Tensorflow不同版本之间出现的错误

问题一:TypeError: Expected int32, got list containing Tensors of type ‘_Message’ instead.
tensorflow 函数tf.cocat([fw,bw],2)出错:
Expected int32, got list containing Tensors of type ‘_Message’ inst
查看原因是11版本的函数形式为:tf.concat(2,[fw,bw]),即应把串联的维度与串联值位置调换即可.

问题二:Input ‘split_dim’ of ‘Split’ Op has type float32 that does not match expected type of int32
This is because in Tensorflow versions < 0.12.0 the split function takes the arguments as:
x = tf.split(0, n_steps, x) # tf.split(axis, num_or_size_splits, value)
The tutorial you are working from was written for versions > 0.12.0, which has been changed to be consistent with Numpy’s split syntax:
x = tf.split(x, n_steps, 0) # tf.split(value, num_or_size_splits, axis)

**问题三:TypeError: concat() got an unexpected keyword argument ‘axis’
tf.concat(concat_dim=axis, values=inputs, name=name)**
修改为: tf.concat(inputs,1,name=name)

**问题四:ValueError: ‘size’ must be a 1-D Tensor of 2 elements
img = tf.image.resize_images(img, new_shape[0], new_shape[1])**
改为
img = tf.image.resize_images(img, new_shape)

问题五: ‘module’ object has no attribute ‘pack’
因为TF后面的版本修改了这个函数的名称,把 tf.pack 改为 tf.stack。
问题六:The value of a feed cannot be a tf.Tensor object. Acceptable feed values include Python scalars, strings, lists, or numpy ndarrays
数据集是feed输入的,feed的数据格式是有要求的
解决:img,label = sess.run[img,label],用返回值

**问题七:AttributeError: ‘module’ object has no attribute ‘per_image_whitening’
For anyone else who has this problem, per_image_whitening was replaced by per_image_standardization in v0.12.**

**问题八:AttributeError: ‘module’ object has no attribute ‘image_summary’
tf.image_summary should be renamed to tf.summary.image;**

问题九:AttributeError: ‘module’ object has no attribute ‘mul’
tf.mul(a,b) 这里的矩阵a和矩阵b的shape必须相等 tf.mul()是矩阵的element-wise相乘(即Hadamard乘积)
tf.matmul(a,b) 这里的矩阵a和矩阵b的shape应是a的行数对等与b的列数,tf.matmul()是矩阵的一般相乘。
解决:[tf.mul,tf.sub ] 和 [tf.neg] 不再使用,改为 [tf.multiply],[tf.subtract] 和 [tf.negative]。

问题十:AttributeError: ‘module’ object has no attribute ‘scalar_summary’
修改为:tf.summary.scalar(‘batch_loss’, loss)原因:新版本做了调整 …

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转载自blog.csdn.net/qq_34783311/article/details/80235671