// // WARNING: This file is automatically generated! Please edit onnx.in.proto. // // Copyright (c) Facebook Inc. and Microsoft Corporation. // Licensed under the MIT license. syntax = "proto2"; package onnx; // Overview // // ONNX is an open specification that is comprised of the following components: // // 1) A definition of an extensible computation graph model. // 2) Definitions of standard data types. // 3) Definitions of built-in operators. // // This document describes the syntax of models and their computation graphs, // as well as the standard data types. Together, they are referred to as the ONNX // Intermediate Representation, or 'IR' for short. // // The normative semantic specification of the ONNX IR is found in docs/IR.md. // Definitions of the built-in neural network operators may be found in docs/Operators.md. // Notes // // Release // // We are still in the very early stage of defining ONNX. The current // version of ONNX is a starting point. While we are actively working // towards a complete spec, we would like to get the community involved // by sharing our working version of ONNX. // // Protobuf compatibility // // To simplify framework compatibility, ONNX is defined using the subset of protobuf // that is compatible with both protobuf v2 and v3. This means that we do not use any // protobuf features that are only available in one of the two versions. // // Here are the most notable contortions we have to carry out to work around // these limitations: // // - No 'map' (added protobuf 3.0). We instead represent mappings as lists // of key-value pairs, where order does not matter and duplicates // are not allowed. // Versioning // // ONNX versioning is specified in docs/IR.md and elaborated on in docs/Versioning.md // // To be compatible with both proto2 and proto3, we will use a version number // that is not defined by the default value but an explicit enum number. enum Version { // proto3 requires the first enum value to be zero. // We add this just to appease the compiler. _START_VERSION = 0; // The version field is always serialized and we will use it to store the // version that the graph is generated from. This helps us set up version // control. We should use version as // xx(major) - xx(minor) - xxxx(bugfix) // and we are starting with 0x00000001 (0.0.1), which was the // version we published on Oct 10, 2017. IR_VERSION_2017_10_10 = 0x00000001; // IR_VERSION 0.0.2 published on Oct 30, 2017 // - Added type discriminator to AttributeProto to support proto3 users IR_VERSION_2017_10_30 = 0x00000002; // IR VERSION 0.0.3 published on Nov 3, 2017 // - For operator versioning: // - Added new message OperatorSetIdProto // - Added opset_import in ModelProto // - For vendor extensions, added domain in NodeProto IR_VERSION = 0x00000003; } // Attributes // // A named attribute containing either singular float, integer, string, graph, // and tensor values, or repeated float, integer, string, graph, and tensor values. // An AttributeProto MUST contain the name field, and *only one* of the // following content fields, effectively enforcing a C/C++ union equivalent. message AttributeProto { // Note: this enum is structurally identical to the OpSchema::AttrType // enum defined in schema.h. If you rev one, you likely need to rev the other. enum AttributeType { UNDEFINED = 0; FLOAT = 1; INT = 2; STRING = 3; TENSOR = 4; GRAPH = 5; FLOATS = 6; INTS = 7; STRINGS = 8; TENSORS = 9; GRAPHS = 10; } // The name field MUST be present for this version of the IR. optional string name = 1; // namespace Attribute // if ref_attr_name is not empty, ref_attr_name is the attribute name in parent function. // In this case, this AttributeProto does not contain data, and it's a reference of attribute // in parent scope. // NOTE: This should ONLY be used in function (sub-graph). It's invalid to be used in main graph. optional string ref_attr_name = 21; // A human-readable documentation for this attribute. Markdown is allowed. optional string doc_string = 13; // The type field MUST be present for this version of the IR. // For 0.0.1 versions of the IR, this field was not defined, and // implementations needed to use has_field hueristics to determine // which value field was in use. For IR_VERSION 0.0.2 or later, this // field MUST be set and match the f|i|s|t|... field in use. This // change was made to accomodate proto3 implementations. optional AttributeType type = 20; // discriminator that indicates which field below is in use // Exactly ONE of the following fields must be present for this version of the IR optional float f = 2; // float optional int64 i = 3; // int optional bytes s = 4; // UTF-8 string optional TensorProto t = 5; // tensor value optional GraphProto g = 6; // graph // Do not use field below, it's deprecated. // optional ValueProto v = 12; // value - subsumes everything but graph repeated float floats = 7; // list of floats repeated int64 ints = 8; // list of ints repeated bytes strings = 9; // list of UTF-8 strings repeated TensorProto tensors = 10; // list of tensors repeated GraphProto graphs = 11; // list of graph } // Defines information on value, including the name, the type, and // the shape of the value. message ValueInfoProto { // This field MUST be present in this version of the IR. optional string name = 1; // namespace Value // This field MUST be present in this version of the IR. optional TypeProto type = 2; // A human-readable documentation for this value. Markdown is allowed. optional string doc_string = 3; } // Nodes // // Computation graphs are made up of a DAG of nodes, which represent what is // commonly called a "layer" or "pipeline stage" in machine learning frameworks. // // For example, it can be a node of type "Conv" that takes in an image, a filter // tensor and a bias tensor, and produces the convolved output. message NodeProto { repeated string input = 1; // namespace Value repeated string output = 2; // namespace Value // An optional identifier for this node in a graph. // This field MAY be absent in ths version of the IR. optional string name = 3; // namespace Node // The symbolic identifier of the Operator to execute. optional string op_type = 4; // namespace Operator // The domain of the OperatorSet that specifies the operator named by op_type. optional string domain = 7; // namespace Domain // Additional named attributes. repeated AttributeProto attribute = 5; // A human-readable documentation for this node. Markdown is allowed. optional string doc_string = 6; } // Models // // ModelProto is a top-level file/container format for bundling a ML model and // associating its computation graph with metadata. // // The semantics of the model are described by the associated GraphProto. message ModelProto { // The version of the IR this model targets. See Version enum above. // This field MUST be present. optional int64 ir_version = 1; // The OperatorSets this model relies on. // All ModelProtos MUST have at least one entry that // specifies which version of the ONNX OperatorSet is // being imported. // // All nodes in the ModelProto's graph will bind against the operator // with the same-domain/same-op_type operator with the HIGHEST version // in the referenced operator sets. repeated OperatorSetIdProto opset_import = 8; // The name of the framework or tool used to generate this model. // This field SHOULD be present to indicate which implementation/tool/framework // emitted the model. optional string producer_name = 2; // The version of the framework or tool used to generate this model. // This field SHOULD be present to indicate which implementation/tool/framework // emitted the model. optional string producer_version = 3; // Domain name of the model. // We use reverse domain names as name space indicators. For example: // `com.facebook.fair` or `com.microsoft.cognitiveservices` // // Together with `model_version` and GraphProto.name, this forms the unique identity of // the graph. optional string domain = 4; // The version of the graph encoded. See Version enum below. optional int64 model_version = 5; // A human-readable documentation for this model. Markdown is allowed. optional string doc_string = 6; // The parameterized graph that is evaluated to execute the model. optional GraphProto graph = 7; // Named metadata values; keys should be distinct. repeated StringStringEntryProto metadata_props = 14; }; // StringStringEntryProto follows the pattern for cross-proto-version maps. // See https://developers.google.com/protocol-buffers/docs/proto3#maps message StringStringEntryProto { optional string key = 1; optional string value= 2; }; // Graphs // // A graph defines the computational logic of a model and is comprised of a parameterized // list of nodes that form a directed acyclic graph based on their inputs and outputs. // This is the equivalent of the "network" or "graph" in many deep learning // frameworks. message GraphProto { // The nodes in the graph, sorted topologically. repeated NodeProto node = 1; // The name of the graph. optional string name = 2; // namespace Graph // A list of named tensor values, used to specify constant inputs of the graph. // Each TensorProto entry must have a distinct name (within the list) that // also appears in the input list. repeated TensorProto initializer = 5; // A human-readable documentation for this graph. Markdown is allowed. optional string doc_string = 10; // The inputs and outputs of the graph. repeated ValueInfoProto input = 11; repeated ValueInfoProto output = 12; // Information for the values in the graph. The ValueInfoProto.name's // must be distinct. It is optional for a value to appear in value_info list. repeated ValueInfoProto value_info = 13; // DO NOT USE the following fields, they were deprecated from earlier versions. // repeated string input = 3; // repeated string output = 4; // optional int64 ir_version = 6; // optional int64 producer_version = 7; // optional string producer_tag = 8; // optional string domain = 9; } // Tensors // // A serialized tensor value. message TensorProto { enum DataType { UNDEFINED = 0; // Basic types. FLOAT = 1; // float UINT8 = 2; // uint8_t INT8 = 3; // int8_t UINT16 = 4; // uint16_t INT16 = 5; // int16_t INT32 = 6; // int32_t INT64 = 7; // int64_t STRING = 8; // string BOOL = 9; // bool // Advanced types FLOAT16 = 10; DOUBLE = 11; UINT32 = 12; UINT64 = 13; COMPLEX64 = 14; // complex with float32 real and imaginary components COMPLEX128 = 15; // complex with float64 real and imaginary components // Future extensions go here. } // The shape of the tensor. repeated int64 dims = 1; // The data type of the tensor. optional DataType data_type = 2; // For very large tensors, we may want to store them in chunks, in which // case the following fields will specify the segment that is stored in // the current TensorProto. message Segment { optional int64 begin = 1; optional int64 end = 2; } optional Segment segment = 3; // Tensor content must be organized in row-major order. // // Depending on the data_type field, exactly one of the fields below with // name ending in _data is used to store the elements of the tensor. // For float and complex64 values // Complex64 tensors are encoded as a single array of floats, // with the real components appearing in odd numbered positions, // and the corresponding imaginary component apparing in the // subsequent even numbered position. (e.g., [1.0 + 2.0i, 3.0 + 4.0i] // is encoded as [1.0, 2.0 ,3.0 ,4.0] // When this field is present, the data_type field MUST be FLOAT or COMPLEX64. repeated float float_data = 4 [packed = true]; // For int32, uint8, int8, uint16, int16, bool, and float16 values // float16 values must be bit-wise converted to an uint16_t prior // to writing to the buffer. // When this field is present, the data_type field MUST be // INT32, INT16, INT8, UINT16, INT8, BOOL, or FLOAT32 repeated int32 int32_data = 5 [packed = true]; // For strings. // Each element of string_data is a UTF-8 encoded Unicode // string. No trailing null, no leading BOM. The protobuf "string" // scalar type is not used to match ML community conventions. // When this field is present, the data_type field MUST be STRING repeated bytes string_data = 6; // For int64. // When this field is present, the data_type field MUST be INT64 repeated int64 int64_data = 7 [packed = true]; // Optionally, a name for the tensor. optional string name = 8; // namespace Value // A human-readable documentation for this tensor. Markdown is allowed. optional string doc_string = 12; // Serializations can either use one of the fields above, or use this // raw bytes field. The only exception is the string case, where one is // required to store the content in the repeated bytes string_data field. // // When this raw_data field is used to store tensor value, elements MUST // be stored in as fixed-width, little-endian order. // Floating-point data types MUST be stored in IEEE 754 format. // Complex64 elements must be written as two consecutive FLOAT values, real component first. // Complex128 elements must be written as two consecutive DOUBLE values, real component first. // Boolean type MUST be written one byte per tensor element (00000001 for true, 00000000 for false). // // Note: the advantage of specific field rather than the raw_data field is // that in some cases (e.g. int data), protobuf does a better packing via // variable length storage, and may lead to smaller binary footprint. // When this field is present, the data_type field MUST NOT be STRING or UNDEFINED optional bytes raw_data = 9; // For double // Complex64 tensors are encoded as a single array of doubles, // with the real components appearing in odd numbered positions, // and the corresponding imaginary component apparing in the // subsequent even numbered position. (e.g., [1.0 + 2.0i, 3.0 + 4.0i] // is encoded as [1.0, 2.0 ,3.0 ,4.0] // When this field is present, the data_type field MUST be DOUBLE or COMPLEX128 repeated double double_data = 10 [packed = true]; // For uint64 and uint32 values // When this field is present, the data_type field MUST be // UINT32 or UINT64 repeated uint64 uint64_data = 11 [packed = true]; } // Defines a tensor shape. A dimension can be either an integer value // or a symbolic variable. A symbolic variable represents an unknown // dimension. message TensorShapeProto { message Dimension { oneof value { int64 dim_value = 1; string dim_param = 2; // namespace Shape }; // Standard denotation can optionally be used to denote tensor // dimensions with standard semantic descriptions to ensure // that operations are applied to the correct axis of a tensor. optional string denotation = 3; }; repeated Dimension dim = 1; } // A set of pre-defined constants to be used as values for // the standard denotation field in TensorShapeProto.Dimension // for semantic description of the tensor dimension. message DenotationConstProto { // Describe a batch number dimension. optional string DATA_BATCH = 1 [default = "DATA_BATCH"]; // Describe a channel dimension. optional string DATA_CHANNEL = 2 [default = "DATA_CHANNEL"]; // Describe a time dimension. optional string DATA_TIME = 3 [default = "DATA_TIME"]; // Describe a feature dimension. This is typically a feature // dimension in RNN and/or spatial dimension in CNN. optional string DATA_FEATURE = 4 [default = "DATA_FEATURE"]; // Describe a filter in-channel dimension. This is the dimension // that is identical (in size) to the channel dimension of the input // image feature maps. optional string FILTER_IN_CHANNEL = 5 [default = "FILTER_IN_CHANNEL"]; // Describe a filter out channel dimension. This is the dimension // that is identical (int size) to the channel dimension of the output // image feature maps. optional string FILTER_OUT_CHANNEL = 6 [default = "FILTER_OUT_CHANNEL"]; // Describe a filter spatial dimension. optional string FILTER_SPATIAL = 7 [default = "FILTER_SPATIAL"]; } // Types // // The standard ONNX data types. message TypeProto { message Tensor { // This field MUST NOT have the value of UNDEFINED // This field MUST be present for this version of the IR. optional TensorProto.DataType elem_type = 1; optional TensorShapeProto shape = 2; } oneof value { // The type of a tensor. Tensor tensor_type = 1; } } // 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; }