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Using reinforcement learning, we trained policies for Boston Dynamics Spot that allow the robot to achieve record running speeds of 11.5 mph (5.2 m/s) — over three times faster than Spot's default max speed.

98,538 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Loic Argelies
Loic Argelies1 год назад

@BostonDynamics Need a gallop mode…

Фото профиля The Rundown AI
The Rundown AI1 год назад

If you're not learning AI in 2025, you're falling behind. Join 1,000,000+ early adopters reading and learn AI in just 5 minutes a day (for free).

Фото профиля io.net
io.net1 год назад

@BostonDynamics At 11.5 mph, Spot is officially faster than most humans. Sleep tight.

Фото профиля Victor Brink
Victor Brink1 год назад

@BostonDynamics Great! Now teach it how a change in gait like a cheetah can multiply its top speed further... 110 km/hr (70 mph) This would be epic. The Black Mirror episode featuring a running bot is "Metalhead" for further inspiration.

Фото профиля Elie Aljalbout
Elie Aljalbout1 год назад

@BostonDynamics very impressive!

Фото профиля TeslaElon SpaceXFan
TeslaElon SpaceXFan1 год назад

@BostonDynamics 🥳👍

Фото профиля Liberty Mint
Liberty Mint1 год назад

@BostonDynamics For sustained duration? Faster speeds achieved in sprint?

Фото профиля AI_TechnoKing
AI_TechnoKing1 год назад

@BostonDynamics Galloping gears!

Фото профиля Rodomonte
Rodomonte1 год назад

@BostonDynamics @AskPerplexity give me calculations on max possible physical speed for a robot of that weight

Фото профиля Pat Dunne
Pat Dunne1 год назад

@BostonDynamics Yup RL.. just like motors.. it’s a thing .. welcome BD back to the race

Фото профиля Tom Ramirez
Tom Ramirez1 год назад

@BostonDynamics Robot PT

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