Machine Learning Engineer

Specsavers
Whiteley
1 day ago
Create job alert
Overview

We’re on a mission to change lives through better sight and hearing and we believe machine learning and AI are key to making that happen. We’re looking for a Machine Learning Engineer to join our growing AI & ML Engineering team. If you’re excited by building intelligent solutions that make a real-world impact, this could be the role for you. You’ll join projects across a global organisation and collaborate with data engineers, MLOps specialists, and product owners to turn complex challenges into smart, scalable solutions.

Responsibilities
  • Design and build machine learning models and develop generative AI solutions.
  • Help shape the future of AI agents across the organisation, applying ML concepts to supply chain, marketing, clinical, in-store experiences, and other areas of the business.
  • Collaborate with data engineers, MLOps specialists, and product owners to bring ideas to life and deploy models in scalable, cloud-based environments.
Qualifications
  • Strong experience in Python, especially with the scikit-learn ecosystem and MLFlow.
  • Proficiency in SQL to manipulate and cleanse large datasets.
  • Solid understanding of both supervised and unsupervised machine learning techniques.
  • Experience evaluating and deploying models in a cloud environment.
  • Experience with AI APIs, pretrained open-source models, and tools like Databricks or Azure Cognitive Services is a plus.
  • Experience on end-to-end Gen AI solutions or applying ML in retail or ecommerce settings is desirable.
Soft Skills
  • Excellent communicator with the ability to explain complex technical ideas to non-technical stakeholders.
  • Strong ethical mindset, collaborative spirit, and a genuine enthusiasm for learning and innovation.


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