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End-to-end ML modelling process for clustering problem
  1. Data reading and preprocessing: missing data, visualization, scaling
  2. Algorithm selection: K-Means, Hierarchical
  3. Optimal cluster selection: Elbow method, Dendrogram
 
Algorithms
  1. K-Means Clustering
  2. Hierarchical Clustering

Examples
  1. UCI Iris Data (3 clusters)
  2. UCI Seeds Data (3 clusters)
  3. kaggle Mall Customers Data (5 clusters)