Project Overview
I have worked on analyzing a dataset of over 20,000 sales records from an Amazon-like e-commerce platform. This project involves extensive querying of customer behavior, product performance, and sales trends using PostgreSQL. Through this project, I have tackled various SQL problems, including revenue analysis, customer segmentation, and inventory management.
The project also focuses on data cleaning, handling null values, and solving real-world business problems using structured queries.
An ERD diagram is included to visually represent the database schema and relationships between tables.
Project Overview
Database Setup & Design
Schema Structure
CREATE TABLE category
(
category_id INT PRIMARY KEY,
category_name VARCHAR(20)
);
-- customers TABLE
CREATE TABLE customers
(
customer_id INT PRIMARY KEY,
first_name VARCHAR(20),
last_name VARCHAR(20),
state VARCHAR(20),
address VARCHAR(5) DEFAULT ('xxxx')
);
-- sellers TABLE
CREATE TABLE sellers
(
seller_id INT PRIMARY KEY,
seller_name VARCHAR(25),
origin VARCHAR(15)
);
-- products table
CREATE TABLE products
(
product_id INT PRIMARY KEY,
product_name VARCHAR(50),
price FLOAT,
cogs FLOAT,
category_id INT, -- FK
CONSTRAINT product_fk_category FOREIGN KEY(category_id) REFERENCES category(category_id)
);
-- orders
CREATE TABLE orders
(
order_id INT PRIMARY KEY,
order_date DATE,
customer_id INT, -- FK
seller_id INT, -- FK
order_status VARCHAR(15),
CONSTRAINT orders_fk_customers FOREIGN KEY (customer_id) REFERENCES customers(customer_id),
CONSTRAINT orders_fk_sellers FOREIGN KEY (seller_id) REFERENCES sellers(seller_id)
);
CREATE TABLE order_items
(
order_item_id INT PRIMARY KEY,
order_id INT, -- FK
product_id INT, -- FK
quantity INT,
price_per_unit FLOAT,
CONSTRAINT order_items_fk_orders FOREIGN KEY (order_id) REFERENCES orders(order_id),
CONSTRAINT order_items_fk_products FOREIGN KEY (product_id) REFERENCES products(product_id)
);
-- payment TABLE
CREATE TABLE payments
(
payment_id
INT PRIMARY KEY,
order_id INT, -- FK
payment_date DATE,
payment_status VARCHAR(20),
CONSTRAINT payments_fk_orders FOREIGN KEY (order_id) REFERENCES orders(order_id)
);
CREATE TABLE shippings
(
shipping_id INT PRIMARY KEY,
order_id INT, -- FK
shipping_date DATE,
return_date DATE,
shipping_providers VARCHAR(15),
delivery_status VARCHAR(15),
CONSTRAINT shippings_fk_orders FOREIGN KEY (order_id) REFERENCES orders(order_id)
);
CREATE TABLE inventory
(
inventory_id INT PRIMARY KEY,
product_id INT, -- FK
stock INT,
warehouse_id INT,
last_stock_date DATE,
CONSTRAINT inventory_fk_products FOREIGN KEY (product_id) REFERENCES products(product_id)
);
Task: Data Cleaning
I cleaned the dataset by:
- Removing duplicates: Duplicates in the customer and order tables were identified and removed.
- Handling missing values: Null values in critical fields (e.g., customer address, payment status) were either filled with default values or handled using appropriate methods.
Handling Null Values
Null values were handled based on their context:
- Customer addresses: Missing addresses were assigned default placeholder values.
- Payment statuses: Orders with null payment statuses were categorized as “Pending.”
- Shipping information: Null return dates were left as is, as not all shipments are returned.
Objective
The primary objective of this project is to showcase SQL proficiency through complex queries that address real-world e-commerce business challenges. The analysis covers various aspects of e-commerce operations, including:
- Customer behavior
- Sales trends
- Inventory management
- Payment and shipping analysis
- Forecasting and product performance
Identifying Business Problems
Key business problems identified:
- Low product availability due to inconsistent restocking.
- High return rates for specific product categories.
- Significant delays in shipments and inconsistencies in delivery times.
- High customer acquisition costs with a low customer retention rate.
Solving Business Problems
Solutions Implemented:
- Top Selling Products Query the top 10 products by total sales value. Challenge: Include product name, total quantity sold, and total sales value.
SELECT
oi.product_id,
p.product_name,
SUM(oi.total_sale) as total_sale,
COUNT(o.order_id) as total_orders
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
JOIN
products as p
ON p.product_id = oi.product_id
GROUP BY 1, 2
ORDER BY 3 DESC
LIMIT 10
- Revenue by Category Calculate total revenue generated by each product category. Challenge: Include the percentage contribution of each category to total revenue.
SELECT
p.category_id,
c.category_name,
SUM(oi.total_sale) as total_sale,
SUM(oi.total_sale)/
(SELECT SUM(total_sale) FROM order_items)
* 100
as contribution
FROM order_items as oi
JOIN
products as p
ON p.product_id = oi.product_id
LEFT JOIN category as c
ON c.category_id = p.category_id
GROUP BY 1, 2
ORDER BY 3 DESC
- Average Order Value (AOV) Compute the average order value for each customer. Challenge: Include only customers with more than 5 orders.
SELECT
c.customer_id,
CONCAT(c.first_name, ' ', c.last_name) as full_name,
SUM(total_sale)/COUNT(o.order_id) as AOV,
COUNT(o.order_id) as total_orders --- filter
FROM orders as o
JOIN
customers as c
ON c.customer_id = o.customer_id
JOIN
order_items as oi
ON oi.order_id = o.order_id
GROUP BY 1, 2
HAVING COUNT(o.order_id) > 5
- Monthly Sales Trend Query monthly total sales over the past year. Challenge: Display the sales trend, grouping by month, return current_month sale, last month sale!
SELECT
year,
month,
total_sale as current_month_sale,
LAG(total_sale, 1) OVER(ORDER BY year, month) as last_month_sale
FROM ---
(
SELECT
EXTRACT(MONTH FROM o.order_date) as month,
EXTRACT(YEAR FROM o.order_date) as year,
ROUND(
SUM(oi.total_sale::numeric)
,2) as total_sale
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
WHERE o.order_date >= CURRENT_DATE - INTERVAL '1 year'
GROUP BY 1, 2
ORDER BY year, month
) as t1
- Customers with No Purchases Find customers who have registered but never placed an order. Challenge: List customer details and the time since their registration.
Approach 1
SELECT *
-- reg_date - CURRENT_DATE
FROM customers
WHERE customer_id NOT IN (SELECT
DISTINCT customer_id
FROM orders
);
-- Approach 2
SELECT *
FROM customers as c
LEFT JOIN
orders as o
ON o.customer_id = c.customer_id
WHERE o.customer_id IS NULL
- Least-Selling Categories by State Identify the least-selling product category for each state. Challenge: Include the total sales for that category within each state.
WITH ranking_table
AS
(
SELECT
c.state,
cat.category_name,
SUM(oi.total_sale) as total_sale,
RANK() OVER(PARTITION BY c.state ORDER BY SUM(oi.total_sale) ASC) as rank
FROM orders as o
JOIN
customers as c
ON o.customer_id = c.customer_id
JOIN
order_items as oi
ON o.order_id = oi. order_id
JOIN
products as p
ON oi.product_id = p.product_id
JOIN
category as cat
ON cat.category_id = p.category_id
GROUP BY 1, 2
)
SELECT
*
FROM ranking_table
WHERE rank = 1
- Customer Lifetime Value (CLTV) Calculate the total value of orders placed by each customer over their lifetime. Challenge: Rank customers based on their CLTV.
SELECT
c.customer_id,
CONCAT(c.first_name, ' ', c.last_name) as full_name,
SUM(total_sale) as CLTV,
DENSE_RANK() OVER( ORDER BY SUM(total_sale) DESC) as cx_ranking
FROM orders as o
JOIN
customers as c
ON c.customer_id = o.customer_id
JOIN
order_items as oi
ON oi.order_id = o.order_id
GROUP BY 1, 2
- Inventory Stock Alerts Query products with stock levels below a certain threshold (e.g., less than 10 units). Challenge: Include last restock date and warehouse information.
SELECT
i.inventory_id,
p.product_name,
i.stock as current_stock_left,
i.last_stock_date,
i.warehouse_id
FROM inventory as i
join
products as p
ON p.product_id = i.product_id
WHERE stock < 10
- Shipping Delays Identify orders where the shipping date is later than 3 days after the order date. Challenge: Include customer, order details, and delivery provider.
SELECT
c.*,
o.*,
s.shipping_providers,
s.shipping_date - o.order_date as days_took_to_ship
FROM orders as o
JOIN
customers as c
ON c.customer_id = o.customer_id
JOIN
shippings as s
ON o.order_id = s.order_id
WHERE s.shipping_date - o.order_date > 3
- Payment Success Rate Calculate the percentage of successful payments across all orders. Challenge: Include breakdowns by payment status (e.g., failed, pending).
SELECT
p.payment_status,
COUNT(*) as total_cnt,
COUNT(*)::numeric/(SELECT COUNT(*) FROM payments)::numeric * 100
FROM orders as o
JOIN
payments as p
ON o.order_id = p.order_id
GROUP BY 1
- Top Performing Sellers Find the top 5 sellers based on total sales value. Challenge: Include both successful and failed orders, and display their percentage of successful orders.
WITH top_sellers
AS
(SELECT
s.seller_id,
s.seller_name,
SUM(oi.total_sale) as total_sale
FROM orders as o
JOIN
sellers as s
ON o.seller_id = s.seller_id
JOIN
order_items as oi
ON oi.order_id = o.order_id
GROUP BY 1, 2
ORDER BY 3 DESC
LIMIT 5
),
sellers_reports
AS
(SELECT
o.seller_id,
ts.seller_name,
o.order_status,
COUNT(*) as total_orders
FROM orders as o
JOIN
top_sellers as ts
ON ts.seller_id = o.seller_id
WHERE
o.order_status NOT IN ('Inprogress', 'Returned')
GROUP BY 1, 2, 3
)
SELECT
seller_id,
seller_name,
SUM(CASE WHEN order_status = 'Completed' THEN total_orders ELSE 0 END) as Completed_orders,
SUM(CASE WHEN order_status = 'Cancelled' THEN total_orders ELSE 0 END) as Cancelled_orders,
SUM(total_orders) as total_orders,
SUM(CASE WHEN order_status = 'Completed' THEN total_orders ELSE 0 END)::numeric/
SUM(total_orders)::numeric * 100 as successful_orders_percentage
FROM sellers_reports
GROUP BY 1, 2
- Product Profit Margin Calculate the profit margin for each product (difference between price and cost of goods sold). Challenge: Rank products by their profit margin, showing highest to lowest. */
SELECT
product_id,
product_name,
profit_margin,
DENSE_RANK() OVER( ORDER BY profit_margin DESC) as product_ranking
FROM
(SELECT
p.product_id,
p.product_name,
-- SUM(total_sale - (p.cogs * oi.quantity)) as profit,
SUM(total_sale - (p.cogs * oi.quantity))/sum(total_sale) * 100 as profit_margin
FROM order_items as oi
JOIN
products as p
ON oi.product_id = p.product_id
GROUP BY 1, 2
) as t1
- Most Returned Products Query the top 10 products by the number of returns. Challenge: Display the return rate as a percentage of total units sold for each product.
SELECT
p.product_id,
p.product_name,
COUNT(*) as total_unit_sold,
SUM(CASE WHEN o.order_status = 'Returned' THEN 1 ELSE 0 END) as total_returned,
SUM(CASE WHEN o.order_status = 'Returned' THEN 1 ELSE 0 END)::numeric/COUNT(*)::numeric * 100 as return_percentage
FROM order_items as oi
JOIN
products as p
ON oi.product_id = p.product_id
JOIN orders as o
ON o.order_id = oi.order_id
GROUP BY 1, 2
ORDER BY 5 DESC
- Inactive Sellers Identify sellers who haven’t made any sales in the last 6 months. Challenge: Show the last sale date and total sales from those sellers.
WITH cte1 -- as these sellers has not done any sale in last 6 month
AS
(SELECT * FROM sellers
WHERE seller_id NOT IN (SELECT seller_id FROM orders WHERE order_date >= CURRENT_DATE - INTERVAL '6 month')
)
SELECT
o.seller_id,
MAX(o.order_date) as last_sale_date,
MAX(oi.total_sale) as last_sale_amount
FROM orders as o
JOIN
cte1
ON cte1.seller_id = o.seller_id
JOIN order_items as oi
ON o.order_id = oi.order_id
GROUP BY 1
- IDENTITY customers into returning or new if the customer has done more than 5 return categorize them as returning otherwise new Challenge: List customers id, name, total orders, total returns
SELECT
c_full_name as customers,
total_orders,
total_return,
CASE
WHEN total_return > 5 THEN 'Returning_customers' ELSE 'New'
END as cx_category
FROM
(SELECT
CONCAT(c.first_name, ' ', c.last_name) as c_full_name,
COUNT(o.order_id) as total_orders,
SUM(CASE WHEN o.order_status = 'Returned' THEN 1 ELSE 0 END) as total_return
FROM orders as o
JOIN
customers as c
ON c.customer_id = o.customer_id
JOIN
order_items as oi
ON oi.order_id = o.order_id
GROUP BY 1)
- Top 5 Customers by Orders in Each State Identify the top 5 customers with the highest number of orders for each state. Challenge: Include the number of orders and total sales for each customer.
SELECT * FROM
(SELECT
c.state,
CONCAT(c.first_name, ' ', c.last_name) as customers,
COUNT(o.order_id) as total_orders,
SUM(total_sale) as total_sale,
DENSE_RANK() OVER(PARTITION BY c.state ORDER BY COUNT(o.order_id) DESC) as rank
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
JOIN
customers as c
ON
c.customer_id = o.customer_id
GROUP BY 1, 2
) as t1
WHERE rank <=5
- Revenue by Shipping Provider Calculate the total revenue handled by each shipping provider. Challenge: Include the total number of orders handled and the average delivery time for each provider.
SELECT
s.shipping_providers,
COUNT(o.order_id) as order_handled,
SUM(oi.total_sale) as total_sale,
COALESCE(AVG(s.return_date - s.shipping_date), 0) as average_days
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
JOIN
shippings as s
ON
s.order_id = o.order_id
GROUP BY 1
- Top 10 product with highest decreasing revenue ratio compare to last year(2022) and current_year(2023) Challenge: Return product_id, product_name, category_name, 2022 revenue and 2023 revenue decrease ratio at end Round the result Note: Decrease ratio = cr-ls/ls* 100 (cs = current_year ls=last_year)
WITH last_year_sale
as
(
SELECT
p.product_id,
p.product_name,
SUM(oi.total_sale) as revenue
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
JOIN
products as p
ON
p.product_id = oi.product_id
WHERE EXTRACT(YEAR FROM o.order_date) = 2022
GROUP BY 1, 2
),
current_year_sale
AS
(
SELECT
p.product_id,
p.product_name,
SUM(oi.total_sale) as revenue
FROM orders as o
JOIN
order_items as oi
ON oi.order_id = o.order_id
JOIN
products as p
ON
p.product_id = oi.product_id
WHERE EXTRACT(YEAR FROM o.order_date) = 2023
GROUP BY 1, 2
)
SELECT
cs.product_id,
ls.revenue as last_year_revenue,
cs.revenue as current_year_revenue,
ls.revenue - cs.revenue as rev_diff,
ROUND((cs.revenue - ls.revenue)::numeric/ls.revenue::numeric * 100, 2) as reveneue_dec_ratio
FROM last_year_sale as ls
JOIN
current_year_sale as cs
ON ls.product_id = cs.product_id
WHERE
ls.revenue > cs.revenue
ORDER BY 5 DESC
LIMIT 10
- Final Task: Stored Procedure Create a stored procedure that, when a product is sold, performs the following actions: Inserts a new sales record into the orders and order_items tables. Updates the inventory table to reduce the stock based on the product and quantity purchased. The procedure should ensure that the stock is adjusted immediately after recording the sale.
CREATE OR REPLACE PROCEDURE add_sales
(
p_order_id INT,
p_customer_id INT,
p_seller_id INT,
p_order_item_id INT,
p_product_id INT,
p_quantity INT
)
LANGUAGE plpgsql
AS $$
DECLARE
-- all variable
v_count INT;
v_price FLOAT;
v_product VARCHAR(50);
BEGIN
-- Fetching product name and price based p id entered
SELECT
price, product_name
INTO
v_price, v_product
FROM products
WHERE product_id = p_product_id;
-- checking stock and product availability in inventory
SELECT
COUNT(*)
INTO
v_count
FROM inventory
WHERE
product_id = p_product_id
AND
stock >= p_quantity;
IF v_count > 0 THEN
-- add into orders and order_items table
-- update inventory
INSERT INTO orders(order_id, order_date, customer_id, seller_id)
VALUES
(p_order_id, CURRENT_DATE, p_customer_id, p_seller_id);
-- adding into order list
INSERT INTO order_items(order_item_id, order_id, product_id, quantity, price_per_unit, total_sale)
VALUES
(p_order_item_id, p_order_id, p_product_id, p_quantity, v_price, v_price*p_quantity);
--updating inventory
UPDATE inventory
SET stock = stock - p_quantity
WHERE product_id = p_product_id;
RAISE NOTICE 'Thank you product: % sale has been added also inventory stock updates',v_product;
ELSE
RAISE NOTICE 'Thank you for for your info the product: % is not available', v_product;
END IF;
END;
$$
Testing Store Procedure call add_sales ( 25005, 2, 5, 25004, 1, 14 );
Learning Outcomes
This project enabled me to:
- Design and implement a normalized database schema.
- Clean and preprocess real-world datasets for analysis.
- Use advanced SQL techniques, including window functions, subqueries, and joins.
- Conduct in-depth business analysis using SQL.
- Optimize query performance and handle large datasets efficiently.
Conclusion
This advanced SQL project successfully demonstrates my ability to solve real-world e-commerce problems using structured queries. From improving customer retention to optimizing inventory and logistics, the project provides valuable insights into operational challenges and solutions.
By completing this project, I have gained a deeper understanding of how SQL can be used to tackle complex data problems and drive business decision-making.