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This work embarked on a comprehensive exploratory data analysis (EDA) of a Netflix titles dataset, aiming to uncover insights and patterns within Netflix's vast content catalog.

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Netflix Titles

This work embarked on a comprehensive exploratory data analysis (EDA) of a Netflix titles dataset, aiming to uncover insights and patterns within Netflix's vast content catalog.

Dataset Description

The dataset, netflix_titles.csv, includes various details about movies and TV shows available on Netflix, such as:

  • show_id: Unique identifier for each title
  • type: Distinguishes between Movies and TV Shows
  • title: Name of the title
  • director: Director(s) of the title
  • cast: Cast members involved
  • country: Country of production
  • date_added: When the title was added to Netflix
  • release_year: Original release year
  • rating: Content rating
  • duration: Duration of the title
  • listed_in: Genre(s) of the title
  • description: Brief description of the title

Analyses Conducted

  1. Distribution Analysis: Explored the distribution of movies vs. TV shows, the number of titles added per year, and the distribution of show ratings.
  2. Trend Analysis: Examined trends in release years and the country-wise distribution of titles.
  3. Genre Analysis: Identified the most prevalent genres within the catalog.
  4. Text Analysis: Conducted keyword extraction and sentiment analysis on titles and descriptions to uncover thematic elements and the emotional tone.

Tools and Technologies Used

  • Python: For data manipulation and analysis.
  • Pandas: For data processing and analysis.
  • Matplotlib and Seaborn: For data visualization.
  • Scikit-learn: For applying machine learning techniques like TF-IDF.
  • TextBlob: For performing sentiment analysis.

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This work embarked on a comprehensive exploratory data analysis (EDA) of a Netflix titles dataset, aiming to uncover insights and patterns within Netflix's vast content catalog.

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