Solutions Architect, AI and ML
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 building the world’s leading AI company, and we are looking for an experienced Cloud Solution Architect to help assist customers with adoption of GPU hardware and Software, as well as building and deploying Machine Learning (ML), Deep Learning (DL), data analytics solutions on various Cloud Computing Platforms. As part of the Solutions Architecture team, we work with some of the most exciting computing hardware and software technologies including the latest breakthroughs in machine learning and data science. A Solutions Architect is the first line of technical expertise between NVIDIA and our customers so you will engage directly with developers, researchers, and data scientists with some of NVIDIA’s most strategic technology customers as well as work directly with business and engineering teams on product strategy. We are looking for a Solutions Architect to help drive end-to-end technology solutions applying NVIDIA’s full set of technologies based on business needs of customers. Join us in this exciting endeavor!
What You Will Be Doing
- Working with Cloud Service Providers to develop and demonstrate solutions based on NVIDIA’s ML/DL and data science software and hardware technologies
- Build and deploy AI/ML solutions at scale using NVIDIA's AI software on cloud-based GPU platforms.
- Build custom PoCs for solution that address customer’s critical business needs applying NVIDIA hardware and software technology
- Partner with Sales Account Managers or Developer Relations Managers to identify and secure new business opportunities for NVIDIA products and solutions for ML/DL and other software solutions
- Prepare and deliver technical content to customers including presentations about purpose-built solutions, workshops about NVIDIA products and solutions, etc.
- Conduct regular technical customer meetings for project/product roadmap, feature discussions, and intro to new technologies. Establish close technical ties to the customer to facilitate rapid resolution of customer issues
What We Need To See
- 3+ years of Solutions Engineering (or similar Sales Engineering roles) or equivalent experience
- 3+ years of work-related experience in Deep Learning and Machine Learning, including deep learning frameworks TensorFlow or PyTorch, GPU, and CUDA experience extremely helpful.
- BS/MS/PhD in Electrical/Computer Engineering, Computer Science, Statistics, Physics, or other Engineering fields or equivalent experience.
- Established track record of deploying solutions in cloud computing environments including AWS, GCP, or Azure
- Knowledge of DevOps/ML Ops technologies such as Docker/containers, Kubernetes, data center deployments
- Ability to use at least one scripting language (i.e., Python)
- Good programming and debugging skills
- Ability to communicate your ideas/code clearly through documents, presentation etc.
Ways To Stand Out From The Crowd
- AWS, GCP or Azure Professional Solution Architect Certification.
- Hands-on experience with NVIDIA GPUs and SDKs (e.g. CUDA, RAPIDS, Triton etc.)
- System-level experience specifically GPU-based systems
- Experience with Deep Learning at scale
- Familiarity with parallel programming and distributed computing platforms
Key skills/competency
- Artificial Intelligence
- Machine Learning
- Deep Learning
- Cloud Computing
- GPU Acceleration
- Solution Architecture
- TensorFlow
- PyTorch
- AWS
- Kubernetes
How to Get Hired at NVIDIA
- Research NVIDIA's AI leadership: Study their mission, values, recent news, and employee testimonials on LinkedIn and Glassdoor to understand their impact on the AI industry.
- Tailor your resume: Highlight deep learning frameworks (TensorFlow, PyTorch), cloud platforms (AWS, GCP, Azure), and NVIDIA technologies like CUDA, RAPIDS, or Triton.
- Showcase cloud expertise: Emphasize hands-on experience with deploying ML/DL solutions in cloud environments and familiarity with MLOps tools like Docker and Kubernetes.
- Prepare for technical deep-dives: Expect in-depth questions on GPU computing, machine learning models, data science solutions, and system-level architecture during your NVIDIA interview.
- Demonstrate customer-facing skills: Practice articulating complex technical concepts clearly, presenting solutions, and discussing strategies for identifying and securing new business opportunities.
Frequently Asked Questions
Find answers to common questions about this job opportunity
Explore similar opportunities that match your background