Applied Computing was founded in 2024 to build Orbital, a physics-informed foundation model for energy operations. We’re live across oil and gas, refineries, and petrochemicals, working towards our mission: sustainable abundance for a growing planet.
The hydrocarbon industry keeps the world running. But its complexity has left operators tied to legacy systems, making critical decisions on less than 10% of available data. We built Orbital to change that. It’s a foundation model built specifically for energy that lets companies use AI at scale, harnessing all of their operational
data and optimising in real time for any metric. Decisions get faster, operations get safer, and carbon intensity falls.
We’ve raised over $32 million, including one of the largest seed rounds for an
AI company in the UK. We’re just getting started
As a Senior Full Stack Engineer on the Core AI team, you will build the platform that makes Orbital a scalable product. You will own the internal application layers, developer facing APIs, shared UI components, and integration frameworks that power every Orbital deployment.
This is a product engineering role focused on building reusable systems. You will collaborate with AI research, Infra, and software teams to translate complex industrial workflows into reliable system components and intuitive user interfaces.
Your work will define how users interact with Orbital across control rooms, engineering teams, and cloud-based environments.
What Success Looks Like
- Orbital ships with high-quality dashboards and interfaces that users rely on daily
- Core APIs and services provide stable, well-documented contracts for AI, data, and automation features
- Frontend and backend codebases are modular, well-structured, and easy to extend
- Releases are frequent, reliable, and backed by strong CI/CD pipelines
- Features scale from one deployment to many without site-specific rework or bespoke
layers
- Develop backend logic that exposes:
- Time-series forecasts
- Physics-based model outputs
- LLM and agent outputs
As stable product features
- Create internal tools and workflows that support multiple engineering and operational use cases without custom deployments
- Ensure all application layers meet strict standards for:
- Reliability
- Security
- Observability
- Performance
Across cloud and on-prem environments
- Platform & Microservices Architecture
- Design and implement containerised microservices running in Kubernetes clusters
- Create shared services and libraries that enable reuse across Orbital verticals
- Define API boundaries and service contracts that allow AI and infra layers to evolve
independently
- Core Platform Engineering
- Collaborate with Product, AI Research, ML Engineering, and Infra teams on:
- Product requirements
- Long-term platform architecture
- Build interface layers that expose inference, physics-based reasoning, and optimisation
as first-class platform capabilities
- Implement abstractions for:
- Data ingestion
- Inference orchestration
- Scheduling
- Monitoring and health checks
- Establish design patterns and engineering standards that unify the Orbital ecosystem
- Software Engineering Excellence
- Write clean, modular, maintainable code across frontend and backend systems
- Set up and improve CI/CD pipelines for:
- Automated testing
- QA
- Rapid, safe releases
- Participate in code reviews and architectural discussions
- Leverage modern agentic coding tools to increase velocity while maintaining
correctness and readability
Benefits
Competitive salary and benefits
Ability to work from the office or remote
Employment contract in UK or India, EOR or contractor options available in other jurisdictions
Exciting high traction AI product
Applied computing is one of its kind revolution with a mission to deliver sustainable abundance for a growing planet,
through AI that works for the Energy Industry