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Many receive emails alerting them of a data breach at their favorite mega-store or insurance company that exposed their personal information. Today, companies of all sizes are experiencing cyberattacks, leading to data breaches and system failures. We have safeguards in place to protect our sensitive data. Neither is true. .
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