How can you detect and correct errors in real-time data streams using data cleaning tools?
Real-time data streams are becoming more prevalent and valuable in various domains, such as e-commerce, social media, IoT, and analytics. However, they also pose significant challenges for data quality, as they may contain errors, outliers, missing values, duplicates, or inconsistencies. These errors can affect the accuracy, reliability, and usability of the data and the downstream applications that depend on it. Therefore, data cleaning is an essential step to ensure the validity and quality of real-time data streams. In this article, you will learn how to detect and correct errors in real-time data streams using data cleaning tools.
-
Abdalrazak Seaf Aldean. DBA Candidate. MSC, PMPData Science Manager | Consultation | Senior Data Scientist | Machine Learning | Artificial Intelligence | GCP, Looker,…
-
Hossein HabibinejadSenior Financial Analyst(looking for Internship) |Investment Development and Planning | Investment Strategies |CFA…
-
Bashir DaramolaData Analyst | Data Science | Economist | Computer science |