InternVL2_5-26B-MPO-AWQ
I
Internvl2 5 26B MPO AWQ
Overview :
InternVL2_5-26B-MPO-AWQ is a multimodal large language model developed by OpenGVLab, designed to enhance model reasoning capabilities through hybrid preference optimization. This model excels in multimodal tasks, effectively managing the complex relationships between images and text. It utilizes cutting-edge model architecture and optimization techniques, providing significant advantages in handling multimodal data. The model is ideal for scenarios requiring efficient processing and understanding of multimodal data, such as image description generation and multimodal question answering. Its main advantages include powerful reasoning capabilities and an efficient model architecture.
Target Users :
This product is suitable for developers and researchers who need to handle multimodal data, including professionals in fields such as image description generation, multimodal question answering, and video content understanding.
Total Visits: 29.7M
Top Region: US(17.94%)
Website Views : 48.0K
Use Cases
Automatically generate accurate image descriptions in image description generation tasks using this model.
In a multimodal question answering system, leverage this model to understand user queries and provide accurate answers.
In video content understanding applications, use this model to analyze images and textual information from videos, extracting key content.
Features
Supports multimodal data input, including images and text.
Possesses advanced reasoning capabilities to address complex multimodal tasks.
Employs hybrid preference optimization techniques to enhance model performance.
Handles multiple images and video data processing.
Provides an efficient model architecture that reduces computational resource consumption.
Supports multilingual processing, accommodating different linguistic environments.
Offers good scalability, facilitating integration with other models.
Provides a rich set of API interfaces for developer convenience.
How to Use
Install the LMDeploy toolkit, ensuring that the system environment meets the requirements.
Download and load the InternVL2_5-26B-MPO-AWQ model.
Prepare input data, including images and relevant textual information.
Call the model's API interface, passing in the input data.
Obtain the model's output results for subsequent processing and application.
Adjust model parameters as needed to optimize performance and outcomes.
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase