Full-Time

Senior CUDA Driver

Legate

Confirmed live in the last 24 hours

NVIDIA

NVIDIA

10,001+ employees

Designs GPUs and AI computing solutions

Automotive & Transportation
Enterprise Software
AI & Machine Learning
Gaming

Compensation Overview

$184k - $356.5kAnnually

+ Equity

Senior, Expert

Company Historically Provides H1B Sponsorship

Remote in USA

Candidates must be based in the US.

Category
Backend Engineering
Software Engineering
Required Skills
Python
CUDA
Git
Docker
C/C++
Linux/Unix

You match the following NVIDIA's candidate preferences

Employers are more likely to interview you if you match these preferences:

Degree
Experience
Requirements
  • Bachelor’s Degree in Systems/Software/Computer Engineering, CS or equivalent experience
  • 8+ years of relevant industry experience or equivalent academic experience after BS
  • Experience working across multiple highly-coupled projects (in Git or another VCS)
  • Experience working with C/C++ or Python projects
  • Familiarity with cmake, pip, conda or other tools for C/C++ or Python build and packaging
  • Familiarity with CI/CD systems including Github and Gitlab
  • Understanding of testing principles
  • Knowledge of release management practices
  • Strong analytical, debugging, and problem-solving skills
  • Familiarity with containerization technologies (e.g. Docker)
Responsibilities
  • Decomposing and modularizing build processes for reusability across multiple projects
  • Debugging cmake, pip, and conda issues encountered in CI and local builds
  • Working on scripting and infrastructure to manage dependencies across various environments and build systems
  • Bringing up builds and CI across platforms (x64/arm64) and OS’es (Linux/Windows/Mac) and other unreleased hardware and software
  • Working with engineering leadership to identify the support matrix and manage the scope of the build matrix
  • Creating and updating documentation and coordinating with stakeholders to scope and tackle cross-functional projects
  • Automating scheduled work for all of the above
Desired Qualifications
  • Experience working with or compiling for HPC/multi-node environment
  • Experience working with closed-source SW, confidential HW, or large code-bases (100k+ LoC)
  • Familiarity with binary library compilation, linking, and distribution
  • Exposure to development across multiple OS’es
  • You have implemented, shipped, and EoL’d a conda package

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). These products help developers, data scientists, and IT administrators perform complex tasks efficiently. NVIDIA differentiates itself from competitors by focusing on technological advancements and a diverse range of applications, including cloud-based services like NVIDIA CloudXR and NGC, which enhance experiences in AI, machine learning, and computer vision. The company's goal is to drive innovation in computing and provide effective solutions for a wide array of clients, from gamers to enterprises.

Company Stage

IPO

Total Funding

$19.5M

Headquarters

Santa Clara, California

Founded

1993

Growth & Insights
Headcount

6 month growth

0%

1 year growth

0%

2 year growth

-1%
Simplify Jobs

Simplify's Take

What believers are saying

  • Acquisition of VinBrain enhances NVIDIA's AI-driven healthcare solutions.
  • Investment in Nebius Group boosts NVIDIA's AI infrastructure capabilities.
  • Partnership with Serve Robotics aligns with NVIDIA's focus on robotics and AI applications.

What critics are saying

  • Increased competition from AI startups like xAI challenges NVIDIA's market position.
  • Serve Robotics' rapid expansion may lead to financial strain if market growth lags.
  • Integration challenges from VinBrain acquisition may affect NVIDIA's operational efficiency.

What makes NVIDIA unique

  • NVIDIA leads in AI and HPC solutions with cutting-edge GPU technology.
  • The Omniverse platform enhances NVIDIA's capabilities in industrial AI and digital twins.
  • NVIDIA's cloud services, like CloudXR, offer scalable solutions for AI and machine learning.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Company Equity

401(k) Company Match