This topic hasn't been addressed in a while, here or elsewhere. Is there a solution converting a SQLAlchemy <Query object> to a pandas DataFrame?

Pandas has the capability to use pandas.read_sql but this requires use of raw SQL. I have two reasons for wanting to avoid it: 1) I already have everything using the ORM (a good reason in and of itself) and 2) I'm using python lists as part of the query (eg: .db.session.query(Item).filter(Item.symbol.in_(add_symbols) where Item is my model class and add_symbols is a list). This is the equivalent of SQL SELECT ... from ... WHERE ... IN.

Is anything possible?

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Below should work in most cases:

df = pd.read_sql(query.statement, query.session.bind)

See pandas.read_sql documentation for more information on the parameters.

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  • @van +1 but could do with a little bit more detail. e.g. I did df = pd.read_sql(query, query.bind) when query is a sqlalchemy.sql.selectable.Select. Otherwise, I got 'Select' object has no attribute 'session'. – Little Bobby Tables Mar 16 '17 at 12:06
  • In order to to copy-paste, I added link to the documentation directly in the answer, which covers your question: you should provide the con parameter, which can be the engine or connection string – van Mar 17 '17 at 9:02
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    @van Would it be better to use query.session.connection() here? Otherwise the query doesn't take into account unpersisted changes in the session... – dataflow Jun 23 '17 at 23:30
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    @dataflow: I think you are right, but i have never tested the assumption. – van Jun 27 '17 at 19:06
  • @van - this throws 'TypeError: sequence item 0: expected string, DefaultMeta found'; been tearing my hair out all day trying to figure out what's wrong. Only thing I can figure is that it might have something to do with trying to extract a connection from a scoped_session.... – andrewpederson Jan 18 '18 at 22:13

Just to make this more clear for novice pandas programmers, here is a concrete example,

pd.read_sql(session.query(Complaint).filter(Complaint.id == 2).statement,session.bind) 

Here we select a complaint from complaints table (sqlalchemy model is Complaint) with id = 2

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    I think this is more clear, when the code is ORM based. – user40780 Sep 19 '17 at 1:52
  • OMG! I struggled with sqlAlchemy hell a lot. Just a side note here: You can also write read_sql('SELECT * FROM TABLENAME', db.session.bind) . Thanks. The above answer helped me more than the accepted one. – PallavBakshi Jan 19 '18 at 14:24
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    What does .statement do? – cardamom Feb 20 '18 at 9:05
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    @cardamom it returns the sql query. – Nuno André Jun 2 '18 at 0:54

The selected solution didn't work for me, as I kept getting the error

AttributeError: 'AnnotatedSelect' object has no attribute 'lower'

I found the following worked:

df = pd.read_sql_query(query.statement, engine)
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If you want to compile a query with parameters and dialect specific arguments, use something like this:

c = query.statement.compile(query.session.bind)
df = pandas.read_sql(c.string, query.session.bind, params=c.params)
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from sqlalchemy import Column, Integer, String, create_engine
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import sessionmaker

engine = create_engine('postgresql://postgres:postgres@localhost:5432/DB', echo=False)
Base = declarative_base(bind=engine)
Session = sessionmaker(bind=engine)
session = Session()

conn = session.bind

class DailyTrendsTable(Base):

    __tablename__ = 'trends'
    __table_args__ = ({"schema": 'mf_analysis'})

    company_code = Column(DOUBLE_PRECISION, primary_key=True)
    rt_bullish_trending = Column(Integer)
    rt_bearish_trending = Column(Integer)
    rt_bullish_non_trending = Column(Integer)
    rt_bearish_non_trending = Column(Integer)
    gen_date = Column(Date, primary_key=True)

df_query = select([DailyTrendsTable])

df_data = pd.read_sql(rt_daily_query, con = conn)
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  • The import of select in df_query = select([DailyTrendsTable]) is missing. from sqlalchemy import select – Carlos Azevedo May 23 at 16:19

For completeness sake: As alternative to the Pandas-function read_sql_query(), you can also use the Pandas-DataFrame-function from_records() to convert a structured or record ndarray to DataFrame.
This comes in handy if you e.g. have already executed the query in SQLAlchemy and have the results already available:

import pandas as pd 
from sqlalchemy import Column, Integer, String, create_engine
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import scoped_session, sessionmaker

SQLALCHEMY_DATABASE_URI = 'postgresql://postgres:postgres@localhost:5432/my_database'
engine = create_engine(SQLALCHEMY_DATABASE_URI, pool_pre_ping=True, echo=False)
db = scoped_session(sessionmaker(autocommit=False, autoflush=False, bind=engine))
Base = declarative_base(bind=engine)

class Currency(Base):
    """The `Currency`-table"""
    __tablename__ = "currency"
    __table_args__ = {"schema": "data"}

    id = Column(Integer, primary_key=True, nullable=False)
    name = Column(String(64), nullable=False)

# Defining the SQLAlchemy-query
currency_query = db.query(Currency).with_entities(Currency.id, Currency.name)

# Getting all the entries via SQLAlchemy
currencies = currency_query.all()

# We provide also the (alternate) column names and set the index here,
# renaming the column `id` to `currency__id`
df_from_records = pd.DataFrame.from_records(currencies
    , index='currency__id'
    , columns=['currency__id', 'name'])

# Or getting the entries via Pandas instead of SQLAlchemy using the
# aforementioned function `read_sql_query()`. We can set the index-columns here as well
df_from_query = pd.read_sql_query(currency_query.statement, db.bind, index_col='id')
# Renaming the index-column(s) from `id` to `currency__id` needs another statement
df_from_query.index.rename(name='currency__id', inplace=True)
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