TRANSCRIPTIONEnglish

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

47m 7s8,246 mots1,198 segmentsEnglish

TRANSCRIPTION COMPLÈTE

0:00

all right well um sorry we're a little

0:01

bit late but let's get started

0:04

um so welcome to the first lecture on

0:08

the lecture series called future of AI

0:10

Foundation models and generative AI this

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is actually the second year we we hold

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this class and so I started working on

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this course before the recent hype and

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breakthroughs of CHP um and I really

0:23

felt that we're starting to see kind of

0:26

a new approach to AI in the community

0:28

that was really going to change things

0:30

for real H and I think we started to see

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that right

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now um and really what I want to

0:35

accomplish in this lecture series is to

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give you an understanding of why this is

0:39

happening right now what's the

0:41

underlying kind of change in perspective

0:44

and also going Beyond just kind of the

0:46

tip of the iceberg which is chtp so I'm

0:48

going to give you a deep but

0:49

non-technical introduction to these

0:52

subjects

0:55

and and uh last year when I gave this

0:57

course we were excited about uh t to

1:00

video and text image models right guess

1:02

we still are uh we were excited about uh

1:06

superum

1:07

robotics uh self-driving cars and AI

1:11

applied now to other domains as well

1:14

like genomics

1:16

Etc

1:18

and um of course A lot of these

1:20

breakthroughs even if they're in very

1:22

different domains they come back to this

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underlying technal technological

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achievement of foundation Ms generative

1:29

AI

1:30

um we going going to dive into last year

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uh we were excited about chat GPT right

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so we could ask it to write an engaging

1:39

introduction to an a lecture if we ask

1:42

the updated

1:43

gp4 it does it produces more text but

1:46

maybe does a better job as well uh last

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year we asked it to produce a engaging

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artwork of artificial

1:54

intelligence uh and now we asking the

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newest version uh it also might be doing

1:59

a better better job it looks more

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involved at least uh AR is subjective

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but uh I think it's

2:07

better so if we were excited about these

2:09

things uh in you know early 2023 what's

2:13

happened right what H what's happened

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during this year well uh a lot of things

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of course there been a tremendous hype

2:21

so there's been a lot of uh you know

2:24

money pouring into these uh areas we've

2:26

had companies that only you know few

2:29

weeks or months old reaching A2 billion

2:32

dollar valuation which is a team of five

2:35

people um we've had excitement about

2:39

autonomous agents we're going to talk

2:40

about during this course as well like

2:42

GPT engineer that's able to plan and and

2:45

even act in a more humanlike way in

2:48

terms of

2:49

intelligence uh Nvidia that provides all

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the different dpus right that these

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models need have reached a a huge

2:57

valuation like the $1 trillion club with

2:59

we've seen uh sweeping uh regulatory uh

3:04

kind of Acts and and uh uh initiatives

3:08

right uh both from the White House and

3:11

the European Union for

3:13

example there's been a lot of drama in

3:15

the a space right openi for example the

3:18

CEO and the company behind CH CHP the

3:21

CEO was outed and then came back in so

3:24

maybe the transparency problem in AI

3:26

doesn't only apply to the models but to

3:28

the structures and companies behind them

3:31

and also you know we're seeing kind of

3:33

some hype and some winners u in terms of

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the this new AI Technologies but also

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now some companies are actually losing

3:41

uh users and usage right stack Overflow

3:44

for example people saying that kind of

3:46

is being killed by an AI That's training

3:48

its own data which is kind of

3:50

ironic uh of course one of the big

3:53

questions that remain is have you

3:54

reached artificial general intelligence

3:57

yet H some people say we have I think uh

4:01

there's still quite a long way to go but

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we're going to try to also explore a

4:05

little bit uh you know what what can we

4:08

actually mean with a AGI and how could

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we potentially reach it given the

4:13

technology that we have right now and

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can we give some kind of very uh order

4:17

of magnitude estimation to when we'll

4:19

get

4:20

there so uh I'm a Richard I was uh born

4:26

in the land of abania which is Sweden

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and uh before MIT I was at Stanford uh

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for seven years and I did research as

4:35

well on AI and and this stuff also

4:38

started a company that that does uh

4:40

Foundation models inative AI in

4:42

commercial settings I hope to bring in a

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little bit of that those perspectives as

4:45

well H for the last four years almost

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now I think yeah almost four years I've

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been at MIT uh where I do research on on

4:54

South press learning and and financial

4:57

models and that good

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stuff

5:00

okay so uh quickly on this SC course

5:03

schedule so today we'll give an

5:06

introduction and kind of a history of AI

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from a high level perspective as well

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what's going on and giving some kind of

5:12

intuition and and then in the next

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lecture we'll dive much more into

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details about how these different

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algorithms work and how we arrive at

5:20

these models that we use H after that

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we'll do an in-depth analysis of CHP

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like a case study then we'll do a

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similar case study on image generation

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and stable diffus

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then right and these four first lectures

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will be very similar to last year's

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offering but then we adding on Jan 23rd

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we going to talk about kind of emerging

5:39

Foundation models right it's going to be

5:40

a combination of them existing out there

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probably not one single model to rule

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them all so we're going to talk about

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that especially how that looks in uh

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industry and corporate setting uh so

5:51

Professor man Kellis uh will come as

5:53

well as you he's an expert on U biology

5:57

and genomics and then also artm working

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who's uh an MBA from MIT he will talk

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about autonomous agents and then we'll

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have a fun kind of uh or it's going to

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be a fun hopefully fun lecture on AI and

6:12

ethics which is of course perhaps a

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little bit more fussy but we also bring

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in regulations what kind of what's

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happening in terms of the institutions

6:20

regulating AI H and after that we also

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have a panel with manolis and artm uh so

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should be fun all right so what will

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cover well we'll cover all the busws and

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new network supervised learning

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representation on supervised learning

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reinforcement learning genive AI

6:37

Foundation model self superus learning

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and we'll try to put together with a lot

6:41

of applications a lot of intuition uh

6:44

because it really you know should be

6:46

non-technical and I think as well I want

6:49

to try to explain things in in simple

6:52

but true you know deep ways and I think

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if you're not able to explain something

6:56

in a simple way you're actually not

6:58

doing a good job explaining it so that's

6:59

what we're going to try to do at

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least today we're going to give you a

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short succinct answer to what is the

7:07

secret Source behind Foundation

7:09

malternative Ai and then when we've done

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that we're gonna ask how's the world

7:14

structured because how we think the

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world is structures structured uh really

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influences how we learn in the world so

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we're going to kind of explore that from

7:23

a more philosophical perspective and see

7:25

how that actually leads us to uh

7:27

Foundation models and generative AI

7:30

and then we'll at the end we'll cover

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two applications of how we can use this

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in in in both research and in

7:39

business again right we're going to try

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to use intuition examples and example

7:44

from both sciences and business and

7:47

hopefully you'll you'll understand why

7:49

the hype actually is real I said it's

7:51

last year but it is real and maybe we

7:54

understand what's actually just hype and

7:55

what's the the kind of more foundational

7:58

aspect of it right what

8:01

matters okay so I think in trying

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to uh understand and and U you know have

8:11

a

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