GLM-4 Series
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GLM 4 Series
Overview :
GLM-4 Series is the next-generation pre-trained model launched by Zhipu AI, including GLM-4-9B, GLM-4-9B-Chat, GLM-4-9B-Chat-1M, and GLM-4V-9B. These models excel in semantic understanding, mathematical reasoning, code execution, and support up to 26 languages. They also possess advanced functionalities like web browsing and code execution. The GLM-4V-9B model boasts high-resolution visual understanding capabilities, making it suitable for multimodal applications.
Target Users :
Target audience includes developers, data scientists, and AI researchers who can utilize the GLM-4 series models for natural language processing, machine learning, and other AI-related research and development. The multilingual and multimodal capabilities of these models are particularly suited for international projects requiring handling of multiple languages and visual data.
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Use Cases
Develop a cross-language chatbot using GLM-4-9B-Chat.
Perform multimodal data analysis combining images and text using GLM-4V-9B.
Conduct semantic analysis and knowledge discovery of large-scale text corpora using the GLM-4 series models.
Features
Multi-turn dialogue capability, supporting long-text reasoning, with a maximum context length of 128K.
Web browsing functionality, capable of parsing and understanding webpage content.
Code execution functionality, able to run and understand code.
Custom tool invocation, allowing integration of external tools and APIs.
Multi-language support, including Japanese, Korean, German, and 26 other languages.
GLM-4V-9B model supports visual understanding at a resolution of 1120*1120.
In multimodal evaluation, GLM-4V-9B surpasses other models in both Chinese and English comprehensive capabilities and perceptual reasoning.
How to Use
Step 1: Visit the GLM-4 series model's GitHub page to understand the model's basic information and features.
Step 2: Select a suitable model version based on your needs, such as GLM-4-9B or GLM-4V-9B.
Step 3: Read the documentation to learn how to download and deploy the model.
Step 4: Start building your application using the provided example code or API.
Step 5: Fine-tune the model or integrate it into existing systems according to your application scenario.
Step 6: Test the model's performance to ensure it meets your project requirements.
Step 7: Deploy the model to a production environment and begin practical application.
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