Financial Crime AI Product Manager

SymphonyAI
London
2 months ago
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Introduction JOIN US! We seek a Financial Crime AI Product Manager to join our Financial Services team based in London. Job Description What You'll Do: Collaborate with cross-functional teams to define product requirements, features, and enhancements for our financial services software. Assist in developing strategies for product launches and go-to-market plans to drive product adoption and growth. Support the management of product roadmap and prioritization in alignment with business objectives. Participate in setting product pricing, packaging, and positioning strategies. Help maintain product risk plans and mitigation strategies. Engage with customers, partners, and stakeholders to support product adoption and retention. Monitor market trends and customer feedback to contribute to the product roadmap and strategy. Assist in product marketing and sales enablement efforts to enhance product visibility and adoption. What You'll Bring: A Bachelor's degree in Business, Finance, Computer Science, or a related field. 3-5 years of experience in product management, preferably with a focus on financial services and SaaS products. Familiarity with the financial services industry, including AML/KYC processes. Nice to have: ACAMS certification. Strong analytical and problem-solving skills. Excellent communication and teamwork abilities. A proactive attitude and a passion for innovation in financial services. What We Offer: Competitive salary and benefits package. Flexible hybrid working model. Opportunities for professional growth and development. Collaborative and inclusive work environment. Access to the latest technologies and tools. A chance to make a tangible impact on cutting-edge AI solutions. #LI-EH1 #LI-Hybrid About Us SymphonyAI is building the leading enterprise AI SaaS company for digital transformation across the most critical and resilient growth industries, including retail, consumer packaged goods, financial crime prevention, manufacturing, media, and IT service management. Since its founding in 2017, SymphonyAI today serves 1500+ Enterprise customers globally and has grown to 3,000 talented leaders, data scientists, and other professionals across over 30 countries. Visit here, for more information about how we hire, what’s in it for you, our culture and values.What You'll Do: Collaborate with cross-functional teams to define product requirements, features, and enhancements for our financial services software. Assist in developing strategies for product launches and go-to-market plans to drive product adoption and growth. Support the management of product roadmap and prioritization in alignment with business objectives. Participate in setting product pricing, packaging, and positioning strategies. Help maintain product risk plans and mitigation strategies. Engage with customers, partners, and stakeholders to support product adoption and retention. Monitor market trends and customer feedback to contribute to the product roadmap and strategy. Assist in product marketing and sales enablement efforts to enhance product visibility and adoption. What You'll Bring: A Bachelor's degree in Business, Finance, Computer Science, or a related field. 3-5 years of experience in product management, preferably with a focus on financial services and SaaS products. Familiarity with the financial services industry, including AML/KYC processes. Nice to have: ACAMS certification. Strong analytical and problem-solving skills. Excellent communication and teamwork abilities. A proactive attitude and a passion for innovation in financial services. What We Offer: Competitive salary and benefits package. Flexible hybrid working model. Opportunities for professional growth and development. Collaborative and inclusive work environment. Access to the latest technologies and tools. A chance to make a tangible impact on cutting-edge AI solutions. #LI-EH1 #LI-HybridSymphonyAI is building the leading enterprise AI SaaS company for digital transformation across the most critical and resilient growth industries, including retail, consumer packaged goods, financial crime prevention, manufacturing, media, and IT service management. Since its founding in 2017, SymphonyAI today serves 1500+ Enterprise customers globally and has grown to 3,000 talented leaders, data scientists, and other professionals across over 30 countries. Visit here, for more information about how we hire, what’s in it for you, our culture and values.

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