π’ Introducing Voyage AI
Founded by a talented team of leading AI researchers and me ππ.
We build state-of-the-art embedding models (e.g., better than OpenAI π).
We also offer custom models that deliver π―+10-20% accuracy gain in your LLM products. π§΅
We think embeddings are an under-loved, but incredibly important, part of everyoneβs retrieval stack. So we set out to build just better embeddings.
Voyage embeddings are SOTA on MTEB and 9 held-out benchmarks covering industry domains. Learn more here: https://lnkd.in/gk59ZE-T
We partnered with @LangChainAI to help enhance their official chatbot, live at chat.langchain.com. Both our base and fine-tuned embeddings improve both the retrieval and response quality, and the latter is deployed!
Check out https://lnkd.in/gZ2aH4KU for more details.
Try Voyage embeddings for free β your first 5000 documents are on us!
Create an account at voyageai.com and check out our API docs at https://docs.voyageai.com .
To fine-tune your own custom model, email βοΈ contact@voyageai.com for early access!
Founded by a talented team of leading AI researchers and me ππ.
We build state-of-the-art embedding models (e.g., better than OpenAI π).
We also offer custom models that deliver π―+10-20% accuracy gain in your LLM products. π§΅
We think embeddings are an under-loved, but incredibly important, part of everyoneβs retrieval stack. So we set out to build just better embeddings.
Voyage embeddings are SOTA on MTEB and 9 held-out benchmarks covering industry domains. Learn more here: https://lnkd.in/gk59ZE-T
We partnered with @LangChainAI to help enhance their official chatbot, live at chat.langchain.com. Both our base and fine-tuned embeddings improve both the retrieval and response quality, and the latter is deployed!
Check out https://lnkd.in/gZ2aH4KU for more details.
Try Voyage embeddings for free β your first 5000 documents are on us!
Create an account at voyageai.com and check out our API docs at https://docs.voyageai.com .
To fine-tune your own custom model, email βοΈ contact@voyageai.com for early access!
lnkd.in
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π€©2
Long λ² μ΄λΉλΆλ¨Έ vs Short MZ
BofA λ μ΅κ·Ό λ³΄κ³ μμμ Long λ² μ΄λΉλΆλ¨Έ, Short λ°λ λμΌ (MZ) ν¬μ μμ΄λμ΄λ₯Ό μ μν©λλ€.
μ§κΈμ κ³ κΈλ¦¬, κ³ λ¬Όκ° νκ²½μμ λ―Έκ΅λ΄ μλΉ μ§μΆμ μ£ΌλκΆμ 65μΈ μ΄μμ κ³ λ ΉμΈ΅μ΄ μλ²½ν μ₯κ³ μμ΅λλ€.
νκ΅μ λ² μ΄λΉλΆλ¨Έ μΈλμΈ μ ν¬ λΆλͺ¨λλ€μ 보λλΌλ λλΆλΆ μκ°λ‘ 1 μ£Όν μ΄μμ 보μ μ€μ λλ€. λμΆ κ±°μ μμ΅λλ€. μμ° κ°κ²©μ μΈνλ μ Wealth effect 무μ λͺ»ν©λλ€.
λ°λ©΄, MZ μΈλλ μ£Όλ‘ μ°κ³ μ£½μλ μΈκ³κ΄, μ΅κ·Ό λͺλ κ° λΆλμ° μλμ‘±, μ½μΈ/μ£Όμ λΉν¬μ‘±μ ν©λ₯λ‘ λΆμ± λΆλ΄μ΄ μλΉν©λλ€. μ¨λ§ μ¬μ΄λ μ΄μμ Snowball effect λ₯Ό κ²½ννκ³ μμ£ .
λμ±μ΄ λ² μ΄λΉλΆλ¨Έλ λμ΄ λ§λ μ λ μ¬μ ν μ μΆμ λν λ―Ώμμ΄ μμ΅λλ€. λ―Έκ΅λ Cash return μ΄ 5% λ₯Ό μνν©λλ€. Cash is king μΈ μκΈμ μν©μ μΈλκ° κ²©μ°¨λ₯Ό λλ리기 νλ€ μ λλ‘ λ²λ¦¬κ³ μμ΅λλ€.
μΉμμ ν¨μκ° λͺ νν κ°λ¦¬λ κ²μμ΄λΌλ©΄, μΉν°μ μ°μ λ΄ ν¬μ μμ΄λμ΄λ‘ νμ©ν΄ λ³Όλ§ ν©λλ€.
BofA λ μ΅κ·Ό λ³΄κ³ μμμ Long λ² μ΄λΉλΆλ¨Έ, Short λ°λ λμΌ (MZ) ν¬μ μμ΄λμ΄λ₯Ό μ μν©λλ€.
μ§κΈμ κ³ κΈλ¦¬, κ³ λ¬Όκ° νκ²½μμ λ―Έκ΅λ΄ μλΉ μ§μΆμ μ£ΌλκΆμ 65μΈ μ΄μμ κ³ λ ΉμΈ΅μ΄ μλ²½ν μ₯κ³ μμ΅λλ€.
νκ΅μ λ² μ΄λΉλΆλ¨Έ μΈλμΈ μ ν¬ λΆλͺ¨λλ€μ 보λλΌλ λλΆλΆ μκ°λ‘ 1 μ£Όν μ΄μμ 보μ μ€μ λλ€. λμΆ κ±°μ μμ΅λλ€. μμ° κ°κ²©μ μΈνλ μ Wealth effect 무μ λͺ»ν©λλ€.
λ°λ©΄, MZ μΈλλ μ£Όλ‘ μ°κ³ μ£½μλ μΈκ³κ΄, μ΅κ·Ό λͺλ κ° λΆλμ° μλμ‘±, μ½μΈ/μ£Όμ λΉν¬μ‘±μ ν©λ₯λ‘ λΆμ± λΆλ΄μ΄ μλΉν©λλ€. μ¨λ§ μ¬μ΄λ μ΄μμ Snowball effect λ₯Ό κ²½ννκ³ μμ£ .
λμ±μ΄ λ² μ΄λΉλΆλ¨Έλ λμ΄ λ§λ μ λ μ¬μ ν μ μΆμ λν λ―Ώμμ΄ μμ΅λλ€. λ―Έκ΅λ Cash return μ΄ 5% λ₯Ό μνν©λλ€. Cash is king μΈ μκΈμ μν©μ μΈλκ° κ²©μ°¨λ₯Ό λλ리기 νλ€ μ λλ‘ λ²λ¦¬κ³ μμ΅λλ€.
μΉμμ ν¨μκ° λͺ νν κ°λ¦¬λ κ²μμ΄λΌλ©΄, μΉν°μ μ°μ λ΄ ν¬μ μμ΄λμ΄λ‘ νμ©ν΄ λ³Όλ§ ν©λλ€.
Forwarded from μ μ’
νμ μΈμ¬μ΄νΈ
μ΄ μ¬λμ μκΈ°κ° νλ μ΄νκ³ μλ κ²μμ νμ΄ μ΄λ»κ² μ€κ³λμ΄μλμ§ λΆλͺ
νκ² μκ³ μλ€
https://www.youtube.com/watch?v=Czmkes4yAOA
https://www.youtube.com/watch?v=Czmkes4yAOA
YouTube
μ νλΈκ° μ΄μ΄ μλλΌλ κ±Έ μ¦λͺ
νκΈ° μν΄ 30μΌκ° λΉλ° μ±λμ ν€μλ΄€μ΅λλ€
2νΈ - https://www.youtube.com/watch?v=7VjEgfLCxnE
λλ μ΄μ - @μμ°μ£Ό
μ±λ - @μ΄λΉμ¨
λλ μ΄μ - @μμ°μ£Ό
μ±λ - @μ΄λΉμ¨
51% of Zendesk's revenue is international
47% of Cloudflareβs revenue is international
46% of HubSpotβs revenue is international
45% of MongoDB's revenue is international
38% of Asanaβs revenue is international
34% of Twilioβs revenue is international
22% of Oktaβs revenue is international
Go Global as soon as you have customers there
Pull ahead
47% of Cloudflareβs revenue is international
46% of HubSpotβs revenue is international
45% of MongoDB's revenue is international
38% of Asanaβs revenue is international
34% of Twilioβs revenue is international
22% of Oktaβs revenue is international
Go Global as soon as you have customers there
Pull ahead
βμ°½μ
κ°μ κΈΈμ λ€μ΄μλ©΄ νμ¬κ° μ¬λ¬λΆμ κ°μ‘±λ³΄λ€ μ€μν΄μ Έμ. κ°μ‘±λ€μ λμμ¬λ₯Ό μ±κΈΈ μ μκ³ , μλ
λ€μκ² κ΅Ώλμ ν€μ€λ₯Ό ν μ μκ² λ κ±°μμ. λ νκΈ μμ°μ΄ νμν΄ μ’μ μ§κ³Ό μ’μ μ°¨λ ν¬κΈ°ν΄μΌν κ±°κ³ μ. μΉκ΅¬λ μ§μΈλ€μ μ¬λ¬λΆμ μ΄ν΄νμ§ λͺ»νκ³ , μΈμμμ κΈΈμ μκ³ λ°©ν©νλ€κ³ μκ°ν κ±°μμ. λΆλ λ°©ν©μ΄ μ§§μμΌν ν
λ° νκ² μ£ .β
βνμλ€μ μκΈμ μ€ μ μλ μκΈ°κ° μ¬ κ±°μμ. μ΄ μ¬μ μμ λκ΅°κ°λ λΉμ (μ°½μ κ°)μ κ³ μν κ±°μμ. μ¬λ¬λΆμ κ³ μνλ μ¬λμ΄ κ³΅λ μ°½μ μμΌ μλ μκ³ ν¬μμμΌ μλ μμ΄μ. λ μμ£Ό ν릴 κ²μ΄κ³ , μ΄ λ¬Έμ λ€μ νμλ€μ΄ λ€ λ³΄κ² λ κ±°μμ. μͺ½νλ¦° λ¨κ³λ₯Ό λμ΄μλ©΄ λ΄κ° νλ κ² λ§λ, (λνμ§μμ) λ΄λ €μμΌκ² ꡬλλΌλ μκ°λ λ€κ² λμ£ . νμλ€λ κ³μ μ¬λ¬λΆμ μ€λ§μν¬ ν μ§λ§, κ·ΈλΌμλ κ³μ μμμ²λΌ μ¬λμ νΌμ€μΌ ν΄μ. νμλ€μ μν΄ κ²©λ¦¬ μμΌμΌ λ§λ ν μ§μμκ²λ μμ΄μΌ νλ μκΈ°κ° μμ΅λλ€.β
(μ΄μΉκ±΄ λΉλ°λ¦¬νΌλΈλ¦¬μΉ΄ λν, μ μ£Όμ μ°½μ κ²½μ§λν λ°λͺ¨λ°μ΄ 2023)
μ λ§ λ¦¬μΌν μ°½μ μμ μΆ. μ§κΈ μν©μ΄ λ무 νλ λ° λ¬΄μ¨ λΆκ·μνλ₯Ό λλ¦¬κ² λ€κ³ μ΄κ±Έ νλ μΆμ§λ§ λ λλ¦μ μ΄μ κ° μ겨μ μ§μνλ κ²μ΄μ£ . κ°μΈμ μΌλ‘λ μ΄ μΆμ΄ λΉμ°ν기보λ€λ μ μ°¨ κ°μ λμΌλ©΄ μ’κ² μ΅λλ€. μ°½μ μμ λν μ‘΄μ€κ³Ό 보νΈλ μ»€μ ΈμΌ νκ³ μ.
βνμλ€μ μκΈμ μ€ μ μλ μκΈ°κ° μ¬ κ±°μμ. μ΄ μ¬μ μμ λκ΅°κ°λ λΉμ (μ°½μ κ°)μ κ³ μν κ±°μμ. μ¬λ¬λΆμ κ³ μνλ μ¬λμ΄ κ³΅λ μ°½μ μμΌ μλ μκ³ ν¬μμμΌ μλ μμ΄μ. λ μμ£Ό ν릴 κ²μ΄κ³ , μ΄ λ¬Έμ λ€μ νμλ€μ΄ λ€ λ³΄κ² λ κ±°μμ. μͺ½νλ¦° λ¨κ³λ₯Ό λμ΄μλ©΄ λ΄κ° νλ κ² λ§λ, (λνμ§μμ) λ΄λ €μμΌκ² ꡬλλΌλ μκ°λ λ€κ² λμ£ . νμλ€λ κ³μ μ¬λ¬λΆμ μ€λ§μν¬ ν μ§λ§, κ·ΈλΌμλ κ³μ μμμ²λΌ μ¬λμ νΌμ€μΌ ν΄μ. νμλ€μ μν΄ κ²©λ¦¬ μμΌμΌ λ§λ ν μ§μμκ²λ μμ΄μΌ νλ μκΈ°κ° μμ΅λλ€.β
(μ΄μΉκ±΄ λΉλ°λ¦¬νΌλΈλ¦¬μΉ΄ λν, μ μ£Όμ μ°½μ κ²½μ§λν λ°λͺ¨λ°μ΄ 2023)
μ λ§ λ¦¬μΌν μ°½μ μμ μΆ. μ§κΈ μν©μ΄ λ무 νλ λ° λ¬΄μ¨ λΆκ·μνλ₯Ό λλ¦¬κ² λ€κ³ μ΄κ±Έ νλ μΆμ§λ§ λ λλ¦μ μ΄μ κ° μ겨μ μ§μνλ κ²μ΄μ£ . κ°μΈμ μΌλ‘λ μ΄ μΆμ΄ λΉμ°ν기보λ€λ μ μ°¨ κ°μ λμΌλ©΄ μ’κ² μ΅λλ€. μ°½μ μμ λν μ‘΄μ€κ³Ό 보νΈλ μ»€μ ΈμΌ νκ³ μ.
π―4π€1
----
Navigating "corporate speak" isn't easy.
Here's a helpful guide I put together:
"Let me check with my team" = No
"Possibly" = No
"On my roadmap" = Not happening
"This will be done in Q4" = This will be done in Q2 next year
"Disagree and commit" = I hate you
"Per my last email" = Try reading, for once in your life
"Challenging landscape" = We're going out of business, quickly
"Digital transformation" = We're going out of business, slowly
"Let's circle back" = We'll never speak of this again
"Take it offline" = We'll never speak of this again
"30,000 foot view" = I don't know what I'm saying
"Low hanging fruit" = Easy promotion
"Open up the kimono" = HR violation
"We use AI" = We don't use AI
"We use machine learning" = We don't use machine learning
"All hands on deck" = Let's actually try for once, please
π
Navigating "corporate speak" isn't easy.
Here's a helpful guide I put together:
"Let me check with my team" = No
"Possibly" = No
"On my roadmap" = Not happening
"This will be done in Q4" = This will be done in Q2 next year
"Disagree and commit" = I hate you
"Per my last email" = Try reading, for once in your life
"Challenging landscape" = We're going out of business, quickly
"Digital transformation" = We're going out of business, slowly
"Let's circle back" = We'll never speak of this again
"Take it offline" = We'll never speak of this again
"30,000 foot view" = I don't know what I'm saying
"Low hanging fruit" = Easy promotion
"Open up the kimono" = HR violation
"We use AI" = We don't use AI
"We use machine learning" = We don't use machine learning
"All hands on deck" = Let's actually try for once, please
π
π1
μμ΄ν° μΆμ ν 첫 4~5λ
μ λλ μ±μ μΆμνλ κ²λ§μΌλ‘λ μ μ μ wowλ₯Ό μ΄λμ΄ λΌ μ μμλ μμ μ΄ μμλ€. μ΄λνλ©° μΈν°λ·λ ν μ μκ³ ν°μΉμ€ν¬λ¦°μ νμ©ν μ μλ μ€λ§νΈν°μμ ꡬλμ΄ λλ€λ κ²λ§μΌλ‘λ wow μλ κ²μ΄λ€.
κ·Έ μ΄ν κΈ°μ‘΄ λ κ°μ μ°μ μ ν¨λ¬λ€μμ λ°κΎΌ μλΉμ€λ€μ΄ λ±μ₯νμ¬ wow λ₯Ό μ μ¬νλ€. μ ν¬λΈ/λ·νλ¦μ€λ TV/λ―Έλμ΄ μ°μ μ λ°κΏ¨κ³ , νλΆ/ꡬκΈμ λ―Έλμ΄/ν¬νΈμ°μ μ λ°κΏλμμΌλ©°, μλ§μ‘΄μ μΌν/μλ²μμ€ν μ, ν μ¬λΌλ μλμ°¨ μ°μ μ, μ°λ²λ νμ μ°μ μ, μμ΄λΉμλΉλ₯Ό νΈν μ°μ μ ν° μν₯μ 쀬λ€.
μμ κ°μ 2000λ μ΄λ° μ΄ν 격λμ 20λ μ λλ₯Ό κ²ͺμΌλ©°, νλμ¬νμ λ§μ μ¬λλ€μ λͺ¨λ°μΌ λ° μΉ μ€μ¬μ μλΉμ€μ κ½€ λ§μ΄ μ΅μν΄μ§ λ― νλ€. κ·Έλμ, μλ‘ μΆμλλ μ±μ λ΄λ κ·Έ κ°ν₯μ΄ κ³Όκ±° λλΉ λ¬΄λμ§κ³ μμμ λλλ€.
μ€νλ €, μμ¦μ κ³Όκ±°μλ λ§μ‘±νλ©° μ¬μ©νλ Big Tech μ¬μ μλΉμ€ μ‘°μ°¨λ μ¬μ¬ 'μ§κ²¨μμ§λ€' λλΌλ λΆλ€μ΄ μ¦κ°νλ λ―νλ€. λμμ 'κ³Όκ±°λΆν° λ§μ΄ μ΄μ©νλ μλΉμ€λ€μ΄ μ΅κ·Όμλ μμ λ§ λͺ»ν΄μ μ€λ§κ°μ΄ ν¬κ³ , μ΄μ© μ μμ΄ μ΄μ©νκ³ μλ€'κ³ λ§νλ λΆλ€λ λ§μμ§λ λ―νλ€. OpenAI κ° chatGPT λ₯Ό μΆμνλ©° μλ‘μ΄ νλ ₯μ λΆμ΄λ£κ³ μμ§λ§, κ·Έ νκΈλ ₯μ΄ κ³Όκ±°μ μμ΄ν° λͺ¨λ©νΈμ²λΌ μμ²λμ§ μμ κ²λ μ¬μ€μ΄λ€. (chatGPTλ μλΉμ 보λ€λ μ€ννΈμ μ νλ ₯μ λΆμ΄λ£κ³ μλ λ―νλ€. κ·Έλμ κ±±μ μ΄κΈ°λ νλ€. μλΉμκ° λ°μνμ§ μμΌλ©΄ κ²°κ΅ imapct κ° μ νμ μΌ μλ°μ μκΈ° λλ¬Έμ΄λ€) μμ¦μ μ μ λΆλ€μ΄ λλ€μ μλΉμ€μ κ³Όκ±° λλΉ λ¨λ¨λ―Έμ§κ·Όν λ°μμ 보μ΄λ μκΈ°μΈ κ² κ°κΈ°λ νλ€.
λ€λ§, μ μ λ€μ μ¬μ ν λ λμ μΆμ μ΄κ³ μΆμ΄νλ μκ΅¬κ° κ°νλ€. λ μ±μ₯νκ³ μΆμ΄νκ³ , λ ν볡ν μΆμ μ΄κ³ μΆμ΄νκ³ , λ μ¦κ±°μ΄ μκ°μ 보λ΄κ³ μΆμ΄ νλ€. λ³ΈμΈ μΈμμ κ°λ ¬νκ² λ€κ°μ¬ μ μλ μλΉμ€λ₯Ό λ§λ, ν΄λΉ μλΉμ€μ ν¨κ» λ λ§μ‘±μ€λ¬μ΄ μΆμ μ΄κΈ°λ₯Ό ν¬λ§νλ λΆλ€μ΄ κ½€ μλ€.
κ·Έλμ, λ―Έλμλ μ΄λ€ μλΉμ€κ° λ§μ μ μ λ‘λΆν° wowλ₯Ό μ΄λμ΄ λΌ μ μμμ§... κΆκΈνλ€. μ μ μ μ±μ₯κ³Ό λ§μ‘±μ λ λ§μ΄ μ§μ°©νλ μλΉμ€κ° κ·Έ wow λ₯Ό μ΄λμ΄ λΌ μ μμΌλ¦¬λΌ λ―Ώμ§λ§, κ³Όκ±° λλΉ μ μ μ wow λ₯Ό μ΄λμ΄ λ΄κΈ° μν λμ΄λκ° λμμ Έμ κ³Όκ±° λ§νΌ 'κΈμ±μ₯νλ μ€ννΈμ 'μ΄ λ§μ΄ λμ¬ κ² κ°μ§λ μλ€. κ·Έλλ, μ΄λ° λμΈλ₯Ό μ΄κ²¨λ΄λ κ°μ₯ μ’μ λ°©λ²μ 'λ νλ€μ΄μ§λ νκ²½'μ λ°μνκΈ° 보λ€λ 'μ μ 'μ μ§μ€νμ¬ ν루 ν루 λ μ’μ μλΉμ€λ₯Ό λ§λ€μ΄ λ΄λ κ²μ΄λΌ μκ°νλ€. λ¬Όλ‘ κ³Όκ±°μλ 1λ λ Έλ ₯νλ©΄ λ§μ‘±μ μ΄λμ΄ λΌ μ μμλ€λ©΄, μ΅κ·Όμλ 3~5λ°°λ λ ν΄μΌνλ μ΄λ €μμ΄ μ‘΄μ¬νμ§λ§ λ§μ΄λ€.
κ·Έλμ μμ¦ κ°μ μλλ Why? κ° λ μ€μν΄μ§λ κ² κ°λ€. μ μμνλμ§? 무μμ μν΄ μλΉμ€λ₯Ό λ§λ€μ΄ λ΄κ³ μλμ§?μ λν λͺ ννκ³ μμ§ν λ΅μ κ°μ§κ³ μλμ§κ° λ μ€μν΄μ§λ μλκ° μλ€. κ·Έ μ΄μ μ λν λ΅μ μ 체 νμ΄ κ³΅μ νκ³ μμ΄μΌ, wow λ₯Ό λ§λ€μ΄ λ΄κΈ° μν λ Έλ ₯/μκ°μ΄ μ¦κ°ν μλλ₯Ό 묡묡ν μ΄κ²¨λκ° μ μκΈ° λλ¬Έμ΄λ€.
μλΉμ€λ₯Ό μ΄μ΄λκ°κ³ μλ λ³Έμ§μ μ΄μ λ 무μμΈκ°? μ°λ¦¬ μλΉμ€λ λꡬλ₯Ό μν΄ μ‘΄μ¬νλ©° μ μ‘΄μ¬ν΄μΌ νλκ°? κΉμ λ°€, λ§κΈμ λ μ±μ₯μμΌ λκ°κΈ° μν λ°©λ²μ κ³ λ―Όνλ€κ°, μλ‘ μ μΈ μ§λ¬Έμ λν΄ λ€μ ν λ² μκ°ν΄λ³Έλ€.
κ·Έ μ΄ν κΈ°μ‘΄ λ κ°μ μ°μ μ ν¨λ¬λ€μμ λ°κΎΌ μλΉμ€λ€μ΄ λ±μ₯νμ¬ wow λ₯Ό μ μ¬νλ€. μ ν¬λΈ/λ·νλ¦μ€λ TV/λ―Έλμ΄ μ°μ μ λ°κΏ¨κ³ , νλΆ/ꡬκΈμ λ―Έλμ΄/ν¬νΈμ°μ μ λ°κΏλμμΌλ©°, μλ§μ‘΄μ μΌν/μλ²μμ€ν μ, ν μ¬λΌλ μλμ°¨ μ°μ μ, μ°λ²λ νμ μ°μ μ, μμ΄λΉμλΉλ₯Ό νΈν μ°μ μ ν° μν₯μ 쀬λ€.
μμ κ°μ 2000λ μ΄λ° μ΄ν 격λμ 20λ μ λλ₯Ό κ²ͺμΌλ©°, νλμ¬νμ λ§μ μ¬λλ€μ λͺ¨λ°μΌ λ° μΉ μ€μ¬μ μλΉμ€μ κ½€ λ§μ΄ μ΅μν΄μ§ λ― νλ€. κ·Έλμ, μλ‘ μΆμλλ μ±μ λ΄λ κ·Έ κ°ν₯μ΄ κ³Όκ±° λλΉ λ¬΄λμ§κ³ μμμ λλλ€.
μ€νλ €, μμ¦μ κ³Όκ±°μλ λ§μ‘±νλ©° μ¬μ©νλ Big Tech μ¬μ μλΉμ€ μ‘°μ°¨λ μ¬μ¬ 'μ§κ²¨μμ§λ€' λλΌλ λΆλ€μ΄ μ¦κ°νλ λ―νλ€. λμμ 'κ³Όκ±°λΆν° λ§μ΄ μ΄μ©νλ μλΉμ€λ€μ΄ μ΅κ·Όμλ μμ λ§ λͺ»ν΄μ μ€λ§κ°μ΄ ν¬κ³ , μ΄μ© μ μμ΄ μ΄μ©νκ³ μλ€'κ³ λ§νλ λΆλ€λ λ§μμ§λ λ―νλ€. OpenAI κ° chatGPT λ₯Ό μΆμνλ©° μλ‘μ΄ νλ ₯μ λΆμ΄λ£κ³ μμ§λ§, κ·Έ νκΈλ ₯μ΄ κ³Όκ±°μ μμ΄ν° λͺ¨λ©νΈμ²λΌ μμ²λμ§ μμ κ²λ μ¬μ€μ΄λ€. (chatGPTλ μλΉμ 보λ€λ μ€ννΈμ μ νλ ₯μ λΆμ΄λ£κ³ μλ λ―νλ€. κ·Έλμ κ±±μ μ΄κΈ°λ νλ€. μλΉμκ° λ°μνμ§ μμΌλ©΄ κ²°κ΅ imapct κ° μ νμ μΌ μλ°μ μκΈ° λλ¬Έμ΄λ€) μμ¦μ μ μ λΆλ€μ΄ λλ€μ μλΉμ€μ κ³Όκ±° λλΉ λ¨λ¨λ―Έμ§κ·Όν λ°μμ 보μ΄λ μκΈ°μΈ κ² κ°κΈ°λ νλ€.
λ€λ§, μ μ λ€μ μ¬μ ν λ λμ μΆμ μ΄κ³ μΆμ΄νλ μκ΅¬κ° κ°νλ€. λ μ±μ₯νκ³ μΆμ΄νκ³ , λ ν볡ν μΆμ μ΄κ³ μΆμ΄νκ³ , λ μ¦κ±°μ΄ μκ°μ 보λ΄κ³ μΆμ΄ νλ€. λ³ΈμΈ μΈμμ κ°λ ¬νκ² λ€κ°μ¬ μ μλ μλΉμ€λ₯Ό λ§λ, ν΄λΉ μλΉμ€μ ν¨κ» λ λ§μ‘±μ€λ¬μ΄ μΆμ μ΄κΈ°λ₯Ό ν¬λ§νλ λΆλ€μ΄ κ½€ μλ€.
κ·Έλμ, λ―Έλμλ μ΄λ€ μλΉμ€κ° λ§μ μ μ λ‘λΆν° wowλ₯Ό μ΄λμ΄ λΌ μ μμμ§... κΆκΈνλ€. μ μ μ μ±μ₯κ³Ό λ§μ‘±μ λ λ§μ΄ μ§μ°©νλ μλΉμ€κ° κ·Έ wow λ₯Ό μ΄λμ΄ λΌ μ μμΌλ¦¬λΌ λ―Ώμ§λ§, κ³Όκ±° λλΉ μ μ μ wow λ₯Ό μ΄λμ΄ λ΄κΈ° μν λμ΄λκ° λμμ Έμ κ³Όκ±° λ§νΌ 'κΈμ±μ₯νλ μ€ννΈμ 'μ΄ λ§μ΄ λμ¬ κ² κ°μ§λ μλ€. κ·Έλλ, μ΄λ° λμΈλ₯Ό μ΄κ²¨λ΄λ κ°μ₯ μ’μ λ°©λ²μ 'λ νλ€μ΄μ§λ νκ²½'μ λ°μνκΈ° 보λ€λ 'μ μ 'μ μ§μ€νμ¬ ν루 ν루 λ μ’μ μλΉμ€λ₯Ό λ§λ€μ΄ λ΄λ κ²μ΄λΌ μκ°νλ€. λ¬Όλ‘ κ³Όκ±°μλ 1λ λ Έλ ₯νλ©΄ λ§μ‘±μ μ΄λμ΄ λΌ μ μμλ€λ©΄, μ΅κ·Όμλ 3~5λ°°λ λ ν΄μΌνλ μ΄λ €μμ΄ μ‘΄μ¬νμ§λ§ λ§μ΄λ€.
κ·Έλμ μμ¦ κ°μ μλλ Why? κ° λ μ€μν΄μ§λ κ² κ°λ€. μ μμνλμ§? 무μμ μν΄ μλΉμ€λ₯Ό λ§λ€μ΄ λ΄κ³ μλμ§?μ λν λͺ ννκ³ μμ§ν λ΅μ κ°μ§κ³ μλμ§κ° λ μ€μν΄μ§λ μλκ° μλ€. κ·Έ μ΄μ μ λν λ΅μ μ 체 νμ΄ κ³΅μ νκ³ μμ΄μΌ, wow λ₯Ό λ§λ€μ΄ λ΄κΈ° μν λ Έλ ₯/μκ°μ΄ μ¦κ°ν μλλ₯Ό 묡묡ν μ΄κ²¨λκ° μ μκΈ° λλ¬Έμ΄λ€.
μλΉμ€λ₯Ό μ΄μ΄λκ°κ³ μλ λ³Έμ§μ μ΄μ λ 무μμΈκ°? μ°λ¦¬ μλΉμ€λ λꡬλ₯Ό μν΄ μ‘΄μ¬νλ©° μ μ‘΄μ¬ν΄μΌ νλκ°? κΉμ λ°€, λ§κΈμ λ μ±μ₯μμΌ λκ°κΈ° μν λ°©λ²μ κ³ λ―Όνλ€κ°, μλ‘ μ μΈ μ§λ¬Έμ λν΄ λ€μ ν λ² μκ°ν΄λ³Έλ€.
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βMachine learning costs, talent and chip shortagesβ¦ any AI and machine learning company faces at least one of these challenges, and most face a few at a time,β Pekhimenko told TechCrunch in an email interview. βThe highest-end chips are commonly unavailable due to the large demand from enterprises and startups alike. This leads to companies sacrificing on the size of the model they can deploy or results in higher inference latencies for their deployed models.β
With spending on AI-focused chips expected to hit $53 billion this year and more than double in the next four years, according to Gartner, Pekhimenko felt the time was right to launch software that could make models run more efficiently on existing hardware.
βTraining AI and machine learning models is increasingly expensive,β Pekhimenko said. βWith CentMLβs optimization technology, weβre able to reduce expenses up to 80% without compromising speed or accuracy.β
βFor one of our customers, we optimized their Llama 2 model to work 3x faster by using Nvidia A10 GPU cards,β
CentML isnβt the first to take a software-based approach to model optimization. It has competitors in MosaicML, which Databricks acquired in June for $1.3 billion, and OctoML, which landed an $85 million cash infusion in November 2021 for its machine learning acceleration platform.
βThe CentML platform can run any model,β Pekhimenko said. βCentML produces optimized code for a variety of GPUs and reduces the memory needed to deploy models, and, as such, allows teams to deploy on smaller and cheaper GPUs.β
With spending on AI-focused chips expected to hit $53 billion this year and more than double in the next four years, according to Gartner, Pekhimenko felt the time was right to launch software that could make models run more efficiently on existing hardware.
βTraining AI and machine learning models is increasingly expensive,β Pekhimenko said. βWith CentMLβs optimization technology, weβre able to reduce expenses up to 80% without compromising speed or accuracy.β
βFor one of our customers, we optimized their Llama 2 model to work 3x faster by using Nvidia A10 GPU cards,β
CentML isnβt the first to take a software-based approach to model optimization. It has competitors in MosaicML, which Databricks acquired in June for $1.3 billion, and OctoML, which landed an $85 million cash infusion in November 2021 for its machine learning acceleration platform.
βThe CentML platform can run any model,β Pekhimenko said. βCentML produces optimized code for a variety of GPUs and reduces the memory needed to deploy models, and, as such, allows teams to deploy on smaller and cheaper GPUs.β
A new solution to the high-end chip shortage.
Read in @WSJ about how Together worked with large former crypto mining farms to repurpose their best GPUs and acquire new GPUs to train AI models β all with a specialized training stack for a fraction of the price.
https://www.wsj.com/articles/crypto-miners-seek-a-new-life-in-ai-boom-after-an-implosion-in-mining-92a181fd
Read in @WSJ about how Together worked with large former crypto mining farms to repurpose their best GPUs and acquire new GPUs to train AI models β all with a specialized training stack for a fraction of the price.
https://www.wsj.com/articles/crypto-miners-seek-a-new-life-in-ai-boom-after-an-implosion-in-mining-92a181fd
WSJ
Crypto Miners Seek a New Life in AI Boom After an Implosion in Mining
Demand for high-end chips allows cryptocurrency companies to repurpose idle equipment.
μΌλ§μ κ΅¬κΈ λΈλ μΈ, λ₯λ§μΈλμμ μ½μ΄ λ₯λ¬λ νμ μμλ μΉκ΅¬μ μ΄μΌκΈ° λλλ©΄μ μΈμμΆμλ λΆλΆλ€ (μ΄μΈμ’
λ)
μ§λλ² μΈμ μμ μΈμκΉμ λΆλΆμ λλ€.
quantization λ± λͺ¨λΈ μ΅μ νλ λͺ¨λΈ μν€ν μ² ν¨μ¨νλ‘ λͺ¨λΈ νμ΅/μΈνΌλ°μ€ μ»΄ν¨νΈ(GPU) λΉμ©μ΄ μΌμμ μΌλ‘ κ°μν μ μμ§λ§, μ₯κΈ°μ κ΄μ μμ μ»΄ν¨νΈμ μ λμ μμλ λΉ λ₯΄κ² μ¦κ°ν κ²
- λ₯λ§μΈλμμ μνν΄λλ₯Ό 3λͺ μ μ°κ΅¬μμ΄ ν΄λΌ μ μμλ κ²μ μ΄λ€μ΄ λ λλν΄μκ° μλλΌ 1μΈλΉ νμ© κ°λ₯ν μ»΄ν¨νΈκ° λ€λ₯Έ κΈ°μ , μ°κ΅¬μ λ³΄λ€ μλμ μΌλ‘ λ§μκΈ° λλ¬Έ
- μ»΄ν¨νΈκ° 보νΈνλμ΄ κ°κ²©μ΄ μ λ ΄ν΄μ§ μλ‘ μνν΄λ κΈμ νμ μ΄ λͺ¨λ μ°μ κ³Ό μμμμ νΌμ³μ§κ²
- λμκ° μ°λ¦¬λ μ»΄ν¨νΈμ νκ³λ‘ κΈ°λ³Έμ μΈ ν μ€νΈ λ°μ΄ν° νλ‘μΈμ±μ λ°μ΄ λ¬Άμ¬ μμλλ° μμΌλ‘ μμ λ± λ³΅μ‘λ λκ³ λ¬΄κ±°μ΄ λ°μ΄ν° μ²λ¦¬ μμκ° κΈ°νκΈμμ μΌλ‘ λμ΄λ κ²
μ΄λ―Έ ν€μ§νλμμ μ£Όκ° μμΈ‘μ νΉνλ λͺ¨λΈμ μ κ·Ή νμ©ν΄ λ§λν μμ΅ μ°½μΆμ€
- λͺ¨λΈ νμ΅μ μΌλ§ λ€κ³ , λͺ¨λΈ κ²½μμ°μμ μ§μμ±κ³Ό κΈ°λ λ§€μΆμ κ³ λ €νμ λ ROIκ° μ΄λ»κ² λ μ§λ₯Ό κ³μ°ν΄μ λμ μ¬λ¬κ° λͺ¨λΈ νμ΅μ€
- κ·ΈμΈ λͺ¨λ κΈ°μ μ λ κ±°μ μ½λμ λ°μ΄ν°κ° μλλ° λ³΄κ΄λ λ°©μκ³Ό μ½λμ νν λλ¬Έμ λ§€λ μ΄λ§ν κ³ μ λΉμ©μ΄ λ°μ. AI λͺ¨λΈ λμμ λ°μ μ½λ μ λ°μ΄νΈμ λ§μ΄κ·Έλ μ΄μ μ ν΅ν΄ νμ¬ μ λ°μ μμ΅μ±μ κ°μ νλ κ²½μ°λ μμ£Ό 보μ
"μ¬λμ λλ €λ°μ" μ€μΌμΌμ μΆκ΅¬νλ λΈλ¦¬μΈ μ€μΌμΌλ§ λ°©λ²μ AI μλμμ μ ν¨νμ§ μμ μλ
- κΈ°μ μμ μ ν΅μ μΌλ‘ μΈκ±΄λΉκ° λμ΄ κ°μ₯ λ§μ΄ λ€μ΄κ°λλ° μ΅κ·Όμ ꡬκΈμμ μ»΄ν¨νΈ λΉμ©μ΄ κ°λ°μ λΉμ©μ μμ
- μ€νAIλ 400λͺ λλ κΈ°μ μΈλ° μ»΄ν¨νΈ λΉμ©μ΄ μΈλΉ κ°λ°μ λΉμ©μ 4λ°°
- μμΌλ‘λ μμ§λ§ νλ‘λνΈλΆν° μΈμΌμ¦κΉμ§ μ μ¬ μ€νΌλ μ΄μ μ μΌλΌμΈλ λ¨λ¨ν νμ΄ κ²½μλ ₯ μμ§ μμμ§
ν¬κ³ μμ μ¬λ¬ μ νμ μ λλ΄λ¦¬μ€νΈμ νΉνλ SOTA λͺ¨λΈμ΄ 곡쑴νκ²λ κ²
- μ μ κ° μνλ μμ²μ λ§λ λͺ¨λΈμ΄ μλ μΆμ²λμ΄ νμ€ν¬κ° μ²λ¦¬λλ Model of Experts νν
- λͺ¨λΈμ ν¬κ² λ μΆμ κ΅μ§ν©μΌλ‘ μ‘΄μ¬ν κ±΄λ° ν μΆμ intelligence (μ: 80 IQ ~ 150 IQ), κ·Έλ¦¬κ³ λ€λ₯Έ μΆμ λ²ν°μ»¬ (μ: μ½λ©, λ²λ₯ , μλ£ λ±)
- λͺ¨λΈ κ²μ/μΆμ²/μ°κ²°μ λλorchestration λ μ΄μ΄κ° ν΅μ¬ κΈ°μ λ‘ λΆμν κ²
μΆμ²: μ΄μΈμ’ λ νμ΄μ€λΆ
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μ§λλ² μΈμ μμ μΈμκΉμ λΆλΆμ λλ€.
quantization λ± λͺ¨λΈ μ΅μ νλ λͺ¨λΈ μν€ν μ² ν¨μ¨νλ‘ λͺ¨λΈ νμ΅/μΈνΌλ°μ€ μ»΄ν¨νΈ(GPU) λΉμ©μ΄ μΌμμ μΌλ‘ κ°μν μ μμ§λ§, μ₯κΈ°μ κ΄μ μμ μ»΄ν¨νΈμ μ λμ μμλ λΉ λ₯΄κ² μ¦κ°ν κ²
- λ₯λ§μΈλμμ μνν΄λλ₯Ό 3λͺ μ μ°κ΅¬μμ΄ ν΄λΌ μ μμλ κ²μ μ΄λ€μ΄ λ λλν΄μκ° μλλΌ 1μΈλΉ νμ© κ°λ₯ν μ»΄ν¨νΈκ° λ€λ₯Έ κΈ°μ , μ°κ΅¬μ λ³΄λ€ μλμ μΌλ‘ λ§μκΈ° λλ¬Έ
- μ»΄ν¨νΈκ° 보νΈνλμ΄ κ°κ²©μ΄ μ λ ΄ν΄μ§ μλ‘ μνν΄λ κΈμ νμ μ΄ λͺ¨λ μ°μ κ³Ό μμμμ νΌμ³μ§κ²
- λμκ° μ°λ¦¬λ μ»΄ν¨νΈμ νκ³λ‘ κΈ°λ³Έμ μΈ ν μ€νΈ λ°μ΄ν° νλ‘μΈμ±μ λ°μ΄ λ¬Άμ¬ μμλλ° μμΌλ‘ μμ λ± λ³΅μ‘λ λκ³ λ¬΄κ±°μ΄ λ°μ΄ν° μ²λ¦¬ μμκ° κΈ°νκΈμμ μΌλ‘ λμ΄λ κ²
μ΄λ―Έ ν€μ§νλμμ μ£Όκ° μμΈ‘μ νΉνλ λͺ¨λΈμ μ κ·Ή νμ©ν΄ λ§λν μμ΅ μ°½μΆμ€
- λͺ¨λΈ νμ΅μ μΌλ§ λ€κ³ , λͺ¨λΈ κ²½μμ°μμ μ§μμ±κ³Ό κΈ°λ λ§€μΆμ κ³ λ €νμ λ ROIκ° μ΄λ»κ² λ μ§λ₯Ό κ³μ°ν΄μ λμ μ¬λ¬κ° λͺ¨λΈ νμ΅μ€
- κ·ΈμΈ λͺ¨λ κΈ°μ μ λ κ±°μ μ½λμ λ°μ΄ν°κ° μλλ° λ³΄κ΄λ λ°©μκ³Ό μ½λμ νν λλ¬Έμ λ§€λ μ΄λ§ν κ³ μ λΉμ©μ΄ λ°μ. AI λͺ¨λΈ λμμ λ°μ μ½λ μ λ°μ΄νΈμ λ§μ΄κ·Έλ μ΄μ μ ν΅ν΄ νμ¬ μ λ°μ μμ΅μ±μ κ°μ νλ κ²½μ°λ μμ£Ό 보μ
"μ¬λμ λλ €λ°μ" μ€μΌμΌμ μΆκ΅¬νλ λΈλ¦¬μΈ μ€μΌμΌλ§ λ°©λ²μ AI μλμμ μ ν¨νμ§ μμ μλ
- κΈ°μ μμ μ ν΅μ μΌλ‘ μΈκ±΄λΉκ° λμ΄ κ°μ₯ λ§μ΄ λ€μ΄κ°λλ° μ΅κ·Όμ ꡬκΈμμ μ»΄ν¨νΈ λΉμ©μ΄ κ°λ°μ λΉμ©μ μμ
- μ€νAIλ 400λͺ λλ κΈ°μ μΈλ° μ»΄ν¨νΈ λΉμ©μ΄ μΈλΉ κ°λ°μ λΉμ©μ 4λ°°
- μμΌλ‘λ μμ§λ§ νλ‘λνΈλΆν° μΈμΌμ¦κΉμ§ μ μ¬ μ€νΌλ μ΄μ μ μΌλΌμΈλ λ¨λ¨ν νμ΄ κ²½μλ ₯ μμ§ μμμ§
ν¬κ³ μμ μ¬λ¬ μ νμ μ λλ΄λ¦¬μ€νΈμ νΉνλ SOTA λͺ¨λΈμ΄ 곡쑴νκ²λ κ²
- μ μ κ° μνλ μμ²μ λ§λ λͺ¨λΈμ΄ μλ μΆμ²λμ΄ νμ€ν¬κ° μ²λ¦¬λλ Model of Experts νν
- λͺ¨λΈμ ν¬κ² λ μΆμ κ΅μ§ν©μΌλ‘ μ‘΄μ¬ν κ±΄λ° ν μΆμ intelligence (μ: 80 IQ ~ 150 IQ), κ·Έλ¦¬κ³ λ€λ₯Έ μΆμ λ²ν°μ»¬ (μ: μ½λ©, λ²λ₯ , μλ£ λ±)
- λͺ¨λΈ κ²μ/μΆμ²/μ°κ²°μ λλorchestration λ μ΄μ΄κ° ν΅μ¬ κΈ°μ λ‘ λΆμν κ²
μΆμ²: μ΄μΈμ’ λ νμ΄μ€λΆ
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