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I'm developing on heroku using their Postgres add-on with the Dev plan, which has a connection limit of 20. I'm new to python and this may be trivial, but I find it difficult to abstract the database connection without causing OperationalError: (OperationalError) FATAL: too many connections for role.

Currently I have databeam.py:

import os
from flask import Flask
from flask.ext.sqlalchemy import SQLAlchemy
from settings import databaseSettings

class Db(object):
    def __init__(self):
        self.app = Flask(__name__)
        self.app.config.from_object(__name__)
        self.app.config['SQLALCHEMY_DATABASE_URI'] = os.environ.get('DATABASE_URL', databaseSettings())
        self.db = SQLAlchemy(self.app)

db = Db()

And when I'm creating a controller for a page, I do this:

import databeam

db = databeam.db
locations = databeam.locations

templateVars = db.db.session.query(locations).filter(locations.parent == 0).order_by(locations.order.asc()).all()

This does produce what I want, but slowly and at times causes the error metioned above. Since I come from a php background I have a certain mindset of how to deal with DB connections (I.e. like the example above), but I fear it doesn't fit well with python.

What is the proper way of abstracting the db connection in one place and then just using the same connection in all imports?

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1 Answer 1

up vote 4 down vote accepted

Within SQL Alchemy you should be able to create a connection pool. This pool is what the pool size would be for each Dyno. On the Dev and Basic plan since you could have up to 20, you could set this at 20 if you run 1 dyno, 10 if you run 2, etc. To configure your pool you can setup the engine:

engine = create_engine('postgresql://me@localhost/mydb',
                   pool_size=20, max_overflow=0)

This sets up your db engine with a pool which you pull from automatically then. You can also configure the pool manually, more details on that can be found on the pooling guide of SQL Alchemy - http://docs.sqlalchemy.org/en/latest/core/pooling.html

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