Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm running MySQL 5.1 and storing data from web logs into a table. There is a datetime column which I want to partition by day. Every night I add new data from the previous day into the table, which is why I want to partition by day. It is usually a few million rows. I want to partition by day because it usually takes 20 seconds for a MySQL query to complete.

In short, I want to partition by each day because users can click on a calendar to get web log information consisting of a day's worth of data. The data spans millions of row (for a single day).

The problem that I've seen with a lot of partitioning articles is that you have to explicitly specify what values you want to partition for? I don't like this way because it means that I'll have to alter the table every night in order to add an extra partition. Is there a built in MySQL feature to do this for me automatically, or will I have to write a bash script/cron job to alter the table for me every night?

For example, if I were to follow the following example: http://datacharmer.blogspot.com/2008/12/partition-helper-improving-usability.html

In one year, I would have 365 partitions.

share|improve this question
Do you have indexes? –  Bugs Aug 30 '12 at 15:43
@Bugs, Not yet, but I was going to index on the datetime column. How much improvement can I expect to gain from that? I still need to partition in addition to that, though, right? –  egidra Aug 30 '12 at 15:44
You may expect a lot of improvement with the right indexes. I once went down from several hours to several seconds just by adding one index. –  Bugs Aug 30 '12 at 15:46
I agree with Bugs; your first step should be to ensure you have the correct indexes in place. You should use EXPLAIN to help determine which indexes you need. Once you have the right indexes you will see if you truly need to partition on a daily basis (unlikely). –  Eric B. Aug 30 '12 at 18:09

1 Answer 1

up vote 2 down vote accepted

I tried this once. I ended up creating a cron job to do the partitioning on a regular basis (once a month). Keep in mind that you have a maximum of 1024 partitions per table (http://dev.mysql.com/doc/refman/5.1/en/partitioning-limitations.html).

Offhand, I probably wouldn't recommend it. For my needs, I saw this created a significant slowdown in any searches that that required cross-partition results.

Based on your updated explanation, I would first recommend to create the necessary indexes. I would read MySQL Optimization chapter (in specific the section on indexes), to better learn how to ensure you have the necessary indexes. You can also use the slow_query log to help isolate the problematic queries.

Once you have that narrowed down, I can see your need for partitioning change to wanting to partition to limit the size of a particular partition (perhaps for storage space or for quick truncation, etc). At that point, you may decide to partition on a monthly or annual basis.

Partitioning using the date as a partition key will obviously force you into creating an index for the date field. Start with that and see how it goes before you get into the extra efforts of partitioning on a scheduled basis.

share|improve this answer
What do you recommend I do instead? I will never have to query across partitions. Is doing the partitioning this way even worth it? –  egidra Aug 30 '12 at 15:35
I'm not sure... I was thinking about that, but didn't have a good solution in mind. My gut instinct would be to partition no more than monthly - at least like that you have 100 years instead of 2 years before you have to figure out what you are doing with your schema. The second is figuring out what your exact needs are. Why are you partitioning in the first place? If you list/explain the problem you are trying to solve with the partitioning, someone(s) may have a good solution. –  Eric B. Aug 30 '12 at 15:38
Hi, I added my reasons to the original post. –  egidra Aug 30 '12 at 15:41

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.