genesis-ai

Member of Technical Staff, Inference (Bay Area, Remote)

Bay Area Presencial Publicado Abr 30, 2026
UbicaciónBay Area
ModalidadPresencial
Publicado30 de abril de 2026
Última verificación7 de mayo de 2026

What You’ll Do

  • Build low-latency inference pipelines for on-device deployment, enabling real-time next-token and diffusion-based control loops in robotics

  • Design and optimize distributed inference systems on GPU clusters, pushing throughput with large-batch serving and efficient resource utilization

  • Implement efficient low-level code (CUDA, Triton, custom kernels) and integrate it seamlessly into high-level frameworks

  • Optimize workloads for both throughput (batching, scheduling, quantization) and latency (caching, memory management, graph compilation)

  • Develop monitoring and debugging tools to guarantee reliability, determinism, and rapid diagnosis of regressions across both stacks

What You’ll Bring

  • Deep experience in distributed systems, ML infrastructure, or high-performance serving (8+ years)

  • Production-grade expertise in Python, with strong background in systems languages (C++/Rust/Go)

  • Low-level performance mastery: CUDA, Triton, kernel optimization, quantization, memory and compute scheduling

  • Proven track record scaling inference workloads in both throughput-oriented cluster environments and latency-critical on-device deployments

  • System-level mindset with a history of tuning hardware–software interactions for maximum efficiency, throughput, and responsiveness

Antes de salir

Deja tu email para seguir esta vacante y recibir alertas relevantes. Si prefieres, también puedes continuar sin compartirlo.