NVIDIA · 16 hours ago
Senior System Software Engineer - Scientific Computing PaaS
Maximize your interview chances
Insider Connection @NVIDIA
Get 3x more responses when you reach out via email instead of LinkedIn.
Responsibilities
Design, Build, Deploy and Operate Cloud native microservices and APIs for scientific computing workload on DGX cloud.
Design services and take ownership of underlying cloud infrastructure for physics informed and data driven scientific workflows
Design novel algorithms and actively engaged with operations to increase overall system performance, it spans across the stack e.g. deep understanding of application code e.g DL Framework, Numerical Solvers, Microservices, APIs and Heterogeneous accelerated computing with CPUs and GPUs.
Design, Build, Deploy and Operate scalable I/O infrastructure for checkpointing, data loading, pre & post processing of data.
Optimize compute, storage and network architecture specific to physics & simulation driven applications.
Qualification
Find out how your skills align with this job's requirements. If anything seems off, you can easily click on the tags to select or unselect skills to reflect your actual expertise.
Required
BS/MS degree in Computer Science or related areas or equivalent experience.
10+ years experience working on building and operating distributed compute and data intensive platform as a service on cloud
Proven skill in a compiled language (Go, Rust, C++ or otherwise).
Strong foundational knowledge in Cloud Computing e.g “The Datacenter is a Computer” architecture, cloud security architecture, virtualization - CPU, Memory and IO, Resource pooling and elasticity.
Proven skills in Distributed Systems & Parallel Processing e.g System model of distributed computation e.g. topology abstraction, logical time. Synchronization and deadlock detection in distributed systems, Fault Tolerance and Failure Detection, Consensus and Agreement protocols, Parallel algorithms, shared memory and distributed memory architecture, message passing (MPI, NCCL), Cluster scalability and performance.
Hands on Debugging skills with Process, Threads , Deadlock and Synchronization, Scheduling, IPC, Memory management, File system and I/O structure.
Strong Evidence on Algorithmic Thinking & System Design skills e.g Recursion, Graph, Tree, Stack and Queue, Large scale loosely coupled distributed system design and operational experience.
Be self-motivated, have strong interpersonal skills, and be able to work independently with multiple teams with minimal direction.
Preferred
Have built , deployed and operated AI platforms on HPC clusters.
Have built, deployed and operated cloud native system including distributed storage, scheduling, and orchestration among compute, storage and network.
Configuring and troubleshooting hardware, operating systems, kernel, compilers for maximum performance.
Hands on debugging skills to optimize performance of compute, networking and I/O framework.
Extensively worked on third party source code for debugging and customization.
Benefits
Equity and benefits
Company
NVIDIA
NVIDIA is a computing platform company operating at the intersection of graphics, HPC, and AI.
H1B Sponsorship
NVIDIA has a track record of offering H1B sponsorships. Please note that this does not
guarantee sponsorship for this specific role. Below presents additional info for your
reference. (Data Powered by US Department of Labor)
Distribution of Different Job Fields Receiving Sponsorship
Represents job field similar to this job
Trends of Total Sponsorships
2023 (735)
2022 (892)
2021 (696)
2020 (534)
Funding
Current Stage
Public CompanyTotal Funding
$4.09BKey Investors
ARPA-EARK Investment ManagementSoftBank Vision Fund
2023-05-09Grant· $5M
2022-08-09Post Ipo Equity· $65M
2021-02-18Post Ipo Equity· undefined
Recent News
Company data provided by crunchbase