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ilmych

gstack Diagnose

by ilmych · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install gstack-openclaw-diagnose
Description
Structured diagnosis for hard bugs and performance regressions. Builds a deterministic feedback loop FIRST, then reproduces, hypothesises (3-5 ranked), instr...
README (SKILL.md)

Diagnose

A discipline for hard bugs. Skip phases only when explicitly justified.

Core insight: If you have a fast, deterministic, agent-runnable pass/fail signal for the bug, you will find the cause. Everything else is mechanical. If you don't have one, no amount of staring at code will save you.

Phase 1 — Build a feedback loop

This is the skill. Spend disproportionate effort here.

Construction strategies — try roughly in this order

  1. Failing test at whatever seam reaches the bug — unit, integration, e2e.
  2. Curl / HTTP script against a running dev server.
  3. CLI invocation with a fixture input, diffing stdout against a known-good snapshot.
  4. Headless browser script (Playwright / Puppeteer) — drives the UI, asserts on DOM/console/network.
  5. Replay a captured trace. Save a real request/payload/event log to disk; replay through the code path in isolation.
  6. Throwaway harness. Spin up a minimal subset of the system (one service, mocked deps) exercising the bug path with a single function call.
  7. Property / fuzz loop. "Sometimes wrong output" → run 1000 random inputs and look for the failure mode.
  8. Bisection harness. Bug appeared between two known states → automate "boot at state X, check, repeat" so you can git bisect run it.
  9. Differential loop. Same input through old-version vs new-version (or two configs), diff outputs.
  10. HITL script. Last resort. If a human must click, drive them with a structured bash script so the loop is still reproducible. Captured output feeds back to you.

Iterate on the loop itself

Treat the loop as a product:

  • Faster? Cache setup, skip unrelated init, narrow scope.
  • Sharper signal? Assert on the specific symptom, not "didn't crash."
  • More deterministic? Pin time, seed RNG, isolate filesystem, freeze network.

A 30-second flaky loop is barely better than no loop. A 2-second deterministic loop is a debugging superpower.

Non-deterministic bugs

Goal: raise reproduction rate. Loop 100x, parallelise, add stress, narrow timing windows, inject sleeps. A 50%-flake is debuggable; 1% is not.

When you genuinely cannot build a loop

Stop and say so. List what you tried. Ask the user for: (a) access to the reproducing environment, (b) a captured artifact (HAR file, log dump, core dump, screen recording), or (c) permission to add temporary production instrumentation. Do NOT proceed to hypothesise without a loop.

Phase 2 — Reproduce

Run the loop. Watch the bug appear. Confirm:

  • The failure matches what the user described — not a nearby different failure.
  • Reproducible across multiple runs (or high enough rate for non-deterministic bugs).
  • Exact symptom captured (error message, wrong output, timing) for later verification.

Phase 3 — Hypothesise

Generate 3-5 ranked hypotheses before testing any. Single-hypothesis generation anchors on the first plausible idea.

Each hypothesis must be falsifiable:

"If \x3CX> is the cause, then \x3Cchanging Y> will make it disappear / \x3Cchanging Z> will make it worse."

If you can't state the prediction, the hypothesis is a vibe — discard or sharpen it.

Show the ranked list to the user before testing. They often re-rank instantly with domain knowledge. Don't block — proceed with your ranking if AFK.

Phase 4 — Instrument

Each probe maps to a specific prediction from Phase 3. One variable at a time.

Tool preference:

  1. Debugger / REPL if available. One breakpoint beats ten logs.
  2. Targeted logs at boundaries that distinguish hypotheses.
  3. Never "log everything and grep."

Tag every debug log with a unique prefix: [DEBUG-a4f2]. Cleanup = single grep. Untagged logs survive; tagged logs die.

Performance bugs: logs are usually wrong. Establish a baseline measurement (timing harness, profiler, query plan), then bisect. Measure first, fix second.

Phase 5 — Fix + regression test

Write the regression test before the fix — but only if there's a correct seam.

A correct seam exercises the real bug pattern as it occurs at the call site. If the only seam is too shallow, a regression test there gives false confidence.

If no correct seam exists, that itself is the finding — note it.

  1. Turn the minimised repro into a failing test at the seam.
  2. Watch it fail.
  3. Apply the fix.
  4. Watch it pass.
  5. Re-run the Phase 1 loop against the original scenario.

Phase 6 — Cleanup + post-mortem

Before declaring done:

  • Original repro no longer reproduces (re-run Phase 1 loop)
  • Regression test passes (or absence of seam is documented)
  • All [DEBUG-...] instrumentation removed (grep the prefix)
  • Throwaway harnesses deleted
  • Root cause stated in the commit/PR message

Then ask: what would have prevented this bug? If the answer involves architectural change, note it for the user — don't bundle it into this fix.

Completion Status

  • DONE — root cause found, fix applied, regression test written, all tests pass
  • DONE_WITH_CONCERNS — fixed but cannot fully verify (intermittent, needs staging)
  • BLOCKED — root cause unclear after investigation, escalated
Usage Guidance
This skill appears safe to install if you want a disciplined debugging workflow. It may prompt your agent to create tests, run commands, add temporary instrumentation, or build throwaway harnesses while diagnosing a bug, so review proposed changes and make sure any production instrumentation or environment access is explicitly approved.
Capability Assessment
Purpose & Capability
The stated purpose is structured diagnosis for hard bugs and performance regressions, and the artifact content consistently provides a debugging workflow: build a deterministic feedback loop, reproduce, hypothesize, instrument, fix, test, and clean up.
Instruction Scope
The instructions are scoped to user-directed debugging work. They may involve tests, CLI runs, browser scripts, temporary harnesses, and instrumentation, but these are coherent with diagnosis and include cleanup and permission language for production instrumentation.
Install Mechanism
The package contains only SKILL.md as markdown; metadata reports no executable scripts, no declared dependencies, and clean dependency/static scans.
Credentials
The skill can lead an agent to inspect and modify a user's project during debugging, but that authority is expected for the purpose and is bounded by reproduction, verification, and cleanup steps.
Persistence & Privilege
No artifact evidence shows background workers, persistence, credential access, privilege escalation, exfiltration, or automatic execution outside the user's debugging task.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install gstack-openclaw-diagnose
  3. After installation, invoke the skill by name or use /gstack-openclaw-diagnose
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release: structured diagnosis for hard bugs with 10-strategy feedback loop taxonomy, 6-phase methodology (loop → reproduce → hypothesise → instrument → fix → cleanup)
Metadata
Slug gstack-openclaw-diagnose
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is gstack Diagnose?

Structured diagnosis for hard bugs and performance regressions. Builds a deterministic feedback loop FIRST, then reproduces, hypothesises (3-5 ranked), instr... It is an AI Agent Skill for Claude Code / OpenClaw, with 46 downloads so far.

How do I install gstack Diagnose?

Run "/install gstack-openclaw-diagnose" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is gstack Diagnose free?

Yes, gstack Diagnose is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does gstack Diagnose support?

gstack Diagnose is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created gstack Diagnose?

It is built and maintained by ilmych (@ilmych); the current version is v1.0.0.

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