tpcp
.Algorithm#
- class tpcp.Algorithm[source]#
Base class for all algorithms.
All type-specific algorithm classes should inherit from this class and need to
overwrite
_action_method
with the name of the actual action method of this class typeimplement a stub for the action method
If you want to create an optimizable algorithm, add a
self_optimize
or (self_optimize_with_info
) method to your class. We do not provide a separate base class for that, as we can make no assumptions about the call signature of your customself_optimize
method. If you need an “optimizable” version for a group of algorithms you are working with, create a customOptimizableAlgorithm
class orOptimizableAlgorithmMixing
that is specific to your algorithm.- Attributes:
- _action_methods
The name(s) of the action method used by the child class
Methods
clone
()Create a new instance of the class with all parameters copied over.
get_params
([deep])Get parameters for this algorithm.
set_params
(**params)Set the parameters of this Algorithm.
- __init__(*args, **kwargs)#
- clone() Self [source]#
Create a new instance of the class with all parameters copied over.
This will create a new instance of the class itself and all nested objects
- get_params(deep: bool = True) Dict[str, Any] [source]#
Get parameters for this algorithm.
- Parameters:
- deep
Only relevant if object contains nested algorithm objects. If this is the case and deep is True, the params of these nested objects are included in the output using a prefix like
nested_object_name__
(Note the two “_” at the end)
- Returns:
- params
Parameter names mapped to their values.
Examples using tpcp.Algorithm
#
Algorithms - A real world example: QRS-Detection
The final QRS detection algorithms
Grid Search optimal Algorithm Parameter
Composite-Algorithms and Pipelines