I need to load a table from SQL server. It's the first time that I'm doing that, which is causing my uncertainty and missing expertise in this domain.

I need the data of the whole table which has 64 million rows. To write it into a pandas dataframe I tried the following code and also tried SQLalchemy and some chunksize examples which failed to work at all. Maybe dask is more efficient than pandas, however I have never used dask before.

The code works up to TOP 1000000, which takes 7.5 minutes. However larger queries are not finishing successfully.

Maybe someone can help me figuring out the 'beste practice' to do this.

import pandas as pd
import pyodbc

conn = pyodbc.connect('Driver={SQL Server};'
cursor = conn.cursor()
query = 'SELECT * FROM [Clusteranalysis].[dbo].[Data] WHERE Rc=0'
result_port_map = pd.read_sql(query, conn)

Thank you for your help!

  • I think you need to rethink what you're doing see: stackoverflow.com/questions/14262433/…. Basically if the df becomes unwieldy to store in memory then you need to use fast out of memory storage – EdChum Apr 10 '19 at 13:32
  • I also read this discussion, but couldn't figure out how to apply it to my problem. :/ – Mike_H Apr 10 '19 at 13:34
  • Well first question is do you need to load the whole data? You could export the data to HDF or use dask. The other thing is do you need to use pandas? You already have data in your database so you could just run your queries on that unless you want to do some analysis that is too difficult or not possible in a DB then you could load it into HDF – EdChum Apr 10 '19 at 13:36
  • Depending on what you actually want to calculate you should try to do as much as possible within the DBMS (e.g. pre-aggregating) to reduce the data before unloading it to Pandas – dnoeth Apr 10 '19 at 13:36
  • @EdChum Yes I need to load everything. That's the bad fact.. Okay I have no experience using HDF nor dask. So pandas is the wrong too to use here, when I'm not able to pre-aggregate my data before unloading it? – Mike_H Apr 10 '19 at 13:37

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