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serialize, persist, retrieve, and de-serialize a NumPy array as a binary string (any dimension, any dtype); exemplary use case: a web app calculates some result--eg, from a Machine Learning algorithm, using NumPy and the result is a NumPy array; it is efficient to just return that result to rather than persist the array then retrieve it via query
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import time | |
import numpy as NP | |
from redis import StrictRedis as redis | |
# a 2D array to serialize | |
A = 10 * NP.random.randn(10000).reshape(1000, 10) | |
# flatten the 2D NumPy array and save it as a binary string | |
array_dtype = str(A.dtype) | |
l, w = A.shape | |
A = A.ravel().tostring() | |
# create a key as a UNIX timestamp w/ array shape appended to end of key delimited by '|' | |
db = redis(db=0) | |
key = '{0}|{1}#{2}#{3}'.format(int(time.time()), array_dtype, l, w) | |
# store the binary string in redis | |
db.set(key, A) | |
# retrieve the proto-array from redis | |
A1 = db.get(key) | |
# deserialize it | |
array_dtype, l, w = key.split('|')[1].split('#') | |
A = NP.fromstring(A1, dtype=array_dtype).reshape(int(l), int(w)) |
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