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-rw-r--r--tests/nnapi/specs/V1_0/svdf2.mod.py153
1 files changed, 153 insertions, 0 deletions
diff --git a/tests/nnapi/specs/V1_0/svdf2.mod.py b/tests/nnapi/specs/V1_0/svdf2.mod.py
new file mode 100644
index 000000000..c34926bc3
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+++ b/tests/nnapi/specs/V1_0/svdf2.mod.py
@@ -0,0 +1,153 @@
+#
+# Copyright (C) 2017 The Android Open Source Project
+#
+# Licensed under the Apache License, Version 2.0 (the "License");
+# you may not use this file except in compliance with the License.
+# You may obtain a copy of the License at
+#
+# http://www.apache.org/licenses/LICENSE-2.0
+#
+# Unless required by applicable law or agreed to in writing, software
+# distributed under the License is distributed on an "AS IS" BASIS,
+# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
+# See the License for the specific language governing permissions and
+# limitations under the License.
+#
+
+batches = 2
+features = 8
+rank = 2
+units = int(features / rank)
+input_size = 3
+memory_size = 10
+
+model = Model()
+
+input = Input("input", "TENSOR_FLOAT32", "{%d, %d}" % (batches, input_size))
+weights_feature = Input("weights_feature", "TENSOR_FLOAT32", "{%d, %d}" % (features, input_size))
+weights_time = Input("weights_time", "TENSOR_FLOAT32", "{%d, %d}" % (features, memory_size))
+bias = Input("bias", "TENSOR_FLOAT32", "{%d}" % (units))
+state_in = Input("state_in", "TENSOR_FLOAT32", "{%d, %d}" % (batches, memory_size*features))
+rank_param = Int32Scalar("rank_param", rank)
+activation_param = Int32Scalar("activation_param", 0)
+state_out = IgnoredOutput("state_out", "TENSOR_FLOAT32", "{%d, %d}" % (batches, memory_size*features))
+output = Output("output", "TENSOR_FLOAT32", "{%d, %d}" % (batches, units))
+
+model = model.Operation("SVDF", input, weights_feature, weights_time, bias, state_in,
+ rank_param, activation_param).To([state_out, output])
+
+input0 = {
+ input: [],
+ weights_feature: [
+ -0.31930989, 0.0079667, 0.39296314, 0.37613347,
+ 0.12416199, 0.15785322, 0.27901134, 0.3905206,
+ 0.21931258, -0.36137494, -0.10640851, 0.31053296,
+ -0.36118156, -0.0976817, -0.36916667, 0.22197971,
+ 0.15294972, 0.38031587, 0.27557442, 0.39635518,
+ -0.21580373, -0.06634006, -0.02702999, 0.27072677
+ ],
+ weights_time: [
+ -0.31930989, 0.37613347, 0.27901134, -0.36137494, -0.36118156,
+ 0.22197971, 0.27557442, -0.06634006, 0.0079667, 0.12416199,
+
+ 0.3905206, -0.10640851, -0.0976817, 0.15294972, 0.39635518,
+ -0.02702999, 0.39296314, 0.15785322, 0.21931258, 0.31053296,
+
+ -0.36916667, 0.38031587, -0.21580373, 0.27072677, 0.23622236,
+ 0.34936687, 0.18174365, 0.35907319, -0.17493086, 0.324846,
+
+ -0.10781813, 0.27201805, 0.14324132, -0.23681851, -0.27115166,
+ -0.01580888, -0.14943552, 0.15465137, 0.09784451, -0.0337657,
+
+ -0.14884081, 0.19931212, -0.36002168, 0.34663299, -0.11405486,
+ 0.12672701, 0.39463779, -0.07886535, -0.06384811, 0.08249187,
+
+ -0.26816407, -0.19905911, 0.29211238, 0.31264046, -0.28664589,
+ 0.05698794, 0.11613581, 0.14078894, 0.02187902, -0.21781836,
+
+ -0.15567942, 0.08693647, -0.38256618, 0.36580828, -0.22922277,
+ -0.0226903, 0.12878349, -0.28122205, -0.10850525, -0.11955214,
+
+ 0.27179423, -0.04710215, 0.31069002, 0.22672787, 0.09580326,
+ 0.08682203, 0.1258215, 0.1851041, 0.29228821, 0.12366763
+ ],
+ bias: [],
+ state_in: [0 for _ in range(batches * memory_size * features)],
+}
+
+test_inputs = [
+ 0.12609188, -0.46347019, -0.89598465,
+ 0.35867718, 0.36897406, 0.73463392,
+
+ 0.14278367, -1.64410412, -0.75222826,
+ -0.57290924, 0.12729003, 0.7567004,
+
+ 0.49837467, 0.19278903, 0.26584083,
+ 0.17660543, 0.52949083, -0.77931279,
+
+ -0.11186574, 0.13164264, -0.05349274,
+ -0.72674477, -0.5683046, 0.55900657,
+
+ -0.68892461, 0.37783599, 0.18263303,
+ -0.63690937, 0.44483393, -0.71817774,
+
+ -0.81299269, -0.86831826, 1.43940818,
+ -0.95760226, 1.82078898, 0.71135032,
+
+ -1.45006323, -0.82251364, -1.69082689,
+ -1.65087092, -1.89238167, 1.54172635,
+
+ 0.03966608, -0.24936394, -0.77526885,
+ 2.06740379, -1.51439476, 1.43768692,
+
+ 0.11771342, -0.23761693, -0.65898693,
+ 0.31088525, -1.55601168, -0.87661445,
+
+ -0.89477462, 1.67204106, -0.53235275,
+ -0.6230064, 0.29819036, 1.06939757,
+]
+
+golden_outputs = [
+ -0.09623547, -0.10193135, 0.11083051, -0.0347917,
+ 0.1141196, 0.12965347, -0.12652366, 0.01007236,
+
+ -0.16396809, -0.21247184, 0.11259045, -0.04156673,
+ 0.10132131, -0.06143532, -0.00924693, 0.10084561,
+
+ 0.01257364, 0.0506071, -0.19287863, -0.07162561,
+ -0.02033747, 0.22673416, 0.15487903, 0.02525555,
+
+ -0.1411963, -0.37054959, 0.01774767, 0.05867489,
+ 0.09607603, -0.0141301, -0.08995658, 0.12867066,
+
+ -0.27142537, -0.16955489, 0.18521598, -0.12528358,
+ 0.00331409, 0.11167502, 0.02218599, -0.07309391,
+
+ 0.09593632, -0.28361851, -0.0773851, 0.17199151,
+ -0.00075242, 0.33691186, -0.1536046, 0.16572715,
+
+ -0.27916506, -0.27626723, 0.42615682, 0.3225764,
+ -0.37472126, -0.55655634, -0.05013514, 0.289112,
+
+ -0.24418658, 0.07540751, -0.1940318, -0.08911639,
+ 0.00732617, 0.46737891, 0.26449674, 0.24888524,
+
+ -0.17225097, -0.54660404, -0.38795233, 0.08389944,
+ 0.07736043, -0.28260678, 0.15666828, 1.14949894,
+
+ -0.57454878, -0.64704704, 0.73235172, -0.34616736,
+ 0.21120001, -0.22927976, 0.02455296, -0.35906726,
+]
+
+output0 = {state_out: [0 for _ in range(batches * memory_size * features)],
+ output: []}
+
+# TODO: enable more data points after fixing the reference issue
+for i in range(1):
+ batch_start = i * input_size * batches
+ batch_end = batch_start + input_size * batches
+ input0[input] = test_inputs[batch_start:batch_end]
+ golden_start = i * units * batches
+ golden_end = golden_start + units * batches
+ output0[output] = golden_outputs[golden_start:golden_end]
+ Example((input0, output0))