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Jira initiative

TBC

Document Status

draft
Status
title
Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3192

Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3269

Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3210

Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3211

Jira Legacy
serverSystem JIRA
serverId255417eb-03fa-3e2f-a6ba-05d325fec50d
keyAA-3181

Project Status

Status
colourYellow
titlein progress

Created On

Due Date

23 Nov

Document Owner

Rayand Ramlal

...

🤝 Introduction

Through our Digital App, Tim Hortons (“TH”) gathers a significant amount of data on loyalty guests, including purchasing and traffic information. From a data analytics perspective, this data is predominantly utilized by the Digital Loyalty Analytics team. When examining the performance of new products following introduction to market, the Category Management team typically makes use of system-wide data and, using this, is able to analyze performance metrics based on these macro performance metrics. However, the lack of guest-level data prevents the wider organization, including Category Management, from gaining a deeper understanding of uptake of the new product, as guest level data is relatively inaccessible to these teams. For example, teams are unable to examine the critical measure of rates of repurchase of a product, as they are unable to track guest-level purchases. The availability of this data would allow Category to track guest level purchases, and importantly, repurchase behaviour.

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Title

Description

Priority

Notes

Analyze performance of new products following launch to market

A user selects: a product (level 4)menu item name, an analysis start date, and an end date. The user is able to filter the entire dashboard based on Region and Restaurant(s).

Status
colourGreen
titleMust have

This product should be the equivalent of levelmenu_4item_platformname from the loyalty.stg.derived_master_table_new table

A user is shown high level call-out metrics for the performance of the product during this date range chosen, and is shown the uptake of the product by loyalty guests.

Status
colourGreen
titleMust have

A user is shown a weekly, time-series chart of loyalty guest: (i) cheque-level data, (ii) product purchases, and (iii) product repurchases.

Status
colourGreen
titleMust have

A user is shown the proportion of product mixes at the start and end dates chosen for both guests who purchased the product, as well as overall loyalty.

Status
colourGreen
titleMust have

...

  • The behaviour of guest cheque when purchasing the product [Product Category].

  • The behaviour of guest cheque who purchased the product, and guest cheque who purchased the category (but not necessarily the provideproduct). Providing insights on whether guests are trading within category. This, in combination with other metrics, provides insights on product & category cannibalization.

  • The behaviour of guest cheque when purchasing the product [Product Category] as compared to the overall guest base. This provides insights on whether the new product has an influence on guest cheque.

...