A

Full Stack Software Engineer - Forward Deployed USA

Applied Computing Technologies Ltd
Full-time
Remote
United States

Description

We’re building Orbital, an industrial AI system that lives inside refineries and upstream assets, serving real-time insights to operators, technologists, and engineers. As a Forward Deployed Full Stack Engineer, you’ll make Orbital usable on the ground: building interfaces, APIs, and integration layers that bring AI outputs directly into operational workflows.

This isn’t a typical web dev role. You’ll work across back-end services, APIs, and industrial integrations, while also shaping front-end interfaces that can survive operator control rooms and engineering workflows. You’ll be customer-facing: working directly with site teams, adapting features in real time, and making sure the system sticks in production.

You won’t just productionise models, you’ll install Orbital on customer sites, integrate with live historian and process data pipelines, and ensure the system runs inside customer IT/OT networks.

Location:
You will be based in the U.S. or eligible to work there and ideally in Houston or willing to travel extensively to there

Core Responsibilities

Application Development

  • Build and maintain front-end dashboards and interfaces for refinery operators, technologists, and engineers.
  • Develop back-end APIs and services that integrate Orbital’s AI outputs into customer systems.
  • Ensure applications are secure, reliable, and performant in both cloud and on-prem environments.


Microservices & Integration

  • Develop services as containerised microservices, orchestrated in Kubernetes/EKS.
  • Connect front-end and back-end layers with message brokers (Kafka, RabbitMQ) and API gateways.
  • Integrate with industrial data sources (historians, LIMS, OPC UA, IoT feeds).


Forward Deployment & Customer Adaptation

  • Deploy full-stack applications in customer on-premise networks.
  • Work with process engineers, IT/OT, and operations teams to customise UI/UX for their workflows.
  • Debug and iterate features live in the field, ensuring adoption and usability.


Software Engineering Best Practices

  • Write clean, modular, and testable code across front-end and back-end.
  • Set up CI/CD pipelines for fast iteration and deployment.
  • Collaborate closely with product owners and ML engineers to align UI with model capabilities.
  • Adapt UX to site-specific workflows (control room, process engineering, production tech teams).
  • Collaborate with ML Engineers to surface inference + RCA results in usable, real-time dashboards.


Customer Facing

  • Deploy AI microservices in customer on-prem (often air-gapped or tightly firewalled) / our cloud clusters.
  • Connect Orbital pipelines to customer historians, OPC UA servers, IoT feeds, and unstructured data sources.
  • Build data ingestion flows tailored to each site, ensuring schema, tagging, and drift handling are robust.
  • Work with customer IT/OT to manage network, security, and performance constraints.

Requirements

  • Strong proficiency in JavaScript/TypeScript (React, Node.js) and back-end frameworks (FastAPI, Express, Django).
  • Solid working knowledge of Python for scripting, APIs, and data integration.
  • Experience building containerised microservices (Docker, Kubernetes/EKS).
  • Familiarity with message brokers (Kafka, RabbitMQ).
  • Proficiency with Linux environments (deployment, debugging, performance tuning).
  • Hands-on experience with AWS (EKS, S3, IAM, CloudWatch, etc.).
  • Bonus: exposure to time-series/industrial data and operator-facing dashboards.
  • Comfort working in forward-deployed, on-premise customer environments.

What Success Looks Like

  • Orbital has user-facing dashboards and APIs that operators actually use in production.
  • Applications run reliably in customer on-premise environments.
  • Features are rapidly iterated based on live user feedback from engineers in the field.
  • Full-stack code integrates seamlessly with Orbital’s AI/ML microservices.