Implementation:Open compass VLMEvalKit MMAlaya
Appearance
| Field | Value |
|---|---|
| source | VLMEvalKit |
| domain | Vision, Model_Architecture |
Overview
VLM adapter for the MMAlaya model enabling benchmark evaluation in VLMEvalKit.
Description
MMAlaya inherits from BaseModel and wraps the MMAlaya model for use within the VLMEvalKit evaluation framework. It initializes the model and tokenizer/processor from a HuggingFace model path (default: DataCanvas/MMAlaya) and provides the generate_inner method for inference.
Usage
Register in vlmeval/config.py via supported_VLM and invoke through the standard evaluation pipeline.
Code Reference
- Source:
vlmeval/vlm/mmalaya.py, Lines: L1-342 - Import:
from vlmeval.vlm.mmalaya import MMAlaya
Signature:
class MMAlaya(BaseModel):
INSTALL_REQ = False
INTERLEAVE = False
def __init__(self, model_path='DataCanvas/MMAlaya', **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.mmalaya import MMAlaya
model = MMAlaya(model_path='path/to/model')
response = model.generate_inner(message)
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Principle
Implementation
Heuristic
Environment