Metric and Definition | Query | Comments and Business Use |
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Known Diner Sales (“KDS”) All sales that are made by recognizable guests, i.e. guests that have registered through the app (identified by their registered account id beginning with ‘us-east’) | Code Block |
---|
| SELECT TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
SUM(AMOUNT) AS SALES,
COUNT(DISTINCT TICKET_ID) AS TRXNS,
COUNT(DISTINCT REGISTERED_ACCOUNT_ID) AS GUESTS
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE
PARTITION_DATE_KEY BETWEEN '<START DATE>' AND '<END DATE>'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
GROUP BY 1,2 |
| This metric is used as a baseline to see loyalty sales penetration against system wide sales. |
System Wide Sales (“SWS”) Total sales across TH | Code Block |
---|
| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
COUNT(DISTINCT TICKET_ID) AS TRXNS,
SUM(AMOUNT) AS SWS
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE
PARTITION_DATE_KEY BETWEEN '<START DATE>' AND '<END DATE>'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
GROUP BY 1,2 |
| Note: Some forecasts may use Hyperion sales interchangeable in lieu of SWS sourced from STG.DERIVED_MASTER_TABLE_NEW. |
Cheque Average sales value ($) of an individual transaction | Code Block |
---|
| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
COUNT(DISTINCT TICKET_ID) AS TRXNS,
SUM(AMOUNT) AS SWS,
SUM(AMOUNT)/COUNT(DISTINCT TICKET_ID) AS CHEQUE
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE
PARTITION_DATE_KEY BETWEEN '<START DATE>' AND '<END DATE>'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
GROUP BY 1,2 |
| Can calculate this on a system level or down to an individual guest level. Can filter on loyalty or non-loyalty. |
Frequency Average loyalty guest visits in a given time period | Code Block |
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| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
COUNT(DISTINCT TICKET_ID) AS TRXNS,
COUNT(DISTINCT REGISTERED_ACCOUNT_ID) AS GUESTS,
COUNT(DISTINCT TICKET_ID)/COUNT(DISTINCT T1.REGISTERED_ACCOUNT_ID) AS FREQUENCY
FROM STG.DERIVED_MASTER_TABLE_NEW T1
WHERE
PARTITION_DATE_KEY BETWEEN '<START DATE>' AND '<END DATE>'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
GROUP BY 1,2 |
| Usually look at this metric for a week, month, or year. |
White Label Delivery (“WL”) Delivery sales initiated from the TH mobile app | Code Block |
---|
| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
SUM(AMOUNT) AS SALES
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN '$START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = "CANADA"
AND SERVICE_MODE_CD IN ('WHITE LABEL DELIVERY','DELIVERY')
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
GROUP BY 1,2 |
| Included in known diner sales & digital sales. Sales of our internal app delivery platform. |
Mobile Order & Pay (“MO&P”) | Code Block |
---|
| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
SUM(AMOUNT) AS SALES
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = "CANADA"
AND SERVICE_MODE_CD IN ('MOBILE ORDER DRIVE THRU', 'MOBILE ORDER EAT IN', 'MOBILE ORDER TAKE OUT')
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
GROUP BY 1,2 |
| Included in known diner sales & digital sales. |
Loyalty Scans Sales made by known diners and includes eat-in, takeout & drive thru | Code Block |
---|
| SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
SUM(AMOUNT) AS SALES
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = "CANADA"
AND SERVICE_MODE_CD IN ('TAKEOUT', 'EATIN','DRIVETHRU')
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
GROUP BY 1,2 |
| Included in known diner sales & digital sales. |
3P Delivery Delivery sales initiated and fulfilled by third-party delivery providers, such as UberEats, SkipTheDishes and DoorDash | Code Block |
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| SELECT
A.PARTITION_DATE_KEY,
SUM(A.AMOUNT) AS SALES
FROM STG.DERIVED_MASTER_TABLE_NEW A
INNER JOIN TLOG.TLOG_SALE_TICKET_TENDERS B
ON A.TICKET_ID = B.TICKET_ID
WHERE A.PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
AND TENDER_NAME IN ("UBER EATS CREDIT","Credit Uber Eats","Uber Eats Credit","CRÉDIT UBER EATS","SKIP CREDIT","Skip Credit","CRÉDIT de DoorDash","CRÉDIT DE DOORDASH","DoorDash Credit","DOORDASH CREDIT","Crédit de DoorDash","Doordash")
GROUP BY 1 |
| Included in digital sales |
Kiosk Sales via Kiosk; can be split into registered and un-registered Kiosk sales using | Code Block |
---|
| SELECT
PARTITION_DATE_KEY,
SUM(AMOUNT) AS SALES
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND SERVICE_MODE_CD IN ('KIOSK', 'KIOSK TAKEOUT', 'KIOSK EATIN')
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = "CANADA"
GROUP BY 1 |
| Included in digital sales Code Block |
---|
| -- Registered Kiosk
AND LEFT(COALESCE(REGISTERED_ACCOUNT_ID,''),7) = 'us-east'
-- Un-Registered Kiosk
AND LEFT(COALESCE(REGISTERED_ACCOUNT_ID,''),7) != 'us-east' |
|
Catering Catering sales | Code Block |
---|
| SELECT
PARTITION_DATE_KEY,
SUM(ITEMTOTALPRICE)AS SALES,
FROM PRODRT.CURATED_TRANS_EVENTS_NEW
WHERE PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND COUNTRY_NM = 'CANADA'
AND IS_PASS_THROUGH = 0
AND LEFT(REGISTEREDACCOUNTID,7) = 'us-east'
AND DININGTYPE = 'CT'
GROUP BY 1 |
| Included in digital sales |
Restaurants Reporting Any Menu Item (“RRAMI“) | Code Block |
---|
| WITH RESTAURANTS AS (
SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
PARTITION_DATE_KEY,
COUNT(DISTINCT REST_NO) AS RESTAURANTS
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN 'START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM = 'CANADA'
GROUP BY 1,2,3
ORDER BY 1)
SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
SUM(RESTAURANTS) AS RRAMI
FROM RESTAURANTS
GROUP BY 1,2 |
| |
Scan & Pay (“S&P”) Transactions where Scan & Pay feature was used | Code Block |
---|
| SELECT
STOREDATE,
COUNT(DISTINCT TRANSACTIONID) AS TICKETS,
SUM(ITEMTOTALPRICE) AS SALES
FROM PRODRT.CURATED_TRANS_EVENTS_NEW
WHERE STOREDATE BETWEEN 'START_DATE' AND 'END_DATE'
AND IS_PASS_THROUGH = 0
AND COUNTRY_NM IN ('CANADA')
AND LEFT(REGISTEREDACCOUNTID,7) = 'us-east'
AND SCANANDPAY IS TRUE
GROUP BY 1 |
| Often tracked as a % of registered transactions Scan & Pay Penetration Formula: (Scan & Pay Transactions) / (Registered Transactions) |
Loyalty Redemptions Products that were redeemed using loyalty points | Code Block |
---|
| CACHE TABLE DAILY_REDEMPTIONS AS
WITH TRANSACTIONS_WITH_OFFER_ID AS (
SELECT
LEFT(PERIOD_DT, 10) AS PERIOD_DT,
REGISTEREDACCOUNTID,
TRANSACTIONID,
EXPLODE(APPLIEDOFFERS) AS EXPLODED_OFFERS
FROM PRODRT.CURATED_TRANS_EVENTS_NEW
WHERE DATE_KEY >= '20230606'
AND COALESCE(REGISTEREDACCOUNTID,'') IS NOT NULL
AND APPLIEDOFFERS IS NOT NULL
AND COUNTRY_NM = 'CANADA')
SELECT
PERIOD_DT,
COUNT(DISTINCT TRANSACTIONID) AS TRXNS
FROM TRANSACTIONS_WITH_OFFER_ID AS A
INNER JOIN (SELECT DISTINCT OFFERID FROM DYDB.WEEKLYOFFERS
UNION ALL
SELECT DISTINCT OFFERID
FROM DYDB.OFFERS
WHERE CONTAINS(description, 'LOYALTY')
AND DESCRIPTION LIKE 'CA L%'
AND DESCRIPTION NOT IN ('CA LR Registered Default (same as L1)-LOYALTY', 'CA LU Unregistered (same as 102) ONE-TIME-LOYALTY') ) B
ON A.EXPLODED_OFFERS = B.OFFERID
LEFT JOIN DYDB.OFFERS AS C
ON A.EXPLODED_OFFERS=C.OFFERID
WHERE EXPLODED_OFFERS IS NOT NULL
AND C.OFFERID IS NOT NULL
GROUP BY 1 |
| Used for tracking how many free items we’re giving away and the value of them. Often viewed as a percentage of SWS or KDS. Loyalty drag formula = $ value of redeemed items / SWS $ |
Monthly Active Users (“MAU”) Number of guests that visited the app each month | Code Block |
---|
| WITH EVENTS AS (
SELECT DATE
, _TIMHORTONS.INTERACTION.ELEMENT.NAME
, _TIMHORTONS.LOYALTY.ID AS GUEST_ID
FROM loyalty.events.adobe_app_events
WHERE EVENTTYPE IN ('app_open','app_launch')
AND _TIMHORTONS.PLATFORM IN ('app')
AND LEFT(_TIMHORTONS.LOYALTY.ID,7) = 'us-east'
AND DATE <= CURRENT_DATE )
SELECT LAST_DAY(EVENTS.DATE) AS DTE
, COUNT(DISTINCT EVENTS.GUEST_ID) AS ACTIVE_USER
FROM EVENTS
GROUP BY 1
ORDER BY 1 DESC |
| Used to track the unique number of guests who opened or launched the app per month. Limitation of the dataset is: (1) data only exists from Nov 1st, 2023, and (2) Prior to mm/dd/yyyy (TBD), dataset did not contain guests using app versions prior to 7.1.187. |
Digital Sales | Pulled using the individual queries listed above. | Consists of WL, MO&P, Loyalty Scans, 3P Delivery, Kiosk & Catering. |
Weekly Offer Redemptions | Code Block |
---|
| WITH REDEMPTION_SUMMARY AS (
WITH OFFER_REDEMPTION_TRXNS AS (
WITH TRANSACTIONS_WITH_OFFER_ID AS (
SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
CAST(WEEK_START_DT AS DATE) AS WEEK_START_DT,
DATE_FORMAT(
CAST(
UNIX_TIMESTAMP(LEFT(WEEK_START_DT, 10), 'yyyy-MM-dd') AS TIMESTAMP
),
'yyyyMMdd'
) AS WEEK_START,
CAST(PERIOD_DT AS DATE) AS PERIOD_DT,
REGISTEREDACCOUNTID,
TRANSACTIONID,
EXPLODE(APPLIEDOFFERS) AS EXPLODED_OFFERS
FROM
PRODRT.CURATED_TRANS_EVENTS_NEW
WHERE
PARTITION_DATE_KEY BETWEEN 'START DATE' AND 'END DATE'
AND REGISTEREDACCOUNTID LIKE 'us-east%'
AND COUNTRY_NM = 'CANADA'
)
SELECT
DISTINCT A.TH_FISCAL_YEAR,
A.TH_FISCAL_WEEK,
A.WEEK_START_DT,
A.PERIOD_DT,
A.REGISTEREDACCOUNTID,
A.TRANSACTIONID,
C.NAME,
C.DESCRIPTION,
A.EXPLODED_OFFERS,
1 AS VOLUME
FROM
TRANSACTIONS_WITH_OFFER_ID A
INNER JOIN DYDB.WEEKLYOFFERS B ON A.EXPLODED_OFFERS = B.OFFERID
LEFT JOIN DYDB.OFFERS C ON A.EXPLODED_OFFERS = C.OFFERID
)
SELECT
WEEK_START_DT,
A.DESCRIPTION AS OFFER_DESCRIPTION,
A.EXPLODED_OFFERS AS OFFERID,
SUM(VOLUME) AS REDEMPTION_VOLUME
FROM
OFFER_REDEMPTION_TRXNS A
GROUP BY
1,
2,
3
)
SELECT
a.WEEK_START_DT AS WKDT,
OFFER_DESCRIPTION,
OFFERID,
SUM(REDEMPTION_VOLUME)
FROM
REDEMPTION_SUMMARY A
GROUP BY 1,2,3 |
| Used to track the volume of redemptions for each offer in a given week. |
Offer Challenge | Code Block |
---|
| with TRXN_OFFER_CHALLENGES_REDEMPTIONS as (
WITH EXPLODED AS (
SELECT
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
DATE_FORMAT(
CAST(
UNIX_TIMESTAMP(LEFT(WEEK_START_DT, 10), 'yyyy-MM-dd') AS TIMESTAMP
),
'yyyyMMdd'
) AS WEEK_START_MAPPING,
CAST(PERIOD_DT AS DATE) AS PERIOD_DT,
REGISTEREDACCOUNTID,
loyaltyCustomerId,
TRANSACTIONID,
EXPLODE(APPLIEDOFFERS) AS EXPLODED_OFFERS,
REST_TYP_NM,
OPS_DIV_NM
FROM
PRODRT.CURATED_TRANS_EVENTS_NEW -- 1. Challenge duration: 26/09 to 02/10
WHERE
DATE_KEY BETWEEN '${myapplication.Offer_Start_Date}'
AND '${myapplication.Offer_End_Date}'
AND COUNTRY_NM = 'CANADA'
AND REGISTEREDACCOUNTID IS NOT NULL
AND TRANSACTIONID IS NOT NULL -- AND REST_TYP_NM = "STANDARD"
)
SELECT
DISTINCT A.TH_FISCAL_YEAR,
A.TH_FISCAL_WEEK,
A.WEEK_START_MAPPING,
A.PERIOD_DT,
A.REGISTEREDACCOUNTID,
A.loyaltyCustomerId,
A.TRANSACTIONID,
A.REST_TYP_NM,
A.OPS_DIV_NM,
B.DESCRIPTION,
1 AS REDEMPTIONS
FROM
EXPLODED AS A
LEFT JOIN DYDB.OFFERS AS B ON A.EXPLODED_OFFERS = B.OFFERID
WHERE
EXPLODED_OFFERS = '76290e2e-1783-442f-8ff6-a2b16900a34e'
),
points_issued as (
Select
*,
WEEKOFYEAR(to_date(partition_date_key, "yyyyMMdd")) AS WEEK_START,
regexp_extract(barcode, '(\\d+)|(\\d+)', 0) as lid
From
prodrt.curated_points_events as points
where
partition_date_key BETWEEN '${myapplication.Offer_Start_Date}'
AND '${myapplication.Offer_End_Date}'
and tag = 'PRODUCT_CHALLENGED_COMPLETED'
),
completed as(
Select
a.TH_FISCAL_YEAR as TH_FISCAL_YEAR,
a.TH_FISCAL_WEEK as TH_FISCAL_WEEK,
a.WEEK_START_MAPPING as WEEK_START_MAPPING,
a.PERIOD_DT as PERIOD_DT,
DATE_FORMAT(
CAST(
UNIX_TIMESTAMP(LEFT(PERIOD_DT, 10), 'yyyy-MM-dd') AS TIMESTAMP
),
'yyyyMMdd'
) as transaction_dt,
a.REGISTEREDACCOUNTID as REGISTEREDACCOUNTID,
a.loyaltyCustomerId as loyaltyCustomerId,
a.TRANSACTIONID as TRANSACTIONID,
a.REST_TYP_NM as REST_TYP_NM,
a.OPS_DIV_NM as OPS_DIV_NM,
a.DESCRIPTION as DESCRIPTION,
a.REDEMPTIONS as REDEMPTIONS,
b.transactionID as completion_transactionID,
b.pointsEarned as pointsEarned,
b.restaurant as restaurant,
b.partition_date_key as offer_completion_dt,
b.WEEK_START as offer_completion_week,
b.lid as lid
from
TRXN_OFFER_CHALLENGES_REDEMPTIONS a
left join points_issued b on a.loyaltyCustomerId = b.lid
and b.WEEK_START = a.TH_FISCAL_WEEK
)
Select
TH_FISCAL_YEAR,
TH_FISCAL_WEEK,
WEEK_START_MAPPING,
REGISTEREDACCOUNTID,
loyaltyCustomerId,
offer_completion_week,
count(
distinct(
case
when offer_completion_dt is not NULL
and transaction_dt <= offer_completion_dt then TRANSACTIONID
end
)
) as trnx_before_completion,
count(distinct(TRANSACTIONID)) as total_trnx,
count(
distinct (
case
when lid is not Null then lid
end
)
) as completed
from
completed
group by 1, 2, 3, 4, 5, 6 |
| Count of guests who completed a specific Offer Challenge |
Games NHL Hockey Challenge & Tims Word Challenge | Code Block |
---|
| SELECT YEAR(TIMESTAMP) AS YR
, MONTH(TIMESTAMP) AS MTH
, COUNT(DISTINCT GUESTS) AS GUESTS FROM (
-- WORD CHALLENEGE PLAYERS
SELECT DISTINCT TIMESTAMP, _TIMHORTONS.LOYALTY.ID AS GUESTS
FROM loyalty.events.adobe_app_events
WHERE TRIM(_TIMHORTONS.INTERACTION.PATH) IN ('/timswordchallenge')
AND TRIM(_TIMHORTONS.INTERACTION.ELEMENT.NAME) = 'play'
AND _TIMHORTONS.PLATFORM IN ('app')
AND LEFT(_TIMHORTONS.LOYALTY.ID,7) = 'us-east'
AND DATE >= DATE '2023-11-01'
UNION
-- HOCKEY PLAYERS
SELECT DISTINCT TIMESTAMP,_TIMHORTONS.LOYALTY.ID AS GUESTS
FROM loyalty.events.adobe_app_events
WHERE TRIM(_TIMHORTONS.INTERACTION.PATH) = '/hockey_challenge'
AND TRIM(_TIMHORTONS.INTERACTION.ELEMENT.NAME) IN ('submit_picks')
AND _TIMHORTONS.PLATFORM IN ('app')
AND LEFT(_TIMHORTONS.LOYALTY.ID,7) = 'us-east'
AND DATE >= DATE '2023-11-01'
)
GROUP BY 1,2
ORDER BY 1 DESC, 2 |
| Count of guests who played Games (NHL Hockey Challenge and Tims Word Challenge). Limitation: Data only available from Nov 1, 2023. |
Total Sales and Ticket Count by Tender Type | Code Block |
---|
| WITH LOYALTY_TENDERS AS
(
WITH TENDERS AS
(
SELECT
REPLACE(UPPER(TRIM(TENDER_NAME)), '.', '') AS TENDER_NAME,
TICKET_ID
FROM loyalty.tlog.tlog_sale_ticket_tenders
WHERE PARTITION_DATE_KEY BETWEEN 20230101 AND 20230731
AND LEFT(REST_NO,2) = 10
),
LOYALTY AS
(
SELECT
TICKET_ID AS TICKET_ID
FROM STG.DERIVED_MASTER_TABLE_NEW
WHERE PARTITION_DATE_KEY BETWEEN 20230101 AND 20230731
AND COUNTRY_NM = 'CANADA'
AND IS_PASS_THROUGH = 0
AND LEFT(REGISTERED_ACCOUNT_ID,7) = 'us-east'
)
SELECT
A.*
FROM TENDERS A
INNER JOIN LOYALTY B
ON A.TICKET_ID = B.TICKET_ID
)
SELECT
CASE
WHEN UPPER(TENDER_NAME) IN ('CASH', 'COMPTANT', 'EFECTIVO', 'US CASH', 'CANADIAN CASH', 'CDN CASH', 'ROUNDED CASH', 'ROUNDED COMPTANT') THEN 'CASH'
WHEN UPPER(TENDER_NAME) IN ('DEBIT CARD', 'DEBIT', 'CARTE DEBIT', 'DEBITO', 'DÉBIT', 'DO DEBIT') THEN 'DEBIT'
WHEN UPPER(TENDER_NAME) IN ('VISA', 'MASTERCARD', 'MASTER CARD', 'AMEX', 'AMERICAN EXPRESS', 'CREDIT CARD', 'CREDIT CARDS', 'DISCOVER', 'M/C', 'DISCOVER CARD', 'DIGITAL AMEX', 'DIGITAL DISCOVER', 'DIGITAL MASTER CARD', 'DIGITAL MASTERCARD', 'DIGITAL AMERICAN EXPRESS', 'DIGITAL VISA', 'DO VISA', 'DO MASTERCARD') THEN 'CREDIT'
WHEN UPPER(TENDER_NAME) IN ('TIM CARD', 'DIGITAL TIM CARD', 'CARTE TIM', 'MOBILE TIM CARD', 'DIGITAL CARTE TIM', 'TIM CARTE', 'TIMS GIFT CARD', 'DIGITAL TIMS GIFT CARD', 'CARTE-CADEAU TIM', 'DIGITAL CARTE-CADEAU TIM') THEN 'TIMCARD'
WHEN UPPER(TENDER_NAME) LIKE '%SKIP%' THEN 'SKIP'
WHEN UPPER(TENDER_NAME) LIKE '%UBER%' THEN 'UBER'
WHEN UPPER(TENDER_NAME) LIKE '%DOOR%' THEN 'DOORDASH'
WHEN UPPER(TENDER_NAME) IN ('SCAN AND PAY VISA', 'SCAN AND PAY MASTERCARD', 'SCAN AND PAY TIMCARD', 'SCAN AND PAY AMEX', 'SCAN AND PAY DISCOVER', 'SCAN AND PAY TIM CARD', 'NUMERISEZ ET PAYEZ – VISA', 'SCANTOPAY', 'NUMERISEZ ET PAYEZ – MASTERCARD', 'NUMERISEZ ET PAYEZ – CARTE TIM', 'NUMÉRISEZ ET PAYEZ – VISA', 'NUMÉRISEZ ET PAYEZ – MASTERCARD', 'NUMÉRISEZ ET PAYEZ – CARTE TIM', 'NUMERISEZ ET PAYEZ – AMEX', 'NUMÉRISEZ ET PAYEZ – AMEX', 'SCAN AND PAY TIMS GIFT CARD') THEN 'SCANANDPAY'
WHEN UPPER(TENDER_NAME) IN ('HST', 'HST1', 'TVQ', 'TPS', 'GST', 'TAX', 'PST', 'HST TAXABLE SALES', 'SALES TAX' 'HST 1', 'H.S.T.1', 'H.S.T', 'HST 13% TAXABLE SALES', 'GST TAXABLE SALES', 'TAX 1', 'HST 1', 'GST# 75696 6891 RT0001', 'HST # 897258141', 'HST5%', 'HST8%', 'QST', 'SALES TAX', 'MEAL PLAN CARD - PREPAID TAX', 'CARTE PLAN REPAS - TAX PREPAYEE', 'GST # 121071781RT0001', 'TVH', 'TVH1', 'VAF', 'H.S.T.') THEN 'TAX'
WHEN ((UPPER(TENDER_NAME) LIKE '%ROUND%') OR (UPPER(TENDER_NAME) LIKE '%ARRONDIS %')) THEN 'ROUND UP'
ELSE 'OTHER'
END AS TENDER,
COUNT(DISTINCT TICKET_ID) AS TRXNS
FROM LOYALTY_TENDERS
GROUP BY 1 |
| Total sales $ and ticket count organized by tender type (debit, credit, cash, Tims Card, tax) for a given restaurant |