Principal Engineer - NVIDIA NIM
Job Description
NVIDIA is the platform upon which every new AI-powered application is built. We are seeking a Principal Engineer for NVIDIA Inference Microservices (NIMs). The right person for this role is technical, creative and driven to change the way NVIDIA NIMs are designed. Our NIM offerings are easy to use, provide the best performance and are tested in all deployment scenarios: in the cloud, on self hosted infrastructure and locally on all NVIDIA GPUs. You will apply your deep technical expertise in AI Inference and containerized software to design an efficient and scalable software architecture that works with inference solutions in a cloud native ecosystem through well defined APIs.
NVIDIA is building a new category of products by intersecting our prowess in deep learning and computing with industry-leading technology. You will harness groundbreaking inference acceleration from NVIDIA, and design inference microservices that span from multi-modal, to protein folding, to weather prediction. You will influence and drive advances in many NVIDIA teams and external partners to solve the hardest problems in AI inference. In this role, you will design and improve our NIM architecture using the most recent improvements in AI inference, improving and specifying the underlying libraries, optimization techniques, containerization details, and easy-to-use APIs that capture metrics and traceability.
What you'll be doing:
You are the engineer's engineer demonstrating good engineering practice and mentoring others to follow suit. You will be architect and build NIM software to support modularity and high performance using the latest GPU-enhanced technology.
Design scalable and maintainable microservices, define APIs for different inference uses cases, both local and distributed processing, while providing observability. You deliver software through rapid iterations and support many different teams to re-use scalable architecture and components.
This role requires collaboration with multiple AI model teams to build an efficient architecture that improves inference performance and re-usability. You will define metrics and drive improvements based on user feedback and industry expectations.
You are a great communicator! Through your partnership with our NIM leadership, you will deliver a cohesive and enticing architecture to our engineers that is reflected in customer satisfaction.
What we need to see:
Experience with large-language models or generative AI providing high performant inference and deep expertise in microservices, Pytorch, ONNX, REST, gRPC APIs, and multiple inference backends.
Technical leadership experience providing designs and building scalable microservices in an agile software development environment. You demonstrate the ability to lead multi-functional efforts, effectively working with multi-functional teams, principals and architects, across organizational boundaries.
You are a mentor and coach in all your interactions with all your colleagues.
BS or MS in Computer Science, Computer Engineering or related field (or equivalent experience).
12+ years of experience building, debugging, analyzing and optimizing runtime performance of distributed services.
Ways to stand out from the crowd:
Experience building inference systems.
Prior experience providing full-stack development that scales to large numbers of nodes.
Prior MLOps experience and experience using ML and AI technologies
CUDA experience and an ability to use GPU optimized libraries for improved performance
We are widely considered to be one of the technology world’s most desirable employers. We have some of the most forward-thinking and talented people in the world working for us. If you're creative and autonomous with a real passion for technology we want to hear from you.
The base salary range is 272,000 USD - 419,750 USD. Your base salary will be determined based on your location, experience, and the pay of employees in similar positions.You will also be eligible for equity and benefits. NVIDIA accepts applications on an ongoing basis.