718c41634f
1.项目后端整体迁移至PaddleOCR-NCNN算法,已通过基本的兼容性测试 2.工程改为使用CMake组织,后续为了更好地兼容第三方库,不再提供QMake工程 3.重整权利声明文件,重整代码工程,确保最小化侵权风险 Log: 切换后端至PaddleOCR-NCNN,切换工程为CMake Change-Id: I4d5d2c5d37505a4a24b389b1a4c5d12f17bfa38c
505 lines
20 KiB
Protocol Buffer
505 lines
20 KiB
Protocol Buffer
//
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// WARNING: This file is automatically generated! Please edit onnx.in.proto.
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//
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// Copyright (c) ONNX Project Contributors.
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// Licensed under the MIT license.
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syntax = "proto2";
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package onnx;
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// Overview
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//
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// ONNX is an open specification that is comprised of the following components:
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//
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// 1) A definition of an extensible computation graph model.
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// 2) Definitions of standard data types.
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// 3) Definitions of built-in operators.
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//
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// This document describes the syntax of models and their computation graphs,
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// as well as the standard data types. Together, they are referred to as the ONNX
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// Intermediate Representation, or 'IR' for short.
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//
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// The normative semantic specification of the ONNX IR is found in docs/IR.md.
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// Definitions of the built-in neural network operators may be found in docs/Operators.md.
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// Notes
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//
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// Release
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//
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// We are still in the very early stage of defining ONNX. The current
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// version of ONNX is a starting point. While we are actively working
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// towards a complete spec, we would like to get the community involved
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// by sharing our working version of ONNX.
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//
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// Protobuf compatibility
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//
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// To simplify framework compatibility, ONNX is defined using the subset of protobuf
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// that is compatible with both protobuf v2 and v3. This means that we do not use any
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// protobuf features that are only available in one of the two versions.
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//
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// Here are the most notable contortions we have to carry out to work around
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// these limitations:
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//
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// - No 'map' (added protobuf 3.0). We instead represent mappings as lists
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// of key-value pairs, where order does not matter and duplicates
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// are not allowed.
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// Versioning
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//
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// ONNX versioning is specified in docs/IR.md and elaborated on in docs/Versioning.md
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//
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// To be compatible with both proto2 and proto3, we will use a version number
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// that is not defined by the default value but an explicit enum number.
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enum Version {
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// proto3 requires the first enum value to be zero.
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// We add this just to appease the compiler.
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_START_VERSION = 0;
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// The version field is always serialized and we will use it to store the
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// version that the graph is generated from. This helps us set up version
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// control.
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// For the IR, we are using simple numbers starting with with 0x00000001,
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// which was the version we published on Oct 10, 2017.
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IR_VERSION_2017_10_10 = 0x0000000000000001;
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// IR_VERSION 2 published on Oct 30, 2017
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// - Added type discriminator to AttributeProto to support proto3 users
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IR_VERSION_2017_10_30 = 0x0000000000000002;
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// IR VERSION 3 published on Nov 3, 2017
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// - For operator versioning:
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// - Added new message OperatorSetIdProto
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// - Added opset_import in ModelProto
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// - For vendor extensions, added domain in NodeProto
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IR_VERSION_2017_11_3 = 0x0000000000000003;
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// IR VERSION 4 published on Jan 22, 2019
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// - Relax constraint that initializers should be a subset of graph inputs
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// - Add type BFLOAT16
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IR_VERSION_2019_1_22 = 0x0000000000000004;
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// IR VERSION 5 published on March 18, 2019
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// - Add message TensorAnnotation.
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// - Add quantization annotation in GraphProto to map tensor with its scale and zero point quantization parameters.
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IR_VERSION = 0x0000000000000005;
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}
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// Attributes
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//
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// A named attribute containing either singular float, integer, string, graph,
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// and tensor values, or repeated float, integer, string, graph, and tensor values.
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// An AttributeProto MUST contain the name field, and *only one* of the
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// following content fields, effectively enforcing a C/C++ union equivalent.
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message AttributeProto {
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// Note: this enum is structurally identical to the OpSchema::AttrType
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// enum defined in schema.h. If you rev one, you likely need to rev the other.
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enum AttributeType {
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UNDEFINED = 0;
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FLOAT = 1;
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INT = 2;
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STRING = 3;
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TENSOR = 4;
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GRAPH = 5;
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FLOATS = 6;
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INTS = 7;
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STRINGS = 8;
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TENSORS = 9;
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GRAPHS = 10;
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}
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// The name field MUST be present for this version of the IR.
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optional string name = 1; // namespace Attribute
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// if ref_attr_name is not empty, ref_attr_name is the attribute name in parent function.
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// In this case, this AttributeProto does not contain data, and it's a reference of attribute
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// in parent scope.
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// NOTE: This should ONLY be used in function (sub-graph). It's invalid to be used in main graph.
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optional string ref_attr_name = 21;
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// A human-readable documentation for this attribute. Markdown is allowed.
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optional string doc_string = 13;
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// The type field MUST be present for this version of the IR.
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// For 0.0.1 versions of the IR, this field was not defined, and
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// implementations needed to use has_field hueristics to determine
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// which value field was in use. For IR_VERSION 0.0.2 or later, this
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// field MUST be set and match the f|i|s|t|... field in use. This
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// change was made to accommodate proto3 implementations.
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optional AttributeType type = 20; // discriminator that indicates which field below is in use
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// Exactly ONE of the following fields must be present for this version of the IR
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optional float f = 2; // float
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optional int64 i = 3; // int
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optional bytes s = 4; // UTF-8 string
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optional TensorProto t = 5; // tensor value
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optional GraphProto g = 6; // graph
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// Do not use field below, it's deprecated.
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// optional ValueProto v = 12; // value - subsumes everything but graph
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repeated float floats = 7; // list of floats
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repeated int64 ints = 8; // list of ints
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repeated bytes strings = 9; // list of UTF-8 strings
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repeated TensorProto tensors = 10; // list of tensors
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repeated GraphProto graphs = 11; // list of graph
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}
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// Defines information on value, including the name, the type, and
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// the shape of the value.
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message ValueInfoProto {
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// This field MUST be present in this version of the IR.
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optional string name = 1; // namespace Value
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// This field MUST be present in this version of the IR.
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optional TypeProto type = 2;
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// A human-readable documentation for this value. Markdown is allowed.
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optional string doc_string = 3;
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}
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// Nodes
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//
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// Computation graphs are made up of a DAG of nodes, which represent what is
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// commonly called a "layer" or "pipeline stage" in machine learning frameworks.
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//
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// For example, it can be a node of type "Conv" that takes in an image, a filter
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// tensor and a bias tensor, and produces the convolved output.
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message NodeProto {
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repeated string input = 1; // namespace Value
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repeated string output = 2; // namespace Value
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// An optional identifier for this node in a graph.
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// This field MAY be absent in ths version of the IR.
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optional string name = 3; // namespace Node
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// The symbolic identifier of the Operator to execute.
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optional string op_type = 4; // namespace Operator
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// The domain of the OperatorSet that specifies the operator named by op_type.
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optional string domain = 7; // namespace Domain
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// Additional named attributes.
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repeated AttributeProto attribute = 5;
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// A human-readable documentation for this node. Markdown is allowed.
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optional string doc_string = 6;
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}
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// Models
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//
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// ModelProto is a top-level file/container format for bundling a ML model and
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// associating its computation graph with metadata.
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//
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// The semantics of the model are described by the associated GraphProto.
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message ModelProto {
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// The version of the IR this model targets. See Version enum above.
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// This field MUST be present.
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optional int64 ir_version = 1;
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// The OperatorSets this model relies on.
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// All ModelProtos MUST have at least one entry that
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// specifies which version of the ONNX OperatorSet is
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// being imported.
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//
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// All nodes in the ModelProto's graph will bind against the operator
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// with the same-domain/same-op_type operator with the HIGHEST version
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// in the referenced operator sets.
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repeated OperatorSetIdProto opset_import = 8;
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// The name of the framework or tool used to generate this model.
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// This field SHOULD be present to indicate which implementation/tool/framework
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// emitted the model.
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optional string producer_name = 2;
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// The version of the framework or tool used to generate this model.
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// This field SHOULD be present to indicate which implementation/tool/framework
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// emitted the model.
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optional string producer_version = 3;
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// Domain name of the model.
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// We use reverse domain names as name space indicators. For example:
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// `com.facebook.fair` or `com.microsoft.cognitiveservices`
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//
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// Together with `model_version` and GraphProto.name, this forms the unique identity of
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// the graph.
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optional string domain = 4;
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// The version of the graph encoded. See Version enum below.
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optional int64 model_version = 5;
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// A human-readable documentation for this model. Markdown is allowed.
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optional string doc_string = 6;
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// The parameterized graph that is evaluated to execute the model.
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optional GraphProto graph = 7;
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// Named metadata values; keys should be distinct.
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repeated StringStringEntryProto metadata_props = 14;
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};
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// StringStringEntryProto follows the pattern for cross-proto-version maps.
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// See https://developers.google.com/protocol-buffers/docs/proto3#maps
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message StringStringEntryProto {
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optional string key = 1;
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optional string value= 2;
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};
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message TensorAnnotation {
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optional string tensor_name = 1;
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// <key, value> pairs to annotate tensor specified by <tensor_name> above.
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// The keys used in the mapping below must be pre-defined in ONNX spec.
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// For example, for 8-bit linear quantization case, 'SCALE_TENSOR', 'ZERO_POINT_TENSOR' will be pre-defined as
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// quantization parameter keys.
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repeated StringStringEntryProto quant_parameter_tensor_names = 2;
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}
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// Graphs
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//
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// A graph defines the computational logic of a model and is comprised of a parameterized
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// list of nodes that form a directed acyclic graph based on their inputs and outputs.
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// This is the equivalent of the "network" or "graph" in many deep learning
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// frameworks.
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message GraphProto {
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// The nodes in the graph, sorted topologically.
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repeated NodeProto node = 1;
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// The name of the graph.
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optional string name = 2; // namespace Graph
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// A list of named tensor values, used to specify constant inputs of the graph.
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// Each TensorProto entry must have a distinct name (within the list) that
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// MAY also appear in the input list.
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repeated TensorProto initializer = 5;
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// A human-readable documentation for this graph. Markdown is allowed.
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optional string doc_string = 10;
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// The inputs and outputs of the graph.
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repeated ValueInfoProto input = 11;
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repeated ValueInfoProto output = 12;
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// Information for the values in the graph. The ValueInfoProto.name's
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// must be distinct. It is optional for a value to appear in value_info list.
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repeated ValueInfoProto value_info = 13;
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// This field carries information to indicate the mapping among a tensor and its
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// quantization parameter tensors. For example:
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// For tensor 'a', it may have {'SCALE_TENSOR', 'a_scale'} and {'ZERO_POINT_TENSOR', 'a_zero_point'} annotated,
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// which means, tensor 'a_scale' and tensor 'a_zero_point' are scale and zero point of tensor 'a' in the model.
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repeated TensorAnnotation quantization_annotation = 14;
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// DO NOT USE the following fields, they were deprecated from earlier versions.
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// repeated string input = 3;
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// repeated string output = 4;
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// optional int64 ir_version = 6;
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// optional int64 producer_version = 7;
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// optional string producer_tag = 8;
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// optional string domain = 9;
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}
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// Tensors
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//
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// A serialized tensor value.
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message TensorProto {
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enum DataType {
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UNDEFINED = 0;
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// Basic types.
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FLOAT = 1; // float
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UINT8 = 2; // uint8_t
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INT8 = 3; // int8_t
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UINT16 = 4; // uint16_t
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INT16 = 5; // int16_t
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INT32 = 6; // int32_t
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INT64 = 7; // int64_t
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STRING = 8; // string
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BOOL = 9; // bool
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// IEEE754 half-precision floating-point format (16 bits wide).
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// This format has 1 sign bit, 5 exponent bits, and 10 mantissa bits.
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FLOAT16 = 10;
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DOUBLE = 11;
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UINT32 = 12;
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UINT64 = 13;
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COMPLEX64 = 14; // complex with float32 real and imaginary components
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COMPLEX128 = 15; // complex with float64 real and imaginary components
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// Non-IEEE floating-point format based on IEEE754 single-precision
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// floating-point number truncated to 16 bits.
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// This format has 1 sign bit, 8 exponent bits, and 7 mantissa bits.
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BFLOAT16 = 16;
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// Future extensions go here.
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}
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// The shape of the tensor.
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repeated int64 dims = 1;
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// The data type of the tensor.
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// This field MUST have a valid TensorProto.DataType value
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optional int32 data_type = 2;
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// For very large tensors, we may want to store them in chunks, in which
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// case the following fields will specify the segment that is stored in
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// the current TensorProto.
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message Segment {
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optional int64 begin = 1;
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optional int64 end = 2;
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}
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optional Segment segment = 3;
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// Tensor content must be organized in row-major order.
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//
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// Depending on the data_type field, exactly one of the fields below with
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// name ending in _data is used to store the elements of the tensor.
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// For float and complex64 values
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// Complex64 tensors are encoded as a single array of floats,
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// with the real components appearing in odd numbered positions,
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// and the corresponding imaginary component apparing in the
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// subsequent even numbered position. (e.g., [1.0 + 2.0i, 3.0 + 4.0i]
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// is encoded as [1.0, 2.0 ,3.0 ,4.0]
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// When this field is present, the data_type field MUST be FLOAT or COMPLEX64.
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repeated float float_data = 4 [packed = true];
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// For int32, uint8, int8, uint16, int16, bool, and float16 values
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// float16 values must be bit-wise converted to an uint16_t prior
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// to writing to the buffer.
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// When this field is present, the data_type field MUST be
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// INT32, INT16, INT8, UINT16, UINT8, BOOL, or FLOAT16
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repeated int32 int32_data = 5 [packed = true];
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// For strings.
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// Each element of string_data is a UTF-8 encoded Unicode
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// string. No trailing null, no leading BOM. The protobuf "string"
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// scalar type is not used to match ML community conventions.
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// When this field is present, the data_type field MUST be STRING
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repeated bytes string_data = 6;
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// For int64.
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// When this field is present, the data_type field MUST be INT64
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repeated int64 int64_data = 7 [packed = true];
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// Optionally, a name for the tensor.
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optional string name = 8; // namespace Value
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// A human-readable documentation for this tensor. Markdown is allowed.
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optional string doc_string = 12;
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// Serializations can either use one of the fields above, or use this
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// raw bytes field. The only exception is the string case, where one is
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// required to store the content in the repeated bytes string_data field.
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//
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// When this raw_data field is used to store tensor value, elements MUST
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// be stored in as fixed-width, little-endian order.
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// Floating-point data types MUST be stored in IEEE 754 format.
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// Complex64 elements must be written as two consecutive FLOAT values, real component first.
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// Complex128 elements must be written as two consecutive DOUBLE values, real component first.
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// Boolean type MUST be written one byte per tensor element (00000001 for true, 00000000 for false).
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//
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// Note: the advantage of specific field rather than the raw_data field is
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// that in some cases (e.g. int data), protobuf does a better packing via
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// variable length storage, and may lead to smaller binary footprint.
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// When this field is present, the data_type field MUST NOT be STRING or UNDEFINED
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optional bytes raw_data = 9;
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// Data can be stored inside the protobuf file using type-specific fields or raw_data.
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// Alternatively, raw bytes data can be stored in an external file, using the external_data field.
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// external_data stores key-value pairs describing data location. Recognized keys are:
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// - "location" (required) - POSIX filesystem path relative to the directory where the ONNX
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// protobuf model was stored
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// - "offset" (optional) - position of byte at which stored data begins. Integer stored as string.
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// Offset values SHOULD be multiples 4096 (page size) to enable mmap support.
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// - "length" (optional) - number of bytes containing data. Integer stored as string.
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// - "checksum" (optional) - SHA1 digest of file specified in under 'location' key.
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repeated StringStringEntryProto external_data = 13;
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// Location of the data for this tensor. MUST be one of:
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// - DEFAULT - data stored inside the protobuf message. Data is stored in raw_data (if set) otherwise in type-specified field.
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// - EXTERNAL - data stored in an external location as described by external_data field.
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enum DataLocation {
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DEFAULT = 0;
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EXTERNAL = 1;
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}
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// If value not set, data is stored in raw_data (if set) otherwise in type-specified field.
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optional DataLocation data_location = 14;
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// For double
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// Complex128 tensors are encoded as a single array of doubles,
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// with the real components appearing in odd numbered positions,
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// and the corresponding imaginary component apparing in the
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// subsequent even numbered position. (e.g., [1.0 + 2.0i, 3.0 + 4.0i]
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// is encoded as [1.0, 2.0 ,3.0 ,4.0]
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// When this field is present, the data_type field MUST be DOUBLE or COMPLEX128
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repeated double double_data = 10 [packed = true];
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// For uint64 and uint32 values
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// When this field is present, the data_type field MUST be
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// UINT32 or UINT64
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repeated uint64 uint64_data = 11 [packed = true];
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}
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// Defines a tensor shape. A dimension can be either an integer value
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// or a symbolic variable. A symbolic variable represents an unknown
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// dimension.
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message TensorShapeProto {
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message Dimension {
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oneof value {
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int64 dim_value = 1;
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string dim_param = 2; // namespace Shape
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};
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// Standard denotation can optionally be used to denote tensor
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// dimensions with standard semantic descriptions to ensure
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// that operations are applied to the correct axis of a tensor.
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// Refer to https://github.com/onnx/onnx/blob/master/docs/DimensionDenotation.md#denotation-definition
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// for pre-defined dimension denotations.
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optional string denotation = 3;
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};
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repeated Dimension dim = 1;
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}
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// Types
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//
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// The standard ONNX data types.
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message TypeProto {
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message Tensor {
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// This field MUST NOT have the value of UNDEFINED
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// This field MUST have a valid TensorProto.DataType value
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// This field MUST be present for this version of the IR.
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optional int32 elem_type = 1;
|
|
optional TensorShapeProto shape = 2;
|
|
}
|
|
|
|
|
|
oneof value {
|
|
// The type of a tensor.
|
|
Tensor tensor_type = 1;
|
|
|
|
}
|
|
|
|
// An optional denotation can be used to denote the whole
|
|
// type with a standard semantic description as to what is
|
|
// stored inside. Refer to https://github.com/onnx/onnx/blob/master/docs/TypeDenotation.md#type-denotation-definition
|
|
// for pre-defined type denotations.
|
|
optional string denotation = 6;
|
|
}
|
|
|
|
// Operator Sets
|
|
//
|
|
// OperatorSets are uniquely identified by a (domain, opset_version) pair.
|
|
message OperatorSetIdProto {
|
|
// The domain of the operator set being identified.
|
|
// The empty string ("") or absence of this field implies the operator
|
|
// set that is defined as part of the ONNX specification.
|
|
// This field MUST be present in this version of the IR when referring to any other operator set.
|
|
optional string domain = 1;
|
|
|
|
// The version of the operator set being identified.
|
|
// This field MUST be present in this version of the IR.
|
|
optional int64 version = 2;
|
|
} |