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* Do NOT use 'runmpi' directly. This will be called for you by the program you give the --parallel option to. | * Do NOT use 'mpirun' directly. This will be called for you by the program you give the --parallel option to. |
MPI Parallelism
MPI stands for 'Message Passing Interface', and over the last decade it has become the de-facto standard for running large scale computations on Linux clusters around the world. In most supercomputing centers this will be the ONLY option you have for running in parallel, and administrators may be actively hostile to trying to make use of any non-MPI software on their clusters.
PLEASE NOTE: Using MPI on any cluster is not a task for linux/unix novices. You must have a fair bit of education to understand what's involved in using MPI with any program (not just EMAN). You should be comfortable with running MPI jobs before attempting this with EMAN2. If necessary you may need to consult a cluster administrator for assistance. There is enough variation between different specific linux clusters that we cannot provide specific advice for every situation. We have tried to provide as much generic advice as possible, but this is often not going to be a cookie-cutter operation.
Installing MPI Support in EMAN2/SPARX
SPARX and EMAN2 have merged their MPI support efforts, and as of 4/19/2013, the legacy EMAN2 MPI system has been retired. To install the current combined system, start at the installation page: http://blake.bcm.edu/emanwiki/EMAN2/Parallel/PyDusa
When you have completed the above installation, return to this page to find out how to use MPI from within EMAN2.
Testing EMAN2 MPI installation
There is a special script in EMAN2/examples' called mpi_test.py. Once you have EMAN2 and Pydusa installed, you can use this script to test the basic MPI setup. Make a batch queuing script (described below), and in the script, put: mpirun <path to python> $EMAN2DIR/examples/mpi_test.py <path to python> can be found on the first line of any of the EMAN2 programs, eg - "head -1 $EMAN2DIR/bin/e2proc2d.py" This program will produce console output describing the success or failure of the MPI job. If this script succeeds, then it is very likely that an EMAN2 program using the --parallel option will also succeed.
Once you have EMAN2 and pydusa installed, usage should be straightforward. EMAN2 has a modular parallelism system, supporting several types of parallel computing, not just MPI. All of these parallelism systems use a common syntax. For EMAN2 commands which can run in parallel, to use MPI parallelism, the basic syntax is: for example: There are some clusters which don't have this. There is an experimental nocache option (--parallel=mpi:64:/tmp:nocache) which MAY help with this. Contact sludtke@bcm.edu if you have problems.
By default, EMAN2 runs mpirun with the --n <ncpus> option, and gets the list of available nodes from the batch queuing system. If you need to specify a different set of options (for example, if you aren't using PBS or SGE, and you want to specify a nodefile), you can set the environment varaible "EMANMPIOPTS". This variable will replace -n <ncpus> on the command line.
A cluster is a shared computing environment. Limited resources must be allocated for many different users and jobs all at the same time. To run a job on most clusters, you must formulate a request in the form of a text file containing the details about your job. These details include, the number of processors you want, how long the job is expected to run, perhaps the amount of RAM you will need, etc. This text file is called a 'batch script' and is submitted to the 'Batch Queuing System' (BQS) on your cluster. The BQS then decides when and where your job will be run, and communicates information about which specific processors to use to your job when launched. The BQS (allocates resources and launches jobs) is independent of MPI (runs jobs on allocated resources). There are several common BQS systems you may encounter. We cannot cover every possibility here, so you need to consult with your local cluster policy information for details on how to submit jobs using your BQS. We will provide examples for OpenPBS and SGE, which are two of the more common BQS systems out there. Even then, the details may vary a little from cluster to cluster. These examples just give you someplace to start.
Here is an example of a batch script for PBS-based systems: If this file were called, for example, test.pbs, you would then submit the job to the cluster by saying There are additional options you can use with the qsub command as well. See your local cluster documentation for details on what is required/allowed. The e2bdb.py -c command is a good idea to make sure that the compute nodes will see any recent changes you've made to images in the project.
This is another popular queuing system, which uses 'qsub' and 'qstat' commands much like OpenPBS/Torque does. Configuration, however, is completely different. Here is an example of an SGE script to run a refinement with e2refine.py using mpich:
Prepare the batch file appropriate for your cluster. Do not try to use 'mpirun' or 'mpiexec' directly on any EMAN programs. Instead, add the '--parallel=mpi:<n>:/path/to/scratch[:nocache]' option to an EMAN2 command like e2refine.py. Some commands do not support the --parallel option, and trying to run them using mpirun will not accomplish anything useful. replace <n> with the total number of processors you have requested (these number must match exactly) If you need to pass special options to mpirun (like a hostfile), you can use the EMANMPIOPTS shell variable, but most users should not need this. When you run into problems (note I say when, not if), and you have exhausted any local MPI experts, please feel free to email me (sludtke@bcm.edu). Once you have things properly configured, you should be able to use MPI routinely, but getting there may be a painful process on some clusters. Don't get too discouraged. Using MPI in EMAN2
--parallel=mpi:<nproc>:/path/to/scratch
e2refine.py ... --parallel=mpi:64:/scratch/stevel
Special Options to mpirun
Batch Queuing systems
How to create a script to run jobs on the cluster
OpenPBS/Torque
# All lines starting with "#PBS" are PBS commands
#
# The following line asks for 10 nodes, each of which has 12 processors, for a total of 120 CPUs.
# The walltime is the maximum length of time your job will be permitted to run. If it is too small, your
# job will be killed before it's done. If it's too long, however, your job may have to wait a looong
# time before the cluster starts running it (depends on local policy).
#PBS -l nodes=10:ppn=12
#PBS -l walltime=120:00:00
# This prints the list of nodes your job is running on to the output file
cat $PBS_NODEFILE
# cd to your project directory
cd /home/stevel/data/myproject
# Now the actual EMAN2 command(s). Note the --parallel option at the end. The number of CPUs must match the number specified above
e2refine.py --input=bdb:sets#set-q5_phase_flipped --mass=1500 --apix=1.8 --automask3d=0.8,36,4,6,36 --iter=4 --sym=c4 --model=bdb:refine_05#threed_03 --path=refine_07 --orientgen=eman:delta=2.5:inc_mirror=0:perturb=1 --projector=standard --simcmp=frc:snrweight=1:zeromask=1:maxres=12 --simalign=rotate_translate_flip_iterative --simralign=refine --simraligncmp=ccc --simaligncmp=ccc --classcmp=frc:snrweight=1:zeromask=1:maxres=12 --classalign=rotate_translate_flip_iterative --classralign=refine --classraligncmp=ccc --classaligncmp=ccc --classkeep=2.5 --classnormproc=normalize.edgemean --classaverager=mean --classiter=1 --sep=3 --m3diter=2 --m3dkeep=0.7 --recon=fourier --m3dpreprocess=normalize.edgemean --m3dpostprocess=filter.lowpass.gauss:cutoff_freq=.06 --pad=320 --classkeepsig --m3dsetsf --twostage=2 --parallel=mpi:120:/localscratch/stevel
# Good idea to do this at the end
e2bdb.py -cF
e2bdb.py -c
qsub test.pbs
SGE (Sun Grid Engine)
#$ -S /bin/bash
#$ -V
#$ -N refine4
#$ -cwd
#$ -j y
#$ -pe mpich 40
e2refine.py --input=bdb:sets#set2-allgood_phase_flipped-hp --mass=1200.0 --apix=2.9 --automask3d=0.7,24,9,9,24 --iter=1 --sym=c1 --model=bdb:refine_02#threed_filt_05 --path=refine_sge --orientgen=eman:delta=3:inc_mirror=0 --projector=standard --simcmp=frc:snrweight=1:zeromask=1 --simalign=rotate_translate_flip --simaligncmp=ccc --simralign=refine --simraligncmp=frc:snrweight=1 --twostage=2 --classcmp=frc:snrweight=1:zeromask=1 --classalign=rotate_translate_flip --classaligncmp=ccc --classralign=refine --classraligncmp=frc:snrweight=1 --classiter=1 --classkeep=1.5 --classnormproc=normalize.edgemean --classaverager=ctf.auto --sep=5 --m3diter=2 --m3dkeep=0.9 --recon=fourier --m3dpreprocess=normalize.edgemean --m3dpostprocess=filter.lowpass.gauss:cutoff_freq=.1 --pad=256 --lowmem --classkeepsig --classrefsf --m3dsetsf -v 2 --parallel=mpi:40:/scratch/username
e2bdb.py -cF
Summary