{"id":"5b55812a-a36f-4820-8cc1-2d131326f99d","shortId":"jm46gw","kind":"skill","title":"app-store-optimization","tagline":"Complete App Store Optimization (ASO) toolkit for researching, optimizing, and tracking mobile app performance on Apple App Store and Google Play Store","description":"# App Store Optimization (ASO) Skill\n\nThis comprehensive skill provides complete ASO capabilities for successfully launching and optimizing mobile applications on the Apple App Store and Google Play Store.\n\n## Capabilities\n\n### Research & Analysis\n- **Keyword Research**: Analyze keyword volume, competition, and relevance for app discovery\n- **Competitor Analysis**: Deep-dive into top-performing apps in your category\n- **Market Trend Analysis**: Identify emerging trends and opportunities in your app category\n- **Review Sentiment Analysis**: Extract insights from user reviews to identify strengths and issues\n- **Category Analysis**: Evaluate optimal category and subcategory placement strategies\n\n### Metadata Optimization\n- **Title Optimization**: Create compelling titles with optimal keyword placement (platform-specific character limits)\n- **Description Optimization**: Craft both short and full descriptions that convert and rank\n- **Subtitle/Promotional Text**: Optimize Apple-specific subtitle (30 chars) and promotional text (170 chars)\n- **Keyword Field**: Maximize Apple's 100-character keyword field with strategic selection\n- **Category Selection**: Data-driven recommendations for primary and secondary categories\n- **Icon Best Practices**: Guidelines for designing high-converting app icons\n- **Screenshot Optimization**: Strategies for creating screenshots that drive installs\n- **Preview Video**: Best practices for app preview videos\n- **Localization**: Multi-language optimization strategies for global reach\n\n### Conversion Optimization\n- **A/B Testing Framework**: Plan and track metadata experiments for continuous improvement\n- **Visual Asset Testing**: Test icons, screenshots, and videos for maximum conversion\n- **Store Listing Optimization**: Comprehensive page optimization for impression-to-install conversion\n- **Call-to-Action**: Optimize CTAs in descriptions and promotional materials\n\n### Rating & Review Management\n- **Review Monitoring**: Track and analyze user reviews for actionable insights\n- **Response Strategies**: Templates and best practices for responding to reviews\n- **Rating Improvement**: Tactical approaches to improve app ratings organically\n- **Issue Identification**: Surface common problems and feature requests from reviews\n\n### Launch & Update Strategies\n- **Pre-Launch Checklist**: Complete validation before submitting to stores\n- **Launch Timing**: Optimize release timing for maximum visibility and downloads\n- **Update Cadence**: Plan optimal update frequency and feature rollouts\n- **Feature Announcements**: Craft \"What's New\" sections that re-engage users\n- **Seasonal Optimization**: Leverage seasonal trends and events\n\n### Analytics & Tracking\n- **ASO Score**: Calculate overall ASO health score across multiple factors\n- **Keyword Rankings**: Track keyword position changes over time\n- **Conversion Metrics**: Monitor impression-to-install conversion rates\n- **Download Velocity**: Track download trends and momentum\n- **Performance Benchmarking**: Compare against category averages and competitors\n\n### Platform-Specific Requirements\n- **Apple App Store**:\n  - Title: 30 characters\n  - Subtitle: 30 characters\n  - Promotional Text: 170 characters (editable without app update)\n  - Description: 4,000 characters\n  - Keywords: 100 characters (comma-separated, no spaces)\n  - What's New: 4,000 characters\n- **Google Play Store**:\n  - Title: 50 characters (formerly 30, increased in 2021)\n  - Short Description: 80 characters\n  - Full Description: 4,000 characters\n  - No separate keyword field (keywords extracted from title and description)\n\n## Input Requirements\n\n### Keyword Research\n```json\n{\n  \"app_name\": \"MyApp\",\n  \"category\": \"Productivity\",\n  \"target_keywords\": [\"task manager\", \"productivity\", \"todo list\"],\n  \"competitors\": [\"Todoist\", \"Any.do\", \"Microsoft To Do\"],\n  \"language\": \"en-US\"\n}\n```\n\n### Metadata Optimization\n```json\n{\n  \"platform\": \"apple\" | \"google\",\n  \"app_info\": {\n    \"name\": \"MyApp\",\n    \"category\": \"Productivity\",\n    \"target_audience\": \"Professionals aged 25-45\",\n    \"key_features\": [\"Task management\", \"Team collaboration\", \"AI assistance\"],\n    \"unique_value\": \"AI-powered task prioritization\"\n  },\n  \"current_metadata\": {\n    \"title\": \"Current Title\",\n    \"subtitle\": \"Current Subtitle\",\n    \"description\": \"Current description...\"\n  },\n  \"target_keywords\": [\"productivity\", \"task manager\", \"todo\"]\n}\n```\n\n### Review Analysis\n```json\n{\n  \"app_id\": \"com.myapp.app\",\n  \"platform\": \"apple\" | \"google\",\n  \"date_range\": \"last_30_days\" | \"last_90_days\" | \"all_time\",\n  \"rating_filter\": [1, 2, 3, 4, 5],\n  \"language\": \"en\"\n}\n```\n\n### ASO Score Calculation\n```json\n{\n  \"metadata\": {\n    \"title_quality\": 0.8,\n    \"description_quality\": 0.7,\n    \"keyword_density\": 0.6\n  },\n  \"ratings\": {\n    \"average_rating\": 4.5,\n    \"total_ratings\": 15000\n  },\n  \"conversion\": {\n    \"impression_to_install\": 0.05\n  },\n  \"keyword_rankings\": {\n    \"top_10\": 5,\n    \"top_50\": 12,\n    \"top_100\": 18\n  }\n}\n```\n\n## Output Formats\n\n### Keyword Research Report\n- List of recommended keywords with search volume estimates\n- Competition level analysis (low/medium/high)\n- Relevance scores for each keyword\n- Strategic recommendations for primary vs. secondary keywords\n- Long-tail keyword opportunities\n\n### Optimized Metadata Package\n- Platform-specific title (with character count validation)\n- Subtitle/promotional text (Apple)\n- Short description (Google)\n- Full description (both platforms)\n- Keyword field (Apple - 100 chars)\n- Character count validation for all fields\n- Keyword density analysis\n- Before/after comparison\n\n### Competitor Analysis Report\n- Top 10 competitors in category\n- Their metadata strategies\n- Keyword overlap analysis\n- Visual asset assessment\n- Rating and review volume comparison\n- Identified gaps and opportunities\n\n### ASO Health Score\n- Overall score (0-100)\n- Category breakdown:\n  - Metadata Quality (0-25)\n  - Ratings & Reviews (0-25)\n  - Keyword Performance (0-25)\n  - Conversion Metrics (0-25)\n- Specific improvement recommendations\n- Priority action items\n\n### A/B Test Plan\n- Hypothesis and test variables\n- Test duration recommendations\n- Success metrics definition\n- Sample size calculations\n- Statistical significance thresholds\n\n### Launch Checklist\n- Pre-submission validation (all required assets, metadata)\n- Store compliance verification\n- Testing checklist (devices, OS versions)\n- Marketing preparation items\n- Post-launch monitoring plan\n\n## How to Use\n\n### Keyword Research\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you research the best keywords for a productivity app targeting professionals? Focus on keywords with good search volume but lower competition.\n```\n\n### Optimize App Store Listing\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you optimize my app's metadata for the Apple App Store? Here's my current listing: [provide current metadata]. I want to rank for \"task management\" and \"productivity tools\".\n```\n\n### Analyze Competitor Strategy\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you analyze the ASO strategies of Todoist, Any.do, and Microsoft To Do? I want to understand what they're doing well and where there are opportunities.\n```\n\n### Review Sentiment Analysis\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you analyze recent reviews for my app (com.myapp.ios) and identify the most common user complaints and feature requests?\n```\n\n### Calculate ASO Score\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you calculate my app's overall ASO health score and provide specific recommendations for improvement?\n```\n\n### Plan A/B Test\n```\nHey Claude—I just added the \"app-store-optimization\" skill. I want to A/B test my app icon and first screenshot. Can you help me design the test and determine how long to run it?\n```\n\n### Pre-Launch Checklist\n```\nHey Claude—I just added the \"app-store-optimization\" skill. Can you generate a comprehensive pre-launch checklist for submitting my app to both Apple App Store and Google Play Store?\n```\n\n## Scripts\n\n### keyword_analyzer.py\nAnalyzes keywords for search volume, competition, and relevance. Provides strategic recommendations for primary and secondary keywords.\n\n**Key Functions:**\n- `analyze_keyword()`: Analyze single keyword metrics\n- `compare_keywords()`: Compare multiple keywords\n- `find_long_tail()`: Discover long-tail keyword opportunities\n- `calculate_keyword_difficulty()`: Assess competition level\n\n### metadata_optimizer.py\nOptimizes titles, descriptions, and keyword fields with platform-specific character limit validation.\n\n**Key Functions:**\n- `optimize_title()`: Create compelling, keyword-rich titles\n- `optimize_description()`: Generate conversion-focused descriptions\n- `optimize_keyword_field()`: Maximize Apple's 100-char keyword field\n- `validate_character_limits()`: Ensure compliance with platform limits\n- `calculate_keyword_density()`: Analyze keyword usage in metadata\n\n### competitor_analyzer.py\nAnalyzes top competitors' ASO strategies and identifies opportunities.\n\n**Key Functions:**\n- `get_top_competitors()`: Identify category leaders\n- `analyze_competitor_metadata()`: Extract and analyze competitor keywords\n- `compare_visual_assets()`: Evaluate icons and screenshots\n- `identify_gaps()`: Find competitive opportunities\n\n### aso_scorer.py\nCalculates comprehensive ASO health score across multiple dimensions.\n\n**Key Functions:**\n- `calculate_overall_score()`: Compute 0-100 ASO score\n- `score_metadata_quality()`: Evaluate title, description, keywords\n- `score_ratings_reviews()`: Assess rating quality and volume\n- `score_keyword_performance()`: Analyze ranking positions\n- `score_conversion_metrics()`: Evaluate impression-to-install rates\n- `generate_recommendations()`: Provide prioritized action items\n\n### ab_test_planner.py\nPlans and tracks A/B tests for metadata and visual assets.\n\n**Key Functions:**\n- `design_test()`: Create test hypothesis and variables\n- `calculate_sample_size()`: Determine required test duration\n- `calculate_significance()`: Assess statistical significance\n- `track_results()`: Monitor test performance\n- `generate_report()`: Summarize test outcomes\n\n### localization_helper.py\nManages multi-language ASO optimization strategies.\n\n**Key Functions:**\n- `identify_target_markets()`: Recommend localization priorities\n- `translate_metadata()`: Generate localized metadata\n- `adapt_keywords()`: Research locale-specific keywords\n- `validate_translations()`: Check character limits per language\n- `calculate_localization_roi()`: Estimate impact of localization\n\n### review_analyzer.py\nAnalyzes user reviews for sentiment, issues, and feature requests.\n\n**Key Functions:**\n- `analyze_sentiment()`: Calculate positive/negative/neutral ratios\n- `extract_common_themes()`: Identify frequently mentioned topics\n- `identify_issues()`: Surface bugs and user complaints\n- `find_feature_requests()`: Extract desired features\n- `track_sentiment_trends()`: Monitor sentiment over time\n- `generate_response_templates()`: Create review response drafts\n\n### launch_checklist.py\nGenerates comprehensive pre-launch and update checklists.\n\n**Key Functions:**\n- `generate_prelaunch_checklist()`: Complete submission validation\n- `validate_app_store_compliance()`: Check Apple guidelines\n- `validate_play_store_compliance()`: Check Google policies\n- `create_update_plan()`: Plan update cadence and features\n- `optimize_launch_timing()`: Recommend release dates\n- `plan_seasonal_campaigns()`: Identify seasonal opportunities\n\n## Best Practices\n\n### Keyword Research\n1. **Volume vs. Competition**: Balance high-volume keywords with achievable rankings\n2. **Relevance First**: Only target keywords genuinely relevant to your app\n3. **Long-Tail Strategy**: Include 3-4 word phrases with lower competition\n4. **Continuous Research**: Keyword trends change—research quarterly\n5. **Competitor Keywords**: Don't copy blindly; ensure relevance to your features\n\n### Metadata Optimization\n1. **Front-Load Keywords**: Place most important keywords early in title/description\n2. **Natural Language**: Write for humans first, SEO second\n3. **Feature Benefits**: Focus on user benefits, not just features\n4. **A/B Test Everything**: Test titles, descriptions, screenshots systematically\n5. **Update Regularly**: Refresh metadata every major update\n6. **Character Limits**: Use every character—don't waste valuable space\n7. **Apple Keyword Field**: No plurals, duplicates, or spaces between commas\n\n### Visual Assets\n1. **Icon**: Must be recognizable at small sizes (60x60px)\n2. **Screenshots**: First 2-3 are critical—most users don't scroll\n3. **Captions**: Use screenshot captions to tell your value story\n4. **Consistency**: Match visual style to app design\n5. **A/B Test Icons**: Icon is the single most important visual element\n\n### Reviews & Ratings\n1. **Respond Quickly**: Reply to reviews within 24-48 hours\n2. **Professional Tone**: Always courteous, even with negative reviews\n3. **Address Issues**: Show you're actively fixing reported problems\n4. **Thank Supporters**: Acknowledge positive reviews\n5. **Prompt Strategically**: Ask for ratings after positive experiences\n\n### Launch Strategy\n1. **Soft Launch**: Consider launching in smaller markets first\n2. **PR Timing**: Coordinate press coverage with launch\n3. **Update Frequently**: Initial updates signal active development\n4. **Monitor Closely**: Track metrics daily for first 2 weeks\n5. **Iterate Quickly**: Fix critical issues immediately\n\n### Localization\n1. **Prioritize Markets**: Start with English, Spanish, Chinese, French, German\n2. **Native Speakers**: Use professional translators, not machine translation\n3. **Cultural Adaptation**: Some features resonate differently by culture\n4. **Test Locally**: Have native speakers review before publishing\n5. **Measure ROI**: Track downloads by locale to assess impact\n\n## Limitations\n\n### Data Dependencies\n- Keyword search volume estimates are approximate (no official data from Apple/Google)\n- Competitor data may be incomplete for private apps\n- Review analysis limited to public reviews (can't access private feedback)\n- Historical data may not be available for new apps\n\n### Platform Constraints\n- Apple App Store keyword changes require app submission (except Promotional Text)\n- Google Play Store metadata changes take 1-2 hours to index\n- A/B testing requires significant traffic for statistical significance\n- Store algorithms are proprietary and change without notice\n\n### Industry Variability\n- ASO benchmarks vary significantly by category (games vs. utilities)\n- Seasonality affects different categories differently\n- Geographic markets have different competitive landscapes\n- Cultural preferences impact what works in different countries\n\n### Scope Boundaries\n- Does not include paid user acquisition strategies (Apple Search Ads, Google Ads)\n- Does not cover app development or UI/UX optimization\n- Does not include app analytics implementation (use Firebase, Mixpanel, etc.)\n- Does not handle app submission technical issues (provisioning profiles, certificates)\n\n### When NOT to Use This Skill\n- For web apps (different SEO strategies apply)\n- For enterprise apps not in public stores\n- For apps in beta/TestFlight only\n- If you need paid advertising strategies (use marketing skills instead)\n\n## Integration with Other Skills\n\nThis skill works well with:\n- **Content Strategy Skills**: For creating app descriptions and marketing copy\n- **Analytics Skills**: For analyzing download and engagement data\n- **Localization Skills**: For managing multi-language content\n- **Design Skills**: For creating optimized visual assets\n- **Marketing Skills**: For coordinating broader launch campaigns\n\n## Version & Updates\n\nThis skill is based on current Apple App Store and Google Play Store requirements as of November 2025. Store policies and best practices evolve—verify current requirements before major launches.\n\n**Key Updates to Monitor:**\n- Apple App Store Connect updates (apple.com/app-store/review/guidelines)\n- Google Play Console updates (play.google.com/console/about/guides/releasewithconfidence)\n- iOS/Android version adoption rates (affects device testing)\n- Store algorithm changes (follow ASO blogs and communities)\n\n## When to Use\nThis skill is applicable to execute the workflow or actions described in the overview.","tags":["app","store","optimization","antigravity","awesome","skills","sickn33","agent-skills","agentic-skills","ai-agent-skills","ai-agents","ai-coding"],"capabilities":["skill","source-sickn33","skill-app-store-optimization","topic-agent-skills","topic-agentic-skills","topic-ai-agent-skills","topic-ai-agents","topic-ai-coding","topic-ai-workflows","topic-antigravity","topic-antigravity-skills","topic-claude-code","topic-claude-code-skills","topic-codex-cli","topic-codex-skills"],"categories":["antigravity-awesome-skills"],"synonyms":[],"warnings":[],"endpointUrl":"https://skills.sh/sickn33/antigravity-awesome-skills/app-store-optimization","protocol":"skill","transport":"skills-sh","auth":{"type":"none","details":{"cli":"npx skills add sickn33/antigravity-awesome-skills","source_repo":"https://github.com/sickn33/antigravity-awesome-skills","install_from":"skills.sh"}},"qualityScore":"0.700","qualityRationale":"deterministic score 0.70 from registry signals: · indexed on github topic:agent-skills · 37911 github stars · SKILL.md body (16,408 chars)","verified":false,"liveness":"unknown","lastLivenessCheck":null,"agentReviews":{"count":0,"score_avg":null,"cost_usd_avg":null,"success_rate":null,"latency_p50_ms":null,"narrative_summary":null,"summary_updated_at":null},"enrichmentModel":"deterministic:skill-github:v1","enrichmentVersion":1,"enrichedAt":"2026-05-18T18:50:30.265Z","embedding":null,"createdAt":"2026-04-18T20:32:50.441Z","updatedAt":"2026-05-18T18:50:30.265Z","lastSeenAt":"2026-05-18T18:50:30.265Z","tsv":"'-100':716,1205 '-2':1815 '-25':722,726,730,734 '-3':1577 '-4':1464 '-45':515 '-48':1625 '/app-store/review/guidelines)':2034 '/console/about/guides/releasewithconfidence)':2041 '0':715,721,725,729,733,1204 '0.05':601 '0.6':589 '0.7':586 '0.8':583 '000':425,439,459 '1':569,1434,1492,1564,1617,1663,1706,1814 '10':605,688 '100':163,428,611,671,1132 '12':609 '15000':596 '170':156,417 '18':612 '2':570,1446,1504,1573,1576,1627,1672,1696,1716 '2021':451 '2025':2010 '24':1624 '25':514 '3':571,1457,1463,1513,1585,1636,1680,1725 '30':151,410,413,448,560 '4':424,438,458,572,1470,1523,1595,1646,1688,1734 '4.5':593 '5':573,606,1478,1532,1603,1652,1698,1743 '50':445,608 '6':1540 '60x60px':1572 '7':1551 '80':454 '90':563 'a/b':220,741,974,990,1248,1524,1604,1819 'ab_test_planner.py':1244 'access':1783 'achiev':1444 'acknowledg':1649 'acquisit':1872 'across':367,1195 'action':257,276,739,1242,2069 'activ':1642,1686 'ad':795,832,876,917,950,980,1020,1876,1878 'adapt':1307,1727 'address':1637 'adopt':2044 'advertis':1936 'affect':1847,2046 'age':513 'ai':522,527 'ai-pow':526 'algorithm':1828,2050 'alway':1630 'analysi':57,70,84,96,108,549,628,681,685,697,912,1776 'analyt':358,1891,1961 'analyz':60,272,869,885,926,1051,1069,1071,1147,1153,1169,1174,1226,1329,1340,1964 'announc':340 'any.do':490,891 'app':2,6,17,21,27,49,67,78,92,190,206,294,407,421,476,504,551,798,811,825,835,843,849,879,920,931,953,961,983,993,1023,1039,1043,1397,1456,1601,1774,1794,1798,1803,1882,1890,1900,1915,1922,1928,1956,2000,2028 'app-store-optim':1,797,834,878,919,952,982,1022 'appl':20,48,148,161,406,502,555,660,670,848,1042,1130,1401,1552,1797,1874,1999,2027 'apple-specif':147 'apple.com':2033 'apple.com/app-store/review/guidelines)':2032 'apple/google':1766 'appli':1919 'applic':45,2063 'approach':291 'approxim':1761 'ask':1655 'aso':9,30,37,360,364,576,710,887,944,964,1156,1192,1206,1291,1837,2053 'aso_scorer.py':1189 'assess':700,1092,1218,1273,1751 'asset':232,699,768,1179,1254,1563,1983 'assist':523 'audienc':511 'avail':1791 'averag':399,591 'balanc':1438 'base':1996 'before/after':682 'benchmark':395,1838 'benefit':1515,1519 'best':182,203,282,806,1430,2014 'beta/testflight':1930 'blind':1484 'blog':2054 'boundari':1866 'breakdown':718 'broader':1988 'bug':1355 'cadenc':331,1415 'calcul':362,578,756,943,959,1089,1144,1190,1200,1264,1271,1321,1342 'call':255 'call-to-act':254 'campaign':1426,1990 'capabl':38,55 'caption':1586,1589 'categori':81,93,107,111,170,180,398,479,508,691,717,1167,1842,1849 'certif':1906 'chang':375,1475,1801,1812,1832,2051 'char':152,157,672,1133 'charact':130,164,411,414,418,426,429,440,446,455,460,655,673,1106,1137,1317,1541,1545 'check':1316,1400,1407 'checklist':313,761,774,1015,1035,1387,1392 'chines':1713 'claud':792,829,873,914,947,977,1017 'close':1690 'collabor':521 'com.myapp.app':553 'com.myapp.ios':932 'comma':431,1561 'comma-separ':430 'common':300,937,1346 'communiti':2056 'compar':396,1075,1077,1177 'comparison':683,705 'compel':121,1114 'competit':63,626,823,1056,1093,1187,1437,1469,1855 'competitor':69,401,488,684,689,870,1155,1165,1170,1175,1479,1767 'competitor_analyzer.py':1152 'complaint':939,1358 'complet':5,36,314,1393 'complianc':771,1140,1399,1406 'comprehens':33,245,1031,1191,1381 'comput':1203 'connect':2030 'consid':1666 'consist':1596 'consol':2037 'constraint':1796 'content':1951,1976 'continu':229,1471 'convers':218,241,253,378,385,597,731,1123,1230 'conversion-focus':1122 'convert':141,189 'coordin':1675,1987 'copi':1483,1960 'count':656,674 'countri':1864 'courteous':1631 'cover':1881 'coverag':1677 'craft':134,341 'creat':120,196,1113,1259,1375,1410,1955,1980 'critic':1579,1702 'ctas':259 'cultur':1726,1733,1857 'current':531,534,537,540,854,857,1998,2018 'daili':1693 'data':173,1754,1764,1768,1787,1968 'data-driven':172 'date':557,1423 'day':561,564 'deep':72 'deep-div':71 'definit':753 'densiti':588,680,1146 'depend':1755 'describ':2070 'descript':132,139,261,423,453,457,470,539,541,584,662,665,1098,1120,1125,1213,1529,1957 'design':186,1002,1257,1602,1977 'desir':1363 'determin':1006,1267 'develop':1687,1883 'devic':775,2047 'differ':1731,1848,1850,1854,1863,1916 'difficulti':1091 'dimens':1197 'discov':1083 'discoveri':68 'dive':73 'download':329,387,390,1747,1965 'draft':1378 'drive':199 'driven':174 'duplic':1557 'durat':749,1270 'earli':1501 'edit':419 'element':1614 'emerg':86 'en':496,575 'en-us':495 'engag':349,1967 'english':1711 'ensur':1139,1485 'enterpris':1921 'estim':625,1324,1759 'etc':1896 'evalu':109,1180,1211,1232 'even':1632 'event':357 'everi':1537,1544 'everyth':1526 'evolv':2016 'except':1805 'execut':2065 'experi':227,1660 'extract':97,466,1172,1345,1362 'factor':369 'featur':303,337,339,517,941,1336,1360,1364,1417,1489,1514,1522,1729 'feedback':1785 'field':159,166,464,669,678,1101,1128,1135,1554 'filter':568 'find':1080,1186,1359 'firebas':1894 'first':996,1448,1510,1575,1671,1695 'fix':1643,1701 'focus':814,1124,1516 'follow':2052 'format':614 'former':447 'framework':222 'french':1714 'frequenc':335 'frequent':1349,1682 'front':1494 'front-load':1493 'full':138,456,664 'function':1068,1110,1162,1199,1256,1295,1339,1389 'game':1843 'gap':707,1185 'generat':1029,1121,1238,1281,1304,1372,1380,1390 'genuin':1452 'geograph':1851 'german':1715 'get':1163 'global':216 'good':818 'googl':24,52,441,503,556,663,1046,1408,1808,1877,2003,2035 'guidelin':184,1402 'handl':1899 'health':365,711,965,1193 'help':1000 'hey':791,828,872,913,946,976,1016 'high':188,1440 'high-convert':187 'high-volum':1439 'histor':1786 'hour':1626,1816 'human':1509 'hypothesi':744,1261 'icon':181,191,235,994,1181,1565,1606,1607 'id':552 'identif':298 'identifi':85,103,706,934,1159,1166,1184,1296,1348,1352,1427 'immedi':1704 'impact':1325,1752,1859 'implement':1892 'import':1499,1612 'impress':250,382,598,1234 'impression-to-instal':249,381,1233 'improv':230,289,293,736,972 'includ':1462,1869,1889 'incomplet':1771 'increas':449 'index':1818 'industri':1835 'info':505 'initi':1683 'input':471 'insight':98,277 'instal':200,252,384,600,1236 'instead':1941 'integr':1942 'ios/android':2042 'issu':106,297,1334,1353,1638,1703,1903 'item':740,780,1243 'iter':1699 'json':475,500,550,579 'key':516,1067,1109,1161,1198,1255,1294,1338,1388,2023 'keyword':58,61,125,158,165,370,373,427,463,465,473,482,543,587,602,615,621,634,641,645,668,679,695,727,789,807,816,1052,1066,1070,1073,1076,1079,1087,1090,1100,1116,1127,1134,1145,1148,1176,1214,1224,1308,1313,1432,1442,1451,1473,1480,1496,1500,1553,1756,1800 'keyword-rich':1115 'keyword_analyzer.py':1050 'landscap':1856 'languag':212,494,574,1290,1320,1506,1975 'last':559,562 'launch':41,307,312,320,760,783,1014,1034,1384,1419,1661,1665,1667,1679,1989,2022 'launch_checklist.py':1379 'leader':1168 'level':627,1094 'leverag':353 'limit':131,1107,1138,1143,1318,1542,1753,1777 'list':243,487,618,827,855 'load':1495 'local':209,1300,1305,1311,1322,1327,1705,1736,1749,1969 'locale-specif':1310 'localization_helper.py':1286 'long':643,1008,1081,1085,1459 'long-tail':642,1084,1458 'low/medium/high':629 'lower':822,1468 'machin':1723 'major':1538,2021 'manag':267,484,519,546,865,1287,1972 'market':82,778,1298,1670,1708,1852,1939,1959,1984 'match':1597 'materi':264 'maxim':160,1129 'maximum':240,326 'may':1769,1788 'measur':1744 'mention':1350 'metadata':116,226,498,532,580,648,693,719,769,845,858,1151,1171,1209,1251,1303,1306,1490,1536,1811 'metadata_optimizer.py':1095 'metric':379,732,752,1074,1231,1692 'microsoft':491,893 'mixpanel':1895 'mobil':16,44 'momentum':393 'monitor':269,380,784,1278,1368,1689,2026 'multi':211,1289,1974 'multi-languag':210,1288,1973 'multipl':368,1078,1196 'must':1566 'myapp':478,507 'name':477,506 'nativ':1717,1738 'natur':1505 'need':1934 'negat':1634 'new':344,437,1793 'notic':1834 'novemb':2009 'offici':1763 'opportun':89,646,709,909,1088,1160,1188,1429 'optim':4,8,13,29,43,110,117,119,124,133,146,193,213,219,244,247,258,322,333,352,499,647,800,824,837,841,881,922,955,985,1025,1096,1111,1119,1126,1292,1418,1491,1886,1981 'organ':296 'os':776 'outcom':1285 'output':613 'overal':363,713,963,1201 'overlap':696 'overview':2073 'packag':649 'page':246 'paid':1870,1935 'per':1319 'perform':18,77,394,728,1225,1280 'phrase':1466 'place':1497 'placement':114,126 'plan':223,332,743,785,973,1245,1412,1413,1424 'platform':128,403,501,554,651,667,1104,1142,1795 'platform-specif':127,402,650,1103 'play':25,53,442,1047,1404,1809,2004,2036 'play.google.com':2040 'play.google.com/console/about/guides/releasewithconfidence)':2039 'plural':1556 'polici':1409,2012 'posit':374,1228,1650,1659 'positive/negative/neutral':1343 'post':782 'post-launch':781 'power':528 'pr':1673 'practic':183,204,283,1431,2015 'pre':311,763,1013,1033,1383 'pre-launch':310,1012,1032,1382 'pre-submiss':762 'prefer':1858 'prelaunch':1391 'prepar':779 'press':1676 'preview':201,207 'primari':177,638,1063 'priorit':530,1241,1707 'prioriti':738,1301 'privat':1773,1784 'problem':301,1645 'product':480,485,509,544,810,867 'profession':512,813,1628,1720 'profil':1905 'promot':154,263,415,1806 'prompt':1653 'proprietari':1830 'provid':35,856,968,1059,1240 'provis':1904 'public':1779,1925 'publish':1742 'qualiti':582,585,720,1210,1220 'quarter':1477 'quick':1619,1700 'rang':558 'rank':143,371,603,862,1227,1445 'rate':265,288,295,386,567,590,592,595,701,723,1216,1219,1237,1616,1657,2045 'ratio':1344 're':348,902,1641 're-engag':347 'reach':217 'recent':927 'recogniz':1568 'recommend':175,620,636,737,750,970,1061,1239,1299,1421 'refresh':1535 'regular':1534 'releas':323,1422 'relev':65,630,1058,1447,1453,1486 'repli':1620 'report':617,686,1282,1644 'request':304,942,1337,1361 'requir':405,472,767,1268,1802,1821,2006,2019 'research':12,56,59,474,616,790,804,1309,1433,1472,1476 'reson':1730 'respond':285,1618 'respons':278,1373,1377 'result':1277 'review':94,101,266,268,274,287,306,548,703,724,910,928,1217,1331,1376,1615,1622,1635,1651,1740,1775,1780 'review_analyzer.py':1328 'rich':1117 'roi':1323,1745 'rollout':338 'run':1010 'sampl':754,1265 'scope':1865 'score':361,366,577,631,712,714,945,966,1194,1202,1207,1208,1215,1223,1229 'screenshot':192,197,236,997,1183,1530,1574,1588 'script':1049 'scroll':1584 'search':623,819,1054,1757,1875 'season':351,354,1425,1428,1846 'second':1512 'secondari':179,640,1065 'section':345 'select':169,171 'sentiment':95,911,1333,1341,1366,1369 'seo':1511,1917 'separ':432,462 'short':136,452,661 'show':1639 'signal':1685 'signific':758,1272,1275,1822,1826,1840 'singl':1072,1610 'size':755,1266,1571 'skill':31,34,801,838,882,923,956,986,1026,1912,1940,1945,1947,1953,1962,1970,1978,1985,1994,2061 'skill-app-store-optimization' 'small':1570 'smaller':1669 'soft':1664 'source-sickn33' 'space':434,1550,1559 'spanish':1712 'speaker':1718,1739 'specif':129,149,404,652,735,969,1105,1312 'start':1709 'statist':757,1274,1825 'store':3,7,22,26,28,50,54,242,319,408,443,770,799,826,836,850,880,921,954,984,1024,1044,1048,1398,1405,1799,1810,1827,1926,2001,2005,2011,2029,2049 'stori':1594 'strateg':168,635,1060,1654 'strategi':115,194,214,279,309,694,871,888,1157,1293,1461,1662,1873,1918,1937,1952 'strength':104 'style':1599 'subcategori':113 'submiss':764,1394,1804,1901 'submit':317,1037 'subtitl':150,412,536,538 'subtitle/promotional':144,658 'success':40,751 'summar':1283 'support':1648 'surfac':299,1354 'systemat':1531 'tactic':290 'tail':644,1082,1086,1460 'take':1813 'target':481,510,542,812,1297,1450 'task':483,518,529,545,864 'team':520 'technic':1902 'tell':1591 'templat':280,1374 'test':221,233,234,742,746,748,773,975,991,1004,1249,1258,1260,1269,1279,1284,1525,1527,1605,1735,1820,2048 'text':145,155,416,659,1807 'thank':1647 'theme':1347 'threshold':759 'time':321,324,377,566,1371,1420,1674 'titl':118,122,409,444,468,533,535,581,653,1097,1112,1118,1212,1528 'title/description':1503 'todo':486,547 'todoist':489,890 'tone':1629 'tool':868 'toolkit':10 'top':76,604,607,610,687,1154,1164 'top-perform':75 'topic':1351 'topic-agent-skills' 'topic-agentic-skills' 'topic-ai-agent-skills' 'topic-ai-agents' 'topic-ai-coding' 'topic-ai-workflows' 'topic-antigravity' 'topic-antigravity-skills' 'topic-claude-code' 'topic-claude-code-skills' 'topic-codex-cli' 'topic-codex-skills' 'total':594 'track':15,225,270,359,372,389,1247,1276,1365,1691,1746 'traffic':1823 'translat':1302,1315,1721,1724 'trend':83,87,355,391,1367,1474 'ui/ux':1885 'understand':899 'uniqu':524 'updat':308,330,334,422,1386,1411,1414,1533,1539,1681,1684,1992,2024,2031,2038 'us':497 'usag':1149 'use':788,1543,1587,1719,1893,1910,1938,2059 'user':100,273,350,938,1330,1357,1518,1581,1871 'util':1845 'valid':315,657,675,765,1108,1136,1314,1395,1396,1403 'valu':525,1593 'valuabl':1549 'vari':1839 'variabl':747,1263,1836 'veloc':388 'verif':772 'verifi':2017 'version':777,1991,2043 'video':202,208,238 'visibl':327 'visual':231,698,1178,1253,1562,1598,1613,1982 'volum':62,624,704,820,1055,1222,1435,1441,1758 'vs':639,1436,1844 'want':860,897,988 'wast':1548 'web':1914 'week':1697 'well':904,1949 'within':1623 'without':420,1833 'word':1465 'work':1861,1948 'workflow':2067 'write':1507","prices":[{"id":"eb8724d7-361f-4383-a2e9-47731c4c846c","listingId":"5b55812a-a36f-4820-8cc1-2d131326f99d","amountUsd":"0","unit":"free","nativeCurrency":null,"nativeAmount":null,"chain":null,"payTo":null,"paymentMethod":"skill-free","isPrimary":true,"details":{"org":"sickn33","category":"antigravity-awesome-skills","install_from":"skills.sh"},"createdAt":"2026-04-18T20:32:50.441Z"}],"sources":[{"listingId":"5b55812a-a36f-4820-8cc1-2d131326f99d","source":"github","sourceId":"sickn33/antigravity-awesome-skills/app-store-optimization","sourceUrl":"https://github.com/sickn33/antigravity-awesome-skills/tree/main/skills/app-store-optimization","isPrimary":false,"firstSeenAt":"2026-04-18T21:31:22.903Z","lastSeenAt":"2026-05-18T18:50:30.265Z"},{"listingId":"5b55812a-a36f-4820-8cc1-2d131326f99d","source":"skills_sh","sourceId":"sickn33/antigravity-awesome-skills/app-store-optimization","sourceUrl":"https://skills.sh/sickn33/antigravity-awesome-skills/app-store-optimization","isPrimary":true,"firstSeenAt":"2026-04-18T20:32:50.441Z","lastSeenAt":"2026-05-07T22:40:35.779Z"}],"details":{"listingId":"5b55812a-a36f-4820-8cc1-2d131326f99d","quickStartSnippet":null,"exampleRequest":null,"exampleResponse":null,"schema":null,"openapiUrl":null,"agentsTxtUrl":null,"citations":[],"useCases":[],"bestFor":[],"notFor":[],"kindDetails":{"org":"sickn33","slug":"app-store-optimization","github":{"repo":"sickn33/antigravity-awesome-skills","stars":37911,"topics":["agent-skills","agentic-skills","ai-agent-skills","ai-agents","ai-coding","ai-workflows","antigravity","antigravity-skills","claude-code","claude-code-skills","codex-cli","codex-skills","cursor","cursor-skills","developer-tools","gemini-cli","gemini-skills","kiro","mcp","skill-library"],"license":"mit","html_url":"https://github.com/sickn33/antigravity-awesome-skills","pushed_at":"2026-05-18T08:24:49Z","description":"Installable GitHub library of 1,400+ agentic skills for Claude Code, Cursor, Codex CLI, Gemini CLI, Antigravity, and more. Includes installer CLI, bundles, workflows, and official/community skill collections.","skill_md_sha":"f41f3214596ed6ba94db108148cd190ec5fc6d61","skill_md_path":"skills/app-store-optimization/SKILL.md","default_branch":"main","skill_tree_url":"https://github.com/sickn33/antigravity-awesome-skills/tree/main/skills/app-store-optimization"},"layout":"multi","source":"github","category":"antigravity-awesome-skills","frontmatter":{"name":"app-store-optimization","description":"Complete App Store Optimization (ASO) toolkit for researching, optimizing, and tracking mobile app performance on Apple App Store and Google Play Store"},"skills_sh_url":"https://skills.sh/sickn33/antigravity-awesome-skills/app-store-optimization"},"updatedAt":"2026-05-18T18:50:30.265Z"}}