Jobs
We are seeking a Senior Solutions Architect with strong hands-on experience in deploying, debugging, and optimizing training and inference workloads on large-scale GPU clusters. As we support customers and partners across Europe in training models on ground breaking GPU infrastructure, we are looking for someone who enjoys solving complex challenges at the intersection of High Performance Computing and AI. Similarly, inference is increasing in its complexity with explosion of MOE models and disaggregated execution making inference truly a HPC workload. You don’t need to have expertise in every skill we mention, but we are especially interested in candidates who bring deep knowledge in at least few key areas to enable large scale AI workloads. If you can demonstrate hands-on experience, we would love to hear from you.
What You’ll Be Doing
Collaborating with NVIDIA’s training framework developers and product teams to stay ahead of the latest features and help partners to adopt them effectively.
Assisting with deployment, debugging, and improving the efficiency of AI workloads on extensive NVIDIA platforms.
Benchmarking new framework features, analyzing performance, and sharing actionable insights with both customers and internal teams.
Working directly with external customers to solve cluster performance and stability issues, identify bottlenecks, and implement effective solutions.
Build expertise and guide customers in scaling workloads efficiently and reliably on the latest generation of NVIDIA GPUs.
Contributing to Europe’s Sovereign AI initiative by helping customers implement advanced resiliency features within AI training pipelines.
What We Need To See
BS, MS, PhD or equivalent experience in Computer Science, Electrical/Computer Engineering, Physics, Mathematics, or a related engineering field—or equivalent practical experience.
8+ years of experience in accelerated computing technologies at cluster scale, ideally including work with NVIDIA platforms.
Strong programming skills in at least one of the following languages: C, C++, or Python.
Practical experience identifying and resolving bottlenecks in large-scale training workloads or parallel applications.
Hands-on experienced in profiling and debugging large parallel applications.
Solid understanding of CPU and GPU architectures, CUDA, parallel filesystems, and high-speed interconnects.
Experienced in working with large compute clusters with an understanding of their internal scheduling and resource management mechanisms (e.g. SLURM or Cloud based clusters).
Proficient knowledge of training pipelines and frameworks, encompassing their internal operations and performance attributes.
Ways To Stand Out From The Crowd
Experience in debugging training pipelines running on thousands of GPUs in production environment.
Hands-on experience with performance profiling and optimizations using tools like Nsight Systems, Nsight Compute and good understanding of NCCL, MPI and low-level communication libraries.
Ability to debug stability issues across the entire stack: parallel application, training frameworks, runtime libraries, schedulers, and hardware.
Solid understanding of the internal workings of LLM frameworks such as PyTorch, Megatron-LM, or NeMo, and how they affect compute layers like CPUs, GPUs, network and storage or understanding of inference tools such as vLLM, Dynamo, TensorRT-LLM, RedHat Inference Server or SGLang.
Total Views
0
Apply Clicks
0
Mock Applicants
0
Scraps
0
Similar Jobs

Solutions Architect, Partner Solutions
Okta · Bellevue, Washington; Chicago, Illinois; New York, New York; San Francisco, California; Washington, DC

Senior Solutions Architect, Auth0
Okta · Amsterdam, Netherlands; London, United Kingdom; Munich, Germany; Paris, France

Senior Solutions Architect, Europe
Sanity · Remote in Europe

Staff Hardware Platform Architect
ARM · cambridge

Senior Manager, Solutions Architecture , AI & Developer Platform
Cloudflare · Hybrid
About NVIDIA

NVIDIA
PublicA computing platform company operating at the intersection of graphics, HPC, and AI.
10,001+
Employees
Santa Clara
Headquarters
$4.57T
Valuation
Reviews
4.1
10 reviews
Work Life Balance
3.5
Compensation
4.2
Culture
4.3
Career
4.5
Management
4.0
75%
Recommend to a Friend
Pros
Great culture and supportive environment
Smart colleagues and excellent people
Cutting-edge technology and learning opportunities
Cons
Team-dependent experience and outcomes
Work-life balance issues with long hours
Politics and influence over competence
Salary Ranges
47 data points
Junior/L3
Mid/L4
Junior/L3 · Analyst
7 reports
$170,275
total / year
Base
$130,981
Stock
-
Bonus
-
$155,480
$234,166
Interview Experience
7 interviews
Difficulty
3.1
/ 5
Experience
Positive 0%
Neutral 86%
Negative 14%
Interview Process
1
Application Review
2
Recruiter Screen
3
Online Assessment
4
Technical Interview
5
System Design Interview
6
Team Review
Common Questions
Coding/Algorithm
System Design
Technical Knowledge
Behavioral/STAR
News & Buzz
NVIDIA Culture Discussions
Team-dependent experience; sink-or-swim culture that rewards high performers but can be overwhelming. No politics, flat structure, but demanding workload with some teams requiring evening/weekend work.
News
·
NaNw ago
Negotiating NVIDIA's Offer
Base, stock, and sign-on negotiable. Recruiters invested in closing candidates. CEO reviews all 42K employee salaries monthly. Stock growth has made many employees millionaires.
News
·
NaNw ago
NVIDIA Company Reviews
WLB rated 3.9/5 (lowest category). 64% satisfied with WLB but 53% feel burnt out. Compensation rated 4.4-4.5/5. Experience highly team-dependent.
News
·
NaNw ago
NVIDIA Interview Discussions
Technical bar is high with 4-6 rounds. Process takes 4-8 weeks. Expect C++ questions, LeetCode medium, and system design. Difficulty rated 3.16/5.
News
·
NaNw ago