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* fix boost download url (#7843) * Topo sort the model before saving (#7913) * checkin toposort * review comments * revert and add TODO * Add shape inference to custom symbolic functions (#7937) **Description**: As title. **Motivation and Context** - PyTorch ONNX exporter heavily depends on ONNX shape inference to export accurate and efficient model. Custom symbolic function exports the op as contrib ops, thus exporter is unable to perform standard onnx shape inference. Models with dynamic shape inputs are affected. * Fix missing files on linux (#8066) * [Mobile package] Update required operator config with additional ops for wav2vec2. (#8079) Add some additional ops to the mobile package that are needed for the wav2vec2 model. * Add module attribute to ORTModule to support HuggingFace Trainer save_model (#8088) * Fix input schema extrator for ORTModule (#8098) * Fix 32bit Android java API crash (#8122) * Fix 32bit Android java API crash * fix code formating * [Mobile package] Update required operator config with additional ops for newer version of Wav2Vec 2. (#8123) This is an update to https://github.com/microsoft/onnxruntime/pull/8079 The sample application motivating the original update changed to use an updated version of the model. Now, fewer ops are required. This change removes the previously added ops which are no longer needed. * Add int64 as a required type to ConstantOfShape as it's used by the pytorch converter for Pad. (#8128) It's also used pointlessly for torch.tensor.repeat (although that usage should always be able to be constant folded). * Update logic in props.xml to account for shared provider library changes (#8138) * Ortmodule override torch.manual_seed() (#8131) * Ortmodule override torch.manual_seed() * Fix Python Cuda loading issues (#7939) * Fix mac shared_provider warning (#8153) Co-authored-by: Guoyu Wang <62914304+gwang-msft@users.noreply.github.com> Co-authored-by: Ye Wang <52801275+wangyems@users.noreply.github.com> Co-authored-by: Bowen Bao <bowbao@microsoft.com> Co-authored-by: Ryan Hill <38674843+RyanUnderhill@users.noreply.github.com> Co-authored-by: Edward Chen <18449977+edgchen1@users.noreply.github.com> Co-authored-by: baijumeswani <bmeswani@microsoft.com> Co-authored-by: Thiago Crepaldi <thiago.crepaldi@microsoft.com> Co-authored-by: Scott McKay <skottmckay@gmail.com> Co-authored-by: Hariharan Seshadri <shariharan91@gmail.com> Co-authored-by: Sherlock <baihan.huang@gmail.com>
137 lines
5.7 KiB
Python
137 lines
5.7 KiB
Python
# Copyright (c) Microsoft Corporation. All rights reserved.
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# Licensed under the MIT License.
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#
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# Register pytorch symbolic for export using ONNX Runtime contrib ops
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from torch.onnx import register_custom_op_symbolic
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import torch.onnx.symbolic_helper as sym_help
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from torch.onnx.symbolic_helper import parse_args, _get_tensor_dim_size, _get_tensor_sizes
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_onnx_opset_version = 1
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def register_custom_op(is_ortmodule=False):
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"""
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This function registers symbolic functions for
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custom ops that are implemented as part of ONNX Runtime
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"""
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# Symbolic definition
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def inverse(g, self):
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return g.op("com.microsoft::Inverse", self).setType(self.type())
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def gelu(g, self):
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return g.op("com.microsoft::Gelu", self).setType(self.type())
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def triu(g, self, diagonal):
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return g.op("com.microsoft::Trilu", self, diagonal, upper_i=1).setType(self.type())
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def tril(g, self, diagonal):
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return g.op("com.microsoft::Trilu", self, diagonal, upper_i=0).setType(self.type())
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# Op Registration
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register_custom_op_symbolic('::inverse', inverse, _onnx_opset_version)
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register_custom_op_symbolic('::gelu', gelu, _onnx_opset_version)
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register_custom_op_symbolic('::triu', triu, _onnx_opset_version)
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register_custom_op_symbolic('::tril', tril, _onnx_opset_version)
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if is_ortmodule:
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@parse_args('v', 'v', 'i', 'b', 'b')
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def embedding(g, weight, indices, padding_idx, scale_grad_by_freq, sparse):
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custom_attributes_json = (
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'{'
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f'"padding_idx":{str(padding_idx)},'
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f'"scale_grad_by_freq":{str(scale_grad_by_freq).lower()},'
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f'"sparse":{str(sparse).lower()}'
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'}'
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)
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output = g.op("com.microsoft::ATenOp", weight, indices, name_s='aten::embedding',
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custom_attributes_json_s=custom_attributes_json)
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indices_shape = _get_tensor_sizes(indices)
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if indices_shape is not None and hasattr(weight.type(), 'with_sizes'):
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output_type = weight.type().with_sizes(indices_shape + [_get_tensor_dim_size(weight, 1)])
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output.setType(output_type)
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return output
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register_custom_op_symbolic('::embedding', embedding, _onnx_opset_version)
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@parse_args('v', 'v', 'v', 'i', 'v')
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def cross_entropy_loss(g, self, target, weight, reduction, ignore_index):
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# reduction: 0->none, 1->mean, 2->sum
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reduction = sym_help._maybe_get_const(reduction, 'i')
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reduction_vals = ['none', 'mean', 'sum']
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reduction = reduction_vals[reduction]
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output, log_prob = g.op("com.microsoft::SoftmaxCrossEntropyLossInternal",
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self, target, weight, ignore_index,
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reduction_s=reduction, outputs=2)
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output.setType(self.type())
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log_prob.setType(self.type())
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return output
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register_custom_op_symbolic('::cross_entropy_loss', cross_entropy_loss, _onnx_opset_version)
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@parse_args('v', 'v', 'v', 'i', 'v')
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def nll_loss(g, self, target, weight, reduction, ignore_index):
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# reduction: 0->none, 1->mean, 2->sum
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reduction = sym_help._maybe_get_const(reduction, 'i')
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reduction_vals = ['none', 'mean', 'sum']
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reduction = reduction_vals[reduction]
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output = g.op("com.microsoft::NegativeLogLikelihoodLossInternal",
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self, target, weight, ignore_index, reduction_s=reduction)
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output.setType(self.type())
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return output
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register_custom_op_symbolic('::nll_loss', nll_loss, _onnx_opset_version)
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@parse_args('v', 'is', 'is', 'is', 'is', 'b')
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def max_pool2d(g, self, kernel_size, stride, padding, dilation, ceil_mode):
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custom_attributes_json = (
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'{'
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f'"kernel_size":{str(kernel_size)},'
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f'"stride":{str(stride)},'
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f'"padding":{str(padding)},'
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f'"dilation":{str(dilation)},'
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f'"ceil_mode":{str(ceil_mode).lower()}'
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'}'
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)
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return g.op("com.microsoft::ATenOp", self, name_s='aten::max_pool2d_with_indices',
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custom_attributes_json_s=custom_attributes_json, outputs=2)[0]
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register_custom_op_symbolic('::max_pool2d', max_pool2d, _onnx_opset_version)
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@parse_args('v', 'i', 'i', 'i')
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def unfold(g, input, dimension, size, step):
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custom_attributes_json = (
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'{'
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f'"dimension":{str(dimension)},'
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f'"size":{str(size)},'
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f'"step":{str(step)}'
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'}'
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)
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return g.op("com.microsoft::ATenOp", input, name_s='aten::unfold',
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custom_attributes_json_s=custom_attributes_json)
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register_custom_op_symbolic('::unfold', unfold, _onnx_opset_version)
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def unregister_custom_op():
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"""
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This function unregisters symbolic functions for
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custom ops that are implemented as part of ONNX Runtime
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"""
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import torch.onnx.symbolic_registry as sym_registry
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# TODO: replace this once PyTorch supports unregister natively.
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def unregister(name, opset_version):
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ns, kind = name.split("::")
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from torch.onnx.symbolic_helper import _onnx_stable_opsets
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for version in _onnx_stable_opsets:
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if version >= opset_version and sym_registry.is_registered_op(kind, ns, version):
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del sym_registry._registry[(ns, version)][kind]
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unregister('::inverse', _onnx_opset_version)
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unregister('::gelu', _onnx_opset_version)
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unregister('::triu', _onnx_opset_version)
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unregister('::tril', _onnx_opset_version)
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