I Built the Ultimate UGC Content System with AI Agents (free template)

nateherk AYsg5gAMWyo Watch on YouTube Published November 03, 2025
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VO3.1 Nano Banana Sora 2. There are all of these amazing models dropping. So, I figured why not just build a system where we can use all of them. So, what we're going to be looking at today is the ultimate UGC ads system where all you have to do is fill in some raw information on a Google sheet like a product photo, the ICP, the features of that product, and a setting of the video. And then all you have to do is come in here and choose your model. Whether that is V3.1, a combination of Nano Banana and V3.1, which is super cool. I'll show you guys exactly how we do that in a sec here, or using Sora 2. This lets you seamlessly test a bunch of different creatives and product features and settings across a ton of these different AI video generation models. So, the question that we're going to be trying to answer today is which one is best for UGC ads. So, taking a look at this workflow, you can see that there's basically three paths. There's the VO3.1 path, the Nano Banana Plus V3.1 path, and then the Sora 2 path. So, we're going to jump into a live demo. We're going to run all three of these paths, and I'm going to explain what every single node is doing so that you guys can set this up for yourself. And as always, I'm giving away the entire system for free. All you have to do is join my free school community. The link for that is down in the description. So, before we go ahead and run the live example, let's look at a few of our outputs that we've already gotten with this exact system. So, the first product we tried was creatine gummies. Here is what the actual product photo looks like. So, you can see it's a creatine gummy jar. We then have the ICP, which is young adults wanting to stay fit. The product features for this are delicious gummies, easy to remember to take daily, makes workouts better, more energetic, stuff like that. In the video setting, we have a young man who is parked in his car about to go into the gym holding the gummies. So, the first one we'll look at is Nano Banana Plus Google V3.1. >> I love that these creatine gummies actually give me more energy for my sets and they're tasty, so I actually remember to take them every day. >> All right, here's the same one with Sora 2. >> I love these creatine gummies. They actually taste amazing and I never forget to take them. They make my workout stronger and I feel more energized. >> And then here's V3.1. These taste amazing and I actually remember them every day for a my workouts feel stronger and I've got more energy. >> You may have noticed a few things with the reference image and the way they were speaking, but let's continue on to the second example which was hair shine spray. So, I'm going to go in the same order. Nano Banana Plus VO3.1 Sor 2 and then V3.1. >> I love how this gives my hair that glossy finish without any greasiness. It dries instantly and feels weightless. I love how this gives instant glossy shine without any greasiness. It dries fast and feels weightless. I love how this adds instant gloss without feeling greasy. It dries so fast and leaves no sticky buildup. >> All right, so we've seen a few examples. We'll come back at the end and compare more outputs and see which one we ultimately deem being the king of these models. But let's go ahead and do a live example. So the first two that we did were AI generated images. This first one was creatine gummies, as you can see, and the second one was our hairspray, which looked like this. So, what we're going to do for the third example is a real product image, and this is actually from an Amazon listing. So, it is a portable neck fan like this. We have the ICP of middle-aged adults who spend long hours outdoors or landscapers, construction workers. We have product features like it's comfortable, it's light, it delivers powerful air upward and downward, and it regulates your body temperature. And we have the video setting for a friendly middle-aged woman tending her garden in the afternoon sun. So, hopefully you guys can see the value prop here. it'd be really easy to just throw in your product information right here and then have this thing every day create tons of UGC ad content for you. Then what happens in the workflow is it takes that and we have different AI agents here that are trained to prompt in different ways and that's how we're optimizing you know the features and ICP and the setting to actually go into this UGC content. So I'm going to go ahead and hit execute workflow. It's going to pull in that data from the sheet. It's going to do one row first and the first row that it's doing is nano Banana plus V3.1 because as you can see right here it's basically processing this row and that's the model that we chose was NanoBanana plus V3.1. So I'm actually just going to start to explain what's going on here as this is running. So you can see here we're pulling in data from this sheet, right? The only thing special going on here is we're making sure that the status column equals ready because we don't want to pull in all of these rows that have already been finished. And then we also turned on this option that says return only the first matching row because we don't want to do, you know, all six of these at a time. We want to just do one by one. You could obviously change that if you want, but that's the way we're rocking right now. Anyways, we then go into this switch node and what happens here is it basically just checks what the model was selected as. So if it was V3.1, it goes up. If it was nano plus V3.1, it goes to the middle. And if it was SOAR 2, it goes down. As you can see, these three paths. So, this one was obviously V3.1 plus nanobanana, which is why it went here. And that's why we're doing this first step, which is an image prompt. So, let me explain why I'm doing this. What we're starting with is a picture of our product because we need to make sure that the product image looks actually good in our final copy. Otherwise, we're not going to be able to sell any of that. So, in my mind, the most ideal way to do this is to take that product image that we're given. So, if we just want to get a quick refresher, taking this product image right here and using AI to turn this into an image where someone is wearing it or holding it and then we can take that optimized image and turn that into a video. And so, ideally, I would do this also for Sora. But when you send a image to Sora, if it looks like a realistic human person, even if it's an AI generated human, it's going to reject it. Google VO3.1 however does not reject it which is why we have this little extra bonus method here. Now the workaround here is if you do Sora 2 you can use cameos. So if you haven't seen that before then I'll drop my video I made with Nitn and Sora 2. I'll tag it right up here and you can see you could use cameos. So you could create one of yourself or you could use some other person and have them being in your content with your product something like that. So anyways we're using Nano Banana to create an image of the product being held or worn by a person. And then we take that image and we turn it into a video with VO3.1. So anyways, you can see that that actually just finished up. So that's telling me I need to speed up a little bit. Let's click into this AI agent to understand how it is making an image prompt. We're giving it two things. We're giving it the product, which as you can see, if I open this up, it's coming through as portable neck fan, and we're giving it the image setting, which is actually just the video setting, but it says, "A friendly middle-aged woman is tending her garden under the sun. She pauses, smiles at the camera, and gestures toward the sleek fan resting around her neck." So the AI agent takes that information and then it reads through its system prompt to understand what do I need to do with that information. I'm not going to read this entire system prompt, but you guys will be able to once again download this template for free and you can dive into this and understand why I have it set up this way. One thing I did want to preface though is I made this workflow to be a template. So these system prompts are not perfect or optimized and it would really be on you to get in here and customize them a little bit for your use case, but it gives us a great place to start. So anyways, you are an expert in hyperrealistic UGC userenerated content photography and your role is to generate detailed image prompts, not the images themselves. So you will be provided with a product photo which should not be changed or altered in any way. And you will also be given a specific setting or scene description. So it knows that its role is to create a prompt. So we come in here and we give it some prompt guidelines. We talk about human realism. We talk about product accuracy. We talk about composition and perspective. We talk about lighting and environment. We talk about authentic details, technical style. And then finally, some critical instruction like only outputting the image prompt, not an actual image or you know, hey, here's your image prompt. You know, we just want the prompt. So, out of that, what we get is our image prompt. And you can see it's pretty detailed. It has stuff like lighting. It has stuff like camera angle and composition and stuff like that. And we're able to take that output, feed it into the next node, which is our HTTP request to a service called Key AI, which lets us access tons of different AI image and video generation models. So this is key. As you can see, we have tons of stuff like VO3.1, Sora 2 Pro, 40 image, Flux Context, Cling Turbo. It's kind of like the open router for image and video generation models. So, I'm not going to deep dive into exactly how I set up this API call, but definitely go and watch that sore video if you haven't because I actually go step by step and show you guys how I did that. I'll also tag right up here an API video that I made, which you should watch anyways because it really explains APIs and agents and stuff like that. Anyways, essentially what we're passing over here is our JSON body, which is the most important part. The model that we want to use is nano bananait. We're sending over the input prompt, which as you can see right here is coming through. This is the output of the image prompt agent that we just looked at. Now, there is one thing I did here that's kind of special is I replaced new lines because you can see if I get rid of this expression real quick, what happens is we get these little line breaks in here and we don't want that because that will actually break our request to key AI. So, that's why I use that little expression. I also talk about that in the Sora video. And then we're giving it the image URL, which is the one that came from our Google sheet right here as you can see. Finally, we're just saying we want this to be vertical because a lot of times the UGC content is kind of selfie style and it's for like a Tik Tok or an Instagram reel. So that's what we do there. Once key gets this request, it basically says to us, okay, cool. I got all this information. We're working on that right now. And so the next step that we move into here is a wait node. You can see that I have this set up for 5 seconds. So it goes ahead and it waits for 5 seconds and then it checks in on key and says, "Hey, do you have my order done yet?" And we're able to get to that by sending over the task ID of the previous order. So it's like when you go to a food truck and you order your food and it says, "Okay, your order number 43." This is basically you walking back up to the truck and saying, "Hey, I'm order 43. Is it done?" And they'll either say yes or no. And that's why we use this little if node right here, which is basically our yes or no check. And we're looking to see if the state equals success. Because if you look at the first time we checked in, the state equals waiting. The second time that we checked in, the state equaled waiting. And finally, the third time we checked in, the state equals success, which means that our order is ready. And so notice that we have false branch or true branch, and it's true when it's done. So what we do is if it's false, we have this line that goes back to the wait. So this is why you can see it waited three times, which means this took about 15 seconds to generate. And so the first time it wasn't ready, it came back. Second time it wasn't ready. We checked in again. And then the third time after it waited again, it was done. And so when that's done, what we end up doing is we want to real quick analyze that image to see what is actually in there. So here's the actual image that it created for us, which looks awesome. It's a green portable neck fan. She's in her garden, and it even matches the writing, as you can see. See, if we go back to the source image, there's a little bit of gold text right there. There's these circles. So, that looks really good. And so, I basically grabbed this open AI note and said, "Describe what's in the image. Describe the environment." Stuff like that. And we get back, the image features a woman standing outdoors in what appears to be a garden. The environment has raised garden beds, blah blah blah. The woman is wearing a light blue shirt. She has her hair pulled back. Around her neck, she has a green wearable device that looks like a personal neck fan. Blah blah blah. So, the reason why I wanted to analyze the image real quick is because the next step is to use another AI agent to create a video prompt. And in order to create a video prompt that is consistent with our image, not only are we going to give it that image, but we also want to give it a quick analysis of what is actually in that image so that its prompt is consistent. And I have tried doing this without the analyze image step and it still works. But doing this, it just seems to be higher quality. So, anyways, we are hitting another AI agent. This time we're giving it a little bit more information because keep in mind this agent isn't just creating a video prompt. It's also creating the dialogue that the person in that video is going to say. And so in order to do that, we give it the product. We give it the product ICP. We give it the product features. We give the video setting. And here's where we give it the reference image description. So this is the analysis of that image. So it looks at all that information and it says, "Okay, what do I do with that?" And so now we have our system prompt. Once again, not going to read the whole thing, but you guys can have access to it for free. So, we said that your role as an expert UGC video creator. Your task is to generate a prompt for an AI video model like VO3.1. Your goal is to create a realistic selfie style video that appears to be filmed by an influencer using one hand to hold the phone and the other to interact with the product. The video needs to feel authentic, which is why UGC ads are converting so well right now because it's just real people speaking real raw thoughts. Anyways, we gave it some requirements like subject and framing. We talk about the visual style. We talk about tone and dialogue. We give it some technical specs. We give it some embedded elements in the prompt. As you can see, we tell it that it's going to get a reference image and it needs to match that appearance and tone. And then a real quick output prompt, which is pretty concise. And honestly, it looks like I might have accidentally cut off the last sentence here, but hopefully it still came out all right. And so after that, we get this output. You can see it starts off with a natural selfie style 9x6 vertical video, 8 seconds long. friendly middle-aged woman, gardener. She's filming on her phone. She's wearing a light blue shirt. And then down here is where you can see what the dialogue says. So, I love how it's so light. I almost forget it's on, but it pushes a ton of air and the battery lasts all afternoon. So, that basically took the product features that we had given it and it made a quick little blurb for this influencer to say in the video. Now, we're going to take this video prompt and we're going to feed that into key once again and we're going to send it to VO3.1. So, here is our HTTP request where we're submitting an order to VO3.1. I'm going to open up this body, and you can see that we have a prompt, which is exactly what we just got from the lefth hand side. Now, the reason it looks all messy like this is because I'm actually using three replace functions. I'm just going to replace new lines, which we already talked about. I'm going to replace double quotes right here. It previously said, I love how it's so light and pushes a ton of air, and this was wrapped in double quotes, but we took those away because that will also break the JSON body. And then I also had to add another one. Sometimes based on your chat model, it can be really weird and output these double curly quotes which don't actually get captured with this previous replace function. So I threw in this one just as an extra guardrail which you guys will already have all this set up. So you should be good to go. But now we're basically ensuring that our request will go through. You can see once again we're giving it the image URL except for this one is actually the image you know it's this one that Nano Banana made for us. And then for the model we're saying V3 fast. We're using fast instead of quality because it's cheaper and it's faster and it's still really good. And I know this says V3, but trust me, this is using V3.1. And then aspect ratio 9x6. We wanted to make sure that it matches the source image. So now that we have that, it basically does the exact same thing. It gives us back a order number or some sort of ticket. And we go ahead and wait for 10 seconds right here. We then go ahead and check back in on this request, giving it our order number to make to see if it's done or not. And then you can see this happened eight times. And so we basically checked in eight times. So a total of 80 seconds. So almost a minute and a half. And then when we realize that the order is actually done, we go ahead and we write back to Google Sheets. And let me show you real quick how we set up this Google sheet right back. So we're using the operation to update the row. And we choose our sheet. Of course, we shoot we choose our document. And then it says that we have to match on a certain column. So what we decide to do is match on the column number. So you can see right here, all of these rows have a different unique number. And when the workflow gets triggered, if we go all the way back down to our initial get rows, you can see that this row came in and it was row number 10 or technically row number 11, but the number was 10. And so we're basically going to drag in the number right here and say, okay, the row that we want to update is the row where the number column equals 10. And so that's why it was able to write back to this row right here, which you can now see has been changed to status finished. And we have our finished file right here. because in Nitn we manually set the status to be finished and then we drag in the finished video URL that we just got back from our key request. And so that's basically the full process and that's the most complicated one because both the top one and the bottom one are just doing reference image to video rather than reference image to image and then taking that image to video. So anyways, we just covered the hardest one and then we'll look at the other ones. But real quick, let's just go look at the actual output because of course I'm very curious. I love how it's so light I almost forget it's on, but it pushes tons of air and the battery lasts all afternoon. >> That's really impressive. I was nervous to see because it's different from someone holding a product. She's actually wearing it. But I mean, the voice was really good. The tonality was good. I thought that this was an impressive result. But let's move on to the next one, which is Sora 2. So, what I'm going to do is go back into the workflow and I'm going to execute it. What this is going to do is pull in the next And you can see it got pushed down to Sora 2 because when it does this check for the model, it knows that the model was right here marked off as Sora 2. So I'm honestly not going to spend as much time in these next two flows because you guys pretty much already understand exactly what's going on. We have this video prompt agent which once again is looking at the product, the product ICP, the product features, and the video setting. The only difference here is that it doesn't have a analysis of the reference image because it'll just be given that. But the system prompt once again we basically say you're an advanced UGC video creator. You're optimizing for video prompts for Sora 2. Here is what you'll be given. And we go over basically the same exact headers. Subject and framing, visual style, uh tone and dialogue, technical specs, prompt, construction, instructions, and an example output prompt as you can see down there. So what that does is it once again it outputs us a video prompt. And you can see in this one there actually are new lines. So, good thing we have that guardrail baked in to get rid of those new lines. As you can see in this HTTP request to key, we fill in our body by saying, okay, the model we want to use is store to image to video. Here is the prompt. And of course, we're using all of those nasty replace functions once again. We've got the image URL, which we're grabbing from the Google sheet, which once again looks like this right there. And we're basically just sending all of that over. And so, it's going to take that video prompt and it's going to take that source image and it's going to turn that into a video. We're doing the exact same thing here where, you know, we submitted the order, we have to wait 10 seconds and then check in and we're going to go ahead and constantly be checking until we know that our video is done. On average, I have been seeing that V3 fast is finishing in anywhere from a minute to 2 minutes. And Sora 2 has been taking typically a little bit more than that, maybe a minute and a half to 3 minutes. There are a few things to consider. Sometimes if you do something like a cameo, it's going to take longer. If you've got a really long video prompt, it'll take longer. Also, what can influence it is how many people in the world are trying to use keys endpoints. that can make it take longer, too. But typically, Google V3 fast is faster, but it's the exact same flow from there. We're pulling it back in. We're doing the same match to update the row, and then we're just updating the status of finished. And we are putting in the final video link into the Google sheet. There you go. It looks like it just finished up. Let's go back into the Google sheet. It just got marked as finished. And we have our file. So, let's take a look at the Sora 2 output. >> Man, this thing is so light and the airflow hits my face perfectly. Keeps me cool while I work. And the battery lasts for hours, so I don't have to worry about it dying out here. >> Man, well, that was another really good one. A little bit confused where this thing came from. That was a bit of a hallucination, but as you can see, this was the reference image, and it looks really good in this video. Super authentic, and it looks like she's obviously standing there taking a selfie video. All right, so the final one for this example is V3.1. So, I'm going to go ahead and zoom out a little bit, hit execute workflow, and it should shoot it up this top branch now. And I'm honestly not even going to break this down because it's the exact same thing. I copied over basically the exact same system prompt. I just switched out 10 seconds, which is how long the Sor videos are, for 8 seconds for how long the V3.1 videos are. And then I switched out sore 2 for V3.1. But I wanted to keep these prompts across all of these flows as consistent as possible to kind of limit the variability that we have in order to truly see the power of these models when we have as many things consistent as we can. So, I'm just going to let this finish up and I will check in with you guys when we get our finished output from V3.1. All right, so you can see that that one just finished up. Once again, took about 80 seconds. Let's go ahead and make sure we got this updated. And let's take a look at the V3.1 output. >> I love how light this is turning. It actually blows enough air to keep me cool for hours while I'm working. >> Okay, so it's not too bad. I honestly think that right now my my order is this exact order that we have here, which is Nano plus V3.1, then Sora 2, then just V3.1. A lot of these VO ones have like this super HDR weird orange glow looking effect. I'm not sure if you guys had noticed that. Here's another example of the VO3.1. It's not it's not terrible, but just in comparison to some of the other ones, it definitely looks a bit more orange. And then another thing I noticed is this is the V3.1 example, and I explicitly told it to not change anything about the reference image itself, but we can see the creatine gummies is a jar and then in the video it's a bag. And so it does have the same branding and same font as you can see. He even actually, this is funny, he's got the logo on his hoodie, which is honestly a nice touch, but this is a bag. And in the source image, it was a jar. And the other creatine ones didn't have a bag. They had the the correct jar, too. And I know we didn't look at the forearm strengthener example, but this was another one where, for example, Nano Plus V3.1. Let me just show you guys this one. I love that the adjustable resistance actually makes my grip get stronger week to week, and it's small enough to use right at my desk. like super good, super natural, and the product photo looked exactly like it did that I gave it, which looked like this, as you can see right here. But then that same one with VO3.1 without Nano Banana. Once again, it looks a bit it has some weird shadows and it looks orange. >> I love how the adjustable resistance actually lets me progress without extra gear. >> But it the product photo also once again does not exactly match the source image. So that's kind of like a huge no no for me. And another thing that you guys will notice when you send a source image and you turn that into a video both with V3.1 and Sora is the first frame is the reference image. And this is that first creatine example we looked at with sore 2. And you'll notice the very first frame is once again the reference image. And so when we do nanobanana plus Google V3.1 it still does that but our reference image is this. So it just is able to you know pick up right from here and it looks way more natural. So the point being you could kind of like automate the content creation and you could have it auto post as well with this branch, but I probably wouldn't auto post Google V3 like this or sore 2 like this because of that whole first frame, first couple milliseconds thing. Now some people argue that it's good because then you have a thumbnail, but then every single thumbnail on your feed would look the exact same and that I think would just come across really bad. So that's why I think right now my favorite is honestly Nanobanana plus V3.1. Now I think Sora would give it a run for its money if it allowed you to upload a realistic photo of a human. Because if we go back to this first example with the portable neck fan when Nano Banana made that image, even though this is a fake person and an AI generated image, if you tried to feed that into Soore 2, it would block you because of content restrictions. So that's why this combo has my vote right now. But another thing to consider, of course, is cost. So comparing these options, I guess there were technically three, but let's just look at these two because V3 is in here for both. But option one is nanobanana plus V3 fast. When you're going through KI, which is the one that we were on right up here, a nano banana image is going to cost you 2 cents. So not bad. And an 8second V3 fast video will cost you 30. So total cost per piece of content with this system would be 32. Now, for option two, if you're using Sora 2 and you're going through KAI, which is the cheapest I've seen it, so definitely do that. It will cost you 15 cents for 10-second video. So, really not bad at all. About half the cost of VO3 fast. So, option one is roughly two times more expensive than Sora 2. So, the question is, is it two times higher quality and will it result in two times more conversions? Or maybe it's not exactly a two times match because it's a lot cheaper than how much money you'd make per sale or whatever it is. But there is a bit of a trade-off there because you can essentially make double the amount of short form UDC content with SOR 2 for the same price as using Nano Banana and V3 Fast. So anyways, I just wanted to sort of give you guys all the info, give you the template, show you the system, and explain the differences between these two models. And of course, I'm really really bullish on all of this because the fact of the matter is you guys can get in here and make these prompts better. You can play around with different chat models if you want. We used GPT5 Mini for all of them as you can see here. And think about in 6 months from now, a year from now, how much better these models will be when Sora 4 comes out and when V4 comes out. They're just going to get better and better and better and cheaper and cheaper and cheaper. Anyways, I don't want this video to go too long, but I did say that you guys could access this entire template for free. So, all you have to do is join my free school community. The link for that will be down in the description. There will also be a full setup guide right over here when you download this template. And when you join my free school community, this is what it will look like. You'll just have to click on YouTube resources or you can search for the title of this video. And when you click on the post associated with the video, you will have right here the JSON file to download and you import that into niten and any other guides or PDFs that you need. I will also write here similar to this post, I will include the link to copy this Google sheet template so that you guys can plug everything in and have a very minimal amount of custom configuration and just start, you know, producing these types of results. And if you want to see me actually build this system live and just kind of talk about what I'm doing, why I'm doing it, and my thought process, then definitely check out my plus community. The link for this will also be down in the description. We've got a great community of over 200 members who are building with naden every day, asking questions, sharing what they're learning, helping each other out, and a lot of these people are building businesses with NAND right now. We've also got a classroom section with three full courses. We've got agent zero, which is the foundations for beginners. We have 10 hours to 10 seconds where you learn how to identify, design, and build time-saving automations. We have one person AI agency which is for our premium members laying the foundation to build a scalable AI automation business. And then here's the course I was just talking about with projects where we actually dive into step-by-step setups of practical workflows that you can actually use. Probably one of the best ways to actually learn NN in and out. We also have one live call per week. They're super fun. Everyone gets on there and we ask questions and we have some cool conversations about the space, the industry, all this kind of stuff. So, I'd love to see you guys in those live calls in the community. But that's going to do it for today. So, if you enjoyed this one or you learned something new, please give it a like. It definitely helps me out a ton. And as always, I appreciate you guys making it to the end of the video. I'll see you on the next one. Thanks everyone.

Summary

The video demonstrates a free, automated AI system for creating high-quality UGC-style ads using multiple AI models like VO3.1, Nano Banana, and Sora 2, with a focus on optimizing content quality, consistency, and cost efficiency.

Key Points

  • The creator builds a multi-agent AI workflow to generate UGC ads using different AI models like VO3.1, Nano Banana, and Sora 2.
  • The system uses a Google Sheet to input product details, ICP, features, and video settings, then automates image and video generation.
  • It includes a two-step process: first generating a product image with Nano Banana, then creating a video with VO3.1 or Sora 2.
  • The workflow uses Key AI to route requests to different models and includes wait nodes to check completion status.
  • The system outputs video content with natural dialogue, ensuring consistency with the reference image and product features.
  • The creator compares outputs from different models, noting that Nano Banana + VO3.1 produces the most consistent and authentic results.
  • Sora 2 is cheaper and faster but has content restrictions on realistic human images.
  • The system is designed to be customizable and scalable for producing large volumes of UGC content.
  • The creator offers a free template and community access to replicate the system.

Key Takeaways

  • Use a structured workflow with AI agents to automate UGC ad creation from product details.
  • Combine image generation (Nano Banana) with video generation (VO3.1 or Sora 2) for higher quality and consistency.
  • Optimize AI prompts with detailed system instructions for better output quality.
  • Leverage tools like Key AI to access multiple AI models through a single API.
  • Test different AI models and compare outputs to find the best balance of quality, cost, and consistency.

Primary Category

AI Agents

Secondary Categories

AI Tools & Frameworks Computer Vision AI Business & Strategy

Topics

UGC content creation AI video generation n8n automation AI image generation user-generated content AI agents Sora 2 Veo 3.1 Nano Banana automated ad creation

Entities

people
Nate Herk
organizations
Skool n8n Key AI OpenAI Google
products
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domain_specific

Sentiment

0.85 (Positive)

Content Type

tutorial

Difficulty

intermediate

Tone

educational technical promotional inspiring