Manager of Artificial Intelligence
Our client is expanding its advanced AI capability across mission-critical platforms used in environments worldwide. Fimador are seeking a rare blend of hands-on AI engineer, technical authority, and team leader — to shape how their intelligent systems are designed, built, and responsibly deployed at scale.
This is not a management-only role. This is for someone who still loves to build, solve complex engineering problems, guide other engineers, and set the technical direction for AI across large, high-impact systems.
Key Responsibilities:
- Architect, design, and deliver scalable AI and machine learning solutions end-to-end.
- Remain hands-on in building complex AI components and solving model or system challenges.
- Lead, mentor, and technically guide a team of AI engineers and developers.
- Define engineering standards, development practices, and quality benchmarks for AI initiatives.
- Own technical estimations, feasibility assessments, and delivery quality across AI workstreams.
- Lead technical troubleshooting, root cause analysis, and performance optimisation.
- Collaborate closely with architecture, product, and DevOps teams to embed AI into larger ecosystems.
- Continuously assess and introduce new AI tools, frameworks, and approaches to maintain innovation.
About you:
This role suits a senior engineer who has evolved into a technical leader without losing their passion for building.
- Ideally a degree in Computer Science, Engineering, or similar.
- 5+ years of software engineering experience using modern object-oriented languages (e.g., Java, C#, Python).
- Strong Python capability alongside at least one other major language.
- Practical experience building with Generative AI technologies in real solutions.
- Experience leading or mentoring engineering teams (6+ engineers).
- Strong foundations in OOP, system design, and engineering best practices.
- Hands-on knowledge of AI/ML frameworks such as TensorFlow, PyTorch, or scikit-learn.
- Experience with orchestration/integration frameworks such as LangChain or Semantic Kernel.
- Solid understanding of ML concepts (supervised/unsupervised learning, transformers, CNNs/RNNs, model evaluation).
- Experience with prompt engineering, RAG pipelines, and model fine-tuning.
- The judgement to identify where AI adds value — and where it doesn’t.
- Experience deploying and operationalising LLMs (exposure to Microsoft AI Foundry or Ollama advantageous).
- Strong grasp of CI/CD, testing, version control, secure coding, and modern engineering workflows.
- Exposure to MLOps tools such as MLflow, Kubeflow, or Azure ML.