Distilbert Base Uncased Finetuned Cust Similarity 1
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Distilbert Base Uncased Finetuned Cust Similarity 1
Developed by shafin
This is a sentence embedding model based on DistilBERT, capable of mapping sentences and paragraphs into a 32-dimensional dense vector space, suitable for tasks such as sentence similarity calculation, semantic search, and clustering.
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Release Time : 5/29/2022
Model Overview
This model is based on the DistilBERT architecture and fine-tuned for sentence similarity tasks. It generates high-quality sentence embeddings that can be used to compute semantic similarity between sentences or build semantic search systems.
Model Features
Efficient Sentence Embedding
Capable of converting sentences into 32-dimensional dense vectors while preserving semantic information
Based on DistilBERT
Uses the lightweight DistilBERT architecture, reducing computational resource requirements while maintaining performance
Semantic Similarity Calculation
Optimized for sentence similarity tasks, accurately capturing semantic relationships between sentences
Model Capabilities
Sentence embedding generation
Semantic similarity calculation
Text clustering
Semantic search
Use Cases
Information Retrieval
Semantic Search System
Build a search system based on semantics rather than keywords
Improves the relevance and accuracy of search results
Text Analysis
Document Clustering
Automatically group semantically similar documents
Enables unsupervised document organization and management
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