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I am having trouble querying a table of > 5 million records from my MS SQL Server database. I want to be able to select all of the records, but my code seems to fail when selecting to much data into memory.

This works:

import pandas.io.sql as psql
sql = "SELECT TOP 1000000 * FROM MyTable" 
data = psql.read_frame(sql, cnxn)

...but this does not work:

sql = "SELECT TOP 2000000 * FROM MyTable" 
data = psql.read_frame(sql, cnxn)

It returns this error:

File "inference.pyx", line 931, in pandas.lib.to_object_array_tuples
(pandas\lib.c:42733) Memory Error

I have read here that a similar problem exists when creating a dataframe from a csv file, and that the work-around is to use the 'iterator' and 'chunksize' parameters like this:

read_csv('exp4326.csv', iterator=True, chunksize=1000)

Is there a similar solution for querying from an SQL database? If not, what is the preferred work-around? Do I need to read in the records in chunks by some other method? I read a bit of discussion here for working with large datasets in pandas, but it seems like a lot of work to execute a SELECT * query. Surely there is a simpler approach.

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How much memory do you have? –  Phillip Cloud Aug 7 '13 at 16:38
    
@PhillipCloud my machine has 4GB of ram. –  slizb Aug 7 '13 at 16:49
    
Depending on the dtype of your columns and the number of columns you could easily reach 4GB. E.g., –  Phillip Cloud Aug 8 '13 at 13:54
1  
Starting from pandas 0.15, you have a chunksize option in read_sql to read and process the query chunk by chunk: pandas.pydata.org/pandas-docs/version/0.15.0/io.html#querying –  joris Oct 8 '14 at 20:22

3 Answers 3

You could simply try to read the input table chunk-wise and assemble your full dataframe from the individual pieces afterwards, like this:

import pandas as pd
import pandas.io.sql as psql
chunk_size = 10000
offset = 0
dfs = []
while True:
  sql = "SELECT * FROM MyTable limit %d offset %d order by ID" % (chunk_size,offset) 
  dfs.append(psql.read_frame(sql, cnxn))
  offset += chunk_size
  if len(dfs[-1]) < chunk_size:
    break
full_df = pd.concat(dfs)

It might also be possible that the whole dataframe is simply too large to fit in memory, in that case you will have no other option than to restrict the number of rows or columns you're selecting.

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-Thanks, I will try this out, though I fear that the memory space may indeed be my issue. Also, Since I am using MS SQL-Server2008, the LIMIT and OFFSET SQL options are not available to me. Others should know to reference here for the solution specific to their setup –  slizb Aug 7 '13 at 17:01
1  
you can also write these df's to a HDF5 file (the question you referenced uses that, also peruse docs, appending the tables: pandas.pydata.org/pandas-docs/dev/io.html#hdf5-pytables. Then read back (sections, or iterate as needed); HDF5 much more compact then SQL for data –  Jeff Aug 7 '13 at 17:21
up vote 1 down vote accepted

A basic solution to my question: get more memory:

My company has a high performance computer with 64 GB of ram (16x that on my machine). I tried remoting in to this machine and running my code on it. To my delight, it worked with no memory errors!

This will not be a viable solution to everyone with this memory problem, but if you have the option it may get the job done.

HDF5 seems like the best way to go for a more permanent solution as described by @Jeff.

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As mentioned in a comment, starting from pandas 0.15, you have a chunksize option in read_sql to read and process the query chunk by chunk:

sql = "SELECT * FROM data_chunks"
for chunk in pd.read_sql_query(sql , engine, chunksize=5):
    print(chunk)

Reference: http://pandas.pydata.org/pandas-docs/version/0.15.2/io.html#querying

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