opset.py 105.9 KB
Newer Older
S
SunAhong1993 已提交
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40
# Copyright (c) 2019  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.

from x2paddle.decoder.onnx_decoder import ONNXGraph, ONNXGraphNode, ONNXGraphDataNode
from x2paddle.core.graph import GraphNode
from x2paddle.core.util import *
from functools import reduce
import numpy as np
import onnx
import onnx.numpy_helper as numpy_helper
from onnx.mapping import TENSOR_TYPE_TO_NP_TYPE
import logging as _logging
from collections import OrderedDict
import math
import os
import copy
import sys
import shutil

_logger = _logging.getLogger(__name__)


def _const_weight_or_none(node, necessary=False):
    if 'Constant' in node.layer_type:
        return node.value
    if isinstance(node, ONNXGraphDataNode):
        return node.weight
    if necessary:
        assert '{} should be an initializer or Constant operator.'.format(
S
SunAhong1993 已提交
41
            node.name)
S
SunAhong1993 已提交
42 43 44
    return None


45 46 47
def _rename_or_remove_weight(weights,
                             origin_name,
                             target_name=None,
W
wjj19950828 已提交
48 49
                             is_remove=True,
                             rename_mapper=None):
50
    '''
51 52 53 54
    Rename parameters by Paddle's naming rule of parameters.

    Args:
        weights(dict[String:np.ndarray]): Dict stored paramters, the key in weights is name of parameter.
55
        origin_name(String): Name of parameter to rename or remove.
56 57
        target_name(String, optional): if target_name is not None, add new key-value pair
            {target_name:weights[origin_name]} to weights, and target_name must follow paddle's
58
            naming rule of parameters. Default: None.
59
        is_remove: if is_remove is True, remove origin key-value pair. Default: True.
W
wjj19950828 已提交
60
        rename_mapper: Solved the same data is used for multiple OPs, key is old_name, value is new_name.
61 62
    Returns:
        None
63
    '''
W
wjj19950828 已提交
64 65 66
    if origin_name in rename_mapper:
        origin_name = rename_mapper[origin_name]
        is_remove = False
C
Channingss 已提交
67
    if origin_name not in weights:
68
        raise KeyError('{} not a key in {}'.format(origin_name, weights.keys()))
Y
yeliang2258 已提交
69 70 71 72 73
    if is_remove:
        # remove weight
        data = weights.pop(origin_name)
    else:
        data = weights[origin_name]
C
Channingss 已提交
74 75 76
    if target_name is not None:
        # rename weight
        weights[target_name] = data
W
wjj19950828 已提交
77
        rename_mapper[origin_name] = target_name
C
Channingss 已提交
78

79

S
SunAhong1993 已提交
80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108
def _is_static_shape(shape):
    negtive_dims = 0
    error_dims = 0
    for dim in shape:
        if dim < 0:
            negtive_dims += 1
        if dim < -1:
            error_dims += 1
    if negtive_dims > 1:
        return False
    if error_dims > 0:
        return False
    return True


def _get_same_padding(in_size, kernel_size, stride):
    new_size = int(math.ceil(in_size * 1.0 / stride))
    pad_size = (new_size - 1) * stride + kernel_size - in_size
    pad0 = int(pad_size / 2)
    pad1 = pad_size - pad0
    return [pad0, pad1]


def print_mapping_info(func):
    def run_mapping(*args, **kwargs):
        node = args[1]
        try:
            res = func(*args, **kwargs)
        except:
109
            raise Exception("convert failed node:{}, op_type is {}".format(
S
SunAhong1993 已提交
110
                node.name[9:], node.layer_type))
S
SunAhong1993 已提交
111 112 113 114 115 116 117 118 119 120
        else:
            return res

    return run_mapping


class OpSet9():
    elementwise_ops = {
        'Add': 'paddle.add',
        'Div': 'paddle.divide',
S
SunAhong1993 已提交
121
        'Sub': 'paddle.subtract',
S
SunAhong1993 已提交
122 123
        'Mul': 'paddle.multiply',
        'Pow': 'paddle.pow',
124
        'Less': 'paddle.less_than',
S
SunAhong1993 已提交
125 126
    }

S
SunAhong1993 已提交
127 128 129
    directly_map_ops = {
        'Ceil': ['paddle.ceil'],
        # reduce function
130 131 132
        'ReduceMean': [
            'paddle.mean', dict(
                axes='axis', keepdims='keepdim'), dict(
133
                    axes=None, keepdims=True)
134 135 136 137
        ],
        'ReduceMin': [
            'paddle.min', dict(
                axes='axis', keepdims='keepdim'), dict(
138
                    axes=None, keepdim=True)
139 140 141 142
        ],
        'ReduceMax': [
            'paddle.max', dict(
                axes='axis', keepdims='keepdim'), dict(
143
                    axes=None, keepdim=True)
144 145 146 147
        ],
        'ReduceProd': [
            'paddle.prod', dict(
                axes='axis', keepdims='keepdim'), dict(
148
                    axes=None, keepdim=True)
149
        ],
S
SunAhong1993 已提交
150 151
        # active function
        'Relu': ['paddle.nn.ReLU'],
152 153 154 155 156 157 158 159 160 161
        'LeakyRelu': [
            'paddle.nn.LeakyReLU', dict(alpha='negative_slope'),
            dict(negative_slope=.01)
        ],
        'Elu':
        ['paddle.nn.functional.elu', dict(alpha='alpha'), dict(alpha=1.)],
        'ThresholdedRelu': [
            'paddle.nn.functional.thresholded_relu', dict(alpha='threshold'),
            dict(alpha=1.)
        ],
S
SunAhong1993 已提交
162 163 164
        'Tanh': ['paddle.nn.Tanh'],
        'Sigmoid': ['paddle.nn.Sigmoid'],
        'Softsign': ['paddle.nn.Softsign'],
165 166 167 168
        'Softplus': [
            'paddle.nn.Softplus', dict(threshold='threshold'),
            dict(threshold=float(sys.maxsize))
        ],
S
SunAhong1993 已提交
169
        'Exp': ['paddle.exp'],
S
SunAhong1993 已提交
170
        'Log': ['paddle.log'],
171 172 173
        'LogSoftmax':
        ['paddle.nn.functional.log_softmax', dict(axis='axis'), dict(axis=1)],
        'Softmax': ['paddle.nn.Softmax', dict(axis='axis'), dict(axis=1)],
S
SunAhong1993 已提交
174 175 176 177
        'Sqrt': ['paddle.sqrt'],
        'Floor': ['paddle.floor'],
        'Abs': ['paddle.abs'],
        'Erf': ['paddle.erf'],
Y
yeliang2258 已提交
178 179
        'Sin': ['paddle.sin'],
        'Cos': ['paddle.cos'],
S
SunAhong1993 已提交
180 181 182 183 184 185 186 187 188
    }

    def __init__(self, decoder, paddle_graph):
        super(OpSet9, self).__init__()
        self.graph = decoder.graph
        self.paddle_graph = paddle_graph
        self.inputs_info = dict()
        self.weights = dict()
        self.nn_name2id = dict()
S
fix  
SunAhong1993 已提交
189
        self.done_weight_list = list()
190 191
        # solve for same data is used as an argument to multiple OPs.
        self.rename_mapper = dict()
S
SunAhong1993 已提交
192 193 194 195 196 197

    @print_mapping_info
    def directly_map(self, node, *args, **kwargs):
        inputs = node.layer.input
        assert len(inputs) == 1, 'directly_map error with multi inputs'
        input = self.graph.get_input_node(node, idx=0, copy=True)
S
SunAhong1993 已提交
198 199 200 201 202 203 204 205 206 207 208 209 210 211 212
        onnx_attrs = node.attr_map
        if '' in onnx_attrs:
            onnx_attrs.pop('')
        if '_' in onnx_attrs:
            onnx_attrs.pop('_')
        op_info = self.directly_map_ops[node.layer_type]
        paddle_op = op_info[0]
        layer_attrs = dict()
        if len(op_info) > 1:
            attrs_name_map_dict = op_info[1]
            for onnx_attr_name, pd_attr_name in attrs_name_map_dict.items():
                if onnx_attr_name in onnx_attrs:
                    layer_attrs[pd_attr_name] = onnx_attrs[onnx_attr_name]
                else:
                    layer_attrs[pd_attr_name] = op_info[2][onnx_attr_name]
213
        if paddle_op.startswith("paddle.nn") and 'functional' not in paddle_op:
S
SunAhong1993 已提交
214 215
            op_name = paddle_op[10:].lower()
            op_name = name_generator(op_name, self.nn_name2id)
S
SunAhong1993 已提交
216
            output_name = node.name
S
SunAhong1993 已提交
217
            layer_outputs = [op_name, output_name]
218

S
SunAhong1993 已提交
219 220
            self.paddle_graph.add_layer(
                kernel=paddle_op,
S
SunAhong1993 已提交
221
                inputs={"x": input.name},
S
SunAhong1993 已提交
222 223 224 225 226
                outputs=layer_outputs,
                **layer_attrs)
        else:
            self.paddle_graph.add_layer(
                kernel=paddle_op,
S
SunAhong1993 已提交
227 228
                inputs={"x": input.name},
                outputs=[node.name],
229 230
                **layer_attrs)

S
SunAhong1993 已提交
231 232 233 234 235
    @print_mapping_info
    def elementwise_map(self, node):
        op_type = self.elementwise_ops[node.layer_type]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
236
        inputs_dict = {'x': val_x.name, 'y': val_y.name}
S
SunAhong1993 已提交
237
        self.paddle_graph.add_layer(
238
            op_type, inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
239 240 241 242 243 244 245 246 247 248 249 250

    @print_mapping_info
    def place_holder(self, node):
        shape = node.out_shapes[0]
        for i, dim_shape in enumerate(shape):
            if dim_shape == 0 and i == 0:
                shape[i] = 1
            if dim_shape == 0 and i != 0:
                assert 'shape of input is not assigned'
        self.paddle_graph.add_layer(
            kernel="paddle.to_tensor",
            inputs={},
S
SunAhong1993 已提交
251
            outputs=[node.name],
S
SunAhong1993 已提交
252 253
            data=node.name)
        self.inputs_info[node.name] = [shape, node.dtype]
S
SunAhong1993 已提交
254 255 256 257 258 259 260

    @print_mapping_info
    def create_parameter(self, node, parameter=None):
        if parameter is not None:
            node = parameter
        dtype = node.dtype
        shape = node.out_shapes[0]
Y
yeliang2258 已提交
261

S
fix  
SunAhong1993 已提交
262
        if hasattr(node.weight, "shape") and len(node.weight.shape) == 0:
S
SunAhong1993 已提交
263
            self.paddle_graph.add_layer(
264 265
                "paddle.full",
                inputs={},
S
SunAhong1993 已提交
266
                outputs=[node.name],
S
SunAhong1993 已提交
267 268 269 270
                dtype=string(dtype),
                shape=[1],
                fill_value=node.weight)
        else:
S
SunAhong1993 已提交
271
            self.weights[node.name] = node.weight
S
SunAhong1993 已提交
272 273 274
            self.paddle_graph.add_layer(
                "self.create_parameter",
                inputs={},
S
SunAhong1993 已提交
275
                outputs=[node.name],
S
SunAhong1993 已提交
276
                shape=shape,
S
SunAhong1993 已提交
277
                attr=string(node.name),
S
SunAhong1993 已提交
278
                dtype=string(dtype),
279
                default_initializer="paddle.nn.initializer.Constant(value=0.0)")
S
SunAhong1993 已提交
280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295

    def _pad_if_asymmetric(self, node, pads, val_name):  # pads: SSEE
        assert len(pads) & 1 == 0
        symmetric = True
        ndims = len(pads) // 2
        for idx_dim in range(ndims):
            if pads[idx_dim] != pads[ndims + idx_dim]:
                symmetric = False
                break
        if symmetric:
            return pads[:ndims], val_name
        val_padded = self.Pad(node, op_independent=False)
        return [0] * ndims, val_padded

    def _interpolate(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
S
SunAhong1993 已提交
296
        inputs = {'x': val_x.name}
S
fix  
SunAhong1993 已提交
297
        attrs = dict()
S
SunAhong1993 已提交
298 299 300 301
        if node.layer_type == 'Resize':
            if len(node.layer.input) == 2:
                # opset 10
                val_scales = self.graph.get_input_node(node, idx=1, copy=True)
302
                # TODO(syf): paddle.nn.functional.interpolate will support the length
S
fix  
SunAhong1993 已提交
303
                # which is the same as the rank of input.
304 305
                attrs['scale_factor'] = self.weights[val_scales.name].tolist()[
                    2:]
S
SunAhong1993 已提交
306 307 308
            elif len(node.layer.input) == 3:
                # opset 11
                val_scales = self.graph.get_input_node(node, idx=2, copy=True)
309
                # TODO(syf): paddle.nn.functional.interpolate will support the length
S
fix  
SunAhong1993 已提交
310
                # which is the same as the rank of input.
311 312
                attrs['scale_factor'] = self.weights[val_scales.name].tolist()[
                    2:]
S
SunAhong1993 已提交
313 314 315
            elif len(node.layer.input) == 4:
                # opset 11
                val_sizes = self.graph.get_input_node(node, idx=3, copy=True)
W
WJJ1995 已提交
316
                size_values = _const_weight_or_none(val_sizes)
317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361
                val_x_shape = val_x.out_shapes[0]
                if len(val_x_shape) == 3:
                    var_n, var_hw = val_sizes.name + '_n', val_sizes.name + '_hw'
                    self.paddle_graph.add_layer(
                        'paddle.split',
                        inputs={"x": val_sizes.name},
                        outputs=[var_n, var_hw],
                        num_or_sections=[1, 2],
                        axis=0)
                    self.paddle_graph.add_layer(
                        "paddle.cast",
                        inputs={"x": var_hw},
                        outputs=[var_hw],
                        dtype=string('int32'))
                    inputs['size'] = var_hw
                    attrs = {
                        "align_corners": False,
                        "mode": string(node.get_attr('mode', 'nearest'))
                    }
                    mode = node.get_attr('mode', 'nearest')
                    if mode == "linear":
                        attrs["mode"] = string("bilinear")
                    if node.get_attr('coordinate_transformation_mode',
                                     'half_pixel') == 'pytorch_half_pixel':
                        attrs["align_corners"] = False
                        attrs["align_mode"] = 0
                    if node.get_attr('coordinate_transformation_mode',
                                     'half_pixel') == 'align_corners':
                        attrs["align_corners"] = True
                    self.paddle_graph.add_layer(
                        'paddle.unsqueeze',
                        inputs={"x": val_x.name},
                        outputs=[val_x.name],
                        axis=0)
                    self.paddle_graph.add_layer(
                        kernel="paddle.nn.functional.interpolate",
                        inputs=inputs,
                        outputs=[node.name],
                        **attrs)
                    self.paddle_graph.add_layer(
                        'paddle.squeeze',
                        inputs={"x": node.name},
                        outputs=[node.name],
                        axis=0)
                else:
W
WJJ1995 已提交
362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378
                    if size_values is not None:
                        attrs["size"] = [size_values[2], size_values[3]]
                    else:
                        var_nc, var_hw = val_sizes.name + '_nc', val_sizes.name + '_hw'
                        self.paddle_graph.add_layer(
                            'paddle.split',
                            inputs={"x": val_sizes.name},
                            outputs=[var_nc, var_hw],
                            num_or_sections=[2, 2],
                            axis=0)
                        self.paddle_graph.add_layer(
                            "paddle.cast",
                            inputs={"x": var_hw},
                            outputs=[var_hw],
                            dtype=string('int32'))
                        inputs['size'] = var_hw
                    attrs.update({
379 380
                        "align_corners": False,
                        "mode": string(node.get_attr('mode', 'nearest'))
W
WJJ1995 已提交
381
                    })
382 383 384 385 386 387 388 389 390 391 392 393 394 395 396
                    mode = node.get_attr('mode', 'nearest')
                    if mode == "linear":
                        attrs["mode"] = string("bilinear")
                    if node.get_attr('coordinate_transformation_mode',
                                     'half_pixel') == 'pytorch_half_pixel':
                        attrs["align_corners"] = False
                        attrs["align_mode"] = 0
                    if node.get_attr('coordinate_transformation_mode',
                                     'half_pixel') == 'align_corners':
                        attrs["align_corners"] = True
                    self.paddle_graph.add_layer(
                        kernel="paddle.nn.functional.interpolate",
                        inputs=inputs,
                        outputs=[node.name],
                        **attrs)
S
SunAhong1993 已提交
397
                return
S
SunAhong1993 已提交
398
        elif node.layer_type == 'Upsample':
Y
yeliang2258 已提交
399 400 401 402 403 404 405 406 407 408 409 410
            if len(node.layer.input) == 2:
                val_scales = self.graph.get_input_node(node, idx=1, copy=True)
                self.paddle_graph.add_layer(
                    "paddle.slice",
                    inputs={"input": val_scales.name},
                    outputs=[val_scales.name],
                    axes=[0],
                    starts=[2],
                    ends=[4])
                inputs['scale_factor'] = val_scales.name
            else:
                val_scales = node.get_attr('scales')[2:]
411

S
SunAhong1993 已提交
412
        mode = node.get_attr('mode', 'nearest')
413 414 415 416 417
        attrs.update({
            "align_corners": False,
            "mode": string(mode),
            "align_mode": 1
        })
Y
yeliang2258 已提交
418 419
        if len(node.layer.input) == 1:
            attrs["scale_factor"] = val_scales
S
SunAhong1993 已提交
420 421 422
        val_x_shape = val_x.out_shapes[0]
        if mode == "linear" and len(val_x_shape) == 4:
            attrs["mode"] = string("bilinear")
423 424 425 426 427 428
            if node.get_attr('coordinate_transformation_mode',
                             'half_pixel') == 'pytorch_half_pixel':
                attrs["align_corners"] = False
                attrs["align_mode"] = 0
            else:
                attrs["align_corners"] = True
S
SunAhong1993 已提交
429 430 431
        self.paddle_graph.add_layer(
            kernel="paddle.nn.functional.interpolate",
            inputs=inputs,
S
SunAhong1993 已提交
432
            outputs=[node.name],
S
SunAhong1993 已提交
433
            **attrs)
434

S
SunAhong1993 已提交
435 436 437 438 439 440 441
    @print_mapping_info
    def HardSigmoid(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        alpha = node.get_attr('alpha', 0.2)
        beta = node.get_attr('beta', 0.5)
        self.paddle_graph.add_layer(
            kernel="paddle.scale",
S
SunAhong1993 已提交
442 443
            inputs={"x": val_x.name},
            outputs=[node.name + "_val"],
S
SunAhong1993 已提交
444 445 446 447
            scale=alpha,
            bias=beta)
        self.paddle_graph.add_layer(
            kernel="paddle.clip",
S
SunAhong1993 已提交
448 449
            inputs={"x": node.name + "_val"},
            outputs=[node.name],
S
SunAhong1993 已提交
450
            min=0.0,
451 452
            max=1.0)

S
SunAhong1993 已提交
453 454 455 456 457 458 459 460
    @print_mapping_info
    def Shape(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        self.paddle_graph.add_layer(
            kernel="paddle.shape",
            inputs={"input": val_x.name},
            outputs=[node.name])
        self.paddle_graph.add_layer(
461 462 463 464
            'paddle.cast',
            inputs={"x": node.name},
            outputs=[node.name],
            dtype=string('int64'))
S
SunAhong1993 已提交
465 466 467 468 469 470 471 472 473 474

    @print_mapping_info
    def RoiAlign(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_rois = self.graph.get_input_node(node, idx=1, copy=True)

        pooled_height = node.get_attr('output_height')
        pooled_width = node.get_attr('output_width')
        spatial_scale = node.get_attr('spatial_scale')
        sampling_ratio = node.get_attr('sampling_ratio')
475 476 477 478 479 480
        val_rois_shape = val_rois.name + '_shape'
        self.paddle_graph.add_layer(
            kernel="paddle.shape",
            inputs={"input": val_rois.name},
            outputs=[val_rois_shape])
        val_rois_num = val_rois.name + '_num'
481 482 483 484 485 486 487 488 489 490 491 492 493 494
        if len(val_rois.out_shapes[0]) == 4:
            self.paddle_graph.add_layer(
                'paddle.split',
                inputs={"x": val_rois_shape},
                outputs=[val_rois_num, ' _', ' _', ' _'],
                num_or_sections=[1, 1, 1, 1],
                axis=0)
        elif len(val_rois.out_shapes[0]) == 2:
            self.paddle_graph.add_layer(
                'paddle.split',
                inputs={"x": val_rois_shape},
                outputs=[val_rois_num, ' _'],
                num_or_sections=[1, 1],
                axis=0)
S
SunAhong1993 已提交
495 496 497 498 499
        layer_attrs = {
            'pooled_height': pooled_height,
            'pooled_width': pooled_width,
            'spatial_scale': spatial_scale,
            'sampling_ratio': sampling_ratio,
500
            'rois_num': val_rois_num,
S
SunAhong1993 已提交
501 502
        }
        self.paddle_graph.add_layer(
S
SunAhong1993 已提交
503
            'paddle.fluid.layers.roi_align',
S
SunAhong1993 已提交
504 505 506
            inputs={'input': val_x.name,
                    'rois': val_rois.name},
            outputs=[node.name],
S
SunAhong1993 已提交
507 508 509 510 511 512 513 514 515 516 517 518 519 520 521
            **layer_attrs)

    @print_mapping_info
    def MaxRoiPool(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_rois = self.graph.get_input_node(node, idx=1, copy=True)

        spatial_scale = node.get_attr('spatial_scale')
        pooled_height, pooled_width = node.get_attr('pooled_shape')
        layer_attrs = {
            'pooled_height': pooled_height,
            'pooled_width': pooled_width,
            'spatial_scale': spatial_scale,
        }
        self.paddle_graph.add_layer(
S
SunAhong1993 已提交
522
            'paddle.fluid.layers.roi_pool',
S
SunAhong1993 已提交
523 524 525
            inputs={'input': val_x.name,
                    'rois': val_rois.name},
            outputs=[node.name],
S
SunAhong1993 已提交
526 527 528 529 530 531
            **layer_attrs)

    @print_mapping_info
    def Pad(self, node, op_independent=True):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        pads = node.get_attr('pads')
S
SunAhong1993 已提交
532 533 534 535 536 537 538 539
        is_pads_attr = True
        if pads is None:
            val_pad = self.graph.get_input_node(node, idx=1, copy=True)
            pad_shape = val_pad.out_shapes[0]
            is_pads_attr = False
            pads = _const_weight_or_none(val_pad)
            if pads is not None:
                is_pads_attr = True
S
SunAhong1993 已提交
540
        mode = node.get_attr('mode', 'constant')
541 542
        if mode in ["edge"]:
            mode = "replicate"
S
SunAhong1993 已提交
543 544 545
        value = node.get_attr('value', 0.)
        data_shape = val_x.out_shapes[0]
        output_shape = node.out_shapes[0]
S
fix  
SunAhong1993 已提交
546
        assume_pad = False
S
SunAhong1993 已提交
547 548
        layer_attrs = {}
        layer_attrs['mode'] = string(mode)
S
fix  
SunAhong1993 已提交
549 550 551
        layer_attrs['value'] = value
        if not op_independent:
            output_name = node.name + '_paded'
S
SunAhong1993 已提交
552
        else:
S
fix  
SunAhong1993 已提交
553 554 555
            output_name = node.name
        nn_op_name = name_generator("pad", self.nn_name2id)
        layer_outputs = [nn_op_name, output_name]
S
SunAhong1993 已提交
556 557
        if is_pads_attr:
            paddings = []
S
SunAhong1993 已提交
558
            if len(pads) == 10 and sum(pads) == 0:
559
                pads = pads[0:6]
S
fix  
SunAhong1993 已提交
560
            if len(pads) in [2, 4, 6]:
S
SunAhong1993 已提交
561
                if data_shape:
562 563
                    assume_pad |= data_shape and 2 * (len(data_shape) - 2
                                                      ) == len(pads)  # NCHW
S
SunAhong1993 已提交
564
                if output_shape:
565 566
                    assume_pad |= output_shape and 2 * (len(output_shape) - 2
                                                        ) == len(pads)  # NCHW
S
fix  
SunAhong1993 已提交
567 568 569 570
                if assume_pad:
                    paddle_op = 'paddle.nn.Pad{}D'.format(len(output_shape) - 2)
                    paddings = np.array(pads).reshape(
                        (2, -1)).transpose().astype("int32")
S
for pad  
SunAhong1993 已提交
571
                    paddings = np.flip(paddings, axis=0).flatten().tolist()
S
fix  
SunAhong1993 已提交
572 573 574
                    layer_attrs['padding'] = paddings
                else:
                    if data_shape:
575 576
                        assume_pad |= data_shape and 2 * len(data_shape) == len(
                            pads)  # NCHW
S
fix  
SunAhong1993 已提交
577
                    if output_shape:
578 579
                        assume_pad |= output_shape and 2 * len(
                            output_shape) == len(pads)  # NCHW
S
fix  
SunAhong1993 已提交
580 581 582
                    if assume_pad:
                        paddle_op = 'paddle.nn.functional.pad'
                        paddings = np.array(pads).reshape(
583 584
                            (2,
                             -1)).transpose().astype("int32").flatten().tolist()
S
fix  
SunAhong1993 已提交
585 586
                        layer_attrs['pad'] = paddings
                    else:
587 588
                        raise Exception("The padding value {} is wrong!".format(
                            pads))
S
SunAhong1993 已提交
589
            elif len(pads) == 8:
S
fix  
SunAhong1993 已提交
590
                if data_shape:
591 592
                    assume_pad |= data_shape and 2 * len(data_shape) == len(
                        pads)  # NCHW
S
fix  
SunAhong1993 已提交
593
                if output_shape:
594 595
                    assume_pad |= output_shape and 2 * len(output_shape) == len(
                        pads)  # NCHW
S
fix  
SunAhong1993 已提交
596
                if assume_pad:
S
for pad  
SunAhong1993 已提交
597
                    paddle_op = 'paddle.nn.Pad2D'
S
fix  
SunAhong1993 已提交
598
                    paddings = np.array(pads).reshape(
S
for pad  
SunAhong1993 已提交
599 600 601 602 603 604 605 606
                        (2, -1)).transpose().astype("int32")
                    paddings = np.flip(paddings, axis=0).flatten().tolist()
                    if sum(paddings[:4]) == 0:
                        paddings = paddings[4:]
                        layer_attrs['padding'] = paddings
                    else:
                        layer_attrs["pad"] = paddings
                        paddle_op = "custom_layer:PadAllDim4WithOneInput"
S
SunAhong1993 已提交
607
            else:
608 609 610 611 612 613 614 615 616 617 618 619 620 621 622
                pad_data = node.get_attr('pads')
                pad_data1 = pad_data[0::2]
                pad_data_all = []
                for i in range(len(pad_data1)):
                    pad_data_all.append(pad_data[i])
                    pad_data_all.append(pad_data[len(pad_data1) + i])

                layer_attrs["pad"] = pad_data_all
                self.paddle_graph.add_layer(
                    'paddle.nn.functional.pad',
                    inputs={'x': val_x.name},
                    outputs=layer_outputs[1:],
                    **layer_attrs)
                return

S
SunAhong1993 已提交
623
            self.paddle_graph.add_layer(
624 625 626 627
                paddle_op,
                inputs={'x': val_x.name},
                outputs=layer_outputs[1:]
                if paddle_op == 'paddle.nn.functional.pad' else layer_outputs,
S
SunAhong1993 已提交
628
                **layer_attrs)
S
fix  
SunAhong1993 已提交
629
            if not op_independent:
S
SunAhong1993 已提交
630
                return node.name + '_paded'
S
SunAhong1993 已提交
631
        else:
S
fix  
SunAhong1993 已提交
632 633
            pads_len = val_pad.out_shapes[0][0]
            if pads_len in [2, 4, 6]:
S
SunAhong1993 已提交
634
                if data_shape:
635 636
                    assume_pad |= data_shape and 2 * (len(data_shape) - 2
                                                      ) == pads_len  # NCHW
S
SunAhong1993 已提交
637
                if output_shape:
638 639
                    assume_pad |= output_shape and 2 * (len(output_shape) - 2
                                                        ) == pads_len  # NCHW
S
fix  
SunAhong1993 已提交
640 641 642 643 644 645 646 647
                if assume_pad:
                    if pads_len == 2:
                        data_format = "NCL"
                    elif pads_len == 4:
                        data_format = "NCHW"
                    else:
                        data_format = "NCDHW"
                    self.paddle_graph.add_layer(
648 649 650
                        "custom_layer:PadWithTwoInput",
                        inputs={'x': val_x.name,
                                'pad': val_pad.name},
S
fix  
SunAhong1993 已提交
651 652 653 654 655 656
                        outputs=layer_outputs,
                        value=value,
                        mode=string(mode),
                        data_format=string(data_format))
                else:
                    if data_shape:
657 658
                        assume_pad |= data_shape and 2 * len(
                            data_shape) == pads_len  # NCHW
S
fix  
SunAhong1993 已提交
659
                    if output_shape:
660 661
                        assume_pad |= output_shape and 2 * len(
                            output_shape) == pads_len  # NCHW
S
fix  
SunAhong1993 已提交
662 663 664
                    if assume_pad:
                        if pads_len == 4:
                            self.paddle_graph.add_layer(
665 666 667 668
                                "custom_layer:PadAllDim2",
                                inputs={'x': val_x.name,
                                        'pad': val_pad.name},
                                outputs=layer_outputs,
S
fix  
SunAhong1993 已提交
669 670 671 672 673 674
                                value=value,
                                mode=string(mode))
                        else:
                            raise Exception("The padding value is wrong!")
            elif pads_len == 8:
                if data_shape:
675 676
                    assume_pad |= data_shape and 2 * len(
                        data_shape) == pads_len  # NCHW
S
fix  
SunAhong1993 已提交
677
                if output_shape:
678 679
                    assume_pad |= output_shape and 2 * len(
                        output_shape) == pads_len  # NCHW
S
fix  
SunAhong1993 已提交
680 681
                if assume_pad:
                    self.paddle_graph.add_layer(
682 683 684 685
                        "custom_layer:PadAllDim4",
                        inputs={'x': val_x.name,
                                'pad': val_pad.name},
                        outputs=layer_outputs,
S
fix  
SunAhong1993 已提交
686 687 688
                        value=value,
                        mode=string(mode))
            else:
689
                raise Exception("The padding value is wrong!")
S
SunAhong1993 已提交
690 691
            if not op_independent:
                return node.name + '_paded'
S
SunAhong1993 已提交
692 693 694 695 696

    @print_mapping_info
    def Unsqueeze(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        axes = node.get_attr('axes')
697 698
        if axes is None:
            axes = self.graph.get_input_node(node, idx=1, copy=True)
Y
fix  
yeliang2258 已提交
699 700 701 702 703 704 705
        if len(val_x.out_shapes[0]) == 0 and len(axes) == 1 and axes[0] == 0:
            if node.name:
                self.paddle_graph.add_layer(
                    'paddle.reshape',
                    inputs={"x": val_x.name},
                    outputs=[node.name],
                    shape=[1])
S
SunAhong1993 已提交
706
        else:
Y
fix  
yeliang2258 已提交
707 708 709 710 711 712 713 714 715 716 717 718
            if isinstance(axes, list) or isinstance(axes, tuple):
                self.paddle_graph.add_layer(
                    'paddle.unsqueeze',
                    inputs={"x": val_x.name},
                    axis=axes,
                    outputs=[node.name])
            else:
                self.paddle_graph.add_layer(
                    'paddle.unsqueeze',
                    inputs={"x": val_x.name,
                            "axis": axes.name},
                    outputs=[node.name])
S
SunAhong1993 已提交
719 720 721 722 723 724 725 726

    @print_mapping_info
    def Shrink(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        bias = node.get_attr('bias')
        lambd = node.get_attr('lambd')
        assert bias == 0.0, 'not support bias!=0'
        self.paddle_graph.add_layer(
727 728 729
            'paddle.nn.functional.hardshrink',
            inputs={"x": val_x.name},
            outputs=[node.name],
S
SunAhong1993 已提交
730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750
            threshold=lambd)

    @print_mapping_info
    def Constant(self, node):
        val_output = self.graph.get_node(node.layer.output[0], copy=True)

        value = node.get_attr('value')
        dtype = np.dtype(value.dtype)
        output_dtype = val_output.dtype
        if output_dtype:
            assert dtype == output_dtype, 'tensor dtype unmatches storage dtype'

        shape = node.get_attr('shape', None)

        if shape is None:
            shape = val_output.out_shapes[0]
        if shape is None:
            shape = list(value.shape)
            _logger.warning('in (Constant -> %s): '
                            'attribute "shape" of %s not inferred, '
                            'using value as 1-D tensor may lead to fails',
S
SunAhong1993 已提交
751
                            val_output.name, val_output.name)
S
SunAhong1993 已提交
752 753 754 755
        if len(value) == 1:
            value = value.tolist()
            value = value[0]
            self.paddle_graph.add_layer(
756 757
                "paddle.full",
                inputs={},
S
SunAhong1993 已提交
758
                outputs=[node.name],
S
SunAhong1993 已提交
759 760 761 762 763
                dtype=string(dtype),
                shape=[1],
                fill_value=value)
        else:
            value = np.reshape(value, shape)
S
SunAhong1993 已提交
764
            self.weights[node.name] = value
S
SunAhong1993 已提交
765 766 767
            self.paddle_graph.add_layer(
                "self.create_parameter",
                inputs={},
S
SunAhong1993 已提交
768
                outputs=[node.name],
S
SunAhong1993 已提交
769
                shape=shape,
S
SunAhong1993 已提交
770
                attr=string(node.name),
S
SunAhong1993 已提交
771 772 773 774 775 776 777 778 779 780 781 782 783 784
                dtype=string(dtype),
                default_initializer="paddle.nn.initializer.Constant(value=0.0)")

    @print_mapping_info
    def Resize(self, node):
        self._interpolate(node)

    @print_mapping_info
    def Upsample(self, node):
        self._interpolate(node)

    @print_mapping_info
    def InstanceNormalization(self, node):
        op_name = name_generator("instanse_norm", self.nn_name2id)
S
SunAhong1993 已提交
785
        output_name = node.name
S
SunAhong1993 已提交
786 787 788 789 790
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_scale = self.graph.get_input_node(node, idx=1, copy=True)
        val_b = self.graph.get_input_node(node, idx=2, copy=True)
        epsilon = node.get_attr('epsilon', 1e-5)
791 792
        self.weights[op_name + '.scale'] = self.weights[val_scale.name]
        self.weights[op_name + '.bias'] = self.weights[val_b.name]
S
SunAhong1993 已提交
793 794 795 796 797
        layer_attrs = {
            'num_features': node.out_shapes[0][1],
            'epsilon': epsilon,
        }
        dim = len(val_x.out_shapes[0])
S
SunAhong1993 已提交
798
        if dim == 3:
S
SunAhong1993 已提交
799 800 801 802 803 804
            paddle_op = "paddle.nn.InstanceNorm1D"
        elif dim == 4:
            paddle_op = "paddle.nn.InstanceNorm2D"
        elif dim == 5:
            paddle_op = "paddle.nn.InstanceNorm3D"
        else:
805 806 807
            raise Exception(
                "The paddle only support 2D, 3D, 4D or 5D input in InstanceNormalization."
            )
S
SunAhong1993 已提交
808
        self.paddle_graph.add_layer(
809 810 811
            paddle_op,
            inputs={"x": val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
812 813 814 815 816 817 818
            **layer_attrs)

    @print_mapping_info
    def Expand(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_shape = self.graph.get_input_node(node, idx=1, copy=True)
        val_x_dtype = val_x.dtype
S
SunAhong1993 已提交
819
        name_ones = node.name + '_ones'
Y
yeliang2258 已提交
820 821 822 823 824 825 826 827 828 829 830 831 832
        shape_values = _const_weight_or_none(val_shape)
        if shape_values is None:
            attr_ones = {
                'shape': val_shape.name,
                'dtype': string(val_x_dtype),
                'fill_value': 1
            }
        else:
            attr_ones = {
                'shape': shape_values.tolist(),
                'dtype': string(val_x_dtype),
                'fill_value': 1
            }
S
SunAhong1993 已提交
833
        self.paddle_graph.add_layer(
834 835
            'paddle.full', inputs={}, outputs=[name_ones], **attr_ones)
        inputs_dict = {'x': name_ones, 'y': val_x.name}
S
SunAhong1993 已提交
836
        self.paddle_graph.add_layer(
837
            'paddle.multiply', inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
838

Y
yeliang2258 已提交
839 840 841 842 843 844 845 846
    @print_mapping_info
    def GatherND(self, node):
        x = self.graph.get_input_node(node, idx=0, copy=True)
        index = self.graph.get_input_node(node, idx=1, copy=True)
        inputs = {'x': x.name, 'index': index.name}
        self.paddle_graph.add_layer(
            "paddle.gather_nd", inputs=inputs, outputs=[node.name])

S
SunAhong1993 已提交
847 848 849 850 851 852 853 854 855 856 857 858
    @print_mapping_info
    def Gather(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        indices = self.graph.get_input_node(node, idx=1, copy=True)
        indices_shape = indices.out_shapes[0]
        axis = node.get_attr('axis', 0)
        #assert len(
        #    indices_shape) <= 2, "Gather op don't support dim of indice >2 "
        if axis == 0 and len(indices_shape) <= 1:
            if len(val_x.out_shapes[0]) <= 1:
                self.paddle_graph.add_layer(
                    'paddle.gather',
S
SunAhong1993 已提交
859 860 861
                    inputs={'x': val_x.name,
                            'index': indices.name},
                    outputs=[node.name])
S
SunAhong1993 已提交
862 863
            elif len(val_x.out_shapes[0]) > 1:
                if len(indices_shape) == 0:
Y
yeliang2258 已提交
864 865 866 867 868
                    self.paddle_graph.add_layer(
                        'paddle.reshape',
                        inputs={"x": indices.name},
                        outputs=[indices.name],
                        shape=[-1, ])
S
SunAhong1993 已提交
869
                    gather_ = node.name + '_1'
S
SunAhong1993 已提交
870 871
                    self.paddle_graph.add_layer(
                        'paddle.gather',
S
SunAhong1993 已提交
872 873
                        inputs={'x': val_x.name,
                                'index': indices.name},
S
SunAhong1993 已提交
874 875 876 877
                        outputs=[gather_])
                    self.paddle_graph.add_layer(
                        'paddle.squeeze',
                        inputs={'x': gather_},
S
SunAhong1993 已提交
878
                        outputs=[node.name],
S
SunAhong1993 已提交
879 880 881 882
                        axis=[0])
                else:
                    self.paddle_graph.add_layer(
                        'paddle.gather',
S
SunAhong1993 已提交
883 884 885
                        inputs={'x': val_x.name,
                                'index': indices.name},
                        outputs=[node.name])
S
SunAhong1993 已提交
886 887 888
        elif axis > 0 and len(indices_shape) <= 1:
            perm = list(range(len(val_x.out_shapes[0])))
            perm = [axis] + perm[:axis] + perm[axis + 1:]
S
SunAhong1993 已提交
889
            name_trans = val_x.name + '_trans'
S
SunAhong1993 已提交
890 891
            self.paddle_graph.add_layer(
                'paddle.transpose',
S
SunAhong1993 已提交
892
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
893 894 895 896 897
                outputs=[name_trans],
                perm=perm)
            self.paddle_graph.add_layer(
                'paddle.gather',
                inputs={'x': name_trans,
S
SunAhong1993 已提交
898 899
                        'index': indices.name},
                outputs=[node.name])
S
SunAhong1993 已提交
900 901 902
            new_perm = [0] * len(perm)
            for i in range(len(perm)):
                new_perm[perm[i]] = i
S
SunAhong1993 已提交
903
            self.paddle_graph.add_layer(
904 905 906
                'paddle.transpose',
                inputs={"x": node.name},
                outputs=[node.name],
S
SunAhong1993 已提交
907
                perm=new_perm)
S
SunAhong1993 已提交
908 909 910
            if len(indices_shape) < 1:
                self.paddle_graph.add_layer(
                    'paddle.squeeze',
S
SunAhong1993 已提交
911 912
                    inputs={'x': node.name},
                    outputs=[node.name],
S
SunAhong1993 已提交
913 914 915 916
                    axis=[axis])
        elif axis == 0 and len(indices_shape) > 1:
            if val_x.out_shapes[0] is not None and isinstance(
                    val_x, ONNXGraphDataNode):
S
SunAhong1993 已提交
917
                indices_cast = indices.name + '_cast'
S
SunAhong1993 已提交
918 919
                self.paddle_graph.add_layer(
                    'paddle.cast',
S
SunAhong1993 已提交
920
                    inputs={"x": indices.name},
S
SunAhong1993 已提交
921
                    outputs=[indices_cast],
S
SunAhong1993 已提交
922 923
                    dtype=string('int64'))
                op_name = name_generator("embedding", self.nn_name2id)
S
SunAhong1993 已提交
924
                output_name = node.name
S
SunAhong1993 已提交
925
                layer_outputs = [op_name, output_name]
C
Channingss 已提交
926
                self.weights[op_name + '.weight'] = _const_weight_or_none(val_x)
S
SunAhong1993 已提交
927 928 929 930
                self.paddle_graph.add_layer(
                    'paddle.nn.Embedding',
                    inputs={"x": indices_cast},
                    outputs=layer_outputs,
S
fix  
SunAhong1993 已提交
931 932
                    num_embeddings=val_x.out_shapes[0][0],
                    embedding_dim=val_x.out_shapes[0][1])
S
SunAhong1993 已提交
933 934 935
            else:
                from functools import reduce
                reshape_shape = reduce(lambda x, y: x * y, indices_shape)
S
SunAhong1993 已提交
936
                indices_reshape = indices.name + '_shape'
S
SunAhong1993 已提交
937 938
                self.paddle_graph.add_layer(
                    'paddle.reshape',
S
SunAhong1993 已提交
939
                    inputs={"x": indices.name},
S
SunAhong1993 已提交
940 941 942 943 944 945
                    outputs=[indices_reshape],
                    shape=[reshape_shape, ])

                perm = list(range(len(val_x.out_shapes[0])))
                self.paddle_graph.add_layer(
                    'paddle.gather',
S
SunAhong1993 已提交
946
                    inputs={'x': val_x.name,
S
SunAhong1993 已提交
947
                            'index': indices_reshape},
S
SunAhong1993 已提交
948
                    outputs=[node.name])
S
SunAhong1993 已提交
949 950 951 952 953 954 955 956
                val_x_shape = val_x.out_shapes[0]
                reshaped_shape = []
                for i in perm:
                    reshaped_shape.append(indices_shape[i])
                for i in val_x_shape[:axis] + val_x_shape[axis + 1:]:
                    reshaped_shape.append(i)
                self.paddle_graph.add_layer(
                    'paddle.reshape',
S
SunAhong1993 已提交
957 958
                    inputs={"x": node.name},
                    outputs=[node.name],
S
SunAhong1993 已提交
959 960 961 962
                    shape=reshaped_shape)
        elif axis > 0 and len(indices_shape) > 1:
            from functools import reduce
            reshape_shape = reduce(lambda x, y: x * y, indices_shape)
S
SunAhong1993 已提交
963
            indices_reshape = indices.name + '_shape'
S
SunAhong1993 已提交
964 965
            self.paddle_graph.add_layer(
                'paddle.reshape',
S
SunAhong1993 已提交
966
                inputs={"x": indices.name},
S
SunAhong1993 已提交
967 968 969 970 971
                outputs=[indices_reshape],
                shape=[reshape_shape, ])

            perm = list(range(len(val_x.out_shapes[0])))
            perm = [axis] + perm[:axis] + perm[axis + 1:]
S
SunAhong1993 已提交
972
            name_trans = val_x.name + '_transpose'
S
SunAhong1993 已提交
973 974
            self.paddle_graph.add_layer(
                'paddle.transpose',
S
SunAhong1993 已提交
975
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
976 977 978 979 980 981
                outputs=[name_trans],
                perm=perm)
            self.paddle_graph.add_layer(
                'paddle.gather',
                inputs={'x': name_trans,
                        'index': indices_reshape},
S
SunAhong1993 已提交
982 983
                outputs=[node.name])
            input_transpose = node.name + '_transpose'
S
SunAhong1993 已提交
984 985 986
            new_perm = [0] * len(perm)
            for i in range(len(perm)):
                new_perm[perm[i]] = i
S
SunAhong1993 已提交
987 988
            self.paddle_graph.add_layer(
                'paddle.transpose',
S
SunAhong1993 已提交
989
                inputs={"x": node.name},
S
SunAhong1993 已提交
990
                outputs=[input_transpose],
S
SunAhong1993 已提交
991 992
                perm=new_perm)
            perm = new_perm
S
SunAhong1993 已提交
993 994 995 996 997 998 999 1000 1001
            val_x_shape = val_x.out_shapes[0]
            reshaped_shape = []
            for i in perm:
                reshaped_shape.append(indices_shape[i])
            for i in val_x_shape[:axis] + val_x_shape[axis + 1:]:
                reshaped_shape.append(i)
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": input_transpose},
S
SunAhong1993 已提交
1002
                outputs=[node.name],
S
SunAhong1993 已提交
1003 1004 1005 1006 1007 1008 1009 1010 1011 1012
                shape=reshaped_shape)

    @print_mapping_info
    def ScatterND(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        indices = self.graph.get_input_node(node, idx=1, copy=True)
        updates = self.graph.get_input_node(node, idx=2, copy=True)
        if len(indices.out_shapes[0]) == 1:
            self.paddle_graph.add_layer(
                'paddle.scatter',
1013 1014 1015 1016 1017
                inputs={
                    'x': val_x.name,
                    'index': indices.name,
                    'updates': updates.name
                },
S
SunAhong1993 已提交
1018
                outputs=[node.name])
S
SunAhong1993 已提交
1019
        else:
S
SunAhong1993 已提交
1020
            input_inner_indices = node.name + '_input_inner_indices'
S
SunAhong1993 已提交
1021 1022 1023
            shape = val_x.out_shapes[0]
            self.paddle_graph.add_layer(
                'paddle.reshape',
S
SunAhong1993 已提交
1024 1025
                inputs={"x": indices.name},
                outputs=[indices.name],
S
SunAhong1993 已提交
1026 1027
                shape=indices.out_shapes[0])

S
SunAhong1993 已提交
1028
            zeros_like_val_x = val_x.name + '_zeros'
S
SunAhong1993 已提交
1029 1030
            self.paddle_graph.add_layer(
                'paddle.zeros_like',
S
SunAhong1993 已提交
1031
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1032 1033 1034 1035 1036
                outputs=[zeros_like_val_x])
            self.paddle_graph.add_layer(
                'paddle.scatter_nd_add',
                inputs={
                    'x': zeros_like_val_x,
S
SunAhong1993 已提交
1037 1038
                    'index': indices.name,
                    'updates': updates.name
S
SunAhong1993 已提交
1039 1040
                },
                outputs=[input_inner_indices])
S
SunAhong1993 已提交
1041 1042
            indices_mask = node.name + '_indices_mask'
            constant_minus_one = node.name + '_constant_minus_one'
S
SunAhong1993 已提交
1043 1044 1045
            # full_like support create tensor shape like input tensor
            self.paddle_graph.add_layer(
                'paddle.full_like',
S
SunAhong1993 已提交
1046
                inputs={"x": updates.name},
S
SunAhong1993 已提交
1047 1048 1049 1050 1051 1052 1053
                outputs=[constant_minus_one],
                dtype=string(updates.dtype),
                fill_value=-1)
            self.paddle_graph.add_layer(
                'paddle.scatter_nd_add',
                inputs={
                    'x': zeros_like_val_x,
S
SunAhong1993 已提交
1054
                    'index': indices.name,
S
SunAhong1993 已提交
1055 1056 1057
                    'updates': constant_minus_one
                },
                outputs=[indices_mask])
S
SunAhong1993 已提交
1058
            constant_one = node.name + '_constant_1'
S
SunAhong1993 已提交
1059 1060 1061
            # full_like support create tensor shape like input tensor
            self.paddle_graph.add_layer(
                'paddle.full_like',
S
SunAhong1993 已提交
1062
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1063 1064 1065
                outputs=[constant_one],
                dtype=string(val_x.dtype),
                fill_value=1)
S
SunAhong1993 已提交
1066
            input_out_indices_mask = node.name + '_input_out_indices_mask'
S
SunAhong1993 已提交
1067 1068 1069 1070 1071 1072
            self.paddle_graph.add_layer(
                "paddle.add",
                inputs={"x": indices_mask,
                        "y": constant_one},
                outputs=[input_out_indices_mask])

S
SunAhong1993 已提交
1073
            input_out_indices = node.name + '_input_out_indices'
S
SunAhong1993 已提交
1074 1075
            self.paddle_graph.add_layer(
                "paddle.multiply",
S
SunAhong1993 已提交
1076
                inputs={"x": val_x.name,
S
SunAhong1993 已提交
1077 1078 1079 1080 1081 1082 1083
                        "y": input_out_indices_mask},
                outputs=[input_out_indices])

            self.paddle_graph.add_layer(
                "paddle.add",
                inputs={"x": input_inner_indices,
                        "y": input_out_indices},
S
SunAhong1993 已提交
1084
                outputs=[node.name])
S
SunAhong1993 已提交
1085 1086 1087 1088 1089 1090 1091

    @print_mapping_info
    def Range(self, node):
        val_start = self.graph.get_input_node(node, idx=0, copy=True)
        val_limit = self.graph.get_input_node(node, idx=1, copy=True)
        val_delta = self.graph.get_input_node(node, idx=2, copy=True)
        dtype = val_start.dtype
1092 1093 1094 1095 1096
        inputs = {
            'start': val_start.name,
            'end': val_limit.name,
            'step': val_delta.name
        }
S
SunAhong1993 已提交
1097 1098 1099
        self.paddle_graph.add_layer(
            'paddle.arange',
            inputs=inputs,
S
SunAhong1993 已提交
1100
            outputs=[node.name],
S
SunAhong1993 已提交
1101 1102 1103 1104 1105 1106 1107 1108 1109 1110 1111
            dtype=string(dtype))

    @print_mapping_info
    def Slice(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        starts, ends, axes, steps = None, None, None, None
        layer_attrs = {}
        if len(node.inputs) > 1:
            starts = self.graph.get_input_node(node, idx=1, copy=True)
            ends = self.graph.get_input_node(node, idx=2, copy=True)
            starts_value = _const_weight_or_none(starts)
S
fix  
SunAhong1993 已提交
1112 1113
            if starts_value is not None:
                starts_value = starts_value.tolist()
S
SunAhong1993 已提交
1114
            ends_value = _const_weight_or_none(ends)
S
fix  
SunAhong1993 已提交
1115 1116 1117 1118 1119
            if ends_value is not None:
                ends_value = ends_value.tolist()
            if len(node.inputs) > 2:
                s_len = len(val_x.out_shapes[0])
                axes = list(range(s_len))
S
SunAhong1993 已提交
1120
            if len(node.inputs) > 3:
S
fix  
SunAhong1993 已提交
1121 1122
                axes_node = self.graph.get_input_node(node, idx=3, copy=True)
                axes = _const_weight_or_none(axes_node, necessary=True).tolist()
S
SunAhong1993 已提交
1123 1124
            if len(node.inputs) > 4:
                steps = self.graph.get_input_node(node, idx=4, copy=True)
S
fix  
SunAhong1993 已提交
1125
                steps = _const_weight_or_none(steps).tolist()
1126

S
SunAhong1993 已提交
1127 1128
            layer_attrs = {
                "axes": axes,
S
SunAhong1993 已提交
1129 1130
                "starts": starts.name,
                "ends": ends.name
S
SunAhong1993 已提交
1131
            }
S
SunAhong1993 已提交
1132
            if starts_value is not None and ends_value is not None and axes is not None:
S
SunAhong1993 已提交
1133 1134 1135
                starts_value = starts_value.copy()
                ends_value = ends_value.copy()
                for idx in range(len(ends_value)):
1136 1137
                    if starts_value[idx] >= val_x.out_shapes[0][axes[
                            idx]] and val_x.out_shapes[0][axes[idx]] > 0:
S
SunAhong1993 已提交
1138 1139 1140 1141
                        starts_value[idx] = val_x.out_shapes[0][axes[idx]] - 1
                        ends_value[idx] = val_x.out_shapes[0][axes[idx]]
                    elif ends_value[idx] > 2**31 - 1:
                        ends_value[idx] = 2**31 - 1
1142

S
SunAhong1993 已提交
1143 1144 1145 1146 1147 1148 1149
                layer_attrs = {
                    "axes": axes,
                    "starts": starts_value,
                    "ends": ends_value
                }
            else:
                if starts.dtype != 'int32':
S
SunAhong1993 已提交
1150
                    starts_cast = starts.name + '_cast'
S
SunAhong1993 已提交
1151 1152
                    self.paddle_graph.add_layer(
                        'paddle.cast',
S
SunAhong1993 已提交
1153
                        inputs={"x": starts.name},
S
SunAhong1993 已提交
1154 1155 1156 1157
                        outputs=[starts_cast],
                        dtype=string('int32'))
                    layer_attrs['starts'] = starts_cast
                if ends.dtype != 'int32':
S
SunAhong1993 已提交
1158
                    ends_cast = ends.name + '_cast'
S
SunAhong1993 已提交
1159 1160
                else:
                    ends_cast = ends.name
S
SunAhong1993 已提交
1161 1162
                self.paddle_graph.add_layer(
                    'paddle.cast',
S
SunAhong1993 已提交
1163
                    inputs={"x": ends.name},
S
SunAhong1993 已提交
1164 1165 1166 1167 1168 1169 1170
                    outputs=[ends_cast],
                    dtype=string('int32'))
                layer_attrs['ends'] = ends_cast
        else:
            starts = node.get_attr('starts')
            ends = node.get_attr('ends')
            axes = node.get_attr('axes')
Y
yeliang2258 已提交
1171 1172 1173 1174
            output_shape = val_x.out_shapes[0]

            if axes is None:
                axes = [i for i in range(len(starts))]
S
SunAhong1993 已提交
1175 1176 1177 1178 1179 1180 1181 1182
            for idx in range(len(ends)):
                if ends[idx] > 2**31 - 1:
                    ends[idx] = 2**31 - 1
            layer_attrs = {"axes": axes, "starts": starts, "ends": ends}

        if steps is not None:
            layer_attrs['strides'] = steps
            self.paddle_graph.add_layer(
1183 1184 1185
                'paddle.strided_slice',
                inputs={"x": val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1186 1187 1188
                **layer_attrs)
        else:
            self.paddle_graph.add_layer(
1189 1190 1191
                'paddle.slice',
                inputs={"input": val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1192 1193 1194 1195 1196 1197 1198 1199 1200 1201 1202 1203 1204 1205
                **layer_attrs)

    @print_mapping_info
    def ConstantOfShape(self, node):
        val_shape = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_node(node.layer.output[0], copy=True)

        value = node.get_attr('value')
        dtype = value.dtype
        value = value.tolist()
        assert len(value) == 1, ('given value not Scalar, shape of value > 1, '
                                 'this is not supported')
        if len(value) == 1:
            value = value[0]
1206
            layer_attrs = {'dtype': string(dtype), 'fill_value': value}
S
SunAhong1993 已提交
1207
            self.paddle_graph.add_layer(
1208 1209
                "paddle.full",
                inputs={'shape': val_shape.name},
S
SunAhong1993 已提交
1210
                outputs=[node.name],
S
SunAhong1993 已提交
1211 1212
                **layer_attrs)

Y
yeliang2258 已提交
1213 1214 1215 1216 1217 1218 1219 1220 1221 1222
    @print_mapping_info
    def GatherND(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.gather_nd",
            inputs={"x": val_x.name,
                    "index": val_y.name},
            outputs=[node.name])

S
SunAhong1993 已提交
1223 1224 1225 1226 1227 1228 1229 1230 1231 1232 1233 1234
    @print_mapping_info
    def Clip(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_node(node.layer.output[0], copy=True)
        max_value, min_value = None, None
        if len(node.inputs) == 1:
            max_value = node.get_attr('max')
            min_value = node.get_attr('min')
            layer_attrs = {
                'max': max_value,
                'min': min_value,
            }
1235

S
SunAhong1993 已提交
1236
            self.paddle_graph.add_layer(
1237 1238 1239
                'paddle.clip',
                inputs={"x": val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1240 1241
                **layer_attrs)
        else:
Y
yeliang2258 已提交
1242 1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256
            if len(node.inputs) == 2:
                val_ipt = self.graph.get_input_node(node, idx=1, copy=True)

                index = node.get_input_index(val_ipt.name)

                val_value = _const_weight_or_none(val_ipt)
                if val_value.shape == (1, ):
                    val_value = val_value[0]

                if index == 1:
                    layer_attrs = {'min': val_value}

                if index == 2:
                    layer_attrs = {'max': val_value}

1257 1258 1259 1260 1261 1262
                self.paddle_graph.add_layer(
                    'paddle.clip',
                    inputs={"x": val_x.name},
                    outputs=[node.name],
                    **layer_attrs)
            else:
Y
yeliang2258 已提交
1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275
                if len(node.inputs) == 3:
                    min_ipt = self.graph.get_input_node(node, idx=1, copy=True)
                    max_ipt = self.graph.get_input_node(node, idx=2, copy=True)
                    self.paddle_graph.add_layer(
                        'paddle.clip',
                        inputs={
                            "x": val_x.name,
                            "min": min_ipt.name,
                            "max": max_ipt.name
                        },
                        outputs=[node.name])
                else:
                    raise Exception("max_value or min_value can't be None")
S
SunAhong1993 已提交
1276

1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294 1295 1296 1297 1298 1299 1300 1301 1302 1303 1304 1305 1306 1307 1308 1309 1310 1311 1312 1313 1314 1315 1316 1317 1318 1319 1320 1321 1322 1323 1324 1325 1326 1327 1328 1329 1330 1331 1332 1333 1334 1335 1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352 1353 1354 1355 1356 1357 1358 1359 1360 1361 1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372 1373 1374 1375 1376 1377 1378 1379 1380 1381 1382 1383 1384 1385 1386 1387 1388 1389 1390 1391 1392 1393 1394 1395 1396 1397
    @print_mapping_info
    def ReduceSum(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        if len(node.inputs) == 1:
            keepdims = node.get_attr('keepdims')
            if keepdims is None:
                keepdims = True
            axes_value = node.get_attr('axes')
            layer_attrs = {'axis': axes_value, 'keepdim': keepdims}
            self.paddle_graph.add_layer(
                'paddle.sum',
                inputs={"x": val_x.name},
                outputs=[node.name],
                **layer_attrs)
        else:
            axes = self.graph.get_input_node(node, idx=1, copy=True)
            axes_value = _const_weight_or_none(axes)
            if axes_value.shape == (1, ):
                axes_value = axes_value[0]
            keepdims = node.get_attr('keepdims')
            if keepdims is None:
                layer_attrs = {'axis': axes_value}
            else:
                layer_attrs = {'axis': axes_value, 'keepdim': keepdims}

            self.paddle_graph.add_layer(
                'paddle.sum',
                inputs={"x": val_x.name},
                outputs=[node.name],
                **layer_attrs)

    @print_mapping_info
    def Max(self, node):
        if len(node.inputs) == 2:
            val_x = self.graph.get_input_node(node, idx=0, copy=True)
            val_y = self.graph.get_input_node(node, idx=1, copy=True)
            self.paddle_graph.add_layer(
                "paddle.maximum",
                inputs={"x": val_x.name,
                        "y": val_y.name},
                outputs=[node.name])
        else:
            val_x = self.graph.get_input_node(node, idx=0, copy=True)
            temp_name = "max_"
            for i in range(1, len(node.inputs)):
                val_y = self.graph.get_input_node(node, idx=i, copy=True)
                temp_name = temp_name + str(i)
                if i == len(node.inputs) - 1:
                    self.paddle_graph.add_layer(
                        "paddle.maximum",
                        inputs={"x": val_x.name,
                                "y": val_y.name},
                        outputs=[node.name])
                else:
                    self.paddle_graph.add_layer(
                        "paddle.maximum",
                        inputs={"x": val_x.name,
                                "y": val_y.name},
                        outputs=[temp_name])
                val_x.name = temp_name

    @print_mapping_info
    def Min(self, node):
        if len(node.inputs) == 2:
            val_x = self.graph.get_input_node(node, idx=0, copy=True)
            val_y = self.graph.get_input_node(node, idx=1, copy=True)
            self.paddle_graph.add_layer(
                "paddle.minimum",
                inputs={"x": val_x.name,
                        "y": val_y.name},
                outputs=[node.name])
        else:
            val_x = self.graph.get_input_node(node, idx=0, copy=True)
            temp_name = "min_"
            for i in range(1, len(node.inputs)):
                val_y = self.graph.get_input_node(node, idx=i, copy=True)
                temp_name = temp_name + str(i)
                if i == len(node.inputs) - 1:
                    self.paddle_graph.add_layer(
                        "paddle.minimum",
                        inputs={"x": val_x.name,
                                "y": val_y.name},
                        outputs=[node.name])
                else:
                    self.paddle_graph.add_layer(
                        "paddle.minimum",
                        inputs={"x": val_x.name,
                                "y": val_y.name},
                        outputs=[temp_name])
                val_x.name = temp_name

    @print_mapping_info
    def GreaterOrEqual(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.greater_equal",
            inputs={"x": val_x.name,
                    "y": val_y.name},
            outputs=[node.name])

    @print_mapping_info
    def GatherND(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.gather_nd",
            inputs={"x": val_x.name,
                    "index": val_y.name},
            outputs=[node.name])

    @print_mapping_info
    def And(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.logical_and",
            inputs={"x": val_x.name,
                    "y": val_y.name},
            outputs=[node.name])

S
SunAhong1993 已提交
1398 1399 1400 1401 1402 1403
    @print_mapping_info
    def Split(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        paddle_op = 'split'
        split = node.get_attr('split')
        axis = node.get_attr('axis', 0)
Y
yeliang2258 已提交
1404 1405 1406 1407 1408 1409 1410 1411 1412
        if split is None:
            split_num = len(node.layer.output)
            layer_attrs = {
                'num_or_sections': split_num,
                'axis': axis,
            }
            outputs_list = list()
            for i in range(len(node.layer.output)):
                if hasattr(node, 'index'):
S
SunAhong1993 已提交
1413
                    outputs_list.append("{}_p{}".format(node.layer_name, i))
Y
yeliang2258 已提交
1414 1415 1416 1417 1418 1419 1420 1421 1422 1423 1424 1425 1426 1427 1428
                else:
                    outputs_list.append("{}".format(node.layer_name))
            if split_num > 1:
                self.paddle_graph.add_layer(
                    'paddle.split',
                    inputs={"x": val_x.name},
                    outputs=outputs_list,
                    **layer_attrs)
            else:
                self.paddle_graph.add_layer(
                    "paddle.cast",
                    inputs={"x": val_x.name},
                    outputs=outputs_list,
                    dtype=string(val_x.dtype))

S
SunAhong1993 已提交
1429
        else:
Y
yeliang2258 已提交
1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440
            layer_attrs = {
                'num_or_sections': split,
                'axis': axis,
            }
            outputs_list = list()
            if isinstance(split, list) or isinstance(split, tuple):
                if len(split) == 1:
                    outputs_list.append(node.name)
                else:
                    for i in range(len(split)):
                        outputs_list.append("{}_p{}".format(node.layer_name, i))
1441
            else:
Y
yeliang2258 已提交
1442 1443 1444 1445 1446 1447
                outputs_list.append(node.name)
            self.paddle_graph.add_layer(
                'paddle.split',
                inputs={"x": val_x.name},
                outputs=outputs_list,
                **layer_attrs)
S
SunAhong1993 已提交
1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459

    @print_mapping_info
    def Reshape(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_shape = self.graph.get_input_node(node, idx=1, copy=True)
        val_reshaped = self.graph.get_node(node.layer.output[0], copy=True)
        shape_value = _const_weight_or_none(val_shape)
        shape_dims = len(val_shape.out_shapes[0])

        if shape_value is not None:
            self.paddle_graph.add_layer(
                'paddle.reshape',
S
SunAhong1993 已提交
1460 1461
                inputs={'x': val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1462 1463 1464 1465 1466
                shape=shape_value.tolist())
        elif len(node.out_shapes[0]) > 0 and _is_static_shape(node.out_shapes[
                0]):
            self.paddle_graph.add_layer(
                'paddle.reshape',
S
SunAhong1993 已提交
1467 1468
                inputs={'x': val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1469 1470 1471 1472 1473 1474
                shape=node.out_shapes[0])
        else:
            # shape may be [], come form Gather by scalar indices
            if len(val_shape.out_shapes[0]) > 0:
                self.paddle_graph.add_layer(
                    'paddle.reshape',
S
SunAhong1993 已提交
1475 1476
                    inputs={'x': val_shape.name},
                    outputs=[val_shape.name],
S
SunAhong1993 已提交
1477
                    shape=val_shape.out_shapes[0])
S
fix  
SunAhong1993 已提交
1478 1479 1480 1481 1482 1483
            if val_shape.dtype != "int32":
                self.paddle_graph.add_layer(
                    'paddle.cast',
                    inputs={'x': val_shape.name},
                    outputs=[val_shape.name],
                    dtype=string("int32"))
S
SunAhong1993 已提交
1484 1485
            self.paddle_graph.add_layer(
                'paddle.reshape',
S
SunAhong1993 已提交
1486 1487
                inputs={'x': val_x.name,
                        'shape': val_shape.name},
S
SunAhong1993 已提交
1488
                outputs=[node.name])
S
SunAhong1993 已提交
1489 1490 1491 1492 1493 1494 1495 1496 1497 1498 1499 1500 1501 1502

    @print_mapping_info
    def Cast(self, node):
        val_input = self.graph.get_input_node(node, idx=0, copy=True)
        val_output = self.graph.get_node(node.layer.output[0], copy=True)

        dtype = node.get_attr('to')
        if not isinstance(dtype, np.dtype):
            dtype = TENSOR_TYPE_TO_NP_TYPE[dtype]

        output_dtype = val_output.dtype
        if output_dtype:
            assert dtype == output_dtype, 'dtype of to unmatches output'
        self.paddle_graph.add_layer(
1503 1504 1505
            'paddle.cast',
            inputs={'x': val_input.name},
            outputs=[node.name],
S
SunAhong1993 已提交
1506 1507 1508 1509 1510
            dtype=string(dtype))

    @print_mapping_info
    def Not(self, node):
        val_input = self.graph.get_input_node(node, idx=0, copy=True)
1511 1512 1513 1514
        self.paddle_graph.add_layer(
            'paddle.logical_not',
            inputs={'x': val_input.name},
            outputs=[node.name])
S
SunAhong1993 已提交
1515 1516 1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527 1528 1529 1530 1531 1532 1533 1534 1535 1536 1537

    @print_mapping_info
    def AveragePool(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)

        auto_pad = node.get_attr('auto_pad', 'NOTSET')
        kernel_shape = node.get_attr("kernel_shape")
        poolnd = len(kernel_shape)
        strides = node.get_attr("strides")
        pad_mode = node.get_attr("pads")
        ceil_mode = bool(node.get_attr('ceil_mode', 0))
        pads = node.get_attr('pads', [0] * (poolnd * 2))

        paddings, val_x = self._pad_if_asymmetric(node, pads, val_x)

        if auto_pad == "SAME_UPPER" or auto_pad == "SAME_LOWER":
            input_shape = val_x.out_shapes[0]
            pad_h = _get_same_padding(input_shape[2], kernel_shape[0],
                                      strides[0])
            pad_w = _get_same_padding(input_shape[3], kernel_shape[1],
                                      strides[1])
            paddings = pad_h + pad_w

S
SunAhong1993 已提交
1538 1539 1540 1541 1542
        op_name = name_generator("pool", self.nn_name2id)
        output_name = node.name
        layer_outputs = [op_name, output_name]
        paddle_op = 'paddle.nn.AvgPool{}D'.format(poolnd)
        assert 1 <= poolnd <= 3, 'only Pool1D, Pool2D and Pool3D are supported'
S
SunAhong1993 已提交
1543
        layer_attrs = {
S
SunAhong1993 已提交
1544 1545 1546
            "kernel_size": kernel_shape,
            "stride": strides,
            "padding": paddings,
S
SunAhong1993 已提交
1547 1548 1549 1550
            "ceil_mode": ceil_mode,
            "exclusive": 'True',
        }
        self.paddle_graph.add_layer(
1551 1552 1553
            paddle_op,
            inputs={'x': val_x if isinstance(val_x, str) else val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
1554 1555 1556 1557 1558 1559 1560 1561
            **layer_attrs)

    @print_mapping_info
    def Concat(self, node):
        inputs_list = []
        dtypes = set()
        for i in range(len(node.layer.input)):
            ipt = self.graph.get_input_node(node, idx=i, copy=True)
S
SunAhong1993 已提交
1562
            inputs_list.append(ipt.name)
S
SunAhong1993 已提交
1563 1564 1565 1566 1567
            dtypes.add(ipt.dtype)
        if len(dtypes) > 1:
            assert 'Unspported situation happened, please create issue on https://github.com/PaddlePaddle/X2Paddle/issues.'
        axis = node.get_attr('axis')
        self.paddle_graph.add_layer(
1568 1569 1570
            'paddle.concat',
            inputs={"x": inputs_list},
            outputs=[node.name],
S
SunAhong1993 已提交
1571 1572 1573 1574 1575
            axis=axis)

    @print_mapping_info
    def Flatten(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
1576
        output_shape = val_x.out_shapes[0]
S
SunAhong1993 已提交
1577 1578 1579 1580 1581 1582 1583 1584 1585 1586 1587
        axis = node.get_attr('axis', 1)
        shape_list = [1, 1]
        if axis == 0:
            for s in output_shape:
                shape_list[1] *= s
        else:
            for s in output_shape[:axis]:
                shape_list[0] *= s
            for s in output_shape[axis:]:
                shape_list[1] *= s
        self.paddle_graph.add_layer(
1588 1589
            'paddle.reshape',
            inputs={"x": val_x.name},
S
SunAhong1993 已提交
1590
            outputs=[node.name],
S
SunAhong1993 已提交
1591 1592 1593 1594 1595 1596 1597 1598 1599 1600 1601 1602
            shape=shape_list)

    @print_mapping_info
    def Gemm(self, node):
        val_a = self.graph.get_input_node(node, idx=0, copy=True)
        val_b = self.graph.get_input_node(node, idx=1, copy=True)
        val_c = self.graph.get_input_node(node, idx=2, copy=True)

        alpha = node.get_attr('alpha', 1.)  # optional
        beta = node.get_attr('beta', 1.)  # optional
        trans_a = bool(node.get_attr('transA', 0))  # optional
        trans_b = bool(node.get_attr('transB', 0))  # optional
S
SunAhong1993 已提交
1603
        val_mm = node.name + '_mm'
1604
        matmul_inputs = {"x": val_a.name, "y": val_b.name}
S
SunAhong1993 已提交
1605 1606 1607 1608 1609 1610 1611 1612 1613 1614
        attr_matmul = {
            "transpose_x": trans_a,
            "transpose_y": trans_b,
        }
        self.paddle_graph.add_layer(
            'paddle.matmul',
            inputs=matmul_inputs,
            outputs=[val_mm],
            **attr_matmul)
        self.paddle_graph.add_layer(
1615
            "paddle.scale", inputs={"x": val_mm}, outputs=[val_mm], scale=alpha)
S
SunAhong1993 已提交
1616 1617 1618

        if beta != 0:
            if beta == 1.:
1619
                add_inputs = {"x": val_mm, "y": val_c.name}
S
SunAhong1993 已提交
1620
                self.paddle_graph.add_layer(
1621
                    "paddle.add", inputs=add_inputs, outputs=[node.name])
S
SunAhong1993 已提交
1622
            else:
S
SunAhong1993 已提交
1623
                var_beta = node.name + '_beta'
S
SunAhong1993 已提交
1624 1625
                self.paddle_graph.add_layer(
                    "paddle.scale",
S
SunAhong1993 已提交
1626
                    inputs={"x": val_c.name},
S
SunAhong1993 已提交
1627 1628 1629 1630
                    outputs=[var_beta],
                    scale=beta)
                add_inputs = {"x": val_mm, "y": var_beta}
                self.paddle_graph.add_layer(
1631
                    "paddle.add", inputs=add_inputs, outputs=[node.name])
S
SunAhong1993 已提交
1632 1633 1634 1635 1636

    @print_mapping_info
    def Sum(self, node):
        val_inps = node.layer.input
        inputs_dict = {
S
SunAhong1993 已提交
1637 1638 1639 1640
            "x": self.graph.get_input_node(
                node, idx=0, copy=True).name,
            "y": self.graph.get_input_node(
                node, idx=1, copy=True).name,
S
SunAhong1993 已提交
1641
        }
1642 1643
        self.paddle_graph.add_layer(
            "paddle.add", inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
1644 1645 1646 1647

        for idx, ipt in enumerate(val_inps[2:]):
            y = self.graph.get_input_node(node, idx=idx, copy=True)
            inputs_dict = {
S
SunAhong1993 已提交
1648 1649
                "x": node.name,
                "y": y.name,
S
SunAhong1993 已提交
1650 1651
            }
            self.paddle_graph.add_layer(
1652
                "paddle.add", inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
1653 1654 1655 1656 1657 1658 1659

    @print_mapping_info
    def MatMul(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        x_shape = val_x.out_shapes[0]
        y_shape = val_y.out_shapes[0]
1660
        inputs_dict = {"x": val_x.name, "y": val_y.name}
S
SunAhong1993 已提交
1661
        if y_shape[0] == 1 and x_shape[-1] != 1 and x_shape[0] != 1:
S
SunAhong1993 已提交
1662
            y_squeeze = val_y.name + '_squeeze'
S
SunAhong1993 已提交
1663 1664
            self.paddle_graph.add_layer(
                "paddle.squeeze",
S
SunAhong1993 已提交
1665
                inputs={"x": val_y.name},
S
SunAhong1993 已提交
1666 1667 1668 1669
                outputs=[y_squeeze],
                axis=[0])
            inputs_dict['y'] = y_squeeze
            self.paddle_graph.add_layer(
1670
                "paddle.matmul", inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
1671 1672
        else:
            self.paddle_graph.add_layer(
1673
                "paddle.matmul", inputs=inputs_dict, outputs=[node.name])
S
SunAhong1993 已提交
1674 1675 1676 1677

    @print_mapping_info
    def BatchNormalization(self, node):
        op_name = name_generator("batchnorm", self.nn_name2id)
S
SunAhong1993 已提交
1678
        output_name = node.name
S
SunAhong1993 已提交
1679 1680 1681 1682 1683 1684 1685 1686 1687 1688 1689
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_scale = self.graph.get_input_node(node, idx=1, copy=True)
        val_b = self.graph.get_input_node(node, idx=2, copy=True)
        val_mean = self.graph.get_input_node(node, idx=3, copy=True)
        val_var = self.graph.get_input_node(node, idx=4, copy=True)

        momentum = node.get_attr('momentum', .9)
        epsilon = node.get_attr('epsilon', 1e-5)
        c = val_x.out_shapes[0][1]

1690
        # solved the same data is used as an argument to multiple OPs.
W
wjj19950828 已提交
1691 1692 1693 1694 1695 1696 1697 1698 1699 1700 1701 1702 1703 1704 1705 1706 1707 1708 1709 1710
        _rename_or_remove_weight(
            self.weights,
            val_scale.name,
            op_name + '.weight',
            rename_mapper=self.rename_mapper)
        _rename_or_remove_weight(
            self.weights,
            val_b.name,
            op_name + '.bias',
            rename_mapper=self.rename_mapper)
        _rename_or_remove_weight(
            self.weights,
            val_var.name,
            op_name + '._variance',
            rename_mapper=self.rename_mapper)
        _rename_or_remove_weight(
            self.weights,
            val_mean.name,
            op_name + '._mean',
            rename_mapper=self.rename_mapper)
C
Channingss 已提交
1711

S
SunAhong1993 已提交
1712 1713 1714 1715 1716 1717 1718 1719 1720 1721
        # Attribute: spatial is used in BatchNormalization-1,6,7
        spatial = bool(node.get_attr('spatial'))
        layer_attrs = {
            "num_channels": c,
            "momentum": momentum,
            "epsilon": epsilon,
            "is_test": True,
            "use_global_stats": False,
        }
        self.paddle_graph.add_layer(
1722 1723 1724
            "paddle.nn.BatchNorm",
            inputs={"x": val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
1725 1726 1727 1728 1729
            **layer_attrs)

    @print_mapping_info
    def Transpose(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
S
fix  
SunAhong1993 已提交
1730 1731 1732 1733
        s_len = len(val_x.out_shapes[0])
        perm_default = list(range(s_len))
        perm_default.reverse()
        perm = node.get_attr('perm', perm_default)
S
SunAhong1993 已提交
1734
        self.paddle_graph.add_layer(
1735
            "paddle.transpose",
S
SunAhong1993 已提交
1736
            inputs={"x": val_x.name},
1737
            outputs=[node.name],
S
SunAhong1993 已提交
1738 1739 1740 1741 1742
            perm=perm)

    @print_mapping_info
    def PRelu(self, node):
        op_name = name_generator("prelu", self.nn_name2id)
S
SunAhong1993 已提交
1743
        output_name = node.name
S
SunAhong1993 已提交
1744 1745 1746 1747 1748 1749
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_slope = self.graph.get_input_node(node, idx=1, copy=True)

        mode = 'channel'
        shape_slope = val_slope.out_shapes[0]
1750
        if shape_slope == [1] * len(shape_slope):
S
SunAhong1993 已提交
1751 1752
            mode = 'all'

S
SunAhong1993 已提交
1753 1754 1755
        if mode == "element":
            self.paddle_graph.add_layer(
                "paddle.zeros",
1756 1757
                inputs={},
                outputs=[output_name + "__zeros"],
S
SunAhong1993 已提交
1758 1759 1760 1761
                shape=shape_slope,
                dtype=string(node.dtype))
            self.paddle_graph.add_layer(
                "paddle.maximum",
1762 1763
                inputs={"x": val_x.name,
                        "y": output_name + "__zeros"},
S
SunAhong1993 已提交
1764 1765 1766
                outputs=[output_name + "__max"])
            self.paddle_graph.add_layer(
                "paddle.minimum",
1767 1768
                inputs={"x": val_x.name,
                        "y": output_name + "__zeros"},
1769
                outputs=[output_name + "__min"])
S
SunAhong1993 已提交
1770 1771
            self.paddle_graph.add_layer(
                "paddle.multiply",
1772 1773
                inputs={"x": val_slope.name,
                        "y": output_name + "__min"},
S
SunAhong1993 已提交
1774 1775 1776
                outputs=[output_name + "__mul"])
            self.paddle_graph.add_layer(
                "paddle.add",
1777 1778 1779 1780
                inputs={
                    "x": output_name + "__max",
                    "y": output_name + "__mul"
                },
S
SunAhong1993 已提交
1781
                outputs=[output_name])
S
SunAhong1993 已提交
1782
        else:
S
fix  
SunAhong1993 已提交
1783
            if mode == 'channel':
S
SunAhong1993 已提交
1784
                slope_data = _const_weight_or_none(val_slope)
S
SunAhong1993 已提交
1785 1786
                if slope_data is None:
                    self.paddle_graph.add_layer(
1787 1788
                        "paddle.reshape",
                        inputs={"x": val_slope.name},
S
SunAhong1993 已提交
1789 1790 1791
                        outputs=[val_slope.name],
                        shape=[shape_slope[0]])
                    self.paddle_graph.add_layer(
1792
                        "paddle.nn.functional.prelu",
S
SunAhong1993 已提交
1793
                        inputs={"x": val_x.name,
1794
                                "weight": val_slope.name},
S
SunAhong1993 已提交
1795 1796
                        outputs=[node.name])
                    return
C
Channingss 已提交
1797
                _rename_or_remove_weight(self.weights, val_slope.name)
S
fix  
SunAhong1993 已提交
1798
                if len(shape_slope) > 1:
1799 1800
                    self.weights[op_name + '._weight'] = np.reshape(
                        slope_data, shape_slope[0])
S
SunAhong1993 已提交
1801 1802 1803
                num_parameters = val_x.out_shapes[0][1]
            else:
                num_parameters = 1
Y
yeliang2258 已提交
1804
                slope_data = self.weights[val_slope.name]
C
Channingss 已提交
1805
                _rename_or_remove_weight(self.weights, val_slope.name)
Y
yeliang2258 已提交
1806
                self.weights[op_name + '._weight'] = np.reshape(slope_data, [1])
S
SunAhong1993 已提交
1807
            self.paddle_graph.add_layer(
1808 1809 1810
                "paddle.nn.PReLU",
                inputs={"x": val_x.name},
                outputs=layer_outputs,
1811
                num_parameters=num_parameters)
S
SunAhong1993 已提交
1812 1813 1814 1815 1816 1817 1818 1819

    @print_mapping_info
    def Squeeze(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        axes = node.get_attr('axes')
        if len(val_x.out_shapes[0]) == 1:
            self.paddle_graph.add_layer(
                "paddle.cast",
S
SunAhong1993 已提交
1820 1821
                inputs={"x": val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1822 1823 1824
                dtype=string(val_x.dtype))
        else:
            self.paddle_graph.add_layer(
1825 1826 1827
                "paddle.squeeze",
                inputs={"x": val_x.name},
                outputs=[node.name],
S
SunAhong1993 已提交
1828 1829 1830 1831 1832 1833 1834 1835
                axis=axes)

    @print_mapping_info
    def Equal(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.equal",
S
SunAhong1993 已提交
1836 1837 1838
            inputs={'x': val_x.name,
                    'y': val_y.name},
            outputs=[node.name])
S
SunAhong1993 已提交
1839 1840 1841 1842 1843 1844 1845

    @print_mapping_info
    def Greater(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_y = self.graph.get_input_node(node, idx=1, copy=True)
        self.paddle_graph.add_layer(
            "paddle.greater_than",
S
SunAhong1993 已提交
1846 1847
            inputs={'x': val_x.name,
                    'y': val_y.name},
1848
            outputs=[node.name])
S
SunAhong1993 已提交
1849 1850 1851 1852 1853 1854 1855

    @print_mapping_info
    def Where(self, node):
        condition = self.graph.get_input_node(node, idx=0, copy=True)
        val_x = self.graph.get_input_node(node, idx=1, copy=True)
        val_y = self.graph.get_input_node(node, idx=2, copy=True)

S
SunAhong1993 已提交
1856
        not_condition = condition.name + '_not'
S
SunAhong1993 已提交
1857 1858
        self.paddle_graph.add_layer(
            "paddle.logical_not",
S
SunAhong1993 已提交
1859
            inputs={"x": condition.name},
S
SunAhong1993 已提交
1860 1861 1862 1863 1864 1865 1866
            outputs=[not_condition])
        cast_not_condition = not_condition + '_cast'
        self.paddle_graph.add_layer(
            "paddle.cast",
            inputs={"x": not_condition},
            outputs=[cast_not_condition],
            dtype=string(val_x.dtype))
S
SunAhong1993 已提交
1867
        cast_condition = condition.name + '_cast'
S
SunAhong1993 已提交
1868 1869
        self.paddle_graph.add_layer(
            "paddle.cast",
S
SunAhong1993 已提交
1870
            inputs={"x": condition.name},
S
SunAhong1993 已提交
1871 1872
            outputs=[cast_condition],
            dtype=string(val_x.dtype))
S
SunAhong1993 已提交
1873
        mul_val_x = val_x.name + '_mul'
S
SunAhong1993 已提交
1874 1875
        self.paddle_graph.add_layer(
            "paddle.multiply",
S
SunAhong1993 已提交
1876
            inputs={'x': val_x.name,
S
SunAhong1993 已提交
1877 1878
                    'y': cast_condition},
            outputs=[mul_val_x])
S
SunAhong1993 已提交
1879
        mul_val_y = val_y.name + '_mul'
S
SunAhong1993 已提交
1880 1881
        self.paddle_graph.add_layer(
            "paddle.multiply",
S
SunAhong1993 已提交
1882
            inputs={'x': val_y.name,
S
SunAhong1993 已提交
1883 1884 1885 1886 1887 1888 1889
                    'y': cast_not_condition},
            outputs=[mul_val_y])

        self.paddle_graph.add_layer(
            "paddle.add",
            inputs={'x': mul_val_x,
                    'y': mul_val_y},
S
SunAhong1993 已提交
1890
            outputs=[node.name])
S
SunAhong1993 已提交
1891 1892 1893 1894 1895 1896 1897

    @print_mapping_info
    def NonZero(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_x_dim = len(val_x.out_shapes[0])
        if val_x_dim == 1:
            self.paddle_graph.add_layer(
1898 1899
                "paddle.nonzero",
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1900
                outputs=[val_x.name])
S
SunAhong1993 已提交
1901 1902
            self.paddle_graph.add_layer(
                "paddle.transpose",
S
SunAhong1993 已提交
1903
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1904
                outputs=[node.layer_name],
S
SunAhong1993 已提交
1905 1906 1907
                perm=[1, 0])
        if val_x_dim > 1:
            self.paddle_graph.add_layer(
1908 1909
                "paddle.nonzero",
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1910
                outputs=[val_x.name])
S
SunAhong1993 已提交
1911 1912
            self.paddle_graph.add_layer(
                "paddle.split",
1913
                inputs={"x": val_x.name},
S
SunAhong1993 已提交
1914
                outputs=[val_x.name],
S
SunAhong1993 已提交
1915 1916 1917
                num_or_sections=1,
                axis=val_x_dim)
            self.paddle_graph.add_layer(
1918
                "paddle.concat", inputs={"x": val_x.name}, outputs=[node.name])
S
SunAhong1993 已提交
1919 1920 1921 1922 1923

    @print_mapping_info
    def Identity(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        self.paddle_graph.add_layer(
1924
            "paddle.assign", inputs={"x": val_x.name}, outputs=[node.name])
S
SunAhong1993 已提交
1925 1926 1927 1928 1929 1930 1931 1932

    @print_mapping_info
    def Tile(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_repeats = self.graph.get_input_node(node, idx=1, copy=True)
        repeats = _const_weight_or_none(val_repeats)

        if repeats is None:
S
SunAhong1993 已提交
1933
            repeats = val_repeats.name
S
SunAhong1993 已提交
1934 1935 1936 1937
            if val_repeats.dtype != 'int32':
                self.paddle_graph.add_layer(
                    "paddle.cast",
                    inputs={"x": repeats},
1938
                    outputs=["{}_tmp".format(repeats)],
S
SunAhong1993 已提交
1939
                    dtype=string("int32"))
1940
                repeats = "{}_tmp".format(repeats)
S
SunAhong1993 已提交
1941 1942 1943 1944

        elif isinstance(repeats, int):
            repeats = [repeats]

1945 1946 1947
        elif type(repeats) is np.ndarray:
            repeats = repeats.tolist()

S
SunAhong1993 已提交
1948 1949
        attr = {
            'expand_times': repeats,
S
SunAhong1993 已提交
1950
            "name": string(node.name),
S
SunAhong1993 已提交
1951 1952
        }
        self.paddle_graph.add_layer(
1953 1954 1955 1956
            "paddle.tile",
            inputs={"x": val_x.name},
            outputs=[node.name],
            repeat_times=repeats)
S
SunAhong1993 已提交
1957 1958 1959 1960

    @print_mapping_info
    def MaxPool(self, node):
        op_name = name_generator("pool", self.nn_name2id)
S
SunAhong1993 已提交
1961
        output_name = node.name
S
SunAhong1993 已提交
1962 1963 1964 1965 1966 1967 1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        auto_pad = node.get_attr('auto_pad', 'NOTSET')
        assert node.get_attr(
            "dilations") is None, 'only dilations = 0 is supported'  # optional

        kernel_shape = node.get_attr("kernel_shape")
        poolnd = len(kernel_shape)
        strides = node.get_attr("strides")
        pad_mode = node.get_attr("pads")
        ceil_mode = bool(node.get_attr('ceil_mode', 0))  # optional
        pads = node.get_attr('pads', [0] * (poolnd * 2))  # optional
        paddle_op = 'paddle.nn.MaxPool{}D'.format(poolnd)
        assert 1 <= poolnd <= 3, 'only Pool1D, Pool2D and Pool3D are supported'

        paddings, val_x = self._pad_if_asymmetric(node, pads, val_x)

        if auto_pad == "SAME_UPPER" or auto_pad == "SAME_LOWER":
            input_shape = val_x.out_shapes[0]
            pad_h = _get_same_padding(input_shape[2], kernel_shape[0],
                                      strides[0])
            pad_w = _get_same_padding(input_shape[3], kernel_shape[1],
                                      strides[1])
            paddings = pad_h + pad_w
1986

S
SunAhong1993 已提交
1987 1988 1989 1990 1991 1992 1993
        layer_attrs = {
            "kernel_size": kernel_shape,
            "stride": strides,
            "padding": paddings,
            "ceil_mode": ceil_mode,
        }
        self.paddle_graph.add_layer(
1994 1995 1996
            paddle_op,
            inputs={'x': val_x if isinstance(val_x, str) else val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
1997 1998 1999 2000 2001
            **layer_attrs)

    @print_mapping_info
    def GlobalMaxPool(self, node):
        op_name = name_generator("pool", self.nn_name2id)
S
SunAhong1993 已提交
2002
        output_name = node.name
S
SunAhong1993 已提交
2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        input_shape = val_x.out_shapes[0]
        if len(input_shape) == 4:
            poolnd = 2
        elif len(input_shape) == 5:
            poolnd = 3
        elif len(input_shape) == 3:
            poolnd = 1
        paddle_op = 'paddle.nn.AdaptiveMaxPool{}D'.format(poolnd)
        assert 1 <= poolnd <= 3, 'only Pool1D, Pool2D and Pool3D are supported'
        output_shape = node.out_shapes[0]
        self.paddle_graph.add_layer(
2016 2017 2018
            paddle_op,
            inputs={'x': val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
2019 2020
            output_size=output_shape[2:])

Y
yeliang2258 已提交
2021 2022
    @print_mapping_info
    def Neg(self, node):
Y
fix  
yeliang2258 已提交
2023
        import paddle
Y
yeliang2258 已提交
2024
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
Y
fix neg  
yeliang2258 已提交
2025 2026 2027 2028 2029 2030 2031 2032 2033 2034 2035 2036 2037 2038 2039 2040 2041 2042 2043
        v0, v1, v2 = paddle.__version__.split('.')
        if int(v0) >= 2 and int(v1) >= 2:
            self.paddle_graph.add_layer(
                "paddle.neg", inputs={'x': val_x.name}, outputs=[node.name])
        else:
            val_y = node.name + "_y"
            dtype = np.dtype(val_x.dtype)
            self.paddle_graph.add_layer(
                "paddle.full",
                inputs={},
                outputs=[val_y],
                dtype=string(dtype),
                shape=[1],
                fill_value=-1)
            self.paddle_graph.add_layer(
                "paddle.multiply",
                inputs={'x': val_x.name,
                        'y': val_y},
                outputs=[node.name])
Y
yeliang2258 已提交
2044 2045 2046 2047 2048 2049 2050 2051 2052 2053 2054 2055 2056 2057 2058 2059 2060 2061 2062 2063 2064 2065 2066 2067 2068 2069 2070

    @print_mapping_info
    def SpaceToDepth(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        blocksize = node.get_attr('blocksize')
        val_x_shape = val_x.out_shapes[0]
        b, c, h, w = val_x_shape
        self.paddle_graph.add_layer(
            'paddle.reshape',
            inputs={"x": val_x.name},
            outputs=[node.name],
            shape=[b, c, h // blocksize, blocksize, w // blocksize, blocksize])
        self.paddle_graph.add_layer(
            'paddle.transpose',
            inputs={"x": node.name},
            outputs=[node.name],
            perm=[0, 3, 5, 1, 2, 4])
        self.paddle_graph.add_layer(
            'paddle.reshape',
            inputs={"x": node.name},
            outputs=[node.name],
            shape=[b, c * (blocksize**2), h // blocksize, w // blocksize])

    @print_mapping_info
    def GatherElements(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        indices = self.graph.get_input_node(node, idx=1, copy=True)
2071 2072 2073 2074 2075 2076 2077 2078 2079 2080 2081 2082 2083 2084 2085 2086 2087 2088 2089 2090 2091 2092 2093 2094 2095 2096 2097 2098 2099 2100 2101 2102 2103 2104 2105 2106 2107 2108 2109 2110 2111 2112 2113
        axis = node.get_attr('axis')
        val_x_shape = val_x.out_shapes[0]
        indices_shape = indices.out_shapes[0]
        axis = axis if axis >= 0 else axis + len(val_x_shape)
        if axis == 0:
            axis_perm = [i for i in range(len(val_x_shape))]
            data_swaped = val_x.name
            index_swaped = indices.name
        else:
            axis_perm = [i for i in range(len(val_x_shape))]
            axis_perm[axis] = 0
            axis_perm[0] = axis
            data_swaped = val_x.name + "_transpose"
            self.paddle_graph.add_layer(
                "paddle.transpose",
                inputs={'x': val_x.name},
                perm=axis_perm,
                outputs=[data_swaped])
            index_swaped = indices.name + "_transpose"
            self.paddle_graph.add_layer(
                "paddle.transpose",
                inputs={'x': indices.name},
                perm=axis_perm,
                outputs=[index_swaped])
            temp = indices_shape[0]
            indices_shape[0] = indices_shape[axis]
            indices_shape[axis] = temp

        idx_tensors_per_axis_pre = [
            indices_shape[i] for i in range(len(indices_shape))
        ]
        name_list = list()
        for i in range(len(idx_tensors_per_axis_pre)):
            tensor_name = val_x.name + "_meshgrid_" + str(i)
            self.paddle_graph.add_layer(
                kernel="paddle.linspace",
                inputs={},
                outputs=[tensor_name],
                start=0,
                stop=idx_tensors_per_axis_pre[i] - 1,
                num=idx_tensors_per_axis_pre[i])
            name_list.append(tensor_name)

Y
yeliang2258 已提交
2114
        self.paddle_graph.add_layer(
2115 2116 2117 2118 2119 2120 2121 2122 2123 2124 2125 2126 2127 2128 2129 2130 2131 2132 2133 2134 2135 2136 2137 2138 2139 2140 2141 2142 2143 2144 2145 2146 2147 2148 2149 2150 2151 2152 2153 2154 2155
            "paddle.meshgrid", inputs=name_list, outputs=name_list)

        self.paddle_graph.add_layer(
            "paddle.cast",
            inputs={"x": index_swaped},
            outputs=[index_swaped],
            dtype=string("float32"))
        import copy
        copy_name_list = copy.copy(name_list)
        copy_name_list[0] = index_swaped
        new_name_list = list()
        for i in range(len(copy_name_list)):
            unsqueeze_name = copy_name_list[i] + "_unsqueeze"
            self.paddle_graph.add_layer(
                "paddle.unsqueeze",
                inputs={"x": copy_name_list[i]},
                axis=-1,
                outputs=[unsqueeze_name])
            new_name_list.append(unsqueeze_name)
        concat_name = val_x.name + "_concated_layer"
        self.paddle_graph.add_layer(
            "paddle.concat",
            inputs={'x': new_name_list},
            axis=-1,
            outputs=[concat_name])
        self.paddle_graph.add_layer(
            "paddle.cast",
            inputs={"x": concat_name},
            outputs=[concat_name],
            dtype=string("int32"))
        gather_nd_name = "gather_nd_layer"
        self.paddle_graph.add_layer(
            "paddle.gather_nd",
            inputs={'x': data_swaped,
                    "index": concat_name},
            outputs=[gather_nd_name])

        self.paddle_graph.add_layer(
            "paddle.transpose",
            inputs={'x': gather_nd_name},
            perm=axis_perm,
Y
yeliang2258 已提交
2156 2157
            outputs=[node.name])

S
SunAhong1993 已提交
2158 2159 2160
    @print_mapping_info
    def GlobalAveragePool(self, node):
        op_name = name_generator("pool", self.nn_name2id)
S
SunAhong1993 已提交
2161
        output_name = node.name
S
SunAhong1993 已提交
2162 2163 2164 2165 2166 2167 2168 2169 2170 2171 2172 2173 2174
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        input_shape = val_x.out_shapes[0]
        if len(input_shape) == 4:
            poolnd = 2
        elif len(input_shape) == 5:
            poolnd = 3
        elif len(input_shape) == 3:
            poolnd = 1
        paddle_op = 'paddle.nn.AdaptiveAvgPool{}D'.format(poolnd)
        assert 1 <= poolnd <= 3, 'only Pool1D, Pool2D and Pool3D are supported'
        output_shape = node.out_shapes[0]
        self.paddle_graph.add_layer(
2175 2176 2177
            paddle_op,
            inputs={'x': val_x.name},
            outputs=layer_outputs,
S
SunAhong1993 已提交
2178 2179 2180 2181
            output_size=output_shape[2:])

    @print_mapping_info
    def Conv(self, node):
S
SunAhong1993 已提交
2182
        output_name = node.name
S
SunAhong1993 已提交
2183 2184
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_w = self.graph.get_input_node(node, idx=1, copy=True)
2185 2186 2187 2188 2189 2190 2191 2192

        if val_w.name in self.weights.keys():
            op_name = name_generator("conv", self.nn_name2id)
        else:
            op_name = output_name

        layer_outputs = [op_name, output_name]

S
SunAhong1993 已提交
2193 2194 2195 2196 2197 2198 2199 2200 2201 2202 2203 2204 2205 2206 2207 2208 2209 2210 2211 2212 2213 2214 2215 2216 2217 2218 2219
        has_bias = len(node.layer.input) == 3
        if has_bias:
            val_b = self.graph.get_input_node(node, idx=2, copy=True)
        auto_pad = node.get_attr('auto_pad', 'NOTSET')

        kernel_shape = node.get_attr('kernel_shape')
        convnd = len(kernel_shape)
        assert 2 <= convnd <= 3, 'only Conv2D and Conv3D is supported'
        num_out_channels = val_w.out_shapes[0][0]
        num_in_channels = val_w.out_shapes[0][1]
        paddle_op = 'paddle.nn.Conv{}D'.format(convnd)

        num_groups = node.get_attr('group', 1)
        strides = node.get_attr('strides', [1] * convnd)
        dilations = node.get_attr('dilations', [1] * convnd)
        pads = node.get_attr('pads', [0] * (convnd * 2))

        input_shape = val_x.out_shapes[0]
        paddings, val_x = self._pad_if_asymmetric(node, pads, val_x)

        if auto_pad == "SAME_UPPER" or auto_pad == "SAME_LOWER":
            pad_h = _get_same_padding(input_shape[2], kernel_shape[0],
                                      strides[0])
            pad_w = _get_same_padding(input_shape[3], kernel_shape[1],
                                      strides[1])
            paddings = pad_h + pad_w

S
fix  
SunAhong1993 已提交
2220
        layer_inputs = {'x': val_x if isinstance(val_x, str) else val_x.name}
2221 2222 2223 2224 2225 2226 2227 2228 2229 2230 2231 2232 2233 2234 2235 2236 2237 2238 2239
        if val_w.name not in self.weights.keys():
            layer_attrs = {
                "stride": strides,
                "padding": paddings,
                "dilation": dilations,
                "groups": num_groups,
            }
            layer_inputs['weight'] = val_w.name
            if has_bias:
                layer_inputs['bias'] = val_b.name

            paddle_op = 'paddle.nn.functional.conv{}d'.format(convnd)
            self.paddle_graph.add_layer(
                paddle_op,
                inputs=layer_inputs,
                outputs=[node.name],
                **layer_attrs)
            return

S
SunAhong1993 已提交
2240 2241 2242 2243 2244 2245 2246 2247 2248
        layer_attrs = {
            "in_channels": num_in_channels * num_groups,
            "out_channels": num_out_channels,
            "kernel_size": kernel_shape,
            "stride": strides,
            "padding": paddings,
            "dilation": dilations,
            "groups": num_groups,
        }
2249
        remove_weight = True if val_w.name in self.done_weight_list else False
C
Channingss 已提交
2250 2251
        if remove_weight:
            self.done_weight_list.append(val_w.name)
W
wjj19950828 已提交
2252 2253 2254 2255 2256 2257
        _rename_or_remove_weight(
            self.weights,
            val_w.name,
            op_name + '.weight',
            remove_weight,
            rename_mapper=self.rename_mapper)
S
SunAhong1993 已提交
2258
        if has_bias:
C
Channingss 已提交
2259 2260
            remove_bias = True if val_b.name in self.done_weight_list else False
            if remove_bias:
W
wjj19950828 已提交
2261 2262 2263 2264 2265 2266 2267
                self.done_weight_list.append(val_b.name)
            _rename_or_remove_weight(
                self.weights,
                val_b.name,
                op_name + '.bias',
                remove_bias,
                rename_mapper=self.rename_mapper)
S
SunAhong1993 已提交
2268 2269
        else:
            layer_attrs["bias_attr"] = False
2270 2271
        if reduce(lambda x, y: x * y,
                  input_shape) in [1, -1] and 1 not in input_shape:
S
fix  
SunAhong1993 已提交
2272 2273 2274 2275
            input_shape[1] = num_in_channels * num_groups
            input_shape[0] = 0
            input_shape[2] = 0
            self.paddle_graph.add_layer(
2276 2277 2278
                "paddle.reshape",
                inputs=layer_inputs,
                outputs=[layer_inputs["x"]],
S
fix  
SunAhong1993 已提交
2279
                shape=input_shape)
S
SunAhong1993 已提交
2280
        self.paddle_graph.add_layer(
2281 2282 2283
            paddle_op,
            inputs=layer_inputs,
            outputs=layer_outputs,
S
SunAhong1993 已提交
2284 2285 2286 2287
            **layer_attrs)

    @print_mapping_info
    def ConvTranspose(self, node):
2288
        output_name = node.name
S
SunAhong1993 已提交
2289 2290
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_w = self.graph.get_input_node(node, idx=1, copy=True)
2291 2292 2293 2294 2295 2296 2297 2298

        if val_w.name in self.weights.keys():
            op_name = name_generator("conv_trans", self.nn_name2id)
        else:
            op_name = output_name

        layer_outputs = [op_name, output_name]

S
SunAhong1993 已提交
2299 2300 2301 2302 2303 2304 2305 2306 2307 2308 2309
        val_b = None
        if len(node.layer.input) > 2:
            val_b = self.graph.get_input_node(node, idx=2, copy=True)
        auto_pad = node.get_attr('auto_pad', 'NOTSET')
        out_padding = node.get_attr('output_padding', [0, 0])
        kernel_shape = node.get_attr('kernel_shape')
        assert kernel_shape, 'kernel_shape not inferred'
        convnd = len(kernel_shape)
        assert 2 <= convnd <= 3, 'only Conv2DTranspose and Conv3DTranspose supported'
        num_in_channels = val_w.out_shapes[0][0]
        num_out_channels = val_w.out_shapes[0][1]
2310
        paddle_op = 'paddle.nn.Conv{}DTranspose'.format(convnd)
S
SunAhong1993 已提交
2311 2312 2313 2314 2315 2316 2317 2318 2319

        num_groups = node.get_attr('group', 1)
        strides = node.get_attr('strides', [1] * convnd)
        dilations = node.get_attr('dilations', [1] * convnd)
        output_size = node.get_attr('output_shape', [])
        pads = node.get_attr('pads', [0] * (convnd * 2))

        paddings, var_x = self._pad_if_asymmetric(node, pads, val_x)

W
wjj19950828 已提交
2320
        if len(output_size) != 0:
W
wjj19950828 已提交
2321 2322 2323 2324 2325 2326 2327 2328 2329 2330 2331 2332 2333 2334 2335 2336 2337 2338 2339
            paddings = [0] * 4
            total_paddings = list()
            total_paddings.append((val_x.out_shapes[0][2] - 1) * strides[
                0] + dilations[0] * (kernel_shape[0] - 1) + 1 + out_padding[0] -
                                  output_size[0])
            total_paddings.append((val_x.out_shapes[0][3] - 1) * strides[
                1] + dilations[1] * (kernel_shape[1] - 1) + 1 + out_padding[1] -
                                  output_size[1])
            if auto_pad == "SAME_UPPER":
                for i in range(len(total_paddings)):
                    paddings[2 * i] = total_paddings[0] - total_paddings[0] // 2
                    paddings[2 * i + 1] = total_paddings[0] // 2
            else:
                for i in range(len(total_paddings)):
                    paddings[2 * i] = total_paddings[0] // 2
                    paddings[2 * i + 1] = total_paddings[0] - total_paddings[
                        0] // 2
        else:
            output_size = [0, 0]
S
SunAhong1993 已提交
2340

W
wjj19950828 已提交
2341 2342 2343 2344 2345 2346 2347 2348
            output_size[0] = (
                val_x.out_shapes[0][2] - 1
            ) * strides[0] - 2 * paddings[0] + dilations[0] * (
                kernel_shape[0] - 1) + 1 + out_padding[0]
            output_size[1] = (
                val_x.out_shapes[0][3] - 1
            ) * strides[1] - 2 * paddings[1] + dilations[1] * (
                kernel_shape[1] - 1) + 1 + out_padding[1]
2349

S
fix  
SunAhong1993 已提交
2350
        # Conv2DTranspose缺少output_size,只能在forward里头传进output_size
2351
        inputs_dict = {'x': val_x if isinstance(val_x, str) else val_x.name}
2352 2353 2354 2355 2356 2357 2358 2359 2360 2361 2362 2363 2364 2365 2366 2367 2368 2369 2370 2371 2372
        if val_w.name not in self.weights.keys():
            layer_attrs = {
                "stride": strides,
                "dilation": dilations,
                "padding": paddings,
                "groups": num_groups,
                "output_padding": out_padding
            }
            paddle_op = 'paddle.nn.functional.conv{}d_transpose'.format(convnd)

            inputs_dict['weight'] = val_w.name
            if len(node.layer.input) > 2:
                inputs_dict['bias'] = val_b.name

            self.paddle_graph.add_layer(
                paddle_op,
                inputs=inputs_dict,
                outputs=[node.name],
                **layer_attrs)
            return

S
SunAhong1993 已提交
2373
        layer_attrs = {
2374
            "in_channels": num_in_channels,
S
SunAhong1993 已提交
2375
            "out_channels": num_out_channels * num_groups,
2376
            "kernel_size": kernel_shape,
S
fix  
SunAhong1993 已提交
2377 2378 2379
            "stride": strides,
            "dilation": dilations,
            "padding": paddings,
2380
            "groups": num_groups,
2381 2382 2383 2384 2385 2386
            "output_padding": out_padding
        }

        _rename_or_remove_weight(
            self.weights,
            val_w.name,
W
wjj19950828 已提交
2387 2388
            op_name + '.weight',
            rename_mapper=self.rename_mapper)
S
fix  
SunAhong1993 已提交
2389
        if val_b is not None:
W
wjj19950828 已提交
2390 2391 2392 2393 2394
            _rename_or_remove_weight(
                self.weights,
                val_b.name,
                op_name + '.bias',
                rename_mapper=self.rename_mapper)
W
wjj19950828 已提交
2395 2396
        else:
            layer_attrs["bias_attr"] = False
S
SunAhong1993 已提交
2397
        self.paddle_graph.add_layer(
2398
            kernel=paddle_op,
S
fix  
SunAhong1993 已提交
2399
            inputs=inputs_dict,
2400
            outputs=layer_outputs,
S
SunAhong1993 已提交
2401
            **layer_attrs)
2402

S
fix  
SunAhong1993 已提交
2403 2404 2405 2406 2407
    @print_mapping_info
    def ArgMax(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        axis = node.get_attr('axis')
        keepdims = False if node.get_attr('keepdims') == 0 else True
2408
        layer_attrs = {'axis': axis, 'keepdim': keepdims}
S
fix  
SunAhong1993 已提交
2409
        self.paddle_graph.add_layer(
2410 2411
            'paddle.argmax',
            inputs={"x": val_x.name},
S
fix  
SunAhong1993 已提交
2412
            outputs=[node.name],
C
Channingss 已提交
2413 2414 2415
            **layer_attrs)

    @print_mapping_info
S
SunAhong1993 已提交
2416 2417 2418
    def Size(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        self.paddle_graph.add_layer(
2419
            "paddle.shape", inputs={"input": val_x.name}, outputs=[node.name])
S
fix  
SunAhong1993 已提交
2420 2421 2422 2423
        self.paddle_graph.add_layer(
            'paddle.cast',
            inputs={"x": node.name},
            outputs=[node.name],
2424
            dtype=string('int64'))
S
SunAhong1993 已提交
2425
        self.paddle_graph.add_layer(
2426 2427
            "paddle.prod", inputs={"x": node.name}, outputs=[node.name])

S
SunAhong1993 已提交
2428 2429 2430
    @print_mapping_info
    def Sign(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
S
fix  
SunAhong1993 已提交
2431 2432
        if node.dtype not in ["float16", "float32", "float64"]:
            self.paddle_graph.add_layer(
2433 2434
                "paddle.cast",
                inputs={"x": val_x.name},
S
fix  
SunAhong1993 已提交
2435 2436
                outputs=[val_x.name],
                dtype=string("float32"))
S
SunAhong1993 已提交
2437
        self.paddle_graph.add_layer(
2438
            "paddle.sign", inputs={"x": val_x.name}, outputs=[node.name])
S
fix  
SunAhong1993 已提交
2439 2440
        if node.dtype not in ["float16", "float32", "float64"]:
            self.paddle_graph.add_layer(
2441 2442
                "paddle.cast",
                inputs={"x": node.name},
S
fix  
SunAhong1993 已提交
2443 2444
                outputs=[node.name],
                dtype=string(node.dtype))
2445

S
SunAhong1993 已提交
2446 2447 2448 2449 2450 2451 2452 2453 2454 2455
    @print_mapping_info
    def OneHot(self, node):
        nn_op_name = name_generator("onehot", self.nn_name2id)
        output_name = node.name
        layer_outputs = [nn_op_name, output_name]
        indices = self.graph.get_input_node(node, idx=0, copy=True)
        depth = self.graph.get_input_node(node, idx=1, copy=True)
        values = self.graph.get_input_node(node, idx=2, copy=True)
        axis = node.get_attr('axis', -1)
        self.paddle_graph.add_layer(
2456 2457 2458 2459 2460 2461
            "custom_layer:OneHot",
            inputs={
                "indices": indices.name,
                "depth": depth.name,
                "values": values.name
            },
S
SunAhong1993 已提交
2462 2463
            outputs=layer_outputs,
            axis=axis)
2464

S
SunAhong1993 已提交
2465 2466 2467 2468
    @print_mapping_info
    def Reciprocal(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        self.paddle_graph.add_layer(
2469
            "paddle.reciprocal", inputs={"x": val_x.name}, outputs=[node.name])
C
Channingss 已提交
2470

2471 2472
    @print_mapping_info
    def LSTM(self, node):
C
Channingss 已提交
2473 2474 2475 2476 2477 2478
        x = self.graph.get_input_node(node, idx=0, copy=True)
        input_weight = self.graph.get_input_node(node, idx=1, copy=True)
        hidden_weight = self.graph.get_input_node(node, idx=2, copy=True)

        input_nums = len(node.layer.input)
        exist_input_nums = 3
2479
        have_bias = False
C
Channingss 已提交
2480
        if input_nums > 3 and node.layer.input[3] != '':
2481 2482
            bias = self.graph.get_input_node(
                node, idx=exist_input_nums, copy=True)
2483
            have_bias = True
C
Channingss 已提交
2484 2485
            exist_input_nums += 1
        if input_nums > 4 and node.layer.input[4] != '':
2486 2487
            sequence_lens = self.graph.get_input_node(
                node, idx=exist_input_nums, copy=True)
C
Channingss 已提交
2488 2489
            exist_input_nums += 1
        if input_nums > 5 and node.layer.input[5] != '':
2490 2491
            init_h = self.graph.get_input_node(
                node, idx=exist_input_nums, copy=True)
2492 2493 2494 2495
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": init_h.name},
                outputs=[init_h.name],
2496
                shape=init_h.out_shapes[0])
C
Channingss 已提交
2497 2498
            exist_input_nums += 1
        if input_nums > 6 and node.layer.input[6] != '':
2499 2500
            init_c = self.graph.get_input_node(
                node, idx=exist_input_nums, copy=True)
2501 2502 2503 2504
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": init_c.name},
                outputs=[init_c.name],
2505
                shape=init_c.out_shapes[0])
C
Channingss 已提交
2506 2507

        input_weight_np = _const_weight_or_none(input_weight)
C
Channingss 已提交
2508
        _rename_or_remove_weight(self.weights, input_weight.name)
2509
        hidden_size = node.get_attr('hidden_size', input_weight_np.shape[1] / 4)
C
Channingss 已提交
2510 2511
        input_size = input_weight_np.shape[2]
        hidden_weight_np = _const_weight_or_none(hidden_weight)
C
Channingss 已提交
2512
        _rename_or_remove_weight(self.weights, hidden_weight.name)
C
Channingss 已提交
2513
        bias_np = _const_weight_or_none(bias)
C
Channingss 已提交
2514
        _rename_or_remove_weight(self.weights, bias.name)
2515 2516
        input_bias_np = bias_np[:, :4 * hidden_size]
        hidden_bias_np = bias_np[:, 4 * hidden_size:]
2517 2518 2519 2520 2521 2522

        # parameters order in paddle:lstm:
        # 1. gate order in paddle is: input, forget, cell, output.
        # 2. gate orfer in onnx is: input, output, forget, cell.

        def reform_weights(w, n, intervals):
2523
            slices = [w[:, x * n:y * n] for x, y in intervals]
2524
            return np.concatenate(slices, axis=1)
C
Channingss 已提交
2525

2526 2527 2528 2529
        def transform_weight_with_bias(weights, n, intervals):
            return [reform_weights(w, n, intervals) for w in weights]

        reform_permutation = [(0, 1), (2, 4), (1, 2)]
C
Channingss 已提交
2530

C
Channingss 已提交
2531
        weights = transform_weight_with_bias(
C
Channingss 已提交
2532 2533 2534 2535 2536
            [input_weight_np, hidden_weight_np, input_bias_np, hidden_bias_np],
            hidden_size, reform_permutation)

        op_name = name_generator("lstm", self.nn_name2id)
        y_out = node.output(0)
2537
        yh_out = node.output(1)
C
Channingss 已提交
2538
        yc_out = node.output(2)
2539
        direction = node.get_attr('direction', 'forward')
C
Channingss 已提交
2540 2541 2542 2543 2544 2545 2546 2547 2548 2549 2550 2551 2552 2553

        def generate_paddle_param_names(op_name, suffix=''):
            param_names = []
            param_names.extend(['{}.weight_ih_l0{}', '{}.weight_hh_l0{}'])
            if have_bias != False: param_names.append('{}.bias_ih_l0{}')
            if have_bias != False: param_names.append('{}.bias_hh_l0{}')
            param_names = [x.format(op_name, suffix) for x in param_names]
            return param_names

        def assign_params(op_name, weights, weight_idx=0, suffix=''):
            param_names = generate_paddle_param_names(op_name, suffix)
            for param_name, weight in zip(param_names, weights):
                self.weights[param_name] = weight[weight_idx]

2554
        if direction == 'backward':
2555 2556 2557
            raise Exception(
                "LSTM support 'forward' or 'bidirectional', except '{}'.".
                format(direction))
2558
        else:
C
Channingss 已提交
2559 2560 2561
            assign_params(op_name, weights)
            if direction == 'bidirectional':
                assign_params(op_name, weights, 1, '_reverse')
2562

C
Channingss 已提交
2563
        self.paddle_graph.add_layer(
2564 2565 2566 2567 2568
            'paddle.nn.LSTM',
            inputs={
                'input': x.name,
                'initial_states': (init_h.name, init_c.name)
            },
C
Channingss 已提交
2569 2570 2571 2572
            outputs=[op_name, y_out, yh_out, yc_out],
            input_size=input_size,
            hidden_size=hidden_size,
            num_layers=1,
2573
            direction=string(direction),
C
Channingss 已提交
2574 2575 2576 2577 2578 2579
            time_major=True)

        self.paddle_graph.add_layer(
            'paddle.reshape',
            inputs={"x": y_out},
            outputs=[y_out],
2580
            shape=[0, 0, -1, hidden_size])
C
Channingss 已提交
2581 2582 2583 2584
        self.paddle_graph.add_layer(
            'paddle.transpose',
            inputs={"x": y_out},
            outputs=[y_out],
2585 2586
            perm=[0, 2, 1, 3])

S
SunAhong1993 已提交
2587 2588 2589 2590
    @print_mapping_info
    def TopK(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        val_k = self.graph.get_input_node(node, idx=1, copy=True)
2591 2592 2593 2594 2595 2596
        if val_k.dtype != "int32":
            self.paddle_graph.add_layer(
                "paddle.cast",
                inputs={"x": val_k.name},
                outputs=[val_k.name],
                dtype=string('int32'))
S
SunAhong1993 已提交
2597 2598
        layer_attrs = dict()
        layer_attrs["axis"] = node.get_attr('axis', -1)
2599 2600 2601 2602
        layer_attrs["largest"] = True if node.get_attr('largest',
                                                       1) == 1 else False
        layer_attrs["sorted"] = True if node.get_attr('sorted',
                                                      1) == 1 else False
S
SunAhong1993 已提交
2603
        self.paddle_graph.add_layer(
2604
            "paddle.topk",
S
SunAhong1993 已提交
2605
            inputs={"x": val_x.name,
2606 2607 2608 2609 2610
                    "k": val_k.name},
            outputs=[
                "{}_p{}".format(node.layer_name, 0),
                "{}_p{}".format(node.layer_name, 1)
            ],
S
SunAhong1993 已提交
2611
            **layer_attrs)
2612

S
add lrn  
SunAhong1993 已提交
2613 2614 2615 2616 2617 2618 2619 2620 2621 2622
    @print_mapping_info
    def LRN(self, node):
        op_name = name_generator("lrn", self.nn_name2id)
        output_name = node.name
        layer_outputs = [op_name, output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        alpha = node.get_attr('alpha', 0.0001)
        beta = node.get_attr('beta', 0.75)
        bias = node.get_attr('bias', 1.0)
        size = node.get_attr('size')
2623
        layer_attrs = {'size': size, 'alpha': alpha, 'beta': beta, 'k': bias}
S
add lrn  
SunAhong1993 已提交
2624
        self.paddle_graph.add_layer(
W
WJJ1995 已提交
2625
            "paddle.nn.LocalResponseNorm",
2626 2627
            inputs={"x": val_x.name},
            outputs=layer_outputs,
S
add lrn  
SunAhong1993 已提交
2628
            **layer_attrs)
2629

S
SunAhong1993 已提交
2630 2631 2632 2633 2634 2635 2636 2637 2638 2639 2640 2641
    @print_mapping_info
    def DepthToSpace(self, node):
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        blocksize = node.get_attr('blocksize')
        mode = node.get_attr('mode', "DCR")
        val_x_shape = val_x.out_shapes[0]
        b, c, h, w = val_x_shape
        if mode == "DCR":
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": val_x.name},
                outputs=[node.name],
2642
                shape=[b, blocksize, blocksize, c // (blocksize**2), h, w])
S
SunAhong1993 已提交
2643 2644 2645 2646
            self.paddle_graph.add_layer(
                'paddle.transpose',
                inputs={"x": node.name},
                outputs=[node.name],
2647
                perm=[0, 3, 4, 1, 5, 2])
S
SunAhong1993 已提交
2648 2649 2650 2651
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": node.name},
                outputs=[node.name],
2652
                shape=[b, c // (blocksize**2), h * blocksize, w * blocksize])
S
SunAhong1993 已提交
2653 2654 2655 2656 2657
        else:
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": val_x.name},
                outputs=[node.name],
2658
                shape=[b, c // (blocksize**2), blocksize, blocksize, h, w])
S
SunAhong1993 已提交
2659 2660 2661 2662
            self.paddle_graph.add_layer(
                'paddle.transpose',
                inputs={"x": node.name},
                outputs=[node.name],
2663
                perm=[0, 1, 4, 2, 5, 3])
S
SunAhong1993 已提交
2664 2665 2666 2667
            self.paddle_graph.add_layer(
                'paddle.reshape',
                inputs={"x": node.name},
                outputs=[node.name],
2668 2669 2670 2671 2672 2673 2674 2675 2676
                shape=[b, c // (blocksize**2), h * blocksize, w * blocksize])

    @print_mapping_info
    def NonMaxSuppression(self, node):
        nn_op_name = name_generator("nms", self.nn_name2id)
        output_name = node.name
        layer_outputs = [nn_op_name, output_name]
        boxes = self.graph.get_input_node(node, idx=0, copy=True)
        scores = self.graph.get_input_node(node, idx=1, copy=True)
2677
        num_classes = scores.out_shapes[0][1]
2678 2679 2680 2681 2682
        inputs_len = len(node.layer.input)
        layer_attrs = dict()
        if inputs_len > 2:
            max_output_boxes_per_class = self.graph.get_input_node(
                node, idx=2, copy=True)
2683 2684
            layer_attrs["keep_top_k"] = _const_weight_or_none(
                max_output_boxes_per_class).tolist()[0] * num_classes
2685
        else:
2686
            layer_attrs["keep_top_k"] = 0
2687 2688 2689 2690 2691 2692 2693 2694 2695 2696 2697 2698 2699 2700 2701 2702 2703 2704
        if inputs_len > 3:
            iou_threshold = self.graph.get_input_node(node, idx=3, copy=True)
            layer_attrs["nms_threshold"] = _const_weight_or_none(
                iou_threshold).tolist()[0]
        else:
            layer_attrs["nms_threshold"] = 0.0
        if inputs_len > 4:
            score_threshold = self.graph.get_input_node(node, idx=4, copy=True)
            layer_attrs["score_threshold"] = _const_weight_or_none(
                score_threshold).tolist()[0]
        else:
            layer_attrs["score_threshold"] = 0.0
        self.paddle_graph.add_layer(
            "custom_layer:NMS",
            inputs={"bboxes": boxes.name,
                    "scores": scores.name},
            outputs=layer_outputs,
            **layer_attrs)
2705 2706 2707 2708 2709 2710 2711 2712 2713 2714 2715 2716 2717 2718 2719 2720 2721 2722 2723 2724 2725 2726 2727 2728 2729 2730 2731 2732

    @print_mapping_info
    def ReduceL1(self, node):
        output_name = node.name
        layer_outputs = [output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        axes = node.get_attr('axes')
        keepdims = False if node.get_attr('keepdims') == 0 else True
        layer_attrs = {'p': 1, 'axis': axes, 'keepdim': keepdims}
        self.paddle_graph.add_layer(
            "paddle.norm",
            inputs={"x": val_x.name},
            outputs=layer_outputs,
            **layer_attrs)

    @print_mapping_info
    def ReduceL2(self, node):
        output_name = node.name
        layer_outputs = [output_name]
        val_x = self.graph.get_input_node(node, idx=0, copy=True)
        axes = node.get_attr('axes')
        keepdims = False if node.get_attr('keepdims') == 0 else True
        layer_attrs = {'p': 2, 'axis': axes, 'keepdim': keepdims}
        self.paddle_graph.add_layer(
            "paddle.norm",
            inputs={"x": val_x.name},
            outputs=layer_outputs,
            **layer_attrs)