The Tesla team discussed how they are using AI to crack Full Self Driving (FSD) at their Tesla AI Day event.

They introduced many cool things:
- HydraNets
- Dojo Processing Units
- Tesla bots
- So much more...

Here's a quick summary 🧵:
They introduced their single deep learning model architecture ("HydraNet") for feature extraction and transforming into a "vector space"
This includes multi-scale features from each of the 8 cameras, integrated with a transformer to attend to important features, incorporating kinematic features, processing in a spatiotemporal manner using a feature queue and spatial RNNs, all trained multi-task learning.
Planning and control of the car utilizes reinforcement learning-based approaches
Here is the entire pipeline put together:
Next, they discussed their labeling pipeline‚ which is all done in-house. The way they do this is by labeling directly in this "vector space"
They also use simulations to provide additional data:
The Tesla team also discussed their Dojo supercomputers, which are specialized supercomputers for machine learning!

While the hardware is still in development, they are developing exaflop-level servers!
Then, out of nowhere, @elonmusk introduces Tesla Bot!

The Tesla AI team is designing and building a humanoid bot to perform repetitive tasks, using the AI algorithms originally used to develop FSD.
I have only covered the tip of the iceberg!

Check out the recording here:
A quick clarification: the RL-based techniques are not used in production for planning and control yet but they are exploring it currently... Nonetheless, it is still very exciting and interesting!

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More from @iScienceLuvr

30 Aug
After you train a machine learning model, the BEST way to showcase it to the world is to make a demo for others to try your model!

Here is a quick thread🧵on two of the easiest ways to make a demo for your machine learning model:
Currently, Gradio is probably the fastest way to set up a machine learning demo ⚡

Just a couple lines of code allows you to use your inference code to make a beautiful demo that you can share with the world.

Learn more here → gradio.app
Using Gradio, I was able to quickly make this demo of my CycleGAN package (screenshot was taken using Gradio's built-in functionality!):

upit-cyclegan.herokuapp.com
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8 Jul
OpenAI has released a 35-page paper on Codex (the model that powers GitHub Copilot)!
arxiv.org/abs/2107.03374
"We fine-tune GPT models containing up to 12B parameters on code to produce Codex."

They note that GitHub Copilot and the upcoming OpenAI API for the model is powered by descendants of the one in this paper.
They introduce a new dataset of Python programming problems in order to evaluate their models:
github.com/openai/human-e…
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7 Jul
Yes, this is definitely about television! 🤣🤣🤣
I find it very interesting that Twitter recommends relevant tweets to me, but the topic suggestion is completely off. It looks to me like the recommendation and topic selection algorithm are completely different.
While the tweet recommendation algo is more sophisticated that likely takes into consideration the semantic content of the tweet, the topic selection algo seems to be a simple algorithm that heavily weighs the presence of keywords.
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26 Jan 20
Saw few tweets on pigeon-based classification of breast cancer (@tunguz @hardmaru, @Dominic1King, & ML Reddit), which was published in 2015. I work with the legend himself @rml52! I thought for my 1st Twitter thread I'd go over the papers's main points & our current work! (1/11)
My PI often likes to say AI stands for avian intelligence. And indeed his paper shows pigeons can learn the difficult task of classifying the presence of breast cancer in histopathological images. (2/11)
The pigeons were placed in an apparatus and the 🔬 image was shown to the pigeons on a touchscreen. The pigeons were given food if they pressed the correct button on the screen. (This is opposed to regular pathologists who are not given free food when analyzing images!) (3/11) Image
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