U

Uniner 7B Type

Developed by Universal-NER
Named entity recognition model trained based on LLama-7B, focusing on entity type annotation tasks
Downloads 3,329
Release Time : 8/7/2023

Model Overview

This model is trained using Pile-NER-type data and can identify and annotate specific types of entities from text, suitable for open-domain named entity recognition tasks

Model Features

Open-domain entity recognition
Capable of recognizing entities across various domains and types, not limited to predefined entity categories
Fine-tuned based on LLama-7B
Utilizes the powerful LLama-7B base model for fine-tuning, inheriting its excellent language understanding capabilities
Type annotation optimization
Specifically optimized for entity type annotation tasks, demonstrating outstanding performance in type recognition

Model Capabilities

Text entity recognition
Entity type annotation
Open-domain information extraction

Use Cases

Information extraction
Academic literature analysis
Extracting specific types of entities (such as methods, technologies, etc.) from academic papers
Performs excellently in Universal NER benchmark tests
News content analysis
Identifying entities such as people, locations, and organizations from news texts
Knowledge graph construction
Knowledge graph entity extraction
Extracting entities from unstructured text for knowledge graph construction
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