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cost-booster-edit

Apply a simple code transform via agent-booster's WASM engine — sub-millisecond, deterministic, $0 (no LLM call). Companion to cost-booster-route.

Stars
56,726
Source
ruvnet/claude-flow
Updated
2026-05-31
Slug
ruvnet--claude-flow--cost-booster-edit
View on GitHubRaw SKILL.md

// install — copy + paste into any project

mkdir -p .claude/skills && curl -fsSL https://raw.githubusercontent.com/ruvnet/claude-flow/HEAD/plugins/ruflo-cost-tracker/skills/cost-booster-edit/SKILL.md -o .claude/skills/cost-booster-edit.md

Drops the SKILL.md into .claude/skills/cost-booster-edit.md. Works with Claude Code, Cursor, and any agent that loads SKILL.md files from .claude/skills/.

Cost Booster Edit

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.

When to use

  • Bulk transforms across many files (var → const, add-types, remove-console, add-error-handling, async-await, add-logging).
  • Any simple, structural edit where an LLM would otherwise be called and billed.
  • Inside CI pipelines where determinism + zero-cost matter more than naturalness.

Do NOT use when the transform requires reasoning about intent, naming, or cross-file context — those are Tier 2/3 jobs.

Steps

  1. Take inputsintent (one of the 6 booster intents) and file path.

  2. Read the source to a variable, derive the intended edit text from the intent (caller supplies).

  3. 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"
    
  4. Check confidence — default threshold is 0.5. Below that, fail closed: do NOT write the file; report and escalate to Tier 2/3.

  5. Write back the output field if success && confidence >= 0.5.

  6. Persist outcomememory_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).

Measured benchmark (2026-05-04, this checkout)

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.

What's verified locally

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).

Cross-references

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).