Write SQL and Python, run instantly in your browser, and track your progress.
You are a Sales Analyst at Amazon. Sales leadership wants to review recent order activity to understand purchasing trends and identify high-value customers.
Your task is to provide a list of orders from the last 30 days, excluding canceled orders. Include the order details and total amount, sorted by the most recent order time first.
| Column Name | Type |
|---|---|
| order_id | INTEGER |
| order_number | TEXT |
| customer_id | INTEGER |
You are a Sales Analyst at Amazon. Sales leadership wants to review recent order activity to understand purchasing trends and identify high-value customers.
Your task is to provide a list of orders from the last 30 days, excluding canceled orders. Include the order details and total amount, sorted by the most recent order time first.
| Column Name | Type |
|---|---|
| order_id | INTEGER |
| order_number | TEXT |
| customer_id | INTEGER |
| order_datetime |
| order_datetime |
| TEXT |
| TEXT |
| status | TEXT |
| status | TEXT |
| fulfillment_type | TEXT |
| fulfillment_type | TEXT |
| ship_city | TEXT |
| ship_city | TEXT |
| ship_state | TEXT |
| ship_state | TEXT |
| ship_country | TEXT |
| ship_country | TEXT |
| shipping_service_level | TEXT |
| shipping_service_level | TEXT |
| subtotal | REAL |
| subtotal | REAL |
| shipping_fee | REAL |
| shipping_fee | REAL |
| tax | REAL |
| tax | REAL |
| discount | REAL |
| discount | REAL |
| total_amount | REAL |
| total_amount | REAL |
| payment_status | TEXT |
| payment_status | TEXT |
| created_at | TEXT |
| created_at | TEXT |
| order_id | order_number | customer_id | order_datetime | status | fulfillment_type | ship_city | ship_state | ship_country | shipping_service_level | subtotal | shipping_fee | tax | discount | total_amount |
|---|
| order_id | order_number | customer_id | order_datetime | status | fulfillment_type | ship_city | ship_state | ship_country | shipping_service_level | subtotal | shipping_fee | tax | discount | total_amount |
|---|
| order_id | order_number | customer_id | order_datetime | status | total_amount |
|---|---|---|---|---|---|
| 35 | ORD-10035 | 36 | 2025-08-31 15:38:05 | shipped | 105.78 |
| 54 | ORD-10054 | 6 | 2025-08-25 03:46:13 | shipped | 118.76 |
| 15 | ORD-10015 |
| order_id | order_number | customer_id | order_datetime | status | total_amount |
|---|---|---|---|---|---|
| 35 | ORD-10035 | 36 | 2025-08-31 15:38:05 | shipped | 105.78 |
| 54 | ORD-10054 | 6 | 2025-08-25 03:46:13 | shipped | 118.76 |
| 15 | ORD-10015 |
7 rows returned. Non-canceled orders from the last 30 days sorted by most recent order time.
7 rows returned. Non-canceled orders from the last 30 days sorted by most recent order time.
1. Output Columns:
2. Filtering:
3. Ordering:
1. Output Columns:
2. Filtering:
3. Ordering:
| payment_status |
|---|
| payment_status |
|---|
| created_at |
|---|
| created_at |
|---|
| 1 | ORD-10001 | 46 | 2025-08-20 07:01:34 | shipped | pickup | pickup | 50.96 | 0.0 | 4.36 | 0.0 | 55.32 | captured | 2025-08-20 07:01:34 | |||
| 2 | ORD-10002 | 19 | 2025-02-24 04:56:03 | delivered | ship |
| 1 | ORD-10001 | 46 | 2025-08-20 07:01:34 | shipped | pickup | pickup | 50.96 | 0.0 | 4.36 | 0.0 | 55.32 | captured | 2025-08-20 07:01:34 | |||
| 2 | ORD-10002 | 19 | 2025-02-24 04:56:03 | delivered | ship |
| 44 |
| 44 |
| 2025-08-21 08:37:53 |
| 2025-08-21 08:37:53 |
| delivered |
| delivered |
| 131.01 |
| 131.01 |
| 1 | ORD-10001 | 46 | 2025-08-20 07:01:34 | shipped | 55.32 |
| 1 | ORD-10001 | 46 | 2025-08-20 07:01:34 | shipped | 55.32 |
| 27 | ORD-10027 | 19 | 2025-08-13 03:48:48 | shipped | 216.42 |
| 27 | ORD-10027 | 19 | 2025-08-13 03:48:48 | shipped | 216.42 |
| Austin |
| Austin |
| TX |
| TX |
| US |
| US |
| economy |
| economy |
| 601.53 |
| 601.53 |
| 5.99 |
| 5.99 |
| 54.96 |
| 54.96 |
| 0.0 |
| 0.0 |
| 662.48 |
| 662.48 |
| partial_refund |
| partial_refund |
| 2025-02-24 04:56:03 |
| 2025-02-24 04:56:03 |
| 3 | ORD-10003 | 21 | 2025-02-13 17:43:43 | shipped | ship | London | ENG | UK | expedited | 68.26 | 14.99 | 5.41 | 0.0 | 88.66 | captured | 2025-02-13 17:43:43 |
| 3 | ORD-10003 | 21 | 2025-02-13 17:43:43 | shipped | ship | London | ENG | UK | expedited | 68.26 | 14.99 | 5.41 | 0.0 | 88.66 | captured | 2025-02-13 17:43:43 |
| 4 | ORD-10004 | 8 | 2025-02-07 13:00:50 | shipped | ship | Calgary | AB | CA | standard | 290.99 | 5.0 | 26.88 | 0.0 | 322.87 | captured | 2025-02-07 13:00:50 |
| 4 | ORD-10004 | 8 | 2025-02-07 13:00:50 | shipped | ship | Calgary | AB | CA | standard | 290.99 | 5.0 | 26.88 | 0.0 | 322.87 | captured | 2025-02-07 13:00:50 |
| 5 | ORD-10005 | 8 | 2025-06-24 03:59:58 | packed | ship | Edmonton | AB | CA | standard | 569.61 | 5.0 | 54.73 | 0.0 | 629.34 | captured | 2025-06-24 03:59:58 |
| 5 | ORD-10005 | 8 | 2025-06-24 03:59:58 | packed | ship | Edmonton | AB | CA | standard | 569.61 | 5.0 | 54.73 | 0.0 | 629.34 | captured | 2025-06-24 03:59:58 |