2

Background

I have spent couple of days trying to figure out how I should handle large amounts of data in MySQL. I have selected some programs and techniques for the new server for the software. I am probably going to use Ubuntu 14.04LTS running nginx, Percona Server and will be using TokuDB for the 3 tables I have planned and InnoDB for the rest of the tables.

But yet I have the major problem unresolved. How to handle the huge amount of data in database?

Data

My estimates for the possible data to receive is 500 million rows a year. I will be receiving measurement data from sensors every 4 minutes.

Requirements

Insertion speed is not very critical, but I want to be able to select few hundred measurements in 1-2 seconds. Also the amount of required resources is a key factor.

Current plan

Now I have thought of splitting the sensor data in 3 tables.

EDIT: On every table:

id = PK, AI

sensor_id will be indexed

CREATE TABLE measurements_minute(
  id bigint(20),
  value float,
  sensor_id mediumint(8),
  created timestamp
) ENGINE=TokuDB;

CREATE TABLE measurements_hour(
  id bigint(20),
  value float,
  sensor_id mediumint(8),
  created timestamp
) ENGINE=TokuDB;

CREATE TABLE measurements_day(
  id bigint(20),
  value float,
  sensor_id mediumint(8),
  created timestamp
) ENGINE=TokuDB;

So I would be storing this 4 minute data for one month. After the data is 1 month old it would be deleted from minute table. Then average value would be calculated from the minute values and inserted into the measurements_hour table. Then again when the data is 1 year old all the hour data would be deleted and daily averages would be stored in measurements_day table.

Questions

Is this considered a good way of doing this? Is there something else to take in consideration? How about table partitioning, should I do that? How should I execute the splitting of the date into different tables? Triggers and procedures?

EDIT: My ideas

Any idea if MonetDB or Infobright would be any good for this?

1
  • Yes I would, but as mentioned in OP. I am planning to calculate averages on older data and store just the averages. So in reality I would have a lot less.
    – Firze
    Jun 4, 2014 at 10:51

2 Answers 2

3

I have a few suggestions, and further questions.

  1. You have not defined a primary key on your tables, so MySQL will create one automatically. Assuming that you meant for "id" to be your primary key, you need to change the line in all your table create statements to be something like "id bigint(20) NOT NULL AUTO_INCREMENT PRIMARY KEY,".

  2. You haven't defined any indexes on the tables, how do you plan on querying? Without indexes, all queries will be full table scans and likely very slow.

  3. Lastly, for this use-case, I'd partition the tables to make the removal of old data quick and easy.

2
  • I forgot to add PKs and indexes to this sample. sensor_id will be indexed and id is PK on every table. I did also think that partitioning might benefit me.
    – Firze
    Jun 4, 2014 at 11:41
  • 1
    Makes more sense now. TokuDB is ideal for this workload, as you'll achieve high insertion speed plus compression. Jun 5, 2014 at 12:10
0

I had to solve that type of ploblem before, with nearly a Million rows per hour.

Some tips:

Engine Mysam. You don't need to update or manage transactions with that tables. You are going to insert, select the values, and eventualy delete it.

Be careful with the indexes. In my case, It was critical the insertion and sometimes Mysql queue was full of pending inserts. A insert spend more time if your table has more index. The indexes depends of your calculated values and when you are going to do it.

Sharding your buffer tables. I only trigger the calculated values when the table was ready. When I was calculating my a values in buffer_a table, it's because the insertions was on buffer_b one. In my case, I calculate the values every day, so I switch the destination table every day. In fact, I dumped all the data and exported it in another database to make the avg, and other process without disturb the inserts.

I hope you find this helpful.

1
  • 1
    As far as I know in this case TokuDB would beat Myisam in every possible way. TokuDB should have faster reads and use less resources. Some benchmarks here: mysqlperformanceblog.com/2009/11/05/…
    – Firze
    Jun 4, 2014 at 11:38

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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