GLM 4.6V
GLM 4.6V is an AI model from Z.ai built for agent workflows, with support for image, text, video input and text output. GLM-4.6V is a large multimodal model designed for high-fidelity visual understanding and long-context reasoning across images, documents, and mixed media. It supports up to 128K tokens, processes complex page layouts...
What is GLM 4.6V?
GLM 4.6V is an AI model from Z.ai that Agent Mag tracks for pricing, context window, modalities, benchmarks, and API compatibility. Builders can use this page to compare GLM 4.6V against other models for agent workflows and production deployments.
GLM-4.6V is a large multimodal model designed for high-fidelity visual understanding and long-context reasoning across images, documents, and mixed media. It supports up to 128K tokens, processes complex page layouts...
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