Distributed Training and Inference Engineer

sciforium· Engineering
Apply Now ↗
📍 San FranciscoFullTime💰 USD 190K–250K/yr

About this role

Sciforium is an AI infrastructure company developing next-generation multimodal AI models and a proprietary, high-efficiency serving platform. Backed by multi-million-dollar funding and direct sponsorship from AMD with hands-on support from AMD engineers the team is scaling rapidly to build the full stack powering frontier AI models and real-time applications.

About the role

Sciforium is seeking a highly skilled Distributed Training and Inference Engineer to build, optimize, and maintain the critical software stack that powers our large-scale AI training and serving workloads. In this role, you will work across the entire machine learning infrastructure from low-level CUDA/ROCm runtimes to high-level frameworks like JAX and PyTorch to ensure our distributed training systems are fast, scalable, stable, and efficient.

This position is ideal for someone who loves deep systems engineering, debugging complex hardware–software interactions, and optimizing performance at every layer of the ML stack. You will play a pivotal role in enabling the training and deployment of next-generation LLMs and generative AI models.

What you'll do

  • Software Stack Maintenance: Maintain, update, and optimize critical ML libraries and frameworks including JAX, PyTorch, CUDA, and ROCm across multiple environments and hardware configurations.

  • End-to-End Stack Ownership: Build, maintain, and continuously improve the entire ML software stack from ROCm/CUDA drivers to high-level JAX/PyTorch tooling.

  • Distributed System Optimization: Ensure all model implementations are efficiently sharded, partitioned, and configured for large-scale distributed training and serving.

  • System Integration: Continuously integrate and validate modules for runtime correctness, memory efficiency, and scalability across multi-node GPU/accelerator clusters.

  • Profiling & Performance Analysis: Conduct detailed profiling of compilation graphs, training workloads, and runtime execution to optimize performance and eliminate bottlenecks.

  • Debugging & Reliability: Troubleshoot complex hardware–software interaction issues, including vLLM compilation failures on ROCm, CUDA memory leaks, distributed runtime failures, and kernel-level inconsistencies.

  • Collaborate with research, infrastructure, and kernel engineering teams to improve system throughput, stability, and developer experience.

Ideal candidate profile

  • 5+ years of industry experience in ML systems, distributed training, or related fields.

  • Bachelor’s or Master’s degree in Computer Science, Computer Engineering, Electrical Engineering, or related technical fields.

  • Strong programming experience in Python, C++, and familiarity with ML tooling and distributed systems.

  • Deep understanding of profiling tools (e.g., Nsight, ROCm Profiler, XLA profiler, TPU tools).

  • Deep expertise with partitioning configuration on the modern ML frameworks such as PyTorch and JAX.

  • Experience with multi-node distributed training systems and orchestration frameworks (DTensor, GSPMD, etc.).

  • Hands-on experience maintaining or building ML training stacks involving CUDA, ROCm, NCCL, XLA, or similar technologies.

Nice-to-have

  • Extensive experience with the XLA/JAX stack, including compilation internals and custom lowering paths.

  • Familiarity with distributed serving or large-scale inference frameworks (e.g., vLLM, TensorRT, FasterTransformer).

  • Background in GPU kernel optimization or accelerator-aware model partitioning.

  • Strong understanding of low-level C++ building blocks used in ML frameworks (e.g., XLA, CUDA kernels, custom ops).

Benefits include

  • Medical, dental, and vision insurance

  • 401k plan

  • Daily lunch, snacks, and beverages

  • Flexible time off

  • Competitive salary and equity

Equal opportunity

Sciforium is an equal opportunity employer. All applicants will be considered for employment without attention to race, color, religion, sex, sexual orientation, gender identity, national origin, veteran or disability status.

Frequently Asked Questions

What is the salary for the Distributed Training and Inference Engineer role at sciforium?
The listed salary for this Distributed Training and Inference Engineer position at sciforium is USD 190K–250K/yr. This is an FullTime role.
Where is the Distributed Training and Inference Engineer position at sciforium located?
This Distributed Training and Inference Engineer role at sciforium is based in San Francisco. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the Distributed Training and Inference Engineer role at sciforium full-time or part-time?
This is listed as a FullTime position. It is posted as a Distributed Training and Inference Engineer role in the Engineering department at sciforium.
Which team or department does the Distributed Training and Inference Engineer at sciforium belong to?
This Distributed Training and Inference Engineer position is part of the Engineering department at sciforium. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Distributed Training and Inference Engineer position at sciforium?
Click the "Apply Now" button on this page. You will be redirected to sciforium's official application portal hosted on ashby where you can submit your application directly.
When was the Distributed Training and Inference Engineer job at sciforium posted?
This Distributed Training and Inference Engineer position at sciforium was posted on Jun 1, 2026. Apply as soon as possible — early applications are often reviewed first.
Distributed Training and Inference Engineer
sciforium · 💰 USD 190K–250K/yr
Apply for this role ↗

You'll be redirected to sciforium's official application page on Ashby ATS.