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  "Title": "Toolkit and Datasets for Data Science",
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  "Description": "Provides a collection of helper functions and illustrative\ndatasets to support learning and teaching of data science with\nR. The package is designed as a companion to the book\n<https://book-data-science-r.netlify.app>, making key data\nscience techniques accessible to individuals with minimal\ncoding experience. Functions include tools for data\npartitioning, performance evaluation, and data transformations\n(e.g., z-score and min-max scaling). The included datasets are\ncurated to highlight practical applications in data\nexploration, modeling, and multivariate analysis. An early\ninspiration for the package came from an ancient Persian idiom\nabout \"eating the liver\", symbolizing deep and immersive\nengagement with knowledge.",
  "URL": "https://book-data-science-r.netlify.app",
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  "Date/Publication": "2026-05-04 13:00:30 UTC",
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