AI/ML Engineer

Henderson Brown Recruitment
Pampisford
1 year ago
Applications closed

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The Company: A dynamic, AI-driven technology company focusing on innovative solutions in healthcare and manufacturing, based in Cambridgeshire. With a passion for developing cutting-edge AI/ML systems, this company specialises in video analysis, workflow tracking, and supply chain optimisation. By combining the latest advances in machine learning and computer vision, they aim to revolutionise how medical devices and manufacturing processes are tracked and managed. As a growing start-up, they offer a flexible working environment, combining remote opportunities with occasional in-person collaboration in Cambridge. The company is poised to expand rapidly. The Role: This is an exciting opportunity for someone who has recently finished an AI/ML related PHD to join a rapidly expanding team. The successful candidate will be instrumental in leading AI/ML projects related to video-based workflow optimisation and supply chain tracking, with an emphasis on healthcare and manufacturing use cases. As an AI/ML Engineer, you will: Install and implement AI-driven vision systems for hospitals and manufacturing companies. Annotate videos, programme AI models, and crunch data to present actionable insights. Oversee projects such as tracking medical devices through supply chains, optimising operating room changeover times, and performing quality control on production lines. Key Responsibilities: Be accountable for end-to-end AI/ML projects, from initial programming to the implementation of vision systems. Manage video annotation, data analysis, and reporting of insights. Collaborate with cross-functional teams to tailor AI models to specific use cases. Ensure the delivery of high-quality solutions within agreed timelines. Who We're Looking For: Strong coding skills, particularly in machine learning, computer vision, and video analysis. Experience in AI/ML model development and data-heavy projects. Deep understanding of workflows in healthcare or manufacturing settings is a plus. Ability to work both independently and as part of a fast-growing team. Key Technical Qualifications: PHD with a Computer Science, AI/ML focus. Proficiency in AI/ML programming languages such as Python, TensorFlow, or PyTorch. Experience with computer vision and video annotation techniques. Solid knowledge of data science, data analytics, and workflow optimisation. Salary & Benefits: Base Salary: £40,000 - £55,000, depending on experience and skills. Bonus: Share incentives and equity options. Holiday Package: 25 days annual leave 8 bank holidays. Flexible Working. Development Opportunities: Opportunity to grow with the company. What Makes This Opportunity Unique: This role offers the chance to be at the forefront of AI/ML innovation, working on groundbreaking projects in both healthcare and manufacturing. With significant growth potential, share incentives, and the flexibility to work remotely, this is an ideal position for a candidate looking to leave the security of their current role to join a dynamic and visionary company. You'll have the chance to make a real-world impact by optimising critical processes in medical and industrial environments

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