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Interlatent
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Interlatent
@interlatent
Robotics Deployment & Post-training Platform https://t.co/qepIAX9Zi4
Inscrit le Şubat 2026
3 Abonnements2.7K Abonnés

@interlatent what u think if my first robot x.com/EmanueleUngaro…
Emanuele@EmanueleUngaro_
Abominatiotron 1 is alive
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@interlatent I think this was a good read, I think if I was going to give you 1 piece of feedback to make it stronger, it would be making the opening section break down what the article will teach someone, what concepts a reader will take away, and then a table of contents or deep-linking.
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Our mission is to make it easy for anyone to deploy a robot to help them in the real world
We wrote an intuitive guide to understanding modern robotics, catered toward an audience that understands technology but not AI robotics
We hope that this short blog post embeds in you the core principles that will bring further curiosity.
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@z_aaa_th Thank you! The visualization is definitely exaggerated for the purpose of understanding
But you can imagine that when a robot moves in chunks it controls the trajectory better because there are less opportunities of producing an out of distribution state
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@interlatent Great overview of the current state of robotics!
Here's a gap that I ran into:
Compounding error in the discrete (non-chunk) action visualization looks exaggerated. How does ACT approach combat the same issue, compounding error between chunks?
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@BangMingYong no clever tricks, same tools as most other websites
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@interlatent This is a very beautiful website. How are the animations created??
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@nikhilkr yes on paper everything sounds easy
in fact, everything is a function on paper
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the policy-as-function framing is the right starting point
the part that takes years to really feel is the observation space is never clean in the real world. camera pixels get occluded, joint angles drift, gripper force readings lie.
you spend months making the inputs trustworthy before the policy has any chance of being good
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We propose a reward shaping mechanism which aims to reward positive parts of rollouts while adding time step penalty to discourage idleness or inefficiency.
More in the blog post below
interlatent.com/blog/automatic…
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