OpenAI GPT-3: Language Models are Few-Shot Learners

In this episode of Machine Learning Street Talk, Tim Scarfe, Yannic Kilcher and Connor Shorten discuss their takeaways from OpenAI’s GPT-3 language model. With the help of Microsoft’s ZeRO-2 / DeepSpeed optimiser, OpenAI trained an 175 BILLION parameter autoregressive language model. The paper demonstrates how self-supervised language modelling at this scale can perform many downstream tasks without fine-tuning. 00:00:00 Intro 00:00:54 ZeRO1+2 (model + Data parallelism) (Connor) 00:03:17 Recent history of NLP (Tim) 00:06:04 Yannic "Light-speed" Kilcher's brief overview of GPT-3 00:14:25 Reviewing Yannic's YT comments on his GPT-3 video (Tim) 00:20:26 Main show intro 00:23:03 Is GPT-3 reasoning?  00:28:15 Architecture discussion and autoregressive (GPT*) vs denoising autoencoder (BERT) 00:36:18 Utility of GPT-3 in industry 00:43:03 Can GPT-3 do math? (reasoning/system 1/system 2) 00:51:03 Generalisation 00:56:48 Esoterics of language models 00:58:46 Architectural trade-offs 01:07:37 Memorization machines and intepretability 01:17:16 Nearest neighbour probes / watermarks 01:20:03 YouTube comments on GPT-3 video  01:21:50 GPT-3 news article generation issue 01:27:36 Sampling data for language models / bias / fairness / politics 01:51:12 Outro These paradigms of task adaptation are divided into zero, one, and few shot learning. Zero-shot learning is a very extreme case where we expect a language model to perform a task such as sentiment classification or extractive question answering, without any additional supervision. One and Few-shot learning provide some examples to the model. However, GPT-3s definition of this diverges a bit from the conventional literature. GPT-3 provides one and few-shot examples in the form of “In-Context Learning”. Instead of fine-tuning the model on a few examples, the model has to use the input to infer the downstream task. For example, the GPT-3 transformer has an input sequence of 2048 tokens, so demonstrations of a task such as yelp sentiment reviews, would have to fit in this input sequence as well as the new review. Thanks for watching! Please Subscribe! Paper Links: GPT-3: https://arxiv.org/abs/2005.14165 ZeRO: https://arxiv.org/abs/1910.02054 ZeRO (Blog Post): https://www.microsoft.com/en-us/research/blog/zero-deepspeed-new-system-optimizations-enable-training-models-with-over-100-billion-parameters/ ZeRO-2 (Blog Post): https://www.microsoft.com/en-us/research/blog/zero-2-deepspeed-shattering-barriers-of-deep-learning-speed-scale/?OCID=msr_blog_deepspeed2_build_tw #machinelearning #naturallanguageprocessing #deeplearning #gpt3

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Welcome! We engage in fascinating discussions with pre-eminent figures in the AI field. Our flagship show covers current affairs in AI, cognitive science, neuroscience and philosophy of mind with in-depth analysis. Our approach is unrivalled in terms of scope and rigour – we believe in intellectual diversity in AI, and we touch on all of the main ideas in the field with the hype surgically removed. MLST is run by Tim Scarfe, Ph.D (https://www.linkedin.com/in/ecsquizor/) and features regular appearances from MIT Doctor of Philosophy Keith Duggar (https://www.linkedin.com/in/dr-keith-duggar/).