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Data scientist (applied ml & recommendations)

Madrid
Lingokids
Publicada el 11 abril
Descripción

Lingokids is on a mission to help families raise amazing kids through Playlearning™. Ready to join us on this exciting journey?
Maximice sus posibilidades de que su candidatura sea seleccionada asegurándose de que su CV y sus habilidades se ajustan al perfil.
Lingokids is a global leader in educational technology, helping over
185 million families
worldwide raise amazing kids through
Playlearning™ ,our unique approach that blends education with play. Our mission is to empower children with modern learning experiences, combining educational subjects with essential life skills to help them grow into confident, conscious, and resilient lifelong learners.
Beyond our award-winning app, we’ve built a
multi-platform educational universe, including our
“ Baby Bot” and “ Baby Bot’s Backyard Tales” shows, Podcasts, and Music Publishing. Our content, developed in collaboration with top education experts and Oxford Press University, ensures an engaging, high-quality learning experience in a
safe, ad-free environment. This dedication to excellence has earned Lingokids multiple industry awards across app, podcast, and video categories, including
Best Original Learning App by Kidscreen Awards, National Parenting Product Awards by NAPPA Awards, and Best Parenting Product by Good Housekeeping,
among many others!
As a
Data Scientist (ML Engineering)
on the Product Engagement team, your mission is twofold:
keep our recommendation infrastructure robust, scalable, and production-ready, and
explore and validate more advanced recommendation algorithms
that could take our personalization to the next level. Where the Data Scientist (Recommendations & Experimentation) designs the statistical logic, you are the person who makes sure it actually works in production - at scale, reliably, and fast - while also pushing the frontier of what our recommendation engine is capable of technically. Think of yourself as the engineering backbone and the technical innovator of the recommendations squad.
What you'll do
Own the production recommendation infrastructure : maintain and improve the systems that serve personalized content to millions of users, ensuring reliability, low latency, and scalability as the catalog and user base grow.
Research and prototype advanced recommendation algorithms : explore newer approaches - deep learning-based models, contextual bandits, session-based recommendations, graph-based methods - evaluate their potential, and run controlled experiments to validate uplift before production.
Produce ML models and pipelines : take prototypes (from yourself or from the team's Data Scientist) and turn them into production-grade, monitored, maintainable features integrated into the live recommendation engine.
Design scalable infrastructure : anticipate bottlenecks and design systems that can handle larger catalogs, more complex segmentations, and higher traffic - including serving layer optimization, caching strategies, and pipeline orchestration.
Build and maintain
data pipelines in DBT and Databricks, ensuring clean transformations, data quality, and robust experimentation frameworks that the team can rely on.
Monitor model health in production : define retraining strategies, detect drift, and ensure recommendation quality is measured and maintained over time.
Collaborate closely with the Data Scientist and Senior Analyst to translate statistical insights and business requirements into engineering decisions.
What you'll bring
Python for ML and infrastructure : strong Python skills applied to model training, evaluation, deployment, and pipeline scripting. Writes production-quality, testable, version-controlled code - not just notebooks.
SQL and DBT : solid SQL and hands-on DBT experience to build and maintain reliable transformation pipelines with clear data lineage and quality controls.
ML production on AWS : hands-on experience deploying and monitoring ML models using AWS services (SageMaker, Lambda, ECS, Step Functions). Understands model drift, monitoring strategies, and retraining triggers.
Batch ML model training and evaluation pipelines : design, build, and maintain scalable machine learning training and evaluation pipelines that support recommendation systems and related personalization use cases. This includes developing robust, well-monitored workflows for model development, deployment, and continuous improvement, while contributing to the evolution of the recommendation infrastructure toward more adaptive and responsive systems over time.
Advanced ML algorithms : familiarity with recommendation techniques beyond collaborative filtering - e.G. neural approaches (two-tower models, transformers for sequences), contextual bandits, learning-to-rank. Knows how to evaluate and compare them rigorously.
Orchestration and CI/CD : experience with orchestration tools (Airflow, Prefect, or Dagster) for reliable, observable pipelines, and comfort with Git and CI/CD workflows for ML systems.
Scalability and system design mindset : can anticipate infrastructure bottlenecks, reason through architecture trade-offs (batch vs. streaming, horizontal vs. vertical scaling), and connect engineering decisions to business outcomes.
Nice to have
Experience with
real-time or low-latency serving layers
(Redis, DynamoDB or equivalent) - the system is currently batch, but session-level adaptation is a future direction.
Experience with
experimentation frameworks for ML systems, including online evaluation of recommendation algorithms (A/B tests, interleaving, counterfactual evaluation).
Knowledge of
modern data stack tools
(Snowflake, BigQuery, Fivetran).
Exposure to
knowledge graph or content graph approaches
for content-aware recommendation.
Interest in balancing
data-driven optimization
with
pedagogical or brand-driven constraints
(e.G. content diversity goals, curated onboarding, character injection).
English is a must:
We’re a multicultural team providing a service in
English, so while certifications aren’t necessary, fluency is essential. As a fully remote company, clear and effective
spoken and written communication, especially in asynchronous and long-form formats, is key to collaborating successfully.
Life at Lingokids
Career Growth:
Your growth drives our success! We invest in your development up to
€2,000 per year
for books and training;
so you can keep learning and growing with us.
Remote-Friendly:
Work from where you’re most productive, home or our offices in Madrid, anywhere within a
2-hour difference from Spain (GMT+1). The choice is yours!
Stock Options:
Your contribution matters! You'll receive
stock options, giving you the opportunity to own part of the company and share in its success.
Home Office Setup:
Create your ideal workspace with a
€400 allowance
for setup and
€35/month
for remote work expenses, because comfort fuels creativity!
Meal Allowances:
Get
€60/month
on your Cobee card to enjoy meals at restaurants or food delivery, good food makes everything better!
Flexible Compensation:
Manage your
meal, transport and childcare expenses
easily with
Cobee, integrating them directly into your payroll.
Health Insurance : Access
private health coverage
at exclusive rates through Adeslas, seamlessly deducted from your payroll, quality care made simple.
Language Lessons:
Learning never stops! Enjoy
free language classes
in Spanish and English, to sharpen your skills and stay connected in a global team.
Visa Sponsorship:
If you need a
visa to work in the EU, we’ll handle the process and cover the costs to make your transition seamless.
Company events : Yes! We’re a fully remote team spread across different countries, but we love getting together from time to time in different corners of Spain, for team gatherings and recharging at our amazing off‑sites!
Passion matters more than perfection
Didn’t check every box for this role? No worries! We’re looking for passionate, driven individuals who believe in our mission. If that sounds like you, we’d still love to hear from you!
Diversity, Equity, and Inclusion
At Lingokids, diversity isn’t just a checkbox—it’s at the heart of everything we do. Just like we teach kids to embrace differences, we celebrate them in our team, knowing that the best ideas come from unique perspectives. We’re all about creating a space where everyone feels valued, heard, and empowered to be their authentic selves. xhfqzwm No matter your background, identity, or story, if you’re passionate about making a difference in education, we want you here.
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Data scientist, ml engineering for scalable recommendations - lingokids
Madrid
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