40. Product Sales and Inventory Data
Beginner Mode

Scenario

You work for a food and beverage company and have three tables containing product details, sales records, and inventory stock levels across warehouses.

Task

Write a Snowflake SQL query that:

  1. Aggregates {{ ref("sales") }} to compute total_quantity (sum of quantity) and total_revenue (sum of revenue) per product
  2. Aggregates {{ ref("inventory") }} to compute total_stock (sum of stock) per product
  3. Joins both aggregations to {{ ref("products") }} using LEFT JOIN so all products appear even if they have no sales or inventory records
  4. Replaces any NULL values in total_quantity, total_revenue, and total_stock with 0
  5. Returns columns: product_id, name, category, total_quantity, total_revenue, total_stock

Schema

products

Column Type Description
product_id Integer Unique product identifier
name String Product name
category String Product category

sales

Column Type Description
sale_id Integer Unique sale identifier
product_id Integer Product that was sold
quantity Integer Number of units sold
revenue Integer Revenue from the sale

inventory

Column Type Description
product_id Integer Product identifier
stock Integer Units in stock
warehouse String Warehouse location

Example

products:

product_id name category
1 Green Tea Beverages
2 Trail Mix Snacks
3 Sparkling Water Beverages
4 Granola Bar Snacks
5 Mango Smoothie Beverages

sales:

sale_id product_id quantity revenue
1 1 12 24
2 1 8 16
3 2 5 15
4 3 20 40
5 4 3 9

inventory:

product_id stock warehouse
1 60 WarehouseA
2 45 WarehouseA
3 30 WarehouseB
4 25 WarehouseA
5 15 WarehouseB

Expected Output:

product_id name category total_quantity total_revenue total_stock
1 Green Tea Beverages 20 40 60
2 Trail Mix Snacks 5 15 45
3 Sparkling Water Beverages 20 40 30
4 Granola Bar Snacks 3 9 25
5 Mango Smoothie Beverages 0 0 15

Note: Product 5 (Mango Smoothie) has no sales records, so total_quantity and total_revenue are 0 instead of NULL. All products appear in the output regardless of whether they have sales or inventory records.

Quick Solution

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Essential

SQL 0/33
Spark 0/20
Snowflake 0/22
Python 0/24
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