| --- |
| summary: "How OpenClaw builds prompt context and reports token usage + costs" |
| read_when: |
| - Explaining token usage, costs, or context windows |
| - Debugging context growth or compaction behavior |
| --- |
| |
| # Token use & costs |
|
|
| OpenClaw tracks **tokens**, not characters. Tokens are model-specific, but most |
| OpenAI-style models average ~4 characters per token for English text. |
|
|
| ## How the system prompt is built |
|
|
| OpenClaw assembles its own system prompt on every run. It includes: |
|
|
| - Tool list + short descriptions |
| - Skills list (only metadata; instructions are loaded on demand with `read`) |
| - Self-update instructions |
| - Workspace + bootstrap files (`AGENTS.md`, `SOUL.md`, `TOOLS.md`, `IDENTITY.md`, `USER.md`, `HEARTBEAT.md`, `BOOTSTRAP.md` when new). Large files are truncated by `agents.defaults.bootstrapMaxChars` (default: 20000). |
| - Time (UTC + user timezone) |
| - Reply tags + heartbeat behavior |
| - Runtime metadata (host/OS/model/thinking) |
|
|
| See the full breakdown in [System Prompt](/concepts/system-prompt). |
|
|
| ## What counts in the context window |
|
|
| Everything the model receives counts toward the context limit: |
|
|
| - System prompt (all sections listed above) |
| - Conversation history (user + assistant messages) |
| - Tool calls and tool results |
| - Attachments/transcripts (images, audio, files) |
| - Compaction summaries and pruning artifacts |
| - Provider wrappers or safety headers (not visible, but still counted) |
|
|
| For a practical breakdown (per injected file, tools, skills, and system prompt size), use `/context list` or `/context detail`. See [Context](/concepts/context). |
|
|
| ## How to see current token usage |
|
|
| Use these in chat: |
|
|
| - `/status` → **emoji‑rich status card** with the session model, context usage, |
| last response input/output tokens, and **estimated cost** (API key only). |
| - `/usage off|tokens|full` → appends a **per-response usage footer** to every reply. |
| - Persists per session (stored as `responseUsage`). |
| - OAuth auth **hides cost** (tokens only). |
| - `/usage cost` → shows a local cost summary from OpenClaw session logs. |
|
|
| Other surfaces: |
|
|
| - **TUI/Web TUI:** `/status` + `/usage` are supported. |
| - **CLI:** `openclaw status --usage` and `openclaw channels list` show |
| provider quota windows (not per-response costs). |
|
|
| ## Cost estimation (when shown) |
|
|
| Costs are estimated from your model pricing config: |
|
|
| ``` |
| models.providers.<provider>.models[].cost |
| ``` |
|
|
| These are **USD per 1M tokens** for `input`, `output`, `cacheRead`, and |
| `cacheWrite`. If pricing is missing, OpenClaw shows tokens only. OAuth tokens |
| never show dollar cost. |
|
|
| ## Cache TTL and pruning impact |
|
|
| Provider prompt caching only applies within the cache TTL window. OpenClaw can |
| optionally run **cache-ttl pruning**: it prunes the session once the cache TTL |
| has expired, then resets the cache window so subsequent requests can re-use the |
| freshly cached context instead of re-caching the full history. This keeps cache |
| write costs lower when a session goes idle past the TTL. |
|
|
| Configure it in [Gateway configuration](/gateway/configuration) and see the |
| behavior details in [Session pruning](/concepts/session-pruning). |
|
|
| Heartbeat can keep the cache **warm** across idle gaps. If your model cache TTL |
| is `1h`, setting the heartbeat interval just under that (e.g., `55m`) can avoid |
| re-caching the full prompt, reducing cache write costs. |
|
|
| For Anthropic API pricing, cache reads are significantly cheaper than input |
| tokens, while cache writes are billed at a higher multiplier. See Anthropic’s |
| prompt caching pricing for the latest rates and TTL multipliers: |
| https://docs.anthropic.com/docs/build-with-claude/prompt-caching |
|
|
| ### Example: keep 1h cache warm with heartbeat |
|
|
| ```yaml |
| agents: |
| defaults: |
| model: |
| primary: "anthropic/claude-opus-4-5" |
| models: |
| "anthropic/claude-opus-4-5": |
| params: |
| cacheControlTtl: "1h" |
| heartbeat: |
| every: "55m" |
| ``` |
|
|
| ## Tips for reducing token pressure |
|
|
| - Use `/compact` to summarize long sessions. |
| - Trim large tool outputs in your workflows. |
| - Keep skill descriptions short (skill list is injected into the prompt). |
| - Prefer smaller models for verbose, exploratory work. |
|
|
| See [Skills](/tools/skills) for the exact skill list overhead formula. |
|
|