Analyzing Conversion Funnel with Databend
Funnel analysis measures the number of unique users who has performed a set of actions, and we use it to see drop-off and conversion in multi-step processes.
In Databend, it's easy and performance to do it using WINDOW_FUNNEL FUNCTION.
Step 1. Databend
1.1 Deploy Databend
Make sure you have installed Databend, if not please see:
1.2 Create a Databend User
Connect to Databend server with MySQL client:
mysql -h127.0.0.1 -uroot -P3307
Create a user:
CREATE USER user1 IDENTIFIED BY 'abc123';
Grant privileges for the user:
GRANT ALL ON *.* TO user1;
See also How To Create User.
1.3 Create a Table
Connect to Databend server with MySQL client:
mysql -h127.0.0.1 -uuser1 -pabc123 -P3307
CREATE TABLE events(user_id BIGINT, event_name VARCHAR, event_timestamp TIMESTAMP);
Prepare data:
INSERT INTO events VALUES(100123, 'login', '2022-05-14 10:01:00');
INSERT INTO events VALUES(100123, 'visit', '2022-05-14 10:02:00');
INSERT INTO events VALUES(100123, 'cart', '2022-05-14 10:04:00');
INSERT INTO events VALUES(100123, 'purchase', '2022-05-14 10:10:00');
INSERT INTO events VALUES(100125, 'login', '2022-05-15 11:00:00');
INSERT INTO events VALUES(100125, 'visit', '2022-05-15 11:01:00');
INSERT INTO events VALUES(100125, 'cart', '2022-05-15 11:02:00');
INSERT INTO events VALUES(100126, 'login', '2022-05-15 12:00:00');
INSERT INTO events VALUES(100126, 'visit', '2022-05-15 12:01:00');
Input table:
+---------+------------+----------------------------+
| user_id | event_name | event_timestamp |
+---------+------------+----------------------------+
| 100123 | login | 2022-05-14 10:01:00.000000 |
| 100123 | visit | 2022-05-14 10:02:00.000000 |
| 100123 | cart | 2022-05-14 10:04:00.000000 |
| 100123 | purchase | 2022-05-14 10:10:00.000000 |
| 100125 | login | 2022-05-15 11:00:00.000000 |
| 100125 | visit | 2022-05-15 11:01:00.000000 |
| 100125 | cart | 2022-05-15 11:02:00.000000 |
| 100126 | login | 2022-05-15 12:00:00.000000 |
| 100126 | visit | 2022-05-15 12:01:00.000000 |
+---------+------------+----------------------------+
We have a table with the following fields:
- user_id - a unique identifier for user
- event_name - type of the event
- event_timestamp - timestamp which event occurred
Step 2. Funnel Analysis
Find out how far the user user_id
could get through the chain in an hour window slides.
SELECT
level,
count() AS count
FROM
(
SELECT
user_id,
window_funnel(3600000000)(event_timestamp, event_name = 'login', event_name = 'visit', event_name = 'cart', event_name = 'purchase') AS level
FROM events
GROUP BY user_id
)
GROUP BY level ORDER BY level ASC;
提示
The event_timestamp
type is timestamp, 3600000000
is a hour time window.
Result:
+-------+-------+
| level | count |
+-------+-------+
| 2 | 1 |
| 3 | 1 |
| 4 | 1 |
+-------+-------+
- User
100126
level is 2 (login -> visit
) . - user
100125
level is 3 (login -> visit -> cart
). - User
100123
level is 4 (login -> visit -> cart -> purchase
).