From the source of to_sql, I can see that it gets mapped to an Meta Data object
meta = MetaData(con, schema=schema). However, I can't find SQLAlchemy docs that tell me how to define the Schema for MySQL
How do I specify the schema string ?
DataFrame.to_sql(self, name, con, schema=None, if_exists='fail', index=True, index_label=None, chunksize=None, dtype=None, method=None)
Just use schema parameter. But note that schema is not odbc driver.
The schema parameter in
to_sql is confusing as the word "schema" means something different from the general meaning of "table definitions". In some SQL flavors, notably postgresql, a schema is effectively a namespace for a set of tables.
For example, you might have two schemas, one called
test and one called
prod. Each might contain a table called
user_rankings generated in pandas and written using the
to_sql command. You would specify the
test schema when working on improvements to user rankings. When you are ready to deploy the new rankings, you would write to the
As others have mentioned, when you call
to_sql the table definition is generated from the type information for each column in the dataframe. If the table already exists in the database with exactly the same structure, you can use the
append option to add new data to the table.
Starting from the Dialects page of the SQLAlchemy documentation, select documentation page of your dialect and search for
create_engine to find example on how to create it.
Even more concise overview you can get on Engine Configuration page for all supported dialects.
Verbatim extract for
# default engine = create_engine('mysql://scott:tiger@localhost/foo') # mysql-python engine = create_engine('mysql+mysqldb://scott:tiger@localhost/foo') # MySQL-connector-python engine = create_engine('mysql+mysqlconnector://scott:tiger@localhost/foo') # OurSQL engine = create_engine('mysql+oursql://scott:tiger@localhost/foo')
Then pass this
engine to the
to_sql(...) of pandas' DataFrame.