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