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Tim Hall79d07d22020-04-27 18:20:16 +01001# Copyright (C) 2020 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.
Tim Hall79d07d22020-04-27 18:20:16 +010016# Description:
17# Register level (low-level) command stream generation for Ethos-U55. Takes a high-level command stream and generates
18# all the register settings. Calculates dependencies between commands and inserts wait operations. And generates a bit
19# stream suitable for interpretation by the Ethos-U55 processor.
Tim Hall79d07d22020-04-27 18:20:16 +010020from collections import defaultdict
Diego Russoe8a10452020-04-21 17:39:10 +010021from enum import Enum
22from enum import IntEnum
Diego Russoea6111a2020-04-14 18:41:58 +010023
24import numpy as np
25
26from . import scaling
Diego Russoe8a10452020-04-21 17:39:10 +010027from .architecture_features import ArchitectureFeatures
28from .architecture_features import Block
29from .architecture_features import Kernel
30from .architecture_features import Rect
31from .architecture_features import SharedBufferArea
32from .architecture_features import SHRAMElements
33from .data_type import BaseType
34from .data_type import DataType
35from .ethos_u55_regs.ethos_u55_regs import acc_format
36from .ethos_u55_regs.ethos_u55_regs import activation
37from .ethos_u55_regs.ethos_u55_regs import cmd0
38from .ethos_u55_regs.ethos_u55_regs import cmd1
39from .ethos_u55_regs.ethos_u55_regs import elementwise_mode
40from .ethos_u55_regs.ethos_u55_regs import ifm_precision
Jacob Bohlincf7da102020-05-20 09:03:40 +020041from .ethos_u55_regs.ethos_u55_regs import resampling_mode
Diego Russoe8a10452020-04-21 17:39:10 +010042from .ethos_u55_regs.ethos_u55_regs import rounding
Tim Hall79d07d22020-04-27 18:20:16 +010043from .high_level_command_stream import CommandType
Diego Russoe8a10452020-04-21 17:39:10 +010044from .numeric_util import clamp_sigmoid
45from .numeric_util import clamp_tanh
Louis Verhaardb2fb2122020-06-04 15:51:24 +020046from .numeric_util import full_shape
Diego Russoe8a10452020-04-21 17:39:10 +010047from .numeric_util import quantise_float32
48from .numeric_util import round_away_zero
Diego Russoe8a10452020-04-21 17:39:10 +010049from .numeric_util import round_up_to_int
Tim Hall79d07d22020-04-27 18:20:16 +010050from .operation import NpuBlockType
Tim Hall79d07d22020-04-27 18:20:16 +010051from .shared_buffer_allocation import SharedBufferAllocation
Patrik Gustavssoneca2e952020-05-27 09:15:11 +020052from .tensor import MemType
Diego Russoe8a10452020-04-21 17:39:10 +010053from .tensor import TensorBlockTraversal
54from .tensor import TensorFormat
Tim Hall79d07d22020-04-27 18:20:16 +010055
56
57class RegisterMachine:
58 def __init__(self):
59 self.n_banks = 1
60 self.registers = [defaultdict(lambda: None) for _ in range(self.n_banks)]
61 self.bank_idx = 0
62
63 def set_register(self, reg, value):
64 is_changed = self.registers[self.bank_idx][reg] != value
65 self.registers[self.bank_idx][reg] = value
66 # is_changed = True # force command
67 return is_changed
68
69 def switch_bank(self):
70 self.bank_idx = (self.bank_idx + 1) % self.n_banks
71
72
73class CmdMode(IntEnum):
74 NoPayload = 0x0000
75 Payload32 = 0x4000
76 Mask = 0xC000
77 CmdOpMask = 0x03FF
78
79
80class BasePointerIndex(IntEnum):
Patrik Gustavssoneca2e952020-05-27 09:15:11 +020081 WeightTensor = 0 # base address index for the Weight tensor
82 ScratchTensor = 1 # base address index for the Scratch_tensor in the TensorArena
83 ScratchFastTensor = 2 # base address for the Scratch_fast_tensor
Tim Hall79d07d22020-04-27 18:20:16 +010084
85
86# TODO: Replace with definitions from ethos_u55_regs
87class IFM2Broadcast(IntEnum):
88 BroadcastHdim = 1 << 0
89 BroadcastWdim = 1 << 1
90 BroadcastCdim = 1 << 2
91 ReverseOperandOrder = 1 << 6
92 UseIFM2Scalar = 1 << 7
93
94
95class CommandStreamEmitter:
96 def __init__(self):
97 self.cmd_stream = []
98 self.reg_machine = [RegisterMachine(), RegisterMachine()]
99 self.last_absolute_wait = defaultdict(int)
100
101 def get_reg_machine(self, cmd):
102 if "DMA" in cmd.name:
103 return self.reg_machine[1]
104 else:
105 return self.reg_machine[0]
106
107 def size_in_bytes(self):
108 sz = 0
109 for cmd in self.cmd_stream:
110 sz += len(cmd) * 4
111 return sz
112
113 def to_list(self):
114 return [elem for cmd in self.cmd_stream for elem in cmd]
115
116 def print_cmds(self):
117 print("Code: Command: Param: Payload:")
118 for words_for_one_command in self.cmd_stream:
119 code = words_for_one_command[0] & 0x0000FFFF # lower 16 bits
120 param = words_for_one_command[0] >> 16 # higher 16 bits
121
122 payload_mode = CmdMode(code & CmdMode.Mask)
123
124 # code and command
125 s = " 0x%04x " % code
126 if payload_mode == CmdMode.NoPayload:
127 s += str(cmd0(code & CmdMode.CmdOpMask))
128 else:
129 s += str(cmd1(code & CmdMode.CmdOpMask))
130
131 s = s.ljust(40)
132 s += "%5d" % param
133
134 # payload
135 if payload_mode == CmdMode.Payload32:
136 s += " 0x%08x (%d)" % (words_for_one_command[1], words_for_one_command[1])
137 else:
138 s += " -"
139
140 print(s)
141
142 def cmd0_with_param(self, cmd, param):
143 if isinstance(param, Enum):
144 param = int(param.value)
145 else:
146 param = int(param)
147 param = param & 0xFFFF
148 command = cmd.value | (param << 16)
149 if not self.get_reg_machine(cmd).set_register(cmd, (command, param)):
150 return
151
152 # This is not a redundant command, actually write it
153 self.cmd_stream.append((command,))
154
155 def cmd1_with_offset(self, cmd, offset, param=0x0):
156 offset = int(offset) & 0xFFFFFFFFF
157 command = cmd.value | CmdMode.Payload32.value | (param << 16)
158
159 if not self.get_reg_machine(cmd).set_register(cmd, (command, offset)):
160 return
161
162 # This is not a redundant command, actually write it
163 self.cmd_stream.append((command, offset))
164
165 def cmd_wait(self, cmd, param, absolute_wait_time):
166 if absolute_wait_time <= self.last_absolute_wait[cmd]:
167 return
168
169 self.last_absolute_wait[cmd] = absolute_wait_time
170 param = int(param)
171 command = ((param & 0xFFFF) << 16) | cmd.value
172 self.cmd_stream.append((command,))
173
174 def cmd_do_operation(self, cmd, param=0):
175 param = int(param)
176 command = ((param & 0xFFFF) << 16) | cmd.value
177
178 self.cmd_stream.append((command,))
179 self.get_reg_machine(cmd).switch_bank()
180
181
182def calc_command_dependencies(cmd_stream, arch):
183 cmd_starts = {}
184 cmd_ends = {}
185 memory_accesses = {}
186
187 # Keep track of accumulated number of commands in command stream.
188 # First element kernel ops: (# of blocks, # of commands)
189 # Second element DMA ops: (# of commands)
190 pos = np.array((np.array((0, 0)), np.array([0])))
191
192 dependencies = {}
193
194 for cmd in cmd_stream:
195 cmd_starts[cmd] = pos
196 op_count = cmd.get_operation_count()
197 # Keep track of both num blocks and commands
198 cmd_add = 0 if (op_count[0] == 0) else 1
199 pos = np.array((pos[0] + np.array((op_count[0], cmd_add)), pos[1] + np.array([op_count[1]])))
200 cmd_ends[cmd] = np.array((pos[0], pos[1]))
201 memory_accesses[cmd] = cmd.get_memory_accesses()
202
203 for idx, cmd in enumerate(cmd_stream):
204 curr_accesses = memory_accesses[cmd]
205 # Keep track of command dependency.
206 # First element kernel ops: (# of blocks, # of commands)
207 # Second element DMA ops: (# of commands)
208 dep_offsets = np.array((np.array((-1, -1)), np.array([-1])))
209 dep_cmds = [None] * CommandType.Size.value
210 if idx > 0:
211 # Look at the previous commands in backwards order
212 for prev_cmd in cmd_stream[idx - 1 :: -1]:
213 assert prev_cmd is not cmd
214 if dep_cmds[prev_cmd.cmdtype] is None:
215 is_dependency = False
216 if cmd.cmdtype == CommandType.NpuStripe and prev_cmd.cmdtype == CommandType.NpuStripe:
217 # Special handling here, as dpu -> dpu operations require additional care
218 if not SharedBufferAllocation.is_compatible(prev_cmd.ps.shared_buffer, cmd.ps.shared_buffer):
219 is_dependency = True
220 elif memory_accesses[prev_cmd].conflicts(curr_accesses):
221 is_dependency = True
222 else:
223 if memory_accesses[prev_cmd].conflicts(curr_accesses):
224 is_dependency = True
225
226 if is_dependency:
227 new_offset = cmd_ends[prev_cmd][prev_cmd.cmdtype]
228 if new_offset[0] > dep_offsets[prev_cmd.cmdtype][0]:
229 dep_cmds[prev_cmd.cmdtype] = prev_cmd
230 dep_offsets[prev_cmd.cmdtype] = new_offset
231
232 # Check if we've got dependencies for all commands, in which case we can early out
233 for dep in dep_cmds:
234 if dep is None:
235 break
236 else:
237 break # all handled
238
239 # Convert absolute to relative dependencies, using None to signal the special case of no
240 # dependency of this kind
241 res = [None] * CommandType.Size.value
242 for i in range(CommandType.Size.value):
243 if dep_cmds[i] is not None:
244 res[i] = cmd_starts[cmd][i] - dep_offsets[i]
245
246 dependencies[cmd] = cmd_starts[cmd], res
247
248 return dependencies
249
250
251def get_op_kernel(ps):
252 if ps.primary_op is None:
253 return None
254
255 strides = ps.primary_op.attrs.get("strides", (1, 1, 1, 1))
256 dilation = ps.primary_op.attrs.get("dilation", (1, 1, 1, 1))
257 if ps.weight_tensor:
258 if ps.npu_block_type in set((NpuBlockType.VectorProduct, NpuBlockType.ElementWise)):
259 k_h = 1
260 k_w = 1
261 else:
262 k_h = ps.weight_tensor.shape[0]
263 k_w = ps.weight_tensor.shape[1]
264 else:
265 k_h = ps.primary_op.attrs.get("filter_height", 1)
266 k_w = ps.primary_op.attrs.get("filter_width", 1)
267
268 return Kernel(k_w, k_h, strides[2], strides[1], dilation[2], dilation[1])
269
270
Tim Hall79d07d22020-04-27 18:20:16 +0100271def has_prev_op_dependency(prev_cmd, cmd):
272 if prev_cmd is None:
273 return False
274 if (prev_cmd.cmdtype == cmd.cmdtype == CommandType.NpuStripe) and (prev_cmd.ps != cmd.ps):
Tim Hall90337952020-05-07 16:42:35 +0100275 if prev_cmd.ofm_tensor.equivalence_id == cmd.ifm_tensor.equivalence_id:
Tim Hall79d07d22020-04-27 18:20:16 +0100276 return True
Tim Hall90337952020-05-07 16:42:35 +0100277 elif cmd.ifm2_tensor is not None:
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200278 return prev_cmd.ofm_tensor.equivalence_id == cmd.ifm2_tensor.equivalence_id
Tim Hall79d07d22020-04-27 18:20:16 +0100279 return False
280
281
282def get_op_ofm_rect(cmd):
Charles Xu3e9c4342020-04-22 08:31:43 +0200283 start = full_shape(4, cmd.ofm_box.start_coord, 0)
284 end = full_shape(4, cmd.ofm_box.end_coord, 1)
Tim Hall79d07d22020-04-27 18:20:16 +0100285 return Rect(start[-2], start[-3], start[-1], end[-2] - 1, end[-3] - 1, end[-1] - 1)
286
287
288def get_op_ifm_rect(cmd):
Charles Xu3e9c4342020-04-22 08:31:43 +0200289 start = full_shape(4, cmd.ifm_box.start_coord, 0)
290 end = full_shape(4, cmd.ifm_box.end_coord, 1)
Tim Hall79d07d22020-04-27 18:20:16 +0100291 return Rect(start[-2], start[-3], start[-1], end[-2] - 1, end[-3] - 1, end[-1] - 1)
292
293
294def get_op_ifmofm_block_depth(arch, cmd):
295 # Note: NOT equivalent to the normal ifm block depth calculation since
296 # it takes into account 'depthless' block operations by returning full
297 # depth
298 if cmd.ps.npu_block_type in (NpuBlockType.ConvolutionDepthWise, NpuBlockType.Pooling, NpuBlockType.ElementWise):
299 return cmd.ofm_box.get_size_shape()[-1]
300
301 return arch.calc_ifm_block_depth(cmd.ifm_box.get_size_shape()[-1], cmd.ifm_tensor.dtype.bits)
302
303
304def get_op_padding_lt(cmd):
305 if cmd.ps.npu_block_type not in (
306 NpuBlockType.ConvolutionDepthWise,
307 NpuBlockType.Pooling,
308 NpuBlockType.ConvolutionMxN,
309 ):
310 return (0, 0)
311
312 explicit_padding = list(cmd.ps.primary_op.attrs["explicit_padding"]) # (top, left, bottom, right)
313
314 # Check if this is for horizontal ifm streaming
315 if not (cmd.is_first_h_stripe and cmd.is_last_h_stripe):
316 explicit_padding[0] = cmd.pad_top
317 explicit_padding[2] = cmd.pad_bottom
318
319 return (explicit_padding[1], explicit_padding[0])
320
321
322def generate_register_command_stream(nng, sg, arch, verbose=False):
323 emit = CommandStreamEmitter()
324
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200325 if arch.feature_map_storage_mem_area == arch.fast_storage_mem_area:
326 base_ptr_idx_map = {
327 MemType.Permanent_NPU: BasePointerIndex.WeightTensor,
328 MemType.Permanent_CPU: BasePointerIndex.WeightTensor,
329 MemType.Scratch: BasePointerIndex.ScratchTensor,
330 MemType.Scratch_fast: BasePointerIndex.ScratchTensor,
331 }
332 else:
333 base_ptr_idx_map = {
334 MemType.Permanent_NPU: BasePointerIndex.WeightTensor,
335 MemType.Permanent_CPU: BasePointerIndex.WeightTensor,
336 MemType.Scratch: BasePointerIndex.ScratchTensor,
337 MemType.Scratch_fast: BasePointerIndex.ScratchFastTensor,
338 }
Tim Hall79d07d22020-04-27 18:20:16 +0100339
340 # Maps an AccumulatorType enum to the corresponding acc_format value
341 acc_format_map = {
342 SHRAMElements.Acc16: acc_format.FP_S5_10.value,
343 SHRAMElements.Acc32: acc_format.INT_32BIT.value,
344 SHRAMElements.Acc40: acc_format.INT_40BIT.value,
345 }
346
347 # Maps an elementwise op type to an elementwise_mode enum value used by NPU_OP_ELEMENTWISE
348 elementwise_mode_map = {
349 "MulAct": elementwise_mode.MUL.value,
350 "AddAct": elementwise_mode.ADD.value,
351 "SubAct": elementwise_mode.SUB.value,
352 "Minimum": elementwise_mode.MIN.value,
353 "Maximum": elementwise_mode.MAX.value,
354 "LeakyRelu": elementwise_mode.LRELU.value,
355 "Abs": elementwise_mode.ABS.value,
356 }
357
358 cmd_stream = []
359 for cmd in sg.high_level_command_stream:
360 if cmd.cmdtype == CommandType.NpuStripe and cmd.ps.npu_block_type == NpuBlockType.Default:
361 print("Warning: Skipping register command stream generation for", cmd.ps)
362 else:
363 cmd_stream.append(cmd)
364
365 dependencies = calc_command_dependencies(cmd_stream, arch)
366
367 # Initialise operator dependency state
368 prev_ifm_rect = cur_ifm_rect = None
369 prev_ifm_block_depth = cur_ifm_block_depth = None
370 prev_ofm_rect = cur_ofm_rect = None
371 prev_ofm_block = cur_ofm_block = None
372 prev_kernel = cur_kernel = None
373 prev_cmd = None
374
375 def emit_wait_commands(cmd):
376 # The command is fully set up, emit whatever wait commands we need
377 absolute_dep, relative_dep = dependencies[cmd]
378 if relative_dep[CommandType.NpuStripe] is not None:
379 if cmd.cmdtype == CommandType.DMA:
380 param = relative_dep[CommandType.NpuStripe][1]
381 if param <= 3:
382 emit.cmd_wait(cmd0.NPU_OP_KERNEL_WAIT, param, absolute_dep[CommandType.NpuStripe][1])
383 else:
384 param = relative_dep[CommandType.NpuStripe][0]
385 param = min(param, 0xFFFF) # Clamp to allowable wait amount
386
387 if relative_dep[CommandType.DMA] is not None:
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200388 # TODO This can be optimized for yoda
389 param = 0
Tim Hall79d07d22020-04-27 18:20:16 +0100390 emit.cmd_wait(cmd0.NPU_OP_DMA_WAIT, param, absolute_dep[CommandType.DMA][0])
Tim Hall79d07d22020-04-27 18:20:16 +0100391
Tim Hall42e41892020-07-06 10:51:31 +0100392 if arch.is_yoda_system:
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200393 emit.cmd0_with_param(cmd0.NPU_SET_PARALLEL_MODE, arch.ncores - 1)
Tim Hallf7e810a2020-06-25 15:04:31 +0100394
Tim Hall79d07d22020-04-27 18:20:16 +0100395 for cmd in cmd_stream:
396 if cmd.cmdtype == CommandType.DMA:
397 start_coord = cmd.box.start_coord
398
399 src_addr = cmd.in_tensor.address_for_coordinate(start_coord)
400 dst_addr = cmd.out_tensor.address_for_coordinate(start_coord)
401
402 if cmd.in_tensor.compressed_values is not None:
403 stream_index = cmd.in_tensor.compressed_stream_index_from_coord(start_coord)
404 sz = cmd.in_tensor.size_of_compressed_stream(stream_index)
405 else:
406 sz = cmd.in_tensor.address_for_coordinate(cmd.box.end_coord, is_top_box=True) - src_addr
407
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200408 emit.cmd0_with_param(cmd0.NPU_SET_DMA0_SRC_REGION, base_ptr_idx_map[cmd.in_tensor.mem_type])
Tim Hall79d07d22020-04-27 18:20:16 +0100409 emit.cmd1_with_offset(cmd1.NPU_SET_DMA0_SRC, src_addr)
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200410 emit.cmd0_with_param(cmd0.NPU_SET_DMA0_DST_REGION, base_ptr_idx_map[cmd.out_tensor.mem_type])
411
Tim Hall79d07d22020-04-27 18:20:16 +0100412 emit.cmd1_with_offset(cmd1.NPU_SET_DMA0_DST, dst_addr)
413 emit.cmd1_with_offset(cmd1.NPU_SET_DMA0_LEN, sz)
414 dma_channel = 0
415 mode = 0 # From external to external
416
417 emit_wait_commands(cmd)
418 emit.cmd_do_operation(cmd0.NPU_OP_DMA_START, dma_channel * 16 + mode)
419
420 elif cmd.cmdtype == CommandType.NpuStripe:
421
422 ps = cmd.ps
423 primary_op = ps.primary_op
424 npu_block_type = ps.npu_block_type
425 # Specifies if global scale from the NPU_SET_OFM_SCALE register should be used instead of per-channel scale
426 use_global_scale = False
427 # Specifies type of rounding to be used.
428 rounding_mode = rounding.TFL
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200429 if primary_op.type == "ResizeBilinear":
Dwight Lidman3ec04ac2020-04-30 11:54:48 +0200430 rounding_mode = rounding.TRUNCATE
Tim Hall79d07d22020-04-27 18:20:16 +0100431 fmf = primary_op.attrs.get("fused_memory_function", None)
432 faf = primary_op.attrs.get("fused_activation_function", None)
433
434 # Specifies which operand to apply scaling to in bitexact elementwise ADD/SUB
435 op_to_scale = 0
436
437 # Update state history
438 prev_ifm_rect = cur_ifm_rect
439 prev_ifm_block_depth = cur_ifm_block_depth
440 prev_ofm_rect = cur_ofm_rect
441 prev_ofm_block = cur_ofm_block
442 prev_kernel = cur_kernel
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200443 cur_kernel = get_op_kernel(ps)
Tim Hall79d07d22020-04-27 18:20:16 +0100444
445 block_config = ps.block_config
446 emit.cmd0_with_param(cmd0.NPU_SET_OFM_BLK_HEIGHT_M1, block_config[0] - 1)
447 emit.cmd0_with_param(cmd0.NPU_SET_OFM_BLK_WIDTH_M1, block_config[1] - 1)
448 emit.cmd0_with_param(cmd0.NPU_SET_OFM_BLK_DEPTH_M1, block_config[3] - 1)
449
450 shared_buffer = ps.shared_buffer
451
452 if npu_block_type == NpuBlockType.ElementWise:
453 ifm2_broadcast = 0
454
455 if cmd.ifm_tensor.shape == []:
456 # The scalar has to be the ifm2 tensor so switch the ifms
457 cmd.ifm_tensor, cmd.ifm2_tensor = cmd.ifm2_tensor, cmd.ifm_tensor
458 cmd.ifm_box, cmd.ifm2_box = cmd.ifm2_box, cmd.ifm_box
459
460 # Set ReverseOperandOrder bit to IFM2_BROADCAST
461 ifm2_broadcast |= IFM2Broadcast.ReverseOperandOrder
462
463 # Calculate scales needed for arithmetic elementwise operators
464 if primary_op.type in set(("AddAct", "MulAct", "SubAct",)):
465 input_scale = cmd.ifm_tensor.quantization.scale_f32
466 input2_scale = cmd.ifm2_tensor.quantization.scale_f32
467 output_scale = cmd.ofm_tensor.quantization.scale_f32
468 use_global_scale = True
469
470 if primary_op.type == "MulAct":
471 if (faf == "Sigmoid") or (faf == "Tanh"):
472 output_scale = 1 / 0x3000
473
474 ofm_scale, shift = scaling.elementwise_mul_scale(input_scale, input2_scale, output_scale)
475 emit.cmd1_with_offset(cmd1.NPU_SET_OFM_SCALE, ofm_scale, shift)
476 else: # AddAct/SubAct
477 if (faf == "Sigmoid") or (faf == "Tanh"):
478 output_scale = 1 / 0x3000
479
480 if input_scale == input2_scale:
481 opa_scale, opb_scale, ofm_scale, shift = scaling.simplified_elementwise_add_sub_scale(
482 input_scale, input2_scale, output_scale
483 )
484 opa_shift = 0 # Unused for this case
485 else:
486 # Use advanced implementation only when input scales differ
487 bitdepth = cmd.ifm_tensor.dtype.bits
488 (
489 opa_scale,
490 opa_shift,
491 ofm_scale,
492 shift,
493 op_to_scale,
494 ) = scaling.advanced_elementwise_add_sub_scale(
495 input_scale, input2_scale, output_scale, bitdepth
496 )
497 opb_scale = 0 # Unused for this case
498 if ifm2_broadcast & IFM2Broadcast.ReverseOperandOrder:
499 # If the operand order is reversed we also have to swap which operand is scaled
500 if op_to_scale == scaling.OperandToScale.OPa:
501 op_to_scale = scaling.OperandToScale.OPb
502 else:
503 op_to_scale = scaling.OperandToScale.OPa
504
505 emit.cmd1_with_offset(cmd1.NPU_SET_OPA_SCALE, opa_scale, opa_shift)
506 emit.cmd1_with_offset(cmd1.NPU_SET_OPB_SCALE, opb_scale)
507 emit.cmd1_with_offset(cmd1.NPU_SET_OFM_SCALE, ofm_scale, shift)
508
509 if primary_op.type in set(("LeakyRelu", "Abs",)):
510 output_scale = cmd.ofm_tensor.quantization.scale_f32
511 use_global_scale = True
512
513 if primary_op.type == "LeakyRelu":
514 output_scale *= primary_op.attrs["alpha"]
515
516 ofm_scale, shift = scaling.quantise_scale(output_scale)
517 emit.cmd1_with_offset(cmd1.NPU_SET_OFM_SCALE, ofm_scale, shift)
518
519 # For elementwise set the required SHRAM to be equal to the total size of SHRAM
520 shram_required = arch.shram_total_banks
521 emit.cmd0_with_param(cmd0.NPU_SET_IFM_IB_END, shram_required)
522
523 # Acc buffers not needed so set AB_START to size of SHRAM
524 emit.cmd0_with_param(cmd0.NPU_SET_AB_START, arch.shram_total_banks)
525
526 # Is not a unary operator
527 if cmd.ifm2_tensor is not None:
528 if cmd.ifm2_tensor.shape == []:
529 # IFM2 is a constant, set UseIFM2Scalar bit to IFM2_BROADCAST
530 ifm2_broadcast |= IFM2Broadcast.UseIFM2Scalar
531 else:
532 ifm_box_shape = cmd.ifm_box.get_size_shape()
533 ifm2_box_shape = cmd.ifm2_box.get_size_shape()
534
535 if len(cmd.ifm_tensor.shape) > 1 and ifm_box_shape[1] != ifm2_box_shape[1]:
536 # Broadcast in 'H' dimension
537 assert cmd.ifm2_tensor.shape[1] == 1
538 ifm2_broadcast |= IFM2Broadcast.BroadcastHdim
539
540 if len(cmd.ifm_tensor.shape) > 2 and ifm_box_shape[2] != ifm2_box_shape[2]:
541 # Broadcast in 'W' dimension
542 assert cmd.ifm2_tensor.shape[2] == 1
543 ifm2_broadcast |= IFM2Broadcast.BroadcastWdim
544
545 if len(cmd.ifm_tensor.shape) > 3 and ifm_box_shape[3] != ifm2_box_shape[3]:
546 # Broadcast in 'C' dimension
547 assert cmd.ifm2_tensor.shape[3] == 1
548 ifm2_broadcast |= IFM2Broadcast.BroadcastCdim
549
550 # Set IFM2_IB_START to the latter half of the IB space
551 ifm_ib_start = shared_buffer.bank_locations[SharedBufferArea.IFM]
552 emit.cmd0_with_param(
553 cmd0.NPU_SET_IFM2_IB_START, (shram_required - ifm_ib_start) / 2 + ifm_ib_start
554 )
555
556 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_BROADCAST, ifm2_broadcast)
557
558 else:
559 emit.cmd0_with_param(
560 cmd0.NPU_SET_IFM_IB_END,
561 shared_buffer.bank_locations[SharedBufferArea.IFM]
562 + shared_buffer.banks_required[SharedBufferArea.IFM],
563 )
564 emit.cmd0_with_param(cmd0.NPU_SET_AB_START, shared_buffer.bank_locations[SharedBufferArea.Accumulators])
565
566 emit.cmd0_with_param(cmd0.NPU_SET_ACC_FORMAT, acc_format_map[shared_buffer.use_accumulator_element])
567
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200568 if primary_op.type == "ResizeBilinear":
Dwight Lidman3ec04ac2020-04-30 11:54:48 +0200569 # perform nearest neighbor upscale
Jacob Bohlincf7da102020-05-20 09:03:40 +0200570 emit.cmd0_with_param(cmd0.NPU_SET_IFM_UPSCALE, resampling_mode.NEAREST)
571 elif primary_op.type == "Conv2DBackpropInputSwitchedBias":
572 # perform insert zero upscale
573 emit.cmd0_with_param(cmd0.NPU_SET_IFM_UPSCALE, resampling_mode.TRANSPOSE)
Dwight Lidman3ec04ac2020-04-30 11:54:48 +0200574 else:
Jacob Bohlincf7da102020-05-20 09:03:40 +0200575 emit.cmd0_with_param(cmd0.NPU_SET_IFM_UPSCALE, resampling_mode.NONE)
Tim Hall79d07d22020-04-27 18:20:16 +0100576
577 if npu_block_type in set(
578 (NpuBlockType.ConvolutionMxN, NpuBlockType.ConvolutionDepthWise, NpuBlockType.Pooling)
579 ):
580 # Set up padding
581 explicit_padding = list(primary_op.attrs["explicit_padding"]) # (top, left, bottom, right)
582
583 # Check if this is for horizontal ifm streaming
584 if not (cmd.is_first_h_stripe and cmd.is_last_h_stripe):
585 explicit_padding[0] = cmd.pad_top
586 explicit_padding[2] = cmd.pad_bottom
587
588 # Indexing from end since a 1x1 Avgpool might have been added with non 4-dimensional input/output,
589 # because of activation function needed to be fused.
590 if cmd.ifm_box.start_coord[-2] > 0:
591 explicit_padding[1] = 0
592 if cmd.ifm_box.end_coord[-2] < cmd.ifm_tensor.shape[-2]:
593 explicit_padding[3] = 0
Tim Hall79d07d22020-04-27 18:20:16 +0100594 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_TOP, explicit_padding[0])
595 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_LEFT, explicit_padding[1])
596 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_BOTTOM, explicit_padding[2])
597 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_RIGHT, explicit_padding[3])
598
Dwight Lidman0538a772020-05-06 14:09:17 +0200599 # set kernel x stride low bit
600 stride = primary_op.attrs["strides"][2] - 1 & 1
601 # set kernel y stride low bit
602 stride |= (primary_op.attrs["strides"][1] - 1 & 1) << 1
603 # set kernel x stride extension bits
604 stride |= (primary_op.attrs["strides"][2] - 1 >> 1) << 6
605 # set kernel y stride extension bits
606 stride |= (primary_op.attrs["strides"][1] - 1 >> 1) << 9
607
Tim Hall79d07d22020-04-27 18:20:16 +0100608 if npu_block_type == NpuBlockType.Pooling:
609 k_height, k_width = primary_op.attrs["ksize"][1:3]
610 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_HEIGHT_M1, k_height - 1)
611 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_WIDTH_M1, k_width - 1)
612
613 valid_padding = sum(explicit_padding) == 0
614
Dwight Lidman3ec04ac2020-04-30 11:54:48 +0200615 if primary_op.type in set(("AvgPool", "AvgPoolAct", "ResizeBilinear")) and valid_padding:
Tim Hall79d07d22020-04-27 18:20:16 +0100616 # For valid padding vela has to output scaling values
617 if faf == "Sigmoid" or faf == "Tanh":
618 rescale = 0x3000 * cmd.ifm_tensor.quantization.scale_f32
Tim Hall79d07d22020-04-27 18:20:16 +0100619
Fredrik Svedberg620d88c2020-05-19 10:43:01 +0200620 if cmd.ifm_tensor.dtype == DataType.int16:
Charles Xu749d9212020-06-11 12:39:19 +0200621 multiplier = max(1, int(4096 * cmd.ifm_tensor.quantization.scale_f32 + 0.5))
Fredrik Svedberg620d88c2020-05-19 10:43:01 +0200622 rescale *= 3 * multiplier
623
624 rescale_bits = len(bin(round_up_to_int(rescale))) - 2 + 1
Tim Hall79d07d22020-04-27 18:20:16 +0100625 scale, shift = scaling.quantise_pooling_scale(k_height * k_width, rescale_bits)
Fredrik Svedberg620d88c2020-05-19 10:43:01 +0200626
627 if cmd.ifm_tensor.dtype == DataType.int16:
628 scale = (1 << shift) * 3 * multiplier
629 else:
630 scale = int(round_away_zero(scale * rescale))
Tim Hall79d07d22020-04-27 18:20:16 +0100631 else:
632 # In case avg pool fused with concat or other memory operation, rescaling might be needed.
633 # k_height == k_width == 1 is allways true in this case
634 # Normally the scale is maximised, to get maximum precision, which means that
635 # if rescale != 1, scale need to consider the number of bits needed for rescaling
636 rescale = cmd.ifm_tensor.quantization.scale_f32 / cmd.ofm_tensor.quantization.scale_f32
637 rescale_bits = 0
638 if k_height == k_width == 1:
639 if fmf == "ConcatSliceWrite":
640 rounding_mode = rounding.NATURAL
641 if rescale > 1:
642 rescale_bits = len(bin(round_up_to_int(rescale))) - 2 + 1
643 elif rescale < 1:
644 rescale_bits = -(len(bin(round_up_to_int(1 / rescale))) - 2 - 1)
645 scale, shift = scaling.quantise_pooling_scale(k_height * k_width, rescale_bits)
646 scale = int(round_away_zero(scale * rescale))
647
648 emit.cmd1_with_offset(cmd1.NPU_SET_OFM_SCALE, scale, shift)
649 # Valid-padded average pool should use the global scale from
650 # NPU_SET_OFM_SCALE register, which is set above.
651 use_global_scale = True
652
653 else: # Convolution
654 assert cmd.weight_tensor.block_traversal != TensorBlockTraversal.Default
Fredrik Svedbergd67c0aa2020-03-30 13:15:28 +0200655 # Reduced precision quantization and natural rounding used for int16
656 if cmd.ifm_tensor.dtype == DataType.int16:
657 rounding_mode = rounding.NATURAL
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200658 stride |= (cur_kernel.dilation.y - 1) << 4
659 stride |= (cur_kernel.dilation.x - 1) << 3
660 emit.cmd0_with_param(
661 cmd0.NPU_SET_KERNEL_HEIGHT_M1, cur_kernel.dilation.y * (cmd.weight_tensor.shape[0] - 1)
662 )
663 emit.cmd0_with_param(
664 cmd0.NPU_SET_KERNEL_WIDTH_M1, cur_kernel.dilation.x * (cmd.weight_tensor.shape[1] - 1)
665 )
Tim Hall79d07d22020-04-27 18:20:16 +0100666 if cmd.weight_tensor.block_traversal == TensorBlockTraversal.PartKernelFirst:
667 # Part-kernel-first weight ordering
668 assert npu_block_type == NpuBlockType.ConvolutionMxN
669 stride |= 1 << 2
670
671 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_STRIDE, stride)
672
673 elif npu_block_type in set((NpuBlockType.VectorProduct,)):
674 # Vector product is implemented using a 1x1 convolution so need
675 # to setup the appropriate padding and kernel info
676 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_TOP, 0)
677 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_LEFT, 0)
678 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_BOTTOM, 0)
679 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PAD_RIGHT, 0)
680
681 # kernel stride reg = 0 means stride(1,1) + depth first weight
682 # order + dilation(0,0) + kernel_split_size=8
683 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_STRIDE, 0)
684
685 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_HEIGHT_M1, 0)
686 emit.cmd0_with_param(cmd0.NPU_SET_KERNEL_WIDTH_M1, 0)
687
688 if npu_block_type in set(
689 (NpuBlockType.ConvolutionMxN, NpuBlockType.ConvolutionDepthWise, NpuBlockType.VectorProduct)
690 ):
691 # Emit Weight base address commands, only maps the area required for
692 # this command's weights from the larger tensor.
693 stream_index = cmd.weight_tensor.compressed_stream_index_from_coord(cmd.weight_box.start_coord)
Tim Hallf7e810a2020-06-25 15:04:31 +0100694 weight_substream_offsets = cmd.weight_tensor.compressed_values_substream_offsets[stream_index]
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200695 substreams = len(weight_substream_offsets) - 1 # Offset list must terminate with full stream length
Tim Hallf7e810a2020-06-25 15:04:31 +0100696
697 # Extract weight substream offsets and calculate their lengths
698 assert len(weight_substream_offsets) > 1 and (weight_substream_offsets[0] == 0)
Tim Hall79d07d22020-04-27 18:20:16 +0100699 weight_addr = cmd.weight_tensor.address_for_coordinate(cmd.weight_box.start_coord)
Tim Hallf7e810a2020-06-25 15:04:31 +0100700
Tim Hall62316762020-06-25 16:55:02 +0100701 # Set weights sources for active and present cores
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200702 for core, param in enumerate(
703 [
704 (cmd1.NPU_SET_WEIGHT_BASE, cmd1.NPU_SET_WEIGHT_LENGTH),
705 (cmd1.NPU_SET_WEIGHT1_BASE, cmd1.NPU_SET_WEIGHT1_LENGTH),
706 ]
707 ):
Tim Hall62316762020-06-25 16:55:02 +0100708 if core < substreams:
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200709 emit.cmd1_with_offset(param[0], weight_addr + weight_substream_offsets[core])
710 emit.cmd1_with_offset(
711 param[1], weight_substream_offsets[core + 1] - weight_substream_offsets[core]
712 )
Tim Hall62316762020-06-25 16:55:02 +0100713 elif core < arch.ncores:
714 emit.cmd1_with_offset(param[0], weight_addr)
715 emit.cmd1_with_offset(param[1], 0)
Tim Hallf7e810a2020-06-25 15:04:31 +0100716
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200717 weight_region = base_ptr_idx_map[cmd.weight_tensor.mem_type]
Tim Hall79d07d22020-04-27 18:20:16 +0100718 emit.cmd0_with_param(cmd0.NPU_SET_WEIGHT_REGION, weight_region)
Tim Hall79d07d22020-04-27 18:20:16 +0100719
720 # Emit Scale & Bias base address commands, with length matching the amount required by
721 # the weight tensors.
722 if cmd.scale_tensor is not None:
Tim Hallf7e810a2020-06-25 15:04:31 +0100723 scale_substream_offsets = cmd.scale_tensor.compressed_values_substream_offsets[stream_index]
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200724 substreams = len(scale_substream_offsets) - 1 # Offset list must terminate with full stream length
Tim Hallf7e810a2020-06-25 15:04:31 +0100725
726 # Extract scale substream offsets and calculate their lengths
727 assert len(scale_substream_offsets) > 1 and (scale_substream_offsets[0] == 0)
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200728 scale_addr = cmd.scale_tensor.address_for_coordinate(cmd.weight_box.start_coord[-1:])
Tim Hallf7e810a2020-06-25 15:04:31 +0100729
Tim Hall62316762020-06-25 16:55:02 +0100730 # Set scale sources for active and present cores
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200731 for core, param in enumerate(
732 [
733 (cmd1.NPU_SET_SCALE_BASE, cmd1.NPU_SET_SCALE_LENGTH),
734 (cmd1.NPU_SET_SCALE1_BASE, cmd1.NPU_SET_SCALE1_LENGTH),
735 ]
736 ):
Tim Hall62316762020-06-25 16:55:02 +0100737 if core < substreams:
Jacob Bohlin0b9ca782020-07-09 11:16:30 +0200738 emit.cmd1_with_offset(param[0], scale_addr + scale_substream_offsets[core])
739 emit.cmd1_with_offset(
740 param[1], scale_substream_offsets[core + 1] - scale_substream_offsets[core]
741 )
Tim Hall62316762020-06-25 16:55:02 +0100742 elif core < arch.ncores:
743 emit.cmd1_with_offset(param[0], scale_addr)
744 emit.cmd1_with_offset(param[1], 0)
Tim Hallf7e810a2020-06-25 15:04:31 +0100745
Tim Hall79d07d22020-04-27 18:20:16 +0100746 # Emit base address for NPU to access scale & bias data
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200747 scale_region = base_ptr_idx_map[cmd.scale_tensor.mem_type]
Tim Hall79d07d22020-04-27 18:20:16 +0100748 emit.cmd0_with_param(cmd0.NPU_SET_SCALE_REGION, scale_region)
Tim Hall79d07d22020-04-27 18:20:16 +0100749
750 ofm_quant = cmd.ofm_tensor.quantization
751 ofm_quant_qmin = cmd.ofm_tensor.quantization.quant_min
752 ofm_quant_qmax = cmd.ofm_tensor.quantization.quant_max
753 ifm_min = cmd.ifm_tensor.quantization.min
754 ifm_max = cmd.ifm_tensor.quantization.max
755
756 # Emit commands for any fused activation function
Diego Russoea6111a2020-04-14 18:41:58 +0100757 if faf is None:
Tim Hall79d07d22020-04-27 18:20:16 +0100758 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.NONE)
759 # Even if no activation function, values need to be set to override previous values
760 faf_min = ofm_quant_qmin
761 faf_max = ofm_quant_qmax
762 elif faf == "Relu":
763 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.NONE)
764 faf_min = quantise_float32(0.0, ofm_quant.scale_f32, ofm_quant.zero_point)
765 faf_max = ofm_quant_qmax
766 elif faf == "Relu6":
767 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.NONE)
768 faf_min = quantise_float32(0.0, ofm_quant.scale_f32, ofm_quant.zero_point)
769 faf_max = quantise_float32(6.0, ofm_quant.scale_f32, ofm_quant.zero_point)
770 elif faf == "ReluN1To1":
771 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.NONE)
772 faf_min = quantise_float32(-1.0, ofm_quant.scale_f32, ofm_quant.zero_point)
773 faf_max = quantise_float32(1.0, ofm_quant.scale_f32, ofm_quant.zero_point)
774 elif faf == "Tanh":
775 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.TANH)
Fredrik Svedberg620d88c2020-05-19 10:43:01 +0200776 if primary_op.type in set(("AvgPool", "AvgPoolAct", "ResizeBilinear")):
777 faf_min = quantise_float32(-1.0, ofm_quant.scale_f32, ofm_quant.zero_point)
778 faf_max = quantise_float32(1.0, ofm_quant.scale_f32, ofm_quant.zero_point)
779 else:
780 faf_min = quantise_float32(clamp_tanh(ifm_min), ofm_quant.scale_f32, ofm_quant.zero_point)
781 faf_max = quantise_float32(clamp_tanh(ifm_max), ofm_quant.scale_f32, ofm_quant.zero_point)
Tim Hall79d07d22020-04-27 18:20:16 +0100782 elif faf == "Sigmoid":
783 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION, activation.SIGMOID)
Fredrik Svedberg620d88c2020-05-19 10:43:01 +0200784 if primary_op.type in set(("AvgPool", "AvgPoolAct", "ResizeBilinear")):
785 faf_min = quantise_float32(0, ofm_quant.scale_f32, ofm_quant.zero_point)
786 faf_max = quantise_float32(1.0, ofm_quant.scale_f32, ofm_quant.zero_point)
787 else:
788 faf_min = quantise_float32(clamp_sigmoid(ifm_min), ofm_quant.scale_f32, ofm_quant.zero_point)
789 faf_max = quantise_float32(clamp_sigmoid(ifm_max), ofm_quant.scale_f32, ofm_quant.zero_point)
Tim Hall79d07d22020-04-27 18:20:16 +0100790 else:
791 raise Exception("Unsupported fused_activation_function = " + faf)
792
793 # Activation range needs to be set based upon the quantisation range and the fused activation range
794 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION_MIN, max(ofm_quant_qmin, faf_min))
795 emit.cmd0_with_param(cmd0.NPU_SET_ACTIVATION_MAX, min(ofm_quant_qmax, faf_max))
796
797 out_shape = cmd.ofm_box.get_size_shape()
798 if len(out_shape) >= 4:
799 emit.cmd0_with_param(cmd0.NPU_SET_OFM_HEIGHT_M1, out_shape[-3] - 1)
800 else:
801 emit.cmd0_with_param(cmd0.NPU_SET_OFM_HEIGHT_M1, 0)
802 if len(out_shape) >= 2:
803 emit.cmd0_with_param(cmd0.NPU_SET_OFM_WIDTH_M1, out_shape[-2] - 1)
804 else:
805 emit.cmd0_with_param(cmd0.NPU_SET_OFM_WIDTH_M1, 0)
806 emit.cmd0_with_param(cmd0.NPU_SET_OFM_DEPTH_M1, out_shape[-1] - 1)
807
808 if npu_block_type in set((NpuBlockType.ConvolutionMxN, NpuBlockType.VectorProduct)):
809 in_shape = cmd.ifm_box.get_size_shape()
810 emit.cmd0_with_param(cmd0.NPU_SET_IFM_DEPTH_M1, in_shape[-1] - 1)
811 else:
812 emit.cmd0_with_param(cmd0.NPU_SET_IFM_DEPTH_M1, out_shape[-1] - 1)
813
Jacob Bohlin3c678292020-04-27 10:27:25 +0200814 for tens, box, region_op, ptr_ops, stride_ops, zero_point_op in (
Tim Hall79d07d22020-04-27 18:20:16 +0100815 (
816 cmd.ifm_tensor,
817 cmd.ifm_box,
Jacob Bohlin3c678292020-04-27 10:27:25 +0200818 cmd0.NPU_SET_IFM_REGION,
Tim Hall79d07d22020-04-27 18:20:16 +0100819 (cmd1.NPU_SET_IFM_BASE0, cmd1.NPU_SET_IFM_BASE1, cmd1.NPU_SET_IFM_BASE2, cmd1.NPU_SET_IFM_BASE3),
820 (cmd1.NPU_SET_IFM_STRIDE_C, cmd1.NPU_SET_IFM_STRIDE_Y, cmd1.NPU_SET_IFM_STRIDE_X),
821 cmd0.NPU_SET_IFM_ZERO_POINT,
822 ),
823 (
824 cmd.ifm2_tensor,
825 cmd.ifm2_box,
Jacob Bohlin3c678292020-04-27 10:27:25 +0200826 cmd0.NPU_SET_IFM2_REGION,
Tim Hall79d07d22020-04-27 18:20:16 +0100827 (
828 cmd1.NPU_SET_IFM2_BASE0,
829 cmd1.NPU_SET_IFM2_BASE1,
830 cmd1.NPU_SET_IFM2_BASE2,
831 cmd1.NPU_SET_IFM2_BASE3,
832 ),
833 (cmd1.NPU_SET_IFM2_STRIDE_C, cmd1.NPU_SET_IFM2_STRIDE_Y, cmd1.NPU_SET_IFM2_STRIDE_X),
834 cmd0.NPU_SET_IFM2_ZERO_POINT,
835 ),
836 (
837 cmd.ofm_tensor,
838 cmd.ofm_box,
Jacob Bohlin3c678292020-04-27 10:27:25 +0200839 cmd0.NPU_SET_OFM_REGION,
Tim Hall79d07d22020-04-27 18:20:16 +0100840 (cmd1.NPU_SET_OFM_BASE0, cmd1.NPU_SET_OFM_BASE1, cmd1.NPU_SET_OFM_BASE2, cmd1.NPU_SET_OFM_BASE3),
841 (cmd1.NPU_SET_OFM_STRIDE_C, cmd1.NPU_SET_OFM_STRIDE_Y, cmd1.NPU_SET_OFM_STRIDE_X),
842 cmd0.NPU_SET_OFM_ZERO_POINT,
843 ),
844 ):
845
Diego Russoea6111a2020-04-14 18:41:58 +0100846 if tens is None:
Tim Hall79d07d22020-04-27 18:20:16 +0100847 continue
848
Diego Russoea6111a2020-04-14 18:41:58 +0100849 need_zero_point = (faf is not None) or (fmf == "ConcatSliceWrite")
Tim Hall79d07d22020-04-27 18:20:16 +0100850 if (
Dwight Lidman86d49932020-06-04 15:31:56 +0200851 primary_op.type in set(("AvgPool", "AvgPoolAct", "ResizeBilinear")) and not need_zero_point
Diego Russoea6111a2020-04-14 18:41:58 +0100852 ) or tens.quantization is None:
Tim Hall79d07d22020-04-27 18:20:16 +0100853 # Actual integer operation, just set scale to 1 and zero point to 0
854 emit.cmd0_with_param(zero_point_op, 0)
855 else:
856 assert tens.quantization.zero_point is not None, "need an actual zero point set"
857 emit.cmd0_with_param(zero_point_op, int(tens.quantization.zero_point))
858
859 if tens.shape == []:
860 # Empty shape, elementwise constant
Louis Verhaardc88a96f2020-06-10 09:04:33 +0200861 ifm2_scalar = tens.quant_values
Tim Hall79d07d22020-04-27 18:20:16 +0100862 assert ifm2_scalar.size == 1
Louis Verhaardc88a96f2020-06-10 09:04:33 +0200863 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_SCALAR, int(ifm2_scalar.item(0)))
Tim Hall79d07d22020-04-27 18:20:16 +0100864 continue
865
866 height_0, height_1, width_0, addresses = tens.addresses_for_rolling_buffer(
867 box.start_coord, box.end_coord
868 )
869 if npu_block_type != NpuBlockType.VectorProduct:
870 if tens == cmd.ifm_tensor:
871 emit.cmd0_with_param(cmd0.NPU_SET_IFM_HEIGHT0_M1, height_0 - 1)
872 emit.cmd0_with_param(cmd0.NPU_SET_IFM_HEIGHT1_M1, height_1 - 1)
873 emit.cmd0_with_param(cmd0.NPU_SET_IFM_WIDTH0_M1, width_0 - 1)
874 elif tens == cmd.ofm_tensor:
875 emit.cmd0_with_param(cmd0.NPU_SET_OFM_HEIGHT0_M1, height_0 - 1)
876 emit.cmd0_with_param(cmd0.NPU_SET_OFM_HEIGHT1_M1, height_1 - 1)
877 emit.cmd0_with_param(cmd0.NPU_SET_OFM_WIDTH0_M1, width_0 - 1)
Louis Verhaard0cf06c72020-05-12 08:31:05 +0200878 if tens == cmd.ifm2_tensor:
Tim Hall79d07d22020-04-27 18:20:16 +0100879 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_HEIGHT0_M1, height_0 - 1)
880 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_HEIGHT1_M1, height_1 - 1)
881 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_WIDTH0_M1, width_0 - 1)
882 else:
883 if len(out_shape) == 2:
884 # TODO: N is put in W-dimension for now
885 # Should be spread over H and W, but then block size selectetion,
886 # and stride calculation should be changed
887 if tens == cmd.ifm_tensor:
888 emit.cmd0_with_param(cmd0.NPU_SET_IFM_WIDTH0_M1, out_shape[-2] - 1)
889 elif tens == cmd.ofm_tensor:
890 emit.cmd0_with_param(cmd0.NPU_SET_OFM_WIDTH0_M1, out_shape[-2] - 1)
891 else:
892 assert False
893
Patrik Gustavssoneca2e952020-05-27 09:15:11 +0200894 emit.cmd0_with_param(region_op, base_ptr_idx_map[tens.mem_type])
Jacob Bohlin3c678292020-04-27 10:27:25 +0200895
Tim Hall79d07d22020-04-27 18:20:16 +0100896 for idx, addr in enumerate(addresses):
897 if addr is None:
898 addresses[idx] = 0
899
900 emit.cmd1_with_offset(ptr_ops[0], addresses[0])
901 emit.cmd1_with_offset(ptr_ops[1], addresses[1])
902 emit.cmd1_with_offset(ptr_ops[2], addresses[2])
903 emit.cmd1_with_offset(ptr_ops[3], addresses[3])
904
905 strides = tens.get_strides()
906 emit.cmd1_with_offset(stride_ops[0], strides[1]) # stride between 16-byte channel blocks (C)
907 emit.cmd1_with_offset(stride_ops[2], strides[3]) # stride between horisontal values (W)
908 emit.cmd1_with_offset(stride_ops[1], strides[2]) # stride between vertical values (H)
909
910 if tens.format == TensorFormat.NHCWB16:
911 # Check that all BasePointer addresses are aligned to 16 bytes
912 assert (int(addresses[0]) % 16) == 0
913 assert (int(addresses[1]) % 16) == 0
914 assert (int(addresses[2]) % 16) == 0
915 assert (int(addresses[3]) % 16) == 0
916
917 ofm_dtype = cmd.ofm_tensor.dtype
918 assert ofm_dtype.type & BaseType.Int
919 prec = 0
920 if ofm_dtype.size_in_bits() == 8:
921 prec = 0
922 elif ofm_dtype.size_in_bits() == 16:
923 prec = 2
924 else:
925 assert 0
926
927 if ofm_dtype.type & BaseType.Signed:
928 prec += 1
929
930 if use_global_scale:
931 # Set global scale bit, as opposed to using per channel scale
932 prec |= 1 << 8
933
934 if cmd.ofm_tensor.format == TensorFormat.NHCWB16:
935 prec |= 1 << 6
936
937 prec |= rounding_mode.value << 14
938
939 emit.cmd0_with_param(cmd0.NPU_SET_OFM_PRECISION, prec)
940
941 prec = None
942 weight_bits = 8
943 if cmd.weight_tensor is not None:
944 weight_bits = cmd.weight_tensor.dtype.size_in_bits()
945
946 ifm_dtype = cmd.ifm_tensor.dtype
947
948 assert weight_bits == 8, "Unsupported weight bit depth"
949 assert ifm_dtype.size_in_bits() in {8, 16}
950
951 if ifm_dtype.size_in_bits() == 8:
952 if ifm_dtype.type & BaseType.Signed:
Diqing Zhongfed918b2020-04-27 10:27:34 +0200953 prec = ifm_precision.S8
Tim Hall79d07d22020-04-27 18:20:16 +0100954 else:
Diqing Zhongfed918b2020-04-27 10:27:34 +0200955 prec = ifm_precision.U8
Tim Hall79d07d22020-04-27 18:20:16 +0100956 elif ifm_dtype.size_in_bits() == 16:
957 if ifm_dtype.type & BaseType.Signed:
Diqing Zhongfed918b2020-04-27 10:27:34 +0200958 prec = ifm_precision.S16
Tim Hall79d07d22020-04-27 18:20:16 +0100959 else:
Diqing Zhongfed918b2020-04-27 10:27:34 +0200960 prec = ifm_precision.U16
Tim Hall79d07d22020-04-27 18:20:16 +0100961
962 ifm_prec = prec.value
963 ifm2_prec = ifm_prec
964
965 if cmd.ifm_tensor.format == TensorFormat.NHCWB16:
966 ifm_prec |= 1 << 6
967
968 ifm_prec |= op_to_scale << 8
969
970 emit.cmd0_with_param(cmd0.NPU_SET_IFM_PRECISION, ifm_prec)
971
972 if cmd.ifm2_tensor is not None:
973 if cmd.ifm2_tensor.format == TensorFormat.NHCWB16:
974 ifm2_prec |= 1 << 6
975 emit.cmd0_with_param(cmd0.NPU_SET_IFM2_PRECISION, ifm2_prec)
976
977 emit_wait_commands(cmd)
978
979 # Get op parameters
980 cur_ifm_block_depth = get_op_ifmofm_block_depth(arch, cmd)
981 cur_ofm_block = Block(ps.block_config[1], ps.block_config[0], ps.block_config[3])
982 cur_ofm_rect = get_op_ofm_rect(cmd)
983 cur_ifm_rect = get_op_ifm_rect(cmd)
Tim Hall79d07d22020-04-27 18:20:16 +0100984 cur_padLT = get_op_padding_lt(cmd)
985 if (prev_kernel is not None) and (cur_kernel is not None) and has_prev_op_dependency(prev_cmd, cmd):
986 if cmd.ifm_tensor.shape == prev_cmd.ofm_tensor.shape:
987 blockdep = arch.calc_block_dep(
988 prev_ifm_rect,
989 prev_ofm_rect,
990 prev_ifm_block_depth,
991 prev_ofm_block,
992 prev_kernel,
993 cur_ifm_rect,
994 cur_ofm_rect,
995 cur_ifm_block_depth,
996 cur_ofm_block,
997 cur_kernel,
998 cur_padLT,
999 )
1000 else:
1001 blockdep = 0
1002 else:
1003 blockdep = ArchitectureFeatures.MAX_BLOCKDEP
1004
1005 # Set between every op (dependent or not)
1006 blockdep = min(blockdep, arch.max_blockdep)
1007 emit.cmd0_with_param(cmd0.NPU_SET_BLOCKDEP, blockdep)
1008 prev_cmd = cmd
1009
1010 if npu_block_type == NpuBlockType.ConvolutionMxN:
1011 emit.cmd_do_operation(cmd0.NPU_OP_CONV)
1012 elif npu_block_type == NpuBlockType.ConvolutionDepthWise:
1013 emit.cmd_do_operation(cmd0.NPU_OP_DEPTHWISE)
1014 elif npu_block_type == NpuBlockType.VectorProduct:
1015 # Vector product is implemented using a 1x1 convolution
1016 emit.cmd_do_operation(cmd0.NPU_OP_CONV)
1017 elif npu_block_type == NpuBlockType.Pooling:
1018 param = "Max" not in primary_op.type
1019 emit.cmd_do_operation(cmd0.NPU_OP_POOL, param=param)
1020 elif npu_block_type == NpuBlockType.ElementWise:
1021 param = elementwise_mode_map[primary_op.type]
1022 emit.cmd_do_operation(cmd0.NPU_OP_ELEMENTWISE, param)
1023 else:
1024 print("Warning: Skipping register command stream generation for", ps)
1025
1026 # Fill in final part of command stream:
1027 emit.cmd_do_operation(cmd0.NPU_OP_STOP, param=0xFFFF)
1028
1029 sg.register_command_stream = emit.to_list()
1030 if verbose:
1031 emit.print_cmds()
1032 print("number of commands", len(emit.cmd_stream))
1033 print("command stream length in words", len(sg.register_command_stream))