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I need to insert about 1.8 million rows from a CSV file into a MySQL database. (only one table)

Currently using Java to parse through the file and insert each line.

As you can imagine this takes quite a few hours to run. (10 roughtly)

The reason I'm not piping it straight in from the file into the db, is the data has to be manipulated before it adds it to the database.

This process needs to be run by an IT manager in there. So I've set it up as a nice batch file for them to run after they drop the new csv file into the right location. So, I need to make this work nicely by droping the file into a certain location and running a batch file. (Windows enviroment)

My question is, what way would be the fastest way to insert this much data; large inserts, from a temp parsed file or one insert at a time? some other idea possibly?

The second question is, how can I optimize my MySQL installation to allow very quick inserts. (there will be a point where a large select of all the data is required as well)

Note: the table will be eventually droped and the whole process run again at a later date.

Some clarification: currently using ...opencsv.CSVReader to parse the file then doing an insert on each line. I'm concating some columns though and ignoring others.

More clarification: Local DB MyISAM table

share|improve this question
Don't insert per line, batch up lots of rows and make less DB calls, your speed will go up dramatically. See my answer for a simple PreparedStatement batching example. – Hardwareguy Jun 30 '09 at 22:13

12 Answers 12

up vote 13 down vote accepted

Tips for fast insertion:

  • Use the LOAD DATA INFILE syntax to let MySQL parse it and insert it, even if you have to mangle it and feed it after the manipulation.
  • Use this insert syntax:

    insert into table (col1, col2) values (val1, val2), (val3, val4), ...

  • Remove all keys/indexes prior to insertion.

  • Do it in the fastest machine you've got (IO-wise mainly, but RAM and CPU also matter). Both the DB server, but also the inserting client, remember you'll be paying twice the IO price (once reading, the second inserting)
share|improve this answer
Having the file on the server is by far the fastest, but if you don't have that kind of access, you can still use LOAD DATA LOCAL INFILE. Just make sure to use a compressed connection if it's a big file. – Wouter van Nifterick Jul 1 '09 at 12:16
thanks, I actually in the end loaded the data in direct as it was using load data local file. I then wrote a series of somewhat complex sql queries to create another temp table in the format I wanted. Total time is now down to 30 seconds for 1.8 million records. Not bad from the orignal 10 hours the original developer created. This all done in mysql, no java required at all. – Derek Organ Aug 4 '10 at 23:46
Awesome! Option 2 (insert syntax) got me down from 77 minutes to 26 seconds when inserting 400,000 rows. – Robert Gowland Oct 24 '12 at 20:03

I'd probably pick a large number, like 10k rows, and load that many rows from the CSV, massage the data, and do a batch update, then repeat until you've gone through the entire csv. Depending on the massaging/amount of data 1.8 mil rows shouldn't take 10 hours, more like 1-2 hours depending on your hardware.

edit: whoops, left out a fairly important part, your con has to have autocommit set to false, the code I copied this from was doing it as part of the GetConnection() method.

    Connection con = GetConnection();
        		PreparedStatement ps = con.prepareStatement("INSERT INTO table(col1, col2) VALUES(?, ?)");
        			for(Data d : massagedData){
        				ps.setString(1, d.whatever());
                                        ps.setString(2, d.whatever2());
share|improve this answer
1-2 hours is still slow as hell. LOAD FROM INFILE finishes in a matter of seconds if it's in the same format as the table, especially if the .csv file already resides on the server. Try it, it's blazingly fast. You usually don't want an incomplete dataset in your database, so you're going to have to use a transaction and lock tables.. I personally don't know any production servers where locking tables for 1-2 hours is acceptable. – Wouter van Nifterick Jul 1 '09 at 12:11
He said 1.8 mil rows. Also this is a temp table so it's not going to lock any other tables. – Hardwareguy Jul 1 '09 at 16:16

Are you absolutely CERTAIN you have disabled auto commits in the JDBC driver?

This is the typical performance killer for JDBC clients.

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I'm not... I'll check this out.. thanks. – Derek Organ Jul 1 '09 at 12:03

You should really use LOAD DATA on the MySQL console itself for this and not work through the code...

LOAD DATA INFILE 'data.txt' INTO TABLE db2.my_table;

If you need to manipulate the data, I would still recommend manipulating in memory, rewriting to a flat file, and pushing it to the database using LOAD DATA, I think it should be more efficient.

share|improve this answer
-1 he said he needed to manipulate the data before putting it into the DB – Hardwareguy Jun 30 '09 at 21:54
@Hardwareguy: please see the change I added (before I saw you comment :) – Roee Adler Jun 30 '09 at 21:54
I'll remove my minus one but I still don't think that's the best way. – Hardwareguy Jun 30 '09 at 22:02

Another idea: do you use a PreparedStatement for inserting your data with JDBC ?

share|improve this answer
PreparedStatements with addBatch are the way I always do this. – Hardwareguy Jun 30 '09 at 22:05
interesting, does this offer any performance improvements? currently using ....opencsv.CSVReader to parse the file then doing an insert on each line. I'm concating some columns though and ignoring others. – Derek Organ Jun 30 '09 at 22:08
There is a lot of overhead in simply making a connection to the database. You'll see a huge speedup by batching inserts. – Hardwareguy Jun 30 '09 at 22:44

Depending on what exactly you need to do with the data prior to inserting it your best options in terms of speed are:

  • Parse the file in java / do what you need with the data / write the "massaged" data out to a new CSV file / use "load data infile" on that.
  • If your data manipulation is conditional (e.g. you need to check for record existence and do different things based on whether it's an insert or and update, etc...) then (1) may be impossible. In which case you're best off doing batch inserts / updates.
    Experiment to find the best batch size working for you (starting with about 500-1000 should be ok). Depending on the storage engine you're using for your table, you may need to split this into multiple transactions as well - having a single one span 1.8M rows ain't going to do wonders for performance.
  • share|improve this answer

    Your biggest performance problem is most likely not java but mysql, in particular any indexes, constraints, and foreign keys you have on the table you are inserting into. Before you begin your inserts, make sure you disable them. Re-enabling them at the end will take a considerable amount of time, but it is far more efficient than having the database evaluate them after each statement.

    You may also be seeing mysql performance problems due to the size of your transaction. Your transaction log will grow very large with that many inserts, so performing a commit after X number of inserts (say 10,000-100,000) will help insert speed as well.

    From the jdbc layer, make sure you are using the addBatch() and executeBatch() commands rather on your PreparedStatement rather than the normal executeUpdate().

    share|improve this answer

    You can improve bulk INSERT performance from MySQL / Java by using the batching capability in its Connector J JDBC driver.

    MySQL doesn't "properly" handle batches (see my article link, bottom), but it can rewrite INSERTs to make use of quirky MySQL syntax, e.g. you can tell the driver to rewrite two INSERTs:

    INSERT INTO (val1, val2) VALUES ('val1', 'val2'); 
    INSERT INTO (val1, val2) VALUES ('val3', 'val4');

    as a single statement:

    INSERT INTO (val1, val2) VALUES ('val1', 'val2'), ('val3','val4'); 

    (Note that I'm not saying you need to rewrite your SQL in this way; the driver does it when it can)

    We did this for a bulk insert investigation of our own: it made an order of magnitude of difference. Used with explicit transactions as mentioned by others and you'll see a big improvement overall.

    The relevant driver property setting is:


    See: A 10x Performance Increase for Batch INSERTs With MySQL Connector/J Is On The Way

    share|improve this answer

    Wouldn't it be faster if you used LOAD DATA INFILE instead of inserting each row ?

    share|improve this answer
    -1. Quote from question: "The reason I'm not piping it straight in from the file into the db, is the data has to be manipulated before it adds it to the database" – PatrikAkerstrand Jun 30 '09 at 21:55
    I saw this: manipulate your data, save it into a temporary file, call "load data infile", delete the temporary file. – Pierre Jun 30 '09 at 22:00

    I would run three threads...

    1) Reads the input file and pushes each row into a transformation queue 2) Pops from the queue, transforms the data, and pushes into a db queue 3) Pops from the db queue and inserts the data

    In this manner, you can be reading data from disk while the db threads are waiting for their IO to complete and vice-versa

    share|improve this answer
    That sounds good in theory, but thread 3 is where 95% of the work is going to happen so really you're not going to gain much by parallelizing the thread 1 and 2 tasks. – Hardwareguy Jun 30 '09 at 22:12
    Of course that depends on the transformations. In my experience that can involve many database lookups to valid the fields. If the source file is on a different disk than the database files there still should be some performance increase. If they have to be on the same disk, I would definitely bulk things into 1000 rows or more to reduce head seeks. – Reed Jun 30 '09 at 22:20
    I usually go with 2 threads (read&parse + upload). I haven't worked on superior networks and servers (in which case 3rd thread might be useful) but usually uploading and database actions take way longer than simply reading a file and parsing a couple integers. – Pijusn Aug 14 '14 at 8:52

    If you're not already, try using the MyISAM table type, just be sure to read up on its shortcomings before you do. It is generally faster than the other types of tables.

    If your table has indexes, it is usually faster to drop them then add them back after the import.

    If your data is all strings, but is better suited as a relational database, you'll be better off inserting integers that indicate other values rather than storing a long string.

    But in general, yes adding data to a database takes time.

    share|improve this answer

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