Q3 2025 · Asia-Pacific
3 Asia-Pacific-based startups across 3 sectors, ranked by GitHub engineering acceleration. opennem (Climate Tech) leads with 3 commits over 14 days (-81% change). Dominant regional signal pattern: Engineering hiring burst.
| # | Company | Stage | Geo | Commits (14d) | Change | Contributors | Contrib. Growth | New Repos | Signal |
|---|---|---|---|---|---|---|---|---|---|
| 1 | opennem Formerly OpenNEM, Open Electricity aims to make the wealth of public energy data more accessible View signal profile → | Seed | APAC | 3 | -81% | 9 | +121% | 0 | Engineering hiring burst |
| 2 | ohcnetwork Opensource Public Utility | Open Healthcare Network View signal profile → | Growth | APAC | 133 | -54% | 100 | +0% | 8 | Infrastructure buildout |
| 3 | bagisto A Free and Opensource laravel eCommerce framework built for all to build and scale your business. View signal profile → | Growth | APAC | 10 | -9% | 100 | +0% | 0 | Framework migration |
Sorted by commit velocity change (14-day window). Geography from GitHub org profiles. Last updated Q3 2025.
Get the free weekly engineering acceleration rankings, or unlock the full Dashboard for real-time tracking, sector filters, and founder contact data. Beta pricing: EUR 9.97 per month.
Want the signal while you browse Crunchbase? Install the free Chrome extension →
3 Asia-Pacific-based startups are tracked across 3 sectors in Q3 2025. opennem (Climate Tech) leads with 3 commits over a rolling 14-day window (-81% change). Average 14-day commit velocity across the region is 49 commits.
In Q3 2025, the top sectors by active startup count in Asia-Pacific are Climate Tech (1), Healthcare (1), E-commerce Infrastructure (1). The dominant engineering signal pattern across the region is "Engineering hiring burst".
Geography is derived from each startup's GitHub organization profile location field, supplemented by a curated enrichment database of known startup headquarters. Regions use broad classifications (Asia-Pacific, etc.) rather than city-level granularity to provide meaningful sample sizes.