T

Tapas Medium Finetuned Wtq

Developed by google
This model is a medium-sized table question answering model based on TAPAS architecture, fine-tuned on WikiTable Questions dataset, suitable for table data QA tasks.
Downloads 77
Release Time : 3/2/2022

Model Overview

TAPAS is a BERT-like Transformer model specifically designed for table question answering tasks. This medium version optimizes table numerical reasoning through intermediate pre-training and chain fine-tuning.

Model Features

Intermediate Pre-training
Enhances table numerical reasoning through synthetic data augmentation
Chain Fine-tuning
Sequentially fine-tuned on SQA, WikiSQL and WTQ datasets
Relative Position Embedding
Resets position indices for each table cell to optimize table structure understanding

Model Capabilities

Table data QA
Table numerical reasoning
Table content understanding

Use Cases

Business Intelligence
Financial Statement Analysis
Extract answers to specific questions from financial statement tables
Accuracy 43.24% (WTQ dev set)
Data Query
Database Table Query
Query database table content through natural language
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase