# Sample input for various algorithms

I have been reading parts of Introduction to Algorithms by Cormen et al, and have implemented some of the algorithms.

In order to test my implementations I wrote some glue code to do file io, then made some sample input by hand and some more sample input by writing programs that generate sample input.

However I am doubtful as to the quality of my own sample inputs -- corner cases; I may have missed the more interesting possibilities; I may have miscalculated the proper output; etc.

Is there a set of test inputs and outputs for various algorithms collected somewhere on the Internet so that I might be able to test my code? I am looking for test data reasonably specific to particular algorithms, rather than contest problems that often involve a problem solving component as well.

I understand that I might have to adjust my code depending on the format the input is collected in (e.g. The various constraints of the inputs; for graph algorithms, the representation of the graph; etc.) although, I am hoping that the change I would have to make would be reasonably trivial.

Edit:

Some particular datasets I am currently looking for are:

• Lists of numbers
• Skewed so that Quick sort performs badly.
• Skewed so that Fibonacci Heap performs particularly well or poorly for specific operations.
• Graphs (for which High Performance Mark has offered a number of interesting references)
• Sparse graphs (with specific bounds on number of edges),
• Dense graphs,

Since, I am still working through the book, if you are in a similar situation as I am, or you just feel the list could be improved, please feel free to edit the list -- some time soon, I may come to need datasets similar to what you are looking for. I am not entirely sure how editing privileges work, but if I have any say over it, I will try to approve it.

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what language are you using? some languages have libraries that can automatically generate test data. for example, quickcheck for haskell. more are listed at news.ycombinator.com/item?id=3020132 – andrew cooke Mar 7 '12 at 2:53
@andrewcooke I am using Python. QuickCheck and such libraries sound interesting -- I will definitely take a look at it. – math4tots Mar 7 '12 at 3:00
Another interesting testing tool is Korat (details at stanford.edu/class/cs295/papers/issta02.pdf), which actually inspects your code to construct exhaustive test cases for it on small inputs. Again, not a collection of tests or in Python, but still a cool tool to know about. – templatetypedef Mar 7 '12 at 8:51

I don't know of any one resource which will provide you with sample inputs for all the types of algorithm that Cormen et al cover but for graph datasets here are a couple of references:

Knuth's Stanford Graphbase

and

which I stumbled across while looking for the link to the former. You might be interested in this one too:

Why not edit your question and let SO know what other types of input you are looking for.

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I would add the Sparse Matrix collection. You can easily obtain a graph from a sparse matrix. cise.ufl.edu/research/sparse/matrices – linello Mar 7 '12 at 12:07

I am going to stick my head on the line and say that I do not know of any such source, and I very much doubt that such a source exists.

As you seem to be aware, algorithms can be applied to almost any sort of data, and so it would be fruitless to attempt to provide sample data.

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