AI product manager

Workable
London
1 year ago
Applications closed

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In the role of an AI Product Manager, you hold the keys to the development and triumph of our AI products. Your journey involves a thrilling collaboration with diverse teams, crafting product requirements, shaping AI models, and joining forces with our brilliant engineering squad to bring top-notch AI solutions to life. From sparking ideas to orchestrating launches and nurturing growth, you'll be at the helm of the entire product development adventure. Let's make waves in the world of AI Responsibilities: Develop and maintain the product roadmap Identify emerging trends in artificial intelligence and machine learning Create detailed product requirements and user stories Work with the engineering and research teams to develop a high-quality product Demonstrate the product to internal teams and clients to gather feedback and gather feature requests Ensure that documentation around features is up to date Compose concise and clear release notes both internally and externally (organisation's blog, social media etc.)Requirements At least 5 years of experience as a product manager Deep understanding of artificial intelligence, machine learning, and natural language processing Excellent communication and interpersonal skills Ability to work effectively in a team environment Bachelor's degree in Computer Science, Mathematics, or another relevant field Post graduate studies on Machine learning will be considered a plusBenefits Extra Sick - Vacation Leave Training & Development Meal vouchers - Subsidized Meals Performance Bonus Unlimited meals per day

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