Hi, I upgraded my tensorflow library to 1.7, and now I get an error when executing tensorboard. System description: TensorBoard version: 1.7 TensorFlow version: 1.7 (compiled from source) OS Platform and version: Linux Ubuntu 16.04.2 Python version: 3.5.3 Error: (tensorflow)/home/username$ tensorboard --logdir=/mydir/log 2018-04-07 01:56:45.493235: I tensorflow/stream_executor/cuda/cuda_gpu_execut
creating index... index created! 2018-07-16 22:12:38.626883: W T:\src\github\tensorflow\tensorflow\core\framework \op_kernel.cc:1306] Invalid argument: TypeError: can't pickle dict_values objects Traceback (most recent call last): File "d:\Program Files\Anaconda3\lib\site-packages\tensorflow\python\ops\scrip t_ops.py", line 158, in call ret = func(*args) File "D:\Program Files\Anaconda3\Lib\site-p
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