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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# Shared buffer allocation works out how to allocate the Ethos-U55 shared buffer for a given pass.
Tim Hall79d07d22020-04-27 18:20:16 +010018import numpy as np
Diego Russoea6111a2020-04-14 18:41:58 +010019
Diego Russoe8a10452020-04-21 17:39:10 +010020from .architecture_features import ArchitectureFeatures
21from .architecture_features import Block
22from .architecture_features import Kernel
23from .architecture_features import SharedBufferArea
24from .architecture_features import SHRAMElements
Tim Hall2a7ebe32020-06-18 11:42:21 +010025from .errors import VelaError
Dwight Lidman7ad408b2020-08-11 11:55:22 +020026from .ethos_u55_regs.ethos_u55_regs import resampling_mode
Diego Russoea6111a2020-04-14 18:41:58 +010027from .operation import NpuBlockType
Louis Verhaard814cfbb2020-08-21 14:06:25 +020028from .range_set import MemoryRangeSet
29from .tensor import MemArea
Tim Hall79d07d22020-04-27 18:20:16 +010030
31
32class SharedBufferAllocation:
33 def __init__(self, arch, ps):
34 self.arch = arch
35
36 self.bank_locations = np.zeros(SharedBufferArea.Size)
37 self.banks_required = np.zeros(SharedBufferArea.Size)
38
39 ifm_tensor, ifm2_tensor, weight_tensor, ofm_tensor = ps.get_primary_op_ifm_ifm2_weights_ofm()
Fredrik Svedberg2b60ce92020-09-15 17:18:40 +020040 tensors = [t for t in (ifm_tensor, ifm2_tensor, ofm_tensor) if t is not None]
41 has_scale = None not in (t.quantization.scale_f32 for t in tensors)
Tim Hall79d07d22020-04-27 18:20:16 +010042
43 strides = (1, 1, 1, 1)
44 dilation = (1, 1, 1, 1)
45 self.kernel = Kernel(1, 1)
46 is_elementwise = ps.npu_block_type == NpuBlockType.ElementWise
Louis Verhaard814cfbb2020-08-21 14:06:25 +020047 self.uses_lut = False
Tim Hall79d07d22020-04-27 18:20:16 +010048
49 if ps.primary_op:
50 strides = ps.primary_op.attrs.get("strides", strides)
51 dilation = ps.primary_op.attrs.get("dilation", dilation)
52 k_h = 1
53 k_w = 1
54 if weight_tensor:
55 if ps.primary_op.type != "FullyConnectedAct":
56 k_h = weight_tensor.shape[0]
57 k_w = weight_tensor.shape[1]
58 else:
59 k_h = ps.primary_op.attrs.get("filter_height", 1)
60 k_w = ps.primary_op.attrs.get("filter_width", 1)
61
62 self.kernel = Kernel(k_w, k_h, strides[2], strides[1], dilation[2], dilation[1])
Louis Verhaard814cfbb2020-08-21 14:06:25 +020063 self.uses_lut = ps.primary_op.activation_lut is not None
Tim Hall79d07d22020-04-27 18:20:16 +010064
65 self.is_equal_depth_op = is_elementwise or ps.npu_block_type in (
66 NpuBlockType.ConvolutionDepthWise,
67 NpuBlockType.Pooling,
68 )
69 self.strides = strides
70
71 self.use_accumulator_element = SHRAMElements.Acc32
72 if is_elementwise:
73 self.use_ifm_element = SHRAMElements.IFM8_Elementwise
74 else:
75 self.use_ifm_element = SHRAMElements.IFM8
76
Dwight Lidman7ad408b2020-08-11 11:55:22 +020077 self.ifm_resampling_mode = resampling_mode.NONE
Tim Hall79d07d22020-04-27 18:20:16 +010078 self.ifm_bits = 0
79 self.ifm_depth = 0
80 if ifm_tensor:
Dwight Lidman7ad408b2020-08-11 11:55:22 +020081 self.ifm_resampling_mode = ifm_tensor.resampling_mode
Tim Hall79d07d22020-04-27 18:20:16 +010082 self.ifm_bits = ifm_tensor.dtype.size_in_bits()
83 if ifm_tensor.shape == [] and is_elementwise:
84 # Elementwise operator with scalar in ifm, use ifm2 depth
85 self.ifm_depth = ifm2_tensor.shape[-1]
86 else:
87 self.ifm_depth = ifm_tensor.shape[-1]
88 if self.ifm_bits == 16:
Fredrik Svedberg2b60ce92020-09-15 17:18:40 +020089 if ps.npu_block_type != NpuBlockType.Pooling and has_scale:
Tim Hall749bfd52020-08-30 14:40:46 +010090 self.use_accumulator_element = SHRAMElements.Acc40
Tim Hall79d07d22020-04-27 18:20:16 +010091 self.use_ifm_element = self.use_ifm_element + 1
92 assert (self.use_ifm_element == SHRAMElements.IFM16) or (
93 self.use_ifm_element == SHRAMElements.IFM16_Elementwise
94 )
Tim Hall2b7a1622020-09-08 17:00:33 +010095 elif self.ifm_bits == 32:
96 assert is_elementwise or ps.npu_block_type == NpuBlockType.ReduceSum, "Unsupported 32-bit IFM operation"
Fredrik Svedberg597fd3f2020-08-13 10:02:53 +020097 self.use_ifm_element = SHRAMElements.IFM32
Tim Hall79d07d22020-04-27 18:20:16 +010098 else:
99 assert self.ifm_bits == 8, "Unexpected IFM bitdepth"
100
101 self.ifm_block_depth = arch.calc_ifm_block_depth(self.ifm_depth, self.ifm_bits)
102 self.ofm_tensor = ofm_tensor
103
104 self.banks_required[SharedBufferArea.Weights] = arch.shram_reserved_weight_banks
105 self.banks_required[SharedBufferArea.OFM] = arch.shram_reserved_output_banks
106
107 def is_valid(self):
108 # Assign zero-based bank starts (first element remains zero)
109 self.bank_locations[1:] = np.cumsum(self.banks_required)[:-1]
110
111 # Accumulator area is measured from the end of the buffer
112 self.bank_locations[SharedBufferArea.Accumulators] = (
Louis Verhaard814cfbb2020-08-21 14:06:25 +0200113 self.arch.available_shram_banks(self.uses_lut) - self.banks_required[SharedBufferArea.Accumulators]
Tim Hall79d07d22020-04-27 18:20:16 +0100114 )
115 ifm_end = self.bank_locations[SharedBufferArea.IFM] + self.banks_required[SharedBufferArea.IFM]
116 return ifm_end <= self.bank_locations[SharedBufferArea.Accumulators]
117
118 def try_block(self, ofm_block: Block):
119 # Get IFM block configuration
120 ifm_block_depth = ofm_block.depth if self.is_equal_depth_op else self.ifm_block_depth
Tim Hallc30f4952020-06-15 20:47:35 +0100121 ifm_block = self.arch.get_ifm_block_size(
122 ifm_block_depth, ofm_block, self.kernel, ifm_resampling_mode=self.ifm_resampling_mode
123 )
Tim Hall79d07d22020-04-27 18:20:16 +0100124 ifm_config = self.arch.get_block_config(ifm_block.width, ifm_block.height, ifm_block.depth)
125 if ifm_config is None:
126 return None
127
128 # Get OFM block configuration
129 ofm_config = self.arch.get_block_config(ofm_block.width, ofm_block.height, ofm_block.depth)
130 if ofm_config is None:
131 return None
132
133 # Update bank counts for IFM and Accumulator
134 self.banks_required[SharedBufferArea.IFM] = ifm_config.banks[self.use_ifm_element]
135 self.banks_required[SharedBufferArea.Accumulators] = ofm_config.banks[self.use_accumulator_element]
136
137 # Validating calculates bank layout and returns validity
138 if not self.is_valid():
139 return None
140
141 return (ofm_block.height, ofm_block.width, ifm_block.depth, ofm_block.depth)
142
143 def generate_used_mask(self, active_set):
144 res = np.zeros(self.arch.shram_total_banks, dtype=np.int64)
145 for kind in active_set:
146 start = int(self.bank_locations[kind])
147 end = start + int(self.banks_required[kind])
148 res[start:end] = 1
149 return res
150
151 def is_compatible(first, second):
152 """See if the bank allocations of two convolutions are compatible,
153 so that they can run back-to-back without a fence in between"""
154
155 first_set = set((SharedBufferArea.OFM, SharedBufferArea.Accumulators))
156 second_set = set((SharedBufferArea.IFM, SharedBufferArea.Weights))
157
158 first_mask = first.generate_used_mask(first_set)
159 second_mask = second.generate_used_mask(second_set)
160
161 if np.sum(first_mask & second_mask):
162 # overlap
163 return False
164
165 return True
166
Louis Verhaard814cfbb2020-08-21 14:06:25 +0200167 def get_shram_memory_access_range(self):
168 # Returns the SHRAM memory access range used by this shared buffer,
169 # excluding access to LUT
170 return MemoryRangeSet(
171 MemArea.Shram, 0, self.arch.available_shram_banks(self.uses_lut) * self.arch.shram_bank_size
172 )
173
Tim Hall79d07d22020-04-27 18:20:16 +0100174
175def shared_buffer_allocation_for_pass_and_block_config(arch, ps, block_config):
176 alloc = SharedBufferAllocation(arch, ps)
177 assert (alloc.ifm_block_depth == block_config[2]) or alloc.is_equal_depth_op
178 if alloc.try_block(Block(block_config[1], block_config[0], block_config[3])):
179 return alloc
180
181 return None
182
183
184def find_block_configs_suitable_for_pass_and_shared_buffer(arch, ps):
185 alloc = SharedBufferAllocation(arch, ps)
186
187 if arch.override_block_config:
188 config = alloc.try_block(arch.override_block_config)
Tim Hall2a7ebe32020-06-18 11:42:21 +0100189 if config is None:
Fredrik Svedberga0c36242020-06-03 15:43:31 +0200190 raise VelaError("Block config override '{0}' cannot be allocated".format(arch.override_block_config))
Tim Hall2a7ebe32020-06-18 11:42:21 +0100191 return [config]
Tim Hall79d07d22020-04-27 18:20:16 +0100192
193 # Constrain the search space if the OFM is smaller than the max block size
194 # - Add other block search constraints here if required
195 if len(alloc.ofm_tensor.shape) == 2:
196 max_block_height = max_block_width = alloc.ofm_tensor.shape[0]
197 else:
198 max_block_width = alloc.ofm_tensor.shape[-2]
199 max_block_height = alloc.ofm_tensor.shape[-3]
200
201 # Common block depth
202 max_block_depth = alloc.ofm_tensor.shape[-1]
203
204 # Constrain to valid ranges before search
205 max_block_width = min(arch.ofm_block_max.width, max_block_width)
206 max_block_height = min(arch.ofm_block_max.height, max_block_height)
207 max_block_depth = min(arch.ofm_block_max.depth, max_block_depth)
208
209 valid_block_configs = []
210 # Try a range of block shapes against this pass
211 for w in range(arch.ofm_ublock.width, max_block_width + arch.ofm_ublock.width, arch.ofm_ublock.width):
212 for h in range(arch.ofm_ublock.height, max_block_height + arch.ofm_ublock.height, arch.ofm_ublock.height):
213 # Try valid OFM block depths
214 for c in range(arch.ofm_ublock.depth, max_block_depth + arch.ofm_ublock.depth, arch.ofm_ublock.depth):
215 # OFM block depth has the constraint that if it causes the OFM to be
216 # split, it must be a multiple of the OFM split size
217 if (c >= max_block_depth) or (c < max_block_depth and (c % ArchitectureFeatures.OFMSplitDepth) == 0):
218 config = alloc.try_block(Block(w, h, c))
219 if config:
220 valid_block_configs.append(config)
221
222 assert len(valid_block_configs) > 0
223 return valid_block_configs