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27 KiB
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27 KiB
Plaintext
Take a look at this. A branded video, a
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high quality Instagram ad, content
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scheduled and posted across YouTube,
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Instagram, and threads. All from one
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single command. We didn't do any of this
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manually. We didn't hire a team. We just
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ran five AI agents inside clock code and
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they handled everything automatically.
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So, if you have been watching the AI
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space lately, you already know how
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popular clock is. And with open claw
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blowing up, everyone is talking about
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how to build multi- aents workflow. But
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most people are actually burning through
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tokens and getting nowhere fast. So
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today we're going to show you the
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smarter way to do this. We are building
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a full social media marketing engine.
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Five agents working together. One
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researches your content ideas. One
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builds actual video using Remotion. One
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designs your Instagram ads in HTML. One
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writes your captions for every platform.
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and one schedules and posts everything
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automatically. So basically a fivep
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person content team running inside your
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clock code for the cost of just a few
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API calls. Let's get into it. Let's
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start by walking through the
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environment. And before any agent runs,
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we just need three things in place. And
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I want to go through each one because
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understanding what and why can make the
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rest of this build make sense. This is
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where we put all the creative
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references. And right now we have sample
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assets in here. Things the AI can pull
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from as official and creative context
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when it is generating output for the
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brand. So you can think of this as the
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mood board that your team would normally
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keep in a shared drive. And except here,
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Claude has direct access here. And then
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the next one is the knowledge folder. So
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you can think of this like a brand brain
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like everything Claude needs to know
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about who this brand is and how it
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communicates and we have three files
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inside. The first one is brand identity.
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This can cover the brand personality,
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core traits and tone of voice. So this
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is a kind of document that a brand
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strategist would spend weeks building.
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And here this is a structured file that
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every agent in this pipeline can
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reference. So the second file is
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platform guidelines and this is exactly
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what it sounds like like a guide on how
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the brand formats content depending on
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where it is going like Instagram's bags
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YouTube structure threats tone etc and
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each platform has its own rules and this
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file can actually lay them out clearly
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so every agent follows them
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automatically. All right so the third
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file is product campaign. So this file
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basically outlines how the brand
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typically approaches campaigns and how
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visuals are usually handled and also is
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about what a typical content package
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looks like and it gives the agent a
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frame of reference before they start
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generating everything. All right. Then
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we have clot md. This is the file that
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we have and if you have worked with clot
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code before you know this file and if
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you have not this is the most important
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file in any clot code project. So
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basically you can treat this empty file
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as the source of truth for the entire
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workspace because it can tell clot what
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the project is, how the folder is
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structured, what files are available and
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what rules to follow when navigating
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everything. So without it, Clot is just
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guessing. And with it, Clot knows
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exactly where it is and what it is
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working with before it does anything. So
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if you look at this right now, you will
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notice we only have three agents
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declared here. And don't worry about
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that. We will be updating this as we
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build each agent throughout the video.
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All right. And last, this is important.
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This is our comprehensive CL skills and
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plugins document like 600 lines. We
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built it from the 33page clot skills
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guide that Enthropic released recently.
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So everything you or clot code needs to
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know to create a well structured
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reliable skill, it is in here like the
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YML front meta rules, the trigger
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patterns, the workflow structures, the
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testing framework, all of it basically.
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And this is not just a reference
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document. This is the foundation we are
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building every agent skill frame. Okay.
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So before we jump into clot code and
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start building, we need to be clear on
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what each skill is actually supposed to
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do. And the best way to do this is just
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to plan it first with cloud of course.
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And here is what looks like. We open CLA
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and set 4.6 is fine for this. It's not a
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complex task. So we actually do not need
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opus 4.6 here. And then we can ask it to
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help us plan and draft the key details
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and description for the skill we want to
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create. And we can also attach the
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automate clot skills document. So clot
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has the full context on what a
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well-built skill looks like. All right.
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So what's great about this step is that
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clot does not just give you an answer.
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It can ask you questions. It wants to
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understand the scope, the expected
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behavior, the edge cases, etc. and you
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just answer them as they come. So after
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some back and forth, CL outputs the key
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details and description for the skill
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and from there you can tweak it, refine
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it or if you're happy with it, just copy
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it into your notepad and move on. And
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since we are building five agents for
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this pipeline, that means five skills.
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You can go through this planning
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conversation five times, once for each
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agent until all five are defined. And
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here's what ours looks like with all
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five done. like key details, clear
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descriptions, scope defined for each
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agent before we write a single line of
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skill code and also we posted this PDF
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and the ultimate cloth skills MD file in
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our premium community and also if you
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want it for free you can let us know in
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the comment section below. If we have
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enough requests then we are going to
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post it in our free community as well.
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So with this ready we can move into
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cloud code and start building. Okay, now
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that our research is ready, it's time to
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put it to work. So in this section, we
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are going to create two agents. A video
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ad specialist which can handle
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programmatic video content for the brand
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and also an ad creative designer which
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can build static ads for platforms like
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Instagram. And we're going to build both
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skills first and then test them one at a
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time. All right. So, let's start with
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the video ad specialist first. And here
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in cloud code, we can just use this
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prompt to kickstart. And the prompt is
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help me create an agent skill. I will
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give you the key details about the
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skill. And then you can use the ultimate
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clot skills and plugins empty to create
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it. And then we can just paste in the
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key details we planned out earlier. And
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those are the details that we drafted
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with clot before coming into clot code.
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And that is the important thing to
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notice here because we're not just
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asking clot to figure out what the skill
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should do. We have already done that. We
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are just handing it the brief and asking
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it to build. All right. So let's hit
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enter and let Claude work through it. So
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after a while it's done. The video ad
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specialist skill is ready. And we can
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just open the skills folder and take a
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look at what Claude actually created.
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And here it is. We have a section
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defining where the skill gets triggered,
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a critical rule that can tell the agent
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to check the knowledge files before
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doing anything else and also the full
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workflow steps laid out in order. So
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basically this skill wraps around the
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remote skill. So what that means is the
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remotion skill handles the video
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creation best practices, the technical
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side, the rendering, the scene
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structure, the motion logic, etc. And
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the job for this agent skill is just
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focus on the brand. It can take
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everything Remotion knows about building
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Fido and filter it through the brand
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knowledge that we set up earlier. So
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basically, it's just one skill handles
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the craft and the other handles the
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brand and together they can produce
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something that is both technically
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wellbuilt and on brand. And if you have
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not installed the official clot remotion
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skill, please do it now. And also you
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can check out our previous video on how
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to install this skill as well. All
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right, so now let's move on to the
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second skill, the add creative designer.
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All right, so same process. We just ask
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Claude to create a new skill and
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reference the automate clot skills and
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plugins document as the guide and pasts
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in the key details for this agent. And
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this ad creative designer has a
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different job from the video ad
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specialist. So for the feeder ad
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specialist that agent actually generates
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motion content through remotion but this
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ad creative designer agent actually
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focuses on static ad creatives like
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square format Instagram ready built
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through HTML and captured as a clean
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image. So basically same prompt
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structure just different skill brief.
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All right so let us hit enter and wait
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for clot to finish. And there it is.
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Both skills are now built and ready for
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the project. And as you can see the
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structure is very similar to the video
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ad specialist like same trigger logic
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same rule about checking the knowledge
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files first same step-by-step
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workflowful format but the way this
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agent actually works is quite different
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from the video one and here's how this
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one works. So basically it starts by
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calling nanobanana mcp which can
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generate images using the branch
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knowledge folder and the sample assets
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we set up earlier as visual reference.
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So the images it can produce are not
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random. They are informed by the brand
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and from that it just uses the react
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canvas to design the static at layout in
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HTML like typography spacing color etc.
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All applied according to the brand
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guidelines and then this is the part
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that can make the output clean and
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production ready. It just launches a
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playright browser to take a precise
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capture of that HTML file and saves it
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as a PNG file. So what you end up with
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is not just a rough export or a browser
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screenshot. It is a pixel accurate image
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of a designed ad ready to upload. So
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this three-step workflow, generate,
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design, capture is what actually makes
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this agent produce something that
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actually looks like it came from a
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creative team. All right, so to set up
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the playright SDK, you can check out our
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previous video where we also did
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something similar to this and you can
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find the link in the description. And
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now let's test the agents. We will start
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with the ad creative designer and the
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static ad. So here's the prompt that we
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are going to use. and let me walk you
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through it. So, first we just state the
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task and mention the skill we want to
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use. And now you can trigger a skill
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without naming it directly because cloud
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is intuitive enough to pick it up from
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natural language most of the time. But
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if you want to make absolutely sure that
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the right skill is being used, just
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mention it and then prompt. And then the
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goal for this prompt is very simple.
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Just produce an Instagram ad. We just
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supply it with JSON inputs that can
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define what the ad should contain like
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the headline, the copy and the facial
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direction. And then we just instruct it
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to build the ad in HTML with CSS styling
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applied. And that is exactly the
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workflow we walked through earlier.
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Generate, design, and capture. All
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right. So now I've already run this
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prompt and as you can see all the steps
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have finished executing. So let's just
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open the output folder and see what came
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out. And here it is. So honestly for the
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amount of input we gave it, it is a
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pretty strong result. Like just basic
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JSON inputs, a simple prompt, no
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detailed design brief at all, no menu
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layout work, and the agent can produce a
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clean styled onbrand static ad and ready
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to use. So this is what a well
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ststructured skill with good brand
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context can deliver. So you do not need
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to overengineer the prompt because the
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skill can already know what to do with
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the information you give it. So now
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let's test the video ad specialist. And
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here's the prompt that we're going to
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use. Just like the static ad, we're just
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keeping it very simple. We are going to
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ask it to create a promotional video for
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the brand. So we can define the target
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audience and we can lay out five sins in
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total. And we will include a few rules
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around how the SVGs should be handled.
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And that's it. No detailed storyboard,
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no frame by frame direction, just the
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essentials. And we can let the skill
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fill in the rest. So we can hit enter
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and wait for the output. So now you
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might be wondering why we are suddenly
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in Google anti-gravity's AI chat when we
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were just inside clock code. So the
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reason is very straightforward. These
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are quick individual agent tests. We do
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not want to burn through CL code tokens
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on isolated test runs. Right? So for
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this just smaller test, we can just use
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school antigravity. It can keep things
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efficient and when we run the complete
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five agent pipeline at the end that is
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when we are going to go back into cloud
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code and let everything run together
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properly. All right. So this is done and
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unlike our previous remote videos where
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you open Remotion Studio and manually
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click render, we just built an automatic
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render script directly into the skill.
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So the finished video just go straight
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to the outputs folder without any menu
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steps. And let's open it and take a look
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at this.
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Great. It looks pretty good. Not
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mind-blowing, but with the prompt we
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gave it, this is exactly what you
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expect. So what's happening here is that
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Claude just read the brand knowledge
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folder and then pulled the right facial
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references and produced an infographic
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style video that feels on brand. So no
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detailed brief, no manual scene
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building, just a first simple prompt and
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brand context and that is the solid
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baseline. All right. So both creative
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agents are built and tested. Now we can
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add the intelligence layer that can feed
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everything which is the research agent.
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So what this agent actually does is more
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than just research. There are basically
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two things happening here. The agent
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finds and synthesizes information but it
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also creates resources that you can
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specialize and share with other people.
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So you can think about like formatted
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briefs, structured outputs, things that
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you can actually hand to a client or a
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team member without doing extra work and
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that can make it really useful beyond
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just being a background process in the
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pipeline. So there are two layers in
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this research agent. The first one is of
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course web search and for this we are
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using a simple and reliable web search
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API called Tavly AI. It is clean,
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straightforward and built for exactly
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this kind of use case. And then the
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second one is the agent skill itself of
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course and that can take what tally
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finds and it kills the research workflow
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like synthesizing the results
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structuring the output and formatting
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everything into something usable later.
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So basically Tavly handles the searching
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and the skill handles the thinking. All
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right. So let's start with the skill
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itself. Just like what we did for the
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previous two agents, we can just type in
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the prompt asking clot to create a skill
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and then just paste in the key details
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we planned out earlier. So Clot can read
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through everything and it can use the
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ultimate clot skills and plotins
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documents as the guide and it can then
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build the skill file. Great, it is
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ready. And if we check the skills
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folder, here it is like same structure
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as the others like trigger logic and
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waffle steps clean and consistent. All
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right. Now let's set up the tablet
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integration. And here we just simply ask
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claude to set up the Tavly AI SDK for
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us. And we can use this prompt and paste
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in the Tavly documentation directly. And
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you can find the documentation link in
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the description. So just open it, hit
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the copy button and paste it straight
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in. And same reason as the playright
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setup earlier, we're not asking Claude
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to guess. We are giving it the exact
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current documentation so that the setup
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is accurate from the start. And great,
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it is done. Tablet is installed and all
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we need to get it working is the EMV
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file and the API key inside. All right,
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so this is how it looks. This is an
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example EMV file and you can see
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something like this and also the Tavly
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API key and all you need to do is just
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paste your key here and it can start
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working. So you may ask, hey Andy, how
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to get the API key. So you can just get
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it from your dashboard and you can just
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click the add API key button and just
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name your key and then click create. And
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just like that, your API key is ready.
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Just click copy and paste in your EMV
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file. All right. So the research agent
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is built and the web search layer is
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already done. And now let us put
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together with the final two agents and
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get the full pipeline connected. And now
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let's build the copyrightiting agent.
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And at this point the process is
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familiar like same prom structure as
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before. We just ask CL to create the
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skill past in the key details we planned
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earlier and just hit enter. So as the
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name suggests, the agent basically
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handles all the marketing copy like
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captions, descriptions, platform,
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specific writing, anything that requires
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words tailored to a specific channel and
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audience. So it can know the brand voice
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from the knowledge folder and it can
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know the platform formats from the
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guidelines that we set up at the start.
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And it's done. Another skill added to
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the folder. Okay, now the last agent,
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the distribution agent. This agent just
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has two main jobs. Publishing content
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uploads programmatically and generating
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the right metadata for YouTube uploads.
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So title, description, tags, like all of
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it handled by this agent. So nothing has
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to be filled in manually. And in order
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to make this work, we need three more
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API integrations. YouTube API, the meta
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Instagram and threats API. We actually
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have a previous video to talk about how
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we can set this up. You can also check
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it out in our description. Now, you can
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see that we have already done the setup.
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So, next we can focus on the agent
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skill. And just like earlier, we can
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just use the key details that we've
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built with Claude in the very beginning
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to build the skill now. So, if we check
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the skills photos on the left, all five
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skills are done and ready now. the
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research agent, the video ad specialist,
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ad creative designer, copyrightiting
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agent and distribution agent. The full
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pipeline is complete. And now before we
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move on, let me give an important note
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here first. So earlier Clark just gave
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us this table with all the environment
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variables needed, right? And below that
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some notes on how the posting actually
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works. And the third bullet point is the
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one that we need to pay attention to. So
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for Instagram post requests to work like
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meaning for content to actually get
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uploaded to Instagram, the assets being
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posted need to be at a publicly
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available URL.
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Remember it's a publicly available URL.
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So it's not stored locally on your
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machine. So a local file path will not
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work here. The platforms needs to be
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able to reach the assets from the
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outside. Right. And this is where the
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agent will first upload the output files
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so the APIs can access them when we fire
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the post request. All right. So before
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we set up superbase, we can just look at
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the example EMV file quickly. So we can
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know exactly what keys you are going to
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need to make this whole pipeline run. So
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first of course your Tavly API key and
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then your YouTube Instagram threats keys
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and then your superbase project URL and
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service key and we'll go through exactly
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where to get your superbase storage up.
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So now let's get superbase storage set
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up. This is the last piece before we can
|
|
run the full pipeline. So please pay
|
|
attention. Okay, we can just start from
|
|
a fresh superbase project and the first
|
|
thing you need is your project URL and
|
|
you can find it right on the dashboard
|
|
as soon as you open the project. It's
|
|
very easy to locate. Just copy it and
|
|
paste it into your EMV file. So next is
|
|
your service key. And now if you have
|
|
followed our previous projects, you
|
|
would notice that we usually go for the
|
|
anon key. And you might be wondering,
|
|
hey Andy, why are we using the service
|
|
key here instead? And here's the reason.
|
|
because this pipeline actually runs as a
|
|
serverside node.js script and there is
|
|
no user section attached to this and no
|
|
logged in superbase user. Basically,
|
|
it's just a backend automation script
|
|
uploading files directly to a storage
|
|
bucket. So, if you used the anony key in
|
|
this situation, the upload will fail and
|
|
there are two reasons for that. First,
|
|
there is no authenticated user section
|
|
attached to the request. And second, the
|
|
storage bucket has RO full security
|
|
policies that can block unauthenticated
|
|
uploads by default. And if you want to
|
|
learn more details, you can actually
|
|
check out the superbase documentation as
|
|
well. So the service ro should only ever
|
|
be caught server side, never exposed in
|
|
the browser. And that is exactly how we
|
|
are going to use it here. a backend
|
|
pipeline, no front end, no user section.
|
|
Now, if this project ever had a front
|
|
end, so like a dashboard where users
|
|
upload their own files, then you could
|
|
opt for the nonkey and set up proper
|
|
role level security policies. But for an
|
|
automation pipeline like this one that
|
|
we're going to set up here, the service
|
|
key is what we're going to use. So, you
|
|
now know where your service key is. Just
|
|
copy and paste it into your EMV file
|
|
alongside your project URL. All right,
|
|
so please hang on. We are not quite done
|
|
with Superbase yet. We need to create
|
|
the storage bucket that the pipeline
|
|
will upload assess into. From a
|
|
dashboard, we can click on storage on
|
|
the left hand side. And once you're
|
|
inside, you can click create bucket and
|
|
then give it a name. We're specifically
|
|
using campaign-uploads
|
|
for this project. and make sure to set
|
|
it to the public. And this specific name
|
|
is very important because in our code,
|
|
the referenced bucket name from where
|
|
the outputs will be outload is hotcoded.
|
|
So please make sure to remember what
|
|
bucket name CL gives you before creating
|
|
the bucket. And also the public setting
|
|
is what allows the YouTube and Instagram
|
|
APIs to reach the uploaded files of
|
|
course. And this is exactly what we
|
|
needed for Instagram, right? And that's
|
|
it. Superbase storage is configured and
|
|
the bucket is ready. So all five agents
|
|
are built, the APIs are connected, the
|
|
storage layer is in place, every single
|
|
piece of the pipeline is now ready. And
|
|
now it's time to see all five agents run
|
|
together as one connected pipeline.
|
|
Let's do the full test run now. All
|
|
right. So before we run it in clot code,
|
|
let me show you the prompt that we are
|
|
going to use. So here it is. It is a
|
|
simple job payload like no need to over
|
|
complicate a pilot test right and the
|
|
payload contains the core brief like the
|
|
brand the campaign goal the content
|
|
requirements and the other agents can
|
|
analyze and then reach it as it moves
|
|
through the pipeline and then the
|
|
distribution agent will convert
|
|
everything into a JSON script that can
|
|
trigger the full automation sequence
|
|
just simple input and then the agents
|
|
can do the rest so let's Just copy this
|
|
prompt and paste it into clot code. And
|
|
then we can hit enter. And now you can
|
|
see clot code is starting to reference
|
|
the relevant agent skills for each part
|
|
of the task. And it is reading the
|
|
pipeline identifying which agent handles
|
|
which job and queuing everything in
|
|
order. And now that the JSON is ready,
|
|
right, we will allow to clot code to
|
|
create the file in the project. And
|
|
here's the first breakdown of the
|
|
payload. And it's looking pretty good,
|
|
right? All agents are cued and ready for
|
|
execution. But one thing to notice here
|
|
though, the distribution agent C
|
|
actually has added a constraint that
|
|
sued uploads will run in simulation
|
|
mode. Meaning no real API call goes out
|
|
and that is not what we want, right?
|
|
Because we need the actual upload to
|
|
happen so that the Instagram API can
|
|
reach the files. So then we can just
|
|
tell clot to proceed with real superbase
|
|
uploads before we let it run. Okay, that
|
|
should do it. And now we can just wait.
|
|
This will take a few minutes to
|
|
complete. All right, after everything is
|
|
done and before we approve the upload,
|
|
we can just check the outputs first. So
|
|
we can start from the research report.
|
|
We actually have two versions here. One
|
|
in document format and one in HTML. And
|
|
this is quite a nice bonus, right? It
|
|
can give us two different use cases from
|
|
the same output. So let's open the HTML
|
|
version. And here it is an interactive
|
|
research dashboard. Clean layout, easy
|
|
to follow, and the brand colors are
|
|
actually being applied throughout,
|
|
right? And this is a kind of output you
|
|
would share with a client or a team lead
|
|
before a campaign kicks off, right? And
|
|
also the information quality is solid
|
|
and it is already presented in a format
|
|
that is easy to digest. So if you need a
|
|
more traditional format, the
|
|
documentation version is there as well
|
|
and it is in mockdown but that is
|
|
straightforward to convert to a like
|
|
Google doc or word file. And now let's
|
|
check the static ad and the video ad.
|
|
Here's the static ad. Very simple and
|
|
looks pretty good, right? And what
|
|
stands out is the consistency here. And
|
|
this is the second time that our ad
|
|
creative designer has produced something
|
|
that looks pretty good and on brand with
|
|
minimal input. And that consistency is
|
|
what makes this workflow really great.
|
|
Okay, so now the video ad, let's go
|
|
ahead and find it here and hit play.
|
|
It's pretty good, right? For a simple
|
|
prompt with no custom assets and no
|
|
detailed storyboard. So you can imagine
|
|
with comprehensive prompts, a proper PRD
|
|
and custom worked assets. This workflow
|
|
with remote can actually produce
|
|
impressive outputs. And again what we
|
|
are seeing here is just the baseline
|
|
quality not the best quality yet. Now
|
|
that we are happy with the deliverables
|
|
right we can just publish them. So over
|
|
here in superbase we can already see the
|
|
outputs sitting in the storage bucket
|
|
and the pipeline actually handled the
|
|
upload automatically. And now here is
|
|
our publish MD file. It has basically
|
|
everything in one place like public
|
|
urls, copy, metadata, scheduling
|
|
details, etc. And all we have to do is
|
|
to just approve this with a simple
|
|
confirmation prompt just like this. Now
|
|
we can wait for claude to write the
|
|
upload script and contact the YouTube
|
|
and meta APIs and this should be fast.
|
|
Great, this is done. Here is the publish
|
|
confirmation. And there it is, the
|
|
YouTube video link. You can just open it
|
|
and see if the upload went through.
|
|
Great, the video is live on our test
|
|
channel. It is uploaded and playable.
|
|
And let's check Instagram. And again,
|
|
this is our test account. Great. You can
|
|
see the posts here, including some from
|
|
previous projects we built with the same
|
|
setup. And now you can notice there are
|
|
four copies of the ad uploaded because
|
|
we specified four uploads in the prompt
|
|
but only asked for one ad to be created.
|
|
So the agent did exactly what it was
|
|
told. It uploaded the one ad for four
|
|
times. So you can just fix this by just
|
|
tweaking your prompt to match your
|
|
intentions. So to recap, from a single
|
|
job payload, five agents actually worked
|
|
in sequence to produce a research
|
|
report, a static ad, a video ad,
|
|
platform specific copy, and a scheduled
|
|
upload to YouTube and Instagram. All
|
|
connected or automated. And this is what
|
|
it looks like when your marketing team
|
|
actually runs on skills.
|
|
All right. So that's your full content
|
|
marketing team running on autopilot
|
|
inside CL code. Research, video, ads,
|
|
copy, scheduling, five agents, one
|
|
single workflow. And now if you want the
|
|
exact template and workflow we used
|
|
today, plus if you want to have the AI
|
|
website design course and 101 tech
|
|
support, feel free to join our any no
|
|
code premium community. You can find a
|
|
link in the description and drop a
|
|
comment below and tell me which agent
|
|
that you are most excited to try first.
|
|
I read every single one of your
|
|
comments. And also, if you found this
|
|
video helpful, hit the like and
|
|
subscribe button for more video like
|
|
this in the future. I'll see you in our
|
|
next one.
|