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Build & Sell with Claude Code (10+ Hour Course)

10h 0m 7s151,204 単語20,888 segmentsEnglish

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0:00

I'm about to take you from a complete

0:01

beginner to a pro cloud code user. Even

0:03

if you've never touched the tool before,

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by the end of this video, you'll be able

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to build automations, websites, apps,

0:08

[music] whatever you want. You'll even

0:09

have your very own AI executive

0:11

assistant. So, I have put a ton of time

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into making sure that this course is as

0:14

comprehensive as possible, and I've laid

0:16

it out in the exact order that I would

0:18

have wanted to learn Cloud Code if I was

0:19

starting over. So, we've got 24

0:21

different chapters that are covered in

0:22

this course. Let's take a quick look.

0:23

I'm going to start off by telling you

0:25

guys about the shift in the Agentic AI

0:27

market and why you should be learning

0:28

Claude Code. I'm going to help you guys

0:29

get set up. We're going to go over the

0:30

cloud code operations. We're going to

0:32

talk about tokens and context when it

0:34

comes to just dealing with AI in

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general. We're going to talk about

0:36

cloud.md. You're going to build your

0:38

first workflows. We're going to deploy

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those automations so that they actually

0:41

can run 24/7. We'll talk about project

0:43

architecture, the built-in commands,

0:45

rag, building and deploying websites,

0:47

APIs, and MCPs. We'll take a look at the

0:49

Google CLI. I'll help you guys build

0:51

your very own executive assistant. Then

0:53

we're going to deep dive into skills,

0:54

sub agents, agent teams, browser

0:56

automations, permissions, context

0:58

management, GitHub work trees. We've got

1:01

some fun hacks for you guys and fun

1:02

things that you can do with cloud code.

1:03

And then finally talking about how you

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can actually monetize this new

1:06

knowledge. So I don't want to waste any

1:08

time. Let's just get straight into the

1:09

course.

1:14

All right. All right. So, before I have

1:15

you guys open up Cloud Code and we start

1:16

getting our hands dirty, I just wanted

1:18

to sort of talk about the actual space

1:20

and what this shift means and why it's

1:22

so important. So, that's what we're

1:23

going to be covering in this section.

1:25

Check it out.

1:28

Aentic workflows are not just [music] a

1:30

trend. They're the future of the AI

1:31

industry. More and more companies are

1:33

making the shift to agentic workflows.

1:34

And this is just getting started because

1:36

it's estimated that the AI agentic

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market is going from about $7 billion

1:39

this year to around 93 billion in the

1:41

next couple of years. So, I can tell you

1:43

right now that knowing how to build aic

1:45

workflows is going to be one of the most

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valuable skills that you can have. So,

1:48

in this video, I'm going to break down

1:49

why you should be building aic workflows

1:51

and then I'm going to actually build one

1:52

live in front of you so you can see

1:54

exactly how it works. And by the end,

1:55

I'll show you how to actually sell these

1:57

if you want to make some money with your

1:58

skills. So, let's get into it. So,

1:59

before we build anything, I want to show

2:01

you why this all matters because it's

2:02

not just hype. This is real money moving

2:04

into real technology. Right now, the

2:06

Aentic AI market is sitting at around $8

2:08

billion. By 2030, that's expected to hit

2:10

40 to 50 billion. That's not just a

2:12

small jump. That's an entire industry

2:13

being built in front of our eyes. And

2:15

it's not just projections. About 25% of

2:17

enterprises are already deploying

2:18

Agentic pilots this year. And by 2027,

2:20

that number will jump to 50%. So half of

2:23

major companies will be running some

2:24

version of Agentic Workflows within the

2:26

next 2 years. And with that comes

2:27

massive budget allocations, new security

2:29

requirements, and a ton of new

2:30

opportunities for people who know how to

2:32

build these systems. So why is this

2:33

happening now? What's driving the shift?

2:35

It comes down to pretty much one thing

2:36

which is companies are starting to hit

2:38

that ceiling of what traditional

2:39

automation can do and they're starting

2:40

to realize they could move a lot faster

2:42

with more agentic workflows. If you've

2:44

been building workflows in tools like

2:45

end to end or Zapier, you know the

2:47

drill. You map out every step. You

2:48

connect the different nodes or blocks.

2:49

You handle the edge cases yourself and

2:51

it works until it breaks because

2:52

traditional workflows will break when

2:54

they hit something unexpected. And when

2:55

that happens, someone has to usually go

2:57

in manually and fix that. And that's

2:58

maintenance. That's time. That's

3:00

ultimately money. Now, I do want to be

3:01

real with you here because there's a lot

3:02

of noise online about a dentic workflows

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that makes it sound like they're just

3:05

completely magic and they fix themselves

3:07

forever. And that is partially true, but

3:09

only in a specific context, at least

3:10

[music] right now. Cuz when you're

3:11

actively working in a tool like Claude

3:13

Code and you trigger a workflow yourself

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and say, "Hey, go research these

3:16

competitors and build me a report." The

3:17

agent is sitting right there with you.

3:19

So, if something breaks, the agent can

3:20

catch it mid-run. It can adjust its

3:22

approach. It can update its tools and

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keep going. That self-healing piece is

3:25

very, very real and it's incredibly

3:27

powerful while you're building and while

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you're iterating. But once you deploy

3:30

that workflow to run on its own on a

3:32

schedule or triggered by a web hook or

3:33

something like that, that is when you're

3:35

deploying the code, you're deploying the

3:36

tools, not the actual agent itself. So

3:38

if you've seen my previous videos where

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we've used the WAT framework, we are

3:42

basically deploying the W workflows and

3:44

the T tools, but not the A agent. But

3:46

I'll cover this more in depth later

3:48

during the live build if you're

3:49

confused. But what this means is that

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the self-healing ability ultimately goes

3:52

away when the code is up in the cloud,

3:54

you know, running automatically. And at

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that point, it does behave more like a

3:57

traditional automation. But that's

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really a good thing because automations

4:00

are predictable. They're deterministic.

4:02

And those types are the best ones. So

4:03

then where's the real advantage? Really,

4:05

it sits in how you build. Traditional

4:07

automation is like building a train

4:08

track by hand. You're laying every rail,

4:10

every switch, every connection all by

4:12

yourself. Whereas with aentic workflows,

4:13

it's like you're just telling a

4:14

construction crew, "Hey, I need you to

4:16

build a train track from here to there."

4:17

And then they build it for you. Meaning,

4:19

if they hit a problem during

4:20

construction, they would figure it out.

4:21

So you end up with a better train track.

4:23

It's built faster with fewer mistakes

4:25

because the agent handled the edge cases

4:26

during the build process that you might

4:28

have missed or not thought of. And then

4:30

the idea is you battle test it before

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you ever actually deploy it. So then you

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have a lot of confidence that it will

4:34

always work. So in our train analogy,

4:36

before we deploy that train track, we

4:38

would have like 10 different types of

4:39

trains test drive on it. They would be

4:41

different weights, different lengths,

4:42

and maybe different wheels. And we'd

4:43

want to make sure that our track can

4:45

work for all different types of trains

4:46

before we deploy it. And the reason this

4:48

is actually possible now is because the

4:49

technology has finally caught up. LM

4:51

have gotten really reliable enough to

4:52

use in production and we're not just

4:54

playing around with chatbots anymore.

4:55

These models can reason, they can make

4:57

decisions and they can execute

4:58

multi-step tasks with real consistency.

5:00

On top of that, we've got things to use

5:01

like skills or MCP or aa. We've also got

5:04

infrastructure like trigger.dev, modal

5:06

or versell that make deployment way

5:08

simpler than it used to be. And most

5:09

importantly, we've got tools like cloud

5:11

code that make all of this accessible to

5:13

non-developers. So, we can see that the

5:14

market is absolutely shifting towards

5:16

aic systems and the numbers back it up.

5:18

But here's a question that's probably on

5:19

your mind. Does this mean everything

5:20

that I've learned about Naden or

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