Model cannot be saved because the input shapes have not been set. · Issue #39906 · tensorflow/tensorflow · GitHub
InvalidArgumentError: Only one input size may be -1, not both 0 and 1 · Issue #454 · tensorflow/nmt · GitHub
Input size of converted lite model doesn't match the original model input size · Issue #42114 · tensorflow/tensorflow · GitHub
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