X-Git-Url: https://git.sesse.net/?a=blobdiff_plain;f=src%2Fnnue%2Fnnue_architecture.h;h=725b40fb43d2e87d9ab484603528f9965a06f59d;hb=cb9c2594fcedc881ae8f8bfbfdf130cf89840e4c;hp=91cdc4bda23158b9a418d535cb14063a3b3c2b90;hpb=84f3e867903f62480c33243dd0ecbffd342796fc;p=stockfish diff --git a/src/nnue/nnue_architecture.h b/src/nnue/nnue_architecture.h index 91cdc4bd..725b40fb 100644 --- a/src/nnue/nnue_architecture.h +++ b/src/nnue/nnue_architecture.h @@ -1,6 +1,6 @@ /* Stockfish, a UCI chess playing engine derived from Glaurung 2.1 - Copyright (C) 2004-2020 The Stockfish developers (see AUTHORS file) + Copyright (C) 2004-2022 The Stockfish developers (see AUTHORS file) Stockfish is free software: you can redistribute it and/or modify it under the terms of the GNU General Public License as published by @@ -21,18 +21,111 @@ #ifndef NNUE_ARCHITECTURE_H_INCLUDED #define NNUE_ARCHITECTURE_H_INCLUDED -// Defines the network structure -#include "architectures/halfkp_256x2-32-32.h" +#include "nnue_common.h" -namespace Eval::NNUE { +#include "features/half_ka_v2_hm.h" - static_assert(kTransformedFeatureDimensions % kMaxSimdWidth == 0, ""); - static_assert(Network::kOutputDimensions == 1, ""); - static_assert(std::is_same::value, ""); +#include "layers/affine_transform.h" +#include "layers/clipped_relu.h" - // Trigger for full calculation instead of difference calculation - constexpr auto kRefreshTriggers = RawFeatures::kRefreshTriggers; +#include "../misc.h" -} // namespace Eval::NNUE +namespace Stockfish::Eval::NNUE { + +// Input features used in evaluation function +using FeatureSet = Features::HalfKAv2_hm; + +// Number of input feature dimensions after conversion +constexpr IndexType TransformedFeatureDimensions = 1024; +constexpr IndexType PSQTBuckets = 8; +constexpr IndexType LayerStacks = 8; + +struct Network +{ + static constexpr int FC_0_OUTPUTS = 15; + static constexpr int FC_1_OUTPUTS = 32; + + Layers::AffineTransform fc_0; + Layers::ClippedReLU ac_0; + Layers::AffineTransform fc_1; + Layers::ClippedReLU ac_1; + Layers::AffineTransform fc_2; + + // Hash value embedded in the evaluation file + static constexpr std::uint32_t get_hash_value() { + // input slice hash + std::uint32_t hashValue = 0xEC42E90Du; + hashValue ^= TransformedFeatureDimensions * 2; + + hashValue = decltype(fc_0)::get_hash_value(hashValue); + hashValue = decltype(ac_0)::get_hash_value(hashValue); + hashValue = decltype(fc_1)::get_hash_value(hashValue); + hashValue = decltype(ac_1)::get_hash_value(hashValue); + hashValue = decltype(fc_2)::get_hash_value(hashValue); + + return hashValue; + } + + // Read network parameters + bool read_parameters(std::istream& stream) { + if (!fc_0.read_parameters(stream)) return false; + if (!ac_0.read_parameters(stream)) return false; + if (!fc_1.read_parameters(stream)) return false; + if (!ac_1.read_parameters(stream)) return false; + if (!fc_2.read_parameters(stream)) return false; + return true; + } + + // Read network parameters + bool write_parameters(std::ostream& stream) const { + if (!fc_0.write_parameters(stream)) return false; + if (!ac_0.write_parameters(stream)) return false; + if (!fc_1.write_parameters(stream)) return false; + if (!ac_1.write_parameters(stream)) return false; + if (!fc_2.write_parameters(stream)) return false; + return true; + } + + std::int32_t propagate(const TransformedFeatureType* transformedFeatures) + { + constexpr uint64_t alignment = CacheLineSize; + + struct Buffer + { + alignas(CacheLineSize) decltype(fc_0)::OutputBuffer fc_0_out; + alignas(CacheLineSize) decltype(ac_0)::OutputBuffer ac_0_out; + alignas(CacheLineSize) decltype(fc_1)::OutputBuffer fc_1_out; + alignas(CacheLineSize) decltype(ac_1)::OutputBuffer ac_1_out; + alignas(CacheLineSize) decltype(fc_2)::OutputBuffer fc_2_out; + }; + +#if defined(ALIGNAS_ON_STACK_VARIABLES_BROKEN) + char bufferRaw[sizeof(Buffer) + alignment]; + char* bufferRawAligned = align_ptr_up(&bufferRaw[0]); + Buffer& buffer = *(new (bufferRawAligned) Buffer); +#else + alignas(alignment) Buffer buffer; +#endif + + fc_0.propagate(transformedFeatures, buffer.fc_0_out); + ac_0.propagate(buffer.fc_0_out, buffer.ac_0_out); + fc_1.propagate(buffer.ac_0_out, buffer.fc_1_out); + ac_1.propagate(buffer.fc_1_out, buffer.ac_1_out); + fc_2.propagate(buffer.ac_1_out, buffer.fc_2_out); + + // buffer.fc_0_out[FC_0_OUTPUTS] is such that 1.0 is equal to 127*(1<