In-Memory Computing - The Big Picture
Modern software systems must process tons of data and must provide low latency responsiveness to be able to compete. We've known for a long time that traditional databases cannot keep pace. In-memory computing is incredibly faster. Therefore, in-memory concepts have been added at every nook and cranny. However, is it enough just to use some in-memory computing? Are there differences? Is it sufficient to simply use a cache? Are there pitfalls? When should I use a distributed cache? Is an in-memory database the better approach? What is actually an in-memory data grid?
In this session, you learn the basics and get a better overview to make a decision that fits your project and team.
Tagged under
Related items
- Under the hood: tricks, hacks and techniques that make Quarkus so enjoyable and fast
- In-Memory Computing - The Big Picture
- Under the hood: tricks, hacks and techniques that make Quarkus so enjoyable and fast
- Eclipse MicroStream - Ultra-fast Java cloud-native persistence for microservices and serverless apps
- "How I beat The Lady Luck?" - Why software developers need side project(s)?
Leave a comment
- Speaker:
- Markus Kett
- Podjetje
- MicroStream