Full Transcript

·YouTLDR

Palantir's Al Targeting System Running the Iran War

16:473,521 words · ~18 min readEnglishTranscribed May 4, 2026
AI Summary

Palantir’s Maven Smart System is revolutionizing modern warfare by compressing the 'OODA loop'—Observe, Orient, Decide, Act—using AI to process thousands of targets in hours rather than days. This software integrates massive data streams from satellites and drones into a unified interface, moving combat operations away from manual tools like Excel and Google Earth.

The video highlights a paradigm shift in national security where AI-driven fusion layers determine the speed of military response, raising critical questions about civilian oversight and the accuracy of autonomous decision-making.

Section summaries

0:00-1:00

Introduction

watch

Provides the hook regarding the Iran conflict and the core stats of AI-driven warfare.

1:00-2:00

The OODA Loop Concept

optional

Explains a common military framework; skip if you are already familiar with the term.

2:00-4:00

Maven Interface Walkthrough

watch

Crucial technical demonstration of the software's UI and target nomination process.

5:00-10:00

Sensor Technology & SIGINT

watch

Detailed breakdown of SAR, WAMI (Gorgon Stare), and AdTech tracking which is highly relevant to defense researchers.

14:00-16:00

Self-Promotion / Future Projects

optional

Focuses on the creator's personal 'God's Eye View' tool and roadmap.

Key points

  • Compressing the OODA Loop — Maven uses AI to automate the 'Observe, Orient, Decide, and Act' cycle, allowing the military to strike 13,000 targets in 38 days—a speed impossible with traditional human-led analysis.
  • The AI Fusion Layer — Maven acts as a 'Google Earth for war,' layering satellite feeds, Wide Area Motion Imagery (WAMI), and signals intelligence (SIGINT) to identify objects and nominate them to a 'Kanban board' for strike approval.
  • Unconventional Intelligence Streams — Modern intelligence leverages 'Advertising Intelligence' (AdTech) to track targets; for example, geolocating a 'dark' vessel because a crew member is playing Candy Crush on an unencrypted mobile network.
  • Dual-Use Technology for Personal Awareness — The same frameworks used for battlefield situational awareness—sensor fusion and computer vision—can be applied to civilian logistics, smart home security, and personal data management.
We've killed more people on Microsoft Office than you would ever imagine. A Military Officer (quoted by the speaker)
Left click, right click, left click. Magically, it becomes a detection. Chief AI Officer for the Department of War (quoted)

AI-generated from the transcript. May contain errors.

0:00

So, what the heck does Palanteer

0:02

actually do?

0:03

>> Left click, right click, left click.

0:05

Magically, it becomes a detection.

0:08

>> This demo by the chief AI officer for

0:10

the Department of War is perhaps the

0:12

closest look we've gotten at Maven Smart

0:14

System.

0:16

The AI powered software at the front

0:18

lines of global conflicts today. The big

0:21

bottleneck in modern warfare is the time

0:23

it takes to target your adversary. And

0:25

in the first 12 hours of the Iran War,

0:27

the US struck nearly 900 targets and

0:30

over 13,000 targets in 38 days. This is

0:33

a massive increase over the way things

0:36

used to be. And central to that is Maven

0:38

Smart System. I want to walk you through

0:41

how this thing actually works and then

0:42

show you how much of these capabilities

0:44

we can actually build using commercial

0:46

and off-the-shelf tools minus of course

0:48

the missiles at the end because the

0:49

applications for situational awareness

0:51

go way beyond the battlefield. And

0:53

because TED is over, this is exactly why

0:55

I've been heads down building God's Eye

0:57

View into something bigger than a

0:59

YouTube series. And if you've been

1:00

asking me when you can actually use this

1:02

stuff, you're going to want to stick

1:03

around till the end. So, let's get into

1:05

it.

1:08

All right, so there's this military

1:10

concept called the UDA loop. Observe,

1:12

orient, decide, and act. This is

1:14

honestly what you do when you wake up in

1:16

the morning and decide to go get your

1:17

coffee or eat a burrito in the evening.

1:19

The key point though is your decision

1:20

cycle needs to be faster than your

1:22

adversary because if you do that, they

1:24

can basically never catch up. They can't

1:26

orient. They can't plan. They're always

1:28

in react mode. And the whole idea behind

1:30

Maven is to compress that entire loop.

1:32

And we're going to walk through every

1:33

single step so it's crystal clear. Okay.

1:35

First is the backstory. This was really

1:37

interesting to get into because to

1:38

understand why Maven exists, you need to

1:40

understand what came before it.

1:42

Adversarial targets were tracked in

1:44

Excel spreadsheets. PowerPoint was used

1:46

for mapping network connections between

1:48

all of them. Google Earth was there for

1:50

zooming in and out. As one officer put

1:52

it, "We've killed more people on

1:54

Microsoft Office than you would ever

1:56

imagine." I mean, just think about it.

1:57

The modern commander with all the crazy

1:59

sensor systems at his disposal is going

2:01

into battle with Microsoft Office and

2:03

Google Earth. Maven was created to fix

2:06

all of that. Basically, Google Earth for

2:08

war, but with AI telling you what's

2:10

actually on the screen. All right, so

2:11

here's what they built. What you're

2:12

looking at are feeds from satellites,

2:14

drones, signals, intelligence, prior map

2:16

data, all layered together on a globe.

2:19

You can see which aerial assets are in

2:20

the area, as well as different target

2:22

designations. Now, we're seeing a drone

2:24

view. You can see the vector outlines of

2:26

the buildings that are highlighted. With

2:27

a couple clicks, you load up your, let's

2:29

say, road network data, so you can see

2:30

how exactly to make it to that point.

2:32

And then, when you zoom in, you see all

2:34

these dots. These are basically

2:35

detections made using computer vision.

2:37

And you'll notice there's a number

2:38

associated when you hover over them and

2:40

nominate things to the board. That

2:42

number is its stable identifier. The

2:44

idea being that you can tell this is

2:45

indeed the same card that let's say

2:46

you're seeing in a satellite view versus

2:48

a drone view versus CCTV. Then you can

2:50

take these detections and nominate these

2:52

to a literal cananban board like a task

2:54

tracker where you can drag cards from

2:56

todo to done. These vertical columns

2:58

each have their own different process

2:59

and they essentially represent what

3:01

different teams would have been doing.

3:02

Once you've taken these detections, you

3:04

can take advantage of other workflows to

3:06

figure out what is the right asset to

3:08

task to execute that target. You can

3:09

choose different criteria. You can

3:11

optimize different metrics like time to

3:13

target, how much fuel, munitions,

3:14

distance, etc. And from all of that, it

3:17

gives you a recommendation that a human

3:18

actually approves a plan which it goes

3:20

about and executes or as the chief AI

3:22

officer put it in order to get to our

3:24

desired instinct, actually closing a

3:26

kill chain. So basically the Department

3:28

of War loves this because Maven is

3:30

taking something that used to take a

3:31

room full of analysts, right, to go

3:32

generate that course of action for them.

3:34

Now that entire complicated pipeline can

3:37

all be collapsed down into one software

3:39

that all these teams use to make the

3:40

stuff happen. The AI starts recommending

3:42

which asset should prosecute that

3:44

target, which drone, which missile

3:45

system, which aircraft based on

3:47

proximity, payload, rules of

3:48

engagements, and then you approve that

3:50

plan. So you go from like detection to

3:52

strike decision in one system. And just

3:54

for a second, imagine that this has been

3:56

happening thus far in Microsoft Office

3:57

and Google Earth. Now, let's map this to

4:00

the UDA loop. The sensor feeds that are

4:01

coming in, right? Like the satellites,

4:03

aerial, drone, all that stuff. That's

4:05

the observation. The system is fusing

4:07

and classifying what it sees. That's

4:09

orientation. The canban board and the

4:11

course of action generation, that's

4:12

decision. And then finally, actioning

4:14

the target. That's the acting bit. We're

4:17

going to come back to this demo

4:18

throughout the video cuz each section

4:19

breaks down one step of this loop. Now,

4:21

here's the part that's super complicated

4:23

and controversial. There's pretty good

4:24

consensus based on reporting that the AI

4:27

that's doing this like natural language

4:29

intelligence queries inside Maven,

4:31

that's Claude, built by Anthropic.

4:33

Anthropic actually was one of the first

4:35

to deploy large language models in

4:37

classified military settings. In fact,

4:38

the Washington Post reported that Claude

4:40

is central to the US campaign in Iran.

4:42

But Anthropic obviously drew a line

4:44

which Daria got a lot of flack from the

4:47

administration for. basically said, "You

4:48

can use claude as long as it's not used

4:50

for fully autonomous weapon systems or

4:52

mass domestic surveillance." The Trump

4:55

administration replied by declaring

4:56

anthropic a supply chain risk. Their

4:58

argument was, "Hey, you're a contractor.

5:00

You provide us the tool. You have no say

5:02

over how it's actually used." And when

5:04

you combine this with other reporting

5:05

that seems to suggest that it's actually

5:06

clawed 3.5 sonnet that's actually being

5:09

used in the system, it really makes you

5:11

think like, are these models actually

5:12

good enough to deploy in the wild? So,

5:14

the AI company that first brought their

5:16

large language model to a classified

5:17

setting, that's a key part of this Maven

5:19

smart system is now at the center of

5:21

this battle with the government. And

5:22

based on recent reporting, it seems like

5:24

a deal can still be struck. But the

5:26

tension is very real. And we'll come

5:28

back to this cuz it matters.

5:32

All right, so Maven is obviously only as

5:34

good as what it can see, the underlying

5:36

data that is made available to it. So,

5:38

let me show you what that actually is.

5:39

Obviously, you've got crazy spy

5:41

satellites in orbit, keyhole stuff, the

5:43

new things that SpaceX is building.

5:45

You've got synthetic aperture radar,

5:46

which we've extensively covered in the

5:48

past. Both military and commercial

5:50

satellite systems like ISI and Capella

5:52

Space that fire literal radar pulses

5:54

through cloud through darkness that

5:56

return 25 cm resolution imagery of the

5:58

ground. We've covered this previously.

5:59

Very dual use tech, the same stuff to

6:01

figure out if a landslide's going to

6:03

happen or if a bridge is about to break,

6:04

is also critical to these kill chains.

6:06

Now, here's the stuff that most people

6:08

don't know about. wide area motion

6:10

imagery or whammy. They started off with

6:12

a system called Gorgon Stair. This is

6:14

mounted on those classic MQ9 Reaper

6:17

drones and basically it uses 368 cameras

6:20

stitched together into a 1.8 gigapixel

6:23

composite image so that you can

6:25

persistently surveil an entire small

6:27

city from 25,000 ft. Think of this like

6:29

Google Earth Live. If you've actually

6:31

seen the movie Enemy of the State

6:32

featuring Will Smith, this program was

6:34

actually inspired by that movie. That's

6:35

freaking wild to me. So the idea is once

6:37

you've got this persistent image of

6:38

absolutely everything, when something

6:40

bad happens, let's say an IED goes off

6:42

in Afghanistan, you can then rewind to

6:44

see where that car originated from.

6:46

There's an even more advanced version of

6:48

this called Argus is that can cover 36

6:50

square miles with enough resolution to

6:52

track individual pedestrians. This way,

6:54

as long as you have an airplane or a

6:56

drone, you know, orbiting over a city,

6:58

you can figure out exactly what's

6:59

happening on the ground in the past, in

7:01

the present, and of course the future as

7:03

well. So, if we go from wide area to

7:05

narrow areas of monitoring, that's what

7:07

you might usually associate with drone

7:09

footage, essentially FMV or full motion

7:11

video. You've got these Reaper drones

7:12

that are capable of taking these live

7:14

feeds directly into Maven for real-time

7:16

object detection and classification. And

7:18

what's interesting is that these drones

7:19

can also now operate in GPS denied

7:21

environments, right? Like which Iran

7:23

obviously is and other conflict zones

7:25

across the region. They're constantly

7:26

getting jammed and spoofing GPS, right?

7:28

You can't rely on GPS in those

7:30

scenarios. If you remember, we've talked

7:31

about visual positioning systems in the

7:33

past before where you can take a camera

7:35

image, match it to a prior 3D model to

7:37

figure out exactly where that photo is

7:39

taken. Drones use this technology, too.

7:41

And Vantor's got something called the

7:42

Raptor system that matches that onboard

7:45

camera feed against their precision 3D

7:47

terrain model. So, Vantor's used a 30cm

7:49

satellite imagery to build this coarse

7:51

3D model of the world. And that becomes

7:53

the key for it to figure out exactly

7:56

where every drone photo was taken.

7:58

Suddenly, the drone doesn't even need

7:59

GPS. It knows where it is just based on

8:02

the terrain. Now, as you probably saw

8:03

with God's Eye View, one or two layers

8:05

by themselves are only so interesting.

8:07

But when you start putting in different

8:09

sources of intelligence together, that's

8:11

where you get that classified grade

8:13

picture. Signals intelligence is

8:15

obviously a huge part of how these

8:16

systems work. I'm talking intercepted

8:18

communications, electronic emissions

8:21

integrated alongside the imagery. We've

8:23

talked about RF satellite constellations

8:25

in orbit like Spire that do dark vessel

8:27

detection, right? like vessels that are

8:29

turning off their transponder. In

8:30

addition to that, you have entire shadow

8:32

fleets, right, that are not just turning

8:34

off their AIS, but they're actively

8:35

masking or offiscating their presence.

8:38

But there's another source of data that

8:39

solves that problem, too. And that's

8:41

called advertising intelligence. So,

8:43

sure, you're a shadow fleet. You're out

8:45

in the wild. You've actually repainted

8:47

your ship and you think you're

8:48

scot-free. But turns out the people on

8:50

board have a cluster of devices that

8:52

have Candy Crush installed. You can use

8:54

that ad network data to geollocate where

8:56

that ship is. That's the world we live

8:58

in. You can offiscate all other signals,

9:00

but the fact that you've got some folks

9:02

on board that like playing Candy Crush

9:04

means you will be pinpointed. And then

9:05

there's a secret one that's been

9:07

reported lately, the RQ80, America's

9:10

most classified stealth reconnaissance

9:12

drone. It was publicly exposed for the

9:14

first time during this war when it

9:16

emergency landed at an air base in

9:17

Greece this past March. It's a flying

9:19

wing that's believed to operate at

9:20

60,000 ft plus for 24-hour autonomous

9:23

missions. And it's believed to have been

9:25

tracking Iran's mobile missile

9:27

launchers, the kind of targets that move

9:28

and hide. You need that persistent

9:31

overhead coverage to catch them. Now,

9:33

does this have a SAR system on board? Is

9:35

it something more like whammy? We just

9:37

don't know, but I suspect it's a

9:39

combination of modalities. Now, of

9:40

course, on top of all of this, you layer

9:42

in commercial satellite imagery from

9:43

like Vantor, Planet Labs, you've got the

9:46

maritime AI tracking data. All of it

9:48

gets fused together into one picture.

9:50

That's the observe step. Maven basically

9:53

can see everything. Now the question is

9:55

how do you make sense of it?

10:00

This is where we go back to left click,

10:01

right click, left click. This is orient,

10:03

decide and act happening in one

10:05

interface. Now watch what happens when

10:06

you do this at scale. Obviously I've

10:08

been covering Operation Epic Fury deeply

10:10

on this channel. If you've seen those

10:11

God's Eye View videos and our Hermos

10:13

coverage, you know the timeline already.

10:15

Now, Epic Fury kicked off Feb 28th, and

10:17

in the first 12 hours, the US struck

10:19

nearly 900 targets across Iran. But

10:22

perhaps the most dramatic single

10:23

operation was Car Island. On March 13th,

10:25

the US hit over 90 military targets

10:28

simultaneously. I'm talking naval mine

10:30

storage, missile bunkers, air defense

10:32

systems in what Trump called one of the

10:34

most powerful bombing raids in the

10:36

history of the Middle East. Critically,

10:38

the oil infrastructure was deliberately

10:40

left intact. So, how do you coordinate

10:42

90 plus simultaneous strikes? Suddenly

10:44

software like Maven earns its keep.

10:46

Orient, decide, act all premputed using

10:50

the latest sensor data and executed and

10:52

tasked in parallel. Now here comes the

10:54

critical trade-off, right? Like is there

10:55

a cost to speed? Is there a point at

10:57

which Maven's accuracy surpasses that of

10:59

a human analyst? And if it does, there's

11:01

still going to be a gap and at a large

11:03

enough scale that gap is going to

11:05

manifest itself in targets getting hit

11:07

that shouldn't have been hit. I think

11:08

this is where we're also going to have

11:09

to contend with how this technology is

11:11

deployed in the wild. Right? The

11:12

Department of War right now is a very

11:14

clear stance. There are no fully

11:15

autonomous weapon systems. Everything

11:17

has a human in the loop. But think about

11:19

self-driving vehicles. At some point,

11:20

self-driving gets accurate enough where

11:22

it's better than the average human

11:24

driver. But if you add up enough of

11:25

those drives, people are going to die.

11:27

And what happens when the systems make

11:29

incorrect decisions? Like why was that

11:31

incorrect decision made? Is it the model

11:33

maker like Claude or Anthropic that's at

11:35

a fault here? Is it the sensor data

11:37

perhaps that it was made on? or even

11:38

underlying maps data. For example, the

11:40

underlying map data that you have your

11:42

AI digest incorrectly classified a

11:45

school, whose fault is that? Now, look,

11:46

there are plenty more questions to get

11:48

in here. But the broader question

11:50

remains, when you're processing

11:51

thousands of targets in 24 hours, what

11:54

gets missed and who's at fault there?

11:56

And then the question gets heavier. Once

11:58

these systems get good enough to justify

12:00

not having a human in the loop, what

12:02

happens when you're processing thousands

12:03

of targets in a short period of time?

12:05

And to be clear, this isn't just

12:06

Palanteer. Like Android has lattis,

12:08

right? Very similar concept, different

12:09

platform. Take a bunch of these sensor

12:11

systems together and create a fused

12:13

operational picture of the battle space

12:15

and have AI handle the orient and decide

12:17

steps. But this common operational

12:19

picture isn't just useful on the

12:21

battlefield. This is the same kind of

12:23

platform. The same Palunteer technology

12:25

actually runs the UK's NHS CO data

12:28

system. It optimizes logistics for the

12:30

world food programs. It runs Airbus's

12:33

supply chain. Oil and gas giants use it

12:35

to create incremental revenue

12:36

opportunities. It catches money

12:38

laundering for banks. I mean this is the

12:40

same udal loop, the same fusion layer

12:42

just being applied to different

12:44

problems.

12:48

So when you pull all these capabilities

12:49

apart, the same pieces that the defense

12:52

sector is using can be mapped to

12:53

civilian capabilities that exist right

12:55

now. So observe you've got the sensing

12:57

layer, you can buy satellite imagery.

12:59

SAR imagery is also commercial. You've

13:01

got capernicus and if you want to go low

13:03

resolution, satellite and plane tracking

13:05

data is effectively free. The more

13:06

expensive thing is AIS ship tracking

13:08

data, but that too is accessible. In

13:10

countries like Japan, you have a

13:12

plethora of CCTV camera feeds. You can

13:14

fly your own drones. You can buy robots.

13:17

You've got social media adtech data. All

13:19

of this is stuff that you can either

13:20

access or purchase. Then you have the

13:22

Orient step. This is classification and

13:24

fusion. This is exactly what computer

13:26

vision and large language models already

13:28

do. Let's say you take your own personal

13:30

security camera and give it to Meta

13:32

Segment anything model. It can figure

13:33

out, hey, here are the objects in the

13:35

scene. Then you give it to Claude or

13:37

Gemini to tell you what those things are

13:38

doing and it can infer the context of

13:40

everything else that's going on. It can

13:42

check to see, hey, you were supposed to

13:43

get an Amazon delivery and that is

13:45

indeed the person that's now showing up.

13:46

Basically, you can build your own AI

13:48

layer that makes sense of all the data

13:50

that's at your disposal. And this

13:52

technology is available to everyone. I

13:54

mean, the more I use my own like Ring

13:56

camera, I am so frustrated by how

13:58

limited this thing is and the fact that

14:00

it has to go to some centralized server

14:01

to do such basic things for me annoys

14:03

me, especially when I know the AI tools

14:05

at my disposal are capable of so much

14:07

more. And then finally, you have decide

14:09

course of action generation, right? So,

14:11

for the military, that means

14:12

recommending a weapon and an asset. For

14:13

us, it's things like what should you

14:14

actually be paying attention to? What

14:16

changed? What's anomalous? and have the

14:18

system surface that automatically. Not a

14:20

barrage of detections like unknown

14:22

person detected at this time stamp that

14:25

doesn't tell me anything and then act in

14:27

Maven. That's kinetics or deploying

14:29

human assets. For us, it's decisions.

14:31

It's knowing what's happening and being

14:33

able to respond to it in near real time.

14:35

Now, I've already been building this and

14:36

here's the road map. The first

14:38

application is God's eye view. You've

14:39

seen this tool evolving and I've been

14:41

building it to fuse open source

14:42

intelligence into a common operational

14:44

picture. what's happening in the world

14:46

visualized the same way these military

14:48

systems do it but with publicly

14:50

available data. You've seen it in my

14:52

coverage of Epic Fury and Straight of

14:53

Hermuz. And clearly y'all love it

14:55

because it's the most unbiased

14:57

perspective we can have without the

14:59

usual color of traditional media. And

15:01

let me tell you, that's getting a lot

15:02

more capabilities because now I've got a

15:04

team. The second application is

15:06

situational awareness for your own life.

15:08

Your own data, your own cameras, your

15:10

own feed, your own context fused into

15:13

the same kind of unified view, not

15:15

surveillance. I'm talking about

15:16

awareness of what's happening in your

15:18

sanctum sanctorum. You've got the map of

15:20

the world and everything that's publicly

15:22

available and then your own island that

15:24

you control. Want to share it with

15:25

others? Go for it. You want to keep it

15:27

private, you can do that, too. Private

15:29

by default and optionally sharable with

15:31

others. I mean, the cool part is you can

15:33

buy all of these fancy sensors. The AI

15:35

is commercial, too. The only piece that

15:37

doesn't exist is the fusion layer, the

15:39

thing that pulls all of this together

15:41

into one picture. And that's what I'm

15:42

building. Observe, orient, decide, act.

15:45

That's how all these platforms work. And

15:46

honestly, that's how great

15:48

decision-making works in general. You're

15:50

probably just doing it slower without

15:52

all of this technology. So, that's where

15:54

I'm going next. God's Eye View is the

15:55

window to the world that we all deserve

15:57

to see. I'm going to keep monitoring the

15:59

global situation as it evolves, getting

16:00

sharper, faster, and soon something that

16:02

you can actually use yourself. And then

16:04

there's the second surface, Argus. The

16:07

same framework turned inwards to your

16:09

world, your data, your context, so you

16:11

can create automations around the

16:12

physical world that you can't even

16:14

imagine today. So, this is what I hope

16:16

you'll get clarity about what's

16:18

happening in the world, but then also

16:20

your world. And by the way, if you can't

16:22

wait for me to release this, so many of

16:23

you reached out and I've responded to

16:25

you giving you the ingredients so you

16:27

can at least go make the viewer

16:28

yourself. Just point your clanker of

16:30

choice at my Substack post and they'll

16:31

do a really good job. If you take my

16:33

YouTube video transcripts in addition to

16:35

that, it'll take you rest of the way

16:36

there. But if you are willing to be

16:38

patient, I've got some really exciting

16:40

updates coming for you very soon. Blavo

16:42

signing off and I'll see youall on the

16:43

next one. Cheers.

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