Difference between revisions of "Meta"
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| − | <youtube> | + | <youtube>4P3DMMwvCfY</youtube> |
| − | <b> | + | <b>Inside the Lab: Building for the metaverse with AI (2022) | Meta AI |
| − | </b><br> | + | </b><br>Meta AI's Inside the Lab event streamed live on February 23rd, 2022. |
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| + | Realizing the Potential of AI Today and Creating the Experiences of Tomorrow | ||
| + | Our researchers and technologists work closely with open source communities, academia, and partners to realize the potential of AI today, and create a new class of experiences for tomorrow. Through the power of AI, we will enable a world where people can easily share, create, and connect physically and virtually, with anyone, anywhere. | ||
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| + | Chapters: | ||
| + | * 00:01:43 AI in the Metaverse (Mark Zuckerberg) | ||
| + | * 00:17:18 Unlocking the Metaverse with AI and Open Science (Joelle Pineau & Jérôme Pesenti) | ||
| + | * 00:36:37 Toward Self-Learning Vision Systems (Piotr Dollar) | ||
| + | * 00:49:17 Delivering Inclusive Technologies Through Translation (Angela Fan) | ||
| + | * 01:04:37 Building the Assistants of Tomorrow (Albert Geramifard) | ||
| + | * 01:15:43 The Path to Human Level Intelligence (Yann LeCun, Lex Fridman & Yoshua Bengio) | ||
| + | * 01:55:45 Building Responsible AI at Meta (Jacqueline Pan & Stevie Bergman) | ||
| + | * 02:08:38 Supporting Innovation (Irina Kofman) | ||
| + | * 02:22:25 Closing Remarks (Mark Zuckerberg) | ||
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Revision as of 21:22, 24 February 2023
Meta Platforms
YouTube search... ...Google search
- Facebook AI
- Case Studies
- Metaverse
- Python
- PyTorch authored by Facebook
- Generative Adversarial Network (GAN)
- Toolformer
- Assistants ... Hybrid Assistants ... Agents ... Negotiation
- Capabilities
- Caffe / Caffe2
- AI Marketplace & Toolkit/Model Interoperability
- Natural Language Tools & Services
- Retrieval Augmented Generation (RAG) ...an end-to-end differentiable model that combines an information retrieval component (Facebook AI’s dense-passage retrieval system ) with a seq2seq generator
- PyText ...build end-to-end pipelines for training and inference
- Bidirectional Encoder Representations from Transformers (BERT)
- Bot Framework
- Building Your Environment
- Spell
- DialogFlow
- Decentralized: Federated & Distributed
- Differentiable Programming
- Meta unveils a new large language model that can run on a single GPU | Benj Edwards - Ars Technica ... LLaMA-13B reportedly outperforms ChatGPT-like tech despite being 10x smaller.
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