天天看点

深度学习总结:Tensorboard可视化里面的events, graph, histogramTensorboard可视化里面的events, graph, histogram

Tensorboard可视化里面的events, graph, histogram

graph:显示整个静态图

tf.variable_scope就是用于放graph,tf.name_scope用的少了,因为w,b已经被封装了。

with tf.variable_scope('Inputs'):
    tf_x = tf.placeholder(tf.float32, x.shape, name='x')
    tf_y = tf.placeholder(tf.float32, y.shape, name='y')
           

histogram:显示权重的分布,也就是显示矩阵

with tf.variable_scope('Net'):
    l1 = tf.layers.dense(tf_x, 10, tf.nn.relu, name='hidden_layer')
    output = tf.layers.dense(l1, 1, name='output_layer')

    # add to histogram summary
    tf.summary.histogram('h_out', l1)
    tf.summary.histogram('pred', output)
           

evens:显示loss,也就是显示标量

loss = tf.losses.mean_squared_error(tf_y, output, scope='loss')
train_op = tf.train.GradientDescentOptimizer(learning_rate=0.5).minimize(loss)
tf.summary.scalar('loss', loss)     # add loss to scalar summary
           

这些东西需要放进一个文件里:需要建立一个问题,和建立一个放入的操作:

writer = tf.summary.FileWriter('./log', sess.graph)     # write to file
merge_op = tf.summary.merge_all()                       # operation to merge all summary
           

tensorflow是一个盒子,看东西必须借助一个工具,它的名字叫session.run():

_, result = sess.run([train_op, merge_op], {tf_x: x, tf_y: y})
    writer.add_summary(result, step)

           

去页面看图:

$ tensorboard --logdir path/to/log
           

继续阅读