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

Apply Now

Full-Stack Data Scientist AI/ML

Ntrinsic Consulting
Norwich
4 months ago
Applications closed

Related Jobs

View all jobs

Lead R Engineer / Data Scientist - Integrated Pest Management (IPM)

Senior Data Scientist - Consumer Behaviour - exciting ‘scale up’ proposition

Senior Mechanical Engineer

Quality Engineer

Data Scientist

Lead Data Scientist

Full-Stack Data Scientist AI/ML

Location:Hybrid – 40% on-site (client site, UK)

Security Clearance:Active SC or SC Eligible – Mandatory

Start Date:Immediate

Rate:negotiable with experience


You’ll play a critical role in building practical solutions to real-world data science challenges, including automating workflows, packaging models, and deploying them as microservices. The ideal candidate will be adept at developing end-to-end applications to serve AI/ML models, including those from platforms like Hugging Face, and will work with a modern AWS-based toolchain.


Your core responsibilities include:

  • Serve as the day-to-day liaison between Data Science and DevOps, ensuring effective deployment and integration of AI/ML solutions.
  • Assist DevOps engineers with packaging and deploying ML models, helping them understand AI-specific requirements and performance nuances.
  • Design, develop, and deploy standalone and micro-applications to serve AI/ML models, including Hugging Face Transformers and other pre-trained architectures.
  • Build, train, and evaluate ML models using services such as AWS SageMaker, Bedrock, Glue, Athena, Redshift, and RDS.
  • Develop and expose secure APIs using Apigee, enabling easy access to AI functionality across the
  • Manage the entire ML lifecycle—from training and validation to versioning, deployment, monitoring, and governance.
  • Build automation pipelines and CI/CD integrations for ML projects using tools like Jenkins and
  • Solve common challenges faced by Data Scientists, such as model reproducibility, deployment portability, and environment standardization.
  • Support knowledge sharing and mentorship across data Scientists teams, promoting a best- practice-first culture.


Essential skills:

  • Demonstrated experience deploying and maintaining AI/ML models in production
  • Hands-on experience with AWS Machine Learning and Data services: SageMaker, Bedrock, Glue, Kendra, Lambda, ECS Fargate, and Redshift.
  • Familiarity with deploying Hugging Face models (e.g., NLP, vision, and generative models) within AWS environments.
  • Ability to develop and host microservices and REST APIs using Flask, FastAPI, or equivalent
  • Proficiency with SQL, version control (Git), and working with Jupyter or RStudio
  • Experience integrating with CI/CD pipelines and infrastructure tools like Jenkins, Maven, and
  • Strong cross-functional collaboration skills and the ability to explain technical concepts to non- technical stakeholders.
  • Ability to work across cloud-based working experience in the following areas:
  • Deployment of ML Models or applications using DevOps pipelines.
  • Managing the entire ML lifecycle—from training and validation to versioning, deployment, monitoring, and governance.
  • Post-model deployment MLOps experience.
  • Building automation pipelines and CI/CD integrations for ML projects using tools such as Jenkins and Maven.
  • Solving common challenges faced by Data Scientists, including model reproducibility, deployment portability, and environment standardization.

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.

Why AI Careers in the UK Are Becoming More Multidisciplinary

Artificial intelligence is no longer a single-discipline pursuit. In the UK, employers increasingly want talent that can code and communicate, model and manage risk, experiment and empathise. That shift is reshaping job descriptions, training pathways & career progression. AI is touching regulated sectors, sensitive user journeys & public services — so the work now sits at the crossroads of computer science, law, ethics, psychology, linguistics & design. This isn’t a buzzword-driven change. It’s happening because real systems are deployed in the wild where people have rights, needs, habits & constraints. As models move from lab demos to products that diagnose, advise, detect fraud, personalise education or generate media, teams must align performance with accountability, safety & usability. The UK’s maturing AI ecosystem — from startups to FTSE 100s, consultancies, the public sector & universities — is responding by hiring multidisciplinary teams who can anticipate social impact as confidently as they ship features. Below, we unpack the forces behind this change, spotlight five disciplines now fused with AI roles, show what it means for UK job-seekers & employers, and map practical steps to future-proof your CV.

AI Team Structures Explained: Who Does What in a Modern AI Department

Artificial Intelligence (AI) and Machine Learning (ML) are no longer confined to research labs and tech giants. In the UK, organisations from healthcare and finance to retail and logistics are adopting AI to solve problems, automate processes, and create new products. With this growth comes the need for well-structured teams. But what does an AI department actually look like? Who does what? And how do all the moving parts come together to deliver business value? In this guide, we’ll explain modern AI team structures, break down the responsibilities of each role, explore how teams differ in startups versus enterprises, and highlight what UK employers are looking for. Whether you’re an applicant or an employer, this article will help you understand the anatomy of a successful AI department.

Why the UK Could Be the World’s Next AI Jobs Hub

Artificial Intelligence (AI) has rapidly moved from research labs into boardrooms, classrooms, hospitals, and homes. It is already reshaping economies and transforming industries at a scale comparable to the industrial revolution or the rise of the internet. Around the world, countries are competing fiercely to lead in AI innovation and reap its economic, social, and strategic benefits. The United Kingdom is uniquely positioned in this race. With a rich heritage in computing, world-class universities, forward-thinking government policy, and a growing ecosystem of startups and enterprises, the UK has many of the elements needed to become the world’s next AI hub. Yet competition is intense, particularly from the United States and China. Success will depend on how effectively the UK can scale its strengths, close its gaps, and seize opportunities in the years ahead. This article explores why the UK could be the world’s next global hub for artificial intelligence, what challenges it must overcome, and what this means for businesses, researchers, and job seekers.