VladimirBrejcha

app-store-optimisation-codex

App Store Optimization (ASO) workflows for Apple App Store and Google Play Store. Use when Codex is asked to research keywords, optimize app metadata (titles, subtitles, descriptions, keywords), analyze competitors, plan A/B tests, compute ASO scores, analyze reviews, plan localization, or build launch/update checklists for mobile apps.

VladimirBrejcha 16 Updated 4mo ago

Resources

2
GitHub

Install

npx skillscat add vladimirbrejcha/ios-ai-skills/app-store-optimisation-codex

Install via the SkillsCat registry.

SKILL.md

App Store Optimisation (Codex)

Overview

Provide end-to-end ASO support for App Store and Play Store listings, from research to execution. Use bundled Python modules for structured analysis and planning, and use browsing or user-provided inputs for live data.

Quick Start

  1. Identify the task: keyword research, metadata optimization, competitor analysis, review analysis, ASO scoring, A/B testing, localization, or launch planning.
  2. Request required inputs (platforms, markets, current metadata, target keywords, metrics).
  3. Use the matching script from scripts/ to generate analysis or plans.
  4. Validate character limits and platform rules, then deliver actionable recommendations.

Core Tasks

Keyword research

Use scripts/keyword_analyzer.py.

Request:

  • Candidate keywords
  • Estimated search volume and competition (user-provided or inferred)
  • Relevance score per keyword

Deliver:

  • Ranked keywords (primary, secondary, long-tail)
  • Difficulty and potential scores

Metadata optimisation

Use scripts/metadata_optimizer.py.

Request:

  • Current metadata (title, subtitle, descriptions)
  • Target keywords and value proposition
  • Platform(s) and markets

Deliver:

  • Optimized titles and descriptions with character counts
  • Keyword density guidance

Default character limits (verify current limits before final output):

  • Apple App Store: title 30, subtitle 30, promo text 170, description 4000, keywords 100
  • Google Play: title 50, short description 80, full description 4000

Competitor analysis

Use scripts/competitor_analyzer.py.

Request:

  • Competitor names or IDs
  • Platform and market

Optional data collection:

  • Use scripts/itunes_api.py for Apple metadata
  • Use browsing with prompt templates from scripts/scraper.py

Deliver:

  • Keyword overlap, metadata patterns, visual asset notes, and gaps

Review analysis

Use scripts/review_analyzer.py.

Request:

  • Review text, ratings, and date range

Deliver:

  • Sentiment split, top issues, feature requests, response templates

ASO scoring

Use scripts/aso_scorer.py.

Request:

  • Metadata quality inputs, ratings data, keyword ranking counts, conversion metrics

Deliver:

  • Overall score with category breakdown and prioritized recommendations

A/B testing

Use scripts/ab_test_planner.py.

Request:

  • Baseline conversion rate and traffic
  • Variants and test goal

Deliver:

  • Sample size, duration guidance, and success metrics

Localization planning

Use scripts/localization_helper.py.

Request:

  • Current markets and target locales
  • Budget and priority markets

Deliver:

  • Localization priority order and draft localized metadata

Launch and update checklists

Use scripts/launch_checklist.py.

Request:

  • Platform(s), launch date, category, and key features

Deliver:

  • Pre-launch checklist and post-launch monitoring plan

Data Sources

See references/data_sources.md for API and browsing guidance.

Resources

scripts/

  • keyword_analyzer.py
  • metadata_optimizer.py
  • competitor_analyzer.py
  • review_analyzer.py
  • aso_scorer.py
  • ab_test_planner.py
  • localization_helper.py
  • launch_checklist.py
  • itunes_api.py
  • scraper.py

references/

  • data_sources.md
  • sample_input.json
  • expected_output.json