Meta AI – Llama2
fine-tuned language model developed by Meta AI, and it is the next generation of their open-source large language model. The model leverages publicly available instruc...
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Summary of Llama2
Llama 2 is a fine-tuned language model developed by Meta AI, and it is the next generation of their open-source large language model. The model leverages publicly available instruction datasets and over 1 million human annotations [1]. It comes in various versions, ranging in scale from 7 billion to 70 billion parameters (7B, 13B, 70B) [4]. Llama 2 is designed to advance and democratize artificial intelligence through open source and open science [4].
The model has been introduced as free for research [2], and its availability has generated significant interest in the AI community due to its impressive capabilities [9]. Llama 2 has been made accessible on platforms like Hugging Face, where users can try it out on their local machines [4], including on Apple Silicon-based Macs [10].
Overall, Llama 2 represents a significant advancement in the field of language models and has the potential to impact various AI research and applications, given its large-scale and open-source nature. Researchers and developers can explore its technical details, partnerships, and fine-tuned versions to harness its powerful capabilities for various natural language processing tasks.
References
- Llama 2 – Meta AI
- Meta and Microsoft Introduce the Next Generation of Llama
- Llama 2 is here – get it on Hugging Face
- LLMがローカルで動くパラメータ数どこまで?Metaの「Llama 2
- ChatGPT(3.5)に匹敵する「Llama 2」をローカルPCで動かして
- Llama 2 の情報まとめ|npaka
- メタの最新大型言語モデルLlama 2について知っておくべき10
- m1 MacbookにLlama 2をインストールして使ってみる

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