Model Farm Preview User Guide
Introduction
Model Farm actively adapts to current cutting-edge or popular AI models. To help developers understand Model Farm's model adaptation and release plans as well as related model performance parameters in advance, we have launched Model Farm Preview.
Model Farm Preview uses the same methods as Model Farm with unified interface interaction. Developers can quickly view performance parameters of models that will be released in Model Farm, or contact APLUX for support to obtain related model files and inference code in advance.
💡Note
Model Farm Preview is only for viewing model adaptation status and related performance parameters. It cannot be downloaded or used. You need to wait for the model to be officially released before downloading and using it in Model Farm.
Quick Start
Model Farm Preview is only for previewing model performance parameters and cannot be downloaded, so developers can access all information on this page without login.
Accessing Model Farm Preview
Developers can directly access the Model Farm Preview interface by clicking the link: Model Farm Preview
Developers can also enter the Model Farm Preview interface through Model Farm interface interaction:
Viewing Models
Developers can search for models on Model Farm Preview according to their needs and understand detailed model information to make quick evaluations.
Model Farm Preview provides multiple ways to filter and search for models:
- Filter by model type
- Filter by model data precision
- Filter by chip platform
- Keyword search
Model Performance Reference
The model details page of Model Farm Preview provides actual performance measurements of AI models on corresponding hardware:
- Device: Development board model and corresponding chip model used for model testing
- AI Framework: Framework and version number used for model conversion and inference
- Model Data Precision: Data precision used by the converted model
- Inference Time: Actual measured runtime of the model, excluding pre/post-processing
- Precision Loss: Cosine similarity between the output matrices of the source model (FP32) and the converted model
- Model Size: File size of the converted model
💡Note
For the same SoC chip, model performance on devices with different hardware specifications should only be used as reference data
Taking SigLIP-so400m on MeiG SNM972 (QCS8550) as an example:
Early Access to Model Files and Code
Since Model Farm Preview is only for previewing model performance parameters and cannot be downloaded, developers who want to experience and test early can contact APLUX for support to obtain related model files and inference code in advance.
Please provide the following information when applying for early access to model resources:
- Name and Title:
- Organization Name (Company or School):
- Model Usage:
- Devices of Interest:
- Contact Email: