It's essential to assess the type of data (structured or austria whatsapp number data unstructured), the frequency of changes, and the velocity of updates. 2. Select the Right Real-Time Data Processing Technology Once the data sources are identified, the next step is to choose the appropriate real-time data processing technology. Depending on the volume, complexity, and speed of your data, you can opt for different technologies. For instance, if you're processing high-volume streams, Apache Kafka and Apache Flink would be ideal choices.

3. Implement Data Ingestion Mechanisms Data ingestion is the process of capturing real-time data and feeding it into the system for processing. In this step, data can be ingested using APIs, event-driven architecture, or message queues. APIs can allow applications to send real-time data directly to your processing systems, while event-driven architecture enables the triggering of data processing tasks based on specific events or actions. 4. Set Up Data Processing Pipelines Data processing pipelines are responsible for transforming raw data into useful information.