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verticapy.machine_learning.vertica.ensemble.IsolationForest.deploySQL#

IsolationForest.deploySQL(X: str | list[str] | None = None, cutoff: int | float | Decimal = 0.7, contamination: int | float | Decimal | None = None, return_score: bool = False) str#

Returns the SQL code needed to deploy the model.

Parameters#

X: SQLColumns, optional

list of the columns used to deploy the model. If empty, the model predictors are used.

cutoff: PythonNumber, optional

float in the range (0.0, 1.0), specifies the threshold that determines if a data point is an anomaly. If the anomaly_score for a data point is greater than or equal to the cutoff, the data point is marked as an anomaly.

contamination: PythonNumber, optional

float in the range (0,1), the approximate ratio of data points in the training data that should be labeled as anomalous. If this parameter is specified, the cutoff parameter is ignored.

return_score: bool, optional

If set to True, the anomaly score is returned, and the parameters cutoff and contamination are ignored.

Returns#

str

the SQL code needed to deploy the model.

Examples#

We import verticapy:

import verticapy as vp

For this example, we will use the winequality dataset.

import verticapy.datasets as vpd

data = vpd.load_winequality()
123
fixed_acidity
Numeric(8)
123
volatile_acidity
Numeric(9)
123
citric_acid
Numeric(8)
123
residual_sugar
Numeric(9)
123
chlorides
Float(22)
123
free_sulfur_dioxide
Numeric(9)
123
total_sulfur_dioxide
Numeric(9)
123
density
Float(22)
123
pH
Numeric(8)
123
sulphates
Numeric(8)
123
alcohol
Float(22)
123
quality
Integer
123
good
Integer
Abc
color
Varchar(20)
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Rows: 1-100 | Columns: 14

We import the IsolationForest model:

from verticapy.machine_learning.vertica import IsolationForest

Then we can create the model:

model = IsolationForest(
    n_estimators = 10,
    max_depth = 3,
    nbins = 6,
)

We can now fit the model:

model.fit(data, X = ["density", "sulphates"])

To get the SQL query which uses Vertica functions use below:

model.deploySQL()
Out[4]: '((APPLY_IFOREST("density", "sulphates" USING PARAMETERS model_name = \'"public"."_verticapy_tmp_isolationforest_v_demo_7e093f3ae22c11eea3a80242ac120002_"\', match_by_pos = \'true\', threshold = 0.7)).is_anomaly)::int'

Note

Refer to IsolationForest for more information about the different methods and usages.