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Splade PP En V1

Developed by prithivida
SPLADE++ is a sparse neural information retrieval model that achieves a balance between retrieval quality and efficiency through knowledge distillation and efficiency optimization.
Downloads 36.03k
Release Time : 2/16/2024

Model Overview

This model is an independent implementation of SPLADE++, optimized for retrieval efficiency in industrial environments, supporting document expansion and passage retrieval tasks.

Model Features

Industrial-grade efficiency optimization
Significantly improves retrieval efficiency through FLOPS tuning and sequence length control
Sparse representation learning
Combines the interpretability of bag-of-words models with the semantic understanding capabilities of neural networks
Lightweight initialization
Initialized with bert-base-uncased, eliminating the need for corpus pre-training

Model Capabilities

Document sparse encoding
Query expansion
Passage retrieval
Term weight prediction

Use Cases

Information retrieval
Search engine document expansion
Generates expansion terms for search documents to improve recall
Achieves MRR@10 of 37.22 on MS MARCO
Industrial-grade retrieval system
Low-latency document retrieval solution
Retrieval latency of 47.27ms (multi-threaded)
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