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High-quality data is critical to ensuring organizations can deliver great customer experiences and achieve expected business outcomes. However, many companies encounter common customer data problems that significantly affect data quality. Data quality focuses on creating data that is complete, consistent, timely, and accurate. It also needs to meet specific requirements for how it will be used based on your organization’s needs. 
