theinformation.com/articles/why-youtube-could-give-google-an-edge-in-ai
Summarize this contents and derive key insights as a ai related startup founder and investor via Perplexity copilot feature.
#1 As an AI startup founder and investor, here are some key insights from the provided search results:
Google's ownership of YouTube could give it an edge in AI. YouTube is the single biggest and richest source of imagery, audio, and text transcripts on the internet, and Google's researchers have been using it to develop its next large-language model, Gemini. OpenAI has also secretly used data from YouTube to train some of its AI models.
#2 Open-source AI is gaining on Google and ChatGPT. Meta Platforms gave academics access to sophisticated machine-learning models that can understand conversational language, which they turned into open-source software that powered free alternatives to ChatGPT and other proprietary AI software. Free AI models are now "reasonably close" in performance to proprietary models from Google and ChatGPT creator OpenAI, and most software developers will eventually opt to use the free ones
#3 Google and DeepMind are working together to develop software to compete with OpenAI. Known internally as Gemini, the joint effort began in recent weeks, after Google stumbled with Bard, its first attempt to compete with OpenAI's chatbot
#4 Generative AI startups need their own data. Google, Amazon, Meta Platforms, and Microsoft are jostling to develop products that use generative AI. Startups such as Descript, which uses generative artificial intelligence to shortcut the laborious video-editing process, are trying to immunize themselves from looming big tech competition
#5 The European antitrust case against Google might or might not matter. The Europeans have concluded, in a preliminary way, that Google favors its own "online display advertising technology services to the detriment of competing providers". This is no small matter, as Google controls the tools most commonly used by both websites selling ad space and marketers buying ad space on websites across the internet. However, it remains to be seen whether this case will have a significant impact on Google's AI-related activities.
#6 Google is preparing to teach foreign languages through Google Search. The project, referred to internally as Tivoli, grew out of its Google Research unit and is likely to be rolled out later this year.
#7 The creator economy is facing challenges and opportunities with AI. Dmitry Shapiro and Sean Thielen, the co-founders of a startup that developed Koji, a tool that offers link-in-bio landing pages to house creators' digital storefronts, are planning to focus on a new AI product they're developing called YouAI. However, venture capitalists such as Ben Mathews are predicting a wave of failures among creator economy startups as they run out of cash
Summarize this contents and derive key insights as a ai related startup founder and investor via Perplexity copilot feature.
#1 As an AI startup founder and investor, here are some key insights from the provided search results:
Google's ownership of YouTube could give it an edge in AI. YouTube is the single biggest and richest source of imagery, audio, and text transcripts on the internet, and Google's researchers have been using it to develop its next large-language model, Gemini. OpenAI has also secretly used data from YouTube to train some of its AI models.
#2 Open-source AI is gaining on Google and ChatGPT. Meta Platforms gave academics access to sophisticated machine-learning models that can understand conversational language, which they turned into open-source software that powered free alternatives to ChatGPT and other proprietary AI software. Free AI models are now "reasonably close" in performance to proprietary models from Google and ChatGPT creator OpenAI, and most software developers will eventually opt to use the free ones
#3 Google and DeepMind are working together to develop software to compete with OpenAI. Known internally as Gemini, the joint effort began in recent weeks, after Google stumbled with Bard, its first attempt to compete with OpenAI's chatbot
#4 Generative AI startups need their own data. Google, Amazon, Meta Platforms, and Microsoft are jostling to develop products that use generative AI. Startups such as Descript, which uses generative artificial intelligence to shortcut the laborious video-editing process, are trying to immunize themselves from looming big tech competition
#5 The European antitrust case against Google might or might not matter. The Europeans have concluded, in a preliminary way, that Google favors its own "online display advertising technology services to the detriment of competing providers". This is no small matter, as Google controls the tools most commonly used by both websites selling ad space and marketers buying ad space on websites across the internet. However, it remains to be seen whether this case will have a significant impact on Google's AI-related activities.
#6 Google is preparing to teach foreign languages through Google Search. The project, referred to internally as Tivoli, grew out of its Google Research unit and is likely to be rolled out later this year.
#7 The creator economy is facing challenges and opportunities with AI. Dmitry Shapiro and Sean Thielen, the co-founders of a startup that developed Koji, a tool that offers link-in-bio landing pages to house creators' digital storefronts, are planning to focus on a new AI product they're developing called YouAI. However, venture capitalists such as Ben Mathews are predicting a wave of failures among creator economy startups as they run out of cash
The Information
Why YouTube Could Give Google an Edge in AI
Google last month upgraded its Bard chatbot with a new machine-learning model that can better understand conversational language and compete with OpenAIβs ChatGPT. As Google develops a sequel to that model, it may hold a trump card: YouTube. The video siteβ¦
Continuous Learning_Startup & Investment
https://youtu.be/rYVPDQfRcL0
AMD has revealed the Mi 300X chip, which has an industry-leading 192 GB memory capacity, 5.2 TB per second memory bandwidth, and is designed for generative AI. It reduces the number of GPUs required and development time needed for deploying the Mi 300X while accelerating customers' time to market, reducing overall development costs and making deployment effortless. The Mi 300A is currently being sampled while the Mi 300X and eight GPU Instinct platform will begin sampling in Q3, with production expected in Q4 of this year.
Continuous Learning_Startup & Investment
https://youtu.be/ltQ9pbFukUo
Chris Lattner and Lex Fridman discuss the potential of large language models (LLMS) in programming, including their ability to predict and generate code. While LLMS can automate mechanical aspects of coding, it is not a replacement for programmers but a helpful complementary tool. The discussion also covers the potential for LLMS to improve productivity and learn different programming languages. Lattner notes that LLMS can be used for documentation and inspiration, but creating reliable scale systems should focus on algebraic reasoning and creating different nets to implement code rather than expensive LLMS.
Whenever I use an AI product that offers a great user experience, I ask myself: "How the F#π€¬ did they do it?"
And if the product is open source, I dive deep into the code, the logic, and of course, the almighty prompt.
Today, I was exploring Bamboo AI, a tool that analyzes data using natural language processing.
Being the curious geek that I am, I dove deep into the prompt to see how it was engineered and to see what types of techniques I could pick up to make my own prompts better.
And in this tweet, I will do my best to reverse engineer the prompt into its building blocks.
Feel free to bookmark this tweet for later reference. I've broken down the prompt into simple pieces for you to replicate if you want.
PS: A (slighlty reduced) snippet of the prompt is attached on the images for reference.
And if the product is open source, I dive deep into the code, the logic, and of course, the almighty prompt.
Today, I was exploring Bamboo AI, a tool that analyzes data using natural language processing.
Being the curious geek that I am, I dove deep into the prompt to see how it was engineered and to see what types of techniques I could pick up to make my own prompts better.
And in this tweet, I will do my best to reverse engineer the prompt into its building blocks.
Feel free to bookmark this tweet for later reference. I've broken down the prompt into simple pieces for you to replicate if you want.
PS: A (slighlty reduced) snippet of the prompt is attached on the images for reference.
Here's what I found:
1. Role
The prompt starts by declaring a clearly defined role for the AI. Most prompts do this, as this has become a standard best practice.
2. Goal
A clearly defined goal on top of the role allows the AI to act in accordance to it. Nothing extraordinary with this prompt until now.
The problem is that most people stop crafting their prompts here, and then wonder why their outputs are useless and random more often than not.
3. Clearly defined input
The prompt clearly states what is the expected input the AI will receive.
This part of the prompt is often overlooked, but I've found it greatly reduces the randomness of the output.
4. Clearly Defined output
Similarly, clearly going over the expected output in minute detail will help steer the model in the exact direction that you want.
This will allow you to pinpoint exactly what it should do, and on top of that, will reduce the need for revisions.
Again, most people never even get to this point and then wonder why the AI never gets them right.
Of course it doesn't; it won't get you right if you haven't told it what to do.
5. Revisions
The prompt clearly states that revisions are to be expected and the output probably won't be the final one.
Once again, clearly stating what can happen during the actual use of this tool.
6. Input example
On top of clearly defining what input to expect, the prompt also shows an input example.
"Show, don't just tell" is a good principle to keep in mind when prompting.
This will greatly reduce the randomness of the model and make for more accurate outputs.
7. Output example
Stating the examples of the output is equally important.
This will allow the model to pick up on the input -> output pattern and make its answers way more relevant, contextual and useful.
See a pattern here?
Clearly state what the AI should do and what to expect.
Don't leave it to chance if you want your outputs to be reliable and useful.
And now that we have reverse engineered how this prompt works, you will hopefully have ideas on how to improve your own prompts.
I sure did.
https://twitter.com/Luc_AI_Insights/status/1668792631806050304?s=20
1. Role
The prompt starts by declaring a clearly defined role for the AI. Most prompts do this, as this has become a standard best practice.
2. Goal
A clearly defined goal on top of the role allows the AI to act in accordance to it. Nothing extraordinary with this prompt until now.
The problem is that most people stop crafting their prompts here, and then wonder why their outputs are useless and random more often than not.
3. Clearly defined input
The prompt clearly states what is the expected input the AI will receive.
This part of the prompt is often overlooked, but I've found it greatly reduces the randomness of the output.
4. Clearly Defined output
Similarly, clearly going over the expected output in minute detail will help steer the model in the exact direction that you want.
This will allow you to pinpoint exactly what it should do, and on top of that, will reduce the need for revisions.
Again, most people never even get to this point and then wonder why the AI never gets them right.
Of course it doesn't; it won't get you right if you haven't told it what to do.
5. Revisions
The prompt clearly states that revisions are to be expected and the output probably won't be the final one.
Once again, clearly stating what can happen during the actual use of this tool.
6. Input example
On top of clearly defining what input to expect, the prompt also shows an input example.
"Show, don't just tell" is a good principle to keep in mind when prompting.
This will greatly reduce the randomness of the model and make for more accurate outputs.
7. Output example
Stating the examples of the output is equally important.
This will allow the model to pick up on the input -> output pattern and make its answers way more relevant, contextual and useful.
See a pattern here?
Clearly state what the AI should do and what to expect.
Don't leave it to chance if you want your outputs to be reliable and useful.
And now that we have reverse engineered how this prompt works, you will hopefully have ideas on how to improve your own prompts.
I sure did.
https://twitter.com/Luc_AI_Insights/status/1668792631806050304?s=20
Twitter
Whenever I use an AI product that offers a great user experience, I ask myself: "How the F#π€¬ did they do it?"
And if the product is open source, I dive deep into the code, the logic, and of course, the almighty prompt.
Today, I was exploring Bamboo AI,β¦
And if the product is open source, I dive deep into the code, the logic, and of course, the almighty prompt.
Today, I was exploring Bamboo AI,β¦
I'm rlly inspired by ambitious projects that were built fast:
> The Eiffel Tower. (2 yrs)
> Disneyland (366 d)
> Empire State (410 d)
> Javascript (10 d)
> iPod (290 d)
> Amazon Prime (42 d)
> Git (17 d)
> Xerox Alto (120 d)
blog post by
@patrickc
: https://patrickcollison.com/fast
https://twitter.com/pwang_szn/status/1668921295457894401?s=20
> The Eiffel Tower. (2 yrs)
> Disneyland (366 d)
> Empire State (410 d)
> Javascript (10 d)
> iPod (290 d)
> Amazon Prime (42 d)
> Git (17 d)
> Xerox Alto (120 d)
blog post by
@patrickc
: https://patrickcollison.com/fast
https://twitter.com/pwang_szn/status/1668921295457894401?s=20
Twitter
I'm rlly inspired by ambitious projects that were built fast:
> The Eiffel Tower. (2 yrs)
> Disneyland (366 d)
> Empire State (410 d)
> Javascript (10 d)
> iPod (290 d)
> Amazon Prime (42 d)
> Git (17 d)
> Xerox Alto (120 d)
blog post by @patrickc: httβ¦
> The Eiffel Tower. (2 yrs)
> Disneyland (366 d)
> Empire State (410 d)
> Javascript (10 d)
> iPod (290 d)
> Amazon Prime (42 d)
> Git (17 d)
> Xerox Alto (120 d)
blog post by @patrickc: httβ¦
https://www.nea.com/blog/4-trends-for-ai-startups-and-generative-ai-companies
Key Insights for Preparing AI-Related Service
#1 Generative AI is changing the rules of company building. Generative AI is a new technology that allows machines to create new content, such as images, videos, and text, that is similar to human-generated content. This technology is changing the way companies are built, and entrepreneurs need to be aware of this trend to stay competitive.
#2 Speed is critical in hiring talent for AI startups. The demand for AI talent is high, and startups need to act fast to hire the right people. Instead of relying on recruiters and culture-fit discussions, startups can take a more straightforward approach to hiring talent.
#3AI startups need to focus on solving real-world problems. AI startups should focus on solving real-world problems, such as improving healthcare, transportation, and education. By focusing on these problems, startups can create value for their customers and make a positive impact on society.
#4 Collaboration is key to success in the AI industry. Collaboration between AI startups, established companies, and academic institutions is essential for success in the AI industry. By working together, companies can share knowledge, resources, and expertise to create innovative solutions.
In summary, entrepreneurs who are preparing AI-related services should be aware of the emerging trends in the AI industry. They should focus on solving real-world problems, act fast in hiring talent, and collaborate with other companies and institutions to create innovative solutions. By following these trends, entrepreneurs can stay competitive and create value for their customers.
Key Insights for Preparing AI-Related Service
#1 Generative AI is changing the rules of company building. Generative AI is a new technology that allows machines to create new content, such as images, videos, and text, that is similar to human-generated content. This technology is changing the way companies are built, and entrepreneurs need to be aware of this trend to stay competitive.
#2 Speed is critical in hiring talent for AI startups. The demand for AI talent is high, and startups need to act fast to hire the right people. Instead of relying on recruiters and culture-fit discussions, startups can take a more straightforward approach to hiring talent.
#3AI startups need to focus on solving real-world problems. AI startups should focus on solving real-world problems, such as improving healthcare, transportation, and education. By focusing on these problems, startups can create value for their customers and make a positive impact on society.
#4 Collaboration is key to success in the AI industry. Collaboration between AI startups, established companies, and academic institutions is essential for success in the AI industry. By working together, companies can share knowledge, resources, and expertise to create innovative solutions.
In summary, entrepreneurs who are preparing AI-related services should be aware of the emerging trends in the AI industry. They should focus on solving real-world problems, act fast in hiring talent, and collaborate with other companies and institutions to create innovative solutions. By following these trends, entrepreneurs can stay competitive and create value for their customers.
Nea
4 Trends for AI Startups and Generative AI Companies
(4 EMERGING TRENDS) As generative AI explodes the company-building rules, founders identify trends for AI startups and generative AI companies
Forwarded from BZCF | λΉμ¦κΉν
https://freebutdeep.substack.com/
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Substack
freebutdeep's thoughts | woogeun | Substack
deal with uncertainties. Click to read freebutdeep's thoughts, by woogeun, a Substack publication with hundreds of subscribers.
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https://lnkd.in/gDB7Juxr
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λ€λ§, μ§μ μ₯λ²½μ μ μλ₯Ό, 1) νμ¬ λλΉ μ°λ¦¬ μλΉμ€κ° μ§λλ μ°¨λ³μ κ²½μμ°μ, 2) νμ¬κ° μ§μ λͺ»νκ² λ§λ, μ°λ¦¬ νμ¬λ§μ λ μ μ κΈ°μ /νΉνλ‘ μ μνλ κ²μ, ν IT μ μμλ 100% λΆν©νμ§λ μλλ€.
λ―Έκ΅μμ λ§λ νλ₯ν μλΉμ€λ₯Ό μΌκ΅° λΆλ€μ 곡ν΅μ μ, κ·Έ λ¨Έλ¦Ώμμ κ²½μμ¬ λλΉ μ°¨λ³μ κ²½μμ°μ & μ§μ μ₯λ²½μ΄λΌλ 컨μ μ΄ λ³λ‘ μλ€. (μ μ΄λ MBA μμ μ μ€μ ¨λ λΆλ€μ μ΄μΌκΈ°λ₯Ό μ λ€μ΄λ΄€μ λ κ·Έλ κ³ , νμ§μμ λννλ λΆλ€μ μ΄μΌκΈ° κ²½μ² μ κ·Έλ λ€).
κ·Έλ€μ λ§μμμ μλ λ κ°μ§ ν€μλλ, μ μ , κ·Έλ¦¬κ³ νμ΄λ€. μ μ μ λ§μ‘±μ μν΄ Day 1μ λ§μμΌλ‘ λ μ μ°©κ°μ΄ μ΅μ μ λ€νλ κ², κ·Έλ¦¬κ³ Day 1μ λ§μμΌλ‘ μμ§μ΄λ νμ λλλ μ€λ μ μ§νλ κ²μ΄, μλν κΈ°μ μ μΌκ΅° μ°½μ κ°λ€μ΄ 곡ν΅μ μΌλ‘ κ°μ‘°νλ λΆλΆμ΄λ€. (μ°λ²λ μ΄λ°μ μ§μ μ₯λ²½μ΄ μμμκΉ? μμ΄λΉμλΉλ μλν B2B SaaS νμ¬λ€μ κ·Έλ¬νμκΉ? κ·Έλ€μ΄ λ§λ scale μ΄ μ§μ μ₯λ²½μΌ μ μλλ°, κ·Έ scale μ IP κ° μλ μ§μ°©κ³Ό λ Έλ ₯μ μκ°μ΄ λ§λ€μ΄ μ€ μ°λ¬Όμ΄ μλκΉ? μ μ μ λν μ§μ°©μ΄ μ μ λ₯Ό μν μλΉμ€/κΈ°μ μ λ§λ€μ΄ λ΄κ³ , κ·Έ κΈ°μ /κΈ°λ₯μ΄ νν μΈμμ΄ νκ°νλ λ μ μ κΈ°μ μ΄μ§λ μμκΉ? κ·Έλ λ€λ©΄ κ·Έλ€μ μ§μ μ₯λ²½μ κ²°κ³Όλ‘ λ§λ€μ΄μ§ λ μ μ κΈ°μ μΌκΉ? μλλ©΄ κ·Έ κΈ°μ μ λ§λ€μ΄ λΈ νμ μ§μν¨μΌκΉ? ν λ νλ₯ν κΈ°μ μ΄, νμ΄ λ¬΄λμ§λ κ³Όμ μμ ν μκ°μ 무λμ§λ κ²μ 보면, market position μ μ§μΌμ£Όλ μμν κΈ°μ μ΄ μ‘΄μ¬νλ κ²μ΄ λ§λκ°? κ·Έλμ μλ§μ‘΄μ Day 1 μ κ°μ‘°νλ κ²μ΄ μλκΉ?)
νλ μ¬νμμλ μ°λ¦¬ μλΉμ€λ₯Ό μ’μν΄ μ£Όλ μ μ κ° λ§μμ§λ κ²μ΄ μ§μ μ₯λ²½μ΄κ³ μμ²κΈ°μ μ΄λ€. μ μ κ° μ°λ¦¬ μλΉμ€λ₯Ό μ’μν΄μ£Όλ μ΄μ λ, μ°λ¦¬ νμ¬κ° λ μ μ κΈ°μ , μ°¨λ³μ κ²½μμ°μλ₯Ό κ°μ§κ³ μμ΄μλΌκΈ° 보λ€λ... λ€μ λΆμ‘±ν μ μ΄ μμ΄λ (λ²κ·Έκ° μκ³ , λΆνΈν¨μ΄ μμ΄λ) μ μ μκ² μ΅μ μ λ€νκΈ° λλ¬Έμ΄λ€.
μ μ μκ² μ΅μ μ λ€νλ κ²μ΄ μ΄λ ΅λ? λλ¬ΌμΌλ©΄, "μ΄ μΈμμ λͺ¨λ νμ΄ μ μ μκ² λͺ λ κ° κΎΈμ€ν μ§μ¬μΌλ‘ μ΅μ μ λ€νλ νμ¬κ° μΌλ§λ μμκΉμ? κ·Έλ° κ²½ν μ΅κ·Όμ νμ μ μμΌμ€κΉμ?" "μ§κΈ κ·νμ νμ¬ μμ§μμ μ€λ‘μ§ μ μ λ§ λ°λΌλ³΄λ©° ν루λ₯Ό μ§μ€νκ³ μλμ? μ€νλ € λ§μνμλ λΆ (μ: μμ)μ λ°λ₯Ό λμκΉλ₯Ό λ κ³ λ―Όνκ³ μμ§λ μμκΉμ? κ·Έ κ³Όμ μμ λ μ’μ μ΄μ§μ κΈ°νλ₯Ό μμκΉ κ³ λ―Όνκ³ μλ λΆμ΄ μμ§λ μμκΉμ?"
μμ¦μ νΉνλ‘ κΈ°μ μ¬μ©μ λ§κΈ° 보λ€λ, open API λ‘ λ°°ν¬νλ μλμ΄λ€. κ²½μμ¬λ μ€νλ € μλ‘ λ€λ₯Έ μꡬμ μ κΈ°λ°μΌλ‘ ν¨κ» μ μ ν€μλκ°λ λκ°λ λλ£μΈ μλμ΄λ€. μ΄λ° μλμμμ ν΅μ¬μλ, μ°¨λ³μ κ²½μμ°μ, μ§μ μ₯λ²½μ, νμ¬κ° μ μνλ κ²μ΄ μλ μ μ κ° μ μν΄ μ£Όμκ³ μ΄ μ¬νμ μ μν΄ μ£Όλ κ²μ΄λ€. κ·Έκ²μ΄ tangible νκ°? μ€λν λ‘ μ§μλ μ μλκ°? 묻λλ€λ©΄, "κ·Έλμ νμ΄ μ€μνκ³ , λ¬Ένκ° μ€μνκ³ , λ§μκ°μ§μ΄ μ€μνκ³ , μ¬λμ΄ μ€μμν©λλ€. κ·Έ 루νκ° λ¬΄λμ§λ©΄ λ§μ κ²μ΄ 무λμ§λλ€" λΌκ³ λ§μλλ¦¬κ³ μΆλ€.
μ¬λμ μν μλΉμ€λ μ¬λμ΄ λ§λλ κ²μ΄λ€. κ·Έλ¦¬κ³ , μ¬λμ μ¬λμ μμλ³Έλ€.
https://lnkd.in/gDB7Juxr
Brunch Story
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μ₯λ²½μ΄ λ¬΄μμ
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μ κ°λ λ£λ μ§λ¬Έμ΄λ€. νΉνλ, κ³Όκ±° νΉνλ IP μ€μ¬μΌλ‘ μ§μ
μ₯λ²½μ μμμ€λ μμ μ λΉμ¦λμ€ νμλ λΆλ€μ, νΉν λ λ§μ΄ μ§λ¬Ένλ λΆλΆμ΄κΈ°λ νλ€. λλ κ³Όκ±° BCG μμ IP νλ‘μ νΈλ ν΄λ΄€μκΈ°μ, κ·Έ μ§λ¬Έμ΄ κ°μ§λ ν¨μλ₯Ό λλ¦ μ μ΄ν΄νκ³ μκΈ°λ νλ€. λ€λ§,
Continuous Learning_Startup & Investment
https://m.youtube.com/watch?v=CsruQYKISYI&feature=youtu.be
λΆνμ€μ± μμμ λΉ λ₯΄κ² μμ§μ΄κ³ λ°©ν₯μ μ°Ύμ λμκΈ° μν 10κ°μ§ λ°©λ² by Jeremy (Co-founder of Rippling and Director of Product Management at Coinbase)
π(κ΄κ³ ) Startup, Investment, Science, Life λ± λ€μν μ£Όμ μ κ΄μ¬μ΄ μλ€λ©΄: https://t.iss.one/+oonhLBMoVtdjNjI1
1. ν보λ€λ κΉμ΄: ν¨λ¦μ¨μ 리λκ° νλ μμν¬μ μμ‘΄ν기보λ€λ λ¬Έμ λ₯Ό κΉμ΄ νκ³ λ€μ΄ ν΄λΉ λΆμΌμ μ λ¬Έκ°κ° λ κ²μ κΆμ₯νμ΅λλ€.
2. λμ μ μΈ MVP μ¬κ³ λ°©μ: κ·Έλ μ΅μκΈ°λ₯μ ν(MVP) μ κ·Ό λ°©μμ΄ μ°½μμ±μ μ ννκ³ μλͺ»λ κΈ°μ μ κ²°μ μ λ΄λ¦΄ μ μλ€κ³ κ²½κ³ νμ΅λλ€. λΉμ₯ μ§μλμ§ μλλΌλ κ°μ₯ 볡μ‘ν μ¬μ© μ¬λ‘λ₯Ό λ¨Όμ μ€κ³νλ©΄ ν₯ν νμ₯μ±κ³Ό μ μμ±μ ν보ν μ μμ΅λλ€.
3. μκ·λͺ¨ νμ μν λͺ νν λ―Έμ : κ·Έλ λͺ νν λ―Έμ μ κ°μ§ μκ·λͺ¨ νμ μν©μ λ§λ μμ¬κ²°μ μ λ΄λ¦¬κ³ κ·λͺ¨μ λ§λ μλλ₯Ό μ μ§νλ©΄μ λ λΉ λ₯΄κ² λμν μ μλ€κ³ κ°μ‘°νμ΅λλ€. μ΄λ¬ν μ κ·Ό λ°©μμ μ½μΈλ² μ΄μ€μμ 40λ°° μ±μ₯νλ λμ κ·Έμ μ¬μ κΈ°κ° λμ μ€μν μν μ νμ΅λλ€.
4. νμ₯ μ΄μ μ΄ν΄: ν¨λ¦μ¨μ λ¬Έμ , κ³Όμ , μ±κ³΅μ μ΄ν΄νκΈ° μν΄ 'νμ₯μ ν'κ³Ό μ§μ μν΅νμ¬ μ΅κ³ μμ€μ μ ν κ²°μ μ΄ νμ₯μ νμ€κ³Ό μΌμΉνλλ‘ νλ κ²μ΄ μ€μνλ€λ μ λ μ 곡μ νμ΅λλ€.
5. λΉ λ₯΄κ² λ³ννλ λ¬Ένμ μμ¬ κ²°μ : ν¨λ¦μ¨μ 리νλ§μ λ¬Ένλ₯Ό λΉ λ₯Έ μμ¬ κ²°μ λ₯λ ₯μ΄ μꡬλλ 'μλ'μ λ¬ΈνλΌκ³ μ€λͺ νμ΅λλ€. μ΄λ₯Ό μν΄μλ μ°μ μμμ κ·Έλ μ§ μμ μ°μ μμλ₯Ό λͺ νν ν΄μΌ νλ©°, μ΄λ₯Ό ν΅ν΄ λͺ¨λ μ¬λμ΄ μμ μ μλμ μ΅λν λ°νν μ μμ΄μΌ ν©λλ€.
6. μ λ¬Έμ±κ³Ό λν μΌ μ€μ¬μ μ κ·Ό λ°©μ: κ·Έλ μ ν 리λκ° μ νμ μΈλΆ μ¬νμ λν μΈκ³μ μΈ μ λ¬Έκ°κ° λμ΄ λ§μ μ 보λ₯Ό ν‘μνκ³ λΆνμ€μ±μ νμνλ©° μμ¬ κ²°μ μ μμ κ°μ κ°μ ΈμΌ νλ€κ³ κ°μ‘°νμ΅λλ€.
7. νλ° μμ μκ°νκΈ°: κ·Έλ κΈλ‘λ² νμ₯μ μν κ³νμ μκ°λ³΄λ€ μΌμ° μΈμ°λ κ²μ΄ μ€μνλ€κ³ κ°μ‘°νμ΅λλ€. λͺ¨λ κ΅κ°λ κ³ μ ν νΉμ±μ κ°μ§κ³ μμΌλ―λ‘ λ―Έκ΅κ³Ό λμΌν μ κ·Ό λ°©μμ μ μ©νλ κ²μ ν¨κ³Όμ μ΄μ§ μμ μ μμ΅λλ€.
8. νλ μμν¬μ νλ‘μΈμ€: ν¨λ¦μ¨μ νλ μμν¬κ° λμμ΄ λ μ μμ§λ§ νμ νΉμ λΌμ΄νμ¬μ΄ν΄μ λ§κ² μ‘°μ λμ΄μΌ νλ€κ³ λ―Ώμ΅λλ€. νλ‘μΈμ€μ μ§λμΉκ² μμ‘΄νλ©΄ μ νμ λν κΉμ μ¬κ³ λ₯Ό λ°©ν΄ν μ μμ΅λλ€.
9. μ±μ© μ² ν: ν¨λ¦μ¨μ μ ν κ΄λ¦¬μλ₯Ό μ±μ©ν λ μ μ μ 민첩μ±κ³Ό ν΅μ°°λ ₯ μλ μ§λ¬Έμ μ€μνλ©°, ν° λΉμ¦λμ€ κ·Έλ¦Όκ³Ό μΈλΆμ μΈ μ§λ¬Έ λͺ¨λμ λν΄ μκ°ν μ μλ μ§μμμ μ€μμ±μ κ°μ‘°ν©λλ€. mental agility and insightful questioning, emphasizing the importance of candidates.
10. λΉμ¦λμ€ μ°μ μμμ 'λ¨νΈν¨(Imperatives)': 리νλ§μ λ€μ λΆκΈ° λλ 6κ°μ λμ μ°μ μμκ° μ§μ λ μ 무 λͺ©λ‘μΈ 'νμ κ³Όμ 'λ₯Ό λμ νμ΅λλ€. μ΄λ₯Ό ν΅ν΄ κ°λ³ ν λͺ©νμ μ€μν νμ¬ λͺ©ν μ¬μ΄μ κ· νμ μ μ§ν μ μμ΅λλ€.
π(κ΄κ³ ) Startup, Investment, Science, Life λ± λ€μν μ£Όμ μ κ΄μ¬μ΄ μλ€λ©΄: https://t.iss.one/+oonhLBMoVtdjNjI1
1. ν보λ€λ κΉμ΄: ν¨λ¦μ¨μ 리λκ° νλ μμν¬μ μμ‘΄ν기보λ€λ λ¬Έμ λ₯Ό κΉμ΄ νκ³ λ€μ΄ ν΄λΉ λΆμΌμ μ λ¬Έκ°κ° λ κ²μ κΆμ₯νμ΅λλ€.
2. λμ μ μΈ MVP μ¬κ³ λ°©μ: κ·Έλ μ΅μκΈ°λ₯μ ν(MVP) μ κ·Ό λ°©μμ΄ μ°½μμ±μ μ ννκ³ μλͺ»λ κΈ°μ μ κ²°μ μ λ΄λ¦΄ μ μλ€κ³ κ²½κ³ νμ΅λλ€. λΉμ₯ μ§μλμ§ μλλΌλ κ°μ₯ 볡μ‘ν μ¬μ© μ¬λ‘λ₯Ό λ¨Όμ μ€κ³νλ©΄ ν₯ν νμ₯μ±κ³Ό μ μμ±μ ν보ν μ μμ΅λλ€.
3. μκ·λͺ¨ νμ μν λͺ νν λ―Έμ : κ·Έλ λͺ νν λ―Έμ μ κ°μ§ μκ·λͺ¨ νμ μν©μ λ§λ μμ¬κ²°μ μ λ΄λ¦¬κ³ κ·λͺ¨μ λ§λ μλλ₯Ό μ μ§νλ©΄μ λ λΉ λ₯΄κ² λμν μ μλ€κ³ κ°μ‘°νμ΅λλ€. μ΄λ¬ν μ κ·Ό λ°©μμ μ½μΈλ² μ΄μ€μμ 40λ°° μ±μ₯νλ λμ κ·Έμ μ¬μ κΈ°κ° λμ μ€μν μν μ νμ΅λλ€.
4. νμ₯ μ΄μ μ΄ν΄: ν¨λ¦μ¨μ λ¬Έμ , κ³Όμ , μ±κ³΅μ μ΄ν΄νκΈ° μν΄ 'νμ₯μ ν'κ³Ό μ§μ μν΅νμ¬ μ΅κ³ μμ€μ μ ν κ²°μ μ΄ νμ₯μ νμ€κ³Ό μΌμΉνλλ‘ νλ κ²μ΄ μ€μνλ€λ μ λ μ 곡μ νμ΅λλ€.
5. λΉ λ₯΄κ² λ³ννλ λ¬Ένμ μμ¬ κ²°μ : ν¨λ¦μ¨μ 리νλ§μ λ¬Ένλ₯Ό λΉ λ₯Έ μμ¬ κ²°μ λ₯λ ₯μ΄ μꡬλλ 'μλ'μ λ¬ΈνλΌκ³ μ€λͺ νμ΅λλ€. μ΄λ₯Ό μν΄μλ μ°μ μμμ κ·Έλ μ§ μμ μ°μ μμλ₯Ό λͺ νν ν΄μΌ νλ©°, μ΄λ₯Ό ν΅ν΄ λͺ¨λ μ¬λμ΄ μμ μ μλμ μ΅λν λ°νν μ μμ΄μΌ ν©λλ€.
6. μ λ¬Έμ±κ³Ό λν μΌ μ€μ¬μ μ κ·Ό λ°©μ: κ·Έλ μ ν 리λκ° μ νμ μΈλΆ μ¬νμ λν μΈκ³μ μΈ μ λ¬Έκ°κ° λμ΄ λ§μ μ 보λ₯Ό ν‘μνκ³ λΆνμ€μ±μ νμνλ©° μμ¬ κ²°μ μ μμ κ°μ κ°μ ΈμΌ νλ€κ³ κ°μ‘°νμ΅λλ€.
7. νλ° μμ μκ°νκΈ°: κ·Έλ κΈλ‘λ² νμ₯μ μν κ³νμ μκ°λ³΄λ€ μΌμ° μΈμ°λ κ²μ΄ μ€μνλ€κ³ κ°μ‘°νμ΅λλ€. λͺ¨λ κ΅κ°λ κ³ μ ν νΉμ±μ κ°μ§κ³ μμΌλ―λ‘ λ―Έκ΅κ³Ό λμΌν μ κ·Ό λ°©μμ μ μ©νλ κ²μ ν¨κ³Όμ μ΄μ§ μμ μ μμ΅λλ€.
8. νλ μμν¬μ νλ‘μΈμ€: ν¨λ¦μ¨μ νλ μμν¬κ° λμμ΄ λ μ μμ§λ§ νμ νΉμ λΌμ΄νμ¬μ΄ν΄μ λ§κ² μ‘°μ λμ΄μΌ νλ€κ³ λ―Ώμ΅λλ€. νλ‘μΈμ€μ μ§λμΉκ² μμ‘΄νλ©΄ μ νμ λν κΉμ μ¬κ³ λ₯Ό λ°©ν΄ν μ μμ΅λλ€.
9. μ±μ© μ² ν: ν¨λ¦μ¨μ μ ν κ΄λ¦¬μλ₯Ό μ±μ©ν λ μ μ μ 민첩μ±κ³Ό ν΅μ°°λ ₯ μλ μ§λ¬Έμ μ€μνλ©°, ν° λΉμ¦λμ€ κ·Έλ¦Όκ³Ό μΈλΆμ μΈ μ§λ¬Έ λͺ¨λμ λν΄ μκ°ν μ μλ μ§μμμ μ€μμ±μ κ°μ‘°ν©λλ€. mental agility and insightful questioning, emphasizing the importance of candidates.
10. λΉμ¦λμ€ μ°μ μμμ 'λ¨νΈν¨(Imperatives)': 리νλ§μ λ€μ λΆκΈ° λλ 6κ°μ λμ μ°μ μμκ° μ§μ λ μ 무 λͺ©λ‘μΈ 'νμ κ³Όμ 'λ₯Ό λμ νμ΅λλ€. μ΄λ₯Ό ν΅ν΄ κ°λ³ ν λͺ©νμ μ€μν νμ¬ λͺ©ν μ¬μ΄μ κ· νμ μ μ§ν μ μμ΅λλ€.
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Continuous Learning_Startup & Investment
We journey together through the captivating realms of entrepreneurship, investment, life, and technology. This is my chronicle of exploration, where I capture and share the lessons that shape our world. Join us and let's never stop learning!
Within the paper, the authors reveal the professions in which 100% of the work will be impacted by LLMs : mathematicians, tax preparation, financial analysts, writers, & web designers. Insurance appraisers, financial managers, & search marketing strategists will see less than 15% of their work impacted by AI.
What do you think? Will large-language models produce greater productivity gains than the personal computer?
https://tomtunguz.com/llm-impact-gdp/
What do you think? Will large-language models produce greater productivity gains than the personal computer?
https://tomtunguz.com/llm-impact-gdp/
Tomasz Tunguz
Are We Being Railroaded by AI?
AI infrastructure spending hits $500B in 2024, ranking as the sixth-largest investment in US history. Projected to reach $983B by 2030, surpassing the New Deal but falling short of the railroad era's 6% of GDP peak.
The appeal of AI isnβt just the technology.
Rather, potential astronomical revenue growth fuels valuations by bringing software to new categories & by serving new unmet interest & voracious demand.
The businesses capturing that demand will command massive valuation premiums.
Even with an AI moniker adorning the pitch deck, a software company is a software company.
https://www.linkedin.com/pulse/does-ai-premium-exist-fundraising-market-tomasz-tunguz[β¦]9uifaGFiA%253D%253D/?trackingId=dndFk7IhRimb19uifaGFiA%3D%3D
Rather, potential astronomical revenue growth fuels valuations by bringing software to new categories & by serving new unmet interest & voracious demand.
The businesses capturing that demand will command massive valuation premiums.
Even with an AI moniker adorning the pitch deck, a software company is a software company.
https://www.linkedin.com/pulse/does-ai-premium-exist-fundraising-market-tomasz-tunguz[β¦]9uifaGFiA%253D%253D/?trackingId=dndFk7IhRimb19uifaGFiA%3D%3D
https://www.linkedin.com/pulse/what-every-saas-app-spoke-english-tomasz-tunguz%3FtrackingId=Mob7bZWUSbulj2X%252BlgpMfg%253D%253D/?trackingId=Mob7bZWUSbulj2X%2BlgpMfg%3D%3D
μ΄λ² μ£Όμ Hubspotμμ μμ 10λͺ μ νμ₯ 리λλ₯Ό μ°Ύμ λ€μ, κ° λ¦¬λμ λ‘κ³ λ₯Ό μμ§νκ³ Adobe Fireflyμμ κ²½μ£Όμ© μλμ°¨μ νμ¬ λ‘κ³ κ° μλ μ΄λ―Έμ§λ₯Ό λ§λ€μ΄ μ΄λ©μΌμ μ²¨λΆ νμΌλ‘ 첨λΆν©λλ€. κ·Έλ° λ€μ κ³ κ° μ§μ ν°μΌμ λ°μ΄ν°λ₯Ό μ¬μ©νμ¬ κ° μ μ¬ κ³ κ°μκ² μ΄λ©μΌ μ΄μμ μμ±νκ³ λ΄ μ΄μ ν΄λμ μ μ₯ν©λλ€.
첫째, λ°μ΄ν° 보μ λ° λ°μ΄ν° μμ€ λ°©μ§μ λλ€. 보μ μ± μμλ μν¬νλ‘κ° μΉμΈλ μ¬λμ μν΄, νμ©λ λ°μ΄ν°μ λν΄, μΉμΈλ λͺ¨λΈμ μ¬μ©νμ¬ μ€νλκ³ , κ·Έ νλ‘μΈμ€κ° κ΅μ λ°μ΄ν° κ·μ μ μ€μνλμ§ μ΄λ»κ² 보μ₯ν μ μμκΉμ?
λμ§Έ, μμ΄ API(μΌλͺ LLM)λ νλ₯ μ μ λλ€. μ¬λμ²λΌ μ€μλ₯Ό ν μ μμ΅λλ€. μ μ¬μ μ€λ₯λ μ¬κ°ν μ μμ΅λλ€(λͺ¨λ Hubspot CRM λ μ½λμ μμ μλ₯Ό νμ¬ μ¬μ©μλ‘ μ λ°μ΄νΈνλ€κ³ μμν΄ λ³΄μΈμ). λͺ¨λν°λ§, ν μ€νΈ λ° λ‘€λ°±/μ€ν μ·¨μ λ²νΌμ΄ λ§€μ° μ€μν©λλ€.
μ§λ μμ λ λμ κ°λ°μλ€μ μ½λ 리뷰, ν μ€νΈ, λͺ¨λν°λ§, 격리 λ± μ½λλ₯Ό μν΄ μ΄μ κ°μ μμ€ν μ ꡬμΆν΄ μμ΅λλ€. νμ¬μ λͺ¨λ μ¬λμ΄ μμ°μ΄ APIλ₯Ό ν΅ν΄ μννΈμ¨μ΄λ₯Ό μ€μΌμ€νΈλ μ΄μ ν μ μκ² λλ€λ©΄ μ ν리μΌμ΄μ κ°λ°μ μν λλ±ν λꡬλ νμν κ²μ λλ€.
λͺ¨λΈ λ° μ μ΄κ° κ°μ λ¨μ λ°λΌ μμ°μ΄ APIλ₯Ό ν΅ν SaaS μ€μΌμ€νΈλ μ΄μ μ μμ°μ±μ ν¬κ² ν₯μμν¬ κ²μ λλ€.
μ΄λ² μ£Όμ Hubspotμμ μμ 10λͺ μ νμ₯ 리λλ₯Ό μ°Ύμ λ€μ, κ° λ¦¬λμ λ‘κ³ λ₯Ό μμ§νκ³ Adobe Fireflyμμ κ²½μ£Όμ© μλμ°¨μ νμ¬ λ‘κ³ κ° μλ μ΄λ―Έμ§λ₯Ό λ§λ€μ΄ μ΄λ©μΌμ μ²¨λΆ νμΌλ‘ 첨λΆν©λλ€. κ·Έλ° λ€μ κ³ κ° μ§μ ν°μΌμ λ°μ΄ν°λ₯Ό μ¬μ©νμ¬ κ° μ μ¬ κ³ κ°μκ² μ΄λ©μΌ μ΄μμ μμ±νκ³ λ΄ μ΄μ ν΄λμ μ μ₯ν©λλ€.
첫째, λ°μ΄ν° 보μ λ° λ°μ΄ν° μμ€ λ°©μ§μ λλ€. 보μ μ± μμλ μν¬νλ‘κ° μΉμΈλ μ¬λμ μν΄, νμ©λ λ°μ΄ν°μ λν΄, μΉμΈλ λͺ¨λΈμ μ¬μ©νμ¬ μ€νλκ³ , κ·Έ νλ‘μΈμ€κ° κ΅μ λ°μ΄ν° κ·μ μ μ€μνλμ§ μ΄λ»κ² 보μ₯ν μ μμκΉμ?
λμ§Έ, μμ΄ API(μΌλͺ LLM)λ νλ₯ μ μ λλ€. μ¬λμ²λΌ μ€μλ₯Ό ν μ μμ΅λλ€. μ μ¬μ μ€λ₯λ μ¬κ°ν μ μμ΅λλ€(λͺ¨λ Hubspot CRM λ μ½λμ μμ μλ₯Ό νμ¬ μ¬μ©μλ‘ μ λ°μ΄νΈνλ€κ³ μμν΄ λ³΄μΈμ). λͺ¨λν°λ§, ν μ€νΈ λ° λ‘€λ°±/μ€ν μ·¨μ λ²νΌμ΄ λ§€μ° μ€μν©λλ€.
μ§λ μμ λ λμ κ°λ°μλ€μ μ½λ 리뷰, ν μ€νΈ, λͺ¨λν°λ§, 격리 λ± μ½λλ₯Ό μν΄ μ΄μ κ°μ μμ€ν μ ꡬμΆν΄ μμ΅λλ€. νμ¬μ λͺ¨λ μ¬λμ΄ μμ°μ΄ APIλ₯Ό ν΅ν΄ μννΈμ¨μ΄λ₯Ό μ€μΌμ€νΈλ μ΄μ ν μ μκ² λλ€λ©΄ μ ν리μΌμ΄μ κ°λ°μ μν λλ±ν λꡬλ νμν κ²μ λλ€.
λͺ¨λΈ λ° μ μ΄κ° κ°μ λ¨μ λ°λΌ μμ°μ΄ APIλ₯Ό ν΅ν SaaS μ€μΌμ€νΈλ μ΄μ μ μμ°μ±μ ν¬κ² ν₯μμν¬ κ²μ λλ€.
Forwarded from μ μ’
νμ μΈμ¬μ΄νΈ
"Thanks to the astonishing growth in the capabilities of generative AI, we believe SaaS is now entering its fourth generation: a system of cognition."
https://medium.com/lightspeed-venture-partners/saas-4-0-say-hello-to-the-era-of-cognition-cb22d549b460
https://medium.com/lightspeed-venture-partners/saas-4-0-say-hello-to-the-era-of-cognition-cb22d549b460