Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'm using Pandas' to_sql function to write to MySQL, which is timing out due to large frame size (1M rows, 20 columns).

http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.to_sql.html

Is there a more official way to chunk through the data and write rows in blocks? I've written my own code, which seems to work. I'd prefer an official solution though. Thanks!

def write_to_db(engine, frame, table_name, chunk_size):

    start_index = 0
    end_index = chunk_size if chunk_size < len(frame) else len(frame)

    frame = frame.where(pd.notnull(frame), None)
    if_exists_param = 'replace'

    while start_index != end_index:
        print "Writing rows %s through %s" % (start_index, end_index)
        frame.iloc[start_index:end_index, :].to_sql(con=engine, name=table_name, if_exists=if_exists_param)
        if_exists_param = 'append'

        start_index = min(start_index + chunk_size, len(frame))
        end_index = min(end_index + chunk_size, len(frame))

engine = sqlalchemy.create_engine('mysql://...') #database details omited
write_to_db(engine, frame, 'retail_pendingcustomers', 20000)
share|improve this question
    
fwiw, i've had to do this exact thing. –  Paul H Jun 3 '14 at 6:08
4  
There is no official solution at the moment, but we would certainly accept a patch to implement this (there is an issue about chunksize for read_sql (github.com/pydata/pandas/issues/2908), you can always open one for this). –  joris Jun 3 '14 at 6:51
    
I created an issue. @joris- if you wouldn't mind please add a comment there and back me up :). github.com/pydata/pandas/issues/7347 –  Krishan Gupta Jun 5 '14 at 3:57
    
Why don't you just export the data as a csv file (it has to be in the format of the table) and then use the load data infile command? –  chuse Aug 1 '14 at 10:06

2 Answers 2

Update: this functionality has been merged in pandas master and will be released in 0.15 (probably end of september), thanks to @artemyk! See https://github.com/pydata/pandas/pull/8062

So starting from 0.15, you can specify the chunksize argument and e.g. simply do:

df.to_sql('table', engine, chunksize=20000)
share|improve this answer

There is beautiful idiomatic function chunks provided in answer to this question

In your case you can use this function like this:

def chunks(l, n):
""" Yield successive n-sized chunks from l.
"""
    for i in xrange(0, len(l), n):
         yield l.iloc[i:i+n]

def write_to_db(engine, frame, table_name, chunk_size):
    for idx, chunk in enumerate(chunks(frame, chunk_size)):
        if idx == 0:
            if_exists_param = 'replace':
        else:
            if_exists_param = 'append'
        chunk.to_sql(con=engine, name=table_name, if_exists=if_exists_param)

Only drawback that it doesn't support slicing second index in iloc function.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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