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Tapas Tiny Finetuned Sqa

Developed by google
TAPAS is a QA model for tabular data. This tiny version is fine-tuned on the SQA dataset, suitable for table-based QA tasks in conversational scenarios.
Downloads 2,391
Release Time : 3/2/2022

Model Overview

This model is a tiny version of TAPAS, pre-trained with intermediate and masked language modeling, then fine-tuned on the Sequential QA (SQA) dataset, specifically designed for table-related QA tasks.

Model Features

Table QA Capability
A QA model specifically designed for tabular data, capable of understanding table structures and answering related questions.
Relative Position Embedding
Uses relative position embeddings that reset position indices for each table cell, enhancing understanding of table structures.
Intermediate Pre-training
Includes an intermediate pre-training phase after base pre-training, improving the model's numerical reasoning abilities.

Model Capabilities

Table QA
Numerical Reasoning
Table Understanding

Use Cases

Smart Customer Service
Tabular Data Query
Answering user queries about product specifications, prices, and other tabular data in customer service systems
Accuracy 23.75% (SQA dev set)
Data Analysis
Data Report QA
Natural language querying and answering for structured data reports
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