H2O-Danube2-1.8B
H
H2O Danube2 1.8B
Overview :
H2O-Danube2-1.8B is the latest open-source tiny language model from H2O.ai, designed specifically for offline and enterprise applications. It features an economically efficient interface and training cost, making it easy to integrate into edge devices like smartphones and drones. This model ranks first in the <2B range on the Hugging Face Open LLM Leaderboard, offering up to 200 times cost savings on queries and better accuracy in document processing, with cost reductions up to 100%. The H2O.ai platform also provides cost control and flexibility, supporting the mixed use of more than 30 Large Language Models (LLMs), including proprietary and open-source LLMs.
Target Users :
H2O-Danube2-1.8B is designed for enterprise users requiring substantial document processing and data analysis, particularly for companies seeking cost-effective and high-efficiency solutions. Its open-source nature allows enterprises to have full control and ownership over their models, alongside fixed hardware costs, providing an economical option.
Total Visits: 192.9K
Top Region: TR(12.14%)
Website Views : 52.7K
Use Cases
Legal document review to find missing information
Analysis of financial statements to assess risk and emotions
Generation of new support response content
Features
Fine-tuning or post-training for specific domain datasets
Easy to embed into edge devices such as smartphones and drones
Up to 200 times cost savings on queries through the H2O.ai platform
Up to 100% cost reduction and increased accuracy in document processing
Supports customizable parameters and user-friendly interface design
Applicable to various enterprise applications such as legal document review and financial health analysis
Supports multiple data formats, including charts, process diagrams, web pages, audio, video, and images
How to Use
1. Download and install the H2O.ai mobile application or access the web version of the platform.
2. Register and obtain an API key to access the H2O-Danube2-1.8B model.
3. Select the appropriate language model according to your needs and set custom parameters.
4. Embed the model into edge devices or enterprise applications.
5. Utilize the model for document processing and data analysis tasks.
6. Evaluate the model performance and effectiveness through H2O Eval Studio.
7. Adjust model parameters based on the evaluation results to optimize application performance.
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase