spring-boot-resilience4j
Provides fault tolerance patterns for Spring Boot 3.x using Resilience4j, including circuit breakers, retry logic with exponential backoff, rate limiters, bulkheads, and fallback mechanisms. Use when building resilient microservices that need protection against cascading failures, transient service errors, and resource exhaustion through configurable resilience patterns validated via Spring Boot Actuator endpoints.
git clone --depth 1 https://github.com/giuseppe-trisciuoglio/developer-kit /tmp/spring-boot-resilience4j && cp -r /tmp/spring-boot-resilience4j/plugins/developer-kit-java/skills/spring-boot-resilience4j ~/.claude/skills/spring-boot-resilience4jSKILL.md
# Spring Boot Resilience4j Patterns
## Overview
Provides Resilience4j patterns (circuit breaker, retry, rate limiter, bulkhead, time limiter, fallback) for Spring Boot 3.x fault tolerance with configuration and testing workflows.
## When to Use
- Implementing fault tolerance and preventing cascading failures
- Adding circuit breakers, retry logic, or rate limiting to service calls
- Handling transient failures with exponential backoff
- Protecting services from overload and resource exhaustion
- Combining multiple patterns for comprehensive resilience
## Instructions
### 1. Setup and Dependencies
Add Resilience4j dependencies to your project. For Maven, add to `pom.xml`:
```xml
<dependency>
<groupId>io.github.resilience4j</groupId>
<artifactId>resilience4j-spring-boot3</artifactId>
<version>2.2.0</version> // Use latest stable version
</dependency>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-aop</artifactId>
</dependency>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-actuator</artifactId>
</dependency>
```
For Gradle, add to `build.gradle`:
```gradle
implementation "io.github.resilience4j:resilience4j-spring-boot3:2.2.0"
implementation "org.springframework.boot:spring-boot-starter-aop"
implementation "org.springframework.boot:spring-boot-starter-actuator"
```
Enable AOP annotation processing with `@EnableAspectJAutoProxy` (auto-configured by Spring Boot).
### 2. Circuit Breaker Pattern
Apply `@CircuitBreaker` annotation to methods calling external services:
```java
@Service
public class PaymentService {
private final RestTemplate restTemplate;
public PaymentService(RestTemplate restTemplate) {
this.restTemplate = restTemplate;
}
@CircuitBreaker(name = "paymentService", fallbackMethod = "paymentFallback")
public PaymentResponse processPayment(PaymentRequest request) {
return restTemplate.postForObject("http://payment-api/process",
request, PaymentResponse.class);
}
private PaymentResponse paymentFallback(PaymentRequest request, Exception ex) {
return PaymentResponse.builder()
.status("PENDING")
.message("Service temporarily unavailable")
.build();
}
}
```
Configure in `application.yml`:
```yaml
resilience4j:
circuitbreaker:
configs:
default:
registerHealthIndicator: true
slidingWindowSize: 10
minimumNumberOfCalls: 5
failureRateThreshold: 50
waitDurationInOpenState: 10s
instances:
paymentService:
baseConfig: default
```
See @references/configuration-reference.md for complete circuit breaker configuration options.
### 3. Retry Pattern
Apply `@Retry` annotation for transient failure recovery:
```java
@Service
public class ProductService {
private final RestTemplate restTemplate;
public ProductService(RestTemplate restTemplate) {
this.restTemplate = restTemplate;
}
@Retry(name = "productService", fallbackMethod = "getProductFallback")
public Product getProduct(Long productId) {
return restTemplate.getForObject(
"http://product-api/products/" + productId,
Product.class);
}
private Product getProductFallback(Long productId, Exception ex) {
return Product.builder()
.id(productId)
.name("Unavailable")
.available(false)
.build();
}
}
```
Configure retry in `application.yml`:
```yaml
resilience4j:
retry:
configs:
default:
maxAttempts: 3
waitDuration: 500ms
enableExponentialBackoff: true
exponentialBackoffMultiplier: 2
instances:
productService:
baseConfig: default
maxAttempts: 5
```
See @references/configuration-reference.md for retry exception configuration.
### 4. Rate Limiter Pattern
Apply `@RateLimiter` to control request rates:
```java
@Service
public class NotificationService {
private final EmailClient emailClient;
public NotificationService(EmailClient emailClient) {
this.emailClient = emailClient;
}
@RateLimiter(name = "notificationService",
fallbackMethod = "rateLimitFallback")
public void sendEmail(EmailRequest request) {
emailClient.send(request);
}
private void rateLimitFallback(EmailRequest request, Exception ex) {
throw new RateLimitExceededException(
"Too many requests. Please try again later.");
}
}
```
Configure in `application.yml`:
```yaml
resilience4j:
ratelimiter:
configs:
default:
registerHealthIndicator: true
limitForPeriod: 10
limitRefreshPeriod: 1s
timeoutDuration: 500ms
instances:
notificationService:
baseConfig: default
limitForPeriod: 5
```
### 5. Bulkhead Pattern
Apply `@Bulkhead` to isolate resources. Use `type = SEMAPHORE` for synchronous methods:
```java
@Service
public class ReportService {
private final ReportGenerator reportGenerator;
public ReportService(ReportGenerator reportGenerator) {
this.reportGenerator = reportGenerator;
}
@Bulkhead(name = "reportService", type = Bulkhead.Type.SEMAPHORE)
public Report generateReport(ReportRequest request) {
return reportGenerator.generate(request);
}
}
```
Use `type = THREADPOOL` for async/CompletableFuture methods:
```java
@Service
public class AnalyticsService {
@Bulkhead(name = "analyticsService", type = Bulkhead.Type.THREADPOOL)
public CompletableFuture<AnalyticsResult> runAnalytics(
AnalyticsRequest request) {
return CompletableFuture.supplyAsync(() ->
analyticsEngine.analyze(request));
}
}
```
Configure in `application.yml`:
```yaml
resilience4j:
bulkhead:
configs:
default:
maxConcurrentCalls: 10
maxWaitDuration: 100ms
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