Sun.Jul 03, 2016

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Summer Reading List: 17 Great Books Every Innovator Should Read

Digital Tonto

The absolutely essential books for anyone who wants to change the world. Related posts: Summer Reading List: The Books Behind the Buzz. Summer Reading List: Books That Make You Think. Summer. [[ This is a content summary only. Visit my website for full links, other content, and more! ]].

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Summer Reading List: 17 Great Books Every Innovator Should Read

Innovation Excellence

I’m writing a book to give managers a more complete account of how to match problems with solutions. To do so, I’ve cast a wide net, talking to a diverse array of executives and researchers about their work. There have also been many books that I’ve found helpful. So for this summer’s list, I’d like to highlight 17 books that I think innovators should read.

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Top 20 Innovation Articles of June 2016

Innovation Excellence

Drum roll please. At the beginning of each month we will profile the twenty posts from the previous month that generated the most traffic to Innovation Excellence. We also publish a weekly Top 10 as part of our free Innovation Excellence Weekly magazine and email newsletter. Did your favorite make the cut?

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Brexit as an Innovation Opportunity

Innovation Excellence

What we should be thinking about now is less how to put the broken eggs back together again, and more about how to use this instance to innovate the structure of government and how we intend to provide good governance to the people in the UK, in the EU, and more broadly what this event means in a global context.

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Peak Performance: Continuous Testing & Evaluation of LLM-Based Applications

Speaker: Aarushi Kansal, AI Leader & Author and Tony Karrer, Founder & CTO at Aggregage

Software leaders who are building applications based on Large Language Models (LLMs) often find it a challenge to achieve reliability. It’s no surprise given the non-deterministic nature of LLMs. To effectively create reliable LLM-based (often with RAG) applications, extensive testing and evaluation processes are crucial. This often ends up involving meticulous adjustments to prompts.