How do you make our customers happy? By ideating and realizing the infrastructure that turns our ambitious AI goals into AI reality. As an AI Platform Engineer, youll design and optimize the platforms that enable data scientists and AI users across bol to experiment, iterate, and deploy AI solutions with confidence. When teams can move from idea to production without friction, innovation accelerates. And that directly translates into smarter recommendations, faster answers, and most importantly better experiences for 2,900 colleagues, 46,500 partners, and 13.7 million customers. The biggest challenge Building AI infrastructure thats both empowering and compliant. Youre not just spinning up cloud resources, youre creating the foundation for how (y)our colleagues will interact with AI. How do you design self-service tooling thats flexible enough for experimentation yet robust enough for production? How do you embed compliance and governance without slowing teams down? To maximize your impact, youll need to empower us to embrace emerging AI capabilities without jeopardizing enterprise-grade reliability.What You'll Do As An AI EngineerYoull join the newly formed AI Infra Team, positioned at the intersection of Data Infrastructure, Platform Engineering, and Data Science. Working closely with data engineers, data scientists, and platform colleagues, youll integrate modern Google Cloud AI tools think Vertex AI, Agentspace, and NotebookLM into bols extensive data landscape. Your ambition: to make AI experimentation frictionless, scalable, and compliant. Youll contribute to MLOps best practices, automate pipelines, and help define the golden path that guides teams effortlessly from initial prototypes to scalable production solutions. In a team thats still very much taking shape, youll have real and tangible influence over the technical direction and ways of working. Short version: Design and develop golden paths for data scientists and AI practitioners within bol's infrastructure Experience with Vertex AI, Agentspace, NotebookLM, MCP servers Build and automate data and model pipelines using Python, GCP (BigQuery, Cloud Storage), and CI/CD tooling Contribute to MLOps standards: model deployment, monitoring, lifecycle management, and governance Collaborate with Data Infra, Platform Engineering, and Security teams to ensure compliant AI workloads Improve the developer experience and reliability across the AI/ML ecosystem Participate in design reviews, RFCs, and architecture discussions Why you can make a difference You combine AI or ML engineering experience with a solid software engineering foundation. Youve worked hands-on with cloud platforms (preferably GCP) before, and understand the complexity and pitfalls of building systems that others depend on. Familiarity with NotebookLM, Agentspace, or similar collaborative AI environments is obviously a plus. You have a deep understanding of MLOps principles: reproducibility, observability, continuous training, and governance, know your way around Python, and youre comfortable with containerization and Kubernetes. Beyond the technical, you truly care about user impact, enjoy collaborating with cross-functional teams, and have a knack for explaining technical concepts lucidly.3 reasons why this is (not) for you Switch to find out - Model purist You can obsess over perfecting an algorithm for days. Ensuring users get the most out of it, is much less your cup of Darjeeling. - Your desk is a silo You excel as a soloist and keep a polite distance from data scientists, security experts, and platform engineers - Certainty preferred If something isnt set in stone yet, youll wait for the ambiguity to dissipate + Foundation fanatic You find satisfaction in creating platforms that empower others to succeed + Curious pragmatist You stay current with AI developments but always ask: "How does this solve a real problem?" + Early-stage energizer Joining a team that's still forming, with real ownership over its direction and standards? Exciting! Where you'll work Youll join the AI Infra Team. Were a newly formed group focused on enabling safe, scalable, and efficient AI adoption across bol. The team sits at the intersection of Data Infrastructure, Platform Engineering, and Data Science, and is responsible for building foundational AI capabilities that empower teams company-wide. The environment combines technical depth with a platform mindset: reliability, developer experience, and governance matter as much as cutting-edge tooling and elegant architectures. Youll be joining early, with genuine ownership and influence over the technical direction and long-term AI infrastructure roadmap. If you have the key to a golden path, we have a red carpet! We take pride in our B Corp certification and strive for continuous improvement every day. Our annual bonus is tied to sustainability goals, and we are committed to equality and equal opportunities for all.