raver119 3c4e959e21 [WIP] More of CUDA (#95)
* initial commit

Signed-off-by: raver119 <raver119@gmail.com>

* 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

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

* 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

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

* - correct some tests

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

* 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

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

* Added tests for calculateOutputShapes.

* Addded Benchmarks test.

* Commented benchmark tests.

* change assertion

Signed-off-by: raver119 <raver119@gmail.com>

* 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

Signed-off-by: raver119 <raver119@gmail.com>

* Fixed axpy op.

* meh

Signed-off-by: raver119 <raver119@gmail.com>

* - fix tests for nativeOps::concat

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

* sequential transform/scalar

Signed-off-by: raver119 <raver119@gmail.com>

* allow nested parallelism

Signed-off-by: raver119 <raver119@gmail.com>

* assign_bp leak fix

Signed-off-by: raver119 <raver119@gmail.com>

* block setRNG fix

Signed-off-by: raver119 <raver119@gmail.com>

* enable parallelism by default

Signed-off-by: raver119 <raver119@gmail.com>

* enable nested parallelism by default

Signed-off-by: raver119 <raver119@gmail.com>

* 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

Signed-off-by: raver119 <raver119@gmail.com>

* - some tests fixes

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

* - correct the rest of reduce_ stuff

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

* - further correction of reduce_ stuff

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

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

* - improve code of stack operation for scalar case

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

* - provide cuda kernel for gatherND operation

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

* Implementation of cbow helpers with cuda kernels.

* minor tests tweaks

Signed-off-by: raver119 <raver119@gmail.com>

* minor tests tweaks

Signed-off-by: raver119 <raver119@gmail.com>

* - further correction of cuda stuff

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

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

* Skip random testing for cudablas case.

* lstmBlockCell context fix

Signed-off-by: raver119 <raver119@gmail.com>

* 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

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

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

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

* lstmBlockCell context fix

Signed-off-by: raver119 <raver119@gmail.com>

* Added tests for lrelu and lrelu_bp.

* Added tests for selu and selu_bp.

* Fixed lrelu derivative helpers.

* - some corrections in lstm

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

* operator * result shape fix

Signed-off-by: raver119 <raver119@gmail.com>

* - correct typo in lstmCell

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

* few tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* CUDA inverse broadcast bool fix

Signed-off-by: raver119 <raver119@gmail.com>

* disable MMAP test for CUDA

Signed-off-by: raver119 <raver119@gmail.com>

* BooleanOp syncToDevice

Signed-off-by: raver119 <raver119@gmail.com>

* meh

Signed-off-by: raver119 <raver119@gmail.com>

* additional data types for im2col/col2im

Signed-off-by: raver119 <raver119@gmail.com>

* Added test for firas_sparse op.

* one more RandomBuffer test excluded

Signed-off-by: raver119 <raver119@gmail.com>

* Added tests for flatten op.

* Added test for Floor op.

* bunch of tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* mmulDot tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* more tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* 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

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

* Eliminate cbow crach.

* more tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* more tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* Eliminated abortion with batched nlp test.

* more tests fixed

Signed-off-by: raver119 <raver119@gmail.com>

* Fixed shared flag initializing.

* disabled bunch of cpu workspaces tests

Signed-off-by: raver119 <raver119@gmail.com>

* scalar operators fix: missing registerSpecialUse call

Signed-off-by: raver119 <raver119@gmail.com>

* Fixed logdet for cuda and tests.

* - correct clipBynorm_bp

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

* Fixed crop_and_resize shape datatype.

* - correct some mmul tests

Signed-off-by: Yurii <yurii@skymind.io>
2019-08-05 11:27:05 +10:00

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C++

/*******************************************************************************
* 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
//
#ifndef LIBND4J_HEADERS_NN_H
#define LIBND4J_HEADERS_NN_H
#include <ops/declarable/headers/common.h>
namespace nd4j {
namespace ops {
#if NOT_EXCLUDED(OP_softmax)
DECLARE_CONFIGURABLE_OP(softmax, 1, 1, true, 0, 0);
DECLARE_CONFIGURABLE_OP(softmax_bp, 2, 1, true, 0, 0);
#endif
/**
* Local response normalization implementation as TF.
* input: 4D array
*
* T args:
*
* 0: bias
* 1: alpha
* 2: beta
*
* Int arg: depth - optional local radius
*
* output - 4D array
*/
#if NOT_EXCLUDED(OP_lrn)
DECLARE_CONFIGURABLE_OP(lrn, 1, 1, true, 3, 0);
#endif
/**
* Local response normalization - backprop variant.
* input:
* 0 - 4D array of data
* 1 - epsilon - 4D array of approximation
*
* T args:
*
* 0: bias
* 1: alpha
* 2: beta
*
* Int arg: depth - optional local radius
*
* output - next approximation as 4D array
*/
#if NOT_EXCLUDED(OP_lrn)
DECLARE_CONFIGURABLE_OP(lrn_bp, 2, 1, true, 3, 0);
#endif
/**
* Batch normalization implementation.
* Reference: https://arxiv.org/abs/1502.03167v3
*
* Expected arguments:
* input: input array (any number of dimensions)
* mean:
* variance:
* gamma:
* beta:
*
* Int args:
* 0: apply scale
* 1: apply offset
*
*
* T args:
* 0: epsilon
*/
#if NOT_EXCLUDED(OP_batchnorm)
DECLARE_CUSTOM_OP(batchnorm, 3, 1, false, 1, 2);
#endif
#if NOT_EXCLUDED(OP_batchnorm_new)
DECLARE_CUSTOM_OP(batchnorm_new, 3, 1, false, 1, 2);
#endif
/**
* back prop in batch normalization
*
* Expected arguments:
* input: input array (any number of dimensions)
* mean:
* variance:
* gamma: optional
* beta: optional
* dLdOut: next epsilon
*
* Int args:
* 0: apply scale
* 1: apply offset
*
* T args:
* 0: epsilon
*
* output arrays:
* dL/dInput
* dL/dMean
* dL/dVariance
* dL/dGamma
* dL/dBeta
*/
#if NOT_EXCLUDED(OP_batchnorm)
DECLARE_CUSTOM_OP(batchnorm_bp, 4, 3, false, 1, 2);
#endif
/**
* This operation updates parameters with provided gradients, wrt learning rate
* Expected arguments:
* x: parameters, any shape
* y: gradients. same shape as x
* lr: optional, learning rate
*
* T args:
* 0: optional, learning rate
*/
#if NOT_EXCLUDED(OP_apply_sgd)
DECLARE_CONFIGURABLE_OP(apply_sgd, 2, 1, true, -2, 0);
#endif
/**
* This operation performs batch normalization of layer, it is based on following article http://arxiv.org/abs/1502.03167.
* Expected arguments:
* x: input 4D array of shape [bS,iH,iW,iD] (data format = NHWC) or [bS,iD,iH,iW] (data format = NCHW), where
* bS - batch size
* iH - input height
* iW - input width
* iD - input depth (or number of channels)
* scale: 1D input array of scale factors, shape [iD]
* offset: 1D input array of offsets (shifts), shape [iD]
* mean: 1D input array of population mean used for inference, shape [iD], this array is required only if isTraining = false
* variance: 1D input array of population mean used for inference, shape [iD], this array is required only if isTraining = false
*
* T input arguments:
* 0: epsilon, it is optional argument, default value is 0.001, this is small number to be added to the variance of x
*
* integer input arguments:
* 0: dataFormat, may have two values: zero -> NHWC, unity -> NCHW
* 1: isTraining, may have two values: zero -> inference, unity -> training
*/
#if NOT_EXCLUDED(OP_fused_batch_norm)
DECLARE_CUSTOM_OP(fused_batch_norm, 3, 1, false, 0, 2);
#endif
#if NOT_EXCLUDED(OP_log_softmax)
DECLARE_CONFIGURABLE_OP(log_softmax, 1, 1, true, 0, 0);
DECLARE_CONFIGURABLE_OP(log_softmax_bp, 2, 1, true, 0, 0);
#endif
/**
* relu_layer = relu(x*w + b)
*/
DECLARE_CUSTOM_OP(relu_layer, 3, 1, false, 0, 0);
/**
* applies layer normalization to input
* y = g * standardize(x) + b
*
* see nd4j::ops::standardize
*
*/
#if NOT_EXCLUDED(OP_layer_norm)
DECLARE_CONFIGURABLE_OP(layer_norm, 3, 1, true, 0, -2);
DECLARE_CUSTOM_OP(layer_norm_bp, 4, 1, false, 0, -2);
#endif
/**
* This operation performs dot product attention on the given timeseries input with the given queries
* out = sum(similarity(k_i, q) * v_i)
*
* similarity(k, q) = softmax(k * q) where x * q is the dot product of x and q
*
* Optionally with normalization step:
* similarity(k, q) = softmax(k * q / sqrt(size(q))
*
* See also "Attention is all you need" (https://arxiv.org/abs/1706.03762, p. 4, eq. 1)
*
* Note: This supports multiple queries at once, if only one query is available the queries vector still has to
* be 3D but can have queryCount = 1
*
* Note: keys and values usually is the same array. If you want to use it as the same array, simply pass it for
* both.
*
* Expected arguments:
* q: input 3D array "queries" of shape [batchSize, featureKeys, queryCount] or 4D array of shape [batchSize, numHeads, featureKeys, queryCount]
* k: input 3D array "keys" of shape [batchSize, featureKeys, timesteps] or 4D array of shape [batchSize, numHeads, featureKeys, timesteps]
* v: input 3D array "values" of shape [batchSize, featureValues, timesteps] or 4D array of shape [batchSize, numHeads, featureValues, timesteps]
* mask: OPTIONAL; array that defines which values should be skipped of shape [batchSize, timesteps]
*
* integer input arguments:
* 0: normalization, may have two values: zero -> do not apply normalization, one -> apply normalization
* 1: withWeights, may have two values: zero -> do not return weights, one -> return weights
*
* Output Arrays:
* 0: Attention result arrays of shape [batchSize, featureValues, queryCount] or [batchSize, numHeads, featureValues, queryCount]
* 1: OPTIONAL; Attention weights of shape [batchSize, timesteps, queryCount] or [batchSize, numHeads, timesteps, queryCount]
*/
#if NOT_EXCLUDED(OP_dot_product_attention)
DECLARE_CUSTOM_OP(dot_product_attention, 3, -1, false, 0, 2);
DECLARE_CUSTOM_OP(dot_product_attention_bp, 4, 3, false, 0, 1);
#endif
/**
* This performs multi-headed dot product attention on the given timeseries input
* out = concat(head_1, head_2, ..., head_n) * Wo
* head_i = dot_product_attention(Wq_i*q, Wk_i*k, Wv_i*v)
*
* Optionally with normalization when calculating the attention for each head.
*
* See also "Attention is all you need" (https://arxiv.org/abs/1706.03762, pp. 4,5, "3.2.2 Multi-Head Attention")
*
* This makes use of dot_product_attention OP support for rank 4 inputs.
*
* Expected arguments:
* q: input 3D array "queries" of shape [batchSize, featureKeys, queryCount]
* k: input 3D array "keys" of shape [batchSize, featureKeys, timesteps]
* v: input 3D array "values" of shape [batchSize, featureValues, timesteps]
* Wq: input query projection weights of shape [numHeads, projectedKeys, featureKeys]
* Wk: input key projection weights of shape [numHeads, projectedKeys, featureKeys]
* Wv: input value projection weights of shape [numHeads, projectedValues, featureValues]
* Wo: output projection weights of shape [numHeads * projectedValues, outSize]
* mask: OPTIONAL; array that defines which values should be skipped of shape [batchSize, timesteps]
*
* integer input arguments:
* 0: normalization, may have two values: zero -> do not apply normalization, one -> apply normalization
* 1: withWeights, may have two values: zero -> do not return weights, one -> return weights
*
* Output Arrays:
* 0: Attention result arrays of shape [batchSize, outSize, queryCount]
* 1: OPTIONAL; Attention weights of shape [batchSize, numHeads, timesteps, queryCount]
*/
#if NOT_EXCLUDED(OP_multi_head_dot_product_attention)
DECLARE_CUSTOM_OP(multi_head_dot_product_attention, 7, -1, false, 0, 2);
DECLARE_CUSTOM_OP(multi_head_dot_product_attention_bp, 8, 7, false, 0, 1);
#endif
}
}
#endif