About the job
FriendliAI is looking for a GPU Kernel Engineer to design, build, and optimize the low-level compute kernels that power our large-scale, GPU-accelerated AI inference platform. You will be delivering world-class inference speed across NVIDIA and AMD GPUs. With our recent $20M funding, we are scaling our team to meet market demand.
This is a deeply technical, high-impact role where you will write GPU code, implement advanced optimizations. As part of our engine team, you will contribute directly to the company’s proprietary inference engine which supports over 450,000 models on Hugging Face. You will work with the inventors of continuous batching and collaborate with the platform team to deploy your work into production.
Key Responsibilities
Design, implement, and optimize high-performance GPU kernels for AI inference (e.g., GEMM, attention, routing)
Develop and maintain GPU code in CUDA and C++, including low-level assembly when needed
Implement reduced-precision and quantized kernels (FP8/FP4) for low-latency or high-throughput inference
Benchmark and ensure cross-vendor performance parity between NVIDIA and AMD hardware
Contribute to internal GPU libraries and tune performance of performance-critical components
Accelerate multi-modal model pipelines
Investigate and integrate next-generation GPU features
Qualifications
3+ years of experience in GPU programming, HPC, or performance-critical systems
Bachelor’s or Master’s degrees in Computer Science, Computer Engineering, Electrical Engineering, or a related field
Strong proficiency in CUDA for NVIDIA GPUs or ROCm/HIP for AMD GPUs
Deep understanding of GPU architecture: warps, threads, memory hierarchy, synchronization, and latency-throughput trade-offs
Proficiency in C++
Experience with GPU profiling and performance tuning
Strong numerical background with understanding of precision trade-offs and quantization techniques
Preferred Experience
Experience optimizing transformer, multi-modal, or Mixture-of-Experts (MoE) architectures at the kernel level
Familiarity with the latest GPU libraries and frameworks (CUTLASS, Triton, …)
Inter-GPU communication programming experience
Open-source contributions related to GPU performance or ML acceleration
Research or conference presentations on GPU optimization, HPC, or numerical computing
Benefits
Flexible working hours
Daily lunch and dinner provided; unlimited snacks and beverages
Supportive and highly collaborative work environment
Health check-up support and top-tier equipment/hardware support
A front-row seat to the generative AI infrastructure revolution
Competitive compensation, startup equity, health insurance, and other benefits.
About FriendliAI
FriendliAI is building the world’s best AI inference platform that makes large language and multi-modal models fast, efficient, and deployable at scale. We power high-throughput, low-latency AI workloads for organizations worldwide and integrate directly with Hugging Face, giving developers instant access to over 500,000 open-source models.
We are a small, fast-moving team doing work that matters at one of the most exciting moments in the history of technology. With our world-class inference engine, we are building a platform that the AI industry can actually rely on.
FriendliAI is The Frontier AI Inference Cloud. Built by the researchers who invented the continuous batching technique that is now industry standard, FriendliAI provides AI engineers with a highly optimized engine that constantly evolves to efficiently run state-of-the-art open-weight and custom models at production scale. By maximizing GPU utilization, FriendliAI delivers speeds up to 3x faster than vLLM, and 50% to 90% cost savings relative to closed model APIs. FriendliAI empowers engineers to deploy frontier AI with uncompromising speed, model ownership, and enterprise-grade reliability.
Key team members

Ryan Pollock

Brian Yoo

Byung-Gon Chun

Elizabeth Shinwon Yoon
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