RA

Research Scientist / Engineer - Efficient Modeling

Rhoda AI
Palo AltoPosted 19 May 2026

Tech Stack

Job Description

Research Scientist / Engineer - Efficient Modeling At Rhoda AI, we're building the full-stack foundation for the next generation of humanoid robots — from high-performance, software-defined hardware to the foundational models and video world models that control it. Our robots are designed to be generalists capable of operating in complex, real-world environments and handling scenarios unseen in training. We work at the intersection of large-scale learning, robotics, and systems, with a research team that includes researchers from Stanford, Berkeley, Harvard, and beyond. We're not building a feature; we're building a new computing platform for physical work — and with over $400M raised, we're investing aggressively in the R&D, hardware development, and manufacturing scale-up to make that a reality. We're looking for a Research Scientist or Research Engineer focused on model efficiency — making our foundation world models faster, smaller, and more deployable without sacrificing capability. This work is critical to closing the gap between research-scale models and real-time operation on robot hardware. What You'll Do - Research and implement model compression techniques: quantization, pruning, structured sparsity, distillation, and low-rank approximation - Design efficient architectures and attention mechanisms suited to real-time inference on edge and robot hardware - Develop training strategies that produce better accuracy-efficiency tradeoffs from the start - Profile and benchmark models across hardware targets to identify and resolve efficiency bottlenecks - Build evaluation frameworks that measure capability retention after compression or architecture changes - Collaborate with training systems and deployment teams to ensure efficient models translate to faster real-world inference - Publish and present work at top-tier venues (especially valued for RS track) What We're Looking For - Strong understanding of model compression and efficient architectures for large models - Hands-on experience with quantization, distillation, or pruning applied to transformers or large neural networks - Deep knowledge of where efficiency gains are possible in modern architectures - Proficiency with PyTorch and familiarity with hardware-aware optimization (CUDA, TensorRT, or similar) - Ability to run principled experiments that characterize capability-efficiency tradeoffs Nice to Have (But Not Required) - PhD in ML, CS, or a related field — or equivalent research/engineering experience - Publication record at NeurIPS, ICML, ICLR, MLSys, or related venues - Experience with efficient video or multimodal model architectures - Familiarity with edge deployment targets (Jetson, custom ASICs, or mobile hardware) - Prior work on speculative decoding, early exit, or adaptive compute - Experience deploying compressed models on physical robots or latency-constrained systems Why This Role - Bridge the gap between large-scale research models and real-time robot deployments - Your work determines whether frontier capabilities actually run on our hardware - High leverage: efficiency improvements benefit every model the team trains and deploys - Work at a rare intersection of deep learning research and systems
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