Melbourne | RACV Head Office
Permanent Full Time | Hybrid Working
Competitive Salary | Discounts on Selected RACV Products
New Role – Play a Key Part Within our Transformation Team
Great things start here
At RACV, you’ll work on meaningful AI problems in a trusted organisation with real customer, operational and employee use cases. You’ll have the autonomy to own features end-to-end while working alongside a high calibre AI and technology team that cares about shipping well, not just experimenting.
We’re looking for an AI Engineer who can independently design, build, deploy and improve LLM centric and agentic AI systems, from retrieval and orchestration through to evaluation, security and reliable production operation. This is a hands-on role for someone who wants to turn modern AI capability into dependable production software and who brings strong judgement in system design for scalable, high-quality services.
About the opportunity
As an AI Engineer, you’ll help shape and deliver RACV’s AI platforms, software and infrastructure. Working with minimal day to day supervision, you’ll own discrete workstreams and contribute to the technical quality of production AI solutions from design through to release and iteration.
You’ll work hands on across RAG, agentic workflows, tool use, multi-step reasoning, prompt and context engineering, while balancing the realities of running AI in production, including cost, latency, scalability, observability, system reliability and safety. From day one, you’ll embed security and responsible AI practices aligned to RACV governance expectations.
This role will suit an engineer who enjoys combining strong software fundamentals with fast moving AI techniques, and who wants to work where production quality, governance and practical business impact all matter.
What you’ll do
Reporting to the Lead AI Full Stack Engineer, you’ll deliver production grade AI solutions, including:
Build, deploy and maintain AI enabled applications, services and APIs used in real production environments
Design and implement LLM systems including RAG pipelines, agentic workflows, orchestration and context strategies
Develop AI pipelines, including serverless ingestion, transformation and analysis workflows across different data sources
Design systems and services that scale reliably in production, with clear attention to architecture, performance, fault tolerance and maintainability
Own prompt and context engineering for production, including prompt libraries, retrieval strategies and iteration cycles
Design and run structured LLM evaluation across accuracy, hallucination, relevance, safety, tool behaviour and other quality signals that matter in production
Define release readiness using evaluation baselines, acceptance thresholds, tracing and production feedback loops
Write production quality Python and TypeScript/JavaScript for applications, APIs and microservices
Deliver AI securely and responsibly, including controls around prompt injection, PII handling, audit logging and third party model risks
Design appropriate guardrails, approval steps and fallback paths for higher risk or higher impact workflows
Maintain reliable systems via CI/CD pipelines, containerised deployments (Docker/Kubernetes) and monitoring
Collaborate closely with data scientists, ML specialists, analytics, DevOps and Cybersecurity teams to move good ideas into dependable delivery
What you’ll bring
You do not need to match every tool or framework we use today. We’re most interested in engineers with strong production instincts, sound judgement and hands on experience across most of the areas below:
3–5 years’ experience in software engineering with a strong focus on AI and LLM technologies
Hands on experience building production systems using foundation models, RAG and agentic patterns
Strong production experience designing and operating systems at scale, with good system design fundamentals across reliability, performance and maintainability
Experience designing or operating data ingestion and transformation pipelines in a cloud environment
Experience with agent frameworks such as LangGraph, OpenAI Agents SDK, Microsoft Agent Framework, LlamaIndex or PydanticAI, or the ability to get productive quickly with equivalent tools
Practical experience running LLM evals and using tracing or observability to improve production quality
Strong prompt and context engineering capability for production workloads
Production level Python and TypeScript/JavaScript
Experience with APIs, microservices, CI/CD and container platforms
Working knowledge of cloud platforms (Azure preferred)
Applied understanding of responsible AI, AI ethics and AI specific security risks
Qualifications (desirable)
Degree in Computer Science, Cloud Computing, Mathematics or related field (or equivalent experience)
Experience with Azure Functions, Azure Durable Functions or similar serverless orchestration patterns
Azure/AWS certifications
Experience with LLM observability tools (e.g. LangSmith, Langfuse) or OpenTelemetry based tracing
Open-source contributions or exposure to ML training/fine tuning pipelines
What’s in it for you
The chance to help shape how AI is built, deployed and governed in production at RACV
High trust, high autonomy work with meaningful end to end ownership
The opportunity to work alongside experienced AI, engineering, data and security practitioners
Flexible, hybrid work environment
50% off home and car insurance
Free RACV roadside care
Discounts across RACV products and corporate partners
Our difference
At RACV, diversity and inclusion matter. We want our people to feel supported, valued and able to do their best work. If you need reasonable adjustments during the recruitment process or in the role, please let us know.
Application process
Learn more at careers.racv.com.au. Applicants must have the right to work in Australia and consent to a criminal record check. Submit your CV via the link below.
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