At Quilter, we are helping electrical engineers save time and accomplish more by automating the tedious and time-consuming task of designing printed circuit boards (PCBs). Our small team is composed of experts in electrical engineering, electromagnetic simulation, ML/AI, and high-performance computing (HPC). We are inventing and leveraging novel techniques to solve the decades-old problem of automating circuit board design where today hundreds of billions of dollars are spent. We have raised $25 million in Series B funding from some of the very best and are charging full-speed toward our goal.
No matter where we come from, we're united by a common vision for the future and a core set of values we think will get us there:
Focus on the mission
Build great things that help humans
Demonstrate grit
Never stop learning
Pursue excellence
We’re looking for a Senior Scaled ML Engineer to join Quilter’s ML Team and help us build the software platform behind the future of circuit board design. We are a team of generalists who pride ourselves on solving new challenges and always learning. As one of our early engineers, you’ll have massive ownership and influence over the direction of our product, architecture, and team culture.
This role is ideal for someone who thrives in high-ownership environments, loves solving complex technical problems, and is excited by the idea of bridging the worlds of software and hardware development.
What Youʼll DoConduct modality and architecture searches: design custom models and evaluate OTS architectures and pretrained weights
Build end-to-end training and inference pipelines, defining how data is created, prepared, consumed, and how model outputs are used in production
Develop scalable, distributed training workflows, including data creation pipelines and definitions of training behavior at large scale
Design and maintain robust data generation systems, including dataset versioning, testing, and strategies for producing high-quality training data
Implement and optimize SL, SSL, and RL algorithms for geometric and PCB layout problems
Improve system performance and GPU utilization, applying techniques to accelerate training and inference
Ensure algorithmic scalability, solving real pain points that arise as data volume, model size, and cluster size increase
Build automated re-training pipelines and work with Systems Engineers to detect and address distribution drift in production
Experience with large-scale training of models with 100M+ parameters
Expertise in distributed training using PyTorch across multi-GPU and multi-node environments
Knowledge of memory optimization techniques such as gradient checkpointing, mixed precision, and parameter shardingFamiliarity of training infrastructure including cluster management and job scheduling systems
Background in model architecture design across transformers, CNNs, and graph networks for geometric data
Experience with performance optimization focused on training speed, convergence, and scaling laws
Experience with Reinforcement Learning - combinatorial/constrained optimization problems, sequential decision-making.
Knowledge of Model Compression Techniques - knowledge distillation, pruning strategies, etc.
Expertise with Attention Mechanisms - specifically spatial/geometric attention
ML Tooling Experience - NVIDIA Nsight, PyTorch profiler, Weights & Biases
Please note: We are an equal opportunity employer. At this time, we are focused on hiring primarily within the US, with occasional exception to accommodate exceptional talent.
What we offer:Interesting and challenging work
Competitive salary and equity benefits
Health, dental, and vision insurance
Regular team events and offsites (~2x / year)
Unlimited paid time off
Paid parental leave
Want to learn more about Quilter, our vision, and our investors? Visit our About page and visit our Blog.
Top Skills
What We Do
At Quilter, we believe that the creativity and passion of hardware engineers for tackling real-world challenges should not bAt Quilter, we believe that the creativity and passion of hardware engineers for tackling real-world challenges should not be bogged down with the tedium of repeating solved problems.
We are building the next generation of tooling for electrical engineers which enables going from concept to physical design at the click of a button. Using physics-driven generative design we enable the reliable conversion of circuit schematics into PCB designs.
Quilter will do for electronics what the compiler did for softwaree bogged down with the tedium of repeating solved problems.
We are building the next generation of tooling for electrical engineers which enables going from concept to physical design at the click of a button. Using physics-driven generative design we enable the reliable conversion of circuit schematics into PCB designs.
Quilter will do for electronics what the compiler did for software

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