Audio recording and labelling
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I am a Clinical Scientist (Radiotherapy Physics) practising in the UK with end-to-end AI training-data experience across healthcare and STEM. Within our clinical workflow, I use an AI contouring tool to auto-segment organs on CT; I review and correct OAR labels, resolve misidentifications, and ensure DICOM-RT structure sets are ready for treatment planning—accelerating bespoke radiotherapy plans and feeding back high-quality labels to improve the model. Tooling: DICOM-RT, contour QA, Labelbox; domains: CT/MRI, dosimetry, oncology. Outside clinical work, I have built undergraduate-level physics datasets (Micro1), authored LaTeX-formatted golden responses, and designed/graded prompts and rubrics (Outlier, Mindrift). This work includes response comparison and error analysis, rubric correction, and prompt review, plus NDA-bound voice-data labelling (Alignerr/Labelbox). I hold an MSci (Medical Physics, UCL), completed the Scientist Training Programme (STP), and am a certified Clinical Scientist. I bring physics-grade precision, audit-ready documentation, and a strong feedback loop between clinical workflows and model improvement.
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we use an AI contouring tool at my current workplace to map and outline organs in CT scans. As a radiotherapy physicist, I frequently have to correct the AI when it misidentifies certain organs, thereby helping to improve the model. This process is important because it streamlines the creation of bespoke treatment plans for cancer patients.
Generating prompts (Physics at an undergraduate level), surveying responses generated by the current AI, correcting the responses by writing a ‘golden response’ and finally generating a set of rubrics so the AI can learn to reach the correct response. On top of generating prompts I was also involved in reviewing prompts generated by others and correcting them.
Reviewing LLM generated responses. Grading different models of responses across numerous criteria.
Micro1 - creating data sets answering Physics questions (from verified textbooks) at a university level. Generating golden answers/ responses in LaTex format.
Master of Science, Clinical Science (Medical Physics)
Master of Science, Medical Physics
Band 7 - Clinical Scientist (Radiotherapy Physics)
Band 6 - Trainee Clinical Scientist