Finding the best job has never been easier
Share
For two decades, we have pioneered visual computing, the art and science of computer graphics. With the invention of the GPU - the engine of modern visual computing - the field has expanded to encompass video games, movie production, product design, medical diagnosis and scientific research. Today, we stand at the beginning of the next era, the AI computing era, ignited by a new computing model, GPU deep learning.
What you will be doing:
We are designing and architecting a comprehensive platform that automates GPU asset provisioning, configuration, and lifecycle management across cloud providers.
Implementing monitoring and health management capabilities that enable industry leading reliability, availability, and scalability of GPU assets. You will be harnessing multiple data streams, ranging from GPU hardware diagnostics to cluster and network telemetry, we can predict system failures in order to optimize workload success rates.
Work with engineering teams across NVIDIA to ensure your software integrates seamlessly from the hardware all the way up to the AI training applications.
What we need to see:
Highly motivated with strong communication skills, you have the ability to work successfully with multi-functional teams, principles and architects and coordinate effectively across organizational boundaries and geographies.
5+ years of software engineering experience on large-scale production systems.
You possess a BS in ComputerScience/Engineering/Physics/Mathematicsor other comparable Degree or equivalent experience.
Expert level knowledge of a systems programming language (Go, Python) and a solid understanding of Data Structure and Algorithms.
Understanding of performance, security and reliability in complex distributed systems. Familiarity with system level architecture, data synchronization, fault tolerance and state management.
Ways to stand out from the crowd:
Proficiency in architecting and managing large-scale distributed systems, independent of cloud providers
Advanced hands-on experience and deep understanding of cluster management systems (kubernetes, Slurm, Bright Cluster Manager)
Proven operational excellence in designing and maintaining AI infrastructure
You will also be eligible for equity and .
These jobs might be a good fit