| name | logging-patterns |
| description | Java logging best practices with SLF4J, structured logging (JSON), and MDC for request tracing. Includes AI-friendly log formats for Claude Code debugging. Use when user asks about logging, debugging application flow, or analyzing logs. |
Logging Patterns Skill
Effective logging for Java applications with focus on structured, AI-parsable formats.
When to Use
- User says "add logging" / "improve logs" / "debug this"
- Analyzing application flow from logs
- Setting up structured logging (JSON)
- Request tracing with correlation IDs
- AI/Claude Code needs to analyze application behavior
AI-Friendly Logging
Key insight: JSON logs are better for AI analysis - faster parsing, fewer tokens, direct field access.
Why JSON for AI/Claude Code?
# Text format - AI must "interpret" the string
2026-01-29 10:15:30 INFO OrderService - Order 12345 created for user-789, total: 99.99
# JSON format - AI extracts fields directly
{"timestamp":"2026-01-29T10:15:30Z","level":"INFO","orderId":12345,"userId":"user-789","total":99.99}
| Aspect | Text | JSON |
|---|
| Parsing | Regex/interpretation | Direct field access |
| Token usage | Higher (repeated patterns) | Lower (structured) |
| Error extraction | Parse stack trace text | exception field |
| Filtering | grep patterns | jq queries |
Recommended Setup for AI-Assisted Development
logging:
structured:
format:
console: logstash
Log Format Optimized for AI Analysis
{
"timestamp": "2026-01-29T10:15:30.123Z",
"level": "INFO",
"logger": "com.example.OrderService",
"message": "Order created",
"requestId": "req-abc123",
"traceId": "trace-xyz",
"orderId": 12345,
"userId": "user-789",
"duration_ms": 45,
"step": "payment_completed"
}
Key fields for AI debugging:
requestId - group all logs from same request
step - track progress through flow
duration_ms - identify slow operations
level - quick filter for errors
Reading Logs with AI/Claude Code
When asking AI to analyze logs:
cat app.log | jq 'select(.level == "ERROR")' | tail -20
cat app.log | jq 'select(.requestId == "req-abc123")'
cat app.log | jq 'select(.duration_ms > 1000)'
AI can then:
- Parse JSON directly (no guessing)
- Follow request flow via requestId
- Identify exactly where errors occurred
- Measure timing between steps
Quick Setup (Spring Boot 3.4+)
Native Structured Logging
Spring Boot 3.4+ has built-in support - no extra dependencies!
logging:
structured:
format:
console: logstash
Profile-Based Switching
spring:
profiles:
default: json-logs
---
spring:
config:
activate:
on-profile: json-logs
logging:
structured:
format:
console: logstash
---
spring:
config:
activate:
on-profile: human-logs
logging:
pattern:
console: "%d{HH:mm:ss.SSS} %-5level [%thread] %logger{36} - %msg%n"
Usage:
./mvnw spring-boot:run
./mvnw spring-boot:run -Dspring.profiles.active=human-logs
Setup for Spring Boot < 3.4
Logstash Logback Encoder
pom.xml:
<dependency>
<groupId>net.logstash.logback</groupId>
<artifactId>logstash-logback-encoder</artifactId>
<version>7.4</version>
</dependency>
logback-spring.xml:
<?xml version="1.0" encoding="UTF-8"?>
<configuration>
<springProfile name="!human-logs">
<appender name="JSON" class="ch.qos.logback.core.ConsoleAppender">
<encoder class="net.logstash.logback.encoder.LogstashEncoder">
<includeMdcKeyName>requestId</includeMdcKeyName>
<includeMdcKeyName>userId</includeMdcKeyName>
</encoder>
</appender>
<root level="INFO">
<appender-ref ref="JSON"/>
</root>
</springProfile>
<springProfile name="human-logs">
<appender name="CONSOLE" class="ch.qos.logback.core.ConsoleAppender">
<encoder>
<pattern>%d{HH:mm:ss.SSS} %-5level [%thread] %logger{36} - %msg%n</pattern>
</encoder>
</appender>
<root level="INFO">
<appender-ref ref="CONSOLE"/>
</root>
</springProfile>
</configuration>
Adding Custom Fields (Logstash Encoder)
import static net.logstash.logback.argument.StructuredArguments.kv;
log.info("Order created",
kv("orderId", order.getId()),
kv("userId", user.getId()),
kv("total", order.getTotal()),
kv("step", "order_created")
);
SLF4J Basics
Logger Declaration
import org.slf4j.Logger;
import org.slf4j.LoggerFactory;
@Service
public class OrderService {
private static final Logger log = LoggerFactory.getLogger(OrderService.class);
}
@Slf4j
@Service
public class OrderService {
}
Parameterized Logging
log.debug("Processing order {} for user {}", orderId, userId);
log.debug("Processing order " + orderId + " for user " + userId);
if (log.isDebugEnabled()) {
log.debug("Full order details: {}", order.toJson());
}
Log Levels
| Level | When | Example |
|---|
| ERROR | Failures needing attention | Unhandled exception, service down |
| WARN | Unexpected but handled | Retry succeeded, deprecated API used |
| INFO | Business events | Order created, payment processed |
| DEBUG | Technical details | Method params, SQL queries |
| TRACE | Very detailed | Loop iterations (rarely used) |
log.error("Payment failed", kv("orderId", id), kv("reason", reason), exception);
log.warn("Retry succeeded", kv("attempt", 3), kv("orderId", id));
log.info("Order shipped", kv("orderId", id), kv("trackingNumber", tracking));
log.debug("Fetching from DB", kv("query", "findById"), kv("id", id));
MDC (Mapped Diagnostic Context)
MDC adds context to every log entry in a request - essential for tracing.
Request ID Filter
@Component
@Order(Ordered.HIGHEST_PRECEDENCE)
public class RequestContextFilter extends OncePerRequestFilter {
@Override
protected void doFilterInternal(HttpServletRequest request,
HttpServletResponse response,
FilterChain chain) throws ServletException, IOException {
try {
String requestId = Optional.ofNullable(request.getHeader("X-Request-ID"))
.filter(s -> !s.isBlank())
.orElse(UUID.randomUUID().toString().substring(0, 8));
MDC.put("requestId", requestId);
response.setHeader("X-Request-ID", requestId);
chain.doFilter(request, response);
} finally {
MDC.clear();
}
}
}
Add User Context
MDC.put("userId", authentication.getName());
log.info("User action performed");
MDC in Async Operations
Map<String, String> context = MDC.getCopyOfContextMap();
CompletableFuture.runAsync(() -> {
try {
if (context != null) MDC.setContextMap(context);
log.info("Async task running");
} finally {
MDC.clear();
}
});
What to Log
Business Events (INFO)
log.info("Order created",
kv("orderId", id),
kv("userId", userId),
kv("total", total),
kv("itemCount", items.size()),
kv("step", "order_created"));
log.info("Payment processed",
kv("orderId", id),
kv("amount", amount),
kv("method", "card"),
kv("step", "payment_completed"));
External Calls (with timing)
long start = System.currentTimeMillis();
try {
Result result = externalService.call(params);
log.info("External call succeeded",
kv("service", "PaymentGateway"),
kv("operation", "charge"),
kv("duration_ms", System.currentTimeMillis() - start));
return result;
} catch (Exception e) {
log.error("External call failed",
kv("service", "PaymentGateway"),
kv("operation", "charge"),
kv("duration_ms", System.currentTimeMillis() - start),
e);
throw e;
}
Flow Steps (for AI tracing)
public Order processOrder(CreateOrderRequest request) {
log.info("Processing started", kv("step", "start"), kv("requestData", request.summary()));
Order order = createOrder(request);
log.info("Order created", kv("step", "order_created"), kv("orderId", order.getId()));
validateInventory(order);
log.info("Inventory validated", kv("step", "inventory_ok"), kv("orderId", order.getId()));
processPayment(order);
log.info("Payment processed", kv("step", "payment_done"), kv("orderId", order.getId()));
log.info("Processing completed", kv("step", "complete"), kv("orderId", order.getId()));
return order;
}
What NOT to Log
log.info("Login", kv("password", password));
log.info("Payment", kv("cardNumber", card));
log.info("Request", kv("token", jwtToken));
log.info("User", kv("ssn", socialSecurity));
log.info("Login attempted", kv("userId", userId));
log.info("Payment", kv("cardLast4", last4));
log.info("Token validated", kv("subject", sub), kv("exp", expiry));
Exception Logging
Log Once at Boundary
void methodA() {
try { methodB(); }
catch (Exception e) { log.error("Error", e); throw e; }
}
void methodB() {
try { methodC(); }
catch (Exception e) { log.error("Error", e); throw e; }
}
@RestControllerAdvice
public class GlobalExceptionHandler {
@ExceptionHandler(Exception.class)
public ResponseEntity<?> handle(Exception e, HttpServletRequest request) {
log.error("Request failed",
kv("path", request.getRequestURI()),
kv("method", request.getMethod()),
kv("errorType", e.getClass().getSimpleName()),
e);
return ResponseEntity.status(500).body(errorResponse);
}
}
Include Context
log.error("Error occurred", e);
log.error("Order processing failed",
kv("orderId", orderId),
kv("step", "payment"),
kv("userId", userId),
kv("attemptNumber", attempt),
e);
Quick Reference
private static final Logger log = LoggerFactory.getLogger(MyClass.class);
import static net.logstash.logback.argument.StructuredArguments.kv;
log.info("Event", kv("key1", value1), kv("key2", value2));
log.error("Failed", kv("context", ctx), exception);
MDC.put("requestId", requestId);
MDC.put("userId", userId);
MDC.clear();
log.error()
log.warn()
log.info()
log.debug()
Analyzing Logs (AI/Human)
tail -f app.log | jq .
cat app.log | jq 'select(.level == "ERROR")'
cat app.log | jq 'select(.requestId == "abc123")'
cat app.log | jq 'select(.duration_ms > 1000)'
cat app.log | jq 'select(.requestId == "abc123") | {time: .timestamp, step: .step, message: .message}'
Related Skills
spring-boot-patterns - Spring Boot configuration
jpa-patterns - Database logging (SQL queries)
- Future:
observability-patterns - Metrics, tracing, full observability