This position is listed on behalf of a partner company, who manages all applications and next steps. Our partner is looking for an Applied AI Engineer II based in India.
This is a hands-on, production-focused ML engineering role where you will help power the infrastructure behind large-scale AI systems used by millions of users worldwide. You will sit at the intersection of machine learning research and production engineering, ensuring models move seamlessly from experimentation to reliable, scalable deployment. The role involves working closely with data scientists, ML researchers, and software engineers to build and maintain robust MLOps pipelines and infrastructure. You will contribute to the stability, performance, and scalability of ML systems running in production environments. A key part of your work will involve troubleshooting across the full stack—from infrastructure layers like Kubernetes and Docker to application-level ML services. You will also help shape CI/CD practices and improve monitoring, deployment, and evaluation workflows. This is an ideal opportunity for an engineer passionate about applied machine learning systems and building infrastructure that directly impacts real-world AI products.

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