Research Scientist / Engineer - Efficient Modeling

Rhoda Ai
Palo Alto, US
On-site

Who this role is best for

Best suited to mid-level research scientists or engineers with expertise in model efficiency techniques and a background in deploying models on edge hardware.

Best fit for

  • Candidates with hands-on experience in model compression techniques like quantization and pruning.
    — “Hands-on experience with quantization, distillation, or pruning applied to transformers or large neural networks
  • Researchers who can bridge the gap between large-scale models and real-time robot deployments.
    — “Bridge the gap between large-scale research models and real-time robot deployments
  • Engineers proficient in PyTorch and hardware-aware optimization tools.
    — “Proficiency with PyTorch and familiarity with hardware-aware optimization (CUDA, TensorRT, or similar)

Things to consider

  • The role requires collaboration with training systems and deployment teams.
    — “Collaborate with training systems and deployment teams to ensure efficient models translate to faster real-world inference
  • Publication at top-tier venues is especially valued for the Research Scientist track.
    — “Publish and present work at top-tier venues (especially valued for RS track)

How to stand out

  • Highlight specific projects where you improved model efficiency without sacrificing capability.
    — “Research and implement model compression techniques: quantization, pruning, structured sparsity, distillation, and low-rank approximation
  • Demonstrate experience with edge deployment targets like Jetson or custom ASICs.
    — “Familiarity with edge deployment targets (Jetson, custom ASICs, or mobile hardware)
  • Showcase your ability to run principled experiments on capability-efficiency tradeoffs.
    — “Ability to run principled experiments that characterize capability-efficiency tradeoffs
Pace · SteadyCollaboration · MediumAutonomy · MediumDecision Impact · CompanyLevel · Senior

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • researching and implementing model compression techniques
  • developing efficient architectures
  • profiling and benchmarking models
Typical background
strong understanding of model compression and efficient architectures

Skills & requirements

Required

Model CompressionEfficient ArchitecturesPyTorchHardware-aware Optimization

Preferred

Phd In ML, CS, Or A Related FieldExperience With Efficient Video Or Multimodal Model Architectures

Stack & domain

Model Compression TechniquesQuantizationPruningStructured SparsityDistillationLow-rank ApproximationEfficient ArchitecturesAttention MechanismsTraining StrategiesProfiling And BenchmarkingEvaluation FrameworksPyTorchCudaTensorrt

About the role

Original posting from Rhoda Ai via Ashby

At Rhoda AI, we’re building the next generation of generalist intelligent robots. We own the full robotics stack from high-performance hardware and robot systems to the infrastructure and state-of-the-art foundation world models that control our robots. Our robots are designed to be generalists capable of operating in complex, real-world environments and handling long-tail edge cases, made possible by our cutting edge research and end-to-end system design. We've raised over $400M and are investing aggressively in model research, infrastructure, hardware development, and manufacturing scale-up to make generalist robotics 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

Source: Rhoda Ai careers (Ashby)

Similar roles