Senior Product Analyst

Numan
London
1 year ago
Applications closed

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About Numan

Founded in 2018, we’ve already grown to be a 200+ team distributed across the globe united by a singular mission: empowering people to take control of their health.

Numan is transforming health: we’ve built a cutting-edge platform that integrates diagnostics, medication, supplements, digital programmes, and doctor consultations, giving people the tools they need to maximise life.

To deliver on our transformative mission, we are guided by our 5 company values:

  1. Patients first.
  2. Deliver sustainable results at speed.
  3. Own the quality.
  4. Succeed together.
  5. Care deeply.

Backed by top-tier investors, Numan is already having a positive impact on hundreds of thousands of patients here in the UK, and we want you to help us deliver this mission!

The role:

Reporting to the Head of Product Analytics & Data Science, you will own product analytics and experimentation within the Men’s Health Business Unit. You will be responsible for identifying impactful, high-leverage areas of work to advance the Men’s Health proposition at Numan. Collaborating closely with a cross-functional team that includes a product manager, engineers, product designers, and a commercial manager, you will spearhead analytical discovery of patient trends and interactions. You will empower the team to run and analyse numerous product experiments, becoming an essential decision-maker within the team.

Joining a nascent product analytics and data science team, you will have the opportunity to shape the future of product analytics and data science at Numan.

Youll be:

  • Leading product analytics and experimentation within the Men’s Health Business Unit.
  • Identifying high-impact areas for analytical discovery and experimentation.
  • Collaborating with cross-functional teams to analyse patient trends and interactions.
  • Running and analysing multiple product experiments to support business decisions.
  • Defining and implementing best practices within the analytics and data science function.

We’re looking for someone who:

  • At least 2 years of experience in a high-growth tech environment, ideally within product analytics.
  • Strong SQL skills – you’ll be using SQL daily.
  • Python proficiency and experience working with experimentation frameworks.
  • The ability to communicate complex technical insights clearly to non-technical stakeholders.
  • A track record of conducting impactful analyses that drive business metrics, such as improving user retention or acquisition.
  • Using data analytics tools to analyse large datasets and derive actionable insights.
  • Designing, implementing, and generating multi-stakeholder dashboards.
  • A strong growth mindset and business intuition, ideally within a digital consumer environment.
  • Working independently and focusing on pragmatic solutions with high impact.

It’s a bonus if you have:

  • Experience with Google Cloud Platform (BigQuery, Cloud Run, etc.) and DBT.
  • Foundational skills in a statistical programming language (R, Python, etc.).
  • Knowledge of designing and running product experimentation.
  • Familiarity with key business metrics such as conversion, engagement, retention, and lifetime value.
  • Experience with data visualization tools such as Tableau, Looker, or Periscope.
  • Ability to define new product metrics from various data sources.
  • Knowledge of statistical methods (e.g., regression, clustering, segmentation).
  • Previous experience working with Looker, BigQuery, and dbt.
  • Understanding of software development best practices (e.g., Git).
  • Experience in a digital healthcare environment.

Our benefits include:

  • Share options.
  • 25 days holiday, plus bank holidays (increasing to 30 the longer you stay with Numan).
  • Health insurance withVitality.
  • Enhanced maternity and parental leave.
  • Employee assistance programme (access to therapy, financial planning and discounts).
  • Generous pension (includes both employee and employer contributions).
  • Flexible working options, including a dog friendly office in Farringdon.
  • Personal training and development budget via Learnerbly.
  • Wellhub membership, giving you access to over 2,000 locations in the UK.
  • Free office snacks including breakfast items, soft drinks, tea and coffee.
  • Cycle to work scheme.
  • Discount to Numan products for your friends and family.
  • Paid volunteering days.
  • An additional 2 weeks off once you reach your 5th anniversary with Numan.

Diversity at Numan

At Numan, people are at the heart of who we are. We recognise and value the unique perspectives and experiences that individuals from all backgrounds bring. We promote innovation and creativity, enabling us to tackle things from various viewpoints and are committed to equal opportunities and continuously strive to create a workplace where everyone feels respected, heard, and valued. Embracing diversity isnt just our goal; its our strength, driving us towards a more inclusive future.

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