Product Manager

Travtus
London
1 year ago
Applications closed

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Product Manager

Hybrid (London)

£50,000 - 70,000


If you are a driven individual with a passion for data products and want to be part of a successful, growing startup at the forefront of technology, we would love to hear from you.


About Us

Travtus is a pioneering R&D tech business based in London, developing innovative technology solutions for the North American residential Multifamily Real Estate industry. Our mission is to transform the way businesses in this industry operate by leveraging the power of data. Our enterprise-level clients use the Travtus platform and tools to transform their businesses. If you want to see how AI is positively impacting lives in the real world, this is the place to work.


About the Role

As a Product Manager, you will play a pivotal role in shaping the future of our products. This role requires you to gain a deep understanding of our customer's needs and a hands-on approach to scoping, coordinating and delivering new products. You will report directly to the CEO and collaborate closely with Engineering, Marketing and Data Science teams to deliver exceptional solutions to the multifamily industry that will improve resident's everyday lives.


Key Responsibilities

  • Work closely with the data analysis team to drive new feature ideation
  • Identify and analyze customer pain points, gather feedback, and maintain a strong understanding of customer needs.
  • Continuously work to improve the user experience and product usability
  • Work closely with software engineers and data scientists to translate product requirements into technical specifications, coordinating the end-to-end product development and delivery process
  • Report on key performance indicators (KPIs), product metrics, and progress against goals to the senior leadership team


Must have requirements

  • Proven product development experience in a start-up environment
  • Experience in delivering technology-focused B2B products
  • Ability to design and monitor KPIs, metrics or OKRs
  • Excellent analytical, problem-solving and communication skills
  • Ability to thrive in a fast-paced, ambiguous startup environment


Preferred, but not essential requirements:

  • Experience in delivering data-focused products
  • Experience with data analysis


Compensation, Perks & Benefits

  • Salary range: £50,000 - 65,000 (salary assessment will be primarily based on experience)
  • Deliveroo allowance
  • AXA Healthcare (including your family)
  • Pension


About the Team

Our team is a multi-disciplinary team of experts with everyone contributing their area of specialism; from infrastructure to knowledge graphs, Real Estate Operations to dialogue design. 

Working in a truly collaborative style, where everyone is heard and brings something valuable to the conversation allows us to push the boundaries in this new area of technology. We are fundamentally challenging the way one of the largest industries in the world operates, and our commercial success pays testament to the skill, commitment and passion that our team displays every day.


Apply now and help us shape the future of technology.




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