Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.
Page Properties
TBC

Jira Initiative

Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3365

Project Status

Status
colourYellow
titleIn progress

Created On

Due Date

TBD

Document Owner

Rainey Guo

Project Team

...

The aim of this project is to develop a dashboard that illustrates the high-level performance of Tim Horton’s digital/loyalty program. Currently, executive leadership across Tim Horton’s seeks insights on digital health metrics at a higher frequency than the Digital & Loyalty Analytics team currently provides to them. Furthermore, the existing process to provide these metrics ad hoc requires significant manual intervention by the analytics team. Thus, the dashboard should display key metrics that the digital team already tracks, in one location. The end-users of the dashboard are anticipated to be high-level executives, who will monitor essential business metrics to effectively guide business activities, as well as members of the Digital Loyalty Analytics team and will be displayed on the Digital & Loyalty screens (therefore dashboard layout, perspective & dashboard should align to screen dimensions). However, based on the rate of uptake, users across the broader organization may utilize the dashboard on an ad hoc basis.

...

The following outlines details of each of the requested dashboard views (of which there are four c.6 in total), and should inform the development of the underlying data models to power the use case. Note that the analysis should be limited to TH Canada and Canadian Loyalty Guests.

...

The first time-series chart, KDS Penetration Over Time, is intended to illustrate, using superimposed line charts, the evolution of KDS penetration throughout the dashboard user’s selected time period, compared to past years over the same time period. Each line represents a different year’s KDS over the user’s selected reporting range. Within this chart, users should have the option to drill up or down on the reporting cadence (e.g., daily, weekly [fiscal], monthly, quarterly, annually). For example, if the user inputted the time range as [Start Date] 2023/01/01 to [End Date] 2023/10/01 and drilled down the reporting cadence to “weekly”, the chart would show weekly KDS penetration overtime for January to October, in 2021, 2022, and 2023.

...

Callout Metrics: this first dashboard view should show users the respective sales of each digital ordering or payment method, represented as a percentage of system-wide sales, during the user’s selected reporting range, as defined by [Start Date] and [End Date].

This will include:

  1. Kiosk sales as % of SWS,

  2. Mobile Order & Payment (MO&P) sales,

  3. Delivery sales (3P and white label),

  4. Catering sales,

  5. Outdoor Digital Menu Board (“ODMB”) sales,

  6. Total digital sales (sum of all digital channels), as well as

  7. Restaurant In-Restaurant and Drive Thru sales (sum of all non-digital sales).where

    1. kiosk sales is the sum of sales where service_mode_cd in ('KIOSK', ‘KIOSK TAKEOUT’, ‘KIOSK EATIN’)

  8. Mobile Order & Payment (MO&P) sales as % of SWS, where

    1. MO&P sales is the sum of sales whereservice_mode_cd in ('MOBILE ORDER DRIVE THRU', 'MOBILE ORDER EAT IN', 'MOBILE ORDER TAKE OUT')

  9. Delivery sales (3P and white label) sales as % of SWS, where

    1. delivery sales is the sum of sales whereservice_mode_cd in ('DELIVERY', ‘WHITE LABEL DELIVERY’, ‘THIRD PARTY DELIVERY’)

  10. Catering sales as % of SWS, where

    1. catering sales is the sum of sales wherediningtype = ‘CT’ (from PRODRT.CURATED_TRANS_EVENTS_NEW)

  11. Scan & Pay sales as % of SWS, where

    1. Scan & Pay sales is the sum of sales where SCANANDPAY = ‘TRUE’ (from PRODRT.CURATED_TRANS_EVENTS_NEW)

  12. Total digital ordering sales (sum of all digital channels) as a % of SWS, where

    1. total digital ordering sales is the sum of sales from all the above service modes

  13. In-Restaurant and Drive Thru sales (sum of all non-digital sales) as a % of SWS, where

    1. In-restaurant and Drive Thru sales is the sum of all sales where service_mode_cd in ('TAKEOUT', ‘DRIVETHRU’, ‘EATIN’)

The percentages for each of these would just be computed as the total sales for that service mode within the [Start Date] and [End Date], divided by the total system-wide sales within the [Start Date] and [End Date].

There should also be callouts for Scan & Pay Loyalty Penetration (sum of Scan & Pay sales as a percentage of all loyalty sales) and , where Scan & Pay Total Penetration (sum Scan & Pay Sales as a percentage of system-wide sales)sales is the same as the previously-used definition above, and loyalty sales is the sum of all sales where LEFT(LOYALTY_CUSTOMER_ID,3) = '046'.

Time Series 1 of 3: Digital Ordering Channel Sales Over Time

...

(% of SWS) Over Time

The first time series in this view, Digital Ordering Channel Sales (% of SWS) Over Time, is intended to illustrate the sales per restaurant per day the sales penetration of systemwide sales for each digital ordering channel over the user’s selected time range, . This data will be represented as a stacked bar chart, where each portion of the stacked bar corresponds to the average sales per restaurant per day of as a % of systemwide sales for each digital ordering channel. The sum of all the sales per restaurant per day sales as a % of systemwide sales of each digital ordering channel should amount to the total digital sales per restaurant per daysales as a % of systemwide sales, which is represented by the value of the entire bar. Digital sales as a percentage of system-wide sales is represented as a line (above the bars, on a separate y-axis) also spans the duration of the user’s selected reporting range.

Similar to the other charts, users will have the option to drill up or down on the reporting cadence (e.g., daily, weekly, monthly, quarterly, annually). As well, the chart will feature the average sales per restaurant per day for the user’s entire selected time period in comparison to the average for the same time period in the previous year; average CY YTD data will also be featured in a bar at the end, as pictured in the sample view.

Time Series 2 of 3: Ordering Channel Cheque Comparison Over Time

...

The fourth time series, Scan & Pay First Time Purchasers, is intended to show the evolution of Scan & Pay adoption over time; that is, whether more people are using Scan & Pay for the first time, overtime. Similar to the previous chart, users should have the option to drill up or down on the reporting cadence (e.g., daily, weekly [fiscal], monthly, quarterly, annually). This chart will also feature bars representing the nominal number of Scan & Pay first time purchasers for each cadence that the user drills down to (eg: each month, if they choose “monthly”) across the user’s selected reporting range. For example, if the user inputted their time range as [Start Date] 2023/01/01 to [End Date] 2023/10/01 and drilled down the reporting cadence to “monthly”, the bars will show the nominal number of guests who are using Scan & Pay to make a purchase for the first time ever in each month, from January to October 2023.

View #6: Digital Metrics

To follow

View #7: Loyalty Metrics

https://rbictg.atlassian.net/wiki/x/aYBmCQE

Technical Specification

To meet the objective of the initiative, Data Engineering will support with the following:

...