Senior DGX Cloud AI Infrastructure Software Engineer
Indexed description
JR1998048
Job Category
Engineering
Time Type
Full time
Joining NVIDIA's DGX Cloud Team means contributing to the infrastructure that powers our innovative AI research. This team focuses on optimizing efficiency and resiliency of AI workloads, as well as developing scalable AI and Data infrastructure tools and services. Our objective is to deliver a stable, scalable environment for AI researchers, providing them with the necessary resources and scale to foster innovation. We are seeking an AI infrastructure software engineer to join our team. You'll be instrumental in designing, building, and maintaining AI infrastructure that enable large-scale AI training and inferencing. The responsibilities include implementing software and systems engineering practices to ensure high efficiency and availability of AI systems.
As a senior DGX Cloud AI Infrastructure software engineer at NVIDIA, you will have the opportunity to work on innovative technologies that power the future of AI and data science, and be part of a dynamic and supportive team that values learning and growth. The role provides the autonomy to work on meaningful projects with the support and mentorship needed to succeed, and contributes to a culture of blameless postmortems, iterative improvement, and risk-taking. If you are seeking an exciting and rewarding career that makes a difference, we invite you to apply now!
What You’ll Be Doing
- Develop infrastructure software and tools for large-scale AI, LLM, and GenAI infrastructure.
- Develop and optimize tools to improve infrastructure efficiency and resiliency.
- Root cause and analyze and triage failures from the application level to the hardware level
- Enhance infrastructure and products underpinning NVIDIA's AI platforms.
- Co-design and implement APIs for integration with NVIDIA's resiliency stacks.
- Define meaningful and actionable reliability metrics to track and improve system and service reliability.
- Skilled in problem-solving, root cause analysis, and optimization.
- Minimum of 8+ years of experience in developing software infrastructure for large scale AI systems.
- Bachelor's degree or higher in Computer Science or a related technical field (or equivalent experience).
- Strong debugging skills and experience in analyzing and triaging AI applications from the application level to the hardware level.
- Proven track record in building and scaling large-scale distributed systems.
- Experience with AI training and inferencing and data infrastructure services.
- Familiar in operating large-scale observability platforms for monitoring and logging (e.g., ELK, Prometheus, Loki).
- Proficiency in programming languages such as Python, C/C++, script languages
- Excellent communication and collaboration skills, and a culture of diversity, intellectual curiosity, problem solving, and openness are essential.
- Experience in working with the large scale AI cluster
- Strong understanding of NVIDIA GPUs, network technologies (RDMA, IB, NCCL)
- Good understanding on DL frameworks internal PyTorch, TensorFlow, JAX, and Ray
- Experience and root cause analysis of failures and datacenter scale
- Strong background in software design and development.
Create a free Caio profile to unlock the full index and keep your job-search signal for future recommendations.
Unlock free search