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I have a database that is fed into a graph. For some reason or another every now and then, my PHP script inserts really large spikes into my database...

For example: Screenshot

As you can see there are random spikes in the graph where the data sometimes goes from 300 upto 3000 then straight back down to 300 again.

What I need is a way to tidy up these tables and remove data where it is massively larger than the previous and next rows.

I've done a bit of google research but can't come up with anything!

Thanks in advance.

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Can you put the code of the php script?, maybe the solution is not to remove data... its see why is adding wrong data –  Pablo Martinez Jul 27 '12 at 7:22
    
I doubt its the PHP, the reason being is the data is sent from an external program to the php for logging. I'm pretty sure that is the problem. –  jduncanator Jul 27 '12 at 7:43
    
Scratch that! I think I found my problem... The Query I'm using retrieves rows at 20 minute intervals, which means if there is a spike that lasts ~20 mins it just shows it as a single spike of users... there has to be some sort of averaging available in SQL! –  jduncanator Jul 27 '12 at 9:04
    
then you have to store the time of the retrieved data, not when you retrieve it :P –  Pablo Martinez Jul 27 '12 at 9:11
    
The time of the retrieved data is stored in the database too :P –  jduncanator Jul 27 '12 at 9:44

3 Answers 3

If all you want to do is delete all rows with values above a certain threshold (here I've used 300), then you can use:

DELETE FROM table WHERE value > 300;

To prevent them from being inserted, you could test your values at insertion time, and only insert rows for those that fall below your threshold.

if ($data['value'] < 300) {
    // insert
}
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Yea, on a table by table basis sure... but some tables have data values that go from 200 -> 3000 and that is real data. not glitched data. –  jduncanator Jul 27 '12 at 7:37

There are a few things you can do to remove these "outlier" data points:

You could remove the points that differ from the average by more than N times the standard deviation. For example, if the data were normal-distributed, this would remove roughly the top 2.5%:

delete from datapoints where value > (select avg(value)+2*stddev(value) 
                                      from datapoints);

Or, you could remove the top 1% of the data directly, leaving the 99th percentile of the data. Finding the percentile point efficiently is a harder problem, but something like this might work:

set @rownum = 0;
@percentile = select value from (select value, @rownum:=@rownum+1 as rownum from datapoints) D
              where rownum > (select 0.99*count(value) from datapoints) limit 1;
delete from datapoints where value > @percentile;

These approaches delete all data points that are abnormally big in general, with no respect to general trends or cycles in the data. This means that a spike in a valley can go undetected. More advanced algorithms are required to handle these cases. For example you could modify the first approach to remove the outliers based on datapoints in a certain environment:

delete from datapoints d2 where value > 
    (select avg(value)+2*stddev(value) 
     from datapoints d1 
     where d1.dt between d2.dt - interval 2 hour 
                     and d2.dt + interval 2 hour);
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up vote 0 down vote accepted

Thankyou to all who tried to help. Sorted the issue. It was because I was taking data at 30minute intervals and sometimes within that 30minute interval the data did actually go up that high but it was already back down again by the next 30minutes. I've employed an averaging algo. in my Graph now so all is fine :)

Josh

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