Sorting algorithms are used to sort a data structure according to a
specific order relationship, such as numerical order or lexicographical
order.
This operation is one of the most important and widespread in computer
science. For a long time, new methods have been developed to make this
procedure faster and faster.
There are currently hundreds of different sorting algorithms, each with
its own specific characteristics. They are classified according to two
metrics: space complexity and time complexity.
Those two kinds of complexity are represented with asymptotic notations,
mainly with the symbols O, Θ, Ω, representing respectively the upper
bound, the tight bound, and the lower bound of the algorithm's
complexity, specifying in brackets an expression in terms of n, the
number of the elements of the data structure.
Most of them fall into two categories:
• Logarithmic
The complexity is proportional to the binary logarithm (i.e to the base
2) of n.
An example of a logarithmic sorting algorithm is Quick sort, with space
and time complexity O(n × log n).
• Quadratic
The complexity is proportional to the square of n.
An example of a quadratic sorting algorithm is Bubble sort, with a time
complexity of O(n2).
Space and time complexity can also be further subdivided into 3
different cases: best case, average case and worst case.
Sorting algorithms can be difficult to understand and it's easy to get
confused. We believe visualizing sorting algorithms can be a great way
to better understand their functioning while having fun!
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Made with ❤️ by
Mohit Singh Rajput