Used Tools & Technologies
GenAIRequired Skills & Competences
Tag name is followed by "@" symbol and proficiency level value.
About proficiency levels:
- 1-2 — basic awareness. Minimal hands-on experience, and a rudimentary understanding of the technology's purpose;
- 3-6 — daily use. Comfortable and regular usage, capable of handling common tasks and challenges related to the technology;
- 7-9 — you are an expert, you can teach others, you know all the pitfalls and tricks;
- 10 — exceptional knowledge, comprehensive understanding, and adeptness in all aspects of the technology, including advanced problem-solving. Think twice before claiming or demanding such level.
Marketing @ 3
Python @ 3
Machine Learning @ 3
TensorFlow @ 3
Communication @ 6
Product Management @ 3
LLM @ 3
PyTorch @ 3
CUDA @ 3
Codex @ 2
Claude Code @ 2
Deep Learning @ 3
Generative AI @ 3
AI @ 3
Reinforcement Learning @ 3
Profiling @ 3
Agentic AI @ 3
RAG @ 3
TensorRT @ 3
LangChain @ 3
- 1-2 — basic awareness. Minimal hands-on experience, and a rudimentary understanding of the technology's purpose;
- 3-6 — daily use. Comfortable and regular usage, capable of handling common tasks and challenges related to the technology;
- 7-9 — you are an expert, you can teach others, you know all the pitfalls and tricks;
- 10 — exceptional knowledge, comprehensive understanding, and adeptness in all aspects of the technology, including advanced problem-solving. Think twice before claiming or demanding such level.
Details
NVIDIA's Deep Learning Product Research Engineering (PRE) team sits at the intersection of research, product engineering, and go-to-market. PRE reduces uncertainty about what will make products succeed by delivering working cutting-edge prototypes, product intelligence, and code-backed guidance that shape NVIDIA products and how customers adopt them.
Responsibilities
- Lead product research for generative AI by evaluating emerging models, agent technology, reinforcement learning, and evaluation methods, then assessing what they mean for NVIDIA products.
- Build proof-of-concept applications, benchmarks, and reference sample code that validate new capabilities and demonstrate product value.
- Convert customer, developer, benchmark, usage, and field signals into structured product intelligence (adoption trends, friction points, issue reproductions, roadmap recommendations).
- Develop enterprise-ready enablement assets such as reference architectures, integration playbooks, performance tuning recipes, and demo-to-production workflows for Nemotron, NeMo, NIM, and related NVIDIA AI software.
- Partner with research, engineering, product management, technical marketing, field teams, and customers to turn insights into feature requests, launch inputs, positioning, and usability improvements.
- Advance internal LLM expertise and tooling through reusable evaluation harnesses, profiling utilities, agentic workflows, and practical analysis of model behavior.
- Produce technical assets from hands-on research and engineering work: code examples, technical write-ups, white papers, demos, talks, and patents where appropriate.
- Stay current with advances in model training, post-training, inference, agentic systems, evaluation, deployment, safety, and the broader AI developer ecosystem.
Requirements
- Master’s degree in Computer Science, Computer Engineering, Electrical Engineering, Machine Learning, Artificial Intelligence, or a related technical field, or equivalent experience.
- 5+ years of proven experience in software engineering, machine learning engineering, AI engineering, solutions architecture, applied research, or a similar technical role.
- Hands-on experience with machine learning, deep learning, or agentic AI, including building, training, fine-tuning, evaluating, deploying, or optimizing models and AI applications.
- Practical experience with generative AI systems, including large language models, retrieval-augmented generation, agentic workflows, model evaluation, or AI application development.
- Experience with Python and modern deep learning frameworks and libraries such as PyTorch, Hugging Face Transformers, LangChain, LlamaIndex, TensorFlow, or similar tools.
- Familiarity with modern AI-assisted development tools and coding agents such as Codex, Claude Code, Cursor, or similar systems.
- Ability to create clear, accurate, technically rigorous, and compelling content for developers (tutorials, blogs, sample code, white papers, benchmarks, demos).
- Strong communication and presentation skills, with the ability to explain complex technical topics to both expert and non-expert audiences.
Ways to stand out
- PhD in Computer Science, Engineering, Machine Learning, Artificial Intelligence, or a related field.
- 3+ years of hands-on experience specifically with machine learning, deep learning, generative AI, large language models, multimodal models, reinforcement learning, model optimization, or agentic applications.
- Experience designing or evaluating agentic AI systems, AI coding assistants, model evaluation harnesses, RAG pipelines, synthetic data workflows, or AI safety workflows.
- Experience with NVIDIA AI software, models, or frameworks (NeMo, NeMo Retriever, NeMo Guardrails, NeMo RL, NIM, TensorRT, Dynamo, CUDA, cuDNN, Nemotron models).
- Familiarity with the broader generative AI ecosystem, including open models, agent frameworks, vector databases, evaluation tools, deployment platforms, and emerging AI developer workflows.
Compensation and benefits
- Base salary range (Level 3): 136,000 USD - 212,750 USD per year.
- Base salary range (Level 4): 160,000 USD - 253,000 USD per year.
- Eligible for equity and NVIDIA benefits (link to benefits noted in posting).
Additional information
- Applications accepted at least until July 4, 2026.
- NVIDIA uses AI tools in its recruiting processes.
- NVIDIA is an equal opportunity employer and committed to fostering an inclusive work environment.