This assignment is an introduction to parallel programming using a distributed memory model. Most of this page will be similar to the HW 2-1 page.
In this assignment, we will be parallelizing a toy particle simulation (similar simulations are used in mechanics, biology, and astronomy). In our simulation, particles interact by repelling one another. A run of our simulation is shown here:
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The particles repel one another, but only when closer than a cutoff distance highlighted around one particle in grey.
If we were to naively compute the forces on the particles by iterating through every pair of particles, then we would expect the asymptotic complexity of our simulation to be O(n^2).
However, in our simulation, we have chosen a density of particles sufficiently low so that with n particles, we expect only O(n) interactions. An efficient implementation can reach this time complexity.
Suppose we have a code that runs in time T = O(n) on a single processor. Then we'd hope to run close to time T/p when using p processors. After implementing an efficient serial O(n) solution, you will attempt to reach this speedup using MPI.
Dear remote students, we are thrilled to be a part of your parallel computing learning experience and to share these resources with you! To avoid confusion, please note that the assignment instructions, deadlines, and other assignment details posted here were designed for the local students. You should check with your local instruction team about submission, deadlines, job-running details, etc. and utilize Moodle for questions. With that in mind, the problem statement, source code, and references should still help you get started (just beware of institution-specific instructions). Best of luck and we hope you enjoy the assignment!
You must use the same groups as with HW2-1. If this is a problem, please privately contact the GSIs.
The starter code is available on Bitbucket at https://bitbucket.org/Berkeley-CS267/hw2-2.git and should work out of the box. To get started, we recommend you log in to Cori and download the first part of the assignment. This will look something like the following:
student@local:~> ssh demmel@cori.nersc.gov
student@cori04:~> git clone https://bitbucket.org/Berkeley-CS267/hw2-2.git
student@cori04:~> cd hw2-2
student@cori04:~/hw2-2> ls
CMakeLists.txt common.h job-mpi main.cpp mpi.cpp
There are five files in the base repository. Their purposes are as follows:
CMakeLists.txt
The build system that manages compiling your code.
main.cpp
A driver program that runs your code.
common.h
A header file with shared declarations
job-mpi
A sample job script to run the MPI executable
mpi.cpp - - - You may modify this file.
A skeleton file where you will implement your mpi simulation algorithm. It is your job to write an algorithm within the simulate_one_step and gather_for_save functions.
Please do not modify any of the files besides mpi.cpp.
First, we need to make sure that the CMake module is loaded and that the GNU compiler is selected.
student@cori04:~/hw2-2> module load cmake
student@cori04:~/hw2-2> module swap PrgEnv-intel PrgEnv-gnu
You should put these commands in your ~/.bash_profile.ext
file to avoid typing them every time you log in.
Next, let's build the code. CMake prefers out of tree builds, so we start by creating a build directory.
student@cori04:~/hw2-2> mkdir build
student@cori04:~/hw2-2> cd build
student@cori04:~/hw2-2/build>
Next, we have to configure our build. We can either build our code in Debug mode or Release mode. In debug mode, optimizations are disabled and debug symbols are embedded in the binary for easier debugging with GDB. In release mode, optimizations are enabled, and debug symbols are omitted. For example:
student@cori04:~/hw2-2/build> cmake -DCMAKE_BUILD_TYPE=Release ..
-- The C compiler identification is GNU 8.3.0
...
-- Configuring done
-- Generating done
-- Build files have been written to: /global/homes/s/student/hw2-2/build
Once our build is configured, we may actually execute the build:
student@cori04:~/hw2-2/build> make
Scanning dependencies of target mpi
[ 33%] Building CXX object CMakeFiles/mpi.dir/main.cpp.o
[ 66%] Building CXX object CMakeFiles/mpi.dir/mpi.cpp.o
[100%] Linking CXX executable mpi
[100%] Built target mpi
student@cori04:~/hw2-2/build> ls
CMakeCache.txt CMakeFiles cmake_install.cmake Makefile mpi job-mpi
We now have a binary (mpi) and a job script (job-mpi).
There will be two types of scaling that are tested for your parallel codes:
While the scripts we are providing have small numbers of particles 1000 to allow for the O(n2) algorithm to finish execution, the final codes should be tested with values much larger (50000-1000000) to better see their performance.
We will grade your assignment by reviewing your assignment write-up, measuring the scaling of the implementation, and benchmarking your code's raw performance. To benchmark your code, we will compile it with the exact process detailed above, with the GNU compiler. We will run your submissions on Cori's KNL processors.
Supposing your custom group name is XYZ, follow these steps to create an appropriate submission archive:
student@cori04:~/hw2-2/build> cmake -DGROUP_NAME=XYZ ..
student@cori04:~/hw2-2/build> make package
This second command will fail if the PDF is not present.
student@cori04:~/hw2-2/build> tar tfz cs267XYZ_hw2_2.tar.gz
cs267XYZ_hw2_2/cs267XYZ_hw2_2.pdf
cs267XYZ_hw2_2/mpi.cpp
Write-up Details
Notes: