Principal Machine Learning Engineer in Nottingham

Principal Machine Learning Engineer in Nottingham

Nottingham Full-Time 80000 - 100000 £ / year (est.) No working from home possible
London Stock Exchange

At a Glance

  • Tasks: Lead the design and implementation of scalable ML systems using AWS SageMaker.
  • Company: Join a forward-thinking tech company focused on innovative machine learning solutions.
  • Benefits: Attractive salary, flexible working options, and opportunities for professional growth.
  • Other info: Dynamic team environment with a strong focus on collaboration and innovation.
  • Why this job: Shape the future of ML technology while mentoring the next generation of engineers.
  • Qualifications: Expertise in Python, AWS SageMaker, and ML frameworks required.

The predicted salary is between 80000 - 100000 £ per year.

Requirements

  • 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
  • (Desirable) Experience building or leading feature store adoption
  • (Desirable) Background in ranking, search relevance, entity matching, or similarity modelling
  • (Desirable) Experience designing or governing multi‐account AWS ML platforms
  • (Desirable) Knowledge of distributed training, GPU/accelerator optimisation, and scaling strategies
  • (Desirable) Bachelors in a STEM subject, e.g. mathematics, physics, engineering, computer science, or adjacent degrees
  • (Desirable) Masters or PhD or equivalent experience in STEM desirable but not essential

What the job involves

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.

You will contribute to the strategic direction of our ML platform—spanning data pipelines, model development, deployment automation, inference runtime design, telemetry, drift detection, and cross‐account productionisation. You will mentor engineers, influence product and architectural decisions, and ensure that our ML systems operate reliably at scale, underpinned by a robust governance and compliance framework. This is a highly hands‐on, highly technical, principal‐level role that combines architectural vision with deep practical expertise in ML engineering and AWS-native MLOps.

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. 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.

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.

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. 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. 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. 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. 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. 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 Machine Learning Engineer in Nottingham employer: London Stock Exchange

As a Principal Machine Learning Engineer at our innovative company, you will thrive in a dynamic work culture that prioritises collaboration and technical excellence. We offer competitive benefits, including professional development opportunities and a commitment to fostering your growth in the rapidly evolving field of machine learning. Located in a vibrant tech hub, our team is dedicated to pushing the boundaries of ML technology while ensuring a supportive environment where your contributions are valued and recognised.

London Stock Exchange

Contact Details:

London Stock Exchange Recruitment 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! Attend industry meetups, conferences, or webinars related to machine learning and AWS. It's a great way to meet potential employers and get your name out there.

Tip Number 2

Show off your skills! Create a portfolio showcasing your ML projects, especially those using AWS SageMaker. This gives you a chance to demonstrate your expertise in a practical way.

Tip Number 3

Prepare for interviews by brushing up on your technical knowledge and soft skills. Be ready to discuss your experience with MLOps, CI/CD, and model governance in detail.

Tip Number 4

Don't forget to apply through our website! It’s the best way to ensure your application gets noticed and you can keep track of your progress easily.

We think you need these skills to ace Principal Machine Learning Engineer in Nottingham

AWS SageMaker
Python
MLOps Automation
CI/CD for ML
Model Lifecycle Management
Explainability Systems Design
Low-Latency Inference Architectures

Some tips for your application 🫡

Show Off Your Experience:When you're writing your application, make sure to highlight your proven track record in architecting and delivering production ML systems. We want to see how you've tackled challenges in enterprise environments, so don’t hold back on the details!

Get Technical:Don’t forget to mention your expertise with AWS SageMaker and your skills in Python and ML frameworks like PyTorch or TensorFlow. We love seeing candidates who can dive deep into the tech, so share specific projects or experiences that showcase your knowledge.

Demonstrate Leadership:This role is all about technical leadership, so be sure to include examples of how you've influenced architecture or mentored other engineers. We’re looking for someone who can set long-term technical direction, so let us know how you’ve done this in the past!

Tailor Your Application:Make sure your application speaks directly to the job description. Use similar language and keywords to show that you understand what we’re looking for. And remember, applying through our website is the best way to get your foot in the door!

How to prepare for a job interview at London Stock Exchange

Know Your ML Architecture Inside Out

Make sure you can clearly articulate your experience with ML architecture, especially in relation to AWS SageMaker. Be prepared to discuss specific projects where you've defined end-to-end ML systems, including data pipelines and model training workflows.

Showcase Your MLOps Expertise

Highlight your knowledge of MLOps automation and CI/CD practices. Bring examples of how you've implemented best-in-class MLOps patterns and tools, and be ready to discuss how you ensure model governance and compliance in your previous roles.

Demonstrate Your Technical Leadership

This role requires mentoring and influencing others, so be prepared to share instances where you've led teams or shaped technical direction. Discuss how you've championed engineering standards and driven the adoption of new technologies in your past positions.

Prepare for Technical Deep Dives

Expect to dive deep into technical discussions about model explainability, telemetry design, and security practices. Brush up on frameworks like SHAP and be ready to explain how you've ensured model quality and compliance in your work.