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Distilbert Base Uncased Finetuned Homedepot SBERT

Developed by Ukhushn
A sentence embedding model based on DistilBERT, specifically fine-tuned for Home Depot-related tasks, capable of mapping text to a 768-dimensional vector space.
Downloads 33
Release Time : 5/20/2022

Model Overview

This model is a DistilBERT variant based on sentence-transformers, fine-tuned with Home Depot-specific data, suitable for tasks like sentence similarity calculation and semantic search.

Model Features

Efficient and Lightweight
Based on the DistilBERT architecture, it is more lightweight and efficient than the original BERT model while maintaining performance.
Domain Adaptation
Specially fine-tuned for Home Depot-related data, performing better in domain-specific tasks.
Sentence Embedding
Can map sentences/paragraphs of any length to fixed 768-dimensional semantic vectors.

Model Capabilities

Sentence similarity calculation
Semantic search
Text clustering
Feature extraction

Use Cases

E-commerce
Product Search Optimization
Improving search relevance in e-commerce platforms through semantic similarity.
Enhancing the matching accuracy between user queries and product descriptions.
Similar Product Recommendations
Recommending products based on semantic similarity of their descriptions.
Improving the accuracy of cross-category product recommendations.
Information Retrieval
Document Retrieval
Document search system based on semantic similarity.
Obtaining more relevant results compared to keyword-based search.
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