finally I managed to train a network from a file :) Now I want to print the nodes and the weights, especially the weights, because I want to train the network with pybrain and then implement a NN somewhere else that will use it.

I need a way to print the layers, the nodes and the weight between nodes, so that I can easily replicate it. So far I see I can access the layers using n['in'] for example, and then for example I can do:

dir(n['in']) ['class', 'delattr', 'dict', 'doc', 'format', 'getattribute', 'hash', 'init', 'module', 'new', 'reduce', 'reduce_ex', 'repr', 'setattr', 'sizeof', 'str', 'subclasshook', 'weakref', '_backwardImplementation', '_forwardImplementation', '_generateName', '_getName', '_growBuffers', '_name', '_nameIds', '_resetBuffers', '_setName', 'activate', 'activateOnDataset', 'argdict', 'backActivate', 'backward', 'bufferlist', 'dim', 'forward', 'getName', 'indim', 'inputbuffer', 'inputerror', 'name', 'offset', 'outdim', 'outputbuffer', 'outputerror', 'paramdim', 'reset', 'sequential', 'setArgs', 'setName', 'shift', 'whichNeuron']

but I dont see how I can access the weights here. There is also the params attribute, for example my network is 2 4 1 with bias, and it says:

n.params array([-0.8167133 , 1.00077451, -0.7591257 , -1.1150532 , -1.58789386, 0.11625991, 0.98547457, -0.99397871, -1.8324281 , -2.42200963, 1.90617387, 1.93741167, -2.88433965, 0.27449852, -1.52606976, 2.39446258, 3.01359547])

Hard to say what is what, at least with weight connects which nodes. That's all I need.

3 Answers 3


There are many ways to access the internals of a network, namely through its "modules" list or its "connections" dictionary. Parameters are stored within those connections or modules. For example, the following should print all this information for an arbitrary network:

for mod in net.modules:
    print("Module:", mod.name)
    if mod.paramdim > 0:
        print("--parameters:", mod.params)
    for conn in net.connections[mod]:
        print("-connection to", conn.outmod.name)
        if conn.paramdim > 0:
             print("- parameters", conn.params)
    if hasattr(net, "recurrentConns"):
        print("Recurrent connections")
        for conn in net.recurrentConns:
            print("-", conn.inmod.name, " to", conn.outmod.name)
            if conn.paramdim > 0:
                print("- parameters", conn.params)

If you want something more fine-grained (on the neuron level instead of layer level), you will have to further decompose those parameter vectors -- or, alternatively, construct your network from single-neuron-layers.

  • can I consider that results in order? so that 3 consecutive numbers are the weights from the same neuron?
    – Dr Sokoban
    Commented Dec 3, 2011 at 11:40
  • I used the code above. Can you explain how it exactly works? I have another question.The number of in_to_hiddens in my network is 5200.Using the code above it is written like that:[ 1.55300577 -0.62533809 -0.08147982 ..., 1.29706926 0.50138988 ] But I need all of them not some dots. What should I do?? Thanks Commented May 1, 2017 at 7:36
  • Would you please answer my question. I m getting crazy. It seems that I just cant finish my thesis. Commented May 6, 2017 at 5:43

Try this, it worked for me:

def pesos_conexiones(n):
    for mod in n.modules:
        for conn in n.connections[mod]:
            print conn
            for cc in range(len(conn.params)):
                print conn.whichBuffers(cc), conn.params[cc]

The result should be like:

<FullConnection 'co1': 'hidden1' -> 'out'>
(0, 0) -0.926912942354
(1, 0) -0.964135087592
<FullConnection 'ci1': 'in' -> 'hidden1'>
(0, 0) -1.22895643048
(1, 0) 2.97080368887
(2, 0) -0.0182867906276
(3, 0) 0.4292544603
(4, 0) 0.817440427069
(0, 1) 1.90099230604
(1, 1) 1.83477578625
(2, 1) -0.285569867513
(3, 1) 0.592193396226
(4, 1) 1.13092061631

Maybe this helps (PyBrain for Python 3.2)?

Python 3.2 (r32:88445, Feb 20 2011, 21:29:02) [MSC v.1500 32 bit (Intel)] on win32
Type "help", "copyright", "credits" or "license" for more information.
>>> from pybrain.tools.shortcuts import buildNetwork
>>> from pybrain.structure.modules.tanhlayer import TanhLayer
>>> from pybrain.structure.modules.softmax import SoftmaxLayer
>>> net = buildNetwork(4, 3, 1,bias=True,hiddenclass = TanhLayer, outclass =   SoftmaxLayer)
>>> print(net)
[<BiasUnit 'bias'>, <LinearLayer 'in'>, <TanhLayer 'hidden0'>, <SoftmaxLayer 'out'>]
[<FullConnection 'FullConnection-4': 'hidden0' -> 'out'>, <FullConnection   'FullConnection-5': 'bias' -> 'out'>, <FullConnection
'FullConnection-6': 'bias' -> 'hidden0'>, <FullConnection 'FullConnection-7': 'in' -> 'hidden0'>]

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.