Senior Software Engineer

Microsoft Microsoft · Big Tech · Bengaluru, KA, IN · Software Engineering

The AI Core Infrastructure team is responsible for building and managing large-scale GPU management infrastructure and inference/training platforms for Microsoft's AI workloads. This Senior Software Engineer role focuses on fleet management, designing and developing core AI infrastructure services, and managing GPU clusters for LLM training and inference.

What you'd actually do

  1. Architect, design, and develop core AI Infrastructure services developed in Go, Rust, Python, C++, and C# deployed on large-scale Kubernetes clusters to support state-of-the-art LLM training and inference.
  2. Design, build, and manage large-scale GPU clusters to support LLM training, and inference workloads.
  3. Enhance systems and applications to deliver high stability, low latency, strong security, and maintainability in large-scale complex training environments in Azure and in partner clouds.
  4. Provide operational support, technical leadership, and vision while contributing to the deployment, monitoring, and continuous improvement of engineering systems and practices.
  5. Support development and troubleshooting from the frontline, resolving complex issues impacting large-scale services.

Skills

Required

  • Bachelor’s or master’s degree in computer science or a related field.
  • 3+ years designing, developing, and shipping high quality software.
  • 2+ years of experience with distributed systems and cloud-based infrastructure.
  • 1+ year of experience with DevOps practices (CI/CD, automated testing, deployment, etc.).

Nice to have

  • 6+ years of software development experience in C#, C++, Python, or similar languages.
  • 3+ years of experience with containerization tools (e.g., Docker, Kubernetes).
  • Knowledge and hands on experience with production ML systems, large-scale training infrastructure, NCCL, CUDA libraries and tools.

What the JD emphasized

  • large-scale
  • LLM training and inference
  • large-scale GPU clusters
  • state-of-the-art LLM training and inference
  • large-scale complex training environments

Other signals

  • building and managing large-scale GPU clusters
  • LLM training and inference workloads
  • state-of-the-art LLM training and inference