paint-brush
The AI Monthly Top 3  Papers of October 2021by@whatsai
134 reads

The AI Monthly Top 3  Papers of October 2021

by Louis Bouchard
Louis Bouchard HackerNoon profile picture

Louis Bouchard

@whatsai

I explain Artificial Intelligence terms and news to non-experts.

November 2nd, 2021
Read on Terminal Reader
Read this story in a terminal
Print this story
Read this story w/o Javascript
Read this story w/o Javascript
tldt arrow

Too Long; Didn't Read

The list is a curated list of the latest breakthroughs in AI and Data Science by release date with a clear video explanation, link to a more in-depth article, and code (if applicable) Enjoy the read, and let me know if I missed any important papers in the comments, or by contacting me directly on LinkedIn! If you’d like to read more research papers as well, I recommend you read my article where I share my best tips for finding and reading more.

Company Mentioned

Mention Thumbnail
Twitter
featured image - The AI Monthly Top 3  Papers of October 2021
1x
Read by Dr. One voice-avatar

Listen to this story

Louis Bouchard HackerNoon profile picture
Louis Bouchard

Louis Bouchard

@whatsai

I explain Artificial Intelligence terms and news to non-experts.

About @whatsai
LEARN MORE ABOUT @WHATSAI'S
EXPERTISE AND PLACE ON THE INTERNET.

Here are the 3 most interesting research papers of the month, in case you missed any of them. It is a curated list of the latest breakthroughs in AI and Data Science by release date with a clear video explanation, link to a more in-depth article, and code (if applicable). Enjoy the read, and let me know if I missed any important papers in the comments, or by contacting me directly on LinkedIn!

Paper #1:

Skillful Precipitation Nowcasting using Deep Generative Models of Radar [1]

50+ expert meteorologists assessed DeepMind's new model beating current nowcasting methods in 89% of situations for its accuracy and usefulness!

Read more and link to the code: https://hackernoon.com/ai-endorsed-by-expert-meteorologists-deepminds-weather-forecast-model

Paper #2:

The Cocktail Fork Problem: Three-Stem Audio Separation for Real-World Soundtracks [2]

This AI takes a poorly calibrated audio clip, for example, a movie scene with the music way too loud and actors speaking quietly, and can simply turn up the speech and lower the music!

Read more and link to the code: https://hackernoon.com/this-ai-can-separate-speech-music-and-sound-effects-from-movie-soundtracks

Paper #3:

ADOP: Approximate Differentiable One-Pixel Point Rendering [3]

An AI that takes images as inputs to generate smooth and high quality videos!

Read more and link to the code: https://hackernoon.com/this-ai-creates-videos-from-a-couple-of-images

If you like my work and want to stay up-to-date with AI, you should definitely follow me on my other social media accounts (LinkedIn, Twitter) and subscribe to my weekly AI newsletter!

If you’d like to read more research papers as well, I recommend you read my article where I share my best tips for finding and reading more research papers.

References

[1] Ravuri, S., Lenc, K., Willson, M., Kangin, D., Lam, R., Mirowski, P., Fitzsimons, M., Athanassiadou, M., Kashem, S., Madge, S. and Prudden, R., 2021. Skillful Precipitation Nowcasting using Deep Generative Models of Radar, https://www.nature.com/articles/s41586-021-03854-z.

[2] Petermann, D., Wichern, G., Wang, Z., & Roux, J.L. (2021). The Cocktail Fork Problem: Three-Stem Audio Separation for Real-World Soundtracks. https://arxiv.org/pdf/2110.09958.pdf.

[3] Rückert, D., Franke, L. and Stamminger, M., 2021. ADOP: Approximate Differentiable One-Pixel Point Rendering. https://arxiv.org/pdf/2110.06635.pdf.

L O A D I N G
. . . comments & more!

About Author

Louis Bouchard HackerNoon profile picture
Louis Bouchard@whatsai
I explain Artificial Intelligence terms and news to non-experts.

TOPICS

THIS ARTICLE WAS FEATURED IN...

Arweave
Read on Terminal Reader
Read this story in a terminal
 Terminal
Read this story w/o Javascript
Read this story w/o Javascript
 Lite
Learnrepo

Mentioned in this story

companies