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);
```