NVIDIA
healthcare and life sciences
SeniorSolutionsArchitect,Simulations-ClinicalSciencesandAutonomousLab
Neural analysis suggests this role is
optimal for Senior candidates.
“Senior Solutions Architect, Simulations - Clinical Sciences and Autonomous Lab at NVIDIA. Skills: GPU-accelerated simulations, clinical sciences, autonomous labs, AI software, GPU-accelerated AI, scientific simulation, sim-to-real robotics, agentic AI. drive innovation with healthcare and life sciences customers. design, implement, and optimize GPU-accelerated AI software”
Industry & Context.
Up to 20% travel may be required for on-site customer engagements
What They're Looking For.
Must Have
MS, PhD, or equivalent experience in Computer Science, Biomedical Engineering, Computational Biology, Computational Chemistry, Robotics, or related fields with applied experience, 8+ years of experience, Proven track record in software development for AI/ML, scientific computing, GPU acceleration, or robotics applied to healthcare or life sciences, Hands-on experience across at least two of the three focus areas: GPU-accelerated scientific simulation, sim-to-real robotics, and end-to-end agentic AI, Proficiency in Python, Experience deploying and scaling GPU-accelerated solutions in cloud or HPC environments (OCI, AWS, Azure, or on-prem clusters), Excellent communication skills with the ability to present complex technical concepts to both technical and non-technical audiences
Nice to Have
Experience with AI/ML frameworks (PyTorch, LangChain, or custom), Experience with C/C++, Experience with CUDA, Experience building GPU-accelerated scientific solvers, including low-level CUDA kernel optimization, Background with sim-to-real robotics for life sciences—autonomous labs, biomanufacturing, surgical/clinical platforms—including MuJoCo or Isaac Sim, VLA pipelines, real-time control layers, and depth/RGB perception stacks, Experience building, deploying, and evaluating agentic AI systems for healthcare—graph RAG over biomedical literature, long-memory agents, vision-based clinical event detection in production, Familiarity with NVIDIA libraries and platforms
What You'll Do.
drive innovation with healthcare and life sciences customers
and optimize GPU-accelerated AI software
guide customers through the end-to-end adoption of GPU-accelerated AI
architect libraries such as GPU-accelerated solvers for quantitative systems pharmacology and CPU-to-GPU migration of scientific workloads
perform low-level CUDA optimization
including custom kernels to accelerate simulation and inference workloads in drug discovery
building physical AI and robotics solutions for autonomous labs and biomanufacturing such as sim-to-real VLA pipelines
real-time control layers
and integration of perception
and policy stacks on NVIDIA platforms
designing and deploying biomedical agentic AI systems
such as graph-based retrieval
multi-hop clinical reasoning
and persistent agent memory
keeping up to date on AI advancements in healthcare
including domain-specific models
and agentic frameworks
engaging with life science executives
and developers to drive adoption of NVIDIA AI stack
sharing your findings through training sessions
How You'll Work.
Team & Collaboration
partner with leading pharmaceutical companies, techbios, and software builders; Engaging with life science executives, IT leaders, data scientists, and developers
Communication Scope
Excellent communication skills with the ability to present complex technical concepts to both technical and non-technical audiences
Full Job Description
NVIDIA is seeking a Senior Solutions Architect to drive innovation with healthcare and life sciences customers across North America, focusing on GPU-accelerated simulations for clinical sciences and autonomous labs. As a pioneer in accelerated computing, NVIDIA empowers pharmaceutical, biotech, and healthcare organizations to unlock new possibilities in patient modeling, laboratory and biomanufacturing robotic systems, and multi-agent reasoning. In this role, you will partner with leading pharmaceutical companies, techbios, and software builders to design, implement, and optimize GPU-accelerated AI software. If you are passionate about pushing the limits of accelerated computing in life sciences, we want to hear from you! **What you will be doing:** * Guide customers through the end-to-end adoption of GPU-accelerated AI, from requirements gathering and proof-of-concept development to deployment, integration, and ongoing optimization. * Architect libraries such as GPU-accelerated solvers for quantitative systems pharmacology and CPU-to-GPU migration of scientific workloads. * Perform low-level CUDA optimization, including custom kernels to accelerate simulation and inference workloads in drug discovery * Building physical AI and robotics solutions for autonomous labs and biomanufacturing such as sim-to-real VLA pipelines, real-time control layers, and integration of perception, control, and policy stacks on NVIDIA platforms. * Designing and deploying biomedical agentic AI systems, such as graph-based retrieval, multi-hop clinical reasoning, and persistent agent memory * Keeping up to date on AI advancements in healthcare, including domain-specific models, robotics, and agentic frameworks. * Engaging with life science executives, IT leaders, data scientists, and developers to drive adoption of NVIDIA AI stack. * Sharing your findings through training sessions, white papers, blog posts, and conference talks. **What we need to see:** * MS, PhD, or equivalent experience
Applying for this Senior Solutions Architect, Simulations - Clinical Sciences and Autonomous Lab role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Workday
- Workday has a multi-step form — save your progress after every section.
- "Apply With LinkedIn" can fail or lose data; manual entry is more reliable.
- Watch for the "Submit for Review" final step — hitting "Save" alone does not submit.
- Job requisition numbers are useful when following up with HR by email.
ANONYMOUS · UNFILTERED
What do employees actually say about NVIDIA?
Real rants from real employees. Read before you apply.