About the job
You will work at the intersection of distributed systems, networking, and AI infrastructure, driving architecture, design, implementation, and performance optimization across software components that support thousands of GPUs and high-bandwidth network fabrics. The ideal candidate combines deep expertise in RDMA and distributed communication systems with a strong track record of delivering production-grade infrastructure at scale. As a technical leader, you will influence architecture across multiple teams, mentor senior engineers, and help shape the roadmap for Oracle's AI networking platform.
Responsibilities
Architect and develop high-performance networking software for large-scale AI and HPC environments.
Design and implement RDMA-based services and infrastructure that enable low-latency, high-throughput communication across GPU clusters.
Drive the evolution of collective communication frameworks and transport layers used by distributed AI training and inference workloads.
Develop congestion management, traffic engineering, load balancing, and resiliency mechanisms for large-scale RDMA networks.
Optimize end-to-end communication performance across networking, GPU, and software stacks.
Collaborate with hardware, networking, distributed systems, and AI platform teams to deliver scalable infrastructure solutions.
Lead performance analysis, bottleneck identification, and system-wide optimization efforts.
Define architecture and technical direction for networking platforms supporting next-generation AI workloads.
Build observability, monitoring, telemetry, and debugging capabilities for large-scale distributed systems.
Drive reliability, fault tolerance, and recovery mechanisms for mission-critical AI infrastructure.
Mentor engineers across the organization and provide technical leadership on complex cross-functional initiatives.
Influence engineering best practices, architecture reviews, and long-term technology strategy.
Qualifications
Minimum
Bachelor's degree in Computer Science, Computer Engineering, Electrical Engineering, or related field; advanced degree preferred.
10+ years of software engineering experience building distributed systems, networking software, or infrastructure platforms.
Deep expertise in RDMA technologies including RoCE, InfiniBand, or equivalent high-performance networking technologies.
Strong experience developing networking software in C/C++.
Experience designing and optimizing distributed communication frameworks and transport protocols.
Solid understanding of operating systems, networking stacks, memory management, and performance optimization.
Experience troubleshooting and optimizing large-scale production systems.
Demonstrated technical leadership driving architecture and execution across multiple teams
Preferred
Experience with collective communication libraries such as NCCL, RCCL, MPI, UCC, UCX, XCCL, or similar technologies.
Experience building AI infrastructure supporting distributed training and inference workloads.
Expertise in GPU networking technologies including GPUDirect RDMA and GPU-aware communication stacks.
Experience with congestion management, adaptive routing, traffic shaping, and network resiliency mechanisms.
Familiarity with large-scale GPU clusters consisting of hundreds to thousands of accelerators.
Experience developing services and platforms operating directly over RDMA transports.
Knowledge of distributed training frameworks such as PyTorch, DeepSpeed, Megatron-LM, TensorFlow, or JAX.
Experience with cloud infrastructure and large-scale production service deployment.
Familiarity with Kubernetes, containerized environments, and cloud-native infrastructure.
Experience leading architecture for highly available and performance-critical systems.