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HEAs

In my eyes, I have not made an effective impact yet in any cause area, especially biosecurity or public health, and yet I think compared to most 18 year olds I have started making choices that will set me up to have an effective career and mindset, plus I have been gaining comm building skills throughout my work.

Next year @Jian Xin Lim🔹 kindly offered for me to take over EABath (when I start uni) and I also help out a bit at Leaf. And it got me thinking

 

What is the ideal outcome of a HEA? Are all HEAs on the same path? Say someone took on all reasoning, and chose earn to give and donated millions to GiveWell (think similar to FTX without any integrity issues in terms of involvement), if all EAs did that we'd get diminishing returns on the top charities, we'd lose the community, other cause areas may suffer and also it just would feel a bit of an afterthought. And yet would we consider that individual a HEA if his reasoning for all the earning and donation aligned with the 4 tenets and had that idea of helping others effectively?

Compared to someone who maybe is against animal welfare issues. If that person earned to give as a head of factories with poor conditions, they may lower costs and conditions to donate more (let's say purely to donate more) whilst the person concerned with animal welfare who is also an EA may try to do the opposite. So are they both HEAs? Do we have a metric?

 

Just some rough thoughts swirling around, nothing concrete or important but would love to hear 

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What do you mean by "HEA"?

I'm pretty sure they're referring to the idea of a "highly engaged effective altruist", which is a common metric used by EA community builders. 

The Centre for Effective Altruism defines it as:

...people who are motivated in part by an impartial care for others, who are thinking very carefully about how they can best help others, and who are taking some significant actions to help (most likely through their careers).

It might make sense for the author to clarify this if so :)

Yep, I personally meant it less in the semantics sence and more in a "what is an ideal outcome of someone heavily involved in EA either as a community or as a premise/question). It's a rough question rather than a topic I know lots about

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