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MIT 6.S087: Foundation Models & Generative AI. ECOSYSTEM

39m 24s7,604 Wörter1,128 segmentsEnglish

VOLLSTÄNDIGE ABSCHRIFT

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uh welcome to the fifth lecture on

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foundation

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multii and today should be especially

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fun because we have two guest lectures

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so

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uh uh Professor M Kellis from MIT will

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show up and give a talk about biology in

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Ai and the AI Frontiers Frontiers in

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computational biology then artam is here

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he's flown in from uh Silicon Valley to

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talk about autonomous agents so it

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should be a lot of fun and and I'll

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start off talking

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about a framework for foundation models

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right so will it be a single Foundation

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model like a single brain to rule them

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all will open AI have a monopoly on AI

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or not like what will be if if not right

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what kind of foundation most will exist

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what can you leverage and I think it's

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going to be useful if you're a

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researcher but also especially if you're

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in business understand what kind of

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foundation models technology

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technologies that will exist and how you

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can uh use them and leverage them and

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this is based on a talk that I've been

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giving to uh priority firms and kind of

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C Level of bigger companies around uh

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how to survive Daya explosion okay like

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a lot of things are changing now and and

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people feel it's a different type of

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technology and it's changing the

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landscape and how do you survive survive

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and prosper in this new age so that's

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what we're going to figure out

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today um okay so You' seen this before

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but a primary so what was the

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Breakthrough that happened that allowed

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us to do all of these different ad

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advancement that that we've been seeing

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well we've been using ourselves as a

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reference frame right to to ask the

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critical question how do we learn about

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the world how do we go from being a

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blank slate baby with no knowledge about

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the world fairly useless to becoming a

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useful knowledgeable adult what what

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enables us to learn from the world that

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we uh interact with right this is a key

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question in

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AI uh what we've been saying is

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basically

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that what's responsible for giving you

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most of the knowledge that you have

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about the world it's not your parents

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it's not your teacher it's not Academia

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so it's not supervised learning you not

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you don't learn from experts okay so

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that's not that's that's a technology we

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that we tried for a long time but it's

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not the answer it's part I mean it's

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helpful but it's not the answer also

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it's not a DNA right it's not your

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genetics it's not your immediate

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environment and you're trying to

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optimize your goals in that environment

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so it's not reinforcement learning

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reinforcement by itself is not the key

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answer to how we learn about the world

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right it's helpful but is not the the

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main uh uh responsible part so what is

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it right well it turns out the most

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things that we know we learn by

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ourselves so this is the key you know

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Insight that allows us to do all the

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things we're doing right now and this is

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possible by defining company like

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meaning by the company it keeps so if

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you take a dog right you don't know what

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a dog is from your parent telling you or

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your emotions getting you you learn what

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a dog is by observing dogs in different

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context correlating conting dog with

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other cont Concepts so what you get what

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how you understand a dog is a dog is

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something that's walked by an owner with

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a leash it's something that has an

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antagonistic relationship with cats it's

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something that chases fris with those

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theone this is what allows you to

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understand what a dog is and this is how

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you define what a dog is and what you

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get by this is a very relational

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understanding of meaning right and as

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you learn about dogs by correlating

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contesting dogs with other Concepts like

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cats you intern learn what cats are so

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it's kind of self-referential and and

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very very powerful you can pick up know

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across modalities of course because the

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word dog will be Ed or named more in

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context where dogs appear so it's

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extremely

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powerful so what does this lead to well

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it leads to that the more relations that

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you're able to understand the better

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understanding you get of meaning you

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understanding what a dog what a Love Is

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Right you understand what love is helps

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you understand what a dog is because an

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owner loves his dog so it's like a lot

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of synergy networks affected play okay

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this is the key Insight here

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so why not take a you know huge model

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with as many parameters as possible and

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train train it on as much data as

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possible to learn all of these different

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relations to get the most precise and

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Powerful understanding of meaning and

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then use this model basically everywhere

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right and this is what a foundation

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model is right is it a key breakthrough

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you know throughout generative Ai and

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everything that we're seeing right now

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and also of course your brain is a prime

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example of

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this okay so here kind of going divert a

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little bit I've thought about this

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before so what does this actually mean

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right what does it mean now that we have

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these Foundation models that learn

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relational meaning and the more data

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you're training on them on the better

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they get somehow and just get bigger and

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bigger so one thing that you know that's

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happened right is that there been a

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complete change and transformation in

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the research world so six years ago when

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I was at Stanford there used to be you

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know one research lab data set and and

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AI model for different language task

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right so this start this start off

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initialing language you would have one

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data set one model one research team

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working on translation another one

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working on question answering a third

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one of sentiment analysis and then a

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fourth one of predictions right in

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isolation isolate effort but they ask

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them hey you know this seems to be a

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shared perspective here and a shared

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Intelligence being language modeling or

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language intelligence can we optimize

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that instead and know pull our data and

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efforts together and optimize single

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intelligence that synergetic because we

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don't have a you know separate brain for

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each language task so real intelligence

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should be General and and and synergetic

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right so that's what I did we're able

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now to build this language models that

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are trained and really understand

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language in a deep intelligent way so

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all the different tasks that we care

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about in language are just downam tasks

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of this real intelligence this real

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Foundation

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model okay and of course even though you

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know a lot of companies are behind in

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this the same applies to companies and

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businesses if you come to a company

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today right how the think about AI or

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data or Technologies is typically very

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isolated efforts you know solving

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something right so if you if you go to a

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retailer for example they may might have

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a SE separate service and data data set

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and team working on product search

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another one for recommendations a third

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one for assortment planning right

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campaigns marketing but these of course

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are not separate intelligences these are

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very very synergetic right if you're

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able to recommend the right products at

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the right time to user recommendations

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that should influence your marketing

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like what product should you Market who

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so someh you want to build right this

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intelligence around a company as well

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and this what you can do right so you

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can build a single brain around an a

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company to really get at all the

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synergies and get the most

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performance okay so what this leads to

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is basically right so at Stanford now

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the only research team that survived and

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prospers are the one focusing on

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building a foundation all around

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language right like the key core

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