As a Principal AI Engineer, you will play a pivotal role in transforming advanced AI concepts into impactful, production‑ready solutions within the Audit Technology team. You will lead a dedicated AI engineering squad, working closely with data scientists, data engineers, software developers, cloud architects, and audit professionals to build and scale AI‑driven systems that enhance audit quality, efficiency, and insight generation.
Responsibilities
- Leadership & Mentorship: Lead a high‑performing AI engineering team comprising software engineers and AI practitioners. Provide hands‑on technical direction, foster career growth, and cultivate a collaborative culture that emphasizes engineering excellence, innovation, and continuous improvement.
- Scalable AI Engineering: Drive the design, development, and deployment of production‑grade AI systems tailored to audit applications. Ensure solutions are scalable, reliable, and maintainable by applying strong software engineering principles, MLOps practices, and cloud‑native development.
- End‑to‑End AI Solution Delivery: Oversee the full lifecycle of AI product engineering—from architectural design and prototyping to CI/CD‑enabled deployment—using modern platforms and tools such as Azure ML, Databricks, MLflow, LangChain, and LangGraph. Champion automation, testing, and observability across pipelines.
- Operational Excellence: Define reusable development patterns, enforce coding standards, and promote MLOps best practices that support version control, performance optimisation, and maintainability.
- Cross‑Disciplinary Collaboration: Partner closely with data scientists, product managers, platform engineers, and QA teams to align on technical requirements, delivery timelines, and integration plans. Ensure AI capabilities are well‑embedded within core audit platforms and services.
- AI Governance & Risk Management: Implement engineering controls to support responsible AI use, including model monitoring, explainability, security, and auditability. Contribute to the operationalisation of AI governance frameworks to ensure regulatory and ethical compliance.
- Capability Building & Knowledge Sharing: Drive initiatives to enhance internal capabilities, empowering team members and the broader Audit Technology function with the skills and knowledge to adopt and adapt AI innovations effectively.
Qualifications
- Bachelor (preferably master or PhD) in Computer Science, Artificial Intelligence, Data Science, Statistics, Engineering, or a related technical field – or equivalent professional experience.
- Strong knowledge of generative AI, machine learning, deep learning, natural language processing and other relevant AI fields.
- Proven track record of designing, developing, and deploying AI systems in production environments.
- Proficient in Python and key ML libraries (e.g., PyTorch, PySpark, scikit‑learn, Hugging Face Transformers).
- Hands‑on experience with modern data platforms and AI tooling such as Azure ML, Databricks, MLflow, LangChain, LangGraph.
- Proven experience with modern engineering practices: Git, version control, unit testing and containerisation.
- Familiarity with agile work methodologies and tools like Jira and Confluence.
- Exceptional leadership and communication skills, with the ability to convey complex technical concepts to diverse audiences.
- Advanced certifications in AI, machine learning, cloud computing or data engineering are highly advantageous.
- Professional accounting qualification preferred, however not a requirement.
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