# Good open-source neural network Python library?

I'm looking for a good (and, if possible, simple) open-source Python library to do neural network computations. It should be able to deal with multiple-layer networks and back-propagation learning.

Speed of implementation does not really matter for me.

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Take a look at: http://pybrain.org/

Seems to have fairly complete documentations as well: http://pybrain.org/docs/

If that doesn't support your needs, check the PyPI there were several NN libraries last I checked.

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PyBrain seems fairly complete and do not need additional tools to work. Thanks! –  Etienne Membrives Feb 17 '10 at 1:52
I use pybrain and find it very easy to use, well documented and easy to customize –  bgbg Apr 14 '11 at 11:00
swanson, Did you try neurolab? My personal needs for the library are that it should be well-documented, easy to customize, easy to read the source files in order to learn algorithms that are implemented. It does not much matter now that how fast the library is. –  Thorn Jul 17 '13 at 20:21

There is a module called FFnet, but I don't recommend it. It is originally written in Fortran and you must compile it yourself. and it depends on tons of other software, that is difficult to aquire and a headache to install. But it's fast!

I just use a pure Python implementation of back propagating neural networks I found floating around on the Internet one day. Here it is in full if you need it.

``````# Back-Propagation Neural Networks
#
# Written in Python.  See http://www.python.org/
# Placed in the public domain.
# Neil Schemenauer <nas@arctrix.com>

import math
import random
import string

random.seed(0)

# calculate a random number where:  a <= rand < b
def rand(a, b):
return (b-a)*random.random() + a

# Make a matrix (we could use NumPy to speed this up)
def makeMatrix(I, J, fill=0.0):
m = []
for i in range(I):
m.append([fill]*J)
return m

# our sigmoid function, tanh is a little nicer than the standard 1/(1+e^-x)
def sigmoid(x):
return math.tanh(x)

# derivative of our sigmoid function, in terms of the output (i.e. y)
def dsigmoid(y):
return 1.0 - y**2

class NN:
def __init__(self, ni, nh, no):
# number of input, hidden, and output nodes
self.ni = ni + 1 # +1 for bias node
self.nh = nh
self.no = no

# activations for nodes
self.ai = [1.0]*self.ni
self.ah = [1.0]*self.nh
self.ao = [1.0]*self.no

# create weights
self.wi = makeMatrix(self.ni, self.nh)
self.wo = makeMatrix(self.nh, self.no)
# set them to random vaules
for i in range(self.ni):
for j in range(self.nh):
self.wi[i][j] = rand(-0.2, 0.2)
for j in range(self.nh):
for k in range(self.no):
self.wo[j][k] = rand(-2.0, 2.0)

# last change in weights for momentum
self.ci = makeMatrix(self.ni, self.nh)
self.co = makeMatrix(self.nh, self.no)

def update(self, inputs):
if len(inputs) != self.ni-1:
raise ValueError, 'wrong number of inputs'

# input activations
for i in range(self.ni-1):
#self.ai[i] = sigmoid(inputs[i])
self.ai[i] = inputs[i]

# hidden activations
for j in range(self.nh):
summ = 0.0
for i in range(self.ni):
summ = summ + self.ai[i] * self.wi[i][j]
self.ah[j] = sigmoid(summ)

# output activations
for k in range(self.no):
summ = 0.0
for j in range(self.nh):
summ = summ + self.ah[j] * self.wo[j][k]
self.ao[k] = sigmoid(summ)

return self.ao[:]

def backPropagate(self, targets, N, M):
if len(targets) != self.no:
raise ValueError, 'wrong number of target values'

# calculate error terms for output
output_deltas = [0.0] * self.no
for k in range(self.no):
error = targets[k]-self.ao[k]
output_deltas[k] = dsigmoid(self.ao[k]) * error

# calculate error terms for hidden
hidden_deltas = [0.0] * self.nh
for j in range(self.nh):
error = 0.0
for k in range(self.no):
error = error + output_deltas[k]*self.wo[j][k]
hidden_deltas[j] = dsigmoid(self.ah[j]) * error

# update output weights
for j in range(self.nh):
for k in range(self.no):
change = output_deltas[k]*self.ah[j]
self.wo[j][k] = self.wo[j][k] + N*change + M*self.co[j][k]
self.co[j][k] = change
#print N*change, M*self.co[j][k]

# update input weights
for i in range(self.ni):
for j in range(self.nh):
change = hidden_deltas[j]*self.ai[i]
self.wi[i][j] = self.wi[i][j] + N*change + M*self.ci[i][j]
self.ci[i][j] = change

# calculate error
error = 0.0
for k in range(len(targets)):
error = error + 0.5*(targets[k]-self.ao[k])**2
return error

def test(self, patterns):
for p in patterns:
print p[0], '->', self.update(p[0])

def weights(self):
print 'Input weights:'
for i in range(self.ni):
print self.wi[i]
print
print 'Output weights:'
for j in range(self.nh):
print self.wo[j]

def train(self, patterns, iterations=1000, N=0.5, M=0.1):
# N: learning rate
# M: momentum factor
for i in xrange(iterations):
error = 0.0
for p in patterns:
inputs = p[0]
targets = p[1]
self.update(inputs)
error = error + self.backPropagate(targets, N, M)
if i % 100 == 0:
pass #print 'error %-14f' % error

def demo():
# Teach network XOR function
pat = [
[[0,0], [0]],
[[0,1], [1]],
[[1,0], [1]],
[[1,1], [0]]
]

# create a network with two input, two hidden, and one output nodes
n = NN(2, 2, 1)
# train it with some patterns
n.train(pat)
# test it
n.test(pat)

if __name__ == '__main__':
demo()
``````
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You should check out PyNN, an engine/algorithm agnostic neural network simulation framework. It has backends for several simulators including NEURON, NEST, PCSIM and Brian. I have limited experience with PyNN beyond very small projects, but I found it useful and well written.

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If we look at python frontends/bindings, there is also the Fast Artificial Neural Network Library (leenissen.dk/fann) that looks good. –  Etienne Membrives Feb 17 '10 at 21:18
PyNN is more to simulate biological neural networks, whereas PyBrain is more a general machine learning framework (for research mostly). –  Wernight Dec 16 '13 at 16:06

I use that: http://neurolab.googlecode.com - all networks in one lib! (http://packages.python.org/neurolab - docs)

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Did you try pybrain? My personal needs for the library are that it should be well-documented, easy to customize, easy to read the source files in order to learn algorithms that are implemented. It does not much matter now that how fast the library is. –  Thorn Jul 17 '13 at 20:21

Fantastic Math expression compiler with all the dirty tricks for neural networks. Computes all the gradients for you, making back-prop almost too easy.

I highly recommend spending some time in the deeplearning.net tutorials too. Fantastic Stuff.

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There's also deeplearning.net/software/pylearn2 -- the documentation isn't as thorough as Theano, but it's by the same team. They've coded up all sorts of network architectures in this tool. –  lmjohns3 Oct 11 '13 at 21:11

The bible for Fast Artificial Neural Networks is FANN. It is very complete, it is the fastest one, it is widely used, it is open source and it is implemented in C, but it also has python bindings.

Here you can find a speed comparison with PyBrain: http://chat.stackexchange.com/transcript/116/2011/12/28/1-5

I wonder why no one suggested this one...

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Conx is a open-source neural network library written in Python, using numpy/Numeric, that has been around for more than 10 years. Recently it has been made to also work without numpy (using a pure-Python replacement) and a C# replacement is under development for use with IronPython.

It implements backprop with a variety of activation functions, quickprop, cascade correlation, training with genetic algorithms, and some additional research-based alternatives (such as a feed-forward, backprop network with a front-end pattern balancing "governor" for dealing with catastrophic forgetting [1]).

Some materials on using it are here: http://pyrorobotics.org/?page=PyroModuleNeuralNetworks