# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://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. # TODO: import all neural network related api under this directory, # including layers, linear, conv, rnn etc. from .activation import ( celu, elu, elu_, gelu, glu, gumbel_softmax, hardshrink, hardsigmoid, hardswish, hardtanh, hardtanh_, leaky_relu, leaky_relu_, log_sigmoid, log_softmax, maxout, mish, prelu, relu, relu6, relu_, rrelu, selu, sigmoid, silu, softmax, softmax_, softplus, softshrink, softsign, swiglu, swish, tanh, tanh_, tanhshrink, thresholded_relu, thresholded_relu_, ) from .common import ( alpha_dropout, bilinear, class_center_sample, cosine_similarity, dropout, dropout1d, dropout2d, dropout3d, feature_alpha_dropout, fold, interpolate, label_smooth, linear, pad, unfold, upsample, zeropad2d, ) from .conv import ( conv1d, conv1d_transpose, conv2d, conv2d_transpose, conv3d, conv3d_transpose, ) from .distance import pairwise_distance, pdist # noqa: F401 from .extension import ( diag_embed, # noqa: F401 gather_tree, sequence_mask, temporal_shift, ) from .flash_attention import ( flash_attention_v3_varlen, flash_attn_qkvpacked, flash_attn_varlen_qkvpacked, flashmask_attention, flashmask_get_unique_id, sdp_kernel, # noqa: F401 ) from .input import ( embedding, embedding_renorm_, # noqa: F401 one_hot, ) from .loss import ( adaptive_log_softmax_with_loss, binary_cross_entropy, binary_cross_entropy_with_logits, cosine_embedding_loss, cross_entropy, ctc_loss, dice_loss, gaussian_nll_loss, hinge_embedding_loss, hsigmoid_loss, kl_div, l1_loss, log_loss, margin_cross_entropy, margin_ranking_loss, mse_loss, multi_label_margin_loss, multi_label_soft_margin_loss, multi_margin_loss, nll_loss, npair_loss, poisson_nll_loss, rnnt_loss, sigmoid_focal_loss, smooth_l1_loss, soft_margin_loss, softmax_with_cross_entropy, square_error_cost, triplet_margin_loss, triplet_margin_with_distance_loss, ) from .moe_permute import moe_permute from .moe_unpermute import moe_unpermute from .norm import ( batch_norm, group_norm, instance_norm, layer_norm, local_response_norm, normalize, rms_norm, ) from .pooling import ( adaptive_avg_pool1d, adaptive_avg_pool2d, adaptive_avg_pool3d, adaptive_max_pool1d, adaptive_max_pool2d, adaptive_max_pool3d, avg_pool1d, avg_pool2d, avg_pool3d, fractional_max_pool2d, fractional_max_pool3d, lp_pool1d, lp_pool2d, max_pool1d, max_pool2d, max_pool3d, max_unpool1d, max_unpool2d, max_unpool3d, ) from .sdpa import scaled_dot_product_attention from .sparse_attention import sparse_attention from .vision import ( affine_grid, channel_shuffle, grid_sample, pixel_shuffle, pixel_unshuffle, ) logsigmoid = log_sigmoid conv_transpose1d = conv1d_transpose conv_transpose2d = conv2d_transpose conv_transpose3d = conv3d_transpose huber_loss = smooth_l1_loss multilabel_margin_loss = multi_label_margin_loss multilabel_soft_margin_loss = multi_label_soft_margin_loss __all__ = [ 'celu', 'conv1d', 'conv1d_transpose', 'conv2d', 'conv2d_transpose', 'conv3d', 'conv3d_transpose', 'conv_transpose1d', 'conv_transpose2d', 'conv_transpose3d', 'pairwise_distance', 'elu', 'elu_', 'gelu', 'hardshrink', 'hardtanh', 'hardtanh_', 'hardsigmoid', 'hardswish', 'leaky_relu', 'leaky_relu_', 'log_sigmoid', 'logsigmoid', 'maxout', 'prelu', 'relu', 'relu_', 'relu6', 'selu', 'softmax', 'softmax_', 'softplus', 'softshrink', 'softsign', 'sigmoid', 'silu', 'swiglu', 'swish', 'mish', 'tanh', 'tanh_', 'tanhshrink', 'thresholded_relu', 'thresholded_relu_', 'log_softmax', 'glu', 'gumbel_softmax', 'sequence_mask', 'dropout', 'dropout1d', 'dropout2d', 'dropout3d', 'alpha_dropout', 'feature_alpha_dropout', 'label_smooth', 'linear', 'pad', 'zeropad2d', 'unfold', 'interpolate', 'upsample', 'bilinear', 'cosine_similarity', 'avg_pool1d', 'avg_pool2d', 'avg_pool3d', 'lp_pool1d', 'lp_pool2d', 'max_pool1d', 'max_pool2d', 'max_pool3d', 'max_unpool1d', 'max_unpool2d', 'max_unpool3d', 'moe_permute', 'moe_unpermute', 'adaptive_avg_pool1d', 'adaptive_avg_pool2d', 'adaptive_avg_pool3d', 'adaptive_max_pool1d', 'adaptive_max_pool2d', 'adaptive_max_pool3d', 'fractional_max_pool2d', 'fractional_max_pool3d', 'binary_cross_entropy', 'binary_cross_entropy_with_logits', 'cross_entropy', 'dice_loss', 'hsigmoid_loss', 'kl_div', 'l1_loss', 'log_loss', 'mse_loss', 'margin_ranking_loss', 'multi_label_soft_margin_loss', 'nll_loss', 'poisson_nll_loss', 'npair_loss', 'sigmoid_focal_loss', 'smooth_l1_loss', 'softmax_with_cross_entropy', 'margin_cross_entropy', 'square_error_cost', 'ctc_loss', 'rnnt_loss', 'hinge_embedding_loss', 'affine_grid', 'grid_sample', 'local_response_norm', 'pixel_shuffle', 'pixel_unshuffle', 'channel_shuffle', 'embedding', 'gather_tree', 'one_hot', 'normalize', 'temporal_shift', 'batch_norm', 'layer_norm', 'rms_norm', 'instance_norm', 'class_center_sample', 'sparse_attention', 'fold', 'cosine_embedding_loss', 'rrelu', 'triplet_margin_with_distance_loss', 'triplet_margin_loss', 'adaptive_log_softmax_with_loss', 'multi_margin_loss', 'multi_label_margin_loss', 'multilabel_margin_loss', 'multilabel_soft_margin_loss', 'soft_margin_loss', 'gaussian_nll_loss', 'scaled_dot_product_attention', 'flashmask_attention', 'flashmask_get_unique_id', 'flash_attn_qkvpacked', "flash_attention_v3_varlen", 'flash_attn_varlen_qkvpacked', 'group_norm', 'huber_loss', ]