Big Data Glossary
What is Event Processing?
Definition of Event Processing
What is Event Processing?
Event processing refers to the real-time analysis and processing of events, which are defined as significant occurrences or changes in a system or environment. This can include things like sensor data, financial transactions, social media activity, and other types of data that can be processed and analyzed in real-time to detect patterns, identify trends, and trigger actions or alerts. Event processing systems typically use complex algorithms and machine learning techniques to analyze and process data in real-time, and can be used for a wide range of applications, such as fraud detection, marketing automation, and industrial automation.
Introducing Crosser
The All-in-One Platform for Modern Integration
Crosser is a hybrid-first platform that in one Low-code platform has all the capabilities that you traditionally would need several systems for.
In one easy-to-use platform:
- Event Processing
- Data Ingestion & Integration
- Streaming ETL
- Batch ETL/ELT
- Reverse ETL - bidirectional
- Stream Analytics
- Functions & custom code (python, C#, JavaScript)
- Inference of AI/ML models
- Automation Workflows
Platform Overview
Crosser Solution for Data Mining
Explore the key features of the platform here →
Want to learn more about how Crosser could help you and your team to:
- Build and deploy data pipelines faster
- Save cloud cost
- Reduce use of critical resources
- Simplify your data stack