Data Scientist Greece Mid Level in London

Data Scientist Greece Mid Level in London

London Full-Time 40000 - 50000 £ / year (est.) No working from home possible
Satalia (NPComplete)

At a Glance

  • Tasks: Build and iterate on ML models, analyse large datasets, and contribute to innovative AI systems.
  • Company: Join Satalia, a leader in enterprise-grade AI for top-tier clients.
  • Benefits: Enjoy remote work, flexible hours, generous leave, and a focus on wellbeing.
  • Other info: Collaborative culture with opportunities for personal and professional development.
  • Why this job: Make a real impact with cutting-edge AI technology while growing your skills.
  • Qualifications: 2-4 years of ML experience, strong Python skills, and a passion for AI.

The predicted salary is between 40000 - 50000 £ per year.

Role type: Full time

Location: Greece (fully remote)

Preferred start date: ASAP

About Satalia

Satalia builds enterprise‑grade AI systems for WPP and its FTSE 100 client base. Led by WPP Chief AI Officer Daniel Hulme, we run as a high‑autonomy, decentralised organisation where engineers and scientists own their domains end to end. We are building AI systems that operate on terabyte‑scale multimodal datasets to power the next generation of marketing intelligence.

The Role

  • Agentic pipelines — multi‑step LLM systems with tool use, planning, and self‑evaluation that automate complex marketing workflows end to end.
  • Domain‑adapted foundation models — fine‑tuning open‑weight LLMs (LoRA, RLHF, distillation) on proprietary WPP data for tasks like audience segmentation, creative scoring, and brand‑safety classification.
  • Retrieval‑augmented generation — production RAG systems over large proprietary corpora (embedding models, vector indices, re‑ranking) that serve real‑time answers to client queries.
  • Classical ML at scale — gradient‑boosted models, causal inference pipelines, and recommendation engines that run alongside LLM components in hybrid architectures.

You will work as part of an experienced team contributing directly to one or more of these workstreams. You'll have real ownership of your work — building models, running experiments, and shipping code to production — with guidance from senior scientists who will help you grow technically.

What You'll Do

  • Build and iterate on ML models — from data exploration and feature engineering through training, evaluation, and deployment.
  • Implement and maintain components of production ML pipelines: data pre‑processing, model serving, monitoring, and retraining workflows.
  • Contribute to LLM‑powered systems — building prompt chains, evaluation harnesses, RAG pipelines, or fine‑tuning workflows.
  • Analyse large multimodal datasets (text, image, video, structured metadata) to extract features and insights that feed downstream models.
  • Write clean, tested, production‑quality Python code — not just notebooks.
  • Participate in code reviews, design discussions, and experiment retrospectives.

What We're Looking For

  • 2–4 years of experience building ML models, with at least some of that work deployed to production.
  • Solid fundamentals in machine learning: understand bias‑variance trade‑offs, cross‑validation, regularisation, and can reason about why a model is underperforming.
  • Working proficiency in Python and comfort with core ML libraries.
  • Exposure to at least one of: NLP/LLMs, computer vision, recommender systems, or time‑series modelling.
  • Strong experience with software engineering practices — Git, testing, CI/CD, code review.
  • Curiosity about LLMs and modern AI tooling.
  • Clear communication — you can explain your modelling choices and results to both technical and non‑technical colleagues.

Nice to Have

  • Experience with LLM fine‑tuning, prompt engineering, or RAG systems.
  • Familiarity with cloud infrastructure (AWS/GCP), Docker, and orchestration tools.
  • Background in marketing technology, ad tech, or audience modelling.
  • A relevant MSc or PhD, or equivalent depth from self‑directed learning and project work.

What we Offer

  • Benefits healthcare; Remote working - café, bedroom, beach - wherever works;
  • Truly flexible working hours - school pick up, volunteering, gym;
  • Generous Leave – holidays in line with Greek Law, plus bank holidays and enhanced family leave;
  • Impactful projects - focus on bringing meaningful social and environmental change;
  • People oriented culture - wellbeing is a priority, as is being a nice person;
  • Transparent and open culture - you will be heard;
  • Development - focus on bringing the best out of each other;

Data Scientist Greece Mid Level in London employer: Satalia (NPComplete)

Satalia is an exceptional employer that fosters a collaborative and innovative work culture, allowing Lead Java Developers to thrive in a remote environment. With a strong focus on employee growth, you will have access to cutting-edge technologies and opportunities to lead impactful projects in the realm of optimisation and machine learning. Join us to be part of a forward-thinking team that values your contributions and supports your professional development.

Satalia (NPComplete)

Contact Details:

Satalia (NPComplete) Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Data Scientist Greece Mid Level in London

Tip Number 1

Network like a pro! Reach out to folks in the industry on LinkedIn or at meetups. A friendly chat can sometimes lead to job opportunities that aren't even advertised.

Tip Number 2

Show off your skills! Create a portfolio showcasing your ML projects, especially those involving LLMs or data analysis. This gives potential employers a taste of what you can do.

Tip Number 3

Prepare for interviews by brushing up on your Python and ML concepts. Be ready to discuss your past projects and how you tackled challenges. Confidence is key!

Tip Number 4

Don't forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we love seeing candidates who are proactive about their job search.

We think you need these skills to ace Data Scientist Greece Mid Level in London

Machine Learning
Python
Data Exploration
Feature Engineering
Model Training
Model Evaluation
Model Deployment

Some tips for your application 🫡

Tailor Your CV:Make sure your CV is tailored to the Data Scientist role. Highlight your experience with ML models and any relevant projects you've worked on. We want to see how your skills align with what we're looking for!

Showcase Your Projects:Include links to your GitHub or any other platforms where we can see your work. If you've built models or contributed to ML pipelines, let us know! We love seeing real examples of your coding prowess.

Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Explain why you're excited about this role and how your background makes you a great fit. Be genuine and let your personality come through – we’re all about people here at StudySmarter.

Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands. Plus, it shows us you’re keen on joining our team!

How to prepare for a job interview at Satalia (NPComplete)

Know Your ML Models

Make sure you brush up on your machine learning fundamentals. Be ready to discuss bias-variance trade-offs, cross-validation, and regularisation. They’ll want to see that you can reason about model performance, so prepare some examples from your past work.

Showcase Your Python Skills

Since writing clean, production-quality Python code is key for this role, be prepared to demonstrate your coding skills. You might be asked to solve a problem on the spot or discuss your previous projects, so have some code snippets ready to share.

Familiarise Yourself with LLMs

Given the focus on LLMs and AI systems, it’s crucial to show your curiosity and understanding of these technologies. Read up on recent advancements in NLP and be ready to discuss how you’ve applied these concepts in your work or projects.

Communicate Clearly

You’ll need to explain your modelling choices to both technical and non-technical colleagues. Practice articulating your thought process and results clearly. Consider preparing a few scenarios where you had to explain complex ideas simply.