Vorticity is building the world’s first Scientific Processing Unit (SPU), a new class of silicon purpose-built to accelerate scientific computing beyond the limits of GPUs. We are designing tightly coupled software–hardware systems around applied mathematics workloads to deliver order-of-magnitude performance gains. Unlocking its full potential requires early, deep engagement from applied mathematics–driven software engineers who can translate real-world scientific workloads into executable models, kernels, libraries, and applications that inform both architecture and tooling decisions.
As a Kernel Engineer, you will work at the intersection of applied mathematics, scientific computing, parallel programming, and low-level performance engineering. You will help shape how numerical kernels are implemented, optimized, and eventually mapped onto the SPU. Your work may include building early numerical kernels and libraries, developing prototype applications, and writing Python-based workload models and simulators, all to support and inform the evolving hardware and compiler stack.
This requires both strong applied math fundamentals and deep low-level implementation ability. You should be comfortable moving from mathematical formulations to efficient kernels, reasoning about accuracy, stability, data movement, memory hierarchy, parallel execution, and compiler behavior along the way. This position is ideal for someone who combines strong scientific computing instincts with the low-level habits of a performance engineer.
Prototyping and implementing core kernels and low-level numerical primitives for the SPU.
Translating mathematical formulations into executable, performance-relevant kernel implementations.
Analyzing and optimizing memory-access patterns, including coalescing, locality, shared memory usage, cache behavior, register pressure, and host-device data movement.
Collaborating closely with hardware architects to evaluate algorithm–architecture tradeoffs around memory hierarchy, synchronization, vector/SIMT execution, instruction behavior, and parallel scheduling.
Working with compiler and runtime teams to ensure kernels map cleanly to the SPU programming model.
Designing microbenchmarks, correctness tests, numerical accuracy tests, and performance models, then iteratively refining kernels based on hardware evolution, compiler behavior, profiler output, and measured performance.
Strong applied mathematics and scientific computing judgment, with the ability to understand numerical workloads deeply enough to implement them correctly and efficiently.
Strong proficiency in C++ and CUDA, HIP, SYCL, or an equivalent accelerator programming model.
Experience writing custom kernels, not just using existing frameworks or vendor libraries.
Ability to translate mathematical formulations into low-level implementations while balancing accuracy, stability, precision, data movement, and performance.
Deep understanding of GPU execution and memory hierarchy, including global memory, shared memory, registers, caches, coalescing, atomics, reductions, scans, warp-level execution, and occupancy.
Experience using profiling and performance tools to identify bottlenecks, test hypotheses, and validate improvements.
Ability to reason from profiler output to concrete code changes, rather than treating performance debugging as guesswork.
Solid concurrency fundamentals, including race conditions, atomicity, synchronization, and thread/process execution behavior.
Familiarity with performance analysis tools or modeling techniques (profilers, roofline models)
Exposure to compilers, runtimes, or code generation frameworks
Experience in applied scientific domains such as physics, geophysics, CFD, climate, materials, fusion, or finance.
Experience with low-level GPU assembly or intermediate representations.
Familiarity with low-level system software or drivers.
Excellent written and verbal communication skills
Strong ability to work independently and collaboratively in a team.
Comfort operating in an early-stage environment where the hardware, compiler, and software stack are evolving together.
Willingness to put in the hard work needed to bring the SPU to life.
Above all: low ego.
As passionate scientists and engineers, we are well aware of the plethora of critical problems in the world that cannot be solved because humanity simply does not have enough computing power. To address this, Vorticity is developing a radically new silicon chip architecture and system to dramatically accelerate scientific computing problems.
Vorticity’s mission is to expand human ingenuity. To do that we are building a team of exceptional people to work together on big problems. Join us!
Skills Required
- Strong proficiency in C++ and CUDA, HIP, SYCL or equivalent
- Experience writing custom numerical kernels
- Strong understanding of GPU execution and memory hierarchy
- Ability to conduct performance analysis and optimizations
- Excellent communication skills and team collaboration
Vorticity Inc. Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Vorticity Inc. and has not been reviewed or approved by Vorticity Inc..
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Flexible Benefits — Flexible hours, locations, and PTO are offered, supporting diverse work-life needs. These arrangements are explicitly highlighted as part of a "world-class benefits experience."
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Healthcare Strength — Health insurance is included as a core benefit. Company materials frame the package as designed to enhance employee health and wellbeing.
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Wellbeing & Lifestyle Benefits — Free meals are provided, adding daily convenience and lifestyle support. Benefits messaging emphasizes making it easy to take good care of oneself now and in the future.
Vorticity Inc. Insights
What We Do
Vorticity Inc. is redefining how the world tackles complex scientific and engineering problems. We design and build the full technology stack — from custom silicon to cloud-accessible software platforms — to accelerate physics-based simulation and data-intensive computation across industries. Our mission is to dramatically reduce the time and cost of scientific discovery by re-thinking every layer of the compute stack. We develop specialized processors and distributed systems optimized for solving large-scale partial differential equations (PDEs), enabling simulations that were once limited to supercomputers to run efficiently in the cloud. Our technology is used in aerospace, energy, geophysics, and life sciences, helping teams design faster, explore deeper, and understand more — from mapping mineral resources to modeling hypersonic flight or molecular dynamics. At Vorticity, we believe that innovation happens at the intersection of science, mathematics, and engineering. That’s why our team includes experts in computational physics, high-performance computing, and chip design, all working together to push the boundaries of what’s possible in simulation. Our ultimate goal: to make world-class scientific computing accessible, scalable, and transformative — empowering researchers and engineers everywhere to move from ideas to breakthroughs faster than ever before.
Why Work With Us
Vorticity is a place for people who love to solve hard problems — the kind that shape the future of science and technology. We’re building a team-first culture where curiosity, rigor, and creativity thrive.








