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What Apple’s Neural Engine Tells You About the Next Decade

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0:00

Okay, I just got the new MacBook Pro and

0:03

I want to talk about it, but not in the

0:05

way that we typically hear people speak

0:08

about it. We're not going to go through

0:10

the general specs, the things that you

0:12

can easily search up online. We all know

0:14

about that. I want to talk about a

0:16

bigger story here. If you sit down and

0:18

read about the reviews, you hear about

0:19

the CPU, you'll hear about the different

0:21

specs because those are the numbers

0:23

people know how to compare. I mean,

0:24

Geekbench scores, render times, frame

0:27

rates. But there's also a 16 core neural

0:30

engine inside this machine that barely

0:32

gets mentioned. And Apple has been

0:34

making it bigger every single generation

0:36

since 2017. And so have other companies.

0:40

I mean Qualcomm, Intel, really every

0:42

major chip company on Earth is quietly

0:45

dedicating more and more transistors to

0:47

the same type of component. And when

0:49

that happens, when companies that maybe

0:51

aren't aligned on other things, but they

0:53

all start making the same thing or the

0:55

same investment at the same time, that's

0:57

not a product feature. That's a signal.

0:59

And if you know how to read that, you

1:01

can see exactly what they think is

1:04

coming. And for this video, we're going

1:05

to focus on Apple. So, I'm very inspired

1:07

by my new MacBook. But first, I want to

1:09

say a big shout out to Surf Shark, who

1:11

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1:58

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2:01

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2:05

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2:07

there's really no risk. It's just

2:09

preventing risk, especially when you're

2:10

using public Wi-Fi. All right, so we

2:13

have first we have to step back a sec.

2:14

Apple left Intel back in 2020. That's

2:17

when they shipped the M1, their first

2:18

custom silicon for Mac. And at the time,

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a lot of people treated it like a

2:23

gamble. Could Apple really design a

2:25

laptop chip as good as say Intel's? Now,

2:28

well, 6 years later, the answer is

2:30

pretty clear. Absolutely. But the more

2:32

interesting thing is how they did it.

2:34

Because Apple's approach to chip design

2:36

is fundamentally different than everyone

2:39

else in the industry. Now let's go

2:41

through an example of this. Intel, we'll

2:43

use them as an example, designs a

2:44

processor. Then Dell puts it in a

2:46

laptop. HP puts it in a different

2:48

laptop. Another company puts it in

2:50

another one. So this one company

2:52

controls the chip. The manufacturer

2:54

controls everything else. So many other

2:56

companies work the same way. They design

2:58

the silicon, license it out, and then

3:00

other companies build products around

3:02

it. And it works. It's a great way to do

3:04

things. But Apple, they design the chip.

3:07

Apple designs the memory architecture.

3:09

Apple writes the operating system. Apple

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builds the developer frameworks that

3:14

software is written against. It's one

3:17

company, one entire stack from the

3:19

transistor all the way to the API. And

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that has really interesting things that

3:23

you can actually see. I mean, take

3:25

unified memory. On a traditional PC, the

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CPU has its own memory and the GPU has

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its own memory. And when the data needs

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to move between them, it gets copied.

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That takes time and power. On the M5,

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the CPU and GPU share one pool of

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memory. So there's no copying. The data

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is just there. And Apple could do that

3:44

because the team designing the chips is

3:46

the same team designing the operating

3:48

systems memory scheduler. They built

3:51

them together. Now let's go back to the

3:53

neural engine. This is something that is

3:55

so underrated in my opinion. I mean this

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benefits from the same integration. It

3:59

sits on the same die accessing the same

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memory pool and the same software that

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runs on it which is a framework called

4:06

core ML and it was built by people who

4:08

sit down the hall from people designing

4:10

the transistor layout. I mean I don't

4:12

know if it's right down the hall but you

4:13

get what I'm saying. When you control

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the full vertical like that every layer

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can be optimized for layers above and

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below it. And this in my opinion is

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where it gets really interesting. The M5

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introduced something new. For the first

4:27

time in an M series chip, Apple embedded

4:30

neural accelerators directly inside the

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GPU cores. So, the neural engine is

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doing its thing on one part of the chip

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and now the GPU can also run AI

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workloads natively. And Apple claims it

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has over four times the peak GPU compute

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for AI compared to the M4. Now, that's

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the kind of design decision that only

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happens when one company owns the entire

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pipeline. You can coordinate what the

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neural engine handles versus what the

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GPU handles because you control the

4:59

software routing those workloads. And

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really nobody else in the PC space can

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move like that. And then the M5 is

5:06

generation 5 of this approach. So same

5:08

architecture scales from a 599 MacBook

5:11

Neo all the way up to Mac Studio. I mean

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5 years ago this silicon program didn't

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exist. Now it's powering every Mac Apple

5:20

sells.

5:21

Okay. Okay, so when I was doing research

5:22

on this, this is where, in my opinion,

5:24

the story gets pretty fun. I want to

5:26

show you something. In 2017, Apple put

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the first neural engine in the A11 chip,

5:32

the one inside the iPhone X. It had two

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cores. It could do 600 billion

5:36

operations per second. And that sounds

5:38

like a lot, but all it really did was

5:40

power Face ID and Animoji, and

5:43

developers couldn't even access it.

5:45

Apple kept it locked through their own

5:46

software. Now, one year later, A12

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jumped to eight cores. 5 trillion

5:52

operations per second, nine times

5:53

faster, using a tenth of the power. And

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this happened, or this time, Apple

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opened it up to everyone. They released

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a framework called Core ML that

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essentially let any developer run

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machine learning models on the neural

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engine. Fast forward to 2020, the A14

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doubled the core count to 16 and hit 11

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trillion operations per second. That

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same year, Apple shipped the M1 with an

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identical neural engine, bringing it to

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the Mac for the very first time. Then

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the M4 pushed to 38 trillion operations

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per second. And now the M5 takes that

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further with a faster 16 core neural

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engine, plus those new neural

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accelerators in the GPU. Stay with me

6:33

for a sec here. Follow that arc for a

6:35

sec. Two cores to 16, 600 billion to 38

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trillion, 8 years every single

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generation. And Apple chose to dedicate

6:44

more transistors to this component. And

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transistors are expensive. Chip real

6:48

estate is finite. Every square meter you

6:51

give to the neural engine is a square

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millimeter even you don't give to say

6:55

the GPU or the CPU. And Apple kept

6:58

making that trade-off anyways. And

6:59

they're not alone in doing that. There

7:00

have been a few other companies that

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have done the same thing or something

7:03

similar. Anyways, for example, Qualcomm,

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their new X2 Elite coming this year

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pushes that to 80 trillion. So when you

7:10

zoom out and see that pattern across

7:12

different companies, you're watching

7:13

something form in real time. So everyone

7:17

agrees that AI compute matters. The

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