Senior Responsible AI Architect

NVIDIA is the world leader in accelerated computing, pioneering solutions to tackle challenges no one else can solve. Their work in AI and digital twins is transforming the world's largest industries and profoundly impacting society.
$220,000 - $339,250
Machine Learning
Staff Software Engineer
In-Person
5,000+ Employees
12+ years of experience
AI · Automotive · Robotics

Description For Senior Responsible AI Architect

NVIDIA is seeking a Senior Responsible AI Architect to join their Infrastructure, Planning and Processes organization. This role will have a cross-organizational impact by defining, enhancing, championing, rolling out, and supporting a Responsible AI focused Machine Learning (ML) Development Life Cycle (MLDLC) process and toolchain. This process will be applied by thousands of engineers across all ML and Deep Learning projects at NVIDIA, including Large Language Models, Computer Vision, Speech, Automotive, Robotics, and Biology.

Key responsibilities include:

  • Crafting and driving adoption of an efficient MLDLC with emphasis on Responsible AI practices
  • Defining and enhancing NVIDIA's AI development process and toolchain
  • Engaging with technical leads and managers to improve the MLDLC and toolchain
  • Developing roadmaps for non-discriminatory, transparent, explainable, safe, robust, and secure AI models and software
  • Influencing project teams to embrace Responsible AI methods
  • Developing and delivering training on MLDLC and tools
  • Driving compliance and defining key performance metrics

The ideal candidate will have:

  • 5+ years of recent experience as an ML engineer or data science engineer, with 12+ years of overall professional experience
  • Demonstrated ability in driving engineering life cycle processes and releasing commercial products
  • Experience in evaluating and driving adoption of new life cycle process workflows
  • A Master's or PhD in Computer Science, Electrical Engineering, or a related field
  • Strong knowledge of frameworks like TensorFlow and PyTorch

NVIDIA offers competitive salaries and comprehensive benefits. The base salary range for this position is $220,000 - $339,250 USD, with additional equity and benefits available. NVIDIA is committed to fostering a diverse work environment and is an equal opportunity employer.

Last updated a month ago

Responsibilities For Senior Responsible AI Architect

  • Define and enhance NVIDIA's AI development process and toolchain
  • Engage with technical leads and managers to improve MLDLC
  • Prepare roadmaps for Responsible AI toolchain
  • Develop and deliver training on MLDLC and tools
  • Drive compliance of MLDLC across teams

Requirements For Senior Responsible AI Architect

Python
  • 5+ years recent experience as an ML engineer or data science engineer
  • 12+ years overall professional experience
  • Experience in driving engineering life cycle processes
  • Master's or PhD in Computer Science, Electrical Engineering, or related field
  • Strong knowledge of TensorFlow and PyTorch

Benefits For Senior Responsible AI Architect

Equity
  • Equity
  • Comprehensive benefits package

Interested in this job?

Jobs Related To NVIDIA Senior Responsible AI Architect

Manager, Deep Learning Algorithms

Lead engineering activities for Deep Learning models at NVIDIA, managing teams and projects in AI and accelerated computing.

Manager, Deep Learning Algorithms

NVIDIA seeks a Manager of Deep Learning Algorithms to lead engineering activities for productizing DL models and mentor a world-class team.

Senior Manager, Robotics Learning Platform

Senior Manager role at NVIDIA for Robotics Learning Platform, leading development of next-gen features and team management.

Software Manager, Deep Learning Frameworks

Lead a team developing core deep learning system software and algorithms at NVIDIA, the world leader in accelerated computing.

Senior AI Solutions Architect - Engineering

Lead AI and ML solutions for NVIDIA's System Design domain, developing cutting-edge algorithms to enhance EDA tools and workflows.