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A New Layer of Engineering Is Emerging | Hermes Labs Field Notes Ep. 1

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These systems are good at synthesizing

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what they know, but they're not good at

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telling you what they don't know. Right?

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And that's really, really important

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because a lot of decisions aren't just

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made on what you know. They're also made

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on what you don't know. And you

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sometimes have to learn to not make a

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decision based on what you don't know.

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Right. This is going to be a fun video.

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Hello everybody. Early Boss from Hermes

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Labs here. And this is Hermes Labs

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Diaries episode 1. I decided to start

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this series after a long time not making

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videos because I've been watching a lot

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of these startup videos. Startup

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something episode one and episode two

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and day in the life of and they're

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really inspiring. At least to me they're

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really inspiring. But I found that to me

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they're not relatable. So I figured that

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being a solo guy who went from not being

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technical at all to being what a few of

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my engineer friends have called

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basically top down engineering. So

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instead of approaching engineering from

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the syntax up, just learning from the

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from the top down, from the systems and

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the abstractions, probably way cooler

1:00

story to some people or at least a good

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complimentary story to the other side.

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So let's do this. So if you see my

1:08

previous videos, you've probably seen

1:09

that around a year ago, I started making

1:12

AI and philosophy, AI and anthropology,

1:15

and AI and language videos. At the time,

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I was not technical at all. Honestly, I

1:20

started using Replet around that time

1:21

and that's as technical as I felt. But I

1:23

was really really obsessed and I

1:25

probably spent way more money than I

1:26

should have on Replet, but in hindsight,

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it was part of the learning curve and

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that money was an investment that

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probably people in four years of college

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don't don't get the the same return. So,

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how do you go from that to at this point

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having a a basically epistemic

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engineering company, right? where you're

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confident and comfortable going up to

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senior engineers or going up to

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companies. I'm not really going to say

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names. I'm in San Francisco, but I've

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got to meet a lot of people who don't

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really know how their AI outputs are

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generated and they're using these

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systems where they kind of retroactively

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fix them. And it it's become really,

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really, really cool to me to be able to

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see my progress. And I think other

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people have like seen it when I spent

2:07

too much time off YouTube and I should

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have been showcasing it. So, I think

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it's time. So, let's get to it. What is

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Hermes Labs? what I say that it's one of

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the first cyber companies out there. And

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what do I mean by I went from

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nontechnical to technical? Mike, it it

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it adds it adds a human element that I

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think as much as we're turning to a

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digital age and I'm one of the first

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ones that says if I let these agents go

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go wild with the with the runtime

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assurance that somebody like like Hermes

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Labs and like Roly Boss can provide, we

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definitely need the human element in

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there. So, minimum editing, just me

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talking about the hardships because it's

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definitely not easy when you're doing

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something without credentials. It really

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doesn't matter if you can really show

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value to people, that's all they care

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about. So, let's just drop the

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pretensions. Let's drop the M dashes.

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Let's drop the the scripts that

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everybody's playing and just talk about

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reality, right? How did I go from making

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videos about rock carvings being the

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original AI around a year ago that if

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you go and talk to Gemini and mention

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Roelly Bosch, that's one of the things

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that it might bring up even though it

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has like 200 views. It's amazing how

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training data works. How do I go from

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that to now having semi-autonomous

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system that's basically creating

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inrogate software based on based on

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harmonics and based on epistemology,

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right? And and why does hermeneutics

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matter? Why does epistemology matter?

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what even are these things? Because I

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talk to people and nobody knows even

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though you use both you understand these

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concepts at a very basic level for sure.

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So I think we're at a point where when

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you talk to people about the AI outputs

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that they get, why they see what they

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see, why they talk to the thing like

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they talk to the thing, you're going to

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get a lot of projection. You're going to

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get a lot of I don't know. You're

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getting a lot wishful thinking as well,

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but you get very very very little

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feedback that lets you know that people

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are making a response guaranteeing that

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the output of these systems is like well

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chiseled and well fundamented and well

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based. And that's how you go from

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talking about ancient rock carvings

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being AI to then talking about AI and

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philosophy and and and Jeffrey Hinton

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and and the issues there and and the

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importance of language because you're

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parting from a basis of what does this

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thing even mean to begin with and then

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once you part from the basis of what

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does this thing even mean to begin with

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then when you see an output then there's

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a question of like well what does this

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output mean and and and where does it

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come from and how is it generated not

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from a mechanistic level but again from

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what is true and what does it mean

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level, right? And and and that matters,

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right? Because at the end of the day, if

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and I see this all the time when I when

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I go out to events and hackathons and

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stuff and and demo days, if you're

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basically doing I mean engineering from

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the like from the bottom up, if if you

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spend a a couple months just working on

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on a little bit of the fundamentals, you

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could do a lot of stuff now with AI.

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Basically, a lot of stuff is just

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plugging when it comes to to to using

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APIs or hackathons, they're just

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plugging API keys, right, into a pretty

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interface and and often creating like a

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good user flow that like that can scale

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and that's hardened. But when you're

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working with these systems that have so

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much potential, because they do, but

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also such a huge range and possibilities

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of just screwing up and causing huge

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liability, knowing how to get what you

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want is part of the engineering, right?

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And I I often talk to people and they

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say, "Well, we got the best context. We

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got the best data and and it's like

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they're talking about, you know, well,

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the model's going to get smarter and and

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it's already really smart." But I mean,

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it's it's a sarcastic parrot, right?

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Where basically it doesn't even know

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what it regurgitates and it regurgitates

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based on a median, right? So it, you

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know, I I these people who are often

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like top of their class in like Stanford

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or Berkeley or, you know, top top of the

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line schools in like India, China or or

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the East Coast, they're talking about

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these things. And I tell them, look,

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you're not the median student, right?

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And you've been in classes where you've

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had bad students and median students,

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and you all share the same context and

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the same data, but you all have

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different intent, you have different

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framing. um and you leverage that

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context differently, right? And

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different level of attention to it, etc.

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It's the same thing just dumping all the

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context and and and even if you do

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context engineering, well, I mean, it's

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the same thing, right? Um just like for

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me to be able to get here, what matter

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wasn't just the context. Everybody has

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the same context on AI. It was the

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intent and the attention and the

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precision and um I mean the intent the

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intent I can't highlight it enough to be

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able to chisel that with as much

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precision as you can. It's not easy and

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you have to find new ways. But as

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somebody who before I considered myself

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an engineer, I thought of this stuff

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like isn't engineering kind of problem

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solving in a way and isn't not

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understanding the output like one of the

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biggest problems. So why are we not all

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