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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. Data Quality 2.0: From Scoring To Data Reliability Engineering

    The traditional approach to data quality, relying on scoring metrics like accuracy and completeness, is insufficient for modern, real-time data ecosystems. A new paradigm, Data Quality 2.0 or data reliability engineering, is emerging to address this gap. This approach focuses on preventing defects during the build phase, detecting and containing bad data in real-time during operations, and measuring business-critical metrics alongside traditional data quality dimensions. AI

    Data Quality 2.0: From Scoring To Data Reliability Engineering

    IMPACT Data reliability engineering is crucial for AI models that depend on accurate and timely data, ensuring their performance and trustworthiness.