What You'll Do:
- Design and implement backend services, APIs, and workflows that support autonomy development — including learning, evaluation, simulation, and operational analysis.
- ∙Build and operate systems for orchestrating jobs and tasks across distributed environments, including containerized and clustered execution.
- ∙Design, implement, and maintain reinforcement learning training workflows: training loop orchestration, metrics collection, checkpointing, and experiment tracking.
- Develop tooling and interfaces that visualize high-dimensional, time-varying autonomy data — telemetry, model outputs, learning artifacts, and simulation results.
- ∙Approach feature development from an AI-first perspective, designing tools around how autonomy engineers reason about data, model performance, and failure modes.
Required Qualifications:
- 7–10 years of professional software engineering experience
- Strong proficiency in Go and Python, with production backend experience in both.
- Prior exposure to C++.
- Fluency in API design, service ownership, and data modeling.
- Experience building or operating task and job orchestration systems for ML or data workloads.
- Deep care for developer experience and user experience when building internal platforms and tools.
- Ability to take initiative, move quickly, and operate effectively in fast-paced environments.
- Taste matters more than syntax — you understand system architectures deeply and use frontier AI tooling to ship faster without losing that understanding.
Preferred Qualifications:
- Strong understanding of reinforcement learning workflows end-to-end, preferably in robotics or autonomy contexts.
- Experience with VLMs, VLAs, and foundation model fine-tuning pipelines (applied, not research).
- Familiarity with JavaScript/TypeScript and React for frontend development.
- Experience with containerized and distributed systems (Docker, Kubernetes, or similar orchestration platforms).
- Comfort with notebook-based workflows for experimentation, analysis, and debugging.
- Background in startups or early-stage teams, including founder or founding engineer experience.
- Experience building visualization-heavy, analysis-oriented tooling for complex datasets.
- Experience delivering software in constrained, secure, or operational-sensitive environments.
- Principal- $222,000-$333,000
- Senior Staff-$185,000-$278,000
- Staff- $156,000-$235,00
Shield AI Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Shield AI and has not been reviewed or approved by Shield AI.
-
Healthcare Strength — Healthcare coverage is described as excellent, spanning medical, dental, vision, mental‑health EAP, and optional pet insurance. Location‑based wellness perks such as onsite or discounted gym access reinforce the health offering.
-
Equity Value & Accessibility — Equity is positioned as a standard component of total rewards for full‑time employees, with stock/RSUs noted across roles. Access appears broad‑based rather than limited to select cohorts.
-
Leave & Time Off Breadth — Time‑off programs highlight paid parental leave alongside an accrual‑based PTO structure with a high carryover cap. Flexibility elements such as flexible hours complement the core leave offering.
Shield AI Insights
Similar Jobs
What We Do
Founded in 2015, Shield AI is a venture-backed deep-tech company with the mission of protecting service members and civilians with intelligent systems. Its products include the V-BAT and X-BAT aircraft, Hivemind Enterprise, and the Hivemind Vision product lines. With offices and facilities across the U.S., Europe, the Middle East, and the Asia-Pacific, Shield AI’s technology actively supports operations worldwide.
Why Work With Us
What makes Shield AI special is our people. We unlock the power of autonomy, and in the face of overwhelming odds and challenges, we find ways to win and make a difference for our customers. We bring together software, AI, and aerospace engineering disciplines to deploy the most intelligent aviation capabilities in the world.
Gallery







