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Feeling stuck—built a startup, got rejected from YC & IVI, met smarter people, and now I don’t know what to do. ( i will not promote )
I will not promote
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vishwa1238This week

Feeling stuck—built a startup, got rejected from YC & IVI, met smarter people, and now I don’t know what to do. ( i will not promote ) I will not promote

I will not promote I don’t even know where to start, but I just feel completely stuck right now. I’m 20 years oldI don’t even know where to start, but I just feel completely stuck right now. I’m 20 years old, have been grinding non-stop for months, and it feels like I have nothing to show for it. I built an AI agent that automates workflows for businesses. I can build tech, but I can’t sell. That’s been my biggest realization recently—I thought building would be enough, but it’s not. I need customers, I need a co-founder, I need to figure out the business side… and I have no idea how. I applied to YC, IVI at ISB, and EF, met a lot of insanely smart people—some were impressed with me and my work, but they were wiser, more experienced, and honestly, just better at all of this than I am. It made me realize how much I don’t know. I got rejected from YC & IVI. 💔 YC didn’t even give much feedback—just a standard rejection. 💔 IVI told me: “You're too young, you need more experience, and you should work with a team before trying to start something.” That hit me hard. I had already been struggling to find a co-founder, and this just made me wonder if I even belong in this space yet. The Frustrating Part? I KNOW my tool Has a Unique Edge. I’m not just another AI automation tool—I know my tool has a strong USP that competitors lack. It has the potential to be an AI employee for businesses, not just another workflow tool. But I still haven’t built the “perfect product” I originally envisioned. And that’s what’s eating at me. I see what it COULD be, but I haven’t made it happen yet. At the same time, the competition in the AI agent space is exploding. YC-backed companies are working on AI agent startups. OpenAI is making huge progress with Operator. Competitors are moving fast, while I feel stuck. I’ve delayed development because I’m unsure whether to double down, pivot, or just move on entirely. Where I’m Stuck Right Now 🔹 Do I keep pushing and try to crack sales somehow? 🔹 Do I join a startup as a founding engineer to get experience, make connections, and learn sales before trying again? 🔹 Do I move to Bangalore, meet founders, and figure out what’s next? 🔹 Do I pivot to something nicher instead of competing in the AI agent race? If so, how do I even find a niche worth pursuing? 🔹 Do I even belong in startups? Or am I just forcing something that’s not working? I feel stuck in a weird middle zone where I’m not a beginner, but I’m also not successful. I’ve done enough to see what’s possible, but not enough to make it real. Every rejection makes me question if I’m even on the right path. I don’t know if I’m posting this for advice or just to get it out of my system. Maybe both. Has anyone else felt like this before? If you’ve been in this situation—how did you figure out whether to keep going or move on? TL;DR: I’m 20, built an AI agent for automating workflows, got rejected from YC & IVI, met insanely smart and experienced people, realized I can build tech but can’t sell, struggling to find a co-founder, AI agent competition is growing, delaying development, confused about the future—don’t know whether to double down, pivot, or move on. The frustrating part? I\ know I have a unique edge that others lack, but I still haven’t built the perfect product I originally envisioned.* edit: removed the tool's name

I started a Tech Startup, and I feel totally STUCK.
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BetAltruistic6556This week

I started a Tech Startup, and I feel totally STUCK.

I made "Visual Love," a Computer Vision/AI-driven matchmaking platform. The idea is that although appearance is one of the biggest factors for starting a relationship, current matchmaking services and dating apps do not have the capability to search for people based on appearance. On Visual Love, you can find your ideal match simply by uploading a picture of your "ideal type." Also, you can connect with someone who thinks of you as their ideal type, simply by uploading your own picture. Or, there might be a perfect (mutually ideal) match. I made this CV/AI algorithm to scan faces, retrieve facial features, and make it possible to find the closest match among millions of others in a second. On average, regular dating app users swipe 8000 times over 8 months until they find their love. On Visual Love, users can find one in a million just in a second. You can try the tech demo on the website if you want to (find the link through my LinkedIn at the bottom of the post; I have to follow the "I will not promote" rule.) I thought this app would have the best chance in Asia, as people care a lot more about appearance in Asia (especially Korea and Japan). Also, my nationality is Korean, and I speak both Korean and Japanese as fluently as I speak English. So I came to Korea, and pitched to a number of VC/AC firms in Korea and Japan, and two of them were typically intersted in making investment. However, they both required me to provide market validation: how much it would cost per user acquisition, how much each user would pay on average, and etc, even after I provided them with a 3-years financial projection including market research based on other dating apps. ​ Everything might be going just as expected, or even better than anticipated, but I'm feeling very stuck now. I am not a business expert, and I don't have much idea on how to proceed from here. The problem is, it wouldn't quite work as expected when there are not many users. If I start with a small group of users, it's not any better than any other dating app. Matching users within a small group doesn't quite reflect the values of Visual Love. So I figured a way around: making a game version of Visual Love targeting 100k to 500k users to work as an initial distribution channel. This version will include finding look-alike celebrities, and solving look-alike face puzzles, and etc. But now, the problem is, I cannot continue this project by myself. I have no social/financial support, and I'm running low on cash. Also, although I'm from Korea, I lived in many different countries. I did my undergraduate in New York (Columbia University) and all my friends are in the US. I don't feel very included here. I can't stop feeling frustrated and distressed :( I'm sure Visual Love can reshape the future of the matchmaking market. But, only if I can continue this project by getting the fund I require. I'm open to any advice, and if you're interested in providing any help or working with me, please contact me through LinkedIn. https://www.linkedin.com/in/don-lee-3853b1264/

Feeling stuck—built a startup, got rejected from YC & IVI, met smarter people, and now I don’t know what to do. ( i will not promote )
I will not promote
reddit
LLM Vibe Score0
Human Vibe Score1
vishwa1238This week

Feeling stuck—built a startup, got rejected from YC & IVI, met smarter people, and now I don’t know what to do. ( i will not promote ) I will not promote

I will not promote I don’t even know where to start, but I just feel completely stuck right now. I’m 20 years oldI don’t even know where to start, but I just feel completely stuck right now. I’m 20 years old, have been grinding non-stop for months, and it feels like I have nothing to show for it. I built an AI agent that automates workflows for businesses. I can build tech, but I can’t sell. That’s been my biggest realization recently—I thought building would be enough, but it’s not. I need customers, I need a co-founder, I need to figure out the business side… and I have no idea how. I applied to YC, IVI at ISB, and EF, met a lot of insanely smart people—some were impressed with me and my work, but they were wiser, more experienced, and honestly, just better at all of this than I am. It made me realize how much I don’t know. I got rejected from YC & IVI. 💔 YC didn’t even give much feedback—just a standard rejection. 💔 IVI told me: “You're too young, you need more experience, and you should work with a team before trying to start something.” That hit me hard. I had already been struggling to find a co-founder, and this just made me wonder if I even belong in this space yet. The Frustrating Part? I KNOW my tool Has a Unique Edge. I’m not just another AI automation tool—I know my tool has a strong USP that competitors lack. It has the potential to be an AI employee for businesses, not just another workflow tool. But I still haven’t built the “perfect product” I originally envisioned. And that’s what’s eating at me. I see what it COULD be, but I haven’t made it happen yet. At the same time, the competition in the AI agent space is exploding. YC-backed companies are working on AI agent startups. OpenAI is making huge progress with Operator. Competitors are moving fast, while I feel stuck. I’ve delayed development because I’m unsure whether to double down, pivot, or just move on entirely. Where I’m Stuck Right Now 🔹 Do I keep pushing and try to crack sales somehow? 🔹 Do I join a startup as a founding engineer to get experience, make connections, and learn sales before trying again? 🔹 Do I move to Bangalore, meet founders, and figure out what’s next? 🔹 Do I pivot to something nicher instead of competing in the AI agent race? If so, how do I even find a niche worth pursuing? 🔹 Do I even belong in startups? Or am I just forcing something that’s not working? I feel stuck in a weird middle zone where I’m not a beginner, but I’m also not successful. I’ve done enough to see what’s possible, but not enough to make it real. Every rejection makes me question if I’m even on the right path. I don’t know if I’m posting this for advice or just to get it out of my system. Maybe both. Has anyone else felt like this before? If you’ve been in this situation—how did you figure out whether to keep going or move on? TL;DR: I’m 20, built an AI agent for automating workflows, got rejected from YC & IVI, met insanely smart and experienced people, realized I can build tech but can’t sell, struggling to find a co-founder, AI agent competition is growing, delaying development, confused about the future—don’t know whether to double down, pivot, or move on. The frustrating part? I\ know I have a unique edge that others lack, but I still haven’t built the perfect product I originally envisioned.* edit: removed the tool's name

Online Reputation AI - Startup got stuck
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kyr0x0This week

Online Reputation AI - Startup got stuck

Hi, I‘m one of 3 co-founders of a startup that built an AI-driven SaaS and App product this year. We‘re coming from an SaaS background, two of us senior developers (in the 3% of highest earning freelancers in Germany) and expert in our fields. The third is a seasoned sales strategist. We have a minor 4th co-founder (legal advisor). The company is self-funded, no investors. Our tech is owned by us, built by us and the product was already operational after a few months. We basically solve three data science/NLP issues in a generalized way: understand customer feedback to improve your business. Analyzes online review with context and explains it with a drill down, aggregation, charts (AI insights, timeframe reports); evidence driven, agentic LLM and ETL processes drive this. respond to customer feedback, half-automated, human in the loop, but AI supported. In the tone of your brand, any language. And context-aware, with your customer support signature etc. competitor analysis. Because we do 1 for you, we can do 1. for all of your competitors and compare the results, yielding insights like „oh, this happens to everyone in November to December, so I should focus on something else“ — etc. Now, after a huge sales effort we got only one paying customer. This customer is petty happy with the product. They tell us that they use our product daily, it‘s better than all the other solutions out there (better than TrustYou, etc.) However, after cold calling/emailing hundreds of leads, we almost always hear that „what we have is good enough“. Or that they don‘t have budget. I‘m the introverted tech part of the startup. I‘m good with algorithms. Give me any tech issue and I will solve it for you quickly and efficiently. I make stuff work. But with my startups I never had commercial luck. People always tell me about my stellar potential, because I can build things almost nobody else can. I come from a poor families background, worked my way up the very hard way. I just love tech and programming. I wrote a book for O’Reilly once. I‘m not doing bad economically, but I‘m probably not the best sales person. After founding a few startups with amazing tech, people using the products and loving them, but no commercial success, I truly question myself and if I‘m just unlucky with the fact that I‘m located in Europe, targeting the wrong industries, or are just unlucky somehow? I won‘t blame my co-founders here. They definitely did the best they could. I‘m just a bit resignated. I recently thought about valuing my own lifetime more and only building software for myself anymore. Basically not focusing on what problems other people face and trying to solve them, but solely focusing on what I enjoy doing most — e.g. coding algorithms for a music visualizer. Because in the end, my time is my most valuable resource. If I waste any second on something that isn‘t contributing to „my life“ and how I define success, then it would be a rather stupid deed? I don‘t want to derail too much here. I‘m confused and seeking for advice. Burn me if you like, but please be aware that you are talking to a broadly educated nerd.

[D]Stuck in AI Hell: What to do in post LLM world
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Educational_News_371This week

[D]Stuck in AI Hell: What to do in post LLM world

Hey Reddit, I’ve been in an AI/ML role for a few years now, and I’m starting to feel disconnected from the work. When I started, deep learning models were getting good, and I quickly fell in love with designing architectures, training models, and fine-tuning them for specific use cases. Seeing a loss curve finally converge, experimenting with layers, and debugging training runs—it all felt like a craft, a blend of science and creativity. I enjoyed implementing research papers to see how things worked under the hood. Backprop, gradients, optimization—it was a mental workout I loved. But these days, it feels like everything has shifted. LLMs dominate the scene, and instead of building and training models, the focus is on using pre-trained APIs, crafting prompt chains, and setting up integrations. Sure, there’s engineering involved, but it feels less like creating and more like assembling. I miss the hands-on nature of experimenting with architectures and solving math-heavy problems. It’s not just the creativity I miss. The economics of this new era also feel strange to me. Back when I started, compute was a luxury. We had limited GPUs, and a lot of the work was about being resourceful—quantizing models, distilling them, removing layers, and squeezing every bit of performance out of constrained setups. Now, it feels like no one cares about cost. We’re paying by tokens. Tokens! Who would’ve thought we’d get to a point where we’re not designing efficient models but feeding pre-trained giants like they’re vending machines? I get it—abstraction has always been part of the field. TensorFlow and PyTorch abstracted tensor operations, Python abstracts C. But deep learning still left room for creation. We weren’t just abstracting away math; we were solving it. We could experiment, fail, and tweak. Working with LLMs doesn’t feel the same. It’s like fitting pieces into a pre-defined puzzle instead of building the puzzle itself. I understand that LLMs are here to stay. They’re incredible tools, and I respect their potential to revolutionize industries. Building real-world products with them is still challenging, requiring a deep understanding of engineering, prompt design, and integrating them effectively into workflows. By no means is it an “easy” task. But the work doesn’t give me the same thrill. It’s not about solving math or optimization problems—it’s about gluing together APIs, tweaking outputs, and wrestling with opaque systems. It’s like we’ve traded craftsmanship for convenience. Which brings me to my questions: Is there still room for those of us who enjoy the deep work of model design and training? Or is this the inevitable evolution of the field, where everything converges on pre-trained systems? What use cases still need traditional ML expertise? Are there industries or problems that will always require specialized models instead of general-purpose LLMs? Am I missing the bigger picture here? LLMs feel like the “kernel” of a new computing paradigm, and we don’t fully understand their second- and third-order effects. Could this shift lead to new, exciting opportunities I’m just not seeing yet? How do you stay inspired when the focus shifts? I still love AI, but I miss the feeling of building something from scratch. Is this just a matter of adapting my mindset, or should I seek out niches where traditional ML still thrives? I’m not asking this to rant (though clearly, I needed to get some of this off my chest). I want to figure out where to go next from here. If you’ve been in AI/ML long enough to see major shifts—like the move from feature engineering to deep learning—how did you navigate them? What advice would you give someone in my position? And yeah, before anyone roasts me for using an LLM to structure this post (guilty!), I just wanted to get my thoughts out in a coherent way. Guess that’s a sign of where we’re headed, huh? Thanks for reading, and I’d love to hear your thoughts! TL;DR: I entered AI during the deep learning boom, fell in love with designing and training models, and thrived on creativity, math, and optimization. Now it feels like the field is all about tweaking prompts and orchestrating APIs for pre-trained LLMs. I miss the thrill of crafting something unique. Is there still room for people who enjoy traditional ML, or is this just the inevitable evolution of the field? How do you stay inspired amidst such shifts? Update: Wow, this blew up. Thanks everyone for your comments and suggestions. I really like some of those. This thing was on my mind for a long time, glad that I put it here. Thanks again!

I’ve professionalized the family business. Now I feel stuck
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2LobstersThis week

I’ve professionalized the family business. Now I feel stuck

I wrote the post below in my own words and then sent to ChatGPT for refinement/clarity. So if it reads like AI, it's because it is, but it's conveying the message from my own words a bit better than my original with a few of my own lines written back in. Hope that's not an issue here. I’m 33, married with two young kids. I have a bachelor’s from a well-regarded public university (though in an underwhelming field—economics adjacent). I used that degree to land a job at a mid-sized distribution company (\~$1B annual revenue), where I rose quickly to a project management role and performed well. In 2018, after four years there, I returned to my family's $3M/yr residential service and repair plumbing business. I saw my father withdrawing from leadership, responsibilities being handed to underqualified middle managers, and overall employee morale declining. I’d worked in the business from a young age, had all the necessary licenses, and earned a degree of respect from the team—not just as “the boss’s kid,” but as someone who had done the work. I spent my first year back in the field, knocking off the rust. From there, I started chipping away at process issues and inefficiencies, without any formal title. In 2020, I became General Manager. Since then, we’ve grown to over $5M in revenue, improved profitability, and automated many of the old pain points. The business runs much smoother and requires less day-to-day oversight from me. That said—I’m running out of motivation. I have no equity in the business. And realistically, I won’t for a long time. The family dynamic is... complicated. There are relatives collecting large salaries despite zero involvement in the business. Profits that should fuel growth get drained, and we can’t make real accountability stick because we rely too heavily on high-producing employees—even when they underperform in every other respect. I want to be clear—this isn’t a sob story. I know how lucky I am. The business supports my family, and for that I’m grateful. But I’ve gone from showing up every day with fresh ideas and energy to slowly becoming the guy who upholds the status quo. I’ve hit most of the goals I set for myself, but I’m stagnating—and that scares me. The safe move is to keep riding this out. My wife also works and has strong earning potential. We’re financially secure, and with two small kids, I’m not eager to gamble that away. But I’m too young to coast for the next decade while I wait for a possible ownership shakeup. At this point, the job isn’t mentally stimulating. One hour I’m building dynamic pricing models; the next, I’m literally dealing with whether a plumber is wiping his ass properly because I've had multiple complaints about his aroma. I enjoy the challenging, high-level work—marketing, systems, strategy—but I’m worn down by the drama, the legacy egos I can’t fire, and the petty dysfunction I’m forced to manage. I'm working on building a middle management gap, but there's something lost in not being as hands-on in a small business like this. I fear that by isolating myself from the bullshit, I'll also be isolating myself from some of the crucial day-to-day that keep us who we are. Hope that makes sense. (To be fair, most of our team is great. We have an outstanding market reputation and loyal employees—but the garbage still hits my desk when it shows up.) I’ve toyed with starting a complementary business or launching a consulting gig for similar-sized companies outside our market. I’ve taken some Udemy and Maven Analytics courses (digital marketing, advanced Excel/Power BI, etc.) to keep learning, but I rarely get to apply that knowledge here. So here I am. Is this burnout? A premature midlife crisis? A motivation slump? I’m not sure what I’m looking for—but if you’ve been here, or have any hard-earned advice, I’d be grateful to hear it.

Hot Take: Not all your startups need AI forced into them
reddit
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bitorsicThis week

Hot Take: Not all your startups need AI forced into them

I'm a final year Computer Engineering student, hence applying for jobs all around. There's this particular trend I've noticed with startups that are coming up these days. That is, even for the absolute basic stuff they'll use 'AI', and they'll think they built something 'revolutionary'. No. You're breaking your product in ways you don't realise. An example, that even some well established companies are guilty of: AI Chatbots You absolutely don't need them and it's an entire gimmick. If you really wanna implement a chatbot, connect the user to an actual person on your end, which I think is not possible if you're at a 'startup' stage. You'll need employees who can handle user queries in real time. If the user really is stuck let them use the 'Contact Us' page. A really close relative of mine is very vocal about the frustration he faces whenever he tries to use the AI Chatbot on any well known e-com website. The only case for AI Chatbot that makes sense is when it's directing the customer to an actual customer support rep if none of the AI's solutions is working for the customer. Even then, implementing a search page for FAQ is extremely easy and user friendly. Another example: AI Interviewer I recently interviewed for a startup, and their whole interviewing process was AI'zed?!?! No real person at the other end, I was answering to their questions which were in video format. They even had a 'mascot' / 'AI interviewer' avatar designed by an AI (AI-ception???). This mascot just text-to-speech'ed all the questions for me to rewind and hear what I missed again. And I had to record video and audio to answer these questions on their platform itself. The entire interview process just could've been a questionnaire, or if you're really concerned on the integrity of the interviewee, just take a few minutes out of your oh-so-busy schedule as a startup owner. Atleast for hiring employees who would make the most impact on your product going ahead. I say the most impact, because (atleast as a developer) the work done by these employees would define how robust your product is, and/or how easily other features can be integrated into the codebase. Trust me, refactoring code later on would only cost you time and money. These resources would rather be more useful in other departments of your startup. The only use case for an AI Interviewer I see is for preparing for an actual interview, provided that feedback is given to the user at the earliest, which you don't need to worry about as a startup owner. So yeah, you're probably better off without integrating AI in your product. Thank you for reading. TLDR; The title; I know AI is the new thing and gets everyone drooling and all, but for the love of God, just focus on what your startup does best and put real people behind it; Integrating AI without human intervention is as good as a broken product; Do your hiring yourself, or through real people, emphasizing on the fact that the people you hire at an early stage will define your growth ahead;

Hot Take: Not all your startups need AI forced into them
reddit
LLM Vibe Score0
Human Vibe Score1
bitorsicThis week

Hot Take: Not all your startups need AI forced into them

I'm a final year Computer Engineering student, hence applying for jobs all around. There's this particular trend I've noticed with startups that are coming up these days. That is, even for the absolute basic stuff they'll use 'AI', and they'll think they built something 'revolutionary'. No. You're breaking your product in ways you don't realise. An example, that even some well established companies are guilty of: AI Chatbots You absolutely don't need them and it's an entire gimmick. If you really wanna implement a chatbot, connect the user to an actual person on your end, which I think is not possible if you're at a 'startup' stage. You'll need employees who can handle user queries in real time. If the user really is stuck let them use the 'Contact Us' page. A really close relative of mine is very vocal about the frustration he faces whenever he tries to use the AI Chatbot on any well known e-com website. The only case for AI Chatbot that makes sense is when it's directing the customer to an actual customer support rep if none of the AI's solutions is working for the customer. Even then, implementing a search page for FAQ is extremely easy and user friendly. Another example: AI Interviewer I recently interviewed for a startup, and their whole interviewing process was AI'zed?!?! No real person at the other end, I was answering to their questions which were in video format. They even had a 'mascot' / 'AI interviewer' avatar designed by an AI (AI-ception???). This mascot just text-to-speech'ed all the questions for me to rewind and hear what I missed again. And I had to record video and audio to answer these questions on their platform itself. The entire interview process just could've been a questionnaire, or if you're really concerned on the integrity of the interviewee, just take a few minutes out of your oh-so-busy schedule as a startup owner. Atleast for hiring employees who would make the most impact on your product going ahead. I say the most impact, because (atleast as a developer) the work done by these employees would define how robust your product is, and/or how easily other features can be integrated into the codebase. Trust me, refactoring code later on would only cost you time and money. These resources would rather be more useful in other departments of your startup. The only use case for an AI Interviewer I see is for preparing for an actual interview, provided that feedback is given to the user at the earliest, which you don't need to worry about as a startup owner. So yeah, you're probably better off without integrating AI in your product. Thank you for reading. TLDR; The title; I know AI is the new thing and gets everyone drooling and all, but for the love of God, just focus on what your startup does best and put real people behind it; Integrating AI without human intervention is as good as a broken product; Do your hiring yourself, or through real people, emphasizing on the fact that the people you hire at an early stage will define your growth ahead;

The Cold-Calling AI Project I'm Working On Just Got Some Angel Investment!
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GrowthGetThis week

The Cold-Calling AI Project I'm Working On Just Got Some Angel Investment!

Hey y'all. The AI cold calling startup I've been working on for 3-4 months now just got a $2,500 angel investment, and we have 2 current customers, a credit card processing broker and a hospital equipment rental company based out of Texas. We have around $1,500 revenue so far, but we're having lots of trouble fulfilling the contracts because our tech just isn't "there" yet. I'm the Chief Tech Officer, and I'm also running some operations. The other main person in this is the CEO who has a strong sales background and came up with the idea. I've been working purely remotely, and it's great having some income because I'm stuck at home because I'm disabled, basically... ​ We're using 11labs, openai, google speech to text, and a sh\*tty online dialer right now to run the first MVP which runs locally on our "botrunners" computers, and we're developing a web app with django python + javascript react. Our plan is, after we get the webapp working better, to hire more botrunners for $3 per hour from countries like Phillipines and India, and we're going to try to track all the actions the botrunners take to be able to train the AI to run it fully automated. The biggest problem we're facing right now with the tech is reducing latency, it started at 27 seconds to get a response and I've been able to get it down to 6 seconds, but people are still hanging up. We're trying several ways to mitigate this, including having pre-rendered speech playing something like "Okay" or "As an artificial representative, I'm still learning to be quicker on the pickup. We appreciate your patience." One of the industries we want to target is international web development and digital marketing companies, and we want to use the bot to cold-call businesses to pitch them our services. The goal is to replace $30 an hour cold-callers from the USA with $3 per hour total-cost automation. Apparently the CEO was given a $5 million valuation from the strength of the MVP from a VC. Our investment so far was at a $300k valuation tho. It's exciting. Trying to get Twilio working to be able to make calls programmatically instead of using our hacky workaround. Let me know if you have any questions. I just wanted to share this awesome news!

The Cold-Calling AI Project I'm Working On Just Got Some Angel Investment!
reddit
LLM Vibe Score0
Human Vibe Score1
GrowthGetThis week

The Cold-Calling AI Project I'm Working On Just Got Some Angel Investment!

Hey y'all. The AI cold calling startup I've been working on for 3-4 months now just got a $2,500 angel investment, and we have 2 current customers, a credit card processing broker and a hospital equipment rental company based out of Texas. We have around $1,500 revenue so far, but we're having lots of trouble fulfilling the contracts because our tech just isn't "there" yet. I'm the Chief Tech Officer, and I'm also running some operations. The other main person in this is the CEO who has a strong sales background and came up with the idea. I've been working purely remotely, and it's great having some income because I'm stuck at home because I'm disabled, basically... ​ We're using 11labs, openai, google speech to text, and a sh\*tty online dialer right now to run the first MVP which runs locally on our "botrunners" computers, and we're developing a web app with django python + javascript react. Our plan is, after we get the webapp working better, to hire more botrunners for $3 per hour from countries like Phillipines and India, and we're going to try to track all the actions the botrunners take to be able to train the AI to run it fully automated. The biggest problem we're facing right now with the tech is reducing latency, it started at 27 seconds to get a response and I've been able to get it down to 6 seconds, but people are still hanging up. We're trying several ways to mitigate this, including having pre-rendered speech playing something like "Okay" or "As an artificial representative, I'm still learning to be quicker on the pickup. We appreciate your patience." One of the industries we want to target is international web development and digital marketing companies, and we want to use the bot to cold-call businesses to pitch them our services. The goal is to replace $30 an hour cold-callers from the USA with $3 per hour total-cost automation. Apparently the CEO was given a $5 million valuation from the strength of the MVP from a VC. Our investment so far was at a $300k valuation tho. It's exciting. Trying to get Twilio working to be able to make calls programmatically instead of using our hacky workaround. Let me know if you have any questions. I just wanted to share this awesome news!

Hot Take: Not all your startups need AI forced into them
reddit
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Human Vibe Score1
bitorsicThis week

Hot Take: Not all your startups need AI forced into them

I'm a final year Computer Engineering student, hence applying for jobs all around. There's this particular trend I've noticed with startups that are coming up these days. That is, even for the absolute basic stuff they'll use 'AI', and they'll think they built something 'revolutionary'. No. You're breaking your product in ways you don't realise. An example, that even some well established companies are guilty of: AI Chatbots You absolutely don't need them and it's an entire gimmick. If you really wanna implement a chatbot, connect the user to an actual person on your end, which I think is not possible if you're at a 'startup' stage. You'll need employees who can handle user queries in real time. If the user really is stuck let them use the 'Contact Us' page. A really close relative of mine is very vocal about the frustration he faces whenever he tries to use the AI Chatbot on any well known e-com website. The only case for AI Chatbot that makes sense is when it's directing the customer to an actual customer support rep if none of the AI's solutions is working for the customer. Even then, implementing a search page for FAQ is extremely easy and user friendly. Another example: AI Interviewer I recently interviewed for a startup, and their whole interviewing process was AI'zed?!?! No real person at the other end, I was answering to their questions which were in video format. They even had a 'mascot' / 'AI interviewer' avatar designed by an AI (AI-ception???). This mascot just text-to-speech'ed all the questions for me to rewind and hear what I missed again. And I had to record video and audio to answer these questions on their platform itself. The entire interview process just could've been a questionnaire, or if you're really concerned on the integrity of the interviewee, just take a few minutes out of your oh-so-busy schedule as a startup owner. Atleast for hiring employees who would make the most impact on your product going ahead. I say the most impact, because (atleast as a developer) the work done by these employees would define how robust your product is, and/or how easily other features can be integrated into the codebase. Trust me, refactoring code later on would only cost you time and money. These resources would rather be more useful in other departments of your startup. The only use case for an AI Interviewer I see is for preparing for an actual interview, provided that feedback is given to the user at the earliest, which you don't need to worry about as a startup owner. So yeah, you're probably better off without integrating AI in your product. Thank you for reading. TLDR; The title; I know AI is the new thing and gets everyone drooling and all, but for the love of God, just focus on what your startup does best and put real people behind it; Integrating AI without human intervention is as good as a broken product; Do your hiring yourself, or through real people, emphasizing on the fact that the people you hire at an early stage will define your growth ahead;

Struggling with my dog-themed clothing store – How can I make it better?
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BirnenHansThis week

Struggling with my dog-themed clothing store – How can I make it better?

TL;DR: I own a dog-inspired store that’s struggling to make sales. I need your honest feedback to make it better. Hey reddit, I’m turning to you because I really need your honest feedback. I run a small online shop, dogloverclothing.com, where I sell dog-inspired fashion items and accessories (product list is growing). I poured my heart into creating it because I’m a huge dog lover (I own a Corgi and a Beagle), and I thought there must be others out there who’d resonate with the style of my designs. I truly believe my shop is fun and creative and I thought other dog lovers would easily connect with the dog-theme behind it. But I’m struggling. I’ve only made 1-2 sales a year and I feel like I’ve hit a wall. Let me be completely transparent about my situation: I have a small child who needs my care in the afternoons. I work part-time in the mornings, and the only time I'm able to work on my shop is in the evenings (once all the usual household chaos is settled) or on weekends. That gives me maybe 1-2 hours a day to focus on this project. I don’t have the money or time for big ad campaigns, influencer cooperations, daily social media activity, or even professional photoshoots for my products. My visuals are mostly created with AI tools, stock imagery, and mockup generators, but I think they look professional enough to be converting. I tried small ad campaigns, and while I got a few sales, the ad costs ended up being higher than my revenue, so I had to stop. I also tried organic Social Media activity, but the time I put into that did not turn into any traffic, followers or sales, so I also stopped that. I know that putting myself/my face out there on social media could help, but I’m not comfortable showing my face or apartment in videos or ads. I could do flatlays or simple videos with the products I have at home. Right now, I’m putting all my energy into SEO, hoping to attract organic traffic and customers. Otherwise, I feel stuck with marketing. I want to make the most of the limited time and resources I have. My dream definitely isn’t to get rich here from this shop. I would love to make an extra $300-500 a month to make life a little easier for my family, while fulfilling my creative streak – and that's about it. I’m not sure if that’s even realistic, but it’s what keeps me going. So, guys: What do you think I’m doing wrong or could do better? Is it the designs? The pricing? The website layout? The lack of time/lack of money? How can I make this work with my limited time and resources? Are there any affordable, creative marketing strategies you’d recommend for someone in my shoes? Is my goal of $300-500/month realistic for a store like mine? I’m open to all your ideas, tips, and even brutal honesty. This isn’t just a business for me, it’s my passion project, and I’d love to make it somewhat of sustainable. I’m not here to sell you something. I’m here to learn. I know Reddit doesn’t hold back, and that’s what I need. Can you take a look at my site, tell me what you think, and help me figure out why this dream hasn’t taken off yet? I know running a business is tough, and I deeply admire everyone in this community who’s making it work. I’d love to hear your insights, experiences, and even your tough love if that’s what it takes to get my dream back on track. Thank you so much for taking the time to read this and for any advice you can offer!

Aspiring AI Consultant seeking advice & connections in Healthcare to get started
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Codename___47This week

Aspiring AI Consultant seeking advice & connections in Healthcare to get started

I’m an aspiring entrepreneur with a background in software engineering with 3 years of experience consulting for a medical device OEM. I’ve recently decided to venture out and start my own AI consultancy/integration services business, with an initial focus on non-clinical use cases in healthcare (e.g., workflow automation, predictive analytics, etc.). So far, I’ve done my research and have identified a few good potential use-cases, but I’m currently stuck because: I don’t have any direct connections with people who work in a healthcare setting. I’m unsure about the best next steps to validate my ideas and move forward. I’m reaching out here to seek guidance on how to proceed. Specifically: Are there any healthcare professionals here who could share insights into day-to-day challenges and workflows in non-clinical settings? What are the biggest operational pain points you face that could potentially benefit from automation or AI solutions? (Forget about the AI part—just think about tools or capabilities that could make your life easier.) If you’ve been in a similar position starting a business, how did you connect with potential clients or validate your ideas? I’d also love to hear from anyone who has tried offering AI consultancy or similar services, especially in healthcare. This is a genuine attempt to learn and grow, and I’m open to any advice, feedback, or even collaborations. If you’re in healthcare or know someone who might be able to help, I’d be incredibly grateful if you could point me in the right direction.

I retired at 32 from my side project. Here's the path I took.
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inputoriginThis week

I retired at 32 from my side project. Here's the path I took.

EDIT 2: Thanks for the award kind stranger! I've stopped responding to reddit comments for this post. I'm adding an FAQ to the original post based on the most common high quality questions. If you have a question that you're dying to know the answer to and that only I can help you with (vs. Google, ChatGPT, etc.), DM me. EDIT: I love how controversial this post has become (50% upvote rate), and only in this subreddit (vs. other subreddits that I posted the same content in). I trust that the open-minded half of you will find something useful in this post and my other posts and comments. I retired at 32 years old, in large part thanks to a B2C SaaS app that I developed on my own. Now, I don't have to work in order to cover my living expenses, and wouldn't have to work for quite a while. In other words, I can finally sip mai tais at the beach. I've condensed how I got there into this post. First, a super simplified timeline of events, followed by some critical details. Timeline 2013 Graduated college in the US 2013 Started first corporate job 2013 Started side project (B2C app) that would eventually lead to my retirement 2020 Started charging for use of my B2C app (was free, became freemium) 2021 Quit my last corporate job 2022 Retired: time freedom attained Details First, some summary statistics of my path to retirement: 9 years: time between graduating college and my retirement. 8 years: total length of my career where I worked at some corporate day job. 7 years: time it took my B2C app to make its first revenue dollar 2 years: time between my first dollar of SaaS revenue and my retirement. "Something something overnight success a decade in the making". I got extremely lucky on my path to retirement, both in terms of the business environment I was in and who I am as a person. I'd also like to think that some of the conscious decisions I made along the way contributed to my early retirement. Lucky Breaks Was born in the US middle class. Had a natural affinity for computer programming and entrepreneurial mindset (initiative, resourcefulness, pragmatism, courage, growth mindset). Had opportunities to develop these mindsets throughout life. Got into a good college which gave me the credentials to get high paying corporate jobs. Was early to a platform that saw large adoption (see "barnacle on whale" strategy). Business niche is shareworthy: my SaaS received free media. Business niche is relatively stable, and small enough to not be competitive. "Skillful" Decisions I decided to spend the nights and weekends of my early career working on side projects in the hopes that one would hit. I also worked a day job to support myself and build my savings. My launch funnel over roughly 7 years of working on side projects: Countless side projects prototyped. 5 side projects publically launched. 2 side projects made > $0. 1 side project ended up becoming the SaaS that would help me retire. At my corporate day jobs, I optimized for learning and work-life balance. My learning usually stalled after a year or two at one company, so I’d quit and find another job. I invested (and continute to do so) in physical and mental wellbeing via regular workouts, meditation, journaling, traveling, and good food. My fulfilling non-work-life re-energized me for my work-life, and my work-life supported my non-work-life: a virtuous cycle. I automated the most time-consuming aspects of my business (outside of product development). Nowadays, I take long vacations and work at most 20 hours a week / a three-day work week . I decided to keep my business entirely owned and operated by me. It's the best fit for my work-style (high autonomy, deep focus, fast decision-making) and need to have full creative freedom and control. I dated and married a very supportive and inspiring partner. I try not to succumb to outrageous lifestyle creep, which keeps my living expenses low and drastically extends my burn-rate. Prescription To share some aphorisms I’ve leaned with the wantrepreneurs or those who want to follow a similar path: Maximize your at bats, because you only need one hit. Bias towards action. Launch quickly. Get your ideas out into the real world for feedback. Perfect is the enemy of good. If you keep swinging and improving, you'll hit the ball eventually. Keep the big picture in mind. You don't necessarily need a home-run to be happy: a base hit will often do the job. Think about what matters most to you in life: is it a lot of money or status? Or is it something more satisfying, and often just as if not more attainable, like freedom, loving relationships, or fulfillment? Is what you’re doing now a good way to get what you want? Or is there a better way? At more of a micro-level of "keep the big picture in mind", I often see talented wantrepreneurs get stuck in the weeds of lower-level optimizations, usually around technical design choices. They forget (or maybe subconsciously avoid) the higher-level and more important questions of customer development, user experience, and distribution. For example: “Are you solving a real problem?” or “Did you launch an MVP and what did your users think?” Adopt a growth mindset. Believe that you are capable of learning whatever you need to learn in order to do what you want to do. The pain of regret is worse than the pain of failure. I’ve noticed that fear of failure is the greatest thing holding people back from taking action towards their dreams. Unless failure means death in your case, a debilitating fear of failure is a surmountable mental block. You miss 100% of the shots you don't take. When all is said and done, we often regret the things we didn't do in life than the things we did. There’s more to life than just work. Blasphemous (at least among my social circle)! But the reality is that many of the dying regret having worked too much in their lives. As Miss Frizzle from The Magic Schoolbus says: "Take chances, make mistakes, get messy!" Original post

How I Built a $6k/mo Business with Cold Email
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Afraid-Astronomer130This week

How I Built a $6k/mo Business with Cold Email

I scaled my SaaS to a $6k/mo business in under 6 months completely using cold email. However, the biggest takeaway for me is not a business that’s potentially worth 6-figure. It’s having a glance at the power of cold emails in the age of AI. It’s a rapidly evolving yet highly-effective channel, but no one talks about how to do it properly. Below is the what I needed 3 years ago, when I was stuck with 40 free users on my first app. An app I spent 2 years building into the void. Entrepreneurship is lonely. Especially when you are just starting out. Launching a startup feel like shouting into the dark. You pour your heart out. You think you have the next big idea, but no one cares. You write tweets, write blogs, build features, add tests. You talk to some lukewarm leads on Twitter. You do your big launch on Product Hunt. You might even get your first few sales. But after that, crickets... Then, you try every distribution channel out there. SEO Influencers Facebook ads Affiliates Newsletters Social media PPC Tiktok Press releases The reality is, none of them are that effective for early-stage startups. Because, let's face it, when you're just getting started, you have no clue what your customers truly desire. Without understanding their needs, you cannot create a product that resonates with them. It's as simple as that. So what’s the best distribution channel when you are doing a cold start? Cold emails. I know what you're thinking, but give me 10 seconds to change your mind: When I first heard about cold emailing I was like: “Hell no! I’m a developer, ain’t no way I’m talking to strangers.” That all changed on Jan 1st 2024, when I actually started sending cold emails to grow. Over the period of 6 months, I got over 1,700 users to sign up for my SaaS and grew it to a $6k/mo rapidly growing business. All from cold emails. Mastering Cold Emails = Your Superpower I might not recommend cold emails 3 years ago, but in 2024, I'd go all in with it. It used to be an expensive marketing channel bootstrapped startups can’t afford. You need to hire many assistants, build a list, research the leads, find emails, manage the mailboxes, email the leads, reply to emails, do meetings. follow up, get rejected... You had to hire at least 5 people just to get the ball rolling. The problem? Managing people sucks, and it doesn’t scale. That all changed with AI. Today, GPT-4 outperforms most human assistants. You can build an army of intelligent agents to help you complete tasks that’d previously be impossible without human input. Things that’d take a team of 10 assistants a week can now be done in 30 minutes with AI, at far superior quality with less headaches. You can throw 5000 names with website url at this pipeline and you’ll automatically have 5000 personalized emails ready to fire in 30 minutes. How amazing is that? Beyond being extremely accessible to developers who are already proficient in AI, cold email's got 3 superpowers that no other distribution channels can offer. Superpower 1/3 : You start a conversation with every single user. Every. Single. User. Let that sink in. This is incredibly powerful in the early stages, as it helps you establish rapport, bounce ideas off one another, offer 1:1 support, understand their needs, build personal relationships, and ultimately convert users into long-term fans of your product. From talking to 1000 users at the early stage, I had 20 users asking me to get on a call every week. If they are ready to buy, I do a sales call. If they are not sure, I do a user research call. At one point I even had to limit the number of calls I took to avoid burnout. The depth of the understanding of my customers’ needs is unparalleled. Using this insight, I refined the product to precisely cater to their requirements. Superpower 2/3 : You choose exactly who you talk to Unlike other distribution channels where you at best pick what someone's searching for, with cold emails, you have 100% control over who you talk to. Their company Job title Seniority level Number of employees Technology stack Growth rate Funding stage Product offerings Competitive landscape Social activity (Marital status - well, technically you can, but maybe not this one…) You can dial in this targeting to match your ICP exactly. The result is super low CAC and ultra high conversion rate. For example, My competitors are paying $10 per click for the keyword "HARO agency". I pay $0.19 per email sent, and $1.92 per signup At around $500 LTV, you can see how the first means a non-viable business. And the second means a cash-generating engine. Superpower 3/3 : Complete stealth mode Unlike other channels where competitors can easily reverse engineer or even abuse your marketing strategies, cold email operates in complete stealth mode. Every aspect is concealed from end to end: Your target audience Lead generation methods Number of leads targeted Email content Sales funnel This secrecy explains why there isn't much discussion about it online. Everyone is too focused on keeping their strategies close and reaping the rewards. That's precisely why I've chosen to share my insights on leveraging cold email to grow a successful SaaS business. More founders need to harness this channel to its fullest potential. In addition, I've more or less reached every user within my Total Addressable Market (TAM). So, if any competitor is reading this, don't bother trying to replicate it. The majority of potential users for this AI product are already onboard. To recap, the three superpowers of cold emails: You start a conversation with every single user → Accelerate to PMF You choose exactly who you talk to → Super-low CAC Complete stealth mode → Doesn’t attract competition By combining the three superpowers I helped my SaaS reach product-marketing-fit quickly and scale it to $6k per month while staying fully bootstrapped. I don't believe this was a coincidence. It's a replicable strategy for any startup. The blueprint is actually straightforward: Engage with a handful of customers Validate the idea Engage with numerous customers Scale to $5k/mo and beyond More early-stage founders should leverage cold emails for validation, and as their first distribution channel. And what would it do for you? Update: lots of DM asking about more specifics so I wrote about it here. https://coldstartblueprint.com/p/ai-agent-email-list-building

I retired at 32 from my side project. Here's the path I took.
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inputoriginThis week

I retired at 32 from my side project. Here's the path I took.

EDIT 2: Thanks for the award kind stranger! I've stopped responding to reddit comments for this post. I'm adding an FAQ to the original post based on the most common high quality questions. If you have a question that you're dying to know the answer to and that only I can help you with (vs. Google, ChatGPT, etc.), DM me. EDIT: I love how controversial this post has become (50% upvote rate), and only in this subreddit (vs. other subreddits that I posted the same content in). I trust that the open-minded half of you will find something useful in this post and my other posts and comments. I retired at 32 years old, in large part thanks to a B2C SaaS app that I developed on my own. Now, I don't have to work in order to cover my living expenses, and wouldn't have to work for quite a while. In other words, I can finally sip mai tais at the beach. I've condensed how I got there into this post. First, a super simplified timeline of events, followed by some critical details. Timeline 2013 Graduated college in the US 2013 Started first corporate job 2013 Started side project (B2C app) that would eventually lead to my retirement 2020 Started charging for use of my B2C app (was free, became freemium) 2021 Quit my last corporate job 2022 Retired: time freedom attained Details First, some summary statistics of my path to retirement: 9 years: time between graduating college and my retirement. 8 years: total length of my career where I worked at some corporate day job. 7 years: time it took my B2C app to make its first revenue dollar 2 years: time between my first dollar of SaaS revenue and my retirement. "Something something overnight success a decade in the making". I got extremely lucky on my path to retirement, both in terms of the business environment I was in and who I am as a person. I'd also like to think that some of the conscious decisions I made along the way contributed to my early retirement. Lucky Breaks Was born in the US middle class. Had a natural affinity for computer programming and entrepreneurial mindset (initiative, resourcefulness, pragmatism, courage, growth mindset). Had opportunities to develop these mindsets throughout life. Got into a good college which gave me the credentials to get high paying corporate jobs. Was early to a platform that saw large adoption (see "barnacle on whale" strategy). Business niche is shareworthy: my SaaS received free media. Business niche is relatively stable, and small enough to not be competitive. "Skillful" Decisions I decided to spend the nights and weekends of my early career working on side projects in the hopes that one would hit. I also worked a day job to support myself and build my savings. My launch funnel over roughly 7 years of working on side projects: Countless side projects prototyped. 5 side projects publically launched. 2 side projects made > $0. 1 side project ended up becoming the SaaS that would help me retire. At my corporate day jobs, I optimized for learning and work-life balance. My learning usually stalled after a year or two at one company, so I’d quit and find another job. I invested (and continute to do so) in physical and mental wellbeing via regular workouts, meditation, journaling, traveling, and good food. My fulfilling non-work-life re-energized me for my work-life, and my work-life supported my non-work-life: a virtuous cycle. I automated the most time-consuming aspects of my business (outside of product development). Nowadays, I take long vacations and work at most 20 hours a week / a three-day work week . I decided to keep my business entirely owned and operated by me. It's the best fit for my work-style (high autonomy, deep focus, fast decision-making) and need to have full creative freedom and control. I dated and married a very supportive and inspiring partner. I try not to succumb to outrageous lifestyle creep, which keeps my living expenses low and drastically extends my burn-rate. Prescription To share some aphorisms I’ve leaned with the wantrepreneurs or those who want to follow a similar path: Maximize your at bats, because you only need one hit. Bias towards action. Launch quickly. Get your ideas out into the real world for feedback. Perfect is the enemy of good. If you keep swinging and improving, you'll hit the ball eventually. Keep the big picture in mind. You don't necessarily need a home-run to be happy: a base hit will often do the job. Think about what matters most to you in life: is it a lot of money or status? Or is it something more satisfying, and often just as if not more attainable, like freedom, loving relationships, or fulfillment? Is what you’re doing now a good way to get what you want? Or is there a better way? At more of a micro-level of "keep the big picture in mind", I often see talented wantrepreneurs get stuck in the weeds of lower-level optimizations, usually around technical design choices. They forget (or maybe subconsciously avoid) the higher-level and more important questions of customer development, user experience, and distribution. For example: “Are you solving a real problem?” or “Did you launch an MVP and what did your users think?” Adopt a growth mindset. Believe that you are capable of learning whatever you need to learn in order to do what you want to do. The pain of regret is worse than the pain of failure. I’ve noticed that fear of failure is the greatest thing holding people back from taking action towards their dreams. Unless failure means death in your case, a debilitating fear of failure is a surmountable mental block. You miss 100% of the shots you don't take. When all is said and done, we often regret the things we didn't do in life than the things we did. There’s more to life than just work. Blasphemous (at least among my social circle)! But the reality is that many of the dying regret having worked too much in their lives. As Miss Frizzle from The Magic Schoolbus says: "Take chances, make mistakes, get messy!" Original post

[D] Overwhelmed by fast advances in recent weeks
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iamx9000againThis week

[D] Overwhelmed by fast advances in recent weeks

I was watching the GTC keynote and became entirely overwhelmed by the amount of progress achieved from last year. I'm wondering how everyone else feels. ​ Firstly, the entire ChatGPT, GPT-3/GPT-4 chaos has been going on for a few weeks, with everyone scrambling left and right to integrate chatbots into their apps, products, websites. Twitter is flooded with new product ideas, how to speed up the process from idea to product, countless promp engineering blogs, tips, tricks, paid courses. ​ Not only was ChatGPT disruptive, but a few days later, Microsoft and Google also released their models and integrated them into their search engines. Microsoft also integrated its LLM into its Office suite. It all happenned overnight. I understand that they've started integrating them along the way, but still, it seems like it hapenned way too fast. This tweet encompases the past few weeks perfectly https://twitter.com/AlphaSignalAI/status/1638235815137386508 , on a random Tuesday countless products are released that seem revolutionary. ​ In addition to the language models, there are also the generative art models that have been slowly rising in mainstream recognition. Now Midjourney AI is known by a lot of people who are not even remotely connected to the AI space. ​ For the past few weeks, reading Twitter, I've felt completely overwhelmed, as if the entire AI space is moving beyond at lightning speed, whilst around me we're just slowly training models, adding some data, and not seeing much improvement, being stuck on coming up with "new ideas, that set us apart". ​ Watching the GTC keynote from NVIDIA I was again, completely overwhelmed by how much is being developed throughout all the different domains. The ASML EUV (microchip making system) was incredible, I have no idea how it does lithography and to me it still seems like magic. The Grace CPU with 2 dies (although I think Apple was the first to do it?) and 100 GB RAM, all in a small form factor. There were a lot more different hardware servers that I just blanked out at some point. The omniverse sim engine looks incredible, almost real life (I wonder how much of a domain shift there is between real and sim considering how real the sim looks). Beyond it being cool and usable to train on synthetic data, the car manufacturers use it to optimize their pipelines. This change in perspective, of using these tools for other goals than those they were designed for I find the most interesting. ​ The hardware part may be old news, as I don't really follow it, however the software part is just as incredible. NVIDIA AI foundations (language, image, biology models), just packaging everything together like a sandwich. Getty, Shutterstock and Adobe will use the generative models to create images. Again, already these huge juggernauts are already integrated. ​ I can't believe the point where we're at. We can use AI to write code, create art, create audiobooks using Britney Spear's voice, create an interactive chatbot to converse with books, create 3D real-time avatars, generate new proteins (?i'm lost on this one), create an anime and countless other scenarios. Sure, they're not perfect, but the fact that we can do all that in the first place is amazing. ​ As Huang said in his keynote, companies want to develop "disruptive products and business models". I feel like this is what I've seen lately. Everyone wants to be the one that does something first, just throwing anything and everything at the wall and seeing what sticks. ​ In conclusion, I'm feeling like the world is moving so fast around me whilst I'm standing still. I want to not read anything anymore and just wait until everything dies down abit, just so I can get my bearings. However, I think this is unfeasible. I fear we'll keep going in a frenzy until we just burn ourselves at some point. ​ How are you all fairing? How do you feel about this frenzy in the AI space? What are you the most excited about?

[D] Overwhelmed by fast advances in recent weeks
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iamx9000againThis week

[D] Overwhelmed by fast advances in recent weeks

I was watching the GTC keynote and became entirely overwhelmed by the amount of progress achieved from last year. I'm wondering how everyone else feels. ​ Firstly, the entire ChatGPT, GPT-3/GPT-4 chaos has been going on for a few weeks, with everyone scrambling left and right to integrate chatbots into their apps, products, websites. Twitter is flooded with new product ideas, how to speed up the process from idea to product, countless promp engineering blogs, tips, tricks, paid courses. ​ Not only was ChatGPT disruptive, but a few days later, Microsoft and Google also released their models and integrated them into their search engines. Microsoft also integrated its LLM into its Office suite. It all happenned overnight. I understand that they've started integrating them along the way, but still, it seems like it hapenned way too fast. This tweet encompases the past few weeks perfectly https://twitter.com/AlphaSignalAI/status/1638235815137386508 , on a random Tuesday countless products are released that seem revolutionary. ​ In addition to the language models, there are also the generative art models that have been slowly rising in mainstream recognition. Now Midjourney AI is known by a lot of people who are not even remotely connected to the AI space. ​ For the past few weeks, reading Twitter, I've felt completely overwhelmed, as if the entire AI space is moving beyond at lightning speed, whilst around me we're just slowly training models, adding some data, and not seeing much improvement, being stuck on coming up with "new ideas, that set us apart". ​ Watching the GTC keynote from NVIDIA I was again, completely overwhelmed by how much is being developed throughout all the different domains. The ASML EUV (microchip making system) was incredible, I have no idea how it does lithography and to me it still seems like magic. The Grace CPU with 2 dies (although I think Apple was the first to do it?) and 100 GB RAM, all in a small form factor. There were a lot more different hardware servers that I just blanked out at some point. The omniverse sim engine looks incredible, almost real life (I wonder how much of a domain shift there is between real and sim considering how real the sim looks). Beyond it being cool and usable to train on synthetic data, the car manufacturers use it to optimize their pipelines. This change in perspective, of using these tools for other goals than those they were designed for I find the most interesting. ​ The hardware part may be old news, as I don't really follow it, however the software part is just as incredible. NVIDIA AI foundations (language, image, biology models), just packaging everything together like a sandwich. Getty, Shutterstock and Adobe will use the generative models to create images. Again, already these huge juggernauts are already integrated. ​ I can't believe the point where we're at. We can use AI to write code, create art, create audiobooks using Britney Spear's voice, create an interactive chatbot to converse with books, create 3D real-time avatars, generate new proteins (?i'm lost on this one), create an anime and countless other scenarios. Sure, they're not perfect, but the fact that we can do all that in the first place is amazing. ​ As Huang said in his keynote, companies want to develop "disruptive products and business models". I feel like this is what I've seen lately. Everyone wants to be the one that does something first, just throwing anything and everything at the wall and seeing what sticks. ​ In conclusion, I'm feeling like the world is moving so fast around me whilst I'm standing still. I want to not read anything anymore and just wait until everything dies down abit, just so I can get my bearings. However, I think this is unfeasible. I fear we'll keep going in a frenzy until we just burn ourselves at some point. ​ How are you all fairing? How do you feel about this frenzy in the AI space? What are you the most excited about?

Started a content marketing agency 6 years ago - $0 to $5,974,324 (2023 update)
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mr_t_forhireThis week

Started a content marketing agency 6 years ago - $0 to $5,974,324 (2023 update)

Hey friends, My name is Tyler and for the past 6 years, I’ve been documenting my experience building a content marketing agency called Optimist. Year 1 - 0 to $500k ARR Year 2 - $500k to $1MM ARR Year 3 - $1MM ARR to $1.5MM(ish) ARR Year 4 - $3,333,686 Revenue Year 5 - $4,539,659 Revenue How Optimist Works First, an overview/recap of the Optimist business model: We operate as a “collective” of full time/professional freelancers Everyone aside from me is a contractor Entirely remote/distributed team Each freelancer earns $65-85/hour Clients pay us a flat monthly fee for full-service content marketing (research, strategy, writing, editing, design/photography, reporting and analytics, targeted linkbuilding, and more) We recently introduced hourly engagements for clients who fit our model but have some existing in-house support Packages range in price from $10-20k/mo We offer profit share to everyone on our core team as a way to give everyone ownership in the company In 2022, we posted $1,434,665 in revenue. It was our highest revenue year to date and brings our lifetime total to $5,974,324. Here’s our monthly revenue from January 2017 to December of 2022. But, like every year, it was a mix of ups and downs. Here’s my dispatch for 2023. — Running a business is like spilling a drink. It starts as a small and simple thing. But, if you don’t clean it up, the spill will spread and grow — taking up more space, seeping into every crack. There’s always something you could be doing. Marketing you could be working on. Pitches you could be making. Networking you could be doing. Client work you could help with. It can be all-consuming. And it will be — if you don’t clean up the spill. I realized this year that I had no containment for the spill that I created. Running an agency was spilling over into nearly every moment of my life. When I wasn’t working, I was thinking about work. When I wasn’t thinking about work, I was dreaming about it. Over the years, I’ve shared about a lot of my personal feelings and experience as an entrepreneur. And I also discussed my reckoning with the limitations of running the business we’ve built. My acceptance that it was an airplane but not a rocket. And my plan to try to compartmentalize the agency to make room in my life for other things — new business ideas, new revenue streams, and maybe some non-income-producing activity. 🤷 What I found in 2022 was that the business wasn’t quite ready for me to make that move. It was still sucking up too much of my time and attention. There were still too many gaps to fill and I was the one who was often filling them. So what do you do? Ultimately you have two choices on the table anytime you run a business and it’s not going the way you want it: Walk away Turn the ship — slowly For a huge number of reasons (personal, professional, financial, etc), walking away from Optimist was not really even an option or the right move for me. But it did feel like things needed to change. I needed to keep turning the ship to get it to the place where it fit into my life — instead of my life fitting around the business. This means 2022 was a year of transition for the agency. (Again?) Refocusing on Profit Some money is better than no money. Right? Oddly, this was one of the questions I found myself asking in 2022. Over the years, we’ve been fortunate to have many clients who have stuck with us a long time. In some cases, we’ve had clients work with us for 2, 3, or even 4 years. (That’s over half of our existence!) But, things have gotten more expensive — we’ve all felt it. We’ve had to increase pay to remain competitive for top talent. Software costs have gone up. It’s eaten into our margin. Because of our increasing costs and evolving scope, many of our best, most loyal clients were our least profitable. In fact, many were barely profitable — if at all. We’ve tried to combat that by increasing rates on new, incoming clients to reflect our new costs and try to make up for shrinking margin on long-term clients. But we didn’t have a good strategy in place for updating pricing for current clients. And it bit us in the ass. Subsidizing lower-profit, long-term clients with new, higher-margin clients ultimately didn’t work out. Our margins continued to dwindle and some months we were barely breaking even while posting six-figures of monthly revenue. 2022 was our highest revenue year but one of our least profitable. It only left one option. We had to raise rates on some of our long-term clients. But, of course, raising rates on a great, long-term client can be delicate. You’ve built a relationship with these people over the years and you’re setting yourself up for an ultimatum — are you more valuable to the client or is the client more valuable to you? Who will blink first? We offered all of these clients the opportunity to move to updated pricing. Unfortunately, some of them weren’t on board. Again, we had 2 options: Keep them at a low/no profit rate Let them churn It seems intuitive that having a low-profit client is better than having no client. But we’ve learned an important lesson many times over the years. Our business doesn’t scale infinitely and we can only handle so many clients at a time. That means that low-profit clients are actually costing us money in some cases. Say our average client generates $2,500 per month in profit — $30,000 per year. If one of our clients is only generating $500/mo in profit, working with them means missing out on bringing on a more profitable client (assuming our team is currently at capacity). Instead of $30,000/year, we’re only making $6,000. Keeping that client costs us $24,000. That’s called opportunity cost. So it’s clear: We had to let these clients churn. We decided to churn about 25% of our existing clients. On paper, the math made sense. And we had a pretty consistent flow of new opportunities coming our way. At the time, it felt like a no-brainer decision. And I felt confident that we could quickly replace these low-profit clients with higher-margin ones. I was wrong. Eating Shit Right after we initiated proactively churning some of our clients, other clients — ones we planned to keep — gave us notice that they were planning to end the engagement. Ouch. Fuck. We went from a 25% planned drop in revenue to a nearly 40% cliff staring us right in the face. Then things got even worse. Around Q3 of this year, talk of recession and layoffs really started to intensify. We work primarily with tech companies and startups. And these were the areas most heavily impacted by the economic news. Venture funding was drying up. Our leads started to slow down. This put us in a tough position. Looking back now, I think it’s clear that I made the wrong decision. We went about this process in the wrong way. The reality sinks in when you consider the imbalance between losing a client and gaining a client. It takes 30 days for someone to fire us. It’s a light switch. But it could take 1-3 months to qualify, close, and onboard a new client. We have lots of upfront work, research, and planning that goes into the process. We have to learn a new brand voice, tone, and style. It’s a marathon. So, for every client we “trade”, there’s a lapse in revenue and work. This means that, in retrospect, I would probably have made this transition using some kind of staggered schedule rather than a cut-and-dry approach. We could have gradually off-boarded clients when we had more definitive work to replace them. I was too confident. But that’s a lesson I had to learn the hard way. Rebuilding & Resetting Most of the voluntary and involuntary churn happened toward the end of 2022. So we’re still dealing with the fall out. Right now, it feels like a period of rebuilding. We didn’t quite lose 50% of our revenue, but we definitely saw a big hit heading into 2023. To be transparent: It sucks. It feels like a gigantic mistake that I made which set us back significantly from our previous high point. I acted rashly and it cost us a lot of money — at least on the surface. But I remind myself of the situation we were in previously. Nearly twice the revenue but struggling to maintain profitability. Would it have been better to try to slowly fix that situation and battle through months of loss or barely-break-even profits? Or was ripping off the bandaid the right move after all? I’m an optimist. (Heh, heh) Plus, I know that spiraling over past decisions won’t change them or help me move forward. So I’m choosing to look at this as an opportunity — to rebuild, reset, and refocus the company. I get to take all of the tough lessons I’ve learned over the last 6 years and apply them to build the company in a way that better aligns with our new and current goals. It’s not quite a fresh, clean start, but by parting ways with some of our oldest clients, we’ve eliminated some of the “debt” that’s accumulated over the years. We get a chance to fully realize the new positioning that we rolled out last year. Many of those long-term clients who churned had a scope of work or engagement structure that didn’t fit with our new positioning and focus. So, by losing them, we’re able to completely close up shop on the SOWs that no longer align with the future version of Optimist. Our smaller roster of clients is a better fit for that future. My job is to protect that positioning by ensuring that while we’re rebuilding our new roster of clients we don’t get desperate. We maintain the qualifications we set out for future clients and only take on work that fits. How’s that for seeing the upside? Some other upside from the situation is that we got an opportunity to ask for candid feedback from clients who were leaving. We asked for insight about their decision, what factors they considered, how they perceived us, and the value of our work. Some of the reasons clients left were obvious and possibly unavoidable. Things like budget cuts, insourcing, and uncertainty about the economy all played at least some part of these decisions. But, reading between the lines, where was one key insight that really struck me. It’s one of those, “oh, yeah — duh — I already knew that,” things that can be difficult to learn and easy to forget…. We’re in the Relationship Business (Plan Accordingly) For all of our focus on things like rankings, keywords, content, conversions, and a buffet of relevant metrics, it can be easy to lose the forest for the trees. Yes, the work itself matters. Yes, the outcomes — the metrics — matter. But sometimes the relationship matters more. When you’re running an agency, you can live or die by someone just liking you. Admittedly, this feels totally unfair. It opens up all kinds of dilemmas, frustration, opportunity for bias and prejudice, and other general messiness. But it’s the real world. If a client doesn’t enjoy working with us — even if for purely personal reasons — they could easily have the power to end of engagement, regardless of how well we did our actual job. We found some evidence of this in the offboarding conversations we had with clients. In some cases, we had clients who we had driven triple- and quadruple-digital growth. Our work was clearly moving the needle and generating positive ROI and we had the data to prove it. But they decided to “take things in another direction” regardless. And when we asked about why they made the decision, it was clear that it was more about the working relationship than anything we could have improved about the service itself. The inverse is also often true. Our best clients have lasting relationships with our team. The work is important — and they want results. But even if things aren’t quite going according to plan, they’re patient and quick to forgive. Those relationships feel solid — unshakeable. Many of these folks move onto new roles or new companies and quickly look for an opportunity to work with us again. On both sides, relationships are often more important than the work itself. We’ve already established that we’re not building a business that will scale in a massive way. Optimist will always be a small, boutique service firm. We don’t need 100 new leads per month We need a small, steady roster of clients who are a great fit for the work we do and the value we create. We want them to stick around. We want to be their long-term partner. I’m not built for churn-and-burn agency life. And neither is the business. When I look at things through this lens, I realize how much I can cut from our overall business strategy. We don’t need an ultra-sophisticated, multi-channel marketing strategy. We just need strong relationships — enough of them to make our business work. There are a few key things we can take away from this as a matter of business strategy: Put most of our effort into building and strengthening relationships with our existing clients Be intentional about establishing a strong relationship with new clients as part of onboarding Focus on relationships as the main driver of future business development Embracing Reality: Theory vs Practice Okay, so with the big learnings out the way, I want to pivot into another key lesson from 2022. It’s the importance of understanding theory vs practice — specifically when it comes to thinking about time, work, and life. It all started when I was considering how to best structure my days and weeks around running Optimist, my other ventures, and my life goals outside of work. Over the years, I’ve dabbled in many different ways to block time and find focus — to compartmentalize all of the things that are spinning and need my attention. As I mapped this out, I realized that I often tried to spread myself too thin throughout the week. Not just that I was trying to do too much but that I was spreading that work into too many small chunks rather than carving out time for focus. In theory, 5 hours is 5 hours. If you have 5 hours of work to get done, you just fit into your schedule whenever you have an open time slot. In reality, a single 5-hour block of work is 10x more productive and satisfying than 10, 30-minute blocks of work spread out across the week. In part, this is because of context switching. Turning your focus from one thing to another thing takes time. Achieving flow and focus takes time. And the more you jump from one project to another, the more time you “lose” to switching. This is insightful for me both in the context of work and planning my day, but also thinking about my life outside of Optimist. One of my personal goals is to put a finite limit on my work time and give myself more freedom. I can structure that in many different ways. Is it better to work 5 days a week but log off 1 hour early each day? Or should I try to fit more hours into each workday so I can take a full day off? Of course, it’s the latter. Both because of the cost of context switching and spreading work into more, smaller chunks — but also because of the remainder that I end up with when I’m done working. A single extra hour in my day probably means nothing. Maybe I can binge-watch one more episode of a new show or do a few extra chores around the house. But it doesn’t significantly improve my life or help me find greater balance. Most things I want to do outside of work can’t fit into a single extra hour. A full day off from work unlocks many more options. I can take the day to go hiking or biking. I can spend the day with my wife, planning or playing a game. Or I can push it up against the weekend and take a 3-day trip. It gives me more of the freedom and balance that I ultimately want. So this has become a guiding principle for how I structure my schedule. I want to: Minimize context switching Maximize focused time for work and for non-work The idea of embracing reality also bleeds into some of the shifts in business strategy that I mentioned above. In theory, any time spent on marketing will have a positive impact on the company. In reality, focusing more on relationships than blasting tweets into the ether is much more likely to drive the kind of growth and stability that we’re seeking. As I think about 2023, I think this is a recurring theme. It manifests in many ways. Companies are making budget cuts and tough decisions about focus and strategy. Most of us are looking for ways to rein in the excess and have greater impact with a bit less time and money. We can’t do everything. We can’t even do most things. So our #1 priority should be to understand the reality of our time and our effort to make the most of every moment (in both work and leisure). That means thinking deeply about our strengths and our limitations. Being practical, even if it feels like sacrifice. Update on Other Businesses Finally, I want to close up by sharing a bit about my ventures outside of Optimist. I shared last year how I planned to shift some of my (finite) time and attention to new ventures and opportunities. And, while I didn’t get to devote as much as I hoped to these new pursuits, they weren’t totally in vain. I made progress across the board on all of the items I laid out in my post. Here’s what happened: Juice: The first Optimist spin-out agency At the end of 2021, we launched our first new service business based on demand from Optimist clients. Focused entirely on building links for SEO, we called the agency Juice. Overall, we made strong progress toward turning this into a legitimate standalone business in 2022. Relying mostly on existing Optimist clients and a few word-of-mouth opportunities (no other marketing), we built a team and set up a decent workflow and operations. There’s still many kinks and challenges that we’re working through on this front. All told, Juice posted almost $100,000 in revenue in our first full year. Monetizing the community I started 2022 with a focus on figuring out how to monetize our free community, Top of the Funnel. Originally, my plan was to sell sponsorships as the main revenue driver. And that option is still on the table. But, this year, I pivoted to selling paid content and subscriptions. We launched a paid tier for content and SEO entrepreneurs where I share more of my lessons, workflows, and ideas for building and running a freelance or agency business. It’s gained some initial traction — we reached \~$1,000 MRR from paid subscriptions. In total, our community revenue for 2022 was about $2,500. In 2023, I’m hoping to turn this into a $30,000 - $50,000 revenue opportunity. Right now, we’re on track for \~$15,000. Agency partnerships and referrals In 2022, we also got more serious about referring leads to other agencies. Any opportunity that was not a fit for Optimist or we didn’t have capacity to take on, we’d try to connect with another partner. Transparently, we struggled to operationalize this as effectively as I would have liked. In part, this was driven by my lack of focus here. With the other challenges throughout the year, I wasn’t able to dedicate as much time as I’d like to setting goals and putting workflows into place. But it wasn’t a total bust. We referred out several dozen potential clients to partner agencies. Of those, a handful ended up converting into sales — and referral commission. In total, we generated about $10,000 in revenue from referrals. I still see this as a huge opportunity for us to unlock in 2023. Affiliate websites Lastly, I mentioned spending some time on my new and existing affiliate sites as another big business opportunity in 2022. This ultimately fell to the bottom of my list and didn’t get nearly the attention I wanted. But I did get a chance to spend a few weeks throughout the year building this income stream. For 2022, I generated just under $2,000 in revenue from affiliate content. My wife has graciously agreed to dedicate some of her time and talent to these projects. So, for 2023, I think this will become a bit of a family venture. I’m hoping to build a solid and consistent workflow, expand the team, and develop a more solid business strategy. Postscript — AI, SEO, OMG As I’m writing this, much of my world is in upheaval. If you’re not in this space (and/or have possibly been living under a rock), the release of ChatGPT in late 2022 has sparked an arms race between Google, Bing, OpenAI, and many other players. The short overview: AI is likely to fundamentally change the way internet search works. This has huge impact on almost all of the work that I do and the businesses that I run. Much of our focus is on SEO and understanding the current Google algorithm, how to generate traffic for clients, and how to drive traffic to our sites and projects. That may all change — very rapidly. This means we’re standing at a very interesting point in time. On the one hand, it’s scary as hell. There’s a non-zero chance that this will fundamentally shift — possibly upturn — our core business model at Optimist. It could dramatically change how we work and/or reduce demand for our core services. No bueno. But it’s also an opportunity (there’s the optimist in me, again). I certainly see a world where we can become leaders in this new frontier. We can pivot, adjust, and capitalize on a now-unknown version of SEO that’s focused on understanding and optimizing for AI-as-search. With that, we may also be able to help others — say, those in our community? — also navigate this tumultuous time. See? It’s an opportunity. I wish I had the answers right now. But, it’s still a time of uncertainty. I just know that there’s a lot of change happening and I want to be in front of it rather than trying to play catch up. Wish me luck. — Alright friends — that's my update for 2023! I’ve always appreciated sharing these updates with the Reddit community, getting feedback, being asked tough questions, and even battling it out with some of my haters (hey!! 👋) As usual, I’m going to pop in throughout the next few days to respond to comments or answer questions. Feel free to share thoughts, ideas, and brutal takedowns in the comments. If you're interested in following the Optimist journey and the other projects I'm working on in 2023, you can follow me on Twitter. Cheers, Tyler P.S. - If you're running or launching a freelance or agency business and looking for help figuring it out, please DM me. Our subscription community, Middle of the Funnel, was created to provide feedback, lessons, and resources for other entrepreneurs in this space.

how I built a $6k/mo business with cold email
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Afraid-Astronomer130This week

how I built a $6k/mo business with cold email

I scaled my SaaS to a $6k/mo business in under 6 months completely using cold email. However, the biggest takeaway for me is not a business that’s potentially worth 6-figure. It’s having a glance at the power of cold emails in the age of AI. It’s a rapidly evolving yet highly-effective channel, but no one talks about how to do it properly. Below is the what I needed 3 years ago, when I was stuck with 40 free users on my first app. An app I spent 2 years building into the void. Entrepreneurship is lonely. Especially when you are just starting out. Launching a startup feel like shouting into the dark. You pour your heart out. You think you have the next big idea, but no one cares. You write tweets, write blogs, build features, add tests. You talk to some lukewarm leads on Twitter. You do your big launch on Product Hunt. You might even get your first few sales. But after that, crickets... Then, you try every distribution channel out there. SEO Influencers Facebook ads Affiliates Newsletters Social media PPC Tiktok Press releases The reality is, none of them are that effective for early-stage startups. Because, let's face it, when you're just getting started, you have no clue what your customers truly desire. Without understanding their needs, you cannot create a product that resonates with them. It's as simple as that. So what’s the best distribution channel when you are doing a cold start? Cold emails. I know what you're thinking, but give me 10 seconds to change your mind: When I first heard about cold emailing I was like: “Hell no! I’m a developer, ain’t no way I’m talking to strangers.” That all changed on Jan 1st 2024, when I actually started sending cold emails to grow. Over the period of 6 months, I got over 1,700 users to sign up for my SaaS and grew it to a $6k/mo rapidly growing business. All from cold emails. Mastering Cold Emails = Your Superpower I might not recommend cold emails 3 years ago, but in 2024, I'd go all in with it. It used to be an expensive marketing channel bootstrapped startups can’t afford. You need to hire many assistants, build a list, research the leads, find emails, manage the mailboxes, email the leads, reply to emails, do meetings. follow up, get rejected... You had to hire at least 5 people just to get the ball rolling. The problem? Managing people sucks, and it doesn’t scale. That all changed with AI. Today, GPT-4 outperforms most human assistants. You can build an army of intelligent agents to help you complete tasks that’d previously be impossible without human input. Things that’d take a team of 10 assistants a week can now be done in 30 minutes with AI, at far superior quality with less headaches. You can throw 5000 names with website url at this pipeline and you’ll automatically have 5000 personalized emails ready to fire in 30 minutes. How amazing is that? Beyond being extremely accessible to developers who are already proficient in AI, cold email's got 3 superpowers that no other distribution channels can offer. Superpower 1/3 : You start a conversation with every single user. Every. Single. User. Let that sink in. This is incredibly powerful in the early stages, as it helps you establish rapport, bounce ideas off one another, offer 1:1 support, understand their needs, build personal relationships, and ultimately convert users into long-term fans of your product. From talking to 1000 users at the early stage, I had 20 users asking me to get on a call every week. If they are ready to buy, I do a sales call. If they are not sure, I do a user research call. At one point I even had to limit the number of calls I took to avoid burnout. The depth of the understanding of my customers’ needs is unparalleled. Using this insight, I refined the product to precisely cater to their requirements. Superpower 2/3 : You choose exactly who you talk to Unlike other distribution channels where you at best pick what someone's searching for, with cold emails, you have 100% control over who you talk to. Their company Job title Seniority level Number of employees Technology stack Growth rate Funding stage Product offerings Competitive landscape Social activity (Marital status - well, technically you can, but maybe not this one…) You can dial in this targeting to match your ICP exactly. The result is super low CAC and ultra high conversion rate. For example, My competitors are paying $10 per click for the keyword "HARO agency". I pay $0.19 per email sent, and $1.92 per signup At around $500 LTV, you can see how the first means a non-viable business. And the second means a cash-generating engine. Superpower 3/3 : Complete stealth mode Unlike other channels where competitors can easily reverse engineer or even abuse your marketing strategies, cold email operates in complete stealth mode. Every aspect is concealed from end to end: Your target audience Lead generation methods Number of leads targeted Email content Sales funnel This secrecy explains why there isn't much discussion about it online. Everyone is too focused on keeping their strategies close and reaping the rewards. That's precisely why I've chosen to share my insights on leveraging cold email to grow a successful SaaS business. More founders need to harness this channel to its fullest potential. In addition, I've more or less reached every user within my Total Addressable Market (TAM). So, if any competitor is reading this, don't bother trying to replicate it. The majority of potential users for this AI product are already onboard. To recap, the three superpowers of cold emails: You start a conversation with every single user → Accelerate to PMF You choose exactly who you talk to → Super-low CAC Complete stealth mode → Doesn’t attract competition By combining the three superpowers I helped my SaaS reach product-marketing-fit quickly and scale it to $6k per month while staying fully bootstrapped. I don't believe this was a coincidence. It's a replicable strategy for any startup. The blueprint is actually straightforward: Engage with a handful of customers Validate the idea Engage with numerous customers Scale to $5k/mo and beyond More early-stage founders should leverage cold emails for validation, and as their first distribution channel. And what would it do for you? Update: lots of DM asking about more specifics so I wrote about it here. https://coldstartblueprint.com/p/ai-agent-email-list-building

I realized that AI will create equal footing for non-technical / non-coders compared to coders
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MatanNahmaniThis week

I realized that AI will create equal footing for non-technical / non-coders compared to coders

Hey fellow entrepreneurs, I started my current entrepreneurial journey following the advice to “build something that solves a problem you have.” As a coder, I wanted to code faster/better/stronger/etc. So I tried out dozens of AI coding tools to see the state of the market.  I took the best components I saw and started making my own flavor of tool, but sort of shelved it because as a coder I felt that the results were a bit alien (such as getting the AI to follow my code style, write idiomatic code, or refactor the same way I would.) I concluded that building AI coding tools for coders is tricky because as coders we’re so particular about the specifics of our code. Meanwhile, my absolutely non-technical friend was hitting me up to help him build a website for a new real-estate company that he’s launching, and he wanted my help. I really respect his hustle, but I was swamped trying to figure out my own product/market, so I told him he could use my AI coder and I would try to help out when he got stuck. He didn’t get stuck though, not once, and he launched his site over the weekend. I was truly shocked he did it all on his own, so I asked him to share his logs. It was wild – he managed to code a more or less state of the art website (good design, SEO, well-structured source code, Google Analytics, mailing lists. etc.) with absolutely no help. It cost him less than $100 in AI credits, instead of the price quotes of $20,000 - $50,000 from freelancers and agencies. Now I’m seriously pursuing AI coding tools again, but this time with a new passion: AI for non-coder / non-technical people is a 100x game changer. I think 2025 is going to be the year of the entrepreneur, where there will be a hundred times the businesses started because what held people back before was the lack of a technical co-founder or the cash to compensate engineers. Now it costs next to nothing to get started. I’m curious if anyone else has had a similar realization? Anyway, I’ve put the link below to my GitHub if you want to try it (open source, you pay for AI credits). But the main reason for my post is that I feel like I’m living in this new world of realization that being a human on earth is going to get a LOT more interesting in the coming years. There’s literally no excuse to take a job you hate, and nothing stopping people from launching a business. For anyone interested in checking it out or providing feedback you can search for kodu ai on github or kodu ai on google Best of luck to everyone on your entrepreneurial journey! P.s not sure if this is the right flair

AI Content Campaign Got 4M impressions, Thousands of Website Views, Hundreds of Customers for About $100 — This is the future of marketing
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adamkstinsonThis week

AI Content Campaign Got 4M impressions, Thousands of Website Views, Hundreds of Customers for About $100 — This is the future of marketing

Alright. So, a few months ago I tested a marketing strategy for a client that I’ve sense dedicated my life to developing on. The Idea was to take the clients Pillar content (their YouTube videos) and use AI to rewrite the content for all the viable earned media channels (mainly Reddit). The campaign itself was moderately successful. To be specific, after one month it became their 2nd cheapest customer acquisition cost (behind their organic YouTube content). But there is a lot to be done to improve the concept. I will say, having been in growth marketing for a decade, I felt like I had hit something big with the concept. I’m going to detail how I built that AI system, and what worked well and what didn’t here. Hopefully you guys will let me know what you think and whether or not there is something here to keep working on. DEFINING THE GOAL Like any good startup, their marketing budget was minimal. They wanted to see results, fast and cheap. Usually, marketers like me hate to be in this situation because getting results usually either takes time or it takes money. But you can get results fast and cheap if you focus on an earned media strategy - basically getting featured in other people’s publication. The thing is these strategies are pretty hard to scale or grow over time. That was a problem for future me though. I looked through their analytics and saw they were getting referral traffic from Reddit - it was their 5th or 6th largest source of traffic - and they weren’t doing any marketing on the platform. It was all digital word of mouth there. It kind of clicked for me there, that Reddit might be the place to start laying the ground work. So with these considerations in mind the goal became pretty clear: Create content for relevant niche communities on Reddit with the intent of essentially increasing brand awareness. Use an AI system to repurpose their YouTube videos to keep the cost of producing unique content for each subreddit really low. THE HIGH-LEVEL STRATEGY I knew that there are huge amounts of potential customers on Reddit (About 12M people in all the relevant communities combined) AND that most marketers have a really tough time with the platform. I also knew that any earned media strategy, Reddit or not, means Click Through Rates on our content would be extremely low. A lot of people see this as a Reddit specific problem because you can’t self-promote on the platform, but really you have to keep self-promotion to a minimum with any and all earned media. This basically meant we had to get a lot of impressions to make up for it. The thing about Reddit is if your post absolutely crushes it, it can get millions of views. But crushing it is very specific to what the expectations are of that particular subreddit. So we needed to make content that was specifically written for that Subreddit. With that I was able to essentially design how this campaign would work: We would put together a list of channels (specifically subreddits to start) that we wanted to create content for. For each channel, we would write a content guideline that details out how to write great content for this subreddit. These assets would be stored in an AirTable base, along with the transcripts of the YouTube videos that were the base of our content. We would write and optimize different AI Prompts that generated different kinds of posts (discussion starters about a stock, 4-5 paragraph stock analysis, Stock update and what it means, etc…) We would build an automation that took the YouTube transcripts, ran each prompt on it, and then edited each result to match the channel writing guidelines. And then we would find a very contextual way to leave a breadcrumb back to the client. Always as part of the story of the content. At least, this is how I originally thought things would go. CHOOSING THE RIGHT SUBREDDITS Picking the right communities was vital. Here’s the basic rubric we used to pick and prioritize them: • Relevance: We needed communities interested in stock analysis, personal finance, or investing. • Subreddit Size vs. Engagement: Large subreddits offer more potential impressions but can be less focused. Smaller subreddits often have higher engagement rates. • Content Feasibility: We had to ensure we could consistently create high-value posts for each chosen subreddit. We started with about 40 possibilities, then narrowed it down to four or five that consistently delivered upvotes and user signups. CREATING CHANNEL-SPECIFIC GUIDES By the end, creating channel specific writing guidelines looked like a genius decision. Here’s how we approached it and used AI to get it done quickly: Grabbed Top Posts: We filtered the subreddit’s top posts (change filter to “Top” and then “All Time”) of all time to see the kinds of content that performed best Compiled The Relevant Posts: We took the most relevant posts to what we were trying to do and put them all on one document (basically created one document per subreddit that just had the top 10 posts in that subreddit). Had AI Create Writing Guideline Based On Posts: For each channel, we fed the document with the 10 posts with the instructions “Create a writing guideline for this subreddit based on these high performing posts. I had to do some editing on each guideline but this worked pretty well and saved a lot of time. Each subreddit got a custom guideline, and we put these inside the “Channels” table of the AirTable base we were developing with these assets. BUILDING THE AI PROMPTS THAT GENERATED CONTENT Alright this is probably the most important section so I’ll be detailed. Essentially, we took all the assets we developed up until this point, and used them to create unique posts for each channel. This mean each AI prompt was about 2,000 words of context and produced about a 500-word draft. There was a table in our AirTable where we stored the prompts, as I alluded to earlier. And these were basically the instructions for each prompt. More specifically, they detailed out our expectations for the post. In other words, there were different kinds of posts that performed well on each channel. For example, you can write a post that’s a list of resources (5 tools we used to…), or a how to guide (How we built…), etc.. Those weren’t the specific ones we used, but just wanted to really explain what I meant there. That actual automation that generated the content worked as follows: New source content (YouTube video transcript) was added to the Source Content table. This triggered the Automation. The automation grabbed all the prompts in the prompt table. For each prompt in the prompt table, we sent a prompt to OpenAI (gpt-4o) that contained first the prompt and also the source content. Then, for each channel that content prompt could be used on, we sent another prompt to OpenAI that revised the result of the first prompt based on the specific channel guidelines. The output of that prompt was added to the Content table in AirTable. To be clear, our AirTable had 4 tables: Content Channels Prompts Source Content The Source Content, Prompts, and Channel Guidelines were all used in the prompt that generated content. And the output was put in the Content table. Each time the automation ran, the Source Content was turned into about 20 unique posts, each one a specific post type generated for a specific channel. In other words, we were create a ton of content. EDITING & REFINING CONTENT The AI drafts were never perfect. Getting them Reddit-ready took editing and revising The main things I had to go in and edit for were: • Tone Adjustments: We removed excessively cliche language. The AI would say silly things like “Hello fellow redditors!” which sound stupid. • Fact-Checking: Financial data can be tricky. We discovered AI often confused figures, so we fact check all stock related metrics. Probably something like 30-40% error rate here. Because the draft generation was automated, that made the editing and getting publish ready the human bottleneck. In other words, after creating the system I spent basically all my time reviewing the content. There were small things I could do to make this more efficient, but not too much. The bigger the model we used, the less editing the content needed. THE “BREADCRUMB” PROMOTION STRATEGY No where in my prompt to the AI did I mention that we were doing any marketing. I just wanted the AI to focus on creating content that would do well on the channel. So in the editing process I had to find a way to promote the client. I called it a breadcrumb strategy once and that stuck. Basically, the idea was to never overtly promote anything. Instead find a way to leave a breadcrumb that leads back to the client, and let the really interested people follow the trail. Note: this is supposed to be how we do all content marketing. Some examples of how we did this were: Shared Visuals with a Subtle Watermark: Because our client’s product offered stock data, we’d often include a chart or graph showing a company’s financial metric with the client’s branding in the corner. Added Supporting Data from Client’s Website: If we mentioned something like a company’s cash flow statement, we could link to that company’s cash flow statement on the client’s website. It worked only because there was a lot of data on the client’s website that wasn’t gated. These tactics were really specific to the client. Which is should be. For other companies I would rethink what tactics I use here. THE RESULTS I’m pretty happy with the results • Impressions: – Early on posts averaged \~30,000 apiece, but after about a month of optimization, we hit \~70,000 impressions average. Over about two months, we reached 4 million total impressions. • Signups: – In their signups process there was one of those “Where did you find us?” questions and the amount of people who put Reddit jumped into the few hundred a month. Precise tracking of this is impossible. • Cost Efficiency (This is based on what I charged, and not the actual cost of running the campaign which is about $100/mo): – CPM (cost per thousand impressions) was about $0.08, which is far better than most paid channels. – Cost per free user: \~$8-10. After about a 10% conversion rate to a paid plan, our cost per paying user was $80–$100—well below the client’s previous $300–$400. HIGHLIGHTS: WHAT WORKED Subreddit-Specific Content: – Tailoring each post’s format and length to the audience norms boosted engagement. Worked out really well. 1 post got over 1M views alone. We regularly had posts that had hundreds of thousands. Breadcrumbs: – We never had anyone call us out for promoting. And really we weren’t. Our first priority was writing content that would crush on that subreddit. Using the Founder’s Existing Material: – The YouTube transcripts grounded the AI’s content in content we already made. This was really why we were able to produce so much content. CHALLENGES: WHAT DIDN’T WORK AI is still off: – Maybe it’s expecting too much, but still I wish the AI had done a better job. I editing a lot of content. Human oversight was critical. Scheduling all the content was a pain: – Recently I automated this pretty well. But at first I was scheduling everything manually and scheduling a hundred or so posts was a hassle. Getting Data and Analytics: – Not only did we have not very good traffic data, but the data from reddit had to be collected manually. Will probably automate this in the future. COST & TIME INVESTMENT Setup: The setup originally took me a couple weeks. I’ve since figured out how to do much faster (about 1 week). AirTable Setup here was easy and the tools costs $24/mo so not bad. ChatGPT costs were pretty cheap. Less than $75 per month. I’ve sense switched to using o1 which is much more expensive but saves me a lot of editing time Human Editing: Because this is the human part of the process and everything else was automated it mean by default all my time was spent editing content. Still this was a lot better than creating content from scratch probably by a factor of 5 or 10. The main expense was paying an editor (or using your own time) to refine posts. Worth it? Yes even with the editing time I was able to generate way more content that I would have otherwise. LESSONS & ACTIONABLE TAKEAWAYS Reddit as a Growth Channel: – If you genuinely respect each subreddit’s culture, you can achieve massive reach on a tight budget. AI + Human Collaboration: – AI excels at first drafts, but human expertise is non-negotiable for polishing and ensuring factual integrity. Soft Promotion Wins: – The “breadcrumb” approach paid off. It might feel like too light a touch, but is crucial for Reddit communities. Create once, repurpose as many times as possible: – If you have blog posts, videos, podcasts, or transcripts, feed them into AI to keep your message accurate and brand-consistent. CONCLUSION & NEXT STEPS If you try a similar approach: • Begin with smaller tests in a few niches to learn what resonates. • Create a clear “channel guide” for each community. • Carefully fact-check AI-generated posts. • Keep brand mentions low-key until you’ve established credibility.

Business Strategy Trends for 2024
reddit
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aidenleepingweiiThis week

Business Strategy Trends for 2024

As we gear up for 2024, it's time to gaze into the crystal ball and see what's reshaping the world of business strategy. From cutting-edge technology to how people are shopping, it's all happening. So let's check out the latest trends that are going to dominate the business world! Going Green and Doing Good Yep, you heard it right—being eco-friendly and socially responsible is all the rage. Businesses are jumping on the sustainability train, whether it's by using recycled materials or giving back to the community. It's not just good for the planet—it's good for business too! Tech Takeover From fancy AI to blockchain innovations, businesses are embracing all things digital. It's not just about staying up to date—it's about using technology to make things easier, faster, and way more amazing. Work from Anywhere Who says you have to be stuck in an office all day? Today, businesses are all about flexibility. Whether you're working from home, a coffee shop, or a hammock on the beach, it's all good. Remote work is here to stay, and people are loving the freedom it brings. Treat Yo' Customers Want to stand out in a sea of competition? It's all about making your customers feel special. Whether it's personalized recommendations or killer customer service, businesses are pulling out all the stops to keep folks coming back for more. Roll with the Punches In today's fast-paced world, you've got to be quick on your feet. That's why businesses are ditching rigid plans and embracing agile strategies. It's all about being able to adapt to whatever curveballs the world throws your way. Click, Buy, and Repeat Online shopping is getting bigger. Businesses are getting creative with their online offerings, whether it's through slick new websites, social media shenanigans, or funky new delivery options. The future of shopping is digital! Conclusion: The lowdown on what's shaking up the world of business strategy in 2024. Whether it's going green, embracing tech, or keeping customers happy, there's plenty of excitement on the horizon.

WE JUST GOT $2,500 in angel investment for our AI Cold Calling Startup! Hooray! Looking for web dev + digital marketing agencies to partner with.
reddit
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Human Vibe Score1
GrowthGetThis week

WE JUST GOT $2,500 in angel investment for our AI Cold Calling Startup! Hooray! Looking for web dev + digital marketing agencies to partner with.

Hey y'all. The AI cold calling startup I've been working on for 3-4 months now just got a $2,500 angel investment, and we have 2 current customers, a credit card processing broker and a hospital equipment rental company based out of Texas. We have around $1,500 revenue so far, but we're having lots of trouble fulfilling the contracts because our tech just isn't "there" yet. I'm the Chief Tech Officer, and I'm also running some operations. The other main person in this is the CEO who has a strong sales background and came up with the idea. I've been working purely remotely, and it's great having some income because I'm stuck at home because I'm disabled, basically... We're using 11labs, openai, google speech to text, and a sh\*tty online dialer right now to run the first MVP which runs locally on our "botrunners" computers, and we're developing a web app with django python + javascript react. Our plan is, after we get the webapp working better, to hire more botrunners for $3 per hour from countries like Phillipines and India, and we're going to try to track all the actions the botrunners take to be able to train the AI to run it fully automated. The biggest problem we're facing right now with the tech is reducing latency, it started at 27 seconds to get a response and I've been able to get it down to 6 seconds, but people are still hanging up. We're trying several ways to mitigate this, including having pre-rendered speech playing something like "Okay" or "As an artificial representative, I'm still learning to be quicker on the pickup. We appreciate your patience." One of the industries we want to target is international web development and digital marketing companies, and we want to use the bot to cold-call businesses to pitch them our services. The goal is to replace $30 an hour cold-callers from the USA with $3 per hour total-cost automation. Apparently the CEO was given a $5 million valuation from the strength of the MVP from a VC. Our investment so far was at a $300k valuation tho. It's exciting. Trying to get Twilio working to be able to make calls programmatically instead of using our hacky workaround. Let me know if you have any questions, or feedback. Looking for digital marketing and web dev agencies to partner with to test the next stage of our business model. Thanks. I just wanted to share this awesome news!

WE JUST GOT $2,500 in angel investment for our AI Cold Calling Startup! Hooray! Looking for web dev + digital marketing agencies to partner with.
reddit
LLM Vibe Score0
Human Vibe Score1
GrowthGetThis week

WE JUST GOT $2,500 in angel investment for our AI Cold Calling Startup! Hooray! Looking for web dev + digital marketing agencies to partner with.

Hey y'all. The AI cold calling startup I've been working on for 3-4 months now just got a $2,500 angel investment, and we have 2 current customers, a credit card processing broker and a hospital equipment rental company based out of Texas. We have around $1,500 revenue so far, but we're having lots of trouble fulfilling the contracts because our tech just isn't "there" yet. I'm the Chief Tech Officer, and I'm also running some operations. The other main person in this is the CEO who has a strong sales background and came up with the idea. I've been working purely remotely, and it's great having some income because I'm stuck at home because I'm disabled, basically... We're using 11labs, openai, google speech to text, and a sh\*tty online dialer right now to run the first MVP which runs locally on our "botrunners" computers, and we're developing a web app with django python + javascript react. Our plan is, after we get the webapp working better, to hire more botrunners for $3 per hour from countries like Phillipines and India, and we're going to try to track all the actions the botrunners take to be able to train the AI to run it fully automated. The biggest problem we're facing right now with the tech is reducing latency, it started at 27 seconds to get a response and I've been able to get it down to 6 seconds, but people are still hanging up. We're trying several ways to mitigate this, including having pre-rendered speech playing something like "Okay" or "As an artificial representative, I'm still learning to be quicker on the pickup. We appreciate your patience." One of the industries we want to target is international web development and digital marketing companies, and we want to use the bot to cold-call businesses to pitch them our services. The goal is to replace $30 an hour cold-callers from the USA with $3 per hour total-cost automation. Apparently the CEO was given a $5 million valuation from the strength of the MVP from a VC. Our investment so far was at a $300k valuation tho. It's exciting. Trying to get Twilio working to be able to make calls programmatically instead of using our hacky workaround. Let me know if you have any questions, or feedback. Looking for digital marketing and web dev agencies to partner with to test the next stage of our business model. Thanks. I just wanted to share this awesome news!

PracticalAI
github
LLM Vibe Score0.416
Human Vibe Score0.012874224994657315
revodavidFeb 9, 2025

PracticalAI

Practical AI for the Working Software Engineer by David M Smith (@revodavid), Cloud Advocate at Microsoft Last updated: December 4, 2018 Presented at: AI Live (AIF01), Orlando, December 7 2018 About these notebooks This library includes three notebooks to support the workshop: The AI behind Seeing AI. Use the web-interfaces to Cognitive Services to learn about the AI services behind the "Seeing AI" app Computer Vision API with R. Use an R script to interact with the Computer Vision API and generate captions for random Wikimedia images. Custom Vision with R. An R function to classify an image as a "Hot Dog" or "Not Hot Dog", using the Custom Vision service. MNIST with scikit-learn. Use sckikit-learn to build a digit recognizer for the MNIST data using a regression model. MNIST with tensorflow. Use Tensorflow (from Python) to build a digit recognizer for the MNIST data using a convolutional neural network. These notebooks are hosted on Azure Notebooks at https://notebooks.azure.com/davidsmi/projects/practicalai, where you can run them interactively. You can also download them to run them using Jupyter. Find the slides for the workshop here. Setup (for use in Azure Notebooks) Sign in to Azure Notebooks. You'll need a Microsoft Account: your O365, Xbox, or Hotmail account will work. If you're new to Notebooks, check out the Jupyter Notebook documentation and the Azure Notebook documentation. If you have an iPhone, install the free SeeingAI app. (optional) To generate keys and use Azure services, you'll need an Azure subscription. You can get a free Azure account here, with $200 in free credits for new subscribers. You'll need a credit card, but most of the things we'll use in this workshop will be free. Contact If you get stuck or just have other questions, you can contact me here: David Smith davidsmi@microsoft.com Twitter: @revodavid

airflow-tutorial
github
LLM Vibe Score0.508
Human Vibe Score0.13240553426231688
hgrifJan 19, 2025

airflow-tutorial

Airflow tutorial This tutorial is loosely based on the Airflow tutorial in the official documentation. It will walk you through the basics of setting up Airflow and creating an Airflow workflow. This tutorial was published on the blog of GoDataDriven. Setup You can skip this section if Airflow is already set up. Make sure that you can run airflow commands, know where to put your DAGs and have access to the web UI. Install Airflow Airflow is installable with pip via a simple pip install apache-airflow. Either use a separate python virtual environment or install it in your default python environment. To use the conda virtual environment as defined in environment.yml in this git-repo: Install miniconda. Make sure that conda is on your path: Create the virtual environment from environment.yml: Activate the virtual environment: You should now have an (almost) working Airflow installation. Alternatively, install Airflow yourself by running: Airflow used to be packaged as airflow but is packaged as apache-airflow since version 1.8.1. Make sure that you install any extra packages with the right Python package: e.g. use pip install apache-airflow[dask] if you've installed apache-airflow and do not use pip install airflow[dask]. Leaving out the prefix apache- will install an old version of Airflow next to your current version, leading to a world of hurt. You may run into problems if you don't have the right binaries or Python packages installed for certain backends or operators. When specifying support for e.g. PostgreSQL when installing extra Airflow packages, make sure the database is installed; do a brew install postgresql or apt-get install postgresql before the pip install apache-airflow[postgres]. Similarly, when running into HiveOperator errors, do a pip install apache-airflow[hive] and make sure you can use Hive. Run Airflow Before you can use Airflow you have to initialize its database. The database contains information about historical & running workflows, connections to external data sources, user management, etc. Once the database is set up, Airflow's UI can be accessed by running a web server and workflows can be started. The default database is a SQLite database, which is fine for this tutorial. In a production setting you'll probably be using something like MySQL or PostgreSQL. You'll probably want to back it up as this database stores the state of everything related to Airflow. Airflow will use the directory set in the environment variable AIRFLOW_HOME to store its configuration and our SQlite database. This directory will be used after your first Airflow command. If you don't set the environment variable AIRFLOW_HOME, Airflow will create the directory ~/airflow/ to put its files in. Set environment variable AIRFLOW_HOME to e.g. your current directory $(pwd): or any other suitable directory. Next, initialize the database: Now start the web server and go to localhost:8080 to check out the UI: It should look something like this: With the web server running workflows can be started from a new terminal window. Open a new terminal, activate the virtual environment and set the environment variable AIRFLOW_HOME for this terminal as well: Make sure that you're an in the same directory as before when using $(pwd). Run a supplied example: And check in the web UI that it has run by going to Browse -> Task Instances. This concludes all the setting up that you need for this tutorial. Tips Both Python 2 and 3 are be supported by Airflow. However, some of the lesser used parts (e.g. operators in contrib) might not support Python 3. For more information on configuration check the sections on Configuration and Security of the Airflow documentation. Check the Airflow repository for upstart and systemd templates. Airflow logs extensively, so pick your log folder carefully. Set the timezone of your production machine to UTC: Airflow assumes it's UTC. Workflows We'll create a workflow by specifying actions as a Directed Acyclic Graph (DAG) in Python. The tasks of a workflow make up a Graph; the graph is Directed because the tasks are ordered; and we don't want to get stuck in an eternal loop so the graph also has to be Acyclic. The figure below shows an example of a DAG: The DAG of this tutorial is a bit easier. It will consist of the following tasks: print 'hello' wait 5 seconds print 'world and we'll plan daily execution of this workflow. Create a DAG file Go to the folder that you've designated to be your AIRFLOWHOME and find the DAGs folder located in subfolder dags/ (if you cannot find, check the setting dagsfolder in $AIRFLOW_HOME/airflow.cfg). Create a Python file with the name airflow_tutorial.py that will contain your DAG. Your workflow will automatically be picked up and scheduled to run. First we'll configure settings that are shared by all our tasks. Settings for tasks can be passed as arguments when creating them, but we can also pass a dictionary with default values to the DAG. This allows us to share default arguments for all the tasks in our DAG is the best place to set e.g. the owner and start date of our DAG. Add the following import and dictionary to airflow_tutorial.py to specify the owner, start time, and retry settings that are shared by our tasks: Configure common settings These settings tell Airflow that this workflow is owned by 'me', that the workflow is valid since June 1st of 2017, it should not send emails and it is allowed to retry the workflow once if it fails with a delay of 5 minutes. Other common default arguments are email settings on failure and the end time. Create the DAG We'll now create a DAG object that will contain our tasks. Name it airflowtutorialv01 and pass default_args: With schedule_interval='0 0 *' we've specified a run at every hour 0; the DAG will run each day at 00:00. See crontab.guru for help deciphering cron schedule expressions. Alternatively, you can use strings like '@daily' and '@hourly'. We've used a context manager to create a DAG (new since 1.8). All the tasks for the DAG should be indented to indicate that they are part of this DAG. Without this context manager you'd have to set the dag parameter for each of your tasks. Airflow will generate DAG runs from the startdate with the specified scheduleinterval. Once a DAG is active, Airflow continuously checks in the database if all the DAG runs have successfully ran since the start_date. Any missing DAG runs are automatically scheduled. When you initialize on 2016-01-04 a DAG with a startdate at 2016-01-01 and a daily scheduleinterval, Airflow will schedule DAG runs for all the days between 2016-01-01 and 2016-01-04. A run starts after the time for the run has passed. The time for which the workflow runs is called the execution_date. The daily workflow for 2016-06-02 runs after 2016-06-02 23:59 and the hourly workflow for 2016-07-03 01:00 starts after 2016-07-03 01:59. From the ETL viewpoint this makes sense: you can only process the daily data for a day after it has passed. This can, however, ask for some juggling with date for other workflows. For Machine Learning models you may want to use all the data up to a given date, you'll have to add the scheduleinterval to your executiondate somewhere in the workflow logic. Because Airflow saves all the (scheduled) DAG runs in its database, you should not change the startdate and scheduleinterval of a DAG. Instead, up the version number of the DAG (e.g. airflowtutorialv02) and avoid running unnecessary tasks by using the web interface or command line tools Timezones and especially daylight savings can mean trouble when scheduling things, so keep your Airflow machine in UTC. You don't want to skip an hour because daylight savings kicks in (or out). Create the tasks Tasks are represented by operators that either perform an action, transfer data, or sense if something has been done. Examples of actions are running a bash script or calling a Python function; of transfers are copying tables between databases or uploading a file; and of sensors are checking if a file exists or data has been added to a database. We'll create a workflow consisting of three tasks: we'll print 'hello', wait for 10 seconds and finally print 'world'. The first two are done with the BashOperator and the latter with the PythonOperator. Give each operator an unique task ID and something to do: Note how we can pass bash commands in the BashOperator and that the PythonOperator asks for a Python function that can be called. Dependencies in tasks are added by setting other actions as upstream (or downstream). Link the operations in a chain so that sleep will be run after printhello and is followed by printworld; printhello -> sleep -> printworld: After rearranging the code your final DAG should look something like: Test the DAG First check that DAG file contains valid Python code by executing the file with Python: You can manually test a single task for a given execution_date with airflow test: This runs the task locally as if it was for 2017-07-01, ignoring other tasks and without communicating to the database. Activate the DAG Now that you're confident that your dag works, let's set it to run automatically! To do so, the scheduler needs to be turned on; the scheduler monitors all tasks and all DAGs and triggers the task instances whose dependencies have been met. Open a new terminal, activate the virtual environment and set the environment variable AIRFLOW_HOME for this terminal, and type Once the scheduler is up and running, refresh the DAGs page in the web UI. You should see airflowtutorialv01 in the list of DAGs with an on/off switch next to it. Turn on the DAG in the web UI and sit back while Airflow starts backfilling the dag runs! Tips Make your DAGs idempotent: rerunning them should give the same results. Use the the cron notation for schedule_interval instead of @daily and @hourly. @daily and @hourly always run after respectively midnight and the full hour, regardless of the hour/minute specified. Manage your connections and secrets with the Connections and/or Variables. Exercises You now know the basics of setting up Airflow, creating a DAG and turning it on; time to go deeper! Change the interval to every 30 minutes. Use a sensor to add a delay of 5 minutes before starting. Implement templating for the BashOperator: print the executiondate instead of 'hello' (check out the original tutorial and the example DAG). Implement templating for the PythonOperator: print the executiondate with one hour added in the function printworld() (check out the documentation of the PythonOperator). Resources Data Pipelines with Apache Airflow Airflow documentation ETL best practices with Airflow Airflow: Tips, Tricks, and Pitfalls Kubernetes Custom controller for deploying Airflow

coursera-practical-data-science-specialization
github
LLM Vibe Score0.465
Human Vibe Score0.0230635140825568
honghanhhOct 9, 2024

coursera-practical-data-science-specialization

Solutions on Practical Data Science Specialization Access all courses in the Coursera Practical Data Science Specialization Specialization offered by deeplearning.ai. This repo contains the SOLUTIONS of exercises/labs to achieve the badge. Course keynotes and solutions of related quizzes, assignments Practical Data Science Specialization on Coursera contains three courses: Course 1: Analyze Datasets and Train ML Models using AutoML Week 1: Artificial Intelligence (AI) mimics human behavior. Machine Learning (ML) is a subset of AI that uses statistical methods and algorithms that are able to learn from data without being explicitly programmed. Deep learning (DL) is a subset of machine learning that uses artificial neural networks to learn from data. AWS SageMaker --> [x] Practice Quiz: Week 1. [x] Graded External Tool: Register and visualize dataset. Week 2: Statistical Bias: Training data does not comprehensively represent the underlying problem space. Statistical Bias Causes: Activity Bias, Societal Bias, Selection Bias, Data Drift/Shift, ... Class Imbalance (CI) measures the imbalance in the number of members between different facet values. Detecting Statistical Bias by AWS SageMaker DataWrangler and AWS SageMaker Clarify. Feature Importance explains the features that make up the training data using a score. How useful or valuable the feature is relative to other features? SHAP (SHapley Additive exPlanations) --> [x] Practice Quiz: Week 2. [x] Graded External Tool: Detect data bias with Amazon SageMaker Clarify. Week 3: Data Prepreration includes Ingesting & Analyzing, Prepraring & Transforming, Training & Tuning, and Deploying & Managing. AutoML aims at automating the process of building a model. Model Hosting. --> [x] Practice Quiz: Week 3. [x] Graded External Tool: Train a model with Amazon SageMaker Autopilot. Week 4: Built-in Alogrithms in AWS SageMaker supports Classification, Regression, and Clustering problems. Text Analysis Evolution: Word2Vec (CBOW & Skip-gram), GloVe, FastText, Transformer, BlazingText, ELMo, GPT, BERT, ... --> [x] Practice Quiz: Week 4. [x] Graded External Tool: Train a text classifier using Amazon SageMaker BlazingText built-in algorithm. Course 2: Build, Train, and Deploy ML Pipelines using BERT Week 1 Feature Engineering involves converting raw data from one or more sources into meaningful features that can be used for training machine learning models. Feature Engineering Step includes feature selection, creation, and transformation. BERT is Transformer-based pretrained language models that sucessfully capture bidirectional contexts in word representation. Feature Store: centralized, reusable, discoverable. --> [x] Practice Quiz: Week 1. [x] Graded External Tool: Feature transformation with Amazon SageMaker processing job and Feature Store. Week 2 Learn how to train a customized Pretrained BERT and its variant models, debug, and profile with AWS SageMaker. --> [x] Practice Quiz: Week 2. [x] Graded External Tool: Train a review classifier with BERT and Amazon SageMaker. Week 3 MLOps builds on DevOps practices that encompass people, process, and technology. MLOps also includes considerations and practices that are really unique to machine learning workloads. --> [x] Practice Quiz: Week 3. [x] Graded External Tool: SageMaker pipelines to train a BERT-Based text classifier. Course 3: Optimize ML Models and Deploy Human-in-the-Loop Pipelines Week 1 Model Tuning aims to fit the model to the underlying data patterns in your training data and learn the best possible parameters for your model. Automatic Model Tuning includes grid search, random search, bayesian optimization, hyperband. Challenges: checkpointing, distribution training strategy. --> [x] Practice Quiz: Week 1. [x] Graded External Tool: Optimize models using Automatic Model Tuning. Week 2 [x] Practice Quiz: Week 2. [x] Graded External Tool: A/B testing, traffic shifting and autoscaling. Week 3 [x] Practice Quiz: Week 3. [x] Graded External Tool: Data labeling and human-in-the-loop pipelines with Amazon Augmented AI (A2I). Disclaimer The solutions here are ONLY FOR REFERENCE to guide you if you get stuck somewhere. Highly recommended to try out the quizzes and assignments yourselves first before referring to the solutions here. Feel free to discuss further with me on .