Generative AI Annotation Operations Engineer
Sustainable TalentFull Time
Mid-level (3 to 4 years), Senior (5 to 8 years)
Key technologies and capabilities for this role
Common questions about this position
A minimum of 6 years of experience crafting and operating large scale compute infrastructure is required, along with a Bachelor’s degree in Computer Science, Electrical Engineering or related field or equivalent experience.
Key skills include experience with AI/HPC job schedulers like Slurm, K8s or LSF; proficiency in Linux (Centos/RHEL, Ubuntu); container technologies like Enroot, Docker, Podman; scripting in Python or Bash; and a compiled language like Golang, Rust, C, or C++; plus AI/HPC workflows using MPI and NCCL.
This information is not specified in the job description.
This information is not specified in the job description.
Candidates stand out with experience in NVIDIA GPUs, CUDA Programming, NCCL, MLPerf benchmarking; knowledge of Machine Learning and Deep Learning concepts; and familiarity with High-Speed Networking for HPC.
Designs GPUs and AI computing solutions
NVIDIA designs and manufactures graphics processing units (GPUs) and system on a chip units (SoCs) for various markets, including gaming, professional visualization, data centers, and automotive. Their products include GPUs tailored for gaming and professional use, as well as platforms for artificial intelligence (AI) and high-performance computing (HPC) that cater to developers, data scientists, and IT administrators. NVIDIA generates revenue through the sale of hardware, software solutions, and cloud-based services, such as NVIDIA CloudXR and NGC, which enhance experiences in AI, machine learning, and computer vision. What sets NVIDIA apart from competitors is its strong focus on research and development, allowing it to maintain a leadership position in a competitive market. The company's goal is to drive innovation and provide advanced solutions that meet the needs of a diverse clientele, including gamers, researchers, and enterprises.