At a Glance
- Tasks: Transform ML models into reliable production systems and ensure data quality.
- Company: Join a pioneering company in connected commerce marketing with a collaborative culture.
- Benefits: Enjoy a competitive salary, wellbeing fund, flexible working, and extra days off.
- Other info: Be part of a diverse team that values growth, innovation, and fresh perspectives.
- Why this job: Make a real impact by engineering cutting-edge ML solutions in a fast-paced environment.
- Qualifications: Experience in ML production, strong Python skills, and familiarity with data platforms.
The predicted salary is between 60000 - 80000 £ per year.
Reporting to: Lead Data Engineer
Who are we?
We’re the original pioneers in connected commerce marketing.
Since 2008, we’ve been partnering with major retailers, powering global brands, and building meaningful connections with shoppers.
We simplify the mind-boggling complexity of today’s retail media landscape.
We deliver impactful campaigns that connect with people where it matters.
We create seamless and personalised shopping experiences.
Above all, we deliver amazing results for our partners, driven by our unshakeable desire for growth.
Time after time, we change the game.
SMG is home to a world-class suite of commerce advertising capabilities powered by data and cutting-edge technology.
We constantly push ourselves, our tech and our industry to discover innovative new ways to connect, sell and grow.
About the role
We are looking for a Machine Learning Engineer to join our Engineering Team.
The ML Engineer will turn experimental models into dependable production systems within SMG's Data function.
Working across the full ML lifecycle—feature engineering, model development, deployment and monitoring—the role makes the science real: robust, tested, performant model code running reliably at scale behind SMG's Core Intelligence Services, our forecasting, optimisation and recommendation capabilities.
At SMG, this role offers the opportunity to work with rich, high-volume commerce media datasets across multiple leading retail partners, engineering the models that drive analytics, AI and commercial decision‑making across modern commerce media networks.
Sitting alongside data scientists and data engineers, the ML Engineer is the person the team relies on for how production ML is built and run, setting the practical engineering standard by example in a lean, fast‑moving environment.
- What you’ll do
- Take models from prototype to production, turning data scientists' experimental work into robust, tested, performant systems that run reliably at scale across SMG's Core Intelligence Services.
- Feature engineering & ML data quality
- Own feature engineering and ML‑specific data quality: training‑data validation, feature and label integrity, leakage and skew checks.
- Take ownership of deploying, serving and monitoring your models in production—drift and performance monitoring, retraining triggers, and the reliability of ML workloads.
- Work with the Dev Ops team and Lead Data Engineer, helping shape the practical patterns for how this is done across the group.
- Shape evaluation approaches, retraining logic, and inference‑cost and performance improvements, helping define, not just follow, the ML engineering standards across the Data function.
- Partner day‑to‑day with data scientists on modelling, and with infrastructure engineering to ensure models are built to deploy cleanly on the platform.
- Set the practical standard for how we do ML engineering, reproducibility, testing and model review, leading by example within the team.
- What we’re looking for
- Hands‑on experience taking ML models into production.
- Strong software engineering fundamentals: production level Python, testing, version control and code review.
You write high‑quality, secure, maintainable code others can build on.
- Solid grasp of the full ML lifecycle: feature engineering, model development and evaluation, and the failure modes of models in production (drift, skew, data quality).
- Comfortable owning deployment and monitoring of your own models—CI/CD for ML, and the operational instinct to keep production workloads healthy.
- Exposure to at least one of forecasting, optimisation or recommendation systems, or clear aptitude to pick these up quickly.
- Practical experience with modern data platforms (Snowflake, Databricks, AWS/Azure) and collaborating closely with data engineering on the data that feeds models.
- Able to operate independently in a lean environment—owning delivery end to end and making sound technical calls with light direction.
- Previous experience within the Retail and Commerce Media space, or with other Ad Tech platforms.
- Familiarity with MLOps tooling (MLflow, orchestration, model registries) and feature stores.
- Familiarity with LLM systems—RAG, agentic patterns, evals, or productionising foundation‑model workflows.
We increasingly expect data‑centric roles to be conversant here, and there is an agentic dimension to our roadmap over time.
- Experience in a lean or one‑deep team where you have built breadth alongside depth.
We're looking for people who enjoy the buzz of change, the satisfaction of building something better, and the joy of working with a close‑knit, values‑driven team.
If you love variety, thrive in a fast‑paced environment, and embrace change with energy, this could be your right role.
Don’t meet every single requirement? We still want to hear from you. If you believe you’d thrive in this role, your unique perspective might be just what we’re looking for.
Why SMG?
At SMG, we hire for the future, which is fast‑moving and changing shape.
Do you have the potential to help shape our business?
We’re looking for brilliant, diverse talent who want to grow with us—people who are curious, ambitious, and eager to learn, whether as specialists or across teams.
We value those who take ownership of their growth and bring fresh perspectives.
That’s why we’re committed to equity, inclusion, and building a place where everyone feels empowered to grow.
At SMG, it’s not just about filling a role but building the future together.
Benefits
- 10% discretionary bonus
- £1,800 yearly wellbeing fund (on top of your salary!)
- Free Headspace subscription
- £500 yearly “Uni Fund” for learning
- 4 extra wellbeing days off per year
- Summer & Winter conferences + year‑round celebrations
- 4pm finishes every Friday
- Flexible and hybrid working
- Explore all our benefits here
Our full data retention policy can be found here.
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StudySmarter Expert Advice🤫
We think this is how you could land Machine Learning Engineer
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We think you need these skills to ace Machine Learning Engineer
Some tips for your application 🫡
Show Off Your Projects:In the world of data science, your projects can speak volumes about your skills. Make sure to showcase a few key projects in your CV or portfolio, especially those that highlight your ability to work with data sets, build models, or use relevant tools like Python, R, or SQL. Don’t forget to include links to any GitHub repositories if applicable!
Quantify Your Achievements:Employers love numbers! When drafting your CV, highlight your achievements with quantifiable results. For instance, mention how your data analysis led to a certain percentage increase in efficiency or revenue at a previous job or project. These details can really make your application pop!
Craft a Tailored Cover Letter:For a full-time role at SMG, your cover letter should reflect your passion for data science and your excitement about the specific projects or values of the company. Dive into why you’re a good fit, how your skills align with their needs, and any unique perspectives you can bring to the team.
Stand Out with Relevant Courses and Certifications:Although experience talks, relevant courses or certifications can be your ticket to impressing hiring managers at SMG. Mention any standout courses you've completed that equipped you with essential skills, such as machine learning certifications or data visualisation courses. This shows your commitment to continuously developing your skills in the field!
How to prepare for a job interview at SMG
✨Brush Up on Your Statistics
For a data science role, we need to seriously sharpen our statistics skills. Get ready to tackle technical questions on probability distributions, hypothesis testing, and regression analysis. These are often the bread and butter of data science interviews, so don't just skim over them!
✨Showcase Your Projects
Prepare a killer portfolio showcasing your data science projects. We should include details about the datasets used, the tools and techniques applied, and the impact of your findings. If we can walk them through a particularly challenging project or a cool visualisation that had real-world implications, it’ll really make us stand out!
✨Get Comfortable with Python and R
Most data science positions require us to be proficient in programming languages like Python and R. We should practice common libraries like pandas, NumPy, and scikit-learn, and be ready for live coding exercises or algorithm questions. Showing off our coding chops can really impress the interviewers at SMG!
✨Prepare for Case Studies
Expect to encounter real-world case studies during the interview. We might be asked how we’d approach a data problem or analyse a dataset to extract insights. It's essential to think out loud and demonstrate our problem-solving process so that the interviewer can see our logical thinking in action.