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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# Compresses and pads the weigths. It also calculates the scales and packs with the biases.
Tim Hall79d07d22020-04-27 18:20:16 +010018import math
Tim Hall79d07d22020-04-27 18:20:16 +010019from collections import namedtuple
Diego Russoea6111a2020-04-14 18:41:58 +010020
21import numpy as np
Tim Hall79d07d22020-04-27 18:20:16 +010022
Manupa Karunaratned83d2e12020-07-20 12:05:32 +010023from .architecture_features import Accelerator
24from .architecture_features import ArchitectureFeatures
Diego Russoe8a10452020-04-21 17:39:10 +010025from .data_type import DataType
Louis Verhaard7db78962020-05-25 15:05:26 +020026from .errors import UnsupportedFeatureError
Diego Russoe8a10452020-04-21 17:39:10 +010027from .nn_graph import SchedulingStrategy
28from .numeric_util import round_up
Patrik Gustavssond89c09e2020-07-08 11:27:12 +020029from .numeric_util import round_up_divide
Diego Russoe8a10452020-04-21 17:39:10 +010030from .operation import NpuBlockType
31from .scaling import quantise_scale
32from .scaling import reduced_quantise_scale
33from .tensor import TensorBlockTraversal
34from .tensor import TensorFormat
35from .tensor import TensorPurpose
36from .tensor import TensorSubPurpose
Jacob Bohline843d332020-06-23 12:12:56 +020037from ethosu import mlw_codec
Diego Russoe8a10452020-04-21 17:39:10 +010038
Tim Hall79d07d22020-04-27 18:20:16 +010039
Louis Verhaard3c07c972020-05-07 08:12:58 +020040# Contains meta info for a weight compression. If two tensors have identical weight compression config,
41# then they also will have identical compressed weights.
42WeightCompressionConfig = namedtuple(
Louis Verhaardb2fb2122020-06-04 15:51:24 +020043 "WeightCompressionConfig", ["npu_block_type", "ofm_block_depth", "ofm_depth_step", "dilation", "equivalence_id"]
Louis Verhaard3c07c972020-05-07 08:12:58 +020044)
45
46
Manupa Karunaratned83d2e12020-07-20 12:05:32 +010047def encode_weights(
48 accelerator: Accelerator,
49 weights_volume: np.ndarray,
50 dilation_xy: tuple,
51 ifm_bitdepth: int,
52 ofm_block_depth: int,
53 is_depthwise: bool,
54 is_partkernel: bool,
55):
56 """
57 Public facing API to use the ethosu weight encoding.
58
59 :param accelerator: architecture_features.Accelerator enum to pick the correct ethosu accelerator
60 :param weights_volume: numpy.ndarray in OHWI layout with a shape of four
61 :param dilation_xy: a two element tuple of dilation attributes in x,y dimension
62 :param ifm_bitdepth: the bitdepth of input feature map
63 :param ofm_block_depth: the depth of blocks for ethosu processing
64 :param is_depthwise: a boolean indicating these weights are used for a depthwise traversal
65 :param is_partkernel: a boolean indicating these weights are traversed on sub-kernal basis
66 :return: a bytearray of compressed weights
67 """
68
Manupa Karunaratne8b24f2b2020-08-12 18:26:39 +000069 # Check arg types
70 assert isinstance(accelerator, Accelerator)
71 assert isinstance(weights_volume, np.ndarray)
72 assert isinstance(dilation_xy, tuple)
73 assert isinstance(ifm_bitdepth, int)
74 assert isinstance(ofm_block_depth, int)
75 assert isinstance(is_depthwise, bool)
76 assert isinstance(is_partkernel, bool)
77
Manupa Karunaratned83d2e12020-07-20 12:05:32 +010078 # Checks for weight layout
79 assert len(weights_volume.shape) == 4, "weights ndarray should have a shape of 4"
80
81 # It cannot be both partkernel and depthwise
82 assert not (is_depthwise and is_partkernel), "encode_weights :: partkernel and depthwise are mutually exclusive"
83
84 # Check valid values for dilation
85 assert dilation_xy[0] in (1, 2), "encode_weights :: dilation x should be 1 or 2 not {}".format(dilation_xy[0])
86 assert dilation_xy[1] in (1, 2), "encode_weights :: dilation y should be 1 or 2 not {}".format(dilation_xy[1])
87
88 ifm_ublock = ArchitectureFeatures.accelerator_configs[accelerator].ifm_ublock
89 ofm_ublock = ArchitectureFeatures.accelerator_configs[accelerator].ofm_ublock
90 raw_stream = generate_brick(
91 ifm_ublock=ifm_ublock,
92 ofm_ublock=ofm_ublock,
93 brick_weights=weights_volume,
94 ofm_block_depth=ofm_block_depth,
95 is_depthwise=is_depthwise,
96 is_partkernel=is_partkernel,
97 ifm_bitdepth=ifm_bitdepth,
98 dilation=dilation_xy,
99 )
100 encoded_stream = encode(raw_stream)
101 return encoded_stream
102
103
Manupa Karunaratnebef228b2020-07-29 18:06:28 +0100104def encode_bias(bias: np.int64, scale: int, shift: int):
105 """
106 Public facing API to pack bias and scale values as required by the hardware
107 :param bias: 64bit signed number that includes 40bit signed bias
108 :param scale: 32bit scale value
109 :param shift: 6bit shift value
110 :return: packed 80bit [0(2-bits),shift(6-bits),scale(32-bits),bias(40-bits)]
111 """
Manupa Karunaratne8b24f2b2020-08-12 18:26:39 +0000112 # Check arg types
113 assert isinstance(bias, np.int64)
114 assert isinstance(scale, int)
115 assert isinstance(shift, int)
116
Manupa Karunaratnebef228b2020-07-29 18:06:28 +0100117 assert -(1 << (40 - 1)) <= bias < (1 << (40 - 1)) # signed 40-bit range
118 assert 0 <= scale < (1 << 32) # unsigned 32-bit range
119 assert 0 <= shift < (1 << 6) # unsigned 6-bit range
120
121 data = bytearray(10)
122 data[0] = (bias >> (0 * 8)) & 0xFF
123 data[1] = (bias >> (1 * 8)) & 0xFF
124 data[2] = (bias >> (2 * 8)) & 0xFF
125 data[3] = (bias >> (3 * 8)) & 0xFF
126 data[4] = (bias >> (4 * 8)) & 0xFF
127 data[5] = (scale >> (0 * 8)) & 0xFF
128 data[6] = (scale >> (1 * 8)) & 0xFF
129 data[7] = (scale >> (2 * 8)) & 0xFF
130 data[8] = (scale >> (3 * 8)) & 0xFF
131 data[9] = shift & 0x3F
132 return data
133
134
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200135def create_weight_compression_config(tens, npu_block_type, ofm_block_depth, ofm_depth_step, dilation):
Louis Verhaard3c07c972020-05-07 08:12:58 +0200136 # Note: for an ofm block only its depth is used in weight compression.
137 # And block depth > ofm depth gives same result as block depth == ofm depth
138 block_depth = min(ofm_block_depth, tens.quant_values.shape[-1])
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200139 return WeightCompressionConfig(npu_block_type, block_depth, ofm_depth_step, dilation, tens.equivalence_id)
Louis Verhaard3c07c972020-05-07 08:12:58 +0200140
141
142def set_storage_shape(tens):
143 # Sets the storage shape depending on the tensor's sub purpose
144 if tens.sub_purpose == TensorSubPurpose.DoubleBuffer and len(tens.compressed_values) > 2:
145 offset = 2 * np.amax([len(x) for x in tens.compressed_values])
146 assert offset % 16 == 0
147 else:
148 offset = tens.weight_compressed_offsets[-1]
149 tens.storage_shape = [1, 1, 1, offset]
150
151
152class CompressedWeightCache:
153 # Contains weight compressions for all weight tensors in a graph
154 def __init__(self):
155 self.cache = {} # maps from WeightCompressionConfig to a tensor clone containing compressed weights
156
157 def get_tensor_with_same_compression(self, wcc):
158 return self.cache.get(wcc)
159
160 def add(self, tens):
161 # Adds the compressed weights from the tensor to the cache
162 wcc = tens.weight_compression_config
163 # Clone the tensor to make sure that nothing related to the weight compression is modified
164 tens_clone = tens.clone("_weights{}_{}".format(wcc.ofm_block_depth, wcc.ofm_depth_step))
165 self.cache[wcc] = tens_clone
166
167
Tim Hall79d07d22020-04-27 18:20:16 +0100168def encode(weight_stream):
Patrik Gustavsson5ff99442020-07-10 10:12:17 +0200169 if len(weight_stream) == 0:
170 return []
Tim Hall79d07d22020-04-27 18:20:16 +0100171 assert np.amin(weight_stream) >= -255
172 assert np.amax(weight_stream) <= 255
173
174 # Encode flattened signed weight stream
175 compressed = mlw_codec.encode(weight_stream)
176
177 # pad with 0xFF as needed so the length of the weight stream
178 # is a multiple of 16
Diego Russoea6111a2020-04-14 18:41:58 +0100179
Tim Hall79d07d22020-04-27 18:20:16 +0100180 while (len(compressed) % 16) != 0:
181 compressed.append(0xFF)
182
183 return compressed
184
185
Manupa Karunaratned83d2e12020-07-20 12:05:32 +0100186def generate_brick(
187 ifm_ublock, ofm_ublock, brick_weights, ofm_block_depth, is_depthwise, is_partkernel, ifm_bitdepth, dilation
188):
189
190 decomp_h = ArchitectureFeatures.SubKernelMax.height // dilation[0]
191 decomp_w = ArchitectureFeatures.SubKernelMax.width // dilation[1]
Tim Hallf7e810a2020-06-25 15:04:31 +0100192 # Expect weights formatted OHWI
193 ofm_depth = brick_weights.shape[-4]
194 ifm_depth = brick_weights.shape[-1]
195 kernel_width = brick_weights.shape[-2]
196 kernel_height = brick_weights.shape[-3]
Tim Hall79d07d22020-04-27 18:20:16 +0100197 # IFM block depth
198 if is_partkernel or (ifm_bitdepth == 16):
199 # IFM block depth is always 16 for part-kernel-first
200 ifm_block_depth = 16
201 elif ifm_bitdepth == 8:
202 ifm_block_depth = 32
203 else:
204 assert False
205
206 stream = []
207
208 # Top level striping - OFM blocks in the entire brick's depth
Louis Verhaard3c07c972020-05-07 08:12:58 +0200209 for ofm_block_z in range(0, ofm_depth, ofm_block_depth):
210 clipped_ofm_block_depth = min(ofm_block_depth, ofm_depth - ofm_block_z)
Tim Hall79d07d22020-04-27 18:20:16 +0100211 # IFM blocks required for the brick
212 for ifm_block_z in range(0, (1 if is_depthwise else ifm_depth), ifm_block_depth):
213 if is_depthwise:
214 clipped_ifm_block_depth = ifm_ublock.depth
215 else:
216 clipped_ifm_block_depth = (
217 min(ifm_block_depth, ifm_depth - ifm_block_z) if is_partkernel else ifm_block_depth
218 )
219 # Weight decomposition
220 # Subkernel Splitting (H)
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200221 for subkernel_y in range(0, kernel_height, decomp_h):
222 sub_height = min(kernel_height - subkernel_y, decomp_h)
Tim Hall79d07d22020-04-27 18:20:16 +0100223 # Subkernel splitting (W)
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200224 for subkernel_x in range(0, kernel_width, decomp_w):
225 sub_width = min(kernel_width - subkernel_x, decomp_w)
Tim Hall79d07d22020-04-27 18:20:16 +0100226 subkernel_elements = sub_width * sub_height
227 # Part kernel first works across the kernel H/W and needs padding
228 if is_partkernel:
229 if ifm_bitdepth == 16 and subkernel_elements % 2 != 0:
230 subkernel_elements = int(math.ceil(subkernel_elements / 2) * 2)
231 elif ifm_bitdepth == 8 and subkernel_elements % 4 != 0:
232 subkernel_elements = int(math.ceil(subkernel_elements / 4) * 4)
233
234 # Depthwise Conv requires multiple of 4 kernel elements in its weight block
235 # this is different from normal conv which is considered "weights depth-first"
236 elif is_depthwise:
237 subkernel_elements = int(math.ceil(subkernel_elements / 4.0) * 4)
238
239 ifm_block_depth_outer = clipped_ifm_block_depth if is_partkernel else 1
240 ifm_block_depth_inner = 1 if is_partkernel else clipped_ifm_block_depth
241 # IFM Ublocks in IFM-block over depth for part-kernel-first mode
242 # For depth-first IFM Ublocks are traversed after subkernel elements so this loop is ignored.
243 for ifm_ublk_outer in range(0, ifm_block_depth_outer, ifm_ublock.depth):
244 # OFM Ublocks in OFM-block over depth
245 for ofm_ublk in range(0, clipped_ofm_block_depth, ofm_ublock.depth):
246 # HW Kernel element traversal - cannot be a H/W loop due to element
247 # padding requirement on depthwise/part-kernel configurations
248 for element in range(subkernel_elements):
249 kx = element % sub_width
250 ky = element // sub_width
251 # IFM Ublocks in IFM-block over depth (only 1 ublock if depthwise)
252 # In case of part-kernel-first IFM Ublock traversal have already been handled
253 # and this loop is ignored.
254 for ifm_ublk_inner in range(0, ifm_block_depth_inner, ifm_ublock.depth):
255 # Feed OFM ublock elements
256 for ofm_ublock_z in range(ofm_ublock.depth):
257 # Source IFM ublock elements (only 1 element deep if depthwise)
258 for ifm_ublock_z in range(1 if is_depthwise else ifm_ublock.depth):
259 # Source position within the current subkernel
260 wx = subkernel_x + kx
261 wy = subkernel_y + ky
262 # Source IFM/OFM slices
263 ifm_ublk = ifm_ublk_inner + ifm_ublk_outer
264 ifm_z = ifm_block_z + ifm_ublk + ifm_ublock_z
265 ofm_z = ofm_block_z + ofm_ublk + ofm_ublock_z
266 if (ifm_z >= ifm_depth) or (ofm_z >= ofm_depth) or (ky >= sub_height):
267 stream.append(0)
268 else:
Tim Hallf7e810a2020-06-25 15:04:31 +0100269 stream.append(brick_weights[ofm_z][wy][wx][ifm_z])
Tim Hall79d07d22020-04-27 18:20:16 +0100270 return stream
271
Jacob Bohline843d332020-06-23 12:12:56 +0200272
Tim Hallf7e810a2020-06-25 15:04:31 +0100273def core_deinterleave(hwio, core, ncores):
274 # Put weights back into OHWI
Jacob Bohline843d332020-06-23 12:12:56 +0200275 ohwi = np.transpose(hwio, (3, 0, 1, 2))
276 return ohwi[core : ohwi.shape[0] : ncores]
277
Tim Hall79d07d22020-04-27 18:20:16 +0100278
279# Compress the weights
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200280def compress_weights(arch, nng, tens, npu_block_type, ofm_block_depth, ofm_depth_step, dilation):
Tim Hall79d07d22020-04-27 18:20:16 +0100281 assert tens.purpose == TensorPurpose.Weights
282 assert tens.format == TensorFormat.WeightsCompressed
283
Louis Verhaard3c07c972020-05-07 08:12:58 +0200284 # Check the weight cache
285 if nng.weight_cache is None:
286 nng.weight_cache = CompressedWeightCache()
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200287 wcc = create_weight_compression_config(tens, npu_block_type, ofm_block_depth, ofm_depth_step, dilation)
Louis Verhaard3c07c972020-05-07 08:12:58 +0200288 tens.weight_compression_config = wcc
289 tens_cached = nng.weight_cache.get_tensor_with_same_compression(wcc)
290 if tens_cached is not None:
291 # Cache hit, copy weights from the cache
292 tens.copy_compressed_weight_info(tens_cached)
293 set_storage_shape(tens)
294 return
Tim Hall79d07d22020-04-27 18:20:16 +0100295
Louis Verhaard3c07c972020-05-07 08:12:58 +0200296 # No cache hit, perform the compression
Tim Hall79d07d22020-04-27 18:20:16 +0100297 assert tens.quantization is not None
298 assert tens.quantization.scale_f32 is not None
299 assert tens.quantization.zero_point is not None
300
301 zero_point = tens.quantization.zero_point
302 quant_buf = tens.quant_values.astype(np.int64)
303
304 # Early zero-point correction
305 weights = quant_buf - zero_point
306
307 if len(weights.shape) == 2:
308 weights = np.expand_dims(np.expand_dims(weights, axis=0), axis=0)
Tim Hall79d07d22020-04-27 18:20:16 +0100309
310 compression_scales = []
311 compressed_offsets = []
312 encoded_streams = []
Tim Hallf7e810a2020-06-25 15:04:31 +0100313 encoded_streams_substream_offsets = []
Tim Hall79d07d22020-04-27 18:20:16 +0100314 offset = 0
Tim Hallf7e810a2020-06-25 15:04:31 +0100315 max_single_buffer_len = 0
Tim Hall79d07d22020-04-27 18:20:16 +0100316
317 ifm_bitdepth = tens.consumer_list[0].inputs[0].dtype.size_in_bits()
318 ifm_depth = weights.shape[-2]
319 if npu_block_type == NpuBlockType.ConvolutionDepthWise:
320 tens.block_traversal = TensorBlockTraversal.DepthWise
321 if npu_block_type == NpuBlockType.ConvolutionMxN:
322 # Determine which block traversal strategy has better DPU utilization
Jacob Bohlinde2a57f2020-08-10 15:21:42 +0200323 kernel_size = weights.shape[0] * weights.shape[1]
324 depth_utilization = weights.shape[2] / round_up(weights.shape[2], 32 if ifm_bitdepth == 8 else 16)
325 part_kernel_utilization = (weights.shape[2] / round_up(weights.shape[2], 8)) * (
Tim Hall79d07d22020-04-27 18:20:16 +0100326 kernel_size / round_up(kernel_size, 4 if ifm_bitdepth == 8 else 2)
327 )
328 if part_kernel_utilization >= depth_utilization or ifm_depth <= 8:
329 # Part-kernel first is always better for ifm depths <= 8
330 tens.block_traversal = TensorBlockTraversal.PartKernelFirst
331 else:
332 tens.block_traversal = TensorBlockTraversal.DepthFirst
333
Manupa Karunaratned83d2e12020-07-20 12:05:32 +0100334 is_depthwise = tens.block_traversal == TensorBlockTraversal.DepthWise
335 is_partkernel = tens.block_traversal == TensorBlockTraversal.PartKernelFirst
336
Jacob Bohlincf7da102020-05-20 09:03:40 +0200337 if tens.consumer_list[0].type == "Conv2DBackpropInputSwitchedBias":
338 # Transpose Convoluion, reverse weights in H and W axes
Tim Hallc30f4952020-06-15 20:47:35 +0100339 weights = np.flip(weights, axis=(0, 1))
Jacob Bohlincf7da102020-05-20 09:03:40 +0200340
Jacob Bohline843d332020-06-23 12:12:56 +0200341 # Calculate brick size
Jacob Bohlinde2a57f2020-08-10 15:21:42 +0200342 brick_size = (weights.shape[0], weights.shape[1], weights.shape[2], min(tens.shape[-1], ofm_depth_step))
Jacob Bohline843d332020-06-23 12:12:56 +0200343 elements_in_brick = np.prod(brick_size)
344
Tim Hall79d07d22020-04-27 18:20:16 +0100345 # Slice weight stream up depth-ways into bricks and compress
346 full_ofm_depth = quant_buf.shape[-1]
347 for idx in range(0, full_ofm_depth, ofm_depth_step):
348 # Get the weights necessary for this brick
349 count = min(full_ofm_depth - idx, ofm_depth_step)
350 brick_weights = weights[:, :, :, idx : idx + count]
351
Tim Hallf7e810a2020-06-25 15:04:31 +0100352 substream_offsets = [0]
353 encoded_stream = []
Tim Hallf7e810a2020-06-25 15:04:31 +0100354
355 # For each core, deinterleave weights from the larger volume
356 # and generate separate compressed streams.
357 for core in range(0, min(arch.ncores, full_ofm_depth)):
358 core_weights = core_deinterleave(brick_weights, core, arch.ncores)
Tim Hall62316762020-06-25 16:55:02 +0100359
360 block_depth = (ofm_block_depth + arch.ncores - 1 - core) // arch.ncores
Manupa Karunaratned83d2e12020-07-20 12:05:32 +0100361 encoded_substream = []
Tim Hall62316762020-06-25 16:55:02 +0100362 if block_depth != 0:
Manupa Karunaratned83d2e12020-07-20 12:05:32 +0100363 encoded_substream = encode_weights(
364 accelerator=arch.accelerator_config,
365 weights_volume=core_weights,
366 dilation_xy=dilation,
367 ifm_bitdepth=ifm_bitdepth,
368 ofm_block_depth=block_depth,
369 is_depthwise=is_depthwise,
370 is_partkernel=is_partkernel,
Jacob Bohline843d332020-06-23 12:12:56 +0200371 )
Jacob Bohline843d332020-06-23 12:12:56 +0200372 encoded_stream.extend(encoded_substream)
373 substream_offsets.append(len(encoded_stream))
Tim Hallf7e810a2020-06-25 15:04:31 +0100374
Jacob Bohline843d332020-06-23 12:12:56 +0200375 encoded_streams.append(encoded_stream)
376 encoded_streams_substream_offsets.append(substream_offsets)
Tim Hallf7e810a2020-06-25 15:04:31 +0100377
378 # Remember maximum encoded length for DoubleBuffering
379 max_single_buffer_len = max(max_single_buffer_len, len(encoded_stream))
Tim Hall79d07d22020-04-27 18:20:16 +0100380
Tim Hall79d07d22020-04-27 18:20:16 +0100381 # Remember where we put it for linear addressing
382 compressed_offsets.append(offset)
Tim Hallf7e810a2020-06-25 15:04:31 +0100383 offset += len(encoded_stream)
Tim Hall79d07d22020-04-27 18:20:16 +0100384 assert offset % 16 == 0
385
386 # Compression scale tracking
Jacob Bohline843d332020-06-23 12:12:56 +0200387 compression_scales.append(len(encoded_stream) / elements_in_brick)
Tim Hall79d07d22020-04-27 18:20:16 +0100388
Tim Hallf7e810a2020-06-25 15:04:31 +0100389 # Track total length as last element of the offsets array
Tim Hall79d07d22020-04-27 18:20:16 +0100390 compressed_offsets.append(offset)
391
Tim Hall79d07d22020-04-27 18:20:16 +0100392 tens.weight_compression_scales = compression_scales
Tim Hall79d07d22020-04-27 18:20:16 +0100393 tens.weight_compressed_offsets = compressed_offsets
394 tens.compression_scale_for_worst_weight_stream = np.amax(compression_scales)
395 tens.storage_compression_scale = tens.bandwidth_compression_scale = np.average(compression_scales)
396 tens.compressed_values = encoded_streams
Tim Hallf7e810a2020-06-25 15:04:31 +0100397 tens.compressed_values_substream_offsets = encoded_streams_substream_offsets
Jacob Bohline843d332020-06-23 12:12:56 +0200398 tens.brick_size = brick_size
Louis Verhaard3c07c972020-05-07 08:12:58 +0200399 set_storage_shape(tens)
400 nng.weight_cache.add(tens)
Tim Hall79d07d22020-04-27 18:20:16 +0100401
Jacob Bohline843d332020-06-23 12:12:56 +0200402
Tim Hallf7e810a2020-06-25 15:04:31 +0100403def calc_scales_and_pack_biases(tens, arch, ofm_depth_step, rescale_for_faf=False):
Tim Hall79d07d22020-04-27 18:20:16 +0100404 assert tens.purpose == TensorPurpose.FeatureMap
405 assert tens.format == TensorFormat.NHWC
406 # the connected operator should expect a bias input unless it is a FullyConnected
407 assert "Bias" in tens.consumer_list[0].type or tens.consumer_list[0].type.startswith("FullyConnected")
408 # the input bias tensor is the same as that connected to the operator
Jacob Bohlincf7da102020-05-20 09:03:40 +0200409 _, _, bias_tens, _ = tens.consumer_list[0].get_ifm_weights_biases_ofm()
410 assert tens is bias_tens
411
Tim Hall79d07d22020-04-27 18:20:16 +0100412 # the operator should only have a single output
413 assert len(tens.consumer_list[0].outputs) == 1
Tim Hall79d07d22020-04-27 18:20:16 +0100414 biases = tens.quant_values
415
416 first_consumer_op = tens.consumer_list[0]
417 ifm_dtype = first_consumer_op.inputs[0].dtype
418 ifm_scale = first_consumer_op.inputs[0].quantization.scale_f32
419 ofm_scale = first_consumer_op.outputs[0].quantization.scale_f32
420 weight_scales = first_consumer_op.inputs[1].quantization.scale_f32
421
422 # biases can have multiple consumers for rnn cells. if so, then check that they are all the same
423 for op in tens.consumer_list[1:]:
424 assert ifm_scale == op.inputs[0].quantization.scale_f32
425 assert ofm_scale == op.outputs[0].quantization.scale_f32
426 assert weight_scales == op.inputs[1].quantization.scale_f32
427
428 if not hasattr(weight_scales, "__iter__"):
429 # If weight_scales is not already an iterable make it into a list
430 weight_scales = [weight_scales]
431
432 # Convert scales to np.double (from np.float32) to conform to TensorFlow Lite which
433 # uses double during scaling calculations
434 # TensorFlow Lite casts the scales slightly differently for uint8 and int8
435 if not rescale_for_faf:
436 if ifm_dtype == DataType.uint8:
437 scales = [np.double(ifm_scale * weight_scale) / np.double(ofm_scale) for weight_scale in weight_scales]
Fredrik Svedbergd67c0aa2020-03-30 13:15:28 +0200438 elif ifm_dtype == DataType.int8 or ifm_dtype == DataType.int16:
Tim Hall79d07d22020-04-27 18:20:16 +0100439 scales = [
440 (np.double(ifm_scale) * np.double(weight_scale)) / np.double(ofm_scale)
441 for weight_scale in weight_scales
442 ]
443 else:
Louis Verhaard7db78962020-05-25 15:05:26 +0200444 raise UnsupportedFeatureError(
445 "Compression of {} is not implemented; tensor: {}".format(ifm_dtype, tens.name)
446 )
Tim Hall79d07d22020-04-27 18:20:16 +0100447 else:
448 if ifm_dtype == DataType.uint8:
449 scales = [np.double(ifm_scale * weight_scale * 0x3000) for weight_scale in weight_scales]
Fredrik Svedbergd67c0aa2020-03-30 13:15:28 +0200450 elif ifm_dtype == DataType.int8 or ifm_dtype == DataType.int16:
Tim Hall79d07d22020-04-27 18:20:16 +0100451 scales = [(np.double(ifm_scale * 0x3000) * np.double(weight_scale)) for weight_scale in weight_scales]
452 else:
Louis Verhaard7db78962020-05-25 15:05:26 +0200453 raise UnsupportedFeatureError(
454 "Compression of {} is not implemented; tensor: {}".format(ifm_dtype, tens.name)
455 )
Tim Hall79d07d22020-04-27 18:20:16 +0100456
457 # quantise all of the weight scales into (scale_factor, shift)
Fredrik Svedbergd67c0aa2020-03-30 13:15:28 +0200458 if ifm_dtype == DataType.int16:
459 quantised_scales = [reduced_quantise_scale(scale) for scale in scales]
460 else:
461 quantised_scales = [quantise_scale(scale) for scale in scales]
Tim Hall79d07d22020-04-27 18:20:16 +0100462
Tim Hall79d07d22020-04-27 18:20:16 +0100463 # pack the biases and scales
Tim Hall79d07d22020-04-27 18:20:16 +0100464 if len(quantised_scales) == 1:
465 # If only 1 quantised scale is used, repeat that value for the length of the biases
466 quantised_scales = [quantised_scales[0]] * len(biases)
467
468 assert len(quantised_scales) == len(biases)
Tim Hall79d07d22020-04-27 18:20:16 +0100469 tens.element_size_bytes = 10
Tim Hallf7e810a2020-06-25 15:04:31 +0100470 tens.compressed_values = []
471 tens.compressed_values_substream_offsets = []
Tim Hall79d07d22020-04-27 18:20:16 +0100472
Tim Hallf7e810a2020-06-25 15:04:31 +0100473 total_elements = len(quantised_scales)
Patrik Gustavssond89c09e2020-07-08 11:27:12 +0200474 alignment_bytes = 0
Tim Hallf7e810a2020-06-25 15:04:31 +0100475 for i in range(0, total_elements, ofm_depth_step):
476 # Extract streams from brick to generate substreams for each core
477 stream = bytearray()
478 substream_offsets = [0]
479 max_len = min(ofm_depth_step, total_elements - i)
480 for core in range(0, min(arch.ncores, max_len)):
Jacob Bohline843d332020-06-23 12:12:56 +0200481 core_scales = quantised_scales[i + core : i + core + max_len : arch.ncores]
482 core_biases = biases[i + core : i + core + max_len : arch.ncores]
Tim Hallf7e810a2020-06-25 15:04:31 +0100483 for j, core_bias in enumerate(core_biases):
Manupa Karunaratnebef228b2020-07-29 18:06:28 +0100484 stream.extend(encode_bias(np.int64(core_bias), *core_scales[j]))
Tim Hall79d07d22020-04-27 18:20:16 +0100485
Tim Hallf7e810a2020-06-25 15:04:31 +0100486 # Align to 16 for start for next substream
Jacob Bohline843d332020-06-23 12:12:56 +0200487 remainder = (len(stream)) % 16
Tim Hallf7e810a2020-06-25 15:04:31 +0100488 if remainder > 0:
Jacob Bohline843d332020-06-23 12:12:56 +0200489 stream.extend(bytearray(16 - remainder))
Patrik Gustavssond89c09e2020-07-08 11:27:12 +0200490 alignment_bytes += 16 - remainder
Tim Hall79d07d22020-04-27 18:20:16 +0100491
Jacob Bohline843d332020-06-23 12:12:56 +0200492 substream_offsets.append(len(stream))
Tim Hall79d07d22020-04-27 18:20:16 +0100493
Tim Hallf7e810a2020-06-25 15:04:31 +0100494 # Add to compressed values with their substream offset lists to the tensor
Jacob Bohline843d332020-06-23 12:12:56 +0200495 tens.compressed_values.append(stream)
496 tens.compressed_values_substream_offsets.append(substream_offsets)
Tim Hallf7e810a2020-06-25 15:04:31 +0100497
Patrik Gustavssond89c09e2020-07-08 11:27:12 +0200498 tens.storage_shape = [total_elements + round_up_divide(alignment_bytes, tens.element_size_bytes)]
Tim Hall79d07d22020-04-27 18:20:16 +0100499
Jacob Bohline843d332020-06-23 12:12:56 +0200500
Tim Hall79d07d22020-04-27 18:20:16 +0100501def update_pass_weight_and_scale_tensors(nng, arch):
Tim Hall79d07d22020-04-27 18:20:16 +0100502 for sg in nng.subgraphs:
503 for ps in sg.passes:
Louis Verhaard3c07c972020-05-07 08:12:58 +0200504 tens = ps.weight_tensor
505 if tens is not None:
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200506 op = tens.find_npu_op()
Dwight Lidman940fdee2020-08-13 13:11:48 +0200507 if op is None:
508 continue
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200509 npu_usage_of_tensor = op.attrs["npu_block_type"]
Louis Verhaard3c07c972020-05-07 08:12:58 +0200510 needs_dma = tens.needs_dma()
Tim Hall79d07d22020-04-27 18:20:16 +0100511 if ps.cascade.strategy == SchedulingStrategy.WeightStream and needs_dma:
512 ofm_depth_step = ps.block_config[-1]
513 else:
Louis Verhaard3c07c972020-05-07 08:12:58 +0200514 ofm_depth_step = tens.shape[-1]
Tim Hall79d07d22020-04-27 18:20:16 +0100515 compress_weights(
Louis Verhaardb2fb2122020-06-04 15:51:24 +0200516 arch, nng, tens, npu_usage_of_tensor, ps.block_config[-1], ofm_depth_step, op.get_dilation_h_w()
Tim Hall79d07d22020-04-27 18:20:16 +0100517 )
518 # Update source tensor
Louis Verhaard3c07c972020-05-07 08:12:58 +0200519 if needs_dma:
520 src_tens = tens.get_dma_src_tensor()
521 src_tens.shape = tens.shape
522 src_tens.quant_values = tens.quant_values
523 src_tens.copy_compressed_weight_info(tens)
524 set_storage_shape(src_tens)
Tim Hall79d07d22020-04-27 18:20:16 +0100525
Diego Russoea6111a2020-04-14 18:41:58 +0100526 if ps.scale_tensor is not None:
Tim Hall79d07d22020-04-27 18:20:16 +0100527 rescale_for_faf = False
528 activation_ops = set(("Sigmoid", "Tanh"))
529 if (ps.ops[-1].type in activation_ops) and (ps.npu_block_type != NpuBlockType.ElementWise):
530 rescale_for_faf = True
Tim Hallf7e810a2020-06-25 15:04:31 +0100531 calc_scales_and_pack_biases(ps.scale_tensor, arch, ofm_depth_step, rescale_for_faf)