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In honor of Pledge Highlight Week, here’s a list of some resources we recommend for people who are considering taking a pledge.

 

Articles/FAQ related to pledging

Why pledge (even if you already donate)

5 things you’ve got wrong about the Giving What We Can Pledge

Can money buy happiness? A review of the data (newly updated!)

Pledge FAQ

 

Videos featuring @Luke Freeman 🔸 :

Why make a public giving pledge

How change happens 

How much to donate to charity: Finding a good standard for giving

 

Pledgers sharing their experience

Case studies page

“People who give effectively” video playlist

Giving What We Can blog

 

Introductory videos about effective giving & the ideas behind the pledge

The story behind the 10% Pledge (featuring Toby Ord and released last month!)

You’re richer than you realise (Grace interviews people on the streets of London!)

 

And of course, our “How Rich Am I” calculator tool where you can see where your income puts you on a global scale. 

GWWC Anniversary Week Update:

We're in the middle of celebrating Giving What We Can and the 10% Pledge's 15th anniversary! Thanks to everyone who has posted their thoughts, pledge stories, or hopes for the future on social so far and/or contributed to our EA Forum thread.

We've also been posting pledge-focused content on our blog all week (and a bit before) and wanted to highlight a couple great posts to check out:

-The "Progressive Pledge" by Phillip Popien and Alana HF (a unique way to gradually increase your pledge percentage that takes into account decreasing marginal utility of money)

-The Virtues of Virtue Signaling by Martin Jacobson (an in-depth look at public giving — why it's sometimes difficult or discouraged, and why maybe it shouldn't be)

Our Effective Giving Global Coordinator and Incubator Luke Moore also posted a great piece on how Peter Singer's ideas transformed his life!

Of course, don't let these more in-depth examples dissuade you from posting your quick thoughts on what the Pledge has meant to you — even just a few sentences is great! :)

Can't wait to share the compilation of anniversary week posts and thoughts at the end of the week!

Curated and popular this week
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Introduction In this post, I present what I believe to be an important yet underexplored argument that fundamentally challenges the promise of cultivated meat. In essence, there are compelling reasons to conclude that cultivated meat will not replace conventional meat, but will instead primarily compete with other alternative proteins that offer superior environmental and ethical benefits. Moreover, research into and promotion of cultivated meat may potentially result in a net negative impact. Beyond critique, I try to offer constructive recommendations for the EA movement. While I've kept this post concise, I'm more than willing to elaborate on any specific point upon request. Finally, I contacted a few GFI team members to ensure I wasn't making any major errors in this post, and I've tried to incorporate some of their nuances in response to their feedback. From industry to academia: my cultivated meat journey I'm currently in my fourth year (and hopefully final one!) of my PhD. My thesis examines the environmental and economic challenges associated with alternative proteins. I have three working papers on cultivated meat at various stages of development, though none have been published yet. Prior to beginning my doctoral studies, I spent two years at Gourmey, a cultivated meat startup. I frequently appear in French media discussing cultivated meat, often "defending" it in a media environment that tends to be hostile and where misinformation is widespread. For a considerable time, I was highly optimistic about cultivated meat, which was a significant factor in my decision to pursue doctoral research on this subject. However, in the last two years, my perspective regarding cultivated meat has evolved and become considerably more ambivalent. Motivations and epistemic status Although the hype has somewhat subsided and organizations like Open Philanthropy have expressed skepticism about cultivated meat, many people in the movement continue to place considerable hop
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Introduction I have been writing posts critical of mainstream EA narratives about AI capabilities and timelines for many years now. Compared to the situation when I wrote my posts in 2018 or 2020, LLMs now dominate the discussion, and timelines have also shrunk enormously. The ‘mainstream view’ within EA now appears to be that human-level AI will be arriving by 2030, even as early as 2027. This view has been articulated by 80,000 Hours, on the forum (though see this excellent piece excellent piece arguing against short timelines), and in the highly engaging science fiction scenario of AI 2027. While my article piece is directed generally against all such short-horizon views, I will focus on responding to relevant portions of the article ‘Preparing for the Intelligence Explosion’ by Will MacAskill and Fin Moorhouse.  Rates of Growth The authors summarise their argument as follows: > Currently, total global research effort grows slowly, increasing at less than 5% per year. But total AI cognitive labour is growing more than 500x faster than total human cognitive labour, and this seems likely to remain true up to and beyond the point where the cognitive capabilities of AI surpasses all humans. So, once total AI cognitive labour starts to rival total human cognitive labour, the growth rate of overall cognitive labour will increase massively. That will drive faster technological progress. MacAskill and Moorhouse argue that increases in training compute, inference compute and algorithmic efficiency have been increasing at a rate of 25 times per year, compared to the number of human researchers which increases 0.04 times per year, hence the 500x faster rate of growth. This is an inapt comparison, because in the calculation the capabilities of ‘AI researchers’ are based on their access to compute and other performance improvements, while no such adjustment is made for human researchers, who also have access to more compute and other productivity enhancements each year.