I have a PostgreSQL db. Pandas has a 'to_sql' function to write the records of a dataframe into a database. But I haven't found any documentation on how to update an existing database row using pandas when im finished with the dataframe.

Currently I am able to read a database table into a dataframe using pandas read_sql_table. I then work with the data as necessary. However I haven't been able to figure out how to write that dataframe back into the database to update the original rows.

I dont want to have to overwrite the whole table. I just need to update the rows that were originally selected.

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    Upon further research I still haven't found a solution. It seems you can set a flag with pandas to_sql(if_exists='append'). But there doesn't seem to be anything for if_exists='update'. I find this really strange. What is the suggested way to get a pandas dataframe back into a database and update any rows that have changed? Surely this is a common task? – darkpool Apr 14 '15 at 7:29
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    Are you adding or removing new rows to the dataframe? If you are not, I guess you know you could do queries. But even if you are adding or removing rows, there could be a simple way to perform it with queries, after dropping the primary key. If you give a bit more description, I think there is a chance for a relatively simple answer just using queries. – lrnzcig Apr 14 '15 at 14:23
  • to_sql does not support updates. The best approach I have found so far is to create an ON INSERT trigger in the database table, that updates all fields if inserting a duplicate primary key. – ostrokach Oct 1 '15 at 1:03
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    Are your data large? A blunt instrument solution could be: read in the database table again into some sort of original_table dataframe, call original_table.update(modified_table) where modified_table is your dataframe, and then ...to_sql(if_exists='replace') with this new dataframe object. – James Nov 13 '15 at 15:41
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    This should work next year when postgres 9.5 is released which supports UPSERT! – Migwell Dec 26 '15 at 16:10

One way is to make use of an sqlalchemy "table class" and session.merge(row), session.commit():

Here is an example:

for row in range(0, len(df)):
    row_data = table_class(column_1=df.ix[i]['column_name'],

For sql alchemy case of read table as df, change df, then update table values based on df, I found the df.to_sql to work with name=<table_name> index=False if_exists='replace'

This should replace the old values in the table with the ones you changed in the df

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