Senior AI Network Systems Engineer

Microsoft Microsoft · Big Tech · Redmond, WA +4 · Hardware Engineering

The Senior AI Network Systems Engineer will drive the architecture, integration, validation, optimization, and deployment of large-scale AI networking infrastructure, focusing on Layer 3 and Layer 4 networking, RDMA, TCP/UDP, network performance, and congestion management for AI training and inference clusters.

What you'd actually do

  1. Define and develop networking requirements for large-scale AI training and inference clusters.
  2. Lead design and validation of IP-based AI networking solutions spanning TCP/IP, UDP, routing, congestion management, flow control, QoS, and traffic engineering.
  3. Design, validate, and optimize RDMA-based networking solutions for AI clusters.
  4. Develop and execute networking validation strategies covering functionality, performance, scale, interoperability, resiliency, and reliability.
  5. Build and improve network observability, diagnostics, telemetry, and monitoring solutions.

Skills

Required

  • Master's Degree in Electrical Engineering, Computer Engineering, Mechanical Engineering, or related field AND 3+ years technical engineering experience OR Bachelor's Degree in Electrical Engineering, Computer Engineering, Mechanical Engineering, or related field AND 5+ years technical engineering experience OR equivalent experience.
  • 5+ years of experience developing or validating networking for accelerator based systems.
  • 5+ years of experience designing, integrating, validating, or troubleshooting Ethernet-based networking infrastructure, including Network switches.
  • 5+ years of experience supporting AI, HPC, cloud, or large-scale data center infrastructure deployments.
  • Experience with networking, silicon, firmware, system software, validation, and Azure infrastructure teams.
  • Experience with Layer 3 and Layer 4 networking technologies.
  • Experience with RDMA-based fabrics.
  • Experience with TCP/UDP transport behavior.
  • Experience with network performance and congestion management.
  • Experience with scale-out AI networking environments.
  • Experience with IP-based networking solutions.
  • Experience with routing, flow control, QoS, and traffic engineering.
  • Experience with packet-level analysis and protocol debugging.
  • Experience with network switch, NIC, RDMA, routing, congestion control, and protocol-related issues.
  • Experience with network observability, diagnostics, telemetry, and monitoring solutions.
  • Experience with tools and automation for network validation, performance analysis, and failure detection.

Nice to have

  • Experience with RDMA technologies, AI fabrics, and distributed training environments.
  • Understanding of RoCE, congestion control

What the JD emphasized

  • 5+ years of experience developing or validating networking for accelerator based systems.
  • 5+ years of experience designing, integrating, validating, or troubleshooting Ethernet-based networking infrastructure, including Network switches.
  • 5+ years of experience supporting AI, HPC, cloud, or large-scale data center infrastructure deployments.

Other signals

  • AI training and inference clusters
  • large-scale AI networking infrastructure
  • RDMA-based fabrics
  • network performance
  • congestion management