About the role
NVIDIA has transformed accelerated computing through innovation powered by exceptional technology and people. Within ASIC networking product engineering group, you will help bring AI into product engineering by turning fragmented engineering data into scalable, production-ready solutions for analysis, decision-making, and efficiency.
In this role, you will define and deliver AI solutions that unify data across NVIDIA infrastructure and engineering systems, enabling advanced analytics for production engineering teams through AI agents, copilots, and workflow automation. You will own solutions end to end, from architecture and development through deployment, maintenance, and continuous improvement, and help shape how ASIC networking product engineering uses AI to scale engineering productivity.
What you'll be doing:
Design, build, and maintain AI solutions that improve our division efficiency across production, characterization, analysis, and operational workflows.
Develop agentic analytics capabilities that enable engineers to query, analyze, and reason over ASIC data using AI agents and copilots.
Consolidate data from multiple infrastructure and engineering systems into scalable, reliable pipelines and reusable services.
Partner with production engineering teams to identify pain points, define high-value use cases, and deliver measurable impact.
Build and support tools for data access, automation, reporting, anomaly detection, and engineering insight generation.
Collaborate across NVIDIA to align interfaces, improve data quality, and support scalable deployment models.
Drive continuous improvement through user feedback, monitoring, and roadmap planning.
What we need to see:
Bachelor’s in Computer Science, Software Engineering, Data Science, or a related field, or equivalent experience.
8+ years of experience as an AI solutions engineer, machine learning engineer, or software engineer building production AI/data solutions.
Strong experience designing, developing, deploying, and maintaining end-to-end AI applications in production.
Hands-on expertise with Python and modern software engineering practices.
Practical experience with LLMs, AI agents, RAG, workflow orchestration, and data/analytics applications.
Strong background building data pipelines, APIs, services, and applications on top of structured and semi-structured engineering data.
Strong communication skills and a proactive, ownership-driven mindset.
Advantage: experience in semiconductor, hardware, product engineering, test, characterization, or manufacturing analytics environments.
Ways to stand out from the crowd:
Experience building AI solutions for engineering or manufacturing organizations.
Familiarity with agent frameworks, vector databases, telemetry platforms, or internal knowledge/data systems.
Background in cross-functional work spanning software, data, infrastructure, and product engineering.
Proven track record of introducing new technical capabilities and driving adoption across engineering teams.
Skills & Tags
Aplyr's read
NVIDIA is a pioneering force in GPUs and AI, attracting top talent in engineering and innovation-driven roles across various tech domains.
What's promising
- •NVIDIA leads the GPU market, crucial for gaming and AI applications.
- •The company invests heavily in AI and deep learning, driving technological advancements.
- •NVIDIA's strong market position offers stability and growth opportunities for employees.
What to watch
- •High competition in the semiconductor industry can impact market share.
- •Rapid technological changes require constant adaptation and learning.
- •Intense workload and high expectations may affect work-life balance.
Why NVIDIA
- •NVIDIA's GPUs are industry benchmarks in gaming and professional graphics.
- •The company's AI research is at the forefront of deep learning innovation.
- •NVIDIA's culture emphasizes cutting-edge technology and engineering excellence.
Aplyr’s read is generated by AI from public sources. Was it useful?
About NVIDIA
NVIDIA is a leading technology company known for its graphics processing units (GPUs) for gaming and professional markets, as well as its advancements in artificial intelligence and deep learning.
Similar roles
Applied AI Engineer - Fundamental Equity Tech Investing Team
BlackRock
Applied AI Engineer, Investments
Chan Zuckerberg Initiative
Senior Staff Applied AI Engineer - Context Retrieval
Databricks
Senior Applied AI Engineer
Databricks
Senior Applied AI Engineer - Public Sector
Celonis
Staff Applied Machine Learning Engineer - Intelligent Data, Signals & Systems
Block