{
  "_id": "6a1f0c7bb401979e7341cb5f",
  "Package": "vivainsights",
  "Type": "Package",
  "Title": "Analyze and Visualize Data from 'Microsoft Viva Insights'",
  "Version": "0.7.2",
  "Authors@R": "c(\nperson(given = \"Martin\", family = \"Chan\", role = c(\"aut\", \"cre\"), email = \"martin.chan@microsoft.com\"),\nperson(given = \"Carlos\", family = \"Morales\", role = \"aut\", email = \"carlos.morales@microsoft.com\")\n)",
  "Maintainer": "Martin Chan <martin.chan@microsoft.com>",
  "Description": "Provides a versatile range of functions, including\nexploratory data analysis, time-series analysis, organizational\nnetwork analysis, and data validation, whilst at the same time\nimplements a set of best practices in analyzing and visualizing\ndata specific to 'Microsoft Viva Insights'.",
  "RoxygenNote": "7.3.3",
  "Roxygen": "list(markdown = TRUE)",
  "License": "MIT + file LICENSE",
  "Encoding": "UTF-8",
  "LazyData": "true",
  "Language": "en-US",
  "URL": "https://microsoft.github.io/vivainsights/",
  "BugReports": "https://github.com/microsoft/vivainsights/issues/",
  "Config/testthat/edition": "3",
  "Config/pak/sysreqs": "cmake libfontconfig1-dev libfreetype6-dev\nlibglpk-dev make libicu-dev libjpeg-dev libpng-dev libuv1-dev\nlibxml2-dev libssl-dev",
  "Repository": "https://microsoft.r-universe.dev",
  "Date/Publication": "2026-04-29 05:11:26 UTC",
  "RemoteUrl": "https://github.com/microsoft/vivainsights",
  "RemoteRef": "HEAD",
  "RemoteSha": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
  "NeedsCompilation": "no",
  "Packaged": {
    "Date": "2026-05-17 09:38:50 UTC",
    "User": "root"
  },
  "Author": "Martin Chan [aut, cre],\nCarlos Morales [aut]",
  "MD5sum": "9433265c2849fdce3b9c3c511cb20e39",
  "_user": "microsoft",
  "_type": "src",
  "_file": "vivainsights_0.7.2.tar.gz",
  "_fileid": "1c0d0ce34ca20bc6ed28596d937d32d1f07578b7cf273ccb181dbb768501ec2b",
  "_filesize": 3588497,
  "_sha256": "1c0d0ce34ca20bc6ed28596d937d32d1f07578b7cf273ccb181dbb768501ec2b",
  "_created": "2026-05-17T09:38:50.000Z",
  "_published": "2026-06-02T17:01:47.247Z",
  "_distro": "noble",
  "_jobs": [
    {
      "job": 79126623408,
      "time": 292,
      "config": "linux-devel-x86_64",
      "r": "4.7.0",
      "check": "OK",
      "artifact": "7041329972"
    },
    {
      "job": 79126623128,
      "time": 284,
      "config": "linux-release-x86_64",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7041329160"
    },
    {
      "job": 79126623411,
      "time": 144,
      "config": "macos-oldrel-arm64",
      "r": "4.5.3",
      "check": "OK",
      "artifact": "7041312970"
    },
    {
      "job": 79126623108,
      "time": 169,
      "config": "macos-release-arm64",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7041315799"
    },
    {
      "job": 79126622579,
      "time": 257,
      "config": "source",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7041294957"
    },
    {
      "job": 79126622567,
      "time": 149,
      "config": "wasm-release",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7364482133"
    },
    {
      "job": 79126623162,
      "time": 234,
      "config": "windows-devel",
      "r": "4.7.0",
      "check": "OK",
      "artifact": "7041323647"
    },
    {
      "job": 79126623547,
      "time": 246,
      "config": "windows-oldrel",
      "r": "4.5.3",
      "check": "OK",
      "artifact": "7041325213"
    },
    {
      "job": 79126623501,
      "time": 234,
      "config": "windows-release",
      "r": "4.6.0",
      "check": "OK",
      "artifact": "7041323764"
    }
  ],
  "_buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832",
  "_status": "success",
  "_host": "GitHub-Actions",
  "_upstream": "https://github.com/microsoft/vivainsights",
  "_commit": {
    "id": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
    "author": "Martin Chan <martinchan53@gmail.com>",
    "committer": "GitHub <noreply@github.com>",
    "message": "Merge pull request #84 from microsoft/copilot/feature-identify-retention-segments\n\nAdd identify_retention() function for segment retention analysis",
    "time": 1777439486
  },
  "_maintainer": {
    "name": "Martin Chan",
    "email": "martin.chan@microsoft.com"
  },
  "_registered": true,
  "_dependencies": [
    {
      "package": "R",
      "version": ">= 4.1.0",
      "role": "Depends"
    },
    {
      "package": "dplyr",
      "role": "Imports"
    },
    {
      "package": "stats",
      "role": "Imports"
    },
    {
      "package": "utils",
      "role": "Imports"
    },
    {
      "package": "tidyr",
      "role": "Imports"
    },
    {
      "package": "tibble",
      "role": "Imports"
    },
    {
      "package": "tidyselect",
      "version": ">= 1.0.0",
      "role": "Imports"
    },
    {
      "package": "magrittr",
      "role": "Imports"
    },
    {
      "package": "ggplot2",
      "role": "Imports"
    },
    {
      "package": "reshape2",
      "role": "Imports"
    },
    {
      "package": "scales",
      "role": "Imports"
    },
    {
      "package": "ggrepel",
      "role": "Imports"
    },
    {
      "package": "purrr",
      "role": "Imports"
    },
    {
      "package": "data.table",
      "role": "Imports"
    },
    {
      "package": "methods",
      "role": "Imports"
    },
    {
      "package": "htmltools",
      "role": "Imports"
    },
    {
      "package": "markdown",
      "role": "Imports"
    },
    {
      "package": "networkD3",
      "role": "Imports"
    },
    {
      "package": "rmarkdown",
      "role": "Imports"
    },
    {
      "package": "wpa",
      "role": "Imports"
    },
    {
      "package": "ggraph",
      "role": "Imports"
    },
    {
      "package": "lifecycle",
      "role": "Imports"
    },
    {
      "package": "glue",
      "role": "Imports"
    },
    {
      "package": "igraph",
      "role": "Imports"
    },
    {
      "package": "rlang",
      "role": "Imports"
    },
    {
      "package": "tidytext",
      "role": "Imports"
    },
    {
      "package": "flexdashboard",
      "role": "Suggests"
    },
    {
      "package": "testthat",
      "version": ">= 3.0.0",
      "role": "Suggests"
    },
    {
      "package": "lmtest",
      "role": "Suggests"
    },
    {
      "package": "sandwich",
      "role": "Suggests"
    },
    {
      "package": "slider",
      "role": "Suggests"
    },
    {
      "package": "ggwordcloud",
      "role": "Suggests"
    }
  ],
  "_owner": "microsoft",
  "_selfowned": true,
  "_usedby": 0,
  "_updates": [
    {
      "week": "2025-20",
      "n": 1
    },
    {
      "week": "2025-22",
      "n": 4
    },
    {
      "week": "2025-23",
      "n": 1
    },
    {
      "week": "2025-25",
      "n": 7
    },
    {
      "week": "2025-28",
      "n": 2
    },
    {
      "week": "2025-30",
      "n": 2
    },
    {
      "week": "2025-50",
      "n": 2
    },
    {
      "week": "2026-03",
      "n": 5
    },
    {
      "week": "2026-12",
      "n": 1
    },
    {
      "week": "2026-13",
      "n": 1
    },
    {
      "week": "2026-16",
      "n": 2
    },
    {
      "week": "2026-17",
      "n": 1
    },
    {
      "week": "2026-18",
      "n": 1
    }
  ],
  "_tags": [
    {
      "name": "v0.6.2",
      "date": "2025-05-28"
    },
    {
      "name": "v0.7.0",
      "date": "2025-07-24"
    },
    {
      "name": "v0.7.1",
      "date": "2026-01-16"
    },
    {
      "name": "v0.7.2",
      "date": "2026-04-29"
    }
  ],
  "_stars": 15,
  "_contributors": [
    {
      "user": "martinctc",
      "count": 483,
      "uuid": 17925865
    },
    {
      "user": "copilot",
      "count": 69,
      "uuid": 198982749
    },
    {
      "user": "moralec",
      "count": 38,
      "uuid": 62895857
    },
    {
      "user": "sachinstl",
      "count": 7,
      "uuid": 56433553
    },
    {
      "user": "microsoftopensource",
      "count": 5,
      "uuid": 22527892
    },
    {
      "user": "olivroy",
      "count": 2,
      "uuid": 52606734
    },
    {
      "user": "davisvaughan",
      "count": 1,
      "uuid": 19150088
    },
    {
      "user": "mallikharjun07",
      "count": 1,
      "uuid": 45328997
    }
  ],
  "_userbio": {
    "uuid": 6154722,
    "type": "organization",
    "name": "Microsoft",
    "description": "Open source projects and samples from Microsoft"
  },
  "_downloads": {
    "count": 452,
    "source": "https://cranlogs.r-pkg.org/downloads/total/last-month/vivainsights"
  },
  "_devurl": "https://github.com/microsoft/vivainsights",
  "_pkgdown": "https://microsoft.github.io/vivainsights/",
  "_searchresults": 111,
  "_rbuild": "4.6.0",
  "_assets": [
    "extra/citation.cff",
    "extra/citation.html",
    "extra/citation.json",
    "extra/citation.txt",
    "extra/contents.json",
    "extra/NEWS.html",
    "extra/NEWS.txt",
    "extra/readme.html",
    "extra/readme.md",
    "extra/vivainsights.html",
    "manual.pdf"
  ],
  "_homeurl": "https://github.com/microsoft/vivainsights",
  "_realowner": "microsoft",
  "_cranurl": true,
  "_releases": [
    {
      "version": "0.1.0",
      "date": "2022-10-04"
    },
    {
      "version": "0.2.0",
      "date": "2023-01-17"
    },
    {
      "version": "0.3.0",
      "date": "2023-03-30"
    },
    {
      "version": "0.3.1",
      "date": "2023-05-22"
    },
    {
      "version": "0.4.0",
      "date": "2023-08-16"
    },
    {
      "version": "0.4.1",
      "date": "2023-08-25"
    },
    {
      "version": "0.4.2",
      "date": "2023-10-17"
    },
    {
      "version": "0.4.3",
      "date": "2023-11-01"
    },
    {
      "version": "0.5.0",
      "date": "2023-11-09"
    },
    {
      "version": "0.5.1",
      "date": "2024-01-10"
    },
    {
      "version": "0.5.2",
      "date": "2024-03-14"
    },
    {
      "version": "0.5.3",
      "date": "2024-06-06"
    },
    {
      "version": "0.5.4",
      "date": "2024-09-06"
    },
    {
      "version": "0.5.5",
      "date": "2024-11-19"
    },
    {
      "version": "0.6.0",
      "date": "2025-02-20"
    },
    {
      "version": "0.6.1",
      "date": "2025-05-12"
    },
    {
      "version": "0.6.2",
      "date": "2025-05-28"
    },
    {
      "version": "0.7.0",
      "date": "2025-07-24"
    },
    {
      "version": "0.7.1",
      "date": "2026-01-16"
    },
    {
      "version": "0.7.2",
      "date": "2026-04-28"
    }
  ],
  "_exports": [
    "%>%",
    "afterhours_dist",
    "afterhours_fizz",
    "afterhours_line",
    "afterhours_rank",
    "afterhours_sum",
    "afterhours_summary",
    "afterhours_trend",
    "analysis_scope",
    "anonymise",
    "anonymize",
    "any_idate",
    "camel_clean",
    "check_inputs",
    "check_query",
    "collab_area",
    "collab_dist",
    "collab_fizz",
    "collab_line",
    "collab_rank",
    "collab_sum",
    "collab_summary",
    "collaboration_area",
    "collaboration_dist",
    "collaboration_fizz",
    "collaboration_line",
    "collaboration_rank",
    "collaboration_sum",
    "collaboration_summary",
    "collaboration_trend",
    "comma",
    "copy_df",
    "create_bar",
    "create_bar_asis",
    "create_boxplot",
    "create_bubble",
    "create_density",
    "create_dist",
    "create_dt",
    "create_fizz",
    "create_hist",
    "create_inc",
    "create_incidence",
    "create_itsa",
    "create_IV",
    "create_line",
    "create_line_asis",
    "create_lorenz",
    "create_period_scatter",
    "create_radar",
    "create_radar_calc",
    "create_radar_viz",
    "create_rank",
    "create_rank_combine",
    "create_rogers",
    "create_sankey",
    "create_scatter",
    "create_stacked",
    "create_survival",
    "create_survival_calc",
    "create_survival_prep",
    "create_survival_viz",
    "create_tracking",
    "create_trend",
    "cut_hour",
    "email_dist",
    "email_fizz",
    "email_line",
    "email_rank",
    "email_sum",
    "email_summary",
    "email_trend",
    "export",
    "external_dist",
    "external_fizz",
    "external_line",
    "external_rank",
    "external_sum",
    "external_summary",
    "extract_date_range",
    "extract_hr",
    "flag_ch_ratio",
    "flag_em_ratio",
    "flag_extreme",
    "flag_outlooktime",
    "generate_report",
    "generate_report2",
    "heat_colors",
    "heat_colours",
    "hr_trend",
    "hrvar_count",
    "hrvar_count_all",
    "hrvar_trend",
    "identify_churn",
    "identify_datefreq",
    "identify_habit",
    "identify_holidayweeks",
    "identify_inactiveweeks",
    "identify_nkw",
    "identify_outlier",
    "identify_privacythreshold",
    "identify_retention",
    "identify_shifts",
    "identify_tenure",
    "identify_usage_segments",
    "import_query",
    "is_date_format",
    "IV_report",
    "jitter_metrics",
    "keymetrics_scan",
    "keymetrics_scan_asis",
    "maxmin",
    "meeting_dist",
    "meeting_fizz",
    "meeting_line",
    "meeting_rank",
    "meeting_sum",
    "meeting_summary",
    "meeting_tm_report",
    "meeting_trend",
    "network_g2g",
    "network_p2p",
    "network_summary",
    "one2one_dist",
    "one2one_fizz",
    "one2one_freq",
    "one2one_line",
    "one2one_rank",
    "one2one_sum",
    "one2one_summary",
    "one2one_trend",
    "p2p_data_sim",
    "pad2",
    "pairwise_count",
    "plot_ts_us",
    "prep_query",
    "read_preamble",
    "rgb2hex",
    "theme_wpa",
    "theme_wpa_basic",
    "tm_clean",
    "tm_cooc",
    "tm_freq",
    "tm_wordcloud",
    "totals_bind",
    "totals_col",
    "track_HR_change",
    "tstamp",
    "us_to_space",
    "validation_report",
    "wrap",
    "wrap_text",
    "xicor"
  ],
  "_datasets": [
    {
      "name": "g2g_data",
      "title": "Sample Group-to-Group dataset",
      "object": "g2g_data",
      "class": [
        "spec_tbl_df",
        "tbl_df",
        "tbl",
        "data.frame"
      ],
      "fields": [
        "PrimaryCollaborator_Organization",
        "PrimaryCollaborator_GroupSize",
        "SecondaryCollaborator_Organization",
        "SecondaryCollaborator_GroupSize",
        "MetricDate",
        "Percent_Group_collaboration_time_invested",
        "Group_collaboration_time_invested",
        "Group_email_sent_count",
        "Group_email_time_invested",
        "Group_meeting_count",
        "Group_meeting_time_invested"
      ],
      "rows": 150,
      "table": true,
      "tojson": true
    },
    {
      "name": "mt_data",
      "title": "Sample Meeting Query dataset",
      "object": "mt_data",
      "class": [
        "spec_tbl_df",
        "tbl_df",
        "tbl",
        "data.frame"
      ],
      "fields": [
        "MeetingId",
        "Attendee_meeting_hours",
        "Number_of_attendees",
        "Number_of_attendees_multitasking",
        "Number_of_attendees_who_didn_t_end_the_meeting_on_time",
        "Number_of_attendees_who_didn_t_join_the_meeting_on_time",
        "Number_of_attendees_who_ended_the_meeting_on_time",
        "Number_of_attendees_who_joined_the_meeting_on_time",
        "Number_of_chats_sent_during_the_meeting",
        "Number_of_emails_sent_during_the_meeting",
        "Number_of_redundant_attendees",
        "Subject",
        "All_Day_Meeting",
        "Cancelled",
        "Recurring",
        "Accept_count",
        "No_response_count",
        "Decline_count",
        "Tentatively_accepted_count",
        "Intended_participant_count",
        "Collaboration_start_time",
        "Organizer",
        "zId",
        "attainment",
        "TimeZone",
        "SupervisorIndicator",
        "Region",
        "Population_Type",
        "Organization",
        "OnsiteDays",
        "Number_of_directs",
        "LevelDesignation",
        "Layer",
        "HireDate",
        "GroupNum",
        "GroupName",
        "FunctionType",
        "Domain",
        "ADO_PersonSK",
        "ADO_PersonIndicator",
        "Duration"
      ],
      "rows": 612,
      "table": true,
      "tojson": true
    },
    {
      "name": "p2p_data",
      "title": "Sample person-to-person dataset",
      "object": "p2p_data",
      "class": [
        "tbl_df",
        "tbl",
        "data.frame"
      ],
      "fields": [
        "PrimaryCollaborator_PersonId",
        "PrimaryCollaborator_LevelDesignation",
        "PrimaryCollaborator_FunctionType",
        "PrimaryCollaborator_Organization",
        "SecondaryCollaborator_PersonId",
        "SecondaryCollaborator_LevelDesignation",
        "SecondaryCollaborator_FunctionType",
        "SecondaryCollaborator_Organization",
        "MetricDate",
        "Diverse_tie_score",
        "Diverse_tie_type",
        "Strong_tie_score",
        "Strong_tie_type"
      ],
      "rows": 11550,
      "table": true,
      "tojson": true
    },
    {
      "name": "pq_data",
      "title": "Sample Person Query dataset",
      "object": "pq_data",
      "class": [
        "tbl_df",
        "tbl",
        "data.frame"
      ],
      "fields": [
        "PersonId",
        "MetricDate",
        "Collaboration_hours",
        "Copilot_actions_taken_in_Teams",
        "Meeting_and_call_hours",
        "Internal_network_size",
        "Email_hours",
        "Channel_message_posts",
        "Conflicting_meeting_hours",
        "Large_and_long_meeting_hours",
        "External_collaboration_hours",
        "Active_connected_hours",
        "Meetings",
        "After_hours_collaboration_hours",
        "Call_hours",
        "Calls",
        "Channel_message_hours",
        "Chat_hours",
        "Collaboration_span",
        "Emails_read",
        "Emails_sent",
        "External_network_size",
        "Meeting_and_call_hours_with_manager",
        "Meeting_and_call_hours_with_manager_1_1",
        "Meeting_and_call_hours_with_skip_level",
        "Meeting_hours",
        "Multitasking_hours",
        "Network_outside_company",
        "Network_outside_organisation",
        "Time_with_leadership",
        "Unscheduled_call_hours",
        "Weekend_collaboration_hours",
        "Copilot_actions_taken_in_Copilot_chat__work_",
        "Copilot_actions_taken_in_Excel",
        "Copilot_actions_taken_in_Outlook",
        "Copilot_actions_taken_in_Powerpoint",
        "Copilot_actions_taken_in_Word",
        "Days_of_active_Copilot_chat__work__usage",
        "Days_of_active_Copilot_usage_in_Excel",
        "Days_of_active_Copilot_usage_in_Loop",
        "Days_of_active_Copilot_usage_in_OneNote",
        "Days_of_active_Copilot_usage_in_Outlook",
        "Days_of_active_Copilot_usage_in_Powerpoint",
        "Days_of_active_Copilot_usage_in_Teams",
        "Days_of_active_Copilot_usage_in_Word",
        "Total_Copilot_active_days",
        "Total_Copilot_enabled_days",
        "Barriers_to_Execution",
        "Change_Adaptation",
        "Collaboration",
        "Communication_Flow",
        "Continuous_Improvement",
        "eSat",
        "Initiative",
        "Manager_Recommend",
        "Resources",
        "Speak_My_Mind",
        "Wellbeing",
        "Work_Life_Balance",
        "Workload",
        "Create_Excel_formula_actions_taken_using_Copilot",
        "Create_presentation_actions_taken_using_Copilot",
        "Generate_email_draft_actions_taken_using_Copilot_in_Outlook",
        "Summarise_chat_actions_taken_using_Copilot_in_Teams",
        "Summarise_email_thread_actions_taken_using_Copilot_in_Outlook",
        "Summarise_meeting_actions_taken_using_Copilot_in_Teams",
        "Summarise_presentation_actions_taken_using_Copilot_in_PowerPoint",
        "Summarise_Word_document_actions_taken_using_Copilot_in_Word",
        "FunctionType",
        "SupervisorIndicator",
        "Level",
        "Organization",
        "LevelDesignation"
      ],
      "rows": 6900,
      "table": true,
      "tojson": true
    }
  ],
  "_help": [
    {
      "page": "afterhours_dist",
      "title": "Distribution of After-hours Collaboration Hours as a 100% stacked bar",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_dist"
      ]
    },
    {
      "page": "afterhours_fizz",
      "title": "Distribution of After-hours Collaboration Hours (Fizzy Drink plot)",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_fizz"
      ]
    },
    {
      "page": "afterhours_line",
      "title": "After-hours Collaboration Time Trend - Line Chart",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_line"
      ]
    },
    {
      "page": "afterhours_rank",
      "title": "Rank groups with high After-Hours Collaboration Hours",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_rank"
      ]
    },
    {
      "page": "afterhours_summary",
      "title": "Summary of After-Hours Collaboration Hours",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_sum",
        "afterhours_summary"
      ]
    },
    {
      "page": "afterhours_trend",
      "title": "After-Hours Time Trend",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "afterhours_trend"
      ]
    },
    {
      "page": "anonymise",
      "title": "Anonymise a categorical variable by replacing values",
      "topics": [
        "anonymise",
        "anonymize"
      ]
    },
    {
      "page": "any_idate",
      "title": "Identify whether variable is an IDate class.",
      "concept": [
        "Support"
      ],
      "topics": [
        "any_idate"
      ]
    },
    {
      "page": "camel_clean",
      "title": "Convert \"CamelCase\" to \"Camel Case\"",
      "concept": [
        "Support"
      ],
      "topics": [
        "camel_clean"
      ]
    },
    {
      "page": "check_inputs",
      "title": "Check whether a data frame contains all the required variable",
      "concept": [
        "Support"
      ],
      "topics": [
        "check_inputs"
      ]
    },
    {
      "page": "check_query",
      "title": "Check a query to ensure that it is suitable for analysis",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "check_query"
      ]
    },
    {
      "page": "collaboration_area",
      "title": "Collaboration - Stacked Area Plot",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_area",
        "collab_area"
      ]
    },
    {
      "page": "collaboration_dist",
      "title": "Distribution of Collaboration Hours as a 100% stacked bar",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_dist",
        "collab_dist"
      ]
    },
    {
      "page": "collaboration_fizz",
      "title": "Distribution of Collaboration Hours (Fizzy Drink plot)",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_fizz",
        "collab_fizz"
      ]
    },
    {
      "page": "collaboration_line",
      "title": "Collaboration Time Trend - Line Chart",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_line",
        "collab_line"
      ]
    },
    {
      "page": "collaboration_rank",
      "title": "Collaboration Ranking",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_rank",
        "collab_rank"
      ]
    },
    {
      "page": "collaboration_sum",
      "title": "Collaboration Summary",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_sum",
        "collaboration_summary",
        "collab_sum",
        "collab_summary"
      ]
    },
    {
      "page": "collaboration_trend",
      "title": "Collaboration Time Trend",
      "concept": [
        "Collaboration",
        "Visualization"
      ],
      "topics": [
        "collaboration_trend"
      ]
    },
    {
      "page": "comma",
      "title": "Add comma separator for thousands",
      "topics": [
        "comma"
      ]
    },
    {
      "page": "copy_df",
      "title": "Copy a data frame to clipboard for pasting in Excel",
      "concept": [
        "Import and Export"
      ],
      "topics": [
        "copy_df"
      ]
    },
    {
      "page": "create_bar",
      "title": "Mean Bar Plot for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_bar"
      ]
    },
    {
      "page": "create_bar_asis",
      "title": "Create a bar chart without aggregation for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_bar_asis"
      ]
    },
    {
      "page": "create_boxplot",
      "title": "Box Plot for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_boxplot"
      ]
    },
    {
      "page": "create_bubble",
      "title": "Create a bubble plot with two selected Viva Insights metrics (General Purpose), with size representing the number of employees in the group.",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_bubble"
      ]
    },
    {
      "page": "create_density",
      "title": "Create a density plot for any metric",
      "concept": [
        "Flexible"
      ],
      "topics": [
        "create_density"
      ]
    },
    {
      "page": "create_dist",
      "title": "Horizontal 100 percent stacked bar plot for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_dist"
      ]
    },
    {
      "page": "create_dt",
      "title": "Create interactive tables in HTML with 'download' buttons.",
      "concept": [
        "Import and Export"
      ],
      "topics": [
        "create_dt"
      ]
    },
    {
      "page": "create_fizz",
      "title": "Fizzy Drink / Jittered Scatter Plot for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_fizz"
      ]
    },
    {
      "page": "create_hist",
      "title": "Create a histogram plot for any metric",
      "concept": [
        "Flexible"
      ],
      "topics": [
        "create_hist"
      ]
    },
    {
      "page": "create_inc",
      "title": "Create an incidence analysis reflecting proportion of population scoring above or below a threshold for a metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_inc",
        "create_incidence"
      ]
    },
    {
      "page": "create_itsa",
      "title": "Estimate an effect of intervention on every Viva Insights metric in input file by applying single-group Interrupted Time-Series Analysis (ITSA)",
      "concept": [
        "Flexible Input",
        "Interrupted Time-Series Analysis"
      ],
      "topics": [
        "create_itsa"
      ]
    },
    {
      "page": "create_IV",
      "title": "Compute Information Value for Predictive Variables",
      "concept": [
        "Information Value",
        "Variable Association"
      ],
      "topics": [
        "create_IV"
      ]
    },
    {
      "page": "create_line",
      "title": "Time Trend - Line Chart for any metric",
      "concept": [
        "Flexible",
        "Time-series",
        "Visualization"
      ],
      "topics": [
        "create_line"
      ]
    },
    {
      "page": "create_line_asis",
      "title": "Create a line chart without aggregation for any metric",
      "concept": [
        "Flexible",
        "Time-series",
        "Visualization"
      ],
      "topics": [
        "create_line_asis"
      ]
    },
    {
      "page": "create_lorenz",
      "title": "Calculate the Lorenz Curve and Gini Coefficient in a Person Query",
      "topics": [
        "create_lorenz"
      ]
    },
    {
      "page": "create_period_scatter",
      "title": "Period comparison scatter plot for any two metrics",
      "concept": [
        "Flexible",
        "Time-series",
        "Visualization"
      ],
      "topics": [
        "create_period_scatter"
      ]
    },
    {
      "page": "create_radar",
      "title": "Radar Chart for multiple metrics",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_radar"
      ]
    },
    {
      "page": "create_radar_calc",
      "title": "Radar Chart (Calculation)",
      "topics": [
        "create_radar_calc"
      ]
    },
    {
      "page": "create_radar_viz",
      "title": "Radar Chart (Visualization)",
      "topics": [
        "create_radar_viz"
      ]
    },
    {
      "page": "create_rank",
      "title": "Rank all groups across HR attributes on a selected Viva Insights metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_rank"
      ]
    },
    {
      "page": "create_rank_combine",
      "title": "Create combination pairs of HR variables and run 'create_rank()'",
      "topics": [
        "create_rank_combine"
      ]
    },
    {
      "page": "create_rogers",
      "title": "Generate Rogers Adoption Curve plots for Copilot usage",
      "concept": [
        "Adoption Analysis",
        "Visualization"
      ],
      "topics": [
        "create_rogers"
      ]
    },
    {
      "page": "create_sankey",
      "title": "Create a sankey chart from a two-column count table",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_sankey"
      ]
    },
    {
      "page": "create_scatter",
      "title": "Create a Scatter plot with two selected Viva Insights metrics (General Purpose)",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_scatter"
      ]
    },
    {
      "page": "create_stacked",
      "title": "Horizontal stacked bar plot for any metric",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_stacked"
      ]
    },
    {
      "page": "create_survival",
      "title": "Kaplan–Meier Survival Curve",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_survival"
      ]
    },
    {
      "page": "create_survival_calc",
      "title": "Kaplan–Meier Survival Curve (Calculation)",
      "topics": [
        "create_survival_calc"
      ]
    },
    {
      "page": "create_survival_prep",
      "title": "Prepare Survival Data from a Panel Dataset",
      "concept": [
        "Transformation"
      ],
      "topics": [
        "create_survival_prep"
      ]
    },
    {
      "page": "create_survival_viz",
      "title": "Kaplan–Meier Survival Curve (Visualization)",
      "topics": [
        "create_survival_viz"
      ]
    },
    {
      "page": "create_tracking",
      "title": "Create a line chart that tracks metrics over time with a 4-week rolling average",
      "concept": [
        "Flexible",
        "Visualization"
      ],
      "topics": [
        "create_tracking"
      ]
    },
    {
      "page": "create_trend",
      "title": "Heat mapped horizontal bar plot over time for any metric",
      "concept": [
        "Flexible",
        "Time-series",
        "Visualization"
      ],
      "topics": [
        "create_trend"
      ]
    },
    {
      "page": "cut_hour",
      "title": "Convert a numeric variable for hours into categorical",
      "concept": [
        "Support"
      ],
      "topics": [
        "cut_hour"
      ]
    },
    {
      "page": "email_dist",
      "title": "Distribution of Email Hours as a 100% stacked bar",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_dist"
      ]
    },
    {
      "page": "email_fizz",
      "title": "Distribution of Email Hours (Fizzy Drink plot)",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_fizz"
      ]
    },
    {
      "page": "email_line",
      "title": "Email Time Trend - Line Chart",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_line"
      ]
    },
    {
      "page": "email_rank",
      "title": "Email Hours Ranking",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_rank"
      ]
    },
    {
      "page": "email_summary",
      "title": "Email Summary",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_sum",
        "email_summary"
      ]
    },
    {
      "page": "email_trend",
      "title": "Email Hours Time Trend",
      "concept": [
        "Emails",
        "Visualization"
      ],
      "topics": [
        "email_trend"
      ]
    },
    {
      "page": "export",
      "title": "Export 'vivainsights' outputs to CSV, clipboard, or save as images",
      "concept": [
        "Import and Export"
      ],
      "topics": [
        "export"
      ]
    },
    {
      "page": "external_dist",
      "title": "Distribution of External Collaboration Hours as a 100% stacked bar",
      "concept": [
        "External Collaboration",
        "Visualization"
      ],
      "topics": [
        "external_dist"
      ]
    },
    {
      "page": "external_fizz",
      "title": "Distribution of External Collaboration Hours (Fizzy Drink plot)",
      "concept": [
        "External Collaboration",
        "Visualization"
      ],
      "topics": [
        "external_fizz"
      ]
    },
    {
      "page": "external_line",
      "title": "External Collaboration Hours Time Trend - Line Chart",
      "concept": [
        "External Collaboration",
        "Visualization"
      ],
      "topics": [
        "external_line"
      ]
    },
    {
      "page": "external_rank",
      "title": "Rank groups with high External Collaboration Hours",
      "concept": [
        "After-hours Collaboration",
        "Visualization"
      ],
      "topics": [
        "external_rank"
      ]
    },
    {
      "page": "external_sum",
      "title": "External Collaboration Summary",
      "concept": [
        "External Collaboration",
        "Visualization"
      ],
      "topics": [
        "external_sum",
        "external_summary"
      ]
    },
    {
      "page": "extract_date_range",
      "title": "Extract date period",
      "concept": [
        "Support"
      ],
      "topics": [
        "extract_date_range"
      ]
    },
    {
      "page": "extract_hr",
      "title": "Extract HR attribute variables",
      "concept": [
        "Data Validation",
        "Support"
      ],
      "topics": [
        "extract_hr"
      ]
    },
    {
      "page": "flag_ch_ratio",
      "title": "Flag unusual high collaboration hours to after-hours collaboration hours ratio",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "flag_ch_ratio"
      ]
    },
    {
      "page": "flag_em_ratio",
      "title": "Flag Persons with unusually high Email Hours to Emails Sent ratio",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "flag_em_ratio"
      ]
    },
    {
      "page": "flag_extreme",
      "title": "Warn for extreme values by checking against a threshold",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "flag_extreme"
      ]
    },
    {
      "page": "flag_outlooktime",
      "title": "Flag unusual outlook time settings for work day start and end time",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "flag_outlooktime"
      ]
    },
    {
      "page": "g2g_data",
      "title": "Sample Group-to-Group dataset",
      "concept": [
        "Data",
        "Network"
      ],
      "topics": [
        "g2g_data"
      ]
    },
    {
      "page": "generate_report",
      "title": "Generate HTML report with list inputs",
      "concept": [
        "Reports"
      ],
      "topics": [
        "generate_report"
      ]
    },
    {
      "page": "generate_report2",
      "title": "Generate HTML report based on existing RMarkdown documents",
      "topics": [
        "generate_report2"
      ]
    },
    {
      "page": "heat_colours",
      "title": "Generate a vector of 'n' contiguous colours, as a red-yellow-green palette.",
      "concept": [
        "Support"
      ],
      "topics": [
        "heat_colors",
        "heat_colours"
      ]
    },
    {
      "page": "hr_trend",
      "title": "Employee count over time",
      "concept": [
        "Data Validation",
        "Visualization"
      ],
      "topics": [
        "hr_trend"
      ]
    },
    {
      "page": "hrvar_count",
      "title": "Create a count of distinct people in a specified HR variable",
      "concept": [
        "Data Validation",
        "Visualization"
      ],
      "topics": [
        "analysis_scope",
        "hrvar_count"
      ]
    },
    {
      "page": "hrvar_count_all",
      "title": "Create count of distinct fields and percentage of employees with missing values for all HR variables",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "hrvar_count_all"
      ]
    },
    {
      "page": "hrvar_trend",
      "title": "Track count of distinct people over time in a specified HR variable",
      "concept": [
        "Data Validation",
        "Visualization"
      ],
      "topics": [
        "hrvar_trend"
      ]
    },
    {
      "page": "identify_churn",
      "title": "Identify employees who have churned from the dataset",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_churn"
      ]
    },
    {
      "page": "identify_datefreq",
      "title": "Identify date frequency based on a series of dates",
      "topics": [
        "identify_datefreq"
      ]
    },
    {
      "page": "identify_habit",
      "title": "Identify whether a habitual behaviour exists over a given interval of time",
      "topics": [
        "identify_habit"
      ]
    },
    {
      "page": "identify_holidayweeks",
      "title": "Identify Holiday Weeks based on outliers",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_holidayweeks"
      ]
    },
    {
      "page": "identify_inactiveweeks",
      "title": "Identify Inactive Weeks",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_inactiveweeks"
      ]
    },
    {
      "page": "identify_nkw",
      "title": "Identify Non-Knowledge workers in a Person Query using Collaboration Hours",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_nkw"
      ]
    },
    {
      "page": "identify_outlier",
      "title": "Identify metric outliers over a date interval",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_outlier"
      ]
    },
    {
      "page": "identify_privacythreshold",
      "title": "Identify groups under privacy threshold",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_privacythreshold"
      ]
    },
    {
      "page": "identify_retention",
      "title": "Identify Retention Rate Between Two Time Periods",
      "topics": [
        "identify_retention"
      ]
    },
    {
      "page": "identify_shifts",
      "title": "Identify shifts based on outlook time settings for work day start and end time",
      "concept": [
        "Data Validation",
        "Working Patterns"
      ],
      "topics": [
        "identify_shifts"
      ]
    },
    {
      "page": "identify_tenure",
      "title": "Tenure calculation based on different input dates, returns data summary table or histogram",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "identify_tenure"
      ]
    },
    {
      "page": "identify_usage_segments",
      "title": "Identify Usage Segments based on a metric",
      "topics": [
        "identify_usage_segments"
      ]
    },
    {
      "page": "import_query",
      "title": "Import a query from Viva Insights Analyst Experience",
      "concept": [
        "Import and Export"
      ],
      "topics": [
        "import_query"
      ]
    },
    {
      "page": "is_date_format",
      "title": "Identify whether string is a date format",
      "concept": [
        "Support"
      ],
      "topics": [
        "is_date_format"
      ]
    },
    {
      "page": "IV_report",
      "title": "Generate a Information Value HTML Report",
      "concept": [
        "Information Value",
        "Reports",
        "Variable Association"
      ],
      "topics": [
        "IV_report"
      ]
    },
    {
      "page": "jitter_metrics",
      "title": "Jitter metrics in a data frame",
      "topics": [
        "jitter_metrics"
      ]
    },
    {
      "page": "keymetrics_scan",
      "title": "Run a summary of Key Metrics from the Standard Person Query data",
      "concept": [
        "Visualization"
      ],
      "topics": [
        "keymetrics_scan"
      ]
    },
    {
      "page": "keymetrics_scan_asis",
      "title": "Run a summary of Key Metrics without aggregation",
      "topics": [
        "keymetrics_scan_asis"
      ]
    },
    {
      "page": "maxmin",
      "title": "Max-Min Scaling Function",
      "concept": [
        "Support"
      ],
      "topics": [
        "maxmin"
      ]
    },
    {
      "page": "meeting_dist",
      "title": "Distribution of Meeting Hours as a 100% stacked bar",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_dist"
      ]
    },
    {
      "page": "meeting_fizz",
      "title": "Distribution of Meeting Hours (Fizzy Drink plot)",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_fizz"
      ]
    },
    {
      "page": "meeting_line",
      "title": "Meeting Time Trend - Line Chart",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_line"
      ]
    },
    {
      "page": "meeting_rank",
      "title": "Meeting Hours Ranking",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_rank"
      ]
    },
    {
      "page": "meeting_summary",
      "title": "Meeting Summary",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_sum",
        "meeting_summary"
      ]
    },
    {
      "page": "meeting_tm_report",
      "title": "Generate a Meeting Text Mining report in HTML",
      "concept": [
        "Meetings",
        "Reports",
        "Text-mining"
      ],
      "topics": [
        "meeting_tm_report"
      ]
    },
    {
      "page": "meeting_trend",
      "title": "Meeting Hours Time Trend",
      "concept": [
        "Meetings",
        "Visualization"
      ],
      "topics": [
        "meeting_trend"
      ]
    },
    {
      "page": "mt_data",
      "title": "Sample Meeting Query dataset",
      "concept": [
        "Data"
      ],
      "topics": [
        "mt_data"
      ]
    },
    {
      "page": "network_g2g",
      "title": "Create a network plot with the group-to-group query",
      "concept": [
        "Network"
      ],
      "topics": [
        "network_g2g"
      ]
    },
    {
      "page": "network_p2p",
      "title": "Perform network analysis with the person-to-person query",
      "concept": [
        "Network"
      ],
      "topics": [
        "network_p2p"
      ]
    },
    {
      "page": "network_summary",
      "title": "Summarise node centrality statistics with an igraph object",
      "concept": [
        "Network"
      ],
      "topics": [
        "network_summary"
      ]
    },
    {
      "page": "one2one_dist",
      "title": "Distribution of Manager 1:1 Time as a 100% stacked bar",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_dist"
      ]
    },
    {
      "page": "one2one_fizz",
      "title": "Distribution of Manager 1:1 Time (Fizzy Drink plot)",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_fizz"
      ]
    },
    {
      "page": "one2one_freq",
      "title": "Frequency of Manager 1:1 Meetings as bar or 100% stacked bar chart",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_freq"
      ]
    },
    {
      "page": "one2one_line",
      "title": "Manager 1:1 Time Trend - Line Chart",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_line"
      ]
    },
    {
      "page": "one2one_rank",
      "title": "Manager 1:1 Time Ranking",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_rank"
      ]
    },
    {
      "page": "one2one_sum",
      "title": "Manager 1:1 Time Summary",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_sum",
        "one2one_summary"
      ]
    },
    {
      "page": "one2one_trend",
      "title": "Manager 1:1 Time Trend",
      "concept": [
        "Managerial Relations",
        "Visualization"
      ],
      "topics": [
        "one2one_trend"
      ]
    },
    {
      "page": "p2p_data",
      "title": "Sample person-to-person dataset",
      "concept": [
        "Data",
        "Network"
      ],
      "topics": [
        "p2p_data"
      ]
    },
    {
      "page": "p2p_data_sim",
      "title": "Simulate a person-to-person query using a Watts-Strogatz model",
      "concept": [
        "Data",
        "Network"
      ],
      "topics": [
        "p2p_data_sim"
      ]
    },
    {
      "page": "pad2",
      "title": "Create the two-digit zero-padded format",
      "topics": [
        "pad2"
      ]
    },
    {
      "page": "pairwise_count",
      "title": "Perform a pairwise count of words by id",
      "concept": [
        "Support",
        "Text-mining"
      ],
      "topics": [
        "pairwise_count"
      ]
    },
    {
      "page": "plot_ts_us",
      "title": "Plot Usage Segments over time",
      "topics": [
        "plot_ts_us"
      ]
    },
    {
      "page": "pq_data",
      "title": "Sample Person Query dataset",
      "concept": [
        "Data"
      ],
      "topics": [
        "pq_data"
      ]
    },
    {
      "page": "prep_query",
      "title": "Prepare variable names and types in query data frame for analysis",
      "concept": [
        "Import and Export"
      ],
      "topics": [
        "prep_query"
      ]
    },
    {
      "page": "read_preamble",
      "title": "Read preamble",
      "concept": [
        "Reports",
        "Support"
      ],
      "topics": [
        "read_preamble"
      ]
    },
    {
      "page": "rgb2hex",
      "title": "Convert rgb to HEX code",
      "concept": [
        "Support"
      ],
      "topics": [
        "rgb2hex"
      ]
    },
    {
      "page": "theme_wpa",
      "title": "Main theme for 'vivainsights' visualisations",
      "concept": [
        "Themes"
      ],
      "topics": [
        "theme_wpa"
      ]
    },
    {
      "page": "theme_wpa_basic",
      "title": "Basic theme for 'vivainsights' visualisations",
      "concept": [
        "Themes"
      ],
      "topics": [
        "theme_wpa_basic"
      ]
    },
    {
      "page": "tm_clean",
      "title": "Clean subject line text prior to analysis",
      "concept": [
        "Text-mining"
      ],
      "topics": [
        "tm_clean"
      ]
    },
    {
      "page": "tm_cooc",
      "title": "Analyse word co-occurrence in subject lines and return a network plot",
      "concept": [
        "Text-mining"
      ],
      "topics": [
        "tm_cooc"
      ]
    },
    {
      "page": "tm_freq",
      "title": "Perform a Word or Ngram Frequency Analysis and return a Circular Bar Plot",
      "concept": [
        "Text-mining"
      ],
      "topics": [
        "tm_freq"
      ]
    },
    {
      "page": "tm_wordcloud",
      "title": "Generate a wordcloud with meeting subject lines",
      "concept": [
        "Text-mining"
      ],
      "topics": [
        "tm_wordcloud"
      ]
    },
    {
      "page": "totals_bind",
      "title": "Row-bind an identical data frame for computing grouped totals",
      "concept": [
        "Support"
      ],
      "topics": [
        "totals_bind"
      ]
    },
    {
      "page": "totals_col",
      "title": "Fabricate a 'Total' HR variable",
      "concept": [
        "Support"
      ],
      "topics": [
        "totals_col"
      ]
    },
    {
      "page": "track_HR_change",
      "title": "Sankey chart of organizational movement between HR attributes and missing values (outside company move) (Data Overview)",
      "concept": [
        "Data Validation"
      ],
      "topics": [
        "track_HR_change"
      ]
    },
    {
      "page": "tstamp",
      "title": "Generate a time stamp",
      "concept": [
        "Support"
      ],
      "topics": [
        "tstamp"
      ]
    },
    {
      "page": "us_to_space",
      "title": "Replace underscore with space",
      "concept": [
        "Support"
      ],
      "topics": [
        "us_to_space"
      ]
    },
    {
      "page": "validation_report",
      "title": "Generate a Data Validation report in HTML",
      "concept": [
        "Data Validation",
        "Reports"
      ],
      "topics": [
        "validation_report"
      ]
    },
    {
      "page": "wrap",
      "title": "Add a character at the start and end of a character string",
      "concept": [
        "Support"
      ],
      "topics": [
        "wrap"
      ]
    },
    {
      "page": "wrap_text",
      "title": "Wrap text based on character threshold",
      "topics": [
        "wrap_text"
      ]
    },
    {
      "page": "xicor",
      "title": "Calculate Chatterjee's Rank Correlation Coefficient",
      "topics": [
        "xicor"
      ]
    }
  ],
  "_pkglogo": "https://github.com/microsoft/vivainsights/raw/HEAD/man/figures/logo.png",
  "_readme": "https://github.com/microsoft/vivainsights/raw/HEAD/README.md",
  "_rundeps": [
    "base64enc",
    "bslib",
    "cachem",
    "cli",
    "colorspace",
    "commonmark",
    "cpp11",
    "crosstalk",
    "curl",
    "data.table",
    "data.tree",
    "digest",
    "dplyr",
    "DT",
    "evaluate",
    "farver",
    "fastmap",
    "fontawesome",
    "fs",
    "generics",
    "ggforce",
    "ggplot2",
    "ggraph",
    "ggrepel",
    "ggwordcloud",
    "glue",
    "graphlayouts",
    "gridExtra",
    "gridtext",
    "gtable",
    "highr",
    "htmltools",
    "htmlwidgets",
    "igraph",
    "isoband",
    "janeaustenr",
    "jpeg",
    "jquerylib",
    "jsonlite",
    "knitr",
    "labeling",
    "later",
    "lattice",
    "lazyeval",
    "lifecycle",
    "litedown",
    "magrittr",
    "markdown",
    "MASS",
    "Matrix",
    "memoise",
    "mime",
    "networkD3",
    "otel",
    "pillar",
    "pkgconfig",
    "plyr",
    "png",
    "polyclip",
    "promises",
    "proxy",
    "purrr",
    "R6",
    "rappdirs",
    "RColorBrewer",
    "Rcpp",
    "RcppArmadillo",
    "reshape2",
    "rlang",
    "rmarkdown",
    "S7",
    "sass",
    "scales",
    "SnowballC",
    "stringi",
    "stringr",
    "systemfonts",
    "tibble",
    "tidygraph",
    "tidyr",
    "tidyselect",
    "tidytext",
    "tinytex",
    "tokenizers",
    "tweenr",
    "utf8",
    "vctrs",
    "viridis",
    "viridisLite",
    "withr",
    "wpa",
    "xfun",
    "xml2",
    "yaml"
  ],
  "_score": 6.8794256344994515,
  "_indexed": true,
  "_nocasepkg": "vivainsights",
  "_universes": [
    "microsoft"
  ],
  "_binaries": [
    {
      "r": "4.7.0",
      "os": "linux",
      "version": "0.7.2",
      "date": "2026-05-17T09:41:56.000Z",
      "distro": "noble",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "3d8f391f9448a7a19e1012b09ed4ec0086655f9e02b8efaef165bd4fe9a94ca3",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.6.0",
      "os": "linux",
      "version": "0.7.2",
      "date": "2026-05-17T09:41:55.000Z",
      "distro": "noble",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "c1402c4d8c96d60a4f4d77809110b72e2962a6bc2ec7b7aaca2a602106da80fa",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.5.3",
      "os": "mac",
      "version": "0.7.2",
      "date": "2026-05-17T09:40:44.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "bf51557dfb59e8651e7e0a6e2fdff90d47eb9d77b395840f05b2be310e3eb09c",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.6.0",
      "os": "mac",
      "version": "0.7.2",
      "date": "2026-05-17T09:40:52.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "52918bbff969b7e0b202e3f9ed5735bb1d5b12596250cb1cc88e75060bd3121d",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.7.0",
      "os": "win",
      "version": "0.7.2",
      "date": "2026-05-17T09:40:38.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "daa7fd69b9f7aa55e3f4cb493bd3694c4a30365a51849c3707fbd5e35e2a1587",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.5.3",
      "os": "win",
      "version": "0.7.2",
      "date": "2026-05-17T09:40:47.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "00d197c63d2e0e171163a18266b1d7cf74f9a2ec871a3dc1d4ae681731c2ebab",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.6.0",
      "os": "win",
      "version": "0.7.2",
      "date": "2026-05-17T09:40:36.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "b16d784cd1d1c01654d64684c43292caeb0b61fccbb10e76744eb26cb72ad02d",
      "status": "success",
      "check": "OK",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    },
    {
      "r": "4.6.0",
      "os": "wasm",
      "version": "0.7.2",
      "date": "2026-06-02T17:00:18.000Z",
      "commit": "f64eae5f966882fcd9098adf3e596890e6ca0d80",
      "fileid": "bc7642550cd0c46d1738c2422593d50e3a50b0644ceaec90a6a6293fc83d37a5",
      "status": "success",
      "buildurl": "https://github.com/r-universe/microsoft/actions/runs/25987245832"
    }
  ]
}