Continuous Learning_Startup & Investment
Open in Telegram
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!
Show more2 287
Subscribers
-324 hours
-167 days
-4530 days
Posts Archive
next up is @DedyKredo LIVE CODING a full test suite, making code changes, and automating commit and PR review, all assisted by @CodiumAI . audible βwhat the fuckβ from @eugeneyan.
youtube.com/live/qw4PrtyvJβ¦
ends with a powerful message for Israel. we stand with you @itamar_mar.
itβs official - I think GitHub Copilot is the first* generative AI product to publicly claim theyβve passed $100m ARR β enough to stand alone as a publicly listed company
Whenever people ask me βis AI a fadβ the biggest thing I point to is βfollow the moneyβ:
- revenue, not just funding
- RECURRING, not tcosts on hype
- people publicly saying theyβd pay 5x the cost
(*thereβs likely a few others but none confirmed officially - see Anatomy of Autonomy post on @latentspacepod)
βThe question we always focus on is βcan this company become a monopoly?ββ
He then lists several things that can make a company a monopoly:
Super fast distribution on a very thin product (e.g. Twitter)
A technological advantage that is continually built upon: you come up with something new and steadily improve (e.g. enterprise SaaS software)
A truly brilliant breakthrough (e.g. Bitcoin)
However he argues that complex coordinationβwhere you take a lot of little pieces and coordinate them into something newβis continually overlooked as a way to create a monopoly:
βThis is the thing thatβs maybe 180 degrees antithetical to the Lean Startup ethos. Itβs complicated. You have to put all the pieces together in just the right way. I think this is on some level what really drove Apple as an innovative company in the last decadeβ¦ What was new about the iPhone? There was no single component that was new. It was just that you put all of these things together in just the right wayβ¦ and once you built it, it was actually super hard for people to replicate. You had an advantage for many years. You could get network lock inβin terms of the app community or the brand.β
He also points to Tesla and SpaceX as examples:
βThereβs no component to the Tesla thatβs actually that new. Itβs just that you put all of the pieces together. You re-engineered the whole distributor network. It was this complex coordination that made it work. Thereβs like this lost art of accounting where you figure out how much things cost and add them all together. And Elon has discovered this lost art of accounting which no other people practice.β
https://x.com/mikemcg0/status/1711727266537812429?s=46&t=h5Byg6Wosg8MJb4pbPSDow
Punch Cards Era: The early days of computing required users to interact with machines using punch cards. These rectangular pieces of stiff paper had holes punched into them, representing data and commands. It was a labor-intensive process and the room for error was vast. If one card was misplaced, the whole sequence would be thrown off.
2. Command-Line Interfaces (CLI): The 1980s saw a shift from punch cards to command-line interfaces. Computers like the IBM PC and Apple Macintosh popularized the CLI. While it was more efficient than punch cards, it still required users to memorize commands and their syntax to communicate with the computer.
3. Graphical User Interfaces (GUI): As technology progressed, GUIs began to emerge in the late 1980s and early 1990s. The Apple Macintosh and Microsoft Windows operating systems popularized this interface. Icons, windows, and point-and-click mechanisms made computing more accessible and intuitive for the masses.
4. Touch Interfaces: The 2000s heralded the age of touchscreens. Devices like smartphones and tablets brought a more intimate and direct way of interacting with computers. Pinching, zooming, and swiping became the new language of interaction.
5. Voice Recognition: With the rise of digital assistants like Siri, Alexa, and Google Assistant, voice became a primary mode of interaction. This allowed for hands-free computing and made technology even more embedded in our daily lives.
6. Generative AI and Conversational Interfaces: Today, we're in the age of conversational AI, epitomized by platforms like ChatGPT. These systems not only understand human language but can also generate human-like responses. It feels less like communicating with a machine and more like having a conversation with another human.
https://www.linkedin.com/pulse/from-punch-cards-conversational-ai-evolution-computer-adriana-rocha-1f
20 years in building companies taught me: speed is king.
Moving fast is a miracle drug. Here's why:
β You learn more about the end-state product per unit time.
There is no team able to accurately predict every future product need. Having an iterative product schedule will solve for this.
β Achieves a more robust product.
If I had to summarize technology development: it's how many iterations you have done and then how much progress you've made b/t those iterations.
β Helps prioritize what's important.
Speeds means you only have time for the priority matters. There is no time for things that don't matter.
β Time is what will kill your company.
P.S. Moving fast is so important to me that it's a corporate value at Figure.
λ©νλ²μ€κ° μ€λ§νΈν°μ λ체ν νΌν©ν°λ‘μ μ¬μ ν 무νν μ μ¬λ ₯μ κ°μ§κ³ μμ§λ§ κ°μ₯ ν° μ΄μμΈ ν΄λμ±μ ν΄κ²°νμ§ λͺ»ν κ²½μ° μ¬μ ν λμ€νλ μμνλ€λ νκ°μ
λλ€.Β
μμ΄ν°μ λ±μ₯κ³Ό ν¨κ» μμλ μ€λ§νΈν°μ λμ€ν μ΄μ μλ λ¬΄λ € 10λ
μ κ±Έμ³ λΈλλ² λ¦¬, ν νμΌλΏ, μλμ°ν°κ³Ό κ°μ λ€μν μλκ° μ΄μ΄μ§λ©° μνμ°©μ€λ₯Ό κ²ͺμ λ° μμ΅λλ€.
μ€λ§νΈν°μ λ°μ κ³Όμ μ λΉμΆ°λ³Ό λ λ©νλ²μ€λ μμ§ 'μμ΄ν° λͺ¨λ¨ΌνΈ'λ 컀λ
'λΈλλ² λ¦¬ λͺ¨λ¨ΌνΈ'μλ λλ¬νμ§ λͺ»νλ€κ³ κ²μ΄ λμ ν νκ°μ
λλ€. λ©ννμ€νΈ 3μ μ ν λΉμ νλ‘κ° μ΄λ¬ν λΆμ μ μΈ μ¬λ‘ μ μ μ¬μ°κ³ λ°μ μ μ΄λ€λΌ μ μμμ§ κ·μΆκ° μ£Όλͺ©λ©λλ€.Β
Repost from μ μ’
νμ μΈμ¬μ΄νΈ
<λ¨Έμ€ν¬μ λ―Έλλ₯Ό μμν΄λ³΄μ>
μ±
μ΄ νΈμν° μΈμλ₯Ό ν¬ν¨ν΄ μ΅μ μ΄μλ€κΉμ§ ν¬ν¨νκ³ μμ΄μ λ¨Έμ€ν¬μ μ¬λ¬ μ¬μ
체μ λ―Έλμ λν ννΈλ₯Ό μ»λλ°λ μ μ©νλ€.
μ°μ μ§κΈμ μμ€κ° λμ΄λ²λ¦° νΈμν°. μ±
μ μ½μ΄λ³΄λ νΈμν°λ λ¨Έμ€ν¬ νΉμ μ Surgeκ° λ°λν΄μ μΆ©λμ μΌλ‘ μΈμν κ²μΌλ‘ 보μ΄λλ°, λ¨Έμ€ν¬λ ν λ μμ€λ·μ»΄(νμ΄ν)μ κ²½μμμλ€λκ±Έ μμ΄μλ μλλ€. κ·Έλ νΈμν°λ₯Ό μμ
λ€νΈμν¬μ κ²°μ νλ«νΌμ΄ κ²°ν©λ μλΉμ€λ‘ λ§λ€ κ³νμ΄λ€.
"λ¨Έμ€ν¬κ° ꡬμν μμ€λ·μ»΄μ μ½μ
νΈλ μλνλ€. λ±
νΉκ³Ό λμ§νΈ ꡬ맀, λΉμ’μκΈ, μ μ©μΉ΄λ, ν¬μ, λμΆ λ± λͺ¨λ κΈμ΅ μλΉμ€λ₯Ό μ 곡νλ μμ€ν± μ¨λΌμΈ μνμ λ§λλ κ²μ΄μλ€. κ±°λλ κ²°μ κ° μλ£λ λκΉμ§ κΈ°λ€λ¦΄ νμ μμ΄ μ¦μ μ²λ¦¬λλ λ°©μμ΄μλ€. λ¨Έμ€ν¬λ λμ΄ λ°μ΄ν°λ² μ΄μ€μ μ
λ ₯λλ νλͺ©μ λΆκ³Όνλ€λ ν΅μ°°μ λ°νμΌλ‘, λͺ¨λ κ±°λλ₯Ό μ€μκ°μΌλ‘ μμ νκ² κΈ°λ‘νλ λ°©λ²μ κ³ μνκ³ μΆμλ€. βμλΉμκ° μμ€ν
μμ λμ μΈμΆνλ λͺ¨λ μ΄μ λ₯Ό ν΄κ²°ν΄μ€λ€λ©΄, λͺ¨λ λμ΄ λͺ¨μ΄κ² λ κ²μ΄κ³ , κ·Έλ κ² λλ©΄ μμ‘° λ¬λ¬ κ·λͺ¨μ νμ¬κ° λ μ μμκ±°λΌκ³ μκ°νμ΄μ.β λ¨Έμ€ν¬μ μ€λͺ
μ΄λ€."
κ·Έλ°λ° μ΅κ·Ό λ€μ΄μλ νΈμν°μ λν ν₯λ―Έκ° μ λ³΄λ€ μ€μ΄λ€μκ³ , μΈκ³΅μ§λ₯μ λν κ΄μ¬μ΄ λ μ»€μ§ μνμΈ κ² κ°λ€. βμΈκ³΅μ§λ₯κ³Ό κ΄λ ¨λ μν©μ κ³ λ €ν λ νΈμν°μ λν΄ κ·Έλ κ² λ§μ μκ°μ ν μ ν κ°μΉκ° μλμ§ μλ¬Έμ΄ λλλ€. λ¬Όλ‘ νΈμν°λ₯Ό μΈκ³μμ κ°μ₯ ν° κΈμ΅κΈ°κ΄μΌλ‘ λ§λ€ μ μκ² μ§μ. νμ§λ§ λ΄ λλ νλμ μ£ΌκΈ°μ ν루μ μκ°μ νμ λμ΄ μμμμ. λ λΆμλ λ κ·Έλ° κ² λμ΄μΌ νλ κ²λ μλκ³ μ.β
μ¬λ΄μΌλ‘ κ·Έμ λμμΈ ν΄λ²μ μΌλ‘ μκ² λΈλ‘μ²΄μΈ κΈ°λ°μ μμ
νλ«νΌ μμ΄λμ΄λ₯Ό μ 곡νκ³ , λ¨Έμ€ν¬λ μ΄λ₯Ό νλBλΌκ³ λΆλ λ€. λ§μ½ νΈμν° μΈμκ° κ²°λ ¬λμλ€λ©΄ λΈλ‘μ²΄μΈ μλΉμ€λ₯Ό λ§λ€μμμ§λ? λ¬Όλ‘ λ¨Έμ€ν¬λ νΈμν° λ°μ΄ν°λ₯Ό μ²λ¦¬νκΈ°μ λΈλ‘체μΈμ μλκ° λ무 λ리λ€κ³ μκ°νκ³ μκΈ΄ νλ€. κ·Έλ¦¬κ³ νΈμν°κ° 보μ ν βλ°μ΄ν°βμ κ°μΉλ μΈμ νμ κΉ¨λ¬μλ€κ³ νλ€. μ¦, λ°μ΄ν°λ₯Ό μν΄μ κ·Έ ν° κΈμ‘μ μ§λ₯Έκ±΄ μλμλ€λ μλ―Έ (μ§μ§λ‘ κ·Έλ₯ μ¬κ³ μΆμ΄μ μ° κ²μ κ°κΉλ€.)
μ무λλ μ£Όμ£ΌμΈλ§νΌ ν
μ¬λΌ μ΄μΌκΈ°κ° κ°μ₯ ν₯λ―Έλ‘κ² μ½νλλ°, λ¨Έμ€ν¬λ μ²μμλ 2λ§ 5μ²λ¬λ¬ μ§λ¦¬ μλμ°¨ λ§λλ κ²μ λΆμ μ μ΄μλ€κ³ νλ€. λ‘보νμκ° κ³§ λμ€νλλ©΄ νμ μμ κ²μ΄λΌλ μ΄μ λ‘. νμ§λ§ ν
μ¬λΌ λμμ΄λμΈ νλμΈ ν° νμΈ νμ°μ μ΄ μ¬μ΄λ² νΈλ λΉμ·νκ² μκΈ΄ μ°¨λ λͺ¨νμ 보μ¬μ£Όλ μκ°μ΄ λ°λμλ€κ³ νλ€. μ΄ μ°¨λμλ μ°¨μΈλ νλ«νΌμ΄ μ μ©λ μμ μ΄κ³ , μλλ μ°¨μΈλ κΈ°κ°ν©ν λ¦¬μΈ λ©μμ½μμ μμ° μμ μ΄μμ§λ§ μ΅κ·Όμ μ€μ€ν΄μΌλ‘ λ³κ²½λμλ€κ³ νλ€. μ΄μ λ μμ§λμ΄λ€μ λ©μμ½λ‘ μ΄μ£Όμν€λκ² μ΄λ ΅κΈ° λλ¬Έμ, λΉ λ₯Έ νΌλλ°±μ μν΄μλ λ³ΈμΈ μ§κ³Ό κ°κΉμ΄ ν
μ¬μ€μμ μμ°νλκ² λ§λ€κ³ νλ¨νλ€κ³ . λ¨Έμ€ν¬λ μ΄λ² μ¬λ¦ λ΄λ΄ μ΄λ₯Ό μν μμ° κ³΅μ μ λ°μ μν€λλ° μκ°μ ν¬μνλ€κ³ νλ€.
μμ¨μ£Όν μ΄μΌκΈ°λ μμΈνκ² λ±μ₯νλ€. λλ λ¨Έμ€ν¬κ° λ μ΄λ(λΌμ΄λ€)λ₯Ό λ°λνλκ² λ¨μν κ³ μ§μΈμ€ μμλλ° μ§κ΄μ μΈ μ΄μ κ° μλλΌ. λ°λ‘ μΈκ°μ΄ μκ° λ°μ΄ν°λ§μΌλ‘ μ΄μ μ ν μ μκΈ° λλ¬Έμ κΈ°κ³λ κ·Έλ κ² ν μ μμ΄μΌ νλ€λ μ΄μ μΈλ°, λ무 λ§λ λ§μ΄λ€. κ·Έλ¦¬κ³ λ μ΄λλ₯Ό μμ ν λ°λνλ κ²λ μλμλ κ²μ΄ μμ‘°μ°μ νμ΄ λ μ΄λ μμ€ν
μ λ°λ‘ κ°λ°νκΈ°λ νμΌλ©°, λ¨Έμ€ν¬ λν λͺ¨λΈ Sμ Yμ λ μ΄λλ₯Ό μνν΄λ³΄λκ±Έ μΉμΈνλ€κ³ νλ€. βμΌλ°μ μΈ μλμ°¨ λ μ΄λλ³΄λ€ ν¨μ¬ λ μ κ΅ν λ μ΄λμ΄μ§μ. 무기 μμ€ν
μμ λ³Ό μ μλ κ²κ³Ό κ°μμ. λ¨μν μ νλ₯Ό μκ³ λλλ € λ°λ κ²μ΄ μλλΌ λ¬΄μ¨ μΌμ΄ μΌμ΄λκ³ μλμ§λ₯Ό 보μ¬μ£Όλ λ μ΄λκ±°λ μβ μ λ§λ‘ ν
μ¬λΌμ κ³ κΈ μλμ°¨μ μ΄ κΈ°λ₯μ νμ¬ν κ³νμΈκ°? βμ€νν΄λ³Ό κ°μΉκ° μμ§μ. λλ μΈμ λ 물리ν μ€νμ μ¦κ±°μ μ΄λ € μλ μ¬λμ΄μμ.β λ¨Έμ€ν¬μ λ§μ΄λ€. μ¬λ΄μΌλ‘ λ¨Έμ€ν¬λ κ³ μ§λ μκΈ΄ νμ§λ§ μκ°λ³΄λ€ λ§€μ° μ΄λ €μλ μ¬λμ΄μκ³ , μ€μ λ‘ μκ°μ λ°κΎΈλ λͺ¨μ΅λ μμ£Ό 보μΈλ€.
κ·Έλ¦¬κ³ FSDμ μμ±μ΄ νμΈ΅ κ°κΉμμ‘λ€κ³ λκ»΄μ§ κ²μ΄, κΈ°μ‘΄μ λ£°λ² μ΄μ€ λ°©μμ΄ μλ μμ ν λ¨Έμ λ¬λ λ°©μμ μ€ν νμΌλΏμ΄ μ€μ λ‘ μνΉνκΈ° μμνλ©΄μ λ¨Έμ€ν¬μ μ΄μ λ°νλ λͺ¨μ΅μ΄ λ±μ₯νλ€. μ€μ λ‘ λ¨Έμ€ν¬μ 2023λ
μ£Όμ λͺ©ν μ€ νλλ λμ‘°λ₯Ό νμ©ν΄μ AI μμ€ν
μ νλ ¨μν€λ κ²μ΄κΈ°λ νκ³ . μ΄ λΆλΆμμ κ΅μ₯ν μ€μν λ΄μ©μ΄ λ±μ₯νλλ°, λ΄λ΄ λ€νΈμν¬κ° 150λ§κ°μ λΉλμ€ ν΄λ¦½μ νμ΅μν€λκΉ μ λλ‘ μλνκΈ° μμνλ€λ μ¬μ€μ΄ λ±μ₯νλ€. μ΄μ λλ‘ λ°μ΄ν°λ₯Ό λͺ¨μΌκ³ νμ΅μν¬ μ μλ νμ¬λ μ μΈκ³μμ (μλ§) ν
μ¬λΌλ°μ μ‘΄μ¬νκΈ° μκΈ° λλ¬Έμ μμ²λ κΈ°νλ₯Ό λ§μ΄νκ² λΆλͺ
ν΄λ³΄μΈλ€. μ΄μ λν΄ λ¨Έμ€ν¬λ βμ°λ¦¬λ λ
보μ μΈ μμΉμμ μ΄ μΌμ μνν μ μμ΅λλ€.βλΌκ³ νμμμ λ§νλ€.
μ΅ν°λ¨Έμ€ λ‘λ΄μ λν μ΄μΌκΈ°λ μΈκΈλλ€. λ¨Έμ€ν¬κ° μ¬λ ννμ λ‘λ΄μ μ£Όμ₯νλ μ΄μ λν λ§€μ° μ§κ΄μ μ΄μλλ°, λλΆλΆμ μμ
곡κ°κ³Ό λꡬλ€μ΄ μ¬λμ μμ
λ°©μμ λ§μΆ°μ μ€κ³λμκΈ° λλ¬Έμ κ·Έλ λ‘λ΄ λν μ¬λμ ννμ κ°κΉμμΌ νλ€κ³ λ―Ώκ³ μλλΌ. λν FSDμ νμ©λ λμ‘°λ₯Ό μ΄μ©ν΄ νμ΅λκ³ μλ AIλ λΉμ°ν λ‘λ΄μλ μ μ©λλ€λκ±Έ νμΈ. μ¬λ΄μΌλ‘ λλ μ μΈκ³μ λ§μ νλμ¨μ΄λ€ μμ ν
μ¬λΌμ λΉμ λͺ¨λΈμ΄ νμ¬λ μ μλ€κ³ λ³΄κ³ μλ€.
무μ보λ€λ κΈ°λλλ λΆλΆμ λ°λ‘ μ΄ λ¬Έμ₯. βκ·Έλ λ΄κ² ν
μ¬λΌκ° λ§€λ
1μ‘° λ¬λ¬ μμ΅μ λ΄λ μΈκ³μμ κ°μ₯ κ°μΉ μλ νμ¬κ° λ μ μλ κΆ€λμ μ¬λΌμ°λ€κ³ μκ°νλ μ΄μ λ₯Ό μ€λͺ
νλ€.β μμΈν λ΄μ©μ λμμμ§ μμ§λ§, λ¨Έμ€ν¬λ ν
μ¬λΌκ° μ΄λ―Έ κΆ€λμ μ¬λΌμλ€κ³ μκ°νκ³ μλ€.
λ§μ§λ§μΌλ‘ κ°μ₯ μ΅κ·Όμ μ°½μ
ν μ¬μ
μ²΄μΈ X.AIμ λν΄μλ λμ€λλ°, λ₯λ§μΈλμ μ€νAI μΆμ μΈ μ΄κ³ λ₯΄ λ°λΆμν¨μ λ°λ €μκ³ κ·Έμκ² μΈ κ°μ§ λ―Έμ
μ΄ λΆμ¬νλ€κ³ νλ€. 1) μ»΄ν¨ν° μ½λλ₯Ό μμ±ν μ μλ AI λ΄ μ μ 2) μ μΉμ μ€λ¦½μ±μ 보μ₯νλ μκ³ λ¦¬μ¦μ μ¬μ©ν΄ λ°μ΄ν° μΈνΈλ₯Ό νμ΅νλ μ€ν AIμ GPT μ리μ¦μ λννλ μ±λ΄ μ μ 3) λ¨Έμ€ν¬λ βμΆλ‘ βκ³Ό βμ¬κ³ βλ₯Ό ν μ μκ³ βμ§λ¦¬βλ₯Ό κΈ°λ³Έ μμΉμΌλ‘ μΆκ΅¬νλ ννμ μΌλ°μΈκ³΅μ§λ₯μ λ§λλ κ². μ°Έκ³ λ‘ λ¨Έμ€ν¬λ OpenAIκ° μμ¨μ£Όν AIλ₯Ό λ§λλ κ²λ³΄λ€ λ³ΈμΈμ΄ LLMμ λ§λλ κ²μ΄ λ μ½λ€κ³ λ―Ώκ³ μλ€.
Repost from BZCF | λΉμ¦κΉν
ν΄λΉ κΈμ OpenAI / Y-combinatorμ μ μνΈλ¨Όμ΄ 30μ΄μ΄ λμμ λ μμ μ λΈλ‘κ·Έμ 곡κ°ν κΈμ
λλ€. (μμ : The days are long but the decades are short)
ν΄μΈμμλ μ€λ¦¬μ½λ°Έλ¦¬μ μ°½μ
κ°λ€ μ¬μ΄μμ λ§μ΄ μ½νλ κΈμΈλ°μ. νκ΅μμλ λ²μλ μ μ΄ μλ κ² κ°μ μ΄λ² κΈ°νμ κΈμ λ²μνμ¬ κ³΅μ ν©λλ€. μ¦κ±°μ΄ νκΈλ λμκΈΈ λ°λλλ€.
https://blog.naver.com/bizucafe/223231870463
https://twitter.com/dair_ai/status/1711004647081562158
1/ LLMs Represent Space and Time - discovers that LLMs learn linear representations of space and time across multiple scales; the representations are robust to prompt variations and unified across different entity types; demonstrate that LLMs acquire fundamental structured knowledge such as space and time, claiming that language models learn beyond superficial statistics, but literal world models.
https://x.com/wesg52/status/1709551516577902782?s=20
Available now! Telegram Research 2025 β the year's key insights 
