# Copyright (C) 2020 Arm Limited or its affiliates. All rights reserved. # # SPDX-License-Identifier: Apache-2.0 # # Licensed under the Apache License, Version 2.0 (the License); you may # not use this file except in compliance with the License. # You may obtain a copy of the License at # # www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an AS IS BASIS, WITHOUT # WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # Description: # Functionality for lookup table support. import uuid import numpy as np from . import numeric_util from .high_level_command_stream import DMA from .high_level_command_stream import NpuStripe from .tensor import create_const_tensor from .tensor import create_equivalence_id from .tensor import TensorPurpose class LUTState: # Tracks which LUT-s are located in SHRAM. def __init__(self): self.tensors = [] def get_equivalent(self, lut_tens): # Returns existing lut with the same values, None if not found for t in self.tensors: if np.array_equal(t.values, lut_tens.values): return t return None def put(self, lut_tens): # Returns new LUT state containing given tensor + all tensors in this state # that do not overlap with the given tensor new_state = LUTState() new_state.tensors.append(lut_tens) start = lut_tens.address end = start + lut_tens.storage_size() for tens in self.tensors: start2 = tens.address end2 = start2 + tens.storage_size() if not numeric_util.overlaps(start, end, start2, end2): new_state.tensors.append(tens) return new_state def find_best_address(self, start, stop, step): # Finds the address in the given range that overlaps with the minimum number of # currently present LUT-s. # An improvement would be to also take future LUT usage into account best_addr = start best_nr_overlaps = stop for addr in range(start, stop, step): nr_overlaps = 0 for tens in self.tensors: start2 = tens.address end2 = start2 + tens.storage_size() if numeric_util.overlaps(addr, addr + step, start2, end2): nr_overlaps += 1 if nr_overlaps < best_nr_overlaps: best_nr_overlaps = nr_overlaps best_addr = addr return best_addr def get_lut_index(arch, lut_tensor): # Returns the index in SHRAM where the given LUT is stored, a value between 0 and 8 slot = (lut_tensor.address - arch.shram_lut_address) // lut_tensor.storage_size() assert 0 <= slot < 8 return slot def create_lut_tensor(name, values, dtype): # Creates constant LUT tensor with the given values as lookup table. # The tensor's equivalence_id is based on these values, so if multiple # LUT tensors are created with identical values, they will get the same # address in constant memory, and unnecessary DMA operations can be avoided. sz = len(values) assert sz in (256, 512) ntype = np.uint8 if dtype.size_in_bytes() == 1 else np.uint32 tens = create_const_tensor(name, [1, 1, 1, sz], dtype, values, ntype, TensorPurpose.LUT) tens.equivalence_id = create_equivalence_id(tuple(values)) return tens def optimize_high_level_cmd_stream(sg, arch): # - Allocates SHRAM address/lut index to LUT tensors # - Removes unnecessary DMA operations of LUT-s that are already present in SHRAM from sg's command stream cmd_stream = [] # will contain existing command stream minus unneeded DMA operations lut_state = LUTState() slot_size = 256 lut_start = arch.shram_lut_address lut_end = lut_start + arch.shram_lut_size for cmd in sg.high_level_command_stream: if isinstance(cmd, NpuStripe) and cmd.ps.lut_tensor is None and arch.shram_reserved_unused_banks == 0: # The command overwrites the last 2 banks containing the LUT; next LUT operation will require DMA # TODO: check the command's SHRAM usage in more detail to determine if the LUT is overwritten or not lut_state = LUTState() if not isinstance(cmd, DMA) or cmd.out_tensor.purpose != TensorPurpose.LUT: # Non-LUT operation; leave untouched cmd_stream.append(cmd) continue # LUT DMA operation lut_tens = cmd.out_tensor existing_tens = lut_state.get_equivalent(lut_tens) if existing_tens is not None: # LUT is already in SHRAM, no need to perform DMA lut_tens.equivalence_id = existing_tens.equivalence_id lut_tens.address = existing_tens.address cmd.ps.primary_op.activation.lut_index = get_lut_index(arch, existing_tens) continue # Place the LUT in the last 2 blocks of SHRAM # Alignment is always on the size of the LUT, 256 for 256-byte LUT, 1K for 1K LUT, etc address = lut_state.find_best_address(lut_start, lut_end, lut_tens.storage_size()) lut_tens.equivalence_id = uuid.uuid4() lut_tens.address = address cmd.ps.primary_op.activation.lut_index = (address - lut_start) // slot_size lut_state = lut_state.put(lut_tens) cmd_stream.append(cmd) sg.high_level_command_stream = cmd_stream