Quick Reference: Neural networks are a modern way to conduct Machine Learning experiments. In this video you will learn about three very common methods for data dimensionality reduction: PCA, t-SNE and UMAP.

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Neural networks are a modern way to conduct Machine Learning experiments. In this video you will learn about three very common methods for data dimensionality reduction: PCA, t-SNE and UMAP.

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  • In this video you will learn about three very common methods for data dimensionality reduction: PCA, t-SNE and UMAP.
  • Neural networks are a modern way to conduct Machine Learning experiments.

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