np.ndarray型のデータをfor文に入れて,ニュラールネットを作成しているのですが,うまくいきません.どなたか,ご教示の程,よろしくお願い致します.以下にエラー文と該当箇所を記載いたします.
エラー文
2020-11-11 14:18:42.758237: I tensorflow/stream_executor/platform/default/dso_loader.cc:44]
Successfully opened dynamic library cudart64_100.dll
Traceback (most recent call last):
File "C:/Users/namae/Desktop/myo-python-1.0.4/bindsnet-master/bindsnet/preRSNN.py", line 95, in
<module>
network.run(inputs=inputs, time=time)
File "C:\Python36\lib\site-packages\bindsnet\network\network.py", line 312, in run
if len(inputs[key].size()) == 1:
TypeError: 'int' object is not callable
次にコード記載いたします.
import torch
from bindsnet.network import Network
from bindsnet.network.nodes import Input, LIFNodes
from bindsnet.network.topology import Connection
from bindsnet.network.monitors import Monitor
from include.data import get_data_set
import numpy as np
import tensorflow as
train_x, train_y = get_data_set()
_BATCH_SIZE = 300
_CLASS_SIZE = 6time = 100
network = Network(dt=1.0)
inpt = Input(n=100, sum_input=True)
middle = LIFNodes(n=100, trace=True)
center = LIFNodes(n=100, trace=True)
final = LIFNodes(n=100, trace=True)
out = LIFNodes(n=100, sum_input=True)
inpt_middle = Connection(source=inpt, target=middle, wmin=0, wmax=1e-1)
middle_center = Connection(source=middle, target=center, wmin=0, wmax=1e-1)
center_final = Connection(source=center, target=final, wmin=0, wmax=1e-1)
final_out = Connection(source=final, target=out, wmin=0, wmax=1e-1)network.add_layer(inpt, name='A')
network.add_layer(middle, name='B')
network.add_layer(center, name='C')
network.add_layer(final, name='D')
network.add_layer(out, name='E')
foward_connection = Connection(source=inpt, target=middle, w=0.05 + 0.1*torch.randn(inpt.n,
middle.n))
network.add_connection(connection=foward_connection, source="A", target="B")
foward_connection = Connection(source=middle, target=center, w=0.05 + 0.1*torch.randn(middle.n,
center.n))
network.add_connection(connection=foward_connection, source="B", target="C")
foward_connection = Connection(source=center, target=final, w=0.05 + 0.1*torch.randn(center.n,
final.n))
network.add_connection(connection=foward_connection, source="C", target="D")
foward_connection = Connection(source=final, target=out, w=0.05 + 0.1*torch.randn(final.n, out.n))
network.add_connection(connection=foward_connection, source="D", target="E")
recurrent_connection = Connection(source=out, target=out, w=0.025*(torch.eye(out.n)-1),)
network.add_connection(connection=recurrent_connection, source="E", target="E")
inpt_monitor = Monitor(obj=inpt, state_vars=("s","v"), time=500,)
middle_monitor = Monitor(obj=inpt, state_vars=("s","v"), time=500,)
center_monitor = Monitor(obj=inpt, state_vars=("s","v"), time=500,)
final_monitor = Monitor(obj=inpt, state_vars=("s","v"), time=500,)
out_monitor = Monitor(obj=inpt, state_vars=("s","v"), time=500,)
or l in network.layers:
m = Monitor(network.layers[l], state_vars=['s'], time=time)
network.add_monitor(m, name=l)
# network.to('cuda')
# トレーニングデータをロードする
# data_set = np.load("C:/Users/namae/Desktop/myo-python-1.0.4/myo-armband-nn-
master/data/train_set.npz")
npzfile = np.load("C:/Users/namae/Desktop/myo-python-1.0.4/myo-armband-nn-master/data/train_set.npz")
x = npzfile['x']
y = npzfile['y']
loader = zip(x, y)
def model(_NUM_CLASSES = 4):
x = tf.placeholder(tf.float32, shape=[None, 64], name='Input')
y = tf.placeholder(tf.float32, shape=[None, _NUM_CLASSES], name='Output')
return x, y
grads = {}
lr, lr_decay = 1e-2, 0.95
criterion = torch.nn.CrossEntropyLoss()
for i in enumerate(zip(x,y)):
inputs = {'A': x.repeat(time,1), 'E_b': torch.ones(time, 1)}
network.run(inputs=inputs, time=time)☚ここです
y = torch.tensor(y).long()
spikes = {l: network.monitor[l].get('s') for l in network.layers}
summed_inputs = {l: network.layers[l].summed for l in network.layers}
output = spikes['E'].sum(-1).softmax(0)
predicted = output.argmax(1).item()
# 損失とSGDの更新
grads['dl/df'] = summed_inputs['E'].softmax(0)
grads['dl/df'][y] -= 1
grads['dl/dw'] = torch.ger(summed_inputs['A'], grads['dl/df'])
network.connections['A','E'].w -= lr*grads['dl/dw']
# 減衰率
if i > 0 and i % 500 == 0:
lr = lr_decay
network.reset()