# Bitwise operation in large list as fast as possible in c#

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

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 `a`s 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 `a`s 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