Here's how you can communicate data quality issues effectively for accurate analysis and decision-making.
Understanding the importance of data quality is paramount for any organization that relies on data for decision-making. Data quality issues can lead to incorrect analysis, which in turn can result in erroneous decisions that may affect the company's performance and reputation. As a data engineer, your role is not only to ensure that data pipelines are robust and efficient but also to communicate any data quality issues effectively to stakeholders. This involves a clear understanding of the problems, the ability to articulate these issues in a way that non-technical stakeholders can understand, and suggesting practical solutions to address them.
-
Rhayar MascarelloSenior Data Engineer | Data & AI | Generative AI Engineer | Azure Solutions Architect Expert | Databricks Data Engineer…
-
Abubakar RiazLead DevOps Azure @ tkxel ??| Full Stack Developer????| Azure Certified ??| MCT ??| Microsoft for life??|??xJazz
-
Punya Ira AnandMS ITM at UT Dallas '25 | Software & Data Engineering | Business Intelligence | Cloud Solutions | Python, SQL, AWS |…