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PDS Lectures 6 & 7 An Introduction to MPI. Originally by William Gropp and Ewing Lusk Argonne National Laboratory Adapted by Anda Iamnitchi. Outline. Background The message-passing model Origins of MPI and current status Sources of further MPI information Basics of MPI message passing - PowerPoint PPT Presentation
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PDS Lectures 6 & 7 An Introduction to MPI
Originally by William Gropp and Ewing Lusk
Argonne National Laboratory
Adapted by Anda Iamnitchi
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Outline Background
The message-passing model Origins of MPI and current status Sources of further MPI information
Basics of MPI message passing Hello, World! Fundamental concepts Simple examples in Fortran and C
Extended point-to-point operations non-blocking communication Modes
Collective operations
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The Message-Passing Model
A process is (traditionally) a program counter and address space.
Processes may have multiple threads (program counters and associated stacks) sharing a single address space. MPI is for communication among processes, which have separate address spaces.
Interprocess communication consists of Synchronization Movement of data from one process’s address space to
another’s.
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Types of Parallel Computing Models (review)
Data Parallel - the same instructions are carried out simultaneously on multiple data items (SIMD)
Task Parallel - different instructions on different data (MIMD) SPMD (single program, multiple data) not synchronized at
individual operation level SPMD is equivalent to MIMD since each MIMD program can be
made SPMD (similarly for SIMD, but not in practical sense.)
Message passing (and MPI) is for MIMD/SPMD parallelism.
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Cooperative Operations for Communication
The message-passing approach makes the exchange of data cooperative.
Data is explicitly sent by one process and received by another. An advantage is that any change in the receiving process’s
memory is made with the receiver’s explicit participation. Communication and synchronization are combined.
Process 0 Process 1
Send(data)
Receive(data)
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One-Sided Operations for Communication One-sided operations between processes include remote
memory reads and writes Only one process needs to explicitly participate. An advantage is that communication and synchronization are
decoupled One-sided operations are part of MPI-2.
Process 0 Process 1
Put(data)
(memory)
(memory)
Get(data)
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What is MPI? A message-passing library specification
extended message-passing model not a language or compiler specification not a specific implementation or product
For parallel computers, clusters, and heterogeneous networks
Designed to provide access to advanced parallel hardware for end users library writers tool developers
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A Minimal MPI Program (C)
#include "mpi.h"
#include <stdio.h>
int main( int argc, char *argv[] )
{
MPI_Init( &argc, &argv );
printf( "Hello, world!\n" );
MPI_Finalize();
return 0;
}
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Finding Out About the Environment Two important questions that arise early in a
parallel program are: How many processes are participating in this
computation? Which one am I?
MPI provides functions to answer these questions: MPI_Comm_size reports the number of processes. MPI_Comm_rank reports the rank, a number between 0
and size-1, identifying the calling process
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Better Hello (C)
#include "mpi.h"#include <stdio.h>
int main( int argc, char *argv[] ){ int rank, size; MPI_Init( &argc, &argv ); MPI_Comm_rank( MPI_COMM_WORLD, &rank ); MPI_Comm_size( MPI_COMM_WORLD, &size ); printf( "I am %d of %d\n", rank, size ); MPI_Finalize(); return 0;}
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MPI Basic Send/Receive
We need to fill in the details in
Things that need specifying: How will “data” be described? How will processes be identified? How will the receiver recognize/screen messages? What will it mean for these operations to complete?
Process 0 Process 1
Send(data)
Receive(data)
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What is message passing?
Data transfer plus synchronization
• Requires cooperation of sender and receiver• Cooperation not always apparent in code
DataProcess 0
Process 1
May I Send?
Yes
DataData
DataData
DataData
DataData
Time
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Some Basic Concepts
Processes can be collected into groups. Each message is sent in a context, and must be
received in the same context. A group and context together form a communicator. A process is identified by its rank in the group
associated with a communicator. There is a default communicator whose group
contains all initial processes, called MPI_COMM_WORLD.
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MPI Datatypes
The data in a message to sent or received is described by a triple (address, count, datatype), where
An MPI datatype is recursively defined as: predefined, corresponding to a data type from the language
(e.g., MPI_INT, MPI_DOUBLE_PRECISION) a contiguous array of MPI datatypes a strided block of datatypes an indexed array of blocks of datatypes an arbitrary structure of datatypes
There are MPI functions to construct custom datatypes, such an array of (int, float) pairs, or a row of a matrix stored columnwise.
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MPI Tags
Messages are sent with an accompanying user-defined integer tag, to assist the receiving process in identifying the message.
Messages can be screened at the receiving end by specifying a specific tag, or not screened by specifying MPI_ANY_TAG as the tag in a receive.
Some non-MPI message-passing systems have called tags “message types”. MPI calls them tags to avoid confusion with datatypes.
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MPI Basic (Blocking) Send
MPI_SEND (start, count, datatype, dest, tag, comm)
The message buffer is described by (start, count, datatype). The target process is specified by dest, which is the rank of the
target process in the communicator specified by comm. When this function returns, the data has been delivered to the
system and the buffer can be reused. The message may not have been received by the target process.
MPI_Send(buf, count, datatype, dest, tag, comm)
Address of
Number of items
Datatype of
Rank of destination
Message tag
Communicator
send buffer
to send
each item
process
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MPI Basic (Blocking) Receive
MPI_RECV(start, count, datatype, source, tag, comm, status) Waits until a matching (on source and tag) message is received
from the system, and the buffer can be used. source is rank in communicator specified by comm, or
MPI_ANY_SOURCE. status contains further information Receiving fewer than count occurrences of datatype is OK, but
receiving more is an error.
MPI_Recv(buf, count, datatype, src, tag, comm, status)
Address of
Maximum number
Datatype of
Rank of source
Message tag
Communicator
receive buffer
of items to receive
each item
process
Statusafter operation
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Example
To send an integer x from process 0 to process 1,
MPI_Comm_rank(MPI_COMM_WORLD,&myrank); /* find rank */
if (myrank == 0) {int x;MPI_Send(&x, 1, MPI_INT, 1, msgtag, MPI_COMM_WORLD);
} else if (myrank == 1) {int x;MPI_Recv(&x, 1, MPI_INT, 0, msgtag,MPI_COMM_WORLD,status);
}
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Retrieving Further Information
Status is a data structure allocated in the user’s program.
In C:int recvd_tag, recvd_from, recvd_count;MPI_Status status;MPI_Recv(..., MPI_ANY_SOURCE, MPI_ANY_TAG, ..., &status )
recvd_tag = status.MPI_TAG;recvd_from = status.MPI_SOURCE;MPI_Get_count( &status, datatype, &recvd_count );
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Why Datatypes?
Since all data is labeled by type, an MPI implementation can support communication between processes on machines with very different memory representations and lengths of elementary datatypes (heterogeneous communication).
Specifying application-oriented layout of data in memory reduces memory-to-memory copies in the implementation allows the use of special hardware (scatter/gather) when
available
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Tags and Contexts
Separation of messages used to be accomplished by use of tags, but this requires libraries to be aware of tags used by other libraries. this can be defeated by use of “wild card” tags.
Contexts are different from tags no wild cards allowed allocated dynamically by the system when a library sets up a
communicator for its own use. User-defined tags still provided in MPI for user convenience in
organizing application Use MPI_Comm_split to create new communicators
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Communicators
Defines scope of a communication operation.
Processes have ranks associated with communicator.
Initially, all processes enrolled in a “universe” called MPI_COMM_WORLD, and each process is given a unique rank, a number from 0 to p - 1, with p processes.
Other communicators can be established for groups of processes.
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MPI is Simple
Many parallel programs can be written using just these six functions, only two of which are non-trivial: MPI_INIT MPI_FINALIZE MPI_COMM_SIZE MPI_COMM_RANK MPI_SEND MPI_RECV
Point-to-point (send/recv) isn’t the only way...
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Introduction to Collective Operations in MPI
Collective operations are called by all processes in a communicator.
MPI_BCAST distributes data from one process (the root) to all others in a communicator.
MPI_REDUCE combines data from all processes in communicator and returns it to one process.
In many numerical algorithms, SEND/RECEIVE can be replaced by BCAST/REDUCE, improving both simplicity and efficiency.
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Example: PI in C -1#include "mpi.h"#include <math.h>int main(int argc, char *argv[])
{int done = 0, n, myid, numprocs, i, rc;double PI25DT = 3.141592653589793238462643;double mypi, pi, h, sum, x, a;MPI_Init(&argc,&argv);MPI_Comm_size(MPI_COMM_WORLD,&numprocs);MPI_Comm_rank(MPI_COMM_WORLD,&myid);while (!done) { if (myid == 0) { printf("Enter the number of intervals: (0 quits) "); scanf("%d",&n); } MPI_Bcast(&n, 1, MPI_INT, 0, MPI_COMM_WORLD); if (n == 0) break;
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Example: PI in C - 2 h = 1.0 / (double) n;
sum = 0.0; for (i = myid + 1; i <= n; i += numprocs) { x = h * ((double)i - 0.5); sum += 4.0 / (1.0 + x*x); } mypi = h * sum; MPI_Reduce(&mypi, &pi, 1, MPI_DOUBLE, MPI_SUM, 0, MPI_COMM_WORLD); if (myid == 0) printf("pi is approximately %.16f, Error is %.16f\n", pi, fabs(pi - PI25DT));}MPI_Finalize();
return 0;
}
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Alternative set of 6 Functions for Simplified MPI
MPI_INIT MPI_FINALIZE MPI_COMM_SIZE MPI_COMM_RANK MPI_BCAST MPI_REDUCE
What else is needed (and why)?
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Collective Communication
Involves set of processes, defined by an intra-communicator. Message tags not present. Principal collective operations:
MPI_Bcast() - Broadcast from root to all other processes MPI_Gather() - Gather values for group of processes MPI_Scatter() - Scatters buffer in parts to group of processes MPI_Alltoall() - Sends data from all processes to all processes MPI_Reduce() - Combine values on all processes to single value MPI_Reduce_scatter() - Combine values and scatter results MPI_Scan() - Compute prefix reductions of data on processes
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Example
To gather items from group of processes into process 0, using dynamically allocated memory in root process:
int data[10]; /*data to be gathered from processes*/MPI_Comm_rank(MPI_COMM_WORLD, &myrank); /* find rank */if (myrank == 0) {
MPI_Comm_size(MPI_COMM_WORLD, &grp_size); /*find group size*/buf = (int *)malloc(grp_size*10*sizeof (int)); /*allocate memory*/
}MPI_Gather(data,10,MPI_INT,buf,grp_size*10,MPI_INT,0,MPI_COMM_WORLD) ;
MPI_Gather() gathers from all processes, including root.
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Send a large message from process 0 to process 1 If there is insufficient storage at the destination, the send must wait for the user to provide the memory space
(through a receive) What happens with
Sources of Deadlocks
Process 0
Send(1)Recv(1)
Process 1
Send(0)Recv(0)
• This is called “unsafe” because it depends on the availability of system buffers
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Some Solutions to the “unsafe” Problem Order the operations more carefully:
Process 0
Send(1)Recv(1)
Process 1
Recv(0)Send(0)
Use non-blocking operations:
Process 0
Isend(1)Irecv(1)Waitall
Process 1
Isend(0)Irecv(0)Waitall
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MPI Nonblocking Routines
Nonblocking send - MPI_Isend() - will return “immediately” even before source location is safe to be altered.
Nonblocking receive - MPI_Irecv() - will return even if no message to accept.
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Nonblocking Routine Formats
MPI_Isend(buf,count,datatype,dest,tag,comm,request)
MPI_Irecv(buf,count,datatype,source,tag,comm, request)
Completion detected by MPI_Wait() and MPI_Test().
MPI_Wait() waits until operation completed and returns then.
MPI_Test() returns with flag set indicating whether operation completed at that time.
Need to know whether particular operation completed.
Determined by accessing request parameter.
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Example
To send an integer x from process 0 to process 1 and allow process 0 to continue,
MPI_Comm_rank(MPI_COMM_WORLD, &myrank); /* find rank */
if (myrank == 0) {
int x;
MPI_Isend(&x,1,MPI_INT, 1, msgtag, MPI_COMM_WORLD, req1);
compute();
MPI_Wait(req1, status);
} else if (myrank == 1) {
int x;
MPI_Recv(&x,1,MPI_INT,0,msgtag, MPI_COMM_WORLD, status);
}
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MPI-2 (available on C4 lab machines)Extends MPI-1 with: Dynamic Process Management
Dynamic process startup Dynamic establishment of connections
One-sided communication (Remote Memory Access) Put/get Other operations
Parallel I/O Other features
Bindings for C++/ Fortran-90; interlanguage issues Etc.
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MPI-2 Specifics: Parallel I/O
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/* example of sequential Unix write into a common file */#include "mpi.h"#include <stdio.h>#define BUFSIZE 100
int main(int argc, char *argv[]){ int i, myrank, numprocs, buf[BUFSIZE]; MPI_Status status; FILE *myfile;
MPI_Init(&argc, &argv); MPI_Comm_rank(MPI_COMM_WORLD, &myrank); MPI_Comm_size(MPI_COMM_WORLD, &numprocs); for (i=0; i<BUFSIZE; i++) buf[i] = myrank * BUFSIZE + i; if (myrank != 0) MPI_Send(buf, BUFSIZE, MPI_INT, 0, 99, MPI_COMM_WORLD); else { myfile = fopen("testfile", "w"); fwrite(buf, sizeof(int), BUFSIZE, myfile); for (i=1; i<numprocs; i++) { MPI_Recv(buf, BUFSIZE, MPI_INT, i, 99, MPI_COMM_WORLD, &status); fwrite(buf, sizeof(int), BUFSIZE, myfile); } fclose(myfile); } MPI_Finalize(); return 0;}
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#include "mpi.h"#include <stdio.h>#define BUFSIZE 100
int main(int argc, char *argv[]){ int i, myrank, buf[BUFSIZE]; char filename[128]; FILE *myfile;
MPI_Init(&argc, &argv); MPI_Comm_rank(MPI_COMM_WORLD, &myrank); for (i=0; i<BUFSIZE; i++) buf[i] = myrank * BUFSIZE + i; sprintf(filename, "testfile.%d", myrank); myfile = fopen(filename, "w"); fwrite(buf, sizeof(int), BUFSIZE, myfile); fclose(myfile); MPI_Finalize(); return 0;}
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/* example of parallel MPI write into a single file */#include "mpi.h"#include <stdio.h>#define BUFSIZE 100
int main(int argc, char *argv[]){ int i, myrank, buf[BUFSIZE]; MPI_File thefile;
MPI_Init(&argc, &argv); MPI_Comm_rank(MPI_COMM_WORLD, &myrank); for (i=0; i<BUFSIZE; i++) buf[i] = myrank * BUFSIZE + i; MPI_File_open(MPI_COMM_WORLD, "testfile", MPI_MODE_CREATE | MPI_MODE_WRONLY, MPI_INFO_NULL, &thefile); MPI_File_set_view(thefile, myrank * BUFSIZE * sizeof(int), MPI_INT, MPI_INT, "native", MPI_INFO_NULL); MPI_File_write(thefile, buf, BUFSIZE, MPI_INT, MPI_STATUS_IGNORE); MPI_File_close(&thefile); MPI_Finalize(); return 0;}
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C bindings for the I/O functions
int MPI_File_open(MPI_Comm comm, char *filename, int amode, MPI_Info info, MPI_File *fh)
int MPI_File_set_view(MPI_File fh, MPI_Offset disp, MPI_Datatype etype, MPI_Datatype filetype, char *datarep, MPI_Info info)
int MPI_File_write(MPI_File fh, void *buf, int count, MPI_Datatype datatype, MPI_Status *status)
int MPI_File_close(MPI_File *fh)
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Remote Memory Access
“window”: portion of each process’ address space that is explicitly exposes to remove memory operations by other processes in the MPI communication.
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RMA (cont)
Objectives and performance issues: balance efficiency and portability across several classes of
architectures, including SMPs, NUMAs, distributed-memory massively parallel processors (MPPs), heterogeneous networks;
retain the "look and feel" of MPI-1; deal with subtle memory behavior issues, such as cache
coherence and sequential consistency; and separate synchronization from data movement to enhance
performance.
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/* Compute pi by numerical integration, RMA version */#include "mpi.h"#include <math.h>int main(int argc, char *argv[]){ int n, myid, numprocs, i; double PI25DT = 3.141592653589793238462643; double mypi, pi, h, sum, x; MPI_Win nwin, piwin;
MPI_Init(&argc,&argv); MPI_Comm_size(MPI_COMM_WORLD,&numprocs); MPI_Comm_rank(MPI_COMM_WORLD,&myid);
if (myid == 0) { MPI_Win_create(&n, sizeof(int), 1, MPI_INFO_NULL, MPI_COMM_WORLD, &nwin); MPI_Win_create(&pi, sizeof(double), 1, MPI_INFO_NULL, MPI_COMM_WORLD, &piwin); } else { MPI_Win_create(MPI_BOTTOM, 0, 1, MPI_INFO_NULL, MPI_COMM_WORLD, &nwin); MPI_Win_create(MPI_BOTTOM, 0, 1, MPI_INFO_NULL, MPI_COMM_WORLD, &piwin); }
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while (1) { if (myid == 0) { printf("Enter the number of intervals: (0 quits) "); fflush(stdout); scanf("%d",&n); pi = 0.0; } MPI_Win_fence(0, nwin); if (myid != 0) MPI_Get(&n, 1, MPI_INT, 0, 0, 1, MPI_INT, nwin); MPI_Win_fence(0, nwin); if (n == 0) break; else { h = 1.0 / (double) n; sum = 0.0; for (i = myid + 1; i <= n; i += numprocs) { x = h * ((double)i - 0.5); sum += (4.0 / (1.0 + x*x)); } mypi = h * sum; MPI_Win_fence( 0, piwin); MPI_Accumulate(&mypi, 1, MPI_DOUBLE, 0, 0, 1, MPI_DOUBLE, MPI_SUM, piwin); MPI_Win_fence(0, piwin); if (myid == 0) MPI_COMM_WORLD, &piwin); } else { MPI_Win_create(MPI_BOTTOM, 0, 1, MPI_INFO_NULL, MPI_COMM_WORLD, &nwin); MPI_Win_create(MPI_BOTTOM, 0, 1, MPI_INFO_NULL, MPI_COMM_WORLD, &piwin); }printf("pi is approximately %. 16f, Error is %. 16f/n", pi, fabs(pi - PI25DT)); } } MPI_Win_free(&nwin); MPI_Win_free(&piwin); MPI_Finalize(); return 0;}
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C bindings for the RMA functions used in the cpi exampleint MPI_Win_create(void *base, MPI_Aint size, int disp_unit,
MPI_Info info, MPI_Comm comm, MPI_Win *win)
int MPI_Win_fence(int assert, MPI_Win win)
int MPI_Get(void *origin_addr, int origin_count, MPI_Datatype origin_datatype,
int target_rank, MPI_Aint target_disp, int target_count, MPI_Datatype target_datatype, MPI_Win win)
int MPI_Accumulate(void *origin_addr, int origin_count, MPI_Datatype origin_datatype, int target_rank, MPI_Aint target_disp, int target_count, MPI_Datatype target_datatype, MPI_Op op, MPI_Win win)
int MPI_Win_free(MPI_Win *win)
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Dynamic Processes
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When to use MPI
Portability and Performance Irregular Data Structures Building Tools for Others
Libraries Need to Manage memory on a per processor basis
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When not to use MPI
Regular computation matches HPF/SIMD But see PETSc/HPF comparison (ICASE 97-72)
Solution (e.g., library) already exists http://www.mcs.anl.gov/mpi/libraries.html
Require Fault Tolerance Sockets
Distributed Computing CORBA, DCOM, etc.
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Error Handling
By default, an error causes all processes to abort.
The user can cause routines to return (with an error code) instead. In C++, exceptions are thrown (MPI-2)
A user can also write and install custom error handlers.
Libraries might want to handle errors differently from applications.
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Resources
On-line information (including tutorials): http://www.mcs.anl.gov/mpi/ https://computing.llnl.gov/tutorials/mpi/
Using MPI-2 advanced features of the message-passing interface, William Gropp ... [et al.]. E-book available from the USF library
The Standard itself: at http://www.mpi-forum.org All MPI official releases, in both postscript and HTML
Online examples available athttp://www.mcs.anl.gov/mpi/tutorials/perf
ftp://ftp.mcs.anl.gov/mpi/mpiexmpl.tar.gz contains source code and run scripts that allows you to evaluate an MPI implementation