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Xlm Roberta Base Finetuned Wolof Finetuned Ner Swahili

Developed by mbeukman
This is a named entity recognition model based on the xlm-roberta-base-finetuned-wolof pre-trained model, fine-tuned on the Swahili portion of the MasakhaNER dataset.
Downloads 49
Release Time : 3/2/2022

Model Overview

This model is primarily used for named entity recognition tasks in Swahili text, capable of identifying entities such as dates, person names, organization names, and location names.

Model Features

Cross-lingual Transfer Learning
The XLM-RoBERTa model fine-tuned on Wolof is further fine-tuned on Swahili, demonstrating cross-lingual transfer learning capabilities.
African Language Support
A named entity recognition model specifically optimized for African languages (Swahili).
Efficient Training
Each fine-tuning session takes only 10-30 minutes and is completed on an NVIDIA RTX3090 GPU.

Model Capabilities

Identify date entities
Identify person name entities
Identify organization name entities
Identify location name entities

Use Cases

News Analysis
News Entity Extraction
Extract key entity information from Swahili news articles
Can identify people, locations, organizations, and time information in news articles.
Information Extraction
Document Structuring
Convert unstructured Swahili documents into structured data
Extract named entities from documents for further analysis.
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