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MCP Server for rr Reverse Debugging

Project description

karellen-rr-mcp

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MCP Server for rr Reverse Debugging.

Overview

karellen-rr-mcp is an MCP (Model Context Protocol) server that enables any MCP-compliant LLM client to use rr for reverse debugging. Instead of iteratively adding debug output and rebuilding, the LLM can record a failing test with rr, then replay it with full forward and reverse debugging via GDB/MI, inspecting program state without modifying source code.

Requirements

  • Linux (rr only supports Linux)
  • rr installed and on PATH
  • Python >= 3.9
  • perf_event_paranoid set to allow recording (<= 1):
    sudo sysctl kernel.perf_event_paranoid=1
    

Installation

pip install karellen-rr-mcp

Or with pipx for an isolated environment:

pipx install karellen-rr-mcp

Claude Code Integration

Configure the MCP server

Using the CLI:

claude mcp add --transport stdio karellen-rr-mcp -- karellen-rr-mcp

Or manually add to ~/.claude.json (user scope) or .mcp.json in your project root (project scope, shared via version control):

{
  "mcpServers": {
    "karellen-rr-mcp": {
      "type": "stdio",
      "command": "karellen-rr-mcp"
    }
  }
}

If installed with pipx:

claude mcp add --transport stdio karellen-rr-mcp -- pipx run karellen-rr-mcp

or manually:

{
  "mcpServers": {
    "karellen-rr-mcp": {
      "type": "stdio",
      "command": "pipx",
      "args": ["run", "karellen-rr-mcp"]
    }
  }
}

Teach Claude the debugging workflow

Claude will automatically discover all rr_* tools, but to teach it when and how to use them effectively, add the following to your project's CLAUDE.md:

## Reverse Debugging with rr

### When to Use rr

Run tests and code normally. When you encounter a crash, segfault, test failure, or bug
that is hard to understand from the output alone, **re-run the failing command under rr
recording** and then debug it:

```
rr_record(command=["make", "test"])
rr_record(command=["./failing_test"])
rr_record(command=["ctest", "--test-dir", "build"], working_directory="/path/to/project")
```

Keep the record-replay-debug cycle going until all problems are resolved. rr captures
the full execution deterministically, so the failure is replayed exactly as it happened.

### Debugging a SIGSEGV or Crash

When a crash occurs, re-run the crashing command with `rr_record`, then debug backwards:

1. **Start replay**: `rr_replay_start()`
2. **Run forward to the crash**: `rr_continue()` — the program will stop at the signal
   (SIGSEGV, SIGABRT, etc.) with the crashing frame
3. **Examine the crash site**: `rr_backtrace()` to see the full call stack,
   `rr_locals()` to see variable values, `rr_evaluate("*ptr")` to inspect the
   faulting pointer or expression
4. **Reverse-step to find the root cause**: `rr_next(reverse=True)` or
   `rr_step(reverse=True)` to walk backwards from the crash instruction-by-instruction,
   watching how variables and memory changed
5. **Set a watchpoint and reverse-continue**: if a variable or pointer was corrupted,
   use `rr_watchpoint_set("my_var")` then `rr_continue(reverse=True)` — this will stop
   at the exact moment the variable was last modified before the crash
6. **Use checkpoints**: `rr_checkpoint_save()` at interesting points so you can
   `rr_checkpoint_restore(id)` to jump back without replaying from the start
7. **Clean up**: `rr_replay_stop()` when the bug is understood

### General Debugging Workflow

For non-crash bugs (wrong output, logic errors, test assertion failures):

1. **Record** the failing test: `rr_record(command=["./failing_test"])`
2. **Start replay**: `rr_replay_start()`
3. **Set breakpoints** at the assertion or where wrong behavior is observed:
   `rr_breakpoint_set("test_function")` or `rr_breakpoint_set("file.c:42")`
4. **Run forward** to the breakpoint: `rr_continue()`
5. **Inspect state**: `rr_backtrace()`, `rr_locals()`, `rr_evaluate("expr")`
6. **Go backward** to find where state diverged: `rr_continue(reverse=True)`,
   `rr_step(reverse=True)`, `rr_next(reverse=True)`
7. **Clean up**: `rr_replay_stop()`

### Key Principles

- **Re-run under rr when stuck**: if a test fails or a program crashes and the cause
  isn't obvious from the output, re-run with `rr_record` and debug the trace — don't
  waste cycles adding printf statements
- **Work backwards from symptoms**: go forward to where the bug manifests, then reverse
  to find the cause — this is the opposite of printf-debugging and far more efficient
- **Watchpoints + reverse = root cause**: setting a watchpoint on a corrupted variable
  and reverse-continuing finds the exact write that caused corruption
- **Never modify source to debug**: rr replay gives full access to program state at every
  point in execution — no need for debug prints, trace output, or conditional breakpoints
  in source code

### rr Best Practices

- **Build with debug symbols**: compile with `-g` (and preferably `-O0` or `-Og`) so that
  rr traces include full source-level information — function names, line numbers, local
  variables, and type info are all available during replay
- **rr records the entire process tree**: child processes and threads are all captured,
  so multi-process and multi-threaded bugs can be debugged deterministically
- **Traces are deterministic**: replaying a trace always reproduces the exact same
  execution, including thread interleavings and signal delivery — race conditions and
  heisenbugs that are impossible to reproduce with printf become trivially repeatable
- **Traces survive the session**: rr traces are stored in `~/.local/share/rr/` by default
  and persist across sessions. Use `rr_list_recordings()` to see available traces and
  `rr_replay_start(trace_dir="/path/to/trace")` to replay an older one
- **Multiple replays from one recording**: a single trace can be replayed as many times
  as needed with different breakpoints and inspection strategies — no need to re-record
- **Conditional breakpoints narrow the search**: use
  `rr_breakpoint_set("file.c:100", condition="i == 42")` to stop only when specific
  conditions hold, then reverse from there
- **Checkpoints avoid re-replaying**: save checkpoints at key points with
  `rr_checkpoint_save()` and jump back to them with `rr_checkpoint_restore(id)` instead
  of replaying from the beginning
- **rr has overhead constraints**: rr only supports Linux on x86-64 (and experimentally
  aarch64), does not support programs that use hardware performance counters directly,
  and adds ~1.2x slowdown for CPU-bound code (more for I/O-heavy or syscall-heavy code)
- **Environment variables in recording**: pass `env={"MALLOC_CHECK_": "3"}` or similar
  to `rr_record` to enable additional runtime checks during recording that may surface
  bugs earlier

Available Tools

Session Lifecycle

Tool Description
rr_record Record a command with rr. Returns trace directory path.
rr_replay_start Start replay session (launches rr gdbserver + GDB/MI).
rr_replay_stop Stop current replay session, clean up.
rr_list_recordings List available rr trace recordings.

Breakpoints

Tool Description
rr_breakpoint_set Set breakpoint at function/file:line/address.
rr_breakpoint_remove Remove a breakpoint.
rr_breakpoint_list List all breakpoints.
rr_watchpoint_set Set hardware watchpoint (write/read/access).

Execution Control

Tool Description
rr_continue Continue forward or backward.
rr_step Step into (forward or reverse).
rr_next Step over (forward or reverse).
rr_finish Run to function return (or call site if reverse).
rr_run_to_event Jump to specific rr event number.

State Inspection

Tool Description
rr_backtrace Get call stack.
rr_evaluate Evaluate C/C++ expression in current context.
rr_locals List local variables with values.
rr_read_memory Read raw memory bytes.
rr_registers Read CPU registers.
rr_source_lines List source code around current position.

Checkpoints

Tool Description
rr_checkpoint_save Save checkpoint at current position.
rr_checkpoint_restore Restore to saved checkpoint.

License

Apache-2.0

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