blob: d2d3d83375da712d98e193bd0ce0e9d5b8a24b3b [file] [log] [blame]
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +02001# Copyright (C) 2021 Arm Limited or its affiliates. All rights reserved.
2#
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# Common functions and definitions used during the graph optimization.
Patrik Gustavssonc74682c2021-08-17 14:26:38 +020018from typing import Tuple
19
Patrik Gustavssondf995102021-08-23 15:33:59 +020020import numpy as np
21
Patrik Gustavssonf436ada2021-09-14 14:56:48 +020022from . import lut
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +020023from .data_type import DataType
24from .debug_database import DebugDatabase
Patrik Gustavssondf995102021-08-23 15:33:59 +020025from .errors import UnsupportedFeatureError
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +020026from .errors import VelaError
27from .operation import Op
Patrik Gustavssondf995102021-08-23 15:33:59 +020028from .operation_util import create_avgpool_nop
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +020029from .shape4d import Shape4D
Patrik Gustavssonf436ada2021-09-14 14:56:48 +020030from .tensor import create_const_tensor
31from .tensor import QuantizationParameters
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +020032
Jonas Ohlsson81942e92021-08-20 09:33:28 +020033memory_only_ops = (
34 Op.Reshape,
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +020035 Op.QuantizedReshape,
Jonas Ohlsson81942e92021-08-20 09:33:28 +020036 Op.Squeeze,
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +020037 Op.ExpandDims,
Jonas Ohlsson81942e92021-08-20 09:33:28 +020038)
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +020039
40
41def _avoid_nhcwb16_for_concat(tens):
42 # If axis corresponds to C-dimension, NHCWB16 can only be used in the output if all the concat_start's are a
43 # multiple of 16. This as, it is only then the address offset for the ofm, for all operations, will be 16 byte
44 # aligned. For other values of axis the address offsets will be 16 byte aligned, as they are all based on c = 0
45 # and those addresses are always 16 byte aligned due to the NHCWB16 format.
46 return any(op.write_offset.depth % 16 != 0 for op in tens.ops if op.write_offset is not None)
47
48
49def _avoid_nhcwb16_for_split(tens):
50 # If read offset is not a multiple of 16 in the C-dimension, NHCWB16 need to be avoided in the input
51 for cons_op in tens.consumer_list:
52 if cons_op.ifm == tens:
53 read_offset = cons_op.read_offsets[0]
54 elif cons_op.type.is_binary_elementwise_op() and cons_op.ifm2 == tens:
55 read_offset = cons_op.read_offsets[1]
56 else:
57 assert False
58 if read_offset is not None and (read_offset[-1] % 16) != 0:
59 return True
60 return False
61
62
63def _avoid_nhcwb16_for_shapes(tens):
64 # check all producers/consumers to see if any op shape is preventing NHCWB16
65 for cons_op in tens.consumer_list:
66 if cons_op.ifm == tens:
67 cons_op_shape = cons_op.ifm_shapes[0]
68 elif cons_op.type.is_binary_elementwise_op() and cons_op.ifm2 == tens:
69 cons_op_shape = cons_op.ifm_shapes[1]
70 else:
71 assert False
72 if Shape4D(tens.shape) != cons_op_shape:
73 return True
74
75 for prod_op in tens.ops:
76 if Shape4D(tens.shape) != prod_op.ofm_shapes[0]:
77 return True
78
79 return False
80
81
82# Check if non linear format can be used
83def check_format_restrictions(tens, arch):
84 if len(tens.ops) < 1:
85 return
86 if tens.ops[0].type in (Op.Placeholder, Op.SubgraphInput, Op.Const) or any(
87 cons is None for cons in tens.consumer_list
88 ):
89 return
90
91 # Check if any of the producers/consumers is run on CPU
92 if not all(cons.run_on_npu for cons in tens.consumer_list):
93 return
94 if not all(prod.run_on_npu for prod in tens.ops):
95 return
96
97 # "Concat" ofm exception:
98 if _avoid_nhcwb16_for_concat(tens):
99 return
100
101 # "Split" ifm exception:
102 if _avoid_nhcwb16_for_split(tens):
103 return
104
105 # Shapes checking: check all producers/consumers are NHCWB16 compatible with tens.shape
106 if _avoid_nhcwb16_for_shapes(tens):
107 return
108
109 for op in tens.consumer_list:
110 if op.type == Op.ReduceSum and tens.dtype == DataType.int32:
111 return
112 if op.type == Op.Reshape:
113 # Using NHCWB16 format for a no-op reshape is only an option if subsequent
114 # consumers do not also need to perform a reshape or if the OFM is going to
115 # be processed by CPU operations. No-op reshape consumers with empty lists
116 # (those that have no consumers, or null-consumers used as list terminators)
117 # must use normal NHWC output.
118
119 def incompatible_consumers(oper):
120 if oper and oper.type == Op.Reshape:
121 for consumer in oper.outputs[0].consumer_list:
122 yield from incompatible_consumers(consumer)
123 yield not oper or not oper.run_on_npu
124
125 if not any(incompatible_consumers(op)):
126
127 def get_rewrites(oper):
128 if oper and oper.type == Op.Reshape:
129 for consumer in oper.outputs[0].consumer_list:
130 yield from get_rewrites(consumer)
131 yield oper
132
133 # Detect no-op reshapes by comparing their full input and output tensor shapes.
134 inshape = op.ifm_shapes[0]
135 compatible_shape = [(inshape == oper.ofm_shapes[0]) for oper in get_rewrites(op)]
136 if not (compatible_shape and all(compatible_shape)):
137 return
138 else:
139 return
140
141 tens.needs_linear_format = False
142
143
Patrik Gustavssonc74682c2021-08-17 14:26:38 +0200144def calc_explicit_padding(input_size, stride, filter_size, pad_before, pad_after) -> Tuple[int, int]:
145 """
146 Based on explicit padding provided in a PAD operation, returns the corresponding hardware padding
147 that provides equivalent results.
148 """
149 total_padding = needed_total_padding(input_size, stride, filter_size)
150
151 # The bottom/right padding might need downward adjustment depending on stride/input size
152 total_minus_before = total_padding - pad_before
153 output_pad_after = pad_after
154 while output_pad_after > 0 and output_pad_after % stride != total_minus_before % stride:
155 output_pad_after -= 1
156 return pad_before, output_pad_after
157
158
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +0200159def needed_total_padding(input_size, stride, filter_size):
160 out_size = (input_size + stride - 1) // stride
161 needed_input = (out_size - 1) * stride + filter_size
162 total_padding = max(0, needed_input - input_size)
163 return total_padding
164
165
166# Set input/output tensor equivalence to the same id for memory operations
167def set_tensor_equivalence(op, arch, nng):
168 if op.type in memory_only_ops:
169 eid = op.outputs[0].equivalence_id
170 for inp in op.inputs:
171 inp.equivalence_id = eid
172 return op
173
174
175def set_ifm_ofm_op_shapes(op, arch, nng):
176 if op.run_on_npu and op.type.needs_shapes():
177 if op.ifm_shapes or op.ofm_shapes:
178 # Shapes already set
179 return op
180 op.set_ifm_ofm_shapes()
181 return op
182
183
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200184def bypass_memory_only_ops(op):
185 assert op.type in memory_only_ops
Patrik Gustavssondf995102021-08-23 15:33:59 +0200186 ofm = op.ofm
187 ifm = op.ifm
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200188
Patrik Gustavssondf995102021-08-23 15:33:59 +0200189 # Check if ifm/ofm are network ifm/ofm
190 ifm_is_sg_ifm = ifm.ops[0].type in (Op.Placeholder, Op.SubgraphInput, Op.Const)
191 ifm_is_sg_ofm = any(ifm_cons is None for ifm_cons in ifm.consumer_list)
192 ofm_is_sg_ofm = any(ofm_cons is None for ofm_cons in ofm.consumer_list)
193 # Check if ifm/ofm is produced respectively consumed by CPU
194 ifm_is_cpu_produced = any(ifm_prod is not None and not ifm_prod.run_on_npu for ifm_prod in op.ifm.ops)
195 ofm_is_cpu_consumed = any(ofm_cons is not None and not ofm_cons.run_on_npu for ofm_cons in op.ofm.consumer_list)
196
197 # This case should be handled prior to this function
198 assert not ((ifm_is_sg_ifm or ifm_is_sg_ofm or ifm_is_cpu_produced) and (ofm_is_sg_ofm or ofm_is_cpu_consumed))
199
200 if ofm_is_sg_ofm or ofm_is_cpu_consumed:
201 # Bypassed by replacing ifm with ofm
202 ofm.ops = []
203 for prev_op in ifm.ops:
204 prev_op.outputs = [ofm]
205 ofm.ops.append(prev_op)
206
207 # All ifm consumers need to use ofm as input
208 for ifm_cons in ifm.consumer_list:
209 for ifm_idx, cons_ifm in enumerate(ifm_cons.inputs):
210 if cons_ifm == ifm:
211 ifm_cons.set_input_tensor(ofm, ifm_idx)
212 else:
213 # Bypassed by replacing ofm with ifm
214 for cons in ofm.consumer_list:
215 for ifm_idx, cons_ifm in enumerate(cons.inputs):
216 if cons_ifm == ofm:
217 cons.set_input_tensor(ifm, ifm_idx)
218
219
Patrik Gustavssonf1580f02021-09-01 12:43:02 +0200220def move_splitsliceread_to_consumer(op, cons_op):
221 assert op.type == Op.SplitSliceRead
222
223 if cons_op.ifm == op.ofm:
224 cons_op.read_offsets[0] = op.read_offsets[0]
225 cons_op.read_shapes[0] = op.read_shapes[0]
226 cons_op.set_input_tensor(op.ifm, cons_op.type.info.indices.ifms[0])
227 cons_op.ifm_shapes[0] = op.ifm_shapes[0]
228 elif cons_op.type.is_binary_elementwise_op() and cons_op.ifm2 == op.ofm:
229 cons_op.read_offsets[1] = op.read_offsets[0]
230 cons_op.read_shapes[1] = op.read_shapes[0]
231 cons_op.set_input_tensor(op.ifm, cons_op.type.info.indices.ifms[1])
232 cons_op.ifm_shapes[1] = op.ifm_shapes[0]
233
234 if "skirt" in cons_op.attrs:
235 assert cons_op.attrs["explicit_padding"] == cons_op.attrs["skirt"]
236 cons_op.attrs["skirt"] = None
237 cons_op.attrs["force_padding"] = True
238 op.ofm.consumer_list.remove(cons_op)
239 op.ofm.ops = []
240 op.ifm.consumer_list.remove(op)
241
242
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200243def check_memory_only_removed(op, arch):
244 if op.run_on_npu and op.type in memory_only_ops:
245 # Memory only operators should have been removed
246 raise VelaError(f"Memory only {op.type} op {op} expected to have been removed, still remains")
Patrik Gustavsson8f1f9aa2021-06-28 07:41:58 +0200247
248
249def record_optimised(op, arch):
250 if op.type != Op.Const:
251 DebugDatabase.add_optimised(op, op)
Patrik Gustavssondf995102021-08-23 15:33:59 +0200252
253
254def insert_copy_op_after_tens(tens):
255 tens_cons_list_copy = tens.consumer_list.copy()
256
257 # Create a avg_pool nop op with ifm as input
258 copy_tens = tens.clone()
259 copy_op = create_avgpool_nop(tens.name + "_avgpool")
260 copy_op.add_input_tensor(tens)
261 copy_op.set_output_tensor(copy_tens)
262 copy_op.set_ifm_ofm_shapes()
263 copy_op.run_on_npu = True
264
265 # Set copy_ifm consumers
266 for tens_cons in tens_cons_list_copy:
267 if tens_cons is not None:
268 for ifm_idx, cons_inp in enumerate(tens_cons.inputs):
269 if cons_inp == tens:
270 tens_cons.set_input_tensor(copy_tens, ifm_idx)
271
272 DebugDatabase.add_optimised(tens.ops[0], copy_op)
273
274
275def fix_sg_input_output(op, arch, nng):
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200276 if not op.run_on_npu or op.type not in memory_only_ops:
Patrik Gustavssondf995102021-08-23 15:33:59 +0200277 return op
278
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200279 # For the memory only operators we want to remove, tensors are removed.
Patrik Gustavssondf995102021-08-23 15:33:59 +0200280 # But in order to to do this, they cannot be outputs of the sg,
281 # this need to be fixed prior to the removal.
282 # Solution is to add a avgpool NOP, to maintain the original tensor.
283 # This is also valid when reshape ifm/ofm is produced respectively
284 # consumed by CPU
285
286 # Check if operator ifm/ofm are sg ifm/ofm
287 ifm_is_sg_ifm = op.ifm.ops[0].type in (Op.Placeholder, Op.SubgraphInput, Op.Const)
288 ifm_is_sg_ofm = any(ifm_cons is None for ifm_cons in op.ifm.consumer_list)
289 ofm_is_sg_ofm = any(ofm_cons is None for ofm_cons in op.ofm.consumer_list)
290 # Check if ifm/ofm is produced respectively consumed by CPU
291 ifm_is_cpu_produced = any(ifm_prod is not None and not ifm_prod.run_on_npu for ifm_prod in op.ifm.ops)
292 ofm_is_cpu_consumed = any(ofm_cons is not None and not ofm_cons.run_on_npu for ofm_cons in op.ofm.consumer_list)
293
294 if (ifm_is_sg_ofm or ifm_is_sg_ifm or ifm_is_cpu_produced) and (ofm_is_sg_ofm or ofm_is_cpu_consumed):
Jonas Ohlsson0957e3e2021-09-01 15:57:21 +0200295 # Both ifm and ofm need to persist, but only ifm need a copy, in order to remove the memory only operator.
Patrik Gustavssondf995102021-08-23 15:33:59 +0200296 insert_copy_op_after_tens(op.ifm)
297
298 return op
299
300
301def convert_depthwise_to_conv(op, arch, nng):
302 # Depthwise is equivalent to a single conv2d if the ifm depth is 1 and
303 # the ofm depth equals the depth multipler.
304 # If those conditions are true, then we can perform a simple
305 # switch of the operator type (and weight order)
306
307 if op.type == Op.DepthwiseConv2DBias and (op.attrs["depth_multiplier"] != 1):
308 ifm_shape = op.ifm_shapes[0]
309 weight_tensor = op.inputs[1]
310 ofm_shape = op.ofm_shapes[0]
311 if (ifm_shape.depth == 1) and (ofm_shape.depth == op.attrs["depth_multiplier"]):
312 # Change op type to Conv2d
313 op.type = Op.Conv2DBias
314 del op.attrs["channel_multiplier"]
315 del op.attrs["depth_multiplier"]
316
317 weight_tensor.values = np.transpose(weight_tensor.values, (0, 1, 3, 2))
318 weight_tensor.set_all_shapes(list(weight_tensor.values.shape))
319 else:
320 raise UnsupportedFeatureError(
321 f"Unsupported 'DEPTHWISE_CONV_2D' with depth_multiplier = {op.attrs['depth_multiplier']},",
322 f" ifm channels = {ifm_shape.depth}, ofm channels = {ofm_shape.depth}",
323 )
324 DebugDatabase.add_optimised(op, op)
325 return op
Patrik Gustavssonf436ada2021-09-14 14:56:48 +0200326
327
328def convert_to_lut(op, lut_values, lut_name):
329 # Rewrite the operation by Add with scalar 0 + LUT activation
330 ifm = op.inputs[0]
331 if ifm is None:
332 return op
333 assert ifm.dtype.size_in_bytes() == 1
334 op.type = Op.Add
335 op.name = op.name + "_lut_" + lut_name
336 # Mark as no-op to enable potential fusing optimizations
337 op.attrs["is_nop"] = True
338 # Create an input tensor containing scalar zero
339 quantization = QuantizationParameters(0.0, 255.0)
340 quantization.scale_f32 = ifm.quantization.scale_f32
341 quantization.zero_point = 0
342 tens = create_const_tensor(op.inputs[0].name + "_scalar0", [], ifm.dtype, [0], np.uint8, quantization=quantization)
343 op.add_input_tensor(tens)
344 op.ifm_shapes.append(Shape4D(tens.shape)) # TODO no shape?
345
346 # The LUT must be applied without any preceding rescaling (the LUT itself performs the rescale),
347 # so even if the OFM has a different scale than the IFM, the generated OFM scale instructions
348 # should be the same as the IFM
349 op.forced_output_quantization = ifm.quantization
350 lut_tensor = lut.create_lut_tensor(op.name + "_values", lut_values, DataType.int8)
351 op.set_activation_lut(lut_tensor)
352 op.set_ifm_ofm_shapes()
353 return op