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.
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.