gaitmap.data_transform.GroupedTransformer#
- class gaitmap.data_transform.GroupedTransformer(transformer_mapping: list[tuple[Union[collections.abc.Hashable, str, tuple[Union[collections.abc.Hashable, str], ...]], gaitmap.data_transform._base.BaseTransformer]], keep_all_cols: bool = True)[source]#
Apply specific transformations to specific groups of columns.
- Parameters:
- transformer_mapping
List of tuples to define which transformers should be applied to which columns. The list should have the shape [(key, transformer), …] where key is either the name of the column or a tuple of column names. If the transformer is trainable, its
self_optimizemethod will be called, whenself_optimizeof the Grouped Transformer is called.- keep_all_cols
If
True, columns that are not mentioned as keys in thetransformer_mapping, will be added to the output unchanged. Otherwise, only columns that are actually transformed remain in the output.
- Other Parameters:
- data
The data passed to the transform method.
- Attributes:
- transformed_data_
The transformed data.
Methods
clone()Create a new instance of the class with all parameters copied over.
from_json(json_str)Import an gaitmap object from its json representation.
get_params([deep])Get parameters for this algorithm.
self_optimize(data, **kwargs)Train all trainable transformers based on the provided data.
set_params(**params)Set the parameters of this Algorithm.
to_json()Export the current object parameters as json.
transform(data, **kwargs)Transform all data columns based on the selected transformers.
- __init__(transformer_mapping: list[tuple[Union[collections.abc.Hashable, str, tuple[Union[collections.abc.Hashable, str], ...]], gaitmap.data_transform._base.BaseTransformer]], keep_all_cols: bool = True) None[source]#
- 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
- classmethod from_json(json_str: str) Self[source]#
Import an gaitmap object from its json representation.
For details have a look at the this example.
You can use the
to_jsonmethod of a class to export it as a compatible json string.- Parameters:
- json_str
json formatted string
- 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.
- self_optimize(data: Sequence[DataFrame], **kwargs) Self[source]#
Train all trainable transformers based on the provided data.
- … note :: All transformers will be trained on all columns they are applied to as group.
This means you will get different results when using
(("col_a", "col_b"), transformer())compared to("col_a", transformer()), ("col_b", transformer()). In the first case the transformer will be trained over both columns as one.
- Parameters:
- data
A sequence of dataframes, each representing single-sensor data.
- Returns:
- self
The trained instance of the transformer
- set_params(**params: Any) Self[source]#
Set the parameters of this Algorithm.
To set parameters of nested objects use
nested_object_name__para_name=.