View source on GitHub |
Resets the tracked memory stats for the chosen device.
tf.config.experimental.reset_memory_stats(
device
)
This function sets the tracked peak memory for a device to the device's current memory usage. This allows you to measure the peak memory usage for a specific part of your program. For example:
if tf.config.list_physical_devices('GPU'):
# Sets the peak memory to the current memory.
tf.config.experimental.reset_memory_stats('GPU:0')
# Creates the first peak memory usage.
x1 = tf.ones(1000 * 1000, dtype=tf.float64)
del x1 # Frees the memory referenced by `x1`.
peak1 = tf.config.experimental.get_memory_info('GPU:0')['peak']
# Sets the peak memory to the current memory again.
tf.config.experimental.reset_memory_stats('GPU:0')
# Creates the second peak memory usage.
x2 = tf.ones(1000 * 1000, dtype=tf.float32)
del x2
peak2 = tf.config.experimental.get_memory_info('GPU:0')['peak']
assert peak2 < peak1 # tf.float32 consumes less memory than tf.float64.
Currently only supports GPU and TPU. If called on a CPU device, an exception will be raised.
Args | |
---|---|
device
|
Device string to reset the memory stats, e.g. "GPU:0" , "TPU:0" .
See https://www.tensorflow.org/api_docs/python/tf/device for specifying
device strings.
|