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Machine Learning/Semantic Web - FTC

MicroTECH Global Ltd
Posted 8 hours ago, valid for 3 days
Location

Egham, Surrey TW20 9SU

Contract type

Full Time

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.

Sonic Summary

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  • An experienced AI/ML Engineer is needed for a role based in Egham with an immediate start requirement.
  • The position focuses on developing AI-powered healthcare solutions, accessibility enhancements, and energy management systems.
  • Candidates should have proficiency in machine learning and deep learning frameworks, particularly TensorFlow and PyTorch, along with strong Python skills.
  • A minimum of 3 years of relevant experience is required, and the salary offered is competitive based on experience.
  • Visa sponsorship is not available, so applicants must be able to start within one month of accepting the role.

We have an opportunity available for an experienced AI/ML Engineer to join a team based in Egham.

This position requires immediate start so we politely request that you only apply if you are available to start within 1 month of accepting the role. This means unfortunately visa sponsorship is not available.

Role and Responsibilities

The core focus area of our team is threefold; Develop AI-powered predictive healthcare solutions, integrating real-world health data from wearables, IoT devices and medical records to enhance early disease detection and personalized health monitoring Work on AI-powered accessibility solutions that improve digital and physical accessibility for individuals with disabilities, particularly in vision and cognitive support Focus on AI-driven energy management systems advancing sustainability and intelligent energy solutions for homes and businesses

Main Responsibilities:

Develop and optimize machine learning models for disease prediction and early diagnosis Process and analyze structured and unstructured health data - Implement deep learning for predictive healthcare applications Contribute to the research on AI-driven user personalization for visually impaired individuals Develop AI-powered accessibility solutions Ensure compliance with data privacy and ethical AI guidelines

Essential:

Machine learning & deep learning - Proficiency in TensorFlow (2.x), PyTorch, Scikit-Learn Strong skills in Python, experience with R or JavaScript is a plus Experience with Health data processing - HER, FHIR, Wearable sensor data Knowledge of transformer models (BERT, GPT, Whisper, T5) for text generation and accessibility tools Comprehensive knowledge of Semantic Web technologies (RDF/s, OWL), query languages (SPARQL) and validation/reasoning standards (SHACL, SPIN) Comprehensive knowledge of RAG and GraphRag systems and architecture Experience building ontologies in the e-commerce and semantic search spaces Knowledge Graph and RAG -AI Architecture

Desirable:

Experience with OCR, Image captioning, object detection for assistive technologies Understanding of ARIA, WCAG, screen readers (JAWS, NVDA, VoiceOver) Experience working in Horizon Europe, Digital Europe or other EU-funded research projects Familiarity with healthcare regulatory frameworks (GDPR, MDR, HIPAA) Experience in multi-modal AI (text, image, audio) for accessibility applications Knowledge of Reinforcement Learning or Federated learning for decentralised AI solutions Familiarity with cloud platforms (AWS, GCP, Azure)

Soft Skills:

Ability to work in interdisciplinary, international research teams Clear documentation and reporting skills for EU project deliverables Passion for AI applications in healthcare, energy and digital inclusion Self-learner, independent contributor, proposal writing.

Apply now in a few quick clicks

In order to submit this application, a Reed account will be created for you. As such, in addition to applying for this job, you will be signed up to all Reed’s services as part of the process. By submitting this application, you agree to Reed’s Terms and Conditions and acknowledge that your personal data will be transferred to Reed and processed by them in accordance with their Privacy Policy.