--- sidebar_position: 16 title: "Persistent Goals (`/goal`)" description: "Set a standing goal and let Hermes keep working across turns until it's done. Our take on the Ralph loop." --- # Persistent Goals (`/goal`) `/goal` gives Hermes a standing objective that survives across turns. After every turn a lightweight judge model checks whether the goal is satisfied by the assistant's last response. If not, Hermes automatically feeds a continuation prompt back into the same session and keeps working — until the goal is achieved, you pause or clear it, or the turn budget runs out. It's our take on the **Ralph loop**, directly inspired by [Codex CLI 0.128.0's `/goal`](https://github.com/openai/codex) by Eric Traut (OpenAI). The core idea — keep a goal alive across turns and don't stop until it's achieved — is theirs. The implementation here is independent and adapted to Hermes' architecture. ## When to use it Use `/goal` for tasks where you want Hermes to iterate on its own without you re-prompting every turn: - "Fix every lint error in `src/` and verify `ruff check` passes" - "Port feature X from repo Y, including tests, and get CI green" - "Investigate why session IDs sometimes drift on mid-run compression and write up a report" - "Build a small CLI to rename files by their EXIF dates, then test it against the photos/ folder" Tasks where the agent does one turn and stops don't need `/goal`. Tasks where *you'd otherwise have to say "keep going" three times* are where this shines. ## Quick start ``` /goal Fix every failing test in tests/hermes_cli/ and make sure scripts/run_tests.sh passes for that directory ``` What you'll see: 1. **Goal accepted** — `⊙ Goal set (20-turn budget): ` 2. **Turn 1 runs** — Hermes starts working as if you'd sent the goal as a normal message. 3. **Judge runs** — after the turn, the judge model decides `done` or `continue`. 4. **Loop fires if needed** — if `continue`, you'll see `↻ Continuing toward goal (1/20): ` and Hermes takes the next step automatically. 5. **Terminates** — eventually you see either `✓ Goal achieved: ` or `⏸ Goal paused — N/20 turns used`. ## Commands | Command | What it does | |---|---| | `/goal ` | Set (or replace) the standing goal. Kicks off the first turn immediately so you don't need to send a separate message. | | `/goal` or `/goal status` | Show the current goal, its status, and turns used. | | `/goal pause` | Stop the auto-continuation loop without clearing the goal. | | `/goal resume` | Resume the loop (resets the turn counter back to zero). | | `/goal clear` | Drop the goal entirely. | Works identically on the CLI and every gateway platform (Telegram, Discord, Slack, Matrix, Signal, WhatsApp, SMS, iMessage, Webhook, API server, and the web dashboard). ## Behavior details ### The judge After every turn, Hermes calls an auxiliary model with: - The standing goal text - The agent's most recent final response (last ~4 KB of text) - A system prompt telling the judge to reply with strict JSON: `{"done": , "reason": ""}` The judge is deliberately conservative: it marks a goal `done` only when the response **explicitly** confirms the goal is complete, when the final deliverable is clearly produced, or when the goal is unachievable/blocked (treated as DONE with a block reason so we don't burn budget on impossible tasks). ### Fail-open semantics If the judge errors (network blip, malformed response, unavailable aux client), Hermes treats the verdict as `continue` — a broken judge never wedges progress. The **turn budget** is the real backstop. ### Turn budget Default is 20 continuation turns (`goals.max_turns` in `config.yaml`). When the budget is hit, Hermes auto-pauses and tells you exactly how to proceed: ``` ⏸ Goal paused — 20/20 turns used. Use /goal resume to keep going, or /goal clear to stop. ``` `/goal resume` resets the counter to zero, so you can keep going in measured chunks. ### User messages always preempt Any real message you send while a goal is active takes priority over the continuation loop. On the CLI your message lands in `_pending_input` ahead of the queued continuation; on the gateway it goes through the adapter FIFO the same way. The judge runs again after your turn — so if your message happens to complete the goal, the judge will catch it and stop. ### Mid-run safety (gateway) While an agent is already running, `/goal status`, `/goal pause`, and `/goal clear` are safe to run — they only touch control-plane state and don't interrupt the current turn. Setting a **new** goal mid-run (`/goal `) is rejected with a message telling you to `/stop` first, so the old continuation can't race the new one. ### Persistence Goal state lives in `SessionDB.state_meta` keyed by `goal:`. That means `/resume` picks up right where you left off — set a goal, close your laptop, come back tomorrow, `/resume`, and the goal is still standing exactly as you left it (active, paused, or done). ### Prompt cache The continuation prompt is a plain user-role message appended to history. It does **not** mutate the system prompt, swap toolsets, or touch the conversation in any way that invalidates Hermes' prompt cache. Running a 20-turn goal costs the same cache-wise as 20 turns of normal conversation. ## Configuration Add to `~/.hermes/config.yaml`: ```yaml goals: # Max continuation turns before Hermes auto-pauses and asks you to # /goal resume. Default 20. Lower this if you want tighter loops; # raise it for long-running refactors. max_turns: 20 ``` ### Choosing the judge model The judge uses the `goal_judge` auxiliary task. By default it resolves to your main model (see [Auxiliary Models](/docs/user-guide/configuration#auxiliary-models)). If you want to route the judge to a cheap fast model to keep costs down, add an override: ```yaml auxiliary: goal_judge: provider: openrouter model: google/gemini-3-flash-preview ``` The judge call is small (~200 output tokens) and runs once per turn, so a cheap fast model is usually the right call. ## Example walkthrough ``` You: /goal Create four files /tmp/note_{1..4}.txt, one per turn, each containing its number as text ⊙ Goal set (20-turn budget): Create four files /tmp/note_{1..4}.txt, one per turn, each containing its number as text Hermes: Creating /tmp/note_1.txt now. 💻 echo "1" > /tmp/note_1.txt (0.1s) I've created /tmp/note_1.txt with the content "1". I'll continue with the remaining files on the next turn as you specified. ↻ Continuing toward goal (1/20): Only 1 of 4 files has been created; 3 files remain. Hermes: [Continuing toward your standing goal] 💻 echo "2" > /tmp/note_2.txt (0.1s) Created /tmp/note_2.txt. Two more to go. ↻ Continuing toward goal (2/20): 2 of 4 files created; 2 remain. Hermes: [Continuing toward your standing goal] 💻 echo "3" > /tmp/note_3.txt (0.1s) Created /tmp/note_3.txt. ↻ Continuing toward goal (3/20): 3 of 4 files created; 1 remains. Hermes: [Continuing toward your standing goal] 💻 echo "4" > /tmp/note_4.txt (0.1s) All four files have been created: /tmp/note_1.txt through /tmp/note_4.txt, each containing its number. ✓ Goal achieved: All four files were created with the specified content, completing the goal. You: _ ``` Four turns, one `/goal` invocation, zero "keep going" prompts from you. ## When the judge gets it wrong No judge is perfect. Two failure modes to watch for: **False negative — judge says continue when the goal is actually done.** The turn budget catches this. You'll see `⏸ Goal paused` and can `/goal clear` or just send a new message. **False positive — judge says done when work remains.** You'll see `✓ Goal achieved` but you know better. Send a follow-up message to continue, or re-set the goal more precisely: `/goal `. The judge's system prompt is deliberately conservative to make false positives rarer than false negatives. If you find a judge verdict unconvincing, the reason text in the `↻ Continuing toward goal` or `✓ Goal achieved` line tells you exactly what the judge saw. That's usually enough to diagnose whether the goal text was ambiguous or the model's response was. ## Attribution `/goal` is Hermes' take on the **Ralph loop** pattern. The user-facing design — keep a goal alive across turns, don't stop until it's achieved, with create/pause/resume/clear controls — was popularised and shipped in [Codex CLI 0.128.0](https://github.com/openai/codex) by Eric Traut on OpenAI's Codex team. Our implementation is independent (central `CommandDef` registry, `SessionDB.state_meta` persistence, auxiliary-client judge, adapter-FIFO continuation on the gateway side) but the idea is theirs. Credit where credit's due.