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Building robot intelligence requires high-quality robot data. But far too many tools to collect data are closed and custom-built. Open Teach is fully open-sourced and is: - Calibration-free - Supports multiple arms, hands, & mobile manipulators - Costs just $500

53,277 Aufrufe • vor 2 Jahren •via X (Twitter)

10 Kommentare

Profilbild von Lerrel Pinto
Lerrel Pintovor 2 Jahren

A few reasons why Open Teach works so well: 1. It is focused on low latency & high-frequency visual feedback. 2. Native passthrough from Quest 3 gives us exceptional visual clarity for 3D task perception. Here is a teleop of making a sandwich.

Profilbild von Lerrel Pinto
Lerrel Pintovor 2 Jahren

Open Teach is really versatile! We tried it on 38 tasks spanning 5 real robots and 2 simulated platforms!

Profilbild von Lerrel Pinto
Lerrel Pintovor 2 Jahren

And that's not all! Data from Open Teach is compatible with data-driven learning. On 10 tasks across platforms, we achieves a 87% success rate.

Profilbild von Lerrel Pinto
Lerrel Pintovor 2 Jahren

Open Teach is fully open sourced! Website: Paper: Code: By @AadhithyaIyer, Bobby Peng,  @wxdyl0915, @haldar_siddhant, @irmakkguzey, @soumithchintala

Profilbild von Tekmorrow
Tekmorrowvor 2 Jahren

This is awesome. Congrats, and keep on pushing. I'm excited about the future of robots. This technology has so many use cases that will change our lives.

Profilbild von Weshawl
Weshawlvor 2 Jahren

What happens when someone uses it to hurt other people? Will it be treated as an accident? Do we have any law that governs these types of cases?

Profilbild von Cryptonian
Cryptonianvor 2 Jahren

What do you think of Figure 1, just released with openAI??

Profilbild von Sorun 🇰🇪🇨🇦
Sorun 🇰🇪🇨🇦vor 2 Jahren

@ylecun Moravec’s Paradox 😬 great work though

Profilbild von TheBlackHack
TheBlackHackvor 2 Jahren

Does this use imitation learning? If I teach it to make a tuna sandwich in my mom's kitchen, can it then make a chicken sandwich in my dad's kitchen, or do I have to train it again for each sandwich, for each kitchen, etc?

Profilbild von Cristina Urdiales
Cristina Urdialesvor 2 Jahren

@ylecun @Jesusgomez

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Lukas Ziegler

40,583 Aufrufe • vor 3 Monaten

Synthetic data will provide the next trillion tokens to fuel our hungry models. I'm excited to announce MimicGen: massively scaling up data pipeline for robot learning! We multiply high-quality human data in simulation with digital twins. Using 50,000 training episodes across 18 tasks, multiple simulators, and even in the real-world! The idea is simple: 1. Humans tele-operate the robot to complete a task. It is extremely high-quality but also very slow and expensive. 2. We create a digital twin of the robot and the scene in high-fidelity, GPU-accelerated simulation. 3. We can now move objects around, replace with new assets, and even change the robot hand - basically augment the training data with procedural generation. 4. Export the successful episodes, and feed that to a neural network! You now have an near-infinite stream of data. One of the key reasons that robotics lags far behind other AI fields is the lack of data: you cannot scrape control signals from the internet. They simply don't exist in-the-wild. MimicGen shows the power of synthetic data and simulation to keep our scaling laws alive. I believe this principle apply beyond robotics. We are quickly exhausting the high-quality, real tokens from the web. Artificial intelligence from artificial data will be the way forward. We are big fans of the OSS community. As usual, we open-source everything, including the generated dataset! - Website: - Paper: - Dataset is hosted on HuggingFace (thanks AK!!): - Code: MimicGen is led by Ajay Mandlekar, deep dive in the thread:

Jim Fan

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