Fraud Product Owner

Bishopsgate
3 weeks ago
Applications closed

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Join us as a Fraud Product Owner

Build your career as an influential fraud data and analytics leader and evangelist

You’ll lead a cross functional team of data scientists, engineers, analysts and technologists to deliver impactful and innovative change projects transforming the way in which we protect our customers and the bank from fraudsters

This is a chance to collaborate with wider business and peers to deliver on the joint fraud and bank vision and help transform and deliver our team’s culture

What you'll do

In this role, you’ll bring the point of view of our customers, end users or stakeholders to the forefront of understanding the product vision set by you and the bank. With exceptional leadership skills, you’ll drive your team towards this vision, regularly stopping along the way to check-in, adjust, calibrate and move forward.

We’ll also look to you to make sure that stories and enablers meet acceptance and quality criteria, keeping them in-line with the vision, features and programme increment objectives.

Your responsibilities include:

Setting a vision, strategy and roadmap for your team, driving delivery against commercial and business targets maximising return on investment

Leading and supporting the development of your feature teams by prioritising features, answering questions and removing blockers

Making sure that the backlog is maintained, and that your delivery teams are frequently collaborating with customers or users to populate and refine the backlog

Helping to drive programme iteration objectives at a team or enterprise level, and coordinating with other product owners and system teams

Owning a product vision and roadmap, inspiring and motivating your team to deliver cutting edge, data driven fraud prevention solutions

Tracking and reporting progress, and attending any retrospective, spanning all delivery teams that are involved with delivering the product

The skills you'll need

We’re looking for a creative thinker, with a good understanding of Agile methodologies and experience of working in an Agile team. You’ll need to be able to relate your everyday work to the broader strategic vision set for your feature team, along with the ability to maintain a strong focus on business outcomes. And, you’ll have excellent communication and influencing skills.

You’ll also need:

Knowledge or experience of working with modern cloud technologies, streaming pipelines and data science platforms

Experience leading product deliveries from concept to production across data and fraud domains such as orchestration systems, data science models and data lakes

The ability to convey complex technical topics to a non-technical audience through storytelling

Commercial and business acumen to drive an entrepreneurial mindset within the team

Experience of changing team or department mind-sets, culture and structure whilst maintaining strong drive and motivation

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