# Find the biggest Timespan without Data in Database

I have a database containing events. Every event has a timestamp. The events are evenly spread trough the day, but every night there is a timespan without data. My problem is that the night is not well defined. It can be from 23pm to 7am next day, or from 2am to 10am the same day or even only from 8pm to 23pm the same day.

Now I want to calculate the intervall of the events, but without the big timespan without events. But I have no idea how to find this timespan. My problem is, that there can be days without timespan, or two days with the same timespan (for example 8pm to to midnight of the first day, midnight to 7 am of the second day).

My question is now: How to find this timespan?

I would prefer a solution in MySql only, but if it is not possible it would be possible to use PHP, too.

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How about finding the biggest time span in a day without events and then comparing all the "empty holes" (times between events) to it - as long as they're less or equal, then it's the same day. If bigger - a new day has started... ? – Havelock Sep 16 '12 at 9:23
Problem with this: a day could have to relevant holes, one in the morning and one in the evening, and they have to be added together with the previous/next day. And I even have no Idea how to get the holes ;-) – Tokk Sep 16 '12 at 9:25
just a rough Idea, simply select the timestamps of n and n-1 and get the difference in timestamp. Then order by this difference. Should get you the wanted outcome. – Najzero Sep 16 '12 at 9:44
What I meant by "empty holes" :) – Havelock Sep 16 '12 at 10:37

How about self-joining a table to the following row, then doing a time-diff between the joined tables, and finding the maximum diff?

Assuming your schema is something like this (and assuming entries are in time order):

``````CREATE TABLE log (
id INT NOT NULL AUTO_INCREMENT,
occurred_at DATETIME,
event VARCHAR(255),
PRIMARY KEY (id),
INDEX (occurred_at)
);
``````

Something like this:

``````SELECT
TIMEDIFF(after.occurred_at, before.occurred_at) AS time_gap,
`before`.*,
`after`.*
FROM
log `before` JOIN
log `after` ON after.id = before.id+1
ORDER BY time_gap DESC LIMIT 1;
``````
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+1 because basicly my comment and the way to go. – Najzero Sep 16 '12 at 9:44
I will try this – Tokk Sep 16 '12 at 10:15

Why don't you just process the sorted list of events, and look for the largest gap within each day?

Finding gaps in a sorted list is trivial. Define some thresholds, e.g. "min 1 hour", and "overlaps with the 12-6 interval" and then you have your complete gap detection.

It's not really "data mining", btw. - it is just a quite simple data query.

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