AI-powered global talent mobility platform for work and study abroad
TerraTern operates an end-to-end immigration and relocation platform spanning visa planning, job matching, and post-landing support across nursing, IT, engineering, and skilled trades. The tech stack is office-productivity and content-creation heavy (Excel, Notion, video editing suites, ChatGPT, Ahrefs) with workflow automation (Zapier, n8n, Make) — a pattern typical of human-in-the-loop services that rely on structured internal processes rather than proprietary infrastructure. Active hiring across sales, marketing, and ops with a skew toward junior talent suggests rapid scaling of go-to-market and operational functions.
Notable leadership hires: Operations Head, Head Academics
TerraTern is a global talent mobility platform that guides professionals through visa applications, job placement, and relocation to destinations including Canada, Australia, and Germany. The company operates across three primary service lines: work visa and PR pathways for skilled professionals, study abroad advisory, and post-landing support including language training and job search assistance. Founded on a model of end-to-end accountability, TerraTern combines immigration experts with AI-powered tools to reduce friction and timelines. The company reports over 10,000 successful relocations and is headquartered in Bangalore with active hiring in India and Germany.
TerraTern uses Google Workspace, Notion, Figma, and Jira for core operations. For marketing and outreach: Ahrefs, SEMrush, Google Analytics, and LinkedIn. For automation: Zapier, n8n, and Make. AI assistance via ChatGPT and GitHub Copilot. Video production uses Adobe Premiere Pro and DaVinci Resolve.
Active projects include B2C growth initiatives, GTM strategy, new product launches, building a video function, process optimization, and internal fundraising infrastructure. Current pain points center on lead generation, visa process risk mitigation, and reducing turnaround times.
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