T
Talent@ Beta
Roboforce

AI Research Engineer Intern (Ph

Roboforce · Growth · Website

Role Details

Location
Milpitas, CA
Salary (est. USD)
~$50K - $100K (est. USD)

Estimated based on role seniority, company stage (Growth), and industry benchmarks. Actual compensation may vary.

How is this calculated?
Seniority band Intern / Apprentice
Domain premium ML / AI (+25%)
Base range $50K – $100K

Based on Web3 & AI industry compensation data. Seniority is inferred from role title keywords. Company stage affects ranges: early-stage (−15%), late-stage/public (+10%).

Department
AI
Type
Intern
Vertical
Robotics
Posted
1h ago

Job Description

Why RoboForce

RoboForce is an AI robotics company developing Physical AI–powered Robo-Labor for dull, dirty, and dangerous work. The company’s robots are engineered for demanding industrial environments, with a focus on real-world deployment and scalability.

We are seeking an AI Research Engineer Intern (PhD) to join us in building the next generation of Embodied AI systems for robotics, with a focus on real-time model inference, systems optimization, and deployment efficiency.

In this role, you will work at the intersection of foundation models, robotics, and high-performance ML systems, helping make advanced robot intelligence practical for real-world deployment. You will collaborate with a world-class team of researchers and engineers to optimize model serving, reduce latency, improve throughput, and enable reliable on-robot inference for embodied decision-making. This is a highly applied research role with opportunities to contribute to impactful systems work and, where appropriate, research publications at top-tier venues.

Responsibilities

  • Research and develop techniques to enable real-time inference for embodied AI models deployed on robotic platforms.
  • Optimize inference performance for models such as:
    • Vision-Language-Action (VLA) models
    • World models
    • Multimodal transformer-based policies
    • Perception and state estimation models used in robot control loops
  • Improve model latency, throughput, memory efficiency, and system reliability through methods such as:
    • model compression
    • quantization
    • distillation
    • batching and scheduling optimization
    • KV-cache / decoding optimization
    • graph compilation and kernel-level acceleration
  • Collaborate with robotics, infrastructure, and hardware teams to integrate optimized models into real robot stacks and edge/on-device systems.
  • Design benchmarking pipelines for evaluating end-to-end performance, including control frequency, action latency, and system robustness under real deployment constraints.
  • Explore tradeoffs between model quality and runtime efficiency to support practical deployment in real-world robotic tasks.
  • Contribute to internal technical reports, system design discussions, and publications where appropriate.

Requirements

  • Currently pursuing or recently completed a PhD in Computer Science, Electrical Engineering, Robotics, Machine Learning, Systems, or a related field.
  • Strong background in machine learning systems, model inference optimization, or efficient deep learning.
  • Experience optimizing modern ML models for production or low-latency deployment.
  • Hands-on experience with one or more of the following:
    • real-time inference systems
    • efficient transformer inference
    • model compression, pruning, quantization, or distillation
    • GPU performance optimization
    • deployment frameworks such as TensorRT, ONNX Runtime, XLA, TVM, Triton, or similar systems
  • Proficiency with deep learning frameworks such as PyTorch, JAX, or TensorFlow.
  • Strong programming and systems skills, including experience with performance profiling and debugging.
  • Ability to work across the stack, from model architecture to runtime systems and hardware-aware optimization.
  • Requires 5 days/week in-office collaboration with the team.

Bonus Qualifications

  • Familiarity with Embodied AI, robot learning, or robotics foundation models.
  • Experience optimizing multimodal or autoregressive models for low-latency inference.
  • Understanding of robotics system constraints such as control-loop timing, sensor fusion latency, and edge compute limitations.
  • Experience with deployment on embedded or edge hardware for robotics.
  • Exposure to compiler-based optimization, CUDA programming, custom kernels, or distributed inference systems.
  • Interest in co-design across model architecture, inference runtime, and robotic execution.

Why Join Us

  • Work on high-impact problems at the frontier of AI systems and robotics
  • Help turn cutting-edge embodied AI models into practical real-world robotic capabilities
  • Collaborate with a deeply technical team spanning research, systems, and hardware
  • Gain hands-on experience with challenging deployment problems in real robotic settings
  • Opportunity to contribute to research publications and advance the state of the art in efficient embodied AI

About Roboforce

AI robotics company building Physical AI-powered Robo-Labor for industrial environments. Flagship product TITAN is a super humanoid robot for dull, dirty, and dangerous work. Hiring across robotics engineering, ML research, and simulation.

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