Data Scientist

microTECH Global LTD
Staines-upon-Thames
2 weeks ago
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Semantic Web Technology - 6 Month FTC


Role and Responsibilities

  • Develop and optimize machine learning models for disease prediction and early diagnosis.
  • Process and analyze structured and unstructured health data,including implementing deep learning for predictive healthcare applications.
  • Contribute to research on AI-driven personalization for visually impaired individuals.
  • Develop AI-powered accessibility solutions for next-generation devices and platforms.
  • Ensure compliance with data privacy regulations and ethical AI development standards.


Skills and Qualifications


Essential:

  • Proficiency in machine learning and deep learning frameworks, includingTensorFlow (2.x), PyTorch, and Scikit-Learn.
  • Strong programming skills in Python (experience with R or JavaScript is a plus).
  • Experience in processing health data (EHR, FHIR, wearable sensor data).
  • Knowledge of transformer models like BERT, GPT, Whisper, and T5 for text generation and accessibility applications.
  • Expertise in Semantic Web technologies (RDF/s, OWL), SPARQL query language, and reasoning standards (SHACL, SPIN).
  • Understanding of RAG and GraphRAG systems and architecture.
  • Experience building ontologies for e-commerce or semantic search applications.
  • Knowledge of Knowledge Graph and RAG-AI architecture.


Desirable:

  • Experience with OCR, image captioning, and object detection for assistive technologies.
  • Understanding of accessibility standards such as ARIA, WCAG, and screen readers (JAWS, NVDA, VoiceOver).
  • Background in EU-funded research projects (e.g., Horizon Europe, Digital Europe).
  • Familiarity with healthcare regulatory frameworks (GDPR, MDR, HIPAA).
  • Experience with multi-modal AI (text, image, audio) for accessibility applications.
  • Knowledge of Reinforcement Learning or Federated Learning for decentralized AI solutions.
  • Familiarity with cloud platforms like AWS, Google Cloud Platform (GCP), or Microsoft Azure.


If you are interested in hearing more, please apply below or send your CV to

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