You're facing feedback on your data modeling approach. How can you best address stakeholders' concerns?
When you pour your expertise into data modeling, receiving critical feedback can be tough. Yet, it's a crucial part of the iterative process that makes your work robust and reliable. As a data scientist, your role often involves translating complex data into actionable insights. When stakeholders review your model and come back with concerns, it's essential to address them constructively. This involves not just technical know-how, but also communication skills and an understanding of the business context. So, how can you best navigate this feedback to ensure your data modeling approach meets everyone's needs?
-
Dr. Kruti LehenbauerData Scientist, Economist, AI Consultant | Transforming SMBs and Startups with Strategic Models | Proven Data-Audit &…1 个答复
-
Mohit BasliyalSenior Associate - Data Analyst at Give Grants| LinkedIn Top Data Analytics Voice ??| Python, SQL, PowerBI | Delivered…
-
SOUMEN M.?? BTech ?? | Exploring Data Science Trends & Solutions for Tomorrow's Tech Landscape | Data Analytics Pioneer at…