Product Manager - Data & Insights

JustPark
London
2 weeks ago
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About JustPark
JustPark, established in 2006, is the UK's favorite parking app, parking a car every 2 seconds and processing £100m+ of parking income for our partners each year. With 13 million drivers and more than 250,000 spaces, we're proud to work with some of the UK's biggest Local Authorities, hotel chains and car park operators. JustPark markets and monetises both unused residential driveways and under-utilised car park capacity, benefitting drivers and creating revenue for space owners.

About The Role
We are looking for an experienced Product Manager to own the data domain within our product portfolio including our cutting-edge business intelligence solutions to help our parking partners make data-driven decisions and boost parking revenue. In this role, you will be leading the product management of all BI and data products including analytics, pricing, data democratization and AI-driven solutions. A key part of this role will be to evolve the Smarking product (branded as "JustPark Insights" in the UK) and integrate it holistically with our other products. This role can be based in either in London, UK or Dallas, Texas. Please indicate in your application which location you would be interested in.

Responsibilities:

  • Work closely with the Data leadership and key stakeholders to define the data product strategy and data initiatives that align with the company goals
  • Product-Manage ‘Smarking', a multi-million dollar ARR product relied on by leading cities, parking asset owners, parking operators, and universities
  • Establish the product roadmap that guides the development of data products and outlines the strategic vision for data initiatives
  • Oversee the development of data products, from ideation to deployment. Translate requirements of large data initiatives into smaller iterative deliverables
  • Collaborate with the Data Science team to define, execute and monitor data-led experiments
  • Drive the evolution of the data analytics platform while managing the prioritisation of data analytics requests ensuring that critical needs of the business are addressed in a timely manner
  • Establish key product metrics for the data domain and continuously measure to ensure the product meets customer needs and drives business value
  • Champion data literacy and promote centralization and operationalization of data and insights within the organization

Requirements:

  • 3-5 years of product management experience delivering data products including analytics, business intelligence reporting and data platform features
  • Strong understanding of data platforms and data science-led applications with the ability to engage at a technical level with Data and Analytics Engineering teams
  • Experience with BigQuery and Tableau
  • Excellent communication and interpersonal skills with the ability to align teams, resolve conflict and drive consensus
  • Experience delivering data products in a B2B SaaS or high-growth scale-up environment
  • Adept at working with cross-functional teams and collaborating effectively with business and technical stakeholders
  • Experience delivering machine learning or other AI-based data solutions

Benefits:

  • Investment in YOU and your wellbeing: competitive healthcare package & other wellness offerings!
  • Simplifying journeys so you can breathe easier: a range of travel related benefits for you to take advantage of such as parking credit and much more!
  • Recharge your batteries: lunches, snacks, drinks & other sustenance provided for you in the office & a generous holiday policy.
  • We look out for your family: enhanced parental leave offerings and childcare benefits
  • Look after the pennies to grow the £££'s!: 401k/pension offerings & referral schemes to continue growing our team
  • Success is best when it's shared!: regular social activities and opportunities to spend time with your colleagues outside of work on us!

Our Interview Process:

  • First-stage - 30-minute virtual video interview via Google Meet with the People Team to tell you more about JustPark and the role and learn more about your experience
  • Second-stage - 45-minute virtual video interview via Google Meet with the Hiring Manager to get a deeper understanding of your technical skills and experience
  • Third-stage - Technical task - to be completed at-home. We always make sure that the task is relevant for the role and as efficient as possible. Our tasks vary in length based on role & seniority but the task wouldn't take longer than a max. of 3-4 hours to complete
  • Final stage - A 1 - 1.5 hour (depending on seniority) final interview in our lovely office in Camden (or virtually if necessary). You'd be asked to present your technical task back to the team and you will be asked follow up questions on your approach and thinking & final-interview type cultural questions

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Product Management

Industries

IT Services and IT Consulting

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