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Samples elements at random from the datasets in datasets. (deprecated)
tf.data.experimental.sample_from_datasets(
    datasets, weights=None, seed=None, stop_on_empty_dataset=False
)
Creates a dataset by interleaving elements of datasets with weight[i]
probability of picking an element from dataset i. Sampling is done without
replacement. For example, suppose we have 2 datasets:
dataset1 = tf.data.Dataset.range(0, 3)
dataset2 = tf.data.Dataset.range(100, 103)
Suppose also that we sample from these 2 datasets with the following weights:
sample_dataset = tf.data.Dataset.sample_from_datasets(
    [dataset1, dataset2], weights=[0.5, 0.5])
One possible outcome of elements in sample_dataset is:
print(list(sample_dataset.as_numpy_iterator()))
# [100, 0, 1, 101, 2, 102]
| Args | |
|---|---|
| datasets | A non-empty list of tf.data.Datasetobjects with compatible
structure. | 
| weights | (Optional.) A list or Tensor of len(datasets)floating-point
values whereweights[i]represents the probability to sample fromdatasets[i], or atf.data.Datasetobject where each element is such a
list. Defaults to a uniform distribution acrossdatasets. | 
| seed | (Optional.) A tf.int64scalartf.Tensor, representing the random
seed that will be used to create the distribution. Seetf.random.set_seedfor behavior. | 
| stop_on_empty_dataset | If True, sampling stops if it encounters an empty
dataset. IfFalse, it skips empty datasets. It is recommended to set it
toTrue. Otherwise, the distribution of samples starts off as the user
intends, but may change as input datasets become empty. This can be
difficult to detect since the dataset starts off looking correct. Default
toFalsefor backward compatibility. | 
| Returns | |
|---|---|
| A dataset that interleaves elements from datasetsat random, according toweightsif provided, otherwise with uniform probability. | 
| Raises | |
|---|---|
| TypeError | If the datasetsorweightsarguments have the wrong type. | 
| ValueError | 
 |