Applied AI Research Engineer
Listed on 2026-07-08
-
Software Development
AI Engineer (Applied/Software), Machine Learning/ ML Engineer, AI Reliability/ Performance Engineer
About Code Metal
Code Metal is redefining code translation for mission‑critical industries, helping defense partners move more quickly and reliably from algorithm to silicon. Our platform accelerates deployment of DSP, RF, communications, and embedded signal processing algorithms onto heterogeneous compute targets, including GPUs, FPGAs, ASICs, and edge SoCs. We also support automotive, aerospace, and semiconductor partners deploying complex algorithms onto constrained hardware with speed and rigor.
AboutThe Role
We're building next‑generation AI systems that help military planners explore, compare, and evaluate operational courses of action. Our work combines frontier language models, simulation, planning, and verification into human‑in‑the‑loop decision‑support systems for defense applications. As an Applied AI Research Engineer, you’ll focus on human‑machine teaming and agentic AI to build systems that allow warfighters, planners, analysts, and decision‑makers to explore operational choices with speed, confidence, and control.
This role focuses on designing and building agentic AI systems – not chatbots. You'll develop multi‑agent workflows, fine‑tune and evaluate models, build retrieval pipelines, experiment with post‑training techniques, and integrate AI with simulation and planning software. You'll work closely with AI researchers, software engineers, and defense experts to turn research ideas into production‑ready capabilities. The goal is to make complex planning, wargaming, adjudication, and analysis workflows faster, more explainable, and more trustworthy.
ResearchAreas of Interest
- Human‑machine teaming for AI‑assisted course‑of‑action development, comparison, critique, refinement, and operational decision support
- Agentic planning systems that integrate language models with simulation, doctrine retrieval, external tools, structured outputs, and deterministic verification
- Adapting and optimizing foundation models through fine‑tuning, post‑training, distillation, reinforcement learning, and rigorous evaluation for planning and decision‑support tasks
- Multi‑agent AI systems for Red/Blue planning, control‑cell support, adjudication, branch‑and‑sequel analysis, and collaborative planning workflows
- Building reliable AI systems using self‑correction, structured reasoning, constraint‑aware generation, verification, and robust tool use
- Learning from human expertise through planner feedback, preferences, approvals, synthetic data generation, and human‑in‑the‑loop improvement
- Trustworthy AI for high‑consequence applications, with an emphasis on explainability, provenance, traceability, auditability, uncertainty estimation, and model behavior analysis
- Design and build agentic AI systems for planning, decision support, and human‑machine teaming
- Develop AI pipelines that integrate foundation models, retrieval, simulation, external tools, and deterministic software
- Design, run, and analyze experiments to evaluate model and agent performance, reliability, traceability, latency, cost, and user trust
- Fine‑tune, distill, and evaluate foundation models for domain‑specific planning, reasoning, and decision‑support tasks
- Build datasets, retrieval pipelines, automated benchmarks, and experiment infrastructure to support continuous model improvement and reproducible research
- Partner with software engineers to transition research prototypes into scalable AI services
- Collaborate with domain experts to translate operational workflows into AI‑enabled capabilities while ensuring AI outputs remain explainable, reviewable, and under human control
- Mission with impact:
Build AI systems that help users reason through high‑consequence operational decisions. - AI beyond demos:
Work on systems where models are paired with software, verification, simulation, guardrails, and human oversight. - Greenfield research:
Explore ambitious ideas in GenAI, RL, agentic workflows, evaluation, and human‑machine teaming. - Small‑team velocity:
Move quickly from research question to prototype to user‑facing capability. - Real users:
See your work tested by planners, analysts, engineers, and operational stakeholders.
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).