relevanceai.vector_tools.dim_reduction
Module Contents
Classes
Using verbose loguru as base logger for now |
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Using verbose loguru as base logger for now |
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Using verbose loguru as base logger for now |
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Using verbose loguru as base logger for now |
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Using verbose loguru as base logger for now |
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Base class for all relevanceai client utilities |
- class relevanceai.vector_tools.dim_reduction.DimReductionBase
Bases:
relevanceai.logger.LoguruLoggerUsing verbose loguru as base logger for now
- __call__(self, *args, **kwargs)
- abstract fit_transform(self, vectors: numpy.ndarray, dr_args: Dict[Any, Any], dims: int) numpy.ndarray
- class relevanceai.vector_tools.dim_reduction.PCA
Bases:
DimReductionBaseUsing verbose loguru as base logger for now
- fit_transform(self, vectors: numpy.ndarray, dr_args: Optional[Dict[Any, Any]] = DIM_REDUCTION_DEFAULT_ARGS['pca'], dims: int = 3) numpy.ndarray
- class relevanceai.vector_tools.dim_reduction.TSNE
Bases:
DimReductionBaseUsing verbose loguru as base logger for now
- fit_transform(self, vectors: numpy.ndarray, dr_args: Optional[Dict[Any, Any]] = DIM_REDUCTION_DEFAULT_ARGS['tsne'], dims: int = 3) numpy.ndarray
- class relevanceai.vector_tools.dim_reduction.UMAP
Bases:
DimReductionBaseUsing verbose loguru as base logger for now
- fit_transform(self, vectors: numpy.ndarray, dr_args: Optional[Dict[Any, Any]] = DIM_REDUCTION_DEFAULT_ARGS['umap'], dims: int = 3) numpy.ndarray
- class relevanceai.vector_tools.dim_reduction.Ivis
Bases:
DimReductionBaseUsing verbose loguru as base logger for now
- fit_transform(self, vectors: numpy.ndarray, dr_args: Optional[Dict[Any, Any]] = DIM_REDUCTION_DEFAULT_ARGS['tsne'], dims: int = 3) numpy.ndarray
- class relevanceai.vector_tools.dim_reduction.DimReduction(project, api_key)
Bases:
relevanceai.base._Base,DimReductionBaseBase class for all relevanceai client utilities
- static dim_reduce(vectors: numpy.ndarray, dr: Union[relevanceai.vector_tools.constants.DIM_REDUCTION, DimReductionBase], dr_args: Union[None, dict], dims: typing_extensions.Literal[2, 3]) numpy.ndarray
Dimensionality reduction