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Train Clustering (KMeans) Node

AI/ML/Clustering

Train Clustering (KMeans)

Fit/Train KMeans Clustering

fit_kmeansml
Inputs3
Outputs2
Security exposure4/10
Packageml

Ratings

Scores range from 0 to 10. Higher values mean more impact, exposure, or operational weight.

SecurityAttack surface and exposure impact.
4/10Medium
PrivacyPotential sensitivity of processed data.
4/10Medium
PerformanceRuntime or resource pressure.
4/10Medium
GovernancePolicy, audit, or compliance impact.
4/10Medium
ReliabilityOperational stability considerations.
3/10High
CostExternal or compute cost impact.
3/10High

Input Pins

3

Input

Execution
exec_in

Execution trigger that begins clustering

Cluster

Integer
cluster

Choose how many centroids to fit

Default 2
Range 1 to 100

Data Source

String
source

Choose which backend supplies the training data

Default Database
Database

Output Pins

2

Done

Execution
exec_out

Activated once training completes

Model

Struct
model

Thread-safe handle to the trained KMeans model

NodeMLModelNodeMLModel1 fields
model_refstringrequired
Schema enforced

Node Info

Internal name
fit_kmeans
Category
AI/ML/Clustering