Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Bayesian Data Scientist – Advanced AI & Modeling

01 Advisors
London
3 weeks ago
Create job alert

all.health is at the forefront of revolutionizing healthcare for millions of patients worldwide. Combining more than 20 years of proprietary wearable technology with clinically relevant signals, all.health connects patients and physicians like never before with continuous, data-driven dialogue. This unique position of daily directed guidance stands to redefine primary care while helping people live happier, healthier, and longer.

Job Summary

  • We’re seeking a Bayesian Data Scientist with deep expertise in probabilistic modeling and a strong grasp of modern AI advancements, including foundation models, generative AI, and variational inference. This role is perfect for someone who thrives on solving complex modeling challenges, optimizing predictions under uncertainty, and developing interpretable, high-impact models in real-world systems. You will apply state-of-the-art techniques from Bayesian statistics and modern machine learning to build scalable, efficient, and insightful models—driving real business impact.

Responsibilities

  • Translate predictive modeling problems and business constraints into robust Bayesian or probabilistic AI solutions.
  • Design and implement reusable libraries of predictive features and probabilistic representations for diverse ML tasks.
  • Build and optimize tools for scalable probabilistic inference under memory, latency, and compute constraints.
  • Apply and innovate on methods like Bayesian neural networks, variational autoencoders, diffusion models, and Gaussian processes for modern AI use cases.
  • Collaborate closely with product, engineering, and business teams to build end-to-end modeling solutions.
  • Conduct deep-dive statistical and machine learning analyses, simulations, and experimental design.
  • Stay current with emerging trends in generative modeling, causality, uncertainty quantification, and responsible AI.

Requirements/Qualifications:

  • Strong experience in Bayesian inference and probabilistic modeling: PGMs, HMMs, GPs, MCMC, variational methods, EM algorithms, etc.
  • Proficiency in Python (must) and familiarity with PyMC, NumPyro, TensorFlow Probability, or similar probabilistic programming tools.
  • Hands-on experience with classical ML and modern techniques, including deep learning, transformers, diffusion models, and ensemble methods.
  • Solid understanding of feature engineering, dimensionality reduction, model construction, validation, and calibration.
  • Experience with uncertainty quantification and performance estimation (e.g., cross-validation, bootstrapping, Bayesian credible intervals).
  • Familiarity with database and data processing tools (e.g., SQL, MongoDB, Spark, Pandas).
  • Ability to translate ambiguous business problems into structured, measurable, and data-driven approaches.

Preferred Qualifications

  • M.Sc or PhD in Statistics, Electrical Engineering, Computer Science, Physics, or a related field.
  • Background in generative modeling, Bayesian deep learning, signal/image processing, or graph models.
  • Experience applying probabilistic models in real-world applications (e.g., recommendation systems, anomaly detection, personalized healthcare, etc.).
  • Understanding of modern ML pipelines and MLOps (e.g., MLFlow, Weights & Biases).Experience with recent trends such as foundation models, causal inference, or RL with uncertainty.
  • Track record of publishing or presenting work (e.g., NeurIPS, ICML, AISTATS, etc.) is a plus.

What we are looking for:

  • Curiosity-driven and research-oriented mindset, with a pragmatic approach to real-world constraints.
  • Strong problem-solving skills, especially under uncertainty.
  • Comfortable working independently and collaboratively across cross-functional teams.
  • Eagerness to stay up to date with the fast-moving AI ecosystem.
  • Excellent communication skills to articulate complex technical ideas to diverse audiences.


#J-18808-Ljbffr

Related Jobs

View all jobs

Senior Data Scientist

Data Scientist (ML, Speech, NLP & Multimodal Expertise)

Data Scientist (ML, Speech, NLP & Multimodal Expertise) | London

Data Scientist (ML, Speech, NLP & Multimodal Expertise) | Manchester

Data Scientist - Defence

Data Scientist

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

The Best Free Tools & Platforms to Practise Data Science Skills in 2025/26

Data science continues to be one of the most exciting, high-growth career paths in the UK and worldwide. From predicting customer behaviour to detecting fraud and driving healthcare innovations, data scientists are at the forefront of digital transformation. But breaking into the field isn’t just about having a degree. Employers are looking for candidates who can demonstrate practical data science skills — analysing datasets, building machine learning models, and presenting insights that solve real business problems. The best part? You don’t need to spend thousands on premium courses or expensive software. There are dozens of high-quality, free tools and platforms that allow you to practise data science in 2025. This guide explores the best ones to help you learn, experiment, and build portfolio-ready projects.

Top 10 Skills in Data Science According to LinkedIn & Indeed Job Postings

Data science isn’t just a buzzword — it’s the engine powering innovation in sectors across the UK, from finance and healthcare to retail and public policy. As organisations strive to turn data into insight and action, the need for well-rounded data scientists is surging. But what precise skills are employers demanding right now? Drawing on trends seen in LinkedIn and Indeed job ads, this article reveals the Top 10 data science skills sought by UK employers in 2025. You’ll get guidance on showcasing these in your CV, acing interviews, and building proof of your capabilities.

The Future of Data Science Jobs: Careers That Don’t Exist Yet

Data science has rapidly evolved into one of the most important disciplines of the 21st century. Once a niche field combining elements of statistics and computer science, it is now at the heart of decision-making across industries. Businesses, governments, and charities rely on data scientists to uncover insights, forecast trends, and build predictive models that shape strategy. In the UK, data science has become central to economic growth. From the NHS using data to improve patient outcomes to financial institutions modelling risk, the applications are endless. The UK’s thriving tech hubs in London, Cambridge, and Manchester are creating high demand for data talent, with salaries often outpacing other technology roles. Yet despite its current importance, data science is still in its infancy. Advances in artificial intelligence, quantum computing, automation, and ethics will transform what data scientists do. Many of the most vital data science jobs of the next two decades don’t exist yet. This article explores why new careers are emerging, the roles likely to appear, how current jobs will evolve, why the UK is well positioned, and how professionals can prepare now.