app-store-aso
Apple App Store ASO Optimization
Overview
This skill enables comprehensive Apple App Store Optimization (ASO) analysis and metadata generation. Analyze existing app listings, generate optimized metadata following Apple's guidelines and character limits, provide competitive insights, and recommend screenshot storyboard strategies.
Core Workflow
When a user requests ASO optimization or metadata review:
-
Analyze the App Context
- Understand the app's purpose, features, and target audience
- Identify unique value propositions and competitive differentiators
- Note any changes or updates the user mentions
-
Load ASO Knowledge Base
- Reference
references/aso_learnings.mdfor comprehensive ASO best practices - Apply competitive analysis strategies
- Use proven optimization patterns
- Reference
More from timbroddin/skills
youtube-research
Deep LLM-driven research over one or more YouTube channels' videos. Lists each channel's catalog, filters videos by topic relevance, transcribes only the relevant ones, then synthesizes a single cross-channel research document with timestamped citations. Use when the user runs /youtube-research or asks to research, summarize, analyze, compare, or extract topics from a YouTube channel, multiple channels, or a specific YouTube video. Subtitles-first via yt-dlp, falls back to local Whisper (mlx-whisper, whisper.cpp, or openai-whisper) for videos without subs. Uses a hidden workspace at ./.youtube-research/ for intermediate artifacts (channel indexes, transcripts) and writes the final research artifact to the current working directory. Asks the user before deleting the workspace at the end.
3research-yt
Deep LLM-driven research over one or more YouTube channels' videos. Lists each channel's catalog, filters videos by topic relevance, transcribes only the relevant ones, then synthesizes a single cross-channel research document with timestamped citations. Use when the user runs /research-yt or asks to research, summarize, analyze, compare, or extract topics from a YouTube channel, multiple channels, or a specific YouTube video. Subtitles-first via yt-dlp, falls back to local Whisper (mlx-whisper, whisper.cpp, or openai-whisper) for videos without subs. Uses a hidden workspace at ./.research-yt/ for intermediate artifacts (channel indexes, transcripts) and writes the final research artifact to the current working directory. Asks the user before deleting the workspace at the end.
1swift-missing-translations
Audit a Swift/SwiftUI project's Localizable.xcstrings (and AppShortcuts.xcstrings) for missing translations, compute per-language coverage, find raw source-language literals still hard-coded in UI code, and bulk-translate the gaps. Source language is read from the catalog — works for any source language (en, nl, de, …).
1