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MTS, Inference

On-site
Genesis RoboticsBay Area6 hours agoWebsite
Fresh
Full-time
Engineering & Research

Compensation

Salary undisclosed
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Description

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

Stack

PythonC++GPUDistributed SystemsMachine LearningRustCUDATritonRoboticsQuantization
Posted
Unknown
Last seen
Jul 4, 2026
First seen
Jul 4, 2026

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