Found this while trying to figure out the same thing.
Here's how the answer appears to me. I'd LOVE to know if/where I'm wrong, or if this is all built into pandas by now.
To select data from a table via SQLAlchemy, you need to build a representation of that table within SQLAlchemy. If Jupyter Notebook's response speed is any indication, that representation isn't filled in (with data from your existing database) until a/the query is executed.
Table to build a table. You need
select to select data from the database. You need
metadata... for reasons that aren't clear, even in the docs (http://docs.sqlalchemy.org/en/latest/core/metadata.html#sqlalchemy.schema.MetaData).
from sqlalchemy import create_engine, select, MetaData, Table
engine = create_engine("dburl://user:pass@database/schema")
metadata = MetaData(bind=None)
table = Table('table_name', metadata, autoload = True, autoload_with = engine)
stmt = select([table]).where(table.columns.column_name == 'filter')
connection = engine.connect()
results = connection.execute(stmt).fetchall()
You can then iterate over the results.
for result in results:
I checked this with a local database, and the SQLAlchemy results are not equal to the raw SQL results. The difference, for my data set, was in how the numbers were formatted. SQL returned float64 (e.g.,
633.07), while SQLAlchemy returned objects (I think
Some help from here: https://www.datacamp.com/courses/introduction-to-relational-databases-in-python