Role purpose (overall high-level summary of the role)
Group AI Management and Strategy (AIMS) team is responsible for developing and implementing Group-wide strategic programs across HSBC aimed at accelerating the commercialisation and delivery of Artificial Intelligence / Machine Learning (AI/ML) across HSBC. Key areas of focus include responsible development practices, common platforms and capabilities, AI technology enablement, governance, and the Group-wide AI Strategy. We are seeking a hands-on and detail-oriented Lead AI Engineer, to join our Group AI Management and Strategy (AIMS) team. In this role, you will be responsible for designing, developing, deploying and maintaining robust Machine Learning and Generative AI solutions within HSBC. You will partner with value streams, businesses, and functions to deliver scalable, production-grade AI systems that drive business value. The ideal candidate will have a strong engineering mindset, excellent communication skills, and a passion for driving innovation through AI technology.
- Design end-to-end machine learning and AI systems that solve group-wide strategic problems; ensure architecture support scalability, real-time inference, and model governance Model Development & Experimentation: - Develop, train, and validate machine learning models using advanced techniques (deep learning, ensemble methods, transfer learning, LLMs, agentic systems); conduct rigorous A/B testing and statistical validation Production AI/ML Systems: - Build production-grade AI-ML pipelines including model training, evaluation, deployment, monitoring, and retraining workflows; implement AIOps,MLOps for models & LLMs; ensure model reproducibility and versioning AI Guardrails & Safety: - Implement guardrails, safety frameworks, and compliance controls for AI/ML systems; ensure models meet regulatory requirements, fairness standards, explainability requirements, and business risk tolerances Responsible AI adoption: - Collaborate with stakeholders to ensure responsible AI practices are adopted at scale, with a clear definition of metrics and benchmark for the same Model Monitoring & Governance: - Implement monitoring frameworks for model performance drift, data drift, and business metrics; establish governance processes for model versioning, approval, and retirement - Implement/assist cross-functional teams to develop MLOps framework and techniques
Minimum Experience and Key Competencies: 10+ years of professional experience in end-end AI/ML engineering development, AI/ML architecture design, or a related role Proven track record delivering 3+ ML/AI solutions to production preferably in enterprise or financial services environments Experience in deploying Gen AI solutions/LLMs through integration with software applications – Open AI GPT models, Google Gemini, Mistral, etc. and orchestration frameworks like LangChain, LangGraph Strong Python proficiency; clean code practices; expertise in designing modular, testable, maintainable ML systems; experience with design patterns and architectural principles. Hands-on experience in building new APIs in enterprise setting using modern, high-performance frameworks like FastAPI Hands-on expertise in building & deploying solutions on the public cloud platforms AWS/GCP/Azure etc.; multi-cloud capability a plus. Proven experience in deploying AI solutions at scale, in production, with experience working with big data
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Functional Knowledge
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Others
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