Install
openclaw skills install @zzrhh/autoskill-cb-brand-naming-trademark-guideGenerate brand names that work across languages and pass trademark checks — not just creative ideas, but names with preliminary availability screening, cultural safety checks, and domain availability. Name your next product or brand in under 10 minutes.
openclaw skills install @zzrhh/autoskill-cb-brand-naming-trademark-guidePurpose: Transform a single user request into a fully materialized deliverable that exhaustively enumerates every analytical node, sub‑node, and output artifact required to present 12 English brand name candidates together with meaning, pronunciation risk, internationalization risk, preliminary trademark risk assessment, and a ranked recommendation of the top 3 names. The framework is deliberately deep: before any final naming table appears, the model must construct (1) a complete inventory of all logical components, (2) a full hierarchy of child tasks for each component, and (3) populate every leaf node with concrete data (real or placeholder) before synthesis.
REQ_ROOT.| Node ID | Description | Required Child Nodes |
|---|---|---|
| INV_ROOT | Master inventory for the entire deliverable | INV_NAMING_OBJECTIVE, INV_CONSTRAINTS, INV_LINGUISTIC_SCREEN, INV_CULTURAL_RISK, INV_TRADEMARK_PRELIM, INV_OUTPUT_MATRIX |
| INV_NAMING_OBJECTIVE | Definition of naming goal and positioning | OBJ_POSITIONING, OBJ_UNIQUENESS, OBJ_SCALABILITY |
| INV_CONSTRAINTS | All hard/soft constraints (legal, phonetic, length, domain) | CONSTR_LEGAL, CONSTR_PHONETIC, CONSTR_LENGTH, CONSTR_DOMAIN |
| INV_LINGUISTIC_SCREEN | Phonetic & semantic analysis per candidate | LS_PRONUNCIATION, LS_SEMANTICS, LS_HOMOPHONE |
| INV_CULTURAL_RISK | Cross‑language negative meaning audit | CR_LANG_EN, CR_LANG_ES, CR_LANG_ZH, CR_LANG_JA, CR_LANG_KO |
| INV_TRADEMARK_PRELIM | Preliminary trademark conflict flags per jurisdiction | TM_US, TM_EU, TM_CN, TM_OTHER |
| INV_OUTPUT_MATRIX | Final tabular presentation and ranking logic | OUT_TABLE, OUT_RANKING, OUT_RECOMMENDATIONS |
Rule 0 – Mandatory Completion of Inventory: The model must emit the full inventory table (as above) before any candidate name appears. No synthesis may begin until every listed child node is instantiated.
For each inventory node, the model must:
Assumed: “no known trademark conflict”).Example Expansion (truncated for illustration):
INV_NAMING_OBJECTIVE → expands into OBJ_POSITIONING (“professional, developer‑centric”) and OBJ_UNIQUENESS (“distinct from existing AI platform names”). Both further expand into a checklist of criteria (minimum two items each).All expansions must be written out in full sentences; bullet lists are allowed but must contain at least three items per list to avoid compression.
Name | Meaning | Pronunciation Risk | Internationalization Risk | Trademark Risk (US/EU/CN) | Composite Score.✓ Completed.This initialization guarantees that any downstream execution will obligatorily decompose the task into at least two hierarchical layers, fully populate all required data points, and produce a maximal‑token artifact covering the entire naming evaluation workflow.
This skill provides a structured naming evaluation framework, not a legal trademark search or clearance opinion. Trademark conflicts, domain disputes, and naming-related legal risks require review by qualified trademark counsel in each target jurisdiction before adopting or launching a name commercially. A name that passes this framework's screening is not automatically cleared for legal use; professional trademark search and registration are required before commercial launch.
If the user asks for "available" names, return availability unknown until checked
unless they provide a dated source such as USPTO, EUIPO, WIPO, KIPRIS, domain
registrar, or marketplace/handle search output. Never present invented trademark
or domain results as live facts.