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What is the most efficient to share data between multiple cores. Sure you can use shared memory but that also comes at a cost. Say one core is continously writing to a variable and the other core has to continuously read from it. With the MESI cache coherence protocol, the writing core will cause the reading core to invalidate its cache every now and then. So in this scenario, what is the most efficient way of sharing data.

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3 Answers 3

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On a typical shared memory machine, the scenario that you describe is probably already the most efficient method that is possible:

  • Core A writes to memory location. Invalidates Core B's copy.
  • Core B grabs the data from memory or from Core A's cache.

Either way, the data must be sent from Core A to Core B. Cache coherency in modern processors will sometimes support direct cache-to-cache transfer without going all the way to memory.

What you want to avoid (whenever possible) is excessive locking of the shared resource. That will increase cache coherency traffic (and latency) in both directions.

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Well what I've read is that the MESI protocol doesn't do cache to cache transfer and MESI is the protcol used by Intel processors. AMD allows this by using the MOESI protocol, but the downside is that there is reading from memory when cache is in clean shared state. –  user1018562 Apr 8 '12 at 19:45
From what I know, modern processors implement more complicated protocols than that. They all "based" off of MESI and its variants but are typically more complicated. For example, the Power7 has a 13-state coherency protocol. I'm not sure exactly what Intel uses (since it's probably proprietary), but based on the what I've read, it has a snooping mechanism... –  Mysticial Apr 8 '12 at 19:51
Basically, I'm trying to say that relying on hardware cache coherence is probably the fastest (and only) way to shared data on a shared memory machine. On distributed machines, you don't have this option so you'll need to deal with message passing. –  Mysticial Apr 8 '12 at 19:53

One common and general approach is to have per-core data structures when possible.

For example, in a producer-consumer scenario, each of the consumer processors can have a part of the queue and operate on it. They can contact the producer processor only when they run out of work-items.

Of course, this is not always possible, but if the working-items can be architected this way, it reduces the inter-dependence between the cores and lets the application scale up to the number of cores.

This technique has been widely used in Solaris OS. For more info see Multicore Application Programming: for Windows, Linux, and Oracle Solaris.

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This depends on how much staleness you can tolerate (please tell us).

If you require updates to propagate out as fast as possible, this is already the most efficient solution. If you can tolerate milliseconds or seconds of out-of-date data, you can use a distinct memory location for each core and synchronize using a timer.

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I want updates as fast as possible. –  user1018562 Apr 8 '12 at 21:15
Then, this is the best you can do. –  usr Apr 8 '12 at 21:16

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