How do you prioritize real-time data processing over batch processing when faced with tight deadlines?
In the fast-paced world of data engineering, you often face the challenge of delivering insights as quickly as possible. When deadlines are tight, real-time data processing becomes a critical priority over batch processing. Real-time processing involves continuous input, process, and output of data, ensuring that information is updated instantaneously. This approach is essential in scenarios where immediate data analysis can lead to quick decision-making, giving businesses a competitive edge. On the other hand, batch processing handles large volumes of data at once, which can be less efficient when time is of the essence. The key to prioritizing real-time processing lies in understanding your data requirements and the potential impact of immediate data availability.
-
Ishita GianchandaniLinkedIn Top Data Engineering Voice | Data Engineer II at Expedia Group | Spark | SQL | Python | Airflow | Cloud
-
Jitesh SoniBig Data Architect | Ex- Amazon | Tech Writer | Coach
-
Mohandas PalatshahaData Engineering Manager | Data Architect | Enabling Data-Driven Solutions for ML & Analytics | Cloud & Big Data Expert…