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洪 民憙 (Hong Minhee) shared the below article:

Revisiting Java's Checked Exceptions: An Underappreciated Type Safety Feature

洪 民憙 (Hong Minhee) @hongminhee@hackers.pub

Despite their bad reputation in the Java community, checked exceptions provide superior type safety comparable to Rust's Result<T, E> or Haskell's Either a b—we've been dismissing one of Java's best features all along.

Introduction

Few features in Java have been as consistently criticized as checked exceptions. Modern Java libraries and frameworks often go to great lengths to avoid them. Newer JVM languages like Kotlin have abandoned them entirely. Many experienced Java developers consider them a design mistake.

But what if this conventional wisdom is wrong? What if checked exceptions represent one of Java's most forward-thinking features?

In this post, I'll argue that Java's checked exceptions were ahead of their time, offering many of the same type safety benefits that are now celebrated in languages like Rust and Haskell. Rather than abandoning this feature, we should consider how to improve it to work better with modern Java's features.

Understanding Java's Exception Handling Model

To set the stage, let's review how Java's exception system works:

  • Unchecked exceptions (subclasses of RuntimeException or Error): These don't need to be declared or caught. They typically represent programming errors (NullPointerException, IndexOutOfBoundsException) or unrecoverable conditions (OutOfMemoryError).

  • Checked exceptions (subclasses of Exception but not RuntimeException): These must either be caught with try/catch blocks or declared in the method signature with throws. They represent recoverable conditions that are outside the normal flow of execution (IOException, SQLException).

Here's how this works in practice:

// Checked exception - compiler forces you to handle or declare it
public void readFile(String path) throws IOException {
    Files.readAllLines(Path.of(path));
}

// Unchecked exception - no compiler enforcement
public void processArray(int[] array) {
    int value = array[array.length + 1]; // May throw ArrayIndexOutOfBoundsException
}

The Type Safety Argument for Checked Exceptions

At their core, checked exceptions are a way of encoding potential failure modes into the type system via method signatures. This makes certain failure cases part of the API contract, forcing client code to explicitly handle these cases.

Consider this method signature:

public byte[] readFileContents(String filePath) throws IOException

The throws IOException clause tells us something critical: this method might fail in ways related to IO operations. The compiler ensures you can't simply ignore this fact. You must either:

  1. Handle the exception with a try-catch block
  2. Propagate it by declaring it in your own method signature

This type-level representation of potential failures aligns perfectly with principles of modern type-safe programming.

Automatic Propagation: A Hidden Advantage

One often overlooked advantage of Java's checked exceptions is their automatic propagation. Once you declare a method as throws IOException, any exception that occurs is automatically propagated to the caller without additional syntax.

Compare this with Rust, where you must use the ? operator every time you call a function that returns a Result:

// Rust requires explicit propagation with ? for each call
fn read_and_process(path: &str) -> Result<(), std::io::Error> {
    let content = std::fs::read_to_string(path)?;
    process_content(&content)?;
    Ok(())
}

// Java automatically propagates exceptions once declared
void readAndProcess(String path) throws IOException {
    String content = Files.readString(Path.of(path));
    processContent(content); // If this throws IOException, it's automatically propagated
}

In complex methods with many potential failure points, Java's approach leads to cleaner code by eliminating the need for repetitive error propagation markers.

Modern Parallels: Result Types in Rust and Haskell

The approach of encoding failure possibilities in the type system has been adopted by many modern languages, most notably Rust with its Result<T, E> type and Haskell with its Either a b type.

In Rust:

fn read_file_contents(file_path: &str) -> Result<Vec<u8>, std::io::Error> {
    std::fs::read(file_path)
}

When calling this function, you can't just ignore the potential for errors—you need to handle both the success case and the error case, often using the ? operator or pattern matching.

In Haskell:

readFileContents :: FilePath -> IO (Either IOException ByteString)
readFileContents path = try $ BS.readFile path

Again, the caller must explicitly deal with both possible outcomes.

This is fundamentally the same insight that motivated Java's checked exceptions: make failure handling explicit in the type system.

Valid Criticisms of Checked Exceptions

If checked exceptions are conceptually similar to these widely-praised error handling mechanisms, why have they fallen out of favor? There are several legitimate criticisms:

1. Excessive Boilerplate in the Call Chain

The most common complaint is the boilerplate required when propagating exceptions up the call stack:

void methodA() throws IOException {
    methodB();
}

void methodB() throws IOException {
    methodC();
}

void methodC() throws IOException {
    // Actual code that might throw IOException
}

Every method in the chain must declare the same exception, creating repetitive code. While automatic propagation works well within a method, the explicit declaration in method signatures creates overhead.

2. Poor Integration with Functional Programming

Java 8 introduced lambdas and streams, but checked exceptions don't play well with them:

// Won't compile because map doesn't expect functions that throw checked exceptions
List<String> fileContents = filePaths.stream()
    .map(path -> Files.readString(Path.of(path))) // Throws IOException
    .collect(Collectors.toList());

This forces developers to use awkward workarounds:

List<String> fileContents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new UncheckedIOException(e); // Wrap in an unchecked exception
        }
    })
    .collect(Collectors.toList());

3. Interface Evolution Problems

Adding a checked exception to an existing method breaks all implementing classes and calling code. This makes evolving interfaces over time difficult, especially for widely-used libraries and frameworks.

4. Catch-and-Ignore Anti-Pattern

The strictness of checked exceptions can lead to the worst possible outcome—developers simply catching and ignoring exceptions to make the compiler happy:

try {
    // Code that might throw
} catch (Exception e) {
    // Do nothing or just log
}

This is worse than having no exception checking at all because it provides a false sense of security.

Improving Checked Exceptions Without Abandoning Them

Rather than abandoning checked exceptions entirely, Java could enhance the existing system to address these legitimate concerns. Here are some potential improvements that preserve the type safety benefits while addressing the practical problems:

1. Allow lambdas to declare checked exceptions

One of the biggest pain points with checked exceptions today is their incompatibility with functional interfaces. Consider how much cleaner this would be:

// Current approach - forced to handle or wrap exceptions inline
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e);
        }
    })
    .collect(Collectors.toList());

// Potential future approach - lambdas can declare exceptions
List<String> contents = filePaths.stream()
    .map((String path) throws IOException -> Files.readString(Path.of(path)))
    .collect(Collectors.toList());

This would require updating functional interfaces to support exception declarations:

@FunctionalInterface
public interface Function<T, R, E extends Exception> {
    R apply(T t) throws E;
}

2. Generic exception types in throws clauses

Another powerful enhancement would be allowing generic type parameters in throws clauses:

public <E extends Exception> void processWithException(Supplier<Void, E> supplier) throws E {
    supplier.get();
}

This would enable much more flexible composition of methods that work with different exception types, bringing some of the flexibility of Rust's Result<T, E> to Java's existing exception system.

3. Better support for exception handling in functional contexts

Unlike Rust which requires the ? operator for error propagation, Java already automatically propagates checked exceptions when declared in the method signature. What Java needs instead is better support for checked exceptions in functional contexts:

// Current approach for handling exceptions in streams
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e); // Lose type information
        }
    })
    .collect(Collectors.toList());

// Hypothetical improved API
List<String> contents = filePaths.stream()
    .mapThrowing(path -> Files.readString(Path.of(path))) // Preserves checked exception
    .onException(IOException.class, e -> logError(e))
    .collect(Collectors.toList());

4. Integration with Optional<T> and Stream<T> APIs

The standard library could be enhanced to better support operations that might throw checked exceptions:

// Hypothetical API
Optional<String> content = Optional.ofThrowable(() -> Files.readString(Path.of("file.txt")));
content.ifPresentOrElse(
    this::processContent,
    exception -> log.error("Failed to read file", exception)
);

Comparison with Other Languages' Approaches

It's worth examining how other languages have addressed the error handling problem:

Rust's Result<T, E> and ? operator

Rust's approach using Result<T, E> and the ? operator shows how propagation can be made concise while keeping the type safety benefits. The ? operator automatically unwraps a successful result or returns the error to the caller, making propagation more elegant.

However, Rust's approach requires explicit propagation at each step, which can be more verbose than Java's automatic propagation in certain scenarios.

Kotlin's Approach

Kotlin made all exceptions unchecked but provides functional constructs like runCatching that bring back some type safety in a more modern way:

val result = runCatching {
    Files.readString(Path.of("file.txt"))
}

result.fold(
    onSuccess = { content -> processContent(content) },
    onFailure = { exception -> log.error("Failed to read file", exception) }
)

This approach works well with Kotlin's functional programming paradigm but lacks compile-time enforcement.

Scala's Try[T], Either[A, B], and Effect Systems

Scala offers Try[T], Either[A, B], and various effect systems that encode errors in the type system while integrating well with functional programming:

import scala.util.Try

val fileContent: Try[String] = Try {
  Source.fromFile("file.txt").mkString
}

fileContent match {
  case Success(content) => processContent(content)
  case Failure(exception) => log.error("Failed to read file", exception)
}

This approach preserves type safety while fitting well with Scala's functional paradigm.

Conclusion

Java's checked exceptions were a pioneering attempt to bring type safety to error handling. While the implementation has shortcomings, the core concept aligns with modern type-safe approaches to error handling in languages like Rust and Haskell.

Copying Rust's Result<T, E> might seem like the obvious solution, but it would represent a radical departure from Java's established paradigms. Instead, targeted enhancements to the existing checked exceptions system—like allowing lambdas to declare exceptions and supporting generic exception types—could preserve Java's unique approach while addressing its practical limitations.

The beauty of such improvements is that they'd maintain backward compatibility while making checked exceptions work seamlessly with modern Java features like lambdas and streams. They would acknowledge that the core concept of checked exceptions was sound—the problem was in the implementation details and their interaction with newer language features.

So rather than abandoning checked exceptions entirely, perhaps we should recognize them as a forward-thinking feature that was implemented before its time. As Java continues to evolve, we have an opportunity to refine this system rather than replace it.

In the meantime, next time you're tempted to disparage checked exceptions, remember: they're not just an annoying Java quirk—they're an early attempt at the same type safety paradigm that newer languages now implement with much celebration.

What do you think? Could these improvements make checked exceptions viable for modern Java development? Or is it too late to salvage this controversial feature? I'm interested in hearing your thoughts in the comments.

Read more →
0
0
3
0

bgl gwyng shared the below article:

Revisiting Java's Checked Exceptions: An Underappreciated Type Safety Feature

洪 民憙 (Hong Minhee) @hongminhee@hackers.pub

Despite their bad reputation in the Java community, checked exceptions provide superior type safety comparable to Rust's Result<T, E> or Haskell's Either a b—we've been dismissing one of Java's best features all along.

Introduction

Few features in Java have been as consistently criticized as checked exceptions. Modern Java libraries and frameworks often go to great lengths to avoid them. Newer JVM languages like Kotlin have abandoned them entirely. Many experienced Java developers consider them a design mistake.

But what if this conventional wisdom is wrong? What if checked exceptions represent one of Java's most forward-thinking features?

In this post, I'll argue that Java's checked exceptions were ahead of their time, offering many of the same type safety benefits that are now celebrated in languages like Rust and Haskell. Rather than abandoning this feature, we should consider how to improve it to work better with modern Java's features.

Understanding Java's Exception Handling Model

To set the stage, let's review how Java's exception system works:

  • Unchecked exceptions (subclasses of RuntimeException or Error): These don't need to be declared or caught. They typically represent programming errors (NullPointerException, IndexOutOfBoundsException) or unrecoverable conditions (OutOfMemoryError).

  • Checked exceptions (subclasses of Exception but not RuntimeException): These must either be caught with try/catch blocks or declared in the method signature with throws. They represent recoverable conditions that are outside the normal flow of execution (IOException, SQLException).

Here's how this works in practice:

// Checked exception - compiler forces you to handle or declare it
public void readFile(String path) throws IOException {
    Files.readAllLines(Path.of(path));
}

// Unchecked exception - no compiler enforcement
public void processArray(int[] array) {
    int value = array[array.length + 1]; // May throw ArrayIndexOutOfBoundsException
}

The Type Safety Argument for Checked Exceptions

At their core, checked exceptions are a way of encoding potential failure modes into the type system via method signatures. This makes certain failure cases part of the API contract, forcing client code to explicitly handle these cases.

Consider this method signature:

public byte[] readFileContents(String filePath) throws IOException

The throws IOException clause tells us something critical: this method might fail in ways related to IO operations. The compiler ensures you can't simply ignore this fact. You must either:

  1. Handle the exception with a try-catch block
  2. Propagate it by declaring it in your own method signature

This type-level representation of potential failures aligns perfectly with principles of modern type-safe programming.

Automatic Propagation: A Hidden Advantage

One often overlooked advantage of Java's checked exceptions is their automatic propagation. Once you declare a method as throws IOException, any exception that occurs is automatically propagated to the caller without additional syntax.

Compare this with Rust, where you must use the ? operator every time you call a function that returns a Result:

// Rust requires explicit propagation with ? for each call
fn read_and_process(path: &str) -> Result<(), std::io::Error> {
    let content = std::fs::read_to_string(path)?;
    process_content(&content)?;
    Ok(())
}

// Java automatically propagates exceptions once declared
void readAndProcess(String path) throws IOException {
    String content = Files.readString(Path.of(path));
    processContent(content); // If this throws IOException, it's automatically propagated
}

In complex methods with many potential failure points, Java's approach leads to cleaner code by eliminating the need for repetitive error propagation markers.

Modern Parallels: Result Types in Rust and Haskell

The approach of encoding failure possibilities in the type system has been adopted by many modern languages, most notably Rust with its Result<T, E> type and Haskell with its Either a b type.

In Rust:

fn read_file_contents(file_path: &str) -> Result<Vec<u8>, std::io::Error> {
    std::fs::read(file_path)
}

When calling this function, you can't just ignore the potential for errors—you need to handle both the success case and the error case, often using the ? operator or pattern matching.

In Haskell:

readFileContents :: FilePath -> IO (Either IOException ByteString)
readFileContents path = try $ BS.readFile path

Again, the caller must explicitly deal with both possible outcomes.

This is fundamentally the same insight that motivated Java's checked exceptions: make failure handling explicit in the type system.

Valid Criticisms of Checked Exceptions

If checked exceptions are conceptually similar to these widely-praised error handling mechanisms, why have they fallen out of favor? There are several legitimate criticisms:

1. Excessive Boilerplate in the Call Chain

The most common complaint is the boilerplate required when propagating exceptions up the call stack:

void methodA() throws IOException {
    methodB();
}

void methodB() throws IOException {
    methodC();
}

void methodC() throws IOException {
    // Actual code that might throw IOException
}

Every method in the chain must declare the same exception, creating repetitive code. While automatic propagation works well within a method, the explicit declaration in method signatures creates overhead.

2. Poor Integration with Functional Programming

Java 8 introduced lambdas and streams, but checked exceptions don't play well with them:

// Won't compile because map doesn't expect functions that throw checked exceptions
List<String> fileContents = filePaths.stream()
    .map(path -> Files.readString(Path.of(path))) // Throws IOException
    .collect(Collectors.toList());

This forces developers to use awkward workarounds:

List<String> fileContents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new UncheckedIOException(e); // Wrap in an unchecked exception
        }
    })
    .collect(Collectors.toList());

3. Interface Evolution Problems

Adding a checked exception to an existing method breaks all implementing classes and calling code. This makes evolving interfaces over time difficult, especially for widely-used libraries and frameworks.

4. Catch-and-Ignore Anti-Pattern

The strictness of checked exceptions can lead to the worst possible outcome—developers simply catching and ignoring exceptions to make the compiler happy:

try {
    // Code that might throw
} catch (Exception e) {
    // Do nothing or just log
}

This is worse than having no exception checking at all because it provides a false sense of security.

Improving Checked Exceptions Without Abandoning Them

Rather than abandoning checked exceptions entirely, Java could enhance the existing system to address these legitimate concerns. Here are some potential improvements that preserve the type safety benefits while addressing the practical problems:

1. Allow lambdas to declare checked exceptions

One of the biggest pain points with checked exceptions today is their incompatibility with functional interfaces. Consider how much cleaner this would be:

// Current approach - forced to handle or wrap exceptions inline
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e);
        }
    })
    .collect(Collectors.toList());

// Potential future approach - lambdas can declare exceptions
List<String> contents = filePaths.stream()
    .map((String path) throws IOException -> Files.readString(Path.of(path)))
    .collect(Collectors.toList());

This would require updating functional interfaces to support exception declarations:

@FunctionalInterface
public interface Function<T, R, E extends Exception> {
    R apply(T t) throws E;
}

2. Generic exception types in throws clauses

Another powerful enhancement would be allowing generic type parameters in throws clauses:

public <E extends Exception> void processWithException(Supplier<Void, E> supplier) throws E {
    supplier.get();
}

This would enable much more flexible composition of methods that work with different exception types, bringing some of the flexibility of Rust's Result<T, E> to Java's existing exception system.

3. Better support for exception handling in functional contexts

Unlike Rust which requires the ? operator for error propagation, Java already automatically propagates checked exceptions when declared in the method signature. What Java needs instead is better support for checked exceptions in functional contexts:

// Current approach for handling exceptions in streams
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e); // Lose type information
        }
    })
    .collect(Collectors.toList());

// Hypothetical improved API
List<String> contents = filePaths.stream()
    .mapThrowing(path -> Files.readString(Path.of(path))) // Preserves checked exception
    .onException(IOException.class, e -> logError(e))
    .collect(Collectors.toList());

4. Integration with Optional<T> and Stream<T> APIs

The standard library could be enhanced to better support operations that might throw checked exceptions:

// Hypothetical API
Optional<String> content = Optional.ofThrowable(() -> Files.readString(Path.of("file.txt")));
content.ifPresentOrElse(
    this::processContent,
    exception -> log.error("Failed to read file", exception)
);

Comparison with Other Languages' Approaches

It's worth examining how other languages have addressed the error handling problem:

Rust's Result<T, E> and ? operator

Rust's approach using Result<T, E> and the ? operator shows how propagation can be made concise while keeping the type safety benefits. The ? operator automatically unwraps a successful result or returns the error to the caller, making propagation more elegant.

However, Rust's approach requires explicit propagation at each step, which can be more verbose than Java's automatic propagation in certain scenarios.

Kotlin's Approach

Kotlin made all exceptions unchecked but provides functional constructs like runCatching that bring back some type safety in a more modern way:

val result = runCatching {
    Files.readString(Path.of("file.txt"))
}

result.fold(
    onSuccess = { content -> processContent(content) },
    onFailure = { exception -> log.error("Failed to read file", exception) }
)

This approach works well with Kotlin's functional programming paradigm but lacks compile-time enforcement.

Scala's Try[T], Either[A, B], and Effect Systems

Scala offers Try[T], Either[A, B], and various effect systems that encode errors in the type system while integrating well with functional programming:

import scala.util.Try

val fileContent: Try[String] = Try {
  Source.fromFile("file.txt").mkString
}

fileContent match {
  case Success(content) => processContent(content)
  case Failure(exception) => log.error("Failed to read file", exception)
}

This approach preserves type safety while fitting well with Scala's functional paradigm.

Conclusion

Java's checked exceptions were a pioneering attempt to bring type safety to error handling. While the implementation has shortcomings, the core concept aligns with modern type-safe approaches to error handling in languages like Rust and Haskell.

Copying Rust's Result<T, E> might seem like the obvious solution, but it would represent a radical departure from Java's established paradigms. Instead, targeted enhancements to the existing checked exceptions system—like allowing lambdas to declare exceptions and supporting generic exception types—could preserve Java's unique approach while addressing its practical limitations.

The beauty of such improvements is that they'd maintain backward compatibility while making checked exceptions work seamlessly with modern Java features like lambdas and streams. They would acknowledge that the core concept of checked exceptions was sound—the problem was in the implementation details and their interaction with newer language features.

So rather than abandoning checked exceptions entirely, perhaps we should recognize them as a forward-thinking feature that was implemented before its time. As Java continues to evolve, we have an opportunity to refine this system rather than replace it.

In the meantime, next time you're tempted to disparage checked exceptions, remember: they're not just an annoying Java quirk—they're an early attempt at the same type safety paradigm that newer languages now implement with much celebration.

What do you think? Could these improvements make checked exceptions viable for modern Java development? Or is it too late to salvage this controversial feature? I'm interested in hearing your thoughts in the comments.

Read more →
0
0
3
0
0

"Now that Republicans control the government and most media platforms, everyone’s right to freedom of speech is protected. Assuming you aren’t using that constitutional right to peacefully protest the war in Gaza, of course, in which case, we will detain you and kick you out of the country."
https://buff.ly/664frPP

0
0
0

Revisiting Java's Checked Exceptions: An Underappreciated Type Safety Feature

洪 民憙 (Hong Minhee) @hongminhee@hackers.pub

Despite their bad reputation in the Java community, checked exceptions provide superior type safety comparable to Rust's Result<T, E> or Haskell's Either a b—we've been dismissing one of Java's best features all along.

Introduction

Few features in Java have been as consistently criticized as checked exceptions. Modern Java libraries and frameworks often go to great lengths to avoid them. Newer JVM languages like Kotlin have abandoned them entirely. Many experienced Java developers consider them a design mistake.

But what if this conventional wisdom is wrong? What if checked exceptions represent one of Java's most forward-thinking features?

In this post, I'll argue that Java's checked exceptions were ahead of their time, offering many of the same type safety benefits that are now celebrated in languages like Rust and Haskell. Rather than abandoning this feature, we should consider how to improve it to work better with modern Java's features.

Understanding Java's Exception Handling Model

To set the stage, let's review how Java's exception system works:

  • Unchecked exceptions (subclasses of RuntimeException or Error): These don't need to be declared or caught. They typically represent programming errors (NullPointerException, IndexOutOfBoundsException) or unrecoverable conditions (OutOfMemoryError).

  • Checked exceptions (subclasses of Exception but not RuntimeException): These must either be caught with try/catch blocks or declared in the method signature with throws. They represent recoverable conditions that are outside the normal flow of execution (IOException, SQLException).

Here's how this works in practice:

// Checked exception - compiler forces you to handle or declare it
public void readFile(String path) throws IOException {
    Files.readAllLines(Path.of(path));
}

// Unchecked exception - no compiler enforcement
public void processArray(int[] array) {
    int value = array[array.length + 1]; // May throw ArrayIndexOutOfBoundsException
}

The Type Safety Argument for Checked Exceptions

At their core, checked exceptions are a way of encoding potential failure modes into the type system via method signatures. This makes certain failure cases part of the API contract, forcing client code to explicitly handle these cases.

Consider this method signature:

public byte[] readFileContents(String filePath) throws IOException

The throws IOException clause tells us something critical: this method might fail in ways related to IO operations. The compiler ensures you can't simply ignore this fact. You must either:

  1. Handle the exception with a try-catch block
  2. Propagate it by declaring it in your own method signature

This type-level representation of potential failures aligns perfectly with principles of modern type-safe programming.

Automatic Propagation: A Hidden Advantage

One often overlooked advantage of Java's checked exceptions is their automatic propagation. Once you declare a method as throws IOException, any exception that occurs is automatically propagated to the caller without additional syntax.

Compare this with Rust, where you must use the ? operator every time you call a function that returns a Result:

// Rust requires explicit propagation with ? for each call
fn read_and_process(path: &str) -> Result<(), std::io::Error> {
    let content = std::fs::read_to_string(path)?;
    process_content(&content)?;
    Ok(())
}

// Java automatically propagates exceptions once declared
void readAndProcess(String path) throws IOException {
    String content = Files.readString(Path.of(path));
    processContent(content); // If this throws IOException, it's automatically propagated
}

In complex methods with many potential failure points, Java's approach leads to cleaner code by eliminating the need for repetitive error propagation markers.

Modern Parallels: Result Types in Rust and Haskell

The approach of encoding failure possibilities in the type system has been adopted by many modern languages, most notably Rust with its Result<T, E> type and Haskell with its Either a b type.

In Rust:

fn read_file_contents(file_path: &str) -> Result<Vec<u8>, std::io::Error> {
    std::fs::read(file_path)
}

When calling this function, you can't just ignore the potential for errors—you need to handle both the success case and the error case, often using the ? operator or pattern matching.

In Haskell:

readFileContents :: FilePath -> IO (Either IOException ByteString)
readFileContents path = try $ BS.readFile path

Again, the caller must explicitly deal with both possible outcomes.

This is fundamentally the same insight that motivated Java's checked exceptions: make failure handling explicit in the type system.

Valid Criticisms of Checked Exceptions

If checked exceptions are conceptually similar to these widely-praised error handling mechanisms, why have they fallen out of favor? There are several legitimate criticisms:

1. Excessive Boilerplate in the Call Chain

The most common complaint is the boilerplate required when propagating exceptions up the call stack:

void methodA() throws IOException {
    methodB();
}

void methodB() throws IOException {
    methodC();
}

void methodC() throws IOException {
    // Actual code that might throw IOException
}

Every method in the chain must declare the same exception, creating repetitive code. While automatic propagation works well within a method, the explicit declaration in method signatures creates overhead.

2. Poor Integration with Functional Programming

Java 8 introduced lambdas and streams, but checked exceptions don't play well with them:

// Won't compile because map doesn't expect functions that throw checked exceptions
List<String> fileContents = filePaths.stream()
    .map(path -> Files.readString(Path.of(path))) // Throws IOException
    .collect(Collectors.toList());

This forces developers to use awkward workarounds:

List<String> fileContents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new UncheckedIOException(e); // Wrap in an unchecked exception
        }
    })
    .collect(Collectors.toList());

3. Interface Evolution Problems

Adding a checked exception to an existing method breaks all implementing classes and calling code. This makes evolving interfaces over time difficult, especially for widely-used libraries and frameworks.

4. Catch-and-Ignore Anti-Pattern

The strictness of checked exceptions can lead to the worst possible outcome—developers simply catching and ignoring exceptions to make the compiler happy:

try {
    // Code that might throw
} catch (Exception e) {
    // Do nothing or just log
}

This is worse than having no exception checking at all because it provides a false sense of security.

Improving Checked Exceptions Without Abandoning Them

Rather than abandoning checked exceptions entirely, Java could enhance the existing system to address these legitimate concerns. Here are some potential improvements that preserve the type safety benefits while addressing the practical problems:

1. Allow lambdas to declare checked exceptions

One of the biggest pain points with checked exceptions today is their incompatibility with functional interfaces. Consider how much cleaner this would be:

// Current approach - forced to handle or wrap exceptions inline
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e);
        }
    })
    .collect(Collectors.toList());

// Potential future approach - lambdas can declare exceptions
List<String> contents = filePaths.stream()
    .map((String path) throws IOException -> Files.readString(Path.of(path)))
    .collect(Collectors.toList());

This would require updating functional interfaces to support exception declarations:

@FunctionalInterface
public interface Function<T, R, E extends Exception> {
    R apply(T t) throws E;
}

2. Generic exception types in throws clauses

Another powerful enhancement would be allowing generic type parameters in throws clauses:

public <E extends Exception> void processWithException(Supplier<Void, E> supplier) throws E {
    supplier.get();
}

This would enable much more flexible composition of methods that work with different exception types, bringing some of the flexibility of Rust's Result<T, E> to Java's existing exception system.

3. Better support for exception handling in functional contexts

Unlike Rust which requires the ? operator for error propagation, Java already automatically propagates checked exceptions when declared in the method signature. What Java needs instead is better support for checked exceptions in functional contexts:

// Current approach for handling exceptions in streams
List<String> contents = filePaths.stream()
    .map(path -> {
        try {
            return Files.readString(Path.of(path));
        } catch (IOException e) {
            throw new RuntimeException(e); // Lose type information
        }
    })
    .collect(Collectors.toList());

// Hypothetical improved API
List<String> contents = filePaths.stream()
    .mapThrowing(path -> Files.readString(Path.of(path))) // Preserves checked exception
    .onException(IOException.class, e -> logError(e))
    .collect(Collectors.toList());

4. Integration with Optional<T> and Stream<T> APIs

The standard library could be enhanced to better support operations that might throw checked exceptions:

// Hypothetical API
Optional<String> content = Optional.ofThrowable(() -> Files.readString(Path.of("file.txt")));
content.ifPresentOrElse(
    this::processContent,
    exception -> log.error("Failed to read file", exception)
);

Comparison with Other Languages' Approaches

It's worth examining how other languages have addressed the error handling problem:

Rust's Result<T, E> and ? operator

Rust's approach using Result<T, E> and the ? operator shows how propagation can be made concise while keeping the type safety benefits. The ? operator automatically unwraps a successful result or returns the error to the caller, making propagation more elegant.

However, Rust's approach requires explicit propagation at each step, which can be more verbose than Java's automatic propagation in certain scenarios.

Kotlin's Approach

Kotlin made all exceptions unchecked but provides functional constructs like runCatching that bring back some type safety in a more modern way:

val result = runCatching {
    Files.readString(Path.of("file.txt"))
}

result.fold(
    onSuccess = { content -> processContent(content) },
    onFailure = { exception -> log.error("Failed to read file", exception) }
)

This approach works well with Kotlin's functional programming paradigm but lacks compile-time enforcement.

Scala's Try[T], Either[A, B], and Effect Systems

Scala offers Try[T], Either[A, B], and various effect systems that encode errors in the type system while integrating well with functional programming:

import scala.util.Try

val fileContent: Try[String] = Try {
  Source.fromFile("file.txt").mkString
}

fileContent match {
  case Success(content) => processContent(content)
  case Failure(exception) => log.error("Failed to read file", exception)
}

This approach preserves type safety while fitting well with Scala's functional paradigm.

Conclusion

Java's checked exceptions were a pioneering attempt to bring type safety to error handling. While the implementation has shortcomings, the core concept aligns with modern type-safe approaches to error handling in languages like Rust and Haskell.

Copying Rust's Result<T, E> might seem like the obvious solution, but it would represent a radical departure from Java's established paradigms. Instead, targeted enhancements to the existing checked exceptions system—like allowing lambdas to declare exceptions and supporting generic exception types—could preserve Java's unique approach while addressing its practical limitations.

The beauty of such improvements is that they'd maintain backward compatibility while making checked exceptions work seamlessly with modern Java features like lambdas and streams. They would acknowledge that the core concept of checked exceptions was sound—the problem was in the implementation details and their interaction with newer language features.

So rather than abandoning checked exceptions entirely, perhaps we should recognize them as a forward-thinking feature that was implemented before its time. As Java continues to evolve, we have an opportunity to refine this system rather than replace it.

In the meantime, next time you're tempted to disparage checked exceptions, remember: they're not just an annoying Java quirk—they're an early attempt at the same type safety paradigm that newer languages now implement with much celebration.

What do you think? Could these improvements make checked exceptions viable for modern Java development? Or is it too late to salvage this controversial feature? I'm interested in hearing your thoughts in the comments.

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【ジュワっと肉の旨みが弾ける!くり豚のランチョンミート】
スペイン・ガリシア地方で栗を食べてストレスフリーで育ったくり豚を、贅沢に使用したランチョンミート缶です。サッと炒めるだけで、外はカリッと中はふわっとした食感と、上質な豚の甘みと程よい塩気が楽しめます。https://www.kaldi.co.jp/ec/pro/disp/1/8411769005083

Photo by カルディコーヒーファーム 公式 on March 20, 2025. 살라미 및 텍스트의 이미지일 수 있음.Photo by カルディコーヒーファーム 公式 on March 20, 2025. May be an image of salami, sausage and text.
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uv2nix는 uv보다 구리고, cabal2nix는 cabal보다 구린데, Nix는 uv + cabal + ... 보다 낫다. Nix 커뮤니티를 키우려면, 후자를 이해시키고(쉬움) 전자에 대해 익스큐즈하도록 설득해야한다(어려움) .

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さっと5分で韓国ニュースをチェック! ニュースダイジェスト(2025年3月7日~3月20日)

hana+(ハナタス) @hanatas.jp@web.brid.gy

韓国の2週間の出来事をピックアップして紹介するコーナー。今回は、3月7日から3月20日までの出来事から、以下の三つのニュースをご紹介します。 韓国の放送各社が公式YouTubeで提供するニュース動画もぜひご覧ください! […]

投稿 さっと5分で韓国ニュースをチェック! ニュースダイジェスト(2025年3月7日~3月20日) は hana+(ハナタス) に最初に表示されました。

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🙈 Let's say you have a LONG list of URLs, and some are NSFW… How do you clean the URL list? 🤔

I experimented a bit and came up with something pretty solid!

Check each URL using a content blocking DNS server.

Huh? I know. Read on 👇

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@hongminhee洪 民憙 (Hong Minhee) 저는 Nix를 쓰고 있습니다. 한동안 Haskell 안쓰고있다가 오랜만에 돌아왔더니 다들 Nix 쓰고있어서 그냥 따라 쓰는 상태입니다. Nix가 해결하려는 문제와 방향은 공감하지만, Haksell + Nix가 막 엄청 좋은지는 잘 모르겠는 상태에요.

Nix로 그냥 GHC랑 Cabal, Stack 버전만 잡고 나머지는 Cabal, Stack 등의 기존 하스켈 툴링에 맡기는 방법이 있고, 또 Nix가 패키지 다운받아서 빌드하는 역할까지 대신해버리는 방법이 있는데, 제가 쓰고 있는 방법은 후자입니다.

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@hongminhee洪 民憙 (Hong Minhee) 저는 Nix를 쓰고 있습니다. 한동안 Haskell 안쓰고있다가 오랜만에 돌아왔더니 다들 Nix 쓰고있어서 그냥 따라 쓰는 상태입니다. Nix가 해결하려는 문제와 방향은 공감하지만, Haksell + Nix가 막 엄청 좋은지는 잘 모르겠는 상태에요.

Nix로 그냥 GHC랑 Cabal, Stack 버전만 잡고 나머지는 Cabal, Stack 등의 기존 하스켈 툴링에 맡기는 방법이 있고, 또 Nix가 패키지 다운받아서 빌드하는 역할까지 대신해버리는 방법이 있는데, 제가 쓰고 있는 방법은 후자입니다.

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フロントエンド開発者があまり知らないと思われるdatalistにも触られてて笑顔になった(?)

Cool native HTML elements you should already be using · Harrison Broadbent

https://harrisonbroadbent.com/blog/cool-native-html-elements/

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