I am speculating that the "odds" are not integers and that you want something that has a "9" to be nine times more likely than a "1".

The proper way to do this is with a cumulative sum. Then generate a random value between the min and max of the cumulative sum and choose the record that is in that range. The following query does this in MySQL:

```
select t.*
from (select t.*,
coalesce((select sum(odds) from t t2 where t2.id < t.id), 0) as cumsum,
const.sumodds
from t cross join
(select rand()*sum(odds) as val from t) const
) t
where val between cumsum and cumsum + t.odds
```

However, this is doing a non-equijoin and would probably be prohibitively expensive in MySQL. Other databases have the ability to do a cumulative sum in a single query. MySQL does not have an efficient way of doing this.

How to optimize the query depends on certain other factors in the problem. How many different values do "odds" take on? Can you use temporary tables?

I don't have the time right now to write out the solution, but there is a more efficient way. YThe idea is to split the problem into two searches. The first will find which "odds" value wins. The second will find which row wins.

Here are the details:

(1) Summarize the data into a table by the odds. This table would have 11 rows, and contain the "odds" and the "count" for each.

(2) Calculate the sum of "count*odds" for each row, starting at 0 for the first row. You can use the above query as a guide, since this is such a small amount of data it will run quickly.

(3) Calculate a random number as `rand()*<sum of all odds>`

. Now, locate the odds where the number is between cumsum an cumsum+odds.

(4) Now return to the original table and issue a query such as:

```
select *
from t
where odds = <winning odds>
order by rand()
limit 1
```