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- export const MNN = {};
- MNN.NetSource = {
- CAFFE: 0,
- TENSORFLOW: 1,
- TFLITE: 2,
- ONNX: 3,
- TORCH: 4
- };
- MNN.DataType = {
- DT_INVALID: 0,
- DT_FLOAT: 1,
- DT_DOUBLE: 2,
- DT_INT32: 3,
- DT_UINT8: 4,
- DT_INT16: 5,
- DT_INT8: 6,
- DT_STRING: 7,
- DT_COMPLEX64: 8,
- DT_INT64: 9,
- DT_BOOL: 10,
- DT_QINT8: 11,
- DT_QUINT8: 12,
- DT_QINT32: 13,
- DT_BFLOAT16: 14,
- DT_QINT16: 15,
- DT_QUINT16: 16,
- DT_UINT16: 17,
- DT_COMPLEX128: 18,
- DT_HALF: 19,
- DT_RESOURCE: 20,
- DT_VARIANT: 21
- };
- MNN.MNN_DATA_FORMAT = {
- NCHW: 0,
- NHWC: 1,
- NC4HW4: 2,
- NHWC4: 3,
- UNKNOWN: 4
- };
- MNN.Blob = class Blob {
- static decode(reader, position) {
- const $ = new MNN.Blob();
- $.dims = reader.array(position, 4, Int32Array);
- $.dataFormat = reader.int8_(position, 6, 0);
- $.dataType = reader.int32_(position, 8, 1);
- $.uint8s = reader.array(position, 10, Uint8Array);
- $.int8s = reader.array(position, 12, Int8Array);
- $.int32s = reader.array(position, 14, Int32Array);
- $.int64s = reader.int64s_(position, 16);
- $.float32s = reader.array(position, 18, Float32Array);
- $.strings = reader.strings_(position, 20);
- $.external = reader.int64s_(position, 22);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Blob();
- $.dims = reader.array(json.dims, Int32Array);
- $.dataFormat = MNN.MNN_DATA_FORMAT[json.dataFormat];
- $.dataType = MNN.DataType[json.dataType];
- $.uint8s = reader.array(json.uint8s, Uint8Array);
- $.int8s = reader.array(json.int8s, Int8Array);
- $.int32s = reader.array(json.int32s, Int32Array);
- $.int64s = reader.array(json.int64s);
- $.float32s = reader.array(json.float32s, Float32Array);
- $.strings = reader.array(json.strings);
- $.external = reader.array(json.external);
- return $;
- }
- };
- MNN.ListValue = class ListValue {
- static decode(reader, position) {
- const $ = new MNN.ListValue();
- $.s = reader.strings_(position, 4);
- $.i = reader.array(position, 6, Int32Array);
- $.f = reader.array(position, 8, Float32Array);
- $.b = reader.bools_(position, 10);
- $.type = reader.array(position, 12, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ListValue();
- $.s = reader.array(json.s);
- $.i = reader.array(json.i, Int32Array);
- $.f = reader.array(json.f, Float32Array);
- $.b = reader.array(json.b);
- $.type = reader.objects(json.type, MNN.DataType);
- return $;
- }
- };
- MNN.Attribute = class Attribute {
- static decode(reader, position) {
- const $ = new MNN.Attribute();
- $.s = reader.string_(position, 4, null);
- $.i = reader.int32_(position, 6, 0);
- $.b = reader.bool_(position, 8, false);
- $.key = reader.string_(position, 10, null);
- $.type = reader.int32_(position, 12, 0);
- $.f = reader.float32_(position, 14, 0);
- $.tensor = reader.table(position, 16, MNN.Blob);
- $.list = reader.table(position, 18, MNN.ListValue);
- $.func = reader.table(position, 20, MNN.NamedAttrList);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Attribute();
- $.s = reader.value(json.s, null);
- $.i = reader.value(json.i, 0);
- $.b = reader.value(json.b, false);
- $.key = reader.value(json.key, null);
- $.type = MNN.DataType[json.type];
- $.f = reader.value(json.f, 0);
- $.tensor = reader.object(json.tensor, MNN.Blob);
- $.list = reader.object(json.list, MNN.ListValue);
- $.func = reader.object(json.func, MNN.NamedAttrList);
- return $;
- }
- };
- MNN.NamedAttrList = class NamedAttrList {
- static decode(reader, position) {
- const $ = new MNN.NamedAttrList();
- $.name = reader.string_(position, 4, null);
- $.attr = reader.tables(position, 6, MNN.Attribute);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.NamedAttrList();
- $.name = reader.value(json.name, null);
- $.attr = reader.objects(json.attr, MNN.Attribute);
- return $;
- }
- };
- MNN.PadMode = {
- CAFFE: 0,
- VALID: 1,
- SAME: 2
- };
- MNN.Convolution2DCommon = class Convolution2DCommon {
- static decode(reader, position) {
- const $ = new MNN.Convolution2DCommon();
- $.padX = reader.int32_(position, 4, 0);
- $.padY = reader.int32_(position, 6, 0);
- $.kernelX = reader.int32_(position, 8, 1);
- $.kernelY = reader.int32_(position, 10, 1);
- $.strideX = reader.int32_(position, 12, 1);
- $.strideY = reader.int32_(position, 14, 1);
- $.dilateX = reader.int32_(position, 16, 1);
- $.dilateY = reader.int32_(position, 18, 1);
- $.padMode = reader.int8_(position, 20, 0);
- $.group = reader.int32_(position, 22, 1);
- $.outputCount = reader.int32_(position, 24, 0);
- $.inputCount = reader.int32_(position, 26, 0);
- $.relu = reader.bool_(position, 28, false);
- $.relu6 = reader.bool_(position, 30, false);
- $.pads = reader.array(position, 32, Int32Array);
- $.outPads = reader.array(position, 34, Int32Array);
- $.hasOutputShape = reader.bool_(position, 36, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Convolution2DCommon();
- $.padX = reader.value(json.padX, 0);
- $.padY = reader.value(json.padY, 0);
- $.kernelX = reader.value(json.kernelX, 1);
- $.kernelY = reader.value(json.kernelY, 1);
- $.strideX = reader.value(json.strideX, 1);
- $.strideY = reader.value(json.strideY, 1);
- $.dilateX = reader.value(json.dilateX, 1);
- $.dilateY = reader.value(json.dilateY, 1);
- $.padMode = MNN.PadMode[json.padMode];
- $.group = reader.value(json.group, 1);
- $.outputCount = reader.value(json.outputCount, 0);
- $.inputCount = reader.value(json.inputCount, 0);
- $.relu = reader.value(json.relu, false);
- $.relu6 = reader.value(json.relu6, false);
- $.pads = reader.array(json.pads, Int32Array);
- $.outPads = reader.array(json.outPads, Int32Array);
- $.hasOutputShape = reader.value(json.hasOutputShape, false);
- return $;
- }
- };
- MNN.Convolution3DCommon = class Convolution3DCommon {
- static decode(reader, position) {
- const $ = new MNN.Convolution3DCommon();
- $.dilates = reader.array(position, 4, Int32Array);
- $.strides = reader.array(position, 6, Int32Array);
- $.kernels = reader.array(position, 8, Int32Array);
- $.pads = reader.array(position, 10, Int32Array);
- $.padMode = reader.int8_(position, 12, 0);
- $.inputCount = reader.int32_(position, 14, 0);
- $.outputCount = reader.int32_(position, 16, 0);
- $.relu = reader.bool_(position, 18, false);
- $.relu6 = reader.bool_(position, 20, false);
- $.group = reader.int32_(position, 22, 1);
- $.outPads = reader.array(position, 24, Int32Array);
- $.hasOutputShape = reader.bool_(position, 26, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Convolution3DCommon();
- $.dilates = reader.array(json.dilates, Int32Array);
- $.strides = reader.array(json.strides, Int32Array);
- $.kernels = reader.array(json.kernels, Int32Array);
- $.pads = reader.array(json.pads, Int32Array);
- $.padMode = MNN.PadMode[json.padMode];
- $.inputCount = reader.value(json.inputCount, 0);
- $.outputCount = reader.value(json.outputCount, 0);
- $.relu = reader.value(json.relu, false);
- $.relu6 = reader.value(json.relu6, false);
- $.group = reader.value(json.group, 1);
- $.outPads = reader.array(json.outPads, Int32Array);
- $.hasOutputShape = reader.value(json.hasOutputShape, false);
- return $;
- }
- };
- MNN.SparseAlgo = {
- RANDOM: 0,
- SIMD_OC: 1
- };
- MNN.SparseCommon = class SparseCommon {
- static decode(reader, position) {
- const $ = new MNN.SparseCommon();
- $.method = reader.int8_(position, 4, 0);
- $.args = reader.tables(position, 6, MNN.Attribute);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.SparseCommon();
- $.method = MNN.SparseAlgo[json.method];
- $.args = reader.objects(json.args, MNN.Attribute);
- return $;
- }
- };
- MNN.IDSTQuan = class IDSTQuan {
- static decode(reader, position) {
- const $ = new MNN.IDSTQuan();
- $.buffer = reader.array(position, 4, Int8Array);
- $.alpha = reader.array(position, 6, Float32Array);
- $.type = reader.int32_(position, 8, 0);
- $.useInt32 = reader.bool_(position, 10, false);
- $.quantScale = reader.float32_(position, 12, 0);
- $.scaleIn = reader.float32_(position, 14, 0);
- $.scaleOut = reader.float32_(position, 16, 0);
- $.aMaxOrBits = reader.int32_(position, 18, 0);
- $.aMin = reader.int32_(position, 20, 0);
- $.readType = reader.int32_(position, 22, 0);
- $.has_scaleInt = reader.bool_(position, 24, false);
- $.shapeInt32 = reader.bool_(position, 26, false);
- $.weightSize = reader.uint32_(position, 28, 0);
- $.index = reader.array(position, 30, Uint32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.IDSTQuan();
- $.buffer = reader.array(json.buffer, Int8Array);
- $.alpha = reader.array(json.alpha, Float32Array);
- $.type = reader.value(json.type, 0);
- $.useInt32 = reader.value(json.useInt32, false);
- $.quantScale = reader.value(json.quantScale, 0);
- $.scaleIn = reader.value(json.scaleIn, 0);
- $.scaleOut = reader.value(json.scaleOut, 0);
- $.aMaxOrBits = reader.value(json.aMaxOrBits, 0);
- $.aMin = reader.value(json.aMin, 0);
- $.readType = reader.value(json.readType, 0);
- $.has_scaleInt = reader.value(json.has_scaleInt, false);
- $.shapeInt32 = reader.value(json.shapeInt32, false);
- $.weightSize = reader.value(json.weightSize, 0);
- $.index = reader.array(json.index, Uint32Array);
- return $;
- }
- };
- MNN.QuantizeAlgo = {
- DEFAULT: 0,
- OVERFLOW_AWARE: 1,
- WINOGRAD_AWARE: 2
- };
- MNN.QuantizedFloatParam = class QuantizedFloatParam {
- static decode(reader, position) {
- const $ = new MNN.QuantizedFloatParam();
- $.weight = reader.array(position, 4, Int8Array);
- $.bias = reader.array(position, 6, Int32Array);
- $.scale = reader.array(position, 8, Float32Array);
- $.tensorScale = reader.array(position, 10, Float32Array);
- $.method = reader.int8_(position, 12, 0);
- $.nbits = reader.int32_(position, 14, 8);
- $.zeroPoint = reader.int8_(position, 16, 0);
- $.outputZeroPoint = reader.int8_(position, 18, 0);
- $.clampMin = reader.int8_(position, 20, -128);
- $.clampMax = reader.int8_(position, 22, 127);
- $.winogradAttr = reader.array(position, 24, Int32Array);
- $.outputDataType = reader.int32_(position, 26, 6);
- $.floatzeros = reader.array(position, 28, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedFloatParam();
- $.weight = reader.array(json.weight, Int8Array);
- $.bias = reader.array(json.bias, Int32Array);
- $.scale = reader.array(json.scale, Float32Array);
- $.tensorScale = reader.array(json.tensorScale, Float32Array);
- $.method = MNN.QuantizeAlgo[json.method];
- $.nbits = reader.value(json.nbits, 8);
- $.zeroPoint = reader.value(json.zeroPoint, 0);
- $.outputZeroPoint = reader.value(json.outputZeroPoint, 0);
- $.clampMin = reader.value(json.clampMin, -128);
- $.clampMax = reader.value(json.clampMax, 127);
- $.winogradAttr = reader.array(json.winogradAttr, Int32Array);
- $.outputDataType = MNN.DataType[json.outputDataType];
- $.floatzeros = reader.array(json.floatzeros, Float32Array);
- return $;
- }
- };
- MNN.Convolution2D = class Convolution2D {
- static decode(reader, position) {
- const $ = new MNN.Convolution2D();
- $.common = reader.table(position, 4, MNN.Convolution2DCommon);
- $.weight = reader.array(position, 6, Float32Array);
- $.bias = reader.array(position, 8, Float32Array);
- $.quanParameter = reader.table(position, 10, MNN.IDSTQuan);
- $.symmetricQuan = reader.table(position, 12, MNN.QuantizedFloatParam);
- $.sparseParameter = reader.table(position, 14, MNN.SparseCommon);
- $.external = reader.int64s_(position, 16);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Convolution2D();
- $.common = reader.object(json.common, MNN.Convolution2DCommon);
- $.weight = reader.array(json.weight, Float32Array);
- $.bias = reader.array(json.bias, Float32Array);
- $.quanParameter = reader.object(json.quanParameter, MNN.IDSTQuan);
- $.symmetricQuan = reader.object(json.symmetricQuan, MNN.QuantizedFloatParam);
- $.sparseParameter = reader.object(json.sparseParameter, MNN.SparseCommon);
- $.external = reader.array(json.external);
- return $;
- }
- };
- MNN.Convolution3D = class Convolution3D {
- static decode(reader, position) {
- const $ = new MNN.Convolution3D();
- $.common = reader.table(position, 4, MNN.Convolution3DCommon);
- $.weight = reader.array(position, 6, Float32Array);
- $.bias = reader.array(position, 8, Float32Array);
- $.external = reader.int64s_(position, 10);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Convolution3D();
- $.common = reader.object(json.common, MNN.Convolution3DCommon);
- $.weight = reader.array(json.weight, Float32Array);
- $.bias = reader.array(json.bias, Float32Array);
- $.external = reader.array(json.external);
- return $;
- }
- };
- MNN.InnerProduct = class InnerProduct {
- static decode(reader, position) {
- const $ = new MNN.InnerProduct();
- $.outputCount = reader.int32_(position, 4, 0);
- $.biasTerm = reader.int32_(position, 6, 0);
- $.weightSize = reader.int32_(position, 8, 0);
- $.weight = reader.array(position, 10, Float32Array);
- $.bias = reader.array(position, 12, Float32Array);
- $.axis = reader.int32_(position, 14, 0);
- $.transpose = reader.bool_(position, 16, false);
- $.quanParameter = reader.table(position, 18, MNN.IDSTQuan);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.InnerProduct();
- $.outputCount = reader.value(json.outputCount, 0);
- $.biasTerm = reader.value(json.biasTerm, 0);
- $.weightSize = reader.value(json.weightSize, 0);
- $.weight = reader.array(json.weight, Float32Array);
- $.bias = reader.array(json.bias, Float32Array);
- $.axis = reader.value(json.axis, 0);
- $.transpose = reader.value(json.transpose, false);
- $.quanParameter = reader.object(json.quanParameter, MNN.IDSTQuan);
- return $;
- }
- };
- MNN.PoolType = {
- MAXPOOL: 0,
- AVEPOOL: 1
- };
- MNN.PoolPadType = {
- CAFFE: 0,
- VALID: 1,
- SAME: 2
- };
- MNN.AvgPoolCountType = {
- DEFAULT: 0,
- INCLUDE_PADDING: 1,
- EXCLUDE_PADDING: 2
- };
- MNN.Pool = class Pool {
- static decode(reader, position) {
- const $ = new MNN.Pool();
- $.padX = reader.int32_(position, 4, 0);
- $.padY = reader.int32_(position, 6, 0);
- $.isGlobal = reader.bool_(position, 8, false);
- $.kernelX = reader.int32_(position, 10, 0);
- $.kernelY = reader.int32_(position, 12, 0);
- $.strideX = reader.int32_(position, 14, 0);
- $.strideY = reader.int32_(position, 16, 0);
- $.type = reader.int8_(position, 18, 0);
- $.padType = reader.int8_(position, 20, 0);
- $.dataType = reader.int32_(position, 22, 1);
- $.ceilModel = reader.bool_(position, 24, true);
- $.pads = reader.array(position, 26, Int32Array);
- $.countType = reader.int8_(position, 28, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Pool();
- $.padX = reader.value(json.padX, 0);
- $.padY = reader.value(json.padY, 0);
- $.isGlobal = reader.value(json.isGlobal, false);
- $.kernelX = reader.value(json.kernelX, 0);
- $.kernelY = reader.value(json.kernelY, 0);
- $.strideX = reader.value(json.strideX, 0);
- $.strideY = reader.value(json.strideY, 0);
- $.type = MNN.PoolType[json.type];
- $.padType = MNN.PoolPadType[json.padType];
- $.dataType = MNN.DataType[json.dataType];
- $.ceilModel = reader.value(json.ceilModel, true);
- $.pads = reader.array(json.pads, Int32Array);
- $.countType = MNN.AvgPoolCountType[json.countType];
- return $;
- }
- };
- MNN.Pool3D = class Pool3D {
- static decode(reader, position) {
- const $ = new MNN.Pool3D();
- $.strides = reader.array(position, 4, Int32Array);
- $.kernels = reader.array(position, 6, Int32Array);
- $.pads = reader.array(position, 8, Int32Array);
- $.type = reader.int8_(position, 10, 0);
- $.padType = reader.int8_(position, 12, 0);
- $.isGlobal = reader.bool_(position, 14, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Pool3D();
- $.strides = reader.array(json.strides, Int32Array);
- $.kernels = reader.array(json.kernels, Int32Array);
- $.pads = reader.array(json.pads, Int32Array);
- $.type = MNN.PoolType[json.type];
- $.padType = MNN.PoolPadType[json.padType];
- $.isGlobal = reader.value(json.isGlobal, false);
- return $;
- }
- };
- MNN.Relu = class Relu {
- static decode(reader, position) {
- const $ = new MNN.Relu();
- $.slope = reader.float32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Relu();
- $.slope = reader.value(json.slope, 0);
- return $;
- }
- };
- MNN.Relu6 = class Relu6 {
- static decode(reader, position) {
- const $ = new MNN.Relu6();
- $.minValue = reader.float32_(position, 4, 0);
- $.maxValue = reader.float32_(position, 6, 6);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Relu6();
- $.minValue = reader.value(json.minValue, 0);
- $.maxValue = reader.value(json.maxValue, 6);
- return $;
- }
- };
- MNN.PRelu = class PRelu {
- static decode(reader, position) {
- const $ = new MNN.PRelu();
- $.slopeCount = reader.int32_(position, 4, 0);
- $.slope = reader.array(position, 6, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.PRelu();
- $.slopeCount = reader.value(json.slopeCount, 0);
- $.slope = reader.array(json.slope, Float32Array);
- return $;
- }
- };
- MNN.ELU = class ELU {
- static decode(reader, position) {
- const $ = new MNN.ELU();
- $.alpha = reader.float32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ELU();
- $.alpha = reader.value(json.alpha, 0);
- return $;
- }
- };
- MNN.LRN = class LRN {
- static decode(reader, position) {
- const $ = new MNN.LRN();
- $.regionType = reader.int32_(position, 4, 0);
- $.localSize = reader.int32_(position, 6, 0);
- $.alpha = reader.float32_(position, 8, 0);
- $.beta = reader.float32_(position, 10, 0);
- $.bias = reader.float32_(position, 12, 1);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LRN();
- $.regionType = reader.value(json.regionType, 0);
- $.localSize = reader.value(json.localSize, 0);
- $.alpha = reader.value(json.alpha, 0);
- $.beta = reader.value(json.beta, 0);
- $.bias = reader.value(json.bias, 1);
- return $;
- }
- };
- MNN.ArgMax = class ArgMax {
- static decode(reader, position) {
- const $ = new MNN.ArgMax();
- $.outMaxVal = reader.int32_(position, 4, 0);
- $.topK = reader.int32_(position, 6, 0);
- $.axis = reader.int32_(position, 8, 0);
- $.softmaxThreshold = reader.int32_(position, 10, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ArgMax();
- $.outMaxVal = reader.value(json.outMaxVal, 0);
- $.topK = reader.value(json.topK, 0);
- $.axis = reader.value(json.axis, 0);
- $.softmaxThreshold = reader.value(json.softmaxThreshold, 0);
- return $;
- }
- };
- MNN.Axis = class Axis {
- static decode(reader, position) {
- const $ = new MNN.Axis();
- $.axis = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Axis();
- $.axis = reader.value(json.axis, 0);
- return $;
- }
- };
- MNN.Input = class Input {
- static decode(reader, position) {
- const $ = new MNN.Input();
- $.dims = reader.array(position, 4, Int32Array);
- $.dtype = reader.int32_(position, 6, 1);
- $.dformat = reader.int8_(position, 8, 2);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Input();
- $.dims = reader.array(json.dims, Int32Array);
- $.dtype = MNN.DataType[json.dtype];
- $.dformat = MNN.MNN_DATA_FORMAT[json.dformat];
- return $;
- }
- };
- MNN.LSTM = class LSTM {
- static decode(reader, position) {
- const $ = new MNN.LSTM();
- $.outputCount = reader.int32_(position, 4, 0);
- $.weightSize = reader.int32_(position, 6, 0);
- $.clippingThreshold = reader.float32_(position, 8, 0);
- $.weightI = reader.table(position, 10, MNN.Blob);
- $.weightH = reader.table(position, 12, MNN.Blob);
- $.bias = reader.table(position, 14, MNN.Blob);
- $.weightIQ = reader.table(position, 16, MNN.Blob);
- $.weightIA = reader.table(position, 18, MNN.Blob);
- $.quantScale = reader.float32_(position, 20, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LSTM();
- $.outputCount = reader.value(json.outputCount, 0);
- $.weightSize = reader.value(json.weightSize, 0);
- $.clippingThreshold = reader.value(json.clippingThreshold, 0);
- $.weightI = reader.object(json.weightI, MNN.Blob);
- $.weightH = reader.object(json.weightH, MNN.Blob);
- $.bias = reader.object(json.bias, MNN.Blob);
- $.weightIQ = reader.object(json.weightIQ, MNN.Blob);
- $.weightIA = reader.object(json.weightIA, MNN.Blob);
- $.quantScale = reader.value(json.quantScale, 0);
- return $;
- }
- };
- MNN.Slice = class Slice {
- static decode(reader, position) {
- const $ = new MNN.Slice();
- $.axis = reader.int32_(position, 4, 0);
- $.slicePoints = reader.array(position, 6, Int32Array);
- $.sourceType = reader.int8_(position, 8, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Slice();
- $.axis = reader.value(json.axis, 0);
- $.slicePoints = reader.array(json.slicePoints, Int32Array);
- $.sourceType = MNN.NetSource[json.sourceType];
- return $;
- }
- };
- MNN.BatchNorm = class BatchNorm {
- static decode(reader, position) {
- const $ = new MNN.BatchNorm();
- $.channels = reader.int32_(position, 4, 0);
- $.slopeData = reader.array(position, 6, Float32Array);
- $.meanData = reader.array(position, 8, Float32Array);
- $.varData = reader.array(position, 10, Float32Array);
- $.biasData = reader.array(position, 12, Float32Array);
- $.Adata = reader.array(position, 14, Float32Array);
- $.Bdata = reader.array(position, 16, Float32Array);
- $.epsilon = reader.float32_(position, 18, 0.001);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.BatchNorm();
- $.channels = reader.value(json.channels, 0);
- $.slopeData = reader.array(json.slopeData, Float32Array);
- $.meanData = reader.array(json.meanData, Float32Array);
- $.varData = reader.array(json.varData, Float32Array);
- $.biasData = reader.array(json.biasData, Float32Array);
- $.Adata = reader.array(json.Adata, Float32Array);
- $.Bdata = reader.array(json.Bdata, Float32Array);
- $.epsilon = reader.value(json.epsilon, 0.001);
- return $;
- }
- };
- MNN.Scale = class Scale {
- static decode(reader, position) {
- const $ = new MNN.Scale();
- $.channels = reader.int32_(position, 4, 0);
- $.scaleData = reader.array(position, 6, Float32Array);
- $.biasData = reader.array(position, 8, Float32Array);
- $.external = reader.int64s_(position, 10);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Scale();
- $.channels = reader.value(json.channels, 0);
- $.scaleData = reader.array(json.scaleData, Float32Array);
- $.biasData = reader.array(json.biasData, Float32Array);
- $.external = reader.array(json.external);
- return $;
- }
- };
- MNN.EltwiseType = {
- PROD: 0,
- SUM: 1,
- MAXIMUM: 2,
- SUB: 3
- };
- MNN.Eltwise = class Eltwise {
- static decode(reader, position) {
- const $ = new MNN.Eltwise();
- $.type = reader.int8_(position, 4, 0);
- $.coeff = reader.array(position, 6, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Eltwise();
- $.type = MNN.EltwiseType[json.type];
- $.coeff = reader.array(json.coeff, Float32Array);
- return $;
- }
- };
- MNN.Flatten = class Flatten {
- static decode(reader, position) {
- const $ = new MNN.Flatten();
- $.axis = reader.int32_(position, 4, 0);
- $.endAxis = reader.int32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Flatten();
- $.axis = reader.value(json.axis, 0);
- $.endAxis = reader.value(json.endAxis, 0);
- return $;
- }
- };
- MNN.Permute = class Permute {
- static decode(reader, position) {
- const $ = new MNN.Permute();
- $.dims = reader.array(position, 4, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Permute();
- $.dims = reader.array(json.dims, Int32Array);
- return $;
- }
- };
- MNN.Reshape = class Reshape {
- static decode(reader, position) {
- const $ = new MNN.Reshape();
- $.dims = reader.array(position, 4, Int32Array);
- $.dimType = reader.int8_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Reshape();
- $.dims = reader.array(json.dims, Int32Array);
- $.dimType = MNN.MNN_DATA_FORMAT[json.dimType];
- return $;
- }
- };
- MNN.DetectionOutput = class DetectionOutput {
- static decode(reader, position) {
- const $ = new MNN.DetectionOutput();
- $.classCount = reader.int32_(position, 4, 0);
- $.nmsThresholdold = reader.float32_(position, 6, 0);
- $.nmsTopK = reader.int32_(position, 8, 0);
- $.keepTopK = reader.int32_(position, 10, 0);
- $.confidenceThreshold = reader.float32_(position, 12, 0);
- $.shareLocation = reader.int32_(position, 14, 0);
- $.backgroundLable = reader.int32_(position, 16, 0);
- $.varianceEncodedTarget = reader.int32_(position, 18, 0);
- $.codeType = reader.int32_(position, 20, 0);
- $.objectnessScore = reader.float32_(position, 22, 0.01);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.DetectionOutput();
- $.classCount = reader.value(json.classCount, 0);
- $.nmsThresholdold = reader.value(json.nmsThresholdold, 0);
- $.nmsTopK = reader.value(json.nmsTopK, 0);
- $.keepTopK = reader.value(json.keepTopK, 0);
- $.confidenceThreshold = reader.value(json.confidenceThreshold, 0);
- $.shareLocation = reader.value(json.shareLocation, 0);
- $.backgroundLable = reader.value(json.backgroundLable, 0);
- $.varianceEncodedTarget = reader.value(json.varianceEncodedTarget, 0);
- $.codeType = reader.value(json.codeType, 0);
- $.objectnessScore = reader.value(json.objectnessScore, 0.01);
- return $;
- }
- };
- MNN.RoiParameters = class RoiParameters {
- static decode(reader, position) {
- const $ = new MNN.RoiParameters();
- $.pooledWidth = reader.int32_(position, 4, 0);
- $.pooledHeight = reader.int32_(position, 6, 0);
- $.spatialScale = reader.float32_(position, 8, 0);
- $.samplingRatio = reader.int32_(position, 10, -1);
- $.aligned = reader.bool_(position, 12, false);
- $.poolType = reader.int8_(position, 14, 1);
- $.outputGrad = reader.bool_(position, 16, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.RoiParameters();
- $.pooledWidth = reader.value(json.pooledWidth, 0);
- $.pooledHeight = reader.value(json.pooledHeight, 0);
- $.spatialScale = reader.value(json.spatialScale, 0);
- $.samplingRatio = reader.value(json.samplingRatio, -1);
- $.aligned = reader.value(json.aligned, false);
- $.poolType = MNN.PoolType[json.poolType];
- $.outputGrad = reader.value(json.outputGrad, false);
- return $;
- }
- };
- MNN.Proposal = class Proposal {
- static decode(reader, position) {
- const $ = new MNN.Proposal();
- $.featStride = reader.int32_(position, 4, 0);
- $.baseSize = reader.int32_(position, 6, 0);
- $.preNmsTopN = reader.int32_(position, 8, 0);
- $.afterNmsTopN = reader.int32_(position, 10, 0);
- $.nmsThreshold = reader.float32_(position, 12, 0);
- $.minSize = reader.int32_(position, 14, 0);
- $.ratios = reader.table(position, 16, MNN.Blob);
- $.scales = reader.table(position, 18, MNN.Blob);
- $.anchors = reader.table(position, 20, MNN.Blob);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Proposal();
- $.featStride = reader.value(json.featStride, 0);
- $.baseSize = reader.value(json.baseSize, 0);
- $.preNmsTopN = reader.value(json.preNmsTopN, 0);
- $.afterNmsTopN = reader.value(json.afterNmsTopN, 0);
- $.nmsThreshold = reader.value(json.nmsThreshold, 0);
- $.minSize = reader.value(json.minSize, 0);
- $.ratios = reader.object(json.ratios, MNN.Blob);
- $.scales = reader.object(json.scales, MNN.Blob);
- $.anchors = reader.object(json.anchors, MNN.Blob);
- return $;
- }
- };
- MNN.CoordinateTransformationMode = {
- NotSet: 0,
- AlignCorners: 1,
- HalfPixels: 2,
- PytorchHalfPixels: 3,
- Asymmetric: 4,
- TensorflowHalfPixels: 5,
- TensorflowCropAndResize: 6
- };
- MNN.Interp = class Interp {
- static decode(reader, position) {
- const $ = new MNN.Interp();
- $.widthScale = reader.float32_(position, 4, 0);
- $.heightScale = reader.float32_(position, 6, 0);
- $.outputWidth = reader.int32_(position, 8, 0);
- $.outputHeight = reader.int32_(position, 10, 0);
- $.resizeType = reader.int32_(position, 12, 0);
- $.alignCorners = reader.bool_(position, 14, false);
- $.halfPixelCenters = reader.bool_(position, 16, false);
- $.widthOffset = reader.float32_(position, 18, 0);
- $.heightOffset = reader.float32_(position, 20, 0);
- $.cubicCoeffA = reader.float32_(position, 22, -0.75);
- $.ctm = reader.int8_(position, 24, 0);
- $.depthScale = reader.float32_(position, 26, 0);
- $.outputDepth = reader.int32_(position, 28, 0);
- $.depthOffset = reader.float32_(position, 30, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Interp();
- $.widthScale = reader.value(json.widthScale, 0);
- $.heightScale = reader.value(json.heightScale, 0);
- $.outputWidth = reader.value(json.outputWidth, 0);
- $.outputHeight = reader.value(json.outputHeight, 0);
- $.resizeType = reader.value(json.resizeType, 0);
- $.alignCorners = reader.value(json.alignCorners, false);
- $.halfPixelCenters = reader.value(json.halfPixelCenters, false);
- $.widthOffset = reader.value(json.widthOffset, 0);
- $.heightOffset = reader.value(json.heightOffset, 0);
- $.cubicCoeffA = reader.value(json.cubicCoeffA, -0.75);
- $.ctm = MNN.CoordinateTransformationMode[json.ctm];
- $.depthScale = reader.value(json.depthScale, 0);
- $.outputDepth = reader.value(json.outputDepth, 0);
- $.depthOffset = reader.value(json.depthOffset, 0);
- return $;
- }
- };
- MNN.Resize = class Resize {
- static decode(reader, position) {
- const $ = new MNN.Resize();
- $.xScale = reader.float32_(position, 4, 0);
- $.yScale = reader.float32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Resize();
- $.xScale = reader.value(json.xScale, 0);
- $.yScale = reader.value(json.yScale, 0);
- return $;
- }
- };
- MNN.PriorBox = class PriorBox {
- static decode(reader, position) {
- const $ = new MNN.PriorBox();
- $.minSizes = reader.array(position, 4, Float32Array);
- $.maxSizes = reader.array(position, 6, Float32Array);
- $.aspectRatios = reader.array(position, 8, Float32Array);
- $.variances = reader.array(position, 10, Float32Array);
- $.flip = reader.bool_(position, 12, false);
- $.clip = reader.bool_(position, 14, false);
- $.imageWidth = reader.int32_(position, 16, 0);
- $.imageHeight = reader.int32_(position, 18, 0);
- $.stepWidth = reader.int32_(position, 20, 0);
- $.stepHeight = reader.int32_(position, 22, 0);
- $.offset = reader.float32_(position, 24, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.PriorBox();
- $.minSizes = reader.array(json.minSizes, Float32Array);
- $.maxSizes = reader.array(json.maxSizes, Float32Array);
- $.aspectRatios = reader.array(json.aspectRatios, Float32Array);
- $.variances = reader.array(json.variances, Float32Array);
- $.flip = reader.value(json.flip, false);
- $.clip = reader.value(json.clip, false);
- $.imageWidth = reader.value(json.imageWidth, 0);
- $.imageHeight = reader.value(json.imageHeight, 0);
- $.stepWidth = reader.value(json.stepWidth, 0);
- $.stepHeight = reader.value(json.stepHeight, 0);
- $.offset = reader.value(json.offset, 0);
- return $;
- }
- };
- MNN.Normalize = class Normalize {
- static decode(reader, position) {
- const $ = new MNN.Normalize();
- $.acrossSpatial = reader.int32_(position, 4, 0);
- $.channelShared = reader.int32_(position, 6, 0);
- $.eps = reader.float32_(position, 8, 0);
- $.scale = reader.array(position, 10, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Normalize();
- $.acrossSpatial = reader.value(json.acrossSpatial, 0);
- $.channelShared = reader.value(json.channelShared, 0);
- $.eps = reader.value(json.eps, 0);
- $.scale = reader.array(json.scale, Float32Array);
- return $;
- }
- };
- MNN.EltwiseInt8 = class EltwiseInt8 {
- static decode(reader, position) {
- const $ = new MNN.EltwiseInt8();
- $.type = reader.int8_(position, 4, 0);
- $.inputQuan0 = reader.table(position, 6, MNN.QuantizedFloatParam);
- $.inputQuan1 = reader.table(position, 8, MNN.QuantizedFloatParam);
- $.outputQuan = reader.table(position, 10, MNN.QuantizedFloatParam);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.EltwiseInt8();
- $.type = MNN.EltwiseType[json.type];
- $.inputQuan0 = reader.object(json.inputQuan0, MNN.QuantizedFloatParam);
- $.inputQuan1 = reader.object(json.inputQuan1, MNN.QuantizedFloatParam);
- $.outputQuan = reader.object(json.outputQuan, MNN.QuantizedFloatParam);
- return $;
- }
- };
- MNN.CumSum = class CumSum {
- static decode(reader, position) {
- const $ = new MNN.CumSum();
- $.exclusive = reader.bool_(position, 4, false);
- $.reverse = reader.bool_(position, 6, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.CumSum();
- $.exclusive = reader.value(json.exclusive, false);
- $.reverse = reader.value(json.reverse, false);
- return $;
- }
- };
- MNN.BinaryOpOperation = {
- ADD: 0,
- SUB: 1,
- MUL: 2,
- DIV: 3,
- MAX_TEMP: 4,
- MIN_TEMP: 5,
- POW: 6,
- REALDIV: 7,
- MINIMUM: 8,
- MAXIMUM: 9,
- GREATER: 10,
- GREATER_EQUAL: 11,
- LESS: 12,
- FLOORDIV: 13,
- SquaredDifference: 14,
- EQUAL: 15,
- LESS_EQUAL: 16,
- FLOORMOD: 17,
- MOD: 19,
- ATAN2: 20,
- LOGICALOR: 21,
- NOTEQUAL: 22,
- BITWISE_AND: 23,
- BITWISE_OR: 24,
- BITWISE_XOR: 25,
- LOGICALXOR: 26,
- LEFTSHIFT: 27,
- RIGHTSHIFT: 28
- };
- MNN.BinaryOp = class BinaryOp {
- static decode(reader, position) {
- const $ = new MNN.BinaryOp();
- $.opType = reader.int32_(position, 4, 0);
- $.T = reader.int32_(position, 6, 1);
- $.activationType = reader.int32_(position, 8, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.BinaryOp();
- $.opType = MNN.BinaryOpOperation[json.opType];
- $.T = MNN.DataType[json.T];
- $.activationType = reader.value(json.activationType, 0);
- return $;
- }
- };
- MNN.PackParam = class PackParam {
- static decode(reader, position) {
- const $ = new MNN.PackParam();
- $.dataType = reader.int32_(position, 4, 0);
- $.axis = reader.int32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.PackParam();
- $.dataType = MNN.DataType[json.dataType];
- $.axis = reader.value(json.axis, 0);
- return $;
- }
- };
- MNN.StridedSliceParam = class StridedSliceParam {
- static decode(reader, position) {
- const $ = new MNN.StridedSliceParam();
- $.Index = reader.int32_(position, 4, 0);
- $.T = reader.int32_(position, 6, 0);
- $.beginMask = reader.int32_(position, 8, 0);
- $.endMask = reader.int32_(position, 10, 0);
- $.ellipsisMask = reader.int32_(position, 12, 0);
- $.newAxisMask = reader.int32_(position, 14, 0);
- $.shrinkAxisMask = reader.int32_(position, 16, 0);
- $.fromType = reader.int32_(position, 18, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.StridedSliceParam();
- $.Index = MNN.DataType[json.Index];
- $.T = MNN.DataType[json.T];
- $.beginMask = reader.value(json.beginMask, 0);
- $.endMask = reader.value(json.endMask, 0);
- $.ellipsisMask = reader.value(json.ellipsisMask, 0);
- $.newAxisMask = reader.value(json.newAxisMask, 0);
- $.shrinkAxisMask = reader.value(json.shrinkAxisMask, 0);
- $.fromType = reader.value(json.fromType, 0);
- return $;
- }
- };
- MNN.SqueezeParam = class SqueezeParam {
- static decode(reader, position) {
- const $ = new MNN.SqueezeParam();
- $.squeezeDims = reader.array(position, 4, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.SqueezeParam();
- $.squeezeDims = reader.array(json.squeezeDims, Int32Array);
- return $;
- }
- };
- MNN.CastParam = class CastParam {
- static decode(reader, position) {
- const $ = new MNN.CastParam();
- $.srcT = reader.int32_(position, 4, 0);
- $.dstT = reader.int32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.CastParam();
- $.srcT = MNN.DataType[json.srcT];
- $.dstT = MNN.DataType[json.dstT];
- return $;
- }
- };
- MNN.ReductionType = {
- SUM: 0,
- ASUM: 1,
- SUMSQ: 2,
- MEAN: 3,
- MAXIMUM: 4,
- MINIMUM: 5,
- PROD: 6,
- ANY: 7,
- ALL: 8
- };
- MNN.ReductionParam = class ReductionParam {
- static decode(reader, position) {
- const $ = new MNN.ReductionParam();
- $.operation = reader.int8_(position, 4, 0);
- $.dim = reader.array(position, 6, Int32Array);
- $.coeff = reader.float32_(position, 8, 0);
- $.keepDims = reader.bool_(position, 10, false);
- $.dType = reader.int32_(position, 12, 1);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ReductionParam();
- $.operation = MNN.ReductionType[json.operation];
- $.dim = reader.array(json.dim, Int32Array);
- $.coeff = reader.value(json.coeff, 0);
- $.keepDims = reader.value(json.keepDims, false);
- $.dType = MNN.DataType[json.dType];
- return $;
- }
- };
- MNN.Gather = class Gather {
- static decode(reader, position) {
- const $ = new MNN.Gather();
- $.Tindices = reader.int32_(position, 4, 0);
- $.Tparams = reader.int32_(position, 6, 0);
- $.validateIndices = reader.bool_(position, 8, false);
- $.axis = reader.int32_(position, 10, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Gather();
- $.Tindices = MNN.DataType[json.Tindices];
- $.Tparams = MNN.DataType[json.Tparams];
- $.validateIndices = reader.value(json.validateIndices, false);
- $.axis = reader.value(json.axis, 0);
- return $;
- }
- };
- MNN.ExpandDims = class ExpandDims {
- static decode(reader, position) {
- const $ = new MNN.ExpandDims();
- $.T = reader.int32_(position, 4, 0);
- $.Tdim = reader.int32_(position, 6, 0);
- $.axis = reader.int32_(position, 8, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ExpandDims();
- $.T = MNN.DataType[json.T];
- $.Tdim = MNN.DataType[json.Tdim];
- $.axis = reader.value(json.axis, 0);
- return $;
- }
- };
- MNN.Selu = class Selu {
- static decode(reader, position) {
- const $ = new MNN.Selu();
- $.scale = reader.float32_(position, 4, 0);
- $.alpha = reader.float32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Selu();
- $.scale = reader.value(json.scale, 0);
- $.alpha = reader.value(json.alpha, 0);
- return $;
- }
- };
- MNN.AsString = class AsString {
- static decode(reader, position) {
- const $ = new MNN.AsString();
- $.T = reader.int32_(position, 4, 0);
- $.precision = reader.int32_(position, 6, 0);
- $.scientific = reader.bool_(position, 8, false);
- $.shortest = reader.bool_(position, 10, false);
- $.width = reader.int32_(position, 12, 0);
- $.fillString = reader.string_(position, 14, null);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.AsString();
- $.T = MNN.DataType[json.T];
- $.precision = reader.value(json.precision, 0);
- $.scientific = reader.value(json.scientific, false);
- $.shortest = reader.value(json.shortest, false);
- $.width = reader.value(json.width, 0);
- $.fillString = reader.value(json.fillString, null);
- return $;
- }
- };
- MNN.ReduceJoin = class ReduceJoin {
- static decode(reader, position) {
- const $ = new MNN.ReduceJoin();
- $.keepDims = reader.bool_(position, 4, false);
- $.separator = reader.string_(position, 6, null);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ReduceJoin();
- $.keepDims = reader.value(json.keepDims, false);
- $.separator = reader.value(json.separator, null);
- return $;
- }
- };
- MNN.UnaryOpOperation = {
- ABS: 0,
- NEG: 1,
- FLOOR: 2,
- CEIL: 3,
- SQUARE: 4,
- SQRT: 5,
- RSQRT: 6,
- EXP: 7,
- LOG: 8,
- SIN: 9,
- COS: 10,
- TAN: 11,
- ASIN: 12,
- ACOS: 13,
- ATAN: 14,
- RECIPROCAL: 15,
- LOG1P: 16,
- BNLL: 17,
- ACOSH: 18,
- SINH: 19,
- ASINH: 20,
- ATANH: 21,
- SIGN: 22,
- ROUND: 23,
- COSH: 24,
- ERF: 25,
- ERFC: 26,
- ERFINV: 27,
- EXPM1: 28,
- SIGMOID: 29,
- TANH: 30,
- HARDSWISH: 31,
- GELU: 32,
- GELU_STANDARD: 33,
- SILU: 34
- };
- MNN.UnaryOp = class UnaryOp {
- static decode(reader, position) {
- const $ = new MNN.UnaryOp();
- $.opType = reader.int32_(position, 4, 0);
- $.T = reader.int32_(position, 6, 0);
- $.tableInt8 = reader.array(position, 8, Int8Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.UnaryOp();
- $.opType = MNN.UnaryOpOperation[json.opType];
- $.T = MNN.DataType[json.T];
- $.tableInt8 = reader.array(json.tableInt8, Int8Array);
- return $;
- }
- };
- MNN.TopKV2 = class TopKV2 {
- static decode(reader, position) {
- const $ = new MNN.TopKV2();
- $.T = reader.int32_(position, 4, 1);
- $.sorted = reader.bool_(position, 6, false);
- $.largest = reader.bool_(position, 8, true);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TopKV2();
- $.T = MNN.DataType[json.T];
- $.sorted = reader.value(json.sorted, false);
- $.largest = reader.value(json.largest, true);
- return $;
- }
- };
- MNN.CropAndResizeMethod = {
- BILINEAR: 0,
- NEAREST: 1
- };
- MNN.CropAndResize = class CropAndResize {
- static decode(reader, position) {
- const $ = new MNN.CropAndResize();
- $.extrapolationValue = reader.float32_(position, 4, 0);
- $.method = reader.int8_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.CropAndResize();
- $.extrapolationValue = reader.value(json.extrapolationValue, 0);
- $.method = MNN.CropAndResizeMethod[json.method];
- return $;
- }
- };
- MNN.Fill = class Fill {
- static decode(/* reader, position */) {
- const $ = new MNN.Fill();
- return $;
- }
- static decodeText(/* reader, json */) {
- const $ = new MNN.Fill();
- return $;
- }
- };
- MNN.GatherV2 = class GatherV2 {
- static decode(reader, position) {
- const $ = new MNN.GatherV2();
- $.Taxis = reader.int32_(position, 4, 0);
- $.Tindices = reader.int32_(position, 6, 0);
- $.Tparams = reader.int32_(position, 8, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.GatherV2();
- $.Taxis = MNN.DataType[json.Taxis];
- $.Tindices = MNN.DataType[json.Tindices];
- $.Tparams = MNN.DataType[json.Tparams];
- return $;
- }
- };
- MNN.NonMaxSuppressionV2 = class NonMaxSuppressionV2 {
- static decode(/* reader, position */) {
- const $ = new MNN.NonMaxSuppressionV2();
- return $;
- }
- static decodeText(/* reader, json */) {
- const $ = new MNN.NonMaxSuppressionV2();
- return $;
- }
- };
- MNN.Range = class Range {
- static decode(reader, position) {
- const $ = new MNN.Range();
- $.Tidx = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Range();
- $.Tidx = MNN.DataType[json.Tidx];
- return $;
- }
- };
- MNN.Rank = class Rank {
- static decode(/* reader, position */) {
- const $ = new MNN.Rank();
- return $;
- }
- static decodeText(/* reader, json */) {
- const $ = new MNN.Rank();
- return $;
- }
- };
- MNN.Size = class Size {
- static decode(reader, position) {
- const $ = new MNN.Size();
- $.outputDataType = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Size();
- $.outputDataType = MNN.DataType[json.outputDataType];
- return $;
- }
- };
- MNN.Transpose = class Transpose {
- static decode(reader, position) {
- const $ = new MNN.Transpose();
- $.Tperm = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Transpose();
- $.Tperm = MNN.DataType[json.Tperm];
- return $;
- }
- };
- MNN.SliceTf = class SliceTf {
- static decode(reader, position) {
- const $ = new MNN.SliceTf();
- $.T = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.SliceTf();
- $.T = MNN.DataType[json.T];
- return $;
- }
- };
- MNN.QuantizeMaxMin = class QuantizeMaxMin {
- static decode(reader, position) {
- const $ = new MNN.QuantizeMaxMin();
- $.T = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizeMaxMin();
- $.T = MNN.DataType[json.T];
- return $;
- }
- };
- MNN.Crop = class Crop {
- static decode(reader, position) {
- const $ = new MNN.Crop();
- $.axis = reader.int32_(position, 4, 2);
- $.offset = reader.array(position, 6, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Crop();
- $.axis = reader.value(json.axis, 2);
- $.offset = reader.array(json.offset, Int32Array);
- return $;
- }
- };
- MNN.SpaceBatch = class SpaceBatch {
- static decode(reader, position) {
- const $ = new MNN.SpaceBatch();
- $.blockShape = reader.table(position, 4, MNN.Blob);
- $.padding = reader.table(position, 6, MNN.Blob);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.SpaceBatch();
- $.blockShape = reader.object(json.blockShape, MNN.Blob);
- $.padding = reader.object(json.padding, MNN.Blob);
- return $;
- }
- };
- MNN.MatMul = class MatMul {
- static decode(reader, position) {
- const $ = new MNN.MatMul();
- $.T = reader.int32_(position, 4, 0);
- $.transposeA = reader.bool_(position, 6, false);
- $.transposeB = reader.bool_(position, 8, false);
- $.weight = reader.array(position, 10, Float32Array);
- $.bias = reader.array(position, 12, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.MatMul();
- $.T = MNN.DataType[json.T];
- $.transposeA = reader.value(json.transposeA, false);
- $.transposeB = reader.value(json.transposeB, false);
- $.weight = reader.array(json.weight, Float32Array);
- $.bias = reader.array(json.bias, Float32Array);
- return $;
- }
- };
- MNN.MomentsParam = class MomentsParam {
- static decode(reader, position) {
- const $ = new MNN.MomentsParam();
- $.dim = reader.array(position, 4, Int32Array);
- $.keepDims = reader.bool_(position, 6, true);
- $.dType = reader.int32_(position, 8, 1);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.MomentsParam();
- $.dim = reader.array(json.dim, Int32Array);
- $.keepDims = reader.value(json.keepDims, true);
- $.dType = MNN.DataType[json.dType];
- return $;
- }
- };
- MNN.RNNParam = class RNNParam {
- static decode(reader, position) {
- const $ = new MNN.RNNParam();
- $.numUnits = reader.int32_(position, 4, 0);
- $.isBidirectionalRNN = reader.bool_(position, 6, false);
- $.linearBeforeReset = reader.bool_(position, 8, false);
- $.keepAllOutputs = reader.bool_(position, 10, false);
- $.fwGateWeight = reader.table(position, 12, MNN.Blob);
- $.fwGateBias = reader.table(position, 14, MNN.Blob);
- $.fwCandidateWeight = reader.table(position, 16, MNN.Blob);
- $.fwCandidateBias = reader.table(position, 18, MNN.Blob);
- $.fwRecurrentBias = reader.table(position, 20, MNN.Blob);
- $.bwGateWeight = reader.table(position, 22, MNN.Blob);
- $.bwGateBias = reader.table(position, 24, MNN.Blob);
- $.bwCandidateWeight = reader.table(position, 26, MNN.Blob);
- $.bwCandidateBias = reader.table(position, 28, MNN.Blob);
- $.bwRecurrentBias = reader.table(position, 30, MNN.Blob);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.RNNParam();
- $.numUnits = reader.value(json.numUnits, 0);
- $.isBidirectionalRNN = reader.value(json.isBidirectionalRNN, false);
- $.linearBeforeReset = reader.value(json.linearBeforeReset, false);
- $.keepAllOutputs = reader.value(json.keepAllOutputs, false);
- $.fwGateWeight = reader.object(json.fwGateWeight, MNN.Blob);
- $.fwGateBias = reader.object(json.fwGateBias, MNN.Blob);
- $.fwCandidateWeight = reader.object(json.fwCandidateWeight, MNN.Blob);
- $.fwCandidateBias = reader.object(json.fwCandidateBias, MNN.Blob);
- $.fwRecurrentBias = reader.object(json.fwRecurrentBias, MNN.Blob);
- $.bwGateWeight = reader.object(json.bwGateWeight, MNN.Blob);
- $.bwGateBias = reader.object(json.bwGateBias, MNN.Blob);
- $.bwCandidateWeight = reader.object(json.bwCandidateWeight, MNN.Blob);
- $.bwCandidateBias = reader.object(json.bwCandidateBias, MNN.Blob);
- $.bwRecurrentBias = reader.object(json.bwRecurrentBias, MNN.Blob);
- return $;
- }
- };
- MNN.BatchMatMulParam = class BatchMatMulParam {
- static decode(reader, position) {
- const $ = new MNN.BatchMatMulParam();
- $.adjX = reader.bool_(position, 4, false);
- $.adjY = reader.bool_(position, 6, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.BatchMatMulParam();
- $.adjX = reader.value(json.adjX, false);
- $.adjY = reader.value(json.adjY, false);
- return $;
- }
- };
- MNN.DepthToSpaceMode = {
- DCR: 0,
- CRD: 1
- };
- MNN.DepthSpaceParam = class DepthSpaceParam {
- static decode(reader, position) {
- const $ = new MNN.DepthSpaceParam();
- $.blockSize = reader.int32_(position, 4, 0);
- $.mode = reader.int8_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.DepthSpaceParam();
- $.blockSize = reader.value(json.blockSize, 0);
- $.mode = MNN.DepthToSpaceMode[json.mode];
- return $;
- }
- };
- MNN.ReverseSequenceParam = class ReverseSequenceParam {
- static decode(reader, position) {
- const $ = new MNN.ReverseSequenceParam();
- $.batchDim = reader.int32_(position, 4, 0);
- $.seqDim = reader.int32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ReverseSequenceParam();
- $.batchDim = reader.value(json.batchDim, 0);
- $.seqDim = reader.value(json.seqDim, 0);
- return $;
- }
- };
- MNN.DetectionPostProcessParam = class DetectionPostProcessParam {
- static decode(reader, position) {
- const $ = new MNN.DetectionPostProcessParam();
- $.maxDetections = reader.int32_(position, 4, 0);
- $.maxClassesPerDetection = reader.int32_(position, 6, 0);
- $.detectionsPerClass = reader.int32_(position, 8, 0);
- $.nmsScoreThreshold = reader.float32_(position, 10, 0);
- $.iouThreshold = reader.float32_(position, 12, 0);
- $.numClasses = reader.int32_(position, 14, 0);
- $.useRegularNMS = reader.bool_(position, 16, false);
- $.centerSizeEncoding = reader.array(position, 18, Float32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.DetectionPostProcessParam();
- $.maxDetections = reader.value(json.maxDetections, 0);
- $.maxClassesPerDetection = reader.value(json.maxClassesPerDetection, 0);
- $.detectionsPerClass = reader.value(json.detectionsPerClass, 0);
- $.nmsScoreThreshold = reader.value(json.nmsScoreThreshold, 0);
- $.iouThreshold = reader.value(json.iouThreshold, 0);
- $.numClasses = reader.value(json.numClasses, 0);
- $.useRegularNMS = reader.value(json.useRegularNMS, false);
- $.centerSizeEncoding = reader.array(json.centerSizeEncoding, Float32Array);
- return $;
- }
- };
- MNN.OneHotParam = class OneHotParam {
- static decode(reader, position) {
- const $ = new MNN.OneHotParam();
- $.dType = reader.int32_(position, 4, 1);
- $.axis = reader.int32_(position, 6, -1);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.OneHotParam();
- $.dType = MNN.DataType[json.dType];
- $.axis = reader.value(json.axis, -1);
- return $;
- }
- };
- MNN.PadValueMode = {
- CONSTANT: 0,
- REFLECT: 1,
- SYMMETRIC: 2,
- EDGE: 3
- };
- MNN.PadParam = class PadParam {
- static decode(reader, position) {
- const $ = new MNN.PadParam();
- $.mode = reader.int8_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.PadParam();
- $.mode = MNN.PadValueMode[json.mode];
- return $;
- }
- };
- MNN.LayerNorm = class LayerNorm {
- static decode(reader, position) {
- const $ = new MNN.LayerNorm();
- $.axis = reader.array(position, 4, Int32Array);
- $.epsilon = reader.float32_(position, 6, 0);
- $.gamma = reader.array(position, 8, Float32Array);
- $.beta = reader.array(position, 10, Float32Array);
- $.group = reader.int32_(position, 12, 1);
- $.external = reader.int64s_(position, 14);
- $.useRMSNorm = reader.bool_(position, 16, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LayerNorm();
- $.axis = reader.array(json.axis, Int32Array);
- $.epsilon = reader.value(json.epsilon, 0);
- $.gamma = reader.array(json.gamma, Float32Array);
- $.beta = reader.array(json.beta, Float32Array);
- $.group = reader.value(json.group, 1);
- $.external = reader.array(json.external);
- $.useRMSNorm = reader.value(json.useRMSNorm, false);
- return $;
- }
- };
- MNN.GroupNorm = class GroupNorm {
- static decode(reader, position) {
- const $ = new MNN.GroupNorm();
- $.axis = reader.int32_(position, 4, 0);
- $.epsilon = reader.float32_(position, 6, 0);
- $.gamma = reader.array(position, 8, Float32Array);
- $.beta = reader.array(position, 10, Float32Array);
- $.group = reader.int32_(position, 12, 1);
- $.bSwish = reader.int32_(position, 14, 0);
- $.external = reader.int64s_(position, 16);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.GroupNorm();
- $.axis = reader.value(json.axis, 0);
- $.epsilon = reader.value(json.epsilon, 0);
- $.gamma = reader.array(json.gamma, Float32Array);
- $.beta = reader.array(json.beta, Float32Array);
- $.group = reader.value(json.group, 1);
- $.bSwish = reader.value(json.bSwish, 0);
- $.external = reader.array(json.external);
- return $;
- }
- };
- MNN.RandomUniform = class RandomUniform {
- static decode(reader, position) {
- const $ = new MNN.RandomUniform();
- $.seed = reader.int32_(position, 4, 0);
- $.seed2 = reader.int32_(position, 6, 0);
- $.type = reader.int32_(position, 8, 1);
- $.low = reader.float32_(position, 10, 0);
- $.high = reader.float32_(position, 12, 1);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.RandomUniform();
- $.seed = reader.value(json.seed, 0);
- $.seed2 = reader.value(json.seed2, 0);
- $.type = MNN.DataType[json.type];
- $.low = reader.value(json.low, 0);
- $.high = reader.value(json.high, 1);
- return $;
- }
- };
- MNN.TensorArray = class TensorArray {
- static decode(reader, position) {
- const $ = new MNN.TensorArray();
- $.dynamic_size = reader.bool_(position, 4, false);
- $.identical_element_shapes = reader.bool_(position, 6, false);
- $.element_shape = reader.array(position, 8, Int32Array);
- $.T = reader.int32_(position, 10, 1);
- $.axis = reader.int32_(position, 12, 0);
- $.keepdims = reader.bool_(position, 14, true);
- $.new_axis = reader.bool_(position, 16, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TensorArray();
- $.dynamic_size = reader.value(json.dynamic_size, false);
- $.identical_element_shapes = reader.value(json.identical_element_shapes, false);
- $.element_shape = reader.array(json.element_shape, Int32Array);
- $.T = MNN.DataType[json.T];
- $.axis = reader.value(json.axis, 0);
- $.keepdims = reader.value(json.keepdims, true);
- $.new_axis = reader.value(json.new_axis, false);
- return $;
- }
- };
- MNN.LSTMBlockCell = class LSTMBlockCell {
- static decode(reader, position) {
- const $ = new MNN.LSTMBlockCell();
- $.cell_clip = reader.float32_(position, 4, 3);
- $.forget_bias = reader.float32_(position, 6, 1);
- $.use_peephole = reader.bool_(position, 8, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LSTMBlockCell();
- $.cell_clip = reader.value(json.cell_clip, 3);
- $.forget_bias = reader.value(json.forget_bias, 1);
- $.use_peephole = reader.value(json.use_peephole, false);
- return $;
- }
- };
- MNN.FusedActivation = {
- kTfLiteActNone: 0,
- kTfLiteActRelu: 1,
- kTfLiteActRelu1: 2,
- kTfLiteActRelu6: 3,
- kTfLiteActTanh: 4,
- kTfLiteActSignBit: 5,
- kTfLiteActSigmoid: 6
- };
- MNN.QuantizedParam = class QuantizedParam {
- static decode(reader, position) {
- const $ = new MNN.QuantizedParam();
- $.zeroPoint = reader.int32_(position, 4, 0);
- $.scale = reader.float32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedParam();
- $.zeroPoint = reader.value(json.zeroPoint, 0);
- $.scale = reader.value(json.scale, 0);
- return $;
- }
- };
- MNN.QuantizedAdd = class QuantizedAdd {
- static decode(reader, position) {
- const $ = new MNN.QuantizedAdd();
- $.activationType = reader.int8_(position, 4, 0);
- $.input1QuantizedParam = reader.table(position, 6, MNN.QuantizedParam);
- $.input2QuantizedParam = reader.table(position, 8, MNN.QuantizedParam);
- $.outputQuantizedParam = reader.table(position, 10, MNN.QuantizedParam);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedAdd();
- $.activationType = MNN.FusedActivation[json.activationType];
- $.input1QuantizedParam = reader.object(json.input1QuantizedParam, MNN.QuantizedParam);
- $.input2QuantizedParam = reader.object(json.input2QuantizedParam, MNN.QuantizedParam);
- $.outputQuantizedParam = reader.object(json.outputQuantizedParam, MNN.QuantizedParam);
- return $;
- }
- };
- MNN.ModeFormat = {
- TENSORFLOW: 0,
- TFLITE: 1
- };
- MNN.QuantizeMode = {
- MIN_COMBINED: 0,
- MIN_FIRST: 1,
- SCALED: 2
- };
- MNN.Dequantize = class Dequantize {
- static decode(reader, position) {
- const $ = new MNN.Dequantize();
- $.inputQuantizedParam = reader.table(position, 4, MNN.QuantizedParam);
- $.mode = reader.int8_(position, 6, 0);
- $.modelFormat = reader.int8_(position, 8, 0);
- $.type = reader.int32_(position, 10, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Dequantize();
- $.inputQuantizedParam = reader.object(json.inputQuantizedParam, MNN.QuantizedParam);
- $.mode = MNN.QuantizeMode[json.mode];
- $.modelFormat = MNN.ModeFormat[json.modelFormat];
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.QuantizedAvgPool = class QuantizedAvgPool {
- static decode(reader, position) {
- const $ = new MNN.QuantizedAvgPool();
- $.kernelX = reader.int32_(position, 4, 0);
- $.kernelY = reader.int32_(position, 6, 0);
- $.modelFormat = reader.int8_(position, 8, 0);
- $.outputActivationMax = reader.int32_(position, 10, 0);
- $.outputActivationMin = reader.int32_(position, 12, 0);
- $.padType = reader.int8_(position, 14, 0);
- $.padX = reader.int32_(position, 16, 0);
- $.padY = reader.int32_(position, 18, 0);
- $.strideX = reader.int32_(position, 20, 0);
- $.strideY = reader.int32_(position, 22, 0);
- $.type = reader.int32_(position, 24, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedAvgPool();
- $.kernelX = reader.value(json.kernelX, 0);
- $.kernelY = reader.value(json.kernelY, 0);
- $.modelFormat = MNN.ModeFormat[json.modelFormat];
- $.outputActivationMax = reader.value(json.outputActivationMax, 0);
- $.outputActivationMin = reader.value(json.outputActivationMin, 0);
- $.padType = MNN.PoolPadType[json.padType];
- $.padX = reader.value(json.padX, 0);
- $.padY = reader.value(json.padY, 0);
- $.strideX = reader.value(json.strideX, 0);
- $.strideY = reader.value(json.strideY, 0);
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.QuantizedBiasAdd = class QuantizedBiasAdd {
- static decode(reader, position) {
- const $ = new MNN.QuantizedBiasAdd();
- $.bias = reader.array(position, 4, Int32Array);
- $.inputType = reader.int32_(position, 6, 0);
- $.max = reader.int32_(position, 8, 0);
- $.min = reader.int32_(position, 10, 0);
- $.outputType = reader.int32_(position, 12, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedBiasAdd();
- $.bias = reader.array(json.bias, Int32Array);
- $.inputType = MNN.DataType[json.inputType];
- $.max = reader.value(json.max, 0);
- $.min = reader.value(json.min, 0);
- $.outputType = MNN.DataType[json.outputType];
- return $;
- }
- };
- MNN.QuantizedConcat = class QuantizedConcat {
- static decode(reader, position) {
- const $ = new MNN.QuantizedConcat();
- $.activationType = reader.int8_(position, 4, 0);
- $.axis = reader.int32_(position, 6, 0);
- $.inputScale = reader.array(position, 8, Float32Array);
- $.inputZeroPoint = reader.array(position, 10, Int32Array);
- $.outputQuantizedParam = reader.table(position, 12, MNN.QuantizedParam);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedConcat();
- $.activationType = MNN.FusedActivation[json.activationType];
- $.axis = reader.value(json.axis, 0);
- $.inputScale = reader.array(json.inputScale, Float32Array);
- $.inputZeroPoint = reader.array(json.inputZeroPoint, Int32Array);
- $.outputQuantizedParam = reader.object(json.outputQuantizedParam, MNN.QuantizedParam);
- return $;
- }
- };
- MNN.QuantizedLogistic = class QuantizedLogistic {
- static decode(reader, position) {
- const $ = new MNN.QuantizedLogistic();
- $.inputQuantizedParam = reader.table(position, 4, MNN.QuantizedParam);
- $.outputQuantizedParam = reader.table(position, 6, MNN.QuantizedParam);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedLogistic();
- $.inputQuantizedParam = reader.object(json.inputQuantizedParam, MNN.QuantizedParam);
- $.outputQuantizedParam = reader.object(json.outputQuantizedParam, MNN.QuantizedParam);
- return $;
- }
- };
- MNN.QuantizedMatMul = class QuantizedMatMul {
- static decode(reader, position) {
- const $ = new MNN.QuantizedMatMul();
- $.transposeA = reader.bool_(position, 4, false);
- $.transposeB = reader.bool_(position, 6, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedMatMul();
- $.transposeA = reader.value(json.transposeA, false);
- $.transposeB = reader.value(json.transposeB, false);
- return $;
- }
- };
- MNN.QuantizedMaxPool = class QuantizedMaxPool {
- static decode(reader, position) {
- const $ = new MNN.QuantizedMaxPool();
- $.kernelX = reader.int32_(position, 4, 0);
- $.kernelY = reader.int32_(position, 6, 0);
- $.modelFormat = reader.int8_(position, 8, 0);
- $.outputActivationMax = reader.int32_(position, 10, 0);
- $.outputActivationMin = reader.int32_(position, 12, 0);
- $.padType = reader.int8_(position, 14, 0);
- $.padX = reader.int32_(position, 16, 0);
- $.padY = reader.int32_(position, 18, 0);
- $.strideX = reader.int32_(position, 20, 0);
- $.strideY = reader.int32_(position, 22, 0);
- $.type = reader.int32_(position, 24, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedMaxPool();
- $.kernelX = reader.value(json.kernelX, 0);
- $.kernelY = reader.value(json.kernelY, 0);
- $.modelFormat = MNN.ModeFormat[json.modelFormat];
- $.outputActivationMax = reader.value(json.outputActivationMax, 0);
- $.outputActivationMin = reader.value(json.outputActivationMin, 0);
- $.padType = MNN.PoolPadType[json.padType];
- $.padX = reader.value(json.padX, 0);
- $.padY = reader.value(json.padY, 0);
- $.strideX = reader.value(json.strideX, 0);
- $.strideY = reader.value(json.strideY, 0);
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.QuantizedRelu = class QuantizedRelu {
- static decode(reader, position) {
- const $ = new MNN.QuantizedRelu();
- $.type = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedRelu();
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.QuantizedRelu6 = class QuantizedRelu6 {
- static decode(reader, position) {
- const $ = new MNN.QuantizedRelu6();
- $.type = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedRelu6();
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.QuantizedReshape = class QuantizedReshape {
- static decode(reader, position) {
- const $ = new MNN.QuantizedReshape();
- $.dims = reader.array(position, 4, Int32Array);
- $.modelFormat = reader.int8_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedReshape();
- $.dims = reader.array(json.dims, Int32Array);
- $.modelFormat = MNN.ModeFormat[json.modelFormat];
- return $;
- }
- };
- MNN.QuantizedSoftmax = class QuantizedSoftmax {
- static decode(reader, position) {
- const $ = new MNN.QuantizedSoftmax();
- $.beta = reader.float32_(position, 4, 0);
- $.inputScale = reader.float32_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizedSoftmax();
- $.beta = reader.value(json.beta, 0);
- $.inputScale = reader.value(json.inputScale, 0);
- return $;
- }
- };
- MNN.QuantizeRoundMode = {
- HALF_AWAY_FROM_ZERO: 0,
- HALF_TO_EVEN: 1
- };
- MNN.QuantizeV2 = class QuantizeV2 {
- static decode(reader, position) {
- const $ = new MNN.QuantizeV2();
- $.type = reader.int32_(position, 4, 0);
- $.mode = reader.int8_(position, 6, 0);
- $.roundMode = reader.int8_(position, 8, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.QuantizeV2();
- $.type = MNN.DataType[json.type];
- $.mode = MNN.QuantizeMode[json.mode];
- $.roundMode = MNN.QuantizeRoundMode[json.roundMode];
- return $;
- }
- };
- MNN.RequantizationRange = class RequantizationRange {
- static decode(/* reader, position */) {
- const $ = new MNN.RequantizationRange();
- return $;
- }
- static decodeText(/* reader, json */) {
- const $ = new MNN.RequantizationRange();
- return $;
- }
- };
- MNN.Requantize = class Requantize {
- static decode(/* reader, position */) {
- const $ = new MNN.Requantize();
- return $;
- }
- static decodeText(/* reader, json */) {
- const $ = new MNN.Requantize();
- return $;
- }
- };
- MNN.TfQuantizedConv2D = class TfQuantizedConv2D {
- static decode(reader, position) {
- const $ = new MNN.TfQuantizedConv2D();
- $.bias = reader.array(position, 4, Int32Array);
- $.biasflag = reader.bool_(position, 6, false);
- $.common = reader.table(position, 8, MNN.Convolution2DCommon);
- $.weight = reader.array(position, 10, Uint8Array);
- $.activationType = reader.int8_(position, 12, 0);
- $.multiplier = reader.int32_(position, 14, 0);
- $.outMax = reader.int32_(position, 16, 0);
- $.outMin = reader.int32_(position, 18, 0);
- $.shift = reader.int32_(position, 20, 0);
- $.biasQuantizedParam = reader.table(position, 22, MNN.QuantizedParam);
- $.depthMultiplier = reader.int32_(position, 24, 0);
- $.filterQuantizedParam = reader.table(position, 26, MNN.QuantizedParam);
- $.inputQuantizedParam = reader.table(position, 28, MNN.QuantizedParam);
- $.modelFormat = reader.int8_(position, 30, 0);
- $.outputQuantizedParam = reader.table(position, 32, MNN.QuantizedParam);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TfQuantizedConv2D();
- $.bias = reader.array(json.bias, Int32Array);
- $.biasflag = reader.value(json.biasflag, false);
- $.common = reader.object(json.common, MNN.Convolution2DCommon);
- $.weight = reader.array(json.weight, Uint8Array);
- $.activationType = MNN.FusedActivation[json.activationType];
- $.multiplier = reader.value(json.multiplier, 0);
- $.outMax = reader.value(json.outMax, 0);
- $.outMin = reader.value(json.outMin, 0);
- $.shift = reader.value(json.shift, 0);
- $.biasQuantizedParam = reader.object(json.biasQuantizedParam, MNN.QuantizedParam);
- $.depthMultiplier = reader.value(json.depthMultiplier, 0);
- $.filterQuantizedParam = reader.object(json.filterQuantizedParam, MNN.QuantizedParam);
- $.inputQuantizedParam = reader.object(json.inputQuantizedParam, MNN.QuantizedParam);
- $.modelFormat = MNN.ModeFormat[json.modelFormat];
- $.outputQuantizedParam = reader.object(json.outputQuantizedParam, MNN.QuantizedParam);
- return $;
- }
- };
- MNN.ExtraInfo = class ExtraInfo {
- static decode(reader, position) {
- const $ = new MNN.ExtraInfo();
- $.buffer = reader.array(position, 4, Int8Array);
- $.name = reader.string_(position, 6, null);
- $.version = reader.string_(position, 8, null);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ExtraInfo();
- $.buffer = reader.array(json.buffer, Int8Array);
- $.name = reader.value(json.name, null);
- $.version = reader.value(json.version, null);
- return $;
- }
- };
- MNN.TensorConvertInfo = class TensorConvertInfo {
- static decode(reader, position) {
- const $ = new MNN.TensorConvertInfo();
- $.source = reader.int8_(position, 4, 0);
- $.dest = reader.int8_(position, 6, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TensorConvertInfo();
- $.source = MNN.MNN_DATA_FORMAT[json.source];
- $.dest = MNN.MNN_DATA_FORMAT[json.dest];
- return $;
- }
- };
- MNN.SampleMode = {
- BILINEAR: 0,
- NEAREST: 1
- };
- MNN.BorderMode = {
- ZEROS: 0,
- CLAMP: 1,
- REFLECTION: 2,
- CUBE: 3
- };
- MNN.GridSample = class GridSample {
- static decode(reader, position) {
- const $ = new MNN.GridSample();
- $.mode = reader.int8_(position, 4, 0);
- $.paddingMode = reader.int8_(position, 6, 0);
- $.alignCorners = reader.bool_(position, 8, false);
- $.backward = reader.bool_(position, 10, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.GridSample();
- $.mode = MNN.SampleMode[json.mode];
- $.paddingMode = MNN.BorderMode[json.paddingMode];
- $.alignCorners = reader.value(json.alignCorners, false);
- $.backward = reader.value(json.backward, false);
- return $;
- }
- };
- MNN.ImageFormatType = {
- RGBA: 0,
- RGB: 1,
- BGR: 2,
- GRAY: 3,
- BGRA: 4,
- YCrCb: 5,
- YUV: 6,
- HSV: 7,
- XYZ: 8,
- BGR555: 9,
- BGR565: 10,
- YUV_NV21: 11,
- YUV_NV12: 12,
- YUV_I420: 13,
- HSV_FULL: 14
- };
- MNN.FilterType = {
- NEAREST: 0,
- BILINEAR: 1,
- BICUBIC: 2
- };
- MNN.WrapType = {
- CLAMP_TO_EDGE: 0,
- ZERO: 1,
- REPEAT: 2
- };
- MNN.ImageProcessParam = class ImageProcessParam {
- static decode(reader, position) {
- const $ = new MNN.ImageProcessParam();
- $.filterType = reader.int8_(position, 4, 0);
- $.sourceFormat = reader.int32_(position, 6, 0);
- $.destFormat = reader.int32_(position, 8, 0);
- $.wrap = reader.int8_(position, 10, 0);
- $.mean = reader.array(position, 12, Float32Array);
- $.normal = reader.array(position, 14, Float32Array);
- $.transform = reader.array(position, 16, Float32Array);
- $.paddingValue = reader.int8_(position, 18, 0);
- $.shape = reader.array(position, 20, Int32Array);
- $.outputType = reader.int32_(position, 22, 0);
- $.draw = reader.bool_(position, 24, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.ImageProcessParam();
- $.filterType = MNN.FilterType[json.filterType];
- $.sourceFormat = MNN.ImageFormatType[json.sourceFormat];
- $.destFormat = MNN.ImageFormatType[json.destFormat];
- $.wrap = MNN.WrapType[json.wrap];
- $.mean = reader.array(json.mean, Float32Array);
- $.normal = reader.array(json.normal, Float32Array);
- $.transform = reader.array(json.transform, Float32Array);
- $.paddingValue = reader.value(json.paddingValue, 0);
- $.shape = reader.array(json.shape, Int32Array);
- $.outputType = MNN.DataType[json.outputType];
- $.draw = reader.value(json.draw, false);
- return $;
- }
- };
- MNN.OpType = {
- AbsVal: 0,
- QuantizedAdd: 1,
- ArgMax: 2,
- AsString: 3,
- InstanceNorm: 4,
- BatchToSpaceND: 5,
- Copy: 6,
- BinaryOp: 7,
- Bnll: 8,
- Cast: 9,
- Concat: 10,
- Const: 11,
- Convolution: 12,
- ConvolutionDepthwise: 13,
- Crop: 14,
- CropAndResize: 15,
- ImageProcess: 16,
- Deconvolution: 17,
- DeconvolutionDepthwise: 18,
- Dequantize: 19,
- DetectionOutput: 20,
- Dropout: 21,
- Eltwise: 22,
- ELU: 23,
- Unique: 24,
- Exp: 25,
- ExpandDims: 26,
- Fill: 27,
- Flatten: 28,
- Im2Col: 29,
- Gather: 30,
- GatherV2: 31,
- Im2Seq: 32,
- InnerProduct: 33,
- Input: 34,
- Interp: 35,
- Log: 36,
- LRN: 37,
- LSTM: 38,
- MatMul: 39,
- MoE: 40,
- NonMaxSuppression: 41,
- NonMaxSuppressionV2: 42,
- Normalize: 43,
- Pack: 44,
- Padding: 45,
- Permute: 46,
- Pooling: 47,
- Power: 48,
- PReLU: 49,
- PriorBox: 50,
- Proposal: 51,
- QuantizedAvgPool: 52,
- QuantizedBiasAdd: 53,
- QuantizedConcat: 54,
- QuantizedDepthwiseConv2D: 55,
- QuantizedLogistic: 56,
- RasterAndInterpolate: 57,
- QuantizedMaxPool: 58,
- Texture: 59,
- RasterDiff: 60,
- QuantizedReshape: 61,
- QuantizedSoftmax: 62,
- QuantizeMaxMin: 63,
- QuantizeV2: 64,
- Range: 65,
- Rank: 66,
- ReduceJoin: 67,
- Reduction: 68,
- ReLU: 69,
- ReLU6: 70,
- RequantizationRange: 71,
- Requantize: 72,
- Reshape: 73,
- Resize: 74,
- RNN: 75,
- ROIPooling: 76,
- Scale: 77,
- Selu: 78,
- Seq2Out: 79,
- Shape: 80,
- Sigmoid: 81,
- Size: 82,
- Slice: 83,
- SliceTf: 84,
- Softmax: 85,
- SpaceToBatchND: 86,
- SpatialProduct: 87,
- Col2Im: 88,
- Segment: 89,
- Squeeze: 90,
- StridedSlice: 91,
- CastLike: 92,
- StringSplit: 93,
- StringToNumber: 94,
- TanH: 95,
- TfQuantizedConv2D: 96,
- Threshold: 97,
- Tile: 98,
- TopKV2: 99,
- Transpose: 100,
- UnaryOp: 101,
- Unpack: 102,
- Where: 103,
- Moments: 104,
- RNNSequenceGRU: 105,
- BatchMatMul: 106,
- Unsqueeze: 107,
- CosineSimilarity: 108,
- DepthToSpace: 109,
- SpaceToDepth: 110,
- ReverseSequence: 111,
- Pooling3D: 112,
- Convolution3D: 113,
- MatrixBandPart: 114,
- GatherND: 115,
- DetectionPostProcess: 116,
- UnravelIndex: 117,
- ScatterNd: 118,
- OneHot: 119,
- BroadcastTo: 120,
- Dilation2D: 121,
- Interp3D: 122,
- Raster: 128,
- ConvertTensor: 129,
- ArgMin: 130,
- LinSpace: 131,
- RandomUniform: 132,
- TensorArray: 133,
- TensorArraySize: 134,
- TensorArrayRead: 135,
- TensorArrayWrite: 136,
- TensorArrayGather: 137,
- TensorArrayScatter: 138,
- TensorArraySplit: 139,
- TensorArrayConcat: 140,
- LSTMBlockCell: 141,
- Reverse: 142,
- ROIAlign: 143,
- RandomNormal: 144,
- TensorArrayInsert: 145,
- TensorArrayErase: 146,
- EyeLike: 147,
- CumSum: 148,
- Det: 149,
- CumProd: 150,
- ScatterElements: 151,
- GatherElements: 152,
- Svd: 153,
- Histogram: 154,
- DynamicQuant: 155,
- Stft: 156,
- Plugin: 256,
- Select: 257,
- ZerosLike: 258,
- Broastcast: 259,
- SetDiff1D: 260,
- ReluGrad: 261,
- Identity: 262,
- PoolGrad: 263,
- SoftmaxGrad: 264,
- Conv2DBackPropFilter: 265,
- TrainableParam: 266,
- BatchNorm: 267,
- ConvTranspose3D: 268,
- ZeroGrad: 269,
- Attention: 299,
- FmhaV2: 300,
- Fmhca: 301,
- SeqLen2Spatial: 302,
- SplitGeLU: 303,
- GroupNorm: 304,
- LinearAttention: 305,
- Extra: 512,
- ConvInt8: 513,
- Int8ToFloat: 514,
- DepthwiseConvInt8: 515,
- FloatToInt8: 517,
- EltwiseInt8: 518,
- While: 600,
- If: 601,
- LayerNorm: 603,
- GridSample: 604
- };
- MNN.Plugin = class Plugin {
- static decode(reader, position) {
- const $ = new MNN.Plugin();
- $.type = reader.string_(position, 4, null);
- $.attr = reader.tables(position, 6, MNN.Attribute);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Plugin();
- $.type = reader.value(json.type, null);
- $.attr = reader.objects(json.attr, MNN.Attribute);
- return $;
- }
- };
- MNN.Extra = class Extra {
- static decode(reader, position) {
- const $ = new MNN.Extra();
- $.type = reader.string_(position, 4, null);
- $.engine = reader.string_(position, 6, null);
- $.info = reader.array(position, 8, Int8Array);
- $.attr = reader.tables(position, 10, MNN.Attribute);
- $.vector = reader.bool_(position, 12, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Extra();
- $.type = reader.value(json.type, null);
- $.engine = reader.value(json.engine, null);
- $.info = reader.array(json.info, Int8Array);
- $.attr = reader.objects(json.attr, MNN.Attribute);
- $.vector = reader.value(json.vector, false);
- return $;
- }
- };
- MNN.StringVec = class StringVec {
- static decode(reader, position) {
- const $ = new MNN.StringVec();
- $.data = reader.strings_(position, 4);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.StringVec();
- $.data = reader.array(json.data);
- return $;
- }
- };
- MNN.AttentionParam = class AttentionParam {
- static decode(reader, position) {
- const $ = new MNN.AttentionParam();
- $.kv_cache = reader.bool_(position, 4, true);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.AttentionParam();
- $.kv_cache = reader.value(json.kv_cache, true);
- return $;
- }
- };
- MNN.LinearAttentionParam = class LinearAttentionParam {
- static decode(reader, position) {
- const $ = new MNN.LinearAttentionParam();
- $.attn_type = reader.string_(position, 4, null);
- $.num_k_heads = reader.int32_(position, 6, 0);
- $.num_v_heads = reader.int32_(position, 8, 0);
- $.head_k_dim = reader.int32_(position, 10, 0);
- $.head_v_dim = reader.int32_(position, 12, 0);
- $.use_qk_l2norm = reader.bool_(position, 14, false);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LinearAttentionParam();
- $.attn_type = reader.value(json.attn_type, null);
- $.num_k_heads = reader.value(json.num_k_heads, 0);
- $.num_v_heads = reader.value(json.num_v_heads, 0);
- $.head_k_dim = reader.value(json.head_k_dim, 0);
- $.head_v_dim = reader.value(json.head_v_dim, 0);
- $.use_qk_l2norm = reader.value(json.use_qk_l2norm, false);
- return $;
- }
- };
- MNN.FmhaV2Param = class FmhaV2Param {
- static decode(reader, position) {
- const $ = new MNN.FmhaV2Param();
- $.heads = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.FmhaV2Param();
- $.heads = reader.value(json.heads, 0);
- return $;
- }
- };
- MNN.FmhcaParam = class FmhcaParam {
- static decode(reader, position) {
- const $ = new MNN.FmhcaParam();
- $.heads = reader.int32_(position, 4, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.FmhcaParam();
- $.heads = reader.value(json.heads, 0);
- return $;
- }
- };
- MNN.StftParam = class StftParam {
- static decode(reader, position) {
- const $ = new MNN.StftParam();
- $.n_fft = reader.int32_(position, 4, 0);
- $.hop_length = reader.int32_(position, 6, 0);
- $.abs = reader.bool_(position, 8, true);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.StftParam();
- $.n_fft = reader.value(json.n_fft, 0);
- $.hop_length = reader.value(json.hop_length, 0);
- $.abs = reader.value(json.abs, true);
- return $;
- }
- };
- MNN.WhileParam = class WhileParam {
- static decode(reader, position) {
- const $ = new MNN.WhileParam();
- $.cond_graph = reader.string_(position, 4, null);
- $.body_graph = reader.string_(position, 6, null);
- $.aliases_inputs = reader.tables(position, 8, MNN.StringVec);
- $.aliases_outputs = reader.strings_(position, 10);
- $.aliases_updates = reader.tables(position, 12, MNN.StringVec);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.WhileParam();
- $.cond_graph = reader.value(json.cond_graph, null);
- $.body_graph = reader.value(json.body_graph, null);
- $.aliases_inputs = reader.objects(json.aliases_inputs, MNN.StringVec);
- $.aliases_outputs = reader.array(json.aliases_outputs);
- $.aliases_updates = reader.objects(json.aliases_updates, MNN.StringVec);
- return $;
- }
- };
- MNN.IfParam = class IfParam {
- static decode(reader, position) {
- const $ = new MNN.IfParam();
- $.then_graph = reader.string_(position, 4, null);
- $.else_graph = reader.string_(position, 6, null);
- $.aliases_inputs = reader.tables(position, 8, MNN.StringVec);
- $.aliases_outputs = reader.tables(position, 10, MNN.StringVec);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.IfParam();
- $.then_graph = reader.value(json.then_graph, null);
- $.else_graph = reader.value(json.else_graph, null);
- $.aliases_inputs = reader.objects(json.aliases_inputs, MNN.StringVec);
- $.aliases_outputs = reader.objects(json.aliases_outputs, MNN.StringVec);
- return $;
- }
- };
- MNN.RegionCommand = class RegionCommand {
- static decode(reader, position) {
- const $ = new MNN.RegionCommand();
- $.op = reader.table(position, 4, MNN.Op);
- $.steps = reader.array(position, 6, Int32Array);
- $.size = reader.array(position, 8, Int32Array);
- $.indexes = reader.array(position, 10, Int32Array);
- $.view = reader.tables(position, 12, MNN.View);
- $.fuse = reader.int32_(position, 14, -1);
- $.iterIndexes = reader.array(position, 16, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.RegionCommand();
- $.op = reader.object(json.op, MNN.Op);
- $.steps = reader.array(json.steps, Int32Array);
- $.size = reader.array(json.size, Int32Array);
- $.indexes = reader.array(json.indexes, Int32Array);
- $.view = reader.objects(json.view, MNN.View);
- $.fuse = reader.value(json.fuse, -1);
- $.iterIndexes = reader.array(json.iterIndexes, Int32Array);
- return $;
- }
- };
- MNN.LoopParam = class LoopParam {
- static decode(reader, position) {
- const $ = new MNN.LoopParam();
- $.tensorNumber = reader.int32_(position, 4, 0);
- $.outputIndexes = reader.array(position, 6, Int32Array);
- $.inputIndexes = reader.array(position, 8, Int32Array);
- $.extraTensorInfos = reader.tables(position, 10, MNN.TensorDescribe);
- $.parallel = reader.bool_(position, 12, true);
- $.loopNumber = reader.int32_(position, 14, 0);
- $.commands = reader.tables(position, 16, MNN.RegionCommand);
- $.initCommand = reader.tables(position, 18, MNN.RegionCommand);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.LoopParam();
- $.tensorNumber = reader.value(json.tensorNumber, 0);
- $.outputIndexes = reader.array(json.outputIndexes, Int32Array);
- $.inputIndexes = reader.array(json.inputIndexes, Int32Array);
- $.extraTensorInfos = reader.objects(json.extraTensorInfos, MNN.TensorDescribe);
- $.parallel = reader.value(json.parallel, true);
- $.loopNumber = reader.value(json.loopNumber, 0);
- $.commands = reader.objects(json.commands, MNN.RegionCommand);
- $.initCommand = reader.objects(json.initCommand, MNN.RegionCommand);
- return $;
- }
- };
- MNN.OpParameter = class {
- static decode(reader, position, type) {
- switch (type) {
- case 1: return MNN.QuantizedAdd.decode(reader, position);
- case 2: return MNN.ArgMax.decode(reader, position);
- case 3: return MNN.AsString.decode(reader, position);
- case 4: return MNN.Axis.decode(reader, position);
- case 5: return MNN.BatchNorm.decode(reader, position);
- case 6: return MNN.BinaryOp.decode(reader, position);
- case 7: return MNN.Blob.decode(reader, position);
- case 8: return MNN.CastParam.decode(reader, position);
- case 9: return MNN.Convolution2D.decode(reader, position);
- case 10: return MNN.Crop.decode(reader, position);
- case 11: return MNN.CropAndResize.decode(reader, position);
- case 12: return MNN.Dequantize.decode(reader, position);
- case 13: return MNN.DetectionOutput.decode(reader, position);
- case 14: return MNN.Eltwise.decode(reader, position);
- case 15: return MNN.ExpandDims.decode(reader, position);
- case 16: return MNN.Fill.decode(reader, position);
- case 17: return MNN.Flatten.decode(reader, position);
- case 18: return MNN.Gather.decode(reader, position);
- case 19: return MNN.GatherV2.decode(reader, position);
- case 20: return MNN.InnerProduct.decode(reader, position);
- case 21: return MNN.Input.decode(reader, position);
- case 22: return MNN.Interp.decode(reader, position);
- case 23: return MNN.LRN.decode(reader, position);
- case 24: return MNN.LSTM.decode(reader, position);
- case 25: return MNN.MatMul.decode(reader, position);
- case 26: return MNN.NonMaxSuppressionV2.decode(reader, position);
- case 27: return MNN.Normalize.decode(reader, position);
- case 28: return MNN.PackParam.decode(reader, position);
- case 29: return MNN.Permute.decode(reader, position);
- case 30: return MNN.Plugin.decode(reader, position);
- case 31: return MNN.Pool.decode(reader, position);
- case 32: return MNN.PRelu.decode(reader, position);
- case 33: return MNN.PriorBox.decode(reader, position);
- case 34: return MNN.Proposal.decode(reader, position);
- case 35: return MNN.QuantizedAvgPool.decode(reader, position);
- case 36: return MNN.QuantizedBiasAdd.decode(reader, position);
- case 37: return MNN.QuantizedConcat.decode(reader, position);
- case 38: return MNN.QuantizedLogistic.decode(reader, position);
- case 39: return MNN.QuantizedMatMul.decode(reader, position);
- case 40: return MNN.QuantizedMaxPool.decode(reader, position);
- case 41: return MNN.QuantizedRelu.decode(reader, position);
- case 42: return MNN.QuantizedRelu6.decode(reader, position);
- case 43: return MNN.QuantizedReshape.decode(reader, position);
- case 44: return MNN.QuantizedSoftmax.decode(reader, position);
- case 45: return MNN.QuantizeMaxMin.decode(reader, position);
- case 46: return MNN.QuantizeV2.decode(reader, position);
- case 47: return MNN.Range.decode(reader, position);
- case 48: return MNN.Rank.decode(reader, position);
- case 49: return MNN.ReduceJoin.decode(reader, position);
- case 50: return MNN.ReductionParam.decode(reader, position);
- case 51: return MNN.Relu.decode(reader, position);
- case 52: return MNN.Relu6.decode(reader, position);
- case 53: return MNN.RequantizationRange.decode(reader, position);
- case 54: return MNN.Requantize.decode(reader, position);
- case 55: return MNN.Reshape.decode(reader, position);
- case 56: return MNN.Resize.decode(reader, position);
- case 57: return MNN.RoiParameters.decode(reader, position);
- case 58: return MNN.Scale.decode(reader, position);
- case 59: return MNN.Selu.decode(reader, position);
- case 60: return MNN.Size.decode(reader, position);
- case 61: return MNN.Slice.decode(reader, position);
- case 62: return MNN.SliceTf.decode(reader, position);
- case 63: return MNN.SpaceBatch.decode(reader, position);
- case 64: return MNN.SqueezeParam.decode(reader, position);
- case 65: return MNN.StridedSliceParam.decode(reader, position);
- case 66: return MNN.TensorConvertInfo.decode(reader, position);
- case 67: return MNN.TfQuantizedConv2D.decode(reader, position);
- case 68: return MNN.TopKV2.decode(reader, position);
- case 69: return MNN.Transpose.decode(reader, position);
- case 70: return MNN.UnaryOp.decode(reader, position);
- case 71: return MNN.MomentsParam.decode(reader, position);
- case 72: return MNN.RNNParam.decode(reader, position);
- case 73: return MNN.BatchMatMulParam.decode(reader, position);
- case 74: return MNN.QuantizedFloatParam.decode(reader, position);
- case 75: return MNN.DepthSpaceParam.decode(reader, position);
- case 76: return MNN.EltwiseInt8.decode(reader, position);
- case 77: return MNN.ReverseSequenceParam.decode(reader, position);
- case 78: return MNN.Extra.decode(reader, position);
- case 79: return MNN.Pool3D.decode(reader, position);
- case 80: return MNN.Convolution3D.decode(reader, position);
- case 81: return MNN.ELU.decode(reader, position);
- case 82: return MNN.DetectionPostProcessParam.decode(reader, position);
- case 83: return MNN.OneHotParam.decode(reader, position);
- case 84: return MNN.PadParam.decode(reader, position);
- case 85: return MNN.WhileParam.decode(reader, position);
- case 86: return MNN.IfParam.decode(reader, position);
- case 87: return MNN.RandomUniform.decode(reader, position);
- case 88: return MNN.LayerNorm.decode(reader, position);
- case 89: return MNN.TensorArray.decode(reader, position);
- case 90: return MNN.LSTMBlockCell.decode(reader, position);
- case 91: return MNN.GridSample.decode(reader, position);
- case 92: return MNN.LoopParam.decode(reader, position);
- case 93: return MNN.ImageProcessParam.decode(reader, position);
- case 94: return MNN.CumSum.decode(reader, position);
- case 95: return MNN.GroupNorm.decode(reader, position);
- case 96: return MNN.FmhaV2Param.decode(reader, position);
- case 97: return MNN.FmhcaParam.decode(reader, position);
- case 98: return MNN.AttentionParam.decode(reader, position);
- case 99: return MNN.StftParam.decode(reader, position);
- case 100: return MNN.LinearAttentionParam.decode(reader, position);
- default: return undefined;
- }
- }
- static decodeText(reader, json, type) {
- switch (type) {
- case 'QuantizedAdd': return MNN.QuantizedAdd.decodeText(reader, json);
- case 'ArgMax': return MNN.ArgMax.decodeText(reader, json);
- case 'AsString': return MNN.AsString.decodeText(reader, json);
- case 'Axis': return MNN.Axis.decodeText(reader, json);
- case 'BatchNorm': return MNN.BatchNorm.decodeText(reader, json);
- case 'BinaryOp': return MNN.BinaryOp.decodeText(reader, json);
- case 'Blob': return MNN.Blob.decodeText(reader, json);
- case 'CastParam': return MNN.CastParam.decodeText(reader, json);
- case 'Convolution2D': return MNN.Convolution2D.decodeText(reader, json);
- case 'Crop': return MNN.Crop.decodeText(reader, json);
- case 'CropAndResize': return MNN.CropAndResize.decodeText(reader, json);
- case 'Dequantize': return MNN.Dequantize.decodeText(reader, json);
- case 'DetectionOutput': return MNN.DetectionOutput.decodeText(reader, json);
- case 'Eltwise': return MNN.Eltwise.decodeText(reader, json);
- case 'ExpandDims': return MNN.ExpandDims.decodeText(reader, json);
- case 'Fill': return MNN.Fill.decodeText(reader, json);
- case 'Flatten': return MNN.Flatten.decodeText(reader, json);
- case 'Gather': return MNN.Gather.decodeText(reader, json);
- case 'GatherV2': return MNN.GatherV2.decodeText(reader, json);
- case 'InnerProduct': return MNN.InnerProduct.decodeText(reader, json);
- case 'Input': return MNN.Input.decodeText(reader, json);
- case 'Interp': return MNN.Interp.decodeText(reader, json);
- case 'LRN': return MNN.LRN.decodeText(reader, json);
- case 'LSTM': return MNN.LSTM.decodeText(reader, json);
- case 'MatMul': return MNN.MatMul.decodeText(reader, json);
- case 'NonMaxSuppressionV2': return MNN.NonMaxSuppressionV2.decodeText(reader, json);
- case 'Normalize': return MNN.Normalize.decodeText(reader, json);
- case 'PackParam': return MNN.PackParam.decodeText(reader, json);
- case 'Permute': return MNN.Permute.decodeText(reader, json);
- case 'Plugin': return MNN.Plugin.decodeText(reader, json);
- case 'Pool': return MNN.Pool.decodeText(reader, json);
- case 'PRelu': return MNN.PRelu.decodeText(reader, json);
- case 'PriorBox': return MNN.PriorBox.decodeText(reader, json);
- case 'Proposal': return MNN.Proposal.decodeText(reader, json);
- case 'QuantizedAvgPool': return MNN.QuantizedAvgPool.decodeText(reader, json);
- case 'QuantizedBiasAdd': return MNN.QuantizedBiasAdd.decodeText(reader, json);
- case 'QuantizedConcat': return MNN.QuantizedConcat.decodeText(reader, json);
- case 'QuantizedLogistic': return MNN.QuantizedLogistic.decodeText(reader, json);
- case 'QuantizedMatMul': return MNN.QuantizedMatMul.decodeText(reader, json);
- case 'QuantizedMaxPool': return MNN.QuantizedMaxPool.decodeText(reader, json);
- case 'QuantizedRelu': return MNN.QuantizedRelu.decodeText(reader, json);
- case 'QuantizedRelu6': return MNN.QuantizedRelu6.decodeText(reader, json);
- case 'QuantizedReshape': return MNN.QuantizedReshape.decodeText(reader, json);
- case 'QuantizedSoftmax': return MNN.QuantizedSoftmax.decodeText(reader, json);
- case 'QuantizeMaxMin': return MNN.QuantizeMaxMin.decodeText(reader, json);
- case 'QuantizeV2': return MNN.QuantizeV2.decodeText(reader, json);
- case 'Range': return MNN.Range.decodeText(reader, json);
- case 'Rank': return MNN.Rank.decodeText(reader, json);
- case 'ReduceJoin': return MNN.ReduceJoin.decodeText(reader, json);
- case 'ReductionParam': return MNN.ReductionParam.decodeText(reader, json);
- case 'Relu': return MNN.Relu.decodeText(reader, json);
- case 'Relu6': return MNN.Relu6.decodeText(reader, json);
- case 'RequantizationRange': return MNN.RequantizationRange.decodeText(reader, json);
- case 'Requantize': return MNN.Requantize.decodeText(reader, json);
- case 'Reshape': return MNN.Reshape.decodeText(reader, json);
- case 'Resize': return MNN.Resize.decodeText(reader, json);
- case 'RoiParameters': return MNN.RoiParameters.decodeText(reader, json);
- case 'Scale': return MNN.Scale.decodeText(reader, json);
- case 'Selu': return MNN.Selu.decodeText(reader, json);
- case 'Size': return MNN.Size.decodeText(reader, json);
- case 'Slice': return MNN.Slice.decodeText(reader, json);
- case 'SliceTf': return MNN.SliceTf.decodeText(reader, json);
- case 'SpaceBatch': return MNN.SpaceBatch.decodeText(reader, json);
- case 'SqueezeParam': return MNN.SqueezeParam.decodeText(reader, json);
- case 'StridedSliceParam': return MNN.StridedSliceParam.decodeText(reader, json);
- case 'TensorConvertInfo': return MNN.TensorConvertInfo.decodeText(reader, json);
- case 'TfQuantizedConv2D': return MNN.TfQuantizedConv2D.decodeText(reader, json);
- case 'TopKV2': return MNN.TopKV2.decodeText(reader, json);
- case 'Transpose': return MNN.Transpose.decodeText(reader, json);
- case 'UnaryOp': return MNN.UnaryOp.decodeText(reader, json);
- case 'MomentsParam': return MNN.MomentsParam.decodeText(reader, json);
- case 'RNNParam': return MNN.RNNParam.decodeText(reader, json);
- case 'BatchMatMulParam': return MNN.BatchMatMulParam.decodeText(reader, json);
- case 'QuantizedFloatParam': return MNN.QuantizedFloatParam.decodeText(reader, json);
- case 'DepthSpaceParam': return MNN.DepthSpaceParam.decodeText(reader, json);
- case 'EltwiseInt8': return MNN.EltwiseInt8.decodeText(reader, json);
- case 'ReverseSequenceParam': return MNN.ReverseSequenceParam.decodeText(reader, json);
- case 'Extra': return MNN.Extra.decodeText(reader, json);
- case 'Pool3D': return MNN.Pool3D.decodeText(reader, json);
- case 'Convolution3D': return MNN.Convolution3D.decodeText(reader, json);
- case 'ELU': return MNN.ELU.decodeText(reader, json);
- case 'DetectionPostProcessParam': return MNN.DetectionPostProcessParam.decodeText(reader, json);
- case 'OneHotParam': return MNN.OneHotParam.decodeText(reader, json);
- case 'PadParam': return MNN.PadParam.decodeText(reader, json);
- case 'WhileParam': return MNN.WhileParam.decodeText(reader, json);
- case 'IfParam': return MNN.IfParam.decodeText(reader, json);
- case 'RandomUniform': return MNN.RandomUniform.decodeText(reader, json);
- case 'LayerNorm': return MNN.LayerNorm.decodeText(reader, json);
- case 'TensorArray': return MNN.TensorArray.decodeText(reader, json);
- case 'LSTMBlockCell': return MNN.LSTMBlockCell.decodeText(reader, json);
- case 'GridSample': return MNN.GridSample.decodeText(reader, json);
- case 'LoopParam': return MNN.LoopParam.decodeText(reader, json);
- case 'ImageProcessParam': return MNN.ImageProcessParam.decodeText(reader, json);
- case 'CumSum': return MNN.CumSum.decodeText(reader, json);
- case 'GroupNorm': return MNN.GroupNorm.decodeText(reader, json);
- case 'FmhaV2Param': return MNN.FmhaV2Param.decodeText(reader, json);
- case 'FmhcaParam': return MNN.FmhcaParam.decodeText(reader, json);
- case 'AttentionParam': return MNN.AttentionParam.decodeText(reader, json);
- case 'StftParam': return MNN.StftParam.decodeText(reader, json);
- case 'LinearAttentionParam': return MNN.LinearAttentionParam.decodeText(reader, json);
- default: return undefined;
- }
- }
- };
- MNN.Op = class Op {
- static decode(reader, position) {
- const $ = new MNN.Op();
- $.inputIndexes = reader.array(position, 4, Int32Array);
- $.main = reader.union(position, 6, MNN.OpParameter);
- $.name = reader.string_(position, 10, null);
- $.outputIndexes = reader.array(position, 12, Int32Array);
- $.type = reader.int32_(position, 14, 0);
- $.defaultDimentionFormat = reader.int8_(position, 16, 1);
- $.externalPath = reader.string_(position, 18, null);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Op();
- $.inputIndexes = reader.array(json.inputIndexes, Int32Array);
- $.main = MNN.OpParameter.decodeText(reader, json.main, json.main_type);
- $.name = reader.value(json.name, null);
- $.outputIndexes = reader.array(json.outputIndexes, Int32Array);
- $.type = MNN.OpType[json.type];
- $.defaultDimentionFormat = MNN.MNN_DATA_FORMAT[json.defaultDimentionFormat];
- $.externalPath = reader.value(json.externalPath, null);
- return $;
- }
- };
- MNN.View = class View {
- static decode(reader, position) {
- const $ = new MNN.View();
- $.offset = reader.int32_(position, 4, 0);
- $.stride = reader.array(position, 6, Int32Array);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.View();
- $.offset = reader.value(json.offset, 0);
- $.stride = reader.array(json.stride, Int32Array);
- return $;
- }
- };
- MNN.Region = class Region {
- static decode(reader, position) {
- const $ = new MNN.Region();
- $.src = reader.table(position, 4, MNN.View);
- $.dst = reader.table(position, 6, MNN.View);
- $.size = reader.array(position, 8, Int32Array);
- $.origin = reader.int32_(position, 10, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Region();
- $.src = reader.object(json.src, MNN.View);
- $.dst = reader.object(json.dst, MNN.View);
- $.size = reader.array(json.size, Int32Array);
- $.origin = reader.value(json.origin, 0);
- return $;
- }
- };
- MNN.TensorDescribe = class TensorDescribe {
- static decode(reader, position) {
- const $ = new MNN.TensorDescribe();
- $.blob = reader.table(position, 4, MNN.Blob);
- $.index = reader.int32_(position, 6, 0);
- $.name = reader.string_(position, 8, null);
- $.regions = reader.tables(position, 10, MNN.Region);
- $.quantInfo = reader.table(position, 12, MNN.TensorQuantInfo);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TensorDescribe();
- $.blob = reader.object(json.blob, MNN.Blob);
- $.index = reader.value(json.index, 0);
- $.name = reader.value(json.name, null);
- $.regions = reader.objects(json.regions, MNN.Region);
- $.quantInfo = reader.object(json.quantInfo, MNN.TensorQuantInfo);
- return $;
- }
- };
- MNN.ForwardType = {
- CPU: 0,
- METAL: 1,
- CUDA: 2,
- OPENCL: 3,
- AUTO: 4,
- NNAPI: 5,
- OPENGLES: 6,
- VULKAN: 7
- };
- MNN.Usage = {
- INFERENCE: 0,
- TRAIN: 1,
- INFERENCE_STATIC: 2
- };
- MNN.SubGraphProto = class SubGraphProto {
- static decode(reader, position) {
- const $ = new MNN.SubGraphProto();
- $.name = reader.string_(position, 4, null);
- $.inputs = reader.array(position, 6, Int32Array);
- $.outputs = reader.array(position, 8, Int32Array);
- $.tensors = reader.strings_(position, 10);
- $.nodes = reader.tables(position, 12, MNN.Op);
- $.extraTensorDescribe = reader.tables(position, 14, MNN.TensorDescribe);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.SubGraphProto();
- $.name = reader.value(json.name, null);
- $.inputs = reader.array(json.inputs, Int32Array);
- $.outputs = reader.array(json.outputs, Int32Array);
- $.tensors = reader.array(json.tensors);
- $.nodes = reader.objects(json.nodes, MNN.Op);
- $.extraTensorDescribe = reader.objects(json.extraTensorDescribe, MNN.TensorDescribe);
- return $;
- }
- };
- MNN.TensorQuantInfo = class TensorQuantInfo {
- static decode(reader, position) {
- const $ = new MNN.TensorQuantInfo();
- $.scale = reader.float32_(position, 4, 0);
- $.zero = reader.float32_(position, 6, 0);
- $.min = reader.float32_(position, 8, -128);
- $.max = reader.float32_(position, 10, 127);
- $.type = reader.int32_(position, 12, 0);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.TensorQuantInfo();
- $.scale = reader.value(json.scale, 0);
- $.zero = reader.value(json.zero, 0);
- $.min = reader.value(json.min, -128);
- $.max = reader.value(json.max, 127);
- $.type = MNN.DataType[json.type];
- return $;
- }
- };
- MNN.Net = class Net {
- static create(reader) {
- return MNN.Net.decode(reader, reader.root);
- }
- static createText(reader) {
- return MNN.Net.decodeText(reader, reader.root);
- }
- static decode(reader, position) {
- const $ = new MNN.Net();
- $.bizCode = reader.string_(position, 4, null);
- $.extraTensorDescribe = reader.tables(position, 6, MNN.TensorDescribe);
- $.extraInfo = reader.table(position, 8, MNN.ExtraInfo);
- $.oplists = reader.tables(position, 10, MNN.Op);
- $.outputName = reader.strings_(position, 12);
- $.preferForwardType = reader.int8_(position, 14, 0);
- $.sourceType = reader.int8_(position, 16, 0);
- $.tensorName = reader.strings_(position, 18);
- $.tensorNumber = reader.int32_(position, 20, 0);
- $.usage = reader.int8_(position, 22, 0);
- $.subgraphs = reader.tables(position, 24, MNN.SubGraphProto);
- $.mnn_uuid = reader.string_(position, 26, null);
- return $;
- }
- static decodeText(reader, json) {
- const $ = new MNN.Net();
- $.bizCode = reader.value(json.bizCode, null);
- $.extraTensorDescribe = reader.objects(json.extraTensorDescribe, MNN.TensorDescribe);
- $.extraInfo = reader.object(json.extraInfo, MNN.ExtraInfo);
- $.oplists = reader.objects(json.oplists, MNN.Op);
- $.outputName = reader.array(json.outputName);
- $.preferForwardType = MNN.ForwardType[json.preferForwardType];
- $.sourceType = MNN.NetSource[json.sourceType];
- $.tensorName = reader.array(json.tensorName);
- $.tensorNumber = reader.value(json.tensorNumber, 0);
- $.usage = MNN.Usage[json.usage];
- $.subgraphs = reader.objects(json.subgraphs, MNN.SubGraphProto);
- $.mnn_uuid = reader.value(json.mnn_uuid, null);
- return $;
- }
- };
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