What are Large Language Models (LLMs)?

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Learn about Large Language Models (LLMs), a powerful neural network that enables computers to process and generate language better than ever before. Dale and Nikita share how LLMs work and how you can interact with them via prompts.

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#MachineLearning #MLmodels #LLMs #GenerativeAI
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Thanks for diving in! What a great explanation.

pddyuez
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I found more understanding with this video vs one 12 times longer due to the extremely positively beneficial way this was presented in an extremely easy to learn visual manner so thank you very much indeed ❤️

StephSancia
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The first AI transformer model, known as "Transformer, " was introduced by researchers at Google in the paper titled "Attention is All You Need, " published by Vaswani et al. in 2017.

spinnerlive
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In brief (GPT4):
In this video, the speakers discuss the power of Large Language Models (LLMs) in understanding and generating human language. LLMs are based on the transformer architecture invented by Google and are trained on massive text datasets. Their ability to be used for a variety of tasks, such as chat, copywriting, translation, summarization, and code generation, makes them incredibly powerful and efficient.

LLMs can be utilized without being a machine learning expert, as they function like sophisticated autocomplete systems. Users can input text and receive output text based on the patterns and language learned by the LLM. The input text is called a prompt, and prompt design is crucial for getting the desired output from the LLM.

There are two main approaches for prompt design: zero-shot learning, which involves using a single command, and few-shot learning, which includes providing examples. However, there's no optimal way to write model prompts since the results are highly dependent on the underlying model, and small changes in wording or word order can have a significant impact.

Users can try out LLMs like Google Bard and experiment with different prompt structures and formats to find what works best for their specific use case.

e-genieclimatique
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Can't wait to see what Google has up their sleeves with A.I

Eltopshottah
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Wow, amazing video, everything was well explained! I really learn a lot from your videos, thank you so much 🤗🤗

luisxd
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I use bard everyday and it helped my workflow increase significantly

oryanol
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Your insights are like gems that light up every conversation.

Maksimgordeev-bjnt
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Very good video! These llms are much clearer now!

lgmuk
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ChatGPT is the elephant in the room. I didnt even know you can talk to Google Bard at the moment

erikm
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"and definitely let us know what you are building"

being google, I'm pretty sure you already know that

monkeydluffy
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Nailed the "silence, brand" vibe.

JayMaverick
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Excellent intuitive video about prompt engineering for starters, thank you.

christianfaust
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Bard isn’t currently supported in your country. Stay tuned! - that's all about G approach

pleban
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Pretty sophisticated stuff is going on with AI. How is PALM different to BARD ?

artus
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Great video. You guys are very sympathetic and explained the concept of an LLM in a simple but understandable way!

sirbughunter
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Please stop saying they understand. They don't, and saying it over and over are giving normal people a very warped view of what these models are capable of. And yes, the bigger they get and the more info they're fed, the tougher it becomes to demonstrate that they don't understand because the outputs between the traines model and someone with actual understanding become closer together, but it really is actually the case that these models as they work today most certainly do not understand anything.

zvxcvxcz
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Very good video about LLM and prompt engineering

RaviKrishnaSrivastava
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Everyone heard about this because of ChatGPT which they try to not mention because it's a Microsoft thing.

PabloPazosGutierrez
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I still don't understand how do you go from a language model which predicts the next word to a question answering system.

ncroc