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This can be demonstrated by \ making an association of time series objects for the rows of multiple time \ series data given in wide form.\ \>", "Text", TaggingRules->{}, CellChangeTimes->{{3.813227925599646*^9, 3.813227971027985*^9}, { 3.813233918121743*^9, 3.8132339649024153`*^9}, {3.813239697580387*^9, 3.813239777478528*^9}, {3.813241678255815*^9, 3.8132416960648527`*^9}, { 3.815936760001851*^9, 3.815936817959599*^9}}, CellID->800755287], Cell["\<\ Here is a randomly generated table (dataset) with multiple time series data:\ \>", "Text", TaggingRules->{}, CellChangeTimes->{{3.81324173047927*^9, 3.81324175337319*^9}, { 3.813311768502586*^9, 3.813311777896496*^9}}, CellID->48797786], Cell[CellGroupData[{ Cell[BoxData[ RowBox[{"dsTSWide", "=", InterpretationBox[ DynamicModuleBox[{Typeset`open = False}, TemplateBox[{"Expression", RowBox[{"Dataset", "[", DynamicBox[ FEPrivate`FrontEndResource["FEBitmaps", "IconizeEllipsis"]], "]"}], GridBox[{{ RowBox[{ TagBox["\"Byte count: \"", 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6.75}, {8.25, 6.75}}}]}, ImageSize -> 12], Graphics[{ RGBColor[0.9882, 0.4196, 0.2039], Thickness[2/45], FilledCurve[{{{0, 2, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}}, {{{10.5, 18.75}, {10.5, 18.}, {9., 18.}, {9., 15.75}, {13.5, 15.75}, {13.5, 18.}, {12., 18.}, {12., 18.75}}, {{6., 18.}, {6., 4.5}, { 16.5, 4.5}, {16.5, 18.}, {14.25, 18.}, {14.25, 17.25}, { 15.75, 17.25}, {15.75, 5.25}, {6.75, 5.25}, {6.75, 17.25}, {8.25, 17.25}, {8.25, 18.}}, {{9.75, 17.25}, { 12.75, 17.25}, {12.75, 16.5}, {9.75, 16.5}}}], FilledCurve[{{{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}}, {{{8.25, 14.25}, {14.25, 14.25}, {14.25, 13.5}, {8.25, 13.5}}, {{ 8.25, 12.}, {14.25, 12.}, {14.25, 11.25}, {8.25, 11.25}}, {{8.25, 9.75}, {14.25, 9.75}, {14.25, 9.}, {8.25, 9.}}, {{8.25, 7.5}, {14.25, 7.5}, {14.25, 6.75}, {8.25, 6.75}}}]}, ImageSize -> 12]], "Click to copy to the clipboard"], (RawBoxes[ TemplateBox[{ ToBoxes[#], ToBoxes[#2]}, "PrettyTooltipTemplate"]]& )[ Graphics[{ RGBColor[0, 2/3, 0], Thickness[2/45], FilledCurve[{{{0, 2, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}}, {{{10.5, 18.75}, {10.5, 18.}, {9., 18.}, {9., 15.75}, {13.5, 15.75}, {13.5, 18.}, {12., 18.}, {12., 18.75}}, {{6., 18.}, {6., 4.5}, { 16.5, 4.5}, {16.5, 18.}, {14.25, 18.}, {14.25, 17.25}, { 15.75, 17.25}, {15.75, 5.25}, {6.75, 5.25}, {6.75, 17.25}, {8.25, 17.25}, {8.25, 18.}}, {{9.75, 17.25}, { 12.75, 17.25}, {12.75, 16.5}, {9.75, 16.5}}}], FilledCurve[{{{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}, {{0, 2, 0}, {0, 1, 0}, {0, 1, 0}}}, {{{8.25, 14.25}, {14.25, 14.25}, {14.25, 13.5}, {8.25, 13.5}}, {{ 8.25, 12.}, {14.25, 12.}, {14.25, 11.25}, {8.25, 11.25}}, {{8.25, 9.75}, {14.25, 9.75}, {14.25, 9.}, {8.25, 9.}}, {{8.25, 7.5}, {14.25, 7.5}, {14.25, 6.75}, {8.25, 6.75}}}]}, ImageSize -> 12], "Copied"]], UpdateInterval -> 1, TrackedSymbols :> {RSNB`clickTime$$}], StandardForm], Evaluator -> "System"], ButtonFunction :> (RSNB`clickTime$$ = AbsoluteTime[]; CopyToClipboard[ BinaryDeserialize[ BaseDecode[#2], Defer]]), Appearance -> { "Default" -> None, "Hover" -> None, "Pressed" -> None}, Method -> "Queued", Evaluator -> "System"], MouseAppearanceTag["LinkHand"]]}}, GridBoxAlignment -> { "Columns" -> {{Left}}, "Rows" -> {{Center}}}, AutoDelete -> False, GridBoxItemSize -> { "Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}}, GridBoxSpacings -> {"Columns" -> {{0.4}}}], "Grid"], DynamicModuleValues :> {}]}, Dynamic[ CurrentValue["MouseOver"]], ImageSize -> Automatic, FrameMargins -> 0]& )}], Cell[ StyleData["PrettyTooltipTemplate"], TemplateBoxOptions -> {DisplayFunction -> (TagBox[ TooltipBox[#, FrameBox[ StyleBox[#2, "Text", FontColor -> RGBColor[0.5373, 0.5373, 0.5373], FontSize -> 12, FontWeight -> "Plain", FontTracking -> "Plain", StripOnInput -> False], Background -> RGBColor[0.9608, 0.9608, 0.9608], FrameStyle -> RGBColor[0.898, 0.898, 0.898], FrameMargins -> 8, StripOnInput -> False], TooltipDelay -> 0.1, TooltipStyle -> {Background -> None, CellFrame -> 0}], Annotation[#, Framed[ Style[ RSNB`$$tooltip, "Text", FontColor -> RGBColor[0.5373, 0.5373, 0.5373], FontSize -> 12, FontWeight -> "Plain", FontTracking -> "Plain"], Background -> RGBColor[0.9608, 0.9608, 0.9608], FrameStyle -> RGBColor[0.898, 0.898, 0.898], FrameMargins -> 8], "Tooltip"]& ]& )}], Cell[ StyleData["ToolsGridTemplate"], TemplateBoxOptions -> {DisplayFunction -> (TagBox[ GridBox[{{ ButtonBox[ TemplateBox[{ StyleBox[ "\"Template Input\"", "Text", FontFamily -> "Source Sans Pro", FontSize -> 11, StripOnInput -> False], "\"Format selection automatically using appropriate \ documentation styles\""}, "PrettyTooltipTemplate"], ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TemplateInput[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCd04cgiBkQWRlQKltPjqbbcQhCMiGK4Yru3Vo92Y7 qZexWn+yTSAIyAaKAMXhyp48uLfNW+tNvDZcDQQBRYDiQFmIa4FattlJoqmB IKA4UJYBDIhRRqRpxLuNSJ8SH27ExAIxcQoAZdNqHw== "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Pressed" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCL2EAWRBZGVDqx7vXP18+gSAgG64YruzVq1c/3zy/ m2hx2ZQBgoBsoAhQHK7s2bNnP968uB1tAFcDQUARoDhQFuJaoJYfj++gqYEg oDhQlgEMiFFGpGnEu41InxIfbsTEAjFxCgDlLITg "], "Byte", ColorSpace -> "RGB", Interleaving -> True]}, Background -> GrayLevel[0.9], Method -> "Queued", ImageSize -> {All, 20}, Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}], Evaluator -> Automatic], ButtonBox[ TemplateBox[{ StyleBox[ "\"Literal Input\"", "Text", FontFamily -> "Source Sans Pro", FontSize -> 11, StripOnInput -> False], "\"Format selection as literal Wolfram Language code\""}, "PrettyTooltipTemplate"], ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`LiteralInput[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCd04cgiBkQWRlQKltPjqbbcQhCMiGK4Yru3Vo92Y7 qZexWn+yTSAIyAaKAMXhyp48uLfNW+tNvDZcDQQBRYDiQFmIa4FattlJoqmB IKA4UJYBDIhRRqRpxLuNSJ8SH27ExAIxcQoAZdNqHw== "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Pressed" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCL2EAWRBZGVDqx7vXP18+gSAgG64YruzVq1c/3zy/ m2hx2ZQBgoBsoAhQHK7s2bNnP968uB1tAFcDQUARoDhQFuJaoJYfj++gqYEg oDhQlgEMiFFGpGnEu41InxIfbsTEAjFxCgDlLITg "], "Byte", ColorSpace -> "RGB", Interleaving -> True]}, Background -> GrayLevel[0.9], Method -> "Queued", ImageSize -> {All, 20}, Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}], Evaluator -> Automatic], ButtonBox[ TemplateBox[{ StyleBox[ "\"Insert Delimiter\"", "Text", FontFamily -> "Source Sans Pro", FontSize -> 11, StripOnInput -> False], "\"Insert example delimiter\""}, "PrettyTooltipTemplate"], ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`DelimiterInsert[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz 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ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`SubscriptInsert[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCd04cgiBkQWRlQKltPjqbbcQhCMiGK4Yru3Vo92Y7 qZexWn+yTSAIyAaKAMXhyp48uLfNW+tNvDZcDQQBRYDiQFmIa4FattlJoqmB IKA4UJYBDIhRRqRpxLuNSJ8SH27ExAIxcQoAZdNqHw== "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Pressed" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCL2EAWRBZGVDqx7vXP18+gSAgG64YruzVq1c/3zy/ m2hx2ZQBgoBsoAhQHK7s2bNnP968uB1tAFcDQUARoDhQFuJaoJYfj++gqYEg oDhQlgEMiFFGpGnEu41InxIfbsTEAjFxCgDlLITg "], "Byte", ColorSpace -> "RGB", Interleaving -> True]}, Background -> GrayLevel[0.9], Method -> "Queued", ImageSize -> {All, 20}, Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}], Evaluator -> Automatic], ActionMenuBox[ ButtonBox[ TemplateBox[{ StyleBox[ TemplateBox[{ "\"Tables\"", "\"\[ThinSpace]\[ThinSpace]\[ThinSpace]\[FilledDownTriangle]\ \""}, "RowDefault"], "Text", FontFamily -> "Source Sans Pro", FontSize -> 11, StripOnInput -> False], "\"Table functions\""}, "PrettyTooltipTemplate"], ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, Null], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCd04cgiBkQWRlQKltPjqbbcQhCMiGK4Yru3Vo92Y7 qZexWn+yTSAIyAaKAMXhyp48uLfNW+tNvDZcDQQBRYDiQFmIa4FattlJoqmB IKA4UJYBDIhRRqRpxLuNSJ8SH27ExAIxcQoAZdNqHw== "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Pressed" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCL2EAWRBZGVDqx7vXP18+gSAgG64YruzVq1c/3zy/ m2hx2ZQBgoBsoAhQHK7s2bNnP968uB1tAFcDQUARoDhQFuJaoJYfj++gqYEg oDhQlgEMiFFGpGnEu41InxIfbsTEAjFxCgDlLITg "], "Byte", ColorSpace -> "RGB", Interleaving -> True]}, Background -> GrayLevel[0.9], Method -> "Queued", ImageSize -> {All, 20}, Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}], Evaluator -> Automatic], { "\"Insert table with two columns\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TableInsert[2]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Insert table with three columns\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TableInsert[3]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Add a row to the selected table\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TableRowInsert[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Sort the selected table\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TableSort[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Merge selected tables\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`TableMerge[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]]}, Appearance -> None, Method -> "Queued", Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}]], ActionMenuBox[ ButtonBox[ StyleBox[ TemplateBox[{ "\"Cells\"", "\"\[ThinSpace]\[ThinSpace]\[ThinSpace]\[FilledDownTriangle]\"\ "}, "RowDefault"], "Text", FontFamily -> "Source Sans Pro", FontSize -> 11, StripOnInput -> False], ButtonFunction :> With[{RSNB`nb$ = ButtonNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, Null], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], FrameMargins -> {{4, 4}, {0, 0}}, BaseStyle -> Dynamic[ FEPrivate`If[ CurrentValue[Enabled], FEPrivate`If[ CurrentValue["MouseOver"], {FontColor -> GrayLevel[1]}, { FontColor -> RGBColor[0.8275, 0.2078, 0.]}], { FontColor -> RGBColor[0.9137, 0.6039, 0.5]}], Evaluator -> "System"], Appearance -> {"Default" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCj08dhCBkQWRlQKmbsSY3g9WhKNYErhiu7NGRXTeC 1b5ePg63AsgGigDFEcoe3LsZZ/L95nk0xwBFgOJAWYhrgVpuReljdTZQHCjL AAbEKCPSNOLdRqxPiQ43YmIBDWCNUwCVRq3x "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Hover" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCd04cgiBkQWRlQKltPjqbbcQhCMiGK4Yru3Vo92Y7 qZexWn+yTSAIyAaKAMXhyp48uLfNW+tNvDZcDQQBRYDiQFmIa4FattlJoqmB IKA4UJYBDIhRRqRpxLuNSJ8SH27ExAIxcQoAZdNqHw== "], "Byte", ColorSpace -> "RGB", Interleaving -> True], "Pressed" -> Image[CompressedData[" 1:eJxTTMoPSmNiYGAo5gASQYnljkVFiZXBAkBOaF5xZnpeaopnXklqemqRRRIz UJAXikHs/xgAqyAQPEUCL2EAWRBZGVDqx7vXP18+gSAgG64YruzVq1c/3zy/ m2hx2ZQBgoBsoAhQHK7s2bNnP968uB1tAFcDQUARoDhQFuJaoJYfj++gqYEg oDhQlgEMiFFGpGnEu41InxIfbsTEAjFxCgDlLITg "], "Byte", ColorSpace -> "RGB", Interleaving -> True]}, Background -> GrayLevel[0.9], Method -> "Queued", ImageSize -> {All, 20}, Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}], Evaluator -> Automatic], { "\"Insert comment for reviewer\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`CommentInsert[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Mark/unmark selected cells as comments\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`CommentToggle[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Mark/unmark selected cells as excluded\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`ExclusionToggle[]], DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]]}, Appearance -> None, Method -> "Queued", Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> { DefinitionNotebookClient`$ButtonsDisabled}]]}}, GridBoxAlignment -> {"Columns" -> {{Left}}, "Rows" -> {{Center}}}, AutoDelete -> False, GridBoxBackground -> {"Columns" -> {{None}}, "Rows" -> { GrayLevel[0.9]}}, GridBoxFrame -> { "Columns" -> False, "RowsIndexed" -> {1 -> GrayLevel[0.9]}}, GridBoxItemSize -> { "Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}}, GridBoxSpacings -> { "ColumnsIndexed" -> {1 -> 0, -1 -> 0}, "Rows" -> {{Automatic}}}, FrameStyle -> GrayLevel[0.75]], "Grid"]& )}], Cell[ StyleData["MainGridTemplate"], TemplateBoxOptions -> {DisplayFunction -> (TagBox[ GridBox[{{ TagBox[ GridBox[{{ GraphicsBox[{ Thickness[0.0222], { FaceForm[{ 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{{Left}}, "Rows" -> {{Baseline}}}, AutoDelete -> False, GridBoxDividers -> { "ColumnsIndexed" -> {2 -> GrayLevel[1]}, "Rows" -> {{None}}}, GridBoxItemSize -> { "Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}}], "Grid"], FontSize -> 24, FontColor -> GrayLevel[1], StripOnInput -> False]}}, GridBoxAlignment -> { "Columns" -> {{Left}}, "Rows" -> {{Baseline}}}, AutoDelete -> False, GridBoxItemSize -> { "Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}}], "Grid"], "\[SpanFromLeft]", "\[SpanFromLeft]", "\[SpanFromLeft]", "\[SpanFromLeft]", "\[SpanFromLeft]", "\[SpanFromLeft]", "\[SpanFromLeft]", ItemBox[ TemplateBox[{ StyleBox[ TemplateBox[{ "\"Function Repository\"", "\" \[RightGuillemet] \""}, "RowDefault"], "Text", FontColor -> GrayLevel[1], StripOnInput -> False], "https://resources.wolframcloud.com/FunctionRepository"}, "HyperlinkURL"], Alignment -> {Right, Bottom}, StripOnInput -> False]}, { TemplateBox[{ TemplateBox[{ "\"Open Sample\"", "\"View a completed sample definition notebook\""}, "PrettyTooltipTemplate"], DefinitionNotebookClient`ViewExampleNotebook[ ButtonNotebook[]]& , "\"View a completed sample definition notebook\"", False}, "OrangeButtonTemplate"], TemplateBox[{ TemplateBox[{ "\"Style Guidelines\"", "\"View general guidelines for authoring resource \ functions\""}, "PrettyTooltipTemplate"], DefinitionNotebookClient`ViewStyleGuidelines[ ButtonNotebook[]]& , "\"View general guidelines for authoring resource functions\"", False}, "OrangeButtonTemplate"], TemplateBox[{ TemplateBox[{ TagBox[ GridBox[{{"\"Tools\"", PaneSelectorBox[{False -> GraphicsBox[{ GrayLevel[1], AbsoluteThickness[1], LineBox[{{-1, -1}, {-1, 1}, {1, 1}, {1, -1}, {-1, -1}}], LineBox[{{0., 0.65}, {0., -0.65}}], LineBox[{{-0.65, 0.}, {0.65, 0.}}]}, ImageSize -> 8, PlotRangePadding -> None, Background -> None], True -> GraphicsBox[{ GrayLevel[1], AbsoluteThickness[1], LineBox[{{-1, -1}, {-1, 1}, {1, 1}, {1, -1}, {-1, -1}}], LineBox[{{-0.65, 0.}, {0.65, 0.}}]}, ImageSize -> 8, PlotRangePadding -> None, Background -> None]}, Dynamic[ CurrentValue[ EvaluationNotebook[], {TaggingRules, "ToolsOpen"}, True]], BaselinePosition -> Scaled[-0.1]]}}, GridBoxAlignment -> { "Columns" -> {{Automatic}}, "Rows" -> {{Baseline}}}, AutoDelete -> False, GridBoxItemSize -> { "Columns" -> {{Automatic}}, "Rows" -> {{Automatic}}}, GridBoxSpacings -> {"Columns" -> {{0.35}}}], "Grid"], "\"Toggle documentation toolbar\""}, "PrettyTooltipTemplate"], DefinitionNotebookClient`ToggleToolbar[ ButtonNotebook[]]& , "\"Toggle documentation toolbar\"", False}, "OrangeButtonTemplate"], TagBox[ GridBox[{{"\"\"", "\"\""}}, GridBoxAlignment -> { "Columns" -> {{Left}}, "Rows" -> {{Center}}}, AutoDelete -> False, GridBoxDividers -> { "ColumnsIndexed" -> {2 -> True}, "Rows" -> {{False}}}, GridBoxItemSize -> {"Columns" -> {{Automatic}}, "Rows" -> {{2}}}, GridBoxSpacings -> {"Columns" -> {{0.5}}}, FrameStyle -> RGBColor[0.9941, 0.7098, 0.602]], "Grid"], TemplateBox[{ TemplateBox[{ "\"Check\"", "\"Check notebook for potential errors\""}, "PrettyTooltipTemplate"], DefinitionNotebookClient`CheckDefinitionNotebook[ ButtonNotebook[]]& , "\"Check notebook for potential errors\"", False}, "OrangeButtonTemplate"], ActionMenuBox[ TemplateBox[{ TemplateBox[{"\"Preview\"", TemplateBox[{5}, "Spacer1"], "\"\[FilledDownTriangle]\""}, "RowDefault"], Null& , "\"\"", True}, "OrangeButtonTemplate"], { "\"In a notebook\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`PreviewResource[ ButtonNotebook[], "Notebook"]], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"On the cloud\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`PreviewResource[ ButtonNotebook[], "Cloud"]], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]]}, Appearance -> None, Method -> "Queued", Enabled -> Dynamic[ Not[ TrueQ[DefinitionNotebookClient`$ButtonsDisabled]], TrackedSymbols :> {DefinitionNotebookClient`$ButtonsDisabled}]], ActionMenuBox[ TemplateBox[{ TemplateBox[{"\"Deploy\"", TemplateBox[{5}, "Spacer1"], "\"\[FilledDownTriangle]\""}, "RowDefault"], Null& , "\"\"", True}, "OrangeButtonTemplate"], { "\"Locally on this computer\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`DisplayStripe[ ButtonNotebook[], DefinitionNotebookClient`DeployResource[ ButtonNotebook[], "Local"]]], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"For my cloud account\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`DisplayStripe[ ButtonNotebook[], DefinitionNotebookClient`DeployResource[ ButtonNotebook[], "CloudPrivate"]]], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"Publicly in the cloud\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`DisplayStripe[ ButtonNotebook[], DefinitionNotebookClient`DeployResource[ ButtonNotebook[], "CloudPublic"]]], CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ""; DefinitionNotebookClient`$ButtonsDisabled = False; Null]; Null]]], "\"In this session only (without documentation)\"" :> With[{RSNB`nb$ = InputNotebook[], RSNB`$cp$ = $ContextPath}, Quiet[ Block[{$ContextPath = RSNB`$cp$, ResourceSystemClient`$AsyncronousResourceInformationUpdates = False, DefinitionNotebookClient`$SuppressDynamicEvents = True}, Internal`WithLocalSettings[ DefinitionNotebookClient`$ButtonsDisabled = True; CurrentValue[RSNB`nb$, {TaggingRules, "StatusMessage"}] = ProgressIndicator[Appearance -> "Necklace"]; Once[ ReleaseHold[ CurrentValue[ RSNB`nb$, {TaggingRules, "CompatibilityTest"}]], "KernelSession"]; Needs["DefinitionNotebookClient`"], DefinitionNotebookClient`CheckForUpdates[RSNB`nb$, DefinitionNotebookClient`DisplayStripe[ ButtonNotebook[], DefinitionNotebookClient`DeployResource[ ButtonNotebook[], "KernelSession"]]], CurrentValue[RSNB`nb$, {TaggingRules, 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