Build & Sell with Claude Code (10+ Hour Course)
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I'm about to take you from a complete
beginner to a pro cloud code user. Even
if you've never touched the tool before,
by the end of this video, you'll be able
to build automations, websites, apps,
[music] whatever you want. You'll even
have your very own AI executive
assistant. So, I have put a ton of time
into making sure that this course is as
comprehensive as possible, and I've laid
it out in the exact order that I would
have wanted to learn Cloud Code if I was
starting over. So, we've got 24
different chapters that are covered in
this course. Let's take a quick look.
I'm going to start off by telling you
guys about the shift in the Agentic AI
market and why you should be learning
Claude Code. I'm going to help you guys
get set up. We're going to go over the
cloud code operations. We're going to
talk about tokens and context when it
comes to just dealing with AI in
general. We're going to talk about
cloud.md. You're going to build your
first workflows. We're going to deploy
those automations so that they actually
can run 24/7. We'll talk about project
architecture, the built-in commands,
rag, building and deploying websites,
APIs, and MCPs. We'll take a look at the
Google CLI. I'll help you guys build
your very own executive assistant. Then
we're going to deep dive into skills,
sub agents, agent teams, browser
automations, permissions, context
management, GitHub work trees. We've got
some fun hacks for you guys and fun
things that you can do with cloud code.
And then finally talking about how you
can actually monetize this new
knowledge. So I don't want to waste any
time. Let's just get straight into the
course.
All right. All right. So, before I have
you guys open up Cloud Code and we start
getting our hands dirty, I just wanted
to sort of talk about the actual space
and what this shift means and why it's
so important. So, that's what we're
going to be covering in this section.
Check it out.
Aentic workflows are not just [music] a
trend. They're the future of the AI
industry. More and more companies are
making the shift to agentic workflows.
And this is just getting started because
it's estimated that the AI agentic
market is going from about $7 billion
this year to around 93 billion in the
next couple of years. So, I can tell you
right now that knowing how to build aic
workflows is going to be one of the most
valuable skills that you can have. So,
in this video, I'm going to break down
why you should be building aic workflows
and then I'm going to actually build one
live in front of you so you can see
exactly how it works. And by the end,
I'll show you how to actually sell these
if you want to make some money with your
skills. So, let's get into it. So,
before we build anything, I want to show
you why this all matters because it's
not just hype. This is real money moving
into real technology. Right now, the
Aentic AI market is sitting at around $8
billion. By 2030, that's expected to hit
40 to 50 billion. That's not just a
small jump. That's an entire industry
being built in front of our eyes. And
it's not just projections. About 25% of
enterprises are already deploying
Agentic pilots this year. And by 2027,
that number will jump to 50%. So half of
major companies will be running some
version of Agentic Workflows within the
next 2 years. And with that comes
massive budget allocations, new security
requirements, and a ton of new
opportunities for people who know how to
build these systems. So why is this
happening now? What's driving the shift?
It comes down to pretty much one thing
which is companies are starting to hit
that ceiling of what traditional
automation can do and they're starting
to realize they could move a lot faster
with more agentic workflows. If you've
been building workflows in tools like
end to end or Zapier, you know the
drill. You map out every step. You
connect the different nodes or blocks.
You handle the edge cases yourself and
it works until it breaks because
traditional workflows will break when
they hit something unexpected. And when
that happens, someone has to usually go
in manually and fix that. And that's
maintenance. That's time. That's
ultimately money. Now, I do want to be
real with you here because there's a lot
of noise online about a dentic workflows
that makes it sound like they're just
completely magic and they fix themselves
forever. And that is partially true, but
only in a specific context, at least
[music] right now. Cuz when you're
actively working in a tool like Claude
Code and you trigger a workflow yourself
and say, "Hey, go research these
competitors and build me a report." The
agent is sitting right there with you.
So, if something breaks, the agent can
catch it mid-run. It can adjust its
approach. It can update its tools and
keep going. That self-healing piece is
very, very real and it's incredibly
powerful while you're building and while
you're iterating. But once you deploy
that workflow to run on its own on a
schedule or triggered by a web hook or
something like that, that is when you're
deploying the code, you're deploying the
tools, not the actual agent itself. So
if you've seen my previous videos where
we've used the WAT framework, we are
basically deploying the W workflows and
the T tools, but not the A agent. But
I'll cover this more in depth later
during the live build if you're
confused. But what this means is that
the self-healing ability ultimately goes
away when the code is up in the cloud,
you know, running automatically. And at
that point, it does behave more like a
traditional automation. But that's
really a good thing because automations
are predictable. They're deterministic.
And those types are the best ones. So
then where's the real advantage? Really,
it sits in how you build. Traditional
automation is like building a train
track by hand. You're laying every rail,
every switch, every connection all by
yourself. Whereas with aentic workflows,
it's like you're just telling a
construction crew, "Hey, I need you to
build a train track from here to there."
And then they build it for you. Meaning,
if they hit a problem during
construction, they would figure it out.
So you end up with a better train track.
It's built faster with fewer mistakes
because the agent handled the edge cases
during the build process that you might
have missed or not thought of. And then
the idea is you battle test it before
you ever actually deploy it. So then you
have a lot of confidence that it will
always work. So in our train analogy,
before we deploy that train track, we
would have like 10 different types of
trains test drive on it. They would be
different weights, different lengths,
and maybe different wheels. And we'd
want to make sure that our track can
work for all different types of trains
before we deploy it. And the reason this
is actually possible now is because the
technology has finally caught up. LM
have gotten really reliable enough to
use in production and we're not just
playing around with chatbots anymore.
These models can reason, they can make
decisions and they can execute
multi-step tasks with real consistency.
On top of that, we've got things to use
like skills or MCP or aa. We've also got
infrastructure like trigger.dev, modal
or versell that make deployment way
simpler than it used to be. And most
importantly, we've got tools like cloud
code that make all of this accessible to
non-developers. So, we can see that the
market is absolutely shifting towards
aic systems and the numbers back it up.
But here's a question that's probably on
your mind. Does this mean everything
that I've learned about Naden or
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