Files
awesome-copilot/cookbook/copilot-sdk/java/ralph-loop.md
Bruno Borges 46f6f3e6db Add Java SDK cookbook with 7 recipes
Add complete Java cookbook matching the pattern of existing .NET, Go,
Node.js, and Python cookbooks. All 7 recipes included:

- Ralph Loop: Autonomous AI task loops with JBang
- Error Handling: try-with-resources, ExecutionException, timeouts
- Multiple Sessions: Parallel sessions with CompletableFuture
- Managing Local Files: AI-powered file organization
- PR Visualization: Interactive PR age charts
- Persisting Sessions: Save/resume with custom IDs
- Accessibility Report: WCAG reports via Playwright MCP

Each recipe includes both markdown documentation and a standalone
JBang-runnable Java file in recipe/.
2026-04-06 15:20:20 -04:00

10 KiB

Ralph Loop: Autonomous AI Task Loops

Build autonomous coding loops where an AI agent picks tasks, implements them, validates against backpressure (tests, builds), commits, and repeats — each iteration in a fresh context window.

Runnable example: recipe/RalphLoop.java

jbang recipe/RalphLoop.java

What is a Ralph Loop?

A Ralph loop is an autonomous development workflow where an AI agent iterates through tasks in isolated context windows. The key insight: state lives on disk, not in the model's context. Each iteration starts fresh, reads the current state from files, does one task, writes results back to disk, and exits.

┌─────────────────────────────────────────────────┐
│                   loop.sh                       │
│  while true:                                    │
│    ┌─────────────────────────────────────────┐  │
│    │  Fresh session (isolated context)       │  │
│    │                                         │  │
│    │  1. Read PROMPT.md + AGENTS.md          │  │
│    │  2. Study specs/* and code              │  │
│    │  3. Pick next task from plan            │  │
│    │  4. Implement + run tests               │  │
│    │  5. Update plan, commit, exit           │  │
│    └─────────────────────────────────────────┘  │
│    ↻ next iteration (fresh context)             │
└─────────────────────────────────────────────────┘

Core principles:

  • Fresh context per iteration: Each loop creates a new session — no context accumulation, always in the "smart zone"
  • Disk as shared state: IMPLEMENTATION_PLAN.md persists between iterations and acts as the coordination mechanism
  • Backpressure steers quality: Tests, builds, and lints reject bad work — the agent must fix issues before committing
  • Two modes: PLANNING (gap analysis → generate plan) and BUILDING (implement from plan)

Simple Version

The minimal Ralph loop — the SDK equivalent of while :; do cat PROMPT.md | copilot ; done:

///usr/bin/env jbang "$0" "$@" ; exit $?
//DEPS com.github:copilot-sdk-java:0.2.1-java.1

import com.github.copilot.sdk.*;
import com.github.copilot.sdk.events.*;
import com.github.copilot.sdk.json.*;
import java.nio.file.*;

public class SimpleRalphLoop {
    public static void main(String[] args) throws Exception {
        String promptFile = args.length > 0 ? args[0] : "PROMPT.md";
        int maxIterations = args.length > 1 ? Integer.parseInt(args[1]) : 50;

        try (var client = new CopilotClient()) {
            client.start().get();

            String prompt = Files.readString(Path.of(promptFile));

            for (int i = 1; i <= maxIterations; i++) {
                System.out.printf("%n=== Iteration %d/%d ===%n", i, maxIterations);

                // Fresh session each iteration — context isolation is the point
                var session = client.createSession(
                    new SessionConfig()
                        .setOnPermissionRequest(PermissionHandler.APPROVE_ALL)
                        .setModel("gpt-5.1-codex-mini")
                        .setWorkingDirectory(System.getProperty("user.dir"))
                ).get();

                try {
                    session.sendAndWait(new MessageOptions().setPrompt(prompt)).get();
                } finally {
                    session.close();
                }

                System.out.printf("Iteration %d complete.%n", i);
            }
        }
    }
}

This is all you need to get started. The prompt file tells the agent what to do; the agent reads project files, does work, commits, and exits. The loop restarts with a clean slate.

Ideal Version

The full Ralph pattern with planning and building modes, matching the Ralph Playbook architecture:

///usr/bin/env jbang "$0" "$@" ; exit $?
//DEPS com.github:copilot-sdk-java:0.2.1-java.1

import com.github.copilot.sdk.*;
import com.github.copilot.sdk.events.*;
import com.github.copilot.sdk.json.*;
import java.nio.file.*;
import java.util.Arrays;

public class RalphLoop {
    public static void main(String[] args) throws Exception {
        // Parse CLI args: jbang RalphLoop.java [plan] [max_iterations]
        boolean planMode = Arrays.asList(args).contains("plan");
        String mode = planMode ? "plan" : "build";
        int maxIterations = Arrays.stream(args)
            .filter(a -> a.matches("\\d+"))
            .findFirst()
            .map(Integer::parseInt)
            .orElse(50);

        String promptFile = planMode ? "PROMPT_plan.md" : "PROMPT_build.md";
        System.out.printf("Mode: %s | Prompt: %s%n", mode, promptFile);

        try (var client = new CopilotClient()) {
            client.start().get();

            String prompt = Files.readString(Path.of(promptFile));

            for (int i = 1; i <= maxIterations; i++) {
                System.out.printf("%n=== Iteration %d/%d ===%n", i, maxIterations);

                var session = client.createSession(
                    new SessionConfig()
                        .setOnPermissionRequest(PermissionHandler.APPROVE_ALL)
                        .setModel("gpt-5.1-codex-mini")
                        .setWorkingDirectory(System.getProperty("user.dir"))
                ).get();

                // Log tool usage for visibility
                session.on(ToolExecutionStartEvent.class,
                    ev -> System.out.printf("  ⚙ %s%n", ev.getData().toolName()));

                try {
                    session.sendAndWait(new MessageOptions().setPrompt(prompt)).get();
                } finally {
                    session.close();
                }

                System.out.printf("Iteration %d complete.%n", i);
            }
        }
    }
}

Required Project Files

The ideal version expects this file structure in your project:

project-root/
├── PROMPT_plan.md              # Planning mode instructions
├── PROMPT_build.md             # Building mode instructions
├── AGENTS.md                   # Operational guide (build/test commands)
├── IMPLEMENTATION_PLAN.md      # Task list (generated by planning mode)
├── specs/                      # Requirement specs (one per topic)
│   ├── auth.md
│   └── data-pipeline.md
└── src/                        # Your source code

Example PROMPT_plan.md

0a. Study `specs/*` to learn the application specifications.
0b. Study IMPLEMENTATION_PLAN.md (if present) to understand the plan so far.
0c. Study `src/` to understand existing code and shared utilities.

1. Compare specs against code (gap analysis). Create or update
   IMPLEMENTATION_PLAN.md as a prioritized bullet-point list of tasks
   yet to be implemented. Do NOT implement anything.

IMPORTANT: Do NOT assume functionality is missing — search the
codebase first to confirm. Prefer updating existing utilities over
creating ad-hoc copies.

Example PROMPT_build.md

0a. Study `specs/*` to learn the application specifications.
0b. Study IMPLEMENTATION_PLAN.md.
0c. Study `src/` for reference.

1. Choose the most important item from IMPLEMENTATION_PLAN.md. Before
   making changes, search the codebase (don't assume not implemented).
2. After implementing, run the tests. If functionality is missing, add it.
3. When you discover issues, update IMPLEMENTATION_PLAN.md immediately.
4. When tests pass, update IMPLEMENTATION_PLAN.md, then `git add -A`
   then `git commit` with a descriptive message.

5. When authoring documentation, capture the why.
6. Implement completely. No placeholders or stubs.
7. Keep IMPLEMENTATION_PLAN.md current — future iterations depend on it.

Example AGENTS.md

Keep this brief (~60 lines). It's loaded every iteration, so bloat wastes context.

## Build & Run

mvn compile

## Validation

- Tests: `mvn test`
- Typecheck: `mvn compile`
- Lint: `mvn checkstyle:check`

Best Practices

  1. Fresh context per iteration: Never accumulate context across iterations — that's the whole point
  2. Disk is your database: IMPLEMENTATION_PLAN.md is shared state between isolated sessions
  3. Backpressure is essential: Tests, builds, lints in AGENTS.md — the agent must pass them before committing
  4. Start with PLANNING mode: Generate the plan first, then switch to BUILDING
  5. Observe and tune: Watch early iterations, add guardrails to prompts when the agent fails in specific ways
  6. The plan is disposable: If the agent goes off track, delete IMPLEMENTATION_PLAN.md and re-plan
  7. Keep AGENTS.md brief: It's loaded every iteration — operational info only, no progress notes
  8. Use a sandbox: The agent runs autonomously with full tool access — isolate it
  9. Set workingDirectory: Pin the session to your project root so tool operations resolve paths correctly
  10. Auto-approve permissions: Use PermissionHandler.APPROVE_ALL to allow tool calls without interrupting the loop

When to Use a Ralph Loop

Good for:

  • Implementing features from specs with test-driven validation
  • Large refactors broken into many small tasks
  • Unattended, long-running development with clear requirements
  • Any work where backpressure (tests/builds) can verify correctness

Not good for:

  • Tasks requiring human judgment mid-loop
  • One-shot operations that don't benefit from iteration
  • Vague requirements without testable acceptance criteria
  • Exploratory prototyping where direction isn't clear

See Also