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|
| | import flatbuffers |
| | from flatbuffers.compat import import_numpy |
| | np = import_numpy() |
| |
|
| | class PodNerModel(object): |
| | __slots__ = ['_tab'] |
| |
|
| | @classmethod |
| | def GetRootAsPodNerModel(cls, buf, offset): |
| | n = flatbuffers.encode.Get(flatbuffers.packer.uoffset, buf, offset) |
| | x = PodNerModel() |
| | x.Init(buf, n + offset) |
| | return x |
| |
|
| | @classmethod |
| | def PodNerModelBufferHasIdentifier(cls, buf, offset, size_prefixed=False): |
| | return flatbuffers.util.BufferHasIdentifier(buf, offset, b"\x54\x43\x32\x20", size_prefixed=size_prefixed) |
| |
|
| | |
| | def Init(self, buf, pos): |
| | self._tab = flatbuffers.table.Table(buf, pos) |
| |
|
| | |
| | def TfliteModel(self, j): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(4)) |
| | if o != 0: |
| | a = self._tab.Vector(o) |
| | return self._tab.Get(flatbuffers.number_types.Uint8Flags, a + flatbuffers.number_types.UOffsetTFlags.py_type(j * 1)) |
| | return 0 |
| |
|
| | |
| | def TfliteModelAsNumpy(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(4)) |
| | if o != 0: |
| | return self._tab.GetVectorAsNumpy(flatbuffers.number_types.Uint8Flags, o) |
| | return 0 |
| |
|
| | |
| | def TfliteModelLength(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(4)) |
| | if o != 0: |
| | return self._tab.VectorLen(o) |
| | return 0 |
| |
|
| | |
| | def TfliteModelIsNone(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(4)) |
| | return o == 0 |
| |
|
| | |
| | def WordPieceVocab(self, j): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(6)) |
| | if o != 0: |
| | a = self._tab.Vector(o) |
| | return self._tab.Get(flatbuffers.number_types.Uint8Flags, a + flatbuffers.number_types.UOffsetTFlags.py_type(j * 1)) |
| | return 0 |
| |
|
| | |
| | def WordPieceVocabAsNumpy(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(6)) |
| | if o != 0: |
| | return self._tab.GetVectorAsNumpy(flatbuffers.number_types.Uint8Flags, o) |
| | return 0 |
| |
|
| | |
| | def WordPieceVocabLength(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(6)) |
| | if o != 0: |
| | return self._tab.VectorLen(o) |
| | return 0 |
| |
|
| | |
| | def WordPieceVocabIsNone(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(6)) |
| | return o == 0 |
| |
|
| | |
| | def LowercaseInput(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(8)) |
| | if o != 0: |
| | return bool(self._tab.Get(flatbuffers.number_types.BoolFlags, o + self._tab.Pos)) |
| | return True |
| |
|
| | |
| | def LogitsIndexInOutputTensor(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(10)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Int32Flags, o + self._tab.Pos) |
| | return 0 |
| |
|
| | |
| | def AppendFinalPeriod(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(12)) |
| | if o != 0: |
| | return bool(self._tab.Get(flatbuffers.number_types.BoolFlags, o + self._tab.Pos)) |
| | return False |
| |
|
| | |
| | def PriorityScore(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(14)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Float32Flags, o + self._tab.Pos) |
| | return 0.0 |
| |
|
| | |
| | def MaxNumWordpieces(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(16)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Int32Flags, o + self._tab.Pos) |
| | return 128 |
| |
|
| | |
| | def SlidingWindowNumWordpiecesOverlap(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(18)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Int32Flags, o + self._tab.Pos) |
| | return 20 |
| |
|
| | |
| | def Labels(self, j): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(22)) |
| | if o != 0: |
| | x = self._tab.Vector(o) |
| | x += flatbuffers.number_types.UOffsetTFlags.py_type(j) * 4 |
| | x = self._tab.Indirect(x) |
| | from libtextclassifier3.PodNerModel_.Label import Label |
| | obj = Label() |
| | obj.Init(self._tab.Bytes, x) |
| | return obj |
| | return None |
| |
|
| | |
| | def LabelsLength(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(22)) |
| | if o != 0: |
| | return self._tab.VectorLen(o) |
| | return 0 |
| |
|
| | |
| | def LabelsIsNone(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(22)) |
| | return o == 0 |
| |
|
| | |
| | def MaxRatioUnknownWordpieces(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(24)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Float32Flags, o + self._tab.Pos) |
| | return 0.1 |
| |
|
| | |
| | def Collections(self, j): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(26)) |
| | if o != 0: |
| | x = self._tab.Vector(o) |
| | x += flatbuffers.number_types.UOffsetTFlags.py_type(j) * 4 |
| | x = self._tab.Indirect(x) |
| | from libtextclassifier3.PodNerModel_.Collection import Collection |
| | obj = Collection() |
| | obj.Init(self._tab.Bytes, x) |
| | return obj |
| | return None |
| |
|
| | |
| | def CollectionsLength(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(26)) |
| | if o != 0: |
| | return self._tab.VectorLen(o) |
| | return 0 |
| |
|
| | |
| | def CollectionsIsNone(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(26)) |
| | return o == 0 |
| |
|
| | |
| | def MinNumberOfTokens(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(28)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Int32Flags, o + self._tab.Pos) |
| | return 1 |
| |
|
| | |
| | def MinNumberOfWordpieces(self): |
| | o = flatbuffers.number_types.UOffsetTFlags.py_type(self._tab.Offset(30)) |
| | if o != 0: |
| | return self._tab.Get(flatbuffers.number_types.Int32Flags, o + self._tab.Pos) |
| | return 1 |
| |
|
| | def PodNerModelStart(builder): builder.StartObject(14) |
| | def PodNerModelAddTfliteModel(builder, tfliteModel): builder.PrependUOffsetTRelativeSlot(0, flatbuffers.number_types.UOffsetTFlags.py_type(tfliteModel), 0) |
| | def PodNerModelStartTfliteModelVector(builder, numElems): return builder.StartVector(1, numElems, 1) |
| | def PodNerModelAddWordPieceVocab(builder, wordPieceVocab): builder.PrependUOffsetTRelativeSlot(1, flatbuffers.number_types.UOffsetTFlags.py_type(wordPieceVocab), 0) |
| | def PodNerModelStartWordPieceVocabVector(builder, numElems): return builder.StartVector(1, numElems, 1) |
| | def PodNerModelAddLowercaseInput(builder, lowercaseInput): builder.PrependBoolSlot(2, lowercaseInput, 1) |
| | def PodNerModelAddLogitsIndexInOutputTensor(builder, logitsIndexInOutputTensor): builder.PrependInt32Slot(3, logitsIndexInOutputTensor, 0) |
| | def PodNerModelAddAppendFinalPeriod(builder, appendFinalPeriod): builder.PrependBoolSlot(4, appendFinalPeriod, 0) |
| | def PodNerModelAddPriorityScore(builder, priorityScore): builder.PrependFloat32Slot(5, priorityScore, 0.0) |
| | def PodNerModelAddMaxNumWordpieces(builder, maxNumWordpieces): builder.PrependInt32Slot(6, maxNumWordpieces, 128) |
| | def PodNerModelAddSlidingWindowNumWordpiecesOverlap(builder, slidingWindowNumWordpiecesOverlap): builder.PrependInt32Slot(7, slidingWindowNumWordpiecesOverlap, 20) |
| | def PodNerModelAddLabels(builder, labels): builder.PrependUOffsetTRelativeSlot(9, flatbuffers.number_types.UOffsetTFlags.py_type(labels), 0) |
| | def PodNerModelStartLabelsVector(builder, numElems): return builder.StartVector(4, numElems, 4) |
| | def PodNerModelAddMaxRatioUnknownWordpieces(builder, maxRatioUnknownWordpieces): builder.PrependFloat32Slot(10, maxRatioUnknownWordpieces, 0.1) |
| | def PodNerModelAddCollections(builder, collections): builder.PrependUOffsetTRelativeSlot(11, flatbuffers.number_types.UOffsetTFlags.py_type(collections), 0) |
| | def PodNerModelStartCollectionsVector(builder, numElems): return builder.StartVector(4, numElems, 4) |
| | def PodNerModelAddMinNumberOfTokens(builder, minNumberOfTokens): builder.PrependInt32Slot(12, minNumberOfTokens, 1) |
| | def PodNerModelAddMinNumberOfWordpieces(builder, minNumberOfWordpieces): builder.PrependInt32Slot(13, minNumberOfWordpieces, 1) |
| | def PodNerModelEnd(builder): return builder.EndObject() |
| |
|