Wiki source code of Afficher les faits marquants
Last modified by Aurelie Bertrand on 2026/06/29 11:12
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10.1 | 1 | {{ddtoc/}} |
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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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69.1 | 8 | (% class="box" %) |
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79.1 | 10 | 💡Visit the page [[Artificial Intelligence ~> Key Findings>>doc:Digdash.deployment.configuration.configuration_guide.AI.WebHome||anchor="highlight"]] to configure highlights. |
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69.1 | 11 | ))) |
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79.1 | 13 | = Configure the display of highlights = |
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79.1 | 15 | == Selecting the dimensions and measures to be analysed == |
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58.1 | 17 | (% class="box warningmessage" %) |
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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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58.1 | 20 | ))) |
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79.1 | 22 | By default, all dimensions and measures in the data model are selected for AI data analysis. |
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2.1 | 23 | |
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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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2.1 | 26 | |
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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. | ||
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7.1 | 30 | [[image:IA_analysis_checkbox_FR.png]] |
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3.3 | 31 | |
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79.1 | 32 | == Enabling the display of key insights{{id name="Activation"/}} == |
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3.3 | 33 | |
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79.1 | 34 | Key insights are disabled by default for all flows (charts). |
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5.1 | 35 | |
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79.1 | 36 | To enable key insights for a chart: |
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5.1 | 37 | |
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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. | ||
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67.1 | 41 | [[image:Diaply_highlight_checkbox_FR.png||alt="Activer faits marquants"]] |
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11.1 | 42 | |
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79.1 | 43 | = Displaying highlights on the dashboard = |
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11.1 | 44 | |
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57.1 | 45 | (% class="box infomessage" %) |
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79.1 | 47 | ℹ Highlights are not available in mobile mode. |
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57.1 | 48 | ))) |
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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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11.1 | 52 | |
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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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58.1 | 55 | |
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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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14.2 | 58 | |
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56.1 | 59 | [[image:Highlight_example2_FR.png]] |
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17.1 | 60 | |
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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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50.1 | 62 | |
| 63 | [[image:1741708402735-994.png]] | ||
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79.1 | 65 | == Interaction and highlights {{id name="Interaction"/}} == |
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35.1 | 66 | |
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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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35.1 | 68 | |
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79.1 | 69 | In this case, to view the highlights, right-click on the data and then click **Show Highlights**. |
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43.1 | 70 | [[image:Highlight_menu_rightclick_FR.png]] |
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41.2 | 71 | |
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79.1 | 72 | If you wish to set highlights as the default click interaction in all cases: |
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40.1 | 73 | |
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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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40.1 | 76 | |
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79.1 | 77 | You can also use the shortcut **Ctrl + H**. A message will then appear. |
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40.1 | 78 | [[image:Highlight_CTRLH_FR.png||alt="Raccourci"]] |
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79.1 | 80 | == Types of highlights {{id name="highlight_types"/}} == |
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17.1 | 81 | |
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65.1 | 82 | (% class="box infomessage" %) |
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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. |
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65.1 | 85 | ))) |
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79.1 | 87 | Several types of key points can be identified. |
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17.1 | 88 | |
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79.1 | 89 | === Mega contributor [[image:Mega_icon_FR.png||height="32" width="32"]] === |
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17.1 | 90 | |
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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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14.2 | 93 | |
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79.1 | 94 | For example, in a retail chain, the United States accounts for 54% of turnover. |
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14.2 | 95 | |
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79.1 | 96 | === Top K contributors [[image:TopK_icon.png||height="27" width="28"]] === |
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14.2 | 97 | |
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72.1 | 98 | (% class="box infomessage" %) |
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79.1 | 100 | ℹ Where a Mega Contributor is displayed, there are no Top K Contributors. |
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72.1 | 101 | ))) |
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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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14.2 | 106 | |
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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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14.2 | 108 | |
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32.1 | 109 | === Pareto [[image:Pareto_icon_FR.png||height="35" width="34"]] === |
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14.2 | 110 | |
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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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14.2 | 113 | |
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79.1 | 114 | === Correlation [[image:Correlation_example_FR.png||height="31" width="32"]] === |
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14.2 | 115 | |
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72.1 | 116 | (% class="box infomessage" %) |
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79.1 | 118 | ℹ Correlation analysis is only performed if the selected metric includes a Mega Contributor, Top K Contributors or Pareto. |
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72.1 | 119 | ))) |
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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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14.2 | 126 | |
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79.1 | 127 | For example, there is a very strong correlation between the CA measure and the Quality Index measure. |
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70.1 | 128 | |
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79.1 | 129 | = Find out more... = |
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76.1 | 130 | |
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79.1 | 131 | * [[Artificial Intelligence ~> Highlights>>doc:Digdash.deployment.configuration.configuration_guide.AI.WebHome||anchor="highlight"]] |