At a Glance
- Tasks: Design and build cutting-edge AI infrastructure for predictive maintenance and parts procurement.
- Company: Join Digital Iron, a leader in intelligent infrastructure for heavy equipment.
- Benefits: Flexible remote work, competitive salary, and opportunities for professional growth.
- Why this job: Make a real impact by transforming how industrial equipment is maintained with innovative technology.
- Qualifications: Experience in backend engineering, graph databases, and enterprise integration required.
- Other info: Be part of a dynamic team with excellent career advancement opportunities.
The predicted salary is between 36000 - 60000 ÂŁ per year.
At Digital Iron, we're building the intelligent infrastructure that powers predictive maintenance and parts procurement automation across the heavy equipment ecosystem. We work with customers to transform how industrial equipment is maintained.
We're looking for an AI Infrastructure Engineer who combines deep technical expertise in distributed systems with strategic thinking about integration architecture. You'll need exceptionally high standards for data accuracy, first-principles problem solving, and an obsession with building systems that scale across diverse partnership models.
As our first dedicated infrastructure engineer, you'll work on problems at the intersection of knowledge graphs, real-time IoT data, and enterprise integration—building infrastructure that thousands of businesses will depend on.
What You'll Own- Design the framework that supports multiple partnership and customer models: Deep Embedded (white-label components), Best-of-Breed SaaS (standalone platform with APIs), Data Layer Only (predictions via API)
- Evaluate architectural tradeoffs across complexity, risk, scalability, time-to-market, and value capture for each pattern
- Make build vs. buy decisions: direct API integrations vs. iPaaS middleware vs. embedded agents
- Define authentication strategies across OAuth 2.0, certificate-based auth, and federated identity for different customer security models
- Create deployment patterns that work across on-premise, cloud, and hybrid environments
- Design for portfolio risk
- Design Integration Architecture
- Build bi-directional integrations with customer ERP systems and telematics platforms.
- Architect event-driven systems that turn predictive alerts into automated workflows.
- Implement multiple integration patterns (Direct API, middleware/iPaaS, embedded agents, webhooks) to support different partnership and customer models.
- Build Knowledge Graph Systems
- Transform flat parts catalogs into semantic networks using AWS Neptune.
- Design ontologies that capture ACES (fitment) and PIES (attributes) standards for heavy equipment.
- Build ingestion pipelines that parse customer data and extract compatibility relationships.
- Implement graph traversal algorithms for multi-hop reasoning ("find compatible substitute parts in stock").
- Develop Agentic Workflows
- Create AI agent orchestration using Amazon Bedrock that breaks complex requests into multi-step workflows.
- Build tool functions agents invoke: graph queries, customer API calls, inventory checks, order placement.
- Implement GraphRAG systems that ground LLM responses in structured graph data to prevent hallucination on critical fitment recommendations.
- Graph & Semantic Systems
- Experience with graph databases (Neptune, Neo4j) and ontology design
- Ability to model complex domain relationships as graph structures, not tables
- Understanding of semantic query languages (Gremlin, SPARQL) and entity resolution
- Backend Engineering & Data Systems
- Strong Python for data pipelines, graph operations, and application logic
- Experience with database design across relational and graph paradigms
- Background normalizing data from disparate sources with conflicting formats
- Enterprise Integration & API Design
- Track record designing bidirectional API integrations with enterprise systems
- Experience with event-driven architectures, webhooks, and async workflows
- Knowledge of authentication models (OAuth 2.0, SAML, certificate-based)
- Data Engineering Excellence
- Strong experience normalizing data from disparate sources with conflicting formats
- Obsession with accuracy where 99% is insufficient—compatibility data must be correct
- Experience building automated validation and conflict resolution systems
- Ability to model complex business domains (you'll learn heavy equipment specifics)
- Experience in automotive, heavy equipment, or industrial IoT domains
- Experience with embedded/white-label integration models or AI agent frameworks
- Knowledge of industry standards (ACES, PIES, OAGIS) or similar B2B data formats
- A network of sec-ops and ML compliance resources and colleagues to tap as we scale our team
- TypeScript for backend services and integration middleware
- Experience working with founders to evaluate integration architectures across different partnership strategies (deep embedded, best-of-breed SaaS, data layer only)
- You prefer infrastructure automation over application architecture
- You're more comfortable with Kubernetes and Terraform than APIs and databases
- You need complete requirements before designing systems
- You view integration work as "plumbing" rather than strategic architecture
Leadership & Team - You will have one staff-level engineering direct report with dotted lines across a team of engineers. You will be expected to deliver 80% hands-on code development with 20% oversight across our vendors, strategy and a direct report. We can be flexible on title for the right candidate.
Role Details- Location: US (East Coast & Mid-West remote only), South London & Belfast Office (Hybrid)
- Visa: Cannot sponsor at this time
- Start: Immediate availability preferred
If you're excited about designing backend systems at the intersection of graph databases, enterprise integration, and AI agents—where your technical decisions have direct business impact—we want to hear from you.
AI Backend Engineer - Data & Integration in Lisburn employer: Digital Iron
Contact Detail:
Digital Iron Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land AI Backend Engineer - Data & Integration in Lisburn
✨Tip Number 1
Network like a pro! Reach out to folks in the industry on LinkedIn or at meetups. A friendly chat can lead to opportunities that aren’t even advertised yet.
✨Tip Number 2
Show off your skills! Create a portfolio or GitHub repo showcasing your projects, especially those related to AI and integration. This gives potential employers a taste of what you can do.
✨Tip Number 3
Prepare for interviews by practising common technical questions and scenarios relevant to backend engineering. We recommend doing mock interviews with friends or using online platforms.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive!
We think you need these skills to ace AI Backend Engineer - Data & Integration in Lisburn
Some tips for your application 🫡
Tailor Your Application: Make sure to customise your CV and cover letter for the AI Backend Engineer role. Highlight your experience with graph databases, API integrations, and any relevant projects that showcase your skills in building scalable systems.
Showcase Your Problem-Solving Skills: We love candidates who can think critically! Use your application to demonstrate how you've tackled complex problems in the past, especially those related to data accuracy and integration architecture.
Be Clear and Concise: When writing your application, keep it straightforward. Use clear language and avoid jargon unless it's relevant to the role. We want to see your technical expertise without getting lost in overly complicated explanations.
Apply Through Our Website: Don’t forget to submit your application through our website! It’s the best way for us to receive your details and ensures you’re considered for the role. We can’t wait to see what you bring to the table!
How to prepare for a job interview at Digital Iron
✨Know Your Graph Databases
Make sure you brush up on your knowledge of graph databases like AWS Neptune and Neo4j. Be ready to discuss how you've used these technologies in past projects, especially in relation to ontology design and semantic query languages like Gremlin or SPARQL.
✨Master the Integration Patterns
Familiarise yourself with various integration patterns such as direct API integrations, middleware/iPaaS, and embedded agents. Prepare examples of how you've implemented these in real-world scenarios, particularly focusing on event-driven architectures and bidirectional API integrations.
✨Showcase Your Data Accuracy Obsession
Since accuracy is crucial for this role, be prepared to talk about your experience normalising data from disparate sources. Highlight any automated validation systems you've built and how you ensure that compatibility data is always correct.
✨Think Strategically About Architecture
This role requires a strategic mindset when it comes to integration architecture. Be ready to discuss architectural trade-offs you've made in the past, including build vs. buy decisions, and how you've approached designing systems that scale across different partnership models.