Senior AI Product Manager

CUBE
London
2 months ago
Applications closed

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Role:Senior AI Product Manager 

Location:London, UK (1 day per week in the London office is required) 

Recently listed as a "RegTech Top Performer" in Market Fintech's RegTech Supplier Performance Report, CUBE is pioneering the development of machine automated compliance. 

We are a global RegTech business defining and implementing the gold standard of regulatory intelligence and change for the financial services industry. We deliver our services through a SaaS platform, powered by an innovative combination of AI and proprietary data ontology, to simplify the complex and everchanging world of compliance for our clients. 

At CUBE, we are creating the future and are a company rooted in strong values, team spirit and commitment to our customers and wider communities. We serve some of the largest financial institutions globally and are expanding our footprint very fast. As we do so, we are keen for new talent to join us and realize their full potential to grow into leadership positions within the business.

Role mission:  

The AI product team is situated at the intersection of the machine learning and regulatory subject matter expert teams. As AI Product Manager, you ensure that our AI product suite delivers output of sterling quality and provides maximum value to our users, by driving the creation of expert and user-in-the-loop feedback systems.

You will work across at least one of these three areas and drive the end-to-end product development process, from discovery through to testing and delivery. You will also influence the roadmap for improvements, working closely with the Head of Product for AI. 

Responsibilities: 

  • Manage the end-to-end discovery, testing, and delivery process for AI products, working closely with our machine learning, regulatory subject matter expert, customer, and software engineering teams
  • Set the short, mid, and long-term strategy for our AI products
  • Oversee model training, validation, and testing processes, by establishing rigorous reviewer guidelines, recruiting the appropriate domain experts, and determining sampling strategy/size
  • Deeply understand the pain points felt by our compliance users, especially as they relate to the output of AI products
  • Monitor the performance of our AI products, and use the results to propose and drive forward enhancements
  • Define and review the production of AI product marketing collateral to support the go-to-market teams
  • Reduce information silos between our machine learning and regulatory subject matter expert teams
  • Provide input for the global AI roadmap, working closely with the Head of Product for AI
  • Contribute to the overall product management processes and provide mentorship to product colleagues
  • Stay up-to-date with both regulatory and AI trends

Whatwe’re looking for: 

  • Extensive experience with building AI SaaS products from ideation to launch, especially those involving NLP and NLU
  • Proficiency in Python for data analysis, Excel, and SQL (fluency in data)
  • Hands on experience in data-science or ML engineering environments
  • Understanding of API design
  • Ability to collaborate with multiple stakeholders and crossfunctional teams (data science/machine learning, engineering, subject matter experts, customer services, sales, marketing)
  • Proficiency in diagram creation and visualisations (especially important in a remote-first organisation)
  • Experience with Confluence and Jira
  • Attention to detail without compromising on the big picture 

Our Products:

RegPlatformis a technology platform that streamlines regulatory change management. It provides firms with a one-stop, continuously maintained inventory of global regulations, with effortless horizon scanning, integration capabilities and workflow management. RegPlatform combines industry leading AI technology with expert validated insights to simplify the complexities of multi-jurisdictional regulatory content.

RegBrainallows customers to apply CUBE's AI models directly to their own content, enabling faster release and feedback cycles. Our flagship AI services will be included, spanning structural detection, classification, entity extraction, summarisation, and recommendations. Available to customers and partners as APIs and via a UI.

Why Us?   

 Globally, we are one of a kind! 

CUBE are a well-established market leader within Regtech (we were around before Regtech was even a thing!), and our category-defining product is used by leading financial institutions around the world (including Revolut, Citi, and HSBC).

Growth & progression

Last year we grew by more than 50% and our growth journey is just getting started! We are a dynamic, fast-paced workforce that is always seeking ways to accelerate our people, processes, services and products. We hire ambitious people that want to make a difference, share their ideas, “make it happen” and find better, smarter ways of working. Our future is shaped by our employees, so if you’re someone looking for an opportunity to make a real impact, and progress your career alongside the business, it couldn’t be a better time to join us!

Internationally collaborative culture

With more than 650 CUBERs across 17 locations in EMEA, the Americas and APAC, collaboration is key to our success. We are a diverse workforce united by a shared desire to reshape the world of regulatory compliance and make an impact. We champion sharing knowledge with colleagues from all over the world, in order to deliver the best results.

 Innovative breakthrough technology

CUBE is an innovator. We pioneered the use of AI in the field of regulatory change and our state-of-the-art, cutting edge technology is helping financial services firms from all over the world, solve complex compliance challenges. You will work alongside some of the brightest minds in AI research and engineering in developing impactful solutions that will reshape the world of regulatory compliance.

 Work life balance

CUBE is a remote-first business so you will be able to design your home office and choose your own work equipment. We host regular in-person meet-ups as a chance to get-together, share ideas and collaborate with other teams but we are advocates for remote working and we believe working remotely provides freedom to innovate, create and unlock global talent. 

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