WINDOW_FUNNEL
WINDOW_FUNNELβ
Similar to windowFunnel
in ClickHouse (they were created by the same author), it searches for event chains in a sliding time window and calculates the maximum number of events that occurred from the chain.
The function works according to the algorithm:
The function searches for data that triggers the first condition in the chain and sets the event counter to 1. This is the moment when the sliding window starts.
If events from the chain occur sequentially within the window, the counter is incremented. If the sequence of events is disrupted, the counter isnβt incremented.
If the data has multiple event chains at varying points of completion, the function will only output the size of the longest chain.
WINDOW_FUNNEL(window)(timestamp, cond1, cond2, ..., condN)
Arguments
timestamp
β Name of the column containing the timestamp. Data types supported: unsigned integer types.cond
β Conditions or data describing the chain of events. Must beBoolean
datatype.
Parameters
window
β Length of the sliding window, it is the time interval between the first and the last condition. The unit ofwindow
depends on thetimestamp
itself and varies. Determined using the expressiontimestamp of cond1 <= timestamp of cond2 <= ... <= timestamp of condN <= timestamp of cond1 + window
.
Returned value
The maximum number of consecutive triggered conditions from the chain within the sliding time window. All the chains in the selection are analyzed.
Type: UInt8
.
Example
Determine if a set period of time is enough for the user to SELECT a phone and purchase it twice in the online store.
Set the following chain of events:
- The user logged in to their account on the store (
eventID = 1003
). - The user searches for a phone (
eventID = 1007, product = 'phone'
). - The user placed an order (
eventID = 1009
). - The user made the order again (
eventID = 1010
).
Input table:
ββuser_idββ¬βtimestampββ¬βeventIDββ¬βproductββ
β 1 β 20 β 1003 β phone β
β 1 β 200 β 1007 β phone β
β 1 β 50 β 1009 β phone β
β 1 β 400 β 1010 β phone β
βββββββββββ΄ββββββββββββ΄ββββββββββ΄ββββββββββ
Find out how far the user user_id
could get through the chain.
Query:
SELECT
level,
count() AS c
FROM
(
SELECT
user_id,
window_funnel(500)(timestamp, eventID = 1003, eventID = 1009, eventID = 1007, eventID = 1010) AS level
FROM test
GROUP BY user_id
)
GROUP BY level ORDER BY level ASC;
Result:
ββlevelββ¬βcββ
β 4 β 1 β
βββββββββ΄ββββ