Decode Minified Js Gates
Skill Verifiziert AktivClassify gate call variants in a minified JavaScript bundle. Covers context-window extraction around a flag occurrence, identification of 4–6 reader variants (sync boolean, sync config-object, bootstrap-aware TTL, truthy-only, async bootstrap, async bridge), default-value extraction (boolean / null / numeric / config-object literal), conjunction detection across `&&` predicates, kill-switch inversion detection, and production of a gate-mechanics record that feeds probe- feature-flag-state. Use when a flag's behavior cannot be inferred from its name alone, when the binary uses multiple reader libraries, or when config-object gates carry structured schemas distinct from boolean gates.
To classify unknown feature flag behaviors in minified JavaScript by analyzing their code-level mechanics, enabling precise state probing and understanding.
Funktionen
- Extract context window around flag occurrences
- Identify 4–6 reader variants (sync boolean, config-object, TTL, truthy-only, async)
- Extract default values (boolean, null, numeric, config-object)
- Detect conjunctions (`&&`) and kill-switch inversions (`!`)
- Produce a structured gate-mechanics record for downstream analysis
Anwendungsfälle
- When a flag's behavior cannot be inferred from its name alone.
- When a binary uses multiple gate-reader libraries.
- When config-object gates carry structured schemas distinct from boolean gates.
- When suspecting a kill-switch but cannot confirm from the flag name.
Nicht-Ziele
- Executing the JavaScript code directly.
- Determining the runtime state of a flag (use `probe-feature-flag-state` for that).
- Handling non-minified JavaScript bundles.
Installation
/plugin install agent-almanac@pjt222-agent-almanacQualitätspunktzahl
VerifiziertVertrauenssignale
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