Welcome back as we dive into our #DataInformed Approach on this episode of W(h)ine About Data! At Transform Consulting Group, we use a Data-Informed Approach that includes 4 components:
1. Clear Metrics
2. Leadership Buy-In
3. Data Access
4. Data Literacy
In this episode we're diving into the first component - Clear Metrics! What metrics have you been looking at lately? Do you look at data often? How do you choose clear metrics? We'll answer these questions and more!
For more about TCG, visit https://www.transformconsultinggroup.com/
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Hosts Amanda Lopez & Denae Green
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