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Holo1 7B GGUF

Developed by Mungert
The Holo1-7B GGUF model is part of the Surfer-H system and is suitable for multimodal tasks such as visual document retrieval. It is particularly good at web page interaction and network monitoring, and can achieve high accuracy at a low cost.
Downloads 663
Release Time : 6/4/2025

Model Overview

A multimodal model based on the Qwen2.5-VL architecture, supporting the joint processing of images and text, suitable for scenarios such as network monitoring, automated tasks, and visual document retrieval.

Model Features

Ultra-low bit quantization technology
Adopts an accuracy adaptive quantization method, supporting 1 - 2 bit quantization, while ensuring memory efficiency and retaining model accuracy.
Multi-scenario applicability
Suitable for GPU video memory adaptation, memory-constrained deployment, CPUs and edge devices, as well as ultra-low bit quantization research.
Multimodal processing ability
Supports the joint processing of images and text, suitable for visual document retrieval and web page interaction tasks.
Network monitoring function
Can be used for real-time network service monitoring, automated Nmap scanning, quantum readiness checking and other network monitoring tasks.

Model Capabilities

Visual document retrieval
Web page interaction
Network monitoring
Multimodal processing
Automated task execution

Use Cases

Network monitoring
Automated Nmap scanning
Use the model to automatically perform network scanning tasks and detect the status of network services.
Efficiently complete network scanning and reduce labor costs.
Quantum readiness checking
Check whether the server uses quantum-safe encrypted communication.
Ensure communication security and improve network protection capabilities.
Visual document retrieval
Web content extraction
Extract structured information such as dates and prices from web pages.
Extract target information with high accuracy and improve data processing efficiency.
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