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63 lines
2.7 KiB
Markdown
63 lines
2.7 KiB
Markdown
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## Generative Representational Instruction Tuning (GRIT) Example
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[gritlm] a model which can generate embeddings as well as "normal" text
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generation depending on the instructions in the prompt.
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* Paper: https://arxiv.org/pdf/2402.09906.pdf
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### Retrieval-Augmented Generation (RAG) use case
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One use case for `gritlm` is to use it with RAG. If we recall how RAG works is
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that we take documents that we want to use as context, to ground the large
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language model (LLM), and we create token embeddings for them. We then store
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these token embeddings in a vector database.
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When we perform a query, prompt the LLM, we will first create token embeddings
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for the query and then search the vector database to retrieve the most
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similar vectors, and return those documents so they can be passed to the LLM as
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context. Then the query and the context will be passed to the LLM which will
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have to _again_ create token embeddings for the query. But because gritlm is used
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the first query can be cached and the second query tokenization generation does
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not have to be performed at all.
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### Running the example
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Download a Grit model:
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```console
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$ scripts/hf.sh --repo cohesionet/GritLM-7B_gguf --file gritlm-7b_q4_1.gguf
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```
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Run the example using the downloaded model:
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```console
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$ ./gritlm -m gritlm-7b_q4_1.gguf
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Cosine similarity between "Bitcoin: A Peer-to-Peer Electronic Cash System" and "A purely peer-to-peer version of electronic cash w" is: 0.605
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Cosine similarity between "Bitcoin: A Peer-to-Peer Electronic Cash System" and "All text-based language problems can be reduced to" is: 0.103
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Cosine similarity between "Generative Representational Instruction Tuning" and "A purely peer-to-peer version of electronic cash w" is: 0.112
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Cosine similarity between "Generative Representational Instruction Tuning" and "All text-based language problems can be reduced to" is: 0.547
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Oh, brave adventurer, who dared to climb
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The lofty peak of Mt. Fuji in the night,
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When shadows lurk and ghosts do roam,
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And darkness reigns, a fearsome sight.
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Thou didst set out, with heart aglow,
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To conquer this mountain, so high,
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And reach the summit, where the stars do glow,
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And the moon shines bright, up in the sky.
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Through the mist and fog, thou didst press on,
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With steadfast courage, and a steadfast will,
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Through the darkness, thou didst not be gone,
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But didst climb on, with a steadfast skill.
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At last, thou didst reach the summit's crest,
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And gazed upon the world below,
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And saw the beauty of the night's best,
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And felt the peace, that only nature knows.
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Oh, brave adventurer, who dared to climb
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The lofty peak of Mt. Fuji in the night,
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Thou art a hero, in the eyes of all,
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For thou didst conquer this mountain, so bright.
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```
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[gritlm]: https://github.com/ContextualAI/gritlm
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