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@alexw994 alexw994 commented Aug 20, 2024

Add glm-4v Model and Fix bnb Quantization Issue

FIX #6097
FIX #5417

Description:
This PR integrates the glm-4v model into the vLLM project and resolves an issue related to bnb quantization for this model. The previous quantization approach caused inaccuracies, particularly affecting the glm-4v model's performance, which has now been corrected.

This PR references and follows the structure similar to (#5358).

Key Changes:
Implemented support for the glm-4v model.
Corrected the bnb quantization issue that was affecting the glm-4v model's functionality.

Full Changelog: https://github.com/alexw994/vllm/commits/v0.5.4.extras.glm-4v

Usage : Colab Notebook


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@alexw994 alexw994 changed the title Add glm-4v Model and Fix bnb Quantization Issue [Model][Bugfix] Add glm-4v Model and Fix bnb Quantization Issue Aug 20, 2024
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DarkLight1337 commented Oct 11, 2024

Sorry we haven't got time to review this, GLM-4V is done by #9242 now. Can you open a separate PR for the bnb fix?

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Successfully merging this pull request may close these issues.

[Feature]: when to support GLM-4V? [Bug]: vllm deployment of GLM-4V reports KeyError: 'transformer.vision.transformer.layers.45.mlp.fc2.weight'

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