Description
In this talk, we'll explore techniques to optimize GraphQL performance for snappy, scalable, and resource-efficient APIs. Attendees will learn about batching queries with DataLoader, managing query complexity and depth, leveraging persisted queries for reduced network overhead, and implementing caching strategies on both server and client-side.
API performance is crucial for delivering a smooth and responsive user experience. GraphQL has gained popularity as a flexible and efficient query language, but without proper optimization, it may underperform or even become a bottleneck in your application.
In this talk, we'll dive into the essential techniques and best practices to optimize GraphQL performance, ensuring that your APIs are snappy, scalable, and resource-efficient. Attendees will learn:
- The importance of batching queries and how to implement it using DataLoader or similar libraries.
- The concept of query complexity and depth, and how to set up limits to prevent resource abuse.
- Leveraging persisted queries to reduce network overhead and improve caching capabilities.
- Implementing caching strategies, both on the server and client-side, to minimize redundant requests and reduce load times.
- Exploring monitoring and observability tools that can help you identify performance bottlenecks and continuously optimize your GraphQL implementation for maximum efficiency.