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5 Machine Learning Lessons for Product Managers

Mind the Product

Artificial intelligence (AI) is probably the biggest commercial opportunity in today’s economy. We all use AI or machine learning (ML)-driven products almost every day, and the number of these products will be growing exponentially over the next couple of years. By 2030, it is expected to contribute $15.7

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How to Become an AI Product Manager Without Experience

The Product HQ

Today, more and more businesses are looking for product managers specializing in artificial intelligence and machine learning technologies. A report from McKinsey supports this, predicting that AI brings in as much as $13 trillion in economic activity by the year 2030.

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Digital Sustainability: A Growing Frontier in Software Development

The Product Coalition

Data centers, a vital component of our digital ecosystem, consume about 2% of global electricity. Alarming projections suggest this could rise to 8% by 2030 and 14% by 2040, a substantial leap from just 1.5% This network, responsible for data transfer and communication, is reminiscent of a home Wi-Fi setup but on a much grander scale.

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Wikimedia Foundation COO Janeen Uzzell on future-proofing history

Intercom, Inc.

If everyone in your team looks the same, has the same background, the same experiences, how do you expect to pick up on the biases in your work and create world-class services? Because my commitment has always been access and leveraging technology as a tool for access. Hiring is a process – it’s not enough to wish for diversity.

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14 Data Analytics Trends for 2024: What You Can’t Ignore

Userpilot

In SaaS, the top data analytics trends can either be a revolution or just fluff. So what are the trends in the data analytics landscape that are actually important for product management ?