Refuel LLM-2
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Refuel LLM 2
Overview :
Refuel LLM-2 is an advanced language model designed for data annotation, cleaning, and enrichment. It has outperformed all existing state-of-the-art language models, including GPT-4-Turbo, Claude-3-Opus, and Gemini-1.5-Pro, in benchmark tests for approximately 30 data annotation tasks. Refuel LLM-2 aims to improve data team efficiency by reducing manual labor in data cleaning, standardization, and annotation, thus enabling faster realization of data commercial value.
Target Users :
Targets data scientists, machine learning engineers, enterprise data teams, and professionals requiring large-scale data preprocessing and annotation. Refuel LLM-2 automates and optimizes data cleaning and annotation processes, saving users time and improving data processing quality and efficiency.
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Top Region: US(69.03%)
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Use Cases
In the finance industry, used for automated classification and annotation of financial documents
In the recruitment sector, helps screen and annotate key information in resumes
In e-commerce, automatically annotates product descriptions and customer reviews
Features
Exhibits outstanding performance in data annotation tasks with accuracy exceeding 80%
Supports long text input with a maximum context length of 32K
Provides model fine-tuning support to adapt to specific task requirements
Opensources the RefuelLLM-2-small model to promote community development
Has undergone performance testing on non-public datasets to ensure model reliability in real-world tasks
Provides an interactive platform to test model performance
Enables direct access and usage of the model on Refuel Cloud
How to Use
Access the Refuel LLM-2 online platform or download Refuel Cloud
Register an account and log in to obtain model access
Test model performance in the LLM playground or fine-tune the model in Refuel Cloud
Configure and fine-tune the model according to specific task requirements
Apply the fine-tuned model to actual data annotation, cleaning, or enrichment tasks
Monitor model performance and adjust it based on feedback to optimize results
Utilize the open-source RefuelLLM-2-small model for custom development and experimentation
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