
Aktiviere Job-Benachrichtigungen per E-Mail!
Erstelle in nur wenigen Minuten einen maßgeschneiderten Lebenslauf
Überzeuge Recruiter und verdiene mehr Geld. Mehr erfahren
A leading software company is seeking an AI Lead for Kotlin to guide its integration with AI tools. You will lead the AI Exploration and Evaluation Group, prioritize exploration hypotheses, and engage with external partners. The role requires strong leadership in both backend and frontend development with a focus on CI/CD infrastructure. Ideal candidates are hands-on leaders who are passionate about programming and AI. This position is located in Munich, Germany.
Amsterdam, Netherlands; Berlin, Germany; Limassol, Cyprus; London, United Kingdom; Munich, Germany; Paphos, Cyprus; Prague, Czech Republic; Remote, Germany; Warsaw, Poland; Yerevan, Armenia
At Kotlin, we have always wanted to create a pragmatic language that makes programming fun and productive. With the appearance of LLMs and coding agents, we have new ways to achieve our vision, and that means that the AI tools of today and tomorrow should play nicely with Kotlin.
We see a huge opportunity to win over programming ecosystems by leveraging AI, as Kotlin is uniquely positioned to be the tool of choice for AI-generated apps. It is modern, type-safe, optimized for readability, and most importantly, multiplatform – targeting Android, iOS, web, desktop, and even backend use cases.
We are looking for a leader who will guide Kotlin on its journey to becoming the language that plays best with AI tools – where generated code can be trusted, adds value, and avoids technical debt.
This role is about more than building the tools themselves – it’s about inspiring the ecosystem to evolve. You will lead efforts to strengthen Kotlin’s presence in AI-driven workflows, ensuring it remains the language of choice for modern multiplatform and multitarget development.
There are many challenges on the way. We’ll count on you to ensure that frontier models generate idiomatic Kotlin, maintain visibility in benchmarks, increase dataset coverage and the volume of Kotlin code in datasets, integrate with agentic tools, build MCPs, and evaluate how new language features affect code generation quality.
#LI-DNI