1 / 84

ECE1747 Parallel Programming

ECE1747 Parallel Programming. Shared Memory Multithreading Pthreads. Shared Memory. All threads access the same shared memory data space. Shared Memory Address Space. proc1. proc2. proc3. procN. Shared Memory (continued).

cnewell
Download Presentation

ECE1747 Parallel Programming

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. ECE1747 Parallel Programming Shared Memory Multithreading Pthreads

  2. Shared Memory • All threads access the same shared memory data space. Shared Memory Address Space proc1 proc2 proc3 procN

  3. Shared Memory (continued) • Concretely, it means that a variable x, a pointer p, or an array a[] refer tothe same object, no matter what processor the reference originates from. • We have more or less implicitly assumed this to be the case in earlier examples.

  4. Shared Memory a proc1 proc2 proc3 procN

  5. Distributed Memory - Message Passing The alternative model to shared memory. mem1 mem2 mem3 memN a a a a proc1 proc2 proc3 procN network

  6. Shared Memory vs. Message Passing • Same terminology is used in distinguishing hardware. • For us: distinguish programming models, not hardware.

  7. Programming vs. Hardware • One can implement • a shared memory programming model • on shared or distributed memory hardware • (also in software or in hardware) • One can implement • a message passing programming model • on shared or distributed memory hardware

  8. Portability of programming models shared memory programming message passing programming shared memory machine distr. memory machine

  9. Shared Memory Programming: Important Point to Remember • No matter what the implementation, it conceptually looks like shared memory. • There may be some (important) performance differences.

  10. Multithreading • User has explicit control over thread. • Good: control can be used to performance benefit. • Bad: user has to deal with it.

  11. Pthreads • POSIX standard shared-memory multithreading interface. • Provides primitives for process management and synchronization.

  12. What does the user have to do? • Decide how to decompose the computation into parallel parts. • Create (and destroy) processes to support that decomposition. • Add synchronization to make sure dependences are covered.

  13. General Thread Structure • Typically, a thread is a concurrent execution of a function or a procedure. • So, your program needs to be restructured such that parallel parts form separate procedures or functions.

  14. Example of Thread Creation (contd.) main() pthread_ create(func) func()

  15. Thread Joining Example void *func(void *) { ….. } pthread_t id; int X; pthread_create(&id, NULL, func, &X); ….. pthread_join(id, NULL); …..

  16. Example of Thread Creation (contd.) main() pthread_ create(func) func() pthread_ join(id) pthread_ exit()

  17. Sequential SOR for some number of timesteps/iterations { for (i=0; i<n; i++ ) for( j=1, j<n, j++ ) temp[i][j] = 0.25 * ( grid[i-1][j] + grid[i+1][j] grid[i][j-1] + grid[i][j+1] ); for( i=0; i<n; i++ ) for( j=1; j<n; j++ ) grid[i][j] = temp[i][j]; }

  18. Parallel SOR • First (i,j) loop nest can be parallelized. • Second (i,j) loop nest can be parallelized. • Must wait to start second loop nest until all processors have finished first. • Must wait to start first loop nest of next iteration until all processors have second loop nest of previous iteration. • Give n/p rows to each processor.

  19. Pthreads SOR: Parallel parts (1) void* sor_1(void *s) { int slice = (int) s; int from = (slice*n)/p; int to = ((slice+1)*n)/p; for( i=from; i<to; i++) for( j=0; j<n; j++ ) temp[i][j] = 0.25*(grid[i-1][j] + grid[i+1][j] +grid[i][j-1] + grid[i][j+1]); }

  20. Pthreads SOR: Parallel parts (2) void* sor_2(void *s) { int slice = (int) s; int from = (slice*n)/p; int to = ((slice+1)*n)/p; for( i=from; i<to; i++) for( j=0; j<n; j++ ) grid[i][j] = temp[i][j]; }

  21. Pthreads SOR: main for some number of timesteps { for( i=0; i<p; i++ ) pthread_create(&thrd[i], NULL, sor_1, (void *)i); for( i=0; i<p; i++ ) pthread_join(thrd[i], NULL); for( i=0; i<p; i++ ) pthread_create(&thrd[i], NULL, sor_2, (void *)i); for( i=0; i<p; i++ ) pthread_join(thrd[i], NULL); }

  22. Summary: Thread Management • pthread_create(): creates a parallel thread executing a given function (and arguments), returns thread identifier. • pthread_exit(): terminates thread. • pthread_join(): waits for thread with particular thread identifier to terminate.

  23. Summary: Program Structure • Encapsulate parallel parts in functions. • Use function arguments to parameterize what a particular thread does. • Call pthread_create() with the function and arguments, save thread identifier returned. • Call pthread_join() with that thread identifier.

  24. Pthreads Synchronization • Create/exit/join • provide some form of synchronization, • at a very coarse level, • requires thread creation/destruction. • Need for finer-grain synchronization • mutex locks, • condition variables.

  25. Use of Mutex Locks • To implement critical sections. • Pthreads provides only exclusive locks. • Some other systems allow shared-read, exclusive-write locks.

  26. Condition variables (1 of 5) pthread_cond_init( pthread_cond_t *cond, pthread_cond_attr *attr) • Creates a new condition variable cond. • Attribute: ignore for now.

  27. Condition Variables (2 of 5) pthread_cond_destroy( pthread_cond_t *cond) • Destroys the condition variable cond.

  28. Condition Variables (3 of 5) pthread_cond_wait( pthread_cond_t *cond, pthread_mutex_t *mutex) • Blocks the calling thread, waiting on cond. • Unlocks the mutex.

  29. Condition Variables (4 of 5) pthread_cond_signal( pthread_cond_t *cond) • Unblocksone thread waiting on cond. • Which one is determined by scheduler. • If no thread waiting, then signal is a no-op.

  30. Condition Variables (5 of 5) pthread_cond_broadcast( pthread_cond_t *cond) • Unblocks all threads waiting on cond. • If no thread waiting, then broadcast is a no-op.

  31. Use of Condition Variables • To implement signal-wait synchronization discussed in earlier examples. • Important note: a signal is “forgotten” if there is no corresponding wait that has already happened.

  32. Barrier Synchronization • A wait at a barrier causes a thread to wait until all threads have performed a wait at the barrier. • At that point, they all proceed.

  33. Implementing Barriers in Pthreads • Count the number of arrivals at the barrier. • Wait if this is not the last arrival. • Make everyone unblock if this is the last arrival. • Since the arrival count is a shared variable, enclose the whole operation in a mutex lock-unlock.

  34. Implementing Barriers in Pthreads void barrier() { pthread_mutex_lock(&mutex_arr); arrived++; if (arrived<N) { pthread_cond_wait(&cond, &mutex_arr); } else { pthread_cond_broadcast(&cond); arrived=0; /* be prepared for next barrier */ } pthread_mutex_unlock(&mutex_arr); }

  35. Parallel SOR with Barriers (1 of 2) void* sor (void* arg) { int slice = (int)arg; int from = (slice * (n-1))/p + 1; int to = ((slice+1) * (n-1))/p + 1; for some number of iterations { … } }

  36. Parallel SOR with Barriers (2 of 2) for (i=from; i<to; i++) for (j=1; j<n; j++) temp[i][j] = 0.25 * (grid[i-1][j] + grid[i+1][j] + grid[i][j-1] + grid[i][j+1]); barrier(); for (i=from; i<to; i++) for (j=1; j<n; j++) grid[i][j]=temp[i][j]; barrier();

  37. Parallel SOR with Barriers: main int main(int argc, char *argv[]) { pthread_t *thrd[p]; /* Initialize mutex and condition variables */ for (i=0; i<p; i++) pthread_create (&thrd[i], &attr, sor, (void*)i); for (i=0; i<p; i++) pthread_join (thrd[i], NULL); /* Destroy mutex and condition variables */ }

  38. Note again • Many shared memory programming systems (other than Pthreads) have barriers as basic primitive. • If they do, you should use it, not construct it yourself. • Implementation may be more efficient than what you can do yourself.

  39. Busy Waiting • Not an explicit part of the API. • Available in a general shared memory programming environment.

  40. Busy Waiting initially: flag = 0; P1: produce data; flag = 1; P2: while( !flag ) ; consume data;

  41. Use of Busy Waiting • On the surface, simple and efficient. • In general, not a recommended practice. • Often leads to messy and unreadable code (blurs data/synchronization distinction). • May be inefficient

  42. Private Data in Pthreads • To make a variable private in Pthreads, you need to make an array out of it. • Index the array by thread identifier, which you should keep track of . • Not very elegant or efficient.

  43. Other Primitives in Pthreads • Set the attributes of a thread. • Set the attributes of a mutex lock. • Set scheduling parameters.

  44. ECE 1747 Parallel Programming Machine-independent Performance Optimization Techniques

  45. Returning to Sequential vs. Parallel • Sequential execution time: t seconds. • Startup overhead of parallel execution: t_st seconds (depends on architecture) • (Ideal) parallel execution time: t/p + t_st. • If t/p + t_st > t, no gain.

  46. General Idea • Parallelism limited by dependences. • Restructure code to eliminate or reduce dependences. • Sometimes possible by compiler, but good to know how to do it by hand.

  47. Optimizations: Example 16 for (i = 0; i < 100000; i++) a[i + 1000] = a[i] + 1; Cannot be parallelized as is. May be parallelized by applying certain code transformations.

  48. Example Transformation for (i=1; i < 100; i++){ int stride = i* 1000; for (j = 0; j < 1000; j++) a[stride+j] = a[j] + i; }

  49. Code Transformations • Reorganize code such that • dependences are removed or reduced • large pieces of parallel work emerge • Code can become messy … there is a point of diminishing returns.

  50. Flavors of Parallelism • Task parallelism: processors do different tasks. • Task queue • Pipelines • Data parallelism: all processors do the same thing on different data. • Regular • Irregular

More Related