At a Glance
- Tasks: Build and deploy AI/ML solutions, automate workflows, and manage the ML lifecycle.
- Company: Join Ntrinsic Consulting, a leader in IT services and consulting.
- Benefits: Enjoy flexible working options and competitive rates based on experience.
- Why this job: Make a real impact with cutting-edge technology in a collaborative environment.
- Qualifications: Experience with AWS ML services, deploying models, and developing microservices is essential.
- Other info: Active SC clearance is mandatory; immediate start available.
The predicted salary is between 43200 - 72000 £ per year.
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Principal Consultant – 360 Recruiter | Account Management | Business Development
Full-Stack Data Scientist AI/ML
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.
- 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.
Seniority level
-
Seniority level
Not Applicable
Employment type
-
Employment type
Contract
Job function
-
Job function
Information Technology
-
Industries
IT Services and IT Consulting
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Full-Stack Data Scientist AI/ML employer: Ntrinsic Consulting
Contact Detail:
Ntrinsic Consulting Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Full-Stack Data Scientist AI/ML
✨Tip Number 1
Familiarise yourself with the specific AWS services mentioned in the job description, such as SageMaker and Redshift. Having hands-on experience or even personal projects showcasing these tools can set you apart during discussions.
✨Tip Number 2
Engage with the AI/ML community on platforms like GitHub or LinkedIn. Share your projects or insights related to deploying models and microservices, which can help you build a network and demonstrate your expertise.
✨Tip Number 3
Prepare to discuss real-world challenges you've faced in deploying ML models. Be ready to explain how you solved issues like model reproducibility or environment standardisation, as this shows practical knowledge.
✨Tip Number 4
Consider reaching out directly to the job poster or current employees at Ntrinsic Consulting via LinkedIn. A direct message expressing your interest and asking insightful questions can make a memorable impression.
We think you need these skills to ace Full-Stack Data Scientist AI/ML
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in AI/ML, particularly with AWS services and deploying models. Use specific examples that demonstrate your skills in building and deploying applications.
Craft a Strong Cover Letter: In your cover letter, explain why you're passionate about data science and how your background aligns with the responsibilities outlined in the job description. Mention your experience with tools like Hugging Face and CI/CD pipelines.
Showcase Your Projects: Include links to any relevant projects or GitHub repositories that showcase your ability to develop and deploy ML models. This will give the hiring team a clear view of your practical skills.
Highlight Collaboration Skills: Since the role involves cross-functional collaboration, emphasise your experience working with DevOps teams and your ability to communicate technical concepts to non-technical stakeholders.
How to prepare for a job interview at Ntrinsic Consulting
✨Showcase Your Technical Skills
Be prepared to discuss your hands-on experience with AWS Machine Learning services like SageMaker and Redshift. Highlight specific projects where you've deployed AI/ML models, as this will demonstrate your practical knowledge and ability to tackle real-world challenges.
✨Understand the ML Lifecycle
Make sure you can articulate the entire machine learning lifecycle, from training and validation to deployment and monitoring. Being able to explain how you manage these processes will show that you have a comprehensive understanding of what it takes to deliver successful AI solutions.
✨Communicate Effectively with Non-Technical Stakeholders
Since the role involves liaising between Data Science and DevOps, practice explaining complex technical concepts in simple terms. This skill is crucial for ensuring that all team members are on the same page and can collaborate effectively.
✨Prepare for Problem-Solving Questions
Expect questions about common challenges faced by Data Scientists, such as model reproducibility and deployment portability. Be ready to discuss how you've solved these issues in past projects, as this will showcase your problem-solving abilities and innovative thinking.