creating a tensor from a list of numpy.ndarray is extremely slow Please consider converting the lis

我的代码如下

node_2_neg_list = [torch.LongTensor(node) for node in node_2_negative]

其中node_2_negative是一个list,里面有16个元素:
creating a tensor from a list of numpy.ndarray is extremely slow Please consider converting the lis_第1张图片
每个元素又是一个list,里面与10个元素:
在这里插入图片描述
而每个元素中又包含10个元素:
creating a tensor from a list of numpy.ndarray is extremely slow Please consider converting the lis_第2张图片
所以这是一个list嵌套list的情况,而我们执行上面的代码,提示信息:

creating a tensor from a list of numpy.ndarray is extremely slow  Please consider converting the list to a single numpy.ndarray with numpy.array() before converting to a tensor.

因此根据其实信息,我们需要将list先转成numpy.ndarray然后再转成tensor,原先的node_2_negative[0]数据如下:
creating a tensor from a list of numpy.ndarray is extremely slow Please consider converting the lis_第3张图片

然后转成ndarray类型:
creating a tensor from a list of numpy.ndarray is extremely slow Please consider converting the lis_第4张图片
这样就可以放心的把数据转为tensor了:

node_2_neg_list = [torch.LongTensor(np.array(node)) for node in node_2_negative]

你可能感兴趣的:(pytorch教程,list,深度学习,pytorch)