PySpark API Supportability Matrix | LinearSVCModel Function | pyspark2teradataml - LinearSVCModel - Teradata Package for Python

Teradata® pyspark2teradataml User Guide

Deployment
VantageCloud
VantageCore
Edition
Enterprise
IntelliFlex
VMware
Product
Teradata Package for Python
Release Number
20.00
Published
December 2024
ft:locale
en-US
ft:lastEdition
2024-12-18
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oeg1710443196055.ditamap
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ayr1485454803741.ditaval
dita:id
oeg1710443196055
Product Category
Teradata Vantage

This function internally uses scikit-learn function LinearSVC through teradataml Open source ML functions.

Attributes/Methods

Attribute/Method Name Supported? Notes
clear  
copy  
explainParam  
explainParams  
extractParamMap  
getAggregationDepth  
getFeaturesCol  
getFitIntercept  
getLabelCol  
getMaxBlockSizeInMB  
getMaxIter  
getOrDefault  
getParam  
getPredictionCol  
getRawPrediction  
getRawPredictionCol  
getRegParam  
getStandardization  
getThreshold  
getTol  
getWeightCol  
hasDefault  
hasParam  
isDefined  
isSet  
load  
predict  
read  
save  
set  
setFeaturesCol  
setPredictionCol  
setRawPredictionCol  
setThreshold  
summary  
transform  
write  
aggregationDepth  
coefficients PySpark returns a DenseVector, whereas teradatamlspk returns a numpy array.
featuresCol  
fitIntercept  
hasSummary  
intercept  
labelCol  
maxBlockSizeInMB  
maxIter  
numClasses  
numFeatures  
params  
predictionCol  
rawPredictionCol  
regParam  
standardization  
tol  
weightCol