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[relay][refactor] Cache Op::Get in passes to reduce lookup overhead #4594
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lgtm. Could you add a unit test to make sure IsOp
returns false for non op node?
@wweic Yeah, I am aware of this. There are actually many cases already, like the ones in src/relay/pass/partial_eval.cc are not necessarily ops. |
Note, if we are concerned about efficiency, I still think we should separate Op::Get from checking. Note that we can always cache an op by storing it in a static var, or a class once and use that op to do equivalence checking. Perhaps we should document this pattern and move away from getting op everytime |
@tqchen ops are already cached in registry, right? Op::Get asserts its existence and retrieves it from the cached entries. |
But that requires a hashtable lookup of string, while if you cache it locally in a pass, it is just a memory load |
Just carious. How large is the overhead of looking up the hashtable in this case compared to memory loading? |
Loading the op is just one instruction(think of generic llvm instr), while in the case of hashtable, we need first to create the string, hash it(O(len(str)), then lookup. While in terms of time complexity it is going to be the same if string's length is small, but it would mean quite a lot more instructions compared to he load. if the function is in the innermost loop, then we could benefit from pre-cache the op(note that we can do that in Pass construction time). |
Okay. Thanks for discussion. I think we can just create some static vars in the passes that need specific Op::Get("xx") for equivalence checking. |
If the code is in a class, perhaps initializing these ops at the class construction(instead of static var) would be a better solution. This way we reduce the amount of static vars. @zhiics perhaps we could update the PR to document these recommendations? |
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@tqchen Updated the PR. It looks the CI is down. |
@tqchen do you want to take a final look? |
@zhiics can you update the PR title ? I dont see any IsOp related change. |
@masahi Good point. Done. Thanks. |
…pache#4594) * Refactor to use IsOp utility * retrigger CI
* Change upstream url * Fix bias_add gradient (apache#4516) * Fix bias_add gradient A change caused collapse_sum_like to reject implicit dimension broadcasting for bias_add gradient, so switch to explicit sum reduction on the non-bias axis dimensions. * Lint fix * [Bugfix][Frontend][TFlite] Fix wrong function call in TANH tests (apache#4517) * Replace sigmoid() with tanh() in tests for TANH * Fixed extra reshape parameter bug. (apache#4524) * Use the best tuner possible (apache#4397) * Use the best tuner possible * Add comment denoting availability of better tuners * Fix typos and wording * [ir] use DataType instead of Type for readability because Type has been deprecated (apache#4513) * add bfloat16 typeflag support (apache#4525) * fix empty config caused KeyError (apache#4520) * fix onnx shape dtype (apache#4528) * fix crash issue in tsim backend (apache#4527) * PIL is depreciated and should be replaced with pillow (a fork of PIL) (apache#4533) Change-Id: If2075df5475505f2da87dae7145af5a7ab83d8a4 * [Relay] External codegen (apache#4482) * Update legacy places from nnvm to relay. (apache#4535) * Update legacy places from nnvm to relay. This PR prepares the current mainline to remove nnvm compiler dep. * remove legacy stage * Implement 1d deconvolution (apache#4476) * [relay][op] add expand op (from ONNX) to relay frontend (apache#4483) * Add Expand to onnx.py * add test function for expand * Fix a onnx frontend test * Add tests for the value itself instead of shape only on test_expand * Cleaned up some unnecessary modifications. * [TOPI] Allow batch matmul to be fused into injective ops (apache#4537) * [TOPI] Fixed nms max_output_size loop (apache#4541) One of the loops in hybrid_nms used for performing the max_output_size reordering was incorrectly designated as parallel resulting in incorrect behaviour. This patch changes that loop to a serial loop. Change-Id: I97184f5887f5f028d8ab339fa2808eb7630a4017 * [DOCS] Mention Ninja build system in install/from_source.rst (apache#4554) * [DOCS] Mention Ninja build system in install/from_source.rst * Address comments * [PYTHON][FFI] Cythonize NDArray.copyto (apache#4549) * [PYTHON][FFI] Cythonize NDArray.copyto * Cythonize the shape property * vm external codegen (apache#4544) * [COMMUNITY] @cchung100m -> reviewer (apache#4557) * [VTA] improved virtual memory mapping (apache#4545) * [VTA] improved virtual memory mapping * Update virtual_memory.cc * [IR] fix style in ir_mutator and ir_visitor (apache#4561) * [RUNTIME][VULKAN] Fix compiler warning (apache#4559) * [REFACTOR][DTYPE] Isolate dtype to runtime (apache#4560) dtype.h -> runtime/data_type.h Changes: - Rename all old reference of tvm::Type to DataType - ExprNode.type -> ExprNode.dtype - Expr.type() -> Expr.dtype() - Change Expr related functions to expr_operator. - DataType::min() -> min_value(DataType) - DataType::max() -> max_value(DataType) - Move type constructor Int, UInt, Float, Handle, Bool into DataType. - Int(bits) -> DataType::Int(bits) - UInt(bits) -> DataType::UInt(bits) * Support standardize runtime module (apache#4532) * [Relay][Frontend][ONNX] Support auto_pad in Conv and ConvTranspose (apache#4563) * [TEST] Remove nnvm related code in topi and test script (apache#4562) * [TEST] Remove nnvm related code in topi and test script * Remove docs dep * [Relay] add max_pool3d in relay and TF converter (apache#4551) * [Relay] add max_pool3d in relay and TF converter * fix comments * Remove nnvm (apache#4565) * [VTA][Chisel] End-to-end Inference with Chisel VTA (apache#4574) * [VTA][Chisel] End-to-end Inference with Chisel VTA * Update TensorAlu.scala * remove unnecessary cast to int32 (apache#4573) * Fix llvm-enabled build by adding missing intrinsics headers (apache#4575) * [DEPRECATION] Remove NNVM compiler (apache#4571) * Remove NNVM compiler * [Relay/Topi][Op] Added native DepthToSpace and SpaceToDepth Operators (apache#4566) * Added tvm function stencil for subpixel operations to topi. * Topi subpixel operators added and tested. * Added subpixel attrs. * Added depth_to_space relay attributes. * depth_to_space fully working. * Fixed NHWC shape bug. * SpaceToDepth in and all tests passing. * lint fixes. * Added string include * Fixed topi formatting. * Added DCR/CDR mode to depthtospace operator. * [DOC] fix doc in api.py (apache#4580) * [DEPRECATION] Cleanup legacy verilog support (apache#4576) This PR cleans up the left over code for legacy verilog support which was experimental. The new hardware backend path is now support by VTA via TSIM. * [RUNTIME] Remove Extension VTable in favor of Unified Object system. (apache#4578) Before the unified object protocol, we support pass additional extension objects around by declaring a type as an extension type. The old extension mechanism requires the types to register their constructor and deleter to a VTable and does not enjoy the benefit of the self-contained deletion property of the new Object system. This PR upgrades the extension example to make use of the new object system and removed the old Extension VTable. Note that the register_extension funtion in the python side continues to work when the passed argument does not require explicit container copy/deletion, which covers the current usecases of the extension mechanism. * Some Windows and MSVC fixes (apache#4569) * fix python exception creation in Windows * better string conversion for msvc * fix cpp style issue * [NEWS] add v0.6 release (apache#4558) * [NEWS] add v0.6 release * remove link prefix * fix issue number * [DOCS]fix typos in autotvm tutorial (apache#4585) * [Quantization, Calibrate] Fix context creation when current_target is explicity set (apache#4582) * [Container] Fix NDArray SaveDLTensor declaration and implementation signature different (apache#4586) * [TOPI][AutoTVM] NHWC conv2d templates for ARM (apache#3859) * [AutoTVM][TOPI] NHWC conv2d templates (spatial pack) for ARM As some frontends (tflite for example) are using NHWC as the default layout, we are enabling NHWC schedule templates in TOPI and AutoTVM. * some comments fix * [FIX][TOPI][X86] schedule dense pack (apache#4539) * [Relay] Convert Layout Pass. (apache#4335) * [Relay][AlterLayout] Broadcast with scalar shape (apache#4577) * [TOPI] add 3D upsampling Op. (apache#4584) * [TOPI] add 3D upsampling Op. * fix lint issues * change align_corners to coordinate_transformation_mode * fix resize3d half_pixel * make a simple function and clean up trilinear_resize3d_python * fix doc * [Runtime] add necessary const qualifier for NDArray container of parameters (apache#4590) * [autotvm] fix typos in comment (apache#4591) * fix tf.compat.v1 issue for tf verison <=1.12 (apache#4593) * [FRONTEND][TF] conv2d_transpose 'SAME' support kernel more than 1x1 (apache#4484) * [FRONTEND][TF] conv3d_transpose 'SAME' support kernel more than 1x1 * revised per as review comments * add more fallback wolkaround to make all tests pass * [GraphRuntime] Support parameter out in the graph runtime debug (apache#4598) * [GraphRuntime] Support parameter out in the graph runtime debug * Dummy commit to trigger build * [Perf] Add CublasLt extern support for better Igemm performance (apache#4550) * cublaslt added * fix lint * address comments * address more comments * Trigger CI * Trigger CI * fix codegenc (apache#4597) * [REFACTOR][RUNTIME] Update NDArray use the Unified Object System (apache#4581) * [REFACTOR][RUNTIME] Move NDArray to Object System. Previously NDArray has its own object reference counting mechanism. This PR migrates NDArray to the unified object protocol. The calling convention of NDArray remained intact. That means NDArray still has its own type_code and its handle is still DLTensor compatible. In order to do so, this PR added a few minimum runtime type detection in TVMArgValue and RetValue only when the corresponding type is a base type(ObjectRef) that could also refer to NDArray. This means that even if we return a base reference object ObjectRef which refers to the NDArray. The type_code will still be translated correctly as kNDArrayContainer. If we assign a non-base type(say Expr) that we know is not compatible with NDArray during compile time, no runtime type detection will be performed. This PR also adopts the object protocol for NDArray sub-classing and removed the legacy NDArray subclass protocol. Examples in apps/extension are now updated to reflect that. Making NDArray as an Object brings all the benefits of the object system. For example, we can now use the Array container to store NDArrays. * Address review comments * [Relay][Convert Layout] Handling batch norm layout change. (apache#4600) * [relay][refactor] Cache Op::Get in passes to reduce lookup overhead (apache#4594) * Refactor to use IsOp utility * retrigger CI * Update dmlc_tvm_commit_id.txt * disable one test_batch_norm unit test for now to check CI * enable test_batch_norm Co-authored-by: SWu <SWu@users.noreply.github.com> Co-authored-by: Ina Dobreva <55383260+inadob@users.noreply.github.com> Co-authored-by: Josh Fromm <jwfromm@uw.edu> Co-authored-by: miheer vaidya <v.miheer@gmail.com> Co-authored-by: Liang ZOU <liang.d.zou@gmail.com> Co-authored-by: YixinBao <yixin.bao@intel.com> Co-authored-by: Cody Yu <comaniac0422@gmail.com> Co-authored-by: masahi <masahi129@gmail.com> Co-authored-by: Liangfu Chen <liangfu.chen@icloud.com> Co-authored-by: lhutton1 <35535092+lhutton1@users.noreply.github.com> Co-authored-by: Tianqi Chen <tqchen@users.noreply.github.com> Co-authored-by: Alex Gladkov <gladkov_alex@yahoo.com> Co-authored-by: Takato Yamada <tkclimb0911@gmail.com> Co-authored-by: Haichen Shen <shenhaichen@gmail.com> Co-authored-by: mbarrett97 <55580676+mbarrett97@users.noreply.github.com> Co-authored-by: Hideto Ueno <uenoku.tokotoko@gmail.com> Co-authored-by: Siyuan Feng <Hzfengsy@sjtu.edu.cn> Co-authored-by: Zhao Wu <wuzhaozju@gmail.com> Co-authored-by: Neo Chien <cchung100m@cs.ccu.edu.tw> Co-authored-by: Yong Wu <55wuyong@163.com> Co-authored-by: Dmitri Makarov <dmakarov@users.noreply.github.com> Co-authored-by: Bohan Hou <32121147+spectrometerHBH@users.noreply.github.com> Co-authored-by: kice <wslikerqs@gmail.com> Co-authored-by: Yizhi Liu <liuyizhi@apache.org> Co-authored-by: Wang Yucheng <wyc91543@163.com> Co-authored-by: 王振华(Zhenhua WANG) <i@jackwish.net> Co-authored-by: deepIgnorance <zhengsizemax@outlook.com> Co-authored-by: Animesh Jain <anijain@umich.edu> Co-authored-by: optima2005 <56945758+optima2005@users.noreply.github.com> Co-authored-by: zhuochen <zhuochen@outlook.com> Co-authored-by: Leyuan Wang <laurawly@gmail.com>
…pache#4594) * Refactor to use IsOp utility * retrigger CI
As @masahi mentioned a couple of times that it's necessary to introduce the "IsOp" helper instead of calling Op::Get everywhere, this PR refactors many places in the code to call this helper.
@masahi @icemelon9 @jroesch @tqchen @wweic @comaniac