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Graph Neural Network Jobs in Texas (NOW HIRING)

Someone who sees architecture problems as problems in combinatorics or graph theory. Someone who ... of neural network-based real-time controllers using the Lyapunov method, analogous to classical ...

... need solid systems, rugged networking, and bullet-proof software to do their jobs. Job ... neural recordings from implants. You will: * Design and scale the CI/CD platform that enables ...

Software Engineer, CI/CD

Austin, TX · On-site

$123K - $216K/yr

... need solid systems, rugged networking, and bullet-proof software to do their jobs. Job ... neural recordings from implants. You will: * Design and scale the CI/CD platform that enables ...

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Graph Neural Network information

What are the key skills and qualifications needed to thrive in the Graph Neural Network position, and why are they important?

To excel as a Graph Neural Network Engineer, you need a strong background in machine learning, graph theory, neural networks, and proficiency in programming languages such as Python. Familiarity with deep learning frameworks like PyTorch or TensorFlow, and experience with specialized libraries such as DGL or PyTorch Geometric are highly valued. Excellent problem-solving skills, teamwork, and the ability to communicate complex concepts to both technical and non-technical stakeholders will help you stand out. These combined abilities enable professionals to design, implement, and deploy cutting-edge GNN models that address complex, real-world data-structure challenges across various industries.

What does a typical project workflow look like for a Graph Neural Network Engineer?

A typical project workflow for a Graph Neural Network Engineer involves collaborating with data scientists and domain experts to understand the problem, preprocessing and visualizing graph-structured data, and selecting appropriate model architectures. The role often includes building, training, and evaluating GNN models, iterating on hyperparameters, and deploying models to production environments. Throughout the process, you will engage in code reviews, document findings, and present results to stakeholders. Teamwork and effective communication are essential, as projects frequently require close collaboration with researchers, software engineers, and business units to ensure solutions meet practical needs and performance goals.

What is a Graph Neural Network job?

A Graph Neural Network (GNN) job typically involves designing, implementing, and optimizing neural network models that operate on graph-structured data. Professionals in this role apply GNNs to tasks like recommendation systems, fraud detection, social network analysis, and molecular property prediction. Responsibilities often include data preprocessing, model architecture selection, training, evaluation, and deployment. Strong knowledge of machine learning, deep learning frameworks (such as PyTorch or TensorFlow), and graph theory is essential.

What cities in Texas are hiring for Graph Neural Network jobs? Cities in Texas with the most Graph Neural Network job openings:
Infographic showing various Graph Neural Network job openings in Texas as of July 2026, with employment types broken down into 15% Locum Tenens, 53% Full Time, 17% Part Time, 2% Contract, 12% Nights, and 1% Summer. Highlights an 59% Physical, 3% Hybrid, and 38% Remote job distribution.
Senior Software Engineer, CUDA Deep Learning Systems

Senior Software Engineer, CUDA Deep Learning Systems

Nvidia

Austin, TX • On-site

$121K - $160K/yr

Full-time

Re-posted 29 days ago


Nvidia rating

9.3

Company rating: 9.3 out of 10

Based on 5 frontline employees who took The Breakroom Quiz

15th of 209 rated software companies


Job description

We are looking for an experienced and highly motivated software professional to work on pioneering initiatives and projects at the intersection of CUDA and Deep Learning Systems. As the complexity and scale of artificial intelligence continue to grow, the intersection of advanced deep learning architectures, massive-scale distributed computing, and low-level hardware optimization has never been more critical. Our team is dedicated to exploring and prototyping next-generation ideas that bridge the gap between deep learning algorithms and CUDA, pushing the boundaries of what is possible on modern accelerator architectures.

Join our dynamic, research-oriented team to help unlock maximum hardware performance for emerging AI workloads. You will be a crucial member of a highly technical group exploring uncharted territories in model optimization, custom kernel development, and cluster-scale AI systems design. If you are passionate about the fundamentals of deep learning and thrive on squeezing every ounce of performance out of advanced computing systems from a single GPU to supercomputer clusters, we want you on our team!

What you will be doing:

  • Explore, research, and prototype novel systems optimizations for advanced deep learning models at the intersection of high-level DL frameworks and low-level CUDA through modeling, simulation, and silicon prototyping.

  • Architect and optimize distributed computing systems that scale seamlessly from a single node to massive, cluster-scale supercomputing environments.

  • Design, implement, and optimize custom high-performance CUDA kernels tailored to emerging neural network architectures and workloads.

  • Analyze complex hardware-software interactions to identify and resolve performance bottlenecks in both training and inference pipelines.

  • Collaborate closely with AI researchers, HW and SW architects, kernel and compiler authors and CUDA driver experts to co-design systems and algorithms that improve accelerator compute utilization, memory bandwidth, cross-node network communication efficiency and programmability.

  • Develop exploratory tools and runtime systems to profile and accelerate new paradigms in deep learning.

  • Write clean, effective, and maintainable code, ensuring exploratory prototypes can smoothly transition into open-source releases, upstream framework integrations, internal tools, or closed-source commercial products.

What we need to see:

  • BS, MS, or PhD degree in Computer Science, Computer Engineering, Electrical Engineering, or related field (or equivalent experience).

  • 8+ years of relevant industry experience or equivalent academic experience after degree achievement.

  • Strong proficiency in C++ and Python programming.

  • Solid background in the fundamentals of Deep Learning with a focus on transformers.

  • Strong understanding of distributed computing principles, multi-node scaling, and the unique performance challenges of cluster-scale execution.

  • Proven experience in systems programming, computer architecture, and low-level systems performance optimization.

  • Familiarity with deep learning accelerator architectures such as the GPU and hands-on experience with CUDA programming and kernel optimization.

  • A strong analytical approach with experience using profiling tools to deeply understand software performance on hardware.

  • Experience profiling and optimizing innovative vision models, generative AI architectures, or diffusion models.

  • Background in deep learning compilers, both graph-level and codegen (e.g., Triton, XLA, torch compile)

Ways to stand out from the crowd:

  • Deep expertise in the performance internals and execution graphs of major deep learning autograd, training and inference frameworks (e.g., PyTorch, JAX, TensorRT, vLLM, sgLang, Nemo, Megatron, MaxText, etc.).

  • Hands-on experience with CUDA, communication libraries (e.g., NCCL, MPI, UCX) and distributed machine learning techniques (e.g., pipeline parallelism, tensor parallelism).

  • Knowledge of numerical methods, low-precision arithmetic (e.g., NVFP4, MXFP4, FP8, INT8), and their implications on deep learning model accuracy and performance.

  • Familiarity with systems requirements for Reinforcement Learning (RL) or highly parallel simulation environments and/or research background in machine learning systems or adjacent fields.

  • Experience with machine learning, especially agentic systems, applied to systems problems.

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 USD - 287,500 USD for Level 4, and 224,000 USD - 356,500 USD for Level 5.

You will also be eligible for equity and benefits.

Applications for this job will be accepted at least until July 1, 2026.

This posting is for an existing vacancy.

NVIDIA uses AI tools in its recruiting processes.

NVIDIA is committed to fostering an inclusive work environment and proud to be an equal opportunity employer. As we highly value diversity in our current and future employees, we do not discriminate (including in our hiring and promotion practices) on the basis of race, religion, color, national origin, gender, gender expression, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.

What Nvidia employees say

Hours and flexibility

Workplace

Get the full story on Breakroom


Nvidia logo

About Nvidia

Sourced by ZipRecruiter

NVIDIA has been transforming computer graphics, PC gaming, and accelerated computing for more than 25 years. It's a unique legacy of innovation that's fueled by great technology--and amazing people. Today, we're tapping into the unlimited potential of AI to define the next era of computing. An era in which our GPU acts as the brains of computers, robots, and self-driving cars that can understand the world. Doing what's never been done before takes vision, innovation, and the world's best talent.

Industry

Computer and electronic product manufacturing

Company size

10,000+ Employees

Headquarters location

Santa Clara, CA, US

Year founded

1993