How do you ensure data quality and consistency with spark streaming?
Spark streaming is a powerful tool for processing real-time data from various sources, such as Kafka, Flume, or HDFS. However, to get the most out of your streaming applications, you need to ensure that your data is of high quality and consistency. This means that your data is accurate, complete, timely, and reliable, and that it conforms to the expected format, schema, and semantics. In this article, we will explore some of the challenges and best practices for achieving data quality and consistency with spark streaming.
-
Constantine ShulyakAuthor of $100M+ social project | Featured on Forbes | CEO at BLCKMGC
-
Nebojsha Antic ???? 162x LinkedIn Top Voice | BI Developer - Kin + Carta | ?? Certified Google Professional Cloud Architect and Data…
-
Rujuta Kulkarni13X Top Voice in Six Sigma, FinTech., Business Admin., Soft Skills & Engineering | Strategic Finance | Audit &…