
Stop Reading Every AI Newsletter. Start Building Things That Matter
Last Updated on September 12, 2025 by Editorial Team
Author(s): Mayank Bohra
Originally published on Towards AI.
Stop trying to read everything. Here’s the 3-stage filtering system that cuts AI learning time by 70% while actually retaining what matters, from someone who went from newsletter chaos to focused expertise.
I used to be that person drowning in AI newsletters.
The article discusses the overwhelm caused by excessive AI newsletters and the need for a more focused approach to learning. It proposes a three-stage filtering system that emphasizes quality over quantity by cutting down on sources, actively scanning for relevant content, and deeply exploring a few selected pieces of information. This method is presented as essential for effectively applying knowledge in a rapidly evolving field like AI, where understanding key concepts is more beneficial than consuming large amounts of content.
Read the full blog for free on Medium.
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