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Create HopperMultiMatmulScheduler (#3243)
This PR creates `HopperMultiMatmulScheduler`. ## Changes: * `scheduleMultipleMatmuls` in `multi_matmul.h` selects between `AmpereMultiMatmulScheduler` and `HopperMultiMatmulScheduler` based on device compute capability. * Rename `MultiMatmulScheduler` to `AmpereMatmulScheduler`. Move it from `multi_matmul.cpp` to `ampere_multi_matmul.h` * Create `HopperMultiMatmulScheduler` in `hopper_multi_matmul.h` * Update arch guard in `test_matmul_scheduler.cpp` ## Why? Pros: - For deprecation, we could remove lines in `MatmulScheduler` and delete old files. - Assume uniform compute capability in each `MultipleMatmulScheduler`. - All reusable code would go matmul_utils.h and mma_util.h. Cons: - Older generations would have fewer capabilities, since most development would go to the current generation. - More lines of code. - `MatmulParams` could contain parameters for different generations.
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// clang-format off | ||
/* | ||
* SPDX-FileCopyrightText: Copyright (c) 2024-present NVIDIA CORPORATION & AFFILIATES. | ||
* All rights reserved. | ||
* SPDX-License-Identifier: BSD-3-Clause | ||
*/ | ||
// clang-format on | ||
#pragma once | ||
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#include <ATen/cuda/CUDAContext.h> | ||
#include <scheduler/mma_utils.h> | ||
#include <val_graph.h> | ||
#include <val_graph_visitor.h> | ||
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namespace nvfuser { | ||
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// MmaOps in the scheduled tensor. Each one outputs a TensorView* which we call | ||
// an mma_result. Each MmaOp will also have two input TensorViews which we call | ||
// "ab" and "bb" since they are the immediate A and B operands and they contain | ||
// broadcast dimensions. Again there can be multiple abs and multiple bbs in | ||
// one fusion. These TensorViews are loaded from global memory tensors that we | ||
// call "a" and "b" into shared memory tensors called acw_smem and bcw_smem. | ||
// They are loaded from shared memory to register buffers we call "acr" and | ||
// "bcr" ("cr" meaning "cache read" in this context). | ||
// | ||
// Putting this all together we have the following order for a simple matmul | ||
// | ||
// a -> acw_smem -> acr -> ... -> ab | ||
// \ . | ||
// mma_result -> ... -> dc -> d | ||
// / | ||
// b -> bcw_smem -> bcr -> ... -> bb | ||
// | ||
// The ... indicate that there might be other tensors involved in a prologue or | ||
// epilogue section at that location. | ||
// | ||
// In this example there are two matmuls both using the same "a" operand: | ||
// | ||
// b1 -> bcw_smem1 -> bcr1 -> ... -> bb1 | ||
// \ . | ||
// mma_result1 | ||
// / \ . | ||
// a -> acw_smem -> acr -> ... -> ab ... -> dc -> d | ||
// \ / | ||
// mma_result2 | ||
// / | ||
// b2 -> bcw_smem2 -> bcr2 -> ... -> bb2 | ||
// | ||
// Note that there can be more than one output d and each one will have its own | ||
// register cache dc. | ||
// | ||
// Split-K and smem epilogue unswizzling add two additional tensors for each | ||
// mma in the fusion: splitk_sum and smem_epilogue. | ||
// | ||
// // No split-K, no smem epilogue unswizzling: | ||
// mma_result -> ... -> dc -> d | ||
// // split-K, no smem epilogue unswizzling: | ||
// mma_result -> splitk_sum -> ... -> dc -> d | ||
// // smem epilogue unswizzling, no split-K: | ||
// mma_result -> smem_epilogue -> ... -> dc -> d | ||
// // split-K and smem epilogue unswizzling: | ||
// mma_result -> smem_epilogue -> splitk_sum -> ... -> dc -> d | ||
// | ||
// These additional tensors are added to each mma_result in the fusion. | ||
// | ||
// Each of the named tensors above is scheduled differently. We schedule them | ||
// by building AbstractTensors for each tensor category; these are held in | ||
// AmpereMultipleMatmulScheduler::schedules_. | ||
// TODO: Inheret from SchedulerEntry | ||
class AmpereMultipleMatmulScheduler { | ||
public: | ||
AmpereMultipleMatmulScheduler(Fusion* fusion, const MatmulParams* params) | ||
: fusion_(fusion), | ||
params_(params), | ||
id_model_(fusion, /*build_graphs=*/false) { | ||
const auto device_prop = at::cuda::getCurrentDeviceProperties(); | ||
const int cc = device_prop->major * 10 + device_prop->minor; | ||
NVF_ERROR( | ||
cc >= 75 && cc < 90, | ||
"This matmul scheduler is restricted to Ampere and Turing."); | ||
} | ||
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void run(); | ||
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private: | ||
void cacheInputsAndOutputs(); | ||
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void findPatterns(); | ||
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void countDims(); | ||
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void translatePatterns(); | ||
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// Get tensor roles and id roles | ||
// When there are multiple matmul patterns, we can have conflicting roles. | ||
// For now we throw an error if this is the case. | ||
// TODO: This should be checked in canScheduleCompileTime | ||
void findRoles(); | ||
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// Including current tensor naming convention for reference, | ||
// this is very temporary and will change over time and | ||
// in fact the whole body of this function will | ||
// eventually be a set of utility functions for different | ||
// sections of matmul(fusion) kernels, with | ||
// each having its own build out to do. | ||
// | ||
// Current naming convention is based on the following formula: | ||
// | ||
// d = alpha * (a x b) + beta * c | ||
// | ||
// and is defined in the following way: | ||
// | ||
// operands assumed in global memory : a, b, c | ||
// | ||
// registers staging global load : ar, br (short for a/b read) | ||
// | ||
// shared mem cache of operands : acw_smem, bcw_smem (short for a/b | ||
// cache_write smem) | ||
// | ||
// registers at shared memory load output : acr, bcr (short for a/b cache | ||
// read) | ||
// | ||
// register tensor input to the actual mma op: ab, bb (short for a/b | ||
// broadcasted) | ||
// | ||
// accumulator register: mma_result | ||
// - mma_result is MmaOp output if there is epilogue | ||
// - mma_result is dc (short for d cache) if there is no epilogue | ||
// | ||
// result in global memory: d | ||
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// Currently the support is for a, b, c and d as fusion inputs/outputs | ||
// aka. no prolog fusion yet. | ||
void defineOperandCaches(); | ||
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void cacheOperandsToSmem( | ||
const std::vector<TensorView*>& operands, | ||
std::vector<TensorView*>& smem_operands, | ||
int64_t vec_size); | ||
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// We add two LoadStore operators to the inputs of our fusions. The first | ||
// one is for a read from global memory and the second one (below) is for a | ||
// cache read. As an optimizaton, we avoid adding an operator if there's an | ||
// existing LoadStoreOp present. Please note that for the second LoadStore | ||
// we don't propagate the allocation domain, since the scheduler sets the | ||
// allocation domain in the registers. | ||
void addSetsForCacheReads( | ||
const std::vector<TensorView*>& tv_smems, | ||
std::vector<TensorView*>& tv_rs); | ||
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//! Rebuilds IdModel, then updates all ValGroups in abstract tensors to refer | ||
//! to the new IdModel. This is necessary whenever we perform an operation | ||
//! that creates a new TensorView, such as caching or rFactor | ||
void updateIdModel(); | ||
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//! Swizzle the M and N outer dimensions after makeTile has been called. | ||
//! This updates outer_dim_roles if we introduce a new dimension, which can | ||
//! happen if tv is missing a merged axis, in which case we skip merging after | ||
//! the split. This is analogous to forwarding during transform propagation. | ||
void swizzleBlockTiles( | ||
TensorView* tv, | ||
std::vector<MatmulDimRole>& outer_dim_roles); | ||
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//! This calls orig->cacheAfter() and also updates the permissive graph to | ||
//! reflect the new IterDomain mappings | ||
TensorView* cacheAfter( | ||
TensorView* orig, | ||
LoadStoreOpType op_type = LoadStoreOpType::Set, | ||
CacheOp cache_op = CacheOp::AllLevels, | ||
bool propagate_allocation_domain = false); | ||
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//! Do block tiling for a collection of TensorViews. The tensors should be | ||
//! unscheduled before this method is called. | ||
//! 1) Axes will be ordered according to canonicalDimOrdering, and then axes | ||
//! with the same role will be merged. | ||
//! 2) After that, we perform splits according to | ||
//! params_->tile_sizes.cta_tile, e.g. [M, K] -> [Mo, Ko, Mi, Ki]. | ||
//! 3) Depending on the value of params_->grid_swizzle_factor, if the TV has | ||
//! both M and N dimensions, we perform a 2D swizzle of the outer dimensions | ||
//! Mo and No. | ||
//! 4) Finally, we do a split-K split if the splitk_factor is not 1 | ||
std::vector<std::vector<MatmulDimRole>> blockTileTensors( | ||
const std::vector<TensorView*>& tvs); | ||
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//! Schedule the loads of all operands from global memory to shared memory. | ||
//! Starting from the basic tiled schedule, we swizzle the operand memory. | ||
//! Note that the cache op and LoadStoreOpType are already set during | ||
//! defineOperandCaches(). | ||
void scheduleOperandSmemStores(); | ||
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void scheduleMmaOperands( | ||
std::vector<TensorView*>& tvs, | ||
const std::optional<MmaOperand> operand_type); | ||
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// MmaOperand contains only A and B. If tvs are outputs (i.e. not operands), | ||
// then operand_type should be std::nullopt. | ||
void scheduleMmaResults(); | ||
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void schedulePrologues(); | ||
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void scheduleOutputTensor(TensorView* c); | ||
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void scheduleEpilogue(); | ||
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//! Propagates transformations from fusion output to fusion tv inputs that are | ||
//! producers in the epilogue. Transformations' propagation aims at input tvs | ||
//! which are not assigned to core roles, that is, are not MMA inputs. | ||
void scheduleFusionInputsForEpilogue(); | ||
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void scheduleSplitKSum(); | ||
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void setUpInlining(); | ||
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// NOTE: this should be called after acw_smem, acr, ..., ab, and mma_result | ||
// transforms have been applied and inlining | ||
void setUpCircularBuffering(); | ||
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private: | ||
Fusion* fusion_; | ||
const MatmulParams* params_; | ||
IdModel id_model_; | ||
// Permissive graph of id_model_, which we modify at times using e.g. | ||
// AbstractTensor.split or by mapping vals in cacheAfter and rFactor | ||
ValGraph* graph_ = nullptr; | ||
std::vector<mma_utils::MatmulPattern> patterns_; | ||
mma_utils::DimRolesMap id_roles_; | ||
mma_utils::TensorRolesMap tensor_roles_; | ||
mma_utils::MatmulOperandInnerDims inner_dims_; | ||
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int64_t num_splitk_dims_ = 0, num_device_dims_ = 0, num_local_batch_dims_ = 0, | ||
num_device_and_batch_dims_ = 0; | ||
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std::vector<std::pair<TensorView*, TensorView*>> cached_outputs_; | ||
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std::vector<ValGroup> canonical_dim_ordering_; | ||
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std::vector<TensorView*> as_, bs_, acw_smems_, bcw_smems_, acrs_, bcrs_, abs_, | ||
bbs_, mma_results_, splitk_sums_, smem_epilogues_; | ||
}; | ||
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} // namespace nvfuser |
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