guilherme-hermano/PCA-FUNDAMENTALS
Estudo prático dos fundamentos do PCA aplicado a dados tabulares (Wine Quality) e imagens (Olivetti Faces), com foco em intuição geométrica, álgebra linear e interpretação dos componentes.
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MIT
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Mar 13, 2026
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