raver119 53ca9a76e8
[WIP] multi-device support (#80)
* fix pad javadoc and @see links. (#72)

Signed-off-by: Robert Altena <Rob@Ra-ai.com>

* [WIP] More fixes (#73)

* special tests for ConstantTadHelper/ConstantShapeHelper

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* release methods for data buffers

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* delete temporary buffer Java side

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* delete temporary buffer Java side

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* delete temporary TadPack C++/Java side (#74)

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* Zoo model TF import test updates (#75)

* argLine fix, update compression_gru comment

* updated comment for xception

* undid but commented argLine change

* updated xlnet comment

* copyright headers

* - new NDArray methods like()/ulike() (#77)

- fix for depthwise_conv2d_bp + special test

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* upsampling2d fix CUDA

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* DL4J trace logging (#79)

* MLN/CG trace logging for debugging

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* Tiny tweak

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* strided_slice_bp shape fn leak fix

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* SameDiff fixes and naming (#78)

* remove SDVariable inplace methods

* import methods

* npe fix in OpVal

* removed SameDiff inplace ops from tests

* Naming updates, moved to centralized methods in SameDiff, should use op_#:# for everything

* quick fixes

* javadoc

* SDVariable eval with placeholders

* use regex match

* better matching

* initial commit

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* initial commit

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* fix javadoc. (#76)

* fix javadoc.

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* replace most @see with @link s.

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* 4 additional tests

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* launch context reorganization

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* LaunchContext reorganization

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* per-device LaunchContext

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* Various DL4J/ND4J fixes (#81)

* #7954 Force refresh of UI when switching tabs on overview page

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* #8017 Concurrent modification exception (synchronize) fix

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* #8033 Don't initialize updater in middle of writing memory crash dump

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* #8208 Fix shape checks for ND4J int[] creator methods

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* #6385 #7992 Keras import naming fixes + cleanup

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* #8016 Upsampling3D - add NDHWC format support

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* ContextBuffers as separate entity

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* Refactor NativeOps.h to export C functions

* Actually export functions from NativeOps.h

* Adapt the Java wrappers in ND4J generated with JavaCPP

* Create C wrappers for some of the C++ classes currently used by ND4J

* ContextBuffers as separate entity

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* remove duplicate code in createBufferDetached. (#83)

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* Keras model import - updater lr fix (#84)

* Keras model import - updater lr fix

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* Keras model import - updater lr fix, cleanup

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* ContextBuffers as separate entity

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* ContextBuffers as separate entity

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* Fix functions of OpaqueVariablesSet

* thread-local buffers/affinity

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* thread safety for LaunchContext

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* more of thread safety

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* one more multi threaded test

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* SameDiff Convolution Config validation, better output methods (#82)

* Conv Config validation & tests

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* stackOutputs utility method

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* use constructor for validation, support negative kernel sizes (infered from weights)

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* better output methods

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* move output to be with fit and evaluate

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* fixes

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* more fixes

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* refactor duplicate code from pad methods. (#86)

* refactor duplicate code from pad methods.

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* replace switch with if.

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* Various ND4J/DL4J fixes and improvements (#87)

* Reshape and reallocate - small fixes

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* Reshape and reallocate - small fixes

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* #6488 ElementWiseVertex broadcast support

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* Constructors and broadcast supported it Transforms.max/min

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* #8054 ElementWiseVertex now supports broadcast inputs

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* #8057 Nd4j.create overload dtype fix

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* #7551 ND4J Shape validation fix

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* [WIP] Numpy boolean import (#91)

* numpy bool type

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* numpy bool java side

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* remove create method with unused parameter. (#89)

* remove create method with unused parameter.

* removed more unused methods.

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* removing more unused code.

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* last removal of unused code.

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* remove createSparse methods. (#92)

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* Various ND4J/DL4J fixes (#90)

* Deprecate Old*Op instances

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* #8063 #8054 Broadcast exceptions + cleanup inplace ops

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* Small fix

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* Remove bad test condition

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* #7993 Fix shape function issue in crop_and_resize op

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* DL4J SameDiff lambda layer fix

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* #8029 Fix for pnorm backprop math

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* #8038 Fix Op profiler NaN/Inf triggering + add tests (#93)

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* createUninitializedDetached refactoring. (#94)

* wip

* update interface, add null implementations.

* Breaking one test in a weird way.

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* createUninitializedDetached refactored.

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* cuda build fix for issues introduced by recent refactoring

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* [WIP] More of CUDA (#95)

* initial commit

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* Implementation of hashcode cuda helper. Working edition.

* Fixed parallel test input arangements.

* Fixed tests for hashcode op.

* Fixed shape calculation for image:crop_and_resize op and test.

* NativeOps tests. Initial test suite.

* Added tests for indexReduce methods.

* Added test on execBroadcast with NDArray as dimensions.

* Added test on execBroadcastBool with NDArray as dimensions.

* Added tests on execPairwiseTransform and execPairwiseTransofrmBool.

* Added tests for execReduce with scalar results.

* Added reduce tests for non-empty dims array.

* Added tests for reduce3.

* Added tests for execScalar.

* Added tests for execSummaryStats.

* - provide cpu/cuda code for batch_to_space
- testing it

Signed-off-by: Yurii <yurii@skymind.io>

* - remove old test for batch_to_space (had wrong format and numbers were not checked)

Signed-off-by: Yurii <yurii@skymind.io>

* Fixed complilation errors with test.

* Added test for execTransformFloat.

* Added test for execTransformSame.

* Added test for execTransformBool.

* Added test for execTransformStrict.

* Added tests for execScalar/execScalarBool with TADs.

* Added test for flatten.

* - provide cpu/cuda code for space_to_Batch operaion

Signed-off-by: Yurii <yurii@skymind.io>

* Added test for concat.

* comment unnecessary stuff in s_t_b

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* Added test for specialConcat.

* Added tests for memcpy/set routines.

* Fixed pullRow cuda test.

* Added pullRow test.

* Added average test.

* - correct typo in NDArray::applyPairwiseTransform(nd4j::pairwise::BoolOps op...)

Signed-off-by: Yurii <yurii@skymind.io>

* - debugging and fixing cuda tests in JavaInteropTests file

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* - correct some tests

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* Added test for shuffle.

* Fixed ops declarations.

* Restored omp and added shuffle test.

* Added convertTypes test.

* Added tests for execRandom. Eliminated usage of RandomBuffer with NativeOps.

* Added sort tests.

* Added tests for execCustomOp.

* - further debuging and fixing tests terminated with crash

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* Added tests for calculateOutputShapes.

* Addded Benchmarks test.

* Commented benchmark tests.

* change assertion

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* Added tests for apply_sgd op. Added cpu helper for that op.

* Implement cuda helper for aplly_sgd op. Fixed tests for NativeOps.

* Added test for assign broadcastable.

* Added tests for assign_bp op.

* Added tests for axpy op.

* - assign/execScalar/execTransformAny signature change
- minor test fix

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* Fixed axpy op.

* meh

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* - fix tests for nativeOps::concat

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* sequential transform/scalar

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* allow nested parallelism

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* assign_bp leak fix

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* block setRNG fix

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* enable parallelism by default

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* enable nested parallelism by default

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* Added cuda implementation for row_count helper.

* Added implementation for tnse gains op helper.

* - take into account possible situations when input arrays are empty in reduce_ cuda stuff

Signed-off-by: Yurii <yurii@skymind.io>

* Implemented tsne/edge_forces op cuda-based helper. Parallelized cpu-based helper for edge_forces.

* Added kernel for tsne/symmetrized op heleper.

* Implementation of tsne/symmetrized op cuda helper. Working edition.

* Eliminated waste printfs.

* Added test for broadcastgradientargs op.

* host-only fallback for empty reduce float

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* - some tests fixes

Signed-off-by: Yurii <yurii@skymind.io>

* - correct the rest of reduce_ stuff

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* - further correction of reduce_ stuff

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* Added test for Cbow op. Also added cuda implementation for cbow helpers.

* - improve code of stack operation for scalar case

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* - provide cuda kernel for gatherND operation

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* Implementation of cbow helpers with cuda kernels.

* minor tests tweaks

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* minor tests tweaks

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* - further correction of cuda stuff

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* Implementatation of cbow op helper with cuda kernels. Working edition.

* Skip random testing for cudablas case.

* lstmBlockCell context fix

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* Added tests for ELU and ELU_BP ops.

* Added tests for eq_scalar, gt_scalar, gte_scalar and lte_scalar ops.

* Added tests for neq_scalar.

* Added test for noop.

* - further work on clipbynorm_bp

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* - get rid of concat op call, use instead direct concat helper call

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* lstmBlockCell context fix

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* Added tests for lrelu and lrelu_bp.

* Added tests for selu and selu_bp.

* Fixed lrelu derivative helpers.

* - some corrections in lstm

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* operator * result shape fix

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* - correct typo in lstmCell

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* few tests fixed

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* CUDA inverse broadcast bool fix

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* disable MMAP test for CUDA

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* BooleanOp syncToDevice

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* meh

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* additional data types for im2col/col2im

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* Added test for firas_sparse op.

* one more RandomBuffer test excluded

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* Added tests for flatten op.

* Added test for Floor op.

* bunch of tests fixed

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* mmulDot tests fixed

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* more tests fixed

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* Implemented floordiv_bp op and tests.

* Fixed scalar case with cuda implementation for bds.

* - work on cuda kernel for clip_by_norm backprop op is completed

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* Eliminate cbow crach.

* more tests fixed

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* more tests fixed

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* Eliminated abortion with batched nlp test.

* more tests fixed

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* Fixed shared flag initializing.

* disabled bunch of cpu workspaces tests

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* scalar operators fix: missing registerSpecialUse call

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* Fixed logdet for cuda and tests.

* - correct clipBynorm_bp

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* Fixed crop_and_resize shape datatype.

* - correct some mmul tests

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* build fix

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* exclude two methods for JNI

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* exclude two methods for JNI

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* exclude two methods for JNI (#97)

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* temporary stack fix

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* round robin affinity test

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* get rid of legacy CudaContext methods

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* get rid of legacy ContextPool classes/methods

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* one legacy test removed

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* few more fields rearranged

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* OpaqueLaunchContext

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* OpaqueLaunchContext++

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* more of OpaqueLaunchContext methods

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* LaunchContext -> CudaContext

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* AffinityManger changes

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* AffinityManger changes

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* cusolver handles

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* typo

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* cusolver method

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* cusolver handle propagated

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* blas/solver handles

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* one more test

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* legacy concat implementations replaced with new CustomOp

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* one more test

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* concat now uses way more blocks

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* print

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* no more triple template mmul

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* bunch of kernels have dtypes reconsidered

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* bunch of kernels have dtypes reconsidered

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* bitonic sort reorganized

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* bunch of cpu stuff removed from cuda scope

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* bunch of cpu stuff removed from cuda scope

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* type conversions moved to generic impl

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* cpu data types pass

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* non_max_suppression

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* sortByValue fix

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* ignore all mixed datatype tests for mmul

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* special handling of OpProfiler exceptions

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* - one failing concat test in cpp
- Nd4j.tile now uses op internally

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* get back dtype exception for legacy arrays deserialization

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2019-08-14 16:52:34 +03:00

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/*******************************************************************************
* Copyright (c) 2015-2018 Skymind, Inc.
*
* This program and the accompanying materials are made available under the
* terms of the Apache License, Version 2.0 which is available at
* https://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.
*
* SPDX-License-Identifier: Apache-2.0
******************************************************************************/
//
// @author raver119@gmail.com
//
#include <ops/declarable/helpers/dynamic.h>
#include <helpers/PointersManager.h>
#include <helpers/ConstantTadHelper.h>
namespace nd4j {
namespace ops {
namespace helpers {
template <typename X, typename Y>
static _CUDA_G void dynamicPartitionScalarKernel(void *vx, Nd4jLong *xShapeInfo, void *vi, Nd4jLong *iShapeInfo, void **vz, Nd4jLong **zShapeInfos, const Nd4jLong numOutputs) {
auto x = reinterpret_cast<X*>(vx);
auto i = reinterpret_cast<Y*>(vi);
auto xLength = shape::length(xShapeInfo);
auto iLength = shape::length(iShapeInfo);
extern __shared__ char shmem[];
__shared__ Y *rawIndices;
__shared__ Y *trueIndices;
if (threadIdx.x == 0) {
rawIndices = reinterpret_cast<Y*>(shmem);
trueIndices = rawIndices + blockDim.x;
}
__syncthreads();
for (Nd4jLong o = blockIdx.x; o < numOutputs; o += gridDim.x) {
auto z = reinterpret_cast<X*>(vz[o]);
auto zShapeInfo = zShapeInfos[o];
auto zLength = shape::length(zShapeInfo);
// iLimit should be
auto iLimit = iLength <= blockIdx.x ? blockIdx.x : (iLength + (blockIdx.x - (iLength % blockIdx.x)));
int cnt = 0;
for (Nd4jLong e = threadIdx.x; e < iLimit; e += blockDim.x) {
// load set of indices into shared memory
if (e < iLength)
rawIndices[threadIdx.x] = i[shape::getIndexOffset(e, iShapeInfo, iLength)];
__syncthreads();
// now we need to find out where our actual updates will be mapped
// TODO: this can be improved obviously, by using prefix-sum like approach
if (threadIdx.x == 0) {
for (int f = 0; f < blockDim.x; f++) {
if (rawIndices[f] == static_cast<Y>(o))
trueIndices[f] = cnt++;
else
trueIndices[f] = -1;
}
}
__syncthreads();
// doing actual update
if (e < iLength)
if (trueIndices[threadIdx.x] >= 0)
z[trueIndices[threadIdx.x]] = x[shape::getIndexOffset(e, xShapeInfo, xLength)];
__syncthreads();
}
}
}
template <typename X, typename Y>
static _CUDA_G void dynamicPartitionTadKernel(void *vx, Nd4jLong *xTadShapeInfo, Nd4jLong *xTadOffsets, Nd4jLong xLength, void *vindices, Nd4jLong *iShapeInfo, Nd4jLong iLength, void **vz, Nd4jLong **zTadShapeInfos, Nd4jLong **zTadOffsets, Nd4jLong numOutputs) {
auto x = reinterpret_cast<X*>(vx);
auto indices = reinterpret_cast<Y*>(vindices);
for (int i = blockIdx.x; i < numOutputs; i += gridDim.x) {
auto z = reinterpret_cast<X*>(vz[i]);
int outCnt = 0;
for (Nd4jLong e = 0; e < iLength; e++) {
if (indices[shape::getIndexOffset(e, iShapeInfo, iLength)] == i) {
auto dx = x + xTadOffsets[e];
auto dz = z + zTadOffsets[i][outCnt++];
for (int f = threadIdx.x; f < xLength; f += blockDim.x) {
dz[shape::getIndexOffset(f, zTadShapeInfos[i], xLength)] = dx[shape::getIndexOffset(f, xTadShapeInfo, xLength)];
}
}
}
}
}
template <typename X, typename Y>
static void _dynamicPartitionFunctor(nd4j::LaunchContext * context, NDArray const* input, NDArray const* indices, std::vector<NDArray*>& outputList) {
std::vector<std::pair<NDArray *, int>> outputs(outputList.size());
int sourceDimsLen = input->rankOf() - indices->rankOf();
unsigned int outSize = outputList.size();
PointersManager pm(context, "dynamicPartition");
if (sourceDimsLen) {
std::vector<int> sourceDims(sourceDimsLen);
for (int i = sourceDimsLen; i > 0; i--)
sourceDims[sourceDimsLen - i] = input->rankOf() - i;
auto packX = ConstantTadHelper::getInstance()->tadForDimensions(input->getShapeInfo(), sourceDims);
std::vector<void *> outBuffers(outSize);
std::vector<Nd4jLong *> tadShapes(outSize);
std::vector<Nd4jLong *> tadOffsets(outSize);
std::vector<Nd4jLong> numTads(outSize);
for (unsigned int i = 0; i < outSize; i++) {
outputs[i].first = outputList[i];
std::vector<int> outDims(outputs[i].first->rankOf() - 1);
int r = outputs[i].first->rankOf();
for (int k = 1; k < r; k++)
outDims[k - 1] = k;
auto packZ = ConstantTadHelper::getInstance()->tadForDimensions(outputList.at(i)->getShapeInfo(), outDims);
outBuffers[i] = outputList.at(i)->getSpecialBuffer();
tadShapes[i] = packZ.platformShapeInfo();
tadOffsets[i] = packZ.platformOffsets();
}
auto dOutBuffers = reinterpret_cast<void **>(pm.replicatePointer(outBuffers.data(), outBuffers.size() * sizeof(void *)));
auto dOutTadShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(tadShapes.data(), tadShapes.size() * sizeof(Nd4jLong *)));
auto dOutTadOffsets = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(tadOffsets.data(), tadOffsets.size() * sizeof(Nd4jLong *)));
dynamicPartitionTadKernel<X,Y><<<256, 512, 1024, *context->getCudaStream()>>>(input->getSpecialBuffer(), packX.platformShapeInfo(), packX.platformOffsets(), shape::length(packX.primaryShapeInfo()), indices->getSpecialBuffer(), indices->getSpecialShapeInfo(), indices->lengthOf(), dOutBuffers, dOutTadShapes, dOutTadOffsets, outSize);
} else {
auto numThreads = 256;
auto shmemSize = numThreads * sizeof(Y) * 2 + 1024;
std::vector<void *> outBuffers;
std::vector<Nd4jLong *> outShapes;
for (auto v:outputList) {
outBuffers.emplace_back(v->getSpecialBuffer());
outShapes.emplace_back(v->getSpecialShapeInfo());
}
auto dOutBuffers = reinterpret_cast<void **>(pm.replicatePointer(outBuffers.data(), outBuffers.size() * sizeof(void *)));
auto dOutShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(outShapes.data(), outShapes.size() * sizeof(Nd4jLong *)));
dynamicPartitionScalarKernel<X,Y><<<256, numThreads, shmemSize, *context->getCudaStream()>>>(input->getSpecialBuffer(), input->getSpecialShapeInfo(), indices->getSpecialBuffer(), indices-> getSpecialShapeInfo(), dOutBuffers, dOutShapes, outSize);
}
pm.synchronize();
}
template <typename X, typename Y>
static _CUDA_G void dynamicStitchScalarKernel(void **vx, Nd4jLong **xShapeInfos, void **vindices, Nd4jLong **iShapeInfos, int inputSize, void *vz, Nd4jLong *zShapeInfo, Nd4jLong zLength) {
auto z = reinterpret_cast<X*>(vz);
for (int e = blockIdx.x; e < inputSize; e += gridDim.x) {
auto x = reinterpret_cast<X*>(vx[e]);
auto indices = reinterpret_cast<Y*>(vindices[e]);
auto xShapeInfo = xShapeInfos[e];
auto iShapeInfo = iShapeInfos[e];
auto iLength = shape::length(iShapeInfo);
for (int i = threadIdx.x; i < iLength; i += blockDim.x) {
auto idx = indices[shape::getIndexOffset(i, iShapeInfo, iLength)];
if (idx >= 0 && idx < zLength)
z[shape::getIndexOffset(idx, zShapeInfo, zLength)] = x[shape::getIndexOffset(i, xShapeInfo, iLength)];
}
}
}
template <typename X, typename Y>
static _CUDA_G void dynamicStitchTadKernel(void **vx, Nd4jLong **xTadShapeInfos, Nd4jLong **xTadOffsets, void **vindices, Nd4jLong **iShapeInfos, int inputSize, void *vz, Nd4jLong *zTadShapeInfo, Nd4jLong *zTadOffsets) {
auto bz = reinterpret_cast<X*>(vz);
for (int e = blockIdx.x; e < inputSize; e += gridDim.x) {
auto indices = reinterpret_cast<Y*>(vindices[e]);
auto iShapeInfo = iShapeInfos[e];
auto iLength = shape::length(iShapeInfo);
auto zLength = shape::length(zTadShapeInfo);
auto xShapeInfo = xTadShapeInfos[e];
auto xLength = shape::length(xShapeInfo);
for (int i = 0; i < iLength; i++) {
auto idx = indices[shape::getIndexOffset(i, iShapeInfo, iLength)];
auto z = bz + zTadOffsets[idx];
auto x = reinterpret_cast<X*>(vx[e]) + xTadOffsets[e][i];
for (int f = threadIdx.x; f < zLength; f += blockDim.x) {
z[shape::getIndexOffset(f, zTadShapeInfo, zLength)] = x[shape::getIndexOffset(f, xShapeInfo, xLength)];
}
__syncthreads();
}
}
}
template <typename X, typename Y>
static int _dynamicStitchFunctor(nd4j::LaunchContext * context, std::vector<NDArray*> const& inputs, std::vector<NDArray*> const& indices, NDArray* output){
int inputSize = inputs.size();
PointersManager pm(context, "dynamicStitch");
if (output->isVector()) {
std::vector<void *> inputBuffers(inputSize);
std::vector<Nd4jLong *> inputShapes(inputSize);
std::vector<void *> indicesBuffers(inputSize);
std::vector<Nd4jLong *> indicesShapes(inputSize);
for (int e = 0; e < inputSize; e++) {
inputBuffers[e] = inputs.at(e)->getSpecialBuffer();
indicesBuffers[e] = indices.at(e)->getSpecialBuffer();
inputShapes[e] = inputs.at(e)->getSpecialShapeInfo();
indicesShapes[e] = indices.at(e)->getSpecialShapeInfo();
}
auto dInputBuffers = reinterpret_cast<void **>(pm.replicatePointer(inputBuffers.data(), inputSize * sizeof(void *)));
auto dIndicesBuffers = reinterpret_cast<void **>(pm.replicatePointer(indicesBuffers.data(), inputSize * sizeof(void *)));
auto dInputShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(inputShapes.data(), inputSize * sizeof(Nd4jLong *)));
auto dIndicesShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(indicesShapes.data(), inputSize * sizeof(Nd4jLong *)));
dynamicStitchScalarKernel<X,Y><<<256, 256, 1024, *context->getCudaStream()>>>(dInputBuffers, dInputShapes, dIndicesBuffers, dIndicesShapes, inputSize, output->specialBuffer(), output->specialShapeInfo(), output->lengthOf());
} else {
std::vector<int> restDims(output->rankOf() - 1);
for (int i = restDims.size(); i > 0; i--)
restDims[restDims.size() - i] = output->rankOf() - i;
auto packZ = ConstantTadHelper::getInstance()->tadForDimensions(output->getShapeInfo(), restDims);
std::vector<void *> inputBuffers(inputSize);
std::vector<Nd4jLong *> inputTadShapes(inputSize);
std::vector<Nd4jLong *> inputTadOffsets(inputSize);
std::vector<void *> indicesBuffers(inputSize);
std::vector<Nd4jLong *> indicesShapes(inputSize);
for (int e = 0; e < inputSize; e++) {
std::vector<int> sourceDims(inputs[e]->rankOf() - indices[e]->rankOf());
for (int i = sourceDims.size(); i > 0; i--)
sourceDims[sourceDims.size() - i] = inputs[e]->rankOf() - i;
auto packX = ConstantTadHelper::getInstance()->tadForDimensions(inputs[e]->getShapeInfo(), sourceDims);
indicesBuffers[e] = indices[e]->getSpecialBuffer();
indicesShapes[e] = indices[e]->getSpecialShapeInfo();
inputBuffers[e] = inputs[e]->getSpecialBuffer();
inputTadShapes[e] = packX.platformShapeInfo();
inputTadOffsets[e] = packX.platformOffsets();
}
auto dInputBuffers = reinterpret_cast<void **>(pm.replicatePointer(inputBuffers.data(), inputSize * sizeof(void *)));
auto dInputTadShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(inputTadShapes.data(), inputSize * sizeof(Nd4jLong *)));
auto dInputTadOffsets = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(inputTadOffsets.data(), inputSize * sizeof(Nd4jLong *)));
auto dIndicesBuffers = reinterpret_cast<void **>(pm.replicatePointer(indicesBuffers.data(), inputSize * sizeof(void *)));
auto dIndicesShapes = reinterpret_cast<Nd4jLong **>(pm.replicatePointer(indicesShapes.data(), inputSize * sizeof(Nd4jLong *)));
dynamicStitchTadKernel<X,Y><<<256, 256, 1024, *context->getCudaStream()>>>(dInputBuffers, dInputTadShapes, dInputTadOffsets, dIndicesBuffers, dIndicesShapes, inputSize, output->specialBuffer(), packZ.platformShapeInfo(), packZ.platformOffsets());
}
pm.synchronize();
return Status::OK();
}
template <typename T>
static void _dynamicPartitionFunctorBP(NDArray const* input, NDArray const* indices, std::vector<NDArray*> const& inputGradientList, std::vector<NDArray*>& outputList) {
}
void dynamicPartitionFunctor(nd4j::LaunchContext * context, NDArray const* input, NDArray const* indices, std::vector<NDArray*>& outputList) {
auto xType = input->dataType();
auto yType = indices->dataType();
NDArray::prepareSpecialUse({}, {indices, input});
BUILD_DOUBLE_SELECTOR(xType, yType, _dynamicPartitionFunctor, (context, input, indices, outputList), NUMERIC_TYPES, INDEXING_TYPES);
NDArray::registerSpecialUse({}, {indices, input});
for (auto v:outputList)
v->tickWriteDevice();
}
template <typename T>
static int _dynamicStitchFunctorBP(std::vector<NDArray*> const& inputs, std::vector<NDArray*> const& indices, NDArray const* gradInput, std::vector<NDArray*>& outputList){
throw std::runtime_error("Not umplemented yet");
}
int dynamicStitchFunctor(nd4j::LaunchContext * context, std::vector<NDArray*> const& inputs, std::vector<NDArray*> const& indices, NDArray* output){
auto xType = inputs.at(0)->dataType();
auto yType = indices.at(0)->dataType();
for (auto v:indices) {
v->syncToDevice();
v->tickReadDevice();
}
for (auto v:inputs) {
v->syncToDevice();
v->tickReadDevice();
}
NDArray::prepareSpecialUse({output}, {});
BUILD_DOUBLE_SELECTOR(xType, yType, _dynamicStitchFunctor, (context, inputs, indices, output), NUMERIC_TYPES, INDEXING_TYPES);
NDArray::registerSpecialUse({output}, {});
return Status::OK();
}
int dynamicStitchFunctorBP(nd4j::LaunchContext * context, std::vector<NDArray*> const& inputs, std::vector<NDArray*> const& indices, NDArray const* gradInput, std::vector<NDArray*>& outputList) {
auto xType = inputs.at(0)->dataType();
BUILD_SINGLE_SELECTOR(xType, return _dynamicStitchFunctorBP, (inputs, indices, gradInput, outputList), NUMERIC_TYPES);
}
void dynamicPartitionFunctorBP(nd4j::LaunchContext * context, NDArray const* input, NDArray const* indices, std::vector<NDArray*> const& inputGradientList, std::vector<NDArray*>& outputList) {
auto xType = input->dataType();
BUILD_SINGLE_SELECTOR(xType, _dynamicPartitionFunctorBP, (input, indices, inputGradientList, outputList), NUMERIC_TYPES);
}
}
}
}