I started with this question: is my large mysql table destined for failure?
The answer that I found from that question was satisfactory. I have a table with 22 million rows that I would like to grow to about 100 million. At this time, the table
minute_data structure is like this:
A problem that I am having is as follows. I need to execute this query:
select datediff(date,now()) from minute_data where symbol = "CSCO" order by date desc limit 1;
Which is very fast ( < 1 sec ) when the table contains the value "CSCO". The problem is, sometimes I will query for a symbol that is not in the table already. When I execute a query like this for, say, symbol = "ABCD":
select datediff(date,now()) from minute_data where symbol = "ABCD" order by date desc limit 1;
Then the query takes a LONG TIME... like forever ( 180 seconds ).
A way I can get around this is by making sure that the table contains the symbol I am looking for before I execute the query. The fastest way I found to do this is with the follow query, which I just need to use to check to see if the table
minute_data contains the symbol I am looking for or not. Basically I just need it to return a boolean value so I know if the symbol is in the table or not:
select count(1) from minute_data where symbol = "CSCO";
This query takes over 30 seconds to return 1 value, way too long for my liking, since the query above, which actually returns a
datediff calculation only takes less than 1 second.
symbol column is part of the pri key, I thought it should be able to figure out if a value exists there very quickly.
What am I doing wrong? Is there a fast way to do what I want to do? Should I change the structure of the data to optimize performance?
I think I found a good solution to this problem. From the answer below by LastCoder, I did the following:
1) Created a new table called
minute_data_2 with the exact same definition as
2) ALTER TABLE minute_data_2 ADD PRIMARY KEY (symbol, date);
3) INSERT IGNORE INTO minute_data_2 SELECT * FROM minute_data;
4) DROP TABLE minute_data;
5) Rename minute_data_2 to minute_data
Now I am seeing blindingly fast speed for the same query which I described above as taking more than 180 second, now completes in .001 seconds. Amazing.