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I have a list from 10,000 long value and I want to compare that data withe 100,000 other long value compare is a bitwise operation -->

if (a&b==a) count++;

which algoritm I can use for getting best performance?

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Are you trying to count the number of Int64s in which B has all the bits turned on as A? –  agent-j May 26 '12 at 15:53
    
Do you want to check if the 100,000 items are in the initial list? –  Tudor May 26 '12 at 15:53
    
If you sort both lists first you can then count the number of matches in just one parallel pass over both of them. –  Jon May 26 '12 at 16:03
    
BitArray would require conversion of the Int64/UInt64 values to a byte array since it doesn't handle those data types natively, so I think you're already doing the right thing with a simple bitwise comparison. Theoretically, an inequality comparison can resolve faster than equality, but I seriously doubt it would make a difference on any modern processor. –  richardtallent May 26 '12 at 16:04
    
@agent-j yes I'm trying to count that –  Hamid May 26 '12 at 16:58

2 Answers 2

up vote 5 down vote accepted

If I understand your question correctly, you want to check a against each b whether some predicate is true. So a naive solution to your problem would be as follows:

var result = aList.Sum(a => bList.Count(b => (a & b) == a));

I'm not sure this can really be sped up for an arbitrary predicate, because you can't get around checking each a against each b. What you could try is run the query in parallel:

var result = aList.AsParallel().Sum(a => bList.Count(b => (a & b) == a));

Example:

aList: 10,000 random long values; bList: 100,000 random long values.

  • without AsParallel: 00:00:13.3945187

  • with AsParallel: 00:00:03.8190386

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Just because you split the work between more people doesn't mean you are working more efficiently. –  32bitkid May 26 '12 at 16:18
    
thanx why when I use parallel performance reduce and proccess took more time? –  Hamid May 26 '12 at 16:20
    
@32bitkid: Why should I work more efficiently if I have enough people? ;-) I think your other comment is spot on: try this naive solution with AsParallel first, and if it doesn't meet the requirements, think about tries etc. –  dtb May 26 '12 at 16:22
    
My cpu is dual core 64bit but perfromance in parallel mode reduce. why? –  Hamid May 26 '12 at 16:44
    
parrall speed problem was because of my fault,I'll mark your response as answer just aList.Foreach is faster when I tested, thanx alot –  Hamid May 26 '12 at 18:01

Put all of your as into a trie data structure, where the first level of the tree corresponds to the first bit of the number, the second to the second bit, and so on. Then, for each b, walk down the trie; if this bit is 1 in b, then count both branches, or if this bit is 0 in b, count only the 0 branch of the trie. I think this should be O(n+m), but I haven't thought about it very hard.

You can probably get the same semantics but with better cache characteristics by sorting the list of as and using the sorted list in much the same way as the trie. This is going to be slightly worse in terms of number of operations - because you'll have to search for stuff a lot of the time - but the respect for the CPU cache might more than make up for it.

N.B. I haven't thought about correctness much harder than I've thought about big-O notation, which is to say probably not enough.

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I would try this, directly after i profiled the simple solution and determined it was, in-fact, an unacceptable bottleneck. –  32bitkid May 26 '12 at 16:16

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