concrete.ml.sklearn.glm.md
module concrete.ml.sklearn.glm
concrete.ml.sklearn.glmImplement sklearn's Generalized Linear Models (GLM).
class PoissonRegressor
PoissonRegressorA Poisson regression model with FHE.
Parameters:
n_bits(int, Dict[str, int]): Number of bits to quantize the model. If an int is passed for n_bits, the value will be used for quantizing inputs and weights. If a dict is passed, then it should contain "op_inputs" and "op_weights" as keys with corresponding number of quantization bits so that: - op_inputs : number of bits to quantize the input values - op_weights: number of bits to quantize the learned parameters Default to 8.
For more details on PoissonRegressor please refer to the scikit-learn documentation: https://scikit-learn.org/stable/modules/generated/sklearn.linear_model.PoissonRegressor.html
method __init__
__init____init__(
n_bits: 'Union[int, dict]' = 8,
alpha: 'float' = 1.0,
fit_intercept: 'bool' = True,
max_iter: 'int' = 100,
tol: 'float' = 0.0001,
warm_start: 'bool' = False,
verbose: 'int' = 0
)property fhe_circuit
Get the FHE circuit.
The FHE circuit combines computational graph, mlir, client and server into a single object. More information available in Concrete documentation: https://docs.zama.ai/concrete/developer/terminology_and_structure#terminology Is None if the model is not fitted.
Returns:
Circuit: The FHE circuit.
property is_compiled
Indicate if the model is compiled.
Returns:
bool: If the model is compiled.
property is_fitted
Indicate if the model is fitted.
Returns:
bool: If the model is fitted.
property onnx_model
Get the ONNX model.
Is None if the model is not fitted.
Returns:
onnx.ModelProto: The ONNX model.
method dump_dict
dump_dictclassmethod load_dict
load_dictmethod post_processing
post_processingmethod predict
predictclass GammaRegressor
GammaRegressorA Gamma regression model with FHE.
Parameters:
n_bits(int, Dict[str, int]): Number of bits to quantize the model. If an int is passed for n_bits, the value will be used for quantizing inputs and weights. If a dict is passed, then it should contain "op_inputs" and "op_weights" as keys with corresponding number of quantization bits so that: - op_inputs : number of bits to quantize the input values - op_weights: number of bits to quantize the learned parameters Default to 8.
For more details on GammaRegressor please refer to the scikit-learn documentation: https://scikit-learn.org/stable/modules/generated/sklearn.linear_model.GammaRegressor.html
method __init__
__init__property fhe_circuit
Get the FHE circuit.
The FHE circuit combines computational graph, mlir, client and server into a single object. More information available in Concrete documentation: https://docs.zama.ai/concrete/developer/terminology_and_structure#terminology Is None if the model is not fitted.
Returns:
Circuit: The FHE circuit.
property is_compiled
Indicate if the model is compiled.
Returns:
bool: If the model is compiled.
property is_fitted
Indicate if the model is fitted.
Returns:
bool: If the model is fitted.
property onnx_model
Get the ONNX model.
Is None if the model is not fitted.
Returns:
onnx.ModelProto: The ONNX model.
method dump_dict
dump_dictclassmethod load_dict
load_dictmethod post_processing
post_processingmethod predict
predictclass TweedieRegressor
TweedieRegressorA Tweedie regression model with FHE.
Parameters:
n_bits(int, Dict[str, int]): Number of bits to quantize the model. If an int is passed for n_bits, the value will be used for quantizing inputs and weights. If a dict is passed, then it should contain "op_inputs" and "op_weights" as keys with corresponding number of quantization bits so that: - op_inputs : number of bits to quantize the input values - op_weights: number of bits to quantize the learned parameters Default to 8.
For more details on TweedieRegressor please refer to the scikit-learn documentation: https://scikit-learn.org/stable/modules/generated/sklearn.linear_model.TweedieRegressor.html
method __init__
__init__property fhe_circuit
Get the FHE circuit.
The FHE circuit combines computational graph, mlir, client and server into a single object. More information available in Concrete documentation: https://docs.zama.ai/concrete/developer/terminology_and_structure#terminology Is None if the model is not fitted.
Returns:
Circuit: The FHE circuit.
property is_compiled
Indicate if the model is compiled.
Returns:
bool: If the model is compiled.
property is_fitted
Indicate if the model is fitted.
Returns:
bool: If the model is fitted.
property onnx_model
Get the ONNX model.
Is None if the model is not fitted.
Returns:
onnx.ModelProto: The ONNX model.
method dump_dict
dump_dictclassmethod load_dict
load_dictmethod post_processing
post_processingmethod predict
predictLast updated
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