OpenCL-based Nengo Simulator¶
NengoOCL is an OpenCL-based simulator for
brain models built using Nengo.
It can be orders of magnitude faster than the reference simulator
in nengo
for large models.
Usage¶
To use the nengo_ocl
project’s OpenCL simulator,
build a Nengo model as usual,
but use nengo_ocl.Simulator
when creating a simulator for your model:
import numpy as np
import matplotlib.pyplot as plt
import nengo
import nengo_ocl
# define the model
with nengo.Network() as model:
stim = nengo.Node(np.sin)
a = nengo.Ensemble(100, 1)
b = nengo.Ensemble(100, 1)
nengo.Connection(stim, a)
nengo.Connection(a, b, function=lambda x: x**2)
probe_a = nengo.Probe(a, synapse=0.01)
probe_b = nengo.Probe(b, synapse=0.01)
# build and run the model
with nengo_ocl.Simulator(model) as sim:
sim.run(10)
# plot the results
plt.plot(sim.trange(), sim.data[probe_a])
plt.plot(sim.trange(), sim.data[probe_b])
plt.show()
If you are running within nengo_gui
make sure the PYOPENCL_CTX
environment variable has been set. If this variable is not set it will open
an interactive prompt which will cause nengo_gui
to get stuck during build.
Dependencies and Installation¶
The requirements are the same as Nengo, with the additional Python packages
mako
and pyopencl
(where the latter requires installing OpenCL).
General:
Python 2.7+ or Python 3.3+ (same as Nengo)
One or more OpenCL implementations (test with e.g. PyOpenCl)
A working installation of OpenCL is the most difficult part of installing NengoOCL. See below for more details on how to install OpenCL.
Python packages:
NumPy
nengo
mako
PyOpenCL
In the ideal case, all of the Python dependencies
will be automatically installed when installing nengo_ocl
with
pip install nengo-ocl
If that doesn’t work, then do a developer install to figure out what’s going wrong.
Developer Installation¶
First, pip install nengo
.
For best performance, first make sure a fast version of Numpy is installed
by following the instructions in the
Nengo README.
This repository can then be installed with:
git clone https://github.com/nengo/nengo-ocl.git
cd nengo-ocl
python setup.py develop --user
If you’re using a virtualenv
(recommended!)
then you can omit the --user
flag.
Check the output to make sure everything installed correctly.
Some dependencies (e.g. pyopencl
) may require manual installation.
Installing OpenCL¶
How you install OpenCL is dependent on your hardware and operating system. A good resource for various cases is found in the PyOpenCL documentation:
Below are instructions that have worked for the NengoOCL developers at one point in time.
AMD OpenCL on Debian Unstable¶
On Debian unstable (sid) there are packages in non-free and contrib
to install AMD’s OpenCL implementation easily.
Actually, the easiest thing would be to apt-get install
python-pyopencl.
But if you’re using a virtual environment, you can
sudo apt-get install opencl-headers libboost-python-dev amd-opencl-icd amd-libopencl1
and then pip install pyopencl
.
Nvidia OpenCL on Debian/Ubuntu Linux¶
On Debian unstable (sid) there are packages for installing the Nvidia OpenCL implementation as well.
sudo apt-get install nvidia-opencl-common nvidia-libopencl1
Ensure that the Nvidia driver version matches the OpenCL library version.
You can check the Nvidia driver version by running nvidia-smi
in the
command line. You can find the OpenCL library version by looking at the
libnvidia-opencl.so.XXX.XX file in the /usr/lib/x86_64-linux-gnu/
folder.
Intel OpenCL on Debian/Ubuntu Linux¶
The Intel SDK for OpenCL is no longer available. Intel OpenCL drivers can be found on Intel’s website. See the PyOpenCL wiki for instructions.
Running Tests¶
From the nengo-ocl
source directory, run:
py.test nengo_ocl/tests --pyargs nengo -v
This will run the tests using the default context. If you wish to use another
context, configure it with the PYOPENCL_CTX
environment variable
(run the Python command pyopencl.create_some_context()
for more info).