Telegram Group & Telegram Channel
Tasty AI Papers | 01-31 August 2024

Robotics.

🔘Body Transformer: Leveraging Robot Embodiment for Policy Learning

what: one transformer to control whole body.
- propose Body Transformer (BoT)
- vanilla transformer with special attention mask, which reflects interconnection of the different body parts.

🔘CrossFormer Scaling Cross-Embodied Learning for Manipulation, Navigation, Locomotion, and Aviation

what: One transformer that can control various robot types.
- trained on 900K trajectories from 20 different robots.
- matches or beats specialized algorithms for each robot type.
- works on arms, wheeled bots, quadrupeds, and even drones.

Diffusion + AR Transformers

🟢Transfusion: Predict the Next Token and Diffuse Images with One Multi-Modal Model

what: merge AR decoder with vanilla diffusion.
- train model with two objectives: causal language loss + diffusion objective
- deal with discrete and continuous in the same model.

🟡 Discrete Diffusion Modeling by Estimating the Ratios of the Data Distribution

what: propose diffusion for discrete distribution
- beats other diffusion approach for text generation
- outperforms gpt-2.

🟡Show-o: One Single Transformer to Unify Multimodal Understanding and Generation

what: combine AR transformer with MaskGIT.
- can generate image and understand them.
- text tokenization + image tokenization. Use MaskGIT losses for image tokens.
Please open Telegram to view this post
VIEW IN TELEGRAM



group-telegram.com/neural_cell/179
Create:
Last Update:

Tasty AI Papers | 01-31 August 2024

Robotics.

🔘Body Transformer: Leveraging Robot Embodiment for Policy Learning

what: one transformer to control whole body.
- propose Body Transformer (BoT)
- vanilla transformer with special attention mask, which reflects interconnection of the different body parts.

🔘CrossFormer Scaling Cross-Embodied Learning for Manipulation, Navigation, Locomotion, and Aviation

what: One transformer that can control various robot types.
- trained on 900K trajectories from 20 different robots.
- matches or beats specialized algorithms for each robot type.
- works on arms, wheeled bots, quadrupeds, and even drones.

Diffusion + AR Transformers

🟢Transfusion: Predict the Next Token and Diffuse Images with One Multi-Modal Model

what: merge AR decoder with vanilla diffusion.
- train model with two objectives: causal language loss + diffusion objective
- deal with discrete and continuous in the same model.

🟡 Discrete Diffusion Modeling by Estimating the Ratios of the Data Distribution

what: propose diffusion for discrete distribution
- beats other diffusion approach for text generation
- outperforms gpt-2.

🟡Show-o: One Single Transformer to Unify Multimodal Understanding and Generation

what: combine AR transformer with MaskGIT.
- can generate image and understand them.
- text tokenization + image tokenization. Use MaskGIT losses for image tokens.

BY the last neural cell




Share with your friend now:
group-telegram.com/neural_cell/179

View MORE
Open in Telegram


Telegram | DID YOU KNOW?

Date: |

Telegram was founded in 2013 by two Russian brothers, Nikolai and Pavel Durov. The War on Fakes channel has repeatedly attempted to push conspiracies that footage from Ukraine is somehow being falsified. One post on the channel from February 24 claimed without evidence that a widely viewed photo of a Ukrainian woman injured in an airstrike in the city of Chuhuiv was doctored and that the woman was seen in a different photo days later without injuries. The post, which has over 600,000 views, also baselessly claimed that the woman's blood was actually makeup or grape juice. Since its launch in 2013, Telegram has grown from a simple messaging app to a broadcast network. Its user base isn’t as vast as WhatsApp’s, and its broadcast platform is a fraction the size of Twitter, but it’s nonetheless showing its use. While Telegram has been embroiled in controversy for much of its life, it has become a vital source of communication during the invasion of Ukraine. But, if all of this is new to you, let us explain, dear friends, what on Earth a Telegram is meant to be, and why you should, or should not, need to care. These administrators had built substantial positions in these scrips prior to the circulation of recommendations and offloaded their positions subsequent to rise in price of these scrips, making significant profits at the expense of unsuspecting investors, Sebi noted. The regulator said it has been undertaking several campaigns to educate the investors to be vigilant while taking investment decisions based on stock tips.
from nl


Telegram the last neural cell
FROM American