提交 b8d5586c authored 作者: slefrancois's avatar slefrancois

remove harcoded float32 in gpuarray testdnn

上级 c85ac411
...@@ -23,6 +23,12 @@ from .rnn_support import Model, GRU, LSTM, WrapperLayer ...@@ -23,6 +23,12 @@ from .rnn_support import Model, GRU, LSTM, WrapperLayer
from theano.configdefaults import SUPPORTED_DNN_CONV_ALGO_FWD from theano.configdefaults import SUPPORTED_DNN_CONV_ALGO_FWD
# If using float16, set CUDNN precision to float32
if theano.config.floatX == "float16":
precision = "float32"
else:
precision = theano.config.floatX
def test_dnn_conv_desc_merge(): def test_dnn_conv_desc_merge():
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
...@@ -50,11 +56,10 @@ def test_dnn_conv_merge(): ...@@ -50,11 +56,10 @@ def test_dnn_conv_merge():
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img_shp = [2, 5, 6, 8] img_shp = [2, 5, 6, 8]
kern_shp = [3, 5, 5, 6] kern_shp = [3, 5, 5, 6]
img = T.ftensor4('img') img = T.tensor4('img')
kern = T.ftensor4('kern') kern = T.tensor4('kern')
out = T.ftensor4('out') out = T.tensor4('out')
desc = dnn.GpuDnnConvDesc( desc = dnn.GpuDnnConvDesc(border_mode='valid')(kern.shape)
border_mode='valid')(kern.shape)
# Test forward op # Test forward op
o1 = dnn.dnn_conv(img, kern) o1 = dnn.dnn_conv(img, kern)
...@@ -89,9 +94,9 @@ def test_dnn_conv_inplace(): ...@@ -89,9 +94,9 @@ def test_dnn_conv_inplace():
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img_shp = [2, 5, 6, 8] img_shp = [2, 5, 6, 8]
kern_shp = [3, 5, 5, 6] kern_shp = [3, 5, 5, 6]
img = T.ftensor4('img') img = T.tensor4('img')
kern = T.ftensor4('kern') kern = T.tensor4('kern')
out = T.ftensor4('out') out = T.tensor4('out')
desc1 = dnn.GpuDnnConvDesc(border_mode='valid', conv_mode='conv')( desc1 = dnn.GpuDnnConvDesc(border_mode='valid', conv_mode='conv')(
kern.shape) kern.shape)
desc2 = dnn.GpuDnnConvDesc( desc2 = dnn.GpuDnnConvDesc(
...@@ -142,7 +147,7 @@ def test_pooling(): ...@@ -142,7 +147,7 @@ def test_pooling():
else: else:
modes = ('max', 'average_inc_pad', 'average_exc_pad') modes = ('max', 'average_inc_pad', 'average_exc_pad')
x = T.ftensor4() x = T.tensor4()
for mode, pad in product(modes, for mode, pad in product(modes,
((0, 0), (1, 0), (0, 1), (2, 3), (3, 2))): ((0, 0), (1, 0), (0, 1), (2, 3), (3, 2))):
if pad != (0, 0) and mode == 'average_exc_pad': if pad != (0, 0) and mode == 'average_exc_pad':
...@@ -226,7 +231,7 @@ def test_pooling(): ...@@ -226,7 +231,7 @@ def test_pooling():
def test_pooling_with_tensor_vars(): def test_pooling_with_tensor_vars():
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
x = T.ftensor4() x = T.tensor4()
ws = theano.shared(numpy.array([2, 2], dtype='int32')) ws = theano.shared(numpy.array([2, 2], dtype='int32'))
st = theano.shared(numpy.array([1, 1], dtype='int32')) st = theano.shared(numpy.array([1, 1], dtype='int32'))
pad = theano.shared(numpy.array([0, 0], dtype='int32')) pad = theano.shared(numpy.array([0, 0], dtype='int32'))
...@@ -291,7 +296,7 @@ def test_pooling3d(): ...@@ -291,7 +296,7 @@ def test_pooling3d():
else: else:
modes = ('max', 'average_inc_pad', 'average_exc_pad') modes = ('max', 'average_inc_pad', 'average_exc_pad')
x = T.ftensor5() x = T.tensor5()
for mode, pad in product(modes, for mode, pad in product(modes,
((0, 0, 0), (1, 0, 0), (0, 1, 0), (0, 0, 1), ((0, 0, 0), (1, 0, 0), (0, 1, 0), (0, 0, 1),
(2, 3, 2), (3, 2, 2), (2, 2, 3))): (2, 3, 2), (3, 2, 2), (2, 2, 3))):
...@@ -370,7 +375,7 @@ def test_pooling_opt(): ...@@ -370,7 +375,7 @@ def test_pooling_opt():
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
# 2D pooling # 2D pooling
x = T.fmatrix() x = T.matrix()
f = theano.function( f = theano.function(
[x], [x],
...@@ -409,7 +414,7 @@ def test_pooling_opt(): ...@@ -409,7 +414,7 @@ def test_pooling_opt():
f(data) f(data)
# 3D pooling # 3D pooling
x = T.ftensor3() x = T.tensor3()
f = theano.function( f = theano.function(
[x], [x],
...@@ -491,7 +496,7 @@ def test_dnn_tag(): ...@@ -491,7 +496,7 @@ def test_dnn_tag():
""" """
Test that if cudnn isn't avail we crash and that if it is avail, we use it. Test that if cudnn isn't avail we crash and that if it is avail, we use it.
""" """
x = T.ftensor4() x = T.tensor4()
old = theano.config.on_opt_error old = theano.config.on_opt_error
theano.config.on_opt_error = "raise" theano.config.on_opt_error = "raise"
...@@ -533,7 +538,7 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -533,7 +538,7 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_softmax(self): def test_softmax(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
t = T.ftensor4('t') t = T.tensor4('t')
rand_tensor = numpy.asarray( rand_tensor = numpy.asarray(
numpy.random.rand(5, 4, 3, 2), numpy.random.rand(5, 4, 3, 2),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -576,7 +581,8 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -576,7 +581,8 @@ class TestDnnInferShapes(utt.InferShapeTester):
desc = dnn.GpuDnnConvDesc( desc = dnn.GpuDnnConvDesc(
border_mode=border_mode, border_mode=border_mode,
subsample=subsample, subsample=subsample,
conv_mode=conv_mode conv_mode=conv_mode,
precision=precision
)(kerns.shape) )(kerns.shape)
conv = dnn.GpuDnnConv(algo=algo)(img, kerns, out, desc) conv = dnn.GpuDnnConv(algo=algo)(img, kerns, out, desc)
self._compile_and_check( self._compile_and_check(
...@@ -597,9 +603,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -597,9 +603,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
if algo == 'winograd' and dnn.version(raises=False) < 5000: if algo == 'winograd' and dnn.version(raises=False) < 5000:
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
self._test_conv(T.ftensor4('img'), self._test_conv(T.tensor4('img'),
T.ftensor4('kerns'), T.tensor4('kerns'),
T.ftensor4('out'), T.tensor4('out'),
numpy.random.rand(7, 2, 8, 4), numpy.random.rand(7, 2, 8, 4),
numpy.random.rand(8, 2, 4, 3), numpy.random.rand(8, 2, 4, 3),
border_mode, border_mode,
...@@ -609,9 +615,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -609,9 +615,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
@parameterized.expand(product(border_modes, conv_modes), utt.custom_name_func) @parameterized.expand(product(border_modes, conv_modes), utt.custom_name_func)
def test_conv3d_none(self, border_mode, conv_mode): def test_conv3d_none(self, border_mode, conv_mode):
self._test_conv(T.ftensor5('img'), self._test_conv(T.tensor5('img'),
T.ftensor5('kerns'), T.tensor5('kerns'),
T.ftensor5('out'), T.tensor5('out'),
numpy.random.rand(10, 2, 6, 4, 11), numpy.random.rand(10, 2, 6, 4, 11),
numpy.random.rand(8, 2, 4, 3, 1), numpy.random.rand(8, 2, 4, 3, 1),
border_mode, border_mode,
...@@ -646,7 +652,8 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -646,7 +652,8 @@ class TestDnnInferShapes(utt.InferShapeTester):
desc = dnn.GpuDnnConvDesc( desc = dnn.GpuDnnConvDesc(
border_mode=border_mode, border_mode=border_mode,
subsample=subsample, subsample=subsample,
conv_mode=conv_mode conv_mode=conv_mode,
precision=precision
)(out.shape) )(out.shape)
conv_grad_w = dnn.GpuDnnConvGradW()( conv_grad_w = dnn.GpuDnnConvGradW()(
temp_img, temp_img,
...@@ -663,9 +670,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -663,9 +670,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
@parameterized.expand(product(border_modes, conv_modes), utt.custom_name_func) @parameterized.expand(product(border_modes, conv_modes), utt.custom_name_func)
def test_conv_gradw(self, border_mode, conv_mode): def test_conv_gradw(self, border_mode, conv_mode):
self._test_conv_gradw(T.ftensor4('img'), self._test_conv_gradw(T.tensor4('img'),
T.ftensor4('kerns'), T.tensor4('kerns'),
T.ftensor4('out'), T.tensor4('out'),
numpy.random.rand(2, 5, 6, 8), numpy.random.rand(2, 5, 6, 8),
numpy.random.rand(2, 1, 5, 6), numpy.random.rand(2, 1, 5, 6),
border_mode, border_mode,
...@@ -675,9 +682,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -675,9 +682,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_conv_gradi(self): def test_conv_gradi(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor4('img') img = T.tensor4('img')
kerns = T.ftensor4('kerns') kerns = T.tensor4('kerns')
out = T.ftensor4('out') out = T.tensor4('out')
kern_vals = numpy.asarray( kern_vals = numpy.asarray(
numpy.random.rand(13, 14, 15, 16), numpy.random.rand(13, 14, 15, 16),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -701,7 +708,8 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -701,7 +708,8 @@ class TestDnnInferShapes(utt.InferShapeTester):
desc = dnn.GpuDnnConvDesc( desc = dnn.GpuDnnConvDesc(
border_mode=params[0], border_mode=params[0],
subsample=params[1], subsample=params[1],
conv_mode=params[2] conv_mode=params[2],
precision=precision
)(kerns.shape) )(kerns.shape)
conv_grad_i = dnn.GpuDnnConvGradI()( conv_grad_i = dnn.GpuDnnConvGradI()(
kerns, kerns,
...@@ -719,7 +727,7 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -719,7 +727,7 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_pool(self): def test_pool(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor4('img') img = T.tensor4('img')
img_val = numpy.asarray( img_val = numpy.asarray(
numpy.random.rand(2, 3, 4, 5), numpy.random.rand(2, 3, 4, 5),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -746,7 +754,7 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -746,7 +754,7 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_pool_3d(self): def test_pool_3d(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor5('img') img = T.tensor5('img')
img_val = numpy.asarray( img_val = numpy.asarray(
numpy.random.rand(2, 3, 4, 5, 6), numpy.random.rand(2, 3, 4, 5, 6),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -773,9 +781,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -773,9 +781,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_pool_grad(self): def test_pool_grad(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor4('img') img = T.tensor4('img')
img_grad = T.ftensor4('img_grad') img_grad = T.tensor4('img_grad')
out = T.ftensor4('out') out = T.tensor4('out')
img_val = numpy.asarray( img_val = numpy.asarray(
numpy.random.rand(2, 3, 4, 5), numpy.random.rand(2, 3, 4, 5),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -812,9 +820,9 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -812,9 +820,9 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_pool_3d_grad(self): def test_pool_3d_grad(self):
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor5('img') img = T.tensor5('img')
img_grad = T.ftensor5('img_grad') img_grad = T.tensor5('img_grad')
out = T.ftensor5('out') out = T.tensor5('out')
img_val = numpy.asarray( img_val = numpy.asarray(
numpy.random.rand(2, 3, 4, 5, 6), numpy.random.rand(2, 3, 4, 5, 6),
dtype=theano.config.floatX dtype=theano.config.floatX
...@@ -853,8 +861,8 @@ class TestDnnInferShapes(utt.InferShapeTester): ...@@ -853,8 +861,8 @@ class TestDnnInferShapes(utt.InferShapeTester):
def test_dnn_conv_border_mode(): def test_dnn_conv_border_mode():
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor4() img = T.tensor4()
kern = T.ftensor4() kern = T.tensor4()
dnn.dnn_conv(img, kern, border_mode=1) dnn.dnn_conv(img, kern, border_mode=1)
dnn.dnn_conv(img, kern, border_mode=(2, 3)) dnn.dnn_conv(img, kern, border_mode=(2, 3))
...@@ -866,9 +874,9 @@ def test_dnn_conv_border_mode(): ...@@ -866,9 +874,9 @@ def test_dnn_conv_border_mode():
def test_dnn_conv_alpha_output_merge(): def test_dnn_conv_alpha_output_merge():
if not dnn.dnn_available(test_ctx_name): if not dnn.dnn_available(test_ctx_name):
raise SkipTest(dnn.dnn_available.msg) raise SkipTest(dnn.dnn_available.msg)
img = T.ftensor4() img = T.tensor4()
kern = T.ftensor4() kern = T.tensor4()
out = T.ftensor4() out = T.tensor4()
b = 1 b = 1
c = 4 c = 4
...@@ -943,18 +951,18 @@ def test_dnn_conv_grad(): ...@@ -943,18 +951,18 @@ def test_dnn_conv_grad():
def dconv(img, kern, out): def dconv(img, kern, out):
desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1), desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1),
conv_mode='conv')(kern.shape) conv_mode='conv', precision=precision)(kern.shape)
return dnn.GpuDnnConv()(img, kern, out, desc, alpha=0.5, beta=0.75) return dnn.GpuDnnConv()(img, kern, out, desc, alpha=0.5, beta=0.75)
def dconvi(img, kern, out): def dconvi(img, kern, out):
desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1), desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1),
conv_mode='conv')(kern.shape) conv_mode='conv', precision=precision)(kern.shape)
return dnn.GpuDnnConvGradI()(kern, out, img, desc, alpha=-1.0, return dnn.GpuDnnConvGradI()(kern, out, img, desc, alpha=-1.0,
beta=0.0) beta=0.0)
def dconvw(img, kern, out): def dconvw(img, kern, out):
desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1), desc = dnn.GpuDnnConvDesc(border_mode='valid', subsample=(1, 1),
conv_mode='conv')(kern.shape) conv_mode='conv', precision=precision)(kern.shape)
return dnn.GpuDnnConvGradW()(img, out, kern, desc, alpha=0.75, return dnn.GpuDnnConvGradW()(img, out, kern, desc, alpha=0.75,
beta=-1.0) beta=-1.0)
...@@ -1146,8 +1154,8 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1146,8 +1154,8 @@ class test_SoftMax(test_nnet.test_SoftMax):
gout = numpy.asarray(f_gpu(gdata))[:, :, 0, 0] gout = numpy.asarray(f_gpu(gdata))[:, :, 0, 0]
utt.assert_allclose(out, gout) utt.assert_allclose(out, gout)
x = T.matrix('x', theano.config.floatX) x = T.matrix('x')
x_gpu = T.tensor4('x_gpu', theano.config.floatX) x_gpu = T.tensor4('x_gpu')
f_z = T.nnet.softmax_op f_z = T.nnet.softmax_op
f_gpu = dnn.GpuDnnSoftmax( f_gpu = dnn.GpuDnnSoftmax(
'accurate', 'accurate',
...@@ -1180,7 +1188,7 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1180,7 +1188,7 @@ class test_SoftMax(test_nnet.test_SoftMax):
# Verify that the SoftmaxGrad -> Gpu[Dnn]SoftmaxGrad # Verify that the SoftmaxGrad -> Gpu[Dnn]SoftmaxGrad
# optimization is applied when cudnn is required # optimization is applied when cudnn is required
y = T.fvector('y') y = T.vector('y')
f = theano.function( f = theano.function(
[y], [y],
T.grad(T.nnet.softmax(y).mean(), y), T.grad(T.nnet.softmax(y).mean(), y),
...@@ -1206,7 +1214,7 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1206,7 +1214,7 @@ class test_SoftMax(test_nnet.test_SoftMax):
# optimization is not applied when cudnn is excluded or not # optimization is not applied when cudnn is excluded or not
# available # available
mode_wo_cudnn = mode_with_gpu.excluding("cudnn") mode_wo_cudnn = mode_with_gpu.excluding("cudnn")
y = T.fvector('y') y = T.vector('y')
f = theano.function( f = theano.function(
[y], [y],
T.grad(T.nnet.softmax(y).mean(), y), T.grad(T.nnet.softmax(y).mean(), y),
...@@ -1230,7 +1238,7 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1230,7 +1238,7 @@ class test_SoftMax(test_nnet.test_SoftMax):
# Verify that the SoftmaxGrad -> GpuDnnSoftmaxGrad do not # Verify that the SoftmaxGrad -> GpuDnnSoftmaxGrad do not
# crash with manual graph # crash with manual graph
y = T.fvector('y') y = T.vector('y')
o = theano.tensor.nnet.SoftmaxGrad()(y, y * 2) o = theano.tensor.nnet.SoftmaxGrad()(y, y * 2)
f = theano.function([y], o, mode=mode_with_gpu) f = theano.function([y], o, mode=mode_with_gpu)
sorted_f = f.maker.fgraph.toposort() sorted_f = f.maker.fgraph.toposort()
...@@ -1253,7 +1261,7 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1253,7 +1261,7 @@ class test_SoftMax(test_nnet.test_SoftMax):
if dnn.version(raises=False) < 3000: if dnn.version(raises=False) < 3000:
raise SkipTest("Log-softmax is only in cudnn v3+") raise SkipTest("Log-softmax is only in cudnn v3+")
x = T.ftensor4() x = T.tensor4()
softmax_out = dnn.GpuDnnSoftmax('accurate', 'channel')(x) softmax_out = dnn.GpuDnnSoftmax('accurate', 'channel')(x)
log_out = T.log(T.as_tensor_variable(softmax_out)) log_out = T.log(T.as_tensor_variable(softmax_out))
...@@ -1296,7 +1304,7 @@ class test_SoftMax(test_nnet.test_SoftMax): ...@@ -1296,7 +1304,7 @@ class test_SoftMax(test_nnet.test_SoftMax):
# Compile a reference function, on the CPU, to be used to validate the # Compile a reference function, on the CPU, to be used to validate the
# results of the other function. # results of the other function.
x = T.fmatrix() x = T.matrix()
f_ref = theano.function([x], T.nnet.LogSoftmax()(x)) f_ref = theano.function([x], T.nnet.LogSoftmax()(x))
# Build the first graph and ensure that the optimization is applied # Build the first graph and ensure that the optimization is applied
...@@ -1334,7 +1342,7 @@ def test_dnn_batchnorm_train(): ...@@ -1334,7 +1342,7 @@ def test_dnn_batchnorm_train():
utt.seed_rng() utt.seed_rng()
for mode in ('per-activation', 'spatial'): for mode in ('per-activation', 'spatial'):
for vartype in (T.ftensor5, T.ftensor4, T.ftensor3, T.fmatrix, T.fvector): for vartype in (T.tensor5, T.tensor4, T.tensor3, T.matrix, T.vector):
x, scale, bias = (vartype(n) for n in ('x', 'scale', 'bias')) x, scale, bias = (vartype(n) for n in ('x', 'scale', 'bias'))
ndim = x.ndim ndim = x.ndim
eps = 5e-3 # some non-standard value to test if it's used eps = 5e-3 # some non-standard value to test if it's used
...@@ -1389,10 +1397,9 @@ def test_batchnorm_inference(): ...@@ -1389,10 +1397,9 @@ def test_batchnorm_inference():
utt.seed_rng() utt.seed_rng()
for mode in ('per-activation', 'spatial'): for mode in ('per-activation', 'spatial'):
for vartype in (T.ftensor5, T.ftensor4, T.ftensor3, T.fmatrix, T.fvector): for vartype in (T.tensor5, T.tensor4, T.tensor3, T.matrix, T.vector):
x, scale, bias, mean, var = (vartype(n) for n in ('x', 'scale', x, scale, bias, mean, var = (vartype(n)
'bias', 'mean', for n in ('x', 'scale', 'bias', 'mean', 'var'))
'var'))
ndim = x.ndim ndim = x.ndim
eps = 5e-3 # some non-standard value to test if it's used eps = 5e-3 # some non-standard value to test if it's used
......
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