Engineering Manager, Mobile

Quizlet
London
2 months ago
Applications closed

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About Quizlet:

Inspired by our belief that anyone can learn anything and powered by our own curiosity, we build the smartest tools we can imagine to help students learn. Quizlet is the popular, global learning platform and app that millions of students, teachers, and everyday people use to study any subject imaginable for school, work, or as part of their personal interests. Our learners include about two-thirds of high school students and half of all college students in the US, and we're very excited to continue to expand globally. Combining cognitive science and machine learning, Quizlet guides students through adaptive study activities to confidently reach their learning goals.

About the Team:

The Mobile Growth and Monetization team is a new team based in London responsible for powering Quizlet's mobile growth. This is a broad charter and covers everything from our global expansion to notifications and from account management to ads and subscription management.

About the Role:

We're looking for an Engineering Manager to help build and lead our Mobile Growth and Monetization team. You will help grow and lead a team of engineers working on our iOS and Android apps. You will work closely with your peers in the mobile engineering and product management organizations to quickly and iteratively test new ideas and deliver the ones that work at scale.

In this role, you will:

  • Lead the mobile engineering team supporting growth and monetization.
  • Collaborate closely with product and other cross-functional partners to define team roadmap and goals.
  • Own the high velocity, iterative delivery of features in this space.
  • Prioritize short-term goals with longer term initiatives to deliver with quality.
  • Hire, coach, and promote a diverse and talented engineering team working on Android and iOS applications.
  • Communicate effectively with engineers, engineering leaders, and cross-functional partners, contributing to Quizlet's success.

What you bring to the table:

  • Multiple years of experience in software development.
  • Proven track record of leading, managing, and coaching mobile (iOS / Android) development teams.
  • Experience balancing large, long-term initiatives with iteratively delivering customer value.
  • Experience evaluating tradeoffs between different technology choices to solve new problems, improve the customer experience, and improve developer experience.
  • Excellent verbal and written communication skills across a range of audiences.
  • Strong interest in developing technical and people leaders, supporting career development.
  • Ability to develop a results-driven culture focused on core values of ownership and accountability.

Bonus points if you have:

  • Experience with native Android, native iOS, and cross-platform mobile development approaches.
  • Track record of identifying and removing team roadblocks before they block the team.
  • Experience establishing team objectives and strategy to support mid- to long-term results.
  • Experience with subscription management and/or advertising on both Android and iOS.

Benefits & Perks:

  • Quizlet is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. Total compensation for this role is market competitive, depending on location and experience, as well as company stock options.
  • Collaborate with your manager and team to create a healthy work-life balance.
  • We offer 25 days of annual leave (and we expect you to take them!).
  • Competitive health, dental, and vision insurance (100% employee and 75% dependent).
  • Pension with employer contribution provided through Aviva.
  • Professional Development stipend (teach yourself something new).
  • Paid Family, Medical and Caregiver leave, and Wellness benefits.
  • Employees are eligible to participate in the Quizlet stock option program.
  • 40 hours of annual paid time off to participate in volunteer programs of choice.

In Closing:

We hope you are excited about everything you read so far. We highly encourage you to apply for this position, even if you feel you do not meet all the requirements. Quizlet is always looking for amazing folks that believe in our mission and can contribute to our team in various ways.

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