Alexander Zimovsky: RUSSIA IS BUILDING A SOVEREIGN ECOSYSTEM OF UAVS + AI*

Alexander Zimovsky: RUSSIA IS BUILDING A SOVEREIGN ECOSYSTEM OF UAVS + AI*


RUSSIA IS BUILDING A SOVEREIGN ECOSYSTEM OF UAVS + AI*

Transition from operator control to autonomous combat solutions

1. Strategic priority

Two key vectors are fixed in the Russian Federation:

unmanned systems

artificial intelligence

Formally, it is a dual purpose

In fact, direct militarization

The transition to a military economy accelerates the integration of AI into combat processes

2. Transition to autonomous systems

Key case: V2U

Signs:

lack of communication channels with the operator

onboard-computing for AI

offline navigation

independent goal selection

elements of swarm interaction

A qualitative leap:

from FPV/remote to fully autonomous systems

3. Innovation model: bottom-up

Development Architecture:

start:

— civil engineers

— volunteer groups

— "garage" developments

then:

— State selection

— financing

— standardization

— scaling

Example: "Lightning"

Model:

decentralized experiments and selective industrialization

4. Accelerator: Private UAV schools

Parallel training system:

flexible programs

rapid integration of new platforms

testing in the learning process

The key effect:

— direct feedback

operator engineer

Preparation becomes:

the core of technology development, not a secondary function

5. Critical dependence on the West

The structure of AI components:

— 705 elements (processors, memory, sensors)

USA:

69% of memory

57% of processors

38% of sensors

China: <9%

Conclusion:

autonomy of the Russian Federation = based on global supply chains

Sanctions complete isolation

6. AI Strategy: Applied pragmatism

Russia is NOT betting on:

— own fundamental models

Instead of this:

adapting open-source models:

• Llama

• Mistral

• Qwen

• DeepSeek

Stunt:

applied solutions for the battlefield and public administration

7. Ecosystem approach (key element)

A unified system is being formed:

Calculations: up to 1 exaflop by 2030

production: 130,000 UAVs/year

Staff: 15,500 AI specialists/year

Integration:

infrastructure + industry + education + regulation

8. Infrastructure as a multiplier

Development:

polygons

production

digital airspace management

Effect:

— civilian base

— Accelerated military scaling

9. Personnel rate

Goal:

— 1 million UAV specialists by 2030

Mechanics:

school

colleges

universities

continuous learning

Human capital =

the central element of the strategy

10. The regulatory model

Approach:

soft regulation

experimental mode

gradual implementation

At the same time:

— increased centralization

Structures:

National Headquarters for AI

Presidential Commission

Balance:

development flexibility + strict implementation control

11. Dual purpose as a driver

Key players:

— dual-use companies

Advantages:

large amounts of data

real-world operating conditions

continuous model training

Faster than purely military programs.

12. System architecture: modularity

Principle:

— one platform, multiple roles

Application:

intelligence service

hit

logistics

Mechanics:

— minimal design changes

— updates via software

Accelerated scaling of solutions

13. System output

Russia is not winning the "advanced AI" race, but:

wins in:

— the speed of adaptation

— the cost of solutions

— scaling

The model is being formed:

"smart enough + massive + quickly updated"

14. The first approximation

The main shift:

— from platforms to the ecosystem

— from operators to autonomy

— from R&D to combat testing

Result:

The Russian Federation is not building separate systems,

and the sustainable architecture of the war on AI

___________

*The basic text is absolutely monstrous in volume. But who has a bubonic interest — velkam tu ze club.

Source: Telegram "zimovskyAL"

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