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GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "2c"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"256\"", "\"56\"", "\"56\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "2c"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"3a\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "3a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "12", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "3a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"512\"", "\"28\"", "\"28\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "3a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"3b1\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "3b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "3b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"512\"", "\"28\"", "\"28\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "3b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"3b2\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "3b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "3b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"512\"", "\"28\"", "\"28\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "3b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"3b3\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "3b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "3b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"512\"", "\"28\"", "\"28\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "3b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4a\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "12", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b1\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b1"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b2\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b2"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b3\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b3"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b4\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b4"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b4"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b4"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b5\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b5"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b5"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b5"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b6\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b6"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b6"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b6"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b7\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b7"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b7"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b7"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b8\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b8"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b8"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b8"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b9\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b9"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b9"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b9"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b10\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b10"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b10"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b10"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b11\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b11"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b11"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b11"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b12\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b12"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b12"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b12"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b13\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b13"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b13"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b13"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b14\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b14"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b14"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b14"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b15\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b15"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b15"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b15"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b16\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b16"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b16"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b16"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b17\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b17"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b17"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b17"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b18\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b18"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b18"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b18"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b19\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b19"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b19"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b19"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b20\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b20"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b20"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b20"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b21\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b21"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b21"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b21"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"4b22\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "4b22"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "10", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "4b22"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", "\"size\"", "\":\"", "\" \"", TemplateBox[{"\[Times]", "\"\[Times]\"", "\"1024\"", "\"14\"", "\"14\""}, "RowWithSeparators"], "\"\[VeryThinSpace]\"", "\")\""}, "RowDefault"], GrayLevel[0.5], StripOnInput -> False]}, "RowDefault"], Annotation[#, {"Nodes", "4b22"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]]}, { TagBox[ TagBox[ StyleBox["\"5a\"", GrayLevel[0.5], StripOnInput -> False], Annotation[#, {"Nodes", "5a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ StyleBox[ TemplateBox[{"NetGraph", "\" \"", TemplateBox[{"\"(\"", "12", "\" nodes)\""}, "Row", DisplayFunction -> (RowBox[{ TemplateSlotSequence[1, "\[InvisibleSpace]"]}]& ), InterpretationFunction -> (RowBox[{"Row", "[", RowBox[{ RowBox[{"{", TemplateSlotSequence[1, ","], "}"}], ",", RowBox[{"BaseStyle", "\[Rule]", InterpretationBox[ ButtonBox[ TooltipBox[ GraphicsBox[{{ GrayLevel[0], RectangleBox[{0, 0}]}, { GrayLevel[0], RectangleBox[{1, -1}]}, { GrayLevel[0.5], RectangleBox[{0, -1}, {2, 1}]}}, DefaultBaseStyle -> "ColorSwatchGraphics", AspectRatio -> 1, Frame -> True, FrameStyle -> GrayLevel[0.33333333333333337`], FrameTicks -> None, PlotRangePadding -> None, ImageSize -> Dynamic[{Automatic, 1.35 (CurrentValue["FontCapHeight"]/ AbsoluteCurrentValue[Magnification])}]], StyleBox[ RowBox[{"GrayLevel", "[", "0.5`", "]"}], NumberMarks -> False]], Appearance -> None, BaseStyle -> {}, BaselinePosition -> Baseline, DefaultBaseStyle -> {}, ButtonFunction :> With[{Typeset`box$ = EvaluationBox[]}, If[ Not[ AbsoluteCurrentValue["Deployed"]], SelectionMove[Typeset`box$, All, Expression]; FrontEnd`Private`$ColorSelectorInitialAlpha = 1; FrontEnd`Private`$ColorSelectorInitialColor = GrayLevel[0.5]; FrontEnd`Private`$ColorSelectorUseMakeBoxes = True; MathLink`CallFrontEnd[ FrontEnd`AttachCell[Typeset`box$, FrontEndResource["GrayLevelColorValueSelector"], { 0, {Left, Bottom}}, {Left, Top}, "ClosingActions" -> {"SelectionDeparture", "ParentChanged", "EvaluatorQuit"}]]]], BaseStyle -> Inherited, Evaluator -> Automatic, Method -> "Preemptive"], GrayLevel[0.5], Editable -> False, Selectable -> False]}]}], "]"}]& ), BaseStyle -> GrayLevel[0.5]]}, "RowDefault"], RGBColor[0.66, 0, 0], StripOnInput -> False], Annotation[#, {"Nodes", "5a"}, "Mouse"]& ], MouseAppearanceTag["LinkHand"]], TagBox[ TagBox[ TemplateBox[{"\"3-tensor\"", "\" \"", StyleBox[ TemplateBox[{"\"(\"", "\"\[VeryThinSpace]\"", 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