^{ [31]}
Extensions to the Bachmann–Landau notations
Another notation sometimes used in computer science is Õ (read softO): f(n) = Õ(g(n)) is shorthand for f(n) = O(g(n) log^{k} g(n)) for some k.^{ [32]} Essentially, it is big O notation, ignoring logarithmic factors because the growthrate effects of some other superlogarithmic function indicate a growthrate explosion for largesized input parameters that is more important to predicting bad runtime performance than the finerpoint effects contributed by the logarithmicgrowth factor(s). This notation is often used to obviate the "nitpicking" within growthrates that are stated as too tightly bounded for the matters at hand (since log^{k} n is always o(n^{ε}) for any constant k and any ε > 0).
Also the L notation, defined as
is convenient for functions that are between polynomial and exponential in terms of .
The generalization to functions taking values in any normed vector space is straightforward (replacing absolute values by norms), where f and g need not take their values in the same space. A generalization to functions g taking values in any topological group is also possible^{[ citation needed]}. The "limiting process" x → x_{o} can also be generalized by introducing an arbitrary filter base, i.e. to directed nets f and g. The o notation can be used to define derivatives and differentiability in quite general spaces, and also (asymptotical) equivalence of functions,
which is an equivalence relation and a more restrictive notion than the relationship "f is Θ(g)" from above. (It reduces to lim f / g = 1 if f and g are positive real valued functions.) For example, 2x is Θ(x), but 2x − x is not o(x).
History (Bachmann–Landau, Hardy, and Vinogradov notations)
The symbol O was first introduced by number theorist Paul Bachmann in 1894, in the second volume of his book Analytische Zahlentheorie (" analytic number theory").^{ [1]} The number theorist Edmund Landau adopted it, and was thus inspired to introduce in 1909 the notation o;^{ [2]} hence both are now called Landau symbols. These notations were used in applied mathematics during the 1950s for asymptotic analysis.^{ [33]} The symbol (in the sense "is not an o of") was introduced in 1914 by Hardy and Littlewood.^{ [19]} Hardy and Littlewood also introduced in 1916 the symbols ("right") and ("left"),^{ [20]} precursors of the modern symbols ("is not smaller than a small o of") and ("is not larger than a small o of"). Thus the Omega symbols (with their original meanings) are sometimes also referred to as "Landau symbols". This notation became commonly used in number theory at least since the 1950s.^{ [34]} In the 1970s the big O was popularized in computer science by Donald Knuth, who introduced the related Theta notation, and proposed a different definition for the Omega notation.^{ [24]}
Landau never used the big Theta and small omega symbols.
Hardy's symbols were (in terms of the modern O notation)
 and
(Hardy however never defined or used the notation , nor , as it has been sometimes reported). Hardy introduced the symbols and (as well as some other symbols) in his 1910 tract "Orders of Infinity", and made use of them only in three papers (1910–1913). In his nearly 400 remaining papers and books he consistently used the Landau symbols O and o.
Hardy's notation is not used anymore. On the other hand, in the 1930s,^{ [35]} the Russian number theorist Ivan Matveyevich Vinogradov introduced his notation , which has been increasingly used in number theory instead of the notation. We have
and frequently both notations are used in the same paper.
The bigO originally stands for "order of" ("Ordnung", Bachmann 1894), and is thus a Latin letter. Neither Bachmann nor Landau ever call it "Omicron". The symbol was much later on (1976) viewed by Knuth as a capital omicron,^{ [24]} probably in reference to his definition of the symbol Omega. The digit zero should not be used.
See also
 Asymptotic expansion: Approximation of functions generalizing Taylor's formula
 Asymptotically optimal algorithm: A phrase frequently used to describe an algorithm that has an upper bound asymptotically within a constant of a lower bound for the problem
 Big O in probability notation: O_{p},o_{p}
 Limit superior and limit inferior: An explanation of some of the limit notation used in this article
 Master theorem (analysis of algorithms): For analyzing divideandconquer recursive algorithms using Big O notation
 Nachbin's theorem: A precise method of bounding complex analytic functions so that the domain of convergence of integral transforms can be stated
 Orders of approximation
 Computational complexity of mathematical operations
References and notes
 ^ ^{a} ^{b} Bachmann, Paul (1894). Analytische Zahlentheorie [Analytic Number Theory] (in German). 2. Leipzig: Teubner.
 ^ ^{a} ^{b} Landau, Edmund (1909). Handbuch der Lehre von der Verteilung der Primzahlen [Handbook on the theory of the distribution of the primes] (in German). Leipzig: B. G. Teubner. p. 883.
 ^ Mohr, Austin. "Quantum Computing in Complexity Theory and Theory of Computation" (PDF). p. 2. Retrieved 7 June 2014.
 ^ Landau, Edmund (1909). Handbuch der Lehre von der Verteilung der Primzahlen [Handbook on the theory of the distribution of the primes] (in German). Leipzig: B.G. Teubner. p. 31.
 ^ Michael Sipser (1997). Introduction to the Theory of Computation. Boston/MA: PWS Publishing Co. Here: Def.7.2, p.227
 ^
^{a}
^{b} Cormen,Thomas H.; Leiserson, Charles E.; Rivest, Ronald L. (2009).
Introduction to Algorithms (3rd ed.). Cambridge/MA: MIT Press. p.
45.
ISBN
9780262533058.
Because θ(g(n)) is a set, we could write "f(n) ∈ θ(g(n))" to indicate that f(n) is a member of θ(g(n)). Instead, we will usually write f(n) = θ(g(n)) to express the same notion. You might be confused because we abuse equality in this way, but we shall see later in this section that doing so has its advantages.
 ^ Cormen, Thomas; Leiserson, Charles; Rivest, Ronald; Stein, Clifford (2009). Introduction to Algorithms (Third ed.). MIT. p. 53.
 ^ Howell, Rodney. "On Asymptotic Notation with Multiple Variables" (PDF). Retrieved 20150423.
 ^ N. G. de Bruijn (1958). Asymptotic Methods in Analysis. Amsterdam: NorthHolland. pp. 5–7. ISBN 9780486642215.
 ^ ^{a} ^{b} Graham, Ronald; Knuth, Donald; Patashnik, Oren (1994). Concrete Mathematics (2 ed.). Reading, Massachusetts: Addison–Wesley. p. 446. ISBN 9780201558029.
 ^ Donald Knuth (June–July 1998). "Teach Calculus with Big O" (PDF). Notices of the American Mathematical Society. 45 (6): 687. ( Unabridged version)
 ^ Donald E. Knuth, The art of computer programming. Vol. 1. Fundamental algorithms, third edition, Addison Wesley Longman, 1997. Section 1.2.11.1.
 ^ Ronald L. Graham, Donald E. Knuth, and Oren Patashnik, Concrete Mathematics: A Foundation for Computer Science (2nd ed.), AddisonWesley, 1994. Section 9.2, p. 443.
 ^ Sivaram Ambikasaran and Eric Darve, An Fast Direct Solver for Partial Hierarchically SemiSeparable Matrices, J. Scientific Computing 57 (2013), no. 3, 477–501.
 ^ Saket Saurabh and Meirav Zehavi, MaxCut: An Time Algorithm and a Polynomial Kernel, Algorithmica 80 (2018), no. 12, 3844–3860.
 ^ ^{a} ^{b} Landau, Edmund (1909). Handbuch der Lehre von der Verteilung der Primzahlen [Handbook on the theory of the distribution of the primes] (in German). Leipzig: B. G. Teubner. p. 61.
 ^ Thomas H. Cormen et al., 2001, Introduction to Algorithms, Second Edition^{[ page needed]}
 ^ Cormen TH, Leiserson CE, Rivest RL, Stein C (2009). Introduction to algorithms (3rd ed.). Cambridge, Mass.: MIT Press. p. 48. ISBN 9780262270830. OCLC 676697295.
 ^ ^{a} ^{b} ^{c} Hardy, G. H.; Littlewood, J. E. (1914). "Some problems of diophantine approximation: Part II. The trigonometrical series associated with the elliptic ϑfunctions". Acta Mathematica. 37: 225. doi: 10.1007/BF02401834.
 ^ ^{a} ^{b} G. H. Hardy and J. E. Littlewood, « Contribution to the theory of the Riemann zetafunction and the theory of the distribution of primes », Acta Mathematica, vol. 41, 1916.
 ^ E. Landau, "Über die Anzahl der Gitterpunkte in gewissen Bereichen. IV." Nachr. Gesell. Wiss. Gött. Mathphys. Kl. 1924, 137–150.
 ^ ^{a} ^{b} Aleksandar Ivić. The Riemann zetafunction, chapter 9. John Wiley & Sons 1985.
 ^ Gérald Tenenbaum, Introduction to analytic and probabilistic number theory, Chapter I.5. American Mathematical Society, Providence RI, 2015.
 ^ ^{a} ^{b} ^{c} ^{d} ^{e} ^{f} Knuth, Donald (April–June 1976). "Big Omicron and big Omega and big Theta" (PDF). SIGACT News: 18–24.
 ^ Balcázar, José L.; Gabarró, Joaquim. "Nonuniform complexity classes specified by lower and upper bounds" (PDF). RAIRO – Theoretical Informatics and Applications – Informatique Théorique et Applications. 23 (2): 180. ISSN 09883754. Retrieved 14 March 2017.
 ^ Cucker, Felipe; Bürgisser, Peter (2013). "A.1 Big Oh, Little Oh, and Other Comparisons". Condition: The Geometry of Numerical Algorithms. Berlin, Heidelberg: Springer. pp. 467–468. doi: 10.1007/9783642388965. ISBN 9783642388965.
 ^ ^{a} ^{b} Vitányi, Paul; Meertens, Lambert (April 1985). "Big Omega versus the wild functions" (PDF). ACM SIGACT News. 16 (4): 56–59. CiteSeerX 10.1.1.694.3072. doi: 10.1145/382242.382835.
 ^ Cormen, Thomas H.; Leiserson, Charles E.; Rivest, Ronald L.; Stein, Clifford (2001) [1990]. Introduction to Algorithms (2nd ed.). MIT Press and McGrawHill. pp. 41–50. ISBN 0262032937.
 ^ for example it is omitted in: Hildebrand, A.J. "Asymptotic Notations" (PDF). Department of Mathematics. Asymptotic Methods in Analysis. Math 595, Fall 2009. Urbana, IL: University of Illinois. Retrieved 14 March 2017.

^ Cormen, Thomas H.; Leiserson, Charles E.; Rivest, Ronald L. (2009). Introduction to Algorithms (3rd ed.). Cambridge/MA: MIT Press. p. 47.
ISBN
9780262533058.
When we have only an asymptotic upper bound, we use Onotation. For a given function g(n), we denote by O(g(n)) (pronounced "bigoh of g of n" or sometimes just "oh of g of n") the set of functions O(g(n)) = { f(n) : there exist positive constants c and n_{0} such that 0 ≤ f(n) ≤ cg(n) for all n ≥ n_{0}}

^ Cormen,Thomas H.; Leiserson, Charles E.; Rivest, Ronald L. (2009).
Introduction to Algorithms (3rd ed.). Cambridge/MA: MIT Press. p.
49.
ISBN
9780262533058.
When the asymptotic notation stands alone (that is, not within a larger formula) on the righthand side of an equation (or inequality), as in n = O(n²), we have already defined the equal sign to mean set membership: n ∈ O(n²). In general, however, when asymptotic notation appears in a formula, we interpret it as standing for some anonymous function that we do not care to name. For example, the formula 2n^{2} + 3n + 1 = 2n^{2} + θ(n) means that 2n^{2} + 3n + 1 = 2n^{2} + f(n), where f(n) is some function in the set θ(n). In this case, we let f(n) = 3n + 1, which is indeed in θ(n). Using asymptotic notation in this manner can help eliminate inessential detail and clutter in an equation.
 ^ Introduction to algorithms. Cormen, Thomas H. (Third ed.). Cambridge, Mass.: MIT Press. 2009. p. 63. ISBN 9780262270830. OCLC 676697295.CS1 maint: others ( link)
 ^ Erdelyi, A. (1956). Asymptotic Expansions. ISBN 9780486603186.
 ^ E. C. Titchmarsh, The Theory of the Riemann ZetaFunction (Oxford; Clarendon Press, 1951)
 ^ See for instance "A new estimate for G(n) in Waring's problem" (Russian). Doklady Akademii Nauk SSSR 5, No 56 (1934), 249–253. Translated in English in: Selected works / Ivan Matveevič Vinogradov; prepared by the Steklov Mathematical Institute of the Academy of Sciences of the USSR on the occasion of his 90th birthday. SpringerVerlag, 1985.
Further reading
 Hardy, G. H. (1910). Orders of Infinity: The 'Infinitärcalcül' of Paul du BoisReymond. Cambridge University Press.
 Knuth, Donald (1997). "1.2.11: Asymptotic Representations". Fundamental Algorithms. The Art of Computer Programming. 1 (3rd ed.). Addison–Wesley. ISBN 9780201896831.
 Cormen, Thomas H.; Leiserson, Charles E.; Rivest, Ronald L.; Stein, Clifford (2001). "3.1: Asymptotic notation". Introduction to Algorithms (2nd ed.). MIT Press and McGraw–Hill. ISBN 9780262032933.
 Sipser, Michael (1997). Introduction to the Theory of Computation. PWS Publishing. pp. 226–228. ISBN 9780534947286.
 Avigad, Jeremy; Donnelly, Kevin (2004). Formalizing O notation in Isabelle/HOL (PDF). International Joint Conference on Automated Reasoning. doi: 10.1007/9783540259848_27.
 Black, Paul E. (11 March 2005). Black, Paul E. (ed.). "bigO notation". Dictionary of Algorithms and Data Structures. U.S. National Institute of Standards and Technology. Retrieved December 16, 2006.
 Black, Paul E. (17 December 2004). Black, Paul E. (ed.). "littleo notation". Dictionary of Algorithms and Data Structures. U.S. National Institute of Standards and Technology. Retrieved December 16, 2006.
 Black, Paul E. (17 December 2004). Black, Paul E. (ed.). "Ω". Dictionary of Algorithms and Data Structures. U.S. National Institute of Standards and Technology. Retrieved December 16, 2006.
 Black, Paul E. (17 December 2004). Black, Paul E. (ed.). "ω". Dictionary of Algorithms and Data Structures. U.S. National Institute of Standards and Technology. Retrieved December 16, 2006.
 Black, Paul E. (17 December 2004). Black, Paul E. (ed.). "Θ". Dictionary of Algorithms and Data Structures. U.S. National Institute of Standards and Technology. Retrieved December 16, 2006.
External links
The Wikibook Data Structures has a page on the topic of: BigO Notation 
Wikiversity solved a MyOpenMath problem using BigO Notation 
 Growth of sequences — OEIS (Online Encyclopedia of Integer Sequences) Wiki
 Introduction to Asymptotic Notations^{[ permanent dead link]}
 Landau Symbols
 BigO Notation – What is it good for
 Big O Notation explained in plain english
 An example of Big O in accuracy of central divided difference scheme for first derivative
 A Gentle Introduction to Algorithm Complexity Analysis