GooFit is a massively-parallel framework, written in CUDA, for doing maximum-likelihood fits. It is also possible to build GooFit using OpenMP.
Requirements
- If using CUDA:
- CUDA 4.2 or 5.0
- An nVidia GPU supporting compute capability at least 2.0
- If building for OpenMP:
- a compiler supporting OpenMP
Installation
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Clone with git:
git clone git://github.com/GooFit/GooFit.git
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check that the path setting in Makefile for CUDALOCATION is correct for your system
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If using OpenMP, CUDALOCATION should point at ./fakecuda
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Set TARGET_OMP = 1 in the Makefile
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Put ./fakcuda on your PATH, e.g. export PATH=$PATH:$HOME/GooFit/fakecuda (n.b. the use of g++ is hardwired in fakecuda/nvcc; this is bad)
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Install a copy of CUDA's thrust in ./thrust (there's nothing to compile)
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then compile with gmake.
As an alternative to modifying the Makefile, you can pass the values as e.g. gmake CUDALOCATION=$HOME/Src/GooFit/fakecuda TARGET_OMP=1
Building the Examples Fits
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If you have Root on your system,
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set the path to full root installation (bash syntax) export ROOTSYS=
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If you don't have Root, do NOT set ROOTSYS
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check that the path setting in examples/simpleFit/Makefile for CUDALOCATION is correct for your system
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If using OpenMP, CUDALOCATION should point at ./fakecuda
-
Set TARGET_OMP = 1 in the Makefile
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change to the examples/simpleFit directory and buid the program(s): cd examples/simpleFit ; gmake all (you'll recall that you can set CUDALOCATION and TARGET_OMP on the command line instead of modifying the Makefile)
Running the Example Fit
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Setup the bin and library paths for root
export PATH=$PATH:$ROOTSYS/bin:. # On Linux: export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:$ROOTSYS/lib:<GooFit path>/rootstuff # On Mac: export DYLD_LIBRARY_PATH=$DYLD_LIBRARY_PATH:$ROOTSYS/lib:<GooFit path>/rootstuff
(If you don't have Root, don't modify the PATH and omit $ROOTSYS/lib:)
- To run the simple fit example type: ./simpleFitExample (If you didn't define ROOTSYS the data and fits will be written to stdout)
Acknowledgement
GooFit's development has been supported by the National Science Foundation under grant number NSF-1005530. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the developers and do not necessarily reflect the views of the National Science Foundation.