def eval_input():
     """Input function returning the entire validation data
     set for evaluation. Shuffling is not required.
     """
     return input_module.input_fn(
         args.eval_files,
         batch_size=args.eval_batch_size,
         shuffle=False,
         num_parallel_calls=args.num_parallel_calls)
 def train_input():
     """Input function returning batches from the training
     data set from training.
     """
     return input_module.input_fn(
         args.train_files,
         num_epochs=args.num_epochs,
         batch_size=args.train_batch_size,
         num_parallel_calls=args.num_parallel_calls)
Exemple #3
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 def eval_input():
     """Input function returning the entire validation data
     set for evaluation. Shuffling is not required.
     """
     return input_module.input_fn(
         args.eval_files,
         batch_size=args.eval_batch_size,
         shuffle=False,
         num_parallel_calls=args.num_parallel_calls,
         prefetch_buffer_size=args.prefetch_buffer_size)
Exemple #4
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 def train_input():
     """Input function returning batches from the training
     data set from training.
     """
     return input_module.input_fn(
         args.train_files,
         num_epochs=args.num_epochs,
         batch_size=args.train_batch_size,
         num_parallel_calls=args.num_parallel_calls,
         prefetch_buffer_size=args.prefetch_buffer_size)
	def eval_input():
		return input_module.input_fn(
			args.eval_file,
			num_epochs=100,
			shuffle=False,
			batch_size=1)
	def train_input():
		return input_module.input_fn(
			args.training_file,
			num_epochs=args.num_epochs,
			shuffle=True,
			batch_size=args.train_batch_size)