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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.4
0
88
0
false
88
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.45
0
89
0
false
89
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.5
0
90
0
false
90
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.55
0
91
0
false
91
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.6
0
92
0
false
92
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.65
0
93
0
false
93
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.7
0
94
0
false
94
tf.Tensor(b'make coffee', shape=(), dtype=string)
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4.75
0
95
0
false
95
tf.Tensor(b'make coffee', shape=(), dtype=string)
[ 0.1370697021484375, 0.11511360108852386, 0.14125384390354156, -1.712767481803894, 0.12645865976810455, 1.8929460048675537, 0.9763694405555725, 0.033092714846134186 ]
[ -0.09142857044935226, -0.7428571581840515, 0.668571412563324, 0.12321428209543228, 0, -0.04714285582304001, 1 ]
4.8
0
96
0
false
96
tf.Tensor(b'make coffee', shape=(), dtype=string)
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[ -0.1257142871618271, -0.7542856931686401, 0.5400000214576721, 0.1339285671710968, 0, -0.04178571328520775, 1 ]
4.85
0
97
0
false
97
tf.Tensor(b'make coffee', shape=(), dtype=string)
[ 0.13493667542934418, 0.1114230826497078, 0.13795246183872223, -1.698427677154541, 0.12703832983970642, 1.881751298904419, 0.9777541160583496, 0.033092714846134186 ]
[ -0.2314285784959793, -0.7742857336997986, 0.4514285624027252, 0.1639285683631897, 0, -0.018214285373687744, 1 ]
4.9
0
98
0
false
98
tf.Tensor(b'make coffee', shape=(), dtype=string)
[ 0.13167309761047363, 0.10849464684724808, 0.13508340716362, -1.6882803440093994, 0.12851287424564362, 1.871046781539917, 0.9777568578720093, 0.033092714846134186 ]
[ -0.19428572058677673, -0.831428587436676, 0.3514285683631897, 0.16285714507102966, 0, -0.002142857061699033, 1 ]
4.95
0
99
0
false
99
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