Member of Technical Staff - Inference Serving
As a Member of Technical Staff - Inference Serving, you will build a high-performance, multi-tenant serving stack for heterogeneous hardware, optimizing inference frameworks for LLM, Video, and Multimodal workloads. This role involves designing scalable architectures and managing the end-to-end performance profile of the model lifecycle, focusing on low-latency and high-throughput.
ai& is a new global AI technology company dedicated to meeting the world's growing demand for AI. Our vision is twofold: to serve as a premier AI lab specializing in localization, and to act as a global infrastructure and compute provider. We are building a unified, optimized global platform that integrates next-generation data centers and infrastructure, heterogeneous compute serving, and advanced model services. We believe that the most effective way to build and scale AI is to own the stack from top to bottom.
At ai&, we empower small teams with the autonomy needed to tackle significant challenges. Our approach is to deconstruct large problems into manageable components and solve complex issues collaboratively. We seek highly motivated, mission-driven individuals who demonstrate strong personal agency. We value curiosity as the foundation of talent, and we are looking for people eager to develop alongside our evolving technology and expanding business.
As an inference & serving engineer, your objective is to build a high-performance, multi-tenant serving stack that squeezes maximum utilization out of heterogeneous hardware. This involves navigating the trade-offs between various state-of-the-art inference frameworks and engines, selecting and optimizing the right runtime for the right workload. The scope of work is not limited to Large Language Models; it extends to the frontier of Generative AI, including high-throughput Video generation and complex Multimodal systems where memory pressure and compute requirements are significantly more demanding.
Beyond just deploying models at scale, this role is responsible for building a robust system that bridges the gap between boutique, high-performance clusters and massive, multi-node deployments as the company grows. This requires a deep understanding of the "Inference Triangle"—constantly tuning the stack to find the optimal equilibrium between low-latency (TTFT/ITL), high-throughput, and inference quality (Precision/Quantization). The ideal candidate is a hands-on engineer who views the entire GPU fleet as a single, programmable compute fabric and is eager to get their hands dirty at every level of the stack.
Posted June 12, 2026