AI Data Scientist

CerVox
Cambridge
2 days ago
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Company Description

CerVox, founded in Cambridge, is guided by a simple purpose: to protect meaning as it moves and ensure truth remains whole as it spreads.

We work in deep stealth and focus on long-term, foundational breakthroughs rather than trends. Our team is small, thoughtful, and driven by clarity, precision, and purpose. We look for exceptional minds who want their work to matter and to build something that lasts.


Role Description

CerVox is hiring a small number of outstanding AI Data Scientists from the University of Cambridge.

Ideal candidates are MPhil or PhD graduates, or advanced researchers with strong technical depth and a desire to explore the mathematics of meaning and transformation.

You will work closely with the founder and research engineers to develop new representations of information and prototype early algorithms that push the frontier of AI-driven inference.

This role blends rigorous research with hands-on engineering.


What you'll do

• Design algorithms that capture semantic or numerical transformations

• Explore high-dimensional representations of meaning

• Build data and experimentation pipelines

• Prototype deep learning and embedding models

• Translate research into working systems

• Present insights through internal reports and visualisations


What We’re Looking For

• MPhil, PhD, or final-year Cambridge student in CS, Engineering, Maths, Physics or similar

• Strong Python and machine learning background

• Proficiency in NumPy, Pandas, scikit-learn

• Ability to think abstractly and rigorously about information

• Curiosity, discipline, and precision


What We’re Looking For

• Experience with transformer models or embeddings

• Interest in signal processing or data provenance

• Familiarity with PyTorch or TensorFlow

• Research in representation learning or information modelling


What We’re Looking For

Maxwell Centre, Cambridge — Cavendish Laboratory


Commitment

Full-time (open to near-term graduates or research interns transitioning to full-time)


Compensation

Competitive salary + early-stage options

Long-term role within the founding technical team


How to Apply

Send your CV or GitHub/LinkedIn and a short note on why you care about information, structure, or deep data science to:

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