tf.data.experimental.AutotuneOptions
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Represents options for autotuning dataset performance.
tf.data.experimental.AutotuneOptions()
options = tf.data.Options()
options.autotune.enabled = False
dataset = dataset.with_options(options)
Attributes |
autotune_algorithm
|
When autotuning is enabled (through autotune ), determines the algorithm to use.
|
cpu_budget
|
When autotuning is enabled (through autotune ), determines the CPU budget to use. Values greater than the number of schedulable CPU cores are allowed but may result in CPU contention. If None, defaults to the number of schedulable CPU cores.
|
enabled
|
Whether to automatically tune performance knobs. If None, defaults to True.
|
ram_budget
|
When autotuning is enabled (through autotune ), determines the RAM budget to use. Values greater than the available RAM in bytes may result in OOM. If None, defaults to half of the available RAM in bytes.
|
Methods
__eq__
View source
__eq__(
other
)
Return self==value.
__ne__
View source
__ne__(
other
)
Return self!=value.
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Last updated 2023-03-17 UTC.
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