Unveiling Data Lineage: From News Scraping to Product Development



Data Lineage Requirement
System Functionality: The system is designed to scrape news articles from various sources, create summaries of the articles, generate frequently asked questions (FAQs), and build insights to develop a new data product.
Data Sources: The system should clearly document the sources from which news articles are scraped. This includes specifying the websites, APIs, or databases from which the data is collected.
Data Extraction: The process of scraping news articles should be detailed, outlining the methods used for data extraction, transformation, and loading (ETL). This includes any data cleaning or preprocessing steps.
Summary Generation: The lineage should track how the system generates summaries of the scraped news articles. This involves documenting the algorithms or techniques used for text summarization.
FAQ Creation: The system should outline the process of creating FAQs based on the content of the news articles. This includes identifying the criteria for selecting frequently asked questions and how they are generated.
Insights Generation: The data lineage should capture how insights are derived from the summarized news articles. This involves documenting the analytics or machine learning models used to extract insights.
Data Product Development: The lineage should track the development of the new data product based on the insights generated. This includes detailing the process of product ideation, design, and implementation.



Data-lineage-applications    Data-lineage-automation    Data-lineage-factors    Data-lineage-for-chatbots    Data-lineage-for-content-mana    Data-lineage-for-content-mana    Data-lineage-for-data-product    Data-lineage-for-llm-applicat    Data-lineage-overview    Data-lineage-properties-for-c   

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