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    <title>Data Quality on Enterprise Data Architect | Principal Data Strategist |  MySQL Subject Matter Expert |  Author | Speaker</title>
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      <title>Data Masking 101</title>
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      <description>I continue to dig up and share this simple approach for production data masking via SQL to create testing data sets. Time to codify it into a post.&#xA;Rather than generating a set of names and data from tools such as Mockaroo , it is more practical to use actual data for a variety of testing reasons.</description>
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