Full-Time

Research Scientist New Grad

Generative AI for Physical AI

NVIDIA

NVIDIA

10,001+ employees

Designs GPUs and AI HPC platforms

Compensation Overview

$168k - $264.5k/yr

+ Equity

Company Historically Provides H1B Sponsorship

Santa Clara, CA, USA

In Person

Category
AI & Machine Learning (1)
Required Skills
LLM
Pytorch
Data Analysis
Reinforcement Learning
Requirements
  • PhD in Computer Science, Computer Engineering, Electrical Engineering, or related field (or equivalent experience).
  • Deep expertise in PyTorch and related libraries for Generative AI and Physical AI development
  • Strong foundation in diffusion, vision language and reasoning models and their applications
  • Proven experience with reinforcement learning algorithms and implementations
  • Robust knowledge of physics simulation and its integration with AI systems
  • Demonstrated proficiency in 3D generative models and their applications
Responsibilities
  • Pioneer revolutionary generative AI algorithms for physical AI applications, with a focus on advanced video generative models and video-language models
  • Architect and implement sophisticated data processing pipelines that produce premium-quality training data for Generative AI and Physical AI systems
  • Design and develop cutting-edge physics simulation algorithms that enhance Physical AI training
  • Scale and optimize large-scale training systems to efficiently harness the power of 20,000+ GPUs for training foundation models
  • Author influential research papers to share your groundbreaking discoveries with the global AI community
  • Drive innovation through close collaboration with research teams, diverse internal product groups, and external researchers
  • Build lasting impact by facilitating technology transfer and contributing to open-source initiatives
Desired Qualifications
  • Publications or contributions to major AI conferences (ICLR, NeurIPS, ICML, CVPR, ECCV, SIGGRAPH, ICCV, etc.)
  • Experience with large-scale distributed training systems
  • Background in robotics or physical systems
  • Open-source contributions to prominent AI projects
  • History of successful research-to-product transitions

NVIDIA designs and manufactures graphics processing units (GPUs) and computing platforms used for gaming, data centers, and artificial intelligence. These products work by using parallel processing to handle complex mathematical calculations much faster than standard computer processors, supported by a software ecosystem that allows developers to build and run AI models. Unlike competitors that may focus solely on hardware, NVIDIA integrates its chips with specialized software and cloud services to create a complete environment for high-performance tasks. The company’s goal is to provide the underlying technology necessary to power advanced computing, from realistic video game graphics to autonomous vehicles and large-scale data analysis.

Company Size

10,001+

Company Stage

IPO

Headquarters

Santa Clara, California

Founded

1993

Your Connections

People at NVIDIA who can refer or advise you

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Simplify's Take

What believers are saying

  • Generative AI capex by big tech will exceed $1 trillion by 2027, driving sustained demand for NVIDIA data center GPUs.
  • NVIDIA's first-quarter revenue jumped 85% to $81.6 billion, fueled by data center dominance and agentic AI expansion.
  • The Vera Rubin Platform for agentic AI opens new revenue streams in autonomous systems and enterprise AI applications.

What critics are saying

  • Alphabet, Meta, and OpenAI custom chips will erode 45% of the AI chip market by 2028, destroying NVIDIA pricing power.
  • US-China export restrictions on H2O inventory caused a $4.5B Q1 charge and $8B Q2 revenue hit, blocking key demand sources.
  • Amazon, Microsoft, and Google are deploying $200B+ AI capex with in-house silicon, reducing long-term dependency on NVIDIA GPUs.

What makes NVIDIA unique

  • NVIDIA uniquely integrates BioNeMo, Nemotron, and NemoClaw to deliver pharma-grade AI agents for life sciences workflows.
  • Its BioNeMo toolkit compresses virtual screening timelines from days to minutes, enabling rapid drug design and genomics analysis.
  • Over 50 companies including Anthropic and OpenAI adopt NVIDIA's platform, signaling unmatched early traction in biotech and pharma.

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Benefits

Company Equity

401(k) Company Match

Growth & Insights and Company News

Headcount

6 month growth

1%

1 year growth

-1%

2 year growth

-1%
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Jun 19th, 2026
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