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Implementation:Open compass VLMEvalKit LFM2VL

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Revision as of 13:29, 16 February 2026 by Admin (talk | contribs) (Auto-imported from implementations/Open_compass_VLMEvalKit_LFM2VL.md)
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Field Value
source VLMEvalKit
domain Vision, Model_Architecture

Overview

VLM adapter for the LFM2-VL (Liquid Foundation Model) model enabling benchmark evaluation in VLMEvalKit.

Description

LFM2VL inherits from BaseModel and wraps the LFM2-VL (Liquid Foundation Model) model for use within the VLMEvalKit evaluation framework. It initializes the model and tokenizer/processor from a HuggingFace model path (default: model_path (required)) and provides the generate_inner method for inference. Uses flash_attention_2 for efficient inference.

Usage

Register in vlmeval/config.py via supported_VLM and invoke through the standard evaluation pipeline.

Code Reference

  • Source: vlmeval/vlm/liquid.py, Lines: L1-85
  • Import: from vlmeval.vlm.liquid import LFM2VL

Signature:

class LFM2VL(BaseModel):
    INSTALL_REQ = False
    INTERLEAVE = False
    def __init__(self, model_path='model_path (required)', **kwargs): ...
    def generate_inner(self, message, dataset=None): ...

I/O Contract

Direction Description
Inputs message — list of dicts with type (text/image) and value; dataset — optional dataset name for custom prompting
Outputs generate_inner() returns str (model response text)

Usage Examples

from vlmeval.vlm.liquid import LFM2VL
model = LFM2VL(model_path='path/to/model')
response = model.generate_inner(message)

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