Senior/Lead Data Scientist

Mention Me
London
2 days ago
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About Mention Me

Mention Me amplifies the authentic human voice in a world of AI marketing noise to drive profitable brand growth. We help brands identify true promoters, activate authentic recommendations and UGC, and align teams around a single source of Voice of Customer insights so real brand love compounds into performance across channels.


The opportunity

Become one of the top contributors to bring the new product vision live. Work end to end across metric design, data and modeling, experimentation, and product integration.


What You'll Do

  • Build components of new products that turn real customer signals into timely actions and measurable outcomes allowing customers to amplify consumer voice for LLM visibility advantage. Partner across Product, Engineering, CS, and Commercial to make the human signal visible, actionable, and compounding in the product
  • Establish experimentation and measurement foundations: design how we test, learn, and prove impact; embed sound statistical practice; and turn results into simple, trusted narratives that guide product and commercial decisions
  • Productionize and scale thoughtfully: ship durable data and model workflows in collaboration with the engineering team, ensure quality and monitoring, and document decisions so the system is reliable, explainable, and easy to evolve

What You'll Bring

  • Track record, typically 4+ years, in applied data science for product or marketing in consumer or SaaS
  • Continuous learning mindset: you stay current with generative AI advances, prototype with new models and frameworks, evaluate them critically, and translate useful innovations into practical product improvements. You share learnings and raise the bar for the team
  • Hands‑on ML skills: feature engineering, propensity or uplift modeling, model evaluation, monitoring
  • Strong Python and SQL with the ability to move from notebooks to production code
  • Practical data engineering instincts: event schemas, batch jobs, orchestration, data quality guardrails
  • Clear communication that translates complexity into actionable narratives for non‑technical audiences
  • Bias for action and ownership in ambiguous, fast‑moving environments

Nice to have

  • LLM applications for agentic solutions
  • Graph modeling
  • Personalization: propensity/uplift modeling, bandits, causal inference
  • Experience with dbt, Airflow, Looker or Metabase, AWS services such as S3 and Lambda
  • Experience in designing and implementing model/metric endpoints as part of a platform ecosystem with clear contracts and SLOs (e.g., FastAPI/Flask, OpenAPI), deploying via AWS Lambda/API Gateway or containers

Libraries: scikit-learn, XGBoost, LightGBM, CatBoost, CausalML, Keras, DoWhy


How We Work

  • Hybrid with in-person collaboration at our Vauxhall HQ and flexibility for focused work
  • Cross‑functional by default with close partnership across Product, Engineering, CS, and Commercial
  • Outcome‑driven with small releases, fast validation, and scaling what works

Benefits

Here are some of our favourite perks and benefits, but we have so many more!



  • Hybrid working
  • Private medical insurance with Vitality, including enhanced mental wellbeing support, dental and vision policies and a range of lifestyle benefits and great incentives
  • Life insurance
  • Two Celebration Days; additional time off for you to celebrate religious days, cultural events, birthdays, anniversaries, or any other significant day that's important to you
  • Enhanced parental leave
  • 25 days annual leave (plus public holidays), increasing over your time as a Mentioneer
  • Regular social events, from chocolate‑tasting and pottery‑making to poker nights and picnics
  • Up‑to‑date tech you'll need (we love Macs)

Referrals increase your chances of interviewing at Mention Me by 2x


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