Model Dccuchile Bert Base Spanish Wwm Uncased 10 Epochs
This is a sentence embedding model based on sentence-transformers, which can map text to a 256-dimensional vector space and is suitable for semantic search and clustering tasks.
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Release Time : 3/2/2022
Model Overview
This model can convert sentences and paragraphs into 256-dimensional dense vectors, suitable for natural language processing tasks such as sentence similarity calculation, semantic search, and text clustering.
Model Features
Efficient sentence embedding
Convert text into 256-dimensional dense vectors while retaining semantic information
Pretrained model
Based on the BERT architecture, it has strong semantic understanding ability
Easy to integrate
Can be easily integrated into existing systems through the sentence-transformers library
Model Capabilities
Sentence vectorization
Semantic similarity calculation
Text clustering
Semantic search
Use Cases
Information retrieval
Semantic search system
Build a search system based on semantics rather than keywords
Improve the relevance of search results
Text analysis
Document clustering
Automatically group similar documents
Achieve unsupervised document classification
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