hermes-agent/skills/devops/kanban-worker/SKILL.md
Teknium 98db898c0b feat(skills): declare platforms frontmatter for all 79 undeclared built-in skills
Completes the Windows-gating coverage for the built-in skills/ tree. Every
bundled SKILL.md now carries an explicit platforms: declaration so the
loader (agent.skill_utils.skill_matches_platform) can skip-load skills
that don't fit the current OS.

74 skills declared cross-platform (platforms: [linux, macos, windows]):
  Creative (16): ascii-art, ascii-video, architecture-diagram, baoyu-comic,
    baoyu-infographic, claude-design, creative-ideation, design-md,
    excalidraw, humanizer, manim-video, p5js, pixel-art,
    popular-web-designs, pretext, sketch, songwriting-and-ai-music,
    touchdesigner-mcp
  Autonomous agents: claude-code, codex, hermes-agent, opencode
  Data/devops: jupyter-live-kernel, kanban-orchestrator, kanban-worker,
    webhook-subscriptions, dogfood, codebase-inspection
  GitHub: github-auth, github-code-review, github-issues,
    github-pr-workflow, github-repo-management
  Media: gif-search, heartmula, songsee, spotify, youtube-content
  MCP / email / gaming / notes / smart-home: native-mcp, himalaya,
    pokemon-player, obsidian, openhue
  mlops (non-broken): weights-and-biases, huggingface-hub, llama-cpp,
    outlines, segment-anything-model, dspy, trl-fine-tuning
  Productivity: airtable, google-workspace, linear, maps, nano-pdf,
    notion, ocr-and-documents, powerpoint
  Red-teaming / research: godmode, arxiv, blogwatcher, llm-wiki,
    polymarket
  Software-dev: debugging-hermes-tui-commands, hermes-agent-skill-authoring,
    node-inspect-debugger, plan, requesting-code-review, spike,
    subagent-driven-development, systematic-debugging,
    test-driven-development, writing-plans
  Misc: yuanbao

5 skills gated from Windows (platforms: [linux, macos]):
  mlops/inference/vllm (serving-llms-vllm)
    vLLM is officially Linux-only; Windows requires WSL.
  mlops/training/axolotl
    Axolotl's flash-attn + deepspeed + bitsandbytes stack is Linux-first.
  mlops/training/unsloth
    Requires Triton + xformers + flash-attn — Linux only in practice.
  mlops/models/audiocraft (audiocraft-audio-generation)
    torchaudio ffmpeg backend + encodec dependencies are Linux-first.
  mlops/inference/obliteratus
    Research abliteration workflow; relies on Linux-focused pytorch
    kernels and MLX — no first-class Windows path.

Same strict-over-lenient policy as the optional-skills sweep: when the
underlying tool's Windows support is rough, missing, or WSL-only, gate the
skill. Easier to un-gate after verified Windows support lands than to leak
partial support that manifests as mid-task failures.

Combined with prior commits in this branch, every bundled SKILL.md
(skills/ + optional-skills/) now has a platforms: declaration.
2026-05-08 14:27:40 -07:00

8.4 KiB

name description version platforms metadata
kanban-worker Pitfalls, examples, and edge cases for Hermes Kanban workers. The lifecycle itself is auto-injected into every worker's system prompt as KANBAN_GUIDANCE (from agent/prompt_builder.py); this skill is what you load when you want deeper detail on specific scenarios. 2.0.0
linux
macos
windows
hermes
tags related_skills
kanban
multi-agent
collaboration
workflow
pitfalls
kanban-orchestrator

Kanban Worker — Pitfalls and Examples

You're seeing this skill because the Hermes Kanban dispatcher spawned you as a worker with --skills kanban-worker — it's loaded automatically for every dispatched worker. The lifecycle (6 steps: orient → work → heartbeat → block/complete) also lives in the KANBAN_GUIDANCE block that's auto-injected into your system prompt. This skill is the deeper detail: good handoff shapes, retry diagnostics, edge cases.

Workspace handling

Your workspace kind determines how you should behave inside $HERMES_KANBAN_WORKSPACE:

Kind What it is How to work
scratch Fresh tmp dir, yours alone Read/write freely; it gets GC'd when the task is archived.
dir:<path> Shared persistent directory Other runs will read what you write. Treat it like long-lived state. Path is guaranteed absolute (the kernel rejects relative paths).
worktree Git worktree at the resolved path If .git doesn't exist, run git worktree add <path> <branch> from the main repo first, then cd and work normally. Commit work here.

Tenant isolation

If $HERMES_TENANT is set, the task belongs to a tenant namespace. When reading or writing persistent memory, prefix memory entries with the tenant so context doesn't leak across tenants:

  • Good: business-a: Acme is our biggest customer
  • Bad (leaks): Acme is our biggest customer

Good summary + metadata shapes

The kanban_complete(summary=..., metadata=...) handoff is how downstream workers read what you did. Patterns that work:

Coding task:

kanban_complete(
    summary="shipped rate limiter — token bucket, keys on user_id with IP fallback, 14 tests pass",
    metadata={
        "changed_files": ["rate_limiter.py", "tests/test_rate_limiter.py"],
        "tests_run": 14,
        "tests_passed": 14,
        "decisions": ["user_id primary, IP fallback for unauthenticated requests"],
    },
)

Research task:

kanban_complete(
    summary="3 competing libraries reviewed; vLLM wins on throughput, SGLang on latency, Tensorrt-LLM on memory efficiency",
    metadata={
        "sources_read": 12,
        "recommendation": "vLLM",
        "benchmarks": {"vllm": 1.0, "sglang": 0.87, "trtllm": 0.72},
    },
)

Review task:

kanban_complete(
    summary="reviewed PR #123; 2 blocking issues found (SQL injection in /search, missing CSRF on /settings)",
    metadata={
        "pr_number": 123,
        "findings": [
            {"severity": "critical", "file": "api/search.py", "line": 42, "issue": "raw SQL concat"},
            {"severity": "high", "file": "api/settings.py", "issue": "missing CSRF middleware"},
        ],
        "approved": False,
    },
)

Shape metadata so downstream parsers (reviewers, aggregators, schedulers) can use it without re-reading your prose.

Claiming cards you actually created

If your run produced new kanban tasks (via kanban_create), pass the ids in created_cards on kanban_complete. The kernel verifies each id exists and was created by your profile; any phantom id blocks the completion with an error listing what went wrong, and the rejected attempt is permanently recorded on the task's event log. Only list ids you captured from a successful kanban_create return value — never invent ids from prose, never paste ids from earlier runs, never claim cards another worker created.

# GOOD — capture return values, then claim them.
c1 = kanban_create(title="remediate SQL injection", assignee="security-worker")
c2 = kanban_create(title="fix CSRF middleware", assignee="web-worker")

kanban_complete(
    summary="Review done; spawned remediations for both findings.",
    metadata={"pr_number": 123, "approved": False},
    created_cards=[c1["task_id"], c2["task_id"]],
)
# BAD — claiming ids you don't have captured return values for.
kanban_complete(
    summary="Created remediation cards t_a1b2c3d4, t_deadbeef",  # hallucinated
    created_cards=["t_a1b2c3d4", "t_deadbeef"],                   # → gate rejects
)

If a kanban_create call fails (exception, tool_error), the card was NOT created — do not include a phantom id for it. Retry the create, or omit the id and mention the failure in your summary. The prose-scan pass also catches t_<hex> references in your free-form summary that don't resolve; these don't block the completion but show up as advisory warnings on the task in the dashboard.

Block reasons that get answered fast

Bad: "stuck" — the human has no context.

Good: one sentence naming the specific decision you need. Leave longer context as a comment instead.

kanban_comment(
    task_id=os.environ["HERMES_KANBAN_TASK"],
    body="Full context: I have user IPs from Cloudflare headers but some users are behind NATs with thousands of peers. Keying on IP alone causes false positives.",
)
kanban_block(reason="Rate limit key choice: IP (simple, NAT-unsafe) or user_id (requires auth, skips anonymous endpoints)?")

The block message is what appears in the dashboard / gateway notifier. The comment is the deeper context a human reads when they open the task.

Heartbeats worth sending

Good heartbeats name progress: "epoch 12/50, loss 0.31", "scanned 1.2M/2.4M rows", "uploaded 47/120 videos".

Bad heartbeats: "still working", empty notes, sub-second intervals. Every few minutes max; skip entirely for tasks under ~2 minutes.

Retry scenarios

If you open the task and kanban_show returns runs: [...] with one or more closed runs, you're a retry. The prior runs' outcome / summary / error tell you what didn't work. Don't repeat that path. Typical retry diagnostics:

  • outcome: "timed_out" — the previous attempt hit max_runtime_seconds. You may need to chunk the work or shorten it.
  • outcome: "crashed" — OOM or segfault. Reduce memory footprint.
  • outcome: "spawn_failed" + error: "..." — usually a profile config issue (missing credential, bad PATH). Ask the human via kanban_block instead of retrying blindly.
  • outcome: "reclaimed" + summary: "task archived..." — operator archived the task out from under the previous run; you probably shouldn't be running at all, check status carefully.
  • outcome: "blocked" — a previous attempt blocked; the unblock comment should be in the thread by now.

Do NOT

  • Call delegate_task as a substitute for kanban_create. delegate_task is for short reasoning subtasks inside YOUR run; kanban_create is for cross-agent handoffs that outlive one API loop.
  • Modify files outside $HERMES_KANBAN_WORKSPACE unless the task body says to.
  • Create follow-up tasks assigned to yourself — assign to the right specialist.
  • Complete a task you didn't actually finish. Block it instead.

Pitfalls

Task state can change between dispatch and your startup. Between when the dispatcher claimed and when your process actually booted, the task may have been blocked, reassigned, or archived. Always kanban_show first. If it reports blocked or archived, stop — you shouldn't be running.

Workspace may have stale artifacts. Especially dir: and worktree workspaces can have files from previous runs. Read the comment thread — it usually explains why you're running again and what state the workspace is in.

Don't rely on the CLI when the guidance is available. The kanban_* tools work across all terminal backends (Docker, Modal, SSH). hermes kanban <verb> from your terminal tool will fail in containerized backends because the CLI isn't installed there. When in doubt, use the tool.

CLI fallback (for scripting)

Every tool has a CLI equivalent for human operators and scripts:

  • kanban_showhermes kanban show <id> --json
  • kanban_completehermes kanban complete <id> --summary "..." --metadata '{...}'
  • kanban_blockhermes kanban block <id> "reason"
  • kanban_createhermes kanban create "title" --assignee <profile> [--parent <id>]
  • etc.

Use the tools from inside an agent; the CLI exists for the human at the terminal.