Key Technologies and Frameworks for Real-Time Data Processing austria whatsapp number data To perform data updates in real-time, several technologies and tools are used to capture, process, and distribute the data instantly across systems. These include: Stream Processing Frameworks: Technologies such as Apache Kafka, Apache Flink, and Apache Storm are widely used for real-time data stream processing. These tools enable efficient data ingestion, processing, and output to downstream systems without delays. Message Queues: Message queuing systems like RabbitMQ, ActiveMQ, and Amazon SQS ensure that data messages are transmitted reliably and efficiently between systems, enabling real-time updates.

Data Pipelines: Real-time data pipelines, such as those built with Apache NiFi or Kafka Streams, manage the flow of data from various sources, processing it in real time before sending it to storage or other applications. Database Technologies: NoSQL databases, such as MongoDB, Cassandra, or Amazon DynamoDB, provide the flexibility and scalability needed for real-time data updates. These databases support high throughput and low-latency queries, making them ideal for use in real-time applications. Cloud Services: Cloud platforms like AWS Lambda, Google Cloud Functions, and Microsoft Azure Functions offer serverless computing capabilities that enable real-time processing and updates without the need for managing infrastructure.