To deserialize tuples in Python using NumPy, you can utilize the numpy.array()
function. This can be particularly useful when handling data that has been serialized into a tuple format and needs to be converted back into a NumPy array for further processing. Below is an example illustrating how to perform this operation.
import numpy as np
# Example tuple
tuple_data = ((1, 2, 3), (4, 5, 6), (7, 8, 9))
# Deserializing the tuple into a NumPy array
np_array = np.array(tuple_data)
print(np_array)
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