Wiki source code of Afficher les faits marquants

Last modified by Aurelie Bertrand on 2026/06/29 11:12

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Aurelie Bertrand 10.1 1 {{ddtoc/}}
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Aurelie Bertrand 79.1 5 The key insights dashboard uses advanced algorithms to analyse your data in order to improve your understanding of it. Which factor(s) contribute most significantly to a particular value? Is there a correlation with another metric? ...
6 Artificial intelligence analyses the dimensions and metrics contained in your data model to provide you with relevant insights relating to the selected data, for example to identify anomalies or trends.
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Aurelie Bertrand 79.1 10 💡Visit the page [[Artificial Intelligence ~> Key Findings>>doc:Digdash.deployment.configuration.configuration_guide.AI.WebHome||anchor="highlight"]] to configure highlights.
Aurelie Bertrand 69.1 11 )))
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Aurelie Bertrand 79.1 13 = Configure the display of highlights =
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Aurelie Bertrand 79.1 15 == Selecting the dimensions and measures to be analysed ==
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Aurelie Bertrand 79.1 19 âš  For data models created in a version prior to 2025 R1, AI analysis is disabled for all dimensions and measures.
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Aurelie Bertrand 79.1 22 By default, all dimensions and measures in the data model are selected for AI data analysis.
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Aurelie Bertrand 79.1 24 You can modify this selection to include only certain dimensions and measures. The selection will be applied by default to all flows (charts) using this data model.
25 To do this:
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Aurelie Bertrand 79.1 27 1. In Studio, edit the data model.
28 1. In the **Columns **tab **of **the model’s advanced configuration, select the dimensions and/or measures that you do not wish to include in the key insights analysis.
29 1. In the **Properties** section of the right-hand panel, untick the**AI Analysis** box.
Aurelie Bertrand 7.1 30 [[image:IA_analysis_checkbox_FR.png]]
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Aurelie Bertrand 79.1 32 == Enabling the display of key insights{{id name="Activation"/}} ==
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Aurelie Bertrand 79.1 34 Key insights are disabled by default for all flows (charts).
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Aurelie Bertrand 79.1 36 To enable key insights for a chart:
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Aurelie Bertrand 79.1 38 1. Select the chart in the Dashboard Editor.
39 1. Go to the**Properties** section of the **Settings** panel on the right.
40 1. On the **Options** tab, tick the **‘Show highlights’** box.
Aurelie Bertrand 67.1 41 [[image:Diaply_highlight_checkbox_FR.png||alt="Activer faits marquants"]]
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Aurelie Bertrand 79.1 43 = Displaying highlights on the dashboard =
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Aurelie Bertrand 57.1 45 (% class="box infomessage" %)
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Aurelie Bertrand 79.1 47 ℹ Highlights are not available in mobile mode.
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Aurelie Bertrand 79.1 50 Simply click (see the section [[Interaction and Highlights>>doc:||anchor="Interaction"]]) on an item to display the highlights or key points.
51 Digdash then searches for relevant information linked to the selected data from among:
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Aurelie Bertrand 79.1 53 * the metrics present in the {{glossaryReference glossaryId="Glossary" entryId="Flux"}}Flow{{/glossaryReference}} that have been selected for AI analysis (whether hidden or not)
54 * the dimensions (and all associated hierarchy levels) that are not displayed on the {{glossaryReference glossaryId="Glossary" entryId="Flux"}}Flow{{/glossaryReference}} and have been selected for AI analysis.
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Aurelie Bertrand 79.1 56 A window appears showing the key points for the selected chart.
57 It specifies the selected exploration filters and lists the various highlights or key points identified, sorted by measure and then by dimension.
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Aurelie Bertrand 56.1 59 [[image:Highlight_example2_FR.png]]
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Aurelie Bertrand 79.1 61 If there are a large number of key points, a loading bar appears at the bottom of the window with a button to stop the loading process:
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63 [[image:1741708402735-994.png]]
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Aurelie Bertrand 79.1 65 == Interaction and highlights {{id name="Interaction"/}} ==
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Aurelie Bertrand 79.1 67 By default, charts inherit the click interaction defined when they were configured in Studio (if one exists). See the page [[Configuring Interactions>>doc:Digdash.user_guide.studio.Create_flow.Configure_flow.Configure_interactions.WebHome]] for more details on chart interactions.
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Aurelie Bertrand 79.1 69 In this case, to view the highlights, right-click on the data and then click **Show Highlights**.
Aurelie Bertrand 43.1 70 [[image:Highlight_menu_rightclick_FR.png]]
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Aurelie Bertrand 79.1 72 If you wish to set highlights as the default click interaction in all cases:
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Aurelie Bertrand 79.1 74 1. Go to the **User** menu and click on **Default Interaction**.
75 1. Under ‘ **Default Interaction**’, click on **‘Highlights**’.
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Aurelie Bertrand 79.1 77 You can also use the shortcut **Ctrl + H**. A message will then appear.
Aurelie Bertrand 40.1 78 [[image:Highlight_CTRLH_FR.png||alt="Raccourci"]]
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Aurelie Bertrand 79.1 80 == Types of highlights {{id name="highlight_types"/}} ==
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Aurelie Bertrand 65.1 82 (% class="box infomessage" %)
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Aurelie Bertrand 79.1 84 💡 Highlights are described here for settings with their default values. You can change these values if you wish to influence how these highlights are identified. See the section [[Highlights>>doc:Digdash.deployment.configuration.configuration_guide.AI.WebHome||anchor="highlight"]] for further details.
Aurelie Bertrand 65.1 85 )))
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Aurelie Bertrand 79.1 87 Several types of key points can be identified.
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Aurelie Bertrand 79.1 89 === Mega contributor [[image:Mega_icon_FR.png||height="32" width="32"]] ===
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Aurelie Bertrand 79.1 91 A mega contributor is a member of a dimension that accounts for at least 40% of a given metric (total sum).
92 The dimension must have at least 5 members.
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Aurelie Bertrand 79.1 94 For example, in a retail chain, the United States accounts for 54% of turnover.
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Aurelie Bertrand 79.1 96 === Top K contributors [[image:TopK_icon.png||height="27" width="28"]] ===
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Aurelie Bertrand 72.1 98 (% class="box infomessage" %)
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Aurelie Bertrand 79.1 100 ℹ Where a Mega Contributor is displayed, there are no Top K Contributors.
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Aurelie Bertrand 79.1 103 The Top K contributors refer to the K best members of a dimension who contribute at least 40% to a given metric (total sum).
104 K is between 2 and 5. Its value depends on the number of members. By default, K is equal to 33% of the number of members.
105 Thus, to obtain a Top 2, there must be at least 6 members. For a Top 3, at least 9 members; for a Top 4, at least 12 members; and for a Top 5, at least 15 members.
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Aurelie Bertrand 79.1 107 For example, in a chain of shops, the ‘Fruit’, ‘Gift Set’ and ‘Basket’ product categories account for 62 per cent of turnover.
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Aurelie Bertrand 32.1 109 === Pareto [[image:Pareto_icon_FR.png||height="35" width="34"]] ===
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Aurelie Bertrand 79.1 111 The Pareto principle refers to the situation where 20% of the members of a dimension account for 80% of a given measure.
112 \\For example, in a chain of shops, it is observed that the top 20% of best-selling products account for 80% of total turnover.
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Aurelie Bertrand 79.1 114 === Correlation [[image:Correlation_example_FR.png||height="31" width="32"]] ===
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Aurelie Bertrand 72.1 116 (% class="box infomessage" %)
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Aurelie Bertrand 79.1 118 ℹ Correlation analysis is only performed if the selected metric includes a Mega Contributor, Top K Contributors or Pareto.
Aurelie Bertrand 72.1 119 )))
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Aurelie Bertrand 79.1 121 Correlation refers to the situation where a (non-displayed) metric changes in the same way as the selected metric, according to a given dimension.
122 The correlation analysis is only performed if the selected metric includes a Mega Contributor, Top K Contributors or Pareto.
123 Correlation can be positive or negative and have different levels of significance: very strong, strong or moderate.
124 The calculation of correlation thresholds is dynamic. The minimum threshold starts at 0.7 for 10 members.
125 As the number of members increases, the minimum threshold becomes more lenient, reaching 0.3 for 50 members or more.
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Aurelie Bertrand 79.1 127 For example, there is a very strong correlation between the CA measure and the Quality Index measure.
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Aurelie Bertrand 79.1 129 = Find out more... =
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Aurelie Bertrand 79.1 131 * [[Artificial Intelligence ~> Highlights>>doc:Digdash.deployment.configuration.configuration_guide.AI.WebHome||anchor="highlight"]]