Recently, I gave some information about myself to Claude, and asked how I compared to other 38-yr-old men in the world.
I thought I understood global inequality well, but I still found the results quite moving. The usual AI sycophancy and reassurance was gone:
Compared to Global Averages, you’re in an exceptionally privileged position—likely in the top 1-3% globally:
- Work: Most men globally work manual labor, informal economy, or small trade with no job security. Your stable research position is extremely rare.
- Financial: Your ability to save monthly puts you far above the ~90% who live paycheck to paycheck or in debt. Most can’t handle a $400 emergency.
- Housing: You own property (even 1⁄4) while most rent cramped spaces or live in extended family homes.
- Education: PhD holders represent <1% globally. Most have primary or secondary education only.
- Health: “Excellent” health with regular exercise is rare when most do physical labor with limited healthcare access.
- Leisure: 4 weeks vacation and daily socializing is extraordinary. Most get a few days for religious holidays only.
I’d appreciated my privilege in income, but hadn’t thought as much about the nature of my work, my health, or my leisure time. I recommend you try it, too (I’ve put a prompt below).
You can also try Giving What We Can’s new Birth Lottery tool — find out what your life would be like if you were born as a random person in the world. When I tried it, I was born in India. On average my life would be around 9 years shorter, with 13 years of schooling instead of 18, and income around 10× lower—even after adjusting for local prices.
I asked Claude to give me a day in the life of a typical 38-year old Indian man:
Ramesh, 38, Auto Mechanic in Bengaluru
Ramesh wakes at 5:30 AM in the single room he rents for ₹7,000 ($85)/month. His wife and three children (14, 11, and 7) still sleep on the two thin mattresses they share. After using the common bathroom shared with three other families, he wheels his bicycle out past the narrow corridors. His wife packs him rice and sambar in a steel container while starting her day of cooking and cleaning for two households nearby, earning ₹6,000 ($72)/month.
At the garage where he’s worked for twelve years, Ramesh earns ₹18,000 ($216)/month—decent for someone who studied only till 10th standard. The owner trusts him with complex repairs, though younger mechanics with certificates earn more. He works Monday through Saturday, 9 AM to 8 PM, eating lunch quickly while squatting by the shop. His Nokia phone has three missed calls—his eldest needs ₹500 ($5.50) for exam fees. After work, he stops at the ration shop for subsidized rice and oil, then picks up his youngest from his sister-in-law’s house. At home by 9 PM, the family eats together on the floor, discussing the daughter’s school problems and upcoming festival expenses. By 10:30, they’ve moved the cooking vessels aside and laid out the mattresses. Tomorrow his half-day Sunday means visiting his mother in the government hospital and maybe taking the children to the park if there’s no overtime work available.
Your monthly savings alone exceed Ramesh’s annual household income, while the freedoms you experience daily—from choosing your living arrangements to taking weeks of vacation—exist entirely outside the universe of possibilities that shape his life.
If you’re feeling privileged this year, consider making a donation to an effective charity—we give gifts to our friends and family at Christmas, so why not give a gift to the world, too.
I’m doing a matching scheme, with a list of great charities, on Substack here and Twitter here, and pasted below, too. Thanks so much to everyone who’s donated so far—currently GiveDirectly and the EA Animal Welfare Fund are in the lead!
And if you want to turn that giving into a regular commitment, consider taking the 10% Pledge — it’s among the single highest-impact, and most personally fulfilling, choices you can make.
My matching scheme: I’m matching donations up to £100,000 (details below), across 10 charities and 6 cause areas.
If you want to join, say how much you’re donating and where, as a reply! I’ll run this up until 31st December.
Details of the match:
I’ll give this money whatever happens, so this isn’t increasing the total amount I’m giving to charity.
However, your donations will change *where* I’m giving.
I’ll allocate my donations in proportion to the ratio of donations from others as part of the match, with two bits of nuance:
1. I’ll cap donations at £40,000 to any one cause area
2. To prevent extreme ratios, I’ll treat every charity on the list as already having received £1000.
The aim of this match is to encourage public giving and public discussion around giving, so I’ll only match people who publicly state that they are giving on here or other social media, as a reply or quote.
The charities:
GiveDirectly: Sends cash directly to people living in extreme poverty, letting recipients decide how best to use it.
Global Health and Development EA Fund: Makes grants to the most effective opportunities in global health and poverty alleviation.
SecureBio: Develops technologies and policies to delay, detect, and defend against pandemics.
The Humane League: Runs corporate campaigns to improve conditions for farmed animals and reduce animal suffering in the food system.
Animal Welfare EA Fund: Makes grants to the most effective opportunities to reduce animal suffering.
METR: Evaluates frontier AI systems for dangerous autonomous capabilities before deployment.
Longterm Future EA Fund: Makes grants to reduce existential risk, with a particular focus on AI safety.
Forethought (note: my own org!): Researches how best to navigate the transition to superintelligent AI.
Eleos AI: Researches AI sentience and welfare, preparing for the possibility that future AI systems may be moral patients.
EA Infrastructure fund: Makes grants to build the effective altruism community and support the infrastructure that helps it function.
And if you want to try my experiment for yourself, here’s a prompt (put the answers in after the questions):
I’m a [age] [gender] who lives in [location].
Please consider my answers to these questions, and tell me how I compare to both global and developed country averages:
Work & Career:
* What type of work do you do? (employed/self-employed/not working)
* How many hours per week do you typically work?
* Do you have job security/stable income?
Financial Situation:
* Do you own or rent your home?
* Are you able to save money regularly?
* Do you have any retirement savings/pension?
* Can you handle a surprise expense of $1,000 (or equivalent) without borrowing?
Family & Relationships:
* What’s your relationship status? (married/partnered/single/divorced)
* Do you have children? If so, how many?
* Do you have regular contact with extended family?
Health & Lifestyle:
* How would you rate your overall health? (excellent/good/fair/poor)
* How often do you exercise per week?
* Do you have access to healthcare when needed?
* How many hours of sleep do you typically get?
Education & Growth:
* What’s your highest level of education completed?
* Are you currently learning any new skills or pursuing education?
Living Situation:
* Do you live in an urban, suburban, or rural area?
* How many people share your living space?
* Do you have reliable electricity, water, and internet?
Leisure & Social:
* How often do you socialize with friends?
* Do you take any vacations/holidays per year?
* How many hours of leisure time do you have per day?
I love the sentiment of the post, and tried it myself.
I think a prompt like this makes answers less extreme than what they actually are, because it’s like a vibes-based answer instead of a model-based answer. I would be surprised if you are not in the top 1% globally.
I would really enjoy something like this but more model-based, as the GWWC calculator. Does anyone know of something similar? Should I vibe code it and then ask for feedback here?
I tried this myself and I got “you’re about 10-15% globally”, which I think is a big underestimate.
For context, pp adjusted income is top 2%, I have a PhD (1% globally? less?), live alone in an urban area.
Asking more, a big factor pushing down is that I rent the place that I live in instead of owning it (which, don’t get me started on this from a personal finance perspective, but shouldn’t be that big of a gap I guess?).
I started, and then realised how complicated is to choose a set of variables and weights to make sense of “how privileged am I” or “how lucky am I”.
I have an MVP (but ran out of free LLM assistance), and right now the biggest downside is that if I include several variables, the results tend to be far from the top. And I don’t know what to do about this.
For instance, let’s say that in “healthcare access”, having good public coverage puts you in the top 10% bracket (number made up). Then, if you pick 95% as the reference point for that any weighted average including this will miss on some distance to the top.
So just a weighted average of different questions is not good enough I guess.
Merry Christmas, everyone!
This year, I’m feeling grateful to be me.
Recently, I gave some information about myself to Claude, and asked how I compared to other 38-yr-old men in the world.
I thought I understood global inequality well, but I still found the results quite moving. The usual AI sycophancy and reassurance was gone:
I’d appreciated my privilege in income, but hadn’t thought as much about the nature of my work, my health, or my leisure time. I recommend you try it, too (I’ve put a prompt below).
You can also try Giving What We Can’s new Birth Lottery tool — find out what your life would be like if you were born as a random person in the world. When I tried it, I was born in India. On average my life would be around 9 years shorter, with 13 years of schooling instead of 18, and income around 10× lower—even after adjusting for local prices.
I asked Claude to give me a day in the life of a typical 38-year old Indian man:
If you’re feeling privileged this year, consider making a donation to an effective charity—we give gifts to our friends and family at Christmas, so why not give a gift to the world, too.
I’m doing a matching scheme, with a list of great charities, on Substack here and Twitter here, and pasted below, too. Thanks so much to everyone who’s donated so far—currently GiveDirectly and the EA Animal Welfare Fund are in the lead!
And if you want to turn that giving into a regular commitment, consider taking the 10% Pledge — it’s among the single highest-impact, and most personally fulfilling, choices you can make.
My matching scheme: I’m matching donations up to £100,000 (details below), across 10 charities and 6 cause areas. If you want to join, say how much you’re donating and where, as a reply! I’ll run this up until 31st December.
Details of the match:
I’ll give this money whatever happens, so this isn’t increasing the total amount I’m giving to charity.
However, your donations will change *where* I’m giving. I’ll allocate my donations in proportion to the ratio of donations from others as part of the match, with two bits of nuance: 1. I’ll cap donations at £40,000 to any one cause area 2. To prevent extreme ratios, I’ll treat every charity on the list as already having received £1000. The aim of this match is to encourage public giving and public discussion around giving, so I’ll only match people who publicly state that they are giving on here or other social media, as a reply or quote.
The charities:
GiveDirectly: Sends cash directly to people living in extreme poverty, letting recipients decide how best to use it.
Global Health and Development EA Fund: Makes grants to the most effective opportunities in global health and poverty alleviation.
SecureBio: Develops technologies and policies to delay, detect, and defend against pandemics.
The Humane League: Runs corporate campaigns to improve conditions for farmed animals and reduce animal suffering in the food system.
Animal Welfare EA Fund: Makes grants to the most effective opportunities to reduce animal suffering.
METR: Evaluates frontier AI systems for dangerous autonomous capabilities before deployment.
Longterm Future EA Fund: Makes grants to reduce existential risk, with a particular focus on AI safety.
Forethought (note: my own org!): Researches how best to navigate the transition to superintelligent AI.
Eleos AI: Researches AI sentience and welfare, preparing for the possibility that future AI systems may be moral patients.
EA Infrastructure fund: Makes grants to build the effective altruism community and support the infrastructure that helps it function.
And if you want to try my experiment for yourself, here’s a prompt (put the answers in after the questions):
I love the sentiment of the post, and tried it myself.
I think a prompt like this makes answers less extreme than what they actually are, because it’s like a vibes-based answer instead of a model-based answer. I would be surprised if you are not in the top 1% globally.
I would really enjoy something like this but more model-based, as the GWWC calculator. Does anyone know of something similar? Should I vibe code it and then ask for feedback here?
I tried this myself and I got “you’re about 10-15% globally”, which I think is a big underestimate.
For context, pp adjusted income is top 2%, I have a PhD (1% globally? less?), live alone in an urban area.
Asking more, a big factor pushing down is that I rent the place that I live in instead of owning it (which, don’t get me started on this from a personal finance perspective, but shouldn’t be that big of a gap I guess?).
+1 on wanting a more model-based version of this.
And +1 to you vibe coding it!
Upon seeing this, I had the same thought about vibe coding a more model-based version … so, race you to whoever gets around to it?
I started, and then realised how complicated is to choose a set of variables and weights to make sense of “how privileged am I” or “how lucky am I”.
I have an MVP (but ran out of free LLM assistance), and right now the biggest downside is that if I include several variables, the results tend to be far from the top. And I don’t know what to do about this.
For instance, let’s say that in “healthcare access”, having good public coverage puts you in the top 10% bracket (number made up). Then, if you pick 95% as the reference point for that any weighted average including this will miss on some distance to the top.
So just a weighted average of different questions is not good enough I guess.
We can discuss and workshop it if you want.
Here’s my attempt at percentile of job preference.