Llama 3 1 #ai #coding #aiagent #semantickernel #llama3

Ali Issa · Intermediate ·🧠 Large Language Models ·1y ago

Key Takeaways

This video explains what Llama 3.1 is and how to run it on a local machine

Full Transcript

meta released the Llama 3.1 models an open-source collection of 8 billion 70 billion and 45 billion parameter size models these models have demonstrated state-of-the-art performance across various industry benchmarks and providing Advanced capabilities for your generative AI applications llama 405b is the most powerful model in the Llama 3.1 collection making headlines for its ability to rival top AI models such as open AI gp4 o and Claude 3.5 Sonet among other things llama 3.1 models boast the following capabilities it supports a context length of 128,000 tokens this is a significant improvement over the previous versions this enhancement allows the model to process and understand much longer pieces of text leading to better comprehension and more detailed responses it supports eight languages more specifically English German French Italian

Original Description

In this video i explain what Llama 3.1 is. In the long form I also show how we can run it on a local machine.
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