Generative AI Inference Engineer
Stability AI · United States
Generative AI Inference Engineer <Remote> About the role: We are seeking passionate Machine Learning Engineers to join our Inference team, focusing on the creative applications of generative AI models. The ideal candidate will have substantial experience developing and running inference for multi-modal models. A deep understanding of diffusion model architectures and familiarity with workflow tools like ComfyUI are a big plus. You will be expected to leverage and push the boundaries of state-of-the-art inference optimization techniques for multi-modal generative models. This role offers the opportunity to work alongside top researchers and engineers, utilizing cutting-edge high-performance computing resources to make a significant impact in the rapidly evolving field of generative AI. Responsibilities: Lead efforts to drive the design, development of customer-facing multi modal ML inference systems. Work with the Platform and Inference teams on building inference systems for the next generation of models, where you will work on areas such as optimization, model tuning and deployment. Partner with leading cloud providers to deliver hosted Stability AI inference solutions. Be a strategic thought partner for leaders across the organization on driving business impact through machine learning Be part of the team to bring new Stability models and pipelines into existence Prototype and productionize inference platform improvements and new features Qualifications: 7+ years working on productionizing machine learning systems, including inference pipeline development Expert level knowledge on writing and running python services at scale 5+ years working on python scientific stack, pyTorch and at least one high-performance inference framework (e.g. Triton and TensorRT) Deep understanding of Diffusion Architecture Experience profiling and optimizing deep neural networks on Nvidia GPUs, using profiling tools such as NVIDIA Nsight Experience wi