Metadata-Version: 2.0
Name: mlalchemy
Version: 0.2.2
Summary: Library for converting YAML/JSON to SQLAlchemy SELECT queries
Home-page: https://github.com/thanethomson/MLAlchemy
Author: Thane Thomson
Author-email: connect@thanethomson.com
License: MIT
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Natural Language :: English
Classifier: Operating System :: POSIX
Classifier: Operating System :: MacOS
Classifier: Programming Language :: Python :: 2.7
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Topic :: Database
Classifier: Topic :: Utilities
Classifier: Topic :: Software Development :: Libraries
Requires-Dist: PyYAML (>=3.11)
Requires-Dist: future (>=0.16.0)
Requires-Dist: sqlalchemy (>=1.1)

MLAlchemy
=========

Overview
--------

MLAlchemy is a Python-based utility library aimed at allowing relatively
safe conversion from YAML/JSON to SQLAlchemy read-only queries. One use
case here is to allow RESTful web applications (written in Python) to
receive YAML- or JSON-based queries for data, e.g. from a front-end
JavaScript-based application.

The name "MLAlchemy" is an abbreviation for "Markup Language for
SQLAlchemy".

Installation
------------

Installation via PyPI:

.. code:: bash

    > pip install mlalchemy

Query Examples
--------------

To get a feel for what MLAlchemy queries look like, take a look at the
following. **Note**: All field names are converted from ``camelCase`` or
``kebab-case`` to ``snake_case`` prior to query execution.

Example YAML Queries
~~~~~~~~~~~~~~~~~~~~

Fetching all the entries from a table called ``Users``:

.. code:: yaml

    from: Users

Limiting the users to only those with the last name "Michaels":

.. code:: yaml

    from: Users
    where:
      last-name: Michaels

A more complex YAML query:

.. code:: yaml

    from: Users
    where:
      $or:
        last-name: Michaels
        first-name: Michael
      $gt:
        date-of-birth: 1984-01-01

The raw SQL query for the above would look like:

.. code:: sql

    SELECT * FROM users WHERE
      (last_name = "Michaels" OR first_name = "Michael") AND
      (date_of_birth > "1984-01-01")

Example JSON Queries
~~~~~~~~~~~~~~~~~~~~

The same queries as above, but in JSON format. To fetch all entries in
the ``Users`` table:

.. code:: json

    {
        "from": "Users"
    }

Limiting the users to only those with the last name "Michaels":

.. code:: json

    {
        "from": "Users",
        "where": {
            "lastName": "Michaels"
        }
    }

And finally, the more complex query:

.. code:: json

    {
        "from": "Users",
        "where": {
            "$or": {
                "lastName": "Michaels",
                "firstName": "Michael"
            },
            "$gt": {
                "dateOfBirth": "1984-01-01"
            }
        }
    }

Usage
-----

A simple example of how to use MLAlchemy:

.. code:: python

    from sqlalchemy import create_engine, Column, Integer, String, Date
    from sqlalchemy.ext.declarative import declarative_base
    from sqlalchemy.orm import sessionmaker

    from mlalchemy import parse_yaml_query, parse_json_query

    Base = declarative_base()


    class User(Base):
        __tablename__ = "users"

        id = Column(Integer, primary_key=True)
        first_name = Column(String)
        last_name = Column(String)
        date_of_birth = Column(Date)


    # use an in-memory SQLite database for this example
    engine = create_engine("sqlite:///:memory:")
    Base.metadata.create_all(engine)
    Session = sessionmaker(bind=engine)
    session = Session()

    # add a couple of dummy users
    user1 = User(first_name="Michael", last_name="Anderson", date_of_birth=date(1980, 1, 1))
    user2 = User(first_name="James", last_name="Michaels", date_of_birth=date(1976, 10, 23))
    user3 = User(first_name="Andrew", last_name="Michaels", date_of_birth=date(1988, 8, 12))
    session.add_all([user1, user2, user3])
    session.commit()

    # we need a lookup table for MLAlchemy
    tables = {
        "User": User
    }

    # try a simple YAML-based query first
    all_users = parse_yaml_query("from: User").to_sqlalchemy(session, tables).all()
    print(all_users)

    # same query, but this time in JSON
    all_users = parse_json_query("""{"from": "User"}""").to_sqlalchemy(session, tables).all()
    print(all_users)

    # a slightly more complex query
    young_users = parse_yaml_query("""from: User
    where:
        $gt:
            date-of-birth: 1988-01-01
    """).to_sqlalchemy(session, tables).all()
    print(young_users)

Query Language Syntax
---------------------

As mentioned before, queries can either be supplied in YAML format or in
JSON format to one of the respective parsers.

``from``
~~~~~~~~

At present, MLAlchemy can only support selecting data from a single
table (multi-table support is planned in future). Here, the ``from``
parameter allows you to specify the name of the table from which to
select data.

``where``
~~~~~~~~~

The ``where`` parameter defines, in hierarchical fashion, the structure
of the logical query to perform. There are 3 kinds of key types in the
JSON/YAML structures, as described in the following table.

+-----------------+----------------------------+---------------------------------------+
| Kind            | Description                | Options                               |
+=================+============================+=======================================+
| **Operators**   | Logical (boolean)          | ``$and``, ``$or``, ``$not``           |
|                 | operators for combining    |                                       |
|                 | sub-clauses                |                                       |
+-----------------+----------------------------+---------------------------------------+
| **Comparators** | Comparative operators for  | ``$eq``, ``$gt``, ``$gte``, ``$lt``,  |
|                 | comparing fields to values | ``$lte``, ``$like``, ``$neq``,        |
|                 |                            | ``$in``, ``$nin``, ``$is``            |
+-----------------+----------------------------+---------------------------------------+
| **Field Names** | The name of a field in the | (Depends on table)                    |
|                 | ``from`` table             |                                       |
+-----------------+----------------------------+---------------------------------------+

``order-by`` (YAML) or ``orderBy`` (JSON)
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

Provides the ordering for the resulting query. Must either be a single
field name or a list of field names, with the direction specifier in
front of the field name. For example:

.. code:: yaml

    # Order by "field2" in ascending order
    order-by: field2

Another example:

.. code:: yaml

    # Order by "field2" in *descending* order
    order-by: "-field2"

A more complex example:

.. code:: yaml

    # Order first by "field1" in ascending order, then by "field2" in
    # descending order
    order-by:
        - field1
        - "-field2"

``offset``
~~~~~~~~~~

Specifies the number of results to skip before providing results. If not
specified, no results are skipped.

``limit``
~~~~~~~~~

Specifies the maximum number of results to return. If not specified,
there will be no limit to the number of returned results.

Query Examples
--------------

Example 1: Simple Query
~~~~~~~~~~~~~~~~~~~~~~~

The following is an example of a relatively simple query in YAML format:

.. code:: yaml

    from: SomeTable
    where:
        - $gt:
            field1: 5
        - $lt:
            field2: 3
    order-by:
        - field1
    offset: 2
    limit: 10

This would translate into the following SQLAlchemy query:

.. code:: python

    from sqlalchemy.sql.expression import and_

    session.query(SomeTable).filter(
        and_(SomeTable.field1 > 5, SomeTable.field2 < 3)
    ) \
        .order_by(SomeTable.field1) \
        .offset(2) \
        .limit(10)

Example 2: Slightly More Complex Query
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

The following is an example of a more complex query in YAML format:

.. code:: yaml

    from: SomeTable
    where:
        - $or:
            field1: 5
            field2: something
        - $not:
            $like:
                field3: "else%"

This would translate into the following SQLAlchemy query:

.. code:: python

    from sqlalchemy.sql.expression import and_, or_, not_

    session.query(SomeTable) \
        .filter(
            and_(
                or_(
                    SomeTable.field1 == 5,
                    SomeTable.field2 == "something"
                ),
                not_(
                    SomeTable.field3.like("else%")
                )
            )
        )

Example 3: Complex JSON Query
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

The following is an example of a relatively complex query in JSON
format:

.. code:: json

    {
        "from": "SomeTable",
        "where": [
            {
                "$or": [
                    {"field1": 10},
                    {
                        "$gt": {
                            "field2": 5
                        }
                    }
                ],
                "$and": [
                    {"field3": "somevalue"},
                    {"field4": "othervalue"},
                    {
                        "$or": {
                            "field5": 5,
                            "field6": 6
                        }
                    }
                ]
            }
        ],
        "orderBy": [
            "field1",
            "-field2"
        ],
        "offset": 2,
        "limit": 10
    }

This query would be translated into the following SQLAlchemy code:

.. code:: python

    from sqlalchemy.sql.expression import and_, or_, not_

    session.query(SomeTable) \
        .filter(
            and_(
                or_(
                    SomeTable.field1 == 10,
                    SomeTable.field2 > 5
                ),
                and_(
                    SomeTable.field3 == "somevalue",
                    SomeTable.field4 == "othervalue",
                    or_(
                        SomeTable.field5 == 5,
                        SomeTable.field6 == 6
                    )
                )
            )
        ) \
        .order_by(SomeTable.field1, SomeTable.field2.desc()) \
        .offset(2) \
        .limit(10)

License
-------

**The MIT License (MIT)**

Copyright (c) 2017 Thane Thomson

Permission is hereby granted, free of charge, to any person obtaining a
copy of this software and associated documentation files (the
"Software"), to deal in the Software without restriction, including
without limitation the rights to use, copy, modify, merge, publish,
distribute, sublicense, and/or sell copies of the Software, and to
permit persons to whom the Software is furnished to do so, subject to
the following conditions:

The above copyright notice and this permission notice shall be included
in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS
OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF
MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT.
IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY
CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT,
TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE
SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.


