Product Manager II

Risk Solution Group
London
2 months ago
Applications closed

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About the Business:

LexisNexis Risk Solutions is the essential partner in the assessment of risk. Within our Business Services vertical, we offer a multitude of solutions focused on helping businesses of all sizes drive higher revenue growth, maximize operational efficiencies, and improve customer experience. Our solutions help our customers solve difficult problems in the areas of Anti-Money Laundering/Counter Terrorist Financing, Identity Authentication & Verification, Fraud and Credit Risk mitigation and Customer Data Management. You can learn more about LexisNexis Risk at the link below,risk.lexisnexis.com.

About our Team:

The Trade Checkpoint team operates at the forefront of technology utilising LLM, Data Science and Big Data to deliver a comprehensive set of Trade Compliance capabilities; innovation is at the core of what we do. We are a passionate team who see development as a creative and challenging endeavour and are looking for people to join the team and deliver truly world beating products. This is a challenging and fast-paced environment, and you should be experienced and comfortable with regular context switching and have the ability to retain and recall information swiftly and accurately. The team is dispersed with members across the UK, US and India and has an open and supportive culture, a great working environment, fantastic benefits package and provides support for ongoing learning. You can learn more about LexisNexis Trade Checkpoint here:https://risk.lexisnexis.co.uk/products/lexisnexis-trade-checkpoint.

About the Role:

You will own product development plans and represent features within the cross-functional team. Proposing new feature ideas that address a customer pain point or need based on your deep understanding of the customer. You will prioritize and communicate production customer issues defects based on relevant data for timely resolution. You will also lead the demo to key stakeholders at program milestones. You will be part of our multi-functional product development team, working alongside the development and testing team to enhance our product offering. You will be analysing needs to develop a strategy, as well as leading data integration efforts and partnering with product analysts, product, and other technical leaders to address new needs and deliver a seamless technology experience to our clients. You’re involved in the entire customer lifecycle and play a critical role directly supporting the business.

Responsibilities:

  • Driving product development that meets target customer expectations while ensuring the commercial viability and scalability of the product.
  • Using tools like Jira and Confluence to document user stories, acceptance criteria, and product requirements. Collaborate with technical teams to ensure clarity and alignment on development priorities.
  • Working closely with engineering to define API requirements and document how customers and end users integrate with and benefit from API-first capabilities.
  • Analysing and understanding the impact of product features aligning development priorities with customer and business needs.
  • Supporting the go-to-market strategy by effectively communicating customer requirements, development progress, and delivery timelines to stakeholders.
  • Participating in Agile Scrum ceremonies, including sprint planning, backlog refinement, and stand-ups, to ensure timely and quality delivery of features.
  • Building a strong understanding of trade compliance to influence product direction and deliver customer value.
  • Acting as the bridge between cross-functional teams, including engineering, design, sales, and marketing, to deliver a cohesive and impactful product.
  • Responding to evolving project needs, addressing challenges and identifying opportunities to enhance the product and customer experience.

Requirements:

  • Proven experience in Product Management, Compliance, Trade, Large Data, LLM.
  • Familiarity with API-first product development.
  • Expertise in gathering accurate and detailed client/internal stakeholder requirements for product development. Work alongside the development team to deliver those requirements.
  • Demonstrate ability to understand technical language i.e. REST, JSON, XML and accurately communicate to non-technical staff.
  • Show analytical problem-solving, troubleshooting, sourcing technical solutions.
  • Demonstrate excellent teamwork with an ability to handle multiple streams of work simultaneously.
  • Be self-motivated with a drive to succeed and an ability to react well to rapidly changing requirements with a positive attitude.
  • Demonstrate good verbal and written communication skills.

Learn more about the LexisNexis Risk team and how we workhere.

#LI-PL1 #LI-Hybrid

At LexisNexis Risk Solutions, having diverse employees with different perspectives is key to creating innovative new products for our global customers. We have 30 diversity employee networks globally and prioritize inclusive leadership and equitable processes as part of our culture. Our aim is for every employee to be the best version of themselves. We would actively welcome applications from candidates of diverse backgrounds and underrepresented groups.

We are committed to providing a fair and accessible hiring process. If you have a disability or other need that requires accommodation or adjustment, please let us know by completing our Applicant Request Support Form:https://forms.office.com/r/eVgFxjLmAK.

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