At a Glance
- Tasks: Analyse data to improve client renewal outcomes and create insightful dashboards.
- Company: Join Marsh McLennan, a global leader in insurance and risk advisory.
- Benefits: Enjoy hybrid work flexibility, competitive salary, and professional development opportunities.
- Why this job: Make a real impact by transforming broker insights into actionable analytics.
- Qualifications: Bachelor's degree in a quantitative field and experience in analytics or data science.
- Other info: Collaborative environment with diverse teams and excellent career growth potential.
The predicted salary is between 36000 - 60000 ÂŁ per year.
The Product Analytics Analyst will partner with brokerage, client executives and product teams to deliver broker‑facing insights that improve renewal placement outcomes for clients. You will run hands‑on analysis, build and validate models and prototype dashboards that inform broker decisions during renewals. You will translate broker workflows into analytics requirements, produce actionable deliverables, and work closely with engineers to operationalise models and measurement.
Primary Responsibilities
- Engage with brokers and product stakeholders to capture renewal pain points and translate them into clear analytics problems and success criteria.
- Prepare, clean and feature‑engineer data from existing systems and processes (policies, claims, quotes, broker notes, rating history) and third‑party sources.
- Build, evaluate and validate models that produce required insights using appropriate techniques.
- Produce reproducible analysis notebooks and model artefacts (feature definitions, training pipelines, validation results).
- Prototype broker‑facing dashboards and report mock‑ups that translate model outputs into actionable broker guidance.
- Work with engineering/MLops to define data contracts, API specifications and acceptance criteria for operational models; support handover and testing.
- Document models, assumptions, data lineage and run bias/fairness checks in line with governance.
Expected outputs and deliverables
- Models that provide insights to support the renewal discussion.
- Prototype dashboards and wireframes for broker workbench (MVP/iterative versions).
- Feature and data dictionaries, ETL specification notes and examples of SQL queries.
- Playbooks and short “how‑to” guides for brokers to act on model‑driven recommendations.
Collaboration & stakeholder interactions (day‑to‑day)
- Brokers: run discovery sessions, pilot dashboards, gather feedback, iterate content and format; occasionally join broker renewal calls to observe workflows.
- Validate risk features, agree business rules and acceptability thresholds for automated recommendations.
- Engineering: write clear acceptance criteria, support user‑acceptance testing, review deployment steps and monitor production behaviour.
- BI/UX: partner on dashboard design, data visualisations and ensuring insights are interpretable for non‑technical users.
- Risk / Governance: provide documentation and respond to model governance queries; follow privacy and data access policies.
Required Tools, Technologies and Technical Proficiencies (levels)
- Python — Intermediate to Advanced (pandas, scikit‑learn, xgboost/lightgbm; testable scripting and notebooks).
- Statistical modelling — Intermediate (classification/regression, feature engineering, cross‑validation, calibration).
- BI & visualisation — Intermediate (Looker/Tableau/Power BI: prototype dashboards and deliverable‑ready visualisations).
- Data warehousing — Familiar to Intermediate (Snowflake / BigQuery / Redshift; understand schemas, partitioning).
- ETL / transformation — Familiar (dbt desirable; ability to author and review SQL‑based transformations).
- MLOps exposure — Familiar (experience packaging models, basic CI/CD, model monitoring concepts; not required to deploy end‑to‑end alone).
Necessary Skills, Education and Experience
- Technical skills: Python scripting & data science libraries, Data visualisation experience, Core statistical understanding, Familiarity with cloud data warehouses and ETL patterns, Exposure to MLOps concepts (versioning, monitoring) and Git.
- Business & interpersonal skills: Strong stakeholder management and communication; able to translate technical results into actionable broker guidance. Product‑minded: ability to scope MVPs and prioritise features for adoption. Commercial awareness of insurance renewal dynamics and placement outcomes.
- Education: Required: Bachelor’s degree in a quantitative or analytical discipline (e.g., Statistics, Mathematics, Computer Science, Economics, Engineering) OR equivalent practical experience. Preferred: Master’s degree in a quantitative field.
- Experience: Typical: 2–6 years in analytics/data science roles with demonstrable hands‑on modelling experience. Desirable: 1–3 years’ exposure to insurance/financial services or broker workflows; experience preparing models for production environments.
Marsh, a business of Marsh McLennan (NYSE: MMC), is the world’s top insurance broker and risk advisor. Marsh McLennan is a global leader in risk, strategy and people, advising clients in 130 countries across four businesses: Marsh, Guy Carpenter, Mercer and Oliver Wyman. With annual revenue of $24 billion and more than 90 000 colleagues, Marsh McLennan helps build the confidence to thrive through the power of perspective. For more information, visit marsh.com, or follow on LinkedIn and X. Marsh McLennan is committed to creating a diverse, inclusive and flexible work environment. We aim to attract and retain the best people and embrace diversity of age, background, disability, ethnic origin, family duties, gender orientation or expression, marital status, nationality, parental status, personal or social status, political affiliation, race, religion and beliefs, sex/gender, sexual orientation or expression, skin colour, or any other characteristic protected by applicable law. Marsh McLennan is committed to hybrid work, which includes the flexibility of working remotely and the collaboration, connections and professional development benefits of working together in the office. All Marsh McLennan colleagues are expected to be in their local office or working onsite with clients at least three days per week. Office‑based teams will identify at least one “anchor day” per week on which their full team will be together in person.
DCX Product Analytics Analyst (m/w/d) in City of London employer: Marsh
Contact Detail:
Marsh Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land DCX Product Analytics Analyst (m/w/d) in City of London
✨Tip Number 1
Network like a pro! Reach out to people in the industry, especially those who work at Marsh or similar companies. A friendly chat can lead to insider info about job openings and even referrals.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your analytics projects, dashboards, and models. This will give potential employers a taste of what you can do and set you apart from the crowd.
✨Tip Number 3
Prepare for interviews by practising common questions related to product analytics and data visualisation. Be ready to discuss your past experiences and how they relate to the role at Marsh.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining the team.
We think you need these skills to ace DCX Product Analytics Analyst (m/w/d) in City of London
Some tips for your application 🫡
Tailor Your Application: Make sure to customise your CV and cover letter to highlight the skills and experiences that align with the Product Analytics Analyst role. We want to see how your background fits into our world, so don’t hold back on showcasing relevant projects!
Show Off Your Technical Skills: Since this role requires a solid grasp of Python and data visualisation tools, be sure to mention any hands-on experience you have with these technologies. We love seeing practical examples, so if you've built dashboards or models, let us know!
Communicate Clearly: Your ability to translate complex analytics into actionable insights is key. Use clear and concise language in your application to demonstrate your communication skills. Remember, we’re looking for someone who can bridge the gap between technical and non-technical stakeholders.
Apply Through Our Website: We encourage you to submit your application directly through our website. It’s the best way to ensure it gets into the right hands. Plus, you’ll find all the details about the role and our company culture there!
How to prepare for a job interview at Marsh
✨Know Your Analytics Tools
Make sure you’re well-versed in the tools mentioned in the job description, especially Python and data visualisation software like Looker or Tableau. Brush up on your statistical modelling skills too, as you'll need to demonstrate your ability to build and validate models during the interview.
✨Understand Broker Workflows
Familiarise yourself with the insurance renewal process and how brokers operate. Being able to discuss specific pain points and how your analytics can address them will show that you understand the role and can provide actionable insights.
✨Prepare for Technical Questions
Expect technical questions related to data cleaning, feature engineering, and model validation. Practice explaining your thought process clearly and concisely, as this will help you convey complex ideas to non-technical stakeholders.
✨Showcase Your Communication Skills
Since stakeholder management is key, prepare examples of how you've successfully communicated technical results to non-technical audiences. Highlight any experience you have in gathering feedback and iterating on projects, as this will resonate well with the interviewers.