Python module to work with Magneto Database directly without using broken Magento 2 core
PyGento is built on top of the SQL Alchemy
SQLAlchemy is a library that facilitates the communication between Python programs and Magento databases. This library acts as an Object Relational Mapper (ORM) tool that translates Python classes to Magento tables and automatically converts function calls to SQL statements.
SQLAlchemy allows developers to create and ship enterprise-grade, production-ready Magento 2 applications easily and lets developers focus on business logic.
SQLAlchemy is the Python SQL toolkit and Object Relational Mapper that gives application developers the full power and flexibility of SQL.
It provides a full suite of well-known enterprise-level persistence patterns, designed for efficient and high-performing database access, adapted into a simple and Pythonic domain language.
Python abstraction over magento database has multiple Models per file vs Magento one file per Class
Python is not exclusively class-based - the natural unit of code decomposition in Python is the module. Modules are just as likely to contain functions (which are first-class objects in Python) as classes. In PHP Magento, the unit of decomposition is the class. PyGento hes several models per file. each model represent DB table. One PyGento model file contains all the classes for e-Commerce function (Catalog, Sales, Customer, Quote, Inventory).
Python is much more expressive than Magento, and if you restrict yourself to one class per file (which Python does not prevent you from doing) you will end up with lots of very small files - more to keep track of with very little benefit.
from sqlalchemy import create_engine
engine = create_engine('mysql+pymysql://root:******@127.0.0.1/magento2')
engine.connect()
To make it simple, we configure it to JSON and use it, and read config.json or YML from the original config
php -r '$x = include("app/etc/env.php"); echo json_encode($x);' > config.json
from models.catalog import CatalogProductEntity as Product
products = db.query(Product).all()
for product in products:
print ("Product:", product.__dict__)
print ("Product Sku:", product.sku)
If you have any issues or requires Magento Enterprise (Adobe Commerce/MSI) Version package, please, create a ticket or drop me email at: yegorshytikov@gmail.com
Many to one places a foreign key in the parent table referencing the child. relationship() is declared on the parent, where a new scalar-holding attribute will be created:
class Parent(Base):
__tablename__ = 'parent'
id = Column(Integer, primary_key=True)
child_id = Column(Integer, ForeignKey('child.id'))
child = relationship("Child")
class Child(Base):
__tablename__ = 'child'
id = Column(Integer, primary_key=True)
Bidirectional behavior is achieved by adding a second relationship() and applying the relationship.back_populates parameter in both directions:
__tablename__ = 'parent'
id = Column(Integer, primary_key=True)
child_id = Column(Integer, ForeignKey('child.id'))
child = relationship("Child", back_populates="parents")
class Child(Base):
__tablename__ = 'child'
id = Column(Integer, primary_key=True)
parents = relationship("Parent", back_populates="child")
Alternatively, the relationship.backref parameter may be applied to a single relationship(), such as Parent.child:
class Parent(Base):
__tablename__ = 'parent'
id = Column(Integer, primary_key=True)
child_id = Column(Integer, ForeignKey('child.id'))
child = relationship("Child", backref="parents")
The most useful loader in modern SQLAlchemy is the selectinload() loader option. This option solves the most common form of the “N plus one” problem which is that of a set of objects that refer to related collections. selectinload() will ensure that a particular collection for a full series of objects are loaded up front using a single query. It does this using a SELECT form that in most cases can be emitted against the related table alone, without the introduction of JOINs or subqueries, and only queries for those parent objects for which the collection isn’t already loaded. Below we illustrate selectinload() by loading all of the User objects and all of their related Address objects; while we invoke Session.execute() only once, given a select() construct, when the database is accessed, there are in fact two SELECT statements emitted, the second one being to fetch the related Address objects:
from sqlalchemy.orm import selectinload
stmt = (
select(User).options(selectinload(User.addresses)).order_by(User.id)
Initialize the new SQLAlchemy engine with create_async_engine() and create an async session maker by passing it the new AsyncSession class:
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.ext.asyncio import AsyncSession
from sqlalchemy.ext.asyncio import create_async_engine
from sqlalchemy.orm import sessionmaker
DATABASE_URL = "postgresql+asyncpg://postgres:postgres@localhost/asyncalchemy"
engine = create_async_engine(DATABASE_URL, echo=True)
Base = declarative_base()
async_session = sessionmaker(
engine, class_=AsyncSession, expire_on_commit=False
)
According to the performace test, PyGento returns 1-20 order data in 1ms when Magento requires 200+ ms Return 100 products with all data: Execution Time 0.07084512710571289 seconds in the debug mode and 0.05914497375488281 seconds in production mode Array Generate and Json Execution Time 0.008681297302246094 seconds
Select Execution Time 0.05763673782348633 seconds
Transponder Execution Time 0.0041141510009765625 seconds
Json Execution Time 0.004602909088134766 seconds
Request Execution Time 0.0689239501953125 seconds
for 10 product this results is:
Select Execution Time 0.013299703598022461 seconds
Transponder Execution Time 0.0005435943603515625 seconds
Json Execution Time 0.0006403923034667969 seconds
Request Execution Time 0.016859769821166992 seconds
For 1000 products result is:
Select Execution Time 0.8228793144226074 seconds
Transponder Execution Time 0.049771785736083984 seconds
Json Execution Time 0.051209449768066406 seconds
Request Execution Time 0.9310669898986816 seconds
In the future, these results can be improved using Async SQL requests and proper NoSQL product indexer...
engine = create_engine('mysql+pymysql://root:******@127.0.0.1/magento2', echo=True)
If True, the Engine will log all statements and a repr() of their parameter lists to the default log handler, which defaults to sys.stdout for output. If set to the string "debug," result rows will also be printed to the standard output.
https://www.youtube.com/watch?v=sO7FFPNvX2s
In this tutorial, we present a "from the ground up" tour of SQLAlchemy, what the general idea of it is how it's organized and what it looks like to use it. This is the latest version of the "classic" SQLAlchemy tutorial which has been presented on many occasions since 2008, reworked for the current recommended SQLAlchemy usage patterns with an emphasis on previewing the upcoming 1.4 and 2.0 releases of SQLAlchemy, which are poised to make major changes to many of SQLAlchemy's central paradigms and capabilities. SQLAlchemy is presented in terms of a four-layered model, which include "Engine and Connection Basics", "Table Metadata", "SQL Expression Language", and "ORM Usage" which is broken into two sections and API use is presented in terms of a console runner application which participants can install locally and follow along. The tutorial will also present some of the newest in-development features of SQLAlchemy 1.4 which have only just merged.