Senior Solutions Architect Generative AI Deployment
NVIDIA
Job Overview
Who's the hiring manager?
Sign up to PitchMeAI to discover the hiring manager's details for this job. We will also write them an intro email for you.

Job Description
About the Role
NVIDIA is seeking outstanding AI Solutions Architects to assist and support customers building solutions with our newest AI technology. At NVIDIA, our Solutions Architects work across different teams and enjoy helping customers with the latest Accelerated Computing and Deep Learning software and hardware platforms. We're looking to grow our company and build our teams with the smartest people in the world. Would you like to join us at the forefront of technological advancement? You will become a trusted technical advisor with our customers and work on exciting projects and proof-of-concepts focused on inference for Generative AI and Large Language Models (LLMs). You will also collaborate with a diverse set of internal teams on performance analysis and modeling of inference software. You should be comfortable working in a dynamic environment and have experience with Generative AI, LLMs, and GPU technologies. This role is an excellent opportunity to work in an interdisciplinary team at NVIDIA!
What You Will Be Doing
- Partnering with other solution architects, engineering, product, and business teams. Understanding their strategies and technical needs and helping define high-value solutions.
- Dynamically engaging with developers, scientific researchers, and data scientists, gaining experience across a range of technical areas.
- Strategically partnering with lighthouse customers and industry-specific solution partners targeting our computing platform.
- Working closely with customers to help them adopt and build creative solutions using NVIDIA technology and MLOps solutions.
- Analyzing performance and power efficiency of AI inference workloads on Kubernetes.
- Some travel to conferences and customers may be required (20%).
What We Need To See
- BS, MS, or PhD in Computer Science, Electrical/Computer Engineering, Physics, Mathematics, other Engineering or related fields (or equivalent experience).
- 8+ years of hands-on experience with Deep Learning frameworks such as PyTorch and TensorFlow.
- Strong fundamentals in programming, optimizations, and software design, especially in Python.
- Proficiency in problem-solving and debugging skills in GPU orchestration and Multi-Instance GPU (MIG) management within Kubernetes environments.
- Experience with containerization and orchestration technologies, monitoring, and observability solutions for AI deployments.
- Excellent knowledge of the theory and practice of LLM and DL inference.
- Excellent presentation, communication, and collaboration skills.
Ways To Stand Out From The Crowd
- Prior experience with DL training at scale, deploying or optimizing DL inference in production.
- Experience with NVIDIA GPUs and software libraries such as NVIDIA NIM, Dynamo, TensorRT, TensorRT-LLM.
- Excellent C/C++ programming skills, including debugging, profiling, code optimization, performance analysis, and test design.
- Familiarity with parallel programming and distributed computing platforms.
Compensation and Benefits
Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is $184,000 - $287,500 USD.
You will also be eligible for equity and benefits.
Key skills/competency
- Generative AI
- Large Language Models (LLMs)
- GPU Technologies
- Deep Learning
- PyTorch
- TensorFlow
- Kubernetes
- MLOps
- Performance Analysis
- Solutions Architecture
How to Get Hired at NVIDIA
- Tailor Your Resume: Highlight your experience with Generative AI, LLMs, GPU technologies, Deep Learning frameworks (PyTorch, TensorFlow), and Kubernetes. Quantify achievements in deployment and optimization.
- Showcase Technical Skills: Emphasize your programming proficiency in Python and C/C++, debugging, performance analysis, and MLOps experience. Detail your familiarity with containerization and orchestration.
- Demonstrate Collaboration: Provide examples of partnering with cross-functional teams and advising technical customers. Highlight your communication and presentation abilities.
- Understand NVIDIA's Culture: Research NVIDIA's commitment to AI innovation, accelerated computing, and their role in the industry. Align your application with their values and mission.
- Prepare for Technical Deep Dives: Be ready to discuss your experience with LLM/DL inference, GPU orchestration, and MLOps solutions during interviews.
Frequently Asked Questions
Find answers to common questions about this job opportunity
Explore similar opportunities that match your background