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-- This example decodes percent-encoded sequences from url parameters, | |
-- replaces plus signs with spaces, and converts to all lowercase. | |
CREATE OR REPLACE FUNCTION schema_name.function_name(original TEXT) | |
RETURNS VARCHAR IMMUTABLE AS | |
$$ | |
import urllib | |
u = urllib.unquote_plus(original) | |
return u.lower() | |
$$ |
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class AttentionWithContext(Layer): | |
""" | |
Attention operation, with a context/query vector, for temporal data. | |
Supports Masking. | |
Follows the work of Yang et al. [https://www.cs.cmu.edu/~diyiy/docs/naacl16.pdf] | |
"Hierarchical Attention Networks for Document Classification" | |
by using a context vector to assist the attention | |
# Input shape | |
3D tensor with shape: `(samples, steps, features)`. | |
# Output shape |
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def dot_product(x, kernel): | |
""" | |
Wrapper for dot product operation, in order to be compatible with both | |
Theano and Tensorflow | |
Args: | |
x (): input | |
kernel (): weights | |
Returns: | |
""" | |
if K.backend() == 'tensorflow': |
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ZIP,LAT,LNG | |
00601,18.180555, -66.749961 | |
00602,18.361945, -67.175597 | |
00603,18.455183, -67.119887 | |
00606,18.158345, -66.932911 | |
00610,18.295366, -67.125135 | |
00612,18.402253, -66.711397 | |
00616,18.420412, -66.671979 | |
00617,18.445147, -66.559696 |
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import multiprocessing | |
import pandas as pd | |
import numpy as np | |
def _apply_df(args): | |
df, func, kwargs = args | |
return df.apply(func, **kwargs) | |
def apply_by_multiprocessing(df, func, **kwargs): | |
workers = kwargs.pop('workers') |