How can you balance data quality and availability?

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Data quality and availability are two key factors that influence the success of data analytics projects. Data quality refers to how accurate, complete, consistent, and relevant the data is for the intended purpose. Data availability refers to how accessible, timely, and secure the data is for the users and analysts. However, achieving both high data quality and high data availability is not always easy, as they may involve trade-offs, challenges, and costs. In this article, we will explore some ways to balance data quality and availability in data analytics.

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