Inference Optimization ML Engineer

Rhoda Ai
Palo Alto, US
On-site

Who this role is best for

Aimed at mid-level ML engineers with expertise in PyTorch and model optimization techniques, working in robotics and AI research environments.

Best fit for

  • Engineers who thrive on optimizing large multimodal models for real-world deployment.
    — “squeezing maximum performance out of large multimodal models
  • Candidates with deep hands-on experience in modern ML stacks and inference optimization.
    — “Deep hands-on experience with modern ML stacks
  • Professionals comfortable with high ownership in fast-moving research and robotics teams.
    — “High ownership mindset and comfort in a fast-moving environment

Things to consider

  • Requires expertise in GPU kernel or compiler-level optimizations for edge cases.
    — “GPU kernel or compiler-level experience
  • Involves close collaboration with research teams to bridge training and deployment gaps.
    — “Collaborate closely with research engineers

How to stand out

  • Highlight specific instances where you improved latency or throughput in production models.
    — “diagnose and improve latency, throughput, and efficiency
  • Showcase experience with multimodal or video model inference optimizations.
    — “Experience with multimodal or video model inference
Pace · SteadyCollaboration · HighAutonomy · MediumDecision Impact · CompanyLevel · Mid

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

What success looks like

  • Own inference performance end-to-end
  • Build systematic performance attribution
  • Collaborate with research engineers to translate model innovations
Typical background
3+ years of experience in inference optimization, ML systems

Skills & requirements

Required

Inference OptimizationML SystemsModel Optimization TechniquesInference Serving FrameworksBenchmarking And Regression Detection

Preferred

GPU Kernel Or Compiler-level ExperienceMultimodal Or Video Model InferenceEdge/cloud Hybrid Deployment Patterns

Stack & domain

Inference OptimizationMl SystemsPyTorchJaxComputeMemory BandwidthI/o BottlenecksModel Optimization TechniquesQuantizationDistillationPruningModel CompilationAttention MechanismsKv CachingMemory LayoutsKernel-level ToolingCudaTritonBenchmarkingRegression Detection InfrastructureLatency DecompositionBottleneck IdentificationOperator FusionTensorrtTorch.compileXlaAIRobotics

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 an Inference Optimization MLE to help build and operate the systems that make our foundation models run fast and efficiently in production. You'll be responsible for squeezing maximum performance out of large multimodal models, across cloud and on-robot deployment targets. You will working closely with research and robotics teams to close the gap between training and real-world deployment.

What You'll Do

  • Own inference performance end-to-end — diagnose and improve latency, throughput, and efficiency of large foundation models in production
  • Build systematic performance attribution: latency decomposition (compute vs. memory bandwidth vs. I/O), bottleneck identification, and prioritization across model families
  • Apply and develop optimization techniques including quantization, pruning, distillation, operator fusion, and model compilation (e.g., TensorRT, torch.compile, XLA)
  • Optimize attention mechanisms, KV caching, and memory layouts for large multimodal models (vision, video, language, proprioception)
  • Work with kernel-level tooling (e.g., CUDA, Triton) to identify hotspots and implement or tune custom kernels where needed
  • Build benchmarking and regression detection infrastructure: latency baselines, throughput curves, and automated detection of performance regressions across model versions
  • Collaborate closely with research engineers to translate model innovations into optimized, deployment-ready implementations

What We're Looking For

  • 3+ years of experience in inference optimization, ML systems, or a closely related field
  • Deep hands-on experience with modern ML stacks (PyTorch required; JAX a plus)
  • Strong understanding of compute, memory bandwidth, and I/O bottlenecks in large model inference
  • Experience with model optimization techniques: quantization (INT8/FP8/AWQ), distillation, pruning, and compilation
  • Familiarity with inference serving frameworks (e.g., Triton, TensorRT, vLLM, TorchServe)
  • Exceptional debugging and measurement ability: turn "inference is slow" into clear bottlenecks, experiments, and validated improvements
  • High ownership mindset and comfort in a fast-moving environment

Nice to Have (But Not Required)

  • GPU kernel or compiler-level experience (CUDA, Triton, graph capture, operator fusion)
  • Experience with multimodal or video model inference (variable-length sequences, packing/bucketing)
  • Familiarity with edge/cloud hybrid deployment patterns and on-robot inference constraints
  • Experience with speculative decoding, continuous batching, or other LLM serving optimizations
  • Background in streaming or low-latency systems relevant to real-time robot control

Why This Role

  • Direct leverage on research velocity and real-world robot performance — every efficiency gain you make accelerates model iteration and tightens the loop between model and robot behavior
  • Own the optimization layer that determines how quickly and efficiently our foundation models run in the real world — high ownership, high impact, small elite team

Source: Rhoda Ai careers (Ashby)

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