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Rickard Bolinfea15162022-07-04 16:19:16 +00001# Copyright (C) 2020-2022 Arm Limited or its affiliates. All rights reserved.
Jonas Ohlsson45e653d2021-07-26 16:13:12 +02002#
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.
16# Description:
17# The TFLiteSupportedOperators class which is a collection of all TFLite supported operators and parameter checks.
18from collections import defaultdict
19
20import numpy as np
21
22from .data_type import DataType
Fredrik Svedberg88d5b122022-09-16 16:24:55 +020023from .numeric_util import full_shape
Jonas Ohlsson45e653d2021-07-26 16:13:12 +020024from .operation import Op
25from .operation import Padding
26from .supported_operators_util import docstring_format_args
27from .supported_operators_util import list_formatter
28from .tensor import check_quantized_tens_scaling_equal
29from .tflite_mapping import BUILTIN_OPERATOR_UNKNOWN
30from .tflite_mapping import optype_to_builtintype
31
32
33def _optype_formatter(op_list):
34 # Convert internal op types to external names
35 output = map(optype_to_builtintype, op_list)
36 # Remove UNKNOWNs
37 output = (x for x in output if x is not BUILTIN_OPERATOR_UNKNOWN)
38 return list_formatter(output)
39
40
41class TFLiteSupportedOperators:
42 # Categorised lists of supported operators
Fredrik Svedberg11563172022-07-06 14:54:12 +020043 npu_pre_ops = set(
44 (
45 Op.SplitSliceRead,
46 Op.Shape,
47 )
48 )
Jonas Ohlssond8575072022-03-30 10:30:25 +020049 convolution_ops = set(
50 (
51 Op.Conv2DBias,
52 Op.Conv2D,
53 Op.QuantizedConv2D,
54 )
55 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +020056 depthwise_convolution_ops = set((Op.DepthwiseConv2DBias,))
57 transpose_convolution_ops = set((Op.Conv2DBackpropInput,))
58 convolution_like_ops = convolution_ops | depthwise_convolution_ops | transpose_convolution_ops
59 max_pooling_ops = Op.op_set(Op.is_maxpool_op)
60 avg_pooling_ops = Op.op_set(Op.is_avgpool_op)
61 pooling_ops = set((Op.ReduceSum,)) | max_pooling_ops | avg_pooling_ops
Tim Hall885033b2022-07-21 11:46:03 +010062 resizing_ops = Op.op_set(Op.is_resize_op)
Jonas Ohlssond8575072022-03-30 10:30:25 +020063 fc_vector_products = set(
64 (
65 Op.QuantizedMatMul,
66 Op.MatMul,
67 Op.FullyConnected,
68 )
69 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +020070 mac_main_ops = (
71 # RNN/LSTM/GRU
72 set((Op.BlockLSTM,))
73 # conv/depthwiseconv/transposeconv
74 | convolution_like_ops
75 # pooling
76 | pooling_ops
77 # resizing/upscaling
78 | resizing_ops
79 # FC layers
80 | fc_vector_products
81 # Mean (converts to depthwise conv)
82 | set((Op.Mean,))
83 )
84 unary_elem_wise_main_ops = Op.op_set(Op.is_unary_elementwise_op)
Jonas Ohlssond8575072022-03-30 10:30:25 +020085 binary_elem_wise_min_max_ops = set(
86 (
87 Op.Minimum,
88 Op.Maximum,
89 )
90 )
91 binary_elem_wise_shift_ops = set(
92 (
93 Op.SHL,
94 Op.SHR,
95 )
96 )
97 binary_elem_wise_add_mul_sub = set(
98 (
99 Op.Add,
100 Op.Mul,
101 Op.Sub,
102 )
103 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200104 binary_elem_wise_main_ops = binary_elem_wise_min_max_ops | binary_elem_wise_add_mul_sub | binary_elem_wise_shift_ops
105 elem_wise_main_ops = binary_elem_wise_main_ops | unary_elem_wise_main_ops
106 pad_ops = set((Op.Pad,))
107 supported_int32_tensor_ops = (
Jonas Ohlssond8575072022-03-30 10:30:25 +0200108 set(
109 (
110 Op.ReduceSum,
111 Op.CLZ,
Fredrik Svedberg11563172022-07-06 14:54:12 +0200112 Op.Shape,
Jonas Ohlssond8575072022-03-30 10:30:25 +0200113 )
114 )
115 | binary_elem_wise_add_mul_sub
116 | binary_elem_wise_shift_ops
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200117 )
118
Jonas Ohlssond8575072022-03-30 10:30:25 +0200119 relu_ops = set(
120 (
121 Op.Relu,
122 Op.Relu6,
123 Op.ReluN1To1,
124 Op.Clip,
125 )
126 )
Fredrik Svedberg8ddd4892022-08-19 16:06:04 +0200127 activation_ops = relu_ops | set(
128 (
129 Op.Tanh,
130 Op.Sigmoid,
131 Op.Softmax,
132 Op.HardSwish,
Fredrik Svedberg1cd39492022-09-23 15:38:03 +0200133 Op.LeakyRelu,
Fredrik Svedberg8ddd4892022-08-19 16:06:04 +0200134 Op.Prelu,
135 )
136 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200137 npu_post_ops = (
138 # activation functions
139 activation_ops
140 # concatenation write direction
141 | set((Op.ConcatSliceWrite,))
142 # Quantization
143 | set((Op.Quantize,))
144 )
Jonas Ohlssond8575072022-03-30 10:30:25 +0200145 split_ops = set(
146 (
147 Op.Split,
148 Op.SplitV,
149 Op.StridedSlice,
150 Op.Slice,
151 Op.UnpackReshaped,
152 Op.Unpack,
153 )
154 )
155 concat_ops = set(
156 (
157 Op.Concat,
158 Op.ConcatTFLite,
159 Op.PackReshaped,
160 Op.Pack,
161 )
162 )
163 memory_only_ops = (
164 set(
165 (
166 Op.Reshape,
167 Op.QuantizedReshape,
168 Op.Squeeze,
169 Op.ExpandDims,
170 )
171 )
172 | concat_ops
173 | split_ops
174 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200175 per_axis_quant_ops = convolution_like_ops # per-axis/channel quantization only currently supported for conv ops
Jonas Ohlssond8575072022-03-30 10:30:25 +0200176 supported_fused_activations = relu_ops | set(
177 (
178 Op.Tanh,
179 Op.Sigmoid,
180 Op.LUT,
181 )
182 )
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200183 supported_operators = npu_pre_ops | mac_main_ops | elem_wise_main_ops | pad_ops | npu_post_ops | memory_only_ops
184 # Supported data types
185 supported_op_dtypes = set((DataType.uint8, DataType.int8, DataType.int16, DataType.int32))
186 supported_faf_dtypes = set((DataType.uint8, DataType.int8, DataType.int16))
187 supported_bias_dtypes = set((DataType.int32, DataType.int64))
188 supported_pad_dtypes = set((DataType.int32, DataType.int64))
189 # Defined ranges for allowed values:
190 tens_dim_range = (1, 65535)
191 stride_range = (1, 3)
192 dilation_range = (1, 2)
193 dilated_height_range = (1, 64)
194 dilated_product_range = (1, 64 * 64)
195 weights_limit = 127 * 65536
196 filter_range = (1, 8)
197 filter_height_range = (1, 256)
198 filter_product_range = (1, 256 * 256)
199 mean_kernel_product = 64 * 64
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200200 mean_kernel_product_avgpool = 256 * 256
201
202 def __init__(self):
203 # Setup the generic constraints. Note: the order matters
204 self.generic_constraints = []
205 self.generic_constraints.append(TFLiteSupportedOperators.constraint_tens_dtype)
206 self.generic_constraints.append(TFLiteSupportedOperators.constraint_tens_int32_ops)
207 self.generic_constraints.append(TFLiteSupportedOperators.constraint_tens_dimension)
208 self.generic_constraints.append(TFLiteSupportedOperators.constraint_tens_quant_per_axis)
Fredrik Svedberg88d5b122022-09-16 16:24:55 +0200209 self.generic_constraints.append(TFLiteSupportedOperators.constraint_batch_size)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200210 self.generic_constraints.append(TFLiteSupportedOperators.constraint_faf)
211 self.generic_constraints.append(TFLiteSupportedOperators.constraint_faf_type)
212
Fredrik Svedberg88d5b122022-09-16 16:24:55 +0200213 # Setup generic constraint exceptions
214 self.generic_constraints_exceptions = defaultdict(list)
215 self.generic_constraints_exceptions[Op.FullyConnected].append(TFLiteSupportedOperators.constraint_batch_size)
216 self.generic_constraints_exceptions[Op.Softmax].append(TFLiteSupportedOperators.constraint_batch_size)
217 self.generic_constraints_exceptions[Op.Reshape].append(TFLiteSupportedOperators.constraint_batch_size)
218 self.generic_constraints_exceptions[Op.Shape].append(TFLiteSupportedOperators.constraint_batch_size)
219 self.generic_constraints_exceptions[Op.Squeeze].append(TFLiteSupportedOperators.constraint_batch_size)
220 for op_type in TFLiteSupportedOperators.split_ops - set((Op.UnpackReshaped,)):
221 self.generic_constraints_exceptions[op_type].append(TFLiteSupportedOperators.constraint_batch_size)
222
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200223 # Setup specific constraints. Note: the order matters
224 self.specific_constraints = defaultdict(list)
225
226 # Conv-like checks:
227 for op_type in TFLiteSupportedOperators.convolution_like_ops:
228 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_stride_range)
229 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_dilation_range)
230 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_dilated_height_range)
231 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_dilated_product_range)
232 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_weights_type)
233 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_weights_const)
234 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_weights_limit)
235 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_bias_type)
236 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_bias_40bit)
Tim Halld3d81b32022-10-18 19:14:04 +0100237 # Remove stride contraint from Transpose Conv because it has a specific one (see below)
238 for op_type in TFLiteSupportedOperators.transpose_convolution_ops:
239 self.specific_constraints[op_type].remove(TFLiteSupportedOperators.constraint_stride_range)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200240 # Transpose Conv specific checks:
241 for op_type in TFLiteSupportedOperators.transpose_convolution_ops:
242 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_tconv_stride)
243 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_tconv_same)
244 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_tconv_valid)
Tim Halld3d81b32022-10-18 19:14:04 +0100245 # Depthwise Conv specific checks:
246 for op_type in TFLiteSupportedOperators.depthwise_convolution_ops:
247 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_depth_multiplier)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200248
249 # Pooling checks:
250 for op_type in TFLiteSupportedOperators.pooling_ops:
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200251 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_stride_range)
252 # AVG pooling specific checks:
253 for op_type in TFLiteSupportedOperators.avg_pooling_ops:
254 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_filter_range)
255 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_filter_height_range_valid_pad)
256 self.specific_constraints[op_type].append(
257 TFLiteSupportedOperators.constraint_filter_product_range_valid_pad
258 )
259 # MAX pooling specific checks:
260 for op_type in TFLiteSupportedOperators.max_pooling_ops:
261 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_filter_height_range)
262 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_filter_product_range)
263
264 # Resizing specific checks:
265 for op_type in TFLiteSupportedOperators.resizing_ops:
Tim Hall885033b2022-07-21 11:46:03 +0100266 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_resize)
267 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_resize_size)
268 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_resize_attrs)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200269
Rickard Bolinfea15162022-07-04 16:19:16 +0000270 # Resize Bilinear specific checks:
271 self.specific_constraints[Op.ResizeBilinear].append(
272 TFLiteSupportedOperators.constraint_resizebi_half_pixel_centers_dims
273 )
274
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200275 # Vector Product specific checks:
276 for op_type in TFLiteSupportedOperators.fc_vector_products:
277 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_weights_type)
278 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_weights_const)
279 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_bias_type)
280 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_bias_40bit)
281
Fredrik Svedberg88d5b122022-09-16 16:24:55 +0200282 # Element-wise checks
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200283 # Binary Min/Max specific checks:
284 for op_type in TFLiteSupportedOperators.binary_elem_wise_min_max_ops:
285 self.specific_constraints[op_type].append(
286 TFLiteSupportedOperators.constraint_matching_quantization_parameters
287 )
288 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_broadcast_shapes)
289 # Binary Add/Mul/Sub specific checks:
290 for op_type in TFLiteSupportedOperators.binary_elem_wise_add_mul_sub:
291 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_broadcast_shapes)
292 # Binary Shift specific checks:
293 for op_type in TFLiteSupportedOperators.binary_elem_wise_shift_ops:
294 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_inputs_int32)
295 self.specific_constraints[op_type].append(TFLiteSupportedOperators.constraint_broadcast_shapes)
296
297 # SHL specific checks:
298 self.specific_constraints[Op.SHL].append(TFLiteSupportedOperators.constraint_output_int32)
299
300 # CLZ specific checks:
301 self.specific_constraints[Op.CLZ].append(TFLiteSupportedOperators.constraint_output_int32)
302
303 # StridedSlice specific checks:
304 self.specific_constraints[Op.StridedSlice].append(
305 TFLiteSupportedOperators.constraint_stridedslice_stride_values
306 )
307
308 # Pad specific checks:
309 self.specific_constraints[Op.Pad].append(TFLiteSupportedOperators.constraint_pad_shape)
310 self.specific_constraints[Op.Pad].append(TFLiteSupportedOperators.constraint_padding_dimensions)
311 self.specific_constraints[Op.Pad].append(TFLiteSupportedOperators.constraint_pad_type)
312
313 # Mean specific checks:
314 self.specific_constraints[Op.Mean].append(TFLiteSupportedOperators.constraint_mean_height_width_product_avgpool)
315 self.specific_constraints[Op.Mean].append(TFLiteSupportedOperators.constraint_mean_height_width_product)
James Peet0bb7ad12022-02-15 15:07:54 +0000316 self.specific_constraints[Op.Mean].append(TFLiteSupportedOperators.constraint_mean_height_single_axis)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200317
Tim Hall3584a9c2021-11-18 22:05:17 +0000318 # Reshape specific checks:
319 self.specific_constraints[Op.Reshape].append(TFLiteSupportedOperators.constraint_reshape_shape_constant)
320
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200321 def is_operator_supported(self, op):
322 ext_type = optype_to_builtintype(op.type)
323 if op.type not in TFLiteSupportedOperators.supported_operators:
324 if op.type not in (Op.Placeholder, Op.SubgraphInput, Op.Const):
325 print(f"Info: {ext_type} '{op.name}' is a CPU only op")
326 return False
327
Fredrik Svedberg88d5b122022-09-16 16:24:55 +0200328 op_exceptions = self.generic_constraints_exceptions[op.type]
329 generic_constraints = [constraint for constraint in self.generic_constraints if constraint not in op_exceptions]
330
331 for constraint in generic_constraints + self.specific_constraints[op.type]:
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200332 valid, extra = constraint(op)
333 if not valid:
334 print(f"Warning: {ext_type} '{op.name}' is not supported on the NPU. Placing on CPU instead")
335 print(f" - {constraint.__doc__}")
336 if extra:
337 print(f" {extra}")
338 return False
339
340 return True
341
342 @classmethod
343 @docstring_format_args([list_formatter(supported_op_dtypes)])
344 def constraint_tens_dtype(cls, op):
345 "Tensors must be of type: {}"
346 valid = True
347 extra = []
348 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
349 if not tensors:
350 tensors = [tens for tens in op.inputs if tens]
351 for tens in tensors:
352 if tens.dtype not in cls.supported_op_dtypes:
353 valid = False
354 extra.append(f"Tensor '{tens.name}' has data type: {tens.dtype}")
355 return valid, ", ".join(extra)
356
357 @classmethod
358 @docstring_format_args([_optype_formatter(supported_int32_tensor_ops)])
359 def constraint_tens_int32_ops(cls, op):
360 "Tensors which are int32 are only valid when op type is: {}"
361 valid = True
362 extra = []
363 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
364 if not tensors:
365 tensors = [tens for tens in op.inputs if tens]
366 for tens in tensors:
367 if (tens.dtype == DataType.int32) and (op.type not in cls.supported_int32_tensor_ops):
368 valid = False
369 extra.append(tens.name)
370 extra = ", ".join(extra)
371 return valid, f"Op has int32 tensor(s): {extra}"
372
373 @classmethod
374 @docstring_format_args(tens_dim_range)
375 def constraint_tens_dimension(cls, op):
376 "Tensor dimensions must be in the range [{}, {}]"
377 tens_min, tens_max = cls.tens_dim_range
378 valid = True
379 extra = []
380 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
381 if not tensors:
382 tensors = [tens for tens in op.inputs if tens]
383 for tens in tensors:
384 if not all(tens_min <= dim <= tens_max for dim in tens.shape):
385 valid = False
386 extra.append(f"Tensor '{tens.name}' has shape: {tens.shape}")
387 return valid, ", ".join(extra)
388
389 @classmethod
390 @docstring_format_args([_optype_formatter(per_axis_quant_ops)])
391 def constraint_tens_quant_per_axis(cls, op):
392 "Per-axis quantization is only supported for the following op types: {}"
393 valid = True
394 extra = []
395 if op.type not in cls.per_axis_quant_ops:
396 tensors = [tens for tens in op.get_ifm_ifm2_weights_ofm() if tens]
397 for tens in tensors:
Fredrik Svedberg11563172022-07-06 14:54:12 +0200398 if tens.quantization and tens.quantization.is_per_axis():
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200399 valid = False
400 extra.append(tens.name)
401 return valid, "The following tensor(s) have per-axis quantization parameters: " + ", ".join(extra)
402
403 @classmethod
404 @docstring_format_args([_optype_formatter(supported_fused_activations)])
405 def constraint_faf(cls, op):
406 "The fused activation function (if present) must be one of type: {}"
407 if op.activation is None:
408 res = True, "Op has no fused activation function"
409 else:
410 faf = op.activation.op_type
411 valid = faf in cls.supported_fused_activations
412 res = valid, f"Op has its fused activation function as: {faf}"
413 return res
414
415 @classmethod
416 @docstring_format_args([list_formatter(supported_faf_dtypes)])
417 def constraint_faf_type(cls, op):
418 "If a fused activation function is present, the Output tensor must be one of type: {}"
419 if op.activation is None:
420 res = True, "Op has no fused activation function"
421 else:
422 valid = op.ofm.dtype in cls.supported_faf_dtypes
423 ext_type = optype_to_builtintype(op.activation.op_type)
424 res = valid, f"Op has fused activation function {ext_type}, and Output tensor data type: {op.ofm.dtype}"
425 return res
426
427 @classmethod
428 @docstring_format_args(stride_range)
429 def constraint_stride_range(cls, op):
430 "Stride values for both width and height must be in the range [{}, {}]"
431 w, h = op.get_kernel_stride()
432 stride_min, stride_max = cls.stride_range
433 valid = (stride_min <= w <= stride_max) and (stride_min <= h <= stride_max)
434 return valid, f"Op has stride WxH as: {w}x{h}"
435
436 @classmethod
437 @docstring_format_args(dilation_range)
438 def constraint_dilation_range(cls, op):
439 "Dilation factor values for both width and height must be in the range [{}, {}]"
440 w, h = op.get_kernel_dilation()
441 dilation_min, dilation_max = cls.dilation_range
442 valid = (dilation_min <= w <= dilation_max) and (dilation_min <= h <= dilation_max)
443 return valid, f"Op has dilation factor WxH as: {w}x{h}"
444
445 @classmethod
446 @docstring_format_args(dilated_height_range)
447 def constraint_dilated_height_range(cls, op):
448 "Dilated kernel height must be in the range [{}, {}]"
449 h = op.kernel.area_height()
450 dilated_height_min, dilated_height_max = cls.dilated_height_range
451 valid = dilated_height_min <= h <= dilated_height_max
452 return valid, f"Op has dilated kernel height as: {h}"
453
454 @classmethod
455 @docstring_format_args(dilated_product_range)
456 def constraint_dilated_product_range(cls, op):
457 "Product of dilated kernel width and height must be in the range [{}, {}]"
458 product = op.kernel.area_width() * op.kernel.area_height()
459 dilated_product_min, dilated_product_max = cls.dilated_product_range
460 valid = dilated_product_min <= product <= dilated_product_max
461 return valid, f"Op has product of dilated kernel width and height as: {product}"
462
463 @staticmethod
464 def constraint_weights_type(op):
465 "Weight tensor must be 8-bit"
466 weights = op.weights
467 valid = weights.element_size() == 1
468 return valid, f"Tensor '{weights.name}' is {int(weights.element_size() * 8)}-bit"
469
470 @staticmethod
471 def constraint_weights_const(op):
472 "Weight tensor must be constant"
473 weights = op.weights
474 valid = weights.values is not None
475 return valid, f"Tensor '{weights.name}' has non-constant values"
476
477 @classmethod
478 @docstring_format_args([weights_limit])
479 def constraint_weights_limit(cls, op):
480 "The sum of the weights cannot exceed {}"
481 weights = op.weights
482 values = weights.values.astype(np.int64) - weights.quantization.zero_point
483 limit = np.amax(np.sum(np.absolute(values), axis=(0, 1, 2)))
484 valid = limit <= cls.weights_limit
485 return valid, f"Tensor '{weights.name}' has the sum of weights: {limit}"
486
487 @classmethod
488 @docstring_format_args([list_formatter(supported_bias_dtypes)])
489 def constraint_bias_type(cls, op):
490 "Optional Bias tensor must be of type: {}"
491 bias = op.bias
492 if bias:
493 valid = bias.dtype in cls.supported_bias_dtypes
494 return valid, f"Tensor '{bias.name}' has data type: {bias.dtype}"
495 return True, "Op has no bias tensor"
496
497 @staticmethod
498 def constraint_bias_40bit(op):
499 "Optional Bias tensor values must fit within 40-bits"
500 bias = op.bias
501 if bias and bias.dtype == DataType.int64 and bias.values is not None:
Tim Hall8ae29292021-07-28 16:52:03 +0100502 valid = all(len(bin(value)[2:]) <= 40 for value in bias.values)
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200503 return valid, f"Tensor '{bias.name}' has values larger than 40-bits"
504 return True, "Op has no bias tensor, or it fits in 40-bit"
505
506 @staticmethod
507 def constraint_batch_size(op):
508 "IFM Tensor batch size must be 1"
Fredrik Svedberg88d5b122022-09-16 16:24:55 +0200509 valid = True
510 extra = []
511 for tens in (op.ifm, op.ifm2):
512 if tens is not None:
513 batch_size = full_shape(4, tens.shape, 1)[0]
514 if batch_size != 1:
515 valid = False
516 extra.append(f"Tensor '{tens.name}' has batch size: {batch_size}")
517 extra = "\n ".join(extra)
518 return valid, extra
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200519
520 @staticmethod
521 def constraint_depth_multiplier(op):
522 "For depth multipliers > 1, IFM channels must be 1 and OFM channels must be equal to the depth multiplier"
523 depth_multiplier = op.attrs.get("depth_multiplier", 1)
524 if depth_multiplier > 1:
525 ifm_channels = op.ifm.shape[3]
526 ofm_channels = op.ofm.shape[3]
527 valid = (ifm_channels == 1) and (ofm_channels == depth_multiplier)
528 extra = (
529 f"Op has ifm_channels={ifm_channels}, ofm_channels={ofm_channels}"
530 f" and depth_multiplier={depth_multiplier}"
531 )
532 return valid, extra
533 return True, "Op has depth_multiplier=1"
534
535 @staticmethod
536 def constraint_tconv_stride(op):
537 "Stride values for both width and height must be 2"
538 w = op.kernel.stride.x
539 h = op.kernel.stride.y
540 valid = (w == 2) and (h == 2)
541 return valid, f"Op has stride WxH as: {w}x{h}"
542
543 @staticmethod
544 def constraint_tconv_same(op):
545 "SAME padding: OFM dimensions must equal IFM dimensions multiplied by stride"
546 if op.attrs["padding"] == Padding.SAME:
547 w = op.kernel.stride.x
548 h = op.kernel.stride.y
549 ifm_shape = op.ifm.shape
550 ofm_shape = op.ofm.shape
551 valid = (ofm_shape[1] == (ifm_shape[1] * h)) and (ofm_shape[2] == (ifm_shape[2] * w))
552 return valid, f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape} and stride WxH as {w}x{h}"
553 return True, "Op has padding=VALID"
554
555 @staticmethod
556 def constraint_tconv_valid(op):
557 """VALID padding: OFM dimensions must equal IFM dimensions multiplied by stride,
Jonas Ohlssond8575072022-03-30 10:30:25 +0200558 minus difference between kernel size and stride"""
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200559 if op.attrs["padding"] == Padding.VALID:
560 s_w = op.kernel.stride.x
561 s_h = op.kernel.stride.y
562 k_w = op.kernel.width
563 k_h = op.kernel.height
564 ifm_shape = op.ifm.shape
565 ofm_shape = op.ofm.shape
566 height_check = ofm_shape[1] == (ifm_shape[1] * s_h + max(k_h - s_h, 0))
567 width_check = ofm_shape[2] == (ifm_shape[2] * s_w + max(k_w - s_w, 0))
568 valid = height_check and width_check
569 extra = (
570 f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape},"
571 f" stride WxH as {s_w}x{s_h} and kernel WxH as {k_w}x{k_h}"
572 )
573 return valid, extra
574 return True, "Op has padding=SAME"
575
576 @classmethod
577 @docstring_format_args(filter_range)
578 def constraint_filter_range(cls, op):
579 "Kernel filter values for both width and height must be in the range [{}, {}]"
580 if op.attrs["padding"] == Padding.SAME:
581 w = op.kernel.width
582 h = op.kernel.height
583 filter_min, filter_max = cls.filter_range
584 valid = (filter_min <= w <= filter_max) and (filter_min <= h <= filter_max)
585 return valid, f"Op has kernel filter WxH as: {w}x{h}"
586 return True, "Op has padding=VALID"
587
588 @classmethod
589 @docstring_format_args(filter_height_range)
590 def constraint_filter_height_range(cls, op):
591 "Kernel filter height must be in the range [{}, {}]"
592 h = op.kernel.height
593 filter_height_min, filter_height_max = cls.filter_height_range
594 valid = filter_height_min <= h <= filter_height_max
595 return valid, f"Op has kernel filter height as: {h}"
596
597 @classmethod
598 @docstring_format_args(filter_product_range)
599 def constraint_filter_product_range(cls, op):
600 "Product of kernel filter width and height must be in the range [{}, {}]"
601 product = op.kernel.elements_wh()
602 filter_product_min, filter_product_max = cls.filter_product_range
603 valid = filter_product_min <= product <= filter_product_max
604 return valid, f"Op has product of kernel filter width and height as: {product}"
605
606 @staticmethod
607 @docstring_format_args(filter_height_range)
608 def constraint_filter_height_range_valid_pad(op):
609 "VALID padding: Kernel filter height must be in the range [{}, {}]"
610 if op.attrs["padding"] == Padding.VALID:
611 return TFLiteSupportedOperators.constraint_filter_height_range(op)
612 return True, "Op has padding=SAME"
613
614 @staticmethod
615 @docstring_format_args(filter_product_range)
616 def constraint_filter_product_range_valid_pad(op):
617 "VALID padding: Product of kernel filter width and height must be in the range [{}, {}]"
618 if op.attrs["padding"] == Padding.VALID:
619 return TFLiteSupportedOperators.constraint_filter_product_range(op)
620 return True, "Op has padding=SAME"
621
622 @staticmethod
Tim Hall885033b2022-07-21 11:46:03 +0100623 def constraint_resize(op):
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200624 """The width and height of the IFM and OFM must match one of the following criteria:
625 IFM W and H must both be 1
626 IFM must match OFM
Rickard Bolinfea15162022-07-04 16:19:16 +0000627 W and H scaling must be equal and OFM W-1 and H-1 must be 2x/4x/8x IFM W-1 and H-1, if align_corners is True
628 W and H scaling must be equal and OFM W and H must be 2x/4x/8x IFM W and H, if align_corners is False"""
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200629 # Easier to start with False condition as very few cases result in a supported resize
630 valid = False
631 ifm_shape = op.ifm.shape
Tim Hall47c76362022-07-18 21:26:47 +0100632 ifm_shape_h = ifm_shape[1]
633 ifm_shape_w = ifm_shape[2]
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200634 ofm_shape = op.ofm.shape
Tim Hall47c76362022-07-18 21:26:47 +0100635 ofm_shape_h = ofm_shape[1]
636 ofm_shape_w = ofm_shape[2]
637
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200638 align_corners = op.attrs.get("align_corners", False)
639 if len(ifm_shape) == 4:
640 # Valid if IFM W and H are both 1, or IFM and OFM shape are the same
Tim Hall47c76362022-07-18 21:26:47 +0100641 if ((ifm_shape_h == 1) and (ifm_shape_w == 1)) or (ifm_shape == ofm_shape):
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200642 valid = True
643 else:
Rickard Boline546def2022-01-25 15:45:00 +0000644 # Valid if OFM is 2/4/8x IFM (-1 for align corners)
Tim Hall47c76362022-07-18 21:26:47 +0100645 if align_corners:
646 h_upscale_factor = (ofm_shape_h - 1) / (ifm_shape_h - 1)
647 w_upscale_factor = (ofm_shape_w - 1) / (ifm_shape_w - 1)
648 else:
649 h_upscale_factor = ofm_shape_h / ifm_shape_h
650 w_upscale_factor = ofm_shape_w / ifm_shape_w
Rickard Boline546def2022-01-25 15:45:00 +0000651
Tim Hall47c76362022-07-18 21:26:47 +0100652 # could use either height or width. save as int because it is more usable later in graph optimiser
653 op.attrs["upscale_factor"] = int(h_upscale_factor)
654 valid = h_upscale_factor == w_upscale_factor and h_upscale_factor in (2.0, 4.0, 8.0)
Rickard Boline546def2022-01-25 15:45:00 +0000655
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200656 return valid, f"Op has ifm_shape={ifm_shape}, ofm_shape={ofm_shape} and align_corners={align_corners}"
657
658 @staticmethod
Tim Hall885033b2022-07-21 11:46:03 +0100659 def constraint_resize_size(op):
Tim Hall47c76362022-07-18 21:26:47 +0100660 "The size tensor must match the output tensor shape"
661 valid = False
662 ofm_shape = op.ofm.shape
663 size_h, size_w = None, None
664 # check that the size tensor (the second input) exists, is not none, and has the correct values
665 if len(op.inputs) == 2 and op.inputs[1] is not None and len(op.inputs[1].values) == 2:
666 size_h, size_w = op.inputs[1].values
667 # check size and output size match
668 if size_h == ofm_shape[1] and size_w == ofm_shape[2]:
669 valid = True
670
671 return valid, f"Op has size={size_h}x{size_w} and ofm_shape={ofm_shape}."
672
673 @staticmethod
Tim Hall885033b2022-07-21 11:46:03 +0100674 def constraint_resize_attrs(op):
Tim Hall47c76362022-07-18 21:26:47 +0100675 "Both align_corners and half_pixel_centers can't be True"
676 valid = True
677 align_corners = op.attrs.get("align_corners", False)
678 half_pixel_centers = op.attrs.get("half_pixel_centers", False)
679
680 if align_corners and half_pixel_centers:
681 valid = False
682 return valid, "Op has both align_corners and half_pixel_centers set to True."
683
684 @staticmethod
Rickard Bolinfea15162022-07-04 16:19:16 +0000685 def constraint_resizebi_half_pixel_centers_dims(op):
686 """Half_pixel_centers for resize bilinear requires that OFM W and H is 2x IFM W and H"""
687 half_pixel_centers = op.attrs.get("half_pixel_centers", False)
688 if not half_pixel_centers:
689 valid = True
690 elif len(op.ifm.shape) >= 3:
691 ifm_h, ifm_w = op.ifm.shape[-3:-1]
692 ofm_h, ofm_w = op.ofm.shape[-3:-1]
693 valid = ofm_h / ifm_h == 2 and ofm_w / ifm_w == 2
694 else:
695 # Unexpected IFM shape
696 valid = False
697 return (
698 valid,
699 f"Op has ifm_shape={op.ifm.shape}, ofm_shape={op.ofm.shape} and half_pixel_centers={half_pixel_centers}",
700 )
erik.andersson@arm.comba2555e2021-10-28 14:08:52 +0200701
702 @staticmethod
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200703 def constraint_pad_shape(op):
704 "The padding tensor must have the shape [3,2] or [4,2]"
705 valid = op.inputs[1].shape in ([3, 2], [4, 2])
706 return valid, f"The pad tensor has the shape: {op.inputs[1].shape}"
707
708 @classmethod
709 @docstring_format_args([list_formatter(supported_pad_dtypes)])
710 def constraint_pad_type(cls, op):
711 "Pad tensor must be of type: {}"
712 pad_tensor = op.inputs[1]
713 valid = pad_tensor.dtype in cls.supported_pad_dtypes
714 return valid, f"Tensor '{pad_tensor.name}' has data type: {pad_tensor.dtype}"
715
716 @staticmethod
717 def constraint_padding_dimensions(op):
718 "The pad tensor can only pad width and height"
719 pad_tensor = op.inputs[1].values
720
721 valid = sum(pad_tensor[-1, :]) == 0
722 if valid and len(pad_tensor) > 3:
723 valid = sum(pad_tensor[0, :]) == 0
724 return valid, f"First dimension padding: {pad_tensor[0,:]}, last dimension padding: {pad_tensor[-1,:]}"
725
726 @staticmethod
727 def constraint_stridedslice_stride_values(op):
728 "All Strides values must be 1"
729 strides = op.inputs[3]
730 valid = all(stride == 1 for stride in strides.values)
731 return valid, f"Op has strides values {strides.values}"
732
733 @staticmethod
734 def constraint_inputs_int32(op):
735 "Both Input data types must be int32"
736 ifm_dtype = op.ifm.dtype
737 ifm2_dtype = op.ifm2.dtype
738 valid = (ifm_dtype == DataType.int32) and (ifm2_dtype == DataType.int32)
739 return valid, f"Op has ifm_dtype={ifm_dtype} and ifm2_dtype={ifm2_dtype}"
740
741 @staticmethod
742 def constraint_output_int32(op):
743 "OFM must be int32"
744 ofm_dtype = op.ofm.dtype
745 valid = ofm_dtype == DataType.int32
746 return valid, f"Op has ofm_dtype={ofm_dtype}"
747
748 @staticmethod
749 def constraint_matching_quantization_parameters(op):
750 "Both Input quantization parameters must match OFM quantization parameters"
751 valid = True
752 extra = []
753 if not check_quantized_tens_scaling_equal(op.ofm, op.ifm):
754 valid = False
755 extra.append(op.ifm.name)
756 if op.ifm2 is not None and not check_quantized_tens_scaling_equal(op.ofm, op.ifm2):
757 valid = False
758 extra.append(op.ifm2.name)
759 extra = ", ".join(extra)
760 return valid, f"Op has tensors with different quantization parameters to the OFM '{op.ofm.name}': {extra}"
761
762 @staticmethod
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200763 def constraint_broadcast_shapes(op):
764 "Broadcasting is only allowed for rank indices with dimension 1, from either IFM1 or IFM2"
765 ifm_shape = op.ifm.shape
766 ifm2_shape = op.ifm2.shape if op.ifm2 else None
767 ofm_shape = op.ofm.shape
768 valid = True
769 if ifm_shape is not None and ifm2_shape is not None:
770 # align trailing dimensions
771 size = min(len(ifm_shape), len(ifm2_shape))
772 for i, i2, o in zip(ifm_shape[-size:], ifm2_shape[-size:], ofm_shape[-size:]):
773 mi = max(i, i2)
774 # Input dimensions should match or one should be of dimension 1
775 # Output dimension should match the largest input dimension, together
776 # with constraint_match_either_shapes ensures broadcast from only one input
777 if not (i == i2 or i == 1 or i2 == 1) or o != mi:
778 valid = False
779 break
780
781 return valid, f"Op has ifm_shape={ifm_shape} and ifm2_shape={ifm2_shape}"
782
783 @classmethod
784 @docstring_format_args([mean_kernel_product_avgpool])
785 def constraint_mean_height_width_product_avgpool(cls, op):
James Peet0bb7ad12022-02-15 15:07:54 +0000786 """Product of height and width must be no greater than {}"""
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200787 shape = op.inputs[0].shape
788 hi = 0 if len(shape) < 4 else 1
789 h, w = shape[hi : hi + 2]
790 max_prod = cls.mean_kernel_product_avgpool
791 return h * w <= max_prod, f"Product of height and width is {h * w}"
792
793 @classmethod
794 @docstring_format_args([mean_kernel_product])
795 def constraint_mean_height_width_product(cls, op):
James Peet0bb7ad12022-02-15 15:07:54 +0000796 """Product of height and width must be no greater than {} when:
797 IFM and OFM have different scale or zero point; or
798 'keep_dims' is True"""
Jonas Ohlsson45e653d2021-07-26 16:13:12 +0200799 ifmq, ofmq = op.ifm.quantization, op.ofm.quantization
800 keep_dims = op.attrs.get("keep_dims")
801 # doesn't apply, size is checked by constraint_mean_height_width_product_avgpool
802 if not keep_dims and ifmq.scale_f32 == ofmq.scale_f32 and ifmq.zero_point == ofmq.zero_point:
803 return True, ""
804 shape = op.inputs[0].shape
805 hi = 0 if len(shape) < 4 else 1
806 h, w = shape[hi : hi + 2]
807 max_prod = cls.mean_kernel_product
808 return h * w <= max_prod, f"Product of height and width is {h * w}"
809
Johan Alfvén05916632022-09-06 20:33:22 +0200810 @classmethod
James Peet0bb7ad12022-02-15 15:07:54 +0000811 @docstring_format_args([filter_height_range[1], dilated_height_range[1]])
812 def constraint_mean_height_single_axis(cls, op):
813 """For single axis averages across the height dimension:
814 IFM height must be no greater than {} if the IFM and OFM scale and zero point match; otherwise
815 IFM height must be no greater than {} if the IFM and OFM scale or zero point do not match"""
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000816 inp, axis = op.inputs
817 if axis.shape == [] or axis.shape[0] == 1: # single axis
818 axis = int(axis.values) if len(axis.shape) == 0 else int(axis.values[0])
819 else:
James Peet0bb7ad12022-02-15 15:07:54 +0000820 # Multiple axes
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000821 return True, ""
822
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000823 shape = inp.shape
James Peet0bb7ad12022-02-15 15:07:54 +0000824 if len(shape) < 3:
825 # No height dimension present in IFM
826 return True, ""
827 if axis != len(shape) - 3:
828 # Not averaging across the height dimension
829 return True, ""
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000830
James Peet0bb7ad12022-02-15 15:07:54 +0000831 h = shape[axis]
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000832 ifm, ofm = op.get_ifm_ofm()
James Peet0bb7ad12022-02-15 15:07:54 +0000833
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000834 if check_quantized_tens_scaling_equal(ifm, ofm):
James Peet0bb7ad12022-02-15 15:07:54 +0000835 return h <= cls.filter_height_range[1], f"Height is {h}, IFM and OFM quantizations match"
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000836 else:
James Peet0bb7ad12022-02-15 15:07:54 +0000837 return h <= cls.dilated_height_range[1], f"Height is {h}, IFM and OFM quantizations do not match"
Rickard Bolin7d7cb672021-12-07 09:09:14 +0000838
Tim Hall3584a9c2021-11-18 22:05:17 +0000839 @staticmethod
840 def constraint_reshape_shape_constant(op):
841 "Shape must be constant"
842 valid = True
843 extra = []
844
845 reshape_tens = op.inputs[1]
846 if reshape_tens is not None:
847 # constant inputs have either no driving operator or a const one
848 # create a list of non-constant inputs
849 if not (len(reshape_tens.ops) == 0 or reshape_tens.ops[0].type == Op.Const):
850 valid = False
851 extra.append(reshape_tens.name)
852 extra = ", ".join(extra)
853
854 return valid, f"Op has non-const input(s): {extra}"