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Sorry for the long post!

I have a database containing ~30 tables (InnoDB engine). Only two of these tables, namely, "transaction" and "shift" are quite large (the first one have 1.5 million rows and shift has 23k rows). Now everything works fine and I don't have problem with the current database size.

However, we will have a similar database (same datatypes, design ,..) but much larger, e.g., the "transaction" table will have about 1 billion records (about 2,3 million transaction per day) and we are thinking about how we should deal with such volume of data in MySQL? (it is both read and write intensive). I read a lot of related posts to see if Mysql (and more specifically InnoDB engine) can perform well with billions of records, but still I have some questions. Some of those related posts that I've read are in the following:

What I've understood so far to improve the performance for very large tables:

  1. (for innoDB tables which is my case) increasing the innodb_buffer_pool_size (e.g., up to 80% of RAM). Also, I found some other MySQL performance tunning settings here in percona blog
  2. having proper indexes on the table (using EXPLAN on queries)
  3. partitioning the table
  4. MySQL Sharding or clustering

Here are my questions/confusions:

  • About partitioning, I have some doubts whether we should use it or not. On one hand many people suggested it to improve performance when table is very large. On the other hand, I've read many posts saying it does not improve query performance and it does not make queries run faster (e.g., here and here). Also, I read in MySQL Reference Manual that InnoDB foreign keys and MySQL partitioning are not compatible (we have foreign keys).

  • Regarding indexes, right now they perform well, but as far as I understood, for very large tables indexing is more restrictive (as Kevin Bedell mentioned in his answer here). Also, indexes speed up reads while slow down write (insert/update). So, for the new similar project that we will have this large DB, should we first insert/load all the data and then create indexes? (to speed up the insert)

  • If we cannot use partitioning for our big table ("transaction" table), what is an alternative option to improve the performance? (except MySQl variable settings such as innodb_buffer_pool_size). Should we use Mysql clusters? (we have also lots of joins)

EDIT

This is the show create table statement for our largest table named "transaction":

  CREATE TABLE `transaction` (
 `id` int(11) NOT NULL AUTO_INCREMENT,
 `terminal_transaction_id` int(11) NOT NULL,
 `fuel_terminal_id` int(11) NOT NULL,
 `fuel_terminal_serial` int(11) NOT NULL,
 `xboard_id` int(11) NOT NULL,
 `gas_station_id` int(11) NOT NULL,
 `operator_id` text NOT NULL,
 `shift_id` int(11) NOT NULL,
 `xboard_total_counter` int(11) NOT NULL,
 `fuel_type` int(11) NOT NULL,
 `start_fuel_time` int(11) NOT NULL,
 `end_fuel_time` int(11) DEFAULT NULL,
 `preset_amount` int(11) NOT NULL,
 `actual_amount` int(11) DEFAULT NULL,
 `fuel_cost` int(11) DEFAULT NULL,
 `payment_cost` int(11) DEFAULT NULL,
 `purchase_type` int(11) NOT NULL,
 `payment_ref_id` text,
 `unit_fuel_price` int(11) NOT NULL,
 `fuel_status_id` int(11) DEFAULT NULL,
 `fuel_mode_id` int(11) NOT NULL,
 `payment_result` int(11) NOT NULL,
 `card_pan` text,
 `state` int(11) DEFAULT NULL,
 `totalizer` int(11) NOT NULL DEFAULT '0',
 `shift_start_time` int(11) DEFAULT NULL,
 PRIMARY KEY (`id`),
 UNIQUE KEY `terminal_transaction_id` (`terminal_transaction_id`,`fuel_terminal_id`,`start_fuel_time`) USING BTREE,
 KEY `start_fuel_time_idx` (`start_fuel_time`),
 KEY `fuel_terminal_idx` (`fuel_terminal_id`),
 KEY `xboard_idx` (`xboard_id`),
 KEY `gas_station_id` (`gas_station_id`) USING BTREE,
 KEY `purchase_type` (`purchase_type`) USING BTREE,
 KEY `shift_start_time` (`shift_start_time`) USING BTREE,
 KEY `fuel_type` (`fuel_type`) USING BTREE
) ENGINE=InnoDB AUTO_INCREMENT=1665335 DEFAULT CHARSET=utf8 ROW_FORMAT=COMPACT

Thanks for your time,

  • 1
    Hehe -- "long post" yields "long answer". – Rick James Sep 27 '16 at 1:22
41
  • Can MySQL reasonably perform queries on billions of rows? -- MySQL can 'handle' billions of rows. "Reasonably" depends on the queries; let's see them.

  • Is InnoDB (MySQL 5.5.8) the right choice for multi-billion rows? -- 5.7 has some improvements, but 5.5 is pretty good, in spite of being nearly 6 8 years old, and on the verge of no longer being supported.

  • Best data store for billions of rows -- If you mean 'Engine', then InnoDB.

  • How big can a MySQL database get before performance starts to degrade -- Again, that depends on the queries. I can show you a 1K row table that will meltdown; I have worked with billion-row tables that hum along.

  • Why MySQL could be slow with large tables? -- range scans lead to I/O, which is the slow part.

  • Can Mysql handle tables which will hold about 300 million records? -- again, yes. The limit is somewhere around a trillion rows.

  • (for innoDB tables which is my case) increasing the innodb_buffer_pool_size (e.g., up to 80% of RAM). Also, I found some other MySQL performance tunning settings here in percona blog -- yes

  • having proper indexes on the table (using EXPLAN on queries) -- well, let's see them. There are lot of mistakes that can be made in this critical area.

  • partitioning the table -- "Partitioning is not a panacea!" I harp on that in my blog

  • MySQL Sharding -- Currently this is DIY

  • MySQL clustering -- Currently the best answer is some Galera-based option (PXC, MariaDB 10, DIY w/Oracle). Oracle's "Group Replication" is a viable contender.

  • Partitioning does not support FOREIGN KEY or "global" UNIQUE.

  • UUIDs, at the scale you are talking about, will not just slow down the system, but actually kill it. Type 1 UUIDs may be a workaround.

  • Insert and index-build speed -- There are too many variations to give a single answer. Let's see your tentative CREATE TABLE and how you intend to feed the data in.

  • Lots of joins -- "Normalize, but don't over-normalize." In particular, do not normalize datetimes or floats or other "continuous" values.

  • Do build summary tables

  • 2,3 million transaction per day -- If that is 2.3M inserts (30/sec), then there is not much of a performance problem. If more complex, then RAID, SSD, batching, etc, may be necessary.

  • deal with such volume of data -- If most activity is with the "recent" rows, then the buffer_pool will nicely 'cache' the activity, thereby avoiding I/O. If the activity is "random", then MySQL (or anyone else) will have I/O issues.

  • Shrinking the datatypes helps in a table like yours. I doubt if you need 4 bytes to specify fuel_type. There are multiple 1-byte approaches.

  • One more item -- "MySQL NDB Cluster" is different than Galera; NDB has a niche market; it might be useful to you; let's see more about your app. – Rick James Sep 27 '16 at 1:23
  • Thanks Rick for the detailed answer. Now my main concern is that I am not sure whether we should do clustering or not (I've never done it before). I mean when should we do it and when we should not? what factors should I consider before clustering? and if we have to do it, where should I start from? – mOna Sep 27 '16 at 6:44
  • Also, you said you should see the queries (for indexing, performance, ..). What info about queries should I consider? what info about our app do you need? How could I show the queries to you ? (sorry if it is stupid question!) – mOna Sep 27 '16 at 6:58
  • Type of data -- money transfers? logging? data warehousing? scientific research readings? – Rick James Sep 27 '16 at 15:45
  • 1
    Size does not indicate a necessity for partitioning. Write activity does indicate a need for sharding. HA (High Availbility) is one indicator for "clustering". More than 100 rows inserted/updated per second indicates some action, but usually you can get to 1000/sec without sharding/clustering/etc. Massive "reports" involving "group by" indicates "Summary tables". Etc. – Rick James Sep 28 '16 at 15:06
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When collecting billions of rows, it is better (when possible) to consolidate, process, summarize, whatever, the data before storing. Keep the raw data in a file if you think you need to get back to it.

Doing that will eliminate most of your questions and concerns, plus speed up the processing.

  • 1
    I concur. It's basically doing the same amount of processing, but spread out over time instead of at the same time. – Aeolun Sep 27 '16 at 2:02

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