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Just to preface my question, I understand that there is no direct support for something like this. What I am looking for is any sort of work-around, or convoluted derivation that would get me a half-respectable result.

I am working with a rather large MySQL cluster (tables > 400 million rows) using the cluster engine.

Is anyone aware of a way to either directly retrieve or otherwise derive a somewhat (or better) accurate indication of progress through a long query in mysql? I have some queries that can take up to 45 minutes, and I need to determine if we're 10% or 90% through the processing.


As requested in the comments here is a distilled and generified version of one of the queries that is leading to my original question...

SELECT `userId`
FROM    `openEndedResponses` AS `oe`
    `oe`.`questionId` = 3 -- zip code
    AND (REPLACE( REPLACE( `oe`.`value`, ' ', '' ), '-', '' ) IN ( '30071', '30106', '30122', '30134', '30135', '30168', '30180', '30185', '30187', '30317', '30004' ));

This query is run against a single table with ~95 million rows. It takes 8 seconds to run the query and another 13 to transfer the data (21 sec total). Considering the size of the table, and the fact that there are string manipulation functions being used, I'd say it's running pretty damn fast. However, to the user, it's still 21 seconds appearing either stuck or idle. Some indication of progress would be ideal.

share|improve this question
One single query is taking up to 45 minutes, or is it a lot of small INSERT/UPDATE/DELETE queries ? – Frosty Z Mar 28 '11 at 21:02
Just one query. – KOGI Mar 28 '11 at 23:11
KOGI, if you were able to solve your problem you should add it as an answer. – Dour High Arch Jun 6 '11 at 22:37
I was not able to solve my problem. Hence the +1 for everyone :) – KOGI Jun 6 '11 at 22:38
Can you post us the query that's taking so long??? Maybe IT can be optimized better... – DRapp Jun 7 '11 at 18:37

I was able to estimate something like this by querying the number of rows to process then breaking the processing into a loop, working on only a subset of the total rows at a time.

The full loop was rather involved, but the basic logic went like:

SELECT @minID = Min(keyColumn) FROM table WHERE condition
SELECT @maxID = Max(keyColumn) FROM table WHERE condition
SELECT @potentialRows = (@maxID - @minID) / @iterations

WHILE @minID < @maxID
    SET @breakID = @minID + @potentialRows
    SELECT columns FROM table WITH (NOLOCK, ...)
    WHERE condition AND keyColumn BETWEEN @minID AND @breakID

    SET @minID = @breakID + 1

Note this works best if IDs are evenly distributed.

share|improve this answer
So, if I'm understanding this correctly, you perform the query once to get the minId, once again for the maxId, and then a 3rd time (comprised of multiple chunked sub-queries)? While this would definitely offer some indication of progress, it effectively triples the total query time (at minimum, doubles it if you combine determination of min and max into a single query). What am I missing? – KOGI Mar 28 '11 at 23:15
@KOGI: Provided the column for which you are calculating the MIN/MAX value on is indexed, you should have to inspect something like CEIL(LOG2(rows)) total rows -- taking significantly less time. If that column isn't indexed, it probably should be if your SELECT is based on it, and you're going to have to eat the downtime to add that index now that your table is huge... – Conspicuous Compiler Mar 28 '11 at 23:41
Thanks, Conspicuous Compiler. I like this idea and so far it's the best option I've come across. I wonder what the performance impact would be (ignoring the determination of MIN/MAX) to run several chunked queries versus one large query... – KOGI Mar 29 '11 at 17:02
Yes, keyColumn should be indexed and, in my situation, the time to determine the Min and Max was negligible. Depending on the full query and execution plan it could take less or more time to perform than a single query. Only profiling can determine how well it works for you. – Dour High Arch Mar 29 '11 at 17:19
+1 Can't accept any of these answers as a solution, but the ideas and effort is still appreciated! Thanks! – KOGI Jun 6 '11 at 22:26

If it's a complex query you are attempting, the EXPLAIN SQL command or MySQL Query Analyzer might help to understand what is going on. If it's simply a large query, you might try creating a temporary table with SELECT INTO and/or using LIMIT/OFFSET clauses in SELECT queries. If you use LIMIT/OFFSET on the original tables, you might need to set the transaction level to serializable, IIRC, so that you get consistent reads while iterating over the data. If you create a temporary table first, that table should stay consistent regardless.

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+1 Can't accept any of these answers as a solution, but the ideas and effort is still appreciated! Thanks! – KOGI Jun 6 '11 at 22:27

I don't think that mysql supports I'm sure MySQL doesn't support any indication about the progress of the running queries. The only solution is to optimize/split queries. Select could be split by id as Dour High Arch suggested. Here is a query from 33 milion row table:

mysql> SELECT SQL_NO_CACHE min(id), max(id) FROM `urls`;
| min(id) | max(id)  |
|    5000 | 35469678 |
1 row in set (0.00 sec)

You better use integer ot at least date field for splitting. It should be primary or unique index and should not allow null values.

share|improve this answer
+1 Can't accept any of these answers as a solution, but the ideas and effort is still appreciated! Thanks! – KOGI Jun 6 '11 at 22:27
up vote 2 down vote accepted

For now -- for my very specific situation -- there seems to be no real solution for this. Since I can't split my query into several smaller ones and it's proving counterproductive to select count(*) first, and then running the "real" query (doubles execution time of an already painfully slow query), none of the workarounds seem viable either. Maybe soon, MySQL will support something like this

share|improve this answer
Why do you select count(*)? – Dour High Arch Mar 12 '14 at 17:42
This is really old now, but COUNT(*) was a way to determine how many rows there would be in order to chunk the query into multiple smaller queries. – KOGI Mar 12 '14 at 23:05

How about looking into partitioning your mysql table so you can spread the read/write load. Look at trying to limit each partition to 50 Million rows (obviously dependent on your hardware)

share|improve this answer
Thanks for the suggestion. This definitely has potential for speeding up the queries themselves, but regardless of speed, what I was looking for was a way to monitor progress. – KOGI Nov 8 '13 at 15:53
Ar! Now I re-read your question Ill have a think. It was a quick response on the way into work :) – Christian Nov 8 '13 at 18:24
in the back of my mind im thinking if you split your tables into partitions and even if possible, break them into separate tables, you could make your query perform so much quicker, you wouldnt have to worry about monitoring... we (being so) could look at how best to partition, index, your tables to perform much quicker if you give us the columns and read/write functions you need to perform. – Christian Nov 8 '13 at 19:16

Here's what you'll need to do to improve the following query:

SELECT `userId`
FROM    `openEndedResponses` AS `oe`
    `oe`.`questionId` = 3 -- zip code
    AND (REPLACE( REPLACE( `oe`.`value`, ' ', '' ), '-', '' ) IN ( '30071', '30106', '30122', '30134', '30135', '30168', '30180', '30185', '30187', '30317', '30004' ));

You'll need to ensure oe.questionId is indexed; You'll need to ensure oe.value does not have any space across the entire table when oe.questionId is 3; assuming that 4 or 5 can be, let's say, city names, where you still want to allow spaces.

By doing this, you'll be able to remove all the REPLACEs , which will let MySQL use an index in oe.value.

MySQL will then merge both indices and give you the result much faster, in terms of processing.

In the case you have many repeated userId; you'll want to group them; in such a way that entries from the index are immediately discarded. You still need to scan the whole merged-index; but the size of the resultset will take less time to be transferred; much less than 13 seconds!

Give it a shot and keep us posted about the result


share|improve this answer
Thanks for the suggestion. This question is really old now, but this definitely has potential for speeding up the queries themselves. However, regardless of speed, what I was looking for was a way to monitor progress. There are some queries that just plain aren't fast, and can't be optimized any further -- I needed a way to see the progress of the query execution as it ran. – KOGI Nov 10 '15 at 23:06

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