From ruflo-cost-tracker
Apply a simple code transform via agent-booster's WASM engine — sub-millisecond, deterministic, $0 (no LLM call). Companion to cost-booster-route.
How this skill is triggered — by the user, by Claude, or both
Slash command
/ruflo-cost-tracker:cost-booster-edit <intent> <file><intent> <file>This skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Direct wrapper around `agent-booster.apply()` (npm `agent-booster` v0.2.x, exposed via `agentic-flow/agent-booster`). Use when a transform is **already classified** as Tier 1 eligible — `cost-booster-route` recommends *whether*; this skill *executes*.
Direct wrapper around agent-booster.apply() (npm agent-booster v0.2.x, exposed via agentic-flow/agent-booster). Use when a transform is already classified as Tier 1 eligible — cost-booster-route recommends whether; this skill executes.
var → const, add-types, remove-console, add-error-handling, async-await, add-logging).Do NOT use when the transform requires reasoning about intent, naming, or cross-file context — those are Tier 2/3 jobs.
Take inputs — intent (one of the 6 booster intents) and file path.
Read the source to a variable, derive the intended edit text from the intent (caller supplies).
Invoke — run from anywhere under v3/ so agent-booster resolves:
node --input-type=module -e '
import("agent-booster")
.then(async ({ AgentBooster }) => {
const booster = new AgentBooster();
const r = await booster.apply({
code: process.argv[1],
edit: process.argv[2],
language: process.argv[3] || "javascript",
});
console.log(JSON.stringify({
success: r.success, output: r.output, latency: r.latency,
confidence: r.confidence, strategy: r.strategy,
tokens: r.tokens,
}));
})
.catch(e => console.log(JSON.stringify({ success: false, error: String(e.message) })));
' -- "$CODE" "$EDIT" "$LANG"
Check confidence — default threshold is 0.5. Below that, fail closed: do NOT write the file; report and escalate to Tier 2/3.
Write back the output field if success && confidence >= 0.5.
Persist outcome — memory_store --namespace cost-tracking --key "booster-edit-..." --value '{"intent":..., "latency":..., "confidence":..., "strategy":..., "applied":true}'. Feed the routing learner via hooks_model-outcome (use the cost-optimize skill's step 8).
5 representative intents run through AgentBooster.apply():
| intent | latency (ms) | wall (ms) | confidence | strategy | success |
|---|---|---|---|---|---|
| var-to-const | 5 | 5 | 0.65 | fuzzy_replace | true |
| add-types | 1 | 1 | 0.64 | fuzzy_replace | true |
| remove-console | 0 | 0 | 0.70 | fuzzy_replace | true |
| add-error-handling | 0 | 0 | 0.85 | exact_replace | true |
| async-await | 0 | 0 | 0.85 | exact_replace | true |
Avg measured latency ≈ 1.2 ms. All 5 above the default 0.5 confidence threshold. See docs/benchmarks/0002-baseline.md for the LLM-baseline comparison.
| Claim | Status here |
|---|---|
| 100% win rate | Verified — 12/12 on bench/booster-corpus.json (see runs/latest.json). Booster AND Gemini 2.0 Flash both score 12/12 — this is a structural-correctness corpus, not a hard adversarial one. |
| Sub-millisecond latency | Verified — avg 0.67 ms, p50 0 ms, p99 6 ms, max 6 ms. |
| $0 per edit | Verified structurally — no API call, no token billing. |
| Deterministic AST-based merge | Verified — same inputs reproduce the same output and strategy. |
| Confidence ≥ 0.5 ⇒ correct | Verified on this corpus — 12/12 above 0.5 (min 0.551), all correct. |
350× speedup vs. LLM | Verified — exceeded against every tier: 1000.9× vs Gemini 2.0 Flash, 1838.7× vs Claude Sonnet 4.6, 2634.1× vs Claude Opus 4.7. Run BENCH_LLM_BASELINE=1 BENCH_ANTHROPIC=1 node scripts/bench.mjs to refresh. |
| Cost saved per edit | Measured: $0.000020 vs Gemini, $0.000722 vs Sonnet 4.6, $0.004720 vs Opus 4.7 (the booster side is $0 in all cases). |
| Win parity with frontier LLMs | Verified — Booster, Gemini 2.0 Flash, Sonnet 4.6, Opus 4.7 all scored 12/12 on this corpus. Booster matches LLM accuracy structurally for deterministic transforms. |
To extend: add cases to bench/booster-corpus.json, run ( cd v3 && node ../plugins/ruflo-cost-tracker/scripts/bench.mjs ) (or with BENCH_LLM_BASELINE=1), commit runs/latest.json. Smoke step 23 fails the build if win rate drops below 0.80.
Override the LLM model: BENCH_LLM_MODEL='claude-sonnet-4' (when wired against api.anthropic.com) or BENCH_LLM_MODEL='models/gemini-2.5-flash' for a reasoning-model comparison. Pricing flags: BENCH_LLM_PRICE_IN, BENCH_LLM_PRICE_OUT.
fuzzy_replace is best-effort; for production transforms prefer cases that route to exact_replace (≥0.85 confidence in our sample).
ADR-0002 §"Decision 1" (route classifier) and §"Riskiest assumption" (Bash-shelled invocation) · cost-booster-route (classifier-side companion) · agent-booster npm README (3-mode install, MCP / npm / HTTP).
Builds accessible UIs with shadcn/ui components on Radix UI + Tailwind CSS, plus canvas visuals. For React apps (Next.js, Vite, Remix, Astro), design systems, responsive layouts, themes, dark mode, prototypes.
2plugins reuse this skill
First indexed Jun 15, 2026
npx claudepluginhub adnan-bawani/ruflo.chat --plugin ruflo-cost-tracker