Medal
AI

Applied AI Engineer Spatial and Embodied AI

Medal · York, WA, US · $150k - $350k

Actively hiring Posted 7 days ago

Role overview

Location

New York City, Washington DC

Employment Type

Full time

Location Type

On-site

Department

General Intuition

Compensation

$150K – $350K • Offers Equity

The compensation may vary further depending on individualized factors for candidates, such as job-related knowledge, skills, experience, and other objective business considerations.

Overview

What you'll work on

Applied AI/ML Engineering & Mission Ownership

  • Embed with partners to solve the problems with our frontier AI/ML tools, informing our research and product development plan along the way…not just deploy software.
  • Be the primary filter between the messy reality of the physical world and our research and technical staff, surfacing real commercial challenges and pain-points.
  • Build and tune models, prototype, script, and patch (often in the field), turning ambiguous requirements into executable code.

Systems Integration & Edge Compute

  • Build the connective tissue between our AI and the customer's reality, and then help them rethink the art of the possible. This means writing high-performance code (C++/Go/Python) that integrates our inference engine with legacy sensors, RTOS, and diverse hardware peripherals.
  • Optimize complex ML models for survival in harsh computing environments.
  • Leverage our simulation and world-model capabilities to validate operational plans before they touch physical hardware.

Technical Diplomacy

  • Translate the probabilistic nature of AI into the deterministic language of industrial control systems and mission operators.
  • Explain trade-offs to non-technical individuals and deep technical details to systems engineers, building the trust required to deploy autonomous systems in critical paths.

What we're looking for

Required

  • 5+ years experience taking complex systems from prototype to production, within software engineering or applied AI/ML
  • Strong experience in the ML stack (Python, Docker, Kubernetes, infrastructure-as-code, and CI/CD for ML pipelines) with competent systems programming skills (C++, Go, Rust, or Java), and ability to use modern AI coding tools
  • Strong applied machine learning experience, specifically in the lifecycle of deploying, evaluating, and debugging models
  • Experience in at least one of the following, with working knowledge of the others:

    • Agents or policy learning (e.g., RL, planning, control theory, spatial reasoning)
    • World models, simulation environments (Unity/Unreal, Omniverse, Isaac Sim), or model-based learning
    • Perception, sensor fusion, or inverse dynamics models (IDMs)
  • Exposure to bridging the "hardware-software" gap: integrating AI inference with sensors, edge devices, RTOS, or legacy industrial networks

  • Full-stack systems mindset: understanding of memory management, concurrency, networking, and APIs

  • U.S. citizenship and ability to obtain and maintain a national security clearance (TS/SCI preferred)

  • Ability to comply with export control requirements (ITAR/EAR)

  • Experience, and comfort in, forward-type environments often found with partners across the industrial base, defense, intelligence, aerospace, and robotics environments at the edge
  • Edge AI, inference optimization, or deployment in constrained settings (TensorRT, ONNX, or mobile inference as examples)
  • Background in autonomous systems, control, or real-time systems
    Startup or early-stage engineering experience
  • Understanding of secure systems engineering or DevSecOps experience in regulated industries, including degraded, intermittent, limited) networking constraints
  • Open-source contributions or demonstrable applied systems work, or a portfolio of "side projects" that demonstrate AI/ML, and engineering curiosity

Tags & focus areas

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Fulltime Ai Ai Engineer