At a Glance
- Tasks: Lead the design and implementation of cutting-edge machine learning systems for a new matching platform.
- Company: Join LSEG, a global leader in financial markets with a culture of innovation and collaboration.
- Benefits: Enjoy competitive pay, healthcare, flexible working, and opportunities for personal growth.
- Why this job: Make a real impact in the world of finance while working with advanced ML technologies.
- Qualifications: Expertise in AWS SageMaker, Python, and machine learning frameworks required.
- Other info: Be part of a diverse team that values your individuality and encourages new ideas.
The predicted salary is between 54000 - 84000 ÂŁ per year.
About Us: LSEG (London Stock Exchange Group) is more than a diversified global financial markets infrastructure and data business. We are dedicated, open-access partners with a dedication to excellence in delivering the services our customers expect from us. With extensive experience, deep knowledge and worldwide presence across financial markets, we enable businesses and economies around the world to fund innovation, manage risk and create jobs. It’s how we’ve contributed to supporting the financial stability and growth of communities and economies globally for more than 300 years. Through a comprehensive suite of trusted financial market infrastructure services – and our open-access model – we provide the flexibility, stability and trust that enable our customers to pursue their ambitions with confidence and clarity.
LSEG is headquartered in the United Kingdom, with significant operations in 70 countries across EMEA, North America, Latin America and Asia Pacific. We employ 25,000 people globally, more than half located in Asia Pacific.
Our People: People are at the heart of what we do and drive the success of our business. Our culture of connecting, creating opportunity and delivering excellence shape how we think, how we do things and how we help our people fulfil their potential. We embrace diversity and actively seek to attract individuals with unique backgrounds and perspectives. We break down barriers and encourage teamwork, enabling innovation and rapid development of solutions that make a difference. Our workplace generates an enriching and rewarding experience for our people and customers alike. Our vision is to build an inclusive culture in which everyone feels encouraged to fulfil their potential.
Role Summary: We are seeking a Principal Machine Learning Engineer (SageMaker, MLOps, Model Governance & Explainability) to provide technical leadership across the full lifecycle of machine learning systems powering a new matching platform. This role is accountable for defining ML architecture, establishing engineering standards, driving MLOps maturity, and ensuring that our models are scalable, secure, explainable, and governed to enterprise‑grade standards.
Key Responsibilities:
- Technical Leadership & Architecture: Define the end‑to‑end ML architecture for the matching platform, including data pipelines, model training workflows, inference runtimes, and telemetry ecosystems.
- Lead adoption of best‑in‑class MLOps patterns, platform tooling, and AWS SageMaker capabilities across training, processing, registry, monitoring, and deployment.
- Partner with platform, security, and data engineering teams to implement scalable data lakehouse oriented feature architectures and enterprise‑grade ML governance.
- Champion engineering standards for model quality, documentation, observability, and platform resilience.
- Feature Engineering & Data Architecture: Architect highly scalable, production‑ready feature pipelines within Lakehouse environments.
- Set the technical direction for fallback and resilience strategies (e.g., fallback pipelines).
- Establish and enforce data‑quality guardrails, validation schemas, and monitoring frameworks.
- Drive adoption and standards for enterprise feature stores.
- Model Development & Technical Excellence: Lead the design of ranking, scoring, and similarity models tailored to the matching platform requirements.
- Define model calibration, scoring logic, confidence thresholds, and optimisation strategies.
- Mentor teams on advanced ML techniques using Model frameworks such as PyTorch, TensorFlow, and XGBoost.
- Review and approve technical designs for complex modeling workflows.
- Explainability & Regulatory-Grade Reasoning: Establish explainability standards across the ML stack, using SHAP or equivalent frameworks.
- Define patterns to generate regulator‑ready reason codes, aligned with compliance requirements.
- Ensure explainability artefacts are accurate, robust, and traceable across model versions.
- ML Deployment & Automation (MLOps): Architect automated training, deployment, and retraining pipelines using AWS SageMaker.
- Set standards for model registry usage, automated approvals, and rollback orchestration.
- Drive infrastructure-as-code and CI/CD maturity for ML systems across multiple environments.
- Lead design of enterprise‑wide weight‑update patterns and lineage‑aware deployment strategies.
- Inference Runtime & Cross‑Account Productionisation: Architect low‑latency, high‑throughput inference services that meet strict matching platform SLAs.
- Lead the design of secure cross‑account IAM patterns for model consumption.
- Own end‑to‑end telemetry design, including scoring metrics, latency, error analytics, and SLOs.
- Partner with platform teams to optimise cost, scale, and reliability of inference endpoints.
- Monitoring, Drift Detection & Observability: Define observability standards for feature drift, concept drift, performance degradation, and data integrity.
- Lead the creation of dashboards, benchmarks, and automated alerting across the ML ecosystem.
- Ensure telemetry pipelines adhere to privacy, data minimisation, and compliance policies.
- Drive adoption of proactive failover, shadow-mode testing, and continuous validation patterns.
- Security, Compliance & ML Governance: Set and enforce ML-specific security standards including data minimisation, encryption, and PII handling.
- Oversee creation of Model Cards, lineage artefacts, and compliance documentation.
- Ensure ML systems meet governance standards for auditability, reproducibility, versioning, and traceability.
- Collaborate with InfoSec and Risk teams to define ML governance frameworks and secure cross‑environment workflows.
- Testing, Validation & Performance Engineering: Lead validation strategies using golden datasets, behavioural tests, and benchmark suites.
- Architect performance testing for latency‑sensitive inference paths and model hot paths.
- Establish standards for A/B testing, shadow deployments, canary rollouts, and controlled experiments.
Principal-Level Skills & Experience:
- Essential: Proven track record architecting and delivering production ML systems at scale in enterprise environments.
- Deep expertise with AWS SageMaker (training, processing, pipelines, endpoints, registry) and complementary AWS services.
- Expert-level Python and ML Model frameworks (e.g. PyTorch, TensorFlow, XGBoost).
- Strong thought leadership in MLOps automation, CI/CD for ML, and model lifecycle management.
- Advanced experience designing explainability systems, reason codes, and governance artefacts.
- Expertise in low‑latency inference architectures and real-time model serving.
- Strong grounding in drift detection, telemetry pipelines, observability patterns, and model QA.
- Experience shaping ML security practices, including cross‑account IAM, data minimisation, and PII-safe design.
- Ability to influence architecture, mentor senior engineers, and set long-term technical direction.
- Nice to Have: Experience building or leading feature store adoption.
- Background in ranking, search relevance, entity matching, or similarity modelling.
- Experience designing or governing multi‑account AWS ML platforms.
- Knowledge of distributed training, GPU/accelerator optimisation, and scaling strategies.
- Bachelors in a STEM subject, e.g. mathematics, physics, engineering, computer science, or adjacent degrees.
- Masters or PhD or equivalent experience in STEM desirable but not essential.
Career Stage: Manager
LSEG offers a range of tailored benefits and support, including healthcare, retirement planning, paid volunteering days and wellbeing initiatives.
Principal Machine Learning Engineer in Nottingham employer: LSEG
Contact Detail:
LSEG Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Principal Machine Learning Engineer in Nottingham
✨Tip Number 1
Network like a pro! Reach out to folks in your industry on LinkedIn or at events. A friendly chat can open doors that applications alone can't.
✨Tip Number 2
Show off your skills! Create a portfolio or GitHub repo showcasing your projects. This gives potential employers a taste of what you can do beyond your CV.
✨Tip Number 3
Prepare for interviews by practising common questions and scenarios related to machine learning. The more you rehearse, the more confident you'll feel when it counts!
✨Tip Number 4
Apply through our website! It’s the best way to ensure your application gets seen. Plus, you’ll be part of a community that values innovation and growth.
We think you need these skills to ace Principal Machine Learning Engineer in Nottingham
Some tips for your application 🫡
Show Your Passion: When writing your application, let your enthusiasm for machine learning and the role shine through. We want to see that you’re not just ticking boxes but genuinely excited about the opportunity to contribute to our innovative projects.
Tailor Your CV: Make sure your CV is tailored to highlight your experience with AWS SageMaker and MLOps. We love seeing specific examples of how you've tackled challenges in ML engineering, so don’t hold back on the details!
Be Clear and Concise: Keep your application clear and to the point. We appreciate well-structured responses that get straight to the heart of your experience and skills. Avoid jargon unless it’s relevant to the role – we want to understand your journey!
Apply Through Our Website: Don’t forget to apply through our website! It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen to be part of our team at LSEG.
How to prepare for a job interview at LSEG
✨Know Your ML Stuff
Make sure you brush up on your machine learning fundamentals, especially around AWS SageMaker and MLOps. Be ready to discuss your past projects and how you've tackled challenges in model governance and explainability.
✨Showcase Your Leadership Skills
As a Principal Machine Learning Engineer, you'll need to demonstrate your ability to lead teams and influence architectural decisions. Prepare examples of how you've mentored others or driven technical initiatives in previous roles.
✨Understand the Company Culture
LSEG values diversity, teamwork, and innovation. Familiarise yourself with their mission and values, and think about how your personal experiences align with their culture. This will help you connect better during the interview.
✨Prepare for Technical Questions
Expect deep technical questions related to ML architecture, feature engineering, and deployment strategies. Practice explaining complex concepts clearly and concisely, as this will showcase your expertise and communication skills.