Google Cloud Professional Data Engineer Exam 2026 - Free Practice Questions and Study Guide

Question: 1 / 400

How can data quality be optimally ensured in Google Cloud projects?

By randomly sampling data

By implementing validation checks in data pipelines

Ensuring data quality in Google Cloud projects is crucial for making effective and reliable data-driven decisions. Implementing validation checks in data pipelines is the most effective method for maintaining data quality. This approach involves establishing systematic verification processes at various stages of data processing to ensure that the data meets predefined quality standards.

Validation checks can include a variety of techniques, such as checking for missing values, ensuring that data falls within acceptable ranges, verifying formats, and ensuring referential integrity. By embedding these checks directly into the data pipeline, any issues can be identified and addressed promptly, reducing the likelihood of poor-quality data being used for analytics or machine learning.

This proactive stance allows data teams to catch problems early—before they propagate through the data lifecycle—ensuring that high-quality data is consistently delivered to stakeholders. In contrast, other methods like random sampling, conducting audits, or relying on user feedback may provide insights into data quality but do not offer the same level of ongoing assurance and immediate correction capability that validation checks provide. Random sampling can miss issues, annual audits might be too infrequent to catch problems timely, and user feedback relies on external opinions rather than systematic validation.

Get further explanation with Examzify DeepDiveBeta

By conducting annual audits

By relying on user feedback

Next Question

Report this question

Subscribe

Get the latest from Examzify

You can unsubscribe at any time. Read our privacy policy