refactor(transform): conform geographic dimension hierarchy via city_slug

Propagates the conformed city key (city_slug) from dim_venues through the
full pricing pipeline, eliminating 3 fragile LOWER(TRIM(...)) fuzzy string
joins with deterministic key joins.

Changes (cascading, task-by-task):
- dim_venues: add city_slug computed column (REGEXP_REPLACE slug derivation)
- dim_venue_capacity: join foundation.dim_venues instead of stg_playtomic_venues;
  carry city_slug alongside country_code/city
- fct_daily_availability: carry city_slug from dim_venue_capacity
- venue_pricing_benchmarks: carry city_slug from fct_daily_availability;
  add to venue_stats GROUP BY and final SELECT/GROUP BY
- city_market_profile: join vpb on city_slug = city_slug (was LOWER(TRIM))
- planner_defaults: add city_slug to city_benchmarks CTE; join on city_slug
- pseo_city_pricing: join city_market_profile on city_slug (was LOWER(TRIM))
- pipeline_routes._DAG: dim_venue_capacity now depends on dim_venues, not stg_playtomic_venues

Result: dim_venues.city_slug → dim_cities.(country_code, city_slug) forms a
fully conformed geographic hierarchy with no fuzzy string comparisons.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
Deeman
2026-02-27 13:23:03 +01:00
parent 160c2c6f7b
commit 4e82907a70
8 changed files with 14 additions and 7 deletions

View File

@@ -34,6 +34,7 @@ SELECT
v.tenant_id,
v.country_code,
v.city,
v.city_slug,
cc.active_court_count,
ROUND(wh.hours_open_per_week, 1) AS hours_open_per_week,
ROUND(wh.avg_hours_open_per_day, 1) AS avg_hours_open_per_day,
@@ -42,6 +43,6 @@ SELECT
ROUND(cc.active_court_count * wh.avg_hours_open_per_day, 1) AS capacity_court_hours_per_day,
-- Total bookable court-hours per week
ROUND(cc.active_court_count * wh.hours_open_per_week, 1) AS capacity_court_hours_per_week
FROM staging.stg_playtomic_venues v
FROM foundation.dim_venues v
JOIN court_counts cc ON v.tenant_id = cc.tenant_id
JOIN weekly_hours wh ON v.tenant_id = wh.tenant_id

View File

@@ -98,6 +98,8 @@ SELECT
court_count,
indoor_court_count,
outdoor_court_count,
-- Conformed city key: enables deterministic joins to dim_cities / venue_pricing_benchmarks
LOWER(REGEXP_REPLACE(LOWER(COALESCE(city, '')), '[^a-z0-9]+', '-')) AS city_slug,
extracted_date
FROM ranked
QUALIFY ROW_NUMBER() OVER (

View File

@@ -44,6 +44,7 @@ SELECT
sa.tenant_id,
cap.country_code,
cap.city,
cap.city_slug,
cap.active_court_count,
cap.capacity_court_hours_per_day,
sa.available_slot_count,

View File

@@ -57,7 +57,7 @@ WITH base AS (
FROM foundation.dim_cities c
LEFT JOIN serving.venue_pricing_benchmarks vpb
ON c.country_code = vpb.country_code
AND LOWER(TRIM(c.city_name)) = LOWER(TRIM(vpb.city))
AND c.city_slug = vpb.city_slug
WHERE c.padel_venue_count > 0
),
scored AS (

View File

@@ -21,6 +21,7 @@ city_benchmarks AS (
SELECT
country_code,
city,
city_slug,
median_peak_rate,
median_offpeak_rate,
median_occupancy_rate,
@@ -128,7 +129,7 @@ SELECT
FROM city_profiles cp
LEFT JOIN city_benchmarks cb
ON cp.country_code = cb.country_code
AND LOWER(TRIM(cp.city_name)) = LOWER(TRIM(cb.city))
AND cp.city_slug = cb.city_slug
LEFT JOIN country_benchmarks ctb
ON cp.country_code = ctb.country_code
LEFT JOIN hardcoded_fallbacks hf

View File

@@ -41,6 +41,6 @@ FROM serving.venue_pricing_benchmarks vpb
-- Join city_market_profile to get the canonical city_slug and country metadata
INNER JOIN serving.city_market_profile c
ON vpb.country_code = c.country_code
AND LOWER(TRIM(vpb.city)) = LOWER(TRIM(c.city_name))
AND vpb.city_slug = c.city_slug
-- Only cities with enough venues for meaningful pricing statistics
WHERE vpb.venue_count >= 2

View File

@@ -17,6 +17,7 @@ WITH venue_stats AS (
da.tenant_id,
da.country_code,
da.city,
da.city_slug,
da.price_currency,
AVG(da.occupancy_rate) AS avg_occupancy_rate,
MEDIAN(da.median_price) AS median_hourly_rate,
@@ -29,12 +30,13 @@ WITH venue_stats AS (
WHERE TRY_CAST(da.snapshot_date AS DATE) >= CURRENT_DATE - INTERVAL '30 days'
AND da.occupancy_rate IS NOT NULL
AND da.occupancy_rate BETWEEN 0 AND 1.5
GROUP BY da.tenant_id, da.country_code, da.city, da.price_currency
GROUP BY da.tenant_id, da.country_code, da.city, da.city_slug, da.price_currency
HAVING COUNT(DISTINCT da.snapshot_date) >= 3
)
SELECT
country_code,
city,
city_slug,
price_currency,
COUNT(*) AS venue_count,
-- Pricing benchmarks
@@ -54,4 +56,4 @@ SELECT
SUM(days_observed) AS total_venue_days_observed,
CURRENT_DATE AS refreshed_date
FROM venue_stats
GROUP BY country_code, city, price_currency
GROUP BY country_code, city, city_slug, price_currency