Artificial Intelligence Engineer

Impax Recruitment
Manchester
1 week ago
Create job alert

Location:Remote

Employment Type:Full-time | Permanent

Industry:Medical AI | Dental Imaging | Prosthetics


About the Role

This is an exciting opportunity to be thefirst hirein a brand-newAI/ML team, focused onmedical imaging and CBCT scan analysis. The company plans toexpand to 3 teams of 4 (12 total AI engineers), and you will play akey role in shaping the team, tech stack, and development process.


As thefirst AI/Machine Learning Engineer, you will buildAI-driven imaging solutions for dental, prosthetics, and medical applications, working withConvolutional Neural Networks (CNNs) and 3D medical imaging. You will behands-on, working with medical imaging data, training deep learning models, and collaborating with engineers and medical experts to develop cutting-edge solutions.


Key Responsibilities

Build and train AI modelsforCBCT scans, 3D medical image segmentation, and reconstruction.

Work with large-scale 3D medical datasets(CBCT, X-ray, MRI) to improve image analysis.

Optimise AI modelsfor real-time medical applications and accuracy improvements.

Develop AI-based automation toolsto assist indental and prosthetic modelling.

Process, clean, and integrate medical imaging datafor deep learning pipelines.

Collaborate with the CTO and future AI teamto define best practices and AI development strategies.

Ensure compliance with medical AI regulations(FDA, MDR, IVDR) and AI-driven Software as a Medical Device (SaMD).


Required Skills & Experience

Strong experience in AI & Machine Learning– Specialised inComputer Vision, CNNs, and Deep Learning.

Medical imaging experience– Worked withCBCT scans, X-rays, MRIs, or other 3D imaging technologies.

Programming skills– Proficiency inPython, TensorFlow, PyTorch, OpenCV, and C++.

Data handling– Experience inprocessing, annotating, and managing large-scale medical datasets.

Regulatory knowledge– Understanding ofAI in medical devices (FDA 510k, MDR, IVDR compliance).

Strong problem-solving mindset– Ability to innovate and optimise AI models for real-world applications.


Preferred Qualifications

PhD/Master’s in AI, Computer Vision, Biomedical Engineering, or related fields.

Experience working with dental imaging, prosthetics, or radiology AI.

Previous experience in a startup or leading an AI research team.


Why Join Us?

Be the first AI hire– Shape the AI team andplay a crucial role in building a world-class AI department.

Flexible work environment– Remote-first role withfully covered travel for interviews.

Competitive salary & benefitsbased on experience.

Work on groundbreaking AI-driven medical imaging solutionsthat improve patient outcomes.

Opportunity to lead– Potential to mentor andgrow into a senior/team lead positionas we expand to 12 AI engineers.

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