Product Manager Global Payments and Fraud

web3-resources
London
2 months ago
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Product Manager – Smart Diagnostics & Digitalization

Product Manager – Digitalization

Blockchain is the world's leading software platform for digital assets. Offering the largest production blockchain platform in the world, we share the passion to code, create, and ultimately build an open, accessible and fair financial future, one piece of software at a time.

We are looking for an experienced and technically and process mindedProduct Managerto lead ourGlobal paymentrail expansion andanti-fraudpractice. You will be responsible for expanding Global local currency support for our customers and for building out Blockchain.com’s risk and fraud functions, balancing a seamless user experience with keeping fraudsters at bay.

WHAT YOU WILL DO

  • Prioritize and expand our local fiat support capabilities, enabling our Global customers to deposit, and pay with their local currency.
  • Work with the brokerage team to enable trading in these local currencies.
  • Build an industry-leading risk and anti-fraud function by collaborating with industry experts to identify benchmarks and develop strategies to exceed them.
  • Create and execute a product roadmap, monitoring trends to identify risks, opportunities and new products/improvements.
  • Implement and maintain systems that detect and prevent fraudulent activities, utilizing advanced analytics, machine learning models, and real-time monitoring systems.
  • Consistently assess and analyze the impact of existing and new features on key KPIs and user engagement.
  • Collaborate with engineering, data science, operations, compliance and other teams to design and implement fraud detection and prevention tools.
  • Work with external vendors on opportunities and solutions to protect against fraud.
  • Conduct root cause analysis of fraud incidents and develop corrective action plans.
  • Partner with the Risk Operations team to design new automation/tooling that enhances their effectiveness.
  • Manage timelines and follow multiple product roadmaps to organize timely feature releases and minimize release delays.

WHAT YOU WILL NEED

  • You are driven, curious and proactive.
  • 5 years of experience in Product Management roles of which at least 3 years in payments and fraud.
  • Payment rail knowledge (cards, ACH, Apple Pay, SEPA, Faster Payments, etc.) and/or experience with risk and fraud teams applying data science to solve fraud problems.
  • Demonstrable experience supporting new rails or currency for a Global Consumer Fintech.
  • Experience working in payments, fraud prevention, risk management, or a related field within financial services.
  • Strong analytical and problem-solving skills, with the ability to interpret complex data and trends.
  • Experience working on cross functional teams and managing timelines.
  • Excellent verbal and written communication skills to write thorough feature requirement documents and work with stakeholders and upper management.
  • Detail and design oriented and always thinking of the end-user experience.
  • A proven track record of shipping products in a technical environment and working with developers on a day-to-day basis.

COMPENSATION & PERKS

  • Full-time salary based on experience and meaningful equity in an industry-leading company.
  • Hybrid model: working from home & on-site in our central London office.
  • Unlimited vacation policy; work hard and take time when you need it.
  • The opportunity to be a key player and build your career at a rapidly expanding, global technology company in an emerging field.

Blockchain is committed to diversity and inclusion in the workplace and is proud to be an equal opportunity employer. We prohibit discrimination and harassment of any kind based on race, religion, color, national origin, gender, gender expression, sex, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law. This policy applies to all employment practices within our organization, including hiring, recruiting, promotion, termination, layoff, recall, leave of absence, and apprenticeship. Blockchain makes hiring decisions based solely on qualifications, merit, and business need at the time.

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