Model
- Wrap a standard AI model with functionality necessary for
superduper - Configure validation and training of a model on database data
Dependencies
(Optional dependencies)
Usage pattern
note
Note that Model is an abstract base class which cannot be called directly.
To use Model you should call any of its downstream implementations,
such as ObjectModel or models in the AI-integrations.
Important notes
Model instances can output data not-usually supported by your database.
This data will be encoded by default by pickle, but more control may be added
by adding the parameters datatype=... or output_schema=....
Implementations
Here are a few superduper native implementations:
ObjectModel
Use a self-built model (object) or function with the system:
from superduper import ObjectModel
m = ObjectModel(
'my-model',
object=lambda x: x + 2,
)
db.apply(m)
APIModel
Request model outputs hosted behind an API:
from superduper.components.model import APIModel
m = APIModel('my-api', url='http://localhost:6666?token={MY_DEV_TOKEN}&model={model}&text={text}')
db.apply(m)
SequentialModel
Make predictions on the basis of a sequence of models:
from superduper.components.model import SequentialModel
m = SequentialModel(
'my-sequence',
models=[
model1,
model2,
model3,
]
)
db.apply(m)
See also