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I'm working on a project in which I'm supposed to build a Data Webhouse using as input a clickstream from an e-commerce store

In the clickstream we have a number that identifies the user (named 'loc_id'), his IP address, cookie (named "us") and the products he's clicked on, all in a txt file.

Since we''ll need to study a lot this data, we've created a MySQL scheme on localhost to work on. Our first table is the clickstream file, we just got the txt(csv) file and copied it directly to the table using Kettle (Spoon); the whole process took about 4 hours and it copied about 120 milions of rows to the MySQL table, named raw_loc08. We are just working with INNODB tables.

The table is as follows:

Column Name & Datatype:

Id        --> INT(10)
loc_id    --> VARCHAR(90)   
date      --> DATETIME   
IP        --> VARCHAR(20)   
categ-id  --> VARCHAR(15)  
prod_id   --> VARCHAR(40)  
us        --> VARCHAR(100)  
prop_code --> VARCHAR(2)  [prop_code is the name of the specif e-commerce store]

Id is PK, NN and AI. All columns have indexes.

So we had to build the "Users" table and that's where the problems began. We used for that a Python script to connect through MySQLdb to the MySQL Scheme. The script aims to find users that clicked at least on two products during the month period, as follows:

def compute_store_pref(d):
    prop= list(set([d[i][2] for i in range(len(d))]))
    if len(prop)==2: return 3
    if len(prop)==1:
        if prop[0]=='BP': return 1
        else: return 2

from mysqlconn3 import * %creates the cursos to connect to the database

c.execute('select max(Id) from temp_users082')
total=c.fetchone()
total=total[0]
t=0

while(1000*t <= total+1001):
    print t
    c.execute('select loc_id from temp_users082 where id between %s and %s' %(t*1000, (t+1)*1000))
    users=c.fetchall()

    for user in users:
        c.execute("select IP, us, prop_code from raw_loc08 where loc_id = '%s' and prod_id is not null" %(user[0]))
        data=c.fetchall()
        if len(data) < 2 or len(data)>300: continue
        c.execute("insert into users08 (loc_id, ncookies, us, IP, store_pref) values \
                    (%s, %s, %s, %s, %s)" %(user[0], len(set([data[i][1] for i in range(len(data))])), data[0][1], data[0][0], compute_store_pref(data)))
        c.execute('commit')
    t+=1                                    

temp_users082 is a temporary table containing all distinct loc_ids found in the clickstream in asc order.

The script gets 1000 loc_ids in the temp table (we make it so we don't lose connection to mysql. If we do something like 10000 python halts, so we need to go thousand by thousand). For each one, it tracks its IP, us, store of prefence in the raw_loc table and inserts the data into users' table.

But...the process is painfully slow. It's estimated to last 10 days...(and the temp table has 22 milions of loc_ids). I've already made another scripts in another tables and the process went really fast...but not in this case.

As I've researched what could be wrong, I found that I should have used c.executemany instead of just a single c.execute, but when I tried to make it in the improved way it took just the same time roughly (to insert 1000 users), so the problem is not there

I've used EXPLAIN and everything seems ok, we've created indexes in all columns used in the queries but users (there's just the primary key index in the users table)

I did some tests and this query is the one taking much longer:

c.execute("select IP, us, prop_code from raw_loc08 where loc_id = '%s' and prod_id is not null" %(user[0]))

The other ones are incredibly fast!

I read that optimizing MySQL was an option, so I've adjusted the parameters values following this site:

http://www.mysqlperformanceblog.com/2006/09/29/what-to-tune-in-mysql-server-after-installation/

But it didn't work as well (I don't know if by changing the my.ini file or the settings in workbench would affect python performance in executing queries, but it seems so far that it doesn't)

Another weird thing is that I made some tests and when I re-started them, the users that were already computed in the previous tests were processed this time really fast, but when it got to new users not processed yet it just got slow again, which means that it can go fast...but something is holding it back.

Users table has the following structure:

Column & Datatype:

user_id      --> INT(10)
loc_id       --> VARCHAR(90)
ncookies     --> INT(10)
us           --> VARCHAR(90)
IP           --> VARCHAR(15)
city         --> VARCHAR(50)
latitude     --> VARCHAR(45)
longitude    --> VARCHAR(45)
country_code --> VARCHAR(2)
store_pref   --> INT(2)

user_id is PK, NN, AI and every columns are set to 'NULL' standard value.

We are using a very powerful machine (Intel i7 3.8GHz 12 cores, 24G of Ram, Windows Server 2008, Mysql latest version) so certainly it can go much faster

I considered the option of making the ETL process via spoon...but using python is so much easier and since other scripts worked fine, python does not seem to be the real problem

Is there anything I can do to improve its performance? Or is there some mistake I did that is spoiling Python access to MySQL?

I really appreciate any help and if you need more info please let me know

Thanks in advance!

share|improve this question
    
I think you may be killing your db by looping through and making individual SQL queries. Can you just do a join for each 1000, chunk instead of doing a separate query for each user? –  dm03514 Nov 27 '11 at 1:42
    
I've tried what you suggested and it already was an improvement. It was taking about 40 seconds to load 1000 users, now its taking 30 segonds and the estimated time is 8 days. I´m searching for how to improve even more, I hope to find something. Tnx for the help =)! –  Will Nov 27 '11 at 7:11
    
Please add index for table, and add buffer for DB server, we can not discuss without those information –  PasteBT Mar 10 '12 at 1:32
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