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Louis Verhaardebf4af62021-01-27 15:57:57 +01001# Copyright (C) 2020-2021 Arm Limited or its affiliates. All rights reserved.
Tim Hall79d07d22020-04-27 18:20:16 +01002#
3# SPDX-License-Identifier: Apache-2.0
4#
5# Licensed under the Apache License, Version 2.0 (the License); you may
6# not use this file except in compliance with the License.
7# You may obtain a copy of the License at
8#
9# www.apache.org/licenses/LICENSE-2.0
10#
11# Unless required by applicable law or agreed to in writing, software
12# distributed under the License is distributed on an AS IS BASIS, WITHOUT
13# WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
14# See the License for the specific language governing permissions and
15# limitations under the License.
Tim Hall79d07d22020-04-27 18:20:16 +010016# Description:
17# The SupportedOperators class which is a collection of all supported operators and parameter checks.
Michael McGeagh1f951fc2020-10-14 09:30:02 +010018from collections import defaultdict
19
Charles Xu87c13502020-08-06 12:17:26 +020020import numpy as np
21
Tim Hallc30f4952020-06-15 20:47:35 +010022from .data_type import BaseType
23from .data_type import DataType
Dwight Lidman8359a472020-09-28 15:53:40 +020024from .numeric_util import is_integer
Louis Verhaardfa2f92a2020-09-21 11:56:18 +020025from .operation import get_slice_offsets
Louis Verhaardaee5d752020-09-30 09:01:52 +020026from .operation import Op
Michael McGeagh16895482020-12-14 15:51:20 +000027from .operation import Padding
Tim Hall93582962020-09-09 21:58:15 +010028from .tensor import check_quantized_tens_scaling_equal
Michael McGeagh837dc1b2020-11-10 12:38:25 +000029from .tflite_mapping import BUILTIN_OPERATOR_UNKNOWN
Michael McGeagh219ec072020-11-09 11:11:26 +000030from .tflite_mapping import optype_to_builtintype
Louis Verhaardfa2f92a2020-09-21 11:56:18 +020031
32
Michael McGeagh37ded342020-10-01 15:37:44 +010033# Custom decorator function to allow formatting docstrings containing "{}"
34def docstring_format_args(args):
35 def docstring(func):
36 func.__doc__ = func.__doc__.format(*args)
37 return func
38
39 return docstring
40
41
Michael McGeagh34d29172020-11-25 12:36:23 +000042def _list_formatter(arg):
43 # Order and join into a string representation
44 return ", ".join(sorted(map(str, arg)))
45
46
Michael McGeagh837dc1b2020-11-10 12:38:25 +000047def _optype_formatter(op_list):
48 # Convert internal op types to external names
49 output = map(optype_to_builtintype, op_list)
50 # Remove UNKNOWNs
51 output = (x for x in output if x is not BUILTIN_OPERATOR_UNKNOWN)
Michael McGeagh34d29172020-11-25 12:36:23 +000052 return _list_formatter(output)
Michael McGeagh837dc1b2020-11-10 12:38:25 +000053
54
Tim Hall79d07d22020-04-27 18:20:16 +010055class SupportedOperators:
Michael McGeagh1eeea512020-09-30 14:23:09 +010056 # Categorised lists of supported operators
Louis Verhaardaee5d752020-09-30 09:01:52 +020057 npu_pre_ops = set((Op.SplitSliceRead,))
58 convolution_ops = set((Op.Conv2DBias, Op.Conv2D, Op.QuantizedConv2D,))
59 depthwise_convolution_ops = set((Op.DepthwiseConv2DBias,))
60 transpose_convolution_ops = set((Op.Conv2DBackpropInput,))
Michael McGeagh1f951fc2020-10-14 09:30:02 +010061 convolution_like_ops = convolution_ops | depthwise_convolution_ops | transpose_convolution_ops
Louis Verhaardaee5d752020-09-30 09:01:52 +020062 max_pooling_ops = Op.op_set(Op.is_maxpool_op)
63 avg_pooling_ops = Op.op_set(Op.is_avgpool_op)
64 pooling_ops = set((Op.ReduceSum,)) | max_pooling_ops | avg_pooling_ops
65 resizing_ops = set((Op.ResizeBilinear,))
66 fc_vector_products = set((Op.QuantizedMatMul, Op.MatMul, Op.FullyConnected,))
Michael McGeagh1eeea512020-09-30 14:23:09 +010067 mac_main_ops = (
68 # RNN/LSTM/GRU
Louis Verhaardaee5d752020-09-30 09:01:52 +020069 set((Op.BlockLSTM,))
Michael McGeagh1f951fc2020-10-14 09:30:02 +010070 # conv/depthwiseconv/transposeconv
71 | convolution_like_ops
Michael McGeagh1eeea512020-09-30 14:23:09 +010072 # pooling
73 | pooling_ops
74 # resizing/upscaling
75 | resizing_ops
76 # FC layers
77 | fc_vector_products
78 )
Louis Verhaardaee5d752020-09-30 09:01:52 +020079 unary_elem_wise_main_ops = Op.op_set(Op.is_unary_elementwise_op)
80 binary_elem_wise_min_max_ops = set((Op.Minimum, Op.Maximum,))
81 binary_elem_wise_shift_ops = set((Op.SHL, Op.SHR,))
82 binary_elem_wise_add_mul_sub = set((Op.Add, Op.Mul, Op.Sub,))
Michael McGeagh1eeea512020-09-30 14:23:09 +010083 binary_elem_wise_main_ops = binary_elem_wise_min_max_ops | binary_elem_wise_add_mul_sub | binary_elem_wise_shift_ops
84 elem_wise_main_ops = binary_elem_wise_main_ops | unary_elem_wise_main_ops
Erik Anderssonf27a8b62020-12-10 14:58:23 +010085 pad_ops = set((Op.Pad,))
Michael McGeagh37ded342020-10-01 15:37:44 +010086 supported_int32_tensor_ops = (
Louis Verhaardaee5d752020-09-30 09:01:52 +020087 set((Op.ReduceSum, Op.CLZ,)) | binary_elem_wise_add_mul_sub | binary_elem_wise_shift_ops
Michael McGeagh37ded342020-10-01 15:37:44 +010088 )
Michael McGeagh65fd9982020-10-20 11:49:28 +010089 relu_ops = Op.op_set(Op.is_relu_op)
Diqing Zhong189f7482021-01-26 12:12:51 +010090 activation_ops = relu_ops | set((Op.Tanh, Op.Sigmoid, Op.Softmax, Op.HardSwish))
Michael McGeagh1eeea512020-09-30 14:23:09 +010091 npu_post_ops = (
Michael McGeagh1eeea512020-09-30 14:23:09 +010092 # activation functions
Louis Verhaardaee5d752020-09-30 09:01:52 +020093 activation_ops
94 # concatenation write direction
95 | set((Op.ConcatSliceWrite,))
96 # Quantization
97 | set((Op.Quantize,))
Michael McGeagh1eeea512020-09-30 14:23:09 +010098 )
Louis Verhaardaee5d752020-09-30 09:01:52 +020099 split_ops = set((Op.Split, Op.SplitV, Op.StridedSlice, Op.Slice, Op.UnpackReshaped, Op.Unpack,))
100 concat_ops = set((Op.Concat, Op.ConcatTFLite, Op.PackReshaped, Op.Pack,))
Michael McGeagha648aa92020-11-18 15:44:05 +0000101 memory_only_ops = set((Op.Squeeze, Op.Reshape, Op.QuantizedReshape,)) | concat_ops | split_ops
Louis Verhaardaee5d752020-09-30 09:01:52 +0200102 shapeless_input_ops = binary_elem_wise_main_ops | set((Op.Split, Op.SplitV,))
Dwight Lidmanc7187432020-11-16 17:40:46 +0100103 per_axis_quant_ops = convolution_like_ops # per-axis/channel quantization only currently supported for conv ops
Michael McGeagh65fd9982020-10-20 11:49:28 +0100104 supported_fused_activations = relu_ops | set((Op.Tanh, Op.Sigmoid, Op.LUT,))
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100105 supported_operators = npu_pre_ops | mac_main_ops | elem_wise_main_ops | pad_ops | npu_post_ops | memory_only_ops
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100106 # Supported data types
107 supported_op_dtypes = set((DataType.uint8, DataType.int8, DataType.int16, DataType.int32))
108 supported_bias_dtypes = set((DataType.int32, DataType.int64))
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100109 supported_pad_dtypes = set((DataType.int32, DataType.int64))
Michael McGeagh37ded342020-10-01 15:37:44 +0100110 # Defined ranges for allowed values:
111 tens_dim_range = (1, 65535)
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100112 stride_range = (1, 3)
113 dilation_range = (1, 2)
114 dilated_height_range = (1, 64)
115 dilated_product_range = (1, 64 * 64)
116 weights_limit = 127 * 65536
Michael McGeagh65fd9982020-10-20 11:49:28 +0100117 filter_range = (1, 8)
118 filter_height_range = (1, 256)
119 filter_product_range = (1, 256 * 256)
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100120 # Supported consumers
121 supported_pad_consumers = convolution_ops | depthwise_convolution_ops
Michael McGeagh1eeea512020-09-30 14:23:09 +0100122
Fredrik Svedberg880e7352020-08-25 11:31:47 +0200123 def __init__(self):
Michael McGeagh184b2502020-10-09 17:19:52 +0100124 # Setup the generic constraints. Note: the order matters
Michael McGeagh37ded342020-10-01 15:37:44 +0100125 self.generic_constraints = []
Michael McGeagh65fd9982020-10-20 11:49:28 +0100126 self.generic_constraints.append(SupportedOperators.constraint_tens_no_dynamic)
Michael McGeagh37ded342020-10-01 15:37:44 +0100127 self.generic_constraints.append(SupportedOperators.constraint_tens_defined_shape)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100128 self.generic_constraints.append(SupportedOperators.constraint_tens_output_scalar)
129 self.generic_constraints.append(SupportedOperators.constraint_tens_input_scalar)
Michael McGeagh37ded342020-10-01 15:37:44 +0100130 self.generic_constraints.append(SupportedOperators.constraint_tens_shape_size)
131 self.generic_constraints.append(SupportedOperators.constraint_tens_dtype)
Michael McGeagh184b2502020-10-09 17:19:52 +0100132 self.generic_constraints.append(SupportedOperators.constraint_tens_int32_ops)
Michael McGeagh37ded342020-10-01 15:37:44 +0100133 self.generic_constraints.append(SupportedOperators.constraint_tens_dimension)
Dwight Lidman8359a472020-09-28 15:53:40 +0200134 self.generic_constraints.append(SupportedOperators.constraint_tens_quant_none_check)
Michael McGeagh184b2502020-10-09 17:19:52 +0100135 self.generic_constraints.append(SupportedOperators.constraint_tens_quant_scale)
Dwight Lidmanc7187432020-11-16 17:40:46 +0100136 self.generic_constraints.append(SupportedOperators.constraint_tens_quant_per_axis)
Michael McGeagh184b2502020-10-09 17:19:52 +0100137 self.generic_constraints.append(SupportedOperators.constraint_faf)
Louis Verhaard9a0cff12021-01-08 11:17:33 +0100138 self.generic_constraints.append(SupportedOperators.constraint_quant_scale_inf)
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100139
Michael McGeagh65fd9982020-10-20 11:49:28 +0100140 # Setup specific constraints. Note: the order matters
141 self.specific_constraints = defaultdict(list)
142
143 # Conv-like checks:
144 for op_type in SupportedOperators.convolution_like_ops:
145 self.specific_constraints[op_type].append(SupportedOperators.constraint_stride_type)
146 self.specific_constraints[op_type].append(SupportedOperators.constraint_stride_range)
147 self.specific_constraints[op_type].append(SupportedOperators.constraint_dilation_type)
148 self.specific_constraints[op_type].append(SupportedOperators.constraint_dilation_range)
149 self.specific_constraints[op_type].append(SupportedOperators.constraint_dilated_height_range)
150 self.specific_constraints[op_type].append(SupportedOperators.constraint_dilated_product_range)
151 self.specific_constraints[op_type].append(SupportedOperators.constraint_weights_type)
152 self.specific_constraints[op_type].append(SupportedOperators.constraint_weights_const)
153 self.specific_constraints[op_type].append(SupportedOperators.constraint_weights_limit)
154 self.specific_constraints[op_type].append(SupportedOperators.constraint_bias_type)
155 self.specific_constraints[op_type].append(SupportedOperators.constraint_bias_40bit)
156 self.specific_constraints[op_type].append(SupportedOperators.constraint_batch_size)
157 # Depthwise Conv specific checks:
158 for op_type in SupportedOperators.depthwise_convolution_ops:
159 self.specific_constraints[op_type].append(SupportedOperators.constraint_depth_multiplier)
160 # Transpose Conv specific checks:
161 for op_type in SupportedOperators.transpose_convolution_ops:
162 self.specific_constraints[op_type].append(SupportedOperators.constraint_tconv_stride)
163 self.specific_constraints[op_type].append(SupportedOperators.constraint_tconv_same)
164 self.specific_constraints[op_type].append(SupportedOperators.constraint_tconv_valid)
165
166 # Pooling checks:
167 for op_type in SupportedOperators.pooling_ops:
168 self.specific_constraints[op_type].append(SupportedOperators.constraint_batch_size)
169 self.specific_constraints[op_type].append(SupportedOperators.constraint_stride_type)
170 self.specific_constraints[op_type].append(SupportedOperators.constraint_stride_range)
171 # AVG pooling specific checks:
172 for op_type in SupportedOperators.avg_pooling_ops:
173 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_in_out_types)
174 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_type)
175 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_range)
176 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_height_range_valid_pad)
177 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_product_range_valid_pad)
178 # MAX pooling specific checks:
179 for op_type in SupportedOperators.max_pooling_ops:
180 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_in_out_types)
181 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_type)
182 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_height_range)
183 self.specific_constraints[op_type].append(SupportedOperators.constraint_filter_product_range)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100184
185 # Resizing specific checks:
186 for op_type in SupportedOperators.resizing_ops:
187 self.specific_constraints[op_type].append(SupportedOperators.constraint_resize)
188
189 # Vector Product specific checks:
190 for op_type in SupportedOperators.fc_vector_products:
191 self.specific_constraints[op_type].append(SupportedOperators.constraint_weights_type)
192 self.specific_constraints[op_type].append(SupportedOperators.constraint_weights_const)
193 self.specific_constraints[op_type].append(SupportedOperators.constraint_bias_type)
194 self.specific_constraints[op_type].append(SupportedOperators.constraint_bias_40bit)
195
196 # Concat specific checks:
197 for op_type in (Op.Concat, Op.ConcatTFLite):
198 self.specific_constraints[op_type].append(SupportedOperators.constraint_axis_exists)
199 self.specific_constraints[op_type].append(SupportedOperators.constraint_axis_valid)
200 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_dimensionality)
201 self.specific_constraints[op_type].append(SupportedOperators.constraint_valid_dimensions)
202
203 # Element-wise checks:
204 for op_type in SupportedOperators.elem_wise_main_ops:
205 self.specific_constraints[op_type].append(SupportedOperators.constraint_elemwise_batch_size)
206 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_either_shapes)
207 # Unary specific checks:
208 for op_type in SupportedOperators.unary_elem_wise_main_ops:
209 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_in_out_types)
210 # Binary Min/Max specific checks:
211 for op_type in SupportedOperators.binary_elem_wise_min_max_ops:
212 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_in_out_types)
213 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_quantization_parameters)
Andreas Nevalainend059d8b2020-11-19 14:40:35 +0100214 self.specific_constraints[op_type].append(SupportedOperators.constraint_broadcast_shapes)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100215 # Binary Add/Mul/Sub specific checks:
216 for op_type in SupportedOperators.binary_elem_wise_add_mul_sub:
217 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_inputs_types)
218 self.specific_constraints[op_type].append(SupportedOperators.constraint_matching_signed)
219 self.specific_constraints[op_type].append(SupportedOperators.constraint_unsigned_valid)
Andreas Nevalainend059d8b2020-11-19 14:40:35 +0100220 self.specific_constraints[op_type].append(SupportedOperators.constraint_broadcast_shapes)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100221 # Binary Shift specific checks:
222 for op_type in SupportedOperators.binary_elem_wise_shift_ops:
223 self.specific_constraints[op_type].append(SupportedOperators.constraint_inputs_int32)
Andreas Nevalainend059d8b2020-11-19 14:40:35 +0100224 self.specific_constraints[op_type].append(SupportedOperators.constraint_broadcast_shapes)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100225
226 # SHL specific checks:
227 self.specific_constraints[Op.SHL].append(SupportedOperators.constraint_output_int32)
228
229 # CLZ specific checks:
230 self.specific_constraints[Op.CLZ].append(SupportedOperators.constraint_output_int32)
231
232 # Softmax specific checks:
233 self.specific_constraints[Op.Softmax].append(SupportedOperators.constraint_matching_shapes)
234 self.specific_constraints[Op.Softmax].append(SupportedOperators.constraint_matching_in_out_types)
Patrik Gustavsson2fa15882020-11-13 09:02:31 +0100235 self.specific_constraints[Op.Softmax].append(SupportedOperators.constraint_beta_value_range)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100236
237 # SplitV specific checks:
238 self.specific_constraints[Op.SplitV].append(SupportedOperators.constraint_splitv_inferred)
239
240 # StridedSlice specific checks:
241 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_stridedslice_input_count)
242 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_stridedslice_inputs_const)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100243 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_stridedslice_stride_values)
244 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_ellipsis_mask)
245 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_axis_masks)
246 self.specific_constraints[Op.StridedSlice].append(SupportedOperators.constraint_slice_ranges)
247
248 # LeakyRelu specific checks:
249 self.specific_constraints[Op.LeakyRelu].append(SupportedOperators.constraint_alpha_valid)
Tim Hall79d07d22020-04-27 18:20:16 +0100250
Dwight Lidman0dd21c72020-11-24 13:45:50 +0100251 # FullyConnected specific checks:
252 self.specific_constraints[Op.FullyConnected].append(SupportedOperators.constraint_fc_output_2d)
253
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100254 # Pad specific checks:
255 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_matching_in_out_types)
256 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_matching_quantization_parameters)
257 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_input_count)
258 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_shape)
259 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_padding_dimensions)
260 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_type)
261 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_constant)
262 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_ofm)
Louis Verhaardebf4af62021-01-27 15:57:57 +0100263 self.specific_constraints[Op.Pad].append(SupportedOperators.constraint_pad_size)
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100264
Diqing Zhong189f7482021-01-26 12:12:51 +0100265 # HardSwish specific checks:
266 self.specific_constraints[Op.HardSwish].append(SupportedOperators.constraint_input_8bit)
267 self.specific_constraints[Op.HardSwish].append(SupportedOperators.constraint_matching_in_out_types)
268
Tim Hall79d07d22020-04-27 18:20:16 +0100269 def is_operator_supported(self, op):
Michael McGeagh219ec072020-11-09 11:11:26 +0000270 ext_type = optype_to_builtintype(op.type)
Michael McGeagh1eeea512020-09-30 14:23:09 +0100271 if op.type not in SupportedOperators.supported_operators:
Louis Verhaard5f2ea2f2020-10-15 08:39:44 +0200272 if op.type not in (Op.Placeholder, Op.SubgraphInput, Op.Const):
Michael McGeagh219ec072020-11-09 11:11:26 +0000273 print(f"Info: {ext_type} '{op.name}' is a CPU only op")
Tim Hall79d07d22020-04-27 18:20:16 +0100274 return False
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100275
Michael McGeagh65fd9982020-10-20 11:49:28 +0100276 for constraint in self.generic_constraints + self.specific_constraints[op.type]:
Michael McGeagh37ded342020-10-01 15:37:44 +0100277 valid, extra = constraint(op)
278 if not valid:
Michael McGeagh219ec072020-11-09 11:11:26 +0000279 print(f"Warning: {ext_type} '{op.name}' is not supported on the NPU. Placing on CPU instead")
Michael McGeagh65fd9982020-10-20 11:49:28 +0100280 print(f" - {constraint.__doc__}")
Michael McGeagh37ded342020-10-01 15:37:44 +0100281 if extra:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100282 print(f" {extra}")
Michael McGeagh37ded342020-10-01 15:37:44 +0100283 return False
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100284
Tim Hall79d07d22020-04-27 18:20:16 +0100285 return True
286
Michael McGeagh37ded342020-10-01 15:37:44 +0100287 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100288 def constraint_tens_no_dynamic(op):
289 "Input(s) and Output tensors must not be dynamic"
290 valid = True
291 extra = []
292 tensors = [tens for tens in op.inputs + op.outputs if tens]
293 for tens in tensors:
294 if (tens.shape == []) and (tens.values is None):
295 valid = False
296 extra.append(tens.name)
297 extra = ", ".join(extra)
298 return valid, f"Op has dynamic tensor(s): {extra}"
299
300 @staticmethod
Michael McGeagh37ded342020-10-01 15:37:44 +0100301 def constraint_tens_defined_shape(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100302 "Input(s) and Output tensors must have a defined shape"
Michael McGeagh37ded342020-10-01 15:37:44 +0100303 valid = True
304 extra = []
Michael McGeagh184b2502020-10-09 17:19:52 +0100305 tensors = [tens for tens in op.inputs + op.outputs if tens]
306 for tens in tensors:
307 if not tens.has_fully_defined_shape():
308 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100309 extra.append(f"Tensor '{tens.name}' has shape: {tens.shape}")
Michael McGeagh184b2502020-10-09 17:19:52 +0100310 return valid, ", ".join(extra)
Michael McGeagh37ded342020-10-01 15:37:44 +0100311
Michael McGeagh184b2502020-10-09 17:19:52 +0100312 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100313 def constraint_tens_output_scalar(op):
314 "Output tensors cannot be scalar"
315 ofm = op.ofm
316 valid = ofm.shape != []
317 return valid, f"Output Tensor '{ofm.name}' is scalar"
Michael McGeagh184b2502020-10-09 17:19:52 +0100318
319 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000320 @docstring_format_args([_optype_formatter(shapeless_input_ops)])
Michael McGeagh65fd9982020-10-20 11:49:28 +0100321 def constraint_tens_input_scalar(cls, op):
322 "Scalar Input tensors are only valid for op type: {}"
Michael McGeagh184b2502020-10-09 17:19:52 +0100323 valid = True
324 extra = []
325 tensors = [tens for tens in op.inputs if tens]
326 for tens in tensors:
327 if (tens.shape == []) and (op.type not in cls.shapeless_input_ops):
328 valid = False
329 extra.append(tens.name)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100330 extra = ", ".join(extra)
331 return valid, f"Op has scalar input tensor(s): {extra}"
Tim Hall79d07d22020-04-27 18:20:16 +0100332
Michael McGeagh37ded342020-10-01 15:37:44 +0100333 @staticmethod
334 def constraint_tens_shape_size(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100335 "Input(s) and Output tensors must not be greater than 4D"
Michael McGeagh37ded342020-10-01 15:37:44 +0100336 valid = True
337 extra = []
Michael McGeagh184b2502020-10-09 17:19:52 +0100338 tensors = [tens for tens in op.inputs + op.outputs if tens]
339 for tens in tensors:
340 if len(tens.shape) > 4:
341 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100342 extra.append(f"Tensor '{tens.name}' has shape: {tens.shape}")
Michael McGeagh184b2502020-10-09 17:19:52 +0100343 return valid, ", ".join(extra)
Tim Hall79d07d22020-04-27 18:20:16 +0100344
Michael McGeagh37ded342020-10-01 15:37:44 +0100345 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000346 @docstring_format_args([_list_formatter(supported_op_dtypes)])
Michael McGeagh37ded342020-10-01 15:37:44 +0100347 def constraint_tens_dtype(cls, op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100348 "Tensors must be of type: {}"
Michael McGeagh37ded342020-10-01 15:37:44 +0100349 valid = True
350 extra = []
351 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
Michael McGeagh65fd9982020-10-20 11:49:28 +0100352 if not tensors:
353 tensors = [tens for tens in op.inputs if tens]
Michael McGeagh37ded342020-10-01 15:37:44 +0100354 for tens in tensors:
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100355 if tens.dtype not in cls.supported_op_dtypes:
Michael McGeagh184b2502020-10-09 17:19:52 +0100356 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100357 extra.append(f"Tensor '{tens.name}' has data type: {tens.dtype}")
Michael McGeagh184b2502020-10-09 17:19:52 +0100358 return valid, ", ".join(extra)
359
360 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000361 @docstring_format_args([_optype_formatter(supported_int32_tensor_ops)])
Michael McGeagh184b2502020-10-09 17:19:52 +0100362 def constraint_tens_int32_ops(cls, op):
363 "Tensors which are int32 are only valid when op type is: {}"
364 valid = True
365 extra = []
366 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
Michael McGeagh65fd9982020-10-20 11:49:28 +0100367 if not tensors:
368 tensors = [tens for tens in op.inputs if tens]
Michael McGeagh184b2502020-10-09 17:19:52 +0100369 for tens in tensors:
370 if (tens.dtype == DataType.int32) and (op.type not in cls.supported_int32_tensor_ops):
371 valid = False
372 extra.append(tens.name)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100373 extra = ", ".join(extra)
374 return valid, f"Op has int32 tensor(s): {extra}"
Andreas Nevalaineneadb1662020-09-01 15:36:26 +0200375
Michael McGeagh37ded342020-10-01 15:37:44 +0100376 @classmethod
377 @docstring_format_args(tens_dim_range)
378 def constraint_tens_dimension(cls, op):
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100379 "Tensor dimensions must be in the range [{}, {}]"
Michael McGeagh37ded342020-10-01 15:37:44 +0100380 tens_min, tens_max = cls.tens_dim_range
381 valid = True
382 extra = []
383 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
Michael McGeagh65fd9982020-10-20 11:49:28 +0100384 if not tensors:
385 tensors = [tens for tens in op.inputs if tens]
Michael McGeagh37ded342020-10-01 15:37:44 +0100386 for tens in tensors:
Michael McGeagh184b2502020-10-09 17:19:52 +0100387 if not all(tens_min <= dim <= tens_max for dim in tens.shape):
388 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100389 extra.append(f"Tensor '{tens.name}' has shape: {tens.shape}")
Michael McGeagh184b2502020-10-09 17:19:52 +0100390 return valid, ", ".join(extra)
Tim Hall79d07d22020-04-27 18:20:16 +0100391
Dwight Lidman8359a472020-09-28 15:53:40 +0200392 @staticmethod
393 def constraint_tens_quant_none_check(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100394 "Input(s), Output and Weight tensors must have quantization parameters"
Dwight Lidman8359a472020-09-28 15:53:40 +0200395 valid = True
396 extra = []
397 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
398 for tens in tensors:
399 if tens.quantization is None:
400 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100401 extra.append(tens.name)
402 extra = ", ".join(extra)
403 return valid, f"Op has tensors with missing quantization parameters: {extra}"
Dwight Lidman8359a472020-09-28 15:53:40 +0200404
Michael McGeagh184b2502020-10-09 17:19:52 +0100405 @staticmethod
406 def constraint_tens_quant_scale(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100407 "Input(s), Output and Weight tensors with quantization scales must be finite"
Michael McGeagh184b2502020-10-09 17:19:52 +0100408 valid = True
409 extra = []
410 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
411 for tens in tensors:
412 if (tens.quantization.scale_f32 is not None) and np.isinf(tens.quantization.scale_f32).any():
413 valid = False
Michael McGeagh65fd9982020-10-20 11:49:28 +0100414 extra.append(f"Tensor '{tens.name}' has quantization scale: {tens.quantization.scale_f32}")
Michael McGeagh184b2502020-10-09 17:19:52 +0100415 return valid, ", ".join(extra)
416
417 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000418 @docstring_format_args([_optype_formatter(per_axis_quant_ops)])
Dwight Lidmanc7187432020-11-16 17:40:46 +0100419 def constraint_tens_quant_per_axis(cls, op):
420 "Per-axis quantization is only supported for the following op types: {}"
421 valid = True
422 extra = []
423 if op.type not in cls.per_axis_quant_ops:
424 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
425 for tens in tensors:
426 if tens.quantization.is_per_axis():
427 valid = False
428 extra.append(tens.name)
429 return valid, "The following tensor(s) have per-axis quantization parameters: " + ", ".join(extra)
430
Dwight Lidman0dd21c72020-11-24 13:45:50 +0100431 @staticmethod
432 def constraint_fc_output_2d(op):
433 "The output tensor(s) must have 2D shape"
434 valid = True
435 extra = []
436 for tens in op.outputs:
437 if len(tens.shape) != 2:
438 valid = False
439 extra.append(f"Tensor '{tens.name}' is {len(tens.shape)}D")
440 return valid, ", ".join(extra)
441
Dwight Lidmanc7187432020-11-16 17:40:46 +0100442 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000443 @docstring_format_args([_optype_formatter(supported_fused_activations)])
Michael McGeagh184b2502020-10-09 17:19:52 +0100444 def constraint_faf(cls, op):
445 "The fused activation function (if present) must be one of type: {}"
Louis Verhaarde8a5a782020-11-02 18:04:27 +0100446 if op.activation is None:
447 res = True, "Op has no fused activation function"
448 else:
449 faf = op.activation.op_type
450 valid = faf in cls.supported_fused_activations
451 res = valid, f"Op has its fused activation function as: {faf}"
452 return res
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100453
454 @staticmethod
455 def constraint_stride_type(op):
456 "Stride values for both width and height must be integer types"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100457 w, h = op.get_kernel_stride()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100458 valid = is_integer(w) and is_integer(h)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100459 return valid, f"Op has stride WxH as: {repr(w)}x{repr(h)}"
Michael McGeagh184b2502020-10-09 17:19:52 +0100460
Michael McGeagh1eeea512020-09-30 14:23:09 +0100461 @classmethod
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100462 @docstring_format_args(stride_range)
463 def constraint_stride_range(cls, op):
464 "Stride values for both width and height must be in the range [{}, {}]"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100465 w, h = op.get_kernel_stride()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100466 stride_min, stride_max = cls.stride_range
467 valid = (stride_min <= w <= stride_max) and (stride_min <= h <= stride_max)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100468 return valid, f"Op has stride WxH as: {w}x{h}"
Tim Hall79d07d22020-04-27 18:20:16 +0100469
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100470 @staticmethod
471 def constraint_dilation_type(op):
472 "Dilation factor values for both width and height must be integer types"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100473 w, h = op.get_kernel_dilation()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100474 valid = is_integer(w) and is_integer(h)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100475 return valid, f"Op has dilation factor WxH as: {repr(w)}x{repr(h)}"
Tim Hall79d07d22020-04-27 18:20:16 +0100476
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100477 @classmethod
478 @docstring_format_args(dilation_range)
479 def constraint_dilation_range(cls, op):
480 "Dilation factor values for both width and height must be in the range [{}, {}]"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100481 w, h = op.get_kernel_dilation()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100482 dilation_min, dilation_max = cls.dilation_range
483 valid = (dilation_min <= w <= dilation_max) and (dilation_min <= h <= dilation_max)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100484 return valid, f"Op has dilation factor WxH as: {w}x{h}"
Tim Hall79d07d22020-04-27 18:20:16 +0100485
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100486 @classmethod
487 @docstring_format_args(dilated_height_range)
488 def constraint_dilated_height_range(cls, op):
489 "Dilated kernel height must be in the range [{}, {}]"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100490 h = op.kernel.area_height()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100491 dilated_height_min, dilated_height_max = cls.dilated_height_range
492 valid = dilated_height_min <= h <= dilated_height_max
Michael McGeagh65fd9982020-10-20 11:49:28 +0100493 return valid, f"Op has dilated kernel height as: {h}"
Jacob Bohlin49d92122020-08-19 14:36:46 +0200494
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100495 @classmethod
496 @docstring_format_args(dilated_product_range)
497 def constraint_dilated_product_range(cls, op):
498 "Product of dilated kernel width and height must be in the range [{}, {}]"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100499 product = op.kernel.area_width() * op.kernel.area_height()
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100500 dilated_product_min, dilated_product_max = cls.dilated_product_range
501 valid = dilated_product_min <= product <= dilated_product_max
Michael McGeagh65fd9982020-10-20 11:49:28 +0100502 return valid, f"Op has product of dilated kernel width and height as: {product}"
Andreas Nevalainenf0c59bf2020-08-26 10:56:23 +0200503
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100504 @staticmethod
505 def constraint_weights_type(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100506 "Weight tensor must be 8-bit"
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100507 weights = op.weights
508 valid = weights.element_size() == 1
Michael McGeagh65fd9982020-10-20 11:49:28 +0100509 return valid, f"Tensor '{weights.name}' is {int(weights.element_size() * 8)}-bit"
Andreas Nevalainenf0c59bf2020-08-26 10:56:23 +0200510
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100511 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100512 def constraint_weights_const(op):
513 "Weight tensor must be constant"
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100514 weights = op.weights
515 valid = weights.values is not None
Michael McGeagh65fd9982020-10-20 11:49:28 +0100516 return valid, f"Tensor '{weights.name}' has non-constant values"
Andreas Nevalainen8854dc92020-09-24 13:43:00 +0200517
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100518 @classmethod
519 @docstring_format_args([weights_limit])
520 def constraint_weights_limit(cls, op):
521 "The sum of the weights cannot exceed {}"
522 weights = op.weights
523 values = weights.quant_values.astype(np.int64) - weights.quantization.zero_point
524 limit = np.amax(np.sum(np.absolute(values), axis=(0, 1, 2)))
525 valid = limit <= cls.weights_limit
Michael McGeagh65fd9982020-10-20 11:49:28 +0100526 return valid, f"Tensor '{weights.name}' has the sum of weights: {limit}"
Andreas Nevalainenf0c59bf2020-08-26 10:56:23 +0200527
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100528 @classmethod
Michael McGeagh34d29172020-11-25 12:36:23 +0000529 @docstring_format_args([_list_formatter(supported_bias_dtypes)])
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100530 def constraint_bias_type(cls, op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100531 "Optional Bias tensor must be of type: {}"
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100532 bias = op.bias
533 if bias:
534 valid = bias.dtype in cls.supported_bias_dtypes
Michael McGeagh65fd9982020-10-20 11:49:28 +0100535 return valid, f"Tensor '{bias.name}' has data type: {bias.dtype}"
536 return True, "Op has no bias tensor"
Tim Hall79d07d22020-04-27 18:20:16 +0100537
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100538 @staticmethod
539 def constraint_bias_40bit(op):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100540 "Optional Bias tensor values must fit within 40-bits"
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100541 bias = op.bias
Fredrik Svedbergbdf09f92020-11-18 11:30:21 +0100542 if bias and bias.dtype == DataType.int64 and bias.quant_values is not None:
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100543 valid = all(len(bin(quant_value)[2:]) <= 40 for quant_value in bias.quant_values)
Michael McGeagh65fd9982020-10-20 11:49:28 +0100544 return valid, f"Tensor '{bias.name}' has values larger than 40-bits"
545 return True, "Op has no bias tensor, or it fits in 40-bit"
Andreas Nevalainend8c032d2020-09-11 10:25:09 +0200546
Michael McGeagh1f951fc2020-10-14 09:30:02 +0100547 @staticmethod
548 def constraint_batch_size(op):
549 "IFM Tensor batch size must be 1"
550 ifm = op.ifm
551 valid = ifm.shape[0] == 1
Michael McGeagh65fd9982020-10-20 11:49:28 +0100552 return valid, f"Tensor '{ifm.name}' has batch size: {ifm.shape[0]}"
553
554 @staticmethod
555 def constraint_quant_scale_inf(op):
Louis Verhaard9a0cff12021-01-08 11:17:33 +0100556 "Input and Output tensors must have quantization scales that fit within float32 precision"
557 if op.ofm is not None and op.ofm.is_quantized():
558 ofm_scale = op.ofm.quantization.scale_f32
559 if ofm_scale < np.finfo(np.float32).tiny:
560 return (
561 False,
562 f"The quantization scale of the output tensor is {ofm_scale}, "
563 + f"minimum supported is: {np.finfo(np.float32).tiny}",
564 )
565 if op.ifm is not None and op.ifm.is_quantized():
566 ifm_scale = op.ifm.quantization.scale_f32
567 if np.isinf(ifm_scale / ofm_scale):
568 return (
569 False,
570 f"IFM scale divided by OFM scale is infinite, ifm_scale={ifm_scale} ofm_scale={ofm_scale}",
571 )
572 return True, "Op's quantization is ok"
Michael McGeagh65fd9982020-10-20 11:49:28 +0100573
574 @staticmethod
575 def constraint_depth_multiplier(op):
576 "For depth multipliers > 1, IFM channels must be 1 and OFM channels must be equal to the depth multiplier"
577 depth_multiplier = op.attrs.get("depth_multiplier", 1)
578 if depth_multiplier > 1:
579 ifm_channels = op.ifm.shape[3]
580 ofm_channels = op.ofm.shape[3]
581 valid = (ifm_channels == 1) and (ofm_channels == depth_multiplier)
582 extra = (
583 f"Op has ifm_channels={ifm_channels}, ofm_channels={ofm_channels}"
584 f" and depth_multiplier={depth_multiplier}"
585 )
586 return valid, extra
587 return True, "Op has depth_multiplier=1"
588
589 @staticmethod
590 def constraint_tconv_stride(op):
591 "Stride values for both width and height must be 2"
592 w = op.kernel.stride.x
593 h = op.kernel.stride.y
594 valid = (w == 2) and (h == 2)
595 return valid, f"Op has stride WxH as: {w}x{h}"
596
597 @staticmethod
598 def constraint_tconv_same(op):
599 "SAME padding: OFM dimensions must equal IFM dimensions multiplied by stride"
Michael McGeagh16895482020-12-14 15:51:20 +0000600 if op.attrs["padding"] == Padding.SAME:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100601 w = op.kernel.stride.x
602 h = op.kernel.stride.y
603 ifm_shape = op.ifm.shape
604 ofm_shape = op.ofm.shape
605 valid = (ofm_shape[1] == (ifm_shape[1] * h)) and (ofm_shape[2] == (ifm_shape[2] * w))
606 return valid, f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape} and stride WxH as {w}x{h}"
607 return True, "Op has padding=VALID"
608
609 @staticmethod
610 def constraint_tconv_valid(op):
611 """VALID padding: OFM dimensions must equal IFM dimensions multiplied by stride,
612 minus difference between kernel size and stride"""
Michael McGeagh16895482020-12-14 15:51:20 +0000613 if op.attrs["padding"] == Padding.VALID:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100614 s_w = op.kernel.stride.x
615 s_h = op.kernel.stride.y
616 k_w = op.kernel.width
617 k_h = op.kernel.height
618 ifm_shape = op.ifm.shape
619 ofm_shape = op.ofm.shape
620 height_check = ofm_shape[1] == (ifm_shape[1] * s_h + max(k_h - s_h, 0))
621 width_check = ofm_shape[2] == (ifm_shape[2] * s_w + max(k_w - s_w, 0))
622 valid = height_check and width_check
623 extra = (
624 f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape},"
625 f" stride WxH as {s_w}x{s_h} and kernel WxH as {k_w}x{k_h}"
626 )
627 return valid, extra
628 return True, "Op has padding=SAME"
629
630 @staticmethod
631 def constraint_matching_in_out_types(op):
632 "IFM and OFM data types must match"
633 ifm_dtype = op.ifm.dtype
634 ofm_dtype = op.ofm.dtype
635 valid = ifm_dtype == ofm_dtype
636 return valid, f"Op has ifm_dtype={ifm_dtype} and ofm_dtype={ofm_dtype}"
637
638 @staticmethod
Patrik Gustavsson2fa15882020-11-13 09:02:31 +0100639 def constraint_beta_value_range(op):
640 "Beta value needs to be positive"
641 beta = op.attrs.get("beta", 1.0)
642 valid = beta >= 0
643 return valid, f"Op has beta={beta}"
644
645 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100646 def constraint_filter_type(op):
647 "Kernel filter values for both width and height must be integer types"
648 w = op.kernel.width
649 h = op.kernel.height
650 valid = is_integer(w) and is_integer(h)
651 return valid, f"Op has kernel filter WxH as: {repr(w)}x{repr(h)}"
652
653 @classmethod
654 @docstring_format_args(filter_range)
655 def constraint_filter_range(cls, op):
656 "Kernel filter values for both width and height must be in the range [{}, {}]"
Michael McGeagh16895482020-12-14 15:51:20 +0000657 if op.attrs["padding"] == Padding.SAME:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100658 w = op.kernel.width
659 h = op.kernel.height
660 filter_min, filter_max = cls.filter_range
661 valid = (filter_min <= w <= filter_max) and (filter_min <= h <= filter_max)
662 return valid, f"Op has kernel filter WxH as: {w}x{h}"
663 return True, "Op has padding=VALID"
664
665 @classmethod
666 @docstring_format_args(filter_height_range)
667 def constraint_filter_height_range(cls, op):
668 "Kernel filter height must be in the range [{}, {}]"
669 h = op.kernel.height
670 filter_height_min, filter_height_max = cls.filter_height_range
671 valid = filter_height_min <= h <= filter_height_max
672 return valid, f"Op has kernel filter height as: {h}"
673
674 @classmethod
675 @docstring_format_args(filter_product_range)
676 def constraint_filter_product_range(cls, op):
677 "Product of kernel filter width and height must be in the range [{}, {}]"
678 product = op.kernel.elements_wh()
679 filter_product_min, filter_product_max = cls.filter_product_range
680 valid = filter_product_min <= product <= filter_product_max
681 return valid, f"Op has product of kernel filter width and height as: {product}"
682
683 @staticmethod
684 @docstring_format_args(filter_height_range)
685 def constraint_filter_height_range_valid_pad(op):
686 "VALID padding: Kernel filter height must be in the range [{}, {}]"
Michael McGeagh16895482020-12-14 15:51:20 +0000687 if op.attrs["padding"] == Padding.VALID:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100688 return SupportedOperators.constraint_filter_height_range(op)
689 return True, "Op has padding=SAME"
690
691 @staticmethod
692 @docstring_format_args(filter_product_range)
693 def constraint_filter_product_range_valid_pad(op):
694 "VALID padding: Product of kernel filter width and height must be in the range [{}, {}]"
Michael McGeagh16895482020-12-14 15:51:20 +0000695 if op.attrs["padding"] == Padding.VALID:
Michael McGeagh65fd9982020-10-20 11:49:28 +0100696 return SupportedOperators.constraint_filter_product_range(op)
697 return True, "Op has padding=SAME"
698
699 @staticmethod
700 def constraint_resize(op):
701 """The width and height of the IFM and OFM must match one of the following criteria:
702 IFM W and H must both be 1
703 IFM must match OFM
704 OFM W and H must be 2x IFM -1, if align_corners is True
705 OFM W and H must be 2x IFM, if align_corners is False"""
706 # Easier to start with False condition as very few cases result in a supported resize
707 valid = False
708 ifm_shape = op.ifm.shape
709 ofm_shape = op.ofm.shape
710 align_corners = op.attrs.get("align_corners", False)
711 if len(ifm_shape) == 4:
712 # Valid if IFM W and H are both 1, or IFM and OFM shape are the same
713 if ((ifm_shape[1] == 1) and (ifm_shape[2] == 1)) or (ifm_shape == ofm_shape):
714 valid = True
715 else:
716 upscaled_shape = np.array(ifm_shape[1:3])
717 out_shape = np.array(ofm_shape[1:3])
718 while (upscaled_shape < out_shape).all():
719 upscaled_shape *= 2
720 if align_corners:
721 upscaled_shape -= 1
722 # Valid if OFM is 2x IFM (-1 for align corners)
723 if np.array_equal(out_shape, upscaled_shape):
724 valid = True
725 break
726 return valid, f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape} and align_corners={align_corners}"
727
728 @staticmethod
729 def constraint_matching_shapes(op):
730 "IFM and OFM shapes must match"
731 ifm_shape = op.ifm.shape
732 ofm_shape = op.ofm.shape
733 valid = ifm_shape == ofm_shape
734 return valid, f"Op has ifm_shape={ifm_shape} and ofm_shape={ofm_shape}"
735
736 @staticmethod
737 def constraint_splitv_inferred(op):
738 "Only one size is allowed to be inferred"
Jacob Bohline3de4e52020-11-27 14:52:06 +0100739 sizes = op.inputs[1].values
Michael McGeagh65fd9982020-10-20 11:49:28 +0100740 valid = np.count_nonzero(sizes == -1) <= 1
741 return valid, f"Op has multiple inferred sizes (-1): {sizes}"
742
743 @staticmethod
744 def constraint_axis_exists(op):
745 "Axis attribute must exist"
746 axis = op.attrs.get("axis")
747 valid = axis is not None
748 return valid, f"Op has axis={axis}"
749
750 @staticmethod
751 def constraint_axis_valid(op):
752 "Axis attribute must be in the range [0, <ofm_dimensions>)"
753 dims = len(op.ofm.shape)
754 axis = op.attrs["axis"]
755 axis += dims if axis < 0 else 0
756 valid = 0 <= axis < dims
757 return valid, f"Op has ofm_dimensions={dims} and axis attribute is: {axis}"
758
759 @staticmethod
760 def constraint_matching_dimensionality(op):
761 "All Input dimensionalities must match OFM dimensionality"
762 valid = True
763 extra = []
764 ofm_dim = len(op.ofm.shape)
765 tensors = [tens for tens in op.inputs if tens]
766 for tens in tensors:
767 dim = len(tens.shape)
768 if dim != ofm_dim:
769 valid = False
770 extra.append(f"Tensor '{tens.name}' has dimension: {dim}")
771 extra = ", ".join(extra)
772 return valid, f"Op has ofm_dimension={ofm_dim} and the list of mismatching inputs are: {extra}"
773
774 @staticmethod
775 def constraint_valid_dimensions(op):
776 "All Input dimensions must match OFM dimension in all axes except the one defined by the axis attribute"
777 valid = True
778 extra = []
779 ofm_shape = op.ofm.shape
780 ofm_dim = len(ofm_shape)
781 axis = op.attrs["axis"]
782 axis += ofm_dim if axis < 0 else 0
783 tensors = [tens for tens in op.inputs if tens]
784 for tens in tensors:
785 if any(tens.shape[dim] != ofm_shape[dim] for dim in range(ofm_dim) if dim != axis):
786 valid = False
787 extra.append(f"Tensor '{tens.name}' has shape: {tens.shape}")
788 extra = ", ".join(extra)
789 return valid, f"Op has axis={axis}, ofm_shape={ofm_shape} and the list of mismatching inputs are: {extra}"
790
791 @staticmethod
792 def constraint_stridedslice_input_count(op):
793 "Exactly 4 Input tensors are required"
794 inputs = len(op.inputs)
795 valid = inputs == 4
796 return valid, f"Op has {inputs} inputs"
797
798 @staticmethod
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100799 def constraint_pad_input_count(op):
800 "Number of input tensors must be exactly 2"
801 inputs = len(op.inputs)
802 valid = inputs == 2
803 return valid, f"Op has {inputs} inputs"
804
805 @staticmethod
806 def constraint_pad_shape(op):
807 "The padding tensor must have the shape [4,2]"
808 valid = op.inputs[1].shape == [4, 2]
809 return valid, f"The pad tensor has the shape: {op.inputs[1].shape}"
810
811 @classmethod
812 @docstring_format_args([_list_formatter(supported_pad_dtypes)])
813 def constraint_pad_type(cls, op):
814 "Pad tensor must be of type: {}"
815 pad_tensor = op.inputs[1]
816 valid = pad_tensor.dtype in cls.supported_pad_dtypes
817 return valid, f"Tensor '{pad_tensor.name}' has data type: {pad_tensor.dtype}"
818
819 @staticmethod
820 def constraint_padding_dimensions(op):
821 "The pad tensor can only pad width and height"
822 pad_tensor = op.inputs[1].values
823 valid = sum(pad_tensor[0, :]) + sum(pad_tensor[-1, :]) == 0
824 return valid, f"First dimension padding: {pad_tensor[0,:]}, last dimension padding: {pad_tensor[-1,:]}"
825
826 @staticmethod
827 def constraint_pad_constant(op):
828 pad_tensor = op.inputs[1].values
829 valid = pad_tensor is not None
830 return valid, f"Op has non-constant padding tensor: {op.inputs[1].values}"
831
832 @classmethod
833 @docstring_format_args([_optype_formatter(supported_pad_consumers)])
834 def constraint_pad_ofm(cls, op):
835 "Must be followed by one of the following operator types: {}"
836 consumers = op.ofm.consumers()
erik.andersson@arm.com7b676492021-01-18 14:23:12 +0100837 unsupported_consumers = [
838 cons.type
839 for cons in consumers
840 if cons is not None
841 if cons.type not in cls.supported_pad_consumers or cons.attrs["padding"] != Padding.VALID
842 ] + [None for cons in consumers if cons is None]
843 none_string = ", ".join(["NoneType" for cons in consumers if cons is None])
844 valid = len(unsupported_consumers) == 0
845 return valid, f"PAD operator is followed by: {_optype_formatter(unsupported_consumers)+none_string}"
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100846
847 @staticmethod
Louis Verhaardebf4af62021-01-27 15:57:57 +0100848 def __leading_pad_ok(leading_pad, stride, kernel_size):
849 # If kernel size // 2 > stride, then (left, top) padding must be a multiple of stride,
850 # otherwise replacing PAD by hardware padding would iterate the wrong IFM rows/columns
851 max_size = kernel_size // 2
852 return leading_pad == max_size or max_size <= stride or leading_pad % stride == 0
853
854 @staticmethod
855 def constraint_pad_size(op):
856 "Padding must be at most kernel size divided by 2"
857 if SupportedOperators.constraint_pad_ofm(op)[0]:
858 padding = op.inputs[1].values # 4x2 tensor, first dimension is N, H, W, C
859 top, left, bottom, right = (padding[1][0], padding[2][0], padding[1][1], padding[2][1])
860 for cons in op.ofm.consumers():
861 if cons is not None:
862 # Note: pre-order graph traversal removes inputs of operators that are in traversal,
863 # which makes it impossible to calculate kernel size, hence use cached _kernel for those operators
864 k = cons.kernel if cons.inputs else cons._kernel
865 k_w, k_h = k.dilated_wh()
866 if left > k_w // 2:
867 return False, f"Left padding is {left}, kernel width is {k_w}"
868 if right > k_w // 2:
869 return False, f"Right padding is {right}, kernel width is {k_w}"
870 if top > k_h // 2:
871 return False, f"Top padding is {top}, kernel height is {k_h}"
872 if bottom > k_h // 2:
873 return False, f"Bottom padding is {bottom}, kernel height is {k_h}"
874 if not SupportedOperators.__leading_pad_ok(top, k.stride.y, k_h):
875 return False, f"Top padding is {top}, must be {k_h // 2} or multiple of {k.stride.y}"
876 if not SupportedOperators.__leading_pad_ok(left, k.stride.x, k_w):
877 return False, f"Left padding is {left}, must be {k_w // 2} or multiple of {k.stride.x}"
878 return True, "Pad size is ok"
879
880 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100881 def constraint_stridedslice_inputs_const(op):
882 "Begin, End and Stride Input tensors must be constant"
883 valid = True
884 extra = []
885 _, begin, end, strides = op.inputs
886 if begin.values is None:
887 valid = False
888 extra.append(f"Begin tensor '{begin.name}'")
889 if end.values is None:
890 valid = False
891 extra.append(f"End tensor '{end.name}'")
892 if strides.values is None:
893 valid = False
894 extra.append(f"Stride tensor '{strides.name}'")
895 extra = ", ".join(extra)
896 return valid, f"Op has non-constant tensors: {extra}"
897
898 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100899 def constraint_stridedslice_stride_values(op):
900 "All Strides values must be 1"
901 strides = op.inputs[3]
902 valid = all(stride == 1 for stride in strides.values)
903 return valid, f"Op has strides values {strides.values}"
Tim Hall79d07d22020-04-27 18:20:16 +0100904
Michael McGeagh65fd9982020-10-20 11:49:28 +0100905 @staticmethod
906 def constraint_ellipsis_mask(op):
907 "ellipsis_mask must be 0"
908 ellipsis = op.attrs["ellipsis_mask"]
909 valid = ellipsis == 0
910 return valid, f"Op has ellipsis mask as: {ellipsis}"
Jacob Bohlincf7da102020-05-20 09:03:40 +0200911
Michael McGeagh65fd9982020-10-20 11:49:28 +0100912 @staticmethod
913 def constraint_axis_masks(op):
914 "new_axis_mask and shrink_axis_mask cannot both be set"
915 new_axis = op.attrs["new_axis_mask"]
916 shrink_axis = op.attrs["shrink_axis_mask"]
917 valid = (new_axis == 0) or (shrink_axis == 0)
918 return valid, f"Op has new_axis_mask={new_axis} and shrink_axis_mask={shrink_axis}"
Jacob Bohlincf7da102020-05-20 09:03:40 +0200919
Michael McGeagh65fd9982020-10-20 11:49:28 +0100920 @staticmethod
921 def constraint_slice_ranges(op):
922 "Slice 'end' values must be greater than 'begin' values"
923 ifm, begin, end, _ = op.inputs
924 # Calculate offset begin/end
925 offset_begin = get_slice_offsets(ifm.shape, begin, op.attrs["begin_mask"], is_begin=True)
926 offset_end = get_slice_offsets(ifm.shape, end, op.attrs["end_mask"], is_begin=False)
927 # Check "end - begin" doesn't result in any zero or negative elements
928 valid = all((e - b) > 0 for b, e in zip(offset_begin, offset_end))
929 return valid, f"Op has begin_values={begin.values} and end_values={end.values}"
Tim Hall79d07d22020-04-27 18:20:16 +0100930
Michael McGeagh65fd9982020-10-20 11:49:28 +0100931 @staticmethod
932 def constraint_matching_inputs_types(op):
933 "Both Input data types must match"
934 ifm_dtype = op.ifm.dtype
935 ifm2_dtype = op.ifm2.dtype
936 valid = ifm_dtype == ifm2_dtype
937 return valid, f"Op has ifm_dtype={ifm_dtype} and ifm2_dtype={ifm2_dtype}"
Tim Hall79d07d22020-04-27 18:20:16 +0100938
Michael McGeagh65fd9982020-10-20 11:49:28 +0100939 @staticmethod
940 def constraint_matching_signed(op):
941 "For IFM that are signed, OFM must also be signed"
942 valid = True
943 ifm_dtype = op.ifm.dtype
944 ofm_dtype = op.ofm.dtype
945 if ifm_dtype.type & BaseType.Signed:
946 valid = bool(ofm_dtype.type & BaseType.Signed)
947 return valid, f"Op has ifm_dtype={ifm_dtype} and ofm_dtype={ofm_dtype}"
Tim Hall79d07d22020-04-27 18:20:16 +0100948
Michael McGeagh65fd9982020-10-20 11:49:28 +0100949 @staticmethod
950 def constraint_unsigned_valid(op):
951 "For IFM that are unsigned, OFM must either be the same type or int32"
952 valid = True
953 ifm_dtype = op.ifm.dtype
954 ofm_dtype = op.ofm.dtype
955 if ifm_dtype.type & BaseType.Unsigned:
956 valid = (ifm_dtype == ofm_dtype) or (ofm_dtype == DataType.int32)
957 return valid, f"Op has ifm_dtype={ifm_dtype} and ofm_dtype={ofm_dtype}"
Tim Hall79d07d22020-04-27 18:20:16 +0100958
Michael McGeagh65fd9982020-10-20 11:49:28 +0100959 @staticmethod
960 def constraint_inputs_int32(op):
961 "Both Input data types must be int32"
962 ifm_dtype = op.ifm.dtype
963 ifm2_dtype = op.ifm2.dtype
964 valid = (ifm_dtype == DataType.int32) and (ifm2_dtype == DataType.int32)
965 return valid, f"Op has ifm_dtype={ifm_dtype} and ifm2_dtype={ifm2_dtype}"
Tim Hall79d07d22020-04-27 18:20:16 +0100966
Michael McGeagh65fd9982020-10-20 11:49:28 +0100967 @staticmethod
968 def constraint_output_int32(op):
969 "OFM must be int32"
970 ofm_dtype = op.ofm.dtype
971 valid = ofm_dtype == DataType.int32
972 return valid, f"Op has ofm_dtype={ofm_dtype}"
Dwight Lidman42fed942020-05-29 09:37:03 +0200973
Michael McGeagh65fd9982020-10-20 11:49:28 +0100974 @staticmethod
Diqing Zhong189f7482021-01-26 12:12:51 +0100975 def constraint_input_8bit(op):
976 "IFM must be int8 or uint8"
977 ifm_dtype = op.ifm.dtype
978 valid = (ifm_dtype == DataType.int8) or (ifm_dtype == DataType.uint8)
979 return valid, f"Op has ifm_dtype={ifm_dtype}"
980
981 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +0100982 def constraint_matching_quantization_parameters(op):
983 "Both Input quantization parameters must match OFM quantization parameters"
984 valid = True
985 extra = []
986 if not check_quantized_tens_scaling_equal(op.ofm, op.ifm):
987 valid = False
988 extra.append(op.ifm.name)
Erik Anderssonf27a8b62020-12-10 14:58:23 +0100989 if op.ifm2 is not None and not check_quantized_tens_scaling_equal(op.ofm, op.ifm2):
Michael McGeagh65fd9982020-10-20 11:49:28 +0100990 valid = False
991 extra.append(op.ifm2.name)
992 extra = ", ".join(extra)
993 return valid, f"Op has tensors with different quantization parameters to the OFM '{op.ofm.name}': {extra}"
Dwight Lidman8359a472020-09-28 15:53:40 +0200994
Michael McGeagh65fd9982020-10-20 11:49:28 +0100995 @staticmethod
996 def constraint_elemwise_batch_size(op):
997 "Batch size must be 1 for Input tensors with more than 2 dimensions"
998 valid = True
999 extra = []
1000 for tens in (op.ifm, op.ifm2):
1001 # Unary ops have ifm2 as None
1002 if tens is not None:
1003 if (len(tens.shape) > 2) and (tens.shape[0] != 1):
1004 valid = False
1005 extra.append(tens.name)
1006 extra = ", ".join(extra)
1007 return valid, f"Op has invalid input tensors: {extra}"
Jacob Bohlin49d92122020-08-19 14:36:46 +02001008
Michael McGeagh65fd9982020-10-20 11:49:28 +01001009 @staticmethod
1010 def constraint_matching_either_shapes(op):
1011 "At least one Input's shape must match the OFM's shape"
1012 ifm_shape = op.ifm.shape
1013 ifm2_shape = op.ifm2.shape if op.ifm2 else None
1014 ofm_shape = op.ofm.shape
1015 valid = (ifm_shape == ofm_shape) or (ifm2_shape == ofm_shape)
1016 return valid, f"Op has ifm_shape={ifm_shape}, ifm2_shape={ifm2_shape} and ofm_shape={ofm_shape}"
Andreas Nevalainend8c032d2020-09-11 10:25:09 +02001017
Michael McGeagh65fd9982020-10-20 11:49:28 +01001018 @staticmethod
Andreas Nevalainend059d8b2020-11-19 14:40:35 +01001019 def constraint_broadcast_shapes(op):
1020 "Broadcasting is only allowed for rank indices with dimension 1, from either IFM1 or IFM2"
1021 ifm_shape = op.ifm.shape
1022 ifm2_shape = op.ifm2.shape if op.ifm2 else None
1023 ofm_shape = op.ofm.shape
1024 valid = True
1025 if ifm_shape is not None and ifm2_shape is not None:
1026 # align trailing dimensions
1027 size = min(len(ifm_shape), len(ifm2_shape))
1028 for i, i2, o in zip(ifm_shape[-size:], ifm2_shape[-size:], ofm_shape[-size:]):
1029 mi = max(i, i2)
1030 # Input dimensions should match or one should be of dimension 1
1031 # Output dimension should match the largest input dimension, together
1032 # with constraint_match_either_shapes ensures broadcast from only one input
1033 if not (i == i2 or i == 1 or i2 == 1) or o != mi:
1034 valid = False
1035 break
1036
1037 return valid, f"Op has ifm_shape={ifm_shape} and ifm2_shape={ifm2_shape}"
1038
1039 @staticmethod
Michael McGeagh65fd9982020-10-20 11:49:28 +01001040 def constraint_alpha_valid(op):
1041 "Alpha must not be negative"
1042 alpha = op.attrs["alpha"]
1043 valid = alpha >= 0
1044 return valid, f"Op has alpha={alpha}"