
Ludivine Lacour enhanced the dataforgoodfr/13_reveler_inegalites_cinema repository by delivering core data platform features focused on cinema analytics. She updated dependency management using Poetry to ensure compatibility and enable pandas-driven data processing. Ludivine expanded the film data model by introducing genre categorization through new database tables, supporting more flexible and robust querying. She also developed a Python script that integrates with the TMDB API, automating film data ingestion with change detection, origin-country filtering, and deduplication using pandas and SQLAlchemy. Her work improved data quality and analytical capabilities, demonstrating depth in data engineering, database design, and API integration within a short timeframe.
February 2025 highlights: Delivered core data platform enhancements for cinema analytics in dataforgoodfr/13_reveler_inegalites_cinema. Key features delivered include (1) dependency management updates via Poetry to ensure compatibility and enable pandas data processing, (2) a film data model enhancement introducing genres and a film_genres linking table for robust categorization and genre-based querying, and (3) a TMDB-based data ingestion script to populate the films table with change detection, origin-country filtering, pandas-driven processing, and deduplication against existing records. No major bugs reported this month. These changes improve data quality, analytical flexibility, and automation, enabling faster reporting and richer business insights.
February 2025 highlights: Delivered core data platform enhancements for cinema analytics in dataforgoodfr/13_reveler_inegalites_cinema. Key features delivered include (1) dependency management updates via Poetry to ensure compatibility and enable pandas data processing, (2) a film data model enhancement introducing genres and a film_genres linking table for robust categorization and genre-based querying, and (3) a TMDB-based data ingestion script to populate the films table with change detection, origin-country filtering, pandas-driven processing, and deduplication against existing records. No major bugs reported this month. These changes improve data quality, analytical flexibility, and automation, enabling faster reporting and richer business insights.

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