1

I have a rather large dataframe (500k+ rows) that I'm trying to load to Vertica. I have the following code working, but it is extremely slow.

#convert df to list format
lists = output_final.values.tolist()

#make insert string
insert_qry = " INSERT INTO SCHEMA.TABLE(DATE,ID, SCORE) VALUES (%s,%s,%s) "

# load into database
for i in range(len(lists)):
    cur.execute(insert_qry, lists[i])
conn_info.commit()

I have seen a few posts talking about using COPY rather than EXECUTE to do this large of a load, but haven't found a good working example.

1 Answer 1

4

After a lot of trial and error... I found that the following worked for me.

   # insert statements
    copy_str = "COPY SCHEMA.TABLE(DATE,ID, SCORE)FROM STDIN DELIMITER ','"

    # turn the df into a csv-like object
    stream = io.StringIO()
    contact_output_final.to_csv(stream, sep=",",index=False, header=False)

    # reset the position of the stream variable
    stream.seek(0)

    # load to data
    with conn_info.cursor() as cursor:
        cur.copy(copy_str,stream.getvalue())
    conn_info.commit() 
1
  • How is the speed? Oct 20, 2021 at 18:15

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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