Skip to content

Generate schema code from model definitions for both Python and MATLAB

License

Notifications You must be signed in to change notification settings

auto-pi-lot/datajoint-babel

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

10 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PyPI PyPI - Status PyPI - Python Version

datajoint-babel

Generate schema code from model definitions for both Python and MATLAB (and eventually vice versa).

Say you're a lab that uses both Python and MATLAB, this lets you declare your models once and then generate both Python and MATLAB versions of them, rather than having two potentially mutually contradictory sets of models. Keep explicit structure and avoid implicit model recreation from the database <3.

More generally a pythonic adapter interface from an explicit data model (thanks pydantic!) to datajoint models so other tools can patch in more easily!

So far just a single afternoon project, but will be the means by which autopilot interfaces directly with datajoint :)

Example

Source a model from a string

>>> from datajoint_babel.model import Table
>>> from pprint import pprint
>>> tab = Table.from_definition(name='User', tier='Manual', definition="""
    # database users
    username : varchar(20)   # unique user name
    ---
    first_name : varchar(30)
    last_name  : varchar(30)
    role : enum('admin', 'contributor', 'viewer')
    """
)
>>> tab.dict()
{'name': 'User',
 'tier': 'Manual',
 'comment': {'comment': 'database users'},
 'keys': [{'name': 'username',
   'datatype': {'datatype': 'varchar', 'args': 20, 'unsigned': False},
   'comment': 'unique user name',
   'default': None}],
 'attributes': [{'name': 'first_name',
   'datatype': {'datatype': 'varchar', 'args': 30, 'unsigned': False},
   'comment': '',
   'default': None},
  {'name': 'last_name',
   'datatype': {'datatype': 'varchar', 'args': 30, 'unsigned': False},
   'comment': '',
   'default': None},
  {'name': 'role',
   'datatype': {'datatype': 'enum',
    'args': ["'admin'", " 'contributor'", " 'viewer'"],
    'unsigned': False},
   'comment': '',
   'default': None}]}

>>> pprint(tab.__dict__)
{'attributes': [Attribute(name='first_name', datatype=DJ_Type(datatype='varchar', args=30, unsigned=False), comment='', default=None),
                Attribute(name='last_name', datatype=DJ_Type(datatype='varchar', args=30, unsigned=False), comment='', default=None),
                Attribute(name='role', datatype=DJ_Type(datatype='enum', args=["'admin'", " 'contributor'", " 'viewer'"], unsigned=False), comment='', default=None)],
 'comment': Comment(comment='database users'),
 'keys': [Attribute(name='username', datatype=DJ_Type(datatype='varchar', args=20, unsigned=False), comment='unique user name', default=None)],
 'name': 'User',
 'tier': 'Manual'}

Export to python...

>>> print(tab.make(lang='python'))

@schema
class User(dj.Manual):
    definition = """
    # database users
    username : varchar(20) # unique user name
    ---
    first_name : varchar(30)
    last_name : varchar(30)
    role : enum('admin', 'contributor', 'viewer')

And to MATLAB

>>> print(tab.make(lang='matlab'))

%{
# # database users
# username : varchar(20) # unique user name
---
# first_name : varchar(30)
# last_name : varchar(30)
# role : enum('admin', 'contributor', 'viewer')
%}
classdef User < dj.Manual
end

About

Generate schema code from model definitions for both Python and MATLAB

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages