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Bringing an AI Product to Market

O'Reilly Media - Ideas

The Core Responsibilities of the AI Product Manager. Product Managers are responsible for the successful development, testing, release, and adoption of a product, and for leading the team that implements those milestones. Agreeing on metrics. Don’t expect agreement to come simply.

Marketing 145
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All about Machine Learning

Hacker Earth Developers Blog

So I spent an initial two years in the customer success part of the organization, building internal-facing Data Science and Machine Learning products to help drive our revenue, minimize attrition problems in that space. And we also have dedicated teams to look into some of this. So, you know, we have an AI trust team as we call them.

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Improve your Product Management with Ellen Gottesdiener

Marcus Blankenship - Podcasts

How do we improve in the area of product management? In this episode of Programming Leadership, Marcus and his guest Ellen Gottesdiener, President of EBG Consulting, discuss ways companies can better oversee the development and lifecycle of a product in its entirety. A working definition of product management (1:15).

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Managing to Solve An Elegant Puzzle with Will Larson

Marcus Blankenship - Podcasts

Links: O’Reilly Software Architecture Conference – Berlin, Germany. Will’s book, An Elegant Puzzle: Systems of Engineering Management. Speaker 1: Welcome to the Programming Leadership podcast where we help great coders become skilled leaders and build happy, high performing software teams. November 4-7, 2019. Transcript.

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Scaling Technology and Organizations Together with Randy Shoup

Gitprime

When startups are first setting out, the initial team is small and usually solving relatively discrete (albeit central) problems. But at scale, the quantity and size of the problems grow larger than a single manageable team can handle. asks Randy Shoup , the VP of Engineering at WeWork.