Senior Product Manager - Services (Remote - United Kingdom)

Yelp
11 months ago
Applications closed

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JOB DESCRIPTION

Summary

At Yelp, you have the opportunity to make a real impact on a product used by millions of people every day. If you’re looking to own critical revenue-generating products at a fast-growing consumer company, this role is for you.

We are seeking an experienced Product Manager to reimagine how consumers and Multi-Location service professionals interact on Yelp. In this role, you will have the opportunity to take ownership of a key growth area for the company. You’ll collaborate with Engineers, Designers, Marketing teams, Business Operations, Data Scientists, and other Product Managers to deliver impactful solutions that drive meaningful results.

This opportunity requires you to be located in the United Kingdom. We’d love to have you apply, even if you don’t feel you meet every single requirement in this posting. At Yelp, we’re looking for great people, not just those who simply check off all the boxes.


What you'll do:

Identify, analyze, and prioritize products and solutions that enable enterprise businesses to grow and engage with their customers. Collaborate with our design, analytics, and engineering teams, and work with stakeholders and clients to understand their motivations and needs. Work with our all-star engineering team to implement and roll out new features that drive revenue in our enterprise business. Manage the define / build / release / measure cycle from end-to-end. Define roadmaps, prioritize features, and evangelize product launches to executives, product managers, Sales, Business Development, and other stakeholders at Yelp. Move quickly; we strive for perfection but love to release and iterate.


What it takes to succeed:

Product Management Experience: Experience as a product manager or product owner, including full responsibility for significant initiatives. Tech Savvy: Can work with engineers and data scientists to understand how technical decisions and trade-offs impact your product and users. Strong Business Acumen: Track record of building business cases and gaining buy-in for revenue-generating solutions. Problem Solver: You can work closely with our Data Science team to drill into problems and identify opportunities, while being comfortable running your own analyses using SQL to dive into key metrics. Effective Communicator: Ability to zoom in and zoom out; you can get into the weeds with engineering, and translate features into a vision and roadmap non-technicals stakeholders across the organization are excited by. All-Around Leader: You collaborate well with a range of stakeholders and can create a product vision that others want to follow.


What you'll get:

Full responsibility for projects from day one, a collaborative team, and a dynamic work environment. Competitive salary with equity in the company, a pension scheme, and an optional employee stock purchase plan. 25 days paid holiday (rising to 29 with service), plus one floating holiday. £150 monthly reimbursement to help cover remote working expenses. £75 caregiver reimbursement to support dependent care for families. Private health insurance, including dental and vision. Flexible working hours and meeting-free Wednesdays. Regular 3-day Hackathons, bi-weekly learning groups, and productivity spending to support and encourage your career growth. Opportunities to participate in digital events and conferences. £56 per month to use toward qualifying wellness expenses. Quarterly team offsites.


Closing

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