Senior Product Manager (AI) [Immediate Start]

Vonage
London
1 month ago
Applications closed

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Senior Product Manager (Vonage AI) The Team Vonage AIdevelops AI/ML-based APIs and applications with a focus on audio,text processing, and conversational AI systems. The team enhancesexisting products with AI while driving innovation to deliver new,cutting-edge solutions to CPaaS/UCaaS/CCaaS Vonage platforms. Whythis role matters We are looking for an experienced and innovativeAI Senior Product Manager to spearhead the development anddeployment of cutting-edge AI APIs and applications. The idealcandidate will bring a solid background in machine learning and thelatest advancements in AI, combined with expertise in productmanagement and telecommunications. A passion for innovation and acommitment to creating outstanding customer experiences areessential for this role. What will you do? 1. Collaborate withcross-functional teams to define, prioritize, and execute AIfeatures and API development roadmaps. 2. Work closely withengineering teams across Vonage to ensure the successfulimplementation of Vonage AI technologies in CPaaS/UCaaS/CCaaSplatforms. 3. Conduct market research and competitive analysis toidentify opportunities for AI-driven enhancements inCPaaS/UCaaS/CCaaS platforms. 4. Define and track key performanceindicators to measure the success of Gen AI features and APIs. 5.Engage with stakeholders to gather feedback and insights, andincorporate them into product development processes. 6. Stayup-to-date on industry trends and advancements in AI technologiesto inform product strategy and roadmap decisions. What you willbring 1. Strong understanding of AI concepts, machine learningalgorithms, and natural language processing. 2. Proven track recordof successfully launching and managing AI-driven products in afast-paced environment. 3. Strong experience in product management,with a focus on AI technologies, ideally with Telecommunicationproducts. 4. Bachelors degree in Computer Science, Engineering,Business, or related field (Masters degree preferred) or relevantexperience. 5. Experience working with Gen AI, APIs, SDKs, anddeveloper tools in a Telecommunication environment. 6. Excellentcommunication and collaboration skills, with the ability to workeffectively with cross-functional teams. 7. Strong analytical andproblem-solving skills, with a data-driven approach todecision-making. J-18808-Ljbffr

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