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I am doing a large insert(by reading a file). The file looks like,


There are millions of lines in the file and it is around 3 GB in size. Reading each line to a variable and then doing a single INSERT wont work(because I have only around 2 GB of RAM). So I read line by line and create the mysql INSERT string. When the code have read 5000 lines, I INSERT them to the DB, so there will be 5000 records in an INSERT. The MySQL query in my code ( INSERT IGNORE INTO $curr VALUES $string ) runs as usual until around 25000 lines are read and INSERTed, but then it slows down and takes around 5-10 second just for one INSERTion. In fact, I think it decreases linearly as the records increases.

Perl code snippet :

sub StoreToDB {
my $self = shift;;
my $data_struc = $self->_getDATA();
my $file = $data_struc->{DOMAIN_FILE};
my ($count,$cnt,$string,$curr) = (0,0,'',$self->_getTLD() . '_current');
open FH,$file or ( FullLogger($self->_getTLD(),"Cant open $file from StoreToDB : $!\n") and return );
while (<FH>) {
   if ( $cnt == MAX ) {
      $self->_dbExecute("INSERT IGNORE INTO $curr VALUES $string");
      $count += $cnt;
      $cnt = 0;
      $string = '';
      Logger("Inside StoreToDB, count is : $count ***\n");
   $string .= "('" . $_ . "')";
   $string = ($cnt != MAX ? $string . ',' : $string . ';');
close FH;
return 1;

DB table details :

mysql> SHOW CREATE TABLE com_current;
| Table | Create Table |
| com_current | CREATE TABLE `com_current` (
`domain` varchar(60) NOT NULL,
PRIMARY KEY (`domain`)

1 row in set (16.60 sec)


MySQL status output :

Uptime: 1057 Threads: 2 Questions: 250 Slow queries: 33 Opens: 38 Flush tables: 1 Open tables: 28 Queries per second avg: 0.236

=============================================================== UPdATE :

So far I have tried the below methods, but none of them was better :

1) LOCK TABLES my_table WRITE;
   then after inserting, I unlock it,
   this is currently in progress, but seems worse than the original method.

Also, I dont know whether or not my my.cnf has any issues. So I have pasted it here.

port        = 3306
socket      = /tmp/mysql.sock

datadir = /mnt/mysql/data
port        = 3306
socket      = /tmp/mysql.sock
key_buffer_size = 16M
max_allowed_packet = 1M
table_open_cache = 64
sort_buffer_size = 512K
net_buffer_length = 8K
read_buffer_size = 256K
read_rnd_buffer_size = 512K
myisam_sort_buffer_size = 8M
server-id   = 1

max_allowed_packet = 16M


key_buffer_size = 20M
sort_buffer_size = 20M
read_buffer = 2M
write_buffer = 2M

share|improve this question
Don't forget to insert remaining records – Alexandr Ciornii Dec 9 '11 at 15:23

5 Answers 5

You can use LOAD DATA INFILE syntax, instead of sending one row per insert statement.

share|improve this answer
load data infile is the way to go. – Pete Wilson Dec 9 '11 at 13:55
Yes, I just came to know about that option. But are you sure that it wont cause any problems(memory and server slow down) if my file size is around 1-4 GB and when I have only around 1.5 GB of RAM ? – M-D Dec 9 '11 at 14:05
Also, actually I "build" 5000 rows(the value of MAX in the code) by reading the file and then I insert them and I continue it until EOF. So do the inserts lie on the queue and dont let any other inserts ? – M-D Dec 9 '11 at 14:10
Bulk inserting a lot of data will have an impact on executing SELECT statements. My impression based on the question is that this is a one-time thing. If it isn't, I would suggest balancing read and write performance to make sure the application is still responsive for users. Also, typically DBs store considerably more data than they have in memory space to hold--it's a performance trade-off. – Nick Dec 9 '11 at 14:11
Nick, I dont use "SELECT" while I am doing this mass INSERT. – M-D Dec 9 '11 at 14:30

If you're starting with an empty table, or there are fewer rows in the table than you are inserting, then disabling indexes will speed things up significantly.


OTOH if you've already got a lot of data in there, it may actually slow things down.

Batching up the inserts will help with performance (particularly if indexes are enabled), e.g. from the mysql manual:

INSERT INTO tbl_name (a,b,c) VALUES(1,2,3),(4,5,6),(7,8,9);

(and looking at what you're doing, you might consider using INSERT IGNORE... and sorting the list first).

But one of the best ways to improve performance for bulk inserts is to load the data into a seperate, dedicated table, then use INSERT....SELECT... (using an ORDER BY on the SELECT statement based on the most heavily used index will help to keep it balanced).

share|improve this answer
Yes, I start with an empty table. But if I do the "DISABLE KEYS" before starting the INSERT, can I still use "INSERT IGNORE" as I have done in the Perl script ? Also, I do batching to a certain extent. That is, as you can see in the code, I read each line from the file, then build the INSERT string and if I have created 5000 rows ( if ( $cnt == MAX ) ) then I insert all of them together and start again. So will this be causing the slow down ? – M-D Dec 9 '11 at 14:24
If you are starting with an empty table, then you really need to disable keys. The reason is that MySQL will incrementally build the B-tree indexes that your table uses as you insert. Doing this incrementally (rebalancing the trees, etc) is a lot more work than doing it all at once. You do need to realize though that the last ALTER TABLE to re-enable the keys will take a while since it needs to then build your indexes. – mpeters Dec 9 '11 at 16:48
@mpeters : Will 'IGNORE' work in that case as well ? I mean there can be many duplicates for the primary key value, so even if we disable keys will the insert work without any issues ? – M-D Dec 9 '11 at 17:09
Worth keeping in mind that DISABLE KEYS will work only for MyISAM. (Or at least not for InnoDB.) – tsee Dec 12 '11 at 19:17

As others have said, using LOAD DATA INFILE is almost certainly your best approach.

But there's one obvious issue with your Perl code that you could also try. I don't know how your database interaction is working (_dbExecute isn't a Perl DBI method) but it looks like it's going to be preparing the SQL statement every time. That's going to be rather inefficient. Instead, you should prepare the statement once and use placeholders in it to insert the variable data.

In DBI terms, you're doing something like this:

foreach (@data) {
  my $sth = $dbh->prepare('INSERT INTO SOME_TABLE (COL1) VALUES ($_)');

When you should be doing something like this:

my $sth = $dbh->prepare('INSERT INTO SOME_TABLE (COL1) VALUES (?)');

foreach (@data) {

You'll almost certainly find that more efficient.

See the documentation on Placeholders and Bind Values for more details.

share|improve this answer
Do you think that I can use LOAD DATA INFILE even if I have only around 1+ GB RAM and the file is 1-5 GBs in size ? Also, you are correct, in the method _dbExecute I use DBI prepare and execute. – M-D Dec 9 '11 at 15:15
Also, try batched inserts instead of inserting one row at a time. – tsee Dec 12 '11 at 19:15
You can also use prepare_cached instead of prepare in your _dbExecute function, it accomplishes the same thing but you will not have to change as much of your code (well, it would be only a few lines anyway, but s/prepare/prepare_cached/ is still less.) – Dondi Michael Stroma Sep 24 '12 at 7:20

Using LOAD DATA INFILE, as per ypercube's answer, is probably the way to go. As an alternative, you could also start a transaction, then commit it every 500 or so inserts and start a new one. This tends to optimize disk access by storing the transaction in memory and doing the writes all at once.

share|improve this answer
Okay, that sounds good. I will check that option. – M-D Dec 9 '11 at 14:31

As several people mentioned, LOAD DATA INFILE is going to be the fastest method of getting data into MySQL. It's worthwhile to insert into a fresh table if at all possible. Then, you can:

  • drop non-unique indexes before you insert. (or disable keys for myisam).
  • insert in Primary Key order.

Original research that I did a while ago:

The major gotcha is that large LOADs can wreak havoc on your replication.

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